Grupo Interdisciplinar de Sistemas Complejos (GISC), Madrid, Spain.
Departamento de Matemáticas, Universidad Carlos III de Madrid, Leganés, Madrid, Spain.
J R Soc Interface. 2020 Jun;17(167):20190843. doi: 10.1098/rsif.2019.0843. Epub 2020 Jun 3.
The evolution of gene regulatory networks (GRNs) is of great relevance for both evolutionary and synthetic biology. Understanding the relationship between GRN structure and its function can allow us to understand the selective pressures that have shaped a given circuit. This is especially relevant when considering spatio-temporal expression patterns, where GRN models have been shown to be extremely robust and evolvable. However, previous models that studied GRN evolution did not include the evolution of protein and genetic elements that underlie GRN architecture. Here we use toyLIFE, a multilevel genotype-phenotype map, to show that not all GRNs are equally likely in genotype space and that evolution is biased to find the most common GRNs. toyLIFE rules create Boolean GRNs that, embedded in a one-dimensional tissue, develop a variety of spatio-temporal gene expression patterns. Populations of toyLIFE organisms choose the most common GRN out of a set of equally fit alternatives and, most importantly, fail to find a target pattern when it is very rare in genotype space. Indeed, we show that the probability of finding the fittest phenotype increases dramatically with its abundance in genotype space. This phenotypic bias represents a mechanism that can prevent the fixation in the population of the fittest phenotype, one that is inherent to the structure of genotype space and the genotype-phenotype map.
基因调控网络 (GRN) 的进化对于进化生物学和合成生物学都具有重要意义。理解 GRN 结构与其功能之间的关系可以帮助我们了解塑造特定电路的选择压力。当考虑时空表达模式时,这一点尤其重要,因为已经证明 GRN 模型具有极高的稳健性和可进化性。然而,之前研究 GRN 进化的模型并没有包括构成 GRN 架构的蛋白质和遗传元件的进化。在这里,我们使用 toyLIFE,一个多层次的基因型-表型图,来表明在基因型空间中并非所有的 GRN 都具有相同的可能性,并且进化偏向于找到最常见的 GRN。toyLIFE 规则创建了布尔型的 GRN,这些 GRN 嵌入在一维组织中,可以发展出多种时空基因表达模式。toyLIFE 生物的种群从一组适应度相同的替代方案中选择最常见的 GRN,而且当目标模式在基因型空间中非常罕见时,它们往往无法找到。事实上,我们表明,找到最适合表型的概率随着其在基因型空间中的丰富度而显著增加。这种表型偏向代表了一种可以防止种群中最适合表型固定的机制,这种机制是基因型空间和基因型-表型图结构所固有的。