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Validation of Rule-based Inference of Selected Independent Activities of Daily Living.

机译:验证日常生活中某些独立活动的基于规则的推断。

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This paper explores the validity of a rule-based inference method of selected independent activities of daily living (ADLs). An inexpensive ADL monitoring system was installed in the community for 37 days to monitor a middle-aged, healthy individual living alone. The subject was given a personal digital assistant (PDA), running custom activity diary software, and asked to record activities in real-time. Rule-based activity inference algorithms were refined on data from 17 days, and data from the remaining 20 days were used for validation. The chisquare statistic was computed for 2 x 2 contingency tables comparing activities detected by the algorithms to user-logged activities. The phi (r()) and Cohen's kappa (kappa) coefficients were computed as measures of correlation. After correcting for subject noncompliance in logging activities, the kappa correlation between the meal detection algorithm and the PDA record was 0.84, with 91% sensitivity, and 100% specificity. Similarly, the kappa correlation between the shower detection algorithm and the PDA record is 0.69, with 67% sensitivity and 100% specificity. The detection algorithms and the sensory data did not miss any main meals or showering activities recorded on the PDA. The results suggest that rule-based algorithms can successfully detect meal preparation and showering activities using simple low-cost detectors. The sensors and detection algorithms reported events not recorded by the occupant on the PDA attributed to reporting noncompliance. Overall, the PDA activity journal was a compromise between paper diaries, which are more time consuming to keep, and may result in higher noncompliance errors, and video recording, which is considered intrusive.
机译:本文探讨了选择的日常生活独立活动(ADL)的基于规则的推理方法的有效性。在社区中安装了一个便宜的ADL监控系统,进行了3​​7天的监控,以监控一个中年,健康的个人独居。为该受试者提供了个人数字助理(PDA),运行自定义活动日志软件,并要求对其进行实时记录。基于规则的活动推理算法对17天的数据进行了细化,其余20天的数据用于验证。计算了2 x 2列联表的卡方统计量,将算法检测到的活动与用户记录的活动进行了比较。计算phi(r())和科恩卡伯(kappa)系数作为相关度量。在纠正受试者在伐木活动中的不依从行为后,进餐检测算法与PDA记录之间的kappa相关性为0.84,灵敏度为91%,特异性为100%。同样,淋浴检测算法和PDA记录之间的kappa相关性是0.69,灵敏度为67%,特异性为100%。检测算法和感官数据不会错过PDA上记录的任何主餐或淋浴活动。结果表明,基于规则的算法可以使用简单的低成本检测器成功检测餐食准备和淋浴活动。传感器和检测算法报告的事件未由乘员记录在PDA上,这归因于报告不合规。总体而言,PDA活动日志是纸质日记之间的一种折衷,纸质日记的保存比较耗时,并且可能导致更高的不合规错误,而视频记录则被认为是侵入性的。

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