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用于肌电信号分解的自适应模糊k近邻分类器

Adaptive fuzzy k-NN classifier for EMG signal decomposition.

作者信息

Rasheed Sarbast, Stashuk Daniel, Kamel Mohamed

机构信息

Pattern Analysis and Machine Intelligence Lab, Department of Systems Design Engineering, University of Waterloo, Waterloo, Ont., Canada N2L 3G1.

出版信息

Med Eng Phys. 2006 Sep;28(7):694-709. doi: 10.1016/j.medengphy.2005.11.001. Epub 2006 Jan 10.

Abstract

An adaptive fuzzy k-nearest neighbour classifier (AFNNC) for EMG signal decomposition is presented and evaluated. The developed classifier uses an adaptive assertion-based classification approach for setting a minimum classification threshold. The similarity criterion used for grouping motor unit potentials (MUPs) is based on a combination of MUP shapes and two modes of use of motor unit firing pattern information: passive and active. The performance of the developed classifier was evaluated using synthetic signals with specific properties and experimental signals and compared with the performance of an adaptive template matching classifier, the adaptive certainty classifier (ACC). Across the sets of simulated and experimental EMG signals used for comparison, the AFNNC had better average classification performance overall, but due to the assignment of higher numbers of MUPs it made relatively more errors. Nonetheless, these increased error rates would still be acceptable for most clinical uses of decomposed EMG data. An independent and a related set of simulated signals were used for testing. For the independent simulated signals of varying intensity, the AFNNC had on average an improved correct classification rate (CCr) (8.1%) but an increased error rate (Er) (1.5%) compared to ACC. For the related simulated signals with varying amounts of shape and/or firing pattern variability, the AFNNC on average had an improved CCr (5%) but a slightly increased Er (0.3%) compared to ACC. For experimental signals, the AFNNC on average had improved CCr (6%) but an increased Er (2.1%) compared to ACC. The greatest gains in AFNNC performance relative to that of the ACC occurred when the variability of MUP shapes within motor unit potential trains was high suggesting that compared to a template matching assignment strategy the NN assignment paradigm is better able to ameliorate the classification problems caused by MUP instability.

摘要

提出并评估了一种用于肌电信号分解的自适应模糊k近邻分类器(AFNNC)。所开发的分类器采用基于自适应断言的分类方法来设置最小分类阈值。用于对运动单位电位(MUP)进行分组的相似性标准基于MUP形状以及运动单位放电模式信息的两种使用模式(被动和主动)的组合。使用具有特定属性的合成信号和实验信号对所开发分类器的性能进行评估,并与自适应模板匹配分类器(即自适应确定性分类器(ACC))的性能进行比较。在用于比较的模拟和实验肌电信号集上,AFNNC总体上具有更好的平均分类性能,但由于分配的MUP数量较多,其产生的错误相对较多。尽管如此,对于分解后的肌电数据的大多数临床应用而言,这些增加的错误率仍然是可以接受的。使用了一组独立的和一组相关的模拟信号进行测试。对于强度不同的独立模拟信号,与ACC相比,AFNNC平均正确分类率(CCr)提高了8.1%,但错误率(Er)增加了1.5%。对于形状和/或放电模式变化量不同的相关模拟信号,与ACC相比,AFNNC平均CCr提高了5%,但Er略有增加(0.3%)。对于实验信号,与ACC相比,AFNNC平均CCr提高了6%,但Er增加了2.1%。当运动单位电位序列内MUP形状的变异性较高时,AFNNC相对于ACC的性能提升最大,这表明与模板匹配分配策略相比,神经网络分配范式更能缓解由MUP不稳定性引起的分类问题。

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