Patents by Inventor Greg Zaharchuk

Greg Zaharchuk 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: 12136473
    Abstract: Methods of performing experimental treatments on a cohort of subjects are provided. A predictive model can be utilized to predict progression of a medical disorder or relevant imaging biomarker. The predicted medical disorder progression can be utilized as a control to determine whether an experimental treatment has an effect on the progression of the medical disorder. In some instances, the enrollment of subjects within a control group for clinical experiment is eliminated or reduced.
    Type: Grant
    Filed: June 3, 2020
    Date of Patent: November 5, 2024
    Assignee: The Board of Trustees of the Leland Stanford Junior University
    Inventor: Greg Zaharchuk
  • Patent number: 11935231
    Abstract: A method for diagnostic imaging with reduced contrast agent dose uses a deep learning network (DLN) [114] that has been trained using zero-contrast [100] and low-contrast [102] images as input to the DLN and full-contrast images [104] as reference ground truth images. Prior to training, the images are pre-processed [106, 110, 118] to co-register and normalize them. The trained DLN [114] is then used to predict a synthesized full-dose contrast agent image [116] from acquired zero-dose and low-dose images.
    Type: Grant
    Filed: April 26, 2021
    Date of Patent: March 19, 2024
    Assignee: The Board of Trustees of the Leland Stanford Junior University
    Inventors: Greg Zaharchuk, Enhao Gong, John M. Pauly
  • Patent number: 11880962
    Abstract: Methods and systems for synthesizing contrast images from a quantitative acquisition are disclosed. An exemplary method includes performing a quantification scan, using a trained deep neural network to synthesize a contrast image from the quantification scan, and outputting the contrast image synthesized by the trained deep neural network. In another exemplary method, an operator can identify a target contrast type for the synthesized contrast image. A trained discriminator and classifier module determines whether the synthesized contrast image is of realistic image quality and whether the synthesized contrast image matches the target contrast type.
    Type: Grant
    Filed: February 14, 2019
    Date of Patent: January 23, 2024
    Assignees: GENERAL ELECTRIC COMPANY, THE BOARD OF TRUSTEES OF THE LELAND STANFORD JUNIOR UNIVERSITY
    Inventors: Suchandrima Banerjee, Enhao Gong, Greg Zaharchuk, John M. Pauly
  • Patent number: 11844636
    Abstract: A method of reducing radiation dose for radiology imaging modalities and nuclear medicine by using a convolutional network to generate a standard-dose nuclear medicine image from low-dose nuclear medicine image, where the network includes N convolution neural network (CNN) stages, where each stage includes M convolution layers having K×K kernels, where the network further includes an encoder-decoder structure having symmetry concatenate connections between corresponding stages, downsampling using pooling and upsampling using bilinear interpolation between the stages, where the network extracts multi-scale and high-level features from the low-dose image to simulate a high-dose image, and adding concatenate connections to the low-dose image to preserve local information and resolution of the high-dose image, the high-dose image includes a dose reduction factor (DRF) equal to 1 of a radio tracer in a patient, the low-dose PET image includes a DRF of at least 4 of the radio tracer in the patient.
    Type: Grant
    Filed: May 3, 2022
    Date of Patent: December 19, 2023
    Assignee: The Board of Trustees of the Leland Stanford Junior University
    Inventors: Greg Zaharchuk, John M. Pauly, Enhao Gong
  • Publication number: 20220327700
    Abstract: A method of reducing radiation dose for radiology imaging modalities and nuclear medicine by using a convolutional network to generate a standard-dose nuclear medicine image from low-dose nuclear medicine image, where the network includes N convolution neural network (CNN) stages, where each stage includes M convolution layers having K×K kernels, where the network further includes an encoder-decoder structure having symmetry concatenate connections between corresponding stages, downsampling using pooling and upsampling using bilinear interpolation between the stages, where the network extracts multi-scale and high-level features from the low-dose image to simulate a high-dose image, and adding concatenate connections to the low-dose image to preserve local information and resolution of the high-dose image, the high-dose image includes a dose reduction factor (DRF) equal to 1 of a radio tracer in a patient, the low-dose PET image includes a DRF of at least 4 of the radio tracer in the patient.
