Selecting and Evaluating Key MDS-UPDRS Activities Using Wearable Devices for Parkinson's Disease Self-Assessment

Yuting Zhao;Xulong Wang;Xiyang Peng;Ziheng Li;Fengtao Nan;Menghui Zhou;Jun Qi;Yun Yang;Zhong Zhao;Lida Xu;Po Yang
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Abstract

Parkinson's disease (PD) is a complex neurodegenerative disease in the elderly. This disease has no cure, but assessing these motor symptoms will help slow down that progression. Inertial sensing-based wearable devices, such as mobile phones and smartwatches have been widely employed to analyze the condition of PD patients. However, most studies purely focused on a single activity or symptom, which may ignore the correlation between activities and complementary characteristics. In this article, a novel technical pipeline is proposed for fine-grained classification of PD severity grades, which identify the most representative activities. We also propose a multiactivities combination scheme based on MDS-UPDRS. Utilizing this scheme, symptom-related and complementary activities are captured. We collected 85 PD subjects of different severity grades using a single wrist sensor. Our best results demonstrate F1 scores of 95.75 $\%$ for PD diagnosis and the fine-grained classification accuracy of PD disease grade is 82.41 $\%$ when combing four activities which improved by 11.02 $\%$ over a single activity. The experiments and theoretical analyses can serve as a useful foundation for future investigations into the effect of proposed solutions for PD diagnosis in uncontrolled environment setup, ultimately leading to self-PD assessment in the home environment.
使用可穿戴设备选择和评估用于帕金森病自我评估的关键 MDS-UPDRS 活动
帕金森病(PD)是一种复杂的老年神经退行性疾病。这种疾病无法治愈,但评估这些运动症状将有助于减缓病情发展。基于惯性传感的可穿戴设备,如手机和智能手表,已被广泛用于分析帕金森病患者的状况。然而,大多数研究纯粹关注单一活动或症状,这可能会忽略活动与互补特征之间的相关性。本文提出了一种新颖的技术流水线,用于对帕金森病严重程度进行精细分类,从而识别出最具代表性的活动。我们还提出了一种基于 MDS-UPDRS 的多活动组合方案。利用该方案,可以捕捉到与症状相关的活动和互补性活动。我们使用单个腕部传感器收集了 85 名不同严重程度的帕金森病受试者。我们的最佳结果表明,结合四种活动对帕金森病诊断的F1分数为95.75美元/%美元,帕金森病疾病等级的细粒度分类准确率为82.41美元/%美元,比单一活动提高了11.02美元/%美元。这些实验和理论分析为今后研究在非受控环境设置下诊断帕金森氏症的拟议解决方案的效果奠定了有益的基础,并最终实现家庭环境中的帕金森氏症自我评估。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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