Venn Biosciences Corporation

United States of America

Back to Profile

1-71 of 71 for Venn Biosciences Corporation Sort by
Query
Aggregations
IP Type
        Patent 66
        Trademark 5
Jurisdiction
        United States 29
        World 28
        Canada 14
Date
2026 January 1
2026 (YTD) 1
2025 8
2024 10
2023 26
See more
IPC Class
G01N 33/68 - Chemical analysis of biological material, e.g. blood, urineTesting involving biospecific ligand binding methodsImmunological testing involving proteins, peptides or amino acids 46
G16B 40/20 - Supervised data analysis 24
G16H 50/20 - ICT specially adapted for medical diagnosis, medical simulation or medical data miningICT specially adapted for detecting, monitoring or modelling epidemics or pandemics for computer-aided diagnosis, e.g. based on medical expert systems 19
G01N 33/574 - ImmunoassayBiospecific binding assayMaterials therefor for cancer 18
G16B 20/00 - ICT specially adapted for functional genomics or proteomics, e.g. genotype-phenotype associations 16
See more
NICE Class
42 - Scientific, technological and industrial services, research and design 4
44 - Medical, veterinary, hygienic and cosmetic services; agriculture, horticulture and forestry services 4
Status
Pending 31
Registered / In Force 40

1.

BIOMARKERS FOR DETERMINING A CANCER DISEASE STATE, RESPONSE TO IMMUNO-ONCOLOGY, STAGES OF FIBROSIS IN NON-ALCOHOLIC STEATOHEPATITIS, OR APPLICATION OF AGE OR SEX RELATED BIOMARKER PANEL FOR QUALITY CONTROL

      
Application Number 18844541
Status Pending
Filing Date 2023-04-01
First Publication Date 2026-01-01
Owner VENN BIOSCIENCES CORPORATION (USA)
Inventor
  • Dhar, Chirag
  • Aiyetan, Paul Oluwaseyi
  • Gandhi, Monil Dilip
  • Mitchell, Alan Nicolas
  • Pickering, Chad Eagle
  • Ramachandran, Prasanna
  • Serie, Daniel
  • Srinivasan, Apoorva
  • Xu, Gege

Abstract

Provided herein are methods, devices, and kits for identifying glycosylated polypeptide biomarkers and signatures for progression of a disease or a condition, such as cancer or NASH, or and response of the disease or condition to a treatment. Also provided herein are: i) methods of generating and analyzing glycosylated polypeptide biomarkers, ii) methods of validating a model using glycosylated polypeptides for predicting the disease or condition or for making treatment recommendation, iii) systems and methods for implementing QC of a cohort of samples by analyzing peptide structure data for each sample using a machine learning model to generate a predicted age and/or sex associated for each sample. The quality control issue may include an error of mislabeled samples or an error from sample preparation, or a systemic measurement or an instrument error.

IPC Classes  ?

  • G16B 40/20 - Supervised data analysis
  • G16H 10/40 - ICT specially adapted for the handling or processing of patient-related medical or healthcare data for data related to laboratory analysis, e.g. patient specimen analysis
  • G16H 15/00 - ICT specially adapted for medical reports, e.g. generation or transmission thereof
  • G16H 20/00 - ICT specially adapted for therapies or health-improving plans, e.g. for handling prescriptions, for steering therapy or for monitoring patient compliance
  • G16H 50/30 - ICT specially adapted for medical diagnosis, medical simulation or medical data miningICT specially adapted for detecting, monitoring or modelling epidemics or pandemics for calculating health indicesICT specially adapted for medical diagnosis, medical simulation or medical data miningICT specially adapted for detecting, monitoring or modelling epidemics or pandemics for individual health risk assessment

2.

AI-DRIVEN GLYCOPROTEOMICS LIQUID BIOPSY IN NASOPHARYNGEAL CARCINOMA

      
Application Number 18705107
Status Pending
Filing Date 2022-10-28
First Publication Date 2025-07-17
Owner VENN BIOSCIENCES CORPORATION (USA)
Inventor
  • Siang, Lee Cheng
  • Serie, Daniel
  • Isla Rios, Karina
  • Aye, Thin Thin

Abstract

A method and system for diagnosing a subject with respect to a nasopharyngeal carcinoma (NPC) disease state. Peptide structure data corresponding to a biological sample obtained from the subject is received. The peptide structure data is analyzed using a supervised machine learning model to generate a disease indicator that indicates whether biological sample evidences the NPC disease state based on at least 3 peptide structures selected from a group of peptide structures identified in Table 1A and/or 1B. The group of peptide structures in Table 1A and/or 1B comprises a group of peptide structures associated with the NPC disease state. The group of peptide structures is listed in Table 1A and/or 1B with respect to relative significance to the disease indicator. A diagnosis output is generated based on the disease indicator.

IPC Classes  ?

  • G16H 50/20 - ICT specially adapted for medical diagnosis, medical simulation or medical data miningICT specially adapted for detecting, monitoring or modelling epidemics or pandemics for computer-aided diagnosis, e.g. based on medical expert systems
  • G16B 15/30 - Drug targeting using structural dataDocking or binding prediction
  • G16B 40/10 - Signal processing, e.g. from mass spectrometry [MS] or from PCR
  • G16B 40/20 - Supervised data analysis
  • G16H 20/17 - ICT specially adapted for therapies or health-improving plans, e.g. for handling prescriptions, for steering therapy or for monitoring patient compliance relating to drugs or medications, e.g. for ensuring correct administration to patients delivered via infusion or injection

3.

SAMPLE PREPARATION FOR GLYCOPROTEOMIC ANALYSIS THAT INCLUDES DIAGNOSIS OF DISEASE

      
Application Number 18840561
Status Pending
Filing Date 2023-02-24
First Publication Date 2025-06-12
Owner VENN BIOSCIENCES CORPORATION (USA)
Inventor
  • Aiyetan, Paul Oluwaseyi
  • Campbell, Matthew Peter
  • Cong, Xin
  • Coutre, Garrett Anders
  • Deep, Arshia Bassi
  • Gandhi, Monil Dilip
  • Huang, Hector Han-Li
  • Mitchell, Alan Nicolas
  • Pandza, Kenan
  • Pickering, Chad Eagle
  • Schwarz, Flavio
  • Serie, Daniel
  • Srinivasan, Apoorva
  • Srivastava, Saurabh
  • Tu, Diane Nai-Fan
  • Xu, Gege
  • Yadav, Rao Siddhant
  • Zhou, Bo

Abstract

A method, system, and composition related to the preparation of samples for glycoproteomic analysis is described. The sample preparation process can include a proteolytic digestion step followed by a measurement step of the glycopeptide and peptide amounts in the proteolytic digest using a liquid chromatography-mass spectrometry system. Optionally, the sample preparation process can also include the collection of the sample on an absorbent or bibulous member where the proteins and glycoproteins are later extracted and then digested for glycoproteomic analysis. Glycopeptide and peptide measurements of biological samples were analyzed to provide a diagnosis of a disease such as, for example, ovarian cancer or to assess whether a patient with melanoma is likely or not likely to benefit from checkpoint inhibitor therapy.

IPC Classes  ?

  • G01N 33/68 - Chemical analysis of biological material, e.g. blood, urineTesting involving biospecific ligand binding methodsImmunological testing involving proteins, peptides or amino acids
  • G01N 30/06 - Preparation
  • G01N 33/543 - ImmunoassayBiospecific binding assayMaterials therefor with an insoluble carrier for immobilising immunochemicals
  • G16B 40/10 - Signal processing, e.g. from mass spectrometry [MS] or from PCR
  • G16H 50/20 - ICT specially adapted for medical diagnosis, medical simulation or medical data miningICT specially adapted for detecting, monitoring or modelling epidemics or pandemics for computer-aided diagnosis, e.g. based on medical expert systems

4.

DETECTION OF PEPTIDE STRUCTURES FOR DIAGNOSING AND TREATING SEPSIS AND COVID

      
Application Number 18681704
Status Pending
Filing Date 2022-08-05
First Publication Date 2025-05-08
Owner VENN BIOSCIENCES CORPORATION (USA)
Inventor
  • Pickering, Chad Eagle
  • Xu, Gege
  • Huang, Hector Han-Li
  • Cong, Xin

Abstract

Embodiments disclosed herein generally relate to technologies for evaluating a biological sample obtained from a subject with respect to a sepsis state or coronavirus disease (COVID). Some methods relating to the technologies can include receiving peptide structure data corresponding to the biological sample obtained from the subject, identifying a peptide structure profile for the biological sample using the peptide structure data, and computing a disease indicator using the peptide structure profile and a model. The disease indicator can indicate whether the biological sample is positive for the sepsis state. The disease indicator can indicate whether the biological sample is positive for COVID. The peptide structure profile can comprise quantification data for a set of peptide structures associated with the sepsis state. The peptide structure profile can include peptides that are glycosylated, aglycosylated, or both. An additional step in the method can comprise generating at least one of a diagnosis output or a treatment output based on the disease indicator.

IPC Classes  ?

  • G16B 40/20 - Supervised data analysis
  • G16B 15/00 - ICT specially adapted for analysing two-dimensional or three-dimensional molecular structures, e.g. structural or functional relations or structure alignment
  • G16B 40/30 - Unsupervised data analysis
  • G16H 10/40 - ICT specially adapted for the handling or processing of patient-related medical or healthcare data for data related to laboratory analysis, e.g. patient specimen analysis
  • G16H 50/20 - ICT specially adapted for medical diagnosis, medical simulation or medical data miningICT specially adapted for detecting, monitoring or modelling epidemics or pandemics for computer-aided diagnosis, e.g. based on medical expert systems

5.

DIAGNOSIS OF COLORECTAL CANCER USING TARGETED QUANTIFICATION OF SITE-SPECIFIC PROTEIN GLYCOSYLATION

      
Application Number 18837706
Status Pending
Filing Date 2023-02-14
First Publication Date 2025-05-08
Owner VENN BIOSCIENCES CORPORATION (USA)
Inventor
  • Serie, Daniel
  • Desai, Khushbu Yatin
  • Hommes, Daniel Willem
  • Mitchell, Alan Nicolas
  • Wong, Maurice Yu
  • Lui, Mingqi
  • Zhou, Bo

Abstract

The present disclosure encompasses systems, methods, and compositions for diagnosing a subject for a high-grade advanced pre-malignant lesions or colorectal cancer (CRC) disease state by ascertaining the presence of certain one or more glycosylated or aglycosylated peptides in liquid biopsy samples from the subject. Specific embodiments encompass methods of measuring certain one or more glycosylated or aglycosylated peptides in liquid biopsy samples from subjects known to have or suspected of having a high-grade advanced pre-malignant lesions or CRC disease state or subjects undergoing routine health care maintenance for possible presence of a high-grade advanced pre-malignant lesions or CRC disease state. The disclosure provides systems, methods, and compositions to identify subjects at-risk for CRC or high-grade advanced pre-malignant lesions and increases subject colonoscopy compliance, in specific embodiments.

IPC Classes  ?

  • G16H 50/20 - ICT specially adapted for medical diagnosis, medical simulation or medical data miningICT specially adapted for detecting, monitoring or modelling epidemics or pandemics for computer-aided diagnosis, e.g. based on medical expert systems
  • G01N 33/68 - Chemical analysis of biological material, e.g. blood, urineTesting involving biospecific ligand binding methodsImmunological testing involving proteins, peptides or amino acids
  • G16B 15/20 - Protein or domain folding
  • G16B 40/20 - Supervised data analysis
  • G16H 15/00 - ICT specially adapted for medical reports, e.g. generation or transmission thereof
  • G16H 20/10 - ICT specially adapted for therapies or health-improving plans, e.g. for handling prescriptions, for steering therapy or for monitoring patient compliance relating to drugs or medications, e.g. for ensuring correct administration to patients
  • G16H 20/40 - ICT specially adapted for therapies or health-improving plans, e.g. for handling prescriptions, for steering therapy or for monitoring patient compliance relating to mechanical, radiation or invasive therapies, e.g. surgery, laser therapy, dialysis or acupuncture
  • G16H 50/30 - ICT specially adapted for medical diagnosis, medical simulation or medical data miningICT specially adapted for detecting, monitoring or modelling epidemics or pandemics for calculating health indicesICT specially adapted for medical diagnosis, medical simulation or medical data miningICT specially adapted for detecting, monitoring or modelling epidemics or pandemics for individual health risk assessment
  • G16H 50/70 - ICT specially adapted for medical diagnosis, medical simulation or medical data miningICT specially adapted for detecting, monitoring or modelling epidemics or pandemics for mining of medical data, e.g. analysing previous cases of other patients

6.

DE NOVO GLYCOPEPTIDE SEQUENCING

      
Application Number 18833054
Status Pending
Filing Date 2023-02-14
First Publication Date 2025-04-03
Owner VENN BIOSCIENCES CORPORATION (USA)
Inventor
  • Liang, Zhewei
  • Liu, Mingqi

Abstract

A system and method of training a machine learning model to predict glycopeptide fragmentation patterns and retention times. Spectral data for a plurality of fragments of a glycopeptide structure is received. Glycan fragment composition data is generated using the spectral data. The glycan fragment composition data identifies a plurality of composition codes and a plurality of total intensities for a plurality of glycan fragments identified from the plurality of fragments using the spectral data. A linear glycan sequence is created using the glycan fragment composition data. A training input is formed for a machine learning model using the linear glycan sequence. The machine learning model is trained using the training input to predict a fragmentation pattern and a retention time for the glycopeptide structure.

IPC Classes  ?

  • G16B 40/10 - Signal processing, e.g. from mass spectrometry [MS] or from PCR
  • G01N 30/86 - Signal analysis
  • G01N 30/88 - Integrated analysis systems specially adapted therefor, not covered by a single one of groups
  • G06N 3/044 - Recurrent networks, e.g. Hopfield networks

7.