    Type: Application
    Filed: May 3, 2022
    Publication date: October 13, 2022
    Inventors: Greg Zaharchuk, John M. Pauly, Enhao Gong
  • Publication number: 20220223231
    Abstract: Methods and systems for predicting biomarker progression in medical imaging is provided. A predictive model can be utilized to predict progression of a medical disorder as determined by progression of the predicted biomarker. Further, the predicted biomarker progression can be utilized to identify individuals that are fast progressors, moderate progressors, slow progressors. In some instances, the enrollment within clinical trials or treatment regimens are determined based on biomarker progression.
    Type: Application
    Filed: January 13, 2022
    Publication date: July 14, 2022
    Applicant: The Board of Trustees of the Leland Stanford Junior University
    Inventors: Fabian H. Reith, Greg Zaharchuk
  • Patent number: 11361431
    Abstract: A method of reducing radiation dose for radiology imaging modalities and nuclear medicine by using a convolutional network to generate a standard-dose nuclear medicine image from low-dose nuclear medicine image, where the network includes N convolution neural network (CNN) stages, where each stage includes M convolution layers having K×K kernels, where the network further includes an encoder-decoder structure having symmetry concatenate connections between corresponding stages, downsampling using pooling and upsampling using bilinear interpolation between the stages, where the network extracts multi-scale and high-level features from the low-dose image to simulate a high-dose image, and adding concatenate connections to the low-dose image to preserve local information and resolution of the high-dose image, the high-dose image includes a dose reduction factor (DRF) equal to 1 of a radio tracer in a patient, the low-dose PET image includes a DRF of at least 4 of the radio tracer in the patient.
    Type: Grant
    Filed: April 24, 2018
    Date of Patent: June 14, 2022
    Assignee: The Board of Trustees of the Leland Stanford Junior University
    Inventors: Greg Zaharchuk, John M. Pauly, Enhao Gong
  • Publication number: 20210241458
    Abstract: A method for diagnostic imaging with reduced contrast agent dose uses a deep learning network (DLN) [114] that has been trained using zero-contrast [100] and low-contrast [102] images as input to the DLN and full-contrast images [104] as reference ground truth images. Prior to training, the images are pre-processed [106, 110, 118] to co-register and normalize them. The trained DLN [114] is then used to predict a synthesized full-dose contrast agent image [116] from acquired zero-dose and low-dose images.
    Type: Application
    Filed: April 26, 2021
    Publication date: August 5, 2021
    Inventors: Greg Zaharchuk, Enhao Gong, John M. Pauly
  • Patent number: 10997716
    Abstract: A method for diagnostic imaging with reduced contrast agent dose uses a deep learning network (DLN) [114] that has been trained using zero-contrast [100] and low-contrast [102] images as input to the DLN and full-contrast images [104] as reference ground truth images. Prior to training, the images are pre-processed [106, 110, 118] to co-register and normalize them. The trained DLN [114] is then used to predict a synthesized full-dose contrast agent image [116] from acquired zero-dose and low-dose images.
    Type: Grant
    Filed: October 9, 2018
    Date of Patent: May 4, 2021
    Assignee: The Board of Trustees of the Leland Stanford Junior University
    Inventors: Greg Zaharchuk, Enhao Gong, John M. Pauly
  • Publication number: 20210027436
    Abstract: Methods and systems for synthesizing contrast images from a quantitative acquisition are disclosed. An exemplary method includes performing a quantification scan, using a trained deep neural network to synthesize a contrast image from the quantification scan, and outputting the contrast image synthesized by the trained deep neural network. In another exemplary method, an operator can identify a target contrast type for the synthesized contrast image. A trained discriminator and classifier module determines whether the synthesized contrast image is of realistic image quality and whether the synthesized contrast image matches the target contrast type.
