Montclair State University, Montclair, NJ, USA.
Public Health. 2010 Jul;124(7):412-6. doi: 10.1016/j.puhe.2010.03.024. Epub 2010 Jun 11.
Studies of relationships between tobacco sales and socio-economic/sociodemographic characteristics are well documented. However, when analysing the data that are collected on geographic areas, the spatial effects are seldom considered, which could lead to potential misleading analytical results. This study addresses this concern by applying the spatial analysis method in studying how socio-economic factors and tobacco outlet density are related in New Jersey, USA.
A spatial regression method applied to tobacco outlet and socio-economic data obtained in 2004 in New Jersey, USA.
This study assessed the association between tobacco outlet density and three demographic correlates - income, race and ethnicity - at the tract level of analysis for one state in the north-eastern USA. Data for 1938 residential census tracts in the state of New Jersey were derived from 2004 licences for 13,984 tobacco-selling retail outlets. Demographic variables were based on 2000 census data. When applying a regression model, the residuals of an ordinary least squared (OLS) estimation were found to exhibit strong spatial autocorrelation, which indicates that the estimates from the OLS model are biased and inferences based on the estimates might be misleading. A spatial lag model was employed to incorporate the potential spatial effects explicitly.
Agreeing with the OLS residual autocorrelation test, the spatial lag model yields a significant coefficient of the added spatial effect, and fits the data better than the OLS model. In addition, the residuals of the spatial regression model are no longer autocorrelated, which indicates that the analysis produces more reliable results. More importantly, the spatial regression results indicate that tobacco companies attempt to promote physical availability of tobacco products to geographic areas with disadvantageous socio-economic status. In New Jersey, the percentage of Hispanics seems to be the dominant demographic factor associated with tobacco outlet distribution, followed by median household income and percentage of African Americans.
This research applied a spatial analytical approach to assess the association between tobacco outlet density and sociodemographic characteristics in New Jersey at the census tract level. The findings support the common wisdom in the public health research domain that tobacco outlets are more densely distributed in socio-economically disadvantaged areas. However, incorporating the spatial effects explicitly in the analysis provides less biased and more reliable results than traditional methods.
有关烟草销售与社会经济/社会人口特征之间关系的研究已有大量记载。然而,在分析收集到的地理区域数据时,很少考虑空间效应,这可能导致潜在的误导性分析结果。本研究通过应用空间分析方法来研究美国新泽西州社会经济因素与烟草销售点密度之间的关系,解决了这一问题。
应用空间回归方法对 2004 年美国新泽西州的烟草销售点和社会经济数据进行分析。
本研究评估了烟草销售点密度与三个人口统计学相关因素(收入、种族和族裔)在新泽西州东北部一个州的分析单位(即街区)之间的关联。该州 1938 个居民街区的数据来自于 2004 年 13984 个烟草销售零售店的许可证。人口统计学变量基于 2000 年的人口普查数据。当应用回归模型时,普通最小二乘法(OLS)估计的残差表现出很强的空间自相关性,这表明 OLS 模型的估计值存在偏差,基于这些估计值的推断可能会产生误导。因此,本研究采用空间滞后模型来明确纳入潜在的空间效应。
与 OLS 残差自相关检验一致,空间滞后模型产生了显著的附加空间效应系数,并且比 OLS 模型更能拟合数据。此外,空间回归模型的残差不再存在自相关性,这表明分析结果更加可靠。更重要的是,空间回归结果表明,烟草公司试图将烟草产品的实际供应推广到社会经济地位不利的地理区域。在新泽西州,西班牙裔人口比例似乎是与烟草销售点分布相关的主导人口统计学因素,其次是家庭中位数收入和非裔美国人比例。
本研究应用空间分析方法在美国新泽西州的街区层面评估了烟草销售点密度与社会人口特征之间的关联。研究结果支持公共卫生研究领域的普遍观点,即烟草销售点在社会经济处于不利地位的地区更为密集。然而,在分析中明确纳入空间效应提供了比传统方法更具偏差性和更可靠的结果。