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使用贝叶斯框架推断通路和网络。

Inferring pathways and networks with a Bayesian framework.

作者信息

Li Zheng, Chan Christina

机构信息

Department of Chemical Engineering and Material Science, Michigan State University, East Lansing, Michigan 48824, USA.

出版信息

FASEB J. 2004 Apr;18(6):746-8. doi: 10.1096/fj.03-0475fje. Epub 2004 Feb 6.

Abstract

Numerous mathematical methods have been adapted and developed to quantitatively reverse engineer biological networks, for example, signal transduction pathways, from experimental micro-array data. Compared with stochastic methods, such as Boolean networks, and deterministic methods, such as thermodynamic or differential equation-based models, Bayesian network analysis has the ability to assess, with scoring metrics, causal relations based on conditional probabilities and thus permit hypothesis testing. The goal of this paper is to illustrate the integration of several Bayesian based techniques into a unified Bayesian framework that can infer hepatocellular networks from metabolic data. Reverse engineering of pathways and networks provides a framework for predictive modeling and hypotheses testing to gain deeper insight into living organisms, disease mechanisms, and targeted therapeutics. Evaluating this methodology initially against the known biochemical network provides confidence in the networks that are uncovered from the experimental data using this framework. From the metabolic data we inferred the known sub-networks, such as the tricarboxylic acid (TCA) and urea cycles. In addition, we combined the relationships learned from the data and our current knowledge of the biological system to postulate several alternative metabolic sub-network models that can predict a particular cellular function, such as intracellular triglyceride accumulation.

摘要

人们已经采用并开发了许多数学方法,用于从实验微阵列数据中对生物网络(例如信号转导通路)进行定量逆向工程。与布尔网络等随机方法以及基于热力学或微分方程的模型等确定性方法相比,贝叶斯网络分析能够通过评分指标,基于条件概率评估因果关系,从而进行假设检验。本文的目标是说明如何将几种基于贝叶斯的技术集成到一个统一的贝叶斯框架中,该框架能够从代谢数据推断肝细胞网络。通路和网络的逆向工程为预测建模和假设检验提供了一个框架,以便更深入地了解生物体、疾病机制和靶向治疗。最初针对已知生化网络评估这种方法,可以增强对使用该框架从实验数据中发现的网络的信心。从代谢数据中,我们推断出了已知的子网络,如三羧酸(TCA)循环和尿素循环。此外,我们结合从数据中学到的关系以及我们目前对生物系统的了解,提出了几种可以预测特定细胞功能(如细胞内甘油三酯积累)的替代代谢子网络模型。

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