TB Research

Machine Learning of All Mycobacterium tuberculosis H37Rv RNA-seq Data Reveals a Structured Interplay between Metabolism, Stress Response, and Infection

Reo Yoo, Kevin Rychel, Saugat Poudel, Tahani Al-bulushi, Yuan Yuan, Siddharth Chauhan, Cameron Lamoureux, Bernhard Ø. Palsson, et al. (9 authors)

mSphere · 2022-03

Abstract

Mycobacterium tuberculosis H37Rv is one of the world's most impactful pathogens, and a large part of the success of the organism relies on the differential expression of its genes to adapt to its environment. The expression of the organism's genes is driven primarily by its transcriptional regulatory network, and most research on the TRN focuses on identifying and quantifying clusters of coregulated genes known as regulons. While previous studies have relied on molecular measurements, in the manuscript we utilized an alternative technique that performs machine learning to a large data set of transcriptomic data. This approach is less reliant on hypotheses about the role of specific regulatory systems and allows for the discovery of new biological findings for already collected data. A better understanding of the structure of the M. tuberculosis TRN will have important implications in the design of improved therapeutic approaches.

MeSH terms

  • Mycobacterium tuberculosis
  • Tuberculosis
  • RNA-Seq
  • Biology
  • Computational biology
  • Stress (linguistics)
  • Fight-or-flight response
  • Microbiology
  • Virology