Grah Rok, Guet Calin C, Tkačik Gasper, Lagator Mato
Institute of Science and Technology Austria, Klosterneuburg AT-3400, Austria.
Division of Evolution, Infection and Genomic Sciences, School of Biological Sciences, Faculty of Biology, Medicine and Health, University of Manchester, Manchester M13 9PL, UK.
Genetics. 2025 Feb 5;229(2). doi: 10.1093/genetics/iyae191.
A major obstacle to predictive understanding of evolution stems from the complexity of biological systems, which prevents detailed characterization of key evolutionary properties. Here, we highlight some of the major sources of complexity that arise when relating molecular mechanisms to their evolutionary consequences and ask whether accounting for every mechanistic detail is important to accurately predict evolutionary outcomes. To do this, we developed a mechanistic model of a bacterial promoter regulated by 2 proteins, allowing us to connect any promoter genotype to 6 phenotypes that capture the dynamics of gene expression following an environmental switch. Accounting for the mechanisms that govern how this system works enabled us to provide an in-depth picture of how regulated bacterial promoters might evolve. More importantly, we used the model to explore which factors that contribute to the complexity of this system are essential for understanding its evolution, and which can be simplified without information loss. We found that several key evolutionary properties-the distribution of phenotypic and fitness effects of mutations, the evolutionary trajectories during selection for regulation-can be accurately captured without accounting for all, or even most, parameters of the system. Our findings point to the need for a mechanistic approach to studying evolution, as it enables tackling biological complexity and in doing so improves the ability to predict evolutionary outcomes.
对进化进行预测性理解的一个主要障碍源于生物系统的复杂性,这使得难以对关键进化特性进行详细描述。在此,我们强调了在将分子机制与其进化后果联系起来时出现的一些主要复杂性来源,并探讨考虑每一个机制细节对于准确预测进化结果是否重要。为此,我们构建了一个由两种蛋白质调控的细菌启动子的机制模型,这使我们能够将任何启动子基因型与六种表型联系起来,这些表型捕捉了环境转换后基因表达的动态变化。考虑该系统运作的机制使我们能够深入了解受调控的细菌启动子可能如何进化。更重要的是,我们使用该模型来探索导致该系统复杂性的哪些因素对于理解其进化至关重要,以及哪些因素可以在不损失信息的情况下进行简化。我们发现,一些关键的进化特性——突变的表型和适应性效应的分布、选择调控过程中的进化轨迹——无需考虑系统的所有甚至大多数参数就能被准确捕捉。我们的研究结果表明需要一种机制方法来研究进化,因为它能够应对生物复杂性,从而提高预测进化结果的能力。