Independent component analysis reveals 49 independently modulated gene sets within the global transcriptional regulatory architecture of multidrug-resistant Acinetobacter baumannii .
Nitasha D MenonSaugat PoudelAnand V SastryKevin RychelRichard SzubinNicholas DillonHannah TsunemotoYujiro HiroseBipin G NairGeetha B KumarBernhard O PalssonVictor NizetPublished in: mSystems (2024)
Acinetobacter baumannii causes severe infections in humans, resists multiple antibiotics, and survives in stressful environmental conditions due to modulations of its complex transcriptional regulatory network (TRN). Unfortunately, our global understanding of the TRN in this emerging opportunistic pathogen is limited. Here, we apply independent component analysis, an unsupervised machine learning method, to a compendium of 139 RNA-seq data sets of three multidrug-resistant A. baumannii international clonal complex I strains (AB5075, AYE, and AB0057). This analysis allows us to define 49 independently modulated gene sets, which we call iModulons. Analysis of the identified A. baumannii iModulons reveals validating parallels to previously defined biological operons/regulons and provides a framework for defining unknown regulons. By utilizing the iModulons, we uncover potential mechanisms for a RpoS-independent general stress response, define global stress-virulence trade-offs, and identify conditions that may induce plasmid-borne multidrug resistance. The iModulons provide a model of the TRN that emphasizes the importance of transcriptional regulation of virulence phenotypes in A. baumannii . Furthermore, they suggest the possibility of future interventions to guide gene expression toward diminished pathogenic potential.IMPORTANCEThe rise in hospital outbreaks of multidrug-resistant Acinetobacter baumannii infections underscores the urgent need for alternatives to traditional broad-spectrum antibiotic therapies. The success of A. baumannii as a significant nosocomial pathogen is largely attributed to its ability to resist antibiotics and survive environmental stressors. However, there is limited literature available on the global, complex regulatory circuitry that shapes these phenotypes. Computational tools that can assist in the elucidation of A. baumannii 's transcriptional regulatory network architecture can provide much-needed context for a comprehensive understanding of pathogenesis and virulence, as well as for the development of targeted therapies that modulate these pathways.
Keyphrases
- acinetobacter baumannii
- multidrug resistant
- pseudomonas aeruginosa
- transcription factor
- gene expression
- escherichia coli
- drug resistant
- rna seq
- gram negative
- machine learning
- biofilm formation
- staphylococcus aureus
- klebsiella pneumoniae
- antimicrobial resistance
- genome wide identification
- cystic fibrosis
- human health
- single cell
- copy number
- genome wide
- dna methylation
- candida albicans
- healthcare
- physical activity
- big data
- emergency department
- risk assessment
- electronic health record
- artificial intelligence
- deep learning
- climate change
- early onset
- current status
- crispr cas
- oxidative stress
- life cycle
- data analysis
- stress induced