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基于移动设备敲击活动的帕金森病严重程度聚类。

Parkinson's disease severity clustering based on tapping activity on mobile device.

机构信息

Assistive Technology and Medical Devices Research Center, National Science and Technology Development Agency, Pathum Thani, Thailand.

Mathematical Informatics, Information Science, Nara Institute of Science and Technology, Nara, Japan.

出版信息

Sci Rep. 2022 Feb 24;12(1):3142. doi: 10.1038/s41598-022-06572-2.

Abstract

In this study, we investigated the relationship between finger tapping tasks on the smartphone and the MDS-UPDRS I-II and PDQ-8 using the mPower dataset. mPower is a mobile application-based study for monitoring key indicators of PD progression and diagnosis. Currently, it is one of the largest, open access, mobile Parkinson's Disease studies. Data from seven modules with a total of 8,320 participants who provided the data of at least one task were released to the public researcher. The modules comprise demographics, MDS-UPDRS I-II, PDQ-8, memory, tapping, voice, and walking. Finger-tapping is one of the tasks that easy to perform and has been analyzed for the quantitative measurement of PD. Therefore, participants who performed both the tapping activity and MDS-UPDRS I-II rating scale were selected for our analysis. Note that the MDS-UPDRS mPower Survey only contains parts of the original scale and has not been clinimetrically tested for validity and reliability. We obtained a total of 1851 samples that contained the tapping activity and MDS-UPDRS I-II for the analysis. Nine features were selected to represent tapping activity. K-mean was applied as an unsupervised clustering algorithm in our study. For determining the number of clusters, the elbow method, Sihouette score, and Davies-Bouldin index, were employed as supporting evaluation metrics. Based on these metrics and expert opinion, we decide that three clusters were appropriate for our study. The statistical analysis found that the tapping features could separate participants into three severity groups. Each group has different characteristics and could represent different PD severity based on the MDS-UPDRS I-II and PDQ-8 scores. Currently, the severity assessment of a movement disorder is based on clinical observation. Therefore, it is highly dependant on the skills and experiences of the trained movement disorder specialist who performs the procedure. We believe that any additional methods that could potentially assist with quantitative assessment of disease severity, without the need for a clinical visit would be beneficial to both the healthcare professionals and patients.

摘要

在这项研究中,我们使用 mPower 数据集调查了智能手机上的手指敲击任务与 MDS-UPDRS I-II 和 PDQ-8 之间的关系。mPower 是一项基于移动应用的研究,用于监测 PD 进展和诊断的关键指标。目前,它是最大的、开放获取的、基于移动的帕金森氏症研究之一。向公众研究人员发布了来自七个模块的数据,这些模块共有 8320 名参与者,他们提供了至少一项任务的数据。这些模块包括人口统计学、MDS-UPDRS I-II、PDQ-8、记忆、敲击、语音和行走。敲击是一种易于执行的任务,已经被分析用于 PD 的定量测量。因此,选择了执行敲击活动和 MDS-UPDRS I-II 评定量表的参与者进行我们的分析。请注意,MDS-UPDRS mPower 调查仅包含原始量表的一部分,尚未经过临床验证以证明其有效性和可靠性。我们总共获得了包含敲击活动和 MDS-UPDRS I-II 的 1851 个样本进行分析。选择了九个特征来代表敲击活动。在我们的研究中,应用 K-均值作为无监督聚类算法。为了确定聚类的数量,使用肘部法、轮廓分数和 Davies-Bouldin 指数作为支持评估指标。基于这些指标和专家意见,我们决定三个聚类适合我们的研究。统计分析发现,敲击特征可以将参与者分为三个严重程度组。每个组都有不同的特征,可以根据 MDS-UPDRS I-II 和 PDQ-8 分数代表不同的 PD 严重程度。目前,运动障碍的严重程度评估基于临床观察。因此,它高度依赖于执行该程序的训练有素的运动障碍专家的技能和经验。我们相信,任何可以潜在地协助进行疾病严重程度定量评估的附加方法,而无需临床访问,都将对医疗保健专业人员和患者都有益。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/6424/8873556/592d924583fd/41598_2022_6572_Fig1_HTML.jpg

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