事件相关电位的动态谱分析

Dmitriy Melkonian , Evian Gordon , Christopher Rennie , Homayoun Bahramali
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引用次数: 13

摘要

本文提出了一种在频域和时域上识别单个事件相关电位(ERP)分量的新方法。使用相似基函数(SBF)算法,该方法提供了一个时间到频率的变换,表示分量波形的频域等效。SBF算法的显著特点是,它允许在时域和频域上的非均匀间隔采样函数,并且谱密度的估计是通过有限傅里叶积分的数值计算获得的。将该方法应用于20名正常人的ERP数据,发现传统后期分量波形(N1、P2、N2和P3)的分量幅频特征形状相似。在此基础上,找到了一个低频带,其中分量的幅频特性用高斯函数描述,而分量的相位频特性是频率的线性函数。这些关系被解释为分量的频域等价。转换到时域,他们提供了ERP作为正向和负向单极波之和的分析描述。该研究指出了这些分量波形背后的类似机制,并解析地定义了频率和时域分量的动态特性。
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Dynamic spectral analysis of event-related potentials

This paper presents a new method for the identification of individual event related potential (ERP) components in both frequency and time domains. Using the similar basis function (SBF) algorithm the method provides a time to frequency transform, representing a frequency domain equivalent of the component waveform. Notable features of the SBF algorithm are that it allows for unevenly spaced sampled functions in both the time and frequency domains, and estimates of spectral densities are obtained by numerical computation of finite Fourier integrals. Application of this method to ERP data from 20 normal subjects demonstrated a similar shape of component amplitude frequency characteristics for traditional late component waveforms (N1, P2, N2 and P3). On this basis, a low-frequency band was found where the component amplitude frequency characteristic was described by a Gaussian function, while the component phase frequency characteristic was a linear function of frequency. These relationships are interpreted as frequency domain equivalents of the component. Transformed to the time domain, they provided an analytical description of the ERP as the sum of positive- and negative-going monopolar waves. The study points to similar mechanisms underlying these component waveforms, and analytically defines dynamic properties for the components both in the frequency and time domains.

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