PREDICTING SARCOMA TREATMENT RESPONSE USING TARGETED QUANTIFICATION OF SITE-SPECIFIC PROTEIN GLYCOSYLATION

      
Application Number 18711191
Status Pending
Filing Date 2022-11-22
First Publication Date 2025-03-13
Owner VENN BIOSCIENCES CORPORATION (USA)
Inventor
  • Pickering, Chad Eagle
  • Serie, Daniel
  • Xu, Gege

Abstract

A method and system for managing a treatment for a subject diagnosed with a sarcoma disease state. Peptide structure data corresponding to a biological sample obtained from the subject is received. A response score that predicts a likelihood of responsiveness to the treatment is computed using quantification data identified from the peptide structure data for a set of peptide structures. The set of peptide structures includes at least one peptide structure identified from a plurality of peptide structures listed in Table 1. The plurality of peptide structures is listed in Table 1 with respect to relative significance to a survival for the sarcoma disease state. A treatment response output is generated based on the response score.

IPC Classes  ?

  • G16H 50/30 - ICT specially adapted for medical diagnosis, medical simulation or medical data miningICT specially adapted for detecting, monitoring or modelling epidemics or pandemics for calculating health indicesICT specially adapted for medical diagnosis, medical simulation or medical data miningICT specially adapted for detecting, monitoring or modelling epidemics or pandemics for individual health risk assessment
  • G16B 15/00 - ICT specially adapted for analysing two-dimensional or three-dimensional molecular structures, e.g. structural or functional relations or structure alignment
  • G16H 20/17 - ICT specially adapted for therapies or health-improving plans, e.g. for handling prescriptions, for steering therapy or for monitoring patient compliance relating to drugs or medications, e.g. for ensuring correct administration to patients delivered via infusion or injection

8.

FUCOSYLATED PD-1 VARIANTS FOR DETERMINING AN IMMUNO-ONCOLOGY RESPONSE

      
Application Number US2024039135
Publication Number 2025/024433
Status In Force
Filing Date 2024-07-23
Publication Date 2025-01-30
Owner VENN BIOSCIENCES CORPORATION (USA)
Inventor
  • Schwarz, Flavio
  • Chu, Chih-Wei
  • Caval, Tomislav

Abstract

A method of classifying a biological sample from a subject with respect to responsiveness to immune checkpoint inhibitor therapy comprising analyzing an amount or absence of a fucosylated PD-1 variant from the biological sample from the subject and generating a diagnosis output based on the amount or absence of the fucosylated PD-1 variant which can be used to classify whether the subject is likely to benefit or not likely to benefit from the immune checkpoint inhibitor therapy.

IPC Classes  ?

  • G01N 33/68 - Chemical analysis of biological material, e.g. blood, urineTesting involving biospecific ligand binding methodsImmunological testing involving proteins, peptides or amino acids
  • G16H 20/10 - ICT specially adapted for therapies or health-improving plans, e.g. for handling prescriptions, for steering therapy or for monitoring patient compliance relating to drugs or medications, e.g. for ensuring correct administration to patients
  • A61K 39/395 - AntibodiesImmunoglobulinsImmune serum, e.g. antilymphocytic serum
  • A61P 35/00 - Antineoplastic agents
  • C07K 16/28 - Immunoglobulins, e.g. monoclonal or polyclonal antibodies against material from animals or humans against receptors, cell surface antigens or cell surface determinants
  • C40B 30/00 - Methods of screening libraries
  • G01N 27/623 - Ion mobility spectrometry combined with mass spectrometry
  • G01N 33/543 - ImmunoassayBiospecific binding assayMaterials therefor with an insoluble carrier for immobilising immunochemicals
  • G01N 33/52 - Use of compounds or compositions for colorimetric, spectrophotometric or fluorometric investigation, e.g. use of reagent paper
  • G16H 20/40 - ICT specially adapted for therapies or health-improving plans, e.g. for handling prescriptions, for steering therapy or for monitoring patient compliance relating to mechanical, radiation or invasive therapies, e.g. surgery, laser therapy, dialysis or acupuncture
  • G16B 15/00 - ICT specially adapted for analysing two-dimensional or three-dimensional molecular structures, e.g. structural or functional relations or structure alignment
  • G16H 10/40 - ICT specially adapted for the handling or processing of patient-related medical or healthcare data for data related to laboratory analysis, e.g. patient specimen analysis

9.

PEPTIDE BIOMARKERS FOR DIAGNOSING PRIMARY SCLEROSING CHOLANGITIS OR PRIMARY BILIARY CHOLANGITIS

      
Application Number US2024034478
Publication Number 2025/006267
Status In Force
Filing Date 2024-06-18
Publication Date 2025-01-02
Owner VENN BIOSCIENCES CORPORATION (USA)
Inventor Pickering, Chad Eagle

Abstract

Provided herein are methods of diagnosing and determining a risk of an individual for developing Primary Sclerosing Cholangitis (PSC) or Primary Biliary Cholangitis (PBC) based upon the presence, absence, or amount of biomarkers, such as peptides. Also provided herein are methods of treating PSC or PBC based upon the presence, absence, or amount of such biomarkers and compositions comprising one or more peptides.

IPC Classes  ?

  • G01N 33/68 - Chemical analysis of biological material, e.g. blood, urineTesting involving biospecific ligand binding methodsImmunological testing involving proteins, peptides or amino acids
  • C07K 7/08 - Linear peptides containing only normal peptide links having 12 to 20 amino acids
  • G01N 33/533 - Production of labelled immunochemicals with fluorescent label
  • A61P 1/16 - Drugs for disorders of the alimentary tract or the digestive system for liver or gallbladder disorders, e.g. hepatoprotective agents, cholagogues, litholytics
  • C07K 9/00 - Peptides having up to 20 amino acids, containing saccharide radicals and having a fully defined sequenceDerivatives thereof

10.

BIOMARKERS FOR DIAGNOSING COLORECTAL CANCER OR ADVANCED ADENOMA

      
Application Number 18294950
Status Pending
Filing Date 2022-08-03
First Publication Date 2024-12-12
Owner VENN BIOSCIENCES CORPORATION (USA)
Inventor
  • Serie, Daniel
  • Lindpaintner, Klaus

Abstract

Set forth herein are glycopeptide biomarkers useful for diagnosing diseases and conditions, such as colorectal cancer or advanced adenoma. Also set forth herein are methods of generating glycopeptide biomarkers and methods of analyzing glycopeptides using mass spectroscopy. Also set forth herein are methods of analyzing glycopeptides using machine learning algorithms.

IPC Classes  ?

  • G16H 50/20 - ICT specially adapted for medical diagnosis, medical simulation or medical data miningICT specially adapted for detecting, monitoring or modelling epidemics or pandemics for computer-aided diagnosis, e.g. based on medical expert systems
  • G01N 33/68 - Chemical analysis of biological material, e.g. blood, urineTesting involving biospecific ligand binding methodsImmunological testing involving proteins, peptides or amino acids
  • G16B 40/20 - Supervised data analysis

11.

METHODS AND SYSTEMS FOR ANALYZING SITE-SPECIFIC MONOMER COMPOSITION

      
Application Number US2023073170
Publication Number 2024/242714
Status In Force
Filing Date 2023-08-30
Publication Date 2024-11-28
Owner VENN BIOSCIENCES CORPORATION (USA)
Inventor
  • Schwarz, Flavio
  • Pickering, Chad Eagle
  • Mitchell, Alan Nicolas
  • Serie, Daniel

Abstract

Embodiments disclosed herein generally relate to technologies for analyzing peptide structures from a biological sample obtained from a subject. Certain methods disclosed herein can include receiving peptide structure data corresponding to the biological sample obtained from the subject and calculating a site occupancy score and monomer weight score from the peptide structure data. An additional step in the disclosed methods can include generating a diagnosis output for an indication or disease state. The diagnosis output can, in some aspects, indicate whether the subject has or does not have a disease and/or whether a subject has a disease that is or is not responsive to a particular therapy.

IPC Classes  ?

  • A61K 39/395 - AntibodiesImmunoglobulinsImmune serum, e.g. antilymphocytic serum
  • A61P 35/00 - Antineoplastic agents
  • G16B 40/00 - ICT specially adapted for biostatisticsICT specially adapted for bioinformatics-related machine learning or data mining, e.g. knowledge discovery or pattern finding
  • G16H 50/20 - ICT specially adapted for medical diagnosis, medical simulation or medical data miningICT specially adapted for detecting, monitoring or modelling epidemics or pandemics for computer-aided diagnosis, e.g. based on medical expert systems
  • G01N 33/574 - ImmunoassayBiospecific binding assayMaterials therefor for cancer
  • G01N 33/68 - Chemical analysis of biological material, e.g. blood, urineTesting involving biospecific ligand binding methodsImmunological testing involving proteins, peptides or amino acids
  • G16B 15/00 - ICT specially adapted for analysing two-dimensional or three-dimensional molecular structures, e.g. structural or functional relations or structure alignment
  • G16H 10/40 - ICT specially adapted for the handling or processing of patient-related medical or healthcare data for data related to laboratory analysis, e.g. patient specimen analysis
  • G16H 20/40 - ICT specially adapted for therapies or health-improving plans, e.g. for handling prescriptions, for steering therapy or for monitoring patient compliance relating to mechanical, radiation or invasive therapies, e.g. surgery, laser therapy, dialysis or acupuncture

12.

DIAGNOSIS OF COLORECTAL CANCER USING TARGETED QUANTIFICATION OF PEPTIDES

      
Application Number 18421663
Status Pending
Filing Date 2024-01-24
First Publication Date 2024-11-21
Owner VENN BIOSCIENCES CORPORATION (USA)
Inventor
  • Islas Rios, Karina
  • Serie, Daniel
  • Desai, Khushbu Yatin
  • Hommes, Daniel Willem
  • Wong, Maurice Yu

Abstract

The present disclosure encompasses systems, methods, and compositions for diagnosing a subject for an AA or colorectal cancer (CRC) disease state by ascertaining the presence of certain one or more glycosylated or aglycosylated peptides in liquid biopsy samples from the subject. Specific embodiments encompass methods of measuring certain one or more glycosylated or aglycosylated peptides in liquid biopsy samples from subjects known to have or suspected of having an AA or CRC disease state or subjects undergoing routine health care maintenance for possible presence of an AA or CRC disease state. The disclosure provides systems, methods, and compositions to identify subjects at-risk for CRC or AA and increases subject colonoscopy compliance, in specific embodiments.

IPC Classes  ?

  • G16H 50/20 - ICT specially adapted for medical diagnosis, medical simulation or medical data miningICT specially adapted for detecting, monitoring or modelling epidemics or pandemics for computer-aided diagnosis, e.g. based on medical expert systems
  • C07K 14/47 - Peptides having more than 20 amino acidsGastrinsSomatostatinsMelanotropinsDerivatives thereof from animalsPeptides having more than 20 amino acidsGastrinsSomatostatinsMelanotropinsDerivatives thereof from humans from vertebrates from mammals
  • G01N 33/68 - Chemical analysis of biological material, e.g. blood, urineTesting involving biospecific ligand binding methodsImmunological testing involving proteins, peptides or amino acids
  • G16B 15/20 - Protein or domain folding
  • G16B 35/20 - Screening of libraries
  • G16B 40/20 - Supervised data analysis

13.

DIAGNOSIS OF COLORECTAL CANCER USING TARGETED QUANTIFICATION OF PEPTIDES

      
Application Number 18451015
Status Pending
Filing Date 2023-08-16
First Publication Date 2024-11-14
Owner VENN BIOSCIENCES CORPORATION (USA)
Inventor
  • Islas Rios, Karina
  • Serie, Daniel
  • Desai, Khushbu Yatin
  • Hommes, Daniel Willem
  • Wong, Maurice Yu

Abstract

The present disclosure encompasses systems, methods, and compositions for diagnosing a subject for an AA or colorectal cancer (CRC) disease state by ascertaining the presence of certain one or more glycosylated or aglycosylated peptides in liquid biopsy samples from the subject. Specific embodiments encompass methods of measuring certain one or more glycosylated or aglycosylated peptides in liquid biopsy samples from subjects known to have or suspected of having an AA or CRC disease state or subjects undergoing routine health care maintenance for possible presence of an AA or CRC disease state. The disclosure provides systems, methods, and compositions to identify subjects at-risk for CRC or AA and increases subject colonoscopy compliance, in specific embodiments.

IPC Classes  ?

  • G16H 50/20 - ICT specially adapted for medical diagnosis, medical simulation or medical data miningICT specially adapted for detecting, monitoring or modelling epidemics or pandemics for computer-aided diagnosis, e.g. based on medical expert systems
  • C07K 14/47 - Peptides having more than 20 amino acidsGastrinsSomatostatinsMelanotropinsDerivatives thereof from animalsPeptides having more than 20 amino acidsGastrinsSomatostatinsMelanotropinsDerivatives thereof from humans from vertebrates from mammals
  • G01N 33/68 - Chemical analysis of biological material, e.g. blood, urineTesting involving biospecific ligand binding methodsImmunological testing involving proteins, peptides or amino acids
  • G16B 15/20 - Protein or domain folding
  • G16B 35/20 - Screening of libraries
  • G16B 40/20 - Supervised data analysis

14.

