Quantitative prediction of hERG inhibitory activities using support vector regression and the integrated hERG dataset in AMED cardiotoxicity database

IF 0.4 Q4 BIOCHEMISTRY & MOLECULAR BIOLOGY Chem-Bio Informatics Journal Pub Date : 2021-10-01 DOI:10.1273/cbij.21.70
Tomohiro Sato, Hitomi Yuki, T. Honma
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引用次数: 0

Abstract

The inhibition of hERG potassium channel is closely related to the prolonged QT interval, and to assess the risk could greatly contribute to the development of safer therapeutic compounds. In the hit-to-lead optimization stage of drug development, quantitative prediction of hERG inhibitory activity is crucial to design drug candidates without cardiotoxicity risk. Here, we developed a hERG regression model combining support vector regression (SVR) and descriptor selection by non-dominated sorting genetic algorithm (NSGA-II) based on AMED cardiotoxicity database consisting of hERG blocking information built by integrating public and commercial databases. To construct a regression model, 6,561 compounds with IC50 and/or Ki values were derived from AMED cardiotoxicity database, and randomly separated into training set (70%) for model building and test set (30%) for performance evaluation. To avoid overfitting by employing many non-relevant explanatory variables, NSGA-II, a variation of genetic algorithm for multiple objective optimization, was used for descriptor selection in order to maximize Q2 and minimize RMSE in 5-fold cross validation and minimize the number of used descriptors spontaneously. The prediction performance was then compared to those of ADMET predictor, commercial software providing various ADMET property predictions. The SVR model recorded R2 of 0.594 and RMSE of 0.604 for test set, clearly exceeding those of ADMET predictor (0.134 and 0.690, respectively). The regression model is available at our home page (https://drugdesign.riken.jp/hERG).
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使用支持向量回归和AMED心脏毒性数据库中整合的hERG数据集定量预测hERG抑制活性
hERG钾通道的抑制与QT间期延长密切相关,评估其风险有助于开发更安全的治疗药物。在药物开发的hit-to-lead优化阶段,hERG抑制活性的定量预测对于设计无心脏毒性风险的候选药物至关重要。本研究基于整合公共和商业数据库构建的由hERG阻断信息组成的AMED心脏毒性数据库,建立了支持向量回归(SVR)和非支配排序遗传算法描述符选择(NSGA-II)相结合的hERG回归模型。为了构建回归模型,从AMED心脏毒性数据库中提取了具有IC50和/或Ki值的6,561种化合物,并将其随机分为训练集(70%)用于模型构建,测试集(30%)用于性能评估。为了避免使用许多不相关的解释变量进行过拟合,我们使用了一种多目标优化遗传算法NSGA-II进行描述符选择,以便在5倍交叉验证中最大化Q2和最小化RMSE,并最小化自发使用的描述符数量。然后将预测性能与ADMET预测器(提供各种ADMET属性预测的商业软件)的预测性能进行比较。测试集SVR模型的R2为0.594,RMSE为0.604,明显超过ADMET预测因子(分别为0.134和0.690)。回归模型可以在我们的主页上找到(https://drugdesign.riken.jp/hERG)。
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来源期刊
Chem-Bio Informatics Journal
Chem-Bio Informatics Journal BIOCHEMISTRY & MOLECULAR BIOLOGY-
CiteScore
0.60
自引率
0.00%
发文量
8
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