Literature DB >> 30615828

Predictive Multitask Deep Neural Network Models for ADME-Tox Properties: Learning from Large Data Sets.

Jan Wenzel, Hans Matter, Friedemann Schmidt.   

Abstract

Successful drug discovery projects require control and optimization of compound properties related to pharmacokinetics, pharmacodynamics, and safety. While volume and chemotype coverage of public and corporate ADME-Tox (absorption, distribution, excretion, metabolism, and toxicity) databases are constantly growing, deep neural nets (DNN) emerged as transformative artificial intelligence technology to analyze those challenging data. Relevant features are automatically identified, while appropriate data can also be combined to multitask networks to evaluate hidden trends among multiple ADME-Tox parameters for implicitly correlated data sets. Here we describe a novel, fully industrialized approach to parametrize and optimize the setup, training, application, and visual interpretation of DNNs to model ADME-Tox data. Investigated properties include microsomal lability in different species, passive permeability in Caco-2/TC7 cells, and logD. Statistical models are developed using up to 50 000 compounds from public or corporate databases. Both the choice of DNN hyperparameters and the type and quantity of molecular descriptors were found to be important for successful DNN modeling. Alternate learning of multiple ADME-Tox properties, resulting in a multitask approach, performs statistically superior on most studied data sets in comparison to DNN single-task models and also provides a scalable method to predict ADME-Tox properties from heterogeneous data. For example, predictive quality using external validation sets was improved from R2 of 0.6 to 0.7 comparing single-task and multitask DNN networks from human metabolic lability data. Besides statistical evaluation, a new visualization approach is introduced to interpret DNN models termed "response map", which is useful to detect local property gradients based on structure fragmentation and derivatization. This method is successfully applied to visualize fragmental contributions to guide further design in drug discovery programs, as illustrated by CRCX3 antagonists and renin inhibitors, respectively.

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Year:  2019        PMID: 30615828     DOI: 10.1021/acs.jcim.8b00785

Source DB:  PubMed          Journal:  J Chem Inf Model        ISSN: 1549-9596            Impact factor:   4.956


  23 in total

Review 1.  Advancing computer-aided drug discovery (CADD) by big data and data-driven machine learning modeling.

Authors:  Linlin Zhao; Heather L Ciallella; Lauren M Aleksunes; Hao Zhu
Journal:  Drug Discov Today       Date:  2020-07-11       Impact factor: 7.851

2.  DeepScreening: a deep learning-based screening web server for accelerating drug discovery.

Authors:  Zhihong Liu; Jiewen Du; Jiansong Fang; Yulong Yin; Guohuan Xu; Liwei Xie
Journal:  Database (Oxford)       Date:  2019-01-01       Impact factor: 3.451

Review 3.  Big Data and Artificial Intelligence Modeling for Drug Discovery.

Authors:  Hao Zhu
Journal:  Annu Rev Pharmacol Toxicol       Date:  2019-09-13       Impact factor: 13.820

4.  Anti-Leishmania infantum in vitro effect of n-cyclohexyl-1,2,4-oxadiazole and its ADME/TOX parameters.

Authors:  Cristian Vicson Gomes Pinheiro; Wildson Max Barbosa da Silva; João Pedro Viana Rodrigues; Yasmim Mendes Rocha; Maria Jania Teixeira; Ronaldo Nascimento de Oliveira; Natália Vasconcelos de Souza; Roberto Nicolete
Journal:  J Parasit Dis       Date:  2021-10-06

Review 5.  In silico toxicology: From structure-activity relationships towards deep learning and adverse outcome pathways.

Authors:  Jennifer Hemmerich; Gerhard F Ecker
Journal:  Wiley Interdiscip Rev Comput Mol Sci       Date:  2020-03-31

6.  NPClassifier: A Deep Neural Network-Based Structural Classification Tool for Natural Products.

Authors:  Hyun Woo Kim; Mingxun Wang; Christopher A Leber; Louis-Félix Nothias; Raphael Reher; Kyo Bin Kang; Justin J J van der Hooft; Pieter C Dorrestein; William H Gerwick; Garrison W Cottrell
Journal:  J Nat Prod       Date:  2021-10-18       Impact factor: 4.803

7.  Are 2D fingerprints still valuable for drug discovery?

Authors:  Kaifu Gao; Duc Duy Nguyen; Vishnu Sresht; Alan M Mathiowetz; Meihua Tu; Guo-Wei Wei
Journal:  Phys Chem Chem Phys       Date:  2020-04-29       Impact factor: 3.676

8.  Mechanisms of Herb-Drug Interactions Involving Cinnamon and CYP2A6: Focus on Time-Dependent Inhibition by Cinnamaldehyde and 2-Methoxycinnamaldehyde.

Authors:  Michael J Espiritu; Justin Chen; Jaydeep Yadav; Michael Larkin; Robert D Pelletier; Jeannine M Chan; Jeevan B Gc; Senthil Natesan; John P Harrelson
Journal:  Drug Metab Dispos       Date:  2020-08-12       Impact factor: 3.922

Review 9.  Applications of artificial intelligence to drug design and discovery in the big data era: a comprehensive review.

Authors:  Neetu Tripathi; Manoj Kumar Goshisht; Sanat Kumar Sahu; Charu Arora
Journal:  Mol Divers       Date:  2021-06-10       Impact factor: 2.943

Review 10.  Current status and future directions of high-throughput ADME screening in drug discovery.

Authors:  Wilson Z Shou
Journal:  J Pharm Anal       Date:  2020-05-23
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