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Based on Gene Ontology Semantic Similarity Protein Subcellular Location Prediction

机译:基于基因本体学语义相似性蛋白质亚细胞位置预测

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Protein subcellular location prediction, as an important step for the interpretation of protein function and identification of drugs targets, in recent years has been extensively studied. Recent studies have predicted both single-site and multi-site proteins rather than just single-site proteins. Computational methods based on Gene Ontology (GO) have certain advantages. However, we find that there are relationships between GO terms which are ignored by existing GO-based methods. This paper proposed a multi-label subcellular location predictor, namely GS-mPloc, that considers not only GO terms but also the inter-term relationships. This is achieved by using the semantic similarity between GO terms. Given a protein, a set of GO terms are retrieved and thereby a GO feature vector of the protein is produced by searching against the Gene Ontology database. Then the semantic similarity between GO terms is used to improve the original GO features and accordingly obtain a new feature vector. Besides, based on multi-label multi-class support vector machine classification algorithm (ML-SVM) was introduced to the classification of the new feature vector. Experimental results show that the proposed predictor significantly outperforms predictor based on original GO features as well as other state-of-the-art predictors.
机译:蛋白质亚细胞定位预测,作为解释蛋白质功能和鉴定药物目标的重要步骤,近年来已经广泛研究。最近的研究预测了单现场和多部位蛋白,而不是仅单位蛋白质。基于基因本体学(GO)的计算方法具有某些优点。但是,我们发现通过基于Go的方法忽略的GO术语之间存在关系。本文提出了一种多标签亚细胞位置预测器,即GS-MPLOC,不仅考虑了术语,还考虑了术语,而且考虑间间关系。这是通过使用GO条款之间的语义相似性来实现的。给定蛋白质,检索一组GO术语,从而通过针对基因本体数据库进行搜索来产生蛋白质的去特征载体。然后,GO术语之间的语义相似度用于改善原始GO特征,并因此获得新的特征向量。此外,基于多标签多级支持向量机分类算法(ML-SVM)被引入新特征向量的分类。实验结果表明,基于原始GO功能以及其他最先进的预测因子,所提出的预测器显着优于预测因子。

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