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Influenza Virus Drug Resistance: A Time-Sampled Population Genetics Perspective
Authors:Matthieu Foll  Yu-Ping Poh  Nicholas Renzette  Anna Ferrer-Admetlla  Claudia Bank  Hyunjin Shim  Anna-Sapfo Malaspinas  Gregory Ewing  Ping Liu  Daniel Wegmann  Daniel R. Caffrey  Konstantin B. Zeldovich  Daniel N. Bolon  Jennifer P. Wang  Timothy F. Kowalik  Celia A. Schiffer  Robert W. Finberg  Jeffrey D. Jensen
Abstract:The challenge of distinguishing genetic drift from selection remains a central focus of population genetics. Time-sampled data may provide a powerful tool for distinguishing these processes, and we here propose approximate Bayesian, maximum likelihood, and analytical methods for the inference of demography and selection from time course data. Utilizing these novel statistical and computational tools, we evaluate whole-genome datasets of an influenza A H1N1 strain in the presence and absence of oseltamivir (an inhibitor of neuraminidase) collected at thirteen time points. Results reveal a striking consistency amongst the three estimation procedures developed, showing strongly increased selection pressure in the presence of drug treatment. Importantly, these approaches re-identify the known oseltamivir resistance site, successfully validating the approaches used. Enticingly, a number of previously unknown variants have also been identified as being positively selected. Results are interpreted in the light of Fisher''s Geometric Model, allowing for a quantification of the increased distance to optimum exerted by the presence of drug, and theoretical predictions regarding the distribution of beneficial fitness effects of contending mutations are empirically tested. Further, given the fit to expectations of the Geometric Model, results suggest the ability to predict certain aspects of viral evolution in response to changing host environments and novel selective pressures.
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