Mining human phenome to investigate modularity of complex disorders.

Ranga C Gudivada, Yun Fu, Anil G Jegga, Xiaoyan A Qu, Eric K Neumann, Bruce J Aronow
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引用次数: 0

Abstract

A principal goal for biomedical research is to improve our understanding of factors that control clinical disease phenotypes. Among genetically-determined diseases, identical mutations may exhibit substantial phenotype variance by individual and background strain, suggesting both environmental and genetic mutant allele interactions. Moreover, different diseases can share phenotypic features extensively. To test the hypothesis that phenotypic similarities and differences among diseases and disease subvariants may represent differential activation of correlated feature "disease phenotype modules", we systematically parsed Online Mendelian Inheritance in Man (OMIM) and Syndrome DB databases using the UMLS to construct a disease - clinical phenotypic feature matrix suitable for various clustering algorithms. Using Cardiovascular Syndromes as a model, our results demonstrate a critical role for representing both phenotypic generalization and specificity relationships for the ability to retrieve non-trivial associations among disease entities such as shared protein domains and pathway and ontology functions of associated causal genes.

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挖掘人类现象,研究复杂疾病的模块化。
生物医学研究的一个主要目标是提高我们对控制临床疾病表型的因素的理解。在遗传决定的疾病中,相同的突变可能因个体和背景菌株而表现出显著的表型差异,这表明环境突变和基因突变等位基因相互作用。此外,不同的疾病可以广泛地共享表型特征。为了验证疾病和疾病亚变体之间的表型相似性和差异可能代表相关特征“疾病表型模块”的差异激活的假设,我们使用UMLS系统地分析了人类在线孟德尔遗传(OMIM)和综合征DB数据库,构建了适合各种聚类算法的疾病-临床表型特征矩阵。使用心血管综合征作为模型,我们的研究结果表明,在检索疾病实体(如共享的蛋白质结构域和相关因果基因的途径和本体功能)之间的非琐碎关联的能力中,表征表型泛化和特异性关系具有关键作用。
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