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GLUCOSE PREDICTION USING MACHINE LEARNING AND TIME SERIES GLUCOSE MEASUREMENTS

机译:使用机器学习和时间序列葡萄糖测量的葡萄糖预测

摘要

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.
机译:描述使用机器学习(ML)和时间序列葡萄糖测量的葡萄糖预测。 鉴于佩戴葡萄糖监测装置的人数,并且因为某些可携带的葡萄糖监测装置可以连续产生测量,那么提供这种装置的平台可能具有大量数据。 这种数据实际上是实际上,如果实际上不是,人类不可能处理并涵盖不太可能在没有大量数据量的情况下覆盖的强大状态空间。 在实施方式中,葡萄糖监测平台包括使用用户群的历史时序血糖测量训练的ML模型。 ML模型通过接收到时间序列的时间序列,通过接收到时间序列的时间序列来预测特定用户的葡萄糖测量,并根据从历史时序序列血糖中学到的图案之后的时间间隔内确定特定用户的即将到来的葡萄糖测量 测量。

著录项

  • 公开/公告号US2021369151A1

    专利类型

  • 公开/公告日2021-12-02

    原文格式PDF

  • 申请/专利权人 DEXCOM INC.;

    申请/专利号US202017112870

  • 发明设计人 MARK DERDZINSKI;ANDREW SCOTT PARKER;

    申请日2020-12-04

  • 分类号A61B5/145;A61B5;

  • 国家 US

  • 入库时间 2022-08-24 22:35:18

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