Communications Biology (Oct 2024)

Heterogenous brain activations across individuals localize to a common network

  • Shaoling Peng,
  • Zaixu Cui,
  • Suyu Zhong,
  • Yanyang Zhang,
  • Alexander L. Cohen,
  • Michael D. Fox,
  • Gaolang Gong

DOI
https://doi.org/10.1038/s42003-024-06969-x
Journal volume & issue
Vol. 7, no. 1
pp. 1 – 11

Abstract

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Abstract Task functional magnetic resonance imaging research has generally shielded away from studying individuals due to the low reproducibility. Here, we propose that heterogeneous brain activations across individuals localize to a common network. To test this hypothesis, we use working memory (WM) as our example. First, we showed that discrete-brain-based reproducibility of brain activation during WM across individuals was low. Then, we used activation network mapping (ANM) technique to identify each individual’s brain network of WM and found that network-based reproducibility was rather high. Prediction analyses using machine learning algorithms indicated that individual WM networks identified via ANM can predict WM behavioral performance. This predictive ability even outperformed that of brain activations. Our study provides a new explanation on the low reproducibility of brain activations across individuals. The results suggest that ANM can be used to identify individual brain networks of cognitive processes, thus promising broad potential applications.