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Inferring physical agitation in dementia using smartwatch and sequential behavior models

机译:使用SmartWatch和顺序行为模型推断出痴呆症中的物理激动

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Caregivers of community-dwelling persons with dementia (PWD) often struggle with challenging and stressful circumstances associated with agitation episodes of the PWD. Such episodes pose a major health risk for both PWD and caregivers. Timely detection can prevent escalation of such events and their hazardous consequences. Wearable sensors are widely used for continuous sensing of physiological parameters, however, reliable inference of behavioral events from such signals is still an open research. Behavior inference in residential settings is challenging due to the prevalence of unpredictable and wide-variety activity patterns. This paper presents a novel methodology to infer the onset of agitation episodes from PWD inertial motion data. As part of a transdisciplinary study, inertial sensors on smart watches are used to unobtrusively capture motion patterns during month-long deployments from eight clinically diagnosed PWD residing in their homes. These patterns are analyzed to build a sequential behavior model using long short-term memory (LSTM) based recurrent neural network. The performance of this model in inferring the onset of agitation episodes is evaluated using data from real deployments. This paper shows the potential of such models in sensing-based behavior inference for real-world applications.
机译:社区住宅的护理人员患有痴呆症(PWD)往往与与PWD的激动发作相关的挑战和压力情况斗争。这种事件对PWD和护理人员构成了重大的健康风险。及时检测可以防止这些事件的升级及其危险后果。可穿戴式传感器广泛用于生理参数的连续感测,然而,这种信号的行为事件的可靠推断仍然是开放的研究。由于不可预测和广泛的活动模式的普遍性,住宅设置中的行为推断是具有挑战性的。本文提出了一种新的方法,可从PWD惯性运动数据推断出搅动发作的发作。作为跨学科研究的一部分,智能手表上的惯性传感器用于从八个临床诊断的临床诊断的PWD居住在家中的月长部署期间不引起运动模式。分析这些模式以使用基于长的短期存储器(LSTM)的经常性神经网络构建顺序行为模型。使用来自真实部署的数据评估该模型在推断出搅动剧集中的性能。本文显示了在基于传感的行为推论的这种模型的潜力,用于真实世界的应用。

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