Patents by Inventor Daniel Vance Litwiller

Daniel Vance Litwiller 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).

  • Publication number: 20220237748
    Abstract: Methods and systems are provided for independently removing streak artifacts and noise from medical images, using trained deep neural networks. In one embodiment, streak artifacts and noise may be selectively and independently removed from a medical image by receiving the medical image comprising streak artifacts and noise, mapping the medical image to a streak residual and a noise residual using the trained deep neural network, subtracting the streak residual from the medical image to a first extent, and subtracting the noise residual from the medical image to a second extent, to produce a de-noised medical image, and displaying the de-noised medical image via a display device.
    Type: Application
    Filed: April 12, 2022
    Publication date: July 28, 2022
    Inventors: Xinzeng Wang, Daniel Vance Litwiller, Sagar Mandava, Robert Marc Lebel, Graeme Colin Mckinnon, Ersin Bayram
  • Publication number: 20220198725
    Abstract: A computer-implemented method of removing truncation artifacts in magnetic resonance (MR) images is provided. The method includes receiving a crude image that is based on partial k-space data from a partial k-space that is asymmetrically truncated in at least one k-space dimension. The method also includes analyzing the crude image using a neural network model trained with a pair of pristine images and corrupted images. The corrupted images are based on partial k-space data from partial k-spaces truncated in one or more partial sampling patterns. The pristine images are based on full k-space data corresponding to the partial k-space data of the corrupted images, and target output images of the neural network model are the pristine images. The method further includes deriving an improved image of the crude image based on the analysis, wherein the derived improved image includes reduced truncation artifacts and increased high spatial frequency data.
    Type: Application
    Filed: December 22, 2020
    Publication date: June 23, 2022
    Inventors: Daniel Vance Litwiller, Robert Marc Lebel, Xinzeng Wang, Arnaud Guidon, Ersin Bayram
  • Patent number: 11346912
    Abstract: A computer-implemented method of correcting phase and reducing noise in magnetic resonance (MR) phase images is provided. The method includes executing a neural network model for analyzing MR images, wherein the neural network model is trained with a pair of pristine images and corrupted images, wherein the corrupted images include corrupted phase information, the pristine images are the corrupted images with the corrupted phase information reduced, and target output images of the neural network model are the pristine images. The method further includes receiving MR images including corrupted phase information, and analyzing the received MR images using the neural network model. The method also includes deriving pristine phase images of the received MR images based on the analysis, wherein the derived pristine phase images include reduced corrupted phase information, compared to the received MR images, and outputting MR images based on the derived pristine phase images.
    Type: Grant
    Filed: July 23, 2020
    Date of Patent: May 31, 2022
    Assignee: GE Precision Healthcare LLC
    Inventors: Arnaud Guidon, Xinzeng Wang, Daniel Vance Litwiller, Tim Sprenger, Robert Marc Lebel, Ersin Bayram
  • Patent number: 11341616
    Abstract: Methods and systems are provided for independently removing streak artifacts and noise from medical images, using trained deep neural networks. In one embodiment, streak artifacts and noise may be selectively and independently removed from a medical image by receiving the medical image comprising streak artifacts and noise, mapping the medical image to a streak residual and a noise residual using the trained deep neural network, subtracting the streak residual from the medical image to a first extent, and subtracting the noise residual from the medical image to a second extent, to produce a de-noised medical image, and displaying the de-noised medical image via a display device.
    Type: Grant
    Filed: March 23, 2020
    Date of Patent: May 24, 2022
    Assignee: GE Precision Healthcare
    Inventors: Xinzeng Wang, Daniel Vance Litwiller, Sagar Mandava, Robert Marc Lebel, Graeme Colin McKinnon, Ersin Bayram
  • Publication number: 20220130084
    Abstract: Methods and systems are provided for processing medical images using deep neural networks. In one embodiment, a medical image processing method comprises receiving a first medical image having a first characteristic and one or more acquisition parameters corresponding to acquisition of the first medical image, incorporating the one or more acquisition parameters into a trained deep neural network, and mapping, by the trained deep neural network, the first medical image to a second medical image having a second characteristic. The deep neural network may thereby receive at least partial information regarding the type, extent, and/or spatial distribution of the first characteristic in a first medical image, enabling the trained deep neural network to selectively convert the received first medical image.
