Patents by Inventor Michael D. Feldman

Michael D. Feldman 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: 11861836
    Abstract: The degree of differentiation of a cell in tissue is precisely determined. An estimating device (1) includes: a binarizing section (41) configured to generate binarized images from an image obtained by capturing an image of tissue; a Betti number calculating section (42) configured to calculate, for each binarized image, (i) the number of hole-shaped regions (b1) each surrounded by pixels of a first pixel value and each composed of pixels of a second pixel value, (ii) the number of connected regions each composed of the pixels of the first pixel value connected together, and (iii) a ratio (R) between (i) and (ii); a statistic calculating section (43) configured to calculate statistics of the calculated numbers (b1, b0) and ratio (R); and an estimating section (44) configured to feed input data including the calculated statistics to a trained estimating model to output the degree of differentiation of the cell in tissue.
    Type: Grant
    Filed: May 24, 2021
    Date of Patent: January 2, 2024
    Assignee: APSAM Imaging Corp.
    Inventors: Kazuaki Nakane, Chaoyang Yan, Xiangxue Wang, Yao Fu, Haoda Lu, Xiangshan Fan, Michael D. Feldman, Anant Madabhushi, Jun Xu
  • Publication number: 20230148068
    Abstract: The present disclosure in some embodiments relates to a non-transitory computer-readable medium storing computer-executable instructions that, when executed, cause a processor to perform operations, including obtaining one or more digitized endomyocardial biopsy (EMB) images from a patient having had a heart transplant; extracting a plurality of histological features from the one or more digitized EMB images; and applying a machine learning predictive model to operate on the plurality of histological features to generate a prediction for the patient. The prediction includes a grade or a clinical trajectory associated with the patient.
    Type: Application
    Filed: November 7, 2022
    Publication date: May 11, 2023
    Inventors: Anant Madabhushi, Sara Arabyarmohammadi, Cai Yuan, Eliot G. Peyster, Kenneth B. Margulies, Michael D. Feldman, Priti Lal
  • Publication number: 20220207738
    Abstract: The degree of differentiation of a cell in tissue is precisely determined. An estimating device (1) includes: a binarizing section (41) configured to generate binarized images from an image obtained by capturing an image of tissue; a Betti number calculating section (42) configured to calculate, for each binarized image, (i) the number of hole-shaped regions (b1) each surrounded by pixels of a first pixel value and each composed of pixels of a second pixel value, (ii) the number of connected regions each composed of the pixels of the first pixel value connected together, and (iii) a ratio (R) between (i) and (ii); a statistic calculating section (43) configured to calculate statistics of the calculated numbers (b1, b0) and ratio (R); and an estimating section (44) configured to feed input data including the calculated statistics to a trained estimating model to output the degree of differentiation of the cell in tissue.
    Type: Application
    Filed: May 24, 2021
    Publication date: June 30, 2022
    Inventors: Kazuaki NAKANE, Chaoyang YAN, Xiangxue WANG, Yao FU, Haoda LU, Xiangshan FAN, Michael D. FELDMAN, Anant MADABHUSHI, Jun XU
  • Patent number: 10528848
    Abstract: Methods, apparatus, and other embodiments predict heart failure from WSIs of cardiac histopathology using a deep learning convolutional neural network (CNN). One example apparatus includes a pre-processing circuit configured to generate a pre-processed WSI by downsampling a digital WSI; an image acquisition circuit configured to randomly select a set of non-overlapping ROIs from the pre-processed WSI, and configured to provide the set of non-overlapping ROIs to a deep learning circuit; a deep learning circuit configured to generate an image-level probability that a member of the set of non-overlapping ROIs is a failure/abnormal pathology ROI using a CNN; and a classification circuit configured to generate a patient-level probability that the patient from which the region of tissue represented in the WSI was acquired is experiencing failure or non-failure based, at least in part, on the image-level probability.
    Type: Grant
    Filed: October 31, 2017
    Date of Patent: January 7, 2020
    Assignee: Case Western Reserve University
    Inventors: Anant Madabhushi, Jeffrey John Nirschl, Andrew Janowczyk, Eliot G. Peyster, Michael D. Feldman, Kenneth B. Margulies
  • Publication number: 20180129911
    Abstract: Methods, apparatus, and other embodiments predict heart failure from WSIs of cardiac histopathology using a deep learning convolutional neural network (CNN). One example apparatus includes a pre-processing circuit configured to generate a pre-processed WSI by downsampling a digital WSI; an image acquisition circuit configured to randomly select a set of non-overlapping ROIs from the pre-processed WSI, and configured to provide the set of non-overlapping ROIs to a deep learning circuit; a deep learning circuit configured to generate an image-level probability that a member of the set of non-overlapping ROIs is a failure/abnormal pathology ROI using a CNN; and a classification circuit configured to generate a patient-level probability that the patient from which the region of tissue represented in the WSI was acquired is experiencing failure or non-failure based, at least in part, on the image-level probability.
