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An Ensemble Analysis of Electromyographic Activity during Whole Body Pointing with the Use of Support Vector Machines

机译:支持向量机在全身指向过程中肌电活动的综合分析

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摘要

We explored the use of support vector machines (SVM) in order to analyze the ensemble activities of 24 postural and focal muscles recorded during a whole body pointing task. Because of the large number of variables involved in motor control studies, such multivariate methods have much to offer over the standard univariate techniques that are currently employed in the field to detect modifications. The SVM was used to uncover the principle differences underlying several variations of the task. Five variants of the task were used. An unconstrained reaching, two constrained at the focal level and two at the postural level. Using the electromyographic (EMG) data, the SVM proved capable of distinguishing all the unconstrained from the constrained conditions with a success of approximately 80% or above. In all cases, including those with focal constraints, the collective postural muscle EMGs were as good as or better than those from focal muscles for discriminating between conditions. This was unexpected especially in the case with focal constraints. In trying to rank the importance of particular features of the postural EMGs we found the maximum amplitude rather than the moment at which it occurred to be more discriminative. A classification using the muscles one at a time permitted us to identify some of the postural muscles that are significantly altered between conditions. In this case, the use of a multivariate method also permitted the use of the entire muscle EMG waveform rather than the difficult process of defining and extracting any particular variable. The best accuracy was obtained from muscles of the leg rather than from the trunk. By identifying the features that are important in discrimination, the use of the SVM permitted us to identify some of the features that are adapted when constraints are placed on a complex motor task.
机译:我们探索了使用支持向量机(SVM)来分析在全身指向任务期间记录的24个姿势和局部肌肉的合奏活动。由于运动控制研究涉及大量变量,因此这种多变量方法可以提供超过本领域当前用于检测修改的标准单变量技术的大量功能。 SVM被用来揭示任务多种变化背后的原理差异。使用了该任务的五个变体。无限制的到达,两个限制在焦点级别,两个限制在姿势级别。使用肌电图(EMG)数据,证明SVM能够区分所有不受约束的条件和受约束的条件,成功率约为80%或更高。在所有情况下,包括局灶性约束的情况,集体姿势肌肌电图在区分病情方面均优于或优于局灶性肌肉肌电图。这是出乎意料的,尤其是在有焦点限制的情况下。在试图对姿势肌电图的特定特征的重要性进行排名时,我们发现最大幅度而不是出现时具有更大的判别力。一次使用一种肌肉进行分类,这使我们能够识别在不同状况之间显着改变的某些姿势肌肉。在这种情况下,使用多元方法还可以使用整个肌肉EMG波形,而不是定义和提取任何特定变量的困难过程。从腿部肌肉而不是躯干获得最佳准确性。通过识别在辨别中很重要的特征,SVM的使用使我们可以识别在约束复杂的运动任务时可以适应的某些特征。

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