Beyond the Pair: A Hypothesis on Multi-Antibiotic Synergy for Optimized Bacterial Infection Control
DOI:
https://doi.org/10.33687/ricosbiol.04.04.116Keywords:
Multi-antibiotic therapy, antimicrobial resistance (AMR), synergistic combinations, polypharmacology, dose reduction, side effect mitigation, bacterial infection, combination therapy, mode of actionAbstract
The escalating crisis of antimicrobial resistance (AMR) poses an existential threat to modern medicine, necessitating innovative strategies beyond conventional single and dual-antibiotic therapies. This review article hypothesizes that employing more than two antibiotics concurrently may offer a superior paradigm for treating bacterial infections. We propose that a multi-antibiotic cocktail, featuring agents with distinct and overlapping modes of action (MoA), can simultaneously target multiple critical bacterial pathways (e.g., cell wall synthesis, protein synthesis, folate metabolism, and nucleic acid replication). This polypharmacological approach is theorized to achieve potent synergistic effects, enabling a significant reduction in the effective dose of each individual antibiotic. Consequently, lower doses could diminish dose-dependent toxicity, reduce selective pressure for resistance mutations, and potentially lower overall treatment costs by shortening therapy duration and preventing treatment failures from resistant strains. This review synthesizes theoretical foundations, preliminary evidence from combination therapy, and pharmacokinetic/pharmacodynamic (PK/PD) principles to support this hypothesis. We critically analyze potential risks, including antagonism and toxicity, and propose a roadmap for future research using in vitro synergy models and in vivovalidation. We conclude that while challenging, the strategic use of multi-antibiotic (≥3 agents) regimens warrants rigorous investigation as a promising weapon against the rising tide of AMR.
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Data Availability Statement
The data supporting the conclusions of this review are derived from previously published studies, which are cited throughout the manuscript. Any aggregated datasets used for comparative analysis, if applicable, are available from the corresponding author upon reasonable request.
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