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基于运动协同分析和多模态融合的脑卒中后康复上肢运动功能定量评估。

Quantitative Assessment of Upper-Limb Motor Function for Post-Stroke Rehabilitation Based on Motor Synergy Analysis and Multi-Modality Fusion.

出版信息

IEEE Trans Neural Syst Rehabil Eng. 2020 Apr;28(4):943-952. doi: 10.1109/TNSRE.2020.2978273. Epub 2020 Mar 4.

Abstract

Functional assessment is an essential part of rehabilitation protocols after stroke. Conventionally, the assessment process relies heavily on clinical experience and lacks quantitative analysis. In order to objectively quantify the upper-limb motor impairments in patients with post-stroke hemiparesis, this study proposes a novel assessment approach based on motor synergy quantification and multi-modality fusion. Fifteen post-stroke hemiparetic patients and fifteen age-matched healthy persons participated in this study. During different goal-directed tasks, kinematic data and surface electromyography(sEMG) signals were synchronously collected from these participants, and then motor features extracted from each modal data could be fed into the respective local classifiers. In addition, kinematic synergies and muscle synergies were quantified by principal component analysis (PCA) and k weighted angular similarity ( k WAS) algorithm to provide in-depth analysis of the coactivated features responsible for observable movement impairments. By integrating the outputs of local classifiers and the quantification results of motor synergies, ensemble classifiers can be created to generate quantitative assessment for different modalities separately. In order to further exploit the complementarity between the evaluation results at kinematic and muscular levels, a multi-modal fusion scheme was developed to comprehensively analyze the upper-limb motor function and generate a probability-based function score. Under the proposed assessment framework, three types of machine learning methods were employed to search the optimal performance of each classifier. Experimental results demonstrated that the classification accuracy was respectively improved by 4.86% and 2.78% when the analysis of kinematic and muscle synergies was embedded in the assessment system, and could be further enhanced to 96.06% by fusing the characteristics derived from different modalities. Furthermore, the assessment result of multi-modality fusion framework exhibited a significant correlation with the score of standard clinical tests ( R = - 0.87, P = 1.98e - 5 ). These promising results show the feasibility of applying the proposed method to clinical assessments for post-stroke hemiparetic patients.

摘要

功能评估是中风后康复方案的重要组成部分。传统上,评估过程严重依赖临床经验,缺乏定量分析。为了客观量化中风后偏瘫患者的上肢运动障碍,本研究提出了一种基于运动协同量化和多模态融合的新评估方法。本研究纳入了 15 名中风后偏瘫患者和 15 名年龄匹配的健康人。在不同的目标导向任务中,同步从这些参与者收集运动学数据和表面肌电图(sEMG)信号,然后可以将从每个模态数据中提取的运动特征输入到各自的局部分类器中。此外,通过主成分分析(PCA)和 k 加权角相似度(k WAS)算法量化运动协同和肌肉协同,以提供对负责可观察运动障碍的共同激活特征的深入分析。通过整合局部分类器的输出和运动协同的量化结果,可以创建集成分类器,分别对不同模态进行定量评估。为了进一步利用运动学和肌肉水平评估结果之间的互补性,开发了一种多模态融合方案,以全面分析上肢运动功能并生成基于概率的功能评分。在提出的评估框架下,使用了三种机器学习方法来搜索每个分类器的最佳性能。实验结果表明,当在评估系统中嵌入运动学和肌肉协同分析时,分类精度分别提高了 4.86%和 2.78%,通过融合来自不同模态的特征,可以进一步提高到 96.06%。此外,多模态融合框架的评估结果与标准临床测试的评分呈显著相关关系(R=-0.87,P=1.98e-5)。这些有希望的结果表明,该方法应用于中风后偏瘫患者的临床评估是可行的。

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