Authors
Emanuele Giorgi, Claudio Fronterrè, Peter M Macharia, Victor A Alegana, Robert W Snow, Peter J Diggle
Publication date
2021/6/2
Source
Journal of The Royal Society Interface
Volume
18
Issue
179
Pages
20210104
Publisher
The Royal Society
Description
This paper provides statistical guidance on the development and application of model-based geostatistical methods for disease prevalence mapping. We illustrate the different stages of the analysis, from exploratory analysis to spatial prediction of prevalence, through a case study on malaria mapping in Tanzania. Throughout the paper, we distinguish between predictive modelling, whose main focus is on maximizing the predictive accuracy of the model, and explanatory modelling, where greater emphasis is placed on understanding the relationships between the health outcome and risk factors. We demonstrate that these two paradigms can result in different modelling choices. We also propose a simple approach for detecting over-fitting based on inspection of the correlation matrix of the estimators of the regression coefficients. To enhance the interpretability of geostatistical models, we introduce the concept of …
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