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Applied phyloepidemiology: Detecting drivers of pathogen transmission from genomic signatures using density measures

机译:应用的系统流行病学:使用密度测量从基因组特征中检测病原体传播的驱动因素

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摘要

Understanding the driving forces of an epidemic is key to inform intervention strategies against it. Correlating measures of the epidemic success of a pathogen with ancillary parameters such as its drug resistance profile provides a flexible tool to identify such driving forces. The recently described time‐scaled haplotypic density (THD) method facilitates the inference of a pathogen's epidemic success from genetic data. Contrary to demogenetic approaches that define success in an aggregated fashion, the THD computes an independent index of success for each isolate in a collection. Modeling this index using multivariate regression, thus, allows us to control for various sources of bias and to identify independent predictors of success. We illustrate the use of THD to address key questions regarding three exemplary epidemics of multidrug‐resistant (MDR) bacterial lineages, namely Beijing, Typhi H58, and ST8 (including ST8‐USA300 MRSA), based on previously published, international genetic datasets. In each case, THD analysis allowed to identify the impact, or lack thereof, of various factors on the epidemic success, independent of confounding by population structure and geographic distribution. Our results suggest that rifampicin resistance drives the MDR Beijing epidemic and that fluoroquinolone resistance drives the ST8/USA300 epidemic, in line with previous evidence of a lack of resistance‐associated fitness cost in these pathogens. Conversely, fluoroquinolone resistance measurably hampered the success of Typhi H58 and non‐H58. These findings illustrate how THD can help leverage the massive genomic datasets generated by molecular epidemiology studies to address new questions. THD implementation for the R platform is available at .
机译:了解流行病的驱动力是为流行病采取干预策略的关键。病原体的流行成功与辅助参数(例如其耐药性谱)的相关度量提供了一种识别此类驱动力的灵活工具。最近描述的时间标度单倍密度(THD)方法有助于从遗传数据推断病原体的流行性成功。与以聚合方式定义成功的后代方法相反,THD为集合中的每个分离株计算独立的成功指数。因此,使用多元回归对该指标进行建模可以使我们控制各种偏见的来源,并确定成功的独立预测因素。我们基于先前发布的国际基因数据集,说明了THD的使用来解决有关三种示例性多药耐药(MDR)细菌谱系流行病的关键问题,即北京,Typhi H58和ST8(包括ST8-USA300 MRSA)。在每种情况下,THD分析都可以确定各种因素对流行病成功的影响或缺乏影响,而不受人口结构和地理分布的混淆。我们的结果表明,对利福平的抗药性推动了北京耐多药的流行,而对氟喹诺酮的抗药性推动了ST8 / USA300的流行,这与以前在这些病原体中缺乏抗药性相关适应成本的证据相符。相反,氟喹诺酮类药物的耐药性严重阻碍了Typhi H58和non-H58的成功。这些发现说明了THD如何帮助利用分子流行病学研究产生的大量基因组数据集来解决新问题。 R平台的THD实现可在处获得。

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