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首页> 外文期刊>Physiological measurement >Big data in Parkinson's disease: using smartphones to remotely detect longitudinal disease phenotypes
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Big data in Parkinson's disease: using smartphones to remotely detect longitudinal disease phenotypes

机译:帕金森病的大数据:使用智能手机来远程检测纵向疾病表型

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Objective: To better understand the longitudinal characteristics of Parkinson's disease (PD) through the analysis of finger tapping and memory tests collected remotely using smartphones. Approach: Using a large cohort (312 PD subjects and 236 controls) of participants in the mPower study, we extract clinically validated features from a finger tapping and memory test to monitor the longitudinal behaviour of study participants. We investigate any discrepancy in learning rates associated with motor and non-motor tasks between PD subjects and healthy controls. The ability of these features to predict self-assigned severity measures is assessed whilst simultaneously inspecting the severity scoring system for floor-ceiling effects. Finally, we study the relationship between motor and non-motor longitudinal behaviour to determine if separate aspects of the disease are dependent on one another. Main results: We find that the test performances of the most severe subjects show significant correlations with self-assigned severity measures. Interestingly, less severe subjects do not show significant correlations, which is shown to be a consequence of floor-ceiling effects within the mPower self-reporting severity system. We find that motor performance after practise is a better predictor of severity than baseline performance suggesting that starting performance at a new motor task is less representative of disease severity than the performance after the test has been learnt. We find PD subjects show significant impairments in motor ability as assessed through the alternating finger tapping (AFT) test in both the short- and long-term analyses. In the AFT and memory tests we demonstrate that PD subjects show a larger degree of longitudinal performance variability in addition to requiring more instances of a test to reach a steady state performance than healthy subjects. Significance: Our findings pave the way forward for objective assessment and quantification of longitudinal lea
机译:目的:通过使用智能手机远程收集的手指攻丝和记忆试验,更好地了解帕金森病(PD)的纵向特征。方法:使用MPower研究中的参与者的大型队列(312 PD科目和236个控件),我们从手指攻丝和记忆测试中提取临床验证的特征,以监测研究参与者的纵向行为。我们调查与电机和非运动任务相关的学习率的任何差异,与PD受试者和健康控制之间。这些特征来预测自我分配的严重程度措施的能力是评估的,同时检查落地效果的严重性评分系统。最后,我们研究了电动机和非运动纵向行为之间的关系,以确定疾病的独立方面是否彼此依赖。主要结果:我们发现,最严重受试者的测试表演表现出与自我分配的严重程度措施的显着相关性。有趣的是,不太严重的受试者没有显示出显着的相关性,这被证明是MPOWER自我报告严重性系统内的地板天花板效应的结果。我们发现在实践之后的电机性能是严重程度的更好预测因素,而不是基线性能,这表明在新的电机任务时开始的性能较低的表现较低,比测试后的性能比性能更低。我们发现PD受试者在短期和长期分析中通过交替的手指攻丝(AFT)测试评估的电机能力中的显着损伤。在AFT和内存测试中,我们证明PD受试者除了需要更多的测试实例来达到稳定状态性能之外,PD受试者还表明了比健康受试者的稳定状态性能更大。意义:我们的研究结果铺平了纵向lea的客观评估和量化的前进方向

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