Litcius/Paper detail

Advancing Adverse Drug Reaction Prediction with Deep Chemical Language Model for Drug Safety Evaluation

Jinzhu Lin, Yujie He, Chengxiang Ru, Wulin Long, Menglong Li, Zhining Wen

2024International Journal of Molecular Sciences16 citationsDOIOpen Access PDF

Abstract

The accurate prediction of adverse drug reactions (ADRs) is essential for comprehensive drug safety evaluation. Pre-trained deep chemical language models have emerged as powerful tools capable of automatically learning molecular structural features from large-scale datasets, showing promising capabilities for the downstream prediction of molecular properties. However, the performance of pre-trained chemical language models in predicting ADRs, especially idiosyncratic ADRs induced by marketed drugs, remains largely unexplored. In this study, we propose MoLFormer-XL, a pre-trained model for encoding molecular features from canonical SMILES, in conjunction with a CNN-based model to predict drug-induced QT interval prolongation (DIQT), drug-induced teratogenicity (DIT), and drug-induced rhabdomyolysis (DIR). Our results demonstrate that the proposed model outperforms conventional models applied in previous studies for predicting DIQT, DIT, and DIR. Notably, an analysis of the learned linear attention maps highlights amines, alcohol, ethers, and aromatic halogen compounds as strongly associated with the three types of ADRs. These findings hold promise for enhancing drug discovery pipelines and reducing the drug attrition rate due to safety concerns.

Topics & Concepts

DrugComputer scienceDrug discoveryDrug reactionArtificial intelligenceMachine learningNatural language processingMedicinePharmacologyBioinformaticsBiologyComputational Drug Discovery MethodsPharmacovigilance and Adverse Drug ReactionsMachine Learning in Materials Science