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Phenotypic overlap in the contribution of individual genes to CNV pathogenicity revealed by cross-species computational analysis of single-gene mutations in humans, mice and zebrafish

机译:人类,小鼠和斑马鱼单基因突变的跨物种计算分析揭示了单个基因对CNV致病性的表型重叠

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Numerous disease syndromes are associated with regions of copy number variation (CNV) in the human genome and, in most cases, the pathogenicity of the CNV is thought to be related to altered dosage of the genes contained within the affected segment. However, establishing the contribution of individual genes to the overall pathogenicity of CNV syndromes is difficult and often relies on the identification of potential candidates through manual searches of the literature and online resources. We describe here the development of a computational framework to comprehensively search phenotypic information from model organisms and single-gene human hereditary disorders, and thus speed the interpretation of the complex phenotypes of CNV disorders. There are currently more than 5000 human genes about which nothing is known phenotypically but for which detailed phenotypic information for the mouse and/or zebrafish orthologs is available. Here, we present an ontology-based approach to identify similarities between human disease manifestations and the mutational phenotypes in characterized model organism genes; this approach can therefore be used even in cases where there is little or no information about the function of the human genes. We applied this algorithm to detect candidate genes for 27 recurrent CNV disorders and identified 802 gene-phenotype associations, approximately half of which involved genes that were previously reported to be associated with individual phenotypic features and half of which were novel candidates. A total of 431 associations were made solely on the basis of model organism phenotype data. Additionally, we observed a striking, statistically significant tendency for individual disease phenotypes to be associated with multiple genes located within a single CNV region, a phenomenon that we denote as pheno-clustering. Many of the clusters also display statistically significant similarities in protein function or vicinity within the protein-protein interaction network. Our results provide a basis for understanding previously un-interpretable genotype-phenotype correlations in pathogenic CNVs and for mobilizing the large amount of model organism phenotype data to provide insights into human genetic disorders.
机译:许多疾病综合征与人类基因组中拷贝数变异(CNV)的区域有关,在大多数情况下,CNV的致病性被认为与受影响片段中基因剂量的改变有关。但是,要确定单个基因对CNV综合征的整体致病性的贡献是困难的,并且通常依赖于通过人工搜索文献和在线资源来识别潜在候选者。我们在这里描述了一种计算框架的发展,该计算框架可从模型生物和单基因人类遗传性疾病中全面搜索表型信息,从而加快对CNV疾病复杂表型的解释。目前有超过5000种人类基因,关于它们的表型一无所知,但可获得有关小鼠和/或斑马鱼直系同源物的详细表型信息。在这里,我们提出了一种基于本体的方法来识别人类疾病表现与特征性模型生物基因中的突变表型之间的相似性。因此,即使在关于人类基因功能的信息很少或根本没有的情况下,也可以使用这种方法。我们应用了该算法来检测27种复发性CNV疾病的候选基因,并确定了802个基因-表型关联,其中大约一半涉及以前据报道与个体表型特征相关的基因,其中一半是新的候选者。仅基于模型生物表型数据,总共建立了431个关联。此外,我们观察到单个疾病表型与位于单个CNV区域内的多个基因相关的惊人的,统计学上显着的趋势,这种现象我们称为表型簇。在蛋白质-蛋白质相互作用网络内,许多簇在蛋白质功能或附近也显示出统计学上的显着相似性。我们的结果为了解致病性CNV中以前无法解释的基因型-表型相关性以及动员大量模型生物表型数据以提供对人类遗传疾病的洞察力提供了基础。

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