GEMSCORE:蛋白质折叠的新经验能量函数

Y. Chiu, Jenn-Kang Hwang, Jinn-Moon Yang
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引用次数: 1

摘要

我们开发了一种新的能量函数,称为GEMSCORE,用于蛋白质结构预测,这是计算结构生物学领域的一个新兴问题。GEMSCORE结合了基于知识和基于物理的能量功能。与许多基于物理的能量函数中使用的成百上千个参数不同,我们使用一种通用的进化方法优化了GEMSCORE中九个能量项的权重。这九个能量项是静电,德华力,氢键势,还有六个是溶剂化势。GEMSCORE已经在6个诱饵集上进行了评估,包括96个蛋白质,超过70,000个结构。结果表明,我们的方法能够成功地从这96个蛋白中鉴定出74个天然蛋白。我们的GEMSCORE可以快速、简单地从这些诱饵集中的数千个候选蛋白质结构中区分原生和非原生结构。我们认为GEMSCORE是稳健的,应该是一个有用的能量函数,用于蛋白质结构预测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
GEMSCORE: A New Empirical Energy Function for Protein Folding
We have developed a new energy function, termed GEMSCORE, for the protein structure prediction, which is an emergent problem in the field of computational structural biology. The GEMSCORE combines knowledge-based and physics-based energy functions. Instead of hundreds and thousands parameters used in many physics-based energy functions, we optimized nine weights of energy terms in the GEMSCORE by using a generic evolutionary method. These nine energy terms are the electrostatic, the der Waals, the hydrogen-bonding potential, and six terms for solvation potentials. The GEMSCORE has been evaluated on six decoy sets, including 96 proteins with more 70,000 structures. The result indicates that our method is able to successfully identify 74 native proteins from these 96 proteins. Our GEMSCORE is fast and simple to discriminate between native and nonnative structures from thousands of protein structure candidates in these decoy sets. We believe that the GEMSCORE is robust and should be a useful energy function for the protein structure prediction.
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