A matlab framework for estimation of NLME models using stochastic differential equations

被引:15
作者
Mortensen, Stig B. [1 ]
Klim, Soren
Dammann, Bernd
Kristensen, Niels R.
Madsen, Henrik
Overgaard, Rune V.
机构
[1] Tech Univ Denmark, DK-2800 Lyngby, Denmark
[2] Novo Nordisk AS, DK-2880 Bagsvaerd, Denmark
关键词
non-linear mixed-effects modelling; SDE; Kalman smoothing; deconvolution; state-estimation; parameter tracking; MatlabMPI; PK/PD;
D O I
10.1007/s10928-007-9062-4
中图分类号
R9 [药学];
学科分类号
1007 ;
摘要
The non-linear mixed-effects model based on stochastic differential equations (SDEs) provides an attractive residual error model, that is able to handle serially correlated residuals typically arising from structural mis-specification of the true underlying model. The use of SDEs also opens up for new tools for model development and easily allows for tracking of unknown inputs and parameters over time. An algorithm for maximum likelihood estimation of the model has earlier been proposed, and the present paper presents the first general implementation of this algorithm. The implementation is done in Matlab and also demonstrates the use of parallel computing for improved estimation times. The use of the implementation is illustrated by two examples of application which focus on the ability of the model to estimate unknown inputs facilitated by the extension to SDEs. The first application is a deconvolution-type estimation of the insulin secretion rate based on a linear two-compartment model for C-peptide measurements. In the second application the model is extended to also give an estimate of the time varying liver extraction based on both C-peptide and insulin measurements.
引用
收藏
页码:623 / 642
页数:20
相关论文
共 24 条
[2]  
[Anonymous], 1923, LECT CAUCHYS PROBLEM
[3]  
BEAL SL, 2004, NONMEM USERS GUIDE
[4]   One week's treatment with the long-acting glucagon-like peptide 1 derivative liraglutide (NN2211) markedly improves 24-h glycemia and α- and β-cell function and reduces endogenous glucose release in patients with type 2 diabetes [J].
Degn, KB ;
Juhl, CB ;
Sturis, J ;
Jakobsen, G ;
Brock, B ;
Chandramouli, V ;
Rungby, J ;
Landau, BR ;
Schmitz, O .
DIABETES, 2004, 53 (05) :1187-1194
[5]   Nonparametric input estimation in physiological systems: Problems, methods, and case studies [J].
DeNicolao, G ;
Sparacino, G ;
Cobelli, C .
AUTOMATICA, 1997, 33 (05) :851-870
[6]  
Dennis, 1996, NUMERICAL METHODS UN
[7]  
Gabrielsson J., 1997, PHARMACOKINETIC PHAR
[8]  
Gelb A, 1982, APPL OPTIMAL ESTIMAT
[9]  
HOLST J, 2000, P 13 IFAC S SYST ID
[10]  
Kalman R. E. E., 1961, J. Basic Eng., V83, P95