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A critical analysis of the combined usage of protein localization prediction methods: Increasing the number of independent data sets can reduce the accuracy of predicted mitochondrial localization

机译:蛋白质定位预测方法组合使用的关键分析:增加独立数据集的数量可能会降低预测的线粒体定位的准确性

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In the absence of a comprehensive experimentally derived mitochondrial proteome, several bioinformatic approaches have been developed to aid the identification of novel mitochondrial disease genes within mapped nuclear genetic loci. Often, many classifiers are combined to increase the sensitivity and specificity of the predictions.Here we show that the greatest sensitivity and specificity are obtained by using a combination of seven carefully selected classifiers. We also show that increasing the number of independent prediction methods can paradoxically decrease the accuracy of predicting mitochondrial localization. This approach will help to accelerate the identification of new mitochondrial disease genes by providing a principled way for the selection for combination of appropriate prediction methods of mitochondrial localization of proteins
机译:在缺乏全面的实验来源的线粒体蛋白质组的情况下,已经开发了几种生物信息学方法来帮助鉴定定位的核遗传基因座中的新型线粒体疾病基因。通常,许多分类器会组合在一起以提高预测的敏感性和特异性。在这里,我们表明,结合使用七个精心选择的分类器可获得最大的敏感性和特异性。我们还表明,增加独立预测方法的数量会自相矛盾地降低预测线粒体定位的准确性。这种方法将为选择合适的蛋白质线粒体定位预测方法的组合提供原则性方法,从而有助于加快线粒体新疾病基因的鉴定

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