Institute of Cardiovascular Sciences, University of Manchester, Manchester, United Kingdom.
Am J Physiol Heart Circ Physiol. 2013 Jan 1;304(1):H104-17. doi: 10.1152/ajpheart.00511.2012. Epub 2012 Oct 26.
The use of computational models to predict drug-induced changes in the action potential (AP) is a promising approach to reduce drug safety attrition but requires a better representation of more complex drug-target interactions to improve the quantitative prediction. The blockade of the human ether-a-go-go-related gene (HERG) channel is a major concern for QT prolongation and Torsade de Pointes risk. We aim to develop quantitative in-silico AP predictions based on a new electrophysiological protocol (suitable for high-throughput HERG screening) and mathematical modeling of ionic currents. Electrophysiological recordings using the IonWorks device were made from HERG channels stably expressed in Chinese hamster ovary cells. A new protocol that delineates inhibition over time was applied to assess dofetilide, cisapride, and almokalant effects. Dynamic effects displayed distinct profiles for these drugs compared with concentration-effects curves. Binding kinetics to specific states were identified using a new HERG Markov model. The model was then modified to represent the canine rapid delayed rectifier K(+) current at 37°C and carry out AP predictions. Predictions were compared with a simpler model based on conductance reduction and were found to be much closer to experimental data. Improved sensitivity to concentration and pacing frequency variables was obtained when including binding kinetics. Our new electrophysiological protocol is suitable for high-throughput screening and is able to distinguish drug-binding kinetics. The association of this protocol with our modeling approach indicates that quantitative predictions of AP modulation can be obtained, which is a significant improvement compared with traditional conductance reduction methods.
使用计算模型来预测药物诱导的动作电位 (AP) 变化是减少药物安全性损失的一种很有前途的方法,但需要更好地表示更复杂的药物-靶标相互作用,以提高定量预测的准确性。阻断人类 Ether-a-go-go 相关基因 (HERG) 通道是导致 QT 延长和尖端扭转型室性心动过速风险的主要关注点。我们旨在基于新的电生理协议和离子电流的数学模型,开发定量的计算机化 AP 预测。使用 IonWorks 设备从稳定表达在中华仓鼠卵巢细胞中的 HERG 通道进行电生理记录。应用一种新的时间抑制协议来评估多非利特、西沙必利和阿莫卡兰的作用。与浓度-效应曲线相比,这些药物的动态效应显示出不同的特征。使用新的 HERG 马尔可夫模型确定了与特定状态的结合动力学。然后,对模型进行修改以表示犬快速延迟整流钾 (K+) 电流在 37°C 下的情况,并进行 AP 预测。将预测结果与基于电导减少的简化模型进行比较,发现与实验数据更为接近。当包括结合动力学时,对浓度和起搏频率变量的敏感性得到了提高。我们的新电生理协议适合高通量筛选,并且能够区分药物结合动力学。该协议与我们的建模方法相结合表明,可以获得 AP 调制的定量预测,这与传统的电导减少方法相比是一个重大改进。