Extension of the SAEM algorithm for nonlinear mixed models with 2 levels of random effects
Open Access
- 23 May 2008
- journal article
- research article
- Published by Oxford University Press (OUP) in Biostatistics
- Vol. 10 (1) , 121-135
- https://doi.org/10.1093/biostatistics/kxn020
Abstract
This article focuses on parameter estimation of multilevel nonlinear mixed-effects models (MNLMEMs). These models are used to analyze data presenting multiple hierarchical levels of grouping (cluster data, clinical trials with several observation periods, …). The variability of the individual parameters of the regression function is thus decomposed as a between-subject variability and higher levels of variability (e.g. within-subject variability). We propose maximum likelihood estimates of parameters of those MNLMEMs with 2 levels of random effects, using an extension of the stochastic approximation version of expectation–maximization (SAEM)–Monte Carlo Markov chain algorithm. The extended SAEM algorithm is split into an explicit direct expectation–maximization (EM) algorithm and a stochastic EM part. Compared to the original algorithm, additional sufficient statistics have to be approximated by relying on the conditional distribution of the second level of random effects. This estimation method is evaluated on pharmacokinetic crossover simulated trials, mimicking theophylline concentration data. Results obtained on those data sets with either the SAEM algorithm or the first-order conditional estimates (FOCE) algorithm (implemented in the nlme function of R software) are compared: biases and root mean square errors of almost all the SAEM estimates are smaller than the FOCE ones. Finally, we apply the extended SAEM algorithm to analyze the pharmacokinetic interaction of tenofovir on atazanavir, a novel protease inhibitor, from the Agence Nationale de Recherche sur le Sida 107-Puzzle 2 study. A significant decrease of the area under the curve of atazanavir is found in patients receiving both treatments.Keywords
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This publication has 19 references indexed in Scilit:
- The SAEM algorithm for group comparison tests in longitudinal data analysis based on non‐linear mixed‐effects modelStatistics in Medicine, 2007
- Genetic analysis of growth curves using the SAEM algorithmGenetics Selection Evolution, 2006
- Impact of modelling intra‐subject variability on tests based on non‐linear mixed‐effects models in cross‐over pharmacokinetic trials with application to the interaction of tenofovir on atazanavir in HIV patientsStatistics in Medicine, 2006
- Evaluation by simulation of tests based on non‐linear mixed‐effects models in pharmacokinetic interaction and bioequivalence cross‐over trialsStatistics in Medicine, 2005
- Exact and Approximate Inferences for Nonlinear Mixed-Effects Models With Missing CovariatesJournal of the American Statistical Association, 2004
- Multivariate Multilevel Nonlinear Mixed Effects Models for Timber Yield PredictionsBiometrics, 2004
- An EM Algorithm for Nonlinear Random Effects ModelsPublished by JSTOR ,1996
- A note on the use of Laplace's approximation for nonlinear mixed-effects modelsBiometrika, 1996
- The importance of modeling interoccasion variability in population pharmacokinetic analysesJournal of Pharmacokinetics and Biopharmaceutics, 1993
- Laplace's approximation for nonlinear mixed modelsBiometrika, 1993