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Performance of protein-structure predictions with the physics-based UNRES force field in CASP11

机译:基于物理的UNRES力场在CASP11中进行蛋白质结构预测的性能

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摘要

>Summary: Participating as the Cornell-Gdansk group, we have used our physics-based coarse-grained UNited RESidue (UNRES) force field to predict protein structure in the 11th Community Wide Experiment on the Critical Assessment of Techniques for Protein Structure Prediction (CASP11). Our methodology involved extensive multiplexed replica exchange simulations of the target proteins with a recently improved UNRES force field to provide better reproductions of the local structures of polypeptide chains. All simulations were started from fully extended polypeptide chains, and no external information was included in the simulation process except for weak restraints on secondary structure to enable us to finish each prediction within the allowed 3-week time window. Because of simplified UNRES representation of polypeptide chains, use of enhanced sampling methods, code optimization and parallelization and sufficient computational resources, we were able to treat, for the first time, all 55 human prediction targets with sizes from 44 to 595 amino acid residues, the average size being 251 residues. Complete structures of six single-domain proteins were predicted accurately, with the highest accuracy being attained for the T0769, for which the CαRMSD was 3.8 Å for 97 residues of the experimental structure. Correct structures were also predicted for 13 domains of multi-domain proteins with accuracy comparable to that of the best template-based modeling methods. With further improvements of the UNRES force field that are now underway, our physics-based coarse-grained approach to protein-structure prediction will eventually reach global prediction capacity and, consequently, reliability in simulating protein structure and dynamics that are important in biochemical processes.>Availability and Implementation: Freely available on the web at .>Contact:
机译:>摘要:作为康奈尔-格但斯克小组的一员,我们使用了基于物理学的粗粒UNited RESidue(UNRES)力场来预测第11项社区关键技术评估实验中的蛋白质结构用于蛋白质结构预测(CASP11)。我们的方法学涉及目标蛋白的广泛多路复式复制品交换模拟,以及最近改进的UNRES力场,以提供多肽链局部结构的更好复制。所有模拟都是从完全延伸的多肽链开始的,除了对二级结构的弱限制使我们能够在允许的3周时间范围内完成每个预测,模拟过程中没有任何外部信息。由于UNRES简化了多肽链的表示,使用了增强的采样方法,代码优化和并行化以及足够的计算资源,因此我们能够首次处理所有55个人类预测靶标,其大小从44至595个氨基酸残基,平均大小为251个残基。准确预测了六个单域蛋白的完整结构,其中T0769的准确性最高,对于97个残基的CαRMSD为3.8。还预测了多结构域蛋白的13个结构域的正确结构,其准确性与基于最佳模板的建模方法相当。随着目前UNRES力场的进一步改进,我们基于物理学的蛋白质结构预测的粗粒度方法将最终达到全局预测能力,因此,在模拟蛋白质结构和动力学方面的可靠性对生物化学过程至关重要。 >可用性和实施​​:可在网上免费访问。>联系人:

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