DIAGNOSIS OF COLORECTAL CANCER USING TARGETED QUANTIFICATION OF PEPTIDES

      
Application Number US2023072335
Publication Number 2024/232926
Status In Force
Filing Date 2023-08-16
Publication Date 2024-11-14
Owner VENN BIOSCIENCES CORPORATION (USA)
Inventor
  • Islas Rios, Karina
  • Serie, Daniel
  • Desai, Khushbu Yatin
  • Hommes, Daniel Willem
  • Wong, Maurice Yu
  • Ramachandran, Prasanna
  • Norez, Daniel

Abstract

The present disclosure encompasses systems, methods, and compositions for diagnosing a subject for an AA or colorectal cancer (CRC) disease state by ascertaining the presence of certain one or more glycosylated or aglycosylated peptides in liquid biopsy samples from the subject. Specific embodiments encompass methods of measuring certain one or more glycosylated or aglycosylated peptides in liquid biopsy samples from subjects known to have or suspected of having an AA or CRC disease state or subjects undergoing routine health care maintenance for possible presence of an AA or CRC disease state. The disclosure provides systems, methods, and compositions to identify subjects at-risk for CRC or AA and increases subject colonoscopy compliance, in specific embodiments.

IPC Classes  ?

  • C07K 7/08 - Linear peptides containing only normal peptide links having 12 to 20 amino acids
  • C07K 9/00 - Peptides having up to 20 amino acids, containing saccharide radicals and having a fully defined sequenceDerivatives thereof
  • G01N 33/574 - ImmunoassayBiospecific binding assayMaterials therefor for cancer
  • G01N 33/68 - Chemical analysis of biological material, e.g. blood, urineTesting involving biospecific ligand binding methodsImmunological testing involving proteins, peptides or amino acids
  • G16B 40/20 - Supervised data analysis

15.

BIOMARKERS FOR DIAGNOSING NON-SMALL CELL LUNG CANCER (NSCLC)

      
Application Number US2023075858
Publication Number 2024/232928
Status In Force
Filing Date 2023-10-03
Publication Date 2024-11-14
Owner VENN BIOSCIENCES CORPORATION (USA)
Inventor
  • Pickering, Chad Eagle
  • Xu, Gege

Abstract

Provided herein are methods of diagnosing NSCLC based upon the presence, absence, or amount of biomarkers, such as glycopeptides. Also provided herein are methods of treating NSCLC based upon the presence, absence, or amount of such biomarkers and compositions comprising one or more glycopeptide.

IPC Classes  ?

  • G01N 33/574 - ImmunoassayBiospecific binding assayMaterials therefor for cancer
  • G01N 33/68 - Chemical analysis of biological material, e.g. blood, urineTesting involving biospecific ligand binding methodsImmunological testing involving proteins, peptides or amino acids
  • G06N 3/08 - Learning methods
  • G06N 20/00 - Machine learning
  • G16B 20/00 - ICT specially adapted for functional genomics or proteomics, e.g. genotype-phenotype associations
  • G16B 25/10 - Gene or protein expression profilingExpression-ratio estimation or normalisation
  • G16H 50/20 - ICT specially adapted for medical diagnosis, medical simulation or medical data miningICT specially adapted for detecting, monitoring or modelling epidemics or pandemics for computer-aided diagnosis, e.g. based on medical expert systems
  • G06F 17/18 - Complex mathematical operations for evaluating statistical data

16.

Automated detection of boundaries in mass spectrometry data

      
Application Number 18776470
Grant Number 12456544
Status In Force
Filing Date 2024-07-18
First Publication Date 2024-11-07
Grant Date 2025-10-28
Owner Venn Biosciences Corporation (USA)
Inventor
  • Serie, Daniel
  • Wu, Zhenqin

Abstract

A system and method for automated detection of the presence or absence of a quantity based on intensities expressed in terms of, or derived from frequency time dependent data. According to one example intensities from mass spectrometry are identified using a non-linear mathematical model, such as an artificial neural network trained to find start and stop peaks of an intensity, from which an abundance may be determined.

IPC Classes  ?

  • G16B 40/00 - ICT specially adapted for biostatisticsICT specially adapted for bioinformatics-related machine learning or data mining, e.g. knowledge discovery or pattern finding
  • G16B 5/00 - ICT specially adapted for modelling or simulations in systems biology, e.g. gene-regulatory networks, protein interaction networks or metabolic networks

17.

Automated detection of boundaries in mass spectrometry data

      
Application Number 18515039
Grant Number 12094575
Status In Force
Filing Date 2023-11-20
First Publication Date 2024-08-01
Grant Date 2024-09-17
Owner Venn Biosciences Corporation (USA)
Inventor
  • Serie, Daniel
  • Wu, Zhenqin

Abstract

A system and method for automated detection of the presence or absence of a quantity based on intensities expressed in terms of, or derived from frequency or time dependent data. According to one example intensities from mass spectrometry are identified using a non-linear mathematical model, such as an artificial neural network trained to find start and stop peaks of an intensity, from which an abundance may be determined.

IPC Classes  ?

  • G16B 40/00 - ICT specially adapted for biostatisticsICT specially adapted for bioinformatics-related machine learning or data mining, e.g. knowledge discovery or pattern finding
  • G16B 5/00 - ICT specially adapted for modelling or simulations in systems biology, e.g. gene-regulatory networks, protein interaction networks or metabolic networks

18.

Biomarkers for diagnosing non-alcoholic steatohepatitis (NASH) or hepatocellular carcinoma (HCC)

      
Application Number 18454159
Grant Number 12287342
Status In Force
Filing Date 2023-08-23
First Publication Date 2024-04-11
Grant Date 2025-04-29
Owner Venn Biosciences Corporation (USA)
Inventor
  • Ramachandran, Prasanna
  • Xu, Gege

Abstract

Embodiments described herein generally relate to technologies for analyzing peptide structures for diagnosing and/or treating a disease state advancing through a disease progression. A non-limiting example of a method relating to the technologies described in the subject application may include receiving peptide structure data corresponding to the biological sample obtained from the subject, identifying a peptide structure profile, and diagnosing a disease state within a disease progression. The example may further include generating a diagnosis output relating to the disease state. In at least some cases, the peptide structure profile may include glycosylated peptides, aglycosylated peptides, or both.

IPC Classes  ?

  • G01N 33/68 - Chemical analysis of biological material, e.g. blood, urineTesting involving biospecific ligand binding methodsImmunological testing involving proteins, peptides or amino acids
  • G01N 30/72 - Mass spectrometers
  • G06N 3/08 - Learning methods
  • G16B 20/00 - ICT specially adapted for functional genomics or proteomics, e.g. genotype-phenotype associations
  • G16B 40/20 - Supervised data analysis
  • G01N 30/02 - Column chromatography

19.

DIAGNOSIS OF OVARIAN CANCER USING TARGETED QUANTIFICATION OF SITE-SPECIFIC PROTEIN GLYCOSYLATION

      
Application Number US2023074251
Publication Number 2024/059750
Status In Force
Filing Date 2023-09-14
Publication Date 2024-03-21
Owner VENN BIOSCIENCES CORPORATION (USA)
Inventor
  • Dhar, Chirag
  • Ramachandran, Prasanna
  • Caval, Tomislav

Abstract

A method and system for diagnosing a subject with respect to an ovarian cancer disease state. Peptide structure data corresponding to a biological sample obtained from the subject is received. The peptide structure data is analyzed using a supervised machine learning model to generate a disease indicator that indicates whether biological sample evidences the ovarian cancer disease state based on at least 1 peptide structures selected from a group of peptide structures identified in Table 3B, 3C, or 3D. The group of peptide structures in Table 3B, 3C, or 3D comprises a group of peptide structures associated with the ovarian cancer disease state. A diagnosis output is generated based on the disease indicator.

IPC Classes  ?

  • G01N 33/574 - ImmunoassayBiospecific binding assayMaterials therefor for cancer
  • C07K 14/81 - Protease inhibitors
  • G01N 33/68 - Chemical analysis of biological material, e.g. blood, urineTesting involving biospecific ligand binding methodsImmunological testing involving proteins, peptides or amino acids
  • G06N 3/08 - Learning methods
  • G06N 20/00 - Machine learning
  • G16B 25/10 - Gene or protein expression profilingExpression-ratio estimation or normalisation
  • G16B 40/20 - Supervised data analysis

20.

IDENTIFICATION AND USE OF GLYCOPEPTIDES AS BIOMARKERS FOR DIAGNOSIS AND TREATMENT MONITORING

      
Application Number 18180789
Status Pending
Filing Date 2023-03-08
First Publication Date 2023-10-12
Owner Venn Biosciences Corporation (USA)
Inventor
  • Carrascoso, Aldo Mario Eduardo Silva
  • Bertozzi, Carolyn Ruth
  • Lebrilla, Carlito Bangeles
  • Danan-Leon, Lieza Marie Araullo

Abstract

Provided herein are methods for identifying new biomarkers for various diseases using proteomics, peptidomics, metabolics, proteoglycomics, glvcomics, mass spectrometry and machine learning. The present disclosure also provides glycopeptides as biomarkers for various diseases such as cancer and autoimmune diseases.

IPC Classes  ?

  • G01N 33/68 - Chemical analysis of biological material, e.g. blood, urineTesting involving biospecific ligand binding methodsImmunological testing involving proteins, peptides or amino acids
  • G16B 20/00 - ICT specially adapted for functional genomics or proteomics, e.g. genotype-phenotype associations
  • G16B 40/00 - ICT specially adapted for biostatisticsICT specially adapted for bioinformatics-related machine learning or data mining, e.g. knowledge discovery or pattern finding
  • G01N 33/564 - ImmunoassayBiospecific binding assayMaterials therefor for pre-existing immune complex or autoimmune disease
  • G16B 40/20 - Supervised data analysis
  • G01N 33/574 - ImmunoassayBiospecific binding assayMaterials therefor for cancer
  • G16B 40/10 - Signal processing, e.g. from mass spectrometry [MS] or from PCR

21.

BIOMARKERS FOR DETERMINING A CANCER DISEASE STATE, RESPONSE TO IMMUNO-ONCOLOGY, STAGES OF FIBROSIS IN NON-ALCOHOLIC STEATOHEPATITIS, OR APPLICATION OF AGE OR SEX RELATED BIOMARKER PANEL FOR QUALITY CONTROL

      
Document Number 03244897
Status Pending
Filing Date 2023-04-01
Open to Public Date 2023-10-05
Owner VENN BIOSCIENCES CORPORATION (USA)
Inventor
  • Dhar, Chirag
  • Aiyetan, Paul Oluwaseyi
  • Gandhi, Monil Dilip
  • Mitchell, Alan Nicolas
  • Pickering, Chad Eagle
  • Ramachandran, Prasanna
  • Serie, Daniel
  • Srinivasan, Apoorva
  • Xu, Gege

Abstract

Provided herein are methods, devices, and kits for identifying glycosylated polypeptide biomarkers and signatures for progression of a disease or a condition, such as cancer or NASH, or and response of the disease or condition to a treatment. Also provided herein are: i) methods of generating and analyzing glycosylated polypeptide biomarkers, ii) methods of validating a model using glycosylated polypeptides for predicting the disease or condition or for making treatment recommendation, iii) systems and methods for implementing QC of a cohort of samples by analyzing peptide structure data for each sample using a machine learning model to generate a predicted age and/or sex associated for each sample. The quality control issue may include an error of mislabeled samples or an error from sample preparation, or a systemic measurement or an instrument error.

IPC Classes  ?

  • C07K 7/08 - Linear peptides containing only normal peptide links having 12 to 20 amino acids
  • G01N 30/72 - Mass spectrometers
  • G01N 33/68 - Chemical analysis of biological material, e.g. blood, urineTesting involving biospecific ligand binding methodsImmunological testing involving proteins, peptides or amino acids
  • G06N 3/08 - Learning methods
  • G06N 20/00 - Machine learning
  • G16B 40/10 - Signal processing, e.g. from mass spectrometry [MS] or from PCR
  • G16B 40/20 - Supervised data analysis

22.

BIOMARKERS FOR DETERMINING A CANCER DISEASE STATE, RESPONSE TO IMMUNO-ONCOLOGY, STAGES OF FIBROSIS IN NON-ALCOHOLIC STEATOHEPATITIS, OR APPLICATION OF AGE OR SEX RELATED BIOMARKER PANEL FOR QUALITY CONTROL

      
Application Number US2023065248
Publication Number 2023/193016
Status In Force
Filing Date 2023-04-01
Publication Date 2023-10-05
Owner VENN BIOSCIENCES CORPORATION (USA)
Inventor
  • Dhar, Chirag
  • Aiyetan, Paul, Oluwaseyi
  • Gandhi, Monil, Dilip
  • Mitchell, Alan, Nicolas
  • Pickering, Chad, Eagle
  • Ramachandran, Prasanna
  • Serie, Daniel
  • Srinivasan, Apoorva
  • Xu, Gege

Abstract

Provided herein are methods, devices, and kits for identifying glycosylated polypeptide biomarkers and signatures for progression of a disease or a condition, such as cancer or NASH, or and response of the disease or condition to a treatment. Also provided herein are: i) methods of generating and analyzing glycosylated polypeptide biomarkers, ii) methods of validating a model using glycosylated polypeptides for predicting the disease or condition or for making treatment recommendation, iii) systems and methods for implementing QC of a cohort of samples by analyzing peptide structure data for each sample using a machine learning model to generate a predicted age and/or sex associated for each sample. The quality control issue may include an error of mislabeled samples or an error from sample preparation, or a systemic measurement or an instrument error.

IPC Classes  ?

  • G16B 40/10 - Signal processing, e.g. from mass spectrometry [MS] or from PCR
  • C07K 7/08 - Linear peptides containing only normal peptide links having 12 to 20 amino acids
  • G01N 30/72 - Mass spectrometers
  • G01N 33/68 - Chemical analysis of biological material, e.g. blood, urineTesting involving biospecific ligand binding methodsImmunological testing involving proteins, peptides or amino acids
  • G06N 3/08 - Learning methods
  • G06N 20/00 - Machine learning
  • G16B 40/20 - Supervised data analysis

23.

