A Scalable Smartwatch-Based Medication Intake Detection System Using Distributed Machine Learning

被引:0
作者
Donya Fozoonmayeh
Hai Vu Le
Ekaterina Wittfoth
Chong Geng
Natalie Ha
Jingjue Wang
Maria Vasilenko
Yewon Ahn
Diane Myung-kyung Woodbridge
机构
[1] University of San Francisco,Data Science
[2] University of California,undefined
来源
Journal of Medical Systems | 2020年 / 44卷
关键词
Medication adherence; Internet of things; Wearable; Smartwatch; Health monitoring; Machine learning; Cloud computing; Distributed information systems; Distributed computing; Distributed databases.;
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摘要
Poor Medication adherence causes significant economic impact resulting in hospital readmission, hospital visits and other healthcare costs. The authors developed a smartwatch application and a cloud based data pipeline for developing a user-friendly medication intake monitoring system that can contribute to improving medication adherence. The developed Android smartwatch application collects activity sensor data using accelerometer and gyroscope. The cloud-based data pipeline includes distributed data storage, distributed database management system and distributed computing frameworks in order to build a machine learning model which identifies activity types using sensor data. With the proposed sensor data extraction, preprocessing and machine learning algorithms, this study successfully achieved a high F1 score of 0.977 with 13.313 seconds of training time and 0.139 seconds for testing.
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