Attention improves performance primarily by reducing interneuronal correlations
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Open Access
- 15 November 2009
- journal article
- research article
- Published by Springer Nature in Nature Neuroscience
- Vol. 12 (12) , 1594-1600
- https://doi.org/10.1038/nn.2439
Abstract
Previous work has suggested that visual attention improves behavioral performance by increasing the firing rates of individual sensory neurons. Recording from populations of neurons in monkey visual area V4, this study finds that most of the attentional improvement in the population signal results from decreases in interneuronal correlations. Visual attention can improve behavioral performance by allowing observers to focus on the important information in a complex scene. Attention also typically increases the firing rates of cortical sensory neurons. Rate increases improve the signal-to-noise ratio of individual neurons, and this improvement has been assumed to underlie attention-related improvements in behavior. We recorded dozens of neurons simultaneously in visual area V4 and found that changes in single neurons accounted for only a small fraction of the improvement in the sensitivity of the population. Instead, over 80% of the attentional improvement in the population signal was caused by decreases in the correlations between the trial-to-trial fluctuations in the responses of pairs of neurons. These results suggest that the representation of sensory information in populations of neurons and the way attention affects the sensitivity of the population may only be understood by considering the interactions between neurons.Keywords
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