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首页> 外文期刊>Journal of Theoretical Biology >Prediction of protein submitochondria locations based on data fusion of various features of sequences.
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Prediction of protein submitochondria locations based on data fusion of various features of sequences.

机译:基于序列各种特征的数据融合来预测蛋白质线粒体位置。

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In this study, the predictors are developed for protein submitochondria locations based on various features of sequences. Information about the submitochondria location for a mitochondria protein can provide much better understanding about its function. We use ten representative models of protein samples such as pseudo amino acid composition, dipeptide composition, functional domain composition, the combining discrete model based on prediction of solvent accessibility and secondary structure elements, the discrete model of pairwise sequence similarity, etc. We construct a predictor based on support vector machines (SVMs) for each representative model. The overall prediction accuracy by the leave-one-out cross validation test obtained by the predictor which is based on the discrete model of pairwise sequence similarity is 1% better than the best computational system that exists for this problem. Moreover, we develop a method based on ordered weighted averaging (OWA) which is one of the fusion data operators. Therefore, OWA is applied on the 11 best SVM-based classifiers that are constructed based on various features of sequence. This method is called Mito-Loc. The overall leave-one-out cross validation accuracy obtained by Mito-Loc is about 95%. This indicates that our proposed approach (Mito-Loc) is superior to the result of the best existing approach which has already been reported.
机译:在这项研究中,基于序列的各种特征,针对蛋白质线粒体位置开发了预测因子。有关线粒体蛋白线粒体位置的信息可以提供对其功能的更好了解。我们使用蛋白质样品的十个代表性模型,例如假氨基酸组成,二肽组成,功能域组成,基于溶剂可及性和二级结构元素预测的组合离散模型,成对序列相似性离散模型等。基于支持向量机(SVM)的每个代表性模型的预测变量。由预测器基于配对序列相似性离散模型获得的留一法交叉验证测试的总体预测精度比针对该问题的最佳计算系统高1%。此外,我们开发了一种基于有序加权平均(OWA)的方法,该方法是融合数据运算符之一。因此,OWA应用于基于序列的各种特征构造的11种基于SVM的最佳分类器。此方法称为Mito-Loc。 Mito-Loc获得的整体留一法交叉验证准确性约为95%。这表明我们提出的方法(Mito-Loc)优于已经报告的最佳现有方法的结果。

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