Analyzing Head Pose in Remotely Collected Videos of People with Parkinson’s Disease

M. R. Ali, Taylan K. Sen, Qianyi Li, Raina Langevin, Taylor Myers, E. Dorsey, Saloni Sharma, E. Hoque
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引用次数: 2

Abstract

We developed an intelligent web interface that guides users to perform several Parkinson’s disease (PD) motion assessment tests in front of their webcam. After gathering data from 329 participants (N = 199 with PD, N = 130 without PD), we developed a methodology for measuring head motion randomness based on the frequency distribution of the motion. We found PD is associated with significantly higher randomness in side-to-side head motion as measured by the variance and number of large frequency components compared to the age-matched non-PD control group (p = 0.001, d = 0.13). Additionally, in participants taking levodopa (N = 151), the most common drug to treat Parkinson’s, the degree of random side-to-side head motion was found to follow an exponential-decay activity model following the time of the last dose taken (r = −0.404, p = 6e-5). A logistic regression model for classifying PD vs. non-PD groups identified that higher frequency components are more associated with PD. Our findings could potentially be useful toward objectively quantifying differences in head motions that may be due to either PD or PD medications.
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帕金森病患者远程采集视频中的头部姿势分析
我们开发了一个智能网络界面,指导用户在他们的网络摄像头前进行几项帕金森病(PD)运动评估测试。在收集了329名参与者(N = 199患有PD, N = 130没有PD)的数据后,我们开发了一种基于运动频率分布的测量头部运动随机性的方法。我们发现,与年龄匹配的非PD对照组相比,PD与侧对侧头部运动的随机性显著更高(p = 0.001, d = 0.13)。此外,在服用左旋多巴(N = 151)(治疗帕金森病最常见的药物)的参与者中,发现随机左右头部运动的程度随最后一次服用剂量的时间呈指数衰减活动模型(r = - 0.404, p = 6e-5)。对PD组和非PD组进行分类的逻辑回归模型发现,高频成分与PD的关联更大。我们的研究结果可能有助于客观地量化PD或PD药物引起的头部运动差异。
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CiteScore
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