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Mapping the drivers of within-host pathogen evolution using massive data sets

机译:使用海量数据集绘制宿主内部病原体进化的驱动力

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摘要

Differences among hosts, resulting from genetic variation in the immune system or heterogeneity in drug treatment, can impact within-host pathogen evolution. Genetic association studies can potentially identify such interactions. However, extensive and correlated genetic population structure in hosts and pathogens presents a substantial risk of confounding analyses. Moreover, the multiple testing burden of interaction scanning can potentially limit power. We present a Bayesian approach for detecting host influences on pathogen evolution that exploits vast existing data sets of pathogen diversity to improve power and control for stratification. The approach models key processes, including recombination and selection, and identifies regions of the pathogen genome affected by host factors. Our simulations and empirical analysis of drug-induced selection on the HIV-1 genome show that the method recovers known associations and has superior precision-recall characteristics compared to other approaches. We build a high-resolution map of HLA-induced selection in the HIV-1 genome, identifying novel epitope-allele combinations.
机译:宿主之间的差异是由于免疫系统的遗传变异或药物治疗的异质性造成的,可能影响宿主内部病原体的进化。遗传关联研究可以潜在地识别这种相互作用。但是,宿主和病原体中广泛而相关的遗传种群结构存在混淆分析的巨大风险。此外,交互扫描的多重测试负担可能会限制功耗。我们提出一种用于检测宿主对病原体进化的影响的贝叶斯方法,该方法利用病原体多样性的大量现有数据集来提高分层的能力和控制力。该方法对关键过程进行建模,包括重组和选择,并确定受宿主因素影响的病原体基因组区域。我们对HIV-1基因组上的药物诱导选择进行的模拟和经验分析表明,与其他方法相比,该方法可恢复已知的关联并具有出色的精确召回特性。我们建立了HIV-1基因组中HLA诱导选择的高分辨率图谱,确定了新的表位-等位基因组合。

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