Patents by Inventor M. Cyrus Maher

M. Cyrus 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: 20200372296
    Abstract: Systems and methods for classifier training are provided. A first dataset is obtained that comprises, for each first subject, a corresponding plurality of bin values, each for a bin in a plurality of bins, and subject cancer condition. A feature extraction technique is applied to the first dataset thereby obtaining feature extraction functions, each of which is an independent linear or nonlinear function of bin values of the bins. A second dataset is obtained comprising, for each second subj ect, a corresponding plurality of bin values, each for a bin in the plurality of bins and subject cancer condition. The plurality of bin values of each corresponding subject in the second plurality are projected onto the respective feature extraction functions, thereby forming a transformed second dataset comprising feature values for each subject. The transformed second dataset and subject cancer condition serves to train a classifier on the cancer condition set.
    Type: Application
    Filed: May 22, 2020
    Publication date: November 26, 2020
    Inventor: M. Cyrus MAHER
  • Publication number: 20200365229
    Abstract: In various embodiments, an analytics system uses models to determine features and classification of disease states. A disease state can indicate presence or absence of cancer, a cancer type, or a cancer tissue of origin. The models can include a binary classifier and a tissue of origin classifier. The analytics system can process sequence reads from test biological samples to generate data for training the classifiers. The analytics system can also use combinations of machine learning techniques to train the models, which can include a multilayer perceptron. In some embodiments, the analytics system uses methylation information to train the models to determine predictions regarding disease state.
    Type: Application
    Filed: May 13, 2020
    Publication date: November 19, 2020
    Inventors: Alexander P. Fields, John F. Beausang, Oliver Claude Venn, Arash Jamshidi, M. Cyrus Maher, Qinwen Liu, Jan Schellenberger, Joshua Newman, Robert Calef, Samuel S. Gross
  • Publication number: 20200294624
    Abstract: Systems and methods for determining a cancer class of a subject are provided in which a plurality of sequence reads, in electronic form, are obtained from a biological sample of the subject. The sample comprises a plurality of cell-free DNA molecules including respective DNA molecules longer than a threshold length of less than 160 nucleotides. The plurality of sequence reads excludes sequence reads of cell-free DNA molecules in the plurality of cell-free DNA molecules longer than the threshold length. The plurality of sequence reads is used to identify a relative copy number at each respective genomic location in a plurality of genomic locations in the genome of the subject. The genetic information about the subject obtained from the sample and the genetic information consisting of the identification of the relative copy number at each respective genomic location, is applied to a classifier that determines the cancer class of the subject.
    Type: Application
    Filed: March 12, 2020
    Publication date: September 17, 2020
    Inventors: Darya Filippova, Matthew H. Larson, M. Cyrus Maher, Monica Portela dos Santos Pimentel, Robert Abe Paine Calef
  • Publication number: 20200181609
    Abstract: Diagnostic devices and methods are provided for screening for a disease condition, include a cancer condition or a mendelian disease. Described herein are diagnostic devices for contacting cell-free nucleic acids or circulating tumor cells in vivo comprising a needle having a body and a detection reaction module attached to the body.
    Type: Application
    Filed: November 15, 2019
    Publication date: June 11, 2020
    Inventor: M. Cyrus Maher
  • Publication number: 20200185059
    Abstract: Technical solutions for classifying patients with respect to multiple cancer classes are provided. The classification can be done using cell-free whole genome sequencing information from subjects. A reference set of subjects is used to train classifiers to recognize genomic markers that distinguish such cancer classes. The classifier training includes dividing the reference genome into a set of non-overlapping bins, applying a dimensionality reduction method to obtain a feature set, and using the feature set to train classifiers. For subjects with unknown cancer class, the trained classifiers provide probabilities or likelihoods that the subject has a respective cancer class for each cancer in a set of cancer classes. The present disclosure thus describes methods to improve the screening and detection of cancer class from among several cancer classes. This serves to facilitate early and appropriate treatment for subjects afflicted with cancer.
    Type: Application
    Filed: December 10, 2019
    Publication date: June 11, 2020
    Inventors: M. Cyrus Maher, Anton Valouev, Darya Filippova, Virgil Nicula, Karthik Jagadeesh, Oliver Claude Venn, Samuel S. Gross, John F. Beausang, Robert Abe Paine Calef
  • Publication number: 20200005899
    Abstract: Classification of cancer condition, in a plurality of different cancer conditions, for a species, is provided in which, for each training subject in a plurality of training subjects, there is obtained a cancer condition and a genotypic data construct including genotypic information for the respective training subject. Genotypic constructs are formatted into corresponding vector sets comprising one or more vectors. Vector sets are provided to a network architecture including a convolutional neural network path comprising at least a first convolutional layer associated with a first filter that comprise a first set of filter weights and a scorer. Scores, corresponding to the input of vector sets into the network architecture, are obtained from the scorer. Comparison of respective scores to the corresponding cancer condition of the corresponding training subjects is used to adjust the filter weights thereby training the network architecture to classify cancer condition.
    Type: Application
    Filed: May 31, 2019
    Publication date: January 2, 2020
    Inventors: Virgil Nicula, Anton Valouev, Darya Filippova, Matthew H. Larson, M. Cyrus Maher, Monica Portela dos Santos Pimentel, Robert Abe Paine Calef, Collin Melton
  • Publication number: 20190287649
    Abstract: A system, method and computer program product for analyzing data of high dimensionality (e.g., sequence reads of nucleic acid samples in connection with a disease condition) are provided.
    Type: Application
    Filed: March 13, 2019
    Publication date: September 19, 2019
    Inventors: Darya Filippova, Anton Valouev, Virgil Nicula, Karthik Jagadeesh, M. Cyrus Maher, Matthew H. Larson, Monica Portela dos Santos Pimentel, Robert Abe Paine Calef
  • Publication number: 20190259473
    Abstract: Described are methods and systems for identifying phenotypic traits of an individual from nucleotide sequence data. The methods and systems are useful even when the identity of the individual or phenotypic traits of the individual is unknown.
    Type: Application
    Filed: August 7, 2017
    Publication date: August 22, 2019
    Inventors: Franz J. OCH, M. Cyrus MAHER, Victor LAVRENKO, Christoph LIPPERT, David HECKERMAN, David SHUTE, Okan ARIKAN, Riccardo SABATINI, Eun Young KANG, Peter GARST, Axel BERNAL, Mingfu ZHU, Alena HARLEY, Theodore WONG, Seunghak LEE