Thie Johnson, Sriram Prema, Klistorner Alexander, Graham Stuart L
Australian School of Advanced Medicine, 2 Technology Place, Macquarie University 2109, Australia.
Vision Res. 2012 Jan 1;52(1):79-87. doi: 10.1016/j.visres.2011.11.002. Epub 2011 Nov 12.
This paper describes a method to reliably estimate latency of multifocal visual evoked potential (mfVEP) and a classifier to automatically separate reliable mfVEP traces from noisy traces. We also investigated which mfVEP peaks have reproducible latency across recording sessions. The proposed method performs cross-correlation between mfVEP traces and second order Gaussian wavelet kernels and measures the timing of the resulting peaks. These peak times offset by the wavelet kernel's peak time represents the mfVEP latency. The classifier algorithm performs an exhaustive series of leave-one-out classifications to find the champion mfVEP features which are most frequently selected to infer reliable traces from noisy traces. Monopolar mfVEP recording was performed on 10 subjects using the Accumap1™ system. Pattern-reversal protocol was used with 24 sectors and eccentricity upto 33°. A bipolar channel was recorded at midline with electrodes placed above and below the inion. The largest mfVEP peak and the immediate peak prior had the smallest latency variability across recording sessions, about ±2ms. The optimal classifier selected three champion features, namely, signal-to-noise ratio, the signal's peak magnitude response from 5 to 15Hz and the peak-to-peak amplitude of the trace between 70 and 250 ms. The classifier algorithm can separate reliable and noisy traces with a high success rate, typically 93%.
本文描述了一种可靠估计多焦视觉诱发电位(mfVEP)潜伏期的方法以及一种用于自动将可靠的mfVEP迹线与噪声迹线分离的分类器。我们还研究了哪些mfVEP峰值在不同记录时段具有可重复的潜伏期。所提出的方法在mfVEP迹线与二阶高斯小波核之间进行互相关,并测量所得峰值的时间。这些峰值时间减去小波核的峰值时间即为mfVEP潜伏期。分类器算法进行一系列详尽的留一法分类,以找到最常被选来从噪声迹线中推断可靠迹线的最佳mfVEP特征。使用Accumap1™系统对10名受试者进行了单极mfVEP记录。采用了具有24个扇区且离心率高达33°的模式反转协议。在中线处记录双极通道,电极置于枕外隆凸上方和下方。在不同记录时段,最大的mfVEP峰值及其前一个紧邻峰值的潜伏期变异性最小,约为±2毫秒。最佳分类器选择了三个最佳特征,即信噪比、5至15赫兹时信号的峰值幅度响应以及70至250毫秒之间迹线的峰峰值幅度。分类器算法能够以较高的成功率(通常为93%)分离可靠迹线和噪声迹线。