Patents by Inventor Susie Yi Huang

Susie Yi Huang 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: 11874359
    Abstract: Higher quality diffusion metrics and/or diffusion-weighted images are generated from lower quality input diffusion-weighted images using a suitably trained neural network (or other machine learning algorithm). High-fidelity scalar and orientational diffusion metrics can be extracted using a theoretical minimum of a single non-diffusion-weighted image and six diffusion-weighted images, achieved with data-driven supervised deep learning. As an example, a deep convolutional neural network (“CNN”) is used to map the input non-diffusion-weighted image and diffusion-weighted images sampled along six optimized diffusion-encoding directions to the residuals between the input and output high-quality non-diffusion-weighted image and diffusion-weighted images, which enables residual learning to boost the performance of CNN and full tensor fitting to generate any scalar and orientational diffusion metrics.
    Type: Grant
    Filed: March 27, 2020
    Date of Patent: January 16, 2024
    Assignee: The General Hospital Corporation
    Inventors: Qiyuan Tian, Susie Yi Huang, Berkin Bilgic
  • Patent number: 11449989
    Abstract: Super-resolution images are generated from standard-resolution images acquired with a magnetic resonance imaging (“MRI”) system. More particularly, super-resolution (e.g., sub-millimeter isotropic resolution) images are generated from standard-resolution images (e.g., images with 1 mm or coarser isotropic resolution) using a deep learning algorithm, from which accurate cortical surface reconstructions can be generated.
    Type: Grant
    Filed: March 26, 2020
    Date of Patent: September 20, 2022
    Assignee: The General Hospital Corporation
    Inventors: Qiyuan Tian, Susie Yi Huang, Berkin Bilgic, Jonathan R. Polimeni
  • Publication number: 20220179030
    Abstract: Higher quality diffusion metrics and/or diffusion-weighted images are generated from lower quality input diffusion-weighted images using a suitably trained neural network (or other machine learning algorithm). High-fidelity scalar and orientational diffusion metrics can be extracted using a theoretical minimum of a single non-diffusion-weighted image and six diffusion-weighted images, achieved with data-driven supervised deep learning. As an example, a deep convolutional neural network (“CNN”) is used to map the input non-diffusion-weighted image and diffusion-weighted images sampled along six optimized diffusion-encoding directions to the residuals between the input and output high-quality non-diffusion-weighted image and diffusion-weighted images, which enables residual learning to boost the performance of CNN and full tensor fitting to generate any scalar and orientational diffusion metrics.
    Type: Application
    Filed: March 27, 2020
    Publication date: June 9, 2022
    Inventors: Qiyuan Tian, Susie Yi Huang, Berkin Bilgic
  • Publication number: 20210239780
    Abstract: Diffusion metric maps are generated from a limited input of magnetic resonance data to a suitably trained machine learning algorithm, such as a suitably trained neural network. In general, a downsampling strategy is implemented in the joint k-q space to enable the simultaneous estimation of multiple different diffusion metrics from a more limited set of input diffusion-weighted images.
    Type: Application
    Filed: February 3, 2021
    Publication date: August 5, 2021
    Inventors: Qiuyun Fan, Susie Yi Huang, Qiyuan Tian, Chanon Ngamsombat
  • Publication number: 20200311926
    Abstract: Super-resolution images are generated from standard-resolution images acquired with a magnetic resonance imaging (“MRI”) system. More particularly, super-resolution (e.g., sub-millimeter isotropic resolution) images are generated from standard-resolution images (e.g., images with 1 mm or coarser isotropic resolution) using a deep learning algorithm, from which accurate cortical surface reconstructions can be generated.
    Type: Application
    Filed: March 26, 2020
    Publication date: October 1, 2020
    Inventors: Qiyuan Tian, Susie Yi Huang, Berkin Bilgic, Jonathan R. Polimeni