SAMPLE PREPARATION FOR GLYCOPROTEOMIC ANALYSIS THAT INCLUDES DIAGNOSIS OF DISEASE

      
Application Number US2023063298
Publication Number 2023/164672
Status In Force
Filing Date 2023-02-24
Publication Date 2023-08-31
Owner VENN BIOSCIENCES CORPORATION (USA)
Inventor
  • Aiyetan, Paul Oluwaseyi
  • Campbell, Matthew Peter
  • Cong, Xin
  • Coutre, Garrett Anders
  • Deep, Arshia Bassi
  • Gandhi, Monil Dilip
  • Huang, Hector Han-Li
  • Mitchell, Alan Nicolas
  • Pandza, Kenan
  • Pickering, Chad Eagle
  • Schwarz, Flavio
  • Serie, Daniel
  • Srinivasan, Apoorva
  • Srivastava, Saurabh
  • Tu, Diane Nai-Fan
  • Xu, Gege
  • Yadav, Rao Siddhant
  • Zhou, Bo

Abstract

A method, system, and composition related to the preparation of samples for glycoproteomic analysis is described. The sample preparation process can include a proteolytic digestion step followed by a measurement step of the glycopeptide and peptide amounts in the proteolytic digest using a liquid chromatography-mass spectrometry system. Optionally, the sample preparation process can also include the collection of the sample on an absorbent or bibulous member where the proteins and glycoproteins are later extracted and then digested for glycoproteomic analysis. Glycopeptide and peptide measurements of biological samples were analyzed to provide a diagnosis of a disease such as, for example, ovarian cancer or to assess whether a patient with melanoma is likely or not likely to benefit from checkpoint inhibitor therapy.

IPC Classes  ?

  • G01N 33/68 - Chemical analysis of biological material, e.g. blood, urineTesting involving biospecific ligand binding methodsImmunological testing involving proteins, peptides or amino acids
  • A61P 35/00 - Antineoplastic agents

24.

SAMPLE PREPARATION FOR GLYCOPROTEOMIC ANALYSIS THAT INCLUDES DIAGNOSIS OF DISEASE

      
Document Number 03247328
Status Pending
Filing Date 2023-02-24
Open to Public Date 2023-08-31
Owner VENN BIOSCIENCES CORPORATION (USA)
Inventor
  • Aiyetan, Paul Oluwaseyi
  • Campbell, Matthew Peter
  • Cong, Xin
  • Coutre, Garrett Anders
  • Deep, Arshia Bassi
  • Gandhi, Monil Dilip
  • Huang, Hector Han-Li
  • Mitchell, Alan Nicolas
  • Pandza, Kenan
  • Pickering, Chad Eagle
  • Schwarz, Flavio
  • Serie, Daniel
  • Srinivasan, Apoorva
  • Srivastava, Saurabh
  • Tu, Diane Nai-Fan
  • Xu, Gege
  • Yadav, Rao Siddhant
  • Zhou, Bo

Abstract

A method, system, and composition related to the preparation of samples for glycoproteomic analysis is described. The sample preparation process can include a proteolytic digestion step followed by a measurement step of the glycopeptide and peptide amounts in the proteolytic digest using a liquid chromatography-mass spectrometry system. Optionally, the sample preparation process can also include the collection of the sample on an absorbent or bibulous member where the proteins and glycoproteins are later extracted and then digested for glycoproteomic analysis. Glycopeptide and peptide measurements of biological samples were analyzed to provide a diagnosis of a disease such as, for example, ovarian cancer or to assess whether a patient with melanoma is likely or not likely to benefit from checkpoint inhibitor therapy.

IPC Classes  ?

  • G01N 33/68 - Chemical analysis of biological material, e.g. blood, urineTesting involving biospecific ligand binding methodsImmunological testing involving proteins, peptides or amino acids

25.

DIAGNOSIS OF COLORECTAL CANCER USING TARGETED QUANTIFICATION OF SITE-SPECIFIC PROTEIN GLYCOSYLATION

      
Document Number 03243460
Status Pending
Filing Date 2023-02-14
Open to Public Date 2023-08-17
Owner VENN BIOSCIENCES CORPORATION (USA)
Inventor
  • Serie, Daniel
  • Desai, Khushbu Yatin
  • Hommes, Daniel Willem
  • Mitchell, Alan Nicolas
  • Wong, Maurice Yu
  • Lui, Mingqi
  • Zhou, Bo

Abstract

The present disclosure encompasses systems, methods, and compositions for diagnosing a subject for a high-grade advanced pre-malignant lesions or colorectal cancer (CRC) disease state by ascertaining the presence of certain one or more glycosylated or aglycosylated peptides in liquid biopsy samples from the subject. Specific embodiments encompass methods of measuring certain one or more glycosylated or aglycosylated peptides in liquid biopsy samples from subjects known to have or suspected of having a high-grade advanced pre-malignant lesions or CRC disease state or subjects undergoing routine health care maintenance for possible presence of a high-grade advanced pre-malignant lesions or CRC disease state. The disclosure provides systems, methods, and compositions to identify subjects at-risk for CRC or high-grade advanced pre-malignant lesions and increases subject colonoscopy compliance, in specific embodiments.

IPC Classes  ?

  • G16B 20/00 - ICT specially adapted for functional genomics or proteomics, e.g. genotype-phenotype associations
  • G16H 50/20 - ICT specially adapted for medical diagnosis, medical simulation or medical data miningICT specially adapted for detecting, monitoring or modelling epidemics or pandemics for computer-aided diagnosis, e.g. based on medical expert systems

26.

DIAGNOSIS OF COLORECTAL CANCER USING TARGETED QUANTIFICATION OF SITE-SPECIFIC PROTEIN GLYCOSYLATION

      
Application Number US2023062602
Publication Number 2023/154967
Status In Force
Filing Date 2023-02-14
Publication Date 2023-08-17
Owner VENN BIOSCIENCES CORPORATION (USA)
Inventor
  • Serie, Daniel
  • Desai, Khushbu Yatin
  • Hommes, Daniel Willem
  • Mitchell, Alan Nicolas
  • Wong, Maurice Yu
  • Lui, Mingqi
  • Zhou, Bo

Abstract

The present disclosure encompasses systems, methods, and compositions for diagnosing a subject for a high-grade advanced pre-malignant lesions or colorectal cancer (CRC) disease state by ascertaining the presence of certain one or more glycosylated or aglycosylated peptides in liquid biopsy samples from the subject. Specific embodiments encompass methods of measuring certain one or more glycosylated or aglycosylated peptides in liquid biopsy samples from subjects known to have or suspected of having a high-grade advanced pre-malignant lesions or CRC disease state or subjects undergoing routine health care maintenance for possible presence of a high-grade advanced pre-malignant lesions or CRC disease state. The disclosure provides systems, methods, and compositions to identify subjects at-risk for CRC or high-grade advanced pre-malignant lesions and increases subject colonoscopy compliance, in specific embodiments.

IPC Classes  ?

  • G16H 50/20 - ICT specially adapted for medical diagnosis, medical simulation or medical data miningICT specially adapted for detecting, monitoring or modelling epidemics or pandemics for computer-aided diagnosis, e.g. based on medical expert systems
  • G16B 20/00 - ICT specially adapted for functional genomics or proteomics, e.g. genotype-phenotype associations

27.

DE NOVO GLYCOPEPTIDE SEQUENCING

      
Document Number 03243725
Status Pending
Filing Date 2023-02-14
Open to Public Date 2023-08-17
Owner VENN BIOSCIENCES CORPORATION (USA)
Inventor
  • Liang, Zhewei
  • Liu, Mingqi

Abstract

A system and method of training a machine learning model to predict glycopeptide fragmentation patterns and retention times. Spectral data for a plurality of fragments of a glycopeptide structure is received. Glycan fragment composition data is generated using the spectral data. The glycan fragment composition data identifies a plurality of composition codes and a plurality of total intensities for a plurality of glycan fragments identified from the plurality of fragments using the spectral data. A linear glycan sequence is created using the glycan fragment composition data. A training input is formed for a machine learning model using the linear glycan sequence. The machine learning model is trained using the training input to predict a fragmentation pattern and a retention time for the glycopeptide structure.

IPC Classes  ?

  • G01N 30/72 - Mass spectrometers
  • G01N 30/86 - Signal analysis
  • G01N 33/68 - Chemical analysis of biological material, e.g. blood, urineTesting involving biospecific ligand binding methodsImmunological testing involving proteins, peptides or amino acids
  • G06N 20/00 - Machine learning

28.

DE NOVO GLYCOPEPTIDE SEQUENCING

      
Application Number US2023062542
Publication Number 2023/154943
Status In Force
Filing Date 2023-02-14
Publication Date 2023-08-17
Owner VENN BIOSCIENCES CORPORATION (USA)
Inventor
  • Liang, Zhewei
  • Liu, Mingqi

Abstract

A system and method of training a machine learning model to predict glycopeptide fragmentation patterns and retention times. Spectral data for a plurality of fragments of a glycopeptide structure is received. Glycan fragment composition data is generated using the spectral data. The glycan fragment composition data identifies a plurality of composition codes and a plurality of total intensities for a plurality of glycan fragments identified from the plurality of fragments using the spectral data. A linear glycan sequence is created using the glycan fragment composition data. A training input is formed for a machine learning model using the linear glycan sequence. The machine learning model is trained using the training input to predict a fragmentation pattern and a retention time for the glycopeptide structure.

IPC Classes  ?

  • G01N 33/68 - Chemical analysis of biological material, e.g. blood, urineTesting involving biospecific ligand binding methodsImmunological testing involving proteins, peptides or amino acids
  • G06N 20/00 - Machine learning
  • G01N 30/72 - Mass spectrometers
  • G01N 30/86 - Signal analysis

29.

SYSTEMS AND METHODS FOR GLYCOMOLECULE IDENTIFICATION, SEARCH AND COMPARING AND ANALYZING THE RESULTS THEREOF

      
Application Number US2023062001
Publication Number 2023/150729
Status In Force
Filing Date 2023-02-03
Publication Date 2023-08-10
Owner VENN BIOSCIENCES CORPORATION (USA)
Inventor
  • Chen, Shao-Yung
  • Lin, Chi-Hung
  • Gandhi, Monil Dilip
  • Shipman, Iii, Richard David
  • Walton, Kelly F.

Abstract

Set forth herein is a system and method for converting glycan representations between different platform-specific glycan formats via a universal glycan format. The use of a universal glycan format for conversion between different platform-specific glycan formats, such as different glycomolecule search engine-specific formats, can reduce the number of conversion rule sets required to convert glycan data formats among the different platform-specific glycan formats. The universal glycan format can also improve readability, and simplify analysis of glycomolecules. Also provided is a system and method for comparing or analyzing glycomolecule search results from different glycomolecule search engines and a user interface, system and method for curating a consensus list of glycomolecules (e.g., glycopeptides, glycoDNA, glycoRNA, glycolipids) identified in a biological sample on a user interface from glycomolecule search results sets from multiple glycomolecule search engines, where the glycomolecule search results sets may include conflicting identifications between the glycomolecule search engines.

IPC Classes  ?

  • G16B 20/00 - ICT specially adapted for functional genomics or proteomics, e.g. genotype-phenotype associations
  • G16B 50/00 - ICT programming tools or database systems specially adapted for bioinformatics
  • G16C 20/90 - Programming languagesComputing architecturesDatabase systemsData warehousing
  • C12P 21/00 - Preparation of peptides or proteins

30.

BIOMARKERS FOR DIAGNOSING PREECLAMPSIA

      
Document Number 03241918
Status Pending
Filing Date 2023-01-31
Open to Public Date 2023-08-03
Owner VENN BIOSCIENCES CORPORATION (USA)
Inventor
  • Huang, Hector Han-Li
  • Ramachandran, Prasanna
  • Lin, Chi-Hung

Abstract

Provided herein are methods of diagnosing preeclampsia based upon the presence, absence, or amount of biomarkers, such as glycopeptides. Also provided herein are methods of treating preeclampsia based upon the presence, absence, or amount of such biomarkers and compositions comprising one or more glycopeptide. Specifically the diagnosis and treatment of preeclampsia utilizes computer-generated analyses of quantitative data to classify correlations between marker profiles and disease states.

IPC Classes  ?

  • C07K 14/195 - Peptides having more than 20 amino acidsGastrinsSomatostatinsMelanotropinsDerivatives thereof from bacteria
  • G01N 33/564 - ImmunoassayBiospecific binding assayMaterials therefor for pre-existing immune complex or autoimmune disease
  • G01N 33/68 - Chemical analysis of biological material, e.g. blood, urineTesting involving biospecific ligand binding methodsImmunological testing involving proteins, peptides or amino acids

31.

BIOMARKERS FOR DIAGNOSING PREECLAMPSIA

      
Application Number US2023061692
Publication Number 2023/147601
Status In Force
Filing Date 2023-01-31
Publication Date 2023-08-03
Owner VENN BIOSCIENCES CORPORATION (USA)
Inventor
  • Huang, Hector Han-Li
  • Ramachandran, Prasanna
  • Lin, Chi-Hung

Abstract

Provided herein are methods of diagnosing preeclampsia based upon the presence, absence, or amount of biomarkers, such as glycopeptides. Also provided herein are methods of treating preeclampsia based upon the presence, absence, or amount of such biomarkers and compositions comprising one or more glycopeptide. Specifically the diagnosis and treatment of preeclampsia utilizes computer-generated analyses of quantitative data to classify correlations between marker profiles and disease states.

IPC Classes  ?

  • G01N 33/68 - Chemical analysis of biological material, e.g. blood, urineTesting involving biospecific ligand binding methodsImmunological testing involving proteins, peptides or amino acids
  • C07K 14/195 - Peptides having more than 20 amino acidsGastrinsSomatostatinsMelanotropinsDerivatives thereof from bacteria
  • G01N 33/564 - ImmunoassayBiospecific binding assayMaterials therefor for pre-existing immune complex or autoimmune disease

32.

