Ganjali, M.Baghfalaki, T.Fagbamigbe, A. F.2026-03-0620202316-090Xui_art_ganjali_bayesian_2020Afrika Statistika 15(3), pp. 2387–2393https://repository.ui.edu.ng/handle/123456789/13095Growth curve data consist of repeated measurements of a contin uous growth process of human, animal, plant, microbial or bacterial genetic data over time in a population of individuals. A classical approach for analyzing such data is the use of non-linear mixed effects models under normality assumption for the responses. But, sometimes the underlying population that the sample is extracted from is an abnormal population or includes some homogeneous sub-samples. So, detection of original properties of the population is an important scientific question of interest. In this paper, a sensitivity analysis of using different parametric and non-parametric distributions for the random effects on the results of applying non-linear mixed models is proposed for emphasizing the possible heterogeneity in the population. A Bayesian MCMC procedure is developed for parameter estimation and inference is performed via a hierarchical Bayesian framework. The methodology is illustrated using a real data set on study of influence of menarche on changes in body fat accretion.enBayesian paradigmDirichlet processgrowth curve modelsmixed effects modelrepeated measurements datasensitivity analysisA Bayesian sensitivity analysis of the effect of different random effects distributions on growth curve modelsArticle