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基因表达网络模块验证方法的定量评估。

Quantitative assessment of gene expression network module-validation methods.

作者信息

Li Bing, Zhang Yingying, Yu Yanan, Wang Pengqian, Wang Yongcheng, Wang Zhong, Wang Yongyan

机构信息

Institute of Basic Research in Clinical Medicine, China Academy of Chinese Medical Sciences, 16 Nanxiaojie, Dongzhimennei, Beijing 100700, China.

Institute of Information on Traditional Chinese Medicine, China Academy of Chinese Medical Sciences, 16 Nanxiaojie, Dongzhimennei, Beijing 100700, China.

出版信息

Sci Rep. 2015 Oct 16;5:15258. doi: 10.1038/srep15258.

Abstract

Validation of pluripotent modules in diverse networks holds enormous potential for systems biology and network pharmacology. An arising challenge is how to assess the accuracy of discovering all potential modules from multi-omic networks and validating their architectural characteristics based on innovative computational methods beyond function enrichment and biological validation. To display the framework progress in this domain, we systematically divided the existing Computational Validation Approaches based on Modular Architecture (CVAMA) into topology-based approaches (TBA) and statistics-based approaches (SBA). We compared the available module validation methods based on 11 gene expression datasets, and partially consistent results in the form of homogeneous models were obtained with each individual approach, whereas discrepant contradictory results were found between TBA and SBA. The TBA of the Zsummary value had a higher Validation Success Ratio (VSR) (51%) and a higher Fluctuation Ratio (FR) (80.92%), whereas the SBA of the approximately unbiased (AU) p-value had a lower VSR (12.3%) and a lower FR (45.84%). The Gray area simulated study revealed a consistent result for these two models and indicated a lower Variation Ratio (VR) (8.10%) of TBA at 6 simulated levels. Despite facing many novel challenges and evidence limitations, CVAMA may offer novel insights into modular networks.

摘要

在不同网络中验证多能模块对系统生物学和网络药理学具有巨大潜力。一个新出现的挑战是如何评估从多组学网络中发现所有潜在模块的准确性,并基于超越功能富集和生物学验证的创新计算方法来验证它们的结构特征。为了展示该领域的框架进展,我们将现有的基于模块化架构的计算验证方法(CVAMA)系统地分为基于拓扑的方法(TBA)和基于统计的方法(SBA)。我们基于11个基因表达数据集比较了可用的模块验证方法,每种单独的方法都以同质模型的形式获得了部分一致的结果,而在TBA和SBA之间发现了不一致的矛盾结果。Zsummary值的TBA具有较高的验证成功率(VSR)(51%)和较高的波动比率(FR)(80.92%),而近似无偏(AU)p值的SBA具有较低的VSR(12.3%)和较低的FR(45.84%)。灰色区域模拟研究揭示了这两个模型的一致结果,并表明TBA在6个模拟水平下具有较低的变异比率(VR)(8.10%)。尽管面临许多新挑战和证据限制,但CVAMA可能为模块化网络提供新的见解。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/4b92/4607977/65cb325265f4/srep15258-f1.jpg

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