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首页> 外文期刊>Journal of Molecular Biology >Beyond synexpression relationships: local clustering of time-shifted and inverted gene expression profiles identifies new, biologically relevant interactions.
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Beyond synexpression relationships: local clustering of time-shifted and inverted gene expression profiles identifies new, biologically relevant interactions.

机译:超越共表达关系:时移和反向基因表达谱的局部聚类确定了新的,生物学上相关的相互作用。

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摘要

The complexity of biological systems provides for a great diversity of relationships between genes. The current analysis of whole-genome expression data focuses on relationships based on global correlation over a whole time-course, identifying clusters of genes whose expression levels simultaneously rise and fall. There are, of course, other potential relationships between genes, which are missed by such global clustering. These include activation, where one expects a time-delay between related expression profiles, and inhibition, where one expects an inverted relationship. Here, we propose a new method, which we call local clustering, for identifying these time-delayed and inverted relationships. It is related to conventional gene-expression clustering in a fashion analogous to the way local sequence alignment (the Smith-Waterman algorithm) is derived from global alignment (Needleman-Wunsch). An integral part of our method is the use of random score distributions to assess the statistical significance of each cluster. We applied our method to the yeast cell-cycle expression dataset and were able to detect a considerable number of additional biological relationships between genes, beyond those resulting from conventional correlation. We related these new relationships between genes to their similarity in function (as determined from the MIPS scheme) or their having known protein-protein interactions (as determined from the large-scale two-hybrid experiment); we found that genes strongly related by local clustering were considerably more likely than random to have a known interaction or a similar cellular role. This suggests that local clustering may be useful in functional annotation of uncharacterized genes. We examined many of the new relationships in detail. Some of them were already well-documented examples of inhibition or activation, which provide corroboration for our results. For instance, we found an inverted expression profile relationship between genes YME1 and YNT20, where the latter has been experimentally documented as a bypass suppressor of the former. We also found new relationships involving uncharacterized yeast genes and were able to suggest functions for many of them. In particular, we found a time-delayed expression relationship between J0544 (which has not yet been functionally characterized) and four genes associated with the mitochondria. This suggests that J0544 may be involved in the control or activation of mitochondrial genes. We have also looked at other, less extensive datasets than the yeast cell-cycle and found further interesting relationships. Our clustering program and a detailed website of clustering results is available at http://www.bioinfo.mbb.yale.edu/expression/cluster (or http://www.genecensus.org/expression/cluster). Copyright 2001 Academic Press.
机译:生物系统的复杂性为基因之间的关系提供了极大的多样性。当前对全基因组表达数据的分析着眼于整个时间过程中基于全局相关性的关系,确定表达水平同时上升和下降的基因簇。当然,基因之间还存在其他潜在的关系,但这种全局聚类会忽略这些关系。这些包括激活(其中人们期望相关表达谱之间有时间延迟)和抑制(其中人们期望反向关系)。在这里,我们提出了一种称为局部聚类的新方法,用于识别这些时间延迟和倒置的关系。它与常规基因表达聚类相关,其方式类似于从全局比对(Needleman-Wunsch)中获得局部序列比对(Smith-Waterman算法)的方式。我们方法不可或缺的一部分是使用随机分数分布来评估每个聚类的统计显着性。我们将我们的方法应用于酵母细胞周期表达数据集,并且能够检测到基因之间相当数量的其他生物学关系,而这些基因之间的关系不是常规关联所产生的。我们将基因之间的这些新关系与它们的功能相似性(由MIPS方案确定)或它们具有已知的蛋白质-蛋白质相互作用(如从大规模两杂交实验确定)相关;我们发现与局部聚类密切相关的基因比已知的相互作用或相似的细胞作用要大得多。这表明局部聚类可能在未表征基因的功能注释中有用。我们详细研究了许多新关系。其中一些已经被充分证明是抑制或激活的例子,为我们的结果提供了佐证。例如,我们发现了基因YME1和YNT20之间的反向表达谱关系,后者已被实验证明是前者的旁路抑制剂。我们还发现了涉及未表征的酵母基因的新关系,并能够为许多基因暗示功能。特别是,我们发现J0544(尚未进行功能表征)和与线粒体相关的四个基因之间存在时间延迟的表达关系。这表明J0544可能参与线粒体基因的控制或激活。我们还研究了其他比酵母细胞周期范围更广的数据集,并发现了进一步有趣的关系。我们的聚类程序和有关聚类结果的详细网站可在http://www.bioinfo.mbb.yale.edu/expression/cluster(或http://www.genecensus.org/expression/cluster)上找到。版权所有2001学术出版社。

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