Patents by Inventor Paul Grouchy

Paul Grouchy 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).

  • Patent number: 11918333
    Abstract: The exemplified intrinsic phase space tomography methods and systems facilitate the analysis and evaluation of complex, quasi-periodic system by generating computed phase-space tomographic images as a representation of the dynamics of the quasi-periodic cardiac systems. The computed phase-space tomographic images can be presented to a physician to assist in the assessment of presence or non-presence of disease. In some embodiments, the phase space tomographic images are used as input to a trained neural network classifier configured to assess for presence or non-presence of significant coronary artery disease.
    Type: Grant
    Filed: December 26, 2018
    Date of Patent: March 5, 2024
    Assignee: Analytics For Life Inc.
    Inventors: Paul Grouchy, Meng Lei, Ian Shadforth, Sunny Gupta, Timothy William Fawcett Burton, Shyamlal Ramchandani
  • Publication number: 20230157618
    Abstract: Phase space tomography methods and systems to facilitate the analysis and evaluation of complex, quasi-periodic system by generating computed phase-space tomographic images and mathematical features as a representation of the dynamics of the quasi-periodic cardiac systems. The computed phase-space tomographic images can be presented to a physician to assist in the assessment of presence or non-presence of disease. In some implementations, the phase space tomographic images are used as input to a trained neural network classifier configured to assess for presence or non-presence of pulmonary hypertension, including pulmonary arterial hypertension.
    Type: Application
    Filed: September 29, 2022
    Publication date: May 25, 2023
    Inventors: Paul Grouchy, Meng Lei, Ian Shadforth, Sunny Gupta, Timothy Burton, Shyamlal Ramchandani
  • Patent number: 11471090
    Abstract: Phase space tomography methods and systems to facilitate the analysis and evaluation of complex, quasi-periodic system by generating computed phase-space tomographic images and mathematical features as a representation of the dynamics of the quasi-periodic cardiac systems. The computed phase-space tomographic images can be presented to a physician to assist in the assessment of presence or non-presence of disease. In some implementations, the phase space tomographic images are used as input to a trained neural network classifier configured to assess for presence or non-presence of pulmonary hypertension, including pulmonary arterial hypertension.
    Type: Grant
    Filed: June 3, 2019
    Date of Patent: October 18, 2022
    Assignee: Analytics for Life Inc.
    Inventors: Paul Grouchy, Meng Lei, Ian Shadforth, Sunny Gupta, Timothy Burton, Shyamlal Ramchandani
  • Publication number: 20220093216
    Abstract: A facility providing systems and methods for discovering novel features to use in machine learning techniques. The facility receives, for a number of subjects, one or more sets of data representative of some output or condition of the subject over a period of time or capturing some physical aspect of the subject. The facility then extracts or computes values from the data and applies one or more feature generators to the extracted values. Based on the outputs of the feature generators, the facility identifies novel feature generators for use in at least one machine learning process and further mutates the novel feature generators, which can then be applied to the received data to identify additional novel feature generators.
    Type: Application
    Filed: June 25, 2021
    Publication date: March 24, 2022
    Inventors: Paul Grouchy, Timothy Burton, Ali Khosousi, Abhinav Doomra, Sunny Gupta
  • Publication number: 20220093215
    Abstract: A facility for identifying combinations of feature and machine learning algorithm parameters, where each combination can be combined with one or more machine learning algorithms to train a model, is disclosed. The facility evaluates each genome based on the ability of a model trained using that genome and a machine learning algorithm to produce accurate results when applied to a validation data set by, for example, generating a fitness or validation score for the trained model and the corresponding genome used to train the model. Genomes that produce fitness scores that exceed a fitness threshold are selected for mutation, mutated, and the process is repeated. These trained models can then be applied to new data to generate predictions for the underlying subject matter.
    Type: Application
    Filed: June 4, 2021
    Publication date: March 24, 2022
    Inventors: Paul Grouchy, Timothy Burton, Ali Khosousi, Abhinav Doomra, Sunny Gupta, Ian Shadforth
  • Patent number: 11139048
    Abstract: A facility providing systems and methods for discovering novel features to use in machine learning techniques. The facility receives, for a number of subjects, one or more sets of data representative of some output or condition of the subject over a period of time or capturing some physical aspect of the subject. The facility then extracts or computes values from the data and applies one or more feature generators to the extracted values. Based on the outputs of the feature generators, the facility identifies novel feature generators for use in at least one machine learning process and further mutates the novel feature generators, which can then be applied to the received data to identify additional novel feature generators.
