鉴定(生物学)
计算生物学
生物网络
系统生物学
生物
基因调控网络
交互网络
计算机科学
疾病
复杂疾病
基因
生物信息学
遗传学
基因表达
医学
病理
植物
作者
Sarvenaz Choobdar,Mehmet Eren Ahsen,Jake Crawford,Mattia Tomasoni,Tao Fang,David Lamparter,Junyuan Lin,Benjamin Hescott,Xiaozhe Hu,Johnathan Mercer,Ted Natoli,Rajiv Narayan,Aravind Subramanian,Jitao David Zhang,Gustavo Stolovitzky,Zoltán Kutalik,Kasper Lage,Donna K. Slonim,Julio Sáez-Rodríguez,Lenore Cowen,Sven Bergmann,Daniel Marbach
出处
期刊:Nature Methods
[Nature Portfolio]
日期:2019-08-30
卷期号:16 (9): 843-852
被引量:195
标识
DOI:10.1038/s41592-019-0509-5
摘要
Many bioinformatics methods have been proposed for reducing the complexity of large gene or protein networks into relevant subnetworks or modules. Yet, how such methods compare to each other in terms of their ability to identify disease-relevant modules in different types of network remains poorly understood. We launched the 'Disease Module Identification DREAM Challenge', an open competition to comprehensively assess module identification methods across diverse protein-protein interaction, signaling, gene co-expression, homology and cancer-gene networks. Predicted network modules were tested for association with complex traits and diseases using a unique collection of 180 genome-wide association studies. Our robust assessment of 75 module identification methods reveals top-performing algorithms, which recover complementary trait-associated modules. We find that most of these modules correspond to core disease-relevant pathways, which often comprise therapeutic targets. This community challenge establishes biologically interpretable benchmarks, tools and guidelines for molecular network analysis to study human disease biology.
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