Open Access
Open access
Machine Learning: Science and Technology, volume 2, issue 2, pages 25023

Graph networks for molecular design

Rocío Mercado 1
Tobias Rastemo 2, 3
Edvard Lindelöf 2, 3
Günter Klambauer 4
Ola Engkvist 1
Hongming Chen 5
Esben J. Bjerrum 1
1
 
Molecular AI, Discovery Sciences, BioPharmaceuticals R&D, AstraZeneca Gothenburg Sweden
3
 
Molecular AI, Discovery Sciences, BioPharmaceuticals R&D, AstraZeneca, Gothenburg, Sweden
5
 
Centre of Chemistry and Chemical Biology, Guangzhou Regenerative Medicine and Health, Guangdong Laboratory, Guangzhou, People’s Republic of China
Publication typeJournal Article
Publication date2021-03-02
scimago Q1
wos Q1
SJR1.506
CiteScore9.1
Impact factor6.3
ISSN26322153
Artificial Intelligence
Software
Human-Computer Interaction
Abstract

Deep learning methods applied to chemistry can be used to accelerate the discovery of new molecules. This work introduces GraphINVENT, a platform developed for graph-based molecular design using graph neural networks (GNNs). GraphINVENT uses a tiered deep neural network architecture to probabilistically generate new molecules a single bond at a time. All models implemented in GraphINVENT can quickly learn to build molecules resembling the training set molecules without any explicit programming of chemical rules. The models have been benchmarked using the MOSES distribution-based metrics, showing how GraphINVENT models compare well with state-of-the-art generative models. This work compares six different GNN-based generative models in GraphINVENT, and shows that ultimately the gated-graph neural network performs best against the metrics considered here.

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