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Smartphone-based continuous mobility monitoring of Parkinsons disease patients reveals impacts of ambulatory bout length on gait features

机译:基于智能手机的帕金森病患者连续移动性监测揭示了走动回合长度对步态特征的影响

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Smartphone-based remote monitoring is a potential solution for providing long-term, objective assessment of gait and mobility in patients with Parkinsons disease (PD). In the Multiple Ascending Dose study of PRX002/RG7935, forty-four mild to moderate PD patients from cohorts 4 to 6 were included in a smartphone-based assessment for up to 24 weeks, while in a separate control study, thirty-five age-and gender-matched healthy individuals performed the same assessment up to 6 weeks. In total, over 30,000 hours of sensor data from subjects' daily activities were collected. A convolutional recurrent neural network was used for human activity recognition and extracted gait-related activities, followed by a mobility analysis on extracted mobility features during ambulatory bouts and turns. The analysis revealed that PD patients showed significantly lower mobility in terms of average ambulatory bout length - length of time of one continuous ambulatory segment, average per-step power, turn speed, and number of turns per ambulatory minute. In addition, bout-length stratified analysis shows the between-group difference of multiple features is associated with bout lengths. These study results support the potential use of smartphones for long-term mobility monitoring in future clinical practice, and also shed lights on previously inaccessible relationships between bout length and gait features under free-living condition.
机译:基于智能手机的远程监控是一种潜在的解决方案,可对帕金森病(PD)患者的步态和活动性进行长期,客观的评估。在PRX002 / RG7935的多剂量研究中,从4到6组的44位轻度至中度PD患者被纳入了基于智能手机的评估长达24周,而在另一项对照研究中,有35位年龄在和性别匹配的健康个体进行了长达6周的相同评估。总计,从受试者的日常活动中收集了30,000多个小时的传感器数据。使用卷积递归神经网络进行人类活动识别并提取步态相关活动,然后对动态走动和转弯期间提取的活动性特征进行活动性分析。分析显示,PD患者的平均门诊回旋长度,一个连续门诊段的时间长度,平均每步功率,转弯速度和每分钟门诊转数均显示出明显较低的活动性。此外,回合长度分层分析显示,多个特征的组间差异与回合长度相关。这些研究结果支持在未来的临床实践中将智能手机用于长期移动性监测,并阐明了在自由生活条件下,步长与步态特征之间以前无法接近的关系。

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