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首页> 外文期刊>BMC Genomics >Causal mutations from adaptive laboratory evolution are outlined by multiple scales of genome annotations and condition-specificity
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Causal mutations from adaptive laboratory evolution are outlined by multiple scales of genome annotations and condition-specificity

机译:来自自适应实验室演化的因果突变由基因组注释和病症特异性的多种尺度概述

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BACKGROUND:Adaptive Laboratory Evolution (ALE) has emerged as an experimental approach to discover mutations that confer phenotypic functions of interest. However, the task of finding and understanding all beneficial mutations of an ALE experiment remains an open challenge for the field. To provide for better results than traditional methods of ALE mutation analysis, this work applied enrichment methods to mutations described by a multiscale annotation framework and a consolidated set of ALE experiment conditions. A total of 25,321 unique genome annotations from various sources were leveraged to describe multiple scales of mutated features in a set of 35 Escherichia coli based ALE experiments. These experiments totalled 208 independent evolutions and 2641 mutations. Additionally, mutated features were statistically associated across a total of 43 unique experimental conditions to aid in deconvoluting mutation selection pressures.RESULTS:Identifying potentially beneficial, or key, mutations was enhanced by seeking coding and non-coding genome features significantly enriched by mutations across multiple ALE replicates and scales of genome annotations. The median proportion of ALE experiment key mutations increased from 62%, with only small coding and non-coding features, to 71% with larger aggregate features. Understanding key mutations was enhanced by considering the functions of broader annotation types and the significantly associated conditions for key mutated features. The approaches developed here were used to find and characterize novel key mutations in two ALE experiments: one previously unpublished with Escherichia coli grown on glycerol as a carbon source and one previously published with Escherichia coli tolerized to high concentrations of L-serine.CONCLUSIONS:The emergent adaptive strategies represented by sets of ALE mutations became more clear upon observing the aggregation of mutated features across small to large scale genome annotations. The clarification of mutation selection pressures among the many experimental conditions also helped bring these strategies to light. This work demonstrates how multiscale genome annotation frameworks and data-driven methods can help better characterize ALE mutations, and thus help elucidate the genotype-to-phenotype relationship of the studied organism.
机译:背景:自适应实验室进化(ALE)作为发现赋予感兴趣表型功能的突变的实验方法。然而,寻找和理解ALE实验的所有有益突变的任务仍然是该领域的开放挑战。为了提供比传统的ALE突变分析方法更好的结果,这项工作将富集方法应用于多尺度注释框架和综合的ALE实验条件中描述的突变。共有来自各种来源的25,321个独特的基因组注释,以描述在基于35个大肠杆菌的35个基于COLI的ALE实验中的多种突变特征。这些实验总计208例独立的演进和2641个突变。此外,突变的特征在统计学相关的43个独特的实验条件下有统计相关,以帮助解作突变选择压力。结果:通过寻求编码和非编码基因组特征来提高潜在的有益,突变,突变,突变显着富集多个ALE复制和基因组注释的尺度。 ALE实验密钥突变的中位数比例从62%增加,只有小编码和非编码特征,占总特征的71%。通过考虑更广泛的注释类型和关键突变特征的显着相关条件,通过考虑函数来提高键突变。此处开发的方法用于发现和表征两种ALE实验中的新型关键突变:以前未发表于甘油中生长的大肠杆菌作为碳源,并且先前发表过耐受高浓度的L-丝氨酸的大肠杆菌。结论:The Collusions:The在观察小于大规模基因组注释的突变特征的聚集时,由α突变组代表的紧急自适应策略变得更加清楚。许多实验条件中突变选择压力的澄清也有助于将这些策略带来光明。这项工作展示了多尺度基因组注释框架和数据驱动方法如何有助于更好地表征ALE突变,从而有助于阐明研究的生物体的基因型对表型关系。

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