| Literature DB >> 34930265 |
Emanuele Giorgi1, Peter M Macharia2,3, Jack Woodmansey2, Robert W Snow3,4, Barry Rowlingson2.
Abstract
BACKGROUND: Model-based geostatistical (MBG) methods have been extensively used to map malaria risk using community survey data in low-resource settings where disease registries are incomplete or non-existent. However, the wider adoption of MBG methods by national control programmes to inform health policy decisions is hindered by the lack of advanced statistical expertise and suitable computational equipment. Here, Maplaria, an interactive, user-friendly web-application that allows users to upload their own malaria prevalence data and carry out geostatistical prediction of annual malaria prevalence at any desired spatial scale, is introduced.Entities:
Keywords: Cross-sectional surveys; Malaria; Malaria mapping; Model based geostatistics; National malaria control programme; Sub Saharan Africa; Web application
Mesh:
Year: 2021 PMID: 34930265 PMCID: PMC8686323 DOI: 10.1186/s12936-021-04011-7
Source DB: PubMed Journal: Malar J ISSN: 1475-2875 Impact factor: 2.979
Fig. 1Diagram of the Maplaria web-application, with summary of input and output data
Names and description of the variables of the malaria prevalence data from Harvard Dataverse [17]
| Variable | Description |
|---|---|
| ID | Record ID |
| Country | Country where the data was collected |
| Afr Admin 2 Code | Administrative division number/code within a country |
| Afr Admin name | Name of administrative division within a country |
| Area Type | Either point (villages, schools and communities < 5km2), polygon (large administrative polygons) or wide area (areas > 5 km2) |
| Lat | Latitude of the surveyed community |
| Long | Longitude of the surveyed community |
| MM | Month when the survey was conducted |
| YY | Year when the survey was conducted |
| LoAge | Lowest age in surveyed community |
| UpAge | Highest age in surveyed community |
| Ex | Total number of those examined |
| Pf | Positive of |
| Method | Method used to detect parasite |
Fig. 2The first three steps in Maplaria; (1) selecting the country, (2) uploading survey data and 3) setting arguments
Fig. 3The fourth (adding or defining the boundary location) and fifth step (confirm all the sets and arguments) in Maplaria. An example for Tanzania 2017 MIS data
Fig. 4Examples of outputs in Maplaria showing continuous raster predictions and aggregated estimates within the districts. The outputs include all arguments that were set in step 3. All the estimates are available as a table and can be exported for use in other geospatial or statistical software