Samar V J, Bopardikar A, Rao R, Swartz K
National Technical Institute for the Deaf, Rochester Institute of Technology, Rochester, NY, USA.
Brain Lang. 1999 Jan;66(1):7-60. doi: 10.1006/brln.1998.2024.
This paper presents a nontechnical, conceptually oriented introduction to wavelet analysis and its application to neuroelectric waveforms such as the EEG and event related potentials (ERP). Wavelet analysis refers to a growing class of signal processing techniques and transforms that use wavelets and wavelet packets to decompose and manipulate time-varying, nonstationary signals. Neuroelectric waveforms fall into this category of signals because they typically have frequency content that varies as a function of time and recording site. Wavelet techniques can optimize the analysis of such signals by providing excellent joint time-frequency resolution. The ability of wavelet analysis to accurately resolve neuroelectric waveforms into specific time and frequency components leads to several analysis applications. Some of these applications are time-varying filtering for denoising single trial ERPs, EEG spike and spindle detection, ERP component separation and measurement, hearing-threshold estimation via auditory brainstem evoked response measurements, isolation of specific EEG and ERP rhythms, scale-specific topographic analysis, and dense-sensor array data compression. The present tutorial describes the basic concepts of wavelet analysis that underlie these and other applications. In addition, the application of a recently developed method of custom designing Meyer wavelets to match the waveshapes of particular neuroelectric waveforms is illustrated. Matched wavelets are physiologically sensible pattern analyzers for EEG and ERP waveforms and their superior performance is illustrated with real data examples.
本文提供了一个面向概念的非技术性小波分析介绍,以及它在神经电波形(如脑电图(EEG)和事件相关电位(ERP))中的应用。小波分析指的是一类不断发展的信号处理技术和变换,它们使用小波和小波包来分解和处理随时间变化的非平稳信号。神经电波形属于这类信号,因为它们通常具有随时间和记录部位而变化的频率成分。小波技术可以通过提供出色的联合时频分辨率来优化对此类信号的分析。小波分析将神经电波形准确分解为特定时间和频率成分的能力带来了多种分析应用。其中一些应用包括对单次试验ERP进行去噪的时变滤波、EEG尖峰和纺锤波检测、ERP成分分离和测量、通过听觉脑干诱发反应测量估计听力阈值、分离特定的EEG和ERP节律、特定尺度的地形分析以及密集传感器阵列数据压缩。本教程描述了这些及其他应用背后的小波分析基本概念。此外,还展示了一种最近开发的定制设计Meyer小波以匹配特定神经电波形形状的方法的应用。匹配小波是用于EEG和ERP波形的生理上合理的模式分析器,并通过实际数据示例展示了它们的卓越性能。