基于体感诱发电位时频特征的支持向量机识别脊髓损伤部位

Yazhou Wang, Yong Hu
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摘要

体感诱发电位(SEP)已被发现包含一系列的时间-频率成分,传递有关脊髓内神经缺陷位置的信息。本研究旨在建立一个基于sep时频模式的分类系统,用于识别颈脊髓神经功能缺损的位置。采用高分辨率时频分析方法匹配追踪(MP),将大鼠脊髓不同部位(C4、C5、C6)压缩损伤后的sep波形分解为一系列时频分量(tfc)。根据这些tfc在不同层次上的分布差异,利用支持向量机(SVM)建立了分类系统。这种区别表现在SEP tfc的不同类别上。正常状态SEP的高能tfc功率和频率明显高于损伤状态SEP, C5水平中能量tfc具有独特的分布模式。C4和C6水平的差异体现在低能tfc的分布格局上。结果表明,该分类系统能够区分正常、C4、C5、C6损伤四种功能状态,准确率为80.17%。
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Identifying the location of spinal cord injury by support vector machines using time-frequency features of somatosensory evoked potentials
Somatosensory evoked potentials (SEP) have been found to contain a series of time-frequency components that conveys information about the location of neurological deficits within the spinal cord. This study aims to develop a classification system for identifying the location of neurological deficit in cervical spinal cord based on the time-frequency patterns of SEPs. Waveforms of SEPs after compressive injuries at various locations (C4, C5, and C6) of rats' spinal cord were decomposed into a series of time-frequency components (TFCs) by a high resolution time-frequency analysis method, matching pursuit (MP). A classification system was build according to the distributional distinction of these TFCs among different levels using support vector machine (SVM). This distinction manifests itself in different categories of SEP TFCs. High-energy TFCs of normal state SEP have significantly higher power and frequency compared with those of injury state SEP. The level of C5 is characterized by a unique distribution pattern of middle-energy TFCs. And the difference between C4 and C6 level is evidenced by the distribution pattern of low-energy TFCs. The proposed classification system was proved to be able to distinguish the four functional status (normal, injury at C4, C5, and C6) with an accuracy of 80.17%.
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