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Steering Evolution with Sequential Therapy to Prevent the Emergence of Bacterial Antibiotic Resistance
Author(s) -
Daniel Nichol,
Peter Jeavons,
Alexander G. Fletcher,
Robert A. Bonomo,
Philip K. Maini,
Jerome L. Paul,
Robert A. Gatenby,
Alexander R.A. Anderson,
Jacob G. Scott
Publication year - 2015
Publication title -
plos computational biology
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 2.628
H-Index - 182
eISSN - 1553-7358
pISSN - 1553-734X
DOI - 10.1371/journal.pcbi.1004493
Subject(s) - fitness landscape , antibiotic resistance , drug resistance , antibiotics , formalism (music) , biology , population , adaptation (eye) , natural selection , resistance (ecology) , selection (genetic algorithm) , computational biology , genetics , computer science , ecology , artificial intelligence , medicine , art , musical , environmental health , neuroscience , visual arts
The increasing rate of antibiotic resistance and slowing discovery of novel antibiotic treatments presents a growing threat to public health. Here, we consider a simple model of evolution in asexually reproducing populations which considers adaptation as a biased random walk on a fitness landscape. This model associates the global properties of the fitness landscape with the algebraic properties of a Markov chain transition matrix and allows us to derive general results on the non-commutativity and irreversibility of natural selection as well as antibiotic cycling strategies. Using this formalism, we analyze 15 empirical fitness landscapes of E. coli under selection by different β -lactam antibiotics and demonstrate that the emergence of resistance to a given antibiotic can be either hindered or promoted by different sequences of drug application. Specifically, we demonstrate that the majority, approximately 70%, of sequential drug treatments with 2–4 drugs promote resistance to the final antibiotic. Further, we derive optimal drug application sequences with which we can probabilistically ‘steer’ the population through genotype space to avoid the emergence of resistance. This suggests a new strategy in the war against antibiotic–resistant organisms: drug sequencing to shepherd evolution through genotype space to states from which resistance cannot emerge and by which to maximize the chance of successful therapy.

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