Department of IT Convergence Engineering, Kumoh National Institute of Technology, Gumi, Korea.
R&D Center for Advanced Pharmaceuticals and Evaluation, Korea Institute of Toxicology, Daejeon, Korea.
CPT Pharmacometrics Syst Pharmacol. 2022 May;11(5):653-664. doi: 10.1002/psp4.12803. Epub 2022 May 17.
Comprehensive in vitro Proarrhythmia Assay (CiPA) projects for assessing proarrhythmic drugs suggested a logistic regression model using qNet as the Torsades de Pointes (TdP) risk assessment biomarker, obtained from in silico simulation. However, using a single in silico feature, such as qNet, cannot reflect whole characteristics related to TdP in the entire action potential (AP) shape. Thus, this study proposed a deep convolutional neural network (CNN) model using differential action potential shapes to classify three proarrhythmic risk levels: high, intermediate, and low, considering both characteristics related to TdP not only in the depolarization phase but also the repolarization phase of AP shape. We performed an in silico simulation and got AP shapes with drug effects using half-maximal inhibitory concentration and Hill coefficients of 28 drugs released by CiPA groups. Then, we trained the deep CNN model with the differential AP shapes of 12 drugs and tested it with those of 16 drugs. Our model had a better performance for classifying the proarrhythmic risk of drugs than the traditional logistic regression model using qNet. The classification accuracy was 98% for high-risk level drugs, 94% for intermediate-risk level drugs, and 89% for low-risk level drugs.
全面的体外致心律失常assay(CiPA)项目用于评估致心律失常药物,建议使用 qNet 作为尖端扭转型室性心动过速(TdP)风险评估生物标志物的逻辑回归模型,该模型是通过计算机模拟获得的。然而,使用单一的计算机模拟特征,如 qNet,并不能反映整个动作电位(AP)形状与 TdP 相关的所有特征。因此,本研究提出了一种使用差分动作电位形状的深度卷积神经网络(CNN)模型,该模型用于根据三个致心律失常风险级别(高、中、低)对药物进行分类,该模型考虑了与 TdP 相关的特征,不仅在 AP 形状的去极化相,而且在复极化相也有涉及。我们进行了计算机模拟,并使用 CiPA 组释放的 28 种药物的半最大抑制浓度和 Hill 系数获得了具有药物作用的 AP 形状。然后,我们使用 12 种药物的差分 AP 形状训练深度 CNN 模型,并使用 16 种药物对其进行测试。与使用 qNet 的传统逻辑回归模型相比,我们的模型在药物致心律失常风险的分类性能更好。高风险水平药物的分类准确率为 98%,中风险水平药物的分类准确率为 94%,低风险水平药物的分类准确率为 89%。