Certara-Simcyp, Level 2-Acero, 1 Concourse Way, Sheffield, S1 2BJ, UK.
Unit of Pharmacoepidemiology and Pharmacoeconomics, Department of Social Pharmacy, Faculty of Pharmacy, Jagiellonian University Medical College, Medyczna 9, Kraków, 30-217, Poland.
J Pharmacokinet Pharmacodyn. 2018 Jun;45(3):457-467. doi: 10.1007/s10928-018-9580-2. Epub 2018 Mar 8.
Cardiotoxicity is among the top drug safety concerns, and is of specific interest in tuberculosis, where this is a known or potential adverse event of current and emerging treatment regimens. As there is a need for a tool, beyond the QT interval, to quantify cardiotoxicity early in drug development, an empirical decision tree based classifier was developed to predict the risk of Torsades de pointes (TdP). The cardiac risk algorithm was developed using pseudo-electrocardiogram (ECG) outputs derived from cardiac myocyte electromechanical model simulations of increasing concentrations of 96 reference compounds which represented a range of clinical TdP risk. The algorithm correctly classified 89% of reference compounds with moderate sensitivity and high specificity (71 and 96%, respectively) as well as 10 out of 12 external validation compounds and the anti-TB drugs moxifloxacin and bedaquiline. The cardiac risk algorithm is suitable to help inform early drug development decisions in TB and will evolve with the addition of emerging data.
心脏毒性是药物安全性关注的重点之一,在结核病中尤其如此,因为这是当前和新兴治疗方案已知或潜在的不良反应。由于需要一种工具,除了 QT 间期之外,还需要在药物开发的早期阶段量化心脏毒性,因此开发了一种基于经验决策树的分类器来预测尖端扭转型室性心动过速 (TdP) 的风险。心脏风险算法是使用源自心肌细胞机电模型模拟的伪心电图 (ECG) 输出开发的,模拟了 96 种参考化合物浓度的增加,这些化合物代表了临床 TdP 风险的范围。该算法正确分类了 89%的中度敏感性和高特异性参考化合物(分别为 71%和 96%),以及 12 种外部验证化合物中的 10 种,以及抗结核药物莫西沙星和贝达喹啉。心脏风险算法适合帮助在结核病早期药物开发决策,并将随着新兴数据的增加而发展。