Department of Gastroenterology and Hepatology, University Hospital Basel, University of Basel, Basel, Switzerland.
Clin Pharmacol Ther. 2010 Jul;88(1):52-9. doi: 10.1038/clpt.2009.248. Epub 2010 Mar 10.
Drug safety is of great importance to public health. The detrimental effects of drugs not only limit their application but also cause suffering in individual patients and evoke distrust of pharmacotherapy. For the purpose of identifying drugs that could be suspected of causing adverse reactions, we present a structure-activity relationship analysis of adverse drug reactions (ADRs) in the central nervous system (CNS), liver, and kidney, and also of allergic reactions, for a broad variety of drugs (n = 507) from the Swiss drug registry. Using decision tree induction, a machine learning method, we determined the chemical, physical, and structural properties of compounds that predispose them to causing ADRs. The models had high predictive accuracies (78.9-90.2%) for allergic, renal, CNS, and hepatic ADRs. We show the feasibility of predicting complex end-organ effects using simple models that involve no expensive computations and that can be used (i) in the selection of the compound during the drug discovery stage, (ii) to understand how drugs interact with the target organ systems, and (iii) for generating alerts in postmarketing drug surveillance and pharmacovigilance.
药物安全对于公众健康至关重要。药物的不良影响不仅限制了它们的应用,还会给个别患者带来痛苦,并引发对药物治疗的不信任。为了识别可能引起不良反应的药物,我们对来自瑞士药物登记处的 507 种广泛的药物进行了中枢神经系统 (CNS)、肝脏和肾脏不良反应 (ADR) 以及过敏反应的构效关系分析。使用决策树归纳这一机器学习方法,我们确定了使化合物易引起 ADR 的化学、物理和结构特性。这些模型对过敏、肾、CNS 和肝 ADR 的预测准确率很高(78.9%-90.2%)。我们展示了使用简单模型预测复杂终末器官效应的可行性,这些模型不涉及昂贵的计算,可用于 (i) 在药物发现阶段选择化合物,(ii) 了解药物如何与靶器官系统相互作用,以及 (iii) 生成药物上市后监测和药物警戒中的警报。