A Bayesian Networks Approach for Predicting Protein-Protein Interactions from Genomic Data
Ronald Jansen,1* Haiyuan Yu,1 Dov Greenbaum,1 Yuval Kluger,1 Nevan J. Krogan,4 Sambath Chung,1,2 Andrew Emili,4 Michael Snyder,2 Jack F. Greenblatt,4 Mark Gerstein1,3
We have developed an approach using Bayesian networks to predict protein-protein interactions genome-wide in yeast. Our method naturally weights and combines into reliable predictions genomic features only weakly associated with interaction (e.g., messenger RNAcoexpression, coessentiality, and colocalization). In addition to de novo predictions, it can integrate often noisy, experimental interaction data sets. We observe that at given levels of sensitivity, our predictions are more accurate than the existing high-throughput experimental data sets. We validate our predictions with TAP (tandem affinity purification) tagging experiments. Our analysis, which gives a comprehensive view of yeast interactions, is available at genecensus.org/intint.
Read more:
Full Text of this Article
PDF Version of this Article