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Generative Deep Learning for Targeted Compound Design

Authors :
Miguel Rocha
Tiago J. C. Sousa
Vitor Pereira
João Correia
Universidade do Minho
Source :
Repositório Científico de Acesso Aberto de Portugal, Repositório Científico de Acesso Aberto de Portugal (RCAAP), instacron:RCAAP
Publication Year :
2021
Publisher :
American Chemical Society (ACS), 2021.

Abstract

In the past few years, de novo molecular design has increasingly been using generative models from the emergent field of Deep Learning, proposing novel compounds that are likely to possess desired properties or activities. De novo molecular design finds applications in different fields ranging from drug discovery and materials sciences to biotechnology. A panoply of deep generative models, including architectures as Recurrent Neural Networks, Autoencoders, and Generative Adversarial Networks, can be trained on existing data sets and provide for the generation of novel compounds. Typically, the new compounds follow the same underlying statistical distributions of properties exhibited on the training data set Additionally, different optimization strategies, including transfer learning, Bayesian optimization, reinforcement learning, and conditional generation, can direct the generation process toward desired aims, regarding their biological activities, synthesis processes or chemical features. Given the recent emergence of these technologies and their relevance, this work presents a systematic and critical review on deep generative models and related optimization methods for targeted compound design, and their applications.<br />This project has received funding from the European Union’s Horizon 2020 research and innovation programme (Grant Agreement Number 814408).<br />info:eu-repo/semantics/publishedVersion

Details

ISSN :
1549960X and 15499596
Volume :
61
Database :
OpenAIRE
Journal :
Journal of Chemical Information and Modeling
Accession number :
edsair.doi.dedup.....184485d2881edc10d54b5982f87d2d5a
Full Text :
https://doi.org/10.1021/acs.jcim.0c01496