首页> 外文会议>PAKDD(Pacific-Asia Conference on Advances in Knowledge Discovery and Data Mining) 2007 International Workshops; 20070522; Nanjing(CN) >Extracting Features from Gene Ontology for the Identification of Protein Subcellular Location by Semantic Similarity Measurement
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Extracting Features from Gene Ontology for the Identification of Protein Subcellular Location by Semantic Similarity Measurement

机译:从基因本体中提取特征以通过语义相似性测量识别蛋白质亚细胞位置

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摘要

It is necessary to find a computational method for prediction of protein subcellular location (SCL). Many researches have focused on the topic. Among them, methods incorporated Gene Ontology (GO) achieved higher prediction accuracy. However the former method of extracting features from GO have some disadvantages. In this paper, to increase the accuracy of the prediction, we present a novel method to extract features from GO by semantic similarity measurement, which is hopeful to overcome the disadvantages of former method. Testing on a public available dataset shows satisfied results. And this method can also be used in similar scenarios in other bioinformatics researches or data mining process.
机译:有必要找到一种预测蛋白质亚细胞定位(SCL)的计算方法。许多研究都集中在该主题上。其中,结合了基因本体论(GO)的方法获得了更高的预测准确性。但是,以前从GO中提取特征的方法有一些缺点。为了提高预测的准确性,本文提出了一种通过语义相似度度量从GO中提取特征的新方法,有望克服以前方法的缺点。对公共可用数据集的测试显示满意的结果。这种方法也可以在其他生物信息学研究或数据挖掘过程中的类似场景中使用。

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