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A graph-theoretic modeling on GO space for biological interpretation of gene clusters

机译:GO空间的图论建模,用于基因簇的生物学解释

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摘要

Motivation: With the advent of DNA microarray technologies, the parallel quantification of genome-wide transcriptions has been a great opportunity to systematically understand the complicated biological phenomena. Amidst the enthusiastic investigations into the intricate gene expression data, clustering methods have been the useful tools to uncover the meaningful patterns hidden in those data. The mathematical techniques, however, entirely based on the numerical expression data, do not show biologically relevant information on the clustering results. Results: We present a novel methodology for biological interpretation of gene clusters. Our graph theoretic algorithm extracts common biological attributes of the genes within a cluster or a group of interest through the modified structure of gene ontology (GO) called GO tree. After genes are annotated with GO terms, the hierarchical nature of GO terms is used to find the representative biological meanings of the gene clusters. In addition, the biological significance of gene clusters can be assessed quantitatively by defining a distance function on the GO tree. Our approach has a complementary meaning to many statistical clustering techniques; we can see clustering problems from a different viewpoint by use of biological ontology. We applied this algorithm to the well-known data set and successfully obtained the biological features of the gene clusters with the quantitative biological assessment of clustering quality through GO Biological Process.
机译:动机:随着DNA芯片技术的出现,全基因组转录的并行定量化已成为系统地了解复杂的生物学现象的绝佳机会。在对复杂的基因表达数据进行的热情研究中,聚类方法一直是揭示隐藏在这些数据中的有意义模式的有用工具。但是,完全基于数值表达式数据的数学技术并未显示出与聚类结果相关的生物学信息。结果:我们提出了一种生物解释基因簇的新颖方法。我们的图论算法通过称为GO树的基因本体(GO)的修改结构,提取了一个簇或一组感兴趣的基因的共同生物学属性。在用GO术语注释基因后,使用GO术语的层次性质来查找基因簇的代表性生物学含义。此外,可以通过在GO树上定义距离函数来定量评估基因簇的生物学意义。我们的方法对许多统计聚类技术具有补充意义。我们可以利用生物本体论从不同的角度看到聚类问题。我们将该算法应用于著名的数据集,并通过GO Biology Process对聚类质量进行了定量生物学评估,从而成功获得了基因簇的生物学特征。

著录项

  • 来源
    《Bioinformatics》 |2004年第3期|p. 381-388|共8页
  • 作者单位

    Bioinformatics Unit, ISTECH Inc., No 704, Hyundai Town Vill 848-1, Janghang-dong, Ilsan-gu, Goyang city, Gyunggido, 411-380, Republic of Korea;

    Bioinformatics Unit, ISTECH Inc., No 704, Hyundai Town Vill 848-1, Janghang-dong, Ilsan-gu, Goyang city, Gyunggido, 411-380, Republic of Korea;

    Bioinformatics Unit, ISTECH Inc., No 704, Hyundai Town Vill 848-1, Janghang-dong, Ilsan-gu, Goyang city, Gyunggido, 411-380, Republic of Korea;

  • 收录信息 美国《科学引文索引》(SCI);美国《化学文摘》(CA);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 生物科学;生物工程学(生物技术);
  • 关键词

  • 入库时间 2022-08-17 23:50:21

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