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正分类优势时间进程的映射:一项 ERP 研究。

Mapping the time course of the positive classification advantage: an ERP study.

机构信息

Department of Psychology, Fourth Military Medical University, Xi'an, China.

出版信息

Cogn Affect Behav Neurosci. 2013 Sep;13(3):491-500. doi: 10.3758/s13415-013-0158-6.

Abstract

The aim of the present study was to investigate the time course of the positive advantage in the expression classification of faces by recording event-related potentials (ERPs). Although neutral faces were classified more quickly than either happy or sad faces, a significant positive classification advantage (PCA)-that is, faster classification for happy than for sad faces-was found. For ERP data, as compared with sad faces, happy faces elicited a smaller N170 and a larger posterior N2 component. The P3 was modulated by facial expressions with higher amplitudes and shorter latencies for both happy and neutral stimuli than for sad stimuli, and the reaction times were significantly correlated with the amplitude and latency of the P3. Overall, these data showed robust PCA in expression classification, starting when the stimulus has been recognized as a face revealed by the N170 component.

摘要

本研究旨在通过记录事件相关电位 (ERP) 来探讨表情分类中积极优势的时间进程。虽然中性面孔的分类速度快于快乐或悲伤的面孔,但确实发现了显著的积极分类优势 (PCA),即快乐面孔的分类速度快于悲伤面孔。对于 ERP 数据,与悲伤面孔相比,快乐面孔诱发出更小的 N170 和更大的后 N2 成分。与悲伤刺激相比,快乐和中性刺激的 P3 被面部表情调制,具有更高的振幅和更短的潜伏期,并且反应时间与 P3 的振幅和潜伏期显著相关。总的来说,这些数据显示出表情分类中强大的 PCA,从 N170 成分揭示刺激被识别为面孔时开始。

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