Title :
Reconstruction of Large-Scale Gene Regulatory Networks Using Bayesian Model Averaging
Author :
Haseong Kim ; Gelenbe, E.
Author_Institution :
Dept. of Electr. & Electron. Eng., Imperial Coll. London, Imperial, CA, USA
Abstract :
Gene regulatory networks provide the systematic view of molecular interactions in a complex living system. However, constructing large-scale gene regulatory networks is one of the most challenging problems in systems biology. Also large burst sets of biological data require a proper integration technique for reliable gene regulatory network construction. Here we present a new reverse engineering approach based on Bayesian model averaging which attempts to combine all the appropriate models describing interactions among genes. This Bayesian approach with a prior based on the Gibbs distribution provides an efficient means to integrate multiple sources of biological data. In a simulation study with maximum of 2000 genes, our method shows better sensitivity than previous elastic-net and Gaussian graphical models, with a fixed specificity of 0.99. The study also shows that the proposed method outperforms the other standard methods for a DREAM dataset generated by nonlinear stochastic models. In brain tumor data analysis, three large-scale networks consisting of 4422 genes were built using the gene expression of non-tumor, low and high grade tumor mRNA expression samples, along with DNA-protein binding affinity information. We found that genes having a large variation of degree distribution among the three tumor networks are the ones that see most involved in regulatory and developmental processes, which possibly gives a novel insight concerning conventional differentially expressed gene analysis.
Keywords :
DNA; RNA; belief networks; brain; genetics; medical computing; molecular biophysics; molecular configurations; proteins; stochastic processes; tumours; Bayesian model averaging; DNA-protein binding affinity information; DREAM dataset; Gibbs distribution; biological data; brain tumor data analysis; gene analysis; gene expression; high grade tumor mRNA expression; large-scale gene regulatory network reconstruction; nonlinear stochastic model; reverse engineering approach; tumor network; Bayesian methods; Biological system modeling; Computational modeling; Gene expression; Mathematical model; Tumors; Bayesian model averaging; data integration; large-scale gene regulatory networks; Bayes Theorem; Brain; Brain Chemistry; Brain Neoplasms; Computational Biology; Databases, Genetic; Gene Expression Profiling; Gene Regulatory Networks; Humans; Linear Models; Models, Genetic; Stochastic Processes; Terminology as Topic;
Journal_Title :
NanoBioscience, IEEE Transactions on
DOI :
10.1109/TNB.2012.2214233