Statistical methods for linking geostatistical maps and transmission models: Application to lymphatic filariasis in East Africa
Panayiota Touloupou, Renata Retkute, T Deirdre Hollingsworth, Simon E., F. Spencer

TL;DR
This paper introduces a Bayesian method that links geostatistical maps with transmission models to improve spatial disease impact projections, aiding targeted control strategies for lymphatic filariasis in East Africa.
Contribution
It develops a novel Bayesian framework that integrates spatial prevalence maps with transmission models for detailed disease impact assessment.
Findings
Quantitative projections of disease impact under various interventions.
Enhanced spatial understanding of disease transmission dynamics.
Application to lymphatic filariasis demonstrates practical utility.
Abstract
Infectious diseases remain one of the major causes of human mortality and suffering. Mathematical models have been established as an important tool for capturing the features that drive the spread of the disease, predicting the progression of an epidemic and hence guiding the development of strategies to control it. Another important area of epidemiological interest is the development of geostatistical methods for the analysis of data from spatially referenced prevalence surveys. Maps of prevalence are useful, not only for enabling a more precise disease risk stratification, but also for guiding the planning of more reliable spatial control programmes by identifying affected areas. Despite the methodological advances that have been made in each area independently, efforts to link transmission models and geostatistical maps have been limited. Motivated by this fact, we developed a…
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