Krishna Shagun, Borrel Alexandre, Huang Ruili, Zhao Jinghua, Xia Menghang, Kleinstreuer Nicole
Division of the National Toxicology Program, National Institute of Environmental Health Sciences (NIEHS), Research Triangle, NC 27560, USA.
Silent Spring Institute, Newton, MA 02460, USA.
Biology (Basel). 2022 Jan 28;11(2):209. doi: 10.3390/biology11020209.
Chemical inhibition of the human ether-a -go-go-related gene (hERG) potassium channel leads to a prolonged QT interval that can contribute to severe cardiotoxicity. The adverse effects of hERG inhibition are one of the principal causes of drug attrition in clinical and pre-clinical development. Preliminary studies have demonstrated that a wide range of environmental chemicals and toxicants may also inhibit the hERG channel and contribute to the pathophysiology of cardiovascular (CV) diseases. As part of the US federal Tox21 program, the National Center for Advancing Translational Science (NCATS) applied a quantitative high throughput screening (qHTS) approach to screen the Tox21 library of 10,000 compounds (7871 unique chemicals) at 14 concentrations in triplicate to identify chemicals perturbing hERG activity in the U2OS cell line thallium flux assay platform. The qHTS cell-based thallium influx assay provided a robust and reliable dataset to evaluate the ability of thousands of drugs and environmental chemicals to inhibit hERG channel protein, and the use of chemical structure-based clustering and chemotype enrichment analysis facilitated the identification of molecular features that are likely responsible for the observed hERG activity. We employed several machine-learning approaches to develop QSAR prediction models for the assessment of hERG liabilities for drug-like and environmental chemicals. The training set was compiled by integrating hERG bioactivity data from the ChEMBL database with the Tox21 qHTS thallium flux assay data. The best results were obtained with the random forest method (92.6% balanced accuracy). The data and scripts used to generate hERG prediction models are provided in an open-access format as key in vitro and in silico tools that can be applied in a translational toxicology pipeline for drug development and environmental chemical screening.
对人类醚 - 去极化相关基因(hERG)钾通道的化学抑制会导致QT间期延长,这可能会引发严重的心脏毒性。hERG抑制的不良反应是临床和临床前药物研发中药物淘汰的主要原因之一。初步研究表明,多种环境化学物质和毒物也可能抑制hERG通道,并参与心血管疾病的病理生理过程。作为美国联邦Tox21计划的一部分,美国国立转化医学推进中心(NCATS)采用定量高通量筛选(qHTS)方法,在14种浓度下对10000种化合物(约7871种独特化学物质)的Tox21文库进行一式三份的筛选,以在U2OS细胞系铊通量测定平台上鉴定干扰hERG活性的化学物质。基于qHTS细胞的铊流入测定提供了一个强大且可靠的数据集,用于评估数千种药物和环境化学物质抑制hERG通道蛋白的能力,基于化学结构的聚类和化学型富集分析的使用有助于识别可能导致观察到的hERG活性的分子特征。我们采用了几种机器学习方法来开发定量构效关系(QSAR)预测模型,以评估类药物和环境化学物质的hERG毒性。通过将ChEMBL数据库中的hERG生物活性数据与Tox21 qHTS铊通量测定数据整合来编制训练集。随机森林方法获得了最佳结果(平衡准确率约为92.6%)。用于生成hERG预测模型的数据和脚本以开放获取的格式提供,作为关键的体外和计算机工具,可应用于药物开发和环境化学物质筛选的转化毒理学流程。