The validity of an area-based method to estimate the size of hard-to-reach populations using satellite images: the example of fishing populations of Lake Victoria

Information on the size of populations is crucial for planning of service and resource allocation to communities in need of health interventions. In resource limited settings, reliable census data are often not available. Using publicly available Google Earth Pro and available local household survey...

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Veröffentlicht in:Emerging themes in epidemiology 2018-08, Vol.15 (1), p.11-11, Article 11
Hauptverfasser: Nash, Stephen, Tittle, Victoria, Abaasa, Andrew, Sanya, Richard E, Asiki, Gershim, Hansen, Christian Holm, Grosskurth, Heiner, Kapiga, Saidi, Grundy, Chris
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Sprache:eng
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Zusammenfassung:Information on the size of populations is crucial for planning of service and resource allocation to communities in need of health interventions. In resource limited settings, reliable census data are often not available. Using publicly available Google Earth Pro and available local household survey data from fishing communities (FC) on Lake Victoria in Uganda, we compared two simple methods (using average population density) and one simple linear regression model to estimate populations of small rural FC in Uganda. We split the dataset into two sections; one to obtain parameters and one to test the validity of the models. Out of 66 FC, we were able to estimate populations for 47. There were 16 FC in the test set. The estimates for total population from all three methods were similar, with errors less than 2.2%. Estimates of individual FC populations were more widely discrepant. In our rural Ugandan setting, it was possible to use a simple area based model to get reasonable estimates of total population. However, there were often large errors in estimates for individual villages.
ISSN:1742-7622
1742-7622
DOI:10.1186/s12982-018-0079-5