Department of Electrical and Computer Engineering, University of British Columbia, Vancouver, BC V6T 1Z4, Canada.
Pacific Parkinson Research Centre, University of British Columbia, Vancouver, BC V6T 1Z4, Canada.
Sensors (Basel). 2023 Nov 13;23(22):9149. doi: 10.3390/s23229149.
The utilization of Artificial Intelligence (AI) for assessing motor performance in Parkinson's Disease (PD) offers substantial potential, particularly if the results can be integrated into clinical decision-making processes. However, the precise quantification of PD symptoms remains a persistent challenge. The current standard Unified Parkinson's Disease Rating Scale (UPDRS) and its variations serve as the primary clinical tools for evaluating motor symptoms in PD, but are time-intensive and prone to inter-rater variability. Recent work has applied data-driven machine learning techniques to analyze videos of PD patients performing motor tasks, such as finger tapping, a UPDRS task to assess bradykinesia. However, these methods often use abstract features that are not closely related to clinical experience. In this paper, we introduce a customized machine learning approach for the automated scoring of UPDRS bradykinesia using single-view RGB videos of finger tapping, based on the extraction of detailed features that rigorously conform to the established UPDRS guidelines. We applied the method to 75 videos from 50 PD patients collected in both a laboratory and a realistic clinic environment. The classification performance agreed well with expert assessors, and the features selected by the Decision Tree aligned with clinical knowledge. Our proposed framework was designed to remain relevant amid ongoing patient recruitment and technological progress. The proposed approach incorporates features that closely resonate with clinical reasoning and shows promise for clinical implementation in the foreseeable future.
利用人工智能 (AI) 评估帕金森病 (PD) 的运动表现具有很大的潜力,尤其是如果这些结果可以整合到临床决策过程中。然而,精确量化 PD 症状仍然是一个持续的挑战。目前的标准统一帕金森病评定量表 (UPDRS) 及其变体是评估 PD 运动症状的主要临床工具,但它们耗时且容易受到评分者间差异的影响。最近的工作已经应用基于数据的机器学习技术来分析 PD 患者执行运动任务的视频,例如手指敲击,这是 UPDRS 评估运动迟缓的一项任务。然而,这些方法通常使用与临床经验不太相关的抽象特征。在本文中,我们提出了一种定制的机器学习方法,用于使用手指敲击的单视图 RGB 视频自动对 UPDRS 运动迟缓进行评分,该方法基于严格遵循既定 UPDRS 指南的详细特征的提取。我们将该方法应用于从实验室和现实临床环境中收集的 50 名 PD 患者的 75 个视频。分类性能与专家评估者非常吻合,决策树选择的特征与临床知识一致。我们提出的框架旨在在持续的患者招募和技术进步中保持相关性。所提出的方法结合了与临床推理密切相关的特征,有望在可预见的未来在临床实施中得到应用。