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Systematic gene function prediction from gene expression data by using a fuzzy nearest-cluster method

机译:通过使用模糊最近的聚类方法从基因表达数据中预测系统基因功能预测

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Background Quantitative simultaneous monitoring of the expression levels of thousands of genes under various experimental conditions is now possible using microarray experiments. However, there are still gaps toward whole-genome functional annotation of genes using the gene expression data. Results In this paper, we propose a novel technique called Fuzzy Nearest Clusters for genome-wide functional annotation of unclassified genes. The technique consists of two steps: an initial hierarchical clustering step to detect homogeneous co-expressed gene subgroups or clusters in each possibly heterogeneous functional class; followed by a classification step to predict the functional roles of the unclassified genes based on their corresponding similarities to the detected functional clusters. Conclusion Our experimental results with yeast gene expression data showed that the proposed method can accurately predict the genes' functions, even those with multiple functional roles, and the prediction performance is most independent of the underlying heterogeneity of the complex functional classes, as compared to the other conventional gene function prediction approaches.
机译:背景技术现在可以使用微阵列实验在各种实验条件下进行数千种基因的表达水平的定量监测。然而,使用基因表达数据仍然存在对基因的全基因组功能注释。结果本文提出了一种新颖的技术,称为模糊最近簇,用于未分类基因的基因组型功能注释。该技术由两个步骤组成:初始分层聚类步骤,用于检测各种可能的异质功能类中的均相共表达基因亚组或簇;然后是基于与检测到的功能簇的相应相似度来预测未分类基因的功能作用的分类步骤。结论我们与酵母基因表达数据的实验结果表明,该方法可以准确地预测基因的功能,即使是具有多种功能角色的基因功能,并且预测性能与复杂功能类的底层异质性最差于相比其他常规基因功能预测方法。

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