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使用遗传和基因组标记估计细菌跨物种传播的局限性:来自模拟建模的推断

Limitations to estimating bacterial cross-species transmission using genetic and genomic markers: inferences from simulation modeling.

作者信息

Benavides Julio A, Cross Paul C, Luikart Gordon, Creel Scott

机构信息

Department of Ecology, Montana State University Bozeman, MT, USA.

U.S. Geological Survey, Northern Rocky Mountain Science Center Bozeman, MT, USA.

出版信息

Evol Appl. 2014 Aug;7(7):774-87. doi: 10.1111/eva.12173. Epub 2014 Jul 23.

Abstract

Cross-species transmission (CST) of bacterial pathogens has major implications for human health, livestock, and wildlife management because it determines whether control actions in one species may have subsequent effects on other potential host species. The study of bacterial transmission has benefitted from methods measuring two types of genetic variation: variable number of tandem repeats (VNTRs) and single nucleotide polymorphisms (SNPs). However, it is unclear whether these data can distinguish between different epidemiological scenarios. We used a simulation model with two host species and known transmission rates (within and between species) to evaluate the utility of these markers for inferring CST. We found that CST estimates are biased for a wide range of parameters when based on VNTRs and a most parsimonious reconstructed phylogeny. However, estimations of CST rates lower than 5% can be achieved with relatively low bias using as low as 250 SNPs. CST estimates are sensitive to several parameters, including the number of mutations accumulated since introduction, stochasticity, the genetic difference of strains introduced, and the sampling effort. Our results suggest that, even with whole-genome sequences, unbiased estimates of CST will be difficult when sampling is limited, mutation rates are low, or for pathogens that were recently introduced.

摘要

细菌病原体的跨物种传播(CST)对人类健康、家畜和野生动物管理具有重大影响,因为它决定了针对一个物种的防控措施是否会对其他潜在宿主物种产生后续影响。细菌传播的研究受益于测量两种遗传变异的方法:可变数目串联重复序列(VNTRs)和单核苷酸多态性(SNPs)。然而,尚不清楚这些数据能否区分不同的流行病学情景。我们使用了一个具有两个宿主物种和已知传播率(种内和种间)的模拟模型,来评估这些标记物在推断CST方面的效用。我们发现,基于VNTRs和最简约重建系统发育时,CST估计在广泛的参数范围内存在偏差。然而,使用低至250个SNP,以相对较低的偏差可实现低于5%的CST率估计。CST估计对几个参数敏感,包括引入后积累的突变数量、随机性、引入菌株的遗传差异以及采样工作量。我们的结果表明,即使有全基因组序列,在采样有限、突变率低或对于最近引入的病原体时,CST的无偏估计也将很困难。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/b2b4/4227858/af6ee236efc9/eva0007-0774-f1.jpg

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