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Functional classification of genes using semantic distance and fuzzy clustering approach: Evaluation with reference sets and overlap analysis

机译:使用语义距离和模糊聚类方法对基因进行功能分类:参考集评估和重叠分析

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Functional classification aims at grouping genes according to their molecular function or the biological process they participate in. Evaluating the validity of such unsupervised gene classification remains a challenge given the variety of distance measures and classification algorithms that can be used. We evaluate here functional classification of genes with the help of reference sets: KEGG (Kyoto Encyclopaedia of Genes and Genomes) pathways and Pfam clans. These sets represent ground truth for any distance based on GO (Gene Ontology) biological process and molecular function annotations respectively. Overlaps between clusters and reference sets are estimated by the F-score method. We test our previously described IntelliGO semantic distance with hierarchical and fuzzy C-means clustering and we compare results with the state-of-the-art DAVID (Database for Annotation Visualisation and Integrated Discovery) functional classification method. Finally, study of best matching clusters to reference sets leads us to propose a set-difference method for discovering missing information.
机译:功能分类的目的是根据基因的分子功能或参与的生物学过程对基因进行分组。鉴于可以使用的距离度量和分类算法多种多样,评估这种无监督基因分类的有效性仍然是一个挑战。我们在这里借助参考集评估基因的功能分类:KEGG(基因和基因组京都百科全书)途径和Pfam氏族。这些集合分别代表基于GO(基因本体论)生物过程和分子功能注释的任何距离的地面真相。群集和参考集之间的重叠是通过F评分方法估算的。我们使用分层和模糊C均值聚类测试了我们先前描述的IntelliGO语义距离,并将结果与​​最新的DAVID(注释可视化和集成发现数据库)功能分类方法进行了比较。最后,对参考集的最佳匹配聚类的研究使我们提出了一种用于发现缺失信息的集合差异方法。

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