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Assessment of the cardiovascular adverse effects of drug-drug interactions through a combined analysis of spontaneous reports and predicted drug-target interactions

机译:通过对自发报告和预测的药物-靶标相互作用的综合分析评估药物-药物相互作用的心血管不良反应

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摘要

Adverse drug effects (ADEs) are one of the leading causes of death in developed countries and are the main reason for drug recalls from the market, whereas the ADEs that are associated with action on the cardiovascular system are the most dangerous and widespread. The treatment of human diseases often requires the intake of several drugs, which can lead to undesirable drug-drug interactions (DDIs), thus causing an increase in the frequency and severity of ADEs. An evaluation of DDI-induced ADEs is a nontrivial task and requires numerous experimental and clinical studies. Therefore, we developed a computational approach to assess the cardiovascular ADEs of DDIs. This approach is based on the combined analysis of spontaneous reports (SRs) and predicted drug-target interactions to estimate the five cardiovascular ADEs that are induced by DDIs, namely, myocardial infarction, ischemic stroke, ventricular tachycardia, cardiac failure, and arterial hypertension. We applied a method based on least absolute shrinkage and selection operator (LASSO) logistic regression to SRs for the identification of interacting pairs of drugs causing corresponding ADEs, as well as noninteracting pairs of drugs. As a result, five datasets containing, on average, 3100 potentially ADE-causing and non-ADE-causing drug pairs were created. The obtained data, along with information on the interaction of drugs with 1553 human targets predicted by PASS Targets software, were used to create five classification models using the Random Forest method. The average area under the ROC curve of the obtained models, sensitivity, specificity and balanced accuracy were 0.837, 0.764, 0.754 and 0.759, respectively. The predicted drug targets were also used to hypothesize the potential mechanisms of DDI-induced ventricular tachycardia for the top-scoring drug pairs. The created five classification models can be used for the identification of drug combinations that are potentially the most or least dangerous for the cardiovascular system.
机译:药物不良反应(ADEs)是发达国家的主要死亡原因之一,并且是从市场上召回药物的主要原因,而与对心血管系统起作用有关的ADEs是最危险和最广泛的。人类疾病的治疗通常需要摄入几种药物,这可能导致不良的药物-药物相互作用(DDI),从而导致ADE的频率和严重性增加。 DDI诱导的ADEs的评估是一项艰巨的任务,需要大量的实验和临床研究。因此,我们开发了一种计算方法来评估DDI的心血管ADE。此方法基于对自发报告(SR)和预测的药物-靶标相互作用的组合分析,以估计DDI诱导的五种心血管ADE,即心肌梗塞,缺血性中风,室性心动过速,心力衰竭和动脉高压。我们将基于最小绝对收缩和选择算子(LASSO)逻辑回归的方法应用于SR,以识别引起相应ADE的相互作用的药物对以及非相互作用的药物对。结果,创建了五个平均包含3100个可能引起ADE的药物和不引起ADE的药物对的数据集。使用随机森林方法,将获得的数据以及药物与PASS Targets软件预测的1553个人类目标相互作用的信息一起用于创建五个分类模型。获得的模型的ROC曲线下的平均面积,灵敏度,特异性和平衡精度分别为0.837、0.764、0.754和0.759。预测的药物靶标还用于为DDI得分最高的药物对假设DDI诱发的室性心动过速的潜在机制。创建的五个分类模型可用于识别可能对心血管系统危害最大或最小的药物组合。

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