Bertz R J, Granneman G R
Department of Pharmacokinetics and Biopharmaceutics, Abbott Laboratories, Abbott Park, Illinois, USA.
Clin Pharmacokinet. 1997 Mar;32(3):210-58. doi: 10.2165/00003088-199732030-00004.
This article reviews the information available to assist pharmacokineticists in the prediction of metabolic drug interactions. Significant advances in this area have been made in the last decade, permitting the identification in early drug development of dominant cytochrome P450 (CYP) isoform(s) metabolising a particular drug as well as the ability of a drug to inhibit a specific CYP isoform. The major isoforms involved in human drug metabolism are CYP3A, CYP2D6, CYP2C, CYP1A2 and CYP2E1. Often patients are taking multiple concurrent medications, and thus an assessment of potential drug-drug interactions is imperative. A database containing information about the clearance routes for over 300 drugs from multiple therapeutic classes, including analgesics, anti-infectives, psychotropics, anticonvulsants, cancer chemotherapeutics, gastrointestinal agents, cardiovascular agents and others, was constructed to assist in the semiquantitative prediction of the magnitude of potential interactions with drugs under development. With knowledge of the in vitro inhibition constant of a drug (Ki) for a particular CYP isoform, it is theoretically possible to assess the likelihood of interactions for a drug cleared through CYP-mediated metabolism. For many agents, the CYP isoform involved in metabolism has not been identified and there is substantial uncertainty given the current knowledge base. The mathematical concepts for prediction based on competitive enzyme inhibition are reviewed in this article. These relationships become more complex if the inhibition is of a mixed competitive/noncompetitive nature. Sources of uncertainty and inaccuracy in predicting the magnitude of in vivo inhibition includes the nature and design of in vitro experiments to determine Ki, inhibitor concentration in the hepatic cytosol compared with that in plasma, prehepatic metabolism, presence of active metabolites and enzyme induction. The accurate prospective prediction of drug interactions requires rigorous attention to the details of the in vitro results, and detailed information about the pharmacokinetics and metabolism of the inhibitor and inhibited drug. With the discussion of principles and accompanying tabulation of literature data concerning the clearance of various drugs, a framework for reasonable semiquantitative predictions is offered in this article.
本文综述了可帮助药代动力学家预测药物代谢相互作用的现有信息。在过去十年中,该领域取得了重大进展,使得在药物研发早期就能确定代谢特定药物的主要细胞色素P450(CYP)同工酶,以及一种药物抑制特定CYP同工酶的能力。参与人体药物代谢的主要同工酶有CYP3A、CYP2D6、CYP2C、CYP1A2和CYP2E1。患者通常同时服用多种药物,因此评估潜在的药物相互作用势在必行。构建了一个数据库,其中包含来自多种治疗类别的300多种药物的清除途径信息,包括镇痛药、抗感染药、精神药物、抗惊厥药、癌症化疗药、胃肠道药物、心血管药物等,以协助半定量预测正在研发的药物潜在相互作用的程度。了解一种药物对特定CYP同工酶的体外抑制常数(Ki),理论上就有可能评估通过CYP介导的代谢清除的药物发生相互作用的可能性。对于许多药物,参与代谢的CYP同工酶尚未确定,鉴于目前的知识库,存在很大的不确定性。本文综述了基于竞争性酶抑制进行预测的数学概念。如果抑制具有混合竞争/非竞争性质,这些关系会变得更加复杂。预测体内抑制程度时不确定性和不准确的来源包括用于确定Ki的体外实验的性质和设计、肝胞液中抑制剂浓度与血浆中抑制剂浓度的比较、肝前代谢、活性代谢物的存在以及酶诱导。准确的药物相互作用前瞻性预测需要严格关注体外实验结果的细节,以及抑制剂和被抑制药物的药代动力学和代谢的详细信息。通过对各种药物清除的原理进行讨论并附带文献数据列表,本文提供了一个合理的半定量预测框架。