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利用机器学习和通过智能手表技术收集的加速度计数据检测服药手势:仪器验证研究

Detecting Medication-Taking Gestures Using Machine Learning and Accelerometer Data Collected via Smartwatch Technology: Instrument Validation Study.

作者信息

Odhiambo Chrisogonas Odero, Ablonczy Lukacs, Wright Pamela J, Corbett Cynthia F, Reichardt Sydney, Valafar Homayoun

机构信息

Department of Computer Science and Engineering, University of South Carolina, Columbia, SC, United States.

Honors College, University of South Carolina, Columbia, SC, United States.

出版信息

JMIR Hum Factors. 2023 May 4;10:e42714. doi: 10.2196/42714.

Abstract

BACKGROUND

Medication adherence is a global public health challenge, as only approximately 50% of people adhere to their medication regimens. Medication reminders have shown promising results in terms of promoting medication adherence. However, practical mechanisms to determine whether a medication has been taken or not, once people are reminded, remain elusive. Emerging smartwatch technology may more objectively, unobtrusively, and automatically detect medication taking than currently available methods.

OBJECTIVE

This study aimed to examine the feasibility of detecting natural medication-taking gestures using smartwatches.

METHODS

A convenience sample (N=28) was recruited using the snowball sampling method. During data collection, each participant recorded at least 5 protocol-guided (scripted) medication-taking events and at least 10 natural instances of medication-taking events per day for 5 days. Using a smartwatch, the accelerometer data were recorded for each session at a sampling rate of 25 Hz. The raw recordings were scrutinized by a team member to validate the accuracy of the self-reports. The validated data were used to train an artificial neural network (ANN) to detect a medication-taking event. The training and testing data included previously recorded accelerometer data from smoking, eating, and jogging activities in addition to the medication-taking data recorded in this study. The accuracy of the model to identify medication taking was evaluated by comparing the ANN's output with the actual output.

RESULTS

Most (n=20, 71%) of the 28 study participants were college students and aged 20 to 56 years. Most individuals were Asian (n=12, 43%) or White (n=12, 43%), single (n=24, 86%), and right-hand dominant (n=23, 82%). In total, 2800 medication-taking gestures (n=1400, 50% natural plus n=1400, 50% scripted gestures) were used to train the network. During the testing session, 560 natural medication-taking events that were not previously presented to the ANN were used to assess the network. The accuracy, precision, and recall were calculated to confirm the performance of the network. The trained ANN exhibited an average true-positive and true-negative performance of 96.5% and 94.5%, respectively. The network exhibited <5% error in the incorrect classification of medication-taking gestures.

CONCLUSIONS

Smartwatch technology may provide an accurate, nonintrusive means of monitoring complex human behaviors such as natural medication-taking gestures. Future research is warranted to evaluate the efficacy of using modern sensing devices and machine learning algorithms to monitor medication-taking behavior and improve medication adherence.

摘要

背景

药物依从性是一项全球性的公共卫生挑战,因为只有约50%的人会坚持他们的药物治疗方案。药物提醒在促进药物依从性方面已显示出有前景的结果。然而,在人们收到提醒后,确定药物是否已服用的实际机制仍然难以捉摸。新兴的智能手表技术可能比现有方法更客观、不显眼且自动地检测药物服用情况。

目的

本研究旨在检验使用智能手表检测自然药物服用手势的可行性。

方法

采用雪球抽样法招募了一个便利样本(N = 28)。在数据收集期间,每位参与者每天记录至少5次方案指导(脚本化)的药物服用事件和至少10次自然发生的药物服用事件,持续5天。使用智能手表,以25 Hz的采样率记录每次会话的加速度计数据。一名团队成员仔细检查原始记录以验证自我报告的准确性。经过验证的数据用于训练人工神经网络(ANN)以检测药物服用事件。训练和测试数据除了本研究中记录的药物服用数据外,还包括先前记录的来自吸烟、进食和慢跑活动的加速度计数据。通过将ANN的输出与实际输出进行比较,评估模型识别药物服用的准确性。

结果

28名研究参与者中大多数(n = 20,71%)是大学生,年龄在20至56岁之间。大多数个体是亚洲人(n = 12,43%)或白人(n = 12,43%),单身(n = 24,86%),且惯用右手(n = 23,82%)。总共使用2800个药物服用手势(n = 1400,50%自然手势加n = 1400, 50%脚本化手势)来训练网络。在测试阶段,使用560次先前未呈现给ANN的自然药物服用事件来评估网络。计算准确性、精确性和召回率以确认网络的性能。训练后的ANN表现出平均真阳性和真阴性性能分别为96.5%和94.5%。该网络在药物服用手势的错误分类中表现出<5%的误差。

结论

智能手表技术可能提供一种准确、非侵入性的手段来监测复杂的人类行为,如自然药物服用手势。未来有必要进行研究以评估使用现代传感设备和机器学习算法监测药物服用行为并提高药物依从性的效果。

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