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Impacts and shortcomings of genetic clustering methods for infectious disease outbreaks

机译:遗传聚类方法对传染病暴发的影响和不足

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摘要

For infectious diseases, a genetic cluster is a group of closely related infections that is usually interpreted as representing a recent outbreak of transmission. Genetic clustering methods are becoming increasingly popular for molecular epidemiology, especially in the context of HIV where there is now considerable interest in applying these methods to prioritize groups for public health resources such as pre-exposure prophylaxis. To date, genetic clustering has generally been performed with ad hoc algorithms, only some of which have since been encoded and distributed as free software. These algorithms have seldom been validated on simulated data where clusters are known, and their interpretation and similarities are not transparent to users outside of the field. Here, I provide a brief overview on the development and inter-relationships of genetic clustering methods, and an evaluation of six methods on data simulated under an epidemic model in a risk-structured population. The simulation analysis demonstrates that the majority of clustering methods are systematically biased to detect variation in sampling rates among subpopulations, not variation in transmission rates. I discuss these results in the context of previous work and the implications for public health applications of genetic clustering.
机译:对于传染病,遗传簇是一组密切相关的感染,通常被解释为代表最近爆发的传播。遗传聚类方法在分子流行病学中正变得越来越流行,尤其是在艾滋病毒的背景下,艾滋病病毒正在引起人们广泛的兴趣,将这些方法用于优先考虑公共卫生资源(如暴露前预防)的人群。迄今为止,遗传聚类通常是使用即席算法进行的,此后仅其中一些已作为自由软件进行编码和分发。这些算法很少在已知簇的模拟数据上得到验证,并且它们的解释和相似性对现场用户并不透明。在这里,我简要概述了遗传聚类方法的发展和相互关系,并评估了六种方法在流行病模型下在风险结构化人群中模拟数据的评估。仿真分析表明,大多数聚类方法都存在系统性偏差,无法检测亚群之间的采样率变化,而不是传输率变化。我将在先前的工作中讨论这些结果,并讨论基因聚类对公共卫生应用的意义。

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