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MUFOLD: A new solution for protein 3D structure prediction.

机译:MUFOLD:蛋白质3D结构预测的新解决方案。

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There have been steady improvements in protein structure prediction during the past 2 decades. However, current methods are still far from consistently predicting structural models accurately with computing power accessible to common users. Toward achieving more accurate and efficient structure prediction, we developed a number of novel methods and integrated them into a software package, MUFOLD. First, a systematic protocol was developed to identify useful templates and fragments from Protein Data Bank for a given target protein. Then, an efficient process was applied for iterative coarse-grain model generation and evaluation at the Calpha or backbone level. In this process, we construct models using interresidue spatial restraints derived from alignments by multidimensional scaling, evaluate and select models through clustering and static scoring functions, and iteratively improve the selected models by integrating spatial restraints and previous models. Finally, the full-atom models were evaluated using molecular dynamics simulations based on structural changes under simulated heating. We have continuously improved the performance of MUFOLD by using a benchmark of 200 proteins from the Astral database, where no template with >25% sequence identity to any target protein is included. The average root-mean-square deviation of the best models from the native structures is 4.28 A, which shows significant and systematic improvement over our previous methods. The computing time of MUFOLD is much shorter than many other tools, such as Rosetta. MUFOLD demonstrated some success in the 2008 community-wide experiment for protein structure prediction CASP8.
机译:在过去的20年中,蛋白质结构预测一直在稳步改善。然而,当前的方法仍远不能通过普通用户可访问的计算能力来一致地准确预测结构模型。为了实现更准确和有效的结构预测,我们开发了许多新颖的方法并将其集成到软件包MUFOLD中。首先,开发了系统的方案,可从蛋白质数据库中识别出给定目标蛋白质的有用模板和片段。然后,将有效过程应用于Calpha或主干级别的迭代粗粒度模型生成和评估。在此过程中,我们使用通过多维缩放从路线得出的残差间空间约束构造模型,通过聚类和静态评分功能评估和选择模型,并通过整合空间约束和先前的模型来迭代地改进所选模型。最后,基于模拟加热条件下基于结构变化的分子动力学模拟,对全原子模型进行了评估。我们通过使用Astral数据库中200种蛋白质的基准来不断提高MUFOLD的性能,其中不包含与任何目标蛋白质具有> 25%序列同一性的模板。最佳模型与本机结构的平均均方根偏差为4.28 A,这表明与我们以前的方法相比,存在明显的系统改进。 MUFOLD的计算时间比其他许多工具(例如Rosetta)要短得多。 MUFOLD在2008年社区范围的蛋白质结构预测CASP8实验中证明了一些成功。

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