Ostrowski Elizabeth A, Ofria Charles, Lenski Richard E
Department of Biology and Biochemistry, University of Houston, Houston, TX, 77204, USA.
Department of Computer Science and Engineering, Michigan State University, East Lansing, MI, 48824, USA.
BMC Evol Biol. 2015 May 12;15:83. doi: 10.1186/s12862-015-0361-x.
When overlapping sets of genes encode multiple traits, those traits may not be able to evolve independently, resulting in constraints on adaptation. We examined the evolution of genetically integrated traits in digital organisms-self-replicating computer programs that mutate, compete, adapt, and evolve in a virtual world. We assessed whether overlap in the encoding of two traits - here, the ability to perform different logic functions - constrained adaptation. We also examined whether strong opposing selection could separate otherwise entangled traits, allowing them to be independently optimized.
Correlated responses were often asymmetric. That is, selection to increase one function produced a correlated response in the other function, while selection to increase the second function caused a complete loss of the ability to perform the first function. Nevertheless, most pairs of genetically integrated traits could be successfully disentangled when opposing selection was applied to break them apart. In an interesting exception to this pattern, the logic function AND evolved counter to its optimum in some populations owing to selection on the EQU function. Moreover, the EQU function showed the strongest response to selection only after it was disentangled from AND, such that the ability to perform AND was lost. Subsequent analyses indicated that selection against AND had altered the local adaptive landscape such that populations could cross what would otherwise have been an adaptive valley and thereby reach a higher fitness peak.
Correlated responses to selection can sometimes constrain adaptation. However, in our study, even strongly overlapping genes were usually insufficient to impose long-lasting constraints, given the input of new mutations that fueled selective responses. We also showed that detailed information about the adaptive landscape was useful for predicting the outcome of selection on correlated traits. Finally, our results illustrate the richness of evolutionary dynamics in digital systems and highlight their utility for studying processes thought to be important in biological systems, but which are difficult to investigate in those systems.
当重叠的基因集编码多种性状时,这些性状可能无法独立进化,从而对适应性产生限制。我们研究了数字生物体(即在虚拟世界中发生突变、竞争、适应和进化的自我复制计算机程序)中基因整合性状的进化。我们评估了两种性状(这里指执行不同逻辑功能的能力)编码的重叠是否会限制适应性。我们还研究了强烈的反向选择是否可以分离原本相互纠缠的性状,使其能够独立优化。
相关反应通常是不对称的。也就是说,选择增强一种功能会在另一种功能上产生相关反应,而选择增强第二种功能会导致执行第一种功能的能力完全丧失。然而,当应用反向选择来打破它们之间的联系时,大多数基因整合性状对都可以成功解开。在这种模式的一个有趣例外中,由于对异或(EQU)功能的选择,与门(AND)逻辑功能在某些群体中朝着与其最优状态相反的方向进化。此外,异或功能只有在与与门功能分离后才对选择表现出最强的反应,以至于执行与门功能的能力丧失。后续分析表明,针对与门功能的选择改变了局部适应景观,使得群体能够跨越原本会是一个适应谷的区域,从而达到更高的适应度峰值。
对选择的相关反应有时会限制适应性。然而,在我们的研究中,考虑到推动选择反应的新突变的输入,即使是高度重叠的基因通常也不足以施加长期限制。我们还表明,关于适应景观的详细信息有助于预测对相关性状选择的结果。最后,我们的结果说明了数字系统中进化动态的丰富性,并突出了它们在研究被认为在生物系统中很重要但在这些系统中难以研究的过程方面的效用。