Literature DB >> 27379394

ADMET Evaluation in Drug Discovery. 16. Predicting hERG Blockers by Combining Multiple Pharmacophores and Machine Learning Approaches.

Shuangquan Wang1, Huiyong Sun1, Hui Liu1, Dan Li1, Youyong Li2, Tingjun Hou1,3.   

Abstract

Blockade of human ether-à-go-go related gene (hERG) channel by compounds may lead to drug-induced QT prolongation, arrhythmia, and Torsades de Pointes (TdP), and therefore reliable prediction of hERG liability in the early stages of drug design is quite important to reduce the risk of cardiotoxicity-related attritions in the later development stages. In this study, pharmacophore modeling and machine learning approaches were combined to construct classification models to distinguish hERG active from inactive compounds based on a diverse data set. First, an optimal ensemble of pharmacophore hypotheses that had good capability to differentiate hERG active from inactive compounds was identified by the recursive partitioning (RP) approach. Then, the naive Bayesian classification (NBC) and support vector machine (SVM) approaches were employed to construct classification models by integrating multiple important pharmacophore hypotheses. The integrated classification models showed improved predictive capability over any single pharmacophore hypothesis, suggesting that the broad binding polyspecificity of hERG can only be well characterized by multiple pharmacophores. The best SVM model achieved the prediction accuracies of 84.7% for the training set and 82.1% for the external test set. Notably, the accuracies for the hERG blockers and nonblockers in the test set reached 83.6% and 78.2%, respectively. Analysis of significant pharmacophores helps to understand the multimechanisms of action of hERG blockers. We believe that the combination of pharmacophore modeling and SVM is a powerful strategy to develop reliable theoretical models for the prediction of potential hERG liability.

Entities:  

Keywords:  ADMET; SVM; hERG; machine learning; pharmacophore; recursive partitioning; support vector machine

Mesh:

Substances:

Year:  2016        PMID: 27379394     DOI: 10.1021/acs.molpharmaceut.6b00471

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


  18 in total

1.  Deep Learning-Based Prediction of Drug-Induced Cardiotoxicity.

Authors:  Chuipu Cai; Pengfei Guo; Yadi Zhou; Jingwei Zhou; Qi Wang; Fengxue Zhang; Jiansong Fang; Feixiong Cheng
Journal:  J Chem Inf Model       Date:  2019-02-15       Impact factor: 4.956

2.  Performance of Machine Learning Algorithms for Qualitative and Quantitative Prediction Drug Blockade of hERG1 channel.

Authors:  Soren Wacker; Sergei Yu Noskov
Journal:  Comput Toxicol       Date:  2017-05-13

3.  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

4.  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

5.  Structure-Based Prediction of hERG-Related Cardiotoxicity: A Benchmark Study.

Authors:  Teresa Maria Creanza; Pietro Delre; Nicola Ancona; Giovanni Lentini; Michele Saviano; Giuseppe Felice Mangiatordi
Journal:  J Chem Inf Model       Date:  2021-09-10       Impact factor: 6.162

6.  Assessing hERG1 Blockade from Bayesian Machine-Learning-Optimized Site Identification by Ligand Competitive Saturation Simulations.

Authors:  Mahdi Mousaei; Meruyert Kudaibergenova; Alexander D MacKerell; Sergei Noskov
Journal:  J Chem Inf Model       Date:  2020-11-16       Impact factor: 4.956

7.  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

Review 8.  In Silico Prediction of Chemical Toxicity for Drug Design Using Machine Learning Methods and Structural Alerts.

Authors:  Hongbin Yang; Lixia Sun; Weihua Li; Guixia Liu; Yun Tang
Journal:  Front Chem       Date:  2018-02-20       Impact factor: 5.221

9.  Computational Tool for Fast in silico Evaluation of hERG K+ Channel Affinity.

Authors:  Giulia Chemi; Sandra Gemma; Giuseppe Campiani; Simone Brogi; Stefania Butini; Margherita Brindisi
Journal:  Front Chem       Date:  2017-02-23       Impact factor: 5.221

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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