Department of Pharmaceutical Sciences, University at Buffalo, SUNY, Buffalo, NY, USA.
Faculty of Pharmacy, Universités Paris Descartes-Paris Diderot, Paris, France.
Br J Clin Pharmacol. 2019 Mar;85(3):516-529. doi: 10.1111/bcp.13811. Epub 2019 Jan 4.
Tacrolimus has been associated with notable extrarenal adverse effects (AEs), which are unpredictable and impact patient morbidity. The association between model-predicted tacrolimus exposure metrics and standardized extrarenal AEs in stable renal transplant recipients was investigated and a limited sampling strategy (LSS) was developed to predict steady-state tacrolimus area under the curve over a 12-h dosing period (AUC ).
All recipients receiving tacrolimus and mycophenolic acid ≥6 months completed a 12-h cross-sectional observational pharmacokinetic-pharmacodynamic study. Patients were evaluated for the presence of individual and composite gastrointestinal, neurological, and aesthetic AEs during the study visit. The associations between AEs and tacrolimus exposure metrics generated from a published population pharmacokinetic model were investigated using a logistic regression analysis in NONMEM 7.3. An LSS was determined using a Bayesian estimation method with the same patients.
Dose-normalized tacrolimus AUC and apparent clearance were independently associated with diarrhoea, dyspepsia, insomnia and neurological AE ratio. Dose-normalized tacrolimus maximum concentration was significantly correlated with skin changes and acne. No AE associations were found with trough concentrations. Using limited sampling at 0, 2h; 0, 1, 4h; and 0, 1, 2, 4h provided a precise and unbiased prediction of tacrolimus AUC (root mean squared prediction error < 10%), which was not well characterized using trough concentrations only (root mean squared prediction error >15%).
Several AEs (i.e. diarrhoea, dyspepsia, insomnia and neurological AE ratio) were associated with tacrolimus dose normalized AUC and clearance. Skin changes and acne were associated with dose-normalized maximum concentrations. To facilitate clinical implementation, a LSS was developed to predict AUC values using sparse patient data to efficiently assess projected immunosuppressive exposure and potentially minimize AE manifestations.
他克莫司与显著的肾外不良事件(AE)有关,这些事件是不可预测的,会影响患者的发病率。本研究旨在调查稳定期肾移植受者中模型预测的他克莫司暴露指标与标准化肾外不良事件之间的关系,并开发一种有限采样策略(LSS)来预测 12 小时给药期内他克莫司的稳态 AUC。
所有接受他克莫司和吗替麦考酚酯治疗≥6 个月的受者完成了一项 12 小时的横断面药代动力学-药效学研究。在研究访视期间,评估患者是否存在单独和复合胃肠道、神经和美容不良事件。使用 NONMEM 7.3 中的逻辑回归分析,研究了 AE 与从已发表的群体药代动力学模型中生成的他克莫司暴露指标之间的关系。使用相同患者的贝叶斯估计方法确定了 LSS。
剂量标准化的他克莫司 AUC 和表观清除率与腹泻、消化不良、失眠和神经 AE 比独立相关。剂量标准化的他克莫司最大浓度与皮肤变化和痤疮显著相关。与谷浓度无 AE 相关。在 0、2 小时;0、1、4 小时;0、1、2、4 小时进行有限采样,可以精确且无偏地预测他克莫司 AUC(均方根预测误差<10%),而仅使用谷浓度则无法很好地描述(均方根预测误差>15%)。
几种 AE(即腹泻、消化不良、失眠和神经 AE 比)与他克莫司剂量标准化 AUC 和清除率相关。皮肤变化和痤疮与剂量标准化最大浓度相关。为了便于临床实施,开发了一种 LSS,使用稀疏的患者数据来预测 AUC 值,以有效地评估预期的免疫抑制暴露,并可能最大限度地减少 AE 表现。