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Constructing human phenome-interactome networks for the prioritization of candidate genes

机译:构建人类表象相互作用网络,对候选基因进行优先排序

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Although remarkable success has been achieved by traditional gene-mapping methods in locating genes associated with inherited human diseases, the resulting chromosomal regions are usually large, containing tens or even hundreds of genes. Therefore, it is indispensable to develop computational methods for the identification of genes that are truly responsible for diseases from candidate genes. To tackle this problem, several methods have been proposed to use both a phenotype similarity profile (phenome) and a proteinprotein interaction network (interactome) for the prioritization of candidate genes. The use of the phenome broadens the scope of applications of these methods for identifying disease-associated genes, and the use of the interactome provides a reliable measure of functional similarities between genes. These two data sources, together with carefully designed computational models, result in computational methods with superior performance in the prioritization of candidate genes for a given query disease of interest. In this paper, we review recent achievements of such computational methods that rely on the integration of the phenome and the interactome to prioritize candidate genes. We also summarize how similar methods can be readily used in identifying microRNAs that are potentially involved in complex diseases and discovering drugs that may target on disease-associated proteins. Finally, we discuss future prospects and challenges for the integration of multiple genomic data sources to systematically discover genes that underlie human diseases.
机译:尽管通过传统的基因映射方法已经成功地找到了与人类遗传病有关的基因,但所得的染色体区域通常很大,包含数十个甚至数百个基因。因此,开发用于从候选基因中鉴定真正导致疾病的基因的识别的计算方法是必不可少的。为了解决这个问题,已经提出了几种方法来使用表型相似性谱(phenome)和蛋白-蛋白质相互作用网络(interactome)来优先考虑候选基因。现象组的使用拓宽了这些方法用于鉴定疾病相关基因的应用范围,而相互作用组的使用提供了基因之间功能相似性的可靠度量。这两个数据源,再加上精心设计的计算模型,使得计算方法在针对感兴趣的给定查询疾病的候选基因进行优先排序方面表现出优异的性能。在本文中,我们回顾了这种计算方法的最新成果,这些方法依靠现象组和交互组的整合来确定候选基因的优先级。我们还总结了如何相似的方法可以很容易地用于鉴定可能与复杂疾病有关的microRNA,并发现可能针对疾病相关蛋白的药物。最后,我们讨论了整合多个基因组数据源以系统地发现人类疾病基础基因的未来前景和挑战。

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