Poor medication adherence presents serious economic and health problems including compromised treatment effectiveness, medical complications, and loss of billions of dollars in wasted medicine or procedures. Though various interventions have been proposed to address this problem, there is an urgent need to leverage light, smart, and minimally obtrusive technology such as smartwatches to develop user tools to improve medication use and adherence. In this study, we conducted several experiments on medication-taking activities, developed a smartwatch android application to collect the accelerometer hand gesture data from the smartwatch, and conveyed the data collected to a central cloud database. We developed neural networks, then trained the networks on the sensor data to recognize medication and non-medication gestures. With the proposed machine learning algorithm approach, this study was able to achieve average accuracy scores of 97% on the protocol-guided gesture data, and 95% on natural gesture data.
翻译:坚持不服药造成严重的经济和健康问题,包括治疗效力受损、医疗并发症和浪费药品或程序损失数十亿美元。 尽管提出了各种干预措施来解决这一问题,但迫切需要利用光、智能和最少侵入性技术,如智能观察开发用户工具,以改善药物的使用和坚持。 在这项研究中,我们进行了几项药物采集活动实验,开发了一个智能观察和机器人应用软件,从智能观察收集加速计手势数据,并将收集的数据传送到中央云层数据库。我们开发了神经网络,然后对传感器数据网络进行了培训,以识别药物和非药性手势。根据拟议的机器学习算法方法,这项研究得以在协议引导的手势数据上达到平均97%的准确分数,在自然手势数据上达到95%的准确分数。