Detecting Sources of Transcriptional Heterogeneity in Large-Scale RNA-Seq Data Sets

Genetics. 2016 Dec;204(4):1391-1396. doi: 10.1534/genetics.116.193714. Epub 2016 Oct 11.

Abstract

Gene expression levels are dynamic molecular phenotypes that respond to biological, environmental, and technical perturbations. Here we use a novel replicate-classifier approach for discovering transcriptional signatures and apply it to the Genotype-Tissue Expression data set. We identified many factors contributing to expression heterogeneity, such as collection center and ischemia time, and our approach of scoring replicate classifiers allows us to statistically stratify these factors by effect strength. Strikingly, from transcriptional expression in blood alone we detect markers that help predict heart disease and stroke in some patients. Our results illustrate the challenges and opportunities of interpreting patterns of transcriptional variation in large-scale data sets.

Keywords: GTEx Consortium; Random Forest classification; gene expression normalization; transcriptional heterogeneity.

MeSH terms

  • Algorithms*
  • Datasets as Topic / standards*
  • Gene Expression Profiling / standards*
  • Genetic Heterogeneity*
  • Humans
  • Organ Specificity
  • Phenotype*
  • Transcriptome