Differences between gridded population data impact measures of geographic access to healthcare in sub-Saharan Africa

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作者
Fleur Hierink
Gianluca Boo
Peter M. Macharia
Paul O. Ouma
Pablo Timoner
Marc Levy
Kevin Tschirhart
Stefan Leyk
Nicholas Oliphant
Andrew J. Tatem
Nicolas Ray
机构
[1] University of Geneva,GeoHealth group, Institute of Global Health, Faculty of Medicine
[2] University of Geneva,Institute for Environmental Sciences
[3] University of Southampton,WorldPop, School of Geography and Environmental Science
[4] Small Arms Survey,Centre for Health Informatics, Computing and Statistics, Lancaster Medical School
[5] The Graduate Institute,CIESIN, The Center for International Earth Science Information Network
[6] Population Health Unit,Department of Geography
[7] Kenya Medical Research Institute - Wellcome Trust Research Programme,undefined
[8] Lancaster University,undefined
[9] Columbia University,undefined
[10] University of Colorado in Boulder,undefined
[11] The Global Fund to Fight AIDS,undefined
[12] Tuberculosis and Malaria,undefined
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摘要
Knowing where people reside and what health services are accessible to them in a timely manner can make a difference in life-or-death situations. Geographic models that mimic the journey of patients can help understand where people cannot access healthcare and can provide valuable insights for policy and research. Population distribution data is essential for these models, as it determines the relative coverage provided by the existing health system. However, there are several datasets available on population distribution that vary widely. In this study, we quantify the impact of using six different population data sets to calculate healthcare coverage in sub-Saharan Africa. Our results show large continental, national, and subnational differences between the different gridded population datasets, which can strongly influence the uncertainty of healthcare accessibility models and thus the decisions based on them.
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