Optimizing the search algorithm for protein engineering by directed evolution.

Richard Fox, Ajoy Roy, Sridhar Govindarajan, Jeremy Minshull, Claes Gustafsson, Jennifer T Jones, Robin Emig
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引用次数: 65

Abstract

An in silico protein model based on the Kauffman NK-landscape, where N is the number of variable positions in a protein and K is the degree of coupling between variable positions, was used to compare alternative search strategies for directed evolution. A simple genetic algorithm (GA) was used to model the performance of a standard DNA shuffling protocol. The search effectiveness of the GA was compared to that of a statistical approach called the protein sequence activity relationship (ProSAR) algorithm, which consists of two steps: model building and library design. A number of parameters were investigated and found to be important for the comparison, including the value of K, the screening size, the system noise and the number of replicates. The statistical model was found to accurately predict the measured activities for small values of the coupling between amino acids, K

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定向进化优化蛋白质工程搜索算法。
基于考夫曼nk景观的硅蛋白质模型,其中N是蛋白质中可变位置的数量,K是可变位置之间的耦合程度,用于比较定向进化的替代搜索策略。一个简单的遗传算法(GA)被用来模拟一个标准的DNA洗牌协议的性能。将遗传算法的搜索效率与蛋白质序列活性关系(ProSAR)算法的搜索效率进行了比较。ProSAR算法包括两个步骤:模型构建和库设计。研究了许多参数,发现对比较很重要,包括K值、筛选大小、系统噪声和重复次数。发现该统计模型可以准确地预测氨基酸、K和K之间偶联的小值的测定活性
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