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High-order dynamic Bayesian Network learning with hidden common causes for causal gene regulatory network
2015
BMC Bioinformatics
Inferring gene regulatory network (GRN) has been an important topic in Bioinformatics. Many computational methods infer the GRN from high-throughput expression data. Due to the presence of time delays in the regulatory relationships, High-Order Dynamic Bayesian Network (HO-DBN) is a good model of GRN. However, previous GRN inference methods assume causal sufficiency, i.e. no unobserved common cause. This assumption is convenient but unrealistic, because it is possible that relevant factors have
doi:10.1186/s12859-015-0823-6
pmid:26608050
pmcid:PMC4659244
fatcat:ufdrgphdg5gshmhuz6dlyb33mi