Patents by Inventor Katharine Forth

Katharine Forth 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: 20230307142
    Abstract: Aspects of this disclosure relate to methods and systems for assessing multifactorial balance health and implementation of a risk alert system. The fall risk information can be used to notify the person and/or a third-party monitoring person (e.g., doctor, physical therapist, personal trainer, etc.) of the person's fall risk. This information may be used to monitor and track changes in fall risk that may be impacted by changes in health status, lifestyle behaviors, or medical treatment. Furthermore, the fall risk classification may help individuals be more careful on the days they are more at risk for falling.
    Type: Application
    Filed: March 23, 2023
    Publication date: September 28, 2023
    Applicant: ZIBRIO. The Balance Company
    Inventors: Katharine Forth, Erez Lieberman Aiden, Kristin Bartlett
  • Patent number: 10863927
    Abstract: A person's fall risk may be determined based on machine learning algorithms. The fall risk information can be used to notify the person and/or a third party monitoring person (e.g. doctor, physical therapist, personal trainer, etc.) of the person's fall risk. This information may be used to monitor and track changes in fall risk that may be impacted by changes in health status, lifestyle behaviors or medical treatment. Furthermore, the fall risk classification may help individuals be more careful on the days they are more at risk for falling. The fall risk may be estimated using machine learning algorithms that process data from load sensors by computing basic and advanced punctuated equilibrium model (PEM) stability metrics.
    Type: Grant
    Filed: January 24, 2020
    Date of Patent: December 15, 2020
    Assignee: Zibrio Inc.
    Inventors: Katharine Forth, Erez Lieberman Aiden
  • Publication number: 20200155039
    Abstract: A person's fall risk may be determined based on machine learning algorithms. The fall risk information can be used to notify the person and/or a third party monitoring person (e.g. doctor, physical therapist, personal trainer, etc.) of the person's fall risk. This information may be used to monitor and track changes in fall risk that may be impacted by changes in health status, lifestyle behaviors or medical treatment. Furthermore, the fall risk classification may help individuals be more careful on the days they are more at risk for falling. The fall risk may be estimated using machine learning algorithms that process data from load sensors by computing basic and advanced punctuated equilibrium model (PEM) stability metrics.
    Type: Application
    Filed: January 24, 2020
    Publication date: May 21, 2020
    Applicant: Zibrio Inc.
    Inventors: Katharine Forth, Erez Lieberman Aiden
  • Patent number: 10542914
    Abstract: A person's fall risk may be determined based on machine learning algorithms. The fall risk information can be used to notify the person and/or a third party monitoring person (e.g. doctor, physical therapist, personal trainer, etc.) of the person's fall risk. This information may be used to monitor and track changes in fall risk that may be impacted by changes in health status, lifestyle behaviors or medical treatment. Furthermore, the fall risk classification may help individuals be more careful on the days they are more at risk for falling. The fall risk may be estimated using machine learning algorithms that process data from load sensors by computing basic and advanced punctuated equilibrium model (PEM) stability metrics.
    Type: Grant
    Filed: May 22, 2019
    Date of Patent: January 28, 2020
    Assignee: Zibrio Inc.
    Inventors: Katharine Forth, Erez Lieberman Aiden
  • Publication number: 20190269354
    Abstract: A person's fall risk may be determined based on machine learning algorithms. The fall risk information can be used to notify the person and/or a third party monitoring person (e.g. doctor, physical therapist, personal trainer, etc.) of the person's fall risk. This information may be used to monitor and track changes in fall risk that may be impacted by changes in health status, lifestyle behaviors or medical treatment. Furthermore, the fall risk classification may help individuals be more careful on the days they are more at risk for falling. The fall risk may be estimated using machine learning algorithms that process data from load sensors by computing basic and advanced punctuated equilibrium model (PEM) stability metrics.
    Type: Application
    Filed: May 22, 2019
    Publication date: September 5, 2019
    Applicant: Zibrio Inc.
    Inventors: Katharine Forth, Erez Lieberman Aiden
  • Patent number: 10307084
    Abstract: A person's fall risk may be determined based on machine learning algorithms. The fall risk information can be used to notify the person and/or a third party monitoring person (e.g. doctor, physical therapist, personal trainer, etc.) of the person's fall risk. This information may be used to monitor and track changes in fall risk that may be impacted by changes in health status, lifestyle behaviors or medical treatment. Furthermore, the fall risk classification may help individuals be more careful on the days they are more at risk for falling. The fall risk may be estimated using machine learning algorithms that process data from load sensors by computing basic and advanced punctuated equilibrium model (PEM) stability metrics.
    Type: Grant
    Filed: June 29, 2016
    Date of Patent: June 4, 2019
    Assignee: ZIBRIO INC.
    Inventors: Katharine Forth, Erez Lieberman Aiden
  • Publication number: 20170000387
    Abstract: A person's fall risk may be determined based on machine learning algorithms. The fall risk information can be used to notify the person and/or a third party monitoring person (e.g. doctor, physical therapist, personal trainer, etc.) of the person's fall risk. This information may be used to monitor and track changes in fall risk that may be impacted by changes in health status, lifestyle behaviors or medical treatment. Furthermore, the fall risk classification may help individuals be more careful on the days they are more at risk for falling. The fall risk may be estimated using machine learning algorithms that process data from load sensors by computing basic and advanced punctuated equilibrium model (PEM) stability metrics.
    Type: Application
    Filed: June 29, 2016
    Publication date: January 5, 2017
    Applicant: iShoe, Inc.
    Inventors: Katharine Forth, Erez Lieberman Aiden