Translational Psychiatry (Mar 2023)

BrainGENIE: The Brain Gene Expression and Network Imputation Engine

  • Jonathan L. Hess,
  • Thomas P. Quinn,
  • Chunling Zhang,
  • Gentry C. Hearn,
  • Samuel Chen,
  • Neuropsychiatric Consortium for Analysis and Sharing of Transcriptomes,
  • Sek Won Kong,
  • Murray Cairns,
  • Ming T. Tsuang,
  • Stephen V. Faraone,
  • Stephen J. Glatt

DOI
https://doi.org/10.1038/s41398-023-02390-w
Journal volume & issue
Vol. 13, no. 1
pp. 1 – 10

Abstract

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Abstract In vivo experimental analysis of human brain tissue poses substantial challenges and ethical concerns. To address this problem, we developed a computational method called the Brain Gene Expression and Network-Imputation Engine (BrainGENIE) that leverages peripheral-blood transcriptomes to predict brain tissue-specific gene-expression levels. Paired blood–brain transcriptomic data collected by the Genotype-Tissue Expression (GTEx) Project was used to train BrainGENIE models to predict gene-expression levels in ten distinct brain regions using whole-blood gene-expression profiles. The performance of BrainGENIE was compared to PrediXcan, a popular method for imputing gene expression levels from genotypes. BrainGENIE significantly predicted brain tissue-specific expression levels for 2947–11,816 genes (false-discovery rate-adjusted p < 0.05), including many transcripts that cannot be predicted significantly by a transcriptome-imputation method such as PrediXcan. BrainGENIE recapitulated measured diagnosis-related gene-expression changes in the brain for autism, bipolar disorder, and schizophrenia better than direct correlations from blood and predictions from PrediXcan. We developed a convenient software toolset for deploying BrainGENIE, and provide recommendations for how best to implement models. BrainGENIE complements and, in some ways, outperforms existing transcriptome-imputation tools, providing biologically meaningful predictions and opening new research avenues.