2021
DOI: 10.1101/2021.07.01.450045
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Machine learning of all Mycobacterium tuberculosis H37Rv RNA-seq data reveals a structured interplay between metabolism, stress response, and infection

Abstract: Mycobacterium tuberculosis is one of the most consequential human bacterial pathogens, posing a serious challenge to 21st century medicine. A key feature of its pathogenicity is its ability to adapt its transcriptional response to environmental stresses through its transcriptional regulatory network (TRN). While many studies have sought to characterize specific portions of the M. tuberculosis TRN, a systems level characterization and analysis of interactions among the controlling transcription factors remains… Show more

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“…and genes involved in translation such as infA and fusA which encode translation initiation factor IF-1 and elongation factor G respectively(Figure 2b). This iModulon has been enriched in almost all bacteria and archaea for which iModulons have been calculated 20,[22][23][24][25] .…”
Section: Expanding the Usa300 Imodulons Using Rna-sequencing Data Fro...mentioning
confidence: 99%
“…and genes involved in translation such as infA and fusA which encode translation initiation factor IF-1 and elongation factor G respectively(Figure 2b). This iModulon has been enriched in almost all bacteria and archaea for which iModulons have been calculated 20,[22][23][24][25] .…”
Section: Expanding the Usa300 Imodulons Using Rna-sequencing Data Fro...mentioning
confidence: 99%