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Efficiently finding genome-wide three-way gene interactions from transcript- and genotype-data

机译:从转录本和基因型数据有效地发现全基因组三向基因相互作用

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摘要

>Motivation: We address the issue of finding a three-way gene interaction, i.e. two interacting genes in expression under the genotypes of another gene, given a dataset in which expressions and genotypes are measured at once for each individual. This issue can be a general, switching mechanism in expression of two genes, being controlled by categories of another gene, and finding this type of interaction can be a key to elucidating complex biological systems. The most suitable method for this issue is likelihood ratio test using logistic regressions, which we call interaction test, but a serious problem of this test is computational intractability at a genome-wide level.>Results: We developed a fast method for this issue which improves the speed of interaction test by around 10 times for any size of datasets, keeping highly interacting genes with an accuracy of ∼85%. We applied our method to ∼3 × 108 three-way combinations generated from a dataset on human brain samples and detected three-way gene interactions with small P-values. To check the reliability of our results, we first conducted permutations by which we can show that the obtained P-values are significantly smaller than those obtained from permuted null examples. We then used GEO (Gene Expression Omnibus) to generate gene expression datasets with binary classes to confirm the detected three-way interactions by using these datasets and interaction tests. The result showed us some datasets with significantly small P-values, strongly supporting the reliability of the detected three-way interactions.>Availability: Software is available from >Contact: >Supplementary information: are available at Bioinformatics online.
机译:>动机:我们解决了发现三向基因相互作用的问题,即在另一个基因的基因型下表达中有两个相互作用的基因,给定了一个数据集,该数据集中每个个体的表达和基因型都可以一次测量。这个问题可能是两个基因表达的一般转换机制,受另一个基因的种类控制,而发现这种相互作用类型可能是阐明复杂生物系统的关键。解决此问题的最合适方法是使用逻辑回归的似然比检验,我们将其称为相互作用检验,但该检验的一个严重问题是在全基因组水平上的计算难处理性。>结果:此问题的快速方法,对于任何大小的数据集,其相互作用测试的速度均可提高约10倍,从而使高度相互作用的基因保持约85%的准确性。我们将我们的方法应用于从人脑样本数据集生成的〜3×10 8 三向组合,并检测到具有较小P值的三向基因相互作用。为了检查我们的结果的可靠性,我们首先进行了置换,我们可以证明所获得的P值明显小于从置换后的空样本获得的P值。然后,我们使用GEO(基因表达综合总线)生成具有二进制类的基因表达数据集,以通过使用这些数据集和交互作用测试来确认检测到的三向交互作用。结果向我们显示了一些P值非常小的数据集,强烈支持了检测到的三向交互作用的可靠性。>可用性:可从>联系人: >补充信息:可从在线生物信息学获得。

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