The polypharmacy side effect prediction problem considers cases in which two
drugs taken individually do not result in a particular side effect; however,
when the two drugs are taken in combination, the side effect manifests. In this
work, we demonstrate that multi-relational knowledge graph completion achieves
state-of-the-art results on the polypharmacy side effect prediction problem.
Empirical results show that our approach is particularly effective when the
protein targets of the drugs are well-characterized. In contrast to prior work,
our approach provides more interpretable predictions and hypotheses for wet lab
validation.Comment: 13th International Conference on Data Integration in the Life
Sciences (DILS2018