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Table 2_Predicting fitness in Mycobacterium tuberculosis with transcriptional regulatory network-informed interpretable machine learning.xlsx

Title: Table 2_Predicting fitness in Mycobacterium tuberculosis with transcriptional regulatory network-informed interpretable machine learning.xlsx
Authors: Ethan Bustad; Edson Petry; Oliver Gu; Braden T. Griebel; Tige R. Rustad; David R. Sherman; Jason H. Yang; Shuyi Ma
Publication Year: 2025
Collection: Frontiers: Figshare
Subject Terms: Infectious Diseases; Mycobacterium tuberculosis; transcriptional regulation; network inference; network modeling; interpretable machine learning; growth regulation; stress adaptation; hypoxia
Description: Introduction Mycobacterium tuberculosis (Mtb) is the causative agent of tuberculosis disease, the greatest source of global mortality by a bacterial pathogen. Mtb adapts and responds to diverse stresses, such as antibiotics, by inducing transcriptional stress response regulatory programs. Understanding how and when mycobacterial regulatory programs are activated could inform novel treatment strategies that hinder stress adaptation and potentiate the efficacy of new and existing drugs. Here, we sought to define and analyze Mtb regulatory programs that modulate bacterial fitness under stress. Methods We assembled a large Mtb RNA expression compendium and applied this to infer a comprehensive Mtb transcriptional regulatory network and compute condition-specific transcription factor activity (TFA) profiles. Using transcriptomic and functional genomics data, we trained an interpretable machine learning model that predicts Mtb fitness from TFA profiles. Results We demonstrated that a TFA-based model can predict Mtb growth arrest and growth resumption under hypoxia and reaeration using gene expression data alone. This model also directly elucidates the transcriptional programs driving these growth phenotypes. Discussion These integrative network modeling and machine learning analyses enable the prediction of mycobacterial fitness across different environmental and genetic contexts with mechanistic detail. We envision these models can inform the future design of prognostic assays and therapeutic interventions that can cripple Mtb growth and survival to cure tuberculosis disease.
Document Type: dataset
Language: unknown
DOI: 10.3389/ftubr.2025.1500899.s002
Availability: https://doi.org/10.3389/ftubr.2025.1500899.s002; https://figshare.com/articles/dataset/Table_2_Predicting_fitness_in_Mycobacterium_tuberculosis_with_transcriptional_regulatory_network-informed_interpretable_machine_learning_xlsx/28712558
Rights: CC BY 4.0
Accession Number: edsbas.B4D13B0F
Database: BASE