Charpiat B, Falconi I, Bréant V, Jelliffe R W, Sab J M, Ducerf C, Fourcade N, Thomasson A, Baulieux J
Department of Pharmacy, Croix-Rousse Hospital, Lyon, France.
Ther Drug Monit. 1998 Apr;20(2):158-64. doi: 10.1097/00007691-199804000-00005.
The availability of personal computer programs to individualize drug regimens has stimulated interest in modeling population pharmacokinetics. This study used the NPEM2 software to determine cyclosporine population pharmacokinetic parameter values and distributions in a first group of 25 recipients of liver transplants during their first postoperative week. On a second group of 25 patients, the authors used these values to evaluate Bayesian predictive performance of cyclosporine blood concentrations with the USC*PACK PC program. During the study period, all the patients have been treated by continuous intravenous infusion. The one-compartment model pharmacokinetic parameter-the slope of volume to body weight (Vs) and the elimination rate constant (Kel) values found (mean values: Vs = 2.177 l/kg, Kel = 0.235 h(-1); median values: Vs = 1.559 l/kg, Kel = 0.163 h(-1); the percent coefficient of variation (Vs = 92%, Kel = 79%) appear reasonable and show the ability of NPEM2 to deal with sparse data. When the predictions were studied with day 1, day 2, or day 3 concentrations, predictive bias was respectively -0.030, -0.013, and 0.013 microg/ml, suggesting a greater clearance of cyclosporine immediately after surgery, the clearance decreasing in the days after. With the first three blood levels and the Bayesian fitting procedure, it was possible to predict at least half the subsequent measured blood levels of each patient accurately (within 20%) in more than three-quarters (76%) of the second group of recipients of transplants, and for 40% of patients the authors obtained accurate predictions in 100% of the subsequent blood levels. For a few patients (12%) they found quite poor predictions. The reason for this is unclear. The results suggest that this population model and the Bayesian fitting procedure using two or three blood levels can be reasonably and carefully used to control, in real time, cyclosporine blood levels in a majority of new patients with liver transplants.
个人计算机程序可用于个体化药物治疗方案,这激发了人们对群体药代动力学建模的兴趣。本研究使用NPEM2软件来确定25例肝移植受者术后第一周的环孢素群体药代动力学参数值及其分布情况。在另一组25例患者中,作者使用这些值通过USC*PACK PC程序评估环孢素血药浓度的贝叶斯预测性能。在研究期间,所有患者均接受持续静脉输注治疗。单室模型药代动力学参数——体重与血容量比值(Vs)的斜率以及消除速率常数(Kel)值(平均值:Vs = 2.177 l/kg,Kel = 0.235 h⁻¹;中位数:Vs = 1.559 l/kg,Kel = 0.163 h⁻¹;变异系数百分比(Vs = 92%,Kel = 79%)看起来合理,表明NPEM2能够处理稀疏数据。当用第1天、第2天或第3天的浓度研究预测情况时,预测偏差分别为-0.030、-0.013和0.013μg/ml,这表明术后即刻环孢素清除率较高,随后几天清除率降低。利用前三个血药浓度水平和贝叶斯拟合程序,在超过四分之三(76%)的第二组移植受者中,能够准确预测(误差在20%以内)至少一半患者随后的血药浓度测量值,并且对于40%的患者,作者在100%的后续血药浓度测量中都获得了准确预测。对于少数患者(12%),他们发现预测效果很差。原因尚不清楚。结果表明,这种群体模型以及使用两三个血药浓度水平的贝叶斯拟合程序可合理且谨慎地用于实时控制大多数新的肝移植患者的环孢素血药浓度。