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Local coherence in genetic interaction patterns reveals prevalent functional versatility

机译:遗传相互作用模式中的局部一致性揭示了普遍的功能多样性

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MOTIVATION: Epistatic or genetic interactions, representing the effects of mutating one gene on the phenotypes caused by mutations in one or more distinct genes, can be very helpful for uncovering functional relationships between genes. Recently, the epistatic miniarray profiles (E-MAP) method has emerged as a powerful approach for identifying such interactions systematically. For E-MAP data analysis, hierarchical clustering is used to partition genes into groups on the basis of the similarity between their global interaction profiles, and the resulting descriptions assign each gene to only one group, thereby ignoring the multifunctional roles played by most genes. RESULTS: Here, we present the original local coherence detection (LCD) algorithm for identifying groups of functionally related genes from E-MAP data in a manner that allows individual genes to be assigned to more than one functional group. This enables investigation of the pleiotropic nature of gene function. The performance of our algorithm is illustrated by applying it to two E-MAP datasets and an E-MAP-like in silico dataset for the yeast Saccharomyces cerevisiae. In addition to recapitulating the majority of the functional modules and many protein complexes reported previously, our algorithm uncovers many recently documented and novel multifunctional relationships between genes and gene groups. Our algorithm hence represents a valuable tool for uncovering new roles for genes with annotated functions and for mapping groups of genes and proteins into pathways.
机译:动机:上位相互作用或遗传相互作用代表一种基因突变对一种或多种不同基因突变引起的表型的影响,对揭示基因之间的功能关系非常有帮助。最近,上位微型阵列图谱(E-MAP)方法已成为一种有系统地识别此类相互作用的有效方法。对于E-MAP数据分析,基于它们的全局交互图之间的相似性,使用层次聚类将基因分为几组,并且得到的描述将每个基因仅分配给一个组,从而忽略了大多数基因发挥的多功能作用。结果:在这里,我们提出了一种原始的局部相干检测(LCD)算法,该算法可从E-MAP数据中识别出功能相关基因的组,并允许将各个基因分配给一个以上的功能组。这使得能够研究基因功能的多效性。通过将其应用于啤酒酵母的两个E-MAP数据集和一个类似于E-MAP的计算机数据集,可以说明我们算法的性能。除了概括大多数功能模块和许多先前报道的蛋白质复合物外,我们的算法还发现了基因和基因组之间许多新近记录的新颖的多功能关系。因此,我们的算法代表了一种有价值的工具,可用于揭示具有注释功能的基因的新角色以及将基因和蛋白质组映射到途径中。

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