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Metatranscriptomics-based metabolic modeling of patient-specific urinary microbiome during infection

Jonathan Josephs‐SpauldingResearch Group Medical Systems Biology, University Hospital Schleswig-Holstein Campus Kiel, 24105 Kiel University, Kiel, Schleswig-Holstein, GermanyHannah Clara RettigInstitute of Medical Microbiology, University of Lübeck, 23538, Lübeck, GermanyJohannes ZimmermannResearch Group Medical Systems Biology, University Hospital Schleswig-Holstein Campus Kiel, 24105 Kiel University, Kiel, Schleswig-Holstein, GermanyMariam ChkoniaInfectious Disease Clinic, University Hospital Schleswig-Holstein Campus Lübeck, Lübeck, GermanyAlexander MischnikInfectious Disease Clinic, University Hospital Schleswig-Holstein Campus Lübeck, Lübeck, GermanySören FranzenburgInstitute of Clinical Molecular Biology, University Hospital Schleswig-Holstein, Kiel University, Rosalind Franklin Strasse 12, 24105, Kiel, GermanySimon GraspeuntnerGerman Center for Infection Research (DZIF), Partner Site Hamburg-Lübeck-Borstel-Riems, Lübeck, GermanyJan RuppGerman Center for Infection Research (DZIF), Partner Site Hamburg-Lübeck-Borstel-Riems, Lübeck, GermanyChristoph KaletaResearch Group Medical Systems Biology, University Hospital Schleswig-Holstein Campus Kiel, 24105 Kiel University, Kiel, Schleswig-Holstein, Germany. [email protected]
2025en
ABI

Аннотация

Urinary tract infections (UTIs) are among the most common bacterial infections and are increasingly complicated by multidrug resistance (MDR). While Escherichia coli is frequently implicated, the contribution of broader microbial communities remains less understood. Here, we integrate metatranscriptomic sequencing with genome-scale metabolic modeling to characterize active metabolic functions of patient-specific urinary microbiomes during acute UTI. We analyzed urine samples from 19 female patients with confirmed uropathogenic E. coli (UPEC) infections, reconstructing personalized community models constrained by gene expression and simulated in a virtual urine environment. This systems biology approach revealed marked inter-patient variability in microbial composition, transcriptional activity, and metabolic behavior. We identified distinct virulence strategies, metabolic cross-feeding, and a modulatory role for Lactobacillus species. Comparisons between transcript-constrained and unconstrained models showed that integrating gene expression narrows flux variability and enhances biological relevance. These findings highlight the metabolic heterogeneity of UTI-associated microbiota and point to microbiome-informed diagnostic and therapeutic strategies for managing MDR infections.

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