NeuroImage (Feb 2021)

Co-activation patterns across multiple tasks reveal robust anti-correlated functional networks

  • Meiling Li,
  • Louisa Dahmani,
  • Danhong Wang,
  • Jianxun Ren,
  • Sophia Stocklein,
  • Yuanxiang Lin,
  • Guoming Luan,
  • Zhiqiang Zhang,
  • Guangming Lu,
  • Fanziska Galiè,
  • Ying Han,
  • Alvaro Pascual-Leone,
  • Meiyun Wang,
  • Michael D. Fox,
  • Hesheng Liu

Journal volume & issue
Vol. 227
p. 117680

Abstract

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Whether antagonistic brain states constitute a fundamental principle of human brain organization has been debated over the past decade. Some argue that intrinsically anti-correlated brain networks in resting-state functional connectivity are an artifact of preprocessing. Others argue that anti-correlations are biologically meaningful predictors of how the brain will respond to different stimuli. Here, we investigated the co-activation patterns across the whole brain in various tasks and test whether brain regions demonstrate anti-correlated activity similar to those observed at rest. We examined brain activity in 47 task contrasts from the Human Connectome Project (N = 680) and found robust antagonistic interactions between networks. Regions of the default network exhibited the highest degree of cortex-wide negative connectivity. The negative co-activation patterns across tasks showed good correspondence to that derived from resting-state data processed with global signal regression (GSR). Interestingly, GSR-processed resting-state data was a significantly better predictor of task-induced modulation than data processed without GSR. Finally, in a cohort of 25 patients with depression, we found that task-based anti-correlations between the dorsolateral prefrontal cortex (DLPFC) and subgenual anterior cingulate cortex were associated with clinical efficacy of transcranial magnetic stimulation therapy targeting the DLPFC. Overall, our findings indicate that anti-correlations are a biologically meaningful phenomenon and may reflect an important principle of functional brain organization.

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