Razjouyan Javad, Najafi Bijan, Horstman Molly, Sharafkhaneh Amir, Amirmazaheri Mona, Zhou He, Kunik Mark E, Naik Aanand
VA HSR&D Center for Innovations in Quality, Effectiveness and Safety, Michael E. DeBakey VA Medical Center, Houston, TX, USA.
Department of Medicine, Baylor College of Medicine, Houston, TX, USA.
Sensors (Basel). 2020 Apr 14;20(8):2218. doi: 10.3390/s20082218.
Physical frailty together with cognitive impairment (Cog), known as cognitive frailty, is emerging as a strong and independent predictor of cognitive decline over time. We examined whether remote physical activity (PA) monitoring could be used to identify those with cognitive frailty. A validated algorithm was used to quantify PA behaviors, PA patterns, and nocturnal sleep using accelerometer data collected by a chest-worn sensor for 48-h. Participants ( = 163, 75 ± 10 years, 79% female) were classified into four groups based on presence or absence of physical frailty and Cog: PR-Cog-, PR+Cog-, PR-Cog+, and PR+Cog+. Presence of physical frailty (PR-) was defined as underperformance in any of the five frailty phenotype criteria based on Fried criteria. Presence of Cog (Cog-) was defined as a Mini-Mental State Examination (MMSE) score of less than 27. A decision tree classifier was used to identify the PR-Cog- individuals. In a univariate model, sleep (time-in-bed, total sleep time, percentage of sleeping on prone, supine, or sides), PA behavior (sedentary and light activities), and PA pattern (percentage of walk and step counts) were significant metrics for identifying PR-Cog- ( < 0.050). The decision tree classifier reached an area under the curve of 0.75 to identify PR-Cog-. Results support remote patient monitoring using wearables to determine cognitive frailty.
身体虚弱与认知障碍(Cog)并存,即认知衰弱,正逐渐成为认知功能随时间下降的一个强有力的独立预测因素。我们研究了远程身体活动(PA)监测是否可用于识别认知衰弱者。使用一种经过验证的算法,利用胸部佩戴式传感器收集的48小时加速度计数据,对PA行为、PA模式和夜间睡眠进行量化。参与者(n = 163,75±10岁,79%为女性)根据是否存在身体虚弱和认知障碍被分为四组:PR-Cog-、PR+Cog-、PR-Cog+和PR+Cog+。身体虚弱(PR-)的存在定义为基于Fried标准的五个虚弱表型标准中任何一项表现不佳。认知障碍(Cog-)的存在定义为简易精神状态检查表(MMSE)得分低于27分。使用决策树分类器来识别PR-Cog-个体。在单变量模型中,睡眠(卧床时间、总睡眠时间、俯卧、仰卧或侧卧睡眠的百分比)、PA行为(久坐和轻度活动)以及PA模式(步行百分比和步数)是识别PR-Cog-的重要指标(P < 0.050)。决策树分类器识别PR-Cog-的曲线下面积达到0.75。结果支持使用可穿戴设备进行远程患者监测以确定认知衰弱。