DocumentCode :
185985
Title :
Inferring gene regulatory networks from perturbed gene expression data using a dynamic Bayesian network with a Markov Chain Monte Carlo algorithm
Author :
Low, Swee Thing ; Mohamad, Mohd Shahidan ; Omatu, Sigeru ; Lian En Chai ; Deris, Safaai ; Yoshioka, Michifumi
Author_Institution :
Artificial Intell. & Bioinf. Res. Group, Univ. Teknol., Skudai, Malaysia
fYear :
2014
fDate :
22-24 Oct. 2014
Firstpage :
179
Lastpage :
184
Abstract :
In understanding the biological role of genes and gene products, the analysis of gene regulatory functions is important. Computational methods for running gene regulatory networks inference have its own limitations. For instance, Bayesian Network and Boolean Network are unable to model the cyclic relationship and the interaction uncertainties, which are important elements in the biological networks. Hence, Dynamic Bayesian Network (DBN) was employed in this research to overcome the limitations. Even though DBN performs better than other methods in term of accuracy, its prediction accuracy is still considered low. Due to this, optimization algorithm is necessary to improve the accuracy performance. Therefore, this research is concerned on inferring gene regulatory networks using DBN with Markov Chain Monte Carlo (MCMC) algorithm for the improvement of prediction accuracy. The research results were compared with the results from previous works in terms of accuracy, sensitivity and specificity. Experimental results show that our proposed approach (DBN with MCMC) is better than existing work in term of prediction accuracy.
Keywords :
Markov processes; Monte Carlo methods; belief networks; bioinformatics; genetics; inference mechanisms; optimisation; DBN; MCMC algorithm; Markov chain Monte Carlo algorithm; accuracy factor; accuracy performance improvement; biological networks; computational methods; cyclic relationship modelling; dynamic Bayesian network; gene biological role; gene products; gene regulatory function analysis; gene regulatory network inference; interaction uncertainty modelling; optimization algorithm; perturbed gene expression data; sensitivity factor; specificity factor; Accuracy; Bayes methods; Benchmark testing; Computational modeling; Gene expression; Hidden Markov models; Markov processes; Bioinformatics; Dynamic Bayesian Network; Gene Expression Data; Gene Regulatory Network Inference; Markov Chain Monte Carlo; Perturbation;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Granular Computing (GrC), 2014 IEEE International Conference on
Conference_Location :
Noboribetsu
Type :
conf
DOI :
10.1109/GRC.2014.6982831
Filename :
6982831
Link To Document :
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