Invention Grant
- Patent Title: Glucose prediction using machine learning and time series glucose measurements
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Application No.: US17112870Application Date: 2020-12-04
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Publication No.: US12205718B2Publication Date: 2025-01-21
- Inventor: Mark Derdzinski , Andrew Scott Parker
- Applicant: DexCom, Inc.
- Applicant Address: US CA San Diego
- Assignee: DexCom, Inc.
- Current Assignee: DexCom, Inc.
- Current Assignee Address: US CA San Diego
- Agency: PATTERSON + SHERIDAN, LLP
- Main IPC: G16H40/67
- IPC: G16H40/67 ; A61B5/00 ; A61B5/145 ; G06F17/18 ; G06N3/044 ; G06N3/08 ; G16H40/63 ; G16H50/20 ; G06N3/02 ; G06N3/0442 ; H04L67/12

Abstract:
Glucose prediction using machine learning (ML) and time series glucose measurements is described. Given the number of people that wear glucose monitoring devices and because some wearable glucose monitoring devices can produce measurements continuously, a platform providing such devices may have an enormous amount of data. This amount of data is practically, if not actually, impossible for humans to process and covers a robust number of state spaces unlikely to be covered without the enormous amount of data. In implementations, a glucose monitoring platform includes an ML model trained using historical time series glucose measurements of a user population. The ML model predicts upcoming glucose measurements for a particular user by receiving a time series of glucose measurements up to a time and determining the upcoming glucose measurements of the particular user for an interval subsequent to the time based on patterns learned from the historical time series glucose measurements.
Public/Granted literature
- US20210369151A1 GLUCOSE PREDICTION USING MACHINE LEARNING AND TIME SERIES GLUCOSE MEASUREMENTS Public/Granted day:2021-12-02
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