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Optimal Evolutionary Control for Artificial Selection on Molecular Phenotypes

机译:分子表型人工选择的最佳进化控制

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Controlling an evolving population is an important task in modern molecular genetics, including directed evolution for improving the activity of molecules and enzymes, in breeding experiments in animals and in plants, and in devising public health strategies to suppress evolving pathogens. An optimal intervention to direct evolution should be designed by considering its impact over an entire stochastic evolutionary trajectory that follows. As a result, a seemingly suboptimal intervention at a given time can be globally optimal as it can open opportunities for desirable actions in the future. Here, we propose a feedback control formalism to devise globally optimal artificial selection protocol to direct the evolution of molecular phenotypes. We show that artificial selection should be designed to counter evolutionary trade-offs among multivariate phenotypes to avoid undesirable outcomes in one phenotype by imposing selection on another. Control by artificial selection is challenged by our ability to predict molecular evolution. We develop an information theoretical framework and show that molecular timescales for evolution under natural selection can inform how to monitor a population in order to acquire sufficient predictive information for an effective intervention with artificial selection. Our formalism opens a new avenue for devising artificial selection methods for directed evolution of molecular functions.
机译:控制不断发展的人口是现代分子遗传学中的重要任务,包括用于改善动物和植物中的育种实验中分子和酶活性的针对性的演变,以及设计公共卫生策略以抑制不断发展的病原体。应通过考虑其对随后的整个随机进化轨迹的影响来设计对直接演化的最佳干预。结果,在给定时间看似次优的干预可以全球最佳,因为它可以在未来开放所需行动的机会。在这里,我们提出了反馈控制形式主义来设计全球最佳的人工选择方案,以指导分子表型的演变。我们表明,应设计人工选择以通过在另一个中施加选择来对抗多变量表型之间的进化折衷以避免一个表型的不良结果。通过我们预测分子演化的能力,通过人工选择控制受到挑战。我们开发了一个信息理论框架,并显示了自然选择下演化的分子时间表可以为如何监控人口,以便获得有效的人工选择有效的预测信息。我们的形式主义开启了一种新的途径,用于设计分子功能的定向演化的人工选择方法。

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