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Medhere: A Smartwatch-based Medication Adherence Monitoring System using Machine Learning and Distributed Computing

机译:Medhere:使用机器学习和分布式计算的基于Smartwatch的药物依从性监测系统

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Poor medication adherence threatens an individual's health and is responsible for substantial medical costs in the United States annually. In order to improve medication adherence rates and provide timely reminders, we developed a smartwatch application that collects data from embedded inertial sensors, which include an accelerometer and gyroscope, to monitor a series of actions happening during an individual's medication intake. After the collected data was delivered to a server, Apache Spark was used to distribute the data and apply machine learning algorithms in order to predict several discrete actions including medication intake. By utilizing these tools, we were able to preprocess high frequency sensor data and apply a random forest algorithm, yielding high frequency and recall of the aforementioned actions.
机译:药物依从性差会威胁到个人的健康,并且在美国每年要承担大量的医疗费用。为了提高用药率并及时提醒,我们开发了一个智能手表应用程序,该程序从嵌入式惯性传感器(包括加速度计和陀螺仪)收集数据,以监控个人用药期间发生的一系列动作。将收集到的数据传送到服务器后,使用Apache Spark分发数据并应用机器学习算法,以便预测包括药物摄入在内的几种离散动作。通过使用这些工具,我们能够预处理高频传感器数据并应用随机森林算法,从而产生高频并回想上述动作。

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