A diverse set of 806 compounds with hERG inhibition data (training set), and test sets including 120 molecules, WOMBAT-PK test set, and PubChem test set
Binary hERG classification models using naive Bayesian classification and recursive partitioning (RP) techniques
Comparison between naive Bayesian classifiers and RP classifiers
Accuracy of predicting hERG potassium channel blockagesurrogate
Naive Bayesian classification models using molecular properties and fingerprints can accurately predict hERG potassium channel blockage, providing a valuable in silico tool for early drug discovery to avoid QT prolongation.
Inhibition of the human ether-a-go-go related gene (hERG) potassium channel may result in QT interval prolongation, which causes severe cardiac side effects and is a major problem in clinical studies of drug candidates. The development of in silico tools to filter out potential hERG potassium channel blockers in early stages of the drug discovery process is of considerable interest. Here, a diverse set of 806 compounds with hERG inhibition data was assembled, and the binary hERG classification models using naive Bayesian classification and recursive partitioning (RP) techniques were established and evaluated. The naive Bayesian classifier based on molecular properties and the ECFP₈ fingerprints yielded 84. 8% accuracy for the training set using the leave-one-out (LOO) cross-validation procedure and 85% accuracy for the test set of 120 molecules. For the two additional test sets, the model achieved 89. 4% accuracy for the WOMBAT-PK test set, and 86. 1% accuracy for the PubChem test set. The naive Bayesian classifiers gave better predictions than the RP classifiers. Moreover, the Bayesian classifier, employing molecular fingerprints, highlights the important structural fragments favorable or unfavorable for hERG potassium channel blockage, which offers extra valuable information for the design of compounds avoiding undesirable hERG activity.
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Sichao Wang
Chapman University
Youyong Li
Harbin University of Science and Technology
Junmei Wang
Fujian Medical University
Molecular Pharmaceutics
The University of Texas Southwestern Medical Center
Soochow University
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Wang et al. (Fri,) studied this question.
synapsesocial.com/papers/69de7f02bf539e2270558d0a — DOI: https://doi.org/10.1021/mp300023x
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