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首页> 外文期刊>PLoS Genetics >On the unfounded enthusiasm for soft selective sweeps II: Examining recent evidence from humans, flies, and viruses
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On the unfounded enthusiasm for soft selective sweeps II: Examining recent evidence from humans, flies, and viruses

机译:对软性选择性扫除的毫无根据的热情II:检查来自人类,苍蝇和病毒的最新证据

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Since the initial description of the genomic patterns expected under models of positive selection acting on standing genetic variation and on multiple beneficial mutations—so-called soft selective sweeps—researchers have sought to identify these patterns in natural population data. Indeed, over the past two years, large-scale data analyses have argued that soft sweeps are pervasive across organisms of very different effective population size and mutation rate—humans, Drosophila, and HIV. Yet, others have evaluated the relevance of these models to natural populations, as well as the identifiability of the models relative to other known population-level processes, arguing that soft sweeps are likely to be rare. Here, we look to reconcile these opposing results by carefully evaluating three recent studies and their underlying methodologies. Using population genetic theory, as well as extensive simulation, we find that all three examples are prone to extremely high false-positive rates, incorrectly identifying soft sweeps under both hard sweep and neutral models. Furthermore, we demonstrate that well-fit demographic histories combined with rare hard sweeps serve as the more parsimonious explanation. These findings represent a necessary response to the growing tendency of invoking parameter-heavy, assumption-laden models of pervasive positive selection, and neglecting best practices regarding the construction of proper demographic null models. Author summary A long-standing debate in evolutionary biology revolves around the role of selective vs. stochastic processes in driving molecular evolution and shaping genetic variation. With the advent of genomics, genome-wide polymorphism data have been utilized to characterize these processes, with a major interest in describing the fraction of genomic variation shaped by positive selection. These genomic scans were initially focused around a hard sweep model, in which selection acts upon rare, newly arising beneficial mutations. Recent years have seen the description of sweeps occurring from both standing and rapidly recurring beneficial mutations, collectively known as soft sweeps. However, common to both hard and soft sweeps is the difficulty in distinguishing these effects from neutral demographic patterns, and disentangling these processes has remained an important field of study within population genetics. Despite this, there is a recent and troubling tendency to neglect these demographic considerations, and to naively fit sweep models to genomic data. Recent realizations of such efforts have resulted in the claim that soft sweeps play a dominant role in shaping genomic variation and in driving adaptation across diverse branches of the tree of life. Here, we reanalyze these findings and demonstrate that a more careful consideration of neutral processes results in highly differing conclusions.
机译:自从对正选择模式下的预期基因组模式进行了初步描述以来,正选择模式可对常规遗传变异和多种有益突变(所谓的软选择扫描)起作用,研究人员一直在设法从自然种群数据中识别这些模式。确实,在过去的两年中,大规模数据分析表明,在有效种群规模和突变率差异很大的生物(人,果蝇和HIV)中普遍存在软扫描。然而,其他人则评估了这些模型与自然种群的相关性,以及相对于其他已知种群水平过程的模型可识别性,认为软扫可能很罕见。在这里,我们希望通过仔细评估三项最新研究及其潜在方法来调和这些相反的结果。使用种群遗传理论以及广泛的模拟,我们发现这三个示例都容易出现极高的假阳性率,从而在硬扫和中性模型下都无法正确识别软扫。此外,我们证明了适合的人口统计学历史与罕见的强硬推销相结合,可以作为更为简约的解释。这些发现代表了对日益增长的趋势的必要响应,这些趋势是调用大量参数,充满假设的无处不在的正选择模型,而忽略了关于构建正确的人口统计学无效模型的最佳实践。作者摘要进化生物学方面的长期争论围绕着选择性过程与随机过程在驱动分子进化和塑造遗传变异中的作用展开。随着基因组学的到来,全基因组范围的多态性数据已被用来表征这些过程,主要兴趣是描述由正选择形成的基因组变异的比例。这些基因组扫描最初集中在硬扫描模型上,其中选择作用于罕见的,新出现的有益突变。近年来,已经出现了对来自固定和快速重复发生的有益突变的扫描的描述,统称为软扫描。但是,硬扫描和软扫描的共同点是难以将这些影响与中性人口统计学模式区分开,而弄清这些过程仍然是群体遗传学中的重要研究领域。尽管如此,最近却出现了一种令人不安的趋势,即忽略了这些人口统计因素,并且天真地将扫描模型拟合到了基因组数据中。这种努力的最新认识导致了这样的主张,即软扫在形成基因组变异和驱动生命树的不同分支适应方面起着主导作用。在这里,我们重新分析这些发现,并证明对中性过程的更仔细的考虑会得出截然不同的结论。

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