Integrating multiple scoring functions to improve protein loop structure conformation space sampling

Yaohang Li, I. Rata, E. Jakobsson
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引用次数: 6

Abstract

In this article, we present a new protein structure modeling approach based on multi-scoring functions sampling. The rationale is to integrate multiple carefully-selected physics-or knowledge-based scoring functions to tolerate insensitivity and inaccuracy existing in an individual scoring function so as to improve protein structure modeling accuracy. We apply the multi-scoring function sampling approach to protein loop backbone structure modeling. Our computational results show that sampling the scoring function space of a physics-based soft-sphere potential function and a knowledge-based scoring function based on pairwise atoms distance has led to resolution improvement in the predicted decoy populations in a set of 12-residue benchmark loop targets.
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集成多重评分函数,提高蛋白质环结构构象空间采样
本文提出了一种基于多重评分函数采样的蛋白质结构建模方法。其基本原理是整合多个精心挑选的物理或基于知识的评分函数,以容忍单个评分函数存在的不敏感性和不准确性,从而提高蛋白质结构建模的准确性。我们将多重评分函数采样方法应用于蛋白质环主链结构建模。我们的计算结果表明,对基于物理的软球势函数和基于成对原子距离的基于知识的评分函数的评分函数空间进行采样,可以提高12个残基基准环目标中预测诱饵种群的分辨率。
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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