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Structure-based drug discovery with deep learning

26 December 2022
Rıza Özçelik
D. V. Tilborg
José Jiménez-Luna
F. Grisoni
    AI4CE
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Abstract

Artificial intelligence (AI) in the form of deep learning bears promise for drug discovery and chemical biology, e.g.\textit{e.g.}e.g., to predict protein structure and molecular bioactivity, plan organic synthesis, and design molecules de novo\textit{de novo}de novo. While most of the deep learning efforts in drug discovery have focused on ligand-based approaches, structure-based drug discovery has the potential to tackle unsolved challenges, such as affinity prediction for unexplored protein targets, binding-mechanism elucidation, and the rationalization of related chemical kinetic properties. Advances in deep learning methodologies and the availability of accurate predictions for protein tertiary structure advocate for a renaissance\textit{renaissance}renaissance in structure-based approaches for drug discovery guided by AI. This review summarizes the most prominent algorithmic concepts in structure-based deep learning for drug discovery, and forecasts opportunities, applications, and challenges ahead.

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