Abstract

Precision health mapping is a technique that uses spatial relationships between socio-ecological variables and disease to map the spatial distribution of disease, particularly for diseases with strong environmental signatures, such as diarrhoeal disease (DD). While some studies use GPS-tagged location data, other precision health mapping efforts rely heavily on data collected at coarse-spatial scales and may not produce operationally relevant predictions at fine enough spatio-temporal scales to inform local health programmes. We use two fine-scale health datasets collected in a rural district of Madagascar to identify socio-ecological covariates associated with childhood DD. We constructed generalized linear mixed models including socio-demographic, climatic and landcover variables and estimated variable importance via multi-model inference. We find that socio-demographic variables, and not environmental variables, are strong predictors of the spatial distribution of disease risk at both individual and commune-level (cluster of villages) spatial scales. Climatic variables predicted strong seasonality in DD, with the highest incidence in colder, drier months, but did not explain spatial patterns. Interestingly, the occurrence of a national holiday was highly predictive of increased DD incidence, highlighting the need for including cultural factors in modelling efforts. Our findings suggest that precision health mapping efforts that do not include socio-demographic covariates may have reduced explanatory power at the local scale. More research is needed to better define the set of conditions under which the application of precision health mapping can be operationally useful to local public health professionals.

Highlights

  • Over 700 000 child deaths are attributed to diarrhoeal disease (DD) annually [1]

  • For precision health mapping to lead to actionable interventions, the global relationships between DD and socio-ecological covariates must retain fine spatial granularity relevant to public health actors

  • Environmental variables contributed little to spatial variation in disease incidence and prevalence but did explain the seasonality of DD

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Summary

Introduction

Over 700 000 child deaths are attributed to diarrhoeal disease (DD) annually [1]. The burden of DD is unequally distributed across the globe: 73% of deaths occur in just 15 low-income countries, driven by inequalities in water and sanitation infrastructure and environmental conditions [2]. Precision health mapping is an approach that incorporates increasingly available fine-scale social and environmental information into spatial models to explain and predict spatial disease patterns at resolutions finer than those previously possible [3]. Upstream land cover has been shown to predict DD prevalence in rural areas of the tropics [8], with cumulative effects for populations that are downstream of sources of water contamination (e.g. livestock or agricultural run-off [10]) These studies tend to rely on data extracted from large national surveys, such as Demographic and Health Surveys, that are powered to estimate indicators at broad spatial and temporal scales (e.g. country or region every 5 years). Because of the data availability, the region’s environmental variability and the population’s high exposure rates, Ifanadiana should be well-suited for the application and validation of precision health mapping at a local scale

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