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Co-Evolutionary Fitness Landscapes for Sequence Design

机译:序列设计共同进化健身景观

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Efficient and accurate models to predict the fitness of a sequence would be extremely valuable in protein design. We have explored the use of statistical potentials for the coevolutionary fitness landscape, extracted from known protein sequences, in conjunction with MonteCarlo simulations, as a tool for design. As proof of principle, we created a series of predicted high-fitness sequences for three different protein folds, representative of different structural classes: the GA (all-alpha) and GB (alpha/beta) binding domains of streptococcal protein G, and an SH3 (all-beta) domain. We found that most of the designed proteins can fold stably to the target structure, and a structure for a representative of each for GA, GB and SH3 was determined. Several of our designed proteins were also able to bind to native ligands, in some cases with higher affinity than wild-type. Thus, a search using a statistical fitness landscape is a remarkably effective tool for finding novel stable protein sequences.
机译:高效和准确的模型预测序列的适应性在蛋白质设计中非常有价值。我们已经探索了与蒙特卡洛模拟一起从已知的蛋白质序列中提取的共同蛋白序列提取的统计电位的使用,作为设计的工具。作为原理的证据,我们创建了一系列预测的三种不同蛋白质折叠的高适合序列,代表不同的结构类:链球菌蛋白G的GA(全α)和GB(α/β)结合结构域,以及SH3(All-Beta)域。我们发现大多数设计的蛋白质可以稳定地折叠到目标结构,并且确定了用于Ga,Gb和Sh3的代表的结构。我们的一些设计蛋白质也能够与原生配体结合,在一些具有比野生型更高的亲和力的情况下。因此,使用统计健身景观的搜索是寻找新型稳定蛋白序列的显着有效工具。

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