Patents by Inventor Sai Chowdary Gullapally

Sai Chowdary Gullapally 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: 11915823
    Abstract: In some aspects, the described systems and methods provide for validating performance of a model trained on a plurality of annotated pathology images. A pathology image is accessed. Frames are generated using the pathology image. Each frame in the set includes a distinct portion of the pathology image. Reference annotations are received from one or more users. The reference annotations describe at least one of a plurality of tissue or cellular characteristic categories for one or more frames in the set. Each frame in the set is processed using the trained model to generate model predictions. The model predictions describe at least one of the tissue or cellular characteristic categories for the processed frame. Performance of the trained model is validated based on determining a degree of association between the reference annotations and the model predictions for each frame and/or across all frames in the set of frames.
    Type: Grant
    Filed: November 10, 2022
    Date of Patent: February 27, 2024
    Assignee: PathAI, Inc.
    Inventors: Harsha Vardhan Pokkalla, Hunter L. Elliott, Dayong Wang, Benjamin P. Glass, Ilan N. Wapinski, Jennifer K. Kerner, Andrew H. Beck, Aditya Khosla, Sai Chowdary Gullapally, Ramprakash Srinivasan
  • Publication number: 20230326022
    Abstract: A method includes receiving an input histology image, processing, using a cell classification model, the input histology image to generate one or more lymphocyte density maps within the input histology image, and performing morphological image processing on the one or more lymphocyte density maps to identify one or more TLS regions within the input histology image. Each TLS region is represented by a respective cluster of lymphocyte cells. For each corresponding TLS region of the one or more TLS regions identified in the input histology image, the method also includes extracting, from the respective cluster of lymphocyte cells, a respective set of TLS features, and processing, using a TLS classification model, the respective set of TLS features to classify the corresponding TLS region as one of a first TLS maturation state, a second TLS maturation state, or a third TLS maturation state.
    Type: Application
    Filed: April 7, 2023
    Publication date: October 12, 2023
    Applicants: Bristol-Myers Squibb Company, PathAI, Inc.
    Inventors: Vanessa Matos-Cruz, George Lee, Varsha Chinnaobireddy, Maryam Pouryahya, Darren Thomas Fahy, Christian Winskell Kirkup, Kathleen Sucipto, Sai Chowdary Gullapally, Archit Khosla, Nishant Agrawal, Benjamin Patrick Glass, Sergine Brutus, Limin Yu, Murray Berle Resnick, Rachel L. Sargent, Vipul Atulkumar Baxi, Scott Ely, Benjamin J. Chen
  • Patent number: 11527319
    Abstract: In some aspects, the described systems and methods provide for validating performance of a model trained on a plurality of annotated pathology images. A pathology image is accessed. Frames are generated using the pathology image. Each frame in the set includes a distinct portion of the pathology image. Reference annotations are received from one or more users. The reference annotations describe at least one of a plurality of tissue or cellular characteristic categories for one or more frames in the set. Each frame in the set is processed using the trained model to generate model predictions. The model predictions describe at least one of the tissue or cellular characteristic categories for the processed frame. Performance of the trained model is validated based on determining a degree of association between the reference annotations and the model predictions for each frame and/or across all frames in the set of frames.
    Type: Grant
    Filed: September 11, 2020
    Date of Patent: December 13, 2022
    Assignee: PathAI, Inc.
    Inventors: Harsha Vardhan Pokkalla, Hunter L. Elliott, Dayong Wang, Benjamin P. Glass, Ilan N. Wapinski, Jennifer K. Kerner, Andrew H. Beck, Aditya Khosla, Sai Chowdary Gullapally, Ramprakash Srinivasan