A survey of population analysis methods and software for complex pharmacokinetic and pharmacodynamic models with examples

被引:147
作者
Bauer, Robert J.
Guzy, Serge
Ng, Chee
机构
[1] XOMA US LLC, Pharmacokinet Pharmacodynam & Bioinformat, Berkeley, CA 94710 USA
[2] Canc Therapy & Res Ctr S Texas, Inst Drug Dev, San Antonio, TX 78229 USA
关键词
population; pharmacokinetics; pharmacodynamics; clinical; software; computation methods;
D O I
10.1208/aapsj0901007
中图分类号
R9 [药学];
学科分类号
1007 ;
摘要
An overview is provided of the present population analysis methods and an assessment of which software packages are most appropriate for various PK/PD modeling problems. Four PK/PD example problems were solved using the programs NONMEM VI beta version, PDx-MCPEM, S-ADAPT, MONOLIX, and WinBUGS, informally assessed for reasonable accuracy and stability in analyzing these problems. Also, for each program we describe their general interface, ease of use, and abilities. We conclude with discussing which algorithms and software are most suitable for which types of PK/PD problems. NONMEM FO method is accurate and fast with 2-compartment models, if intra-individual and interindividual variances are small. The NONMEM FOCE method is slower than FO, but gives accurate population values regardless of size of intra- and interindividual errors. However, if data are very sparse, the NONMEM FOCE method can lead to inaccurate values, while the Laplace method can provide more accurate results. The exact EM methods (performed using S-ADAPT, PDx-MCPEM, and MONOLIX) have greater stability in analyzing complex PK/PD models, and can provide accurate results with sparse or rich data. MCPEM methods perform more slowly than NONMEM FOCE for simple models, but perform more quickly and stably than NONMEM FOCE for complex models. WinBUGS provides accurate assessments of the population parameters, standard errors and 95% confidence intervals for all examples. Like the MCPEM methods, WinBUGS's efficiency increases relative to NONMEM when solving the complex PK/PD models.
引用
收藏
页码:E60 / E83
页数:24
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