6533b86cfe1ef96bd12c820d

RESEARCH PRODUCT

Gene expression models based on a reference laboratory strain are bad predictors of Mycobacterium tuberculosis complex transcriptional diversity

ÁLvaro Chiner-omsFernando González-candelasIñaki Comas

subject

Genetics0303 health sciencesGenetic diversityGenetic heterogeneitySystems biologyBiologybiology.organism_classificationPhenotype3. Good health03 medical and health sciences0302 clinical medicineMycobacterium tuberculosis complexInfectious disease (medical specialty)Gene expressionGene030217 neurology & neurosurgery030304 developmental biology

description

ABSTRACTSpecies of the Mycobacterium tuberculosis complex (MTBC) kill more people every year than any other infectious disease. As a consequence of its global distribution and parallel evolution with the human host the bacteria is not genetically homogeneous. The observed genetic heterogeneity has relevance at different phenotypic levels, from gene expression to epidemiological dynamics. However current systems biology datasets have focused in the laboratory reference strain H37Rv. By using large expression datasets testing the role of almost two hundred transcription factors, we have constructed computational models to grab the expression dynamics of Mycobacterium tuberculosis H37Rv genes. However, we have found that many of those transcription factors are deleted or likely dysfunctional across strains of the MTBC. In accordance, we failed to predict expression changes in strains with a different genetic background when compared with experimental data. The results highlight the importance of designing systems biology approaches that take into account the tubercle bacilli, or any other pathogen, genetic diversity if we want to identify universal targets for vaccines, diagnostics and treatments.

10.1101/091082http://dx.doi.org/10.1101/091082