Mechanisms of antibiotic action shape the fitness landscapes of resistance mutations
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https://hdl.handle.net/10037/27291Dato
2022-08-24Type
Journal articleTidsskriftartikkel
Peer reviewed
Forfatter
Hemez, Colin; Clarelli, Fabrizio; Palmer, Adam C.; Bleis, Christina; Abel, Sören; Chindelevitch, Leonid; Cohen, Theodore; Abel zur Wiesch, PiaSammendrag
Antibiotic-resistant pathogens are a major public health threat. A deeper understanding of how an antibiotic’s mechanism of action influences the emergence of resistance would aid in the design of new drugs
and help to preserve the effectiveness of existing ones. To this end, we developed a model that links bacterial population dynamics with antibiotic-target binding kinetics. Our approach allows us to derive
mechanistic insights on drug activity from population-scale experimental data and to quantify the interplay between drug mechanism and resistance selection. We find that both bacteriostatic and bactericidal
agents can be equally effective at suppressing the selection of resistant mutants, but that key determinants of resistance selection are the relationships between the number of drug-inactivated targets within
a cell and the rates of cellular growth and death. We also show that heterogeneous drug-target binding
within a population enables resistant bacteria to evolve fitness-improving secondary mutations even
when drug doses remain above the resistant strain’s minimum inhibitory concentration. Our work suggests that antibiotic doses beyond this ‘‘secondary mutation selection window” could safeguard against
the emergence of high-fitness resistant strains during treatment.
Forlag
ElsevierSitering
Hemez, Clarelli, Palmer, Bleis, Abel, Chindelevitch, Cohen, Abel zur Wiesch. Mechanisms of antibiotic action shape the fitness landscapes of resistance mutations. Computational and Structural Biotechnology Journal. 2022;20:4688-4703Metadata
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