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Bayesian methods for fitting mixture models that characterize branching tree processes: an application to development of resistant TB strains

机译:用于拟合混合模型的贝叶斯方法该模型表征分支树过程:应用于抗性TB菌株的发展

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摘要

For pathogens that must be treated with combinations of antibiotics and acquire resistance through genetic mutation, knowledge of the order in which drug-resistance mutations occur may be important for determining treatment policies. Diagnostic specimens collected from patients are often available; this makes it possible to determine the presence of individual drug-resistance conferring mutations and combinations of these mutations. In most cases, these specimens are only available from a patient at a single point in time; it is very rare to have access to multiple specimens from a single patient collected over time as resistance accumulates to multiple drugs. Statistical methods that use branching trees have been successfully applied to such cross-sectional data to make inference on the ordering of events that occurred prior to sampling. Here we propose a Bayesian approach to fitting branching tree models that has several advantages, including the ability to accommodate prior information regarding measurement error or cross-resistance and the natural way it permits the characterization of uncertainty. Our methods are applied to a data set for drug resistant tuberculosis in Peru; the goal of analysis is to determine the order with which patients develop resistance to the drugs commonly used for treating TB in this setting.

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