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How could preventive therapy affect the prevalence of drug resistance? Causes and consequences

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2015

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The Royal Society
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Kunkel, Amber, Caroline Colijn, Marc Lipsitch, and Ted Cohen. 2015. “How could preventive therapy affect the prevalence of drug resistance? Causes and consequences.” Philosophical Transactions of the Royal Society B: Biological Sciences 370 (1670): 20140306. doi:10.1098/rstb.2014.0306. http://dx.doi.org/10.1098/rstb.2014.0306.

Abstract

Various forms of preventive and prophylactic antimicrobial therapies have been proposed to combat HIV (e.g. pre-exposure prophylaxis), tuberculosis (e.g. isoniazid preventive therapy) and malaria (e.g. intermittent preventive treatment). However, the potential population-level effects of preventative therapy (PT) on the prevalence of drug resistance are not well understood. PT can directly affect the rate at which resistance is acquired among those receiving PT. It can also indirectly affect resistance by altering the rate at which resistance is acquired through treatment for active disease and by modifying the level of competition between transmission of drug-resistant and drug-sensitive pathogens. We propose a general mathematical model to explore the ways in which PT can affect the long-term prevalence of drug resistance. Depending on the relative contributions of these three mechanisms, we find that increasing the level of coverage of PT may result in increases, decreases or non-monotonic changes in the overall prevalence of drug resistance. These results demonstrate the complexity of the relationship between PT and drug resistance in the population. Care should be taken when predicting population-level changes in drug resistance from small pilot studies of PT or estimates based solely on its direct effects.

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prophylaxis, preventive, mathematical model, antibiotic resistance, indirect effects, competition

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