利用不同特征组合方法研究多位点蛋白亚细胞定位预测

Qing Zhao, Dong Wang, Yuehui Chen, Xumi Qu
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引用次数: 0

摘要

多位点蛋白亚细胞定位预测是近年来生物信息领域研究的热点。长期以来,许多研究者对多位点蛋白亚细胞定位进行了研究。然而,准确性仍有待提高。作为研究人员之一,我应该探索新的方法来提高预测的准确性。本文选用Gpos-mPLOC数据集。此外,结合伪氨基酸组成、位置向量和熵密度三种有效的特征提取方法任意提取蛋白质特征。然后,将这些特征放入多标签k近邻分类器中进行蛋白质亚细胞定位预测。实验证明了不同的特征组合方法可以产生不同的预测精度,可以选择最佳的特征组合方法来预测多位点蛋白质亚细胞定位。
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Using Different Feature Combination Methods to Study Multisite Protein Sub-cellular Localization Prediction
Multisite protein sub-cellular localization prediction has become the hot topic relating biological information in recent years. Quite a lot of researchers have researched multisite protein sub-cellular localization for a long time. However, the accuracy still needs to be improved. As one of the researchers, I should explore new methods to improve the prediction accuracy. I choose Gpos-mPLOC data set in this paper. In addition, combining the pseudo amino acid composition, position vector and entropy density three effective feature extraction methods arbitrarily to extract protein features. Then, putting these features into multi-label k nearest neighbor classifier to predict protein sub-cellular location. The experiment proves that different feature combination methods can result in different prediction accuracy through the Jack-knife test and I can choose the best feature combination method to predict multisite protein sub-cellular location.
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