Division of Infectious Diseases and Hospital Epidemiology Departments of Medicine and Clinical Research, University Hospital Basel, Basel, Switzerland.
Infectious Disease Modelling Unit, Department of Epidemiology and Public Health, Swiss Tropical and Public Health Institute, Basel, Switzerland.
Antimicrob Agents Chemother. 2018 Jun 26;62(7). doi: 10.1128/AAC.00717-18. Print 2018 Jul.
Despite their high potential for drug-drug interactions (DDI), clinical DDI studies of antiretroviral drugs (ARVs) are often lacking, because the full range of potential interactions cannot feasibly or pragmatically be studied, with some high-risk DDI studies also being ethically difficult to undertake. Thus, a robust method to screen and to predict the likelihood of DDIs is required. We developed a method to predict DDIs based on two parameters: the degree of metabolism by specific enzymes, such as CYP3A, and the strength of an inhibitor or inducer. These parameters were derived from existing studies utilizing paradigm substrates, inducers, and inhibitors of CYP3A to assess the predictive performance of this method by verifying predicted magnitudes of changes in drug exposure against clinical DDI studies involving ARVs. The derived parameters were consistent with the FDA classification of sensitive CYP3A substrates and the strength of CYP3A inhibitors and inducers. Characterized DDI magnitudes ( = 68) between ARVs and comedications were successfully quantified, meaning 53%, 85%, and 98% of the predictions were within 1.25-fold (0.80 to 1.25), 1.5-fold (0.66 to 1.48), and 2-fold (0.66 to 1.94) of the observed clinical data. In addition, the method identifies CYP3A substrates likely to be highly or, conversely, minimally impacted by CYP3A inhibitors or inducers, thus categorizing the magnitude of DDIs. The developed effective and robust method has the potential to support a more rational identification of dose adjustment to overcome DDIs, being particularly relevant in an HIV setting, given the treatment's complexity, high DDI risk, and limited guidance on the management of DDIs.
尽管抗逆转录病毒药物(ARV)具有很高的药物-药物相互作用(DDI)的潜力,但临床 DDI 研究往往缺乏,因为无法或不切实际地全面研究潜在的相互作用,一些高风险的 DDI 研究在伦理上也难以进行。因此,需要一种强大的方法来筛选和预测 DDI 的可能性。我们开发了一种基于两个参数的 DDI 预测方法:特定酶(如 CYP3A)代谢的程度和抑制剂或诱导剂的强度。这些参数源自利用范式底物、诱导剂和抑制剂评估 CYP3A 的现有研究,通过验证涉及 ARV 的临床 DDI 研究中药物暴露变化的预测幅度,来验证这种方法的预测性能。推导的参数与 FDA 对敏感 CYP3A 底物和 CYP3A 抑制剂和诱导剂的分类一致。成功量化了 ARV 和合并用药之间的特征性 DDI 幅度(=68),这意味着 53%、85%和 98%的预测值在 1.25 倍(0.80 至 1.25)、1.5 倍(0.66 至 1.48)和 2 倍(0.66 至 1.94)范围内观察到的临床数据。此外,该方法还确定了 CYP3A 底物可能受到 CYP3A 抑制剂或诱导剂高度或相反的最小影响,从而分类 DDI 的幅度。该开发的有效且强大的方法有可能支持更合理地确定剂量调整以克服 DDI,特别是在 HIV 环境中,鉴于治疗的复杂性、高 DDI 风险和对 DDI 管理的有限指导。