Patents by Inventor Jefferson PRUYNE

Jefferson PRUYNE 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: 20240167986
    Abstract: Disclosed are methods, libraries, and samples for quantifying a target analyte in a laboratory sample including the target analyte. The methods typically include the step of estimating the amount of the target analyte in the laboratory sample from mass spectrometric data including signal intensities for the target analyte and one or more internal standards, where the mass spectrometric data are an output of a mass spectrometric analysis of a target sample produced from the laboratory sample and a predetermined amount of the one or more internal standards. The present disclosure also provides a method for analyte quantification. The method comprises adding one or more calibrators to a sample comprising one or more analytes; applying mass spectrometry (MS) to the sample; and using a trained machine learning model to determine an absolute concentration of the one or more analytes.
    Type: Application
    Filed: July 14, 2023
    Publication date: May 23, 2024
    Inventors: Timothy KASSIS, Jefferson PRUYNE, Mark D. SIMON, Mimoun CADOSCH DELMAR AKERMAN, Jennifer CAMPBELL, Ana HENRIQUES DA COSTA, Laura KOLINSKY, John M. GEREMIA
  • Patent number: 11754536
    Abstract: Disclosed are methods, libraries, and samples for quantifying a target analyte in a laboratory sample including the target analyte. The methods typically include the step of estimating the amount of the target analyte in the laboratory sample from mass spectrometric data including signal intensities for the target analyte and one or more internal standards, where the mass spectrometric data are an output of a mass spectrometric analysis of a target sample produced from the laboratory sample and a predetermined amount of the one or more internal standards. The present disclosure also provides a method for analyte quantification. The method comprises adding one or more calibrators to a sample comprising one or more analytes; applying mass spectrometry (MS) to the sample; and using a trained machine learning model to determine an absolute concentration of the one or more analytes.
    Type: Grant
    Filed: September 7, 2022
    Date of Patent: September 12, 2023
    Assignee: MATTERWORKS INC
    Inventors: Timothy Kassis, Jefferson Pruyne, Mark D. Simon, Mimoun Cadosch Delmar Akerman, Jennifer Campbell, Ana Henriques Da Costa, Laura Kolinsky, John M. Geremia
  • Publication number: 20230170049
    Abstract: Disclosed are methods, libraries, and samples for quantifying a target analyte in a laboratory sample including the target analyte. The methods typically include the step of estimating the amount of the target analyte in the laboratory sample from mass spectrometric data including signal intensities for the target analyte and one or more internal standards, where the mass spectrometric data are an output of a mass spectrometric analysis of a target sample produced from the laboratory sample and a predetermined amount of the one or more internal standards. The present disclosure also provides a method for analyte quantification. The method comprises adding one or more calibrators to a sample comprising one or more analytes; applying mass spectrometry (MS) to the sample; and using a trained machine learning model to determine an absolute concentration of the one or more analytes.
    Type: Application
    Filed: September 7, 2022
    Publication date: June 1, 2023
    Inventors: Timothy KASSIS, Jefferson PRUYNE, Mark D. SIMON, Mimoun CADOSCH DELMAR AKERMAN, Jennifer CAMPBELL, Ana HENRIQUES DA COSTA, Laura KOLINSKY, John M. GEREMIA
  • Publication number: 20230133615
    Abstract: Disclosed are methods, libraries, and samples for quantifying a target analyte in a laboratory sample including the target analyte. The methods typically include the step of estimating the amount of the target analyte in the laboratory sample from mass spectrometric data including signal intensities for the target analyte and one or more internal standards, where the mass spectrometric data are an output of a mass spectrometric analysis of a target sample produced from the laboratory sample and a predetermined amount of the one or more internal standards. The present disclosure also provides a method for analyte quantification. The method comprises adding one or more calibrators to a sample comprising one or more analytes; applying mass spectrometry (MS) to the sample; and using a trained machine learning model to determine an absolute concentration of the one or more analytes.
    Type: Application
    Filed: September 7, 2022
    Publication date: May 4, 2023
    Inventors: Timothy KASSIS, Jefferson PRUYNE, Mark D. SIMON, Mimoun CADOSCH DELMAR AKERMAN, Jennifer CAMPBELL, Ana HENRIQUES DA COSTA, Laura KOLINSKY, John M. GEREMIA
  • Publication number: 20230137741
    Abstract: Disclosed are methods, libraries, and samples for quantifying a target analyte in a laboratory sample including the target analyte. The methods typically include the step of estimating the amount of the target analyte in the laboratory sample from mass spectrometric data including signal intensities for the target analyte and one or more internal standards, where the mass spectrometric data are an output of a mass spectrometric analysis of a target sample produced from the laboratory sample and a predetermined amount of the one or more internal standards. The present disclosure also provides a method for analyte quantification. The method comprises adding one or more calibrators to a sample comprising one or more analytes; applying mass spectrometry (MS) to the sample; and using a trained machine learning model to determine an absolute concentration of the one or more analytes.
    Type: Application
    Filed: September 7, 2022
    Publication date: May 4, 2023
    Inventors: Timothy KASSIS, Jefferson PRUYNE, Mark D. SIMON, Mimoun CADOSCH DELMAR AKERMAN, Jennifer CAMPBELL, Ana HENRIQUES DA COSTA, Laura KOLINSKY, John M. GEREMIA