    Type: Grant
    Filed: July 18, 2017
    Date of Patent: October 5, 2021
    Assignee: Analytics For Life Inc.
    Inventors: Paul Grouchy, Timothy Burton, Ali Khosousi, Abhinav Doomra, Sunny Gupta
  • Patent number: 11062792
    Abstract: A facility for identifying combinations of feature and machine learning algorithm parameters, where each combination can be combined with one or more machine learning algorithms to train a model, is disclosed. The facility evaluates each genome based on the ability of a model trained using that genome and a machine learning algorithm to produce accurate results when applied to a validation data set by, for example, generating a fitness or validation score for the trained model and the corresponding genome used to train the model. Genomes that produce fitness scores that exceed a fitness threshold are selected for mutation, mutated, and the process is repeated. These trained models can then be applied to new data to generate predictions for the underlying subject matter.
    Type: Grant
    Filed: July 18, 2017
    Date of Patent: July 13, 2021
    Assignee: Analytics For Life Inc.
    Inventors: Paul Grouchy, Timothy Burton, Ali Khosousi, Abhinav Doomra, Sunny Gupta, Ian Shadforth
  • Publication number: 20190365265
    Abstract: Phase space tomography methods and systems to facilitate the analysis and evaluation of complex, quasi-periodic system by generating computed phase-space tomographic images and mathematical features as a representation of the dynamics of the quasi-periodic cardiac systems. The computed phase-space tomographic images can be presented to a physician to assist in the assessment of presence or non-presence of disease. In some implementations, the phase space tomographic images are used as input to a trained neural network classifier configured to assess for presence or non-presence of pulmonary hypertension, including pulmonary arterial hypertension.
    Type: Application
    Filed: June 3, 2019
    Publication date: December 5, 2019
    Inventors: Paul Grouchy, Meng Lei, Ian Shadforth, Sunny Gupta, Timothy Burton, Shyamlal Ramchandani
  • Publication number: 20190200893
    Abstract: The exemplified intrinsic phase space tomography methods and systems facilitate the analysis and evaluation of complex, quasi-periodic system by generating computed phase-space tomographic images as a representation of the dynamics of the quasi-periodic cardiac systems. The computed phase-space tomographic images can be presented to a physician to assist in the assessment of presence or non-presence of disease. In some embodiments, the phase space tomographic images are used as input to a trained neural network classifier configured to assess for presence or non-presence of significant coronary artery disease.
    Type: Application
    Filed: December 26, 2018
    Publication date: July 4, 2019
    Inventors: Paul Grouchy, Meng Lei, Ian Shadforth, Sunny Gupta, Timothy William Fawcett Burton, Shyamial Ramchandani
  • Publication number: 20190026430
    Abstract: A facility providing systems and methods for discovering novel features to use in machine learning techniques. The facility receives, for a number of subjects, one or more sets of data representative of some output or condition of the subject over a period of time or capturing some physical aspect of the subject. The facility then extracts or computes values from the data and applies one or more feature generators to the extracted values. Based on the outputs of the feature generators, the facility identifies novel feature generators for use in at least one machine learning process and further mutates the novel feature generators, which can then be applied to the received data to identify additional novel feature generators.
    Type: Application
    Filed: July 18, 2017
    Publication date: January 24, 2019
    Inventors: Paul Grouchy, Timothy Burton, Ali Khosousi, Abhinav Doomra, Sunny Gupta
  • Publication number: 20190026431
    Abstract: A facility for identifying combinations of feature and machine learning algorithm parameters, where each combination can be combined with one or more machine learning algorithms to train a model, is disclosed. The facility evaluates each genome based on the ability of a model trained using that genome and a machine learning algorithm to produce accurate results when applied to a validation data set by, for example, generating a fitness or validation score for the trained model and the corresponding genome used to train the model. Genomes that produce fitness scores that exceed a fitness threshold are selected for mutation, mutated, and the process is repeated. These trained models can then be applied to new data to generate predictions for the underlying subject matter.
    Type: Application
    Filed: July 18, 2017
    Publication date: January 24, 2019
    Inventors: Paul Grouchy, Timothy Burton, Ali Khosousi, Abhinav Doomra, Sunny Gupta, Ian Shadforth