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首页> 外文期刊>Journal of chemical theory and computation: JCTC >Template-Guided Protein Structure Prediction and Using Optimized Folding Landscape Force Fields
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Template-Guided Protein Structure Prediction and Using Optimized Folding Landscape Force Fields

机译:模板引导蛋白质结构预测和使用优化的折叠景观力领域

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When good structural templates can be identified, template-based modeling is the most reliable way to predict the tertiary structure of proteins. In this study, we combine template-based modeling with a realistic coarse-grained force field, AWSEM, that has been optimized using the principles of energy landscape theory. The Associative memory, Water mediated, Structure and Energy Model (AWSEM) is a coarse-grained force field having both transferable tertiary interactions and knowledge-based local-in-sequence interaction terms. We incorporate template information into AWSEM by introducing soft collective biases to the template structures, resulting in a model that we call AWSEM-Template. Structure prediction tests on eight targets, four of which are in the low sequence identity "twilight zone" of homology modeling, show that AWSEM-Template can achieve high-resolution structure prediction. Our results also confirm that using a combination of AWSEM and a template-guided potential leads to more accurate prediction of protein structures than simply using a template guided potential alone. Free energy profile analyses demonstrate that the soft collective biases to the template effectively increase funneling toward native-like structures while still allowing significant flexibility so as to allow for correction of discrepancies between the target structure and the template. A further stage of refinement using all-atom molecular dynamics augmented with soft collective biases to the structures predicted by AWSEM-Template leads to a further improvement of both backbone and side-chain accuracy by maintaining sufficient flexibility but at the same time discouraging unproductive unfolding events often seen in unrestrained all-atom refinement simulations. The all-atom refinement simulations also reduce patches of frustration of the initial predictions. Some of the backbones found among the structures produced during the initial coarse grained prediction step already have CE-RMSD values of less than 3 angstrom with 90% or more of the residues aligned to the experimentally solved structure for all targets. All-atom structures generated during the following all-atom refinement simulations, which started from coarse-grained structures that were chosen without reference to any knowledge about the native structure, have CE-RMSD values of less than 2.5 angstrom with 90% or more of the residues aligned for 6 out of 8 targets. Clustering low energy structures generated during the initial coarse-grained annealing picks out reliably structures that are within 1 angstrom of the best sampled structures in 5 out of 8 cases. After the all-atom refinement, structures that are within 1 angstrom of the best sampled structures can be selected using a simple algorithm based on energetic features alone in 7 out of 8 cases.
机译:当可以识别良好的结构模板时,基于模板的建模是预测蛋白质三级结构的最可靠的方式。在这项研究中,我们将基于模板的模型与真正的粗粒强制领域AWSEM相结合,这已经利用能量景观理论的原理进行了优化。缔合记忆,水介导,结构和能量模型(AWSEM)是一种粗粒强制场,具有可转移的三级相互作用和基于知识的局部相互作用术语。我们将模板信息与模板结构引入软体集体偏差导致我们称之为AWSEM-模板的模型,将模板信息纳入AWSEM。结构预测测试八个目标,其中四个是在同源建模的低序列标识“暮光区”中,显示AWSEM-Temply可以实现高分辨率结构预测。我们的结果还证实,使用AWSEM和模板导向潜在的组合导致更准确地预测蛋白质结构,而不是仅使用单独的模板导向潜力。自由能谱分析表明,模板的软集集偏差有效地增加了天然样结构的漏斗,同时仍然允许显着的灵活性,以便允许校正目标结构和模板之间的差异。使用全原子分子动力学的再级的进一步改进阶段,通过对AWSEM-模板预测的结构增强,通过维持足够的灵活性来进一步提高骨架和侧链精度,但同时妨碍非生产性展开事件经常在无拘无束的全原子细化模拟中看到。全原子细化模拟还减少了初始预测的挫折斑块。在初始粗粒预测步骤期间产生的结构中发现的一些骨架已经具有小于3埃的CE-RMSD值小于3埃,其中90%或更多的残留物与所有靶标对准的实验溶解的结构。在以下全原子细化模拟期间产生的全原子结构,该结构从被选中的粗粒结构开始而不引用任何关于天然结构的任何知识,具有小于2.5埃的CE-RMSD值,其中90%或更多残留物与8个靶标中的6个取向。在初始粗粒退火期间产生的聚类低能量结构拾取了在8例中最佳采样结构中最佳采样结构的1埃以内的可靠结构。在全原子改进之后,可以使用基于高能特征的简单算法在8例中仅使用一个简单的算法选择在最佳采样结构的1埃内的结构。

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