Patents by Inventor Vesteinn Thorsson

Vesteinn Thorsson 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: 11164312
    Abstract: A system associated with quantifying a density level of tumor-infiltrating lymphocytes, based on prediction of reconstructed TIL information associated with tumoral tissue image data during pathology analysis of the tissue image data is disclosed. The system receives digitized diagnostic and stained whole-slide image data related to tissue of a particular type of tumoral data. Defined are regions of interest that represents a portion of, or a full image of the whole-slide image data. The image data is encoded into segmented data portions based on convolutional autoencoding of objects associated with the collection of image data. The density of tumor-infiltrating lymphocytes is determined of bounded segmented data portions for respective classification of the regions of interest. A classification label is assigned to the regions of interest. It is determined whether an assigned classification label is above a pre-determined threshold probability value of lymphocyte infiltrated.
    Type: Grant
    Filed: November 30, 2018
    Date of Patent: November 2, 2021
    Assignees: The Research Foundation tor the State University of New York, Board of Regents, The University of Texas System, Institute for Systems Biology
    Inventors: Joel Haskin Saltz, Tahsin Kurc, Rajarsi Gupta, Tianhao Zhao, Rebecca Batiste, Le Hou, Vu Nguyen, Dimitrios Samaras, Arvind Rao, John Van Arnam, Pankaj Singh, Alexander Lazar, Ashish Sharma, Ilya Shmulevich, Vesteinn Thorsson
  • Publication number: 20200388029
    Abstract: A system associated with quantifying a density level of tumor-infiltrating lymphocytes, based on prediction of reconstructed TIL information associated with tumoral tissue image data during pathology analysis of the tissue image data is disclosed. The system receives digitized diagnostic and stained whole-slide image data related to tissue of a particular type of tumoral data. Defined are regions of interest that represents a portion of, or a full image of the whole-slide image data. The image data is encoded into segmented data portions based on convolutional autoencoding of objects associated with the collection of image data. The density of tumor-infiltrating lymphocytes is determined of bounded segmented data portions for respective classification of the regions of interest. A classification label is assigned to the regions of interest. It is determined whether an assigned classification label is above a pre-determined threshold probability value of lymphocyte infiltrated.
    Type: Application
    Filed: November 30, 2018
    Publication date: December 10, 2020
    Inventors: Joel Haskin SALTZ, Tahsin KURC, Rajarsi GUPTA, Tianhao ZHAO, Rebecca BATISTE, Le HOU, Vu NGUYEN, Dimitrios SAMARAS, Arvind RAO, John VAN ARNAM, Pankaj SINGH, Alexander LAZAR, Ashish SHARMA, Ilya SHMULEVICH, Vesteinn THORSSON
  • Publication number: 20020107640
    Abstract: The invention relates to a method of determining a true signal of an analyte, comprising (a) measuring an observed signal x for one or more analytes, and (b) determining a mean signal (&mgr;) and a system parameter (&bgr;) for said analyte that produce enhanced values for a probability likelihood of said observed signal, said observed signal being related to said mean signal by an additive error (&dgr;) and a multiplicative error (&egr;), wherein said system parameter specifies properties of said additive error (&dgr;) and said multiplicative error (&egr;).
    Type: Application
    Filed: March 30, 2001
    Publication date: August 8, 2002
    Inventors: Trey E. Ideker, Vesteinn Thorsson, Andrew F. Siegel