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3 months ago

Tri-graph Information Propagation for Polypharmacy Side Effect Prediction

Hao Xu Shengqi Sang Haiping Lu

Tri-graph Information Propagation for Polypharmacy Side Effect Prediction

Abstract

The use of drug combinations often leads to polypharmacy side effects (POSE). A recent method formulates POSE prediction as a link prediction problem on a graph of drugs and proteins, and solves it with Graph Convolutional Networks (GCNs). However, due to the complex relationships in POSE, this method has high computational cost and memory demand. This paper proposes a flexible Tri-graph Information Propagation (TIP) model that operates on three subgraphs to learn representations progressively by propagation from protein-protein graph to drug-drug graph via protein-drug graph. Experiments show that TIP improves accuracy by 7%+, time efficiency by 83$\times$, and space efficiency by 3$\times$.

Code Repositories

NYXFLOWER/TIP
Official
pytorch

Benchmarks

BenchmarkMethodologyMetrics
link-prediction-on-decagonTIP
AUPRC: 0.890
AUROC: 0.914
mAP@50: 0.890
pose-prediction-on-sun-memTIP-sum PPM-GGM-DDM-DF
AP50: 89
AUPRC: 89
AUROC: 0.914

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Tri-graph Information Propagation for Polypharmacy Side Effect Prediction | Papers | HyperAI