Patents by Inventor Yash N. Shah

Yash N. Shah 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: 11776150
    Abstract: An x-ray image laterality detection system is provided. The x-ray image laterality detection system includes a detection computing device. The processor of the computing device is programmed to execute a neural network model for analyzing x-ray images, wherein the neural network model is trained with training x-ray images as inputs and observed laterality classes associated with the training x-ray images as outputs. The process is also programmed to receive an unclassified x-ray image, analyze the unclassified x-ray image using the neural network model, and assign a laterality class to the unclassified x-ray image. If the assigned laterality class is not target laterality, the processor is programmed to adjust the unclassified x-ray image to derive a corrected x-ray image having the target laterality and output the corrected x-ray image. If the assigned laterality class is the target laterality, the processor is programmed to output the unclassified x-ray image.
    Type: Grant
    Filed: July 26, 2021
    Date of Patent: October 3, 2023
    Assignee: GE Precision Healthcare LLC
    Inventors: Khaled Salem Younis, Ravi Soni, Katelyn Rose Nye, Gireesha Chinthamani Rao, John Michael Sabol, Yash N. Shah
  • Publication number: 20210350186
    Abstract: An x-ray image laterality detection system is provided. The x-ray image laterality detection system includes a detection computing device. The processor of the computing device is programmed to execute a neural network model for analyzing x-ray images, wherein the neural network model is trained with training x-ray images as inputs and observed laterality classes associated with the training x-ray images as outputs. The process is also programmed to receive an unclassified x-ray image, analyze the unclassified x-ray image using the neural network model, and assign a laterality class to the unclassified x-ray image. If the assigned laterality class is not target laterality, the processor is programmed to adjust the unclassified x-ray image to derive a corrected x-ray image having the target laterality and output the corrected x-ray image. If the assigned laterality class is the target laterality, the processor is programmed to output the unclassified x-ray image.
    Type: Application
    Filed: July 26, 2021
    Publication date: November 11, 2021
    Inventors: Khaled Salem Younis, Ravi Soni, Katelyn Rose Nye, Gireesha Chinthamani Rao, John Michael Sabol, Yash N. Shah
  • Patent number: 11113577
    Abstract: An x-ray image laterality detection system is provided. The x-ray image laterality detection system includes a detection computing device. The processor of the computing device is programmed to execute a neural network model for analyzing x-ray images, wherein the neural network model is trained with training x-ray images as inputs and observed laterality classes associated with the training x-ray images as outputs. The process is also programmed to receive an unclassified x-ray image, analyze the unclassified x-ray image using the neural network model, and assign a laterality class to the unclassified x-ray image. If the assigned laterality class is not target laterality, the processor is programmed to adjust the unclassified x-ray image to derive a corrected x-ray image having the target laterality and output the corrected x-ray image. If the assigned laterality class is the target laterality, the processor is programmed to output the unclassified x-ray image.
    Type: Grant
    Filed: February 27, 2020
    Date of Patent: September 7, 2021
    Assignee: GE PRECISION HEALTHCARE LLC
    Inventors: Khaled Salem Younis, Ravi Soni, Katelyn Rose Nye, Gireesha Chinthamani Rao, John Michael Sabol, Yash N. Shah
  • Publication number: 20210271931
    Abstract: An x-ray image laterality detection system is provided. The x-ray image laterality detection system includes a detection computing device. The processor of the computing device is programmed to execute a neural network model for analyzing x-ray images, wherein the neural network model is trained with training x-ray images as inputs and observed laterality classes associated with the training x-ray images as outputs. The process is also programmed to receive an unclassified x-ray image, analyze the unclassified x-ray image using the neural network model, and assign a laterality class to the unclassified x-ray image. If the assigned laterality class is not target laterality, the processor is programmed to adjust the unclassified x-ray image to derive a corrected x-ray image having the target laterality and output the corrected x-ray image. If the assigned laterality class is the target laterality, the processor is programmed to output the unclassified x-ray image.
    Type: Application
    Filed: February 27, 2020
    Publication date: September 2, 2021
    Inventors: KHALED SALEM YOUNIS, Ravi Soni, Katelyn Rose Nye, Gireesha Chinthamani Rao, John Michael Sabol, Yash N. Shah