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早期药物发现阶段药物代谢研究方法:肝清除率和 P450 贡献预测。

Methodologies for investigating drug metabolism at the early drug discovery stage: prediction of hepatic drug clearance and P450 contribution.

机构信息

Laboratory of Drug Metabolism and Pharmacokinetics, Showa Pharmaceutical University, Machida, Tokyo 194-8543, Japan.

出版信息

Curr Drug Metab. 2010 Oct;11(8):678-85. doi: 10.2174/138920010794233503.

Abstract

The attrition rate in drug development is being reduced by continuous advances in science and technology introduced by various academic institutions and pharmaceutical companies. This has been certainly noticeable in reducing the frequency with which unfavorable absorption, distribution, metabolism, and elimination (ADME) characteristics of any candidate drug causes failure in clinical development. Nonetheless, it is important that the objectives in reducing attrition during later stages of development are matched by information generated in the earliest stage of discovery. In this review, we summarize the methodologies employed during the early stages of drug discovery and discuss new findings in the areas of (1) drug metabolism enzymes, (2) the contribution of cytochrome P450 enzymes (P450, CYP) to hepatic metabolism, (3) prediction of hepatic intrinsic clearance, (4) reaction phenotyping, and (5) the metabolic differences between highly homologous enzymes such as CYP3A4 and CYP3A5. The total contribution of P450 and UDP-glucuronosyltransferases to drug metabolism is reported to be more than 80%; therefore, glucuronidation is increasingly recognized as an important clearance pathway in addition to that of P450 enzymes. When estimating the contribution of P450, interpreting the results of inhibition studies using a single P450 inhibitor can lead to false conclusions. For instance, 1-aminobenzotriazole and SKF-525A have a varying range of IC(50) values for inhibition of drug exidation-reaction by different CYP450 enzymes. There are disparities between methodologies at early stage drug discovery and late stage development. For example, although the drug depletion approach for the prediction of hepatic intrinsic clearance may not be desirable at late stages of development, it is suitable at the early drug discovery stage since kinetic characterization and measurement of specific drug metabolites are not required. Data from protein binding assays in plasma and/or liver microsomes is an integral part to predicting hepatic clearance; therefore, the prediction methods for protein binding have been addressed in terms of automation and in silico prediction. The approach to reaction phenotyping using recombinant P450 microsome data are reviewed as this approach enables combining the drug depletion method with appropriate scaling factors to predict clearance values. CYP3A enzymes have broad substrate specificities and are responsible for the oxidative metabolism of more than 50% of clinically used drugs. Although CYP3A4 is the most abundant CYP3A isoform in adult human liver, CYP3A5 may contribute more to CYP3A-mediated drug oxidation by human liver microsomes than CYP3A4 does, especially in Japanese subjects, who typically have a relatively high frequency of genetic CYP3A5 expression. Lack of efficacy and presence of serious side effects in some sub-group of patients remain the biggest sources of drug failure at late stage of drug development. Advances in appreciation of inter-individual variabilities in ADME, by creation of virtual individuals and use of appropriate information from early discovery may lead to a better anticipation of variable clinical and toxicological outcome following administration of any new drug candidate. Thus may also help with dosing strategies which minimize the potential side effects and maximize the clinical benefits. Accordingly, front-loading of efforts for characterizing the candidate drugs at early stages of discovery is recommended.

摘要

药物研发中的损耗率正在通过各学术机构和制药公司引入的科学技术的持续进步而降低。这在降低候选药物的任何不利吸收、分布、代谢和消除(ADME)特性导致临床开发失败的频率方面肯定是显而易见的。尽管如此,在开发后期降低损耗的目标与在发现的最早阶段产生的信息相匹配是很重要的。在这篇综述中,我们总结了药物发现早期阶段所采用的方法,并讨论了在以下领域的新发现:(1)药物代谢酶;(2)细胞色素 P450 酶(P450,CYP)对肝脏代谢的贡献;(3)肝内清除率的预测;(4)反应表型;(5)高度同源酶(如 CYP3A4 和 CYP3A5)之间的代谢差异。据报道,P450 和 UDP-葡糖醛酸基转移酶对药物代谢的总贡献超过 80%;因此,除了 P450 酶外,葡醛酸化也被越来越多地认为是一种重要的清除途径。在估计 P450 的贡献时,使用单一 P450 抑制剂进行抑制研究的结果解释可能会导致错误的结论。例如,1-氨基苯并三唑和 SKF-525A 对不同 CYP450 酶的药物氧化反应抑制的 IC(50)值范围不同。早期药物发现和后期开发阶段的方法存在差异。例如,虽然在药物开发的后期阶段,预测肝内固有清除率的药物耗竭方法可能不理想,但在早期药物发现阶段是合适的,因为不需要进行动力学特征和特定药物代谢物的测量。来自血浆和/或肝微粒体中蛋白结合测定的数据是预测肝清除率的一个组成部分;因此,已经针对蛋白结合的预测方法进行了自动化和计算机预测方面的研究。使用重组 P450 微粒体数据的反应表型方法进行了综述,因为这种方法可以将药物耗竭方法与适当的比例因子结合起来,以预测清除值。CYP3A 酶具有广泛的底物特异性,负责氧化代谢超过 50%的临床使用药物。虽然 CYP3A4 是成人肝脏中最丰富的 CYP3A 同工酶,但 CYP3A5 可能比 CYP3A4 更能促进人肝微粒体中 CYP3A 介导的药物氧化,尤其是在日本受试者中,他们通常具有相对较高的 CYP3A5 遗传表达频率。在药物开发的后期阶段,一些亚组患者的疗效不佳和严重副作用仍然是药物失败的最大来源。对 ADME 中个体间变异性的认识的进步,通过创建虚拟个体和使用早期发现的适当信息,可以更好地预测任何新候选药物给药后的临床和毒理学结果的变异性。这也有助于制定给药策略,最大限度地减少潜在的副作用并最大限度地提高临床效益。因此,建议在发现的早期阶段投入更多的努力来对候选药物进行特征描述。

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