Department of Computer Engineering, College of Engineering, Shiraz branch, Islamic Azad University, Shiraz, Iran.
Department of CSE & IT, Electrical and Computer College of Engineering, Shiraz University, Shiraz, Iran.
Comput Methods Programs Biomed. 2017 Jul;145:95-102. doi: 10.1016/j.cmpb.2017.04.014. Epub 2017 Apr 19.
Synchronous averaging over time locked single-trial of event-related potential (ERP) is known as the simplest scheme to extract P300 component. This method assumes the P300 features are invariant through the time while they are affected by factors like brain fatigue and habitation. In this study, a new scheme is proposed termed as time-varying time-lag blind source separation (TT-BSS) which is upon the second order statistics of signal to separate P300 waveform from the background electroencephalogram (EEG) while it captures the time variation of P300 component. The time-lag parameter for all channels is determined by maximizing the correlation (similarity) between two successive trials. As the time-lag parameter is varying by time (trial to trial), an average is taken over the time-lag covariance matrices of all two consecutive trials. TT-BSS finally estimates a transform (separating matrix) by joint diagnolization of the covariance matrix of trials and the averaged covariance matrix of the time varying time-lag. To assess the proposed scheme, synthetic and real EEGs containing P300 are used. The EEG signals were collected from twenty schizophrenic and twenty age-matched normal subjects via 20 channels through the resting state and in presence of the oddball audio stimulus. Empirical achievements over the simulated and real EEGs imply on the superiority of TT-BSS in dynamic estimation of P300 characteristics compared to state-of-the-art counterparts such as constant time-lag BSS, constrained BSS and synchronous averaging.
时间锁定的事件相关电位(ERP)单试次的同步平均被认为是提取 P300 成分的最简单方案。该方法假设 P300 特征在时间上是不变的,而它们会受到脑疲劳和习惯等因素的影响。在这项研究中,提出了一种新的方案,称为时变时滞盲源分离(TT-BSS),它基于信号的二阶统计量来分离 P300 波形与背景脑电图(EEG),同时捕获 P300 成分的时间变化。所有通道的时滞参数通过最大化两个连续试验之间的相关性(相似性)来确定。由于时滞参数随时间(试验到试验)而变化,因此对所有两个连续试验的时滞协方差矩阵取平均值。TT-BSS 最终通过试验协方差矩阵和时变时滞的平均协方差矩阵的联合对角化来估计变换(分离矩阵)。为了评估所提出的方案,使用包含 P300 的合成和真实 EEG。通过 20 个通道从 20 名精神分裂症患者和 20 名年龄匹配的正常受试者中采集 EEG 信号,在静息状态和存在奇数音频刺激下进行采集。对模拟和真实 EEG 的实证研究表明,与恒定时滞 BSS、约束 BSS 和同步平均等最新方法相比,TT-BSS 在 P300 特征的动态估计方面具有优越性。