Department of Neurological and Movement Sciences, University of Verona, 37134 Verona, Italy, Italian Institute of Neuroscience, 37134 Verona, Italy,
Department of Neurological and Movement Sciences, University of Verona, 37134 Verona, Italy, Centre of Applied Computer Science, Pavol Jozef Šafárik University, 04154 Košice, Slovakia, and.
J Neurosci. 2014 Jun 18;34(25):8594-604. doi: 10.1523/JNEUROSCI.0277-14.2014.
Spatial priority maps are real-time representations of the behavioral salience of locations in the visual field, resulting from the combined influence of stimulus driven activity and top-down signals related to the current goals of the individual. They arbitrate which of a number of (potential) targets in the visual scene will win the competition for attentional resources. As a result, deployment of visual attention to a specific spatial location is determined by the current peak of activation (corresponding to the highest behavioral salience) across the map. Here we report a behavioral study performed on healthy human volunteers, where we demonstrate that spatial priority maps can be shaped via reward-based learning, reflecting long-lasting alterations (biases) in the behavioral salience of specific spatial locations. These biases exert an especially strong influence on performance under conditions where multiple potential targets compete for selection, conferring competitive advantage to targets presented in spatial locations associated with greater reward during learning relative to targets presented in locations associated with lesser reward. Such acquired biases of spatial attention are persistent, are nonstrategic in nature, and generalize across stimuli and task contexts. These results suggest that reward-based attentional learning can induce plastic changes in spatial priority maps, endowing these representations with the "intelligent" capacity to learn from experience.
空间优先图是视觉场中位置的行为显着性的实时表示,源自刺激驱动活动和与个体当前目标相关的自上而下信号的综合影响。它们决定了视觉场景中的多个(潜在)目标中的哪一个将赢得注意力资源的竞争。因此,视觉注意力的部署是由地图上的当前激活峰值(对应于最高行为显着性)决定的。在这里,我们报告了一项在健康人类志愿者中进行的行为研究,其中我们证明空间优先级图可以通过基于奖励的学习来塑造,反映特定空间位置的行为显着性的持久改变(偏差)。这些偏差在多个潜在目标竞争选择的情况下对性能产生特别强烈的影响,相对于在学习过程中与较小奖励相关的位置呈现的目标,赋予与更大奖励相关的空间位置呈现的目标竞争优势。这种获得的空间注意力偏差是持久的,本质上是非策略性的,并在刺激和任务环境中泛化。这些结果表明,基于奖励的注意力学习可以诱导空间优先级图发生塑性变化,使这些表示具有从经验中学习的“智能”能力。