Socioeconomic determinants of geographic disparities in campylobacteriosis risk: a comparison of global and local modeling approaches

被引:27
作者
Weisent, Jennifer [1 ]
Rohrbach, Barton [1 ]
Dunn, John R. [2 ]
Odoi, Agricola [1 ]
机构
[1] Univ Tennessee, Coll Vet Med, Dept Biol & Diagnost Sci, Knoxville, TN 37996 USA
[2] Tennessee Dept Hlth, Communicable & Environm Dis Serv, Nashville, TN 37243 USA
关键词
Campylobacter; Socioeconomic determinants; Geographically weighted regression; Spatial modeling; NEW-ZEALAND; SOCIAL DISPARITIES; BREAST-CANCER; HEALTH; ASSOCIATION; INFECTIONS; DIARRHEA;
D O I
10.1186/1476-072X-11-45
中图分类号
R1 [预防医学、卫生学];
学科分类号
1004 ; 120402 ;
摘要
Background: Socioeconomic factors play a complex role in determining the risk of campylobacteriosis. Understanding the spatial interplay between these factors and disease risk can guide disease control programs. Historically, Poisson and negative binomial models have been used to investigate determinants of geographic disparities in risk. Spatial regression models, which allow modeling of spatial effects, have been used to improve these modeling efforts. Geographically weighted regression (GWR) takes this a step further by estimating local regression coefficients, thereby allowing estimations of associations that vary in space. These recent approaches increase our understanding of how geography influences the associations between determinants and disease. Therefore the objectives of this study were to: (i) identify socioeconomic determinants of the geographic disparities of campylobacteriosis risk (ii) investigate if regression coefficients for the associations between socioeconomic factors and campylobacteriosis risk demonstrate spatial variability and (iii) compare the performance of four modeling approaches: negative binomial, spatial lag, global and local Poisson GWR. Methods: Negative binomial, spatial lag, global and local Poisson GWR modeling techniques were used to investigate associations between socioeconomic factors and geographic disparities in campylobacteriosis risk. The best fitting models were identified and compared. Results: Two competing four variable models (Models 1 & 2) were identified. Significant variables included race, unemployment rate, education attainment, urbanicity, and divorce rate. Local Poisson GWR had the best fit and showed evidence of spatially varying regression coefficients. Conclusions: The international significance of this work is that it highlights the inadequacy of global regression strategies that estimate one parameter per independent variable, and therefore mask the true relationships between dependent and independent variables. Since local GWR estimate a regression coefficient for each location, it reveals the geographic differences in the associations. This implies that a factor may be an important determinant in some locations and not others. Incorporating this into health planning ensures that a needs-based, rather than a "one-size-fits-all", approach is used. Thus, adding local GWR to the epidemiologists' toolbox would allow them to assess how the impacts of different determinants vary by geography. This knowledge is critical for resource allocation in disease control programs.
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页数:16
相关论文
共 37 条
[21]   An overview of methods for monitoring social disparities in cancer with an example using trends in lung cancer incidence by area-socioeconomic position and race-ethnicity, 1992-2004 [J].
Harper, Sam ;
Lynch, John ;
Meersman, Stephen C. ;
Breen, Nancy ;
Davis, William W. ;
Reichman, Marsha E. .
AMERICAN JOURNAL OF EPIDEMIOLOGY, 2008, 167 (08) :889-899
[22]  
Havelaar AH, 2000, WHO CONSULTATION INC, P49
[23]   The regionality of campylobacteriosis seasonality in New Zealand [J].
Hearnden, M ;
Skelly, C ;
Eyles, R ;
Weinstein, P .
INTERNATIONAL JOURNAL OF ENVIRONMENTAL HEALTH RESEARCH, 2003, 13 (04) :337-348
[24]   Host-pathogen interactions in Campylobacter infections:: the host perspective [J].
Janssen, Riny ;
Krogfelt, Karen A. ;
Cawthraw, Shaun A. ;
van Pelt, Wilfrid ;
Wagenaar, Jaap A. ;
Owen, Robert J. .
CLINICAL MICROBIOLOGY REVIEWS, 2008, 21 (03) :505-518
[25]   Spatio-temporal cluster analysis of the incidence of Campylobacter cases and patients with general diarrhea in a Danish county, 1995-2004 [J].
Jepsen, Martin Rudbeck ;
Simonsen, Jacob ;
Ethelberg, Steen .
INTERNATIONAL JOURNAL OF HEALTH GEOGRAPHICS, 2009, 8
[26]   Spatial Modeling in Environmental and Public Health Research [J].
Jerrett, Michael ;
Gale, Sara ;
Kontgis, Caitlin .
INTERNATIONAL JOURNAL OF ENVIRONMENTAL RESEARCH AND PUBLIC HEALTH, 2010, 7 (04) :1302-1329
[27]   Analysis of simultaneous space-time clusters of Campylobacter spp. in humans and in broiler flocks using a multiple dataset approach [J].
Jonsson, Malin E. ;
Heier, Berit Tafjord ;
Norstrom, Madelaine ;
Hofshagen, Merete .
INTERNATIONAL JOURNAL OF HEALTH GEOGRAPHICS, 2010, 9
[28]   Climate variability and campylobacter infection: an international study [J].
Kovats, RS ;
Edwards, SJ ;
Charron, D ;
Cowden, J ;
D'Souza, RM ;
Ebi, KL ;
Gauci, C ;
Gerner-Smidt, P ;
Hajat, S ;
Hales, S ;
Pezzi, GH ;
Kriz, B ;
Kutsar, K ;
McKeown, P ;
Mellou, K ;
Menne, B ;
O'Brien, S ;
van Pelt, W ;
Schmid, H .
INTERNATIONAL JOURNAL OF BIOMETEOROLOGY, 2005, 49 (04) :207-214
[29]   Spatial epidemiology and spatial ecology study of worldwide drug-resistant tuberculosis [J].
Liu, Yunxia ;
Jiang, Shiwen ;
Liu, Yanxun ;
Wang, Rui ;
Li, Xiao ;
Yuan, Zhongshang ;
Wang, Lixia ;
Xue, Fuzhong .
INTERNATIONAL JOURNAL OF HEALTH GEOGRAPHICS, 2011, 10
[30]   Invited commentary: Measuring social disparities in health - What was the question again? [J].
Messer, Lynne C. .
AMERICAN JOURNAL OF EPIDEMIOLOGY, 2008, 167 (08) :900-904