Enhance decoding of functional lower-limb movements by combining sensory motor rhythm and movement-related cortical potential features

Yulong Peng, Chenyang Li, Xuchao Chen, Xiaomeng Miao, Shaomin Zhang
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Abstract

In previous studies, Sensory Motor Rhythm (SMR) and Movement-Related Cortical Potential (MRCP) have been proved to be complementary in decoding a variety of motion information. However, no studies have reported whether they are complementary when subjects perform functional lower limb movements. In this work, we investigate the effect of two features or their combination on classifying three functional lower limb movements (standing, walking, sitting) and rest. MRCP features are extracted by Locality Preserving Projection (LPP) and SMR features are extracted by selecting the best frequency-channel pairs through the Bhattacharyya distance. A Support Vector Machine (SVM) classifier was employed to assess the performance of different features or their combination in six binary classification tasks, where three types of lower limb movements are compared with each other or with rest. The combination of two features achieved the highest accuracy in most classification task. In the classification of standing and walking, the combination of these two features has shown significantly better performance (both p < 0.05) than the classifiers using either MRCP or SMR. Our results suggest that MRCP and SMR features are complementary for decoding the functional lower limb movements, which would benefit the Brain-computer Interface (BCI) system for lower limb rehabilitation.
结合感觉运动节律和运动相关的皮质电位特征,增强对功能性下肢运动的解码
在以往的研究中,感觉运动节律(SMR)和运动相关皮质电位(MRCP)在解码各种运动信息方面已经被证明是互补的。然而,没有研究报道当受试者进行功能性下肢运动时,它们是否互补。在这项工作中,我们研究了两个特征或它们的组合对分类三种功能性下肢运动(站立、行走、坐下)和休息的影响。采用局域保持投影(Locality Preserving Projection, LPP)提取MRCP特征,通过Bhattacharyya距离选择最佳信道对提取SMR特征。采用支持向量机(SVM)分类器在6个二元分类任务中评估不同特征或其组合的性能,其中三种类型的下肢运动相互比较或与休息进行比较。在大多数分类任务中,这两个特征的组合获得了最高的准确率。在站立和行走的分类中,结合这两个特征的分类器表现出显著优于MRCP或SMR的分类器(p均< 0.05)。研究结果表明,MRCP和SMR特征在下肢功能运动解码中是互补的,这将有利于脑机接口(BCI)系统在下肢康复中的应用。
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