Vermeulen Nico P E
LACDR--Section Molecular Toxicology, Department of Pharmacochemistry, Vrije Universiteit, De Boelelaan 1083, 1081 HV Amsterdam, The Netherlands.
Curr Top Med Chem. 2003;3(11):1227-39. doi: 10.2174/1568026033451998.
Cytochromes P450 (Cyt P450s) constitute the most important biotransformation enzymes involved in the biotransformation of drugs and other xenobiotics. Because drug metabolism by Cyt P450s plays such an important role in the disposition and in the pharmacological and toxicological effects of drugs, early consideration of ADME-properties is increasingly seen as essential for the discovery and the development of new drugs and drug candidates. The primary aim of this paper is to present various computational approaches used to rationalize and predict the activity and substrate selectivity of Cyt P450s, as well as the possibilities and limitations of these approaches, now and in the future. Attention is also paid to the experimental validation of these approaches by using high-throughput screening (HTS) of affinities to drug-drug interactions at the level of Cyt P450-isoenzymes. Since human Cyt P450 2D6 is one of the most important drug metabolizing enzymes and since in this regard much pioneering work has been done with this Cyt P450, Cyt P450 2D6 is chosen as a model for this discussion. Apart from early mechanism-based ab initio calculations on substrates of Cyt P450 2D6, pharmacophore modeling of ligands (i.e. both substrates and inhibitors) of Cyt P450 2D6 and protein homology modeling have been used successfully for the rationalisation and prediction of metabolite formation by this Cyt P450 isoenzyme. Significant protein structure-related species differences have been reported recently. It is concluded that not one computational approach is capable of rationalizing and reliably predicting metabolite formation by Cyt P450 2D6, but that it is rather the combination of the various complimentary approaches. It is moreover concluded, that experimental validation of the computational models and predictions is often still lacking. With the advent of novel, easily and well applicable in vitro based high throughput assays for ligand binding and turnover this limitation could be overcome soon, however. When effective links with other new and recent developments, such as bioinformatics, neural network computing, genomics and proteomics can be created, in silico rationalisation and prediction of drug metabolism by Cyt P450s is likely to become one of the key technologies in early drug discovery and development processes.
细胞色素P450(Cyt P450s)是参与药物及其他外源性物质生物转化的最重要的生物转化酶。由于Cyt P450s介导的药物代谢在药物的处置以及药理和毒理作用中发挥着如此重要的作用,药物代谢动力学(ADME)性质的早期考量日益被视为新药及候选药物发现与开发的关键所在。本文的主要目的是介绍用于阐释和预测Cyt P450s活性及底物选择性的各种计算方法,以及这些方法目前及未来的可能性与局限性。同时还关注通过对Cyt P450同工酶水平上药物 - 药物相互作用亲和力的高通量筛选(HTS)来对这些方法进行实验验证。鉴于人细胞色素P450 2D6是最重要的药物代谢酶之一,且在这方面针对该Cyt P450已开展了大量开创性工作,故选择细胞色素P450 2D6作为此次讨论的模型。除了对细胞色素P450 2D6底物进行基于早期机制的从头计算外,细胞色素P450 2D6配体(即底物和抑制剂)的药效团建模以及蛋白质同源性建模已成功用于阐释和预测该Cyt P450同工酶的代谢物形成。最近报道了显著的与蛋白质结构相关的物种差异。得出的结论是,没有一种计算方法能够阐释并可靠地预测细胞色素P450 2D6的代谢物形成,而是各种互补方法的组合才行。此外还得出结论,计算模型和预测往往仍缺乏实验验证。不过,随着新型、易于且可良好应用的基于体外的配体结合和周转高通量测定方法的出现,这一局限性可能很快会被克服。当能够与其他新的和近期的进展,如生物信息学、神经网络计算、基因组学和蛋白质组学建立有效联系时,通过计算机对细胞色素P450介导的药物代谢进行阐释和预测很可能会成为早期药物发现和开发过程中的关键技术之一。