Please use this identifier to cite or link to this item: https://repository.seku.ac.ke/handle/123456789/8387
Title: Model checks for Bayesian estimation and forecasting of health coverage indicators in low- and middle-income countries
Authors: Alkema, Leontine
Mooney, Shauna
Kagoye, Sophia
Ferreira, Leonardo Z.
Mady, Roland
Wilson, Emily
Bietsch, Kristin
Adero, Godfrey
Kaberia, Peter M.
Kananura, Rornald M.
Mutua, Martin K.
Njeri, Anne
Wekesa, Eliud
Keywords: Bayesian hierarchical temporal model
model validation
global health
Issue Date: 18-May-2026
Publisher: The royal Society publishing
Citation: Philosophical transactions A, volume 384, issue 2321, 2026
Abstract: Statistical models are needed to produce estimates and forecasts of health coverage indicators in low- and middle-income countries, where data are often sparse and of uneven quality. We consider a class of Bayesian transition models for this purpose and propose a practical set of model checks that can be used by analysts who are not specialists in Bayesian (transition) models. These checks include residual analyses and assessments of model parameters in restricted and full models, based on in-sample and out-of-sample model fits. We apply the approach for estimation of two different health coverage indicators: the proportion of women who received recommended antenatal care during pregnancy and the proportion of children who receive recommended vaccinations. The checks indicate the model performs well for antenatal care, and they highlight limitations and opportunities for improvement when modelling immunization coverage. Overall, we show how systematic model checking can clarify and communicate the strengths and limitations of models used to estimate and forecast global health coverage indicators: the proportion of women who received recommended antenatal care during pregnancy and the proportion of children who receive recommended vaccinations. The checks indicate the model performs well for antenatal care, and they highlight limitations and opportunities for improvement when modelling immunization coverage. Overall, we show how systematic model checking can clarify and communicate the strengths and limitations of models used to estimate and forecast global health coverage indicators.
Description: https://doi.org/10.1098/rsta.2024.0609
URI: https://royalsocietypublishing.org/rsta/article/384/2321/20240609/481977
https://repository.seku.ac.ke/handle/123456789/8387
Appears in Collections:School of Humanities and Social Sciences (JA)

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