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首页> 外文期刊>IEEE/ACM transactions on computational biology and bioinformatics >Constructing and analyzing a large-scale gene-to-gene regulatory network Lasso-constrained inference and biological validation
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Constructing and analyzing a large-scale gene-to-gene regulatory network Lasso-constrained inference and biological validation

机译:构建和分析大规模基因对基因调控网络套索约束的推理和生物学验证

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摘要

We construct a gene-to-gene regulatory network from time-series data of expression levels for the whole genome of the yeast Saccharomyces cerevisae, in a case where the number of measurements is much smaller than the number of genes in the network. This network is analyzed with respect to present biological knowledge of all genes (according to the Gene Ontology database), and we find some of its large-scale properties to be in accordance with known facts about the organism. The linear modeling employed here has been explored several times, but due to lack of any validation beyond investigating individual genes, it has been seriously questioned with respect to its applicability to biological systems. Our results show the adequacy of the approach and make further investigations of the model meaningful.
机译:在测量次数远小于网络中的基因数目的情况下,我们从酿酒酵母全基因组表达水平的时间序列数据构建了一个基因对基因的调控网络。根据所有基因的当前生物学知识(根据基因本体数据库)对这个网络进行了分析,我们发现它的一些大规模特性与有关生物的已知事实相符。在此使用的线性建模已被探索了几次,但是由于除了研究单个基因之外缺乏任何验证,因此对其在生物系统中的适用性提出了严重质疑。我们的结果表明了该方法的充分性,并使对该模型的进一步研究有意义。

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