Patents by Inventor Caroline Maher

Caroline Maher 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: 20210098131
    Abstract: A method is disclosed of predicting cancer patient response to immune checkpoint inhibitors, e.g., an antibody drug blocking ligand activation of programmed cell death 1 (PD-1) or CTLA4. The method includes obtaining mass spectrometry data from a blood-based sample of the patient, obtaining integrated intensity values in the mass spectrometry data of a multitude of pre-determined mass-spectral features; and operating on the mass spectral data with a programmed computer implementing a classifier. The classifier compares the integrated intensity values with feature values of a training set of class-labeled mass spectral data obtained from a multitude of melanoma patients with a classification algorithm and generates a class label for the sample. A class label “early” or the equivalent predicts the patient is likely to obtain relatively less benefit from the antibody drug and the class label “late” or the equivalent indicates the patient is likely to obtain relatively greater benefit from the antibody drug.
    Type: Application
    Filed: December 11, 2020
    Publication date: April 1, 2021
    Applicant: BIODESIX, INC.
    Inventors: Joanna Roder, Krista Meyer, Julia Grigorieva, Maxim Tsypin, Carlos Oliveira, Ami Steingrimsson, Heinrich Roder, Senait Asmellash, Kevin Sayers, Caroline Maher
  • Patent number: 10950348
    Abstract: A method is disclosed of predicting cancer patient response to immune checkpoint inhibitors, e.g., an antibody drug blocking ligand activation of programmed cell death 1 (PD-1) or CTLA4. The method includes obtaining mass spectrometry data from a blood-based sample of the patient, obtaining integrated intensity values in the mass spectrometry data of a multitude of pre-determined mass-spectral features; and operating on the mass spectral data with a programmed computer implementing a classifier. The classifier compares the integrated intensity values with feature values of a training set of class-labeled mass spectral data obtained from a multitude of melanoma patients with a classification algorithm and generates a class label for the sample. A class label “early” or the equivalent predicts the patient is likely to obtain relatively less benefit from the antibody drug and the class label “late” or the equivalent indicates the patient is likely to obtain relatively greater benefit from the antibody drug.
    Type: Grant
    Filed: May 29, 2018
    Date of Patent: March 16, 2021
    Assignee: BIODESIX, INC.
    Inventors: Joanna Röder, Krista Meyer, Julia Grigorieva, Maxim Tsypin, Carlos Oliveira, Arni Steingrimsson, Heinrich Röder, Senait Asmellash, Kevin Sayers, Caroline Maher
  • Publication number: 20180277249
    Abstract: A method is disclosed of predicting cancer patient response to immune checkpoint inhibitors, e.g., an antibody drug blocking ligand activation of programmed cell death 1 (PD-1) or CTLA4. The method includes obtaining mass spectrometry data from a blood-based sample of the patient, obtaining integrated intensity values in the mass spectrometry data of a multitude of pre-determined mass-spectral features; and operating on the mass spectral data with a programmed computer implementing a classifier. The classifier compares the integrated intensity values with feature values of a training set of class-labeled mass spectral data obtained from a multitude of melanoma patients with a classification algorithm and generates a class label for the sample. A class label “early” or the equivalent predicts the patient is likely to obtain relatively less benefit from the antibody drug and the class label “late” or the equivalent indicates the patient is likely to obtain relatively greater benefit from the antibody drug.
    Type: Application
    Filed: May 29, 2018
    Publication date: September 27, 2018
    Inventors: Joanna Röder, Krista Meyer, Julia Grigorieva, Maxim Tsypin, Carlos Oliveira, Arni Steingrimsson, Heinrich Röder, Senait Asmellash, Kevin Sayers, Caroline Maher
  • Patent number: 10007766
    Abstract: A method is disclosed of predicting cancer patient response to immune checkpoint inhibitors, e.g., an antibody drug blocking ligand activation of programmed cell death 1 (PD-1) or CTLA4. The method includes obtaining mass spectrometry data from a blood-based sample of the patient, obtaining integrated intensity values in the mass spectrometry data of a multitude of pre-determined mass-spectral features; and operating on the mass spectral data with a programmed computer implementing a classifier. The classifier compares the integrated intensity values with feature values of a training set of class-labeled mass spectral data obtained from a multitude of melanoma patients with a classification algorithm and generates a class label for the sample. A class label “early” or the equivalent predicts the patient is likely to obtain relatively less benefit from the antibody drug and the class label “late” or the equivalent indicates the patient is likely to obtain relatively greater benefit from the antibody drug.
    Type: Grant
    Filed: July 12, 2016
    Date of Patent: June 26, 2018
    Assignee: Biodesix, Inc.
    Inventors: Joanna Röder, Krista Meyer, Julia Grigorieva, Maxim Tsypin, Carlos Oliveira, Arni Steingrimsson, Heinrich Röder, Senait Asmellash, Kevin Sayers, Caroline Maher, Jeffrey Weber
  • Publication number: 20170039345
    Abstract: A method is disclosed of predicting cancer patient response to immune checkpoint inhibitors, e.g., an antibody drug blocking ligand activation of programmed cell death 1 (PD-1) or CTLA4. The method includes obtaining mass spectrometry data from a blood-based sample of the patient, obtaining integrated intensity values in the mass spectrometry data of a multitude of pre-determined mass-spectral features; and operating on the mass spectral data with a programmed computer implementing a classifier. The classifier compares the integrated intensity values with feature values of a training set of class-labeled mass spectral data obtained from a multitude of melanoma patients with a classification algorithm and generates a class label for the sample. A class label “early” or the equivalent predicts the patient is likely to obtain relatively less benefit from the antibody drug and the class label “late” or the equivalent indicates the patient is likely to obtain relatively greater benefit from the antibody drug.
    Type: Application
    Filed: July 12, 2016
    Publication date: February 9, 2017
    Inventors: Joanna Röder, Krista Meyer, Julia Grigorieva, Maxim Tsypin, Carlos Oliveira, Arni Steingrimsson, Heinrich Röder, Senait Asmellash, Kevin Sayers, Caroline Maher, Jeffrey Weber