The effects of spatial population dataset choice on estimates of population at risk of disease

被引:59
作者
Tatem, Andrew J. [1 ,2 ,3 ]
Campiz, Nicholas [1 ]
Gething, Peter W. [4 ]
Snow, Robert W. [5 ,6 ]
Linard, Catherine [4 ,7 ]
机构
[1] Univ Florida, Dept Geog, Gainesville, FL 32611 USA
[2] Univ Florida, Emerging Pathogens Inst, Gainesville, FL USA
[3] NIH, Fogarty Int Ctr, Bethesda, MD 20892 USA
[4] Univ Oxford, Dept Zool, Spatial Ecol & Epidemiol Grp, Oxford OX1 3PS, England
[5] Univ Oxford, Wellcome Trust Res Programme, KEMRI, Ctr Geog Med,Malaria Publ Hlth & Epidemiol Grp, Nairobi, Kenya
[6] Univ Oxford, Nuffield Dept Clin Med, Ctr Trop Med, CCVTM, Oxford, England
[7] Univ Libre Bruxelles, Brussels, Belgium
来源
POPULATION HEALTH METRICS | 2011年 / 9卷
基金
英国惠康基金;
关键词
PLASMODIUM-FALCIPARUM; MALARIA TRANSMISSION; GLOBAL DISTRIBUTION; AVIAN INFLUENZA; BOVINE TUBERCULOSIS; POTENTIAL IMPACT; LARGE-SCALE; AFRICA; HEALTH; EPIDEMIOLOGY;
D O I
10.1186/1478-7954-9-4
中图分类号
R1 [预防医学、卫生学];
学科分类号
1004 ; 120402 ;
摘要
Background: The spatial modeling of infectious disease distributions and dynamics is increasingly being undertaken for health services planning and disease control monitoring, implementation, and evaluation. Where risks are heterogeneous in space or dependent on person-to-person transmission, spatial data on human population distributions are required to estimate infectious disease risks, burdens, and dynamics. Several different modeled human population distribution datasets are available and widely used, but the disparities among them and the implications for enumerating disease burdens and populations at risk have not been considered systematically. Here, we quantify some of these effects using global estimates of populations at risk (PAR) of P. falciparum malaria as an example. Methods: The recent construction of a global map of P. falciparum malaria endemicity enabled the testing of different gridded population datasets for providing estimates of PAR by endemicity class. The estimated population numbers within each class were calculated for each country using four different global gridded human population datasets: GRUMP (similar to 1 km spatial resolution), LandScan (similar to 1 km), UNEP Global Population Databases (similar to 5 km), and GPW3 (similar to 5 km). More detailed assessments of PAR variation and accuracy were conducted for three African countries where census data were available at a higher administrative-unit level than used by any of the four gridded population datasets. Results: The estimates of PAR based on the datasets varied by more than 10 million people for some countries, even accounting for the fact that estimates of population totals made by different agencies are used to correct national totals in these datasets and can vary by more than 5% for many low-income countries. In many cases, these variations in PAR estimates comprised more than 10% of the total national population. The detailed country-level assessments suggested that none of the datasets was consistently more accurate than the others in estimating PAR. The sizes of such differences among modeled human populations were related to variations in the methods, input resolution, and date of the census data underlying each dataset. Data quality varied from country to country within the spatial population datasets. Conclusions: Detailed, highly spatially resolved human population data are an essential resource for planning health service delivery for disease control, for the spatial modeling of epidemics, and for decision-making processes related to public health. However, our results highlight that for the low-income regions of the world where disease burden is greatest, existing datasets display substantial variations in estimated population distributions, resulting in uncertainty in disease assessments that utilize them. Increased efforts are required to gather contemporary and spatially detailed demographic data to reduce this uncertainty, particularly in Africa, and to develop population distribution modeling methods that match the rigor, sophistication, and ability to handle uncertainty of contemporary disease mapping and spread modeling. In the meantime, studies that utilize a particular spatial population dataset need to acknowledge the uncertainties inherent within them and consider how the methods and data that comprise each will affect conclusions.
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页数:14
相关论文
共 91 条
[41]  
Hay SI, 2006, BOOK FORESIGHT POPUL, V40, P40
[42]   Measuring malaria endemicity from intense to interrupted transmission [J].
Hay, Simon I. ;
Smith, David L. ;
Snow, Robert W. .
LANCET INFECTIOUS DISEASES, 2008, 8 (06) :369-378
[43]   A World Malaria Map: Plasmodium falciparum Endemicity in 2007 [J].
Hay, Simon I. ;
Guerra, Carlos A. ;
Gething, Peter W. ;
Patil, Anand P. ;
Tatem, Andrew J. ;
Noor, Abdisalan M. ;
Kabaria, Caroline W. ;
Manh, Bui H. ;
Elyazar, Iqbal R. F. ;
Brooker, Simon ;
Smith, David L. ;
Moyeed, Rana A. ;
Snow, Robert W. .
PLOS MEDICINE, 2009, 6 (03) :0286-0302
[44]  
Health Metrics Network, 2005, STAT SAV LIV STRENGT
[45]   Risk factors and characteristics of H5N1 Highly Pathogenic Avian Influenza (HPAI) post-vaccination outbreaks [J].
Henning, Joerg ;
Pfeiffer, Dirk U. ;
Vu, Le Tri .
VETERINARY RESEARCH, 2009, 40 (03)
[46]  
JOHANSSON EW, 2007, PROGR INTERVENTION C
[47]   Local and Global Effects of Climate on Dengue Transmission in Puerto Rico [J].
Johansson, Michael A. ;
Dominici, Francesca ;
Glass, Gregory E. .
PLOS NEGLECTED TROPICAL DISEASES, 2009, 3 (02)
[48]   Global trends in emerging infectious diseases [J].
Jones, Kate E. ;
Patel, Nikkita G. ;
Levy, Marc A. ;
Storeygard, Adam ;
Balk, Deborah ;
Gittleman, John L. ;
Daszak, Peter .
NATURE, 2008, 451 (7181) :990-U4
[49]  
Kalipeni E, 2010, GEOJOURNAL
[50]   The multiplicity of malaria transmission: a review of entomological inoculation rate measurements and methods across sub-Saharan Africa [J].
Kelly-Hope, Louise A. ;
McKenzie, F. Ellis .
MALARIA JOURNAL, 2009, 8