Patents by Inventor Alvaro Ulloa Cerna

Alvaro Ulloa Cerna 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: 11957507
    Abstract: A method for determining a predicted risk level of a clinical endpoint for a predetermined time period for a patient is provided by the present disclosure. The method includes receiving video frames of a heart, the video frames being associated with the patient, receiving electronic health record data including a number of variables associated with the patient, providing the video frames and the electronic health record data to the trained neural network, receiving a risk score from the trained neural network, and outputting a report based on the risk score to at least one of a display or a memory.
    Type: Grant
    Filed: November 16, 2020
    Date of Patent: April 16, 2024
    Assignee: Geisinger Clinic
    Inventors: Brandon K. Fornwalt, Christopher Haggerty, Alvaro Ulloa-Cerna, Christopher Good
  • Patent number: 11864944
    Abstract: A method for determining a predicted risk level of a clinical endpoint for a predetermined time period for a patient is provided by the present disclosure. The method includes receiving video frames of a heart, the video frames being associated with the patient, receiving electronic health record data including a number of variables associated with the patient, providing the video frames and the electronic health record data to the trained neural network, receiving a risk score from the trained neural network, and outputting a report based on the risk score to at least one of a display or a memory.
    Type: Grant
    Filed: November 16, 2020
    Date of Patent: January 9, 2024
    Assignee: Geisinger Clinic
    Inventors: Brandon K. Fornwalt, Christopher Haggerty, Alvaro Ulloa Cerna, Christopher Good
  • Patent number: 11869668
    Abstract: A method and system for predicting the likelihood that a patient will suffer from a cardiac event is provided. The method includes receiving electrocardiogram data associated with the patient, providing at least a portion of the electrocardiogram data to a trained model, receiving a risk score indicative of the likelihood the patient will suffer from the cardiac event within a predetermined period of time from when the electrocardiogram data was generated, and outputting the risk score to at least one of a memory or a display for viewing by a medical practitioner or healthcare administrator. The system includes at least one processor executing instructions to carry out the steps of the method.
    Type: Grant
    Filed: May 31, 2022
    Date of Patent: January 9, 2024
    Assignees: Tempus Labs, Inc., Geisinger Clinic
    Inventors: Arun Nemani, Greg Lee, Steve Steinhubl, Alvaro Ulloa-Cerna
  • Publication number: 20230245782
    Abstract: A method and system for determining cardiac disease risk from electrocardiogram trace data is provided. The method includes receiving electrocardiogram trace data associated with a patient, the electrocardiogram trace data having an electrocardiogram configuration including a plurality of leads. One or more leads of the plurality of leads that are derivable from a combination of other leads of the plurality of leads are identified, and a portion of the electrocardiogram trace data does not include electrocardiogram trace data of the one or more leads. The portion of the electrocardiogram data is provided to a trained machine learning model, to evaluate the portion of the electrocardiogram trace data with respect to one or more cardiac disease states. A risk score reflecting a likelihood of the patient being diagnosed with a cardiac disease state within a predetermined period of time is generated by the trained machine learning model based on the evaluation.
    Type: Application
    Filed: April 12, 2023
    Publication date: August 3, 2023
    Inventors: Noah Zimmerman, Brandon Fornwalt, John Pfeifer, Ruijun Chen, Arun Nemani, Greg Lee, Steve Steinhubl, Christopher Haggerty, Sushravya Raghunath, Alvaro Ulloa-Cerna, Linyuan Jing, Thomas Morland
  • Patent number: 11657921
    Abstract: A method and system for predicting the likelihood that a patient will suffer from a cardiac event is provided. The method includes receiving electrocardiogram data associated with the patient, providing at least a portion of the electrocardiogram data to a trained model, receiving a risk score indicative of the likelihood the patient will suffer from the cardiac event within a predetermined period of time from when the electrocardiogram data was generated, and outputting the risk score to at least one of a memory or a display for viewing by a medical practitioner or healthcare administrator. The system includes at least one processor executing instructions to carry out the steps of the method.
    Type: Grant
    Filed: May 31, 2022
    Date of Patent: May 23, 2023
    Assignees: Tempus Labs, Inc., Geisinger Clinic
    Inventors: Noah Zimmerman, Brandon Fornwalt, John Pfeifer, Ruijun Chen, Arun Nemani, Greg Lee, Steve Steinhubl, Christopher Haggerty, Sushravya Raghunath, Alvaro Ulloa-Cerna, Linyuan Jing, Thomas Morland
  • Publication number: 20230148456
    Abstract: A method and system for predicting the likelihood that a patient will suffer from a cardiac event is provided. The method includes receiving electrocardiogram data associated with the patient, providing at least a portion of the electrocardiogram data to a trained model, receiving a risk score indicative of the likelihood the patient will suffer from the cardiac event within a predetermined period of time from when the electrocardiogram data was generated, and outputting the risk score to at least one of a memory or a display for viewing by a medical practitioner or healthcare administrator. The system includes at least one processor executing instructions to carry out the steps of the method.
    Type: Application
    Filed: May 31, 2022
    Publication date: May 11, 2023
    Inventors: Noah Zimmerman, Brandon Fornwalt, John Pfeifer, Ruijun Chen, Arun Nemani, Greg Lee, Steve Steinhubl, Christopher Haggerty, Sushravya Raghunath, Alvaro Ulloa-Cerna, Linyuan Jing, Thomas Morland
  • Publication number: 20210145404
    Abstract: A method for determining a predicted risk level of a clinical endpoint for a predetermined time period for a patient is provided by the present disclosure. The method includes receiving video frames of a heart, the video frames being associated with the patient, receiving electronic health record data including a number of variables associated with the patient, providing the video frames and the electronic health record data to the trained neural network, receiving a risk score from the trained neural network, and outputting a report based on the risk score to at least one of a display or a memory.
    Type: Application
    Filed: November 16, 2020
    Publication date: May 20, 2021
    Inventors: Brandon K. Fornwalt, Christopher Haggerty, Alvaro Ulloa Cerna, Christopher Good
  • Publication number: 20210150693
    Abstract: A method for determining a predicted risk level of a clinical endpoint for a predetermined time period for a patient is provided by the present disclosure. The method includes receiving video frames of a heart, the video frames being associated with the patient, receiving electronic health record data including a number of variables associated with the patient, providing the video frames and the electronic health record data to the trained neural network, receiving a risk score from the trained neural network, and outputting a report based on the risk score to at least one of a display or a memory.
    Type: Application
    Filed: November 16, 2020
    Publication date: May 20, 2021
    Inventors: Brandon K. Fornwalt, Christopher Haggerty, Alvaro Ulloa Cerna, Christopher Good