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首页> 外文期刊>Proteins: Structure, Function, and Genetics >Efficient methods for filtering and ranking fragments for the prediction of structurally variable regions in proteins.
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Efficient methods for filtering and ranking fragments for the prediction of structurally variable regions in proteins.

机译:筛选和排序片段的有效方法,以预测蛋白质中的结构可变区。

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摘要

The prediction of protein 3D structures close to insertions and deletions or, more generally, loop prediction, is still one of the major challenges in homology modeling projects. In this article, we developed ranking criteria and selection filters to improve knowledge-based loop predictions. These criteria were developed and optimized for a test data set containing 678 insertions and deletions. The examples are, in principle, predictable from the used loop database with an RMSD < 1 A and represent realistic modeling situations. Four noncorrelated criteria for the selection of fragments are evaluated. A fast prefilter compares the distance between the anchor groups in the template protein with the stems of the fragments. The RMSD of the anchor groups is used for fitting and ranking of the selected loop candidates. After fitting, repulsive close contacts of loop candidates with the template protein are used for filtering, and fragments with backbone torsion angles, which are unfavorable according to a knowledge-based potential, are eliminated. By the combined application of these filter criteria to the test set, it was possible to increase the percentage of predictions with a global RMSD < 1 A to over 50% among the first five ranks, with average global RMSD values for the first rank candidate that are between 1.3 and 2.2 A for different loop lengths. Compared to other examples described in the literature, our large numbers of test cases are not self-predictions, where loops are placed in a protein after a peptide loop has been cut out, but are attempts to predict structural changes that occur in evolution when a protein is affected by insertions and deletions.
机译:接近于插入和缺失的蛋白质3D结构的预测,或更普遍地,环的预测,仍然是同源性建模项目中的主要挑战之一。在本文中,我们开发了排名标准和选择过滤器,以改进基于知识的循环预测。针对包含678个插入和删除的测试数据集,开发并优化了这些标准。原则上,这些示例可以从所用的循环数据库中(RMSD <1 A)进行预测,并代表实际的建模情况。评价了用于选择片段的四个不相关的标准。快速预过滤器将模板蛋白中锚定基团与片段茎之间的距离进行比较。锚组的RMSD用于对选定的循环候选进行拟合和排名。拟合后,将候选环与模板蛋白的排斥性紧密接触用于过滤,并消除了具有主链扭转角的片段,这些片段根据知识的潜能是不利的。通过将这些过滤条件组合应用到测试集,可以将前五个等级中全局RMSD <1 A的预测的百分比提高到50%以上,而第一等级候选者的平均全局RMSD值可以达到对于不同的回路长度,它们在1.3至2.2 A之间。与文献中描述的其他示例相比,我们的大量测试用例不是自我预测,即在将肽环切出后将环放入蛋白质中,而是尝试预测当蛋白受插入和缺失的影响。

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