Fontana W, Schuster P
Biophys Chem. 1987 May 9;26(2-3):123-47. doi: 10.1016/0301-4622(87)80017-0.
Molecular evolution is viewed as a typical combinatorial optimization problem. We analyse a chemical reaction model which considers RNA replication including correct copying and point mutations together with hydrolytic degradation and the dilution flux of a flow reactor. The corresponding stochastic reaction network is implemented on a computer in order to investigate some basic features of evolutionary optimization dynamics. Characteristic features of real molecular systems are mimicked by folding binary sequences into unknotted two-dimensional structures. Selective values are derived from these molecular 'phenotypes' by an evaluation procedure which assigns numerical values to different elements of the secondary structure. The fitness function obtained thereby contains nontrivial long-range interactions which are typical for real systems. The fitness landscape also reveals quite involved and bizarre local topologies which we consider also representative of polynucleotide replication in actually occurring systems. Optimization operates on an ensemble of sequences via mutation and natural selection. The strategy observed in the simulation experiments is fairly general and resembles closely a heuristic widely applied in operations research areas. Despite the relative smallness of the system--we study 2000 molecules of chain length v = 70 in a typical simulation experiment--features typical for the evolution of real populations are observed as there are error thresholds for replication, evolutionary steps and quasistationary sequence distributions. The relative importance of selectively neutral or almost neutral variants is discussed quantitatively. Four characteristic ensemble properties, entropy of the distribution, ensemble correlation, mean Hamming distance and diversity of the population, are computed and checked for their sensitivity in recording major optimization events during the simulation.
分子进化被视为一个典型的组合优化问题。我们分析了一个化学反应模型,该模型考虑了RNA复制,包括正确复制和点突变,以及水解降解和流动反应器的稀释通量。相应的随机反应网络在计算机上实现,以研究进化优化动力学的一些基本特征。通过将二进制序列折叠成无结的二维结构来模拟真实分子系统的特征。通过一种评估程序从这些分子“表型”中得出选择值,该程序为二级结构的不同元素赋予数值。由此获得的适应度函数包含真实系统中典型的非平凡长程相互作用。适应度景观还揭示了相当复杂和奇异的局部拓扑结构,我们认为这些结构也代表了实际发生系统中的多核苷酸复制。优化通过突变和自然选择作用于一组序列。模拟实验中观察到的策略相当普遍,与运筹学领域广泛应用的一种启发式方法非常相似。尽管系统规模相对较小——在典型的模拟实验中我们研究了链长v = 70的2000个分子——但仍观察到了真实种群进化的典型特征,如复制的错误阈值、进化步骤和准平稳序列分布。定量讨论了选择性中性或几乎中性变体的相对重要性。计算了四个特征性的系综性质,即分布的熵、系综相关性、平均汉明距离和种群多样性,并检查了它们在记录模拟过程中的主要优化事件时的敏感性。