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首页> 外文期刊>Clinical therapeutics >Development of a population pharmacokinetic model for carbamazepine based on sparse therapeutic monitoring data from pediatric patients with epilepsy.
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Development of a population pharmacokinetic model for carbamazepine based on sparse therapeutic monitoring data from pediatric patients with epilepsy.

机译:基于来自小儿癫痫患者的稀疏治疗监测数据,开发卡马西平的总体药代动力学模型。

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BACKGROUND: Population models can be important extensions of therapeutic drug monitoring (TDM), as they allow estimation of individual pharmacokinetic parameters based on a small number of measured drug concentrations. OBJECTIVE: This study used a Bayesian approach to explore the utility of routinely collected and sparse TDM data (1 sample per patient) for carbamazepine (CBZ) monotherapy in developing a population pharmacokinetic (PPK) model for CBZ in pediatric patients that would allow prediction of CBZ concentrations for both immediate- and controlled-release formulations. METHODS: Patient and TDM data were obtained from a pediatric neurology outpatient database. Data were analyzed using an iterative 2-stage Bayesian algorithm and a nonparametric adaptive grid algorithm. Models were compared by final log likelihood, mean error (ME) as a measure of bias, and root mean squared error (RMSE) as a measure of precision. RESULTS: Fifty-seven entries with data on CBZ monotherapy were identified from the database and used in the analysis (36 from males, 21 from females; mean [SD] age, 9.1 [4.4] years [range, 2-21 years]). Preliminary models estimating clearance (Cl) or the elimination rate constant (K(el)) gave good prediction of serum concentrations compared with measured serum concentrations, but estimates of Cl and K(el) were highly correlated with estimates of volume of distribution (V(d)). Different covariate models were then tested. The selected model had zero-order input and had age and body weight as covariates. Cl (L/h) was calculated as K(el) . V(d), where K(el) = [K(i) - (K(s) . age)] and V(d) = [V(i) + (V(s) . body weight)]. Median parameter estimates were V(i) (intercept) = 11.5 L (fixed); V(s) (slope) = 0.3957 L/kg (range, 0.01200-1.5730); K(i) (intercept) = 0.173 h(-1) (fixed); and K(s) (slope) = 0.004487 h(-1) . y(-1) (range, 0.0001800-0.02969). The fit was good for estimates of steady-state serum concentrations based on prior values (population median estimates) (R = 0.468; R(2) = 0.219) but was even better for predictions based on individual Bayesian posterior values (R(2) = 0.991), with little bias (ME = -0.079) and good precision (RMSE = 0.055). CONCLUSIONS: Based on the findings of this study, sparse TDM data can be used for PPK modeling of CBZ clearance in children with epilepsy, and these models can be used to predict Cl at steady state in pediatric patients. However, to estimate additional pharmacokinetic model parameters (eg, the absorption rate constant and V(d)), it would be necessary to combine sparse TDM data with additional well-timed samples. This would allow development of more informative PPK models that could be used as part of Bayesian dose-individualization strategies.
机译:背景:人群模型可能是治疗药物监测(TDM)的重要扩展,因为它们可以基于少量测得的药物浓度估算各个药物代谢动力学参数。目的:本研究采用贝叶斯方法研究了卡马西平(CBZ)单药治疗常规收集和稀疏的TDM数据(每位患者1个样品)在建立小儿患者CBZ的群体药代动力学(PPK)模型中的实用性,该模型可预测速释和控释制剂的CBZ浓度。方法:患者和TDM数据从儿科神经病学门诊数据库获得。使用迭代2级贝叶斯算法和非参数自适应网格算法分析数据。通过最终对数似然,作为偏差量度的均方误差(ME)和作为精度量度的均方根误差(RMSE)对模型进行比较。结果:从数据库中识别出五十七项包含CBZ单药治疗数据的条目并用于分析(男性36例,女性21例;平均[SD]年龄9.1 [4.4]岁[范围2-21岁]) 。估计清除率(Cl)或消除​​速率常数(K(el))的初步模型与测得的血清浓度相比可以很好地预测血清浓度,但是Cl和K(el)的估计与分布体积的估计高度相关(V (d))。然后测试了不同的协变量模型。所选模型的输入为零级,年龄和体重为协变量。 Cl(L / h)计算为K(el)。 V(d),其中K(el)= [K(i)-(K(s)。age)]和V(d)= [V(i)+(V(s)。体重)]。中值参数估计为V(i)(截距)= 11.5 L(固定); V(s)(斜率)= 0.3957 L / kg(范围0.01200-1.5730); K(i)(截距)= 0.173 h(-1)(固定);和K(s)(坡度)= 0.004487 h(-1)。 y(-1)(范围0.0001800-0.02969)。该拟合对于基于先前值(人口中位数估计值)的稳态血清浓度估计值是很好的(R = 0.468; R(2)= 0.219),但对于基于单个贝叶斯后验值的预测(R(2))甚至更好。 = 0.991),几乎没有偏差(ME = -0.079)和高精度(RMSE = 0.055)。结论:基于本研究的结果,稀疏的TDM数据可用于癫痫患儿CBZ清除的PPK模型,并且这些模型可用于预测小儿患者稳态时的Cl。但是,为了估算其他药代动力学模型参数(例如吸收速率常数和V(d)),有必要将稀疏TDM数据与其他定时性好的样本结合起来。这将允许开发更多信息的PPK模型,该模型可以用作贝叶斯剂量个体化策略的一部分。

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