Patents by Inventor Gil Speyer

Gil Speyer has filed for patents to protect the following inventions. This listing includes patent applications that are pending as well as patents that have already been granted by the United States Patent and Trademark Office (USPTO).

  • Publication number: 20230207068
    Abstract: Methods are provided to classify and identify features in mass spectral data using neural network algorithms. A convolutional neural network (CNN) was trained to identify amino acids from an unknown protein sample. The CNN was trained using known peptide sequences to predict amino acid presence, diversity, and frequency, peptide length, subsequences of amino acids classified by features include aliphatic/aromatic, hydrophobic/hydrophilic, positive/negative charge, and combinations thereof. Mass spectra data of a sample unknown to the trained CNN was discretized into a one-dimensional vector and input into the CNN. The CNN models can potentially be integrated to determine the complete peptide sequence from a spectrum, thereby improving the yield of identifiable protein sequences from mass spec analysis.
    Type: Application
    Filed: February 20, 2023
    Publication date: June 29, 2023
    Applicant: THE TRANSLATIONAL GENOMICS RESEARCH INSTITUTE
    Inventors: Patrick Pirrotte, Gil Speyer, Ritin Sharma, Krystine Garcia-Mansfield
  • Patent number: 11587644
    Abstract: Methods are provided to classify and identify features in mass spectral data using neural network algorithms. A convolutional neural network (CNN) was trained to identify amino acids from an unknown protein sample. The CNN was trained using known peptide sequences to predict amino acid presence, diversity, and frequency, peptide length, subsequences of amino acids classified by features include aliphatic/aromatic, hydrophobic/hydrophilic, positive/negative charge, and combinations thereof. Mass spectra data of a sample unknown to the trained CNN was discretized into a one-dimensional vector and input into the CNN. The CNN models can potentially be integrated to determine the complete peptide sequence from a spectrum, thereby improving the yield of identifiable protein sequences from mass spec analysis.
    Type: Grant
    Filed: July 30, 2018
    Date of Patent: February 21, 2023
    Assignee: The Translational Genomics Research Institute
    Inventors: Patrick Pirrotte, Gil Speyer, Ritin Sharma, Krystine Garcia-Mansfield
  • Publication number: 20190034586
    Abstract: Methods are provided to classify and identify features in mass spectral data using neural network algorithms. A convolutional neural network (CNN) was trained to identify amino acids from an unknown protein sample. The CNN was trained using known peptide sequences to predict amino acid presence, diversity, and frequency, peptide length, subsequences of amino acids classified by features include aliphatic/aromatic, hydrophobic/hydrophilic, positive/negative charge, and combinations thereof. Mass spectra data of a sample unknown to the trained CNN was discretized into a one-dimensional vector and input into the CNN. The CNN models can potentially be integrated to determine the complete peptide sequence from a spectrum, thereby improving the yield of identifiable protein sequences from mass spec analysis.
    Type: Application
    Filed: July 30, 2018
    Publication date: January 31, 2019
    Applicant: THE TRANSLATIONAL GENOMICS RESEARCH INSTITUTE
    Inventors: Patrick Pirrotte, Gil Speyer, Ritin Sharma, Krystine Garcia-Mansfield