Deep neural network prediction of genome-wide transcriptome signatures - beyond the Black-box

NPJ Syst Biol Appl. 2022 Feb 23;8(1):9. doi: 10.1038/s41540-022-00218-9.

Abstract

Prediction algorithms for protein or gene structures, including transcription factor binding from sequence information, have been transformative in understanding gene regulation. Here we ask whether human transcriptomic profiles can be predicted solely from the expression of transcription factors (TFs). We find that the expression of 1600 TFs can explain >95% of the variance in 25,000 genes. Using the light-up technique to inspect the trained NN, we find an over-representation of known TF-gene regulations. Furthermore, the learned prediction network has a hierarchical organization. A smaller set of around 125 core TFs could explain close to 80% of the variance. Interestingly, reducing the number of TFs below 500 induces a rapid decline in prediction performance. Next, we evaluated the prediction model using transcriptional data from 22 human diseases. The TFs were sufficient to predict the dysregulation of the target genes (rho = 0.61, P < 10-216). By inspecting the model, key causative TFs could be extracted for subsequent validation using disease-associated genetic variants. We demonstrate a methodology for constructing an interpretable neural network predictor, where analyses of the predictors identified key TFs that were inducing transcriptional changes during disease.

Publication types

  • Research Support, Non-U.S. Gov't

MeSH terms

  • Genome*
  • Humans
  • Neural Networks, Computer
  • Protein Binding
  • Transcription Factors / genetics
  • Transcription Factors / metabolism
  • Transcriptome* / genetics

Substances

  • Transcription Factors