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Predicting Gene Ontology Biological Process From Temporal Gene Expression Patterns

机译:从时间基因表达模式预测基因本体生物学过程

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摘要

The aim of the present study was to generate hypotheses on the involvement of uncharacterized genes in biological processes. To this end, supervised learning was used to analyze microarray-derived time-series gene expression data. Our method was objectively evaluated on known genes using cross-validation and provided high-precision Gene Ontology biological process classifications for 211 of the 213 uncharacterized genes in the data set used. In addition, new roles in biological process were hypothesized for known genes. Our method uses biological knowledge expressed by Gene Ontology and generates a rule model associating this knowledge with minimal characteristic features of temporal gene expression profiles. This model allows learning and classification of multiple biological process roles for each gene and can predict participation of genes in a biological process even though the genes of this class exhibit a wide variety of gene expression profiles including inverse coregulation. A considerable number of the hypothesized new roles for known genes were confirmed by literature search. In addition, many biological process roles hypothesized for uncharacterized genes were found to agree with assumptions based on homology information. To our knowledge, a gene classifier of similar scope and functionality has not been reported earlier.[Supplemental material is available online at . All annotations, reclassifications of known genes, and classifications of uncharacterized genes are available online at .]
机译:本研究的目的是就生物过程中未表征基因的参与产生假说。为此,监督学习用于分析微阵列衍生的时间序列基因表达数据。我们的方法使用交叉验证对已知基因进行客观评估,并为所用数据集中的213个未表征基因中的211个提供了高精度的Ontology生物过程分类。另外,假设已知基因在生物过程中的新作用。我们的方法使用了由基因本体论表达的生物学知识,并生成了一个规则模型,将这种知识与时间基因表达谱的最小特征相关联。该模型允许学习和分类每个基因的多个生物过程角色,并且可以预测基因在生物过程中的参与,即使该类别的基因表现出各种各样的基因表达谱,包括反向调控。文献搜索证实了许多已知基因的假想新角色。此外,发现许多针对未表征基因的生物过程作用与基于同源性信息的假设相符。据我们所知,此前尚未报道具有相似范围和功能的基因分类器。[补充材料可在上在线获得。可以在线找到所有注释,已知基因的重新分类以及未表征的基因的分类。

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