| Literature DB >> 28590902 |
Tatjana Kanashiro1,2,3, Gabriel Koch Ocker2,3,4, Marlene R Cohen3,5, Brent Doiron2,3.
Abstract
The circuit mechanisms behind shared neural variability (noise correlation) and its dependence on neural state are poorly understood. Visual attention is well-suited to constrain cortical models of response variability because attention both increases firing rates and their stimulus sensitivity, as well as decreases noise correlations. We provide a novel analysis of population recordings in rhesus primate visual area V4 showing that a single biophysical mechanism may underlie these diverse neural correlates of attention. We explore model cortical networks where top-down mediated increases in excitability, distributed across excitatory and inhibitory targets, capture the key neuronal correlates of attention. Our models predict that top-down signals primarily affect inhibitory neurons, whereas excitatory neurons are more sensitive to stimulus specific bottom-up inputs. Accounting for trial variability in models of state dependent modulation of neuronal activity is a critical step in building a mechanistic theory of neuronal cognition.Entities:
Keywords: inhibitory feedback; mean field model; neural correlates of attention; neuroscience; noise correlations; rhesus macaque
Mesh:
Year: 2017 PMID: 28590902 PMCID: PMC5476447 DOI: 10.7554/eLife.23978
Source DB: PubMed Journal: Elife ISSN: 2050-084X Impact factor: 8.140