Abstract
Sensory environments often contain an overwhelming amount of information, with both relevant and irrelevant information competing for neural resources. Feature attention mediates this competition by selecting the sensory features needed to form a coherent percept. How attention affects the activity of populations of neurons to support this process is poorly understood because population coding is typically studied through simulations in which one sensory feature is encoded without competition. Therefore, to study the effects of featureattentiononpopulation-basedneural coding, investigations must beextendedtoincludestimuli withbothrelevant andirrelevant features. We measured noise correlations (rnoise) within small neural populations in primary auditory cortex while rhesus macaques performed a novel feature-selective attention task. We found that the effect of feature-selective attention on rnoise depended not only on the population tuning to the attended feature, but also on the tuning to the distractor feature. To attempt to explain how these observed effects might support enhanced perceptual performance, we propose an extension of a simple and influential model in which shifts in rnoise can simultaneously enhance the representation of the attended feature while suppressing the distractor. These findings present a novel mechanism by which attention modulates neural populations to support sensory processing in cluttered environments.
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Downer, J. D., Rapone, B., Verhein, J., O’Connor, K. N., & Sutter, M. L. (2017). Feature-selective attention adaptively shifts noise correlations in primary auditory cortex. Journal of Neuroscience, 37(21), 5378–5392. https://doi.org/10.1523/JNEUROSCI.3169-16.2017
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