Department of Neuroscience, Biomedicine and Movement Sciences, University of Verona, Italy.
Department of Neuroscience, Biomedicine and Movement Sciences, University of Verona, Italy; National Institute of Neuroscience - Verona Unit, Verona, Italy.
Cortex. 2018 May;102:67-95. doi: 10.1016/j.cortex.2017.09.027. Epub 2017 Oct 9.
The cognitive system has the capacity to learn and make use of environmental regularities - known as statistical learning (SL), including for the implicit guidance of attention. For instance, it is known that attentional selection is biased according to the spatial probability of targets; similarly, changes in distractor filtering can be triggered by the unequal spatial distribution of distractors. Open questions remain regarding the cognitive/neuronal mechanisms underlying SL of target selection and distractor filtering. Crucially, it is unclear whether the two processes rely on shared neuronal machinery, with unavoidable cross-talk, or they are fully independent, an issue that we directly addressed here. In a series of visual search experiments, participants had to discriminate a target stimulus, while ignoring a task-irrelevant salient distractor (when present). We systematically manipulated spatial probabilities of either one or the other stimulus, or both. We then measured performance to evaluate the direct effects of the applied contingent probability distribution (e.g., effects on target selection of the spatial imbalance in target occurrence across locations) as well as its indirect or "transfer" effects (e.g., effects of the same spatial imbalance on distractor filtering across locations). By this approach, we confirmed that SL of both target and distractor location implicitly bias attention. Most importantly, we described substantial indirect effects, with the unequal spatial probability of the target affecting filtering efficiency and, vice versa, the unequal spatial probability of the distractor affecting target selection efficiency across locations. The observed cross-talk demonstrates that SL of target selection and distractor filtering are instantiated via (at least partly) shared neuronal machinery, as further corroborated by strong correlations between direct and indirect effects at the level of individual participants. Our findings are compatible with the notion that both kinds of SL adjust the priority of specific locations within attentional priority maps of space.
认知系统具有学习和利用环境规律的能力——这被称为统计学习(SL),包括对注意力的隐含引导。例如,众所周知,注意力的选择会根据目标的空间概率产生偏差;同样,分心物过滤的变化也可以由分心物的空间分布不均触发。关于目标选择和分心物过滤的 SL 的认知/神经元机制仍存在一些悬而未决的问题。至关重要的是,尚不清楚这两个过程是否依赖于共享的神经元机制,存在不可避免的串扰,或者它们是否完全独立,我们在这里直接解决了这个问题。在一系列视觉搜索实验中,参与者必须区分目标刺激,同时忽略不相关的显著分心物(如果存在)。我们系统地操纵了一个或另一个刺激或两者的空间概率。然后,我们测量了性能,以评估应用的条件概率分布的直接影响(例如,跨位置的目标出现的空间不平衡对目标选择的影响)及其间接或“转移”效应(例如,相同空间不平衡对跨位置的分心物过滤的影响)。通过这种方法,我们证实了目标和分心物位置的 SL 都会隐含地引导注意力。最重要的是,我们描述了大量的间接效应,目标的空间概率不平衡会影响过滤效率,反之亦然,分心物的空间概率不平衡会影响跨位置的目标选择效率。观察到的串扰表明,目标选择和分心物过滤的 SL 是通过(至少部分)共享的神经元机制实现的,这进一步得到了个体参与者层面上直接和间接效应之间的强相关性的支持。我们的发现与这样一种观点是一致的,即这两种 SL 都调整了空间注意优先级图中特定位置的优先级。