Kashuba A D, Ballow C H, Forrest A
Center for Clinical Pharmacy Research, School of Pharmacy, State University of New York at Buffalo 14260, USA.
Antimicrob Agents Chemother. 1996 Aug;40(8):1860-5. doi: 10.1128/AAC.40.8.1860.
Data were gathered during an activity-controlled trial in which seriously ill, elderly patients were randomized to receive intravenous ceftazidime or ciprofloxacin and for which adaptive feedback control of drug concentrations in plasma and activity profiles was prospectively performed. The adaptive feedback control algorithm for ceftazidime used an initial population model, a maximum a posteriori (MAP)-Bayesian pharmacokinetic parameter value estimator, and an optimal, sparse sampling strategy for ceftazidime that had been derived from data in the literature obtained from volunteers. Iterative two-stage population pharmacokinetic analysis was performed to develop an unbiased MAP-Bayesian estimator and updated optimal, sparse sampling strategies. The final median values of the population parameters were follows: the volume of distribution of the central compartment was equal to 0.249 liter/kg, the volume of distribution of the peripheral compartment was equal to 0.173 liter/kg, the distributional clearance between the central and peripheral compartments was equal to 0.2251 liter/h/kg, the slope of the total clearance (CL) versus the creatinine clearance (CLCR) was equal to 0.000736 liter/h/kg of CL/1 ml/min/1.73 m2 of CLCR, and nonrenal clearance was equal to + 0.00527 liter/h/kg. Optimal sampling times were dependent on CLCR; for CLCR of > or = 30 ml/min/1.73 m2, the optimal sampling times were 0.583, 3.0, 7.0, and 16.0 h and, for CLCR of < 30 ml/min/1.73 m2, optimal sampling times were 0.583, 4.15, 11.5, and 24.0 h. The study demonstrates that because pharmacokinetic information from volunteers may often not be reflective of specialty populations such as critically ill elderly individuals, iterative two-stage population pharmacokinetic analysis, MAP-Bayesian parameter estimation, and optimal, sparse sampling strategy can be important tools in characterizing their pharmacokinetics.
数据收集于一项活动对照试验,在该试验中,病情严重的老年患者被随机分配接受静脉注射头孢他啶或环丙沙星,并对血浆中药物浓度和活动情况进行前瞻性的适应性反馈控制。头孢他啶的适应性反馈控制算法使用了初始群体模型、最大后验(MAP)-贝叶斯药代动力学参数值估计器,以及从志愿者的文献数据中推导出来的针对头孢他啶的最优、稀疏采样策略。进行了迭代两阶段群体药代动力学分析,以开发无偏的MAP-贝叶斯估计器和更新后的最优、稀疏采样策略。群体参数的最终中位数如下:中央室的分布容积等于0.249升/千克,外周室的分布容积等于0.173升/千克,中央室与外周室之间的分布清除率等于0.2251升/小时/千克,总清除率(CL)与肌酐清除率(CLCR)的斜率等于0.000736升/小时/千克的CL/1毫升/分钟/1.73平方米的CLCR,非肾清除率等于+0.00527升/小时/千克。最优采样时间取决于CLCR;对于CLCR≥30毫升/分钟/1.73平方米,最优采样时间为0.583、3.0、7.0和16.0小时,对于CLCR<30毫升/分钟/1.73平方米,最优采样时间为0.583、4.15、11.5和24.0小时。该研究表明,由于志愿者的药代动力学信息可能往往不能反映重症老年个体等特殊人群的情况,迭代两阶段群体药代动力学分析、MAP-贝叶斯参数估计和最优、稀疏采样策略可能是表征其药代动力学的重要工具。