Artificial intelligence for natural product drug discovery
Developments in computational omics technologies have provided new means to access the hidden diversity of natural products, unearthing new potential for drug discovery. In parallel, artificial intelligence approaches such as machine learning have led to exciting developments in the computational drug design field, facilitating biological activity prediction and de novo drug design for molecular targets of interest. Here, we describe current and future synergies between these developments to effectively identify drug candidates from the plethora of molecules produced by nature. We also discuss how to address key challenges in realizing the potential of these synergies, such as the need for high-quality datasets to train deep learning algorithms and appropriate strategies for algorithm validation.|Advances in computational omics technologies are enabling access to the hidden diversity of natural products, and artificial intelligence approaches are facilitating key steps in harnessing the therapeutic potential of such compounds, including biological activity prediction. This article discusses synergies between these fields to effectively identify drug candidates from the plethora of molecules produced by nature, and how to address the challenges in realizing the potential of these synergies.
WOS:001093023100001
2023-09-11
REVIEWED
Funder | Grant Number |
All authors thank the Lorentz Center and Leiden University for funding the Lorentz Workshop 'Artificial Intelligence for Natural Product Drug Discovery' that laid the foundation for this Review. M.W.M. was supported by funds from the Duchossois Family Inst | |
Leiden University | |
Duchossois Family Institute at the University of Chicago | BB/R022054/1 |
UK Research and Innovation Biotechnology and Biological Sciences Research Council | 2047235 |
NSF CAREER award | ASDI.2017.030 |
ASDI eScience grant from the Netherlands eScience Center | 725523 |
European Research Council | NNF20CC0035580 |
Novo Nordisk Foundation | |
LOEWE Center for Translational Biodiversity Genomics | |
Chemical Industry Germany | 239748522 |
Deutsche Forschungsgemeinschaft (DFG, German Research Foundation) | 15-CE29-0001 |
National French Agency (ANR) | |
National Library of Medicine training grant | NLM 5T15LM007359 |
Computation and Informatics in Biology and Medicine Training Program | |
Klaus Faber Foundation | NRF 2018R1A5A2023127 |
National Research Foundation of Korea (NRF) - Korean government (MSIT) | 2022R1F1A107462311 |
NRF | G061821N |
Research Foundation - Flanders | DBI-1845890 |
US National Science Foundation | 2021-FLG-3819 |
NC Biotech | NIH NIDDK DK034987 |
UNC CGIBD Pilot Award | |
Duke Cancer Institute | NIH NCI CA014236 |
Duke Microbiome Center Pilot Award | EEC-2133504 |
Engineering Research Center for Precision Microbiome Engineering (NSF) | |
Duke Science and Technology Initiative | 180544 |
NCCR Catalysis | |
National Centre of Competence in Research - Swiss National Science Foundation | 2124-390838134 |
Germany's Excellence Strategy - EXC | |
KAIST Key Research Institute (Interdisciplinary Research Group) Project | U41-AT008718 |
US NIH | |
Eawag discretionary funding | DECIPHER-948770 |
ERC | |