Bayesian module identification from multiple noisy networks.
Siamak Zamani DadanehXiaoning QianPublished in: EURASIP journal on bioinformatics & systems biology (2016)
Experiments on synthetic and protein-protein interaction data sets show that our proposed model enhances both the accuracy and resolution in detecting cohesive modules, and it is less vulnerable to noise in the observed data. In addition, it shows higher power in predicting missing edges compared to individual-network methods.