Patents by Inventor Ronald Baxter

Ronald Baxter 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: 20240281966
    Abstract: Machine learning systems and methods are disclosed for prediction of wound healing, such as for diabetic foot ulcers or other wounds, and for assessment implementations such as segmentation of images into wound regions and non-wound regions. Systems for assessing or predicting wound healing can include a light detection element configured to collect light of at least a first wavelength reflected from a tissue region including a wound, and one or more processors configured to generate an image based on a signal from the light detection element having pixels depicting the tissue region, determine reflectance intensity values for at least a subset of the pixels, determine one or more quantitative features of the subset of the plurality of pixels based on the reflectance intensity values, and generate a predicted or assessed healing parameter associated with the wound over a predetermined time interval.
    Type: Application
    Filed: March 28, 2024
    Publication date: August 22, 2024
    Inventors: Wensheng Fan, John Michael DiMaio, Jeffrey E. Thatcher, Peiran Quan, Faliu Yi, Kevin Plant, Ronald Baxter, Brian McCall, Zhicun Gao, Jason Dwight
  • Patent number: 11948300
    Abstract: Machine learning systems and methods are disclosed for prediction of wound healing, such as for diabetic foot ulcers or other wounds, and for assessment implementations such as segmentation of images into wound regions and non-wound regions. Systems for assessing or predicting wound healing can include a light detection element configured to collect light of at least a first wavelength reflected from a tissue region including a wound, and one or more processors configured to generate an image based on a signal from the light detection element having pixels depicting the tissue region, determine reflectance intensity values for at least a subset of the pixels, determine one or more quantitative features of the subset of the plurality of pixels based on the reflectance intensity values, and generate a predicted or assessed healing parameter associated with the wound over a predetermined time interval.
    Type: Grant
    Filed: March 2, 2023
    Date of Patent: April 2, 2024
    Assignee: Spectral MD, Inc.
    Inventors: Wensheng Fan, John Michael DiMaio, Jeffrey E. Thatcher, Peiran Quan, Faliu Yi, Kevin Plant, Ronald Baxter, Brian McCall, Zhicun Gao, Jason Dwight
  • Publication number: 20230222654
    Abstract: Machine learning systems and methods are disclosed for prediction of wound healing, such as for diabetic foot ulcers or other wounds, and for assessment implementations such as segmentation of images into wound regions and non-wound regions. Systems for assessing or predicting wound healing can include a light detection element configured to collect light of at least a first wavelength reflected from a tissue region including a wound, and one or more processors configured to generate an image based on a signal from the light detection element having pixels depicting the tissue region, determine reflectance intensity values for at least a subset of the pixels, determine one or more quantitative features of the subset of the plurality of pixels based on the reflectance intensity values, and generate a predicted or assessed healing parameter associated with the wound over a predetermined time interval.
    Type: Application
    Filed: March 2, 2023
    Publication date: July 13, 2023
    Inventors: Wensheng Fan, John Michael DiMaio, Jeffrey E. Thatcher, Peiran Quan, Faliu Yi, Kevin Plant, Ronald Baxter, Brian McCall, Zhicun Gao, Jason Dwight
  • Patent number: 11599998
    Abstract: Machine learning systems and methods are disclosed for prediction of wound healing, such as for diabetic foot ulcers or other wounds, and for assessment implementations such as segmentation of images into wound regions and non-wound regions. Systems for assessing or predicting wound healing can include a light detection element configured to collect light of at least a first wavelength reflected from a tissue region including a wound, and one or more processors configured to generate an image based on a signal from the light detection element having pixels depicting the tissue region, determine reflectance intensity values for at least a subset of the pixels, determine one or more quantitative features of the subset of the plurality of pixels based on the reflectance intensity values, and generate a predicted or assessed healing parameter associated with the wound over a predetermined time interval.
    Type: Grant
    Filed: September 4, 2020
    Date of Patent: March 7, 2023
    Assignee: SPECTRAL MD, INC.
    Inventors: Wensheng Fan, John Michael DiMaio, Jeffrey E. Thatcher, Peiran Quan, Faliu Yi, Kevin Plant, Ronald Baxter, Brian McCall, Zhicun Gao, Jason Dwight
  • Publication number: 20210201479
    Abstract: Machine learning systems and methods are disclosed for prediction of wound healing, such as for diabetic foot ulcers or other wounds, and for assessment implementations such as segmentation of images into wound regions and non-wound regions. Systems for assessing or predicting wound healing can include a light detection element configured to collect light of at least a first wavelength reflected from a tissue region including a wound, and one or more processors configured to generate an image based on a signal from the light detection element having pixels depicting the tissue region, determine reflectance intensity values for at least a subset of the pixels, determine one or more quantitative features of the subset of the plurality of pixels based on the reflectance intensity values, and generate a predicted or assessed healing parameter associated with the wound over a predetermined time interval.
    Type: Application
    Filed: September 4, 2020
    Publication date: July 1, 2021
    Inventors: Wensheng Fan, John Michael DiMaio, Jeffrey E. Thatcher, Peiran Quan, Faliu Yi, Kevin Plant, Ronald Baxter, Brian McCall, Zhicun Gao, Jason Dwight
  • Patent number: 10783632
    Abstract: Machine learning systems and methods are disclosed for prediction of wound healing, such as for diabetic foot ulcers or other wounds, and for assessment implementations such as segmentation of images into wound regions and non-wound regions. Systems for assessing or predicting wound healing can include a light detection element configured to collect light of at least a first wavelength reflected from a tissue region including a wound, and one or more processors configured to generate an image based on a signal from the light detection element having pixels depicting the tissue region, determine reflectance intensity values for at least a subset of the pixels, determine one or more quantitative features of the subset of the plurality of pixels based on the reflectance intensity values, and generate a predicted or assessed healing parameter associated with the wound over a predetermined time interval.
    Type: Grant
    Filed: January 9, 2020
    Date of Patent: September 22, 2020
    Assignee: SPECTRAL MD, INC.
    Inventors: Wensheng Fan, John Michael DiMaio, Jeffrey E. Thatcher, Peiran Quan, Faliu Yi, Kevin Plant, Ronald Baxter, Brian McCall, Zhicun Gao, Jason Dwight
  • Publication number: 20200193597
    Abstract: Machine learning systems and methods are disclosed for prediction of wound healing, such as for diabetic foot ulcers or other wounds, and for assessment implementations such as segmentation of images into wound regions and non-wound regions. Systems for assessing or predicting wound healing can include a light detection element configured to collect light of at least a first wavelength reflected from a tissue region including a wound, and one or more processors configured to generate an image based on a signal from the light detection element having pixels depicting the tissue region, determine reflectance intensity values for at least a subset of the pixels, determine one or more quantitative features of the subset of the plurality of pixels based on the reflectance intensity values, and generate a predicted or assessed healing parameter associated with the wound over a predetermined time interval.
    Type: Application
    Filed: January 9, 2020
    Publication date: June 18, 2020
    Inventors: Wensheng Fan, John Michael DiMaio, Jeffrey E. Thatcher, Peiran Quan, Faliu Yi, Kevin Plant, Ronald Baxter, Brian McCall, Zhicun Gao, Jason Dwight