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Guided evolution of in silico microbial populations in complex environments accelerates evolutionary rates through a step-wise adaptation

机译:在复杂环境中指导微生物硅种群的进化通过逐步适应加快进化速度

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BackgroundDuring their lifetime, microbes are exposed to environmental variations, each with its distinct spatio-temporal dynamics. Microbial communities display a remarkable degree of phenotypic plasticity, and highly-fit individuals emerge quite rapidly during microbial adaptation to novel environments. However, there exists a high variability when it comes to adaptation potential, and while adaptation occurs rapidly in certain environmental transitions, in others organisms struggle to adapt. Here, we investigate the hypothesis that the rate of evolution can both increase or decrease, depending on the similarity and complexity of the intermediate and final environments. Elucidating such dependencies paves the way towards controlling the rate and direction of evolution, which is of interest to industrial and medical applications.ResultsOur results show that the rate of evolution can be accelerated by evolving cell populations in sequential combinations of environments that are increasingly more complex. To quantify environmental complexity, we evaluate various information-theoretic metrics, and we provide evidence that multivariate mutual information between environmental signals in a given environment correlates well with the rate of evolution in that environment, as measured in our simulations. We find that strong positive and negative correlations between the intermediate and final environments lead to the increase of evolutionary rates, when the environmental complexity increases. Horizontal Gene Transfer is shown to further augment this acceleration, under certain conditions. Interestingly, our simulations show that weak environmental correlations lead to deceleration of evolution, regardless of environmental complexity. Further analysis of network evolution provides a mechanistic explanation of this phenomenon, as exposing cells to intermediate environments can trap the population to local neighborhoods of sub-optimal fitness.
机译:背景技术微生物一生中都会受到环境变化的影响,每种环境都有其独特的时空动态。微生物群落表现出显着的表型可塑性,在微生物适应新环境的过程中,高度适应的个体迅速崛起。但是,在适应潜力方面存在很大的可变性,尽管在某些环境转变中适应迅速发生,但在其他生物中却难以适应。在这里,我们调查的假说,进化的速度可以增加或减少,这取决于中间环境和最终环境的相似性和复杂性。阐明这种依赖性为控制进化的速率和方向铺平了道路,这是工业和医学应用所感兴趣的。结果我们的结果表明,通过在越来越复杂的环境中按顺序组合不断发展的细胞群体,可以加快进化的速率。 。为了量化环境的复杂性,我们评估了各种信息理论指标,并且我们提供了证据,即给定环境中环境信号之间的多元互信息与该环境中的演化速率具有很好的相关性(如我们的模拟所测量)。我们发现,当环境复杂性增加时,中间环境和最终环境之间的强正相关和负相关性导致进化速率的增加。在某些条件下,水平基因转移显示出进一步增强了这种加速度。有趣的是,我们的模拟表明,弱的环境相关性导致进化的减速,而与环境的复杂性无关。网络进化的进一步分析为这种现象提供了机械的解释,因为将细胞暴露于中间环境会使种群陷入次优适应度的局部邻域。

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