Literature DB >> 27599991

The Next Era: Deep Learning in Pharmaceutical Research.

Sean Ekins1,2.   

Abstract

Over the past decade we have witnessed the increasing sophistication of machine learning algorithms applied in daily use from internet searches, voice recognition, social network software to machine vision software in cameras, phones, robots and self-driving cars. Pharmaceutical research has also seen its fair share of machine learning developments. For example, applying such methods to mine the growing datasets that are created in drug discovery not only enables us to learn from the past but to predict a molecule's properties and behavior in future. The latest machine learning algorithm garnering significant attention is deep learning, which is an artificial neural network with multiple hidden layers. Publications over the last 3 years suggest that this algorithm may have advantages over previous machine learning methods and offer a slight but discernable edge in predictive performance. The time has come for a balanced review of this technique but also to apply machine learning methods such as deep learning across a wider array of endpoints relevant to pharmaceutical research for which the datasets are growing such as physicochemical property prediction, formulation prediction, absorption, distribution, metabolism, excretion and toxicity (ADME/Tox), target prediction and skin permeation, etc. We also show that there are many potential applications of deep learning beyond cheminformatics. It will be important to perform prospective testing (which has been carried out rarely to date) in order to convince skeptics that there will be benefits from investing in this technique.

Entities:  

Keywords:  artificial intelligence; deep Learning; drug discovery; machine learning; pharmaceutics

Mesh:

Year:  2016        PMID: 27599991      PMCID: PMC5042864          DOI: 10.1007/s11095-016-2029-7

Source DB:  PubMed          Journal:  Pharm Res        ISSN: 0724-8741            Impact factor:   4.200


  81 in total

1.  Prediction of P-glycoprotein substrates by a support vector machine approach.

Authors:  Y Xue; C W Yap; L Z Sun; Z W Cao; J F Wang; Y Z Chen
Journal:  J Chem Inf Comput Sci       Date:  2004 Jul-Aug

2.  A novel approach using pharmacophore ensemble/support vector machine (PhE/SVM) for prediction of hERG liability.

Authors:  Max K Leong
Journal:  Chem Res Toxicol       Date:  2007-01-30       Impact factor: 3.739

3.  New predictive models for blood-brain barrier permeability of drug-like molecules.

Authors:  Sandhya Kortagere; Dmitriy Chekmarev; William J Welsh; Sean Ekins
Journal:  Pharm Res       Date:  2008-04-16       Impact factor: 4.200

4.  Open Source Bayesian Models. 2. Mining a "Big Dataset" To Create and Validate Models with ChEMBL.

Authors:  Alex M Clark; Sean Ekins
Journal:  J Chem Inf Model       Date:  2015-06-03       Impact factor: 4.956

5.  In Silico Estimation of Skin Concentration Following the Dermal Exposure to Chemicals.

Authors:  Tomomi Hatanaka; Shun Yoshida; Wesam R Kadhum; Hiroaki Todo; Kenji Sugibayashi
Journal:  Pharm Res       Date:  2015-07-21       Impact factor: 4.200

6.  Machine learning in computational docking.

Authors:  Mohamed A Khamis; Walid Gomaa; Walaa F Ahmed
Journal:  Artif Intell Med       Date:  2015-02-16       Impact factor: 5.326

7.  Near infrared spectroscopy for counterfeit detection using a large database of pharmaceutical tablets.

Authors:  Klara Dégardin; Aurélie Guillemain; Nicole Viegas Guerreiro; Yves Roggo
Journal:  J Pharm Biomed Anal       Date:  2016-05-06       Impact factor: 3.935

Review 8.  Future directions for drug transporter modelling.

Authors:  S Ekins; G F Ecker; P Chiba; P W Swaan
Journal:  Xenobiotica       Date:  2007 Oct-Nov       Impact factor: 1.908

9.  Computational models for drug inhibition of the human apical sodium-dependent bile acid transporter.

Authors:  Xiaowan Zheng; Sean Ekins; Jean-Pierre Raufman; James E Polli
Journal:  Mol Pharm       Date:  2009 Sep-Oct       Impact factor: 4.939

10.  Development of dimethyl sulfoxide solubility models using 163,000 molecules: using a domain applicability metric to select more reliable predictions.

Authors:  Igor V Tetko; Sergii Novotarskyi; Iurii Sushko; Vladimir Ivanov; Alexander E Petrenko; Reiner Dieden; Florence Lebon; Benoit Mathieu
Journal:  J Chem Inf Model       Date:  2013-07-15       Impact factor: 4.956

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  39 in total

1.  Ahead of Our Time: Collaboration in Modeling Then and Now.

Authors:  Renée J G Arnold; Sean Ekins
Journal:  Pharmacoeconomics       Date:  2017-09       Impact factor: 4.981

2.  Prediction of Novel Drugs and Diseases for Hepatocellular Carcinoma Based on Multi-Source Simulated Annealing Based Random Walk.

Authors:  S Jafar Ali Ibrahim; M Thangamani
Journal:  J Med Syst       Date:  2018-09-01       Impact factor: 4.460

Review 3.  Automating drug discovery.

Authors:  Gisbert Schneider
Journal:  Nat Rev Drug Discov       Date:  2017-12-15       Impact factor: 84.694

4.  Comparing and Validating Machine Learning Models for Mycobacterium tuberculosis Drug Discovery.

Authors:  Thomas Lane; Daniel P Russo; Kimberley M Zorn; Alex M Clark; Alexandru Korotcov; Valery Tkachenko; Robert C Reynolds; Alexander L Perryman; Joel S Freundlich; Sean Ekins
Journal:  Mol Pharm       Date:  2018-04-26       Impact factor: 4.939

5.  Comparison of Deep Learning With Multiple Machine Learning Methods and Metrics Using Diverse Drug Discovery Data Sets.

Authors:  Alexandru Korotcov; Valery Tkachenko; Daniel P Russo; Sean Ekins
Journal:  Mol Pharm       Date:  2017-11-13       Impact factor: 4.939

6.  Comparing Multiple Machine Learning Algorithms and Metrics for Estrogen Receptor Binding Prediction.

Authors:  Daniel P Russo; Kimberley M Zorn; Alex M Clark; Hao Zhu; Sean Ekins
Journal:  Mol Pharm       Date:  2018-08-28       Impact factor: 4.939

7.  Opportunities and challenges using artificial intelligence in ADME/Tox.

Authors:  Barun Bhhatarai; W Patrick Walters; Cornelis E C A Hop; Guido Lanza; Sean Ekins
Journal:  Nat Mater       Date:  2019-05       Impact factor: 43.841

8.  Exploiting machine learning for end-to-end drug discovery and development.

Authors:  Sean Ekins; Ana C Puhl; Kimberley M Zorn; Thomas R Lane; Daniel P Russo; Jennifer J Klein; Anthony J Hickey; Alex M Clark
Journal:  Nat Mater       Date:  2019-04-18       Impact factor: 43.841

Review 9.  Deep Learning for Drug Design: an Artificial Intelligence Paradigm for Drug Discovery in the Big Data Era.

Authors:  Yankang Jing; Yuemin Bian; Ziheng Hu; Lirong Wang; Xiang-Qun Xie
Journal:  AAPS J       Date:  2018-03-30       Impact factor: 4.009

Review 10.  Turning liabilities into opportunities: Off-target based drug repurposing in cancer.

Authors:  Vinayak Palve; Yi Liao; Lily L Remsing Rix; Uwe Rix
Journal:  Semin Cancer Biol       Date:  2020-02-07       Impact factor: 15.707

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