The SAEM algorithm for group comparison tests in longitudinal data analysis based on non‐linear mixed‐effects model
- 11 June 2007
- journal article
- research article
- Published by Wiley in Statistics in Medicine
- Vol. 26 (27) , 4860-4875
- https://doi.org/10.1002/sim.2950
Abstract
Non‐linear mixed‐effects models (NLMEMs) are used to improve information gathering from longitudinal studies and are applied to treatment evaluation in disease‐evolution studies, such as human immunodeficiency virus (HIV) infection. The estimation of parameters and the statistical tests are critical issues in NLMEMs since the likelihood and the Fisher information matrix have no closed form. An alternative method to numerical integrations, in which convergence is slow, and to methods based on linearization, in which asymptotic convergence has not been proved, is the Stochastic Approximation Expectation‐Maximization (SAEM) algorithm. For the Wald test and the likelihood ratio test, we propose estimating the Fisher information matrix by stochastic approximation and the likelihood by importance sampling. We evaluate these SAEM‐based tests in a simulation study in the context of HIV viral load decrease after initiation of an antiretroviral treatment. The results from this simulation illustrate the theoretical convergence properties of SAEM. We also propose a method based on the SAEM algorithm to compute the minimum sample size required to perform a Wald test of a given power for a covariate effect in NLMEMs. Lastly, we illustrate these tests on the evaluation of the effect of ritonavir on the indinavir pharmacokinetics in HIV patients and compare the results with those obtained using the adaptative Gaussian quadrature method implemented in the SAS procedure NLMIXED. Copyright © 2007 John Wiley & Sons, Ltd.Keywords
This publication has 35 references indexed in Scilit:
- Evaluation by simulation of tests based on non‐linear mixed‐effects models in pharmacokinetic interaction and bioequivalence cross‐over trialsStatistics in Medicine, 2005
- High Variability of Indinavir and Nelfinavir Pharmacokinetics in HIV-Infected Patients with a Sustained Virological Response on Highly Active Antiretroviral TherapyClinical Pharmacokinetics, 2005
- Exact and Approximate Inferences for Nonlinear Mixed-Effects Models With Missing CovariatesJournal of the American Statistical Association, 2004
- The joint modeling of a longitudinal disease progression marker and the failure time process in the presence of cureBiostatistics, 2002
- A Joint Model for Nonlinear Mixed-Effects Models With Censoring and Covariates Measured With Error, With Application to AIDS StudiesJournal of the American Statistical Association, 2002
- A multiple imputation method for missing covariates in non‐linear mixed‐effects models with application to HIV dynamicsStatistics in Medicine, 2001
- EVALUATION OF TESTS BASED ON INDIVIDUAL VERSUS POPULATION MODELING TO COMPARE DISSOLUTION CURVESJournal of Biopharmaceutical Statistics, 2001
- Analysis of left-censored longitudinal data with application to viral load in HIV infectionBiostatistics, 2000
- Pharmacokinetics and Potential Interactions Amongst Antiretroviral Agents Used To Treat Patients with HIV InfectionClinical Pharmacokinetics, 1999
- An EM Algorithm for Nonlinear Random Effects ModelsPublished by JSTOR ,1996