DIAGNOSIS OF PANCREATIC CANCER USING TARGETED QUANTIFICATION OF SITE-SPECIFIC PROTEIN GLYCOSYLATION

      
Application Number US2022080692
Publication Number 2023/102443
Status In Force
Filing Date 2022-11-30
Publication Date 2023-06-08
Owner VENN BIOSCIENCES CORPORATION (USA)
Inventor
  • Serie, Daniel
  • Pickering, Chad Eagle
  • Xu, Gege

Abstract

A method and system for diagnosing a subject with respect to a pancreatic cancer disease state. Peptide structure data corresponding to a biological sample obtained from the subject is received. The peptide structure data is analyzed using a supervised machine learning model to generate a disease indicator that indicates whether biological sample evidences the PC disease state based on at least 3 peptide structures selected from a group of peptide structures of Group I identified in Table 1 or of Group II of Table 8. The group of peptide structures in Table 1 or Table 8 comprises a group of peptide structures associated with the PC disease state. The group of peptide structures is listed in Table 1 with respect to relative significance to the disease indicator. A diagnosis output is generated based on the disease indicator

IPC Classes  ?

  • G16B 40/20 - Supervised data analysis
  • G16B 20/00 - ICT specially adapted for functional genomics or proteomics, e.g. genotype-phenotype associations
  • G16B 25/10 - Gene or protein expression profilingExpression-ratio estimation or normalisation
  • G16H 50/20 - ICT specially adapted for medical diagnosis, medical simulation or medical data miningICT specially adapted for detecting, monitoring or modelling epidemics or pandemics for computer-aided diagnosis, e.g. based on medical expert systems
  • G01N 33/68 - Chemical analysis of biological material, e.g. blood, urineTesting involving biospecific ligand binding methodsImmunological testing involving proteins, peptides or amino acids

33.

DIAGNOSIS OF PANCREATIC CANCER USING TARGETED QUANTIFICATION OF SITE-SPECIFIC PROTEIN GLYCOSYLATION

      
Document Number 03239488
Status Pending
Filing Date 2022-11-30
Open to Public Date 2023-06-08
Owner VENN BIOSCIENCES CORPORATION (USA)
Inventor
  • Serie, Daniel
  • Pickering, Chad Eagle
  • Xu, Gege

Abstract

A method and system for diagnosing a subject with respect to a pancreatic cancer disease state. Peptide structure data corresponding to a biological sample obtained from the subject is received. The peptide structure data is analyzed using a supervised machine learning model to generate a disease indicator that indicates whether biological sample evidences the PC disease state based on at least 3 peptide structures selected from a group of peptide structures of Group I identified in Table 1 or of Group II of Table 8. The group of peptide structures in Table 1 or Table 8 comprises a group of peptide structures associated with the PC disease state. The group of peptide structures is listed in Table 1 with respect to relative significance to the disease indicator. A diagnosis output is generated based on the disease indicator

IPC Classes  ?

  • G16B 25/10 - Gene or protein expression profilingExpression-ratio estimation or normalisation
  • G16B 40/20 - Supervised data analysis
  • G16H 50/20 - ICT specially adapted for medical diagnosis, medical simulation or medical data miningICT specially adapted for detecting, monitoring or modelling epidemics or pandemics for computer-aided diagnosis, e.g. based on medical expert systems

34.

PREDICTING SARCOMA TREATMENT RESPONSE USING TARGETED QUANTIFICATION OF SITE-SPECIFIC PROTEIN GLYCOSYLATION

      
Application Number IB2022061293
Publication Number 2023/089597
Status In Force
Filing Date 2022-11-22
Publication Date 2023-05-25
Owner VENN BIOSCIENCES CORPORATION (USA)
Inventor
  • Peckering, Chad Eagle
  • Serie, Daniel
  • Xu, Gege

Abstract

A method and system for managing a treatment for a subject diagnosed with a sarcoma disease state. Peptide structure data corresponding to a biological sample obtained from the subject is received. A response score that predicts a likelihood of responsiveness to the treatment is computed using quantification data identified from the peptide structure data for a set of peptide structures. The set of peptide structures includes at least one peptide structure identified from a plurality of peptide structures listed in Table 1. The plurality of peptide structures is listed in Table 1 with respect to relative significance to a survival for the sarcoma disease state. A treatment response output is generated based on the response score.

IPC Classes  ?

  • A61P 35/00 - Antineoplastic agents
  • C12Q 1/6886 - Nucleic acid products used in the analysis of nucleic acids, e.g. primers or probes for diseases caused by alterations of genetic material for cancer
  • G01N 33/574 - ImmunoassayBiospecific binding assayMaterials therefor for cancer
  • G01N 33/68 - Chemical analysis of biological material, e.g. blood, urineTesting involving biospecific ligand binding methodsImmunological testing involving proteins, peptides or amino acids
  • G06F 16/28 - Databases characterised by their database models, e.g. relational or object models
  • G06F 17/18 - Complex mathematical operations for evaluating statistical data
  • G16B 15/00 - ICT specially adapted for analysing two-dimensional or three-dimensional molecular structures, e.g. structural or functional relations or structure alignment
  • G16B 40/10 - Signal processing, e.g. from mass spectrometry [MS] or from PCR

35.

AI-DRIVEN GLYCOPROTEOMICS LIQUID BIOPSY IN NASOPHARYNGEAL CARCINOMA

      
Application Number MY2022050100
Publication Number 2023/075591
Status In Force
Filing Date 2022-10-28
Publication Date 2023-05-04
Owner VENN BIOSCIENCES CORPORATION (USA)
Inventor
  • Siang, Lee Cheng
  • Serie, Daniel
  • Isla Rios, Karina
  • Aye, Thin Thin

Abstract

A method and system for diagnosing a subject with respect to a nasopharyngeal carcinoma (NPC) disease state. Peptide structure data corresponding to a biological sample obtained from the subject is received. The peptide structure data is analyzed using a supervised machine learning model to generate a disease indicator that indicates whether biological sample evidences the NPC disease state based on at least 3 peptide structures selected from a group of peptide structures identified in Table 1A and/or 1B. The group of peptide structures in Table 1A and/or 1B comprises a group of peptide structures associated with the NPC disease state. The group of peptide structures is listed in Table 1A and/or 1B with respect to relative significance to the disease indicator. A diagnosis output is generated based on the disease indicator.

IPC Classes  ?

  • G01N 33/574 - ImmunoassayBiospecific binding assayMaterials therefor for cancer
  • G01N 33/68 - Chemical analysis of biological material, e.g. blood, urineTesting involving biospecific ligand binding methodsImmunological testing involving proteins, peptides or amino acids

36.

Biomarkers for clear cell renal cell carcinoma

      
Application Number 17910768
Grant Number 12644892
Status In Force
Filing Date 2021-03-12
First Publication Date 2023-04-13
Grant Date 2026-06-02
Owner Venn Biosciences Corporation (USA)
Inventor
  • Serie, Daniel
  • Lindpaintner, Klaus

Abstract

Set forth herein are methods useful for identifying disease biomarkers, particularly for diseases such as clear cell renal cell carcinoma (ccRCC). In some examples, the methods set forth herein are useful for monitoring the prognosis of patients having disease such as ccRCC.

IPC Classes  ?

  • G01N 33/68 - Chemical analysis of biological material, e.g. blood, urineTesting involving biospecific ligand binding methodsImmunological testing involving proteins, peptides or amino acids
  • C12Q 1/6872 - Methods for sequencing involving mass spectrometry
  • G01N 33/57525 -

37.

SYSTEMS AND METHODS FOR GLYCOPEPTIDE CONCENTRATION DETERMINATION, NORMALIZED ABUNDANCE DETERMINATION, AND LC/MS RUN SAMPLE PREPARATION

      
Document Number 03231185
Status Pending
Filing Date 2022-09-30
Open to Public Date 2023-04-06
Owner VENN BIOSCIENCES CORPORATION (USA)
Inventor
  • Serie, Daniel
  • Xu, Gege

Abstract

Embodiments described herein generally relate to systems and methods for processing mass spectrometry samples. Aspects of the disclosure include systems and methods for processing samples. Additionally, embodiments of the disclosure can also include systems and methods for sample analysis. Various embodiments include data analysis systems and methods for comparing data across samples and sample runs. Data analysis systems can run normalization methods for normalizing raw abundance mass spectrometry data. In some aspects, the normalized data can be used as input for predictive models.

IPC Classes  ?

  • C12Q 1/6876 - Nucleic acid products used in the analysis of nucleic acids, e.g. primers or probes

38.

Systems and methods for glycopeptide concentration determination, normalized abundance determination, and LC/MS run sample preparation

      
Application Number 17937170
Grant Number 12578346
Status In Force
Filing Date 2022-09-30
First Publication Date 2023-04-06
Grant Date 2026-03-17
Owner VENN BIOSCIENCES CORPORATION (USA)
Inventor
  • Serie, Daniel
  • Xu, Gege

Abstract

Embodiments described herein generally relate to systems and methods for processing mass spectrometry samples. Aspects of the disclosure include systems and methods for processing samples. Additionally, embodiments of the disclosure can also include systems and methods for sample analysis. Various embodiments include data analysis systems and methods for comparing data across samples and sample runs. Data analysis systems can run normalization methods for normalizing raw abundance mass spectrometry data. In some aspects, the normalized data can be used as input for predictive models.

IPC Classes  ?

  • G01N 33/68 - Chemical analysis of biological material, e.g. blood, urineTesting involving biospecific ligand binding methodsImmunological testing involving proteins, peptides or amino acids

39.

SYSTEMS AND METHODS FOR GLYCOPEPTIDE CONCENTRATION DETERMINATION, NORMALIZED ABUNDANCE DETERMINATION, AND LC/MS RUN SAMPLE PREPARATION

      
Application Number US2022077354
Publication Number 2023/056424
Status In Force
Filing Date 2022-09-30
Publication Date 2023-04-06
Owner VENN BIOSCIENCES CORPORATION (USA)
Inventor
  • Serie, Daniel
  • Xu, Gege

Abstract

Embodiments described herein generally relate to systems and methods for processing mass spectrometry samples. Aspects of the disclosure include systems and methods for processing samples. Additionally, embodiments of the disclosure can also include systems and methods for sample analysis. Various embodiments include data analysis systems and methods for comparing data across samples and sample runs. Data analysis systems can run normalization methods for normalizing raw abundance mass spectrometry data. In some aspects, the normalized data can be used as input for predictive models.

IPC Classes  ?

  • C12Q 1/6876 - Nucleic acid products used in the analysis of nucleic acids, e.g. primers or probes
  • G01N 33/68 - Chemical analysis of biological material, e.g. blood, urineTesting involving biospecific ligand binding methodsImmunological testing involving proteins, peptides or amino acids

40.

BIOMARKERS FOR DIAGNOSING OVARIAN CANCER

      
Application Number 17759714
Status Pending
Filing Date 2021-01-29
First Publication Date 2023-03-02
Owner Venn Biosciences Corporation (USA)
Inventor
  • Xu, Gege
  • Shen, Ling
  • Xu, Hui
  • Serie, Daniel

Abstract

Set forth herein are glycopeptide biomarkers useful for diagnosing diseases and conditions, such as but not limited to, cancer (e.g., ovarian), an autoimmune disease, fibrosis and aging conditions. Also set forth herein are methods of generating glycopeptide biomarkers and methods of analyzing glycopeptides using mass spectroscopy. Also set forth herein are methods of analyzing glycopeptides using machine learning algorithms.

IPC Classes  ?

  • G01N 33/574 - ImmunoassayBiospecific binding assayMaterials therefor for cancer
  • G01N 33/68 - Chemical analysis of biological material, e.g. blood, urineTesting involving biospecific ligand binding methodsImmunological testing involving proteins, peptides or amino acids
  • G16B 40/10 - Signal processing, e.g. from mass spectrometry [MS] or from PCR

41.

BIOMARKERS FOR DIAGNOSING OVARIAN CANCER

      
Application Number 17747851
Status Pending
Filing Date 2022-05-18
First Publication Date 2023-02-23
Owner Venn Biosciences Corporation (USA)
Inventor
  • Serie, Daniel
  • Pickering, Chad Eagle
  • Ramachandran, Prasanna
  • Xu, Gege

Abstract

Set forth herein are glycopeptide biomarkers useful for diagnosing diseases and conditions, such as ovarian cancer. Also set forth herein are methods of generating glycopeptide biomarkers and methods of analyzing glycopeptides using mass spectroscopy. Also set forth herein are methods of analyzing glycopeptides using machine learning systems.

IPC Classes  ?

  • G16B 25/10 - Gene or protein expression profilingExpression-ratio estimation or normalisation
  • G16B 40/20 - Supervised data analysis
  • G16H 50/20 - ICT specially adapted for medical diagnosis, medical simulation or medical data miningICT specially adapted for detecting, monitoring or modelling epidemics or pandemics for computer-aided diagnosis, e.g. based on medical expert systems

42.

DETECTION OF PEPTIDE STRUCTURES FOR DIAGNOSING AND TREATING SEPSIS AND COVID

      
Application Number US2022074637
Publication Number 2023/019093
Status In Force
Filing Date 2022-08-05
Publication Date 2023-02-16
Owner VENN BIOSCIENCES CORPORATION (USA)
Inventor
  • Pickering, Chad Eagle
  • Xu, Gege
  • Huang, Hector Han-Li
  • Cong, Xin

Abstract

Embodiments disclosed herein generally relate to technologies for evaluating a biological sample obtained from a subject with respect to a sepsis state or coronavirus disease (COVID). Some methods relating to the technologies can include receiving peptide structure data corresponding to the biological sample obtained from the subject, identifying a peptide structure profile for the biological sample using the peptide structure data, and computing a disease indicator using the peptide structure profile and a model. The disease indicator can indicate whether the biological sample is positive for the sepsis state. The disease indicator can indicate whether the biological sample is positive for COVID. The peptide structure profile can comprise quantification data for a set of peptide structures associated with the sepsis state. The peptide structure profile can include peptides that are glycosylated, aglycosylated, or both. An additional step in the method can comprise generating at least one of a diagnosis output or a treatment output based on the disease indicator.

