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Unobtrusive Detection of Frailty in Older Adults

机译:毫不显眼地检测老年人的体弱

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摘要

Sensor technologies have gained attention as an effective means to monitor physical and mental wellbeing of elderly. In this study, we examined the possibility of using passive in-home sensors to detect frailty in older adults based on their day-to-day in-home living pattern. The sensor-based elderly monitoring system consists of P1R motion sensors and a door contact sensor attached to the main door. A set of pre-defined features associated with elder-ly's day-to-day living patterns were derived based on sensor data of 46 elderly gathered over two different time periods. A series of feature vectors depicting different behavioral aspects were derived to train and test three machine learning algorithms; Logistic Regression, Linear Discriminant Analysis and Naive Bayes. The best prediction scores yielded by seven features, namely, daytime napping, time in the bedroom, night-time sleep, kitchen activity level, kitchen use duration, in-home transitions and away duration. These features produced an area under the ROC curve of 98%, 79% and 93%, for Logistic Regression, Linear Discriminant Analysis and Naieve Bayes algorithms respectively. The findings of this study provide implications on how a non-intrusive sensor-based monitoring system comprised of a minimum set of sensors coupled with predictive analytics can be used to detect frail elderly.
机译:传感器技术作为监视老年人身心健康的有效手段而受到关注。在这项研究中,我们研究了使用被动式室内传感器根据老年人的日常室内生活模式检测年老体弱的可能性。基于传感器的老人监控系统由P1R运动传感器和连接到主门的门接触传感器组成。根据在两个不同时间段收集的46位老年人的传感器数据,得出了与老年人的日常生活模式相关的一组预定义特征。导出了描述不同行为方面的一系列特征向量,以训练和测试三种机器学习算法。 Logistic回归,线性判别分析和朴素贝叶斯。最好的预测分数来自七个功能,分别是白天小睡,卧室时间,夜间睡眠,厨房活动水平,厨房使用时间,家庭过渡时间和离开时间。这些特征分别为逻辑回归,线性判别分析和Naieve Bayes算法在ROC曲线下产生了98%,79%和93%的面积。这项研究的发现为如何使用由最少的传感器集和预测分析组成的基于非侵入式传感器的监测系统检测脆弱的老年人提供了启示。

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