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选择或漂变:转座子插入测序实验背后的群体生物学

Selection or drift: The population biology underlying transposon insertion sequencing experiments.

作者信息

Mahmutovic Anel, Abel Zur Wiesch Pia, Abel Sören

机构信息

Department of Pharmacy, Faculty of Health Sciences, UiT - The Arctic University of Norway, 9037 Tromsø, Norway.

Centre for Molecular Medicine Norway, Nordic EMBL Partnership, 0318 Oslo, Norway.

出版信息

Comput Struct Biotechnol J. 2020 Mar 25;18:791-804. doi: 10.1016/j.csbj.2020.03.021. eCollection 2020.

Abstract

Transposon insertion sequencing methods such as Tn-seq revolutionized microbiology by allowing the identification of genomic loci that are critical for viability in a specific environment on a genome-wide scale. While powerful, transposon insertion sequencing suffers from limited reproducibility when different analysis methods are compared. From the perspective of population biology, this may be explained by changes in mutant frequency due to chance (drift) rather than differential fitness (selection). Here, we develop a mathematical model of the population biology of transposon insertion sequencing experiments, i.e. the changes in size and composition of the transposon-mutagenized population during the experiment. We use this model to investigate mutagenesis, the growth of the mutant library, and its passage through bottlenecks. Specifically, we study how these processes can lead to extinction of individual mutants depending on their fitness and the distribution of fitness effects (DFE) of the entire mutant population. We find that in typical in vitro experiments few mutants with high fitness go extinct. However, bottlenecks of a size that is common in animal infection models lead to so much random extinction that a large number of viable mutants would be misclassified. While mutants with low fitness are more likely to be lost during the experiment, mutants with intermediate fitness are expected to be much more abundant and can constitute a large proportion of detected hits, i.e. false positives. Thus, incorporating the DFEs of randomly generated mutations in the analysis may improve the reproducibility of transposon insertion experiments, especially when strong bottlenecks are encountered.

摘要

转座子插入测序方法(如Tn-seq)通过在全基因组范围内鉴定特定环境中对生存能力至关重要的基因组位点,彻底改变了微生物学。尽管转座子插入测序功能强大,但在比较不同分析方法时,其再现性有限。从群体生物学的角度来看,这可能是由于偶然(漂变)而非差异适应性(选择)导致突变频率发生变化所致。在此,我们建立了一个转座子插入测序实验群体生物学的数学模型,即实验过程中转座子诱变群体的大小和组成变化。我们使用这个模型来研究诱变、突变文库的生长及其通过瓶颈的情况。具体而言,我们研究这些过程如何根据个体突变体的适应性以及整个突变群体的适应性效应分布(DFE)导致个体突变体灭绝。我们发现,在典型的体外实验中,很少有高适应性的突变体会灭绝。然而,动物感染模型中常见大小的瓶颈会导致大量随机灭绝,以至于大量存活的突变体可能会被错误分类。虽然低适应性的突变体在实验过程中更有可能丢失,但中等适应性的突变体预计会更为丰富,并且可能构成检测到的命中结果(即假阳性)的很大一部分。因此,在分析中纳入随机产生突变的DFE可能会提高转座子插入实验的再现性,尤其是在遇到强瓶颈时。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/81ff/7138912/158d590ce82d/ga1.jpg

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