IPC Classes  ?

  • G01N 33/68 - Chemical analysis of biological material, e.g. blood, urineTesting involving biospecific ligand binding methodsImmunological testing involving proteins, peptides or amino acids
  • G16B 25/10 - Gene or protein expression profilingExpression-ratio estimation or normalisation
  • G16B 40/20 - Supervised data analysis
  • A61K 31/53 - Heterocyclic compounds having nitrogen as a ring hetero atom, e.g. guanethidine or rifamycins having six-membered rings with three nitrogens as the only ring hetero atoms, e.g. chlorazanil, melamine

43.

BIOMARKERS FOR DIAGNOSING COLORECTAL CANCER OR ADVANCED ADENOMA

      
Application Number US2022074482
Publication Number 2023/015215
Status In Force
Filing Date 2022-08-03
Publication Date 2023-02-09
Owner VENN BIOSCIENCES CORPORATION (USA)
Inventor
  • Serie, Daniel
  • Lindpaintner, Klaus

Abstract

Set forth herein are glycopeptide biomarkers useful for diagnosing diseases and conditions, such as colorectal cancer or advanced adenoma. Also set forth herein are methods of generating glycopeptide biomarkers and methods of analyzing glycopeptides using mass spectroscopy. Also set forth herein are methods of analyzing glycopeptides using machine learning algorithms.

IPC Classes  ?

  • G01N 33/68 - Chemical analysis of biological material, e.g. blood, urineTesting involving biospecific ligand binding methodsImmunological testing involving proteins, peptides or amino acids
  • G16B 20/00 - ICT specially adapted for functional genomics or proteomics, e.g. genotype-phenotype associations
  • G16B 40/00 - ICT specially adapted for biostatisticsICT specially adapted for bioinformatics-related machine learning or data mining, e.g. knowledge discovery or pattern finding
  • G16B 40/10 - Signal processing, e.g. from mass spectrometry [MS] or from PCR
  • G16B 40/20 - Supervised data analysis

44.

BIOMARKERS FOR DIAGNOSING COLORECTAL CANCER OR ADVANCED ADENOMA

      
Document Number 03227374
Status Pending
Filing Date 2022-08-03
Open to Public Date 2023-02-09
Owner VENN BIOSCIENCES CORPORATION (USA)
Inventor
  • Serie, Daniel
  • Lindpaintner, Klaus

Abstract

Set forth herein are glycopeptide biomarkers useful for diagnosing diseases and conditions, such as colorectal cancer or advanced adenoma. Also set forth herein are methods of generating glycopeptide biomarkers and methods of analyzing glycopeptides using mass spectroscopy. Also set forth herein are methods of analyzing glycopeptides using machine learning algorithms.

IPC Classes  ?

  • G01N 33/68 - Chemical analysis of biological material, e.g. blood, urineTesting involving biospecific ligand binding methodsImmunological testing involving proteins, peptides or amino acids
  • G16B 20/00 - ICT specially adapted for functional genomics or proteomics, e.g. genotype-phenotype associations
  • G16B 40/00 - ICT specially adapted for biostatisticsICT specially adapted for bioinformatics-related machine learning or data mining, e.g. knowledge discovery or pattern finding
  • G16B 40/10 - Signal processing, e.g. from mass spectrometry [MS] or from PCR
  • G16B 40/20 - Supervised data analysis

45.

GLYCOVISION

      
Serial Number 97741761
Status Registered
Filing Date 2023-01-04
Registration Date 2025-07-22
Owner Venn Biosciences Corporation ()
NICE Classes  ? 42 - Scientific, technological and industrial services, research and design

Goods & Services

Scientific and medical research services; scientific research, namely, identifying biomarkers for specific diseases; scientific research analysis services for blood and other bodily fluids, specifically, blood, bodily fluid, and biological specimen analysis services; scientific, technological, and medical research and data analysis services in the nature of bioanalytical testing services and biomarker discovery services; scientific and medical research in the fields of oncology, mass spectrometry, glycoproteomics, biomarker discovery; scientific, technological, and data analysis services, namely, glycoproteomic research, analysis services in the nature of protein, and a glycoproteomic solution featuring artificial intelligence; scientific and medical laboratory services; medical research services via collecting, analyzing, and reporting glycoproteomic data for blood, bodily fluids, and other biological specimens

46.

GLYCOKNOW

      
Serial Number 97703985
Status Pending
Filing Date 2022-12-05
Owner Venn Biosciences Corporation ()
NICE Classes  ? 44 - Medical, veterinary, hygienic and cosmetic services; agriculture, horticulture and forestry services

Goods & Services

Medical testing, monitoring, and reporting services for diagnostic, prognostic, treatment, or disease management purposes and medical screening; medical testing, monitoring, and reporting services for cancer for diagnostic, prognostic, treatment, or disease management purposes and medical screening services for cancer

47.

BIOMARKERS FOR DIAGNOSING OVARIAN CANCER

      
Document Number 03219354
Status Pending
Filing Date 2022-05-18
Open to Public Date 2022-11-24
Owner VENN BIOSCIENCES CORPORATION (USA)
Inventor
  • Serie, Daniel
  • Pickering, Chad Eagle
  • Ramachandran, Prasanna
  • Xu, Gege

Abstract

Set forth herein are glycopeptide biomarkers useful for diagnosing diseases and conditions, such as ovarian cancer. Also set forth herein are methods of generating glycopeptide biomarkers and methods of analyzing glycopeptides using mass spectroscopy. Also set forth herein are methods of analyzing glycopeptides using machine learning systems.

IPC Classes  ?

  • G16B 20/00 - ICT specially adapted for functional genomics or proteomics, e.g. genotype-phenotype associations
  • G16H 50/20 - ICT specially adapted for medical diagnosis, medical simulation or medical data miningICT specially adapted for detecting, monitoring or modelling epidemics or pandemics for computer-aided diagnosis, e.g. based on medical expert systems

48.

BIOMARKERS FOR DIAGNOSING OVARIAN CANCER

      
Application Number US2022072395
Publication Number 2022/246416
Status In Force
Filing Date 2022-05-18
Publication Date 2022-11-24
Owner VENN BIOSCIENCES CORPORATION (USA)
Inventor
  • Serie, Daniel
  • Pickering, Chad Eagle
  • Ramachandran, Prasanna
  • Xu, Gege

Abstract

Set forth herein are glycopeptide biomarkers useful for diagnosing diseases and conditions, such as ovarian cancer. Also set forth herein are methods of generating glycopeptide biomarkers and methods of analyzing glycopeptides using mass spectroscopy. Also set forth herein are methods of analyzing glycopeptides using machine learning systems.

IPC Classes  ?

  • G01N 33/574 - ImmunoassayBiospecific binding assayMaterials therefor for cancer
  • G16B 20/00 - ICT specially adapted for functional genomics or proteomics, e.g. genotype-phenotype associations
  • G16H 50/20 - ICT specially adapted for medical diagnosis, medical simulation or medical data miningICT specially adapted for detecting, monitoring or modelling epidemics or pandemics for computer-aided diagnosis, e.g. based on medical expert systems

49.

BIOMARKERS FOR DETERMINING AN IMMUNO-ONOCOLOGY RESPONSE

      
Application Number 17688788
Status Pending
Filing Date 2022-03-07
First Publication Date 2022-09-29
Owner VENN BIOSCIENCES CORPORATION (USA)
Inventor
  • Serie, Daniel
  • Pickering, Chad Eagle
  • Mitchell, Alan Nicolas
  • Xu, Gege
  • Lindpainter, Klaus

Abstract

Provided herein are methods, devices, and kits for identifying glycosylated polypeptide biomarkers and signatures for progression of a disease or a condition, such as cancer, or and response of the disease or condition to a treatment, such as treatment with immune checkpoint blockade for cancer. Provided herein are methods of generating glycosylated polypeptide biomarkers and methods of analyzing glycosylated polypeptides using mass spectrometry. Provided herein are methods of validating a model using glycosylated polypeptides for predicting the disease or condition or for making treatment recommendation.

IPC Classes  ?

  • G16H 20/40 - ICT specially adapted for therapies or health-improving plans, e.g. for handling prescriptions, for steering therapy or for monitoring patient compliance relating to mechanical, radiation or invasive therapies, e.g. surgery, laser therapy, dialysis or acupuncture
  • G16B 15/00 - ICT specially adapted for analysing two-dimensional or three-dimensional molecular structures, e.g. structural or functional relations or structure alignment
  • G16H 10/40 - ICT specially adapted for the handling or processing of patient-related medical or healthcare data for data related to laboratory analysis, e.g. patient specimen analysis

50.

BIOMARKERS FOR DETERMINING AN IMMUNO-ONCOLOGY RESPONSE

      
Document Number 03208429
Status Pending
Filing Date 2022-03-07
Open to Public Date 2022-09-15
Owner VENN BIOSCIENCES CORPORATION (USA)
Inventor
  • Serie, Daniel
  • Lindpaintner, Klaus
  • Xu, Gege
  • Mitchell, Alan Nicolas
  • Pickering, Chad Eagle
  • Srinivasan, Apoorva
  • Wong, Maurice Yu

Abstract

Provided herein are methods, devices, and kits for identifying glycosylated polypeptide biomarkers and signatures for progression of a disease or a condition, such as cancer, or and response of the disease or condition to a treatment, such as treatment with immune checkpoint blockade for cancer. Provided herein are methods of generating glycosylated polypeptide biomarkers and methods of analyzing glycosylated polypeptides using mass spectrometry. Provided herein are methods of validating a model using glycosylated polypeptides for predicting the disease or condition or for making treatment recommendation.

IPC Classes  ?

  • A61K 39/395 - AntibodiesImmunoglobulinsImmune serum, e.g. antilymphocytic serum
  • C07K 9/00 - Peptides having up to 20 amino acids, containing saccharide radicals and having a fully defined sequenceDerivatives thereof
  • C07K 14/47 - Peptides having more than 20 amino acidsGastrinsSomatostatinsMelanotropinsDerivatives thereof from animalsPeptides having more than 20 amino acidsGastrinsSomatostatinsMelanotropinsDerivatives thereof from humans from vertebrates from mammals
  • C12Q 1/37 - Measuring or testing processes involving enzymes, nucleic acids or microorganismsCompositions thereforProcesses of preparing such compositions involving hydrolase involving peptidase or proteinase
  • C40B 30/10 - Methods of screening libraries by measuring physical properties, e.g. mass
  • C40B 40/10 - Libraries containing peptides or polypeptides, or derivatives thereof
  • G01N 33/68 - Chemical analysis of biological material, e.g. blood, urineTesting involving biospecific ligand binding methodsImmunological testing involving proteins, peptides or amino acids
  • G16B 15/30 - Drug targeting using structural dataDocking or binding prediction
  • G16B 25/10 - Gene or protein expression profilingExpression-ratio estimation or normalisation
  • G16B 40/00 - ICT specially adapted for biostatisticsICT specially adapted for bioinformatics-related machine learning or data mining, e.g. knowledge discovery or pattern finding
  • G16H 20/10 - ICT specially adapted for therapies or health-improving plans, e.g. for handling prescriptions, for steering therapy or for monitoring patient compliance relating to drugs or medications, e.g. for ensuring correct administration to patients

51.

BIOMARKERS FOR DETERMINING AN IMMUNO-ONCOLOGY RESPONSE

      
Application Number US2022071010
Publication Number 2022/192857
Status In Force
Filing Date 2022-03-07
Publication Date 2022-09-15
Owner VENN BIOSCIENCES CORPORATION (USA)
Inventor
  • Serie, Daniel
  • Lindpaintner, Klaus
  • Xu, Gege
  • Mitchell, Alan Nicolas
  • Pickering, Chad Eagle

Abstract

Provided herein are methods, devices, and kits for identifying glycosylated polypeptide biomarkers and signatures for progression of a disease or a condition, such as cancer, or and response of the disease or condition to a treatment, such as treatment with immune checkpoint blockade for cancer. Provided herein are methods of generating glycosylated polypeptide biomarkers and methods of analyzing glycosylated polypeptides using mass spectrometry. Provided herein are methods of validating a model using glycosylated polypeptides for predicting the disease or condition or for making treatment recommendation.

IPC Classes  ?

  • G01N 33/68 - Chemical analysis of biological material, e.g. blood, urineTesting involving biospecific ligand binding methodsImmunological testing involving proteins, peptides or amino acids
  • A61P 35/00 - Antineoplastic agents

52.

INTERVENN

      
Application Number 1679433
Status Registered
Filing Date 2022-04-08
Registration Date 2022-04-08
Owner Venn Biosciences Corporation (USA)
NICE Classes  ?
  • 42 - Scientific, technological and industrial services, research and design
  • 44 - Medical, veterinary, hygienic and cosmetic services; agriculture, horticulture and forestry services

Goods & Services

Scientific and medical research services; scientific and medical research services, namely, biomarker and target discovery services for pharmaceutical development; scientific and medical research services, namely, biomarker discovery and target discovery; providing temporary use of on-line nondownloadable software applications for use in computing, studying, diagnosing or screening for diseases and studying biological molecules; chemical analysis, namely, mass spectrometry services; consulting services in the field of biotechnology through the application of mass spectrometry; scientific and technological services, namely, biomarker analysis in the field of mass spectrometry; scientific and technological analyses using mass spectrometry, namely, chemical, biochemical, and biological in the nature of protein and cellular analysis; consulting services in the fields of biotechnology, pharmaceutical research and development, laboratory testing, diagnostics, and pharmacogenetics. Medical testing services using medical biomarker discovery and validation, target discovery and validation, therapeutics, patient profiling, for treatment prediction and monitoring, and medical diagnostic and prognostic purposes; providing medical information regarding disease risk factors, disease risk factor analysis via a website.

