Picower Institute for Learning and Memory, Massachusetts Institute of Technology, Cambridge, Massachusetts, United States of America.
PLoS One. 2012;7(9):e44464. doi: 10.1371/journal.pone.0044464. Epub 2012 Sep 18.
This paper considers the problem of automatic characterization and detection of target images in a rapid serial visual presentation (RSVP) task based on EEG data. A novel method that aims to identify single-trial event-related potentials (ERPs) in time-frequency is proposed, and a robust classifier with feature clustering is developed to better utilize the correlated ERP features. The method is applied to EEG recordings of a RSVP experiment with multiple sessions and subjects.The results show that the target image events are mainly characterized by 3 distinct patterns in the time-frequency domain, i.e., a theta band (4.3 Hz) power boosting 300-700 ms after the target image onset, an alpha band (12 Hz) power boosting 500-1000 ms after the stimulus onset, and a delta band (2 Hz) power boosting after 500 ms. The most discriminant time-frequency features are power boosting and are relatively consistent among multiple sessions and subjects.Since the original discriminant time-frequency features are highly correlated, we constructed the uncorrelated features using hierarchical clustering for better classification of target and non-target images. With feature clustering, performance (area under ROC) improved from 0.85 to 0.89 on within-session tests, and from 0.76 to 0.84 on cross-subject tests. The constructed uncorrelated features were more robust than the original discriminant features and corresponded to a number of local regions on the time-frequency plane.
The data and code are available at: http://compgenomics.cbi.utsa.edu/rsvp/index.html.
本研究考虑了基于脑电(EEG)数据的快速序列视觉呈现(RSVP)任务中目标图像的自动特征和检测问题。提出了一种旨在识别时频中单试事件相关电位(ERP)的新方法,并开发了具有特征聚类的稳健分类器,以更好地利用相关 ERP 特征。该方法应用于具有多个会话和受试者的 RSVP 实验的 EEG 记录。结果表明,目标图像事件主要在时频域中表现出 3 种不同的模式,即刺激后 300-700ms 的θ频段(4.3Hz)功率增强,刺激后 500-1000ms 的α频段(12Hz)功率增强,以及刺激后 500ms 的δ频段(2Hz)功率增强。最具判别力的时频特征是功率增强,在多个会话和受试者中相对一致。由于原始判别时频特征高度相关,我们使用层次聚类构建了不相关特征,以更好地区分目标和非目标图像。使用特征聚类,在会话内测试中的性能(ROC 曲线下面积)从 0.85 提高到 0.89,在跨受试者测试中的性能从 0.76 提高到 0.84。构建的不相关特征比原始判别特征更稳健,并且与时间-频率平面上的许多局部区域相对应。
数据和代码可在以下网址获取:http://compgenomics.cbi.utsa.edu/rsvp/index.html。