College of Mathematics and Computer Science, Fuzhou University, Fuzhou, 350108, China,
Neurosci Bull. 2013 Dec;29(6):788-97. doi: 10.1007/s12264-013-1385-0. Epub 2013 Nov 8.
Cognitive functions are often studied using event-related potentials (ERPs) that are usually estimated by an averaging algorithm. Clearly, estimation of single-trial ERPs can provide researchers with many more details of cognitive activity than the averaging algorithm. A novel method to estimate single-trial ERPs is proposed in this paper. This method includes two key ideas. First, singular value decomposition was used to construct a matrix, which mapped single-trial electroencephalographic recordings (EEG) into a low-dimensional vector that contained little information from the spontaneous EEG. Second, we used the theory of compressed sensing to build a procedure to restore single-trial ERPs from this low-dimensional vector. ERPs are sparse or approximately sparse in the frequency domain. This fact allowed us to use the theory of compressed sensing. We verified this method in simulated and real data. Our method and dVCA (differentially variable component analysis), another method of single-trial ERPs estimation, were both used to estimate single-trial ERPs from the same simulated data. Results demonstrated that our method significantly outperforms dVCA under various conditions of signal-to-noise ratio. Moreover, the single-trial ERPs estimated from the real data by our method are statistically consistent with the theories of cognitive science.
认知功能通常使用事件相关电位 (ERP) 进行研究,这些电位通常通过平均算法进行估计。显然,估计单试 ERP 可以为研究人员提供比平均算法更多的认知活动细节。本文提出了一种估计单试 ERP 的新方法。该方法包括两个关键思想。首先,使用奇异值分解构建一个矩阵,将单试脑电图记录 (EEG) 映射到一个低维向量中,该向量包含自发 EEG 的信息量很小。其次,我们使用压缩感知理论构建了一个从这个低维向量中恢复单试 ERP 的过程。ERP 在频域中是稀疏的或近似稀疏的。这一事实使我们能够使用压缩感知理论。我们在模拟数据和真实数据中验证了这种方法。我们的方法和 dVCA(差分变量成分分析),另一种单试 ERP 估计方法,都被用于从相同的模拟数据中估计单试 ERP。结果表明,在各种信噪比条件下,我们的方法明显优于 dVCA。此外,我们的方法从真实数据中估计的单试 ERP 在统计学上与认知科学理论一致。