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Title: AI in drug discovery and its clinical relevance
Authors: Qureshi, R
Irfan, M
Gondal, TM
Khan, S 
Wu, J
Hadi, MU
Heymach, J
Le, X
Yan, H
Alam, T
Issue Date: Jul-2023
Source: Heliyon, July 2023, v. 9, no. 7, e17575
Abstract: The COVID-19 pandemic has emphasized the need for novel drug discovery process. However, the journey from conceptualizing a drug to its eventual implementation in clinical settings is a long, complex, and expensive process, with many potential points of failure. Over the past decade, a vast growth in medical information has coincided with advances in computational hardware (cloud computing, GPUs, and TPUs) and the rise of deep learning. Medical data generated from large molecular screening profiles, personal health or pathology records, and public health organizations could benefit from analysis by Artificial Intelligence (AI) approaches to speed up and prevent failures in the drug discovery pipeline. We present applications of AI at various stages of drug discovery pipelines, including the inherently computational approaches of de novo design and prediction of a drug's likely properties. Open-source databases and AI-based software tools that facilitate drug design are discussed along with their associated problems of molecule representation, data collection, complexity, labeling, and disparities among labels. How contemporary AI methods, such as graph neural networks, reinforcement learning, and generated models, along with structure-based methods, (i.e., molecular dynamics simulations and molecular docking) can contribute to drug discovery applications and analysis of drug responses is also explored. Finally, recent developments and investments in AI-based start-up companies for biotechnology, drug design and their current progress, hopes and promotions are discussed in this article.
Keywords: Artificial intelligence
Biotechnology
Drug discovery
Graph neural networks
Molecular dynamics simulation
Molecule representation
Reinforcement learning
Publisher: Elsevier Ltd
Journal: Heliyon 
EISSN: 2405-8440
DOI: 10.1016/j.heliyon.2023.e17575
Rights: © 2023 The Author(s). Published by Elsevier Ltd. This is an open access article under the CC BY license (http://creativecommons.org/licenses/by/4.0/).
The following publication Qureshi, R., Irfan, M., Gondal, T. M., Khan, S., Wu, J., Hadi, M. U., Heymach, J., Le, X., Yan, H., & Alam, T. (2023). AI in drug discovery and its clinical relevance. Heliyon, 9(7), e17575 is available at https://doi.org/10.1016/j.heliyon.2023.e17575.
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