    Type: Application
    Filed: October 31, 2017
    Publication date: May 10, 2018
    Inventors: Anant Madabhushi, Jeffrey John Nirschl, Andrew Janowczyk, Eliot G. Peyster, Michael D. Feldman, Kenneth B. Margulies
  • Patent number: 8724006
    Abstract: An imaging system includes an array of lenses, a plurality of sensor pixels for each lens, the sensor pixels being on an image plane of the imaging system, and a corresponding plurality of focal plane coding elements. A focal plane coding element for each sensor pixel has multiple sub-pixel resolution elements. The focal plane coding element being between the lens and each sensor pixel, wherein sub-pixel resolution elements over the plurality of focal plane coding elements represent a selected transform matrix having a non-zero determinant. The output of the plurality of sensor pixels being an image multiplied by this matrix.
    Type: Grant
    Filed: February 24, 2004
    Date of Patent: May 13, 2014
    Assignees: FLIR Systems, Inc., Duke University
    Inventors: David Brady, Michael D Feldman, Nikos P. Pitsianis
  • Patent number: 8295575
    Abstract: This invention relates to computer-assisted diagnostics and classification of prostate cancer. Specifically, the invention relates to segmentation of the prostate boundary on MRI images, cancer detection using multimodal multi-protocol MR data; and their integration for a computer-aided diagnosis and classification system for prostate cancer.
    Type: Grant
    Filed: October 29, 2008
    Date of Patent: October 23, 2012
    Assignees: The Trustees of the University of PA., Rutgers, The State University of New Jersey
    Inventors: Michael D. Feldman, Satish Viswanath, Pallavi Tiwari, Robert Toth, Anant Madabhushi, John Tomaszeweski, Mark Rosen
  • Patent number: 8280132
    Abstract: This invention relates to computer-aided diagnostics using content-based retrieval of histopathological image features. Specifically, the invention relates to the extraction of image features from a histopathological image based on predetermined criteria and their analysis for malignancy determination.
    Type: Grant
    Filed: August 1, 2007
    Date of Patent: October 2, 2012
    Assignees: Rutgers, The State University of New Jersey, The Trustees of the University of Pennsylvania
    Inventors: Anant Madabhushi, Scott Doyle, Michael D. Feldman, John E. Tomaszewski
  • Patent number: 8204315
    Abstract: This invention relates to supervised or unsupervised classification of biological datasets. Specifically, the invention relates to the use of Graph Embedding as a method of reducing dimensionality thereby improving supervised classification of classes, both conventional and new ones.
    Type: Grant
    Filed: October 18, 2007
    Date of Patent: June 19, 2012
    Assignees: The Trustees of the University of Pennsylvania, Rutgers, The State University of New Jersey
    Inventors: Anant Madabhushi, Michael D. Feldman, John E. Tomaszewski, Mark Rosen, Jianbo Shi
  • Publication number: 20100329529
    Abstract: This invention relates to computer-assisted diagnostics and classification of prostate cancer. Specifically, the invention relates to segmentation of the prostate boundary on MRI images, cancer detection using multimodal multi-protocol MR data; and their integration for a computer-aided diagnosis and classification system for prostate cancer.
    Type: Application
    Filed: October 29, 2008
    Publication date: December 30, 2010
    Applicants: The Trustees of the University of Pennsylvania, Rutgers, The State University of New Jersey
    Inventors: Michael D Feldman, Satish Viswanath, Pallavi Tiwari, Robert Toth, Anant Madabhushi, John Tomaszeweski, Mark Rosen
  • Publication number: 20100098306
    Abstract: This invention relates to computer-aided diagnostics using content-based retrieval of histopathological image features. Specifically, the invention relates to the extraction of image features from a histopathological image based on predetermined criteria and their analysis for malignancy determination.
    Type: Application
    Filed: August 1, 2007
    Publication date: April 22, 2010
    Inventors: Anant Madabhushi, Scott Doyle, Michael D. Feldman, John E. Tomaszewski