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Testing the predictive power of reverse screening to infer drug targets, with the help of machine learning

Chemistry

Testing the predictive power of reverse screening to infer drug targets, with the help of machine learning

A. Daina and V. Zoete

This research, conducted by Antoine Daina and Vincent Zoete, explores the groundbreaking potential of ligand-based reverse screening to predict macromolecular targets for small molecule drugs. With a machine-learning model achieving over 51% accuracy on external datasets, this study underscores the approach's promise in drug discovery.

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~3 min • Beginner • English
Abstract
Estimating protein targets of compounds based on the similarity principle—similar molecules are likely to show comparable bioactivity—is a long-standing strategy in drug research. Having previously quantified this principle, we present here a large-scale evaluation of its predictive power for inferring macromolecular targets by reverse screening an unprecedented vast external test set of more than 300,000 active small molecules against another bioactivity set of more than 500,000 compounds. We show that machine-learning can predict the correct targets, with the highest probability among 2069 proteins, for more than 51% of the external molecules. The strong enrichment thus obtained demonstrates its usefulness in supporting phenotypic screens, polypharmacology, or repurposing. Moreover, we quantified the impact of the bioactivity knowledge available for proteins in terms of number and diversity of actives. Finally, we advise that developers of such approaches follow an application-oriented benchmarking strategy and use large, high-quality, non-overlapping datasets as provided here.
Publisher
Communications Chemistry
Published On
May 09, 2024
Authors
Antoine Daina, Vincent Zoete
Tags
ligand-based reverse screening
machine-learning model
predictive power
drug discovery
macromolecular targets
ChEMBL
Reaxys dataset
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