BAYESIAN DESIGN CRITERIA - COMPUTATION, COMPARISON, AND APPLICATION TO A PHARMACOKINETIC AND A PHARMACODYNAMIC MODEL

被引:37
作者
MERLE, Y
MENTRE, F
机构
[1] INSERM U194, CHU Pitié-Salpêtrière, Paris cedex 13, 75634, 91, Boulevard de l'Hôpital
来源
JOURNAL OF PHARMACOKINETICS AND BIOPHARMACEUTICS | 1995年 / 23卷 / 01期
关键词
BAYESIAN DESIGNS; BAYESIAN ESTIMATION; PRIOR DISTRIBUTION; PHARMACOKINETICS; PHARMACODYNAMICS; E(MAX) MODEL; NONLINEAR MODELS;
D O I
10.1007/BF02353788
中图分类号
R9 [药学];
学科分类号
1007 ;
摘要
In this paper 3 criteria to design experiments for Bayesian estimation of the parameters of nonlinear models with respect to their parameters, when a prior distribution is available, are presented: the determinant of the Bayesian information matrix, the determinant of the pre-posterior covariance matrix, and the expected information provided by an experiment. A procedure to simplify the computation of these criteria is proposed in the case of continuous prior distributions and is compared with the criterion obtained from a linearization of the model about the mean of the prior distribution for tire parameters. This procedure is applied to two models commonly encountered in the area of pharmacokinetics and pharmacodynamics: the one-compartment open model with bolus intravenous single-dose injection and the E(max) model. They both involve two parameters. Additive as well as multiplicative gaussian measurement errors are considered with normal prior distributions. Various combinations of the variances of the prior distribution and of the measurement error are studied. Our attention is restricted to designs with limited numbers of measurements (1 or 2 measurements). This situation often occurs in practice when Bayesian estimation is performed. The optimal Bayesian designs that result vary with the variances of the parameter distribution and with the measurement error. The two-point optimal designs sometimes differ from tire D-optimal designs for tire mean of the prior distribution and may consist of replicating measurements. For the studied cases, the determinant of the Bayesian information matrix and its linearized form lead to the same optimal designs. In some cases, the pre-posterior covariance matrix can be far from its lower bound namely, the inverse of the Bayesian information matrix, especially for the E(max) model and a multiplicative measurement error. The expected information provided by, the experiment and the determinant of the pre-posterior covariance matrix generally lead to the same designs except for the E(max) model and the multiplicative measurement error. Results shore that these criteria can be easily computed and that they could be incorporated in modules for designing experiments.
引用
收藏
页码:101 / 125
页数:25
相关论文
共 25 条
[1]   DEVELOPMENTS IN THE DESIGN OF EXPERIMENTS [J].
ATKINSON, AC .
INTERNATIONAL STATISTICAL REVIEW, 1982, 50 (02) :161-177
[2]  
Bandemer H., 1987, STATISTICS, V18, P171
[3]   OPTIMAL BAYESIAN EXPERIMENTAL-DESIGN FOR LINEAR-MODELS [J].
CHALONER, K .
ANNALS OF STATISTICS, 1984, 12 (01) :283-300
[4]   USE OF PRIOR DISTRIBUTIONS IN DESIGN OF EXPERIMENTS FOR PARAMETER ESTIMATION IN NON-LINEAR SITUATIONS - MULTIRESPONSE CASE [J].
DRAPER, NR ;
HUNTER, WG .
BIOMETRIKA, 1967, 54 :662-&
[5]  
Fedorov V. V., 1972, THEORY OPTIMAL EXPT
[6]   DESIGNS FOR POPULATION PHARMACODYNAMICS - VALUE OF PHARMACOKINETIC DATA AND POPULATION ANALYSIS [J].
HASHIMOTO, Y ;
SHEINER, LB .
JOURNAL OF PHARMACOKINETICS AND BIOPHARMACEUTICS, 1991, 19 (03) :333-353
[7]   APIS - A SOFTWARE FOR MODEL IDENTIFICATION, SIMULATION AND DOSAGE REGIMEN CALCULATIONS IN CLINICAL AND EXPERIMENTAL PHARMACOKINETICS [J].
ILIADIS, A ;
BROWN, AC ;
HUGGINS, ML .
COMPUTER METHODS AND PROGRAMS IN BIOMEDICINE, 1992, 38 (04) :227-239
[8]   DISCRETE APPROXIMATION OF MULTIVARIATE DENSITIES WITH APPLICATION TO BAYESIAN-ESTIMATION [J].
KATZ, D ;
DARGENIO, DZ .
COMPUTATIONAL STATISTICS & DATA ANALYSIS, 1984, 2 (01) :27-36
[9]   DISCRETE APPROXIMATIONS TO CONTINUOUS DENSITY-FUNCTIONS THAT ARE L1-OPTIMAL [J].
KATZ, D .
COMPUTATIONAL STATISTICS & DATA ANALYSIS, 1983, 1 (03) :175-181
[10]   ON A MEASURE OF THE INFORMATION PROVIDED BY AN EXPERIMENT [J].
LINDLEY, DV .
ANNALS OF MATHEMATICAL STATISTICS, 1956, 27 (04) :986-1005