Godley P J, Ludden T M, Clementi W A, Godley S E, Ramsey R R
College of Pharmacy, University of Texas at Austin.
Clin Pharm. 1987 Aug;6(8):634-9.
The predictive performance of a Bayesian regression-analysis computer program that uses non-steady-state phenytoin data was evaluated. Forty patients receiving phenytoin or phenytoin sodium who had two or more non-steady-state serum concentrations were selected for study. Additional serum concentrations and dosing data were collected as they became available, but no effort was made to control the number or timing of serum concentration determinations. Patients were categorized into four groups for evaluation of the effect of potential bioavailability problems and length of dosing history (time over which serum concentration-time data were collected) on the ability to predict subsequent phenytoin concentrations. Population parameters for phenytoin maximum rate of elimination (Vmax), apparent Michaelis-Menten constant (Km), volume of distribution (V), and bioavailability (F) were obtained from the literature. Predictions based on serum phenytoin concentrations and dosing histories (information intervals) of 5 or 10 days were compared with predictions based on naive (population-based) estimates using prediction-error analysis. In each patient group, the use of either 5-day or 10-day information intervals resulted in a significant increase in precision and a significant reduction in bias compared with naive estimates. For the group of patients who initially had two or more serum concentrations within the first five days of monitoring, predictions showed a marked increase in bias and a decrease in precision as the time interval from the last measured concentration to the time of prediction increased.(ABSTRACT TRUNCATED AT 250 WORDS)
对一个使用非稳态苯妥英数据的贝叶斯回归分析计算机程序的预测性能进行了评估。选择了40名接受苯妥英或苯妥英钠治疗且有两个或更多非稳态血清浓度的患者进行研究。随着额外血清浓度和给药数据的获取,对其进行了收集,但未对血清浓度测定的次数或时间进行控制。将患者分为四组,以评估潜在生物利用度问题和给药史长度(收集血清浓度-时间数据的时间)对预测后续苯妥英浓度能力的影响。苯妥英最大消除率(Vmax)、表观米氏常数(Km)、分布容积(V)和生物利用度(F)的群体参数取自文献。使用预测误差分析,将基于5天或10天的血清苯妥英浓度和给药史(信息间隔)的预测与基于单纯(基于群体)估计的预测进行比较。在每个患者组中,与单纯估计相比,使用5天或10天的信息间隔均导致精度显著提高,偏差显著降低。对于在监测的前五天内最初有两个或更多血清浓度的患者组,随着从最后一次测量浓度到预测时间的时间间隔增加,预测显示偏差显著增加,精度降低。(摘要截断于250字)