| Literature DB >> 22433126 |
Catherine Linard1, Andrew J Tatem.
Abstract
Modelling studies on the spatial distribution and spread of infectious diseases are becoming increasingly detailed and sophisticated, with global risk mapping and epidemic modelling studies now popular. Yet, in deriving populations at risk of disease estimates, these spatial models must rely on existing global and regional datasets on population distribution, which are often based on outdated and coarse resolution data. Moreover, a variety of different methods have been used to model population distribution at large spatial scales. In this review we describe the main global gridded population datasets that are freely available for health researchers and compare their construction methods, and highlight the uncertainties inherent in these population datasets. We review their application in past studies on disease risk and dynamics, and discuss how the choice of dataset can affect results. Moreover, we highlight how the lack of contemporary, detailed and reliable data on human population distribution in low income countries is proving a barrier to obtaining accurate large-scale estimates of population at risk and constructing reliable models of disease spread, and suggest research directions required to further reduce these barriers.Entities:
Mesh:
Year: 2012 PMID: 22433126 PMCID: PMC3331802 DOI: 10.1186/1476-072X-11-7
Source DB: PubMed Journal: Int J Health Geogr ISSN: 1476-072X Impact factor: 3.918
Figure 1Spatial and temporal characteristics of available census data. a) Year of the last national census data available (data source: GeoHive [41]) and b) average spatial resolution (ASR) of census data used in the construction of Gridded Population of the World version 3 (GPW3) and the Global Rural Urban Mapping Project (GRUMP). The ASR measures the effective resolution of administrative units in kilometers. It is calculated as the square root of the land area divided by the number of administrative units [42]. It can be thought of as the "cell size" if all units in a country were square and of equal size.
Figure 2Schematic illustrations of population distribution modelling methods. The population of two administrative units A and B (with total population in A = 8 and total population in B = 16) are redistributed according to different population distribution modelling approaches (areal weighted, pycnophylactic and dasymetric). In the dasymetric method, a higher weight was attributed to the red hatched area.
Existing gridded global and continental population datasets and their main characteristics.
| Code | Dataset | Producer | Method | Level of transparency in data and methodology used | Spatial resolution | Year(s) represented | Updates | Distribution policy | References |
|---|---|---|---|---|---|---|---|---|---|
| GPW | Gridded Population of the World | National Center for Geographic Information and Analysis (NCGIA), University of California; | GPW1: pycnophylactic; GPW2 and GPW3: areal-weighted | High | 2.5 arcminutes (~5 km) | 1990, 1995, 2000, 2005, 20101, 20151 | 1995,2000,2004 | Open-access | [ |
| GRUMP | Global Rural Urban Mapping Project | Center for International Earth Science Information Network (CIESIN), Columbia university; International Food Policy Research Institute; The World Bank; Centro Internacional de Agricultura Tropical | Dasymetric | High | 30 arcseconds (~1 km) | 1990, 1995, 2000 | 2000, 2004 | Open-access | [ |
| LandScan | LandScan Global Population database | Oak Ridge National | Smart | Low | 30 arcseconds (~1 km) | year of release | 1998; yearly from 2000 to 2010 | Commercial | [ |
| UNEP | UN Environment Programme global population datasets | United Nations Environment Programme/Global Resource Information Database (UNEP/GRID), Sioux Falls | Smart | High | 2.5 arcminutes (~5 km) | 2000 | 1996, 2004 | Open-access | [ |
| AfriPop | AfriPop population dataset for Africa | AfriPop project: University of Oxford, University of Florida and Université Libre de Bruxelles | Dasymetric | High | 3 arcseconds (~100 m) | 2010 | 2011 | Open-access | [ |
1 Based on extrapolations of older datasets using UN growth rates
Figure 3Selected examples of existing global and continental population datasets. LandScan 2008, GRUMP beta version, GPW3, UNEP Africa and AfriPop for a) a region in Kenya where census data is very detailed and b) a region of Angola where census data is coarse.
Infectious disease-related studies that have utilized large-scale spatial population databases (adapted from [34])
| Disease | Application | Population map used [Reference] |
|---|---|---|
| Malaria | Populations at risk | GPW [ |
| Clinical cases | GPW [ | |
| Intervention coverage | GRUMP [ | |
| Funding coverage | GRUMP [ | |
| Risk mapping | GPW [ | |
| Infection movements | GRUMP [ | |
| Urbanization effects | GPW [ | |
| Helminths | Populations at risk | GPW [ |
| Risk mapping | Landscan [ | |
| Influenza | Epidemic modelling | GPW [ |
| Risk mapping | GRUMP [ | |
| Yellow fever | Populations at risk | GRUMP [ |
| Dengue | Populations at risk | GRUMP [ |
| Risk mapping | UNEP [ | |
| Trypanosomiasis | Populations at risk | Landscan [ |
| Risk mapping | UNEP [ | |
| Bovine TB | Risk mapping | Landscan [ |
| HIV | Prevalence analyses | Landscan [ |
| Leprosy | Risk mapping | GPW [ |
| Poliovirus | Incidence analyses | GPW [ |
| General | Trends in emerging diseases | GPW [ |
| Health of schoolchildren | UNEP [ | |