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基于网络的疾病基因优先级排序方法的稳健性分析揭示了人类相互作用组中的冗余性以及疾病基因的功能多样性。

Analysis of the robustness of network-based disease-gene prioritization methods reveals redundancy in the human interactome and functional diversity of disease-genes.

作者信息

Guney Emre, Oliva Baldo

机构信息

Center for Complex Network Research, Northeastern University, Boston, Massachusetts, United States of America.

Structural Bioinformatics Group (GRIB), Departament de Ciències Experimentals i de la Salut, Universitat Pompeu Fabra, Barcelona, Catalonia, Spain.

出版信息

PLoS One. 2014 Apr 14;9(4):e94686. doi: 10.1371/journal.pone.0094686. eCollection 2014.

Abstract

Complex biological systems usually pose a trade-off between robustness and fragility where a small number of perturbations can substantially disrupt the system. Although biological systems are robust against changes in many external and internal conditions, even a single mutation can perturb the system substantially, giving rise to a pathophenotype. Recent advances in identifying and analyzing the sequential variations beneath human disorders help to comprehend a systemic view of the mechanisms underlying various disease phenotypes. Network-based disease-gene prioritization methods rank the relevance of genes in a disease under the hypothesis that genes whose proteins interact with each other tend to exhibit similar phenotypes. In this study, we have tested the robustness of several network-based disease-gene prioritization methods with respect to the perturbations of the system using various disease phenotypes from the Online Mendelian Inheritance in Man database. These perturbations have been introduced either in the protein-protein interaction network or in the set of known disease-gene associations. As the network-based disease-gene prioritization methods are based on the connectivity between known disease-gene associations, we have further used these methods to categorize the pathophenotypes with respect to the recoverability of hidden disease-genes. Our results have suggested that, in general, disease-genes are connected through multiple paths in the human interactome. Moreover, even when these paths are disturbed, network-based prioritization can reveal hidden disease-gene associations in some pathophenotypes such as breast cancer, cardiomyopathy, diabetes, leukemia, parkinson disease and obesity to a greater extend compared to the rest of the pathophenotypes tested in this study. Gene Ontology (GO) analysis highlighted the role of functional diversity for such diseases.

摘要

复杂的生物系统通常在稳健性和脆弱性之间存在权衡,少数扰动可能会严重破坏系统。尽管生物系统对许多外部和内部条件的变化具有稳健性,但即使单个突变也可能极大地扰动系统,从而产生病理表型。在识别和分析人类疾病背后的序列变异方面的最新进展有助于理解各种疾病表型背后机制的系统观点。基于网络的疾病基因优先级排序方法根据蛋白质相互作用的基因往往表现出相似表型这一假设,对疾病中基因的相关性进行排序。在本研究中,我们使用来自《人类孟德尔遗传在线》数据库的各种疾病表型,测试了几种基于网络的疾病基因优先级排序方法对系统扰动的稳健性。这些扰动要么引入到蛋白质 - 蛋白质相互作用网络中,要么引入到已知疾病 - 基因关联集中。由于基于网络的疾病基因优先级排序方法基于已知疾病 - 基因关联之间的连通性,我们进一步使用这些方法根据隐藏疾病基因的可恢复性对病理表型进行分类。我们的结果表明,一般来说,疾病基因在人类相互作用组中通过多条路径相连。此外,即使这些路径受到干扰,与本研究中测试的其他病理表型相比,基于网络的优先级排序在某些病理表型(如乳腺癌、心肌病、糖尿病、白血病、帕金森病和肥胖症)中能更大程度地揭示隐藏的疾病 - 基因关联。基因本体(GO)分析突出了功能多样性在这类疾病中的作用。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/20ae/3986215/6788af1e40d2/pone.0094686.g001.jpg

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