Toward structure-multiple activity relationships (SMARts) using computational approaches: A polypharmacological perspective
- PMID: 38810721
 - DOI: 10.1016/j.drudis.2024.104046
 
Toward structure-multiple activity relationships (SMARts) using computational approaches: A polypharmacological perspective
Abstract
In the current era of biological big data, which are rapidly populating the biological chemical space, in silico polypharmacology drug design approaches help to decode structure-multiple activity relationships (SMARts). Current computational methods can predict or categorize multiple properties simultaneously, which aids the generation, identification, curation, prioritization, optimization, and repurposing of molecules. Computational methods have generated opportunities and challenges in medicinal chemistry, pharmacology, food chemistry, toxicology, bioinformatics, and chemoinformatics. It is anticipated that computer-guided SMARts could contribute to the full automatization of drug design and drug repurposing campaigns, facilitating the prediction of new biological targets, side and off-target effects, and drug-drug interactions.
Keywords: bioinformatics; chemoinformatics; computer-aided drug design; multiobjective; multitarget.
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