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Improving Detection of Arrhythmia Drug-Drug Interactions in Pharmacovigilance Data through the Implementation of Similarity-Based Modeling

机译:通过基于相似性建模的实施改善药物警戒性数据中心律失常药物相互作用的检测

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摘要

Identification of Drug-Drug Interactions (DDIs) is a significant challenge during drug development and clinical practice. DDIs are responsible for many adverse drug effects (ADEs), decreasing patient quality of life and causing higher care expenses. DDIs are not systematically evaluated in pre-clinical or clinical trials and so the FDA U. S. Food and Drug Administration relies on post-marketing surveillance to monitor patient safety. However, existing pharmacovigilance algorithms show poor performance for detecting DDIs exhibiting prohibitively high false positive rates. Alternatively, methods based on chemical structure and pharmacological similarity have shown promise in adverse drug event detection. We hypothesize that the use of chemical biology data in a post hoc analysis of pharmacovigilance results will significantly improve the detection of dangerous interactions. Our model integrates a reference standard of DDIs known to cause arrhythmias with drug similarity data. To compare similarity between drugs we used chemical structure (both 2D and 3D molecular structure), adverse drug side effects, chemogenomic targets, drug indication classes, and known drug-drug interactions. We evaluated the method on external reference standards. Our results showed an enhancement of sensitivity, specificity and precision in different top positions with the use of similarity measures to rank the candidates extracted from pharmacovigilance data. For the top 100 DDI candidates, similarity-based modeling yielded close to twofold precision enhancement compared to the proportional reporting ratio (PRR). Moreover, the method helps in the DDI decision making through the identification of the DDI in the reference standard that generated the candidate.
机译:药物相互作用研究(DDI)的识别是药物开发和临床实践中的重大挑战。 DDI导致许多药物不良反应(ADE),降低患者的生活质量并导致更高的护理费用。在临床前或临床试验中未对DDI进行系统评估,因此FDA美国食品药品监督管理局依靠上市后监督来监测患者安全。但是,现有的药物警戒算法显示的DDI检测表现出过高的假阳性率表现不佳。或者,基于化学结构和药理相似性的方法在不良药物事件检测中已显示出希望。我们假设在对药物警戒性结果进行事后分析中使用化学生物学数据将大大改善危险相互作用的检测。我们的模型将已知会引起心律不齐的DDI参考标准与药物相似性数据相结合。为了比较药物之间的相似性,我们使用了化学结构(2D和3D分子结构),药物不良副作用,化学基因组靶标,药物适应症分类和已知的药物相互作用。我们根据外部参考标准评估了该方法。我们的结果显示,通过使用相似性度量对从药物警戒性数据中提取的候选者进行排序,可以提高在不同位置的敏感性,特异性和精确度。对于前100名DDI候选人,与比例报告比率(PRR)相比,基于相似度的建模产生了接近两倍的精度提升。此外,该方法通过识别生成候选者的参考标准中的DDI,有助于DDI决策。

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