Abstract

Introduction: Tuberculosis is the long-lasting infectious disease caused by bacteria called Mycobacterium tuberculosis. Globally, in 2016 alone, approximately 10.4 million new cases have occurred. Africa has shared around 25% of the incidence and specifically in Ethiopia around 82 thousand was caught by Tuberculosis. Methods: The study has been conducted in, south west Ethiopia, Jimma zone of entire districts and the data is basically secondary which is obtained from Jimma zone health office. The counts of Tuberculosis case counts have been analyzed with factors like gender, HIV co-infection, Population density and age of patients. The Integrated Nested Laplace Approximation (INLA) method of Bayesian approach which is fast, deterministic and promising alternative to MCMC method was used to determine posterior marginal of the parameters of interest. Results: The Latent Gaussian Model (LGM) of Poisson distributional assumption of Tuberculosis cases that includes both fixed and random effects with penalized complexity priors appeared to be the best model to fit the data based on the Watanabe Akaike Information Criteria and other supportive criteria. Using Kullback-Leibler Divergence criteria, the under-used simplified Laplace approximation indicated that posterior marginal was well approximated by normal distribution. The predictive value of the best model is not far deviated from the actual data based on the Conditional Predictive Ordinate and the probability integral transform. Conclusions: All the variables were significant under this model and the posterior marginal was well approximated by standard Gaussian. The PIT indicated that predictive distribution was less affected by outliers and the model was reasonably well.

Highlights

  • Tuberculosis is the long-lasting infectious disease caused by bacteria called Mycobacterium tuberculosis

  • Tuberculosis (TB) is a chronic infectious disease caused by a bacillus belonging to a group of bacteria grouped in the Mycobacterium tuberculosis complex and remains an important public health problem of the 21st century according to WHO [64,65,66]

  • General Objective The general objective of this study is to model the counts for TB cases in Jimma zone, southwest Ethiopia, using the Bayesian hierarchical approach of the latent Gaussian model with Integrated Nested Laplace Approximation (INLA) method

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Summary

Introduction

Tuberculosis is the long-lasting infectious disease caused by bacteria called Mycobacterium tuberculosis. In 2016 alone, approximately 10.4 million new cases have occurred. Tuberculosis (TB) is a chronic infectious disease caused by a bacillus belonging to a group of bacteria grouped in the Mycobacterium tuberculosis complex and remains an important public health problem of the 21st century according to WHO [64,65,66]. According to the reports of [65], the most estimated number of TB cases is in the WHO South-East Asia Region (45%), the WHO African Region (25%) and the WHO Western Pacific Region (17%). Smaller proportions of cases occurred in the Eastern Mediterranean Region (7%), the WHO European Region (3%) and the WHO Region of the Americas (3%) and 1.8 million deaths of tuberculosis were reported [2, 65].

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