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Automated Functional and Behavioral Health Assessment of Older Adults with Dementia

机译:痴呆症的老年人的自动功能和行为健康评估

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Dementia is a clinical syndrome of cognitive deficits that involves both memory and functional impairments. While disruptions in cognition is a striking feature of dementia, it is also closely coupled with changes in functional and behavioral health of older adults. In this paper, we investigate the challenges of improving the automatic assessment of dementia, by better exploiting the emerging physiological sensors in conjunction with ambient sensors in a real field environment with IRB approval. We hypothesize that the cognitive health of older individuals can be estimated by tracking their daily activities and mental arousal states. We employ signal processing on wearable sensor data streams (e.g., Electrodermal Activity (EDA), Photoplethysmogram (PPG), accelerometer (ACC)) and machine learning algorithms to assess cognitive impairments and its correlation with functional health decline. To validate our approach, we quantify the score of machine learning, survey and observation based Activities of Daily Living (ADLs) and signal processing based mental arousal state, respectively for functional and behavioral health measures among 17 older adults living in a continuing care retirement community in Baltimore. We compare clinically observed scores with technology guided automated scores using both machine learning and statistical techniques.
机译:痴呆症是一种认知缺陷的临床综合症,包括记忆力和功能性损伤。虽然认知中断是痴呆症的引人注目的特征,但它也与老年成年人功能性和行为健康的变化密切相关。在本文中,我们通过更好地利用具有IRB认可的真实场地环境中的环境传感器来改善新兴生理传感器来改善痴呆症自动评估的挑战。我们假设通过跟踪日常活动和精神唤起状态,可以估算老年人的认知健康。我们在可穿戴传感器数据流(例如,电台活性(EDA),光增性肌谱(PPG),加速度计(ACC))和机器学习算法上采用信号处理,以评估认知障碍及其与功能健康下降的相关性。为了验证我们的方法,我们分别量化了持有在持续护理退休社区的17名老年人中的功能和行为健康措施的机器学习,调查和基于信号处理的活动的成绩。在巴尔的摩。我们使用机器学习和统计技术比较使用技术引导自动分数的临床观察到的分数。

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