Computational determination of hERG-related cardiotoxicity of drug candidates

Hyang‐Mi Lee(Chung-Ang University), Myeong‐Sang Yu(Chung-Ang University), Sayada Reemsha Kazmi(Chung-Ang University), Seong Yun Oh(Chung-Ang University), Ki‐Hyeong Rhee(Kongju National University), Myung‐Ae Bae(Korea Research Institute of Chemical Technology), Byung Ho Lee(Korea Research Institute of Chemical Technology), Dae‐Seop Shin(Korea Research Institute of Chemical Technology), Kwang‐Seok Oh(Korea Research Institute of Chemical Technology), Hyi-Thaek Ceong(Chonnam National University), Donghyun Lee(Chung-Ang University), Dokyun Na(Chung-Ang University)
BMC Bioinformatics
May 1, 2019
Cited by 159Open Access
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Abstract

BACKGROUND: Drug candidates often cause an unwanted blockage of the potassium ion channel of the human ether-a-go-go-related gene (hERG). The blockage leads to long QT syndrome (LQTS), which is a severe life-threatening cardiac side effect. Therefore, a virtual screening method to predict drug-induced hERG-related cardiotoxicity could facilitate drug discovery by filtering out toxic drug candidates. RESULT: In this study, we generated a reliable hERG-related cardiotoxicity dataset composed of 2130 compounds, which were carried out under constant conditions. Based on our dataset, we developed a computational hERG-related cardiotoxicity prediction model. The neural network model achieved an area under the receiver operating characteristic curve (AUC) of 0.764, with an accuracy of 90.1%, a Matthews correlation coefficient (MCC) of 0.368, a sensitivity of 0.321, and a specificity of 0.967, when ten-fold cross-validation was performed. The model was further evaluated using ten drug compounds tested on guinea pigs and showed an accuracy of 80.0%, an MCC of 0.655, a sensitivity of 0.600, and a specificity of 1.000, which were better than the performances of existing hERG-toxicity prediction models. CONCLUSION: The neural network model can predict hERG-related cardiotoxicity of chemical compounds with a high accuracy. Therefore, the model can be applied to virtual high-throughput screening for drug candidates that do not cause cardiotoxicity. The prediction tool is available as a web-tool at http://ssbio.cau.ac.kr/CardPred .


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