Valerio Luis G, Long Anthony
Center for Drug Evaluation and Research, US Food and Drug Administration, 10903 New Hampshire Avenue, Silver Spring, MD 20993-0002, USA.
Curr Drug Discov Technol. 2010 Sep;7(3):170-87. doi: 10.2174/157016310793180567.
In this study we employed the use of the Meteor computational software program to perform predictions in silico on 17 hepatotoxic drugs for determining human-specific drug metabolites. Congruence of the in silico predictions from a qualitative standpoint of drug metabolite structures was established by comparison to human in vivo drug metabolic profiles characterized in publically available clinical studies. A total of 87 human-specific metabolites were identified from the 17 drugs. We found that Meteor's positive predictions included 4 out of the 9 reported major metabolites (detected in excreta at a level of >10% of the administered p.o. dose) and 10 out of the 15 major phase II metabolites giving a total of 14 correctly predicted drug metabolite structures out of 23 major metabolites. A significant level of unconfirmed positive predictions resulted and discussion on reasons for this is presented. An example is given whereby the in silico metabolism prediction succeeded to predict the putative toxic pathway of one of the drugs whilst conventional rodent liver microsomal assays failed to predict the pathway. Overall, we describe a reasonable simulation of human metabolic profiling using this in silico method with this data set of hepatotoxic drugs now withdrawn from the market. We provide an in-depth and objective discussion of this first of its kind validation test using clinical study data with interest in the prediction human-specific metabolism. Further research is discussed on what areas need to be investigated to improve upon the predictive data. The strong potential of this method to predict human-specific drug metabolites suggests the utility of this computational tool to help support not only the discovery development of therapeutics but also the safety assessment in identifying drug metabolites early to protect patients prior to initiating clinical studies.
在本研究中,我们使用了Meteor计算软件程序对17种肝毒性药物进行计算机模拟预测,以确定人类特有的药物代谢物。通过与公开可用临床研究中所描述的人类体内药物代谢谱进行比较,从药物代谢物结构的定性角度确定了计算机模拟预测的一致性。从这17种药物中总共鉴定出87种人类特有的代谢物。我们发现,Meteor的阳性预测包括9种已报道的主要代谢物中的4种(在排泄物中的检测水平高于口服给药剂量的10%)以及15种主要II相代谢物中的10种,在23种主要代谢物中总共正确预测了14种药物代谢物结构。出现了大量未经证实的阳性预测结果,并对此原因进行了讨论。给出了一个例子,即计算机模拟代谢预测成功预测了其中一种药物的推定毒性途径,而传统的啮齿动物肝微粒体试验未能预测该途径。总体而言,我们描述了使用这种计算机模拟方法对一组现已退市的肝毒性药物数据集进行人类代谢谱的合理模拟。我们使用临床研究数据对这种同类首次验证测试进行了深入且客观的讨论,该测试关注人类特异性代谢的预测。还讨论了为改进预测数据需要在哪些领域进行进一步研究。这种预测人类特异性药物代谢物的方法具有强大潜力,表明这种计算工具不仅有助于支持治疗药物的发现与开发,还能在临床研究启动前早期识别药物代谢物以保护患者方面进行安全性评估。