Tee Khim Boon, Ibrahim Luqman, Hashim Najihah Mohd, Saiman Mohd Zuwairi, Zakaria Zaril Harza, Huri Hasniza Zaman
Department of Clinical Pharmacy and Pharmacy Practice, Faculty of Pharmacy, Universiti Malaya, Kuala Lumpur 50603, Malaysia.
National Pharmaceutical Regulatory Agency, Ministry of Health Malaysia, Petaling Jaya 46200, Malaysia.
Pharmaceutics. 2022 Jun 15;14(6):1268. doi: 10.3390/pharmaceutics14061268.
Pharmacometabolomics in early phase clinical trials demonstrate the metabolic profiles of a subject responding to a drug treatment in a controlled environment, whereas pharmacokinetics measure the drug plasma concentration in human circulation. Application of the personalized peak plasma concentration from pharmacokinetics in pharmacometabolomic studies provides insights into drugs' pharmacological effects through dysregulation of metabolic pathways or pharmacodynamic biomarkers. This proof-of-concept study integrates personalized pharmacokinetic and pharmacometabolomic approaches to determine the predictive pharmacodynamic response of human metabolic pathways for type 2 diabetes. In this study, we use metformin as a model drug. Metformin is a first-line glucose-lowering agent; however, the variation of metabolites that potentially affect the efficacy and safety profile remains inconclusive. Seventeen healthy subjects were given a single dose of 1000 mg of metformin under fasting conditions. Fifteen sampling time-points were collected and analyzed using the validated bioanalytical LCMS method for metformin quantification in plasma. The individualized peak-concentration plasma samples determined from the pharmacokinetic parameters calculated using Matlab Simbiology were further analyzed with pre-dose plasma samples using an untargeted metabolomic approach. Pharmacometabolomic data processing and statistical analysis were performed using MetaboAnalyst with a functional meta-analysis peaks-to-pathway approach to identify dysregulated human metabolic pathways. The validated metformin calibration ranged from 80.4 to 2010 ng/mL for accuracy, precision, stability and others. The median and IQR for Cmax was 1248 (849-1391) ng/mL; AUC was 9510 (7314-10,411) ng·h/mL, and Tmax was 2.5 (2.5-3.0) h. The individualized Cmax pharmacokinetics guided the untargeted pharmacometabolomics of metformin, suggesting a series of provisional predictive human metabolic pathways, which include arginine and proline metabolism, branched-chain amino acid (BCAA) metabolism, glutathione metabolism and others that are associated with metformin's pharmacological effects of increasing insulin sensitivity and lipid metabolism. Integration of pharmacokinetic and pharmacometabolomic approaches in early-phase clinical trials may pave a pathway for developing targeted therapy. This could further reduce variability in a controlled trial environment and aid in identifying surrogates for drug response pathways, increasing the prediction of responders for dose selection in phase II clinical trials.
早期临床试验中的药物代谢组学展示了在可控环境下受试者对药物治疗的代谢谱,而药代动力学则测量人体循环中的药物血浆浓度。在药物代谢组学研究中应用来自药代动力学的个性化血浆峰浓度,可通过代谢途径失调或药效学生物标志物深入了解药物的药理作用。这项概念验证研究整合了个性化药代动力学和药物代谢组学方法,以确定人类代谢途径对2型糖尿病的预测性药效学反应。在本研究中,我们使用二甲双胍作为模型药物。二甲双胍是一线降糖药物;然而,潜在影响疗效和安全性的代谢物变化仍不明确。17名健康受试者在禁食条件下单次服用1000 mg二甲双胍。采集15个采样时间点,并使用经过验证的生物分析液相色谱-质谱法分析血浆中二甲双胍的含量以进行定量。使用Matlab Simbiology计算的药代动力学参数确定的个性化峰浓度血浆样本,再与给药前血浆样本一起使用非靶向代谢组学方法进行进一步分析。使用MetaboAnalyst并采用功能元分析峰到途径方法进行药物代谢组学数据处理和统计分析,以识别失调的人类代谢途径。经过验证的二甲双胍校准在准确度、精密度、稳定性等方面的范围为80.4至2010 ng/mL。Cmax的中位数和四分位距为1248(849 - 1391)ng/mL;AUC为9510(7314 - 10411)ng·h/mL,Tmax为2.5(2.5 - 3.0)小时。个性化的Cmax药代动力学指导了二甲双胍的非靶向药物代谢组学研究,提示了一系列临时的预测性人类代谢途径,其中包括精氨酸和脯氨酸代谢、支链氨基酸(BCAA)代谢、谷胱甘肽代谢等,这些与二甲双胍增加胰岛素敏感性和脂质代谢的药理作用相关。在早期临床试验中整合药代动力学和药物代谢组学方法可能为开发靶向治疗铺平道路。这可以进一步减少可控试验环境中的变异性,并有助于识别药物反应途径的替代指标,提高II期临床试验中剂量选择的反应者预测能力。