Automated assessment of upper limb spasticity in stroke patients with fusion of multichannel surface electromyography features.

IF 2.3 4区 医学 Q1 REHABILITATION
Xin Li, Feiyu Nong, Xu Zhang, Lin Chen, Tian Li, Shengliang Shi, Yaobin Long
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引用次数: 0

Abstract

Objective: The objective of this study was to investigate a more accurate and efficient technique for assessing spasticity in stroke patients via surface electromyography (sEMG).

Methods: 45 hemiplegic individuals were recruited and spasticity was assessed via the modified Ashworth scale (MAS). Multichannel sEMG data were collected from 3 muscles: the long head of the biceps brachii (LB), the short head of the biceps brachii (SB), and the brachioradialis (BR). Both time-domain and frequency-domain features were extracted. A K-nearest neighbour (k-NN) classifier was used to develop a new feature vector consisting of multichannel sEMG features. Finally, a model using this new feature was constructed and evaluated for classification accuracy.

Results: Data from 40 patients were analysed, revealing significant correlations between MAS scores and sEMG features. Specifically, MAS exhibited strong positive correlations with 3 time-domain features: root mean square (RMS), integral sEMG (iEMG), and envelope area (EA) (r > 0.7). In contrast, frequency-domain features were negatively correlated with the MAS score (r < -0.7). A single-channel model and a single-feature model were developed as baselines. A k-NN classifier using a novel feature vector - -integrating single-channel and single-feature data - enabled automatic spasticity grading, surpassing the performance of the baseline models. The proposed multichannel sEMG feature fusion model achieved an average accuracy of 78.7%, significantly outperforming both the single-channel model (LB: 66.0%, SB: 64.3%, BR: 70.4%) and the single-feature model (RMS 70.8%, iEMG 71.4%, and EA 63.4%).

Conclusions: Compared with single-channel and single-feature models, the k-NN model, which uses multichannel sEMG features, has superior accuracy in spasticity assessments and is a reliable tool for objective evaluation. This approach holds promise for enhancing rehabilitation strategies by enabling precise and data-driven efficacy assessments, ultimately improving patient outcomes.

Abstract Image

Abstract Image

Abstract Image

脑卒中患者上肢痉挛的多通道表面肌电特征融合自动评估。
目的:本研究的目的是探讨一种更准确、更有效的脑卒中患者肌表面电图(sEMG)评估痉挛的技术。方法:选取偏瘫患者45例,采用改良Ashworth量表(MAS)评定痉挛程度。采集肱二头肌长头(LB)、肱二头肌短头(SB)和肱桡肌(BR) 3块肌肉的多通道肌电信号数据。同时提取时域和频域特征。采用k近邻(k-NN)分类器建立了一个由多通道表面肌电信号特征组成的新特征向量。最后,利用这一新特征构建了一个模型,并对其分类精度进行了评价。结果:分析了40例患者的数据,揭示了MAS评分与肌电图特征之间的显著相关性。具体而言,MAS与3个时域特征呈强正相关:均方根(RMS)、整型表面肌电信号(iEMG)和包络面积(EA) (r > 0.7)。结论:与单通道和单特征模型相比,使用多通道表面肌电信号特征的k-NN模型在痉挛评估方面具有更高的准确性,是一种可靠的客观评估工具。这种方法有望通过精确和数据驱动的疗效评估来加强康复策略,最终改善患者的预后。
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来源期刊
CiteScore
5.60
自引率
5.70%
发文量
102
审稿时长
4-8 weeks
期刊介绍: Journal of Rehabilitation Medicine is an international peer-review journal published in English, with at least 10 issues published per year. Original articles, reviews, case reports, short communications, special reports and letters to the editor are published, as also are editorials and book reviews. The journal strives to provide its readers with a variety of topics, including: functional assessment and intervention studies, clinical studies in various patient groups, methodology in physical and rehabilitation medicine, epidemiological studies on disabling conditions and reports on vocational and sociomedical aspects of rehabilitation.
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