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Gene-Pair Representation and Incorporation of GO-based Semantic Similarity into Classification of Gene Expression Data

机译:基因对表示并将基于GO的语义相似度纳入基因表达数据的分类

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摘要

To emphasize gene interactions in the classification algorithms, a new representation is proposed, comprising gene-pairs and not single genes. Each pair is represented by L, difference in the corresponding expression values. The novel representation is evaluated on benchmark datasets and is shown to often increase classification accuracy for genetic datasets. Exploiting the gene-pair representation and the Gene Ontology (GO), the semantic similarity of gene pairs can be incorporated to pre-select pairs with a high similarity value. The GO-based feature selection approach is compared to the plain data driven selection and is shown to often increase classification accuracy.
机译:为了强调分类算法中的基因相互作用,提出了一种新的表示形式,包括基因对而不是单个基因。每对用L表示对应的表达式值之差。该新颖的表示法在基准数据集上进行了评估,并显示出通常可以提高遗传数据集的分类准确性。利用基因对表示法和基因本体论(GO),可以将基因对的语义相似度并入具有高相似度值的预选对。将基于GO的特征选择方法与纯数据驱动的选择方法进行比较,结果表明该方法通常可以提高分类精度。

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