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首页> 外文期刊>Proteins: Structure, Function, and Genetics >High accuracy prediction of beta-turns and their types using propensities and multiple alignments.
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High accuracy prediction of beta-turns and their types using propensities and multiple alignments.

机译:使用倾向和多重比对对β转弯及其类型进行高精度预测。

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We have developed a method that predicts both the presence and the type of beta-turns, using a straightforward approach based on propensities and multiple alignments. The propensities were calculated classically, but the way to use them for prediction was completely new: starting from a tetrapeptide sequence on which one wants to evaluate the presence of a beta-turn, the propensity for a given residue is modified by taking into account all the residues present in the multiple alignment at this position. The evaluation of a score is then done by weighting these propensities by the use of Position-specific score matrices generated by PSI-BLAST. The introduction of secondary structure information predicted by PSIPRED or SSPRO2 as well as taking into account the flanking residues around the tetrapeptide improved the accuracy greatly. This latter evaluated on a database of 426 reference proteins (previously used on other studies) by a sevenfold crossvalidation gave very good results with a Matthews Correlation Coefficient (MCC) of 0.42 and an overall prediction accuracy of 74.8%; this places our method among the best ones. A jackknife test was also done, which gave results within the same range. This shows that it is possible to reach neural networks accuracy with considerably less computional cost and complexity. Furthermore, propensities remain excellent descriptors of amino acid tendencies to belong to beta-turns, which can be useful for peptide or protein engineering and design. For beta-turn type prediction, we reached the best accuracy ever published in terms of MCC (except for the irregular type IV) in the range of 0.25-0.30 for types I, II, and I' and 0.13-0.15 for types VIII, II', and IV. To our knowledge, our method is the only one available on the Web that predicts types I' and II'. The accuracy evaluated on two larger databases of 547 and 823 proteins was not improved significantly. All of this was implemented into a Web server called COUDES (French acronym for: Chercher Ou Une Deviation Existe Surement), which is available at the following URL: http://bioserv.rpbs.jussieu.fr/Coudes/index.html within the new bioinformatics platform RPBS.
机译:我们已经开发出了一种方法,可以使用基于倾向和多重比对的简单方法来预测β-转弯的存在和类型。倾向性的计算是经典的,但是将其用于预测的方法是全新的:从一个四肽序列开始,在该序列上您要评估β转角的存在,然后通过考虑所有因素来修改给定残基的倾向性残基以多重比对存在于此位置。然后,通过使用PSI-BLAST生成的特定于位置的评分矩阵对这些倾向进行加权来对评分进行评估。通过引入PSIPRED或SSPRO2预测的二级结构信息,并考虑到四肽周围的侧翼残基,大大提高了准确性。后者在426种参考蛋白(以前用于其他研究)的数据库中进行了七次交叉验证,得出了很好的结果,马修斯相关系数(MCC)为0.42,总预测准确度为74.8%;这使我们的方法成为最好的方法。还进行了折刀试验,其结果在相同范围内。这表明可以以相当低的计算成本和复杂性来达到神经网络的准确性。此外,倾向仍然是氨基酸倾向属于β-转折的极好描述,这可用于肽或蛋白质的工程设计。对于β转弯类型的预测,就MCC(不规则类型IV除外)而言,我们达到了有史以来最好的准确性,对于I,II和I'类型为0.25-0.30,对于VIII类型为0.13-0.15 II'和IV。据我们所知,我们的方法是网络上唯一可预测类型I'和II'的方法。在两个较大的547和823蛋白数据库上评估的准确性没有明显提高。所有这些都在名为COUDES(法语缩写:Chercher Ou Une Deviation Existe Surement)的Web服务器中实现,该服务器可从以下URL获得:http://bioserv.rpbs.jussieu.fr/Coudes/index.html新的生物信息学平台RPBS。

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