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Title

A k-nearest neighbor classification of hERG K channel blockers.

Authors

Chavan, Swapnil; Abdelaziz, Ahmed; Wiklander, Jesper; Nicholls, Ian

Abstract

A series of 172 molecular structures that block the hERG K channel were used to develop a classification model where, initially, eight types of PaDEL fingerprints were used for k-nearest neighbor model development. A consensus model constructed using Extended-CDK, PubChem and Substructure count fingerprint-based models was found to be a robust predictor of hERG activity. This consensus model demonstrated sensitivity and specificity values of 0.78 and 0.61 for the internal dataset compounds and 0.63 and 0.54 for the external (PubChem) dataset compounds, respectively. This model has identified the highest number of true positives (i.e. 140) from the PubChem dataset so far, as compared to other published models, and can potentially serve as a basis for the prediction of hERG active compounds. Validating this model against FDA-withdrawn substances indicated that it may even be useful for differentiating between mechanisms underlying QT prolongation.

Subjects

DATA modeling; INFORMATION modeling; DATA analysis; MOLECULAR structure; COMPUTER simulation

Publication

Journal of Computer-Aided Molecular Design, 2016, Vol 30, Issue 3, p229

ISSN

0920-654X

Publication type

Academic Journal

DOI

10.1007/s10822-016-9898-z

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