    Type: Application
    Filed: January 7, 2022
    Publication date: April 28, 2022
    Inventors: Daniel Vance Litwiller, Robert Marc Lebel
  • Patent number: 11257191
    Abstract: Methods and systems are provided for deblurring medical images using deep neural networks. In one embodiment, a method for deblurring a medical image comprises receiving a blurred medical image and one or more acquisition parameters corresponding to acquisition of the blurred medical image, incorporating the one or more acquisition parameters into a trained deep neural network, and mapping, by the trained deep neural network, the blurred medical image to a deblurred medical image. The deep neural network may thereby receive at least partial information regarding the type, extent, and/or spatial distribution of blurring in a blurred medical image, enabling the trained deep neural network to selectively deblur the received blurred medical image.
    Type: Grant
    Filed: August 16, 2019
    Date of Patent: February 22, 2022
    Assignee: GE Precision Healthcare LLC
    Inventors: Daniel Vance Litwiller, Robert Marc Lebel
  • Publication number: 20220026516
    Abstract: A computer-implemented method of correcting phase and reducing noise in magnetic resonance (MR) phase images is provided. The method includes executing a neural network model for analyzing MR images, wherein the neural network model is trained with a pair of pristine images and corrupted images, wherein the corrupted images include corrupted phase information, the pristine images are the corrupted images with the corrupted phase information reduced, and target output images of the neural network model are the pristine images. The method further includes receiving MR images including corrupted phase information, and analyzing the received MR images using the neural network model. The method also includes deriving pristine phase images of the received MR images based on the analysis, wherein the derived pristine phase images include reduced corrupted phase information, compared to the received MR images, and outputting MR images based on the derived pristine phase images.
    Type: Application
    Filed: July 23, 2020
    Publication date: January 27, 2022
    Inventors: Arnaud Guidon, Xinzeng Wang, Daniel Vance Litwiller, Tim Sprenger, Robert Marc Lebel, Ersin Bayram
  • Publication number: 20210295474
    Abstract: Methods and systems are provided for independently removing streak artifacts and noise from medical images, using trained deep neural networks. In one embodiment, streak artifacts and noise may be selectively and independently removed from a medical image by receiving the medical image comprising streak artifacts and noise, mapping the medical image to a streak residual and a noise residual using the trained deep neural network, subtracting the streak residual from the medical image to a first extent, and subtracting the noise residual from the medical image to a second extent, to produce a de-noised medical image, and displaying the de-noised medical image via a display device.
    Type: Application
    Filed: March 23, 2020
    Publication date: September 23, 2021
    Inventors: Xinzeng Wang, Daniel Vance Litwiller, Sagar Mandava, Robert Marc Lebel, Graeme Colin McKinnon, Ersin Bayram
  • Publication number: 20210049743
    Abstract: Methods and systems are provided for deblurring medical images using deep neural networks. In one embodiment, a method for deblurring a medical image comprises receiving a blurred medical image and one or more acquisition parameters corresponding to acquisition of the blurred medical image, incorporating the one or more acquisition parameters into a trained deep neural network, and mapping, by the trained deep neural network, the blurred medical image to a deblurred medical image. The deep neural network may thereby receive at least partial information regarding the type, extent, and/or spatial distribution of blurring in a blurred medical image, enabling the trained deep neural network to selectively deblur the received blurred medical image.
    Type: Application
    Filed: August 16, 2019
    Publication date: February 18, 2021
    Inventors: Daniel Vance Litwiller, Robert Marc Lebel