Department of Orthopaedic and Traumatology, the University of Hong Kong, Duchess of Kent Children's Hospital, Hong Kong, China.
IEEE Trans Neural Syst Rehabil Eng. 2010 Jun;18(3):245-54. doi: 10.1109/TNSRE.2010.2043856. Epub 2010 Mar 8.
Somatosensory evoked potential (SEP) usually contains a set of detailed temporal components measured and identified in time domain, providing meaningful information on physiological mechanisms of the nervous system. The purpose of this study is to reveal complex and fine time-frequency features of SEP in time-frequency domain using advanced time-frequency analysis (TFA) and pattern classification methods. A high-resolution TFA algorithm, matching pursuit (MP), was proposed to decompose a SEP signal into a string of elementary waves and to provide a time-frequency feature description of the waves. After a dimension reduction by principle component analysis (PCA), a density-guided K-means clustering was followed to identify typical waves existed in SEP. Experimental results on posterior tibial nerve SEP signals of 50 normal adults showed that a series of typical waves were discovered in SEP using the proposed MP decomposition and clustering methods. The statistical properties of these SEP waves were examined and their representative waveforms were synthesized. The identified SEP waves provided a comprehensive and detailed description of time-frequency features of SEP.
躯体感觉诱发电位(SEP)通常包含一组在时域中测量和识别的详细时间成分,为神经系统的生理机制提供了有意义的信息。本研究旨在使用先进的时频分析(TFA)和模式分类方法,在时频域中揭示 SEP 的复杂和精细的时频特征。提出了一种高分辨率的 TFA 算法,匹配追踪(MP),将 SEP 信号分解为一系列基本波,并为波提供时频特征描述。通过主成分分析(PCA)降维后,采用密度引导的 K-均值聚类来识别 SEP 中存在的典型波。对 50 名正常成年人的腓肠神经 SEP 信号进行的实验结果表明,使用所提出的 MP 分解和聚类方法可以在 SEP 中发现一系列典型波。对这些 SEP 波的统计特性进行了检验,并合成了它们的代表性波形。所识别的 SEP 波提供了 SEP 时频特征的全面详细描述。