Using relative importance methods to model high-throughput gene perturbation screens.

Ying Jin, Naren Ramakrishnan, L. Heath, R. Helm
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引用次数: 5

Abstract

With the advent of high-throughput gene perturbation screens (e.g., RNAi assays, genome-wide deletion mutants), modeling the complex relationship between genes and phenotypes has become a paramount problem. One broad class of methods uses 'guilt by association' methods to impute phenotypes to genes based on the interactions between the given gene and other genes with known phenotypes. But these methods are inadequate for genes that have no cataloged interactions but which nevertheless are known to result in important phenotypes. In this paper, we present an approach to first model relationships between phenotypes using the notion of 'relative importance' and subsequently use these derived relationships to make phenotype predictions. Besides improved accuracy on S. cerevisiae deletion mutants and C. elegans knock-down datasets, we show how our approach sheds insight into relations between phenotypes.
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使用相对重要性方法模拟高通量基因扰动筛选。
随着高通量基因扰动筛选(例如,RNAi测定,全基因组缺失突变)的出现,基因和表型之间复杂关系的建模已成为一个首要问题。一大类方法使用“关联罪恶感”方法,根据给定基因与其他已知表型基因之间的相互作用,将表型归咎于基因。但是这些方法对于那些没有被编目的相互作用但却已知会导致重要表型的基因来说是不够的。在本文中,我们提出了一种方法,首先使用“相对重要性”的概念对表型之间的关系进行建模,然后使用这些衍生关系进行表型预测。除了提高酿酒葡萄球菌缺失突变体和秀丽隐杆线虫敲除数据集的准确性外,我们还展示了我们的方法如何揭示表型之间的关系。
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