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Time-frequency component analysis of somatosensory evoked potentials in rats

机译:大鼠体感诱发电位的时频成分分析

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Background Somatosensory evoked potential (SEP) signal usually contains a set of detailed temporal components measured and identified in a time domain, giving meaningful information on physiological mechanisms of the nervous system. The purpose of this study is to measure and identify detailed time-frequency components in normal SEP using time-frequency analysis (TFA) methods and to obtain their distribution pattern in the time-frequency domain. Methods This paper proposes to apply a high-resolution time-frequency analysis algorithm, the matching pursuit (MP), to extract detailed time-frequency components of SEP signals. The MP algorithm decomposes a SEP signal into a number of elementary time-frequency components and provides a time-frequency parameter description of the components. A clustering by estimation of the probability density function in parameter space is followed to identify stable SEP time-frequency components. Results Experimental results on cortical SEP signals of 28 mature rats show that a series of stable SEP time-frequency components can be identified using the MP decomposition algorithm. Based on the statistical properties of the component parameters, an approximated distribution of these components in time-frequency domain is suggested to describe the complex SEP response. Conclusion This study shows that there is a set of stable and minute time-frequency components in SEP signals, which are revealed by the MP decomposition and clustering. These stable SEP components have specific localizations in the time-frequency domain.
机译:背景体感诱发电位(SEP)信号通常包含在时域中测量和识别的一组详细的时间成分,可提供有关神经系统生理机制的有意义的信息。这项研究的目的是使用时频分析(TFA)方法来测量和识别正常SEP中的详细时频成分,并获得它们在时频域中的分布模式。方法本文提出应用高分辨率时频分析算法,即匹配追踪(MP),以提取SEP信号的详细时频成分。 MP算法将SEP信号分解为多个基本时频分量,并提供这些分量的时频参数描述。通过估计参数空间中的概率密度函数进行聚类,以识别稳定的SEP时频分量。结果对28只成熟大鼠皮质SEP信号的实验结果表明,采用MP分解算法可以识别出一系列稳定的SEP时频成分。基于组件参数的统计特性,建议在时频域中这些组件的近似分布来描述复杂的SEP响应。结论这项研究表明,SEP信号中存在一组稳定且微小的时频成分,这通过MP分解和聚类得到揭示。这些稳定的SEP组件在时频域中具有特定的位置。

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