Predicting weighted unobserved nodes in a regulatory network using answer set programming.
Sophie Le BarsMathieu BolteauJérémie BourdonCarito GuziolowskiPublished in: BMC bioinformatics (2023)
MajS is a new method to test the consistency between a regulatory network and a dataset that provides computational predictions on unobserved network species. It provides fine-grained discrete predictions by outputting the weight of the predicted sign as a piece of additional information. MajS' output, thanks to its weight, could easily be integrated with metabolic network modelling.