53.

Biomarkers for diagnosing non-alcoholic steatohepatitis (NASH) or hepatocellular carcinoma (HCC)

      
Application Number 17535018
Grant Number 11774459
Status In Force
Filing Date 2021-11-24
First Publication Date 2022-06-16
Grant Date 2023-10-03
Owner Venn Biosciences Corporation (USA)
Inventor
  • Ramachandran, Prasanna
  • Xu, Gege

Abstract

Embodiments described herein generally relate to technologies for analyzing peptide structures for diagnosing and/or treating a disease state advancing through a disease progression. A non-limiting example of a method relating to the technologies described in the subject application may include receiving peptide structure data corresponding to the biological sample obtained from the subject, identifying a peptide structure profile, and diagnosing a disease state within a disease progression. The example may further include generating a diagnosis output relating to the disease state. In at least some cases, the peptide structure profile may include glycosylated peptides, aglycosylated peptides, or both.

IPC Classes  ?

  • G01N 33/68 - Chemical analysis of biological material, e.g. blood, urineTesting involving biospecific ligand binding methodsImmunological testing involving proteins, peptides or amino acids
  • G16B 40/20 - Supervised data analysis
  • G16B 20/00 - ICT specially adapted for functional genomics or proteomics, e.g. genotype-phenotype associations
  • G06N 3/08 - Learning methods
  • G01N 30/72 - Mass spectrometers
  • G01N 30/02 - Column chromatography

54.

BIOMARKERS FOR DIAGNOSING NON-ALCOHOLIC STEATOHEPATITIS (NASH) OR HEPATOCELLULAR CARCINOMA (HCC)

      
Document Number 03198807
Status Pending
Filing Date 2021-11-24
Open to Public Date 2022-06-02
Owner VENN BIOSCIENCES CORPORATION (USA)
Inventor
  • Ramachandran, Prasanna
  • Xu, Gege

Abstract

Embodiments described herein generally relate to technologies for analyzing peptide structures for diagnosing and/or treating a disease state advancing through a disease progression. A non-limiting example of a method relating to the technologies described in the subject application may include receiving peptide structure data corresponding to the biological sample obtained from the subject, identifying a peptide structure profile, and diagnosing a disease state within a disease progression. The example may further include generating a diagnosis output relating to the disease state. In at least some cases, the peptide structure profile may include glycosylated peptides, aglycosylated peptides, or both.

IPC Classes  ?

  • A61B 5/00 - Measuring for diagnostic purposes Identification of persons
  • G01N 33/68 - Chemical analysis of biological material, e.g. blood, urineTesting involving biospecific ligand binding methodsImmunological testing involving proteins, peptides or amino acids
  • G06F 18/24 - Classification techniques
  • G06N 20/00 - Machine learning
  • G16H 50/20 - ICT specially adapted for medical diagnosis, medical simulation or medical data miningICT specially adapted for detecting, monitoring or modelling epidemics or pandemics for computer-aided diagnosis, e.g. based on medical expert systems

55.

BIOMARKERS FOR DIAGNOSING NON-ALCOHOLIC STEATOHEPATITIS (NASH) OR HEPATOCELLULAR CARCINOMA (HCC)

      
Application Number US2021060776
Publication Number 2022/115574
Status In Force
Filing Date 2021-11-24
Publication Date 2022-06-02
Owner VENN BIOSCIENCES CORPORATION (USA)
Inventor
  • Ramachandran, Prasanna
  • Xu, Gege

Abstract

Embodiments described herein generally relate to technologies for analyzing peptide structures for diagnosing and/or treating a disease state advancing through a disease progression. A non-limiting example of a method relating to the technologies described in the subject application may include receiving peptide structure data corresponding to the biological sample obtained from the subject, identifying a peptide structure profile, and diagnosing a disease state within a disease progression. The example may further include generating a diagnosis output relating to the disease state. In at least some cases, the peptide structure profile may include glycosylated peptides, aglycosylated peptides, or both.

IPC Classes  ?

  • G01N 33/68 - Chemical analysis of biological material, e.g. blood, urineTesting involving biospecific ligand binding methodsImmunological testing involving proteins, peptides or amino acids
  • A61B 5/00 - Measuring for diagnostic purposes Identification of persons
  • G16H 50/00 - ICT specially adapted for medical diagnosis, medical simulation or medical data miningICT specially adapted for detecting, monitoring or modelling epidemics or pandemics
  • G06N 20/00 - Machine learning

56.

BIOMARKERS FOR DIAGNOSING OVARIAN CANCER

      
Application Number 17433971
Status Pending
Filing Date 2020-01-31
First Publication Date 2022-05-05
Owner VENN BIOSCIENCES CORPORATION (USA)
Inventor
  • Xu, Gege
  • Danan-Leon, Lieza Marie Araullo
  • Serie, Daniel

Abstract

Set forth herein are glycopeptide biomarkers useful for diagnosing diseases and conditions, such as but not limited to, cancer (e.g., ovarian), an autoimmune disease, fibrosis and aging conditions. Also set forth herein are methods of generating glycopeptide biomarkers and methods of analyzing glycopeptides using mass spectroscopy. Also set forth herein are methods of analyzing glycopeptides using machine learning algorithms.

IPC Classes  ?

  • G16B 40/10 - Signal processing, e.g. from mass spectrometry [MS] or from PCR
  • G01N 33/68 - Chemical analysis of biological material, e.g. blood, urineTesting involving biospecific ligand binding methodsImmunological testing involving proteins, peptides or amino acids
  • G01N 33/574 - ImmunoassayBiospecific binding assayMaterials therefor for cancer
  • G16H 50/20 - ICT specially adapted for medical diagnosis, medical simulation or medical data miningICT specially adapted for detecting, monitoring or modelling epidemics or pandemics for computer-aided diagnosis, e.g. based on medical expert systems

57.

BIOMARKERS FOR CLEAR CELL RENAL CELL CARCINOMA

      
Application Number US2021022071
Publication Number 2021/183859
Status In Force
Filing Date 2021-03-12
Publication Date 2021-09-16
Owner VENN BIOSCIENCES CORPORATION (USA)
Inventor
  • Serie, Daniel
  • Lindpaintner, Klaus

Abstract

Set forth herein are methods useful for identifying disease biomarkers, particularly for diseases such as clear cell renal cell carcinoma (ccRCC). In some examples, the methods set forth herein are useful for monitoring the prognosis of patients having a disease such as ccRCC.

IPC Classes  ?

  • C12Q 1/34 - Measuring or testing processes involving enzymes, nucleic acids or microorganismsCompositions thereforProcesses of preparing such compositions involving hydrolase
  • G01N 33/68 - Chemical analysis of biological material, e.g. blood, urineTesting involving biospecific ligand binding methodsImmunological testing involving proteins, peptides or amino acids

58.

BIOMARKERS FOR DIAGNOSING OVARIAN CANCER

      
Document Number 03168917
Status Pending
Filing Date 2021-01-29
Open to Public Date 2021-08-05
Owner VENN BIOSCIENCES CORPORATION (USA)
Inventor
  • Xu, Gege
  • Shen, Ling
  • Xu, Hui
  • Serie, Daniel

Abstract

Set forth herein are glycopeptide biomarkers useful for diagnosing diseases and conditions, such as but not limited to, cancer (e.g., ovarian), an autoimmune disease, fibrosis and aging conditions. Also set forth herein are methods of generating glycopeptide biomarkers and methods of analyzing glycopeptides using mass spectroscopy. Also set forth herein are methods of analyzing glycopeptides using machine learning algorithms.

IPC Classes  ?

  • C07K 9/00 - Peptides having up to 20 amino acids, containing saccharide radicals and having a fully defined sequenceDerivatives thereof
  • C07K 14/47 - Peptides having more than 20 amino acidsGastrinsSomatostatinsMelanotropinsDerivatives thereof from animalsPeptides having more than 20 amino acidsGastrinsSomatostatinsMelanotropinsDerivatives thereof from humans from vertebrates from mammals
  • G01N 1/28 - Preparing specimens for investigation
  • G01N 27/62 - Investigating or analysing materials by the use of electric, electrochemical, or magnetic means by investigating the ionisation of gases, e.g. aerosolsInvestigating or analysing materials by the use of electric, electrochemical, or magnetic means by investigating electric discharges, e.g. emission of cathode
  • G01N 33/48 - Biological material, e.g. blood, urineHaemocytometers
  • G01N 33/483 - Physical analysis of biological material
  • G16B 40/00 - ICT specially adapted for biostatisticsICT specially adapted for bioinformatics-related machine learning or data mining, e.g. knowledge discovery or pattern finding

59.

BIOMARKERS FOR DIAGNOSING OVARIAN CANCER

      
Application Number US2021015915
Publication Number 2021/155300
Status In Force
Filing Date 2021-01-29
Publication Date 2021-08-05
Owner VENN BIOSCIENCES CORPORATION (USA)
Inventor
  • Xu, Gege
  • Shen, Ling
  • Xu, Hui
  • Serie, Daniel

Abstract

Set forth herein are glycopeptide biomarkers useful for diagnosing diseases and conditions, such as but not limited to, cancer (e.g., ovarian), an autoimmune disease, fibrosis and aging conditions. Also set forth herein are methods of generating glycopeptide biomarkers and methods of analyzing glycopeptides using mass spectroscopy. Also set forth herein are methods of analyzing glycopeptides using machine learning algorithms.

IPC Classes  ?

  • G01N 33/574 - ImmunoassayBiospecific binding assayMaterials therefor for cancer
  • G01N 33/68 - Chemical analysis of biological material, e.g. blood, urineTesting involving biospecific ligand binding methodsImmunological testing involving proteins, peptides or amino acids

60.

Identification and use of glycopeptides as biomarkers for diagnosis and treatment monitoring

      
Application Number 17067460
Grant Number 11624750
Status In Force
Filing Date 2020-10-09
First Publication Date 2021-07-08
Grant Date 2023-04-11
Owner Venn Biosciences Corporation (USA)
Inventor
  • Carrascoso, Aldo Mario Eduardo Silva
  • Bertozzi, Carolyn Ruth
  • Lebrilla, Carlito Bangeles
  • Danan-Leon, Lieza Marie Araullo

Abstract

Provided herein are methods for identifying new biomarkers for various diseases using proteomics, peptidomics, metabolics, proteoglycomics, glycomics, mass spectrometry and machine learning. The present disclosure also provides glycopeptides as biomarkers for various diseases such as cancer and autoimmune diseases.

IPC Classes  ?

  • G01N 33/68 - Chemical analysis of biological material, e.g. blood, urineTesting involving biospecific ligand binding methodsImmunological testing involving proteins, peptides or amino acids
  • G16B 20/00 - ICT specially adapted for functional genomics or proteomics, e.g. genotype-phenotype associations
  • G16B 40/00 - ICT specially adapted for biostatisticsICT specially adapted for bioinformatics-related machine learning or data mining, e.g. knowledge discovery or pattern finding
  • G01N 33/564 - ImmunoassayBiospecific binding assayMaterials therefor for pre-existing immune complex or autoimmune disease
  • G16B 40/20 - Supervised data analysis
  • G01N 33/574 - ImmunoassayBiospecific binding assayMaterials therefor for cancer
  • G16B 40/10 - Signal processing, e.g. from mass spectrometry [MS] or from PCR

61.

Automated detection of boundaries in mass spectrometry data

      
Application Number 16833324
Grant Number 11869634
Status In Force
Filing Date 2020-03-27
First Publication Date 2020-11-26
Grant Date 2024-01-09
Owner VENN BIOSCIENCES CORPORATION (USA)
Inventor
  • Serie, Daniel
  • Wu, Zhenqin

Abstract

A system and method for automated detection of the presence or absence of a quantity based on intensities expressed in terms of, or derived from frequency or time dependent data. According to one example intensities from mass spectrometry are identified using a non-linear mathematical model, such as an artificial neural network trained to find start and stop peaks of an intensity, from which an abundance may be determined.

IPC Classes  ?

  • G16B 40/00 - ICT specially adapted for biostatisticsICT specially adapted for bioinformatics-related machine learning or data mining, e.g. knowledge discovery or pattern finding
  • G16B 5/00 - ICT specially adapted for modelling or simulations in systems biology, e.g. gene-regulatory networks, protein interaction networks or metabolic networks

62.

AUTOMATED DETECTION OF BOUNDARIES IN MASS SPECTROMETRY DATA

      
Document Number 03131254
Status Pending
Filing Date 2020-03-27
Open to Public Date 2020-10-08
Owner VENN BIOSCIENCES CORPORATION (USA)
Inventor
  • Serie, Daniel
  • Wu, Zhenqin

Abstract

A system and method for automated detection of the presence or absence of a quantity based on intensities expressed in terms of, or derived from frequency or time dependent data. According to one example intensities from mass spectrometry are identified using a non-linear mathematical model, such as an artificial neural network trained to find start and stop peaks of an intensity, from which an abundance may be determined.

IPC Classes  ?

  • C40B 20/08 - Direct analysis of the library members per se by physical methods, e.g. spectroscopy
  • G01N 27/00 - Investigating or analysing materials by the use of electric, electrochemical, or magnetic means
  • G01N 37/00 - Details not covered by any other group of this subclass
  • G06N 3/0442 - Recurrent networks, e.g. Hopfield networks characterised by memory or gating, e.g. long short-term memory [LSTM] or gated recurrent units [GRU]
  • G06N 3/09 - Supervised learning
  • G16B 20/00 - ICT specially adapted for functional genomics or proteomics, e.g. genotype-phenotype associations
  • G16B 40/00 - ICT specially adapted for biostatisticsICT specially adapted for bioinformatics-related machine learning or data mining, e.g. knowledge discovery or pattern finding
  • G16B 40/10 - Signal processing, e.g. from mass spectrometry [MS] or from PCR
  • G16B 40/20 - Supervised data analysis
  • G16B 50/10 - OntologiesAnnotations

63.

