A Systematic Review of Deep Learning Methodologies Used in the Drug Discovery Process with Emphasis on In Vivo Validation

Author:

Koutroumpa Nikoletta-Maria123ORCID,Papavasileiou Konstantinos D.134ORCID,Papadiamantis Anastasios G.13ORCID,Melagraki Georgia5,Afantitis Antreas134ORCID

Affiliation:

1. Department of ChemoInformatics, NovaMechanics Ltd., Nicosia 1070, Cyprus

2. School of Chemical Engineering, National Technical University of Athens, 157 80 Athens, Greece

3. Division of Data Driven Innovation, Entelos Institute, Larnaca 6059, Cyprus

4. Department of ChemoInformatics, NovaMechanics MIKE., 185 45 Piraeus, Greece

5. Division of Physical Sciences & Applications, Hellenic Military Academy, 166 73 Vari, Greece

Abstract

The discovery and development of new drugs are extremely long and costly processes. Recent progress in artificial intelligence has made a positive impact on the drug development pipeline. Numerous challenges have been addressed with the growing exploitation of drug-related data and the advancement of deep learning technology. Several model frameworks have been proposed to enhance the performance of deep learning algorithms in molecular design. However, only a few have had an immediate impact on drug development since computational results may not be confirmed experimentally. This systematic review aims to summarize the different deep learning architectures used in the drug discovery process and are validated with further in vivo experiments. For each presented study, the proposed molecule or peptide that has been generated or identified by the deep learning model has been biologically evaluated in animal models. These state-of-the-art studies highlight that even if artificial intelligence in drug discovery is still in its infancy, it has great potential to accelerate the drug discovery cycle, reduce the required costs, and contribute to the integration of the 3R (Replacement, Reduction, Refinement) principles. Out of all the reviewed scientific articles, seven algorithms were identified: recurrent neural networks, specifically, long short-term memory (LSTM-RNNs), Autoencoders (AEs) and their Wasserstein Autoencoders (WAEs) and Variational Autoencoders (VAEs) variants; Convolutional Neural Networks (CNNs); Direct Message Passing Neural Networks (D-MPNNs); and Multitask Deep Neural Networks (MTDNNs). LSTM-RNNs were the most used architectures with molecules or peptide sequences as inputs.

Funder

European Union’s Horizon 2020 research and innovation program

H2020 Research and Innovation project

H2020 Marie Skłodowska-Curie-Action RISE project

Publisher

MDPI AG

Subject

Inorganic Chemistry,Organic Chemistry,Physical and Theoretical Chemistry,Computer Science Applications,Spectroscopy,Molecular Biology,General Medicine,Catalysis

Reference104 articles.

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