Institute of Translational Medicine, Faculty of Health Sciences, University of Macau, Macau, China.
Department of Biomedical Sciences, Faculty of Health Sciences, University of Macau, Macau, China.
Br J Pharmacol. 2024 Apr;181(7):987-1004. doi: 10.1111/bph.16250. Epub 2023 Nov 8.
Drug-induced reduction of the rapid delayed rectifier potassium current carried by the human Ether-à-go-go-Related Gene (hERG) channel is associated with increased risk of arrhythmias. Recent updates to drug safety regulatory guidelines attempt to capture each drug's hERG binding mechanism by combining in vitro assays with in silico simulations. In this study, we investigate the impact on in silico proarrhythmic risk predictions due to uncertainty in the hERG binding mechanism and physiological hERG current model.
Possible pharmacological binding models were designed for the hERG channel to account for known and postulated small molecule binding mechanisms. After selecting a subset of plausible binding models for each compound through calibration to available voltage-clamp electrophysiology data, we assessed their effects, and the effects of different physiological models, on proarrhythmic risk predictions.
For some compounds, multiple binding mechanisms can explain the same data produced under the safety testing guidelines, which results in different inferred binding rates. This can result in substantial uncertainty in the predicted torsade risk, which often spans more than one risk category. By comparison, we found that the effect of a different hERG physiological current model on risk classification was subtle.
The approach developed in this study assesses the impact of uncertainty in hERG binding mechanisms on predictions of drug-induced proarrhythmic risk. For some compounds, these results imply the need for additional binding data to decrease uncertainty in safety-critical applications.
人 Ether-à-go-go-Related Gene(hERG)通道的快速延迟整流钾电流受药物诱导减少与心律失常风险增加有关。药物安全监管指南的最新更新试图通过将体外测定与计算机模拟相结合来捕捉每种药物的 hERG 结合机制。在这项研究中,我们研究了由于 hERG 结合机制和生理 hERG 电流模型的不确定性对计算机致心律失常风险预测的影响。
设计了 hERG 通道的可能药理学结合模型,以解释已知和假设的小分子结合机制。通过将可用电压钳电生理学数据校准到每个化合物的选择的一组合理的结合模型后,我们评估了它们的效果,以及不同生理模型对致心律失常风险预测的影响。
对于某些化合物,多个结合机制可以解释安全测试指南下产生的相同数据,这导致推断的结合率不同。这可能导致预测尖端扭转型风险的不确定性很大,通常跨越一个以上的风险类别。相比之下,我们发现不同的 hERG 生理电流模型对风险分类的影响微不足道。
本研究中开发的方法评估了 hERG 结合机制的不确定性对药物诱导致心律失常风险预测的影响。对于某些化合物,这些结果意味着需要额外的结合数据来降低安全关键应用中的不确定性。