Patents by Inventor Randall Mastrangelo

Randall Mastrangelo 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: 11885732
    Abstract: A classification training method for training classifiers adapted to identify specific mutations associated with different cancer including identifying driver mutations. First cells from mutation cell lines derived from conditions having the number of driver mutations are acquired and 3D image feature data from the number of first cells is identified. 3D cell imaging data from the number of first cells and from other malignant cells is generated, where cell imaging data includes a number of first individual cell images. A second set of 3D cell imaging data is generated from a set of normal cells where the number of driver mutations are expected to occur, where the second set of cell imaging data includes second individual cell images. Supervised learning is conducted based on cell line status as ground truth to generate a classifier.
    Type: Grant
    Filed: October 18, 2022
    Date of Patent: January 30, 2024
    Assignee: VisionGate, Inc.
    Inventors: Michael G. Meyer, Daniel J. Sussman, Rahul Katdare, Laimonas Kelbauskas, Alan C. Nelson, Randall Mastrangelo
  • Publication number: 20230050322
    Abstract: A classification training method for training classifiers adapted to identify specific mutations associated with different cancer including identifying driver mutations. First cells from mutation cell lines derived from conditions having the number of driver mutations are acquired and 3D image feature data from the number of first cells is identified. 3D cell imaging data from the number of first cells and from other malignant cells is generated, where cell imaging data includes a number of first individual cell images. A second set of 3D cell imaging data is generated from a set of normal cells where the number of driver mutations are expected to occur, where the second set of cell imaging data includes second individual cell images. Supervised learning is conducted based on cell line status as ground truth to generate a classifier.
    Type: Application
    Filed: October 18, 2022
    Publication date: February 16, 2023
    Inventors: Michael G. Meyer, Daniel J. Sussman, Rahul Katdare, Laimonis Kelbauskas, Alan C. Nelson, Randall Mastrangelo
  • Patent number: 11545237
    Abstract: A classification training method for training classifiers adapted to identify specific mutations associated with different cancer including identifying driver mutations. First cells from mutation cell lines derived from conditions having the number of driver mutations are acquired and 3D image feature data from the number of first cells is identified. 3D cell imaging data from the number of first cells and from other malignant cells is generated, where cell imaging data includes a number of first individual cell images. A second set of 3D cell imaging data is generated from a set of normal cells where the number of driver mutations are expected to occur, where the second set of cell imaging data includes second individual cell images. Supervised learning is conducted based on cell line status as ground truth to generate a classifier.
    Type: Grant
    Filed: September 26, 2018
    Date of Patent: January 3, 2023
    Assignee: VISIONGATE, INC.
    Inventors: Michael G. Meyer, Daniel J. Sussman, Rahul Katdare, Laimonas Kelbauskas, Alan C. Nelson, Randall Mastrangelo
  • Publication number: 20210210169
    Abstract: A classification training method for training classifiers adapted to identify specific mutations associated with different cancer including identifying driver mutations. First cells from mutation cell lines derived from conditions having the number of driver mutations are acquired and 3D image feature data from the number of first cells is identified. 3D cell imaging data from the number of first cells and from other malignant cells is generated, where cell imaging data includes a number of first individual cell images. A second set of 3D cell imaging data is generated from a set of normal cells where the number of driver mutations are expected to occur, where the second set of cell imaging data includes second individual cell images. Supervised learning is conducted based on cell line status as ground truth to generate a classifier.
    Type: Application
    Filed: September 26, 2018
    Publication date: July 8, 2021
    Applicant: VISIONGATE, INC.
    Inventors: Michael G. MEYER, Daniel J. SUSSMAN, Rahul KATDARE, Laimonis KELBAUSKAS, Alan C. NELSON, Randall MASTRANGELO
  • Publication number: 20210200987
    Abstract: A method to develop one or more morphometric classifiers to identify a mismatch repair deficiency (MMRD). The method provides a non-invasive method of characterizing MMRD that is responsive to a tumor in its early stages of development and irrespective of the tumor size. The method allows targeting cancer therapy to the specific characteristics of the cancer that the patient may have, allowing more efficient cancer management with far fewer side effects.
    Type: Application
    Filed: June 5, 2019
    Publication date: July 1, 2021
    Applicant: VISIONGATE, INC.
    Inventors: Daniel J. Sussman, Michael G. Meyer, Randall Mastrangelo, Alan C. Nelson
  • Publication number: 20200370130
    Abstract: A method to develop one or more morphometric classifiers to identify a tumor mutation burden (TMB). The method provides a non-invasive method of characterizing TMB that is responsive to a tumor in its early stages of development and irrespective of the tumor size. The method allows targeting cancer therapy to the specific characteristics of the cancer that the patient may have, allowing more efficient cancer management with far fewer side effects.
    Type: Application
    Filed: January 4, 2019
    Publication date: November 26, 2020
    Applicant: VISIONGATE, INC.
    Inventors: Daniel J. Sussman, Michael Meyer G. Meyer, Laimonis Kelbauskas, Alan C. Nelson, Randall Mastrangelo