Global genetic variations predict brain response to faces

  • Erin W Dickie
  • Amir Tahmasebi
  • Leon French
  • Natasa Kovacevic
  • Tobias Banaschewski
  • Gareth J Barker
  • Arun Bokde
  • Christian Büchel
  • Patricia Conrod
  • Herta Flor
  • Hugh Garavan
  • Juergen Gallinat
  • Penny Gowland
  • Andreas Heinz
  • Bernd Ittermann
  • Claire Lawrence
  • Karl Mann
  • Jean-Luc Martinot
  • Frauke Nees
  • Thomas Nichols
  • Mark Lathrop
  • Eva Loth
  • Zdenka Pausova
  • Marcela Rietschel
  • Michal N Smolka
  • Andreas Ströhle
  • Roberto Toro
  • Gunter Schumann
  • Tomáš Paus
  • IMAGEN Consortium

Related Research units

Abstract

Face expressions are a rich source of social signals. Here we estimated the proportion of phenotypic variance in the brain response to facial expressions explained by common genetic variance captured by ∼ 500,000 single nucleotide polymorphisms. Using genomic-relationship-matrix restricted maximum likelihood (GREML), we related this global genetic variance to that in the brain response to facial expressions, as assessed with functional magnetic resonance imaging (fMRI) in a community-based sample of adolescents (n = 1,620). Brain response to facial expressions was measured in 25 regions constituting a face network, as defined previously. In 9 out of these 25 regions, common genetic variance explained a significant proportion of phenotypic variance (40-50%) in their response to ambiguous facial expressions; this was not the case for angry facial expressions. Across the network, the strength of the genotype-phenotype relationship varied as a function of the inter-individual variability in the number of functional connections possessed by a given region (R(2) = 0.38, p<0.001). Furthermore, this variability showed an inverted U relationship with both the number of observed connections (R2 = 0.48, p<0.001) and the magnitude of brain response (R(2) = 0.32, p<0.001). Thus, a significant proportion of the brain response to facial expressions is predicted by common genetic variance in a subset of regions constituting the face network. These regions show the highest inter-individual variability in the number of connections with other network nodes, suggesting that the genetic model captures variations across the adolescent brains in co-opting these regions into the face network.

Bibliographical data

Original languageEnglish
ISSN1553-7404
DOIs
Publication statusPublished - 01.08.2014
PubMed 25122193