AUTOMATED DETECTION OF BOUNDARIES IN MASS SPECTROMETRY DATA

      
Application Number US2020025502
Publication Number 2020/205649
Status In Force
Filing Date 2020-03-27
Publication Date 2020-10-08
Owner VENN BIOSCIENCES CORPORATION (USA)
Inventor
  • Serie, Daniel
  • Wu, Zhenqin

Abstract

A system and method for automated detection of the presence or absence of a quantity based on intensities expressed in terms of, or derived from frequency or time dependent data. According to one example intensities from mass spectrometry are identified using a non-linear mathematical model, such as an artificial neural network trained to find start and stop peaks of an intensity, from which an abundance may be determined.

IPC Classes  ?

  • G16B 40/20 - Supervised data analysis
  • G16H 10/40 - ICT specially adapted for the handling or processing of patient-related medical or healthcare data for data related to laboratory analysis, e.g. patient specimen analysis
  • G16H 50/20 - ICT specially adapted for medical diagnosis, medical simulation or medical data miningICT specially adapted for detecting, monitoring or modelling epidemics or pandemics for computer-aided diagnosis, e.g. based on medical expert systems
  • G16H 50/70 - ICT specially adapted for medical diagnosis, medical simulation or medical data miningICT specially adapted for detecting, monitoring or modelling epidemics or pandemics for mining of medical data, e.g. analysing previous cases of other patients

64.

BIOMARKERS FOR DIAGNOSING OVARIAN CANCER

      
Document Number 03128367
Status Pending
Filing Date 2020-01-31
Open to Public Date 2020-08-06
Owner VENN BIOSCIENCES CORPORATION (USA)
Inventor
  • Xu, Gege
  • Danan-Leon, Lieza Marie Araullo
  • Serie, Daniel

Abstract

Set forth herein are glycopeptide biomarkers useful for diagnosing diseases and conditions, such as but not limited to, cancer (e.g., ovarian), an autoimmune disease, fibrosis and aging conditions. Also set forth herein are methods of generating glycopeptide biomarkers and methods of analyzing glycopeptides using mass spectroscopy. Also set forth herein are methods of analyzing glycopeptides using machine learning algorithms.

IPC Classes  ?

  • G01N 33/574 - ImmunoassayBiospecific binding assayMaterials therefor for cancer
  • G01N 33/68 - Chemical analysis of biological material, e.g. blood, urineTesting involving biospecific ligand binding methodsImmunological testing involving proteins, peptides or amino acids

65.

BIOMARKERS FOR DIAGNOSING OVARIAN CANCER

      
Application Number US2020016286
Publication Number 2020/160515
Status In Force
Filing Date 2020-01-31
Publication Date 2020-08-06
Owner VENN BIOSCIENCES CORPORATION (USA)
Inventor
  • Xu, Gege
  • Danan-Leon, Lieza Marie Araullo
  • Serie, Daniel

Abstract

Set forth herein are glycopeptide biomarkers useful for diagnosing diseases and conditions, such as but not limited to, cancer (e.g., ovarian), an autoimmune disease, fibrosis and aging conditions. Also set forth herein are methods of generating glycopeptide biomarkers and methods of analyzing glycopeptides using mass spectroscopy. Also set forth herein are methods of analyzing glycopeptides using machine learning algorithms.

IPC Classes  ?

  • G01N 33/574 - ImmunoassayBiospecific binding assayMaterials therefor for cancer
  • G01N 33/68 - Chemical analysis of biological material, e.g. blood, urineTesting involving biospecific ligand binding methodsImmunological testing involving proteins, peptides or amino acids

66.

IDENTIFICATION AND USE OF BIOLOGICAL PARAMETERS FOR DIAGNOSIS AND TREATMENT MONITORING

      
Application Number 16756572
Status Pending
Filing Date 2018-10-18
First Publication Date 2020-07-30
Owner VENN BIOSCIENCES CORPORATION (USA)
Inventor
  • Danan-Leon, Lieza Marie Araullo
  • Carrascoso, Aldo Mario Eduardo Silva
  • Bertozzi, Carolyn Ruth
  • Lebrilla, Carlito Bangeles
  • Spiciarich, David

Abstract

Systems and methods of quantifying a glycomic parameter, a genomic parameter, a proteomic parameter, a metabolic parameter, and/or a lipidomic parameter of a biological sample; obtaining a clinical parameter associated with a subject from which the one or more biological samples originated; determining one or more relationships between one or more of: (i) one or more of the quantified glycomic parameters, genomic parameters, proteomic parameters, metabolic parameters, and lipidomic parameters, (ii) a predetermined range associated with one or more of the quantified glycomic parameters, genomic parameters, proteomic parameters, metabolic parameters, and lipidomic parameters, and (iii) an obtained clinical parameter; identifying one or more biomarkers based on one or more of the determined relationships satisfying a predetermined significance criteria; and/or determining a wellness classification state of a wellness classification, the determination of the wellness classification state determined based on the one or more identified biomarkers.

IPC Classes  ?

  • G01N 33/68 - Chemical analysis of biological material, e.g. blood, urineTesting involving biospecific ligand binding methodsImmunological testing involving proteins, peptides or amino acids
  • C12Q 1/6886 - Nucleic acid products used in the analysis of nucleic acids, e.g. primers or probes for diseases caused by alterations of genetic material for cancer
  • G01N 33/574 - ImmunoassayBiospecific binding assayMaterials therefor for cancer
  • G16B 20/00 - ICT specially adapted for functional genomics or proteomics, e.g. genotype-phenotype associations
  • G16B 40/00 - ICT specially adapted for biostatisticsICT specially adapted for bioinformatics-related machine learning or data mining, e.g. knowledge discovery or pattern finding

67.

IDENTIFICATION AND USE OF BIOLOGICAL PARAMETERS FOR DIAGNOSIS AND TREATMENT MONITORING

      
Application Number US2018056574
Publication Number 2019/079639
Status In Force
Filing Date 2018-10-18
Publication Date 2019-04-25
Owner VENN BIOSCIENCES CORPORATION (USA)
Inventor
  • Danan-Leon, Lieza Marie Araullo
  • Carrascoso, Aldo Mario Eduardo Silva
  • Bertozzi, Carolyn Ruth
  • Lebrilla, Carlito Bangeles
  • Spiciarich, David

Abstract

Systems and methods of quantifying a glycomic parameter, a genomic parameter, a proteomic parameter, a metabolic parameter, and/or a lipidomic parameter of a biological sample; obtaining a clinical parameter associated with a subject from which the one or more biological samples originated; determining one or more relationships between one or more of: (i) one or more of the quantified glycomic parameters, genomic parameters, proteomic parameters, metabolic parameters, and lipidomic parameters, (ii) a predetermined range associated with one or more of the quantified glycomic parameters, genomic parameters, proteomic parameters, metabolic parameters, and lipidomic parameters, and (iii) an obtained clinical parameter; identifying one or more biomarkers based on one or more of the determined relationships satisfying a predetermined significance criteria; and/or determining a wellness classification state of a wellness classification, the determination of the wellness classification state determined based on the one or more identified biomarkers.

IPC Classes  ?

  • C12Q 1/68 - Measuring or testing processes involving enzymes, nucleic acids or microorganismsCompositions thereforProcesses of preparing such compositions involving nucleic acids
  • G01N 33/574 - ImmunoassayBiospecific binding assayMaterials therefor for cancer
  • G01N 33/68 - Chemical analysis of biological material, e.g. blood, urineTesting involving biospecific ligand binding methodsImmunological testing involving proteins, peptides or amino acids
  • G06F 19/10 - Bioinformatics, i.e. methods or systems for genetic or protein-related data processing in computational molecular biology (in silico methods of screening virtual chemical libraries C40B 30/02;in silico or mathematical methods of creating virtual chemical libraries C40B 50/02)

68.

Identification and use of glycopeptides as biomarkers for diagnosis and treatment monitoring

      
Application Number 16120016
Grant Number 10837970
Status In Force
Filing Date 2018-08-31
First Publication Date 2019-04-04
Grant Date 2020-11-17
Owner Venn Biosciences Corporation (USA)
Inventor
  • Carrascoso, Aldo Mario Eduardo Silva
  • Bertozzi, Carolyn Ruth
  • Lebrilla, Carlito Bangeles
  • Danan-Leon, Lieza Marie Araullo

Abstract

Provided herein are methods for identifying new biomarkers for various diseases using proteomics, peptidomics, metabolics, proteoglycomics, glvcomics, mass spectrometry and machine learning. The present disclosure also provides glycopeptides as biomarkers for various diseases such as cancer and autoimmune diseases.

IPC Classes  ?

  • G01N 33/68 - Chemical analysis of biological material, e.g. blood, urineTesting involving biospecific ligand binding methodsImmunological testing involving proteins, peptides or amino acids
  • G16B 20/00 - ICT specially adapted for functional genomics or proteomics, e.g. genotype-phenotype associations
  • G16B 40/00 - ICT specially adapted for biostatisticsICT specially adapted for bioinformatics-related machine learning or data mining, e.g. knowledge discovery or pattern finding
  • G01N 33/564 - ImmunoassayBiospecific binding assayMaterials therefor for pre-existing immune complex or autoimmune disease
  • G16B 40/20 - Supervised data analysis
  • G01N 33/574 - ImmunoassayBiospecific binding assayMaterials therefor for cancer
  • G16B 40/10 - Signal processing, e.g. from mass spectrometry [MS] or from PCR

69.

IDENTIFICATION AND USE OF GLYCOPEPTIDES AS BIOMARKERS FOR DIAGNOSIS AND TREATMENT MONITORING

      
Application Number US2018049256
Publication Number 2019/046814
Status In Force
Filing Date 2018-08-31
Publication Date 2019-03-07
Owner VENN BIOSCIENCES CORPORATION (USA)
Inventor
  • Danan-Leon, Lieza Marie Araullo
  • Carrascoso, Aldo Mario Eduardo Silva
  • Bertozzi, Carolyn Ruth
  • Lebrilla, Carlito Bangeles

Abstract

Provided herein are methods for identifying new biomarkers for various diseases using proteomics, peptidomics, metabolics, proteoglycomics, glvcomics, mass spectrometry and machine learning. The present disclosure also provides glycopeptides as biomarkers for various diseases such as cancer and autoimmune diseases.

IPC Classes  ?

  • C12Q 1/37 - Measuring or testing processes involving enzymes, nucleic acids or microorganismsCompositions thereforProcesses of preparing such compositions involving hydrolase involving peptidase or proteinase
  • G01N 33/53 - ImmunoassayBiospecific binding assayMaterials therefor
  • G01N 33/574 - ImmunoassayBiospecific binding assayMaterials therefor for cancer
  • G01N 33/68 - Chemical analysis of biological material, e.g. blood, urineTesting involving biospecific ligand binding methodsImmunological testing involving proteins, peptides or amino acids

70.

INTERVENN

      
Serial Number 88241909
Status Registered
Filing Date 2018-12-26
Registration Date 2021-11-02
Owner Venn Biosciences Corporation ()
NICE Classes  ?
  • 42 - Scientific, technological and industrial services, research and design
  • 44 - Medical, veterinary, hygienic and cosmetic services; agriculture, horticulture and forestry services

Goods & Services

Scientific and medical research services; scientific and medical research services, namely, biomarker and target discovery services for pharmaceutical development; scientific and medical research services, namely, biomarker discovery and target discovery; providing temporary use of on-line nondownloadable software applications for use in computing, studying, diagnosing or screening for diseases and studying biological molecules; chemical analysis, namely, mass spectrometry services; consulting services in the field of biotechnology through the application of mass spectrometry; scientific and technological services, namely, biomarker analysis in the field of mass spectrometry; scientific and technological analyses using mass spectrometry, namely, chemical, biochemical, and biological in the nature of protein and cellular analysis; consulting services in the fields of biotechnology, pharmaceutical research and development, laboratory testing, diagnostics, and pharmacogenetics Testing and reporting for medical biomarker discovery and validation, target discovery and validation, therapeutics design and development, patient profiling, treatment prediction and monitoring, and medical diagnostic and prognostic purposes; medical testing for screening, diagnostic, or treatment purposes; medical diagnostic testing, monitoring, and reporting services; providing a website featuring medical information regarding disease risk factors, disease risk factor analysis, and reporting services for medical purposes

71.

INTERVENN

      
Serial Number 88241891
Status Registered
Filing Date 2018-12-26
Registration Date 2021-11-02
Owner Venn Biosciences Corporation ()
NICE Classes  ?
  • 42 - Scientific, technological and industrial services, research and design
  • 44 - Medical, veterinary, hygienic and cosmetic services; agriculture, horticulture and forestry services

Goods & Services

Scientific and medical research services; scientific and medical research services, namely, biomarker and target discovery services for pharmaceutical development; scientific and medical research services, namely, biomarker discovery and target discovery; providing temporary use of on-line nondownloadable software applications for use in computing, studying, diagnosing or screening for diseases and studying biological molecules; chemical analysis, namely, mass spectrometry services; consulting services in the field of biotechnology through the application of mass spectrometry; scientific and technological services, namely, biomarker analysis in the field of mass spectrometry; scientific and technological analyses using mass spectrometry, namely, chemical, biochemical, and biological in the nature of protein and cellular analysis; Consulting services in the fields of biotechnology, pharmaceutical research and development, laboratory testing, diagnostics, and pharmacogenetics Testing and reporting for medical biomarker discovery and validation, target discovery and validation, therapeutics design and development, patient profiling, treatment prediction and monitoring, and medical diagnostic and prognostic purposes; medical testing for screening, diagnostic, or treatment purposes; medical diagnostic testing, monitoring, and reporting services; providing a website featuring medical information regarding disease risk factors, disease risk factor analysis, and reporting services for medical purposes