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Exploiting residue-level and profile-level interface propensities for usage in binding sites prediction of proteins

机译:利用残基级和谱级级界面倾向来预测蛋白质的结合位点

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Background Recognition of binding sites in proteins is a direct computational approach to the characterization of proteins in terms of biological and biochemical function. Residue preferences have been widely used in many studies but the results are often not satisfactory. Although different amino acid compositions among the interaction sites of different complexes have been observed, such differences have not been integrated into the prediction process. Furthermore, the evolution information has not been exploited to achieve a more powerful propensity. Result In this study, the residue interface propensities of four kinds of complexes (homo-permanent complexes, homo-transient complexes, hetero-permanent complexes and hetero-transient complexes) are investigated. These propensities, combined with sequence profiles and accessible surface areas, are inputted to the support vector machine for the prediction of protein binding sites. Such propensities are further improved by taking evolutional information into consideration, which results in a class of novel propensities at the profile level, i.e. the binary profiles interface propensities. Experiment is performed on the 1139 non-redundant protein chains. Although different residue interface propensities among different complexes are observed, the improvement of the classifier with residue interface propensities can be negligible in comparison with that without propensities. The binary profile interface propensities can significantly improve the performance of binding sites prediction by about ten percent in term of both precision and recall. Conclusion Although there are minor differences among the four kinds of complexes, the residue interface propensities cannot provide efficient discrimination for the complicated interfaces of proteins. The binary profile interface propensities can significantly improve the performance of binding sites prediction of protein, which indicates that the propensities at the profile level are more accurate than those at the residue level.
机译:背景技术蛋白质中结合位点的识别是一种根据生物学和生物化学功能表征蛋白质的直接计算方法。残基偏好已在许多研究中广泛使用,但结果通常并不令人满意。尽管已观察到不同复合物相互作用位点之间的氨基酸组成不同,但这种差异尚未整合到预测过程中。此外,尚未利用演化信息来实现更强大的倾向。结果在本研究中,研究了四种复合物(同型永久复合物,同型瞬态复合物,异型永久性复合物和异型瞬态复合物)的残留界面倾向。将这些倾向与序列图谱和可及表面积相结合,输入到支持载体机器中,以预测蛋白质结合位点。通过考虑进化信息进一步改善了这种倾向,这导致了在轮廓级别的一类新颖的倾向,即二进制轮廓界面倾向。对1139个非冗余蛋白链进行了实验。尽管观察到了不同配合物之间不同的残基界面倾向性,但是与没有倾向性的分类器相比,具有残基界面倾向的分类器的改进可以忽略不计。从精度和召回率的角度来看,二元轮廓界面的倾向可以显着提高结合位点预测的性能约百分之十。结论尽管这四种复合物之间存在微小差异,但残基界面的倾向不能有效区分蛋白质的复杂界面。二元轮廓界面倾向可以显着提高蛋白质结合位点预测的性能,这表明轮廓水平的倾向比残基水平的倾向更准确。

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