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Social network position is a major predictor of ant behavior, microbiota composition, and brain gene expression.

Tomas KayJoanito LibertiThomas O RichardsonSean K McKenzieChelsea A WeitekampChristine La MendolaMatthias RüeggLucie KesnerNatasha SzombathySean McGregorJonathan RomiguierPhilipp EngelLaurent Keller
Published in: PLoS biology (2023)
The physiology and behavior of social organisms correlate with their social environments. However, because social environments are typically confounded by age and physical environments (i.e., spatial location and associated abiotic factors), these correlations are usually difficult to interpret. For example, associations between an individual's social environment and its gene expression patterns may result from both factors being driven by age or behavior. Simultaneous measurement of pertinent variables and quantification of the correlations between these variables can indicate whether relationships are direct (and possibly causal) or indirect. Here, we combine demographic and automated behavioral tracking with a multiomic approach to dissect the correlation structure among the social and physical environment, age, behavior, brain gene expression, and microbiota composition in the carpenter ant Camponotus fellah. Variations in physiology and behavior were most strongly correlated with the social environment. Moreover, seemingly strong correlations between brain gene expression and microbiota composition, physical environment, age, and behavior became weak when controlling for the social environment. Consistent with this, a machine learning analysis revealed that from brain gene expression data, an individual's social environment can be more accurately predicted than any other behavioral metric. These results indicate that social environment is a key regulator of behavior and physiology.
Keyphrases
  • gene expression
  • mental health
  • healthcare
  • machine learning
  • dna methylation
  • white matter
  • physical activity
  • resting state
  • deep learning
  • transcription factor
  • artificial intelligence
  • high throughput
  • cerebral ischemia