N2pc
心理学
视觉搜索
背景(考古学)
视觉空间注意
认知心理学
离解(化学)
刺激(心理学)
可视化快速呈现
400奈米
提示语
沟通
事件相关电位
视觉注意
脑电图
神经科学
认知
古生物学
化学
物理化学
生物
作者
Artyom Zinchenko,Thomas Geyer,Xuelian Zang,Zhuanghua Shi,Hermann J. Müller,Markus Conci
出处
期刊:Cortex
[Elsevier BV]
日期:2024-04-23
卷期号:175: 41-53
被引量:3
标识
DOI:10.1016/j.cortex.2024.04.001
摘要
Visual search is speeded when a target is repeatedly presented in an invariant scene context of nontargets (contextual cueing), demonstrating observers' capability for using statistical long-term memory (LTM) to make predictions about upcoming sensory events, thus improving attentional orienting. In the current study, we investigated whether expectations arising from individual, learned environmental structures can encompass multiple target locations. We recorded event-related potentials (ERPs) while participants performed a contextual cueing search task with repeated and non-repeated spatial item configurations. Notably, a given search display could be associated with either a single target location (standard contextual cueing) or two possible target locations. Our result showed that LTM-guided attention was always limited to only one target position in single- but also in the dual-target displays, as evidenced by expedited reaction times (RTs) and enhanced N1pc and N2pc deflections contralateral to one ("dominant") target of up to two repeating target locations. This contrasts with the processing of non-learned ("minor") target positions (in dual-target displays), which revealed slowed RTs alongside an initial N1pc "misguidance" signal that then vanished in the subsequent N2pc. This RT slowing was accompanied by enhanced N200 and N400 waveforms over fronto-central electrodes, suggesting that control mechanisms regulate the competition between dominant and minor targets. Our study thus reveals a dissociation in processing dominant versus minor targets: While LTM templates guide attention to dominant targets, minor targets necessitate control processes to overcome the automatic bias towards previously learned, dominant target locations.
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