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A spasticity assessment method for voluntary movement using data fusion and machine learning

机译:使用数据融合和机器学习的自愿运动痉挛评估方法

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摘要

The assessment of spasticity under voluntary movement is helpful for the therapist to comprehensively assess the patient's dyskinesia. However, current researches focus on spasticity evaluation based on passive motion. We propose a new method for evaluating spasticity under active motion. Our method is based on the following three steps: (i) Empirical Mode Decomposition (EMD) is used to reduce involuntary movement noise in patients' active movement; (ii) Extract voluntary movement segments of each muscle for feature extract and fusion; (iii) Use machine learning methods to evaluate the degree of spasm in patients. To investigates the feasibility of the method proposed in this paper, An experiment of elbow flexion and extension against gravity is designed, and the electromyographic signal of brachioradialis (BR), biceps brachialis (BB), triceps brachialis (TB) and elbow motion data of 13 subjects were collected. We compared the classification effect of filter method, window length and classifier type. Moreover, we analyze the improvement of classification effect by data fusion. The results showed that the random forest with a window length of 256 ms had the best effect (F1-score = 0.952). Compared with the electromyographic signal (F1-score = 0.756) or motion signal only (F1-score = 0.7053), the method presented in this paper had better classification accuracy. Result demonstrated the feasibility of our method. This study can assist doctors to evaluate patients' spasmodic state under active movement, and has the application potential of wearable devices.
机译:自愿运动下的痉挛评估有助于治疗师全面评估患者的运动障碍。然而,目前的研究重点是基于被动运动的痉挛评估。我们提出了一种用于评估主动运动下痉挛的新方法。我们的方法基于以下三个步骤:(i)经验模式分解(EMD)用于减少患者主动运动的非自愿运动噪声; (ii)提取每种肌肉的自愿运动段,用于特征提取物和融合; (iii)使用机器学习方法来评估患者的痉挛程度。为了研究本文中提出的方法的可行性,设计了肘部屈曲和延伸重力的实验,以及Brachioradialis(BR),二头肌Brachialis(BB),Triceps Brachialis(TB)和弯头运动数据的电焦信号收集了13个受试者。我们比较了过滤方法,窗口长度和分类器类型的分类效果。此外,我们通过数据融合分析了对分类效果的改进。结果表明,窗户长度为256毫秒的随机森林具有最佳效果(F1分数= 0.952)。仅与电拍摄信号(F1-Score = 0.756)或运动信号相比(F1-得分= 0.7053),本文介绍的方法具有更好的分类精度。结果表明了我们方法的可行性。本研究可以帮助医生在主动运动下评估患者的痉挛状态,具有可穿戴设备的应用潜力。

著录项

  • 来源
    《Biomedical signal processing and control》 |2021年第3期|102353.1-102353.11|共11页
  • 作者单位

    South China Univ Technol Shien Ming Wu Sch Intelligent Engn Guangzhou 511442 Peoples R China;

    South China Univ Technol Shien Ming Wu Sch Intelligent Engn Guangzhou 511442 Peoples R China;

    Sun Yat Sen Univ Affiliated Hosp 3 Guangzhou 510630 Peoples R China;

    South China Univ Technol Shien Ming Wu Sch Intelligent Engn Guangzhou 511442 Peoples R China;

    Sun Yat Sen Univ Zhongshan Ophthalm Ctr StateKey Lab Ophthalmol Guangzhou 510060 Peoples R China;

    Sun Yat Sen Univ Affiliated Hosp 3 Guangzhou 510630 Peoples R China;

    South China Univ Technol Shien Ming Wu Sch Intelligent Engn Guangzhou 511442 Peoples R China;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Spasticity; Data fusion; Machine learning; Classification;

    机译:痉挛;数据融合;机器学习;分类;
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