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Bayesian estimation of cyclosporin exposure for routine therapeutic drug monitoring in kidney transplant patients.

机译:肾移植患者常规治疗药物监测的环孢菌素暴露的贝叶斯估计。

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Aims AUC-based monitoring of cyclosporin A (CsA) is useful to optimize dose adaptation in difficult cases. We developed a population pharmacokinetic model to describe dose-exposure relationships for CsA in renal transplant patients and applied it to the Bayesian estimation of AUCs using three blood concentrations. Methods A total of 84 renal graft recipients treated with CsA microemulsion were included in this study. Population pharmacokinetic analysis was conducted using NONMEM. A two-compartment model with zero-order absorption and a lag time best described the data. Bayesian estimation was based on CsA blood concentrations measured before dosing and 1 h and 2 h post dose. Predictive performance was evaluated using a cross-validation approach. Estimated AUCs were compared with AUCs calculated by the trapezoidal method. The Bayesian approach was also applied to an independent group of eight patients exhibiting unusual pharmacokinetic profiles. Results Mean population pharmacokinetic parameters were apparent clearance 30 l h(-1), apparent volume of distribution 79.8 l, duration of absorption 52 min, absorption lag time 7 min. No significant relationships were found between any of the pharmacokinetic parameters and individual characteristics. A good correlation was obtained between Bayesian-estimated and experimental AUCs, with a mean prediction error of 2.8% (95% CI [-0.6, 6.2]) and an accuracy of 13.1% (95% CI [7.5, 17.2]). A good correlation was also obtained in the eight patients with unusual pharmacokinetic profiles (r(2) = 0.96, P < 0.01). Conclusions Our Bayesian approach enabled a good estimation of CsA exposure in a population of patients with variable pharmacokinetic profiles, showing its usefulness for routine AUC-based therapeutic drug monitoring.
机译:目的基于AUC的环孢菌素A(CsA)监测有助于优化困难情况下的剂量适应性。我们开发了一种群体药代动力学模型来描述肾脏移植患者中CsA的剂量-暴露关系,并将其应用于使用三种血液浓度的AUC的贝叶斯估计。方法本研究共纳入84例接受CsA微乳治疗的肾移植受者。使用NONMEM进行群体药代动力学分析。具有零阶吸收和滞后时间的两室模型最能描述数据。贝叶斯估计是基于给药前以及给药后1小时和2小时测得的CsA血药浓度。使用交叉验证方法评估了预测性能。将估计的AUC与通过梯形法计算的AUC进行比较。贝叶斯方法也被应用于独立的八名患者,这些患者表现出异常的药代动力学特征。结果平均群体药代动力学参数为表观清除率30 l h(-1),表观分布体积79.8 l,吸收持续时间52 min,吸收滞后时间7 min。在任何药代动力学参数与个体特征之间均未发现显着关系。贝叶斯估计的和实验的AUC之间获得了良好的相关性,平均预测误差为2.8%(95%CI [-0.6,6.2]),准确度为13.1%(95%CI [7.5,17.2])。在具有异常药代动力学特征的八名患者中也获得了良好的相关性(r(2)= 0.96,P <0.01)。结论我们的贝叶斯方法可以很好地估计具有不同药代动力学特征的患者群体中的CsA暴露,显示出其对基于AUC的常规治疗药物监测的有用性。

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