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Implicit Detection of Motor Impairment in Parkinson's Disease from Everyday Smartphone Interactions

机译:日常智能手机互动中,帕金森病中电机损伤的隐含检测

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In this work, we explored the feasibility and accuracy of detecting motor impairment in Parkinson's disease (PD) via implicitly sensing and analyzing users' everyday interactions with their smartphones. Through a 42 subjects study, our approach achieved an overall accuracy of 88.1% (90.0%/86.4% sensitivity/specificity) in discriminating PD subjects from age-matched healthy controls. The performance was comparable to the alternating-finger-tapping (AFT) test, a well-established PD motor test in clinical settings. We believe that the implicit and transparent nature of our approach can enable and inspire rich design opportunities of ubiquitous, objective, and convenient systems for PD diagnosis as well as post-diagnosis monitoring.
机译:在这项工作中,我们探讨了通过隐式传感和分析用户日常与智能手机的日常互动来检测帕金森病(PD)中检测电机损伤的可行性和准确性。 通过42项科目的研究,我们的方法在鉴别年龄匹配的健康对照中实现了88.1%(敏感性/特异性的90.0%/ 86.4%)的整体准确性。 该性能与交替指 - 攻丝(AFT)测试相当,在临床环境中提供了良好的PD电机测试。 我们认为,我们的方法的隐含和透明性质可以启用和激发无处不在的,客观,方便的PD诊断系统的丰富设计机会以及诊断后监测。

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