Malaria Risk Mapping Using Routine Health System Incidence Data in Zambia

06/28/2021
by   Benjamin M. Taylor, et al.
0

Improvements to Zambia's malaria surveillance system allow better monitoring of incidence and targetting of responses at refined spatial scales. As transmission decreases, understanding heterogeneity in risk at fine spatial scales becomes increasingly important. However, there are challenges in using health system data for high-resolution risk mapping: health facilities have undefined and overlapping catchment areas, and report on an inconsistent basis. We propose a novel inferential framework for risk mapping of malaria incidence data based on formal down-scaling of confirmed case data reported through the health system in Zambia. We combine data from large community intervention trials in 2011-2016 and model health facility catchments based upon treatment-seeking behaviours; our model for monthly incidence is an aggregated log-Gaussian Cox process, which allows us to predict incidence at fine scale. We predicted monthly malaria incidence at 5km^2 resolution nationally: whereas 4.8 million malaria cases were reported through the health system in 2016, we estimated that the number of cases occurring at the community level was closer to 10 million. As Zambia continues to scale up community-based reporting of malaria incidence, these outputs provide realistic estimates of community-level malaria burden as well as high resolution risk maps for targeting interventions at the sub-catchment level.

READ FULL TEXT

page 8

page 26

page 27

research
08/30/2023

Mapping the prevalence of cancer risk factors at the small area level in Australia

Cancer is a significant health issue globally and it is well known that ...
research
05/07/2020

A simulation study of disaggregation regression for spatial disease mapping

Disaggregation regression has become an important tool in spatial diseas...
research
06/18/2022

Digital Surveillance Networks of 2014 Ebola Epidemics and Lessons for COVID-19

2014 Ebola outbreaks can offer lessons for the COVOID-19 and the ongoing...
research
03/27/2020

α-Satellite: An AI-driven System and Benchmark Datasets for Hierarchical Community-level Risk Assessment to Help Combat COVID-19

The novel coronavirus and its deadly outbreak have posed grand challenge...
research
03/20/2020

Quantifying the under-reporting of genital warts cases

Genital warts are a common and highly contagious sexually transmitted di...
research
06/23/2020

Magnify Your Population: Statistical Downscaling to Augment the Spatial Resolution of Socioeconomic Census Data

Fine resolution estimates of demographic and socioeconomic attributes ar...

Please sign up or login with your details

Forgot password? Click here to reset