| Literature DB >> 35294900 |
Stephen D Mague1, Austin Talbot2, Cameron Blount3, Kathryn K Walder-Christensen4, Lara J Duffney5, Elise Adamson6, Alexandra L Bey1, Nkemdilim Ndubuizu3, Gwenaëlle E Thomas7, Dalton N Hughes7, Yael Grossman1, Rainbo Hultman8, Saurabh Sinha9, Alexandra M Fink3, Neil M Gallagher10, Rachel L Fisher3, Yong-Hui Jiang5, David E Carlson11, Kafui Dzirasa12.
Abstract
The architecture whereby activity across many brain regions integrates to encode individual appetitive social behavior remains unknown. Here we measure electrical activity from eight brain regions as mice engage in a social preference assay. We then use machine learning to discover a network that encodes the extent to which individual mice engage another mouse. This network is organized by theta oscillations leading from prelimbic cortex and amygdala that converge on the ventral tegmental area. Network activity is synchronized with cellular firing, and frequency-specific activation of a circuit within this network increases social behavior. Finally, the network generalizes, on a mouse-by-mouse basis, to encode individual differences in social behavior in healthy animals but fails to encode individual behavior in a 'high confidence' genetic model of autism. Thus, our findings reveal the architecture whereby the brain integrates distributed activity across timescales to encode an appetitive brain state underlying individual differences in social behavior.Entities:
Keywords: autism spectrum disorder; brain networks; electome; machine learning; social behavior
Mesh:
Year: 2022 PMID: 35294900 PMCID: PMC9126093 DOI: 10.1016/j.neuron.2022.02.016
Source DB: PubMed Journal: Neuron ISSN: 0896-6273 Impact factor: 18.688