基于Karhunen - Loeve变换的视觉诱发电位潜伏期估计

M. Yusoff
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引用次数: 0

摘要

估计隐藏在彩色噪声中的信号是具有挑战性的,因为大量具有相当大或更高功率的噪声频率与所需波形的频率位于同一频带。本文研究并测试了一种基于优化和Karhunen-Loeve变换(KLT)的方法来估计被彩色脑电图(EEG)噪声严重破坏的单次视觉诱发电位(vep)的潜伏期。VEP的正常电压水平约为10 μV,背景脑电图在100 μV附近,产生的信噪比(SNR)在-10 dB范围内。该方法采用了一种显式的预白化方案,旨在生成对称基矩阵,该矩阵最终生成一个统一的特征向量矩阵,该矩阵同时对角化了所需的信号和噪声相关矩阵。绝对对角化保证了观测信号的完全去相关,并允许将变换后的信号空间分离为“信号加噪声子空间”和“仅噪声子空间”。利用信噪比在0 ~ -10 dB范围内的全面、真实的模拟数据和医院收集的真实患者数据,对基于klt的方法估计VEP潜伏期的性能进行了评估。该技术在两个实验中都具有相当高的成功率,较高的准确度和精密度,并且标准偏差很小。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Estimation of visual evoked potential latencies using Karhunen Loeve Transform method
Estimating a signal which is buried inside colored noise is challenging since significant amount of the noise frequencies with considerable or higher power reside in the same band as that of the desired waveform. In this paper, an optimization- and Karhunen-Loeve Transform (KLT)-based approach has been investigated and tested to estimate the latencies of single-trial visual evoked potentials (VEPs) which are highly corrupted by colored electroencephalogram (EEG) noise. The normal voltage level for a VEP is around 10 μV and the background EEG is in the proximity of 100 μV, producing a signal-to-noise ratio (SNR) in the range of -10 dB. The studied method devices an explicit pre-whitening scheme aimed at producing a symmetric basis matrix, which eventually generates a unitary eigenvector matrix that simultaneously diagonalizes both the wanted signal and noise correlation matrices. The absolute diagonalization ensures full decorrelation of the observed signal, and permits the segregation of the transformed signal space into the "signal plus noise subspace" and "noise only subspace." The performance of the KLT-based method in estimating VEP latencies has been assessed using comprehensively and realistically simulated data at SNR ranging from 0 to -10 dB, and real patient data gathered in a hospital. The technique produces reasonably high success rates, high accuracies and precisions, and narrow standard deviations in both experiments.
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