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Spatial Modeling and Mapping of Tuberculosis Using Bayesian Hierarchical Approaches
2016
Open Journal of Statistics
Global spread of infectious disease threatens the well-being of human, domestic, and wildlife health. A proper understanding of global distribution of these diseases is an important part of disease management and policy making. However, data are subject to complexities by heterogeneity across host classes. The use of frequentist methods in biostatistics and epidemiology is common and is therefore extensively utilized in answering varied research questions. In this paper, we applied the
doi:10.4236/ojs.2016.63043
fatcat:mzb3cbyhxjb3hdpeqi7aqhhtoq