Optimizing energy potentials for success in protein tertiary structure prediction

Ting-Lan Chiu , Richard A Goldstein
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引用次数: 36

Abstract

Background: Success in solving the protein structure prediction problem relies on the choice of an accurate potential energy function. For a single protein sequence, it has been shown that the potential energy function can be optimized for predictive success by maximizing the energy gap between the correct structure and the ensemble of random structures relative to the distribution of the energies of these random structures (the Z-score). Different methods have been described for implementing this procedure for an ensemble of database proteins. Here, we demonstrate a new approach.

Results: For a single protein sequence, the probability of success (i.e. the probability that the folded state is the lowest energy state) is derived. We then maximize the average probability of success for a set of proteins to obtain the optimal potential energy function. This results in maximum attention being focused on the proteins whose structures are difficult but not impossible to predict.

Conclusions: Using a lattice model of proteins, we show that the optimal interaction potentials obtained by our method are both more accurate and more likely to produce successful predictions than those obtained by other averaging procedures.

优化能势,成功预测蛋白质三级结构
背景:成功地解决蛋白质结构预测问题依赖于准确的势能函数的选择。对于单个蛋白质序列,已经证明,势能函数可以通过最大化正确结构与随机结构集合之间相对于这些随机结构的能量分布(Z-score)的能量差距来优化预测成功。已经描述了不同的方法来实现数据库蛋白质集合的这一过程。在这里,我们演示一种新的方法。结果:对于单个蛋白质序列,导出了成功概率(即折叠态为最低能态的概率)。然后,我们将一组蛋白质的平均成功概率最大化,以获得最优势能函数。这导致人们将最大的注意力集中在结构难以预测但并非不可能预测的蛋白质上。结论:使用蛋白质的晶格模型,我们表明,通过我们的方法获得的最佳相互作用势比其他平均方法获得的相互作用势更准确,更有可能产生成功的预测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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