Publication | Closed Access
Drug–drug interaction prediction with learnable size-adaptive molecular substructures
130
Citations
25
References
2021
Year
Artificial IntelligenceEngineeringMachine LearningNeural NetworkRecurrent Neural NetworkData ScienceDrug-drug InteractionsMachine Learning ModelMessage PassingStructure-based Drug DesignComputer ScienceDeep LearningNeural Architecture SearchPharmacologyTarget PredictionMolecular PropertyComputational BiologyRational Drug DesignDrug–drug Interaction PredictionGraph Neural NetworkMedicineDrug Discovery
Drug-drug interactions (DDIs) are interactions with adverse effects on the body, manifested when two or more incompatible drugs are taken together. They can be caused by the chemical compositions of the drugs involved. We introduce gated message passing neural network (GMPNN), a message passing neural network which learns chemical substructures with different sizes and shapes from the molecular graph representations of drugs for DDI prediction between a pair of drugs. In GMPNN, edges are considered as gates which control the flow of message passing, and therefore delimiting the substructures in a learnable way. The final DDI prediction between a drug pair is based on the interactions between pairs of their (learned) substructures, each pair weighted by a relevance score to the final DDI prediction output. Our proposed method GMPNN-CS (i.e. GMPNN + prediction module) is evaluated on two real-world datasets, with competitive results on one, and improved performance on the other compared with previous methods. Source code is freely available at https://github.com/kanz76/GMPNN-CS.
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