    Type: Application
    Filed: February 14, 2019
    Publication date: January 28, 2021
    Inventors: Suchandrima BANERJEE, Enhao GONG, Greg ZAHARCHUK, John M. PAULY
  • Patent number: 10859657
    Abstract: A method for diagnostic imaging includes measuring undersampled data y with a diagnostic imaging apparatus; linearly transforming the undersampled data y to obtain an initial image estimate {tilde over (x)}; applying the initial image estimate {tilde over (x)} as input to a generator network to obtain an aliasing artifact-reduced image x? as output of the generator network, where the aliasing artifact-reduced image x? is a projection onto a manifold of realistic images of the initial image estimate {tilde over (x)}; and performing an acquisition signal model projection of the aliasing artifact-reduced x? onto a space of consistent images to obtain a reconstructed image {circumflex over (x)} having suppressed image artifacts.
    Type: Grant
    Filed: May 31, 2019
    Date of Patent: December 8, 2020
    Assignee: The Board of Trustees of the Leland Stanford Junior University
    Inventors: Enhao Gong, Greg Zaharchuk, John M. Pauly, Morteza Mardani Korani
  • Publication number: 20200381096
    Abstract: Methods of performing experimental treatments on a cohort of subjects are provided. A predictive model can be utilized to predict progression of a medical disorder or relevant imaging biomarker. The predicted medical disorder progression can be utilized as a control to determine whether an experimental treatment has an effect on the progression of the medical disorder. In some instances, the enrollment of subjects within a control group for clinical experiment is eliminated or reduced.
    Type: Application
    Filed: June 3, 2020
    Publication date: December 3, 2020
    Applicant: The Board of Trustees of the Leland Stanford Junior University
    Inventor: Greg Zaharchuk
  • Publication number: 20200311914
    Abstract: A method of reducing radiation dose for radiology imaging modalities and nuclear medicine by using a convolutional network to generate a standard-dose nuclear medicine image from low-dose nuclear medicine image, where the network includes N convolution neural network (CNN) stages, where each stage includes M convolution layers having K×K kernels, where the network further includes an encoder-decoder structure having symmetry concatenate connections between corresponding stages, downsampling using pooling and upsampling using bilinear interpolation between the stages, where the network extracts multi-scale and high-level features from the low-dose image to simulate a high-dose image, and adding concatenate connections to the low-dose image to preserve local information and resolution of the high-dose image, the high-dose image includes a dose reduction factor (DRF) equal to 1 of a radio tracer in a patient, the low-dose PET image includes a DRF of at least 4 of the radio tracer in the patient.
    Type: Application
    Filed: April 24, 2018
    Publication date: October 1, 2020
    Inventors: Greg Zaharchuk, John M. Pauly, Enhao Gong
  • Patent number: 10775466
    Abstract: A system for magnetic resonance imaging an object via a stochastic optimization of a sampling function is provided. The system includes a magnet assembly and a controller. The magnet assembly is operative to acquire MR data from the object. The controller is operative to: acquire a first MR data set using the magnet assembly; select the sampling function from a plurality of sampling function candidates based at least in part on the stochastic optimization; and acquire a second MR data set from the object using the magnet assembly based at least in part on the sampling function.
    Type: Grant
    Filed: February 9, 2018
    Date of Patent: September 15, 2020
    Assignee: GE PRECISION HEALTHCARE LLC
    Inventors: Suchandrima Banerjee, Enhao Gong, Greg Zaharchuk, John Pauly
  • Publication number: 20190369191
    Abstract: A method for diagnostic imaging includes measuring undersampled data y with a diagnostic imaging apparatus; linearly transforming the undersampled data y to obtain an initial image estimate {tilde over (x)}; applying the initial image estimate {tilde over (x)} as input to a generator network to obtain an aliasing artifact-reduced image x? as output of the generator network, where the aliasing artifact-reduced image x? is a projection onto a manifold of realistic images of the initial image estimate {tilde over (x)}; and performing an acquisition signal model projection of the aliasing artifact-reduced x? onto a space of consistent images to obtain a reconstructed image {circumflex over (x)} having suppressed image artifacts.
