Dynamic Bayesian networks (DBNs) are considered as a promising model for inferring gene networks from time series microarray data. DBNs have overtaken Bayesian networks (BNs) as DBNs can construct cyclic regulations using time delay information. In this paper, a general framework for DBN modelling is outlined. Both discrete and continuous DBN models are constructed systematically and criteria for learning network structures are introduced from a Bayesian statistical viewpoint. This paper reviews the applications of DBNs over the past years. Real data applications for Saccharomyces cerevisiae time series gene expression data are also shown.
Thai Quang TungTaewoo RyuKwang H. LeeDoheon Lee
Yufei HuangJianyin WangJianqiu ZhangMaribel SanchezYufeng Wang
Frank DondelingerDirk HusmeierSophie Lèbre
Κωνσταντίνα ΚούρουGeorge RigasCostas PapaloukasMichalis MitsisDimitrios I. Fotiadis