» Articles » PMID: 39027254

Off-target Profiling for Enhanced Drug Safety Assessment

Overview
Publisher Elsevier
Specialty Pharmacology
Date 2024 Jul 19
PMID 39027254
Authors
Affiliations
Soon will be listed here.
Abstract

Ensuring drug safety in the early stages of drug development is crucial to avoid costly failures in subsequent phases. However, the economic burden associated with detecting drug off-targets and potential side effects through safety screening and animal testing is substantial. Drug off-target interactions, along with the adverse drug reactions they induce, are significant factors affecting drug safety. To assess the liability of candidate drugs, we developed an artificial intelligence model for the precise prediction of compound off-target interactions, leveraging multi-task graph neural networks. The outcomes of off-target predictions can serve as representations for compounds, enabling the differentiation of drugs under various ATC codes and the classification of compound toxicity. Furthermore, the predicted off-target profiles are employed in adverse drug reaction (ADR) enrichment analysis, facilitating the inference of potential ADRs for a drug. Using the withdrawn drug Pergolide as an example, we elucidate the mechanisms underlying ADRs at the target level, contributing to the exploration of the potential clinical relevance of newly predicted off-target interactions. Overall, our work facilitates the early assessment of compound safety/toxicity based on off-target identification, deduces potential ADRs of drugs, and ultimately promotes the secure development of drugs.

Citing Articles

Identification and evaluation of bioactive compounds from as potential inhibitors of DENV-2 capsid protein: An integrative study utilizing network pharmacology, molecular docking, molecular dynamics simulations, and machine learning techniques.

Khan M, Zilani M, Hasan M, Hasan N Heliyon. 2025; 11(4):e42594.

PMID: 40051864 PMC: 11883367. DOI: 10.1016/j.heliyon.2025.e42594.


Proteome-Wide Identification and Comparison of Drug Pockets for Discovering New Drug Indications and Side Effects.

Zhang R, Chen Z, Li S, Lv H, Li J, Yang N Molecules. 2025; 30(2.

PMID: 39860130 PMC: 11767986. DOI: 10.3390/molecules30020260.


Development and validation of a clinical prediction model for osteonecrosis of the jaw in patients receiving zoledronic acid using FAERS and canadian databases.

Wei Z, Hong C, Tu C, Ge W, Hu Y, Lin S Front Pharmacol. 2024; 15:1456900.

PMID: 39380906 PMC: 11458403. DOI: 10.3389/fphar.2024.1456900.

References
1.
Wendell S, Fan H, Zhang C . G Protein-Coupled Receptors in Asthma Therapy: Pharmacology and Drug Action. Pharmacol Rev. 2019; 72(1):1-49. PMC: 6878000. DOI: 10.1124/pr.118.016899. View

2.
Clarke C E, Speller J M . Pergolide for levodopa-induced complications in Parkinson's disease. Cochrane Database Syst Rev. 2000; (2):CD000235. DOI: 10.1002/14651858.CD000235. View

3.
Imrie F, Bradley A, Deane C . Generating property-matched decoy molecules using deep learning. Bioinformatics. 2021; 37(15):2134-2141. PMC: 8352508. DOI: 10.1093/bioinformatics/btab080. View

4.
Wang Z, Clark N, Maayan A . Drug-induced adverse events prediction with the LINCS L1000 data. Bioinformatics. 2016; 32(15):2338-45. PMC: 4965635. DOI: 10.1093/bioinformatics/btw168. View

5.
Li Y, Fan Z, Rao J, Chen Z, Chu Q, Zheng M . An overview of recent advances and challenges in predicting compound-protein interaction (CPI). Med Rev (2021). 2024; 3(6):465-486. PMC: 10808869. DOI: 10.1515/mr-2023-0030. View