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首页> 外文期刊>Brain topography >Beyond conventional event-related brain potential (ERP): exploring the time-course of visual emotion processing using topographic and principal component analyses.
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Beyond conventional event-related brain potential (ERP): exploring the time-course of visual emotion processing using topographic and principal component analyses.

机译:超越常规事件相关的脑电势(ERP):使用地形和主成分分析探索视觉情感处理的时程。

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Recent technological advances with the scalp EEG methodology allow researchers to record electric fields generated in the human brain using a large number of electrodes or sensors (e.g. 64-256) distributed over the head surface (multi-channel recording). As a consequence, such high-density ERP mapping yields fairly dense ERP data sets that are often hard to analyze comprehensively or to relate straightforwardly to specific cognitive or emotional processes, because of the richness of the recorded signal in both the temporal (millisecond time-resolution) and spatial (multidimensional topographic information) domains. Principal component analyses (PCA) and topographic analyses (combined with distributed source localization algorithms) have been developed and successfully used to deal with this complexity, now offering powerful alternative strategies for data-driven analyses in complement to more traditional ERP analyses based on waveforms and peak measures. In this paper, we first briefly review the basicprinciples of these approaches, and then describe recent ERP studies that illustrate how they can inform about the precise spatio-temporal dynamic of emotion processing. These studies show that the perception of emotional visual stimuli may produce both quantitative and qualitative changes in the electric field configuration recorded at the scalp level, which are not apparent when using conventional ERP analyses. Additional information gained from these approaches include the identification of a sequence of successive processing stages that may not fully be reflected in ERP waveforms only, and the segregation of multiple or partly overlapping neural events that may be blended within a single ERP waveform. These findings highlight the added value of such alternative analyses when exploring the electrophysiological manifestations of complex and distributed mental functions, as for instance during emotion processing.
机译:头皮EEG方法的最新技术进步使研究人员可以使用分布在头部表面的大量电极或传感器(例如64-256)记录人脑中产生的电场(多通道记录)。因此,由于记录的信号在时间(毫秒级)内都非常丰富,因此这种高密度的ERP映射会生成相当密集的ERP数据集,这些数据集通常很难进行全面分析或直接与特定的认知或情感过程进行关联。分辨率)和空间(多维地形信息)域。主成分分析(PCA)和地形分析(结合分布式源定位算法)已经开发并成功用于解决这种复杂性,现在为数据驱动的分析提供了强大的替代策略,以替代基于波形和波形的更传统的ERP分析。高峰措施。在本文中,我们首先简要回顾了这些方法的基本原理,然后描述了最近的ERP研究,这些研究说明了它们如何可以告知情感处理的精确时空动态。这些研究表明,对情感视觉刺激的感知可能会在头皮水平记录的电场配置中产生定量和定性的变化,这在使用常规ERP分析时并不明显。从这些方法中获得的其他信息包括:识别可能不会仅完全反映在ERP波形中的一系列连续处理阶段,以及分离可能混入单个ERP波形中的多个或部分重叠的神经事件。这些发现凸显了这种替代分析在探索复杂且分散的心理功能的电生理表现时(例如在情绪处理过程中)的附加价值。

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