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A Geostatistical Framework for Combining Spatially Referenced Disease Prevalence Data from Multiple Diagnostics

Applications 2018-08-10 v1

Abstract

Multiple diagnostic tests are often used due to limited resources or because they provide complementary information on the epidemiology of a disease under investigation. Existing statistical methods to combine prevalence data from multiple diagnostics ignore the potential over-dispersion induced by the spatial correlations in the data. To address this issue, we develop a geostatistical framework that allows for joint modelling of data from multiple diagnostics by considering two main classes of inferential problems: (1) to predict prevalence for a gold-standard diagnostic using low-cost and potentially biased alternative tests; (2) to carry out joint prediction of prevalence from multiple tests. We apply the proposed framework to two case studies: mapping Loa loa prevalence in Central and West Africa, using miscroscopy and a questionnaire-based test called RAPLOA; mapping Plasmodium falciparum malaria prevalence in the highlands of Western Kenya using polymerase chain reaction and a rapid diagnostic test. We also develop a Monte Carlo procedure based on the variogram in order to identify parsimonious geostatistical models that are compatible with the data. Our study highlights (i) the importance of accounting for diagnostic-specific residual spatial variation and (ii) the benefits accrued from joint geostatistical modelling so as to deliver more reliable and precise inferences on disease prevalence.

Keywords

Cite

@article{arxiv.1808.03141,
  title  = {A Geostatistical Framework for Combining Spatially Referenced Disease Prevalence Data from Multiple Diagnostics},
  author = {Benjamin Amoah and Emanuele Giorgi and Peter Diggle},
  journal= {arXiv preprint arXiv:1808.03141},
  year   = {2018}
}
R2 v1 2026-06-23T03:28:51.073Z