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Smartwatch-based Activity Analysis During Sleep for Early Parkinson’s Disease Detection

机译:基于Smartwatch的睡眠期间活动分析,用于早期帕金森氏病检测

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Parkinson’s Disease (PD) is the second most common neurodegenerative disorder with the non-motor symptoms preceding the motor impairment that is needed for clinical diagnosis. In the current study, an angle-based analysis that processes activity data during sleep from a smartwatch for quantification of sleep quality, when applied on controls and PD patients, is proposed. Initially, changes in their arm angle due to activity are captured from the smartwatch triaxial accelerometry data and used for the estimation of the corresponding binary state (awake/sleep). Then, sleep metrics (i.e., sleep efficiency index, total sleep time, sleep fragmentation index, sleep onset latency, and wake after sleep onset) are computed and used for the discrimination between controls and PD patients. A process of validation of the proposed approach when compared with the PSG-based ground truth in an in-the-clinic setting, resulted in comparable state estimation. Moreover, data from 15 early PD patients and 11 healthy controls were used as a test set, including 1,376 valid sleep recordings in-the-wild setting. The univariate analysis of the extracted sleep metrics achieved up to 0.77 AUC in early PD patients vs. healthy controls classification and exhibited a statistically significant correlation (up to 0.46) with the clinical PD Sleep Scale 2 counterpart Items. The findings of the proposed method show the potentiality to capture non-motor behavior from users’ nocturnal activity to detect PD in the early stage.
机译:帕金森氏病(PD)是第二大最常见的神经退行性疾病,临床诊断需要在运动障碍之前出现非运动症状。在当前的研究中,提出了一种基于角度的分析,该分析可应用于智能手表,处理来自智能手表的睡眠过程中的活动数据,以量化睡眠质量(应用于对照和PD患者)。最初,由于活动引起的手臂角度变化是从智能手表三轴加速度计数据中捕获的,并用于估计相应的二进制状态(清醒/睡眠)。然后,计算睡眠指标(即,睡眠效率指数,总睡眠时间,睡眠碎片指数,睡眠发作潜伏期和睡眠发作后苏醒),并将其用于区分对照组和PD患者。在临床环境中,与基于PSG的地面真相进行比较时,对所提出方法进行验证的过程导致了可比的状态估计。此外,将15例早期PD患者和11例健康对照者的数据用作测试集,其中包括1,376个有效的野外睡眠记录。早期PD患者与健康对照组相比,提取的睡眠指标的单变量分析获得了高达0.77的AUC,并且与临床PD睡眠量表2对应项显示出统计学上的显着相关性(高达0.46)。该方法的发现表明,有可能从用户的夜间活动中捕获非运动行为,从而在早期检测出PD。

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