History-dependent variability in population dynamics during evidence accumulation in cortex
The authors developed experimental and computational approaches to study moment-to-moment changes in the activity of populations of cortical neurons as mice accumulated evidence during decision-making in virtual reality. They propose that evidence accumulation may not require winner-take-all competi...
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Veröffentlicht in: | Nature neuroscience 2016-12, Vol.19 (12), p.1672-1681 |
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Sprache: | eng |
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Zusammenfassung: | The authors developed experimental and computational approaches to study moment-to-moment changes in the activity of populations of cortical neurons as mice accumulated evidence during decision-making in virtual reality. They propose that evidence accumulation may not require winner-take-all competitions but instead emerges from general dynamical properties that instantiate short-term memory.
We studied how the posterior parietal cortex combines new information with ongoing activity dynamics as mice accumulate evidence during a virtual navigation task. Using new methods to analyze population activity on single trials, we found that activity transitioned rapidly between different sets of active neurons. Each event in a trial, whether an evidence cue or a behavioral choice, caused seconds-long modifications to the probabilities that govern how one activity pattern transitions to the next, forming a short-term memory. A sequence of evidence cues triggered a chain of these modifications resulting in a signal for accumulated evidence. Multiple distinguishable activity patterns were possible for the same accumulated evidence because representations of ongoing events were influenced by previous within- and across-trial events. Therefore, evidence accumulation need not require the explicit competition between groups of neurons, as in winner-take-all models, but could instead emerge implicitly from general dynamical properties that instantiate short-term memory. |
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ISSN: | 1097-6256 1546-1726 |
DOI: | 10.1038/nn.4403 |