4.7 Article

A new multiple regression approach for the construction of genetic regulatory networks

期刊

ARTIFICIAL INTELLIGENCE IN MEDICINE
卷 48, 期 2-3, 页码 153-160

出版社

ELSEVIER
DOI: 10.1016/j.artmed.2009.11.001

关键词

Gene regulatory network; Multiple regression; Power-law; Statistical tests

资金

  1. HKRGC [7017/07P]
  2. HKUCRGC
  3. HKU Strategy Research Theme fund on Computational Sciences
  4. Hung Hing Ying Physical Research Sciences Research
  5. National Natural Science Foundation of China [10971075, 10901042]
  6. National Natural Science Foundation of Guangdong [915102240-1000002]
  7. Doctoral Fund of Ministry of Education of China
  8. Shanghai Municipal Education Commission
  9. Shanghai Education Development Foundation

向作者/读者索取更多资源

Objective: Re-construction of a genetic regulatory network from a given time-series gene expression data is an important research topic in systems biology. One of the main difficulties in building a genetic regulatory network lies in the fact that practical data set has a huge number of genes vs. a small number of sampling time points. In this paper, we propose a new linear regression model that may overcome this difficulty for uncovering the regulatory relationship in a genetic network. Methods: The proposed multiple regression model makes use of the scale-free property of a real biological network. In particular, a filter is constructed by using this scale-free property and some appropriate statistical tests to remove redundant interactions among the genes. A model is then constructed by minimizing the gap between the observed and the predicted data. Results: Numerical examples based on yeast gene expression data are given to demonstrate that the proposed model fits the practical data very well. Some interesting properties of the genes and the underlying network are also observed. Conclusions: In conclusion, we propose a new multiple regression model based on the scale-free property of real biological network for genetic regulatory network inference. Numerical results using yeast cell cycle gene expression dataset show the effectiveness of our method. We expect that the proposed method can be widely used for genetic network inference using high-throughput gene expression data from various species for systems biology discovery. (C) 2009 Elsevier B.V. All rights reserved.

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