结合先验生物知识和图形LASSO进行网络推理

Yiming Zuo, Guoqiang Yu, H. Ressom
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引用次数: 9

摘要

系统生物学旨在通过研究细胞的各个元素(如基因、蛋白质、代谢物等)如何相互作用来揭示复杂疾病的机制。基于网络的方法提供了一个直观的框架来建模、描述和理解这些交互。为了重建一个生物网络,人们可以查询公共数据库中已知的相互作用(知识驱动方法),或者建立一个数学模型来测量数据中的关联(数据驱动方法)。在本文中,我们提出了一种新的网络推理方法,将知识和数据驱动方法相结合。该方法将生物学先验知识(即BioGRID数据库中的蛋白质-蛋白质相互作用)与高斯图形模型(即图形LASSO算法)相结合,构建鲁棒的生物相关网络。然后利用统计分析(例如,逻辑回归)的结果,利用该网络提取病例组和对照组之间的差异子网络。我们将提出的方法应用于通过分析肝细胞癌(HCC)病例和肝硬化患者的血清获得的蛋白质组学数据集。不同的子网络导致枢纽蛋白和关键通路的识别,其与HCC研究的相关性已被文献调查证实。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Integrating prior biological knowledge and graphical LASSO for network inference
Systems biology aims at unravelling the mechanisms of complex diseases by investigating how individual elements of the cell (e.g., genes, proteins, metabolites, etc.) interact with each other. Network-based methods provide an intuitive framework to model, characterize, and understand these interactions. To reconstruct a biological network, one can either query public databases for known interactions (knowledge-driven approach) or build a mathematical model to measure the associations from data (data-driven approach). In this paper, we propose a new network inference method, integrating knowledge and data-driven approaches. The method integrates prior biological knowledge (i.e., protein-protein interactions from BioGRID database) and a Gaussian graphical model (i.e., graphical LASSO algorithm) to construct robust and biologically relevant network. The network is then utilized to extract differential sub-networks between case and control groups using the result from a statistical analysis (e.g., logistic regression). We applied the proposed method on a proteomic dataset acquired by analysis of sera from hepatocellular carcinoma (HCC) cases and patients with liver cirrhosis. The differential sub-networks led to the identification of hub proteins and key pathways, whose relevance to HCC study has been confirmed by literature survey.
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