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Improved prediction of subcellular location for apoptosis proteins by the dual-layer support vector machine

机译:双层支持向量机改善凋亡蛋白亚细胞定位的预测

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摘要

Apoptosis proteins play an important role in the development and homeostasis of an organism.The accurate prediction of subcellular location for apoptosis proteins is very helpful for understanding the mechanism of apoptosis and their biological functions.However,most of the existing predictive methods are designed by utilizing a single classifier,which would limit the further improvement of their performances.In this paper,a novel predictive method,which is essentially a multi-classifier system,has been proposed by combing a dual-layer support vector machine(SVM)with multiple compositions including amino acid composition(AAC),dipeptide composition(DPC)and amphiphilic pseudo amino acid composition(Am-Pse-AAC).As a demonstration,the predictive performance of our method was evaluated on two datasets of apoptosis proteins,involving the standard dataset ZD98 generated by Zhou and Doctor,and a larger dataset ZW225 generated by Zhang et al.With the jackknife test,the overall accuracies of our method on the two datasets reach 94.90% and 88.44%,respectively.The promising results indicate that our method can be a complementary tool for the prediction of subcellular location.
机译:凋亡蛋白在生物体的发育和体内平衡中起着重要作用。准确预测凋亡蛋白的亚细胞位置有助于理解凋亡的机制及其生物学功能。然而,大多数现有的预测方法都是通过利用本文通过结合具有多种成分的双层支持向量机(SVM),提出了一种新颖的预测方法,该方法本质上是一个多分类器系统。包括氨基酸组成(AAC),二肽组成(DPC)和两亲性假氨基酸组成(Am-Pse-AAC)。为论证,我们的方法在两个凋亡蛋白数据集(涉及标准数据集)上评估了预测性能由Zhou和Doctor生成的ZD98,以及由Zhang等人生成的更大的数据集ZW225。通过折刀检验,我们的整体精度这两个数据集上的方法分别达到94.90%和88.44%。有希望的结果表明,我们的方法可以作为预测亚细胞位置的补充工具。

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