Early Detection of Health Changes in the Elderly Using In-Home Multi-Sensor Data Streams

Wenlong Wu, J. Keller, M. Skubic, M. Popescu, Kari R. Lane
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引用次数: 7

Abstract

The rapid aging of the population worldwide requires increased attention from healthcare providers and the entire society. For the elderly to live independently, many health issues related to old age, such as frailty and risk of falling, need increased attention and monitoring. When monitoring daily routines for older adults, it is desirable to detect the early signs of health changes before serious health events, such as hospitalizations, happen so that timely and adequate preventive care may be provided. By deploying multi-sensor systems in homes of the elderly, we can track trajectories of daily behaviors in a feature space defined using the sensor data. In this article, we investigate a methodology for tracking the evolution of the behavior trajectories over long periods (years) using high-dimensional streaming clustering and provide very early indicators of changes in health. If we assume that habitual behaviors correspond to clusters in feature space and diseases produce a change in behavior, albeit not highly specific, tracking trajectory deviations can provide hints of early illness. Retrospectively, we visualize the streaming clustering results and track how the behavior clusters evolve in feature space with the help of two dimension-reduction algorithms: Principal Component Analysis and t-distributed Stochastic Neighbor Embedding. Moreover, our tracking algorithm in the original high-dimensional feature space generates early health warning alerts if a negative trend is detected in the behavior trajectory. We validated our algorithm on synthetic data and tested it on a pilot dataset of four TigerPlace residents monitored with a collection of motion, bed, and depth sensors over 10 years. We used the TigerPlace electronic health records to understand the residents’ behavior patterns and to evaluate the health warnings generated by our algorithm. The results obtained on the TigerPlace dataset show that most of the warnings produced by our algorithm can be linked to health events documented in the electronic health records, providing strong support for a prospective deployment of the approach.
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利用家庭多传感器数据流早期检测老年人的健康变化
全球人口的快速老龄化需要医疗保健提供者和整个社会更加关注。为了让老年人独立生活,许多与老年有关的健康问题,如虚弱和跌倒风险,需要更多的关注和监测。在监测老年人的日常生活时,最好在发生严重健康事件(如住院)之前发现健康变化的早期迹象,以便提供及时和充分的预防性护理。通过在老年人的家中部署多传感器系统,我们可以在使用传感器数据定义的特征空间中跟踪日常行为的轨迹。在这篇文章中,我们研究了一种使用高维流聚类跟踪长期(多年)行为轨迹演变的方法,并提供了健康变化的早期指标。如果我们假设习惯性行为与特征空间中的集群相对应,并且疾病会导致行为的变化,尽管不是很具体,那么跟踪轨迹偏差可以提供早期疾病的提示。回顾性地,我们借助两种降维算法:主成分分析和t分布随机邻居嵌入,可视化流聚类结果,并跟踪行为聚类在特征空间中的演化。此外,如果在行为轨迹中检测到负面趋势,我们在原始高维特征空间中的跟踪算法会生成早期健康警告警报。我们在合成数据上验证了我们的算法,并在由四名TigerPlace居民组成的试点数据集上进行了测试,该数据集由运动、床和深度传感器组成,历时10年。我们使用TigerPlace电子健康记录来了解居民的行为模式,并评估我们的算法生成的健康警告。在TigerPlace数据集上获得的结果表明,我们的算法产生的大多数警告都可以与电子健康记录中记录的健康事件相关联,为该方法的前瞻性部署提供了强有力的支持。
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