Department of Neuroscience, Baylor College of Medicine, Houston, TX, USA.
Center for Neuroscience and Artificial Intelligence, Baylor College of Medicine, Houston, TX, USA.
Nat Commun. 2018 Jul 9;9(1):2654. doi: 10.1038/s41467-018-05123-6.
Variability in neuronal responses to identical stimuli is frequently correlated across a population. Attention is thought to reduce these correlations by suppressing noisy inputs shared by the population. However, even with precise control of the visual stimulus, the subject's attentional state varies across trials. While these state fluctuations are bound to induce some degree of correlated variability, it is currently unknown how strong their effect is, as previous studies generally do not dissociate changes in attentional strength from changes in attentional state variability. We designed a novel paradigm that does so and find both a pronounced effect of attentional fluctuations on correlated variability at long timescales and attention-dependent reductions in correlations at short timescales. These effects predominate in layers 2/3, as expected from a feedback signal such as attention. Thus, significant portions of correlated variability can be attributed to fluctuations in internally generated signals, like attention, rather than noise.
在群体中,对相同刺激的神经元反应的可变性经常是相关的。人们认为注意力通过抑制群体共享的嘈杂输入来降低这些相关性。然而,即使对视觉刺激进行精确控制,被试的注意力状态也会在试验之间发生变化。虽然这些状态波动必然会引起一定程度的相关可变性,但目前尚不清楚其影响有多大,因为以前的研究通常没有将注意力强度的变化与注意力状态可变性的变化区分开来。我们设计了一种新颖的范式,可以做到这一点,并发现注意力波动对长时间尺度上的相关可变性有显著影响,并且在短时间尺度上注意力相关的相关性降低。这些效应主要出现在 2/3 层,这与注意力等反馈信号的预期一致。因此,相关可变性的很大一部分可以归因于内部产生的信号(如注意力)的波动,而不是噪声。