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首页> 外文期刊>Journal of Molecular Biology >PROTEIN FOLD RECOGNITION BY PREDICTION-BASED THREADING
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PROTEIN FOLD RECOGNITION BY PREDICTION-BASED THREADING

机译:基于预测的螺纹折叠识别

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摘要

In fold recognition by threading one takes the amino acid sequence of a protein and evaluates how well it fits into one of the known three-dimensional (3D) protein structures. The quality of sequence-structure fit is typically evaluated using inter-residue potentials of mean force or other statistical parameters. Here, we present an alternative approach to evaluating sequence-structure fitness. Starting from the amino acid sequence we first predict secondary structure and solvent accessibility for each residue. We then thread the resulting one-dimensional (1D) profile of predicted structure assignments into each of the known 3D structures. The optimal threading for each sequence-structure pair is obtained using dynamic programming. The overall best sequence-structure pair constitutes the predicted 3D structure for the input sequence. The method is fine-tuned by adding information from direct sequence-sequence comparison and applying a series of empirical filters. Although the method relies on reduction of 3D information into 1D structure profiles, its accuracy is, surprisingly, not clearly inferior to methods based on evaluation of residue interactions in 3D. We therefore hypothesise that existing 1D-3D threading methods essentially do not capture more than the fitness of an amino acid sequence for a particular 1D succession of secondary structure segments and residue solvent accessibility. The prediction-based threading method on average finds any structurally homologous region at first rank in 29% of the cases (including sequence information). For the 22% first hits detected at highest scores, the expected accuracy rose to 75%. However, the task of detecting entire folds rather than homologous fragments was managed much better; 45 to 75% of the first hits correctly recognised the fold. (C) 1997 Academic Press Limited. [References: 48]
机译:在通过穿线识别的过程中,人们采用一种蛋白质的氨基酸序列,并评估其在已知的三维(3D)蛋白质结构中的适合程度。通常使用平均力或其他统计参数的残基间电位来评估序列结构拟合的质量。在这里,我们提出了一种评估序列结构适合度的替代方法。从氨基酸序列开始,我们首先预测每个残基的二级结构和溶剂可及性。然后,我们将得到的预测结构分配的一维(1D)轮廓插入每个已知3D结构中。使用动态编程可以获得每个序列结构对的最佳线程。总体上最佳的序列结构对构成了输入序列的预测3D结构。通过添加来自直接序列比较的信息并应用一系列经验过滤器,可以对该方法进行微调。尽管该方法依赖于将3D信息简化为1D结构轮廓,但令人惊讶的是,其准确性显然不逊于基于3D中残基相互作用评估的方法。因此,我们假设现有的1D-3D穿线方法对于二级结构片段和残基溶剂可及性的特定1D序列基本上不能捕获比氨基酸序列更合适的捕获。平均而言,基于预测的穿线方法在29%的情况下(包括序列信息)发现任何结构上同源的区域。对于以最高分数检测到的22%的首发命中,预期准确性提高到75%。但是,检测整个褶皱而不是同源片段的任务得到了更好的管理。第一次点击的45%至75%正确识别了弃牌。 (C)1997 Academic Press Limited。 [参考:48]

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