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Transferable Coarse Grain Nonbonded Interaction Model for Amino Acids

机译:氨基酸的可传递粗粒非键相互作用模型

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The large quantity of protein sequences being generated from genomic data has greatly outpaced the throughput of experimental protein structure determining methods and consequently brought urgency to the need for accurate protein structure prediction tools. Reduced resolution, or coarse grained (CG) models, have become a mainstay in computational protein structure prediction performing among the best tools available. The quest for high quality generalized CG models presents an extremely challenging yet popular endeavor. To this point, a CG based interaction potential is presented here for the naturally occurring amino acids. In the present approach, three to four heavy atoms and associated hydrogens are condensed into a single CG site. The parametrization of the site-site interaction potential relies on experimental data thus providing a novel approach that is neither based on all-atom (AA) simulations nor experimental protein structural data. Specifically, intermolecular potentials, which are based on Lennard-Jones (LJ) style functional forms, are parametrized using thermodynamic data including surface tension and density. Using this approach, an amino acid potential data set has been developed for use in modeling peptides and proteins. The potential is evaluated here by comparing the solvent accessible surface area (SASA) to AA representations and ranking of protein decoy data sets provided by Decoys 'R' Us. The model is shown to perform very well compared to other existing prediction models for these properties.
机译:从基因组数据生成的大量蛋白质序列已大大超过了实验性蛋白质结构确定方法的处理量,因此迫切需要精确的蛋白质结构预测工具。分辨率降低或粗粒度(CG)模型已成为计算蛋白质结构预测中的主流,这些预测在可用的最佳工具中进行。对高质量广义CG模型的追求提出了极富挑战性但又广受欢迎的努力。至此,此处介绍了天然存在的氨基酸基于CG的相互作用潜能。在本方法中,三至四个重原子和相关的氢被冷凝成一个CG位。位点-位点相互作用潜力的参数化依赖于实验数据,因此提供了既不是基于全原子(AA)模拟也不是实验性蛋白质结构数据的新颖方法。具体而言,使用包括表面张力和密度在内的热力学数据对基于Lennard-Jones(LJ)样式功能形式的分子间电势进行参数化。使用这种方法,已经开发出一种氨基酸潜力数据集,用于建模肽和蛋白质。此处通过比较溶剂可及表面积(SASA)与AA表示以及Decoys'R'Us提供的蛋白质诱饵数据集的排名来评估潜力。与其他现有的针对这些属性的预测模型相比,该模型的执行效果非常好。

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