Prediction of condition-specific regulatory genes using machine learning.

Journal: Nucleic acids research
PMID:

Abstract

Recent advances in genomic technologies have generated data on large-scale protein-DNA interactions and open chromatin regions for many eukaryotic species. How to identify condition-specific functions of transcription factors using these data has become a major challenge in genomic research. To solve this problem, we have developed a method called ConSReg, which provides a novel approach to integrate regulatory genomic data into predictive machine learning models of key regulatory genes. Using Arabidopsis as a model system, we tested our approach to identify regulatory genes in data sets from single cell gene expression and from abiotic stress treatments. Our results showed that ConSReg accurately predicted transcription factors that regulate differentially expressed genes with an average auROC of 0.84, which is 23.5-25% better than enrichment-based approaches. To further validate the performance of ConSReg, we analyzed an independent data set related to plant nitrogen responses. ConSReg provided better rankings of the correct transcription factors in 61.7% of cases, which is three times better than other plant tools. We applied ConSReg to Arabidopsis single cell RNA-seq data, successfully identifying candidate regulatory genes that control cell wall formation. Our methods provide a new approach to define candidate regulatory genes using integrated genomic data in plants.

Authors

  • Qi Song
    ‡ College of Life Sciences, Fujian Agriculture and Forestry University, Fuzhou 350002, China.
  • Jiyoung Lee
    Graduate program in Genetics, Bioinformatics and Computational Biology. Virginia Tech., Blacksburg, VA 24061, USA.
  • Shamima Akter
    Department of Epidemiology and Prevention, Center for Clinical Sciences, National Center for Global Health and Medicine, Tokyo, Japan. Electronic address: samimarub@ri.ncgm.go.jp.
  • Matthew Rogers
    Department of Statistics. Virginia Tech., Blacksburg, VA 24061, USA.
  • Ruth Grene
    Department of Plant Pathology, Physiology, and Weed Science, Virginia Polytechnic Institute and State University Blacksburg, VA, USA.
  • Song Li
    Department of Crop and Soil Environmental Sciences, Virginia Polytechnic Institute and State University Blacksburg, VA, USA.