Torsades de pointes (TdP) is an irregular heart rhythm characterized by faster beat rates and potentially could lead to sudden cardiac death. Much effort has been invested in understanding the drug-induced TdP in preclinical studies. However, a comprehensive statistical learning framework that can accurately predict the drug-induced TdP risk from preclinical data is still lacking. We proposed ordinal logistic regression and ordinal random forest models to predict low-, intermediate-, and high-risk drugs based on datasets generated from two experimental protocols. Leave-one-drug-out cross-validation, stratified bootstrap, and permutation predictor importance were applied to estimate and interpret the model performance under uncertainty. The potential outlier drugs identified by our models are consistent with their descriptions in the literature. Our method is accurate, interpretable, and thus useable as supplemental evidence in the drug safety assessment.
翻译:Torades de pointes(TdP)是一种不规则的心脏节奏,其特点是跳速率更快,并有可能导致突发性心脏病死亡。在临床前研究中,为理解药物引起的TdP投入了大量努力。然而,仍然缺乏一个综合统计学习框架,能够根据临床前数据准确预测药物引起的TdP风险。我们提议了基于两个实验协议产生的数据集预测低、中、高风险药物的异常后勤回归和随机森林模型。在不确定性下,对模型的性能进行了评估与解释。我们的模型所查明的潜在异性药物与文献中的描述是一致的。我们的方法是准确的、可解释的,因此可以用作药物安全评估的补充证据。