首页> 外文期刊>Proteins: Structure, Function, and Genetics >Averaging interaction energies over homologs improves protein fold recognition in gapless threading.
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Averaging interaction energies over homologs improves protein fold recognition in gapless threading.

机译:在同系物上平均的相互作用能改善了无间隙穿线中蛋白质折叠的识别能力。

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摘要

Protein structure prediction is limited by the inaccuracy of the simplified energy functions necessary for efficient sorting over many conformations. It was recently suggested (Finkelstein, Phys Rev Lett 1998;80:4823-4825) that these errors can be reduced by energy averaging over a set of homologous sequences. This conclusion is confirmed in this study by testing protein structure recognition in gapless threading. The accuracy of recognition was estimated by the Z-score values obtained in gapless threading tests. For threading, we used 20 target proteins, each having from 20 to 70 homologs taken from the HSSP sequence base. The energy of the native structures was compared with the energy from 34 to 75 thousand of alternative structures generated by threading. The energy calculations were done with our recently developed Calpha atom-based phenomenological potentials. We show that averaging of protein energies over homologs reduces the Z-score from approximately -6.1 (average Z-score for individual chains) to approximately -8.1. This means that a correct fold can be found among 3 x 10(9) random folds in the first case and among 3 x 10(15) in the second. Such increase in selectivity is important for recognition of protein folds.
机译:蛋白质结构的预测受到有效构型上许多构象必需的简化能量函数的不精确性的限制。最近有人提出(Finkelstein,Phys Rev Lett 1998; 80:4823-4825),可以通过对一组同源序列进行能量平均来减少这些误差。通过在无间隙穿线中测试蛋白质结构识别,在本研究中证实了这一结论。识别的准确性是通过在无间隙螺纹测试中获得的Z分数来估算的。对于穿线,我们使用了20种靶蛋白,每个靶蛋白具有20到70个来自HSSP序列碱基的同源物。将本机结构的能量与通过线程生成的34到7.5万种替代结构的能量进行了比较。使用我们最近开发的基于Calpha原子的现象学势进行了能量计算。我们表明,蛋白质能量在同系物上的平均将Z分数从大约-6.1(单个链的平均Z分数)降低到大约-8.1。这意味着在第一种情况下,可以在3 x 10(9)个随机折叠中找到正确的折叠,在第二种情况中,可以在3 x 10(15)个之间找到正确的折叠。选择性的这种提高对于识别蛋白质折叠非常重要。

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