Tabassum Z Insaf1, Thomas Talbot2. 1. New York State Department of Health, Bureau of Environmental and Occupational Epidemiology, Albany, NY 12237, United States; University at Albany School of Public Health, Department of Epidemiology and Biostatistics, Rensselaer, NY 12144, United States. Electronic address: Tabassum.insaf@health.ny.gov. 2. New York State Department of Health, Bureau of Environmental and Occupational Epidemiology, Albany, NY 12237, United States; University at Albany School of Public Health, Department of Epidemiology and Biostatistics, Rensselaer, NY 12144, United States.
Abstract
OBJECTIVES: To assess the geographic distribution of Low Birth Weight (LBW) in New York State among singleton births using a spatial regression approach in order to identify priority areas for public health actions. METHODS: LBW was defined as birth weight less than 2500g. Geocoded data from 562,586 birth certificates in New York State (years 2008-2012) were merged with 2010 census data at the tract level. To provide stable estimates and maintain confidentiality, data were aggregated to yield 1268 areas of analysis. LBW prevalence among singleton births was related with area-level behavioral, socioeconomic and demographic characteristics using a Poisson mixed effects spatial error regression model. RESULTS: Observed low birth weight showed statistically significant auto-correlation in our study area (Moran's I 0.16 p value 0.0005). After over-dispersion correction and accounting for fixed effects for selected social determinants, spatial autocorrelation was fully accounted for (Moran's I-0.007 p value 0.241). The proportion of LBW was higher in areas with larger Hispanic or Black populations and high smoking prevalence. Smoothed maps with predicted prevalence were developed to identify areas at high risk of LBW. Spatial patterns of residual variation were analyzed to identify unique risk factors. CONCLUSION: Neighborhood racial composition contributes to disparities in LBW prevalence beyond differences in behavioral and socioeconomic factors. Small-area analyses of LBW can identify areas for targeted interventions and display unique local patterns that should be accounted for in prevention strategies.
OBJECTIVES: To assess the geographic distribution of Low Birth Weight (LBW) in New York State among singleton births using a spatial regression approach in order to identify priority areas for public health actions. METHODS: LBW was defined as birth weight less than 2500g. Geocoded data from 562,586 birth certificates in New York State (years 2008-2012) were merged with 2010 census data at the tract level. To provide stable estimates and maintain confidentiality, data were aggregated to yield 1268 areas of analysis. LBW prevalence among singleton births was related with area-level behavioral, socioeconomic and demographic characteristics using a Poisson mixed effects spatial error regression model. RESULTS: Observed low birth weight showed statistically significant auto-correlation in our study area (Moran's I 0.16 p value 0.0005). After over-dispersion correction and accounting for fixed effects for selected social determinants, spatial autocorrelation was fully accounted for (Moran's I-0.007 p value 0.241). The proportion of LBW was higher in areas with larger Hispanic or Black populations and high smoking prevalence. Smoothed maps with predicted prevalence were developed to identify areas at high risk of LBW. Spatial patterns of residual variation were analyzed to identify unique risk factors. CONCLUSION: Neighborhood racial composition contributes to disparities in LBW prevalence beyond differences in behavioral and socioeconomic factors. Small-area analyses of LBW can identify areas for targeted interventions and display unique local patterns that should be accounted for in prevention strategies.
Authors: Kelly J Thomas Craig; Nicole Fusco; Thrudur Gunnarsdottir; Luc Chamberland; Jane L Snowdon; William J Kassler Journal: Online J Public Health Inform Date: 2021-12-24
Authors: Santiago Rodríguez López; Natalia Tumas; Ana Ortigoza; Amélia Augusta de Lima Friche; Ana V Diez-Roux Journal: BMC Public Health Date: 2021-04-26 Impact factor: 3.295
Authors: Severine Deguen; Nina Ahlers; Morgane Gilles; Arlette Danzon; Marion Carayol; Denis Zmirou-Navier; Wahida Kihal-Talantikite Journal: Int J Environ Res Public Health Date: 2018-08-31 Impact factor: 3.390