Bayesian Hierarchical modeling for small-area estimation of disease Burden

Tahiru Mahama *

Department of Mathematical Sciences, The University of Texas at El Paso, USA.
 
Review
International Journal of Science and Research Archive, 2022, 07(02), 807-827.
Article DOI: 10.30574/ijsra.2022.7.2.0295
Publication history: 
Received on 29 October 2022; revised on 23 December 2022; accepted on 29 December 2022
 
Abstract: 
Estimating disease burden at fine geographic scales is crucial for effective public health planning, especially in settings with limited data availability. Small-area estimation (SAE) techniques enable more granular insights by borrowing strength from related areas, populations, and covariates. However, conventional SAE methods may fall short in accommodating uncertainty, spatial dependence, and heterogeneity in sparse data environments. Bayesian hierarchical modeling (BHM) offers a powerful, flexible framework for overcoming these limitations by incorporating multiple levels of uncertainty and spatial structure within a unified probabilistic paradigm. This paper presents an in-depth exploration of Bayesian hierarchical modeling as applied to small-area estimation of disease burden. Beginning with an overview of traditional SAE approaches and their limitations, we discuss how BHM integrates prior knowledge, auxiliary data, and spatial-temporal correlations to generate stable, interpretable estimates. We highlight the hierarchical structure’s capacity to model latent disease processes, measurement error, and spatial autocorrelation through conditional autoregressive (CAR) or Gaussian process priors. Empirical applications in estimating the prevalence of chronic diseases, child mortality, and underreported infectious conditions demonstrate the model’s robustness, particularly in data-sparse or low-resource settings. Advanced computational techniques such as Markov Chain Monte Carlo (MCMC) and Integrated Nested Laplace Approximation (INLA) are discussed for scalable inference. Additionally, we address challenges in model selection, convergence diagnostics, and communicating uncertainty to policymakers. By synthesizing methodological rigor with applied utility, Bayesian hierarchical modeling enhances the precision and reliability of subnational disease burden estimates, guiding equitable resource allocation and targeted interventions.
 
Keywords: 
Bayesian Hierarchical Modeling; Small-Area Estimation; Disease Burden; Spatial Epidemiology; Uncertainty Quantification; INLA
 
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