Literature DB >> 30779585

Multiple Machine Learning Comparisons of HIV Cell-based and Reverse Transcriptase Data Sets.

Kimberley M Zorn1, Thomas R Lane1, Daniel P Russo1,2, Alex M Clark3, Vadim Makarov4, Sean Ekins1.   

Abstract

The human immunodeficiency virus (HIV) causes over a million deaths every year and has a huge economic impact in many countries. The first class of drugs approved were nucleoside reverse transcriptase inhibitors. A newer generation of reverse transcriptase inhibitors have become susceptible to drug resistant strains of HIV, and hence, alternatives are urgently needed. We have recently pioneered the use of Bayesian machine learning to generate models with public data to identify new compounds for testing against different disease targets. The current study has used the NIAID ChemDB HIV, Opportunistic Infection and Tuberculosis Therapeutics Database for machine learning studies. We curated and cleaned data from HIV-1 wild-type cell-based and reverse transcriptase (RT) DNA polymerase inhibition assays. Compounds from this database with ≤1 μM HIV-1 RT DNA polymerase activity inhibition and cell-based HIV-1 inhibition are correlated (Pearson r = 0.44, n = 1137, p < 0.0001). Models were trained using multiple machine learning approaches (Bernoulli Naive Bayes, AdaBoost Decision Tree, Random Forest, support vector classification, k-Nearest Neighbors, and deep neural networks as well as consensus approaches) and then their predictive abilities were compared. Our comparison of different machine learning methods demonstrated that support vector classification, deep learning, and a consensus were generally comparable and not significantly different from each other using 5-fold cross validation and using 24 training and test set combinations. This study demonstrates findings in line with our previous studies for various targets that training and testing with multiple data sets does not demonstrate a significant difference between support vector machine and deep neural networks.

Entities:  

Keywords:  HIV; Naïve Bayes; assay central; deep learning; drug discovery; machine learning; reverse transcriptase; support vector machine

Mesh:

Substances:

Year:  2019        PMID: 30779585     DOI: 10.1021/acs.molpharmaceut.8b01297

Source DB:  PubMed          Journal:  Mol Pharm        ISSN: 1543-8384            Impact factor:   4.939


  28 in total

Review 1.  Déjà vu: Stimulating open drug discovery for SARS-CoV-2.

Authors:  Sean Ekins; Melina Mottin; Paulo R P S Ramos; Bruna K P Sousa; Bruno Junior Neves; Daniel H Foil; Kimberley M Zorn; Rodolpho C Braga; Megan Coffee; Christopher Southan; Ana C Puhl; Carolina Horta Andrade
Journal:  Drug Discov Today       Date:  2020-04-19       Impact factor: 7.851

2.  Comparing Machine Learning Algorithms for Predicting Drug-Induced Liver Injury (DILI).

Authors:  Eni Minerali; Daniel H Foil; Kimberley M Zorn; Thomas R Lane; Sean Ekins
Journal:  Mol Pharm       Date:  2020-06-08       Impact factor: 4.939

3.  A Machine Learning Strategy for Drug Discovery Identifies Anti-Schistosomal Small Molecules.

Authors:  Kimberley M Zorn; Shengxi Sun; Cecelia L McConnon; Kelley Ma; Eric K Chen; Daniel H Foil; Thomas R Lane; Lawrence J Liu; Nelly El-Sakkary; Danielle E Skinner; Sean Ekins; Conor R Caffrey
Journal:  ACS Infect Dis       Date:  2021-01-12       Impact factor: 5.084

4.  Repurposing Approved Drugs as Inhibitors of Kv7.1 and Nav1.8 to Treat Pitt Hopkins Syndrome.

Authors:  Sean Ekins; Jacob Gerlach; Kimberley M Zorn; Brett M Antonio; Zhixin Lin; Aaron Gerlach
Journal:  Pharm Res       Date:  2019-07-22       Impact factor: 4.200

5.  Comparing Machine Learning Models for Aromatase (P450 19A1).

Authors:  Kimberley M Zorn; Daniel H Foil; Thomas R Lane; Wendy Hillwalker; David J Feifarek; Frank Jones; William D Klaren; Ashley M Brinkman; Sean Ekins
Journal:  Environ Sci Technol       Date:  2020-11-19       Impact factor: 9.028

6.  Comparison of Machine Learning Models for the Androgen Receptor.

Authors:  Kimberley M Zorn; Daniel H Foil; Thomas R Lane; Wendy Hillwalker; David J Feifarek; Frank Jones; William D Klaren; Ashley M Brinkman; Sean Ekins
Journal:  Environ Sci Technol       Date:  2020-10-21       Impact factor: 9.028

7.  Machine Learning Models for Estrogen Receptor Bioactivity and Endocrine Disruption Prediction.

Authors:  Kimberley M Zorn; Daniel H Foil; Thomas R Lane; Daniel P Russo; Wendy Hillwalker; David J Feifarek; Frank Jones; William D Klaren; Ashley M Brinkman; Sean Ekins
Journal:  Environ Sci Technol       Date:  2020-09-15       Impact factor: 9.028

8.  Flavonoids from Pterogyne nitens as Zika virus NS2B-NS3 protease inhibitors.

Authors:  Caroline Sprengel Lima; Melina Mottin; Leticia Ribeiro de Assis; Nathalya Cristina de Moraes Roso Mesquita; Bruna Katiele de Paula Sousa; Lais Durco Coimbra; Karina Bispo-Dos- Santos; Kimberley M Zorn; Rafael V C Guido; Sean Ekins; Rafael Elias Marques; José Luiz Proença-Modena; Glaucius Oliva; Carolina Horta Andrade; Luis Octavio Regasini
Journal:  Bioorg Chem       Date:  2021-02-11       Impact factor: 5.275

9.  The Antiviral Drug Tilorone Is a Potent and Selective Inhibitor of Acetylcholinesterase.

Authors:  Patricia A Vignaux; Eni Minerali; Thomas R Lane; Daniel H Foil; Peter B Madrid; Ana C Puhl; Sean Ekins
Journal:  Chem Res Toxicol       Date:  2021-01-05       Impact factor: 3.739

10.  Bioactivity Comparison across Multiple Machine Learning Algorithms Using over 5000 Datasets for Drug Discovery.

Authors:  Thomas R Lane; Daniel H Foil; Eni Minerali; Fabio Urbina; Kimberley M Zorn; Sean Ekins
Journal:  Mol Pharm       Date:  2020-12-16       Impact factor: 4.939

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