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首页> 外文期刊>Methods: A Companion to Methods in Enzymology >Protein structure prediction provides comparable performance to crystallographic structures in docking-based virtual screening
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Protein structure prediction provides comparable performance to crystallographic structures in docking-based virtual screening

机译:蛋白质结构预测在基于对接的虚拟筛选中可提供与晶体结构相当的性能

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Structure based virtual screening has largely been limited to protein targets for which either an experimental structure is available or a strongly homologous template exists so that a high-resolution model can be constructed. The performance of state of the art protein structure predictions in virtual screening in systems where only weakly homologous templates are available is largely untested. Using the challenging DUD database of structural decoys, we show here that even using templates with only weak sequence homology (<30% sequence identity) structural models can be constructed by I-TASSER which achieve comparable enrichment rates to using the experimental bound crystal structure in the majority of the cases studied. For 65% of the targets, the I-TASSER models, which are constructed essentially in the apo conformations, reached 70% of the virtual screening performance of using the holo-crystal structures. A correlation was observed between the success of I-TASSER in modeling the global fold and local structures in the binding pockets of the proteins versus the relative success in virtual screening. The virtual screening performance can be further improved by the recognition of chemical features of the ligand compounds. These results suggest that the combination of structure-based docking and advanced protein structure modeling methods should be a valuable approach to the large-scale drug screening and discovery studies, especially for the proteins lacking crystallographic structures. (C) 2014 Elsevier Inc. All rights reserved.
机译:基于结构的虚拟筛选在很大程度上仅限于蛋白质靶标,对于该蛋白靶标,可以使用实验结构或存在高度同源的模板,从而可以构建高分辨率模型。在只有弱同源模板可用的系统中进行虚拟筛选时,最新蛋白质结构预测的性能在很大程度上未经测试。使用结构性诱饵的具有挑战性的DUD数据库,我们在这里表明,即使使用仅具有弱序列同源性(<30%序列同一性)的模板,I-TASSER仍可以构建结构模型,与使用实验性结合晶体结构获得的富集率相当。研究的大多数案例。对于65%的目标,基本上以apo构象构建的I-TASSER模型达到了使用完整晶体结构的虚拟筛选性能的70%。观察到I-TASSER在模拟蛋白质结合口袋中的整体折叠和局部结构方面的成功与虚拟筛选中的相对成功之间存在相关性。通过识别配体化合物的化学特征,可以进一步提高虚拟筛选性能。这些结果表明,基于结构的对接和先进的蛋白质结构建模方法的结合应该是大规模药物筛选和发现研究的有价值的方法,特别是对于缺乏晶体结构的蛋白质。 (C)2014 Elsevier Inc.保留所有权利。

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