Patents by Inventor Justin Yi-Kai Lee

Justin Yi-Kai Lee 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: 20240407734
    Abstract: A method for predicting disease is provided. The method includes generating biased analyte data by adding analyte sensor bias to historical analyte data, associating the biased analyte data with clinical disease diagnoses associated with the historical analyte data, and extracting features from the biased analyte data. The method further includes, for each model of a number of models, generating disease predictions based on different combinations of the features extracted from the biased analyte data, and evaluating the disease predictions based on the clinical disease diagnoses associated with the biased analyte data. The method further includes selecting a model and a combination of features based on a performance metric and a robustness metric.
    Type: Application
    Filed: June 7, 2024
    Publication date: December 12, 2024
    Inventors: Jee Hye PARK, Spencer Troy FRANK, David A. PRICE, Charles R. STROYECK, Arunachalam PANCH SANTHANAM, Joseph J. BAKER, Peter C. SIMPSON, Kazanna C. HAMES, Qi AN, Abdulrahman JBAILY, Justin Yi-Kai LEE, Stephanie Grace MOORE
  • Publication number: 20240407735
    Abstract: A method for predicting gestational diabetes mellitus (GDM) is provided. The method includes, at a continuous analyte monitoring (CAM) system, measuring at least glucose concentration levels of a user, generating sensor data packages based on the measured glucose concentration levels, and transmitting the sensor data packages. The method also includes, at a computing device, receiving the sensor data packages from the CAM system, determining a glucose feature combination from the measured glucose concentration levels, and generating a GDM prediction based on the glucose feature combination. The method may also include generating a quantitative GDM risk value based on the glucose feature combination. The quantitative GDM risk value has a range from a minimum risk value to a maximum risk value.
    Type: Application
    Filed: June 7, 2024
    Publication date: December 12, 2024
    Inventors: Spencer Troy FRANK, Jee Hye PARK, Justin Yi-Kai LEE, Stephanie Grace MOORE
  • Publication number: 20230186115
    Abstract: Systems, devices, and methods for data collection and development as well as providing user interaction policies are provided. In one embodiment, a method includes collecting contextual data for a first subset of a plurality of users. The method further includes generating a first set of contextual profiles for the first subset of the plurality of users based on the collected contextual data. Additionally, the method includes training one or more imputation models to develop the contextual data for the second subset of the plurality of users. The method also includes generating the contextual data for the second subset of the plurality of users using the one or more imputation models. Further, the method includes generating a second set of contextual profiles for the second subset of the plurality of users based on the generated contextual data for the second subset of the plurality of users.
    Type: Application
    Filed: December 14, 2022
    Publication date: June 15, 2023
    Inventors: Afshan A. KLEINHANZL, Alexander Michael DIENER, Adam G. NOAR, JR., Stacey Lynne FISCHER, Chad M. PATTERSON, Carly Rose OLSON, Michiko Araki KELLEY, Amit Premal JOSHIPURA, Spencer Troy FRANK, Qi AN, Abdulrahman JBAILY, Sophia PARK, Justin Yi-Kai LEE, Joost Herman VAN DER LINDEN, Mark DERDZINSKI
  • Publication number: 20230129902
    Abstract: Disease prediction using analyte measurements and machine learning is described. In one or more implementations, a combination of features of analyte measurements may be selected from a plurality of features of the analyte measurements based on a robustness metric and a performance metric of the combination, and a machine learning model may be trained to predict a health condition classification using the combination. The performance metric may be associated with an accuracy of predicting the health condition classification, and the robustness metric may be associated with an insensitivity to analyte sensor manufacturing variabilities on the accuracy. Once trained, the machine learning model predicts the health condition classification for a user based on analyte measurements of the user collected by a wearable analyte monitoring device. The combination of features may be extracted from the analyte measurements of the user and input into the machine learning model to predict the classification.
    Type: Application
    Filed: October 21, 2022
    Publication date: April 27, 2023
    Applicant: Dexcom, Inc.
    Inventors: Jee Hye Park, Spencer Troy Frank, David A. Price, Kazanna C. Hames, Charles R. Stroyeck, Joseph J. Baker, Arunachalam Panch Santhanam, Peter C. Simpson, Abdulrahman Jbaily, Justin Yi-Kai Lee, Qi An