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利用机器学习识别的运动特征评估康复进展。

Evaluating Rehabilitation Progress Using Motion Features Identified by Machine Learning.

作者信息

Lu Lei, Tan Ying, Klaic Marlena, Galea Mary P, Khan Fary, Oliver Annie, Mareels Iven, Oetomo Denny, Zhao Erying

出版信息

IEEE Trans Biomed Eng. 2021 Apr;68(4):1417-1428. doi: 10.1109/TBME.2020.3036095. Epub 2021 Mar 18.

Abstract

Evaluating progress throughout a patient's rehabilitation episode is critical for determining the effectiveness of the selected treatments and is an essential ingredient in personalised and evidence-based rehabilitation practice. The evaluation process is complex due to the inherently large human variations in motor recovery and the limitations of commonly used clinical measurement tools. Information recorded during a robot-assisted rehabilitation process can provide an effective means to continuously quantitatively assess movement performance and rehabilitation progress. However, selecting appropriate motion features for rehabilitation evaluation has always been challenging. This paper exploits unsupervised feature learning techniques to reduce the complexity of building the evaluation model of patients' progress. A new feature learning technique is developed to select the most significant features from a large amount of kinematic features measured from robotics, providing clinically useful information to health practitioners with reduction of modeling complexity. A novel indicator that uses monotonicity and trendability is proposed to evaluate kinematic features. The data used to develop the feature selection technique consist of kinematic data from robot-aided rehabilitation for a population of stroke patients. The selected kinematic features allow for human variations across a population of patients as well as over the sequence of rehabilitation sessions. The study is based on data records pertaining to 41 stroke patients using three different robot assisted exercises for upper limb rehabilitation. Consistent with the literature, the results indicate that features based on movement smoothness are the best measures among 17 kinematic features suitable to evaluate rehabilitation progress.

摘要

评估患者整个康复过程中的进展对于确定所选治疗方法的有效性至关重要,并且是个性化和循证康复实践的重要组成部分。由于运动恢复中固有的巨大个体差异以及常用临床测量工具的局限性,评估过程很复杂。在机器人辅助康复过程中记录的信息可以提供一种有效的方法来持续定量评估运动表现和康复进展。然而,为康复评估选择合适的运动特征一直具有挑战性。本文利用无监督特征学习技术来降低构建患者进展评估模型的复杂性。开发了一种新的特征学习技术,从机器人测量的大量运动学特征中选择最重要的特征,在降低建模复杂性的同时为健康从业者提供临床有用信息。提出了一种使用单调性和趋势性的新颖指标来评估运动学特征。用于开发特征选择技术的数据包括一组中风患者的机器人辅助康复运动学数据。所选的运动学特征考虑了患者群体之间以及康复疗程序列中的个体差异。该研究基于41名中风患者使用三种不同的机器人辅助上肢康复练习的数据记录。与文献一致,结果表明基于运动平滑度的特征是适合评估康复进展的17种运动学特征中最佳的测量指标。

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