    Type: Application
    Filed: May 31, 2019
    Publication date: December 5, 2019
    Inventors: Enhao Gong, Greg Zaharchuk, John M. Pauly, Morteza Mardani Korani
  • Patent number: 10467751
    Abstract: A method of improving diagnostic and functional imaging is provided by obtaining at least two input images of a subject, using a medical imager, where each input image includes a different contrast, generating a plurality of copies of the input images using non-local mean (NLM) filtering, using an appropriately programmed computer, where each input image copy of the subject includes different spatial characteristics, obtaining at least one reference image of the subject, using the medical imager, where the reference image includes imaging characteristics that are different form the input images of the subject, training a deep network model, using data augmentation on the appropriately programmed computer, to adaptively tune model parameters to approximate the reference image from an initial set of the input and reference images, with the goal of outputting an improved quality image of other sets of low SNR low resolution images, for analysis by a physician.
    Type: Grant
    Filed: October 4, 2018
    Date of Patent: November 5, 2019
    Assignee: The Board of Trustees of the Leland Stanford Junior University
    Inventors: Greg Zaharchuk, Enhao Gong, John M. Pauly
  • Publication number: 20190250233
    Abstract: A system for magnetic resonance imaging an object via a stochastic optimization of a sampling function is provided. The system includes a magnet assembly and a controller. The magnet assembly is operative to acquire MR data from the object. The controller is operative to: acquire a first MR data set using the magnet assembly; select the sampling function from a plurality of sampling function candidates based at least in part on the stochastic optimization; and acquire a second MR data set from the object using the magnet assembly based at least in part on the sampling function.
    Type: Application
    Filed: February 9, 2018
    Publication date: August 15, 2019
    Applicants: GENERAL ELECTRIC COMPANY, THE BOARD OF TRUSTEES OF THE LELAND STANFORD JUNIOR UNIVERSITY
    Inventors: SUCHANDRIMA BANERJEE, ENHAO GONG, GREG ZAHARCHUK, JOHN PAULY
  • Publication number: 20190108634
    Abstract: A method for diagnostic imaging with reduced contrast agent dose uses a deep learning network (DLN) [114] that has been trained using zero-contrast [100] and low-contrast images as input to the DLN and full-contrast images [104] as reference ground truth images. Prior to training, the images are pre-processed [106, 110, 118] to co-register and normalize them. The trained DLN [114] is then used to predict a synthesized full-dose contrast agent image [116] from acquired zero-dose and low-dose images.
    Type: Application
    Filed: October 9, 2018
    Publication date: April 11, 2019
    Inventors: Greg Zaharchuk, Enhao Gong, John M. Pauly
  • Publication number: 20190035078
    Abstract: A method of improving diagnostic and functional imaging is provided by obtaining at least two input images of a subject, using a medical imager, where each input image includes a different contrast, generating a plurality of copies of the input images using non-local mean (NLM) filtering, using an appropriately programmed computer, where each input image copy of the subject includes different spatial characteristics, obtaining at least one reference image of the subject, using the medical imager, where the reference image includes imaging characteristics that are different form the input images of the subject, training a deep network model, using data augmentation on the appropriately programmed computer, to adaptively tune model parameters to approximate the reference image from an initial set of the input and reference images, with the goal of outputting an improved quality image of other sets of low SNR low resolution images, for analysis by a physician.
    Type: Application
    Filed: October 4, 2018
    Publication date: January 31, 2019
    Inventors: Greg Zaharchuk, Enhao Gong, John M. Pauly
  • Patent number: 10096109
    Abstract: A method of improving diagnostic and functional imaging is provided by obtaining at least two input images of a subject, using a medical imager, where each input image includes a different contrast, generating a plurality of copies of the input images using non-local mean (NLM) filtering, using an appropriately programmed computer, where each input image copy of the subject includes different spatial characteristics, obtaining at least one reference image of the subject, using the medical imager, where the reference image includes imaging characteristics that are different form the input images of the subject, training a deep network model, using data augmentation on the appropriately programmed computer, to adaptively tune model parameters to approximate the reference image from an initial set of the input and reference images, with the goal of outputting an improved quality image of other sets of low SNR low resolution images, for analysis by a physician.
    Type: Grant
    Filed: March 31, 2017
    Date of Patent: October 9, 2018
    Assignee: The Board of Trustees of the Leland Stanford Junior University
    Inventors: Greg Zaharchuk, Enhao Gong, John M. Pauly