Literature DB >> 33501123

Advances and Perspectives in Applying Deep Learning for Drug Design and Discovery.

Celio F Lipinski1, Vinicius G Maltarollo2, Patricia R Oliveira3, Alberico B F da Silva1, Kathia Maria Honorio3,4.   

Abstract

Discovering (or planning) a new drug candidate involves many parameters, which makes this process slow, costly, and leading to failures at the end in some cases. In the last decades, we have witnessed a revolution in the computational area (hardware, software, large-scale computing, etc.), as well as an explosion in data generation (big data), which raises the need for more sophisticated algorithms to analyze this myriad of data. In this scenario, we can highlight the potentialities of artificial intelligence (AI) or computational intelligence (CI) as a powerful tool to analyze medicinal chemistry data. According to IEEE, computational intelligence involves the theory, the design, the application, and the development of biologically and linguistically motivated computational paradigms. In addition, CI encompasses three main methodologies: neural networks (NN), fuzzy systems, and evolutionary computation. In particular, artificial neural networks have been successfully applied in medicinal chemistry studies. A branch of the NN area that has attracted a lot of attention refers to deep learning (DL) due to its generalization power and ability to extract features from data. Therefore, in this mini-review we will briefly outline the present scope, advances, and challenges related to the use of DL in drug design and discovery, describing successful studies involving quantitative structure-activity relationships (QSAR) and virtual screening (VS) of databases containing thousands of compounds.
Copyright © 2019 Lipinski, Maltarollo, Oliveira, da Silva and Honorio.

Entities:  

Keywords:  artificial intelligence; deep learning; drug design; drug discovery; medicinal chemistry

Year:  2019        PMID: 33501123      PMCID: PMC7805776          DOI: 10.3389/frobt.2019.00108

Source DB:  PubMed          Journal:  Front Robot AI        ISSN: 2296-9144


  23 in total

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2.  Deep Convolutional Neural Networks for Image Classification: A Comprehensive Review.

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Review 3.  Intelligently Applying Artificial Intelligence in Chemoinformatics.

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5.  Boosting compound-protein interaction prediction by deep learning.

Authors:  Kai Tian; Mingyu Shao; Yang Wang; Jihong Guan; Shuigeng Zhou
Journal:  Methods       Date:  2016-07-01       Impact factor: 3.608

Review 6.  Deep Learning in Drug Discovery.

Authors:  Erik Gawehn; Jan A Hiss; Gisbert Schneider
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7.  Integrative Data Analysis of Multi-Platform Cancer Data with a Multimodal Deep Learning Approach.

Authors:  Muxuan Liang; Zhizhong Li; Ting Chen; Jianyang Zeng
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8.  Deep architectures and deep learning in chemoinformatics: the prediction of aqueous solubility for drug-like molecules.

Authors:  Alessandro Lusci; Gianluca Pollastri; Pierre Baldi
Journal:  J Chem Inf Model       Date:  2013-07-02       Impact factor: 4.956

9.  Deep Learning Applications for Predicting Pharmacological Properties of Drugs and Drug Repurposing Using Transcriptomic Data.

Authors:  Alexander Aliper; Sergey Plis; Artem Artemov; Alvaro Ulloa; Polina Mamoshina; Alex Zhavoronkov
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  7 in total

Review 1.  Generative chemistry: drug discovery with deep learning generative models.

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3.  PIGNet: a physics-informed deep learning model toward generalized drug-target interaction predictions.

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4.  Parsimonious Optimization of Multitask Neural Network Hyperparameters.

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Review 5.  Unsupervised Learning in Drug Design from Self-Organization to Deep Chemistry.

Authors:  Jaroslaw Polanski
Journal:  Int J Mol Sci       Date:  2022-03-03       Impact factor: 5.923

6.  Computational pharmacology: New avenues for COVID-19 therapeutics search and better preparedness for future pandemic crises.

Authors:  Austė Kanapeckaitė; Asta Mažeikienė; Liesbet Geris; Neringa Burokienė; Graeme S Cottrell; Darius Widera
Journal:  Biophys Chem       Date:  2022-09-11       Impact factor: 3.628

7.  Set-Theoretic Formalism for Treating Ligand-Target Datasets.

Authors:  Gerald Maggiora; Martin Vogt
Journal:  Molecules       Date:  2021-12-07       Impact factor: 4.411

  7 in total

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