Lee Jae Eun, Sung Jung Hye, Malouhi Mohamad
Research Centers in Minority Institutions Translational Research Network Data Coordinating Center, 1230 Raymond Road, Jackson, MS 39204, USA.
Department of Epidemiology and Biostatistics, School of Public Health, Jackson State University, 350 W. Woodrow Wilson Drive Jackson Medical Mall, Suite 301, Jackson, MS 39213, USA.
Int J Environ Res Public Health. 2015 Dec 22;13(1):ijerph13010002. doi: 10.3390/ijerph13010002.
There is abundant evidence that neighborhood characteristics are significantly linked to the health of the inhabitants of a given space within a given time frame. This study is to statistically validate a web-based GIS application designed to support cardiovascular-related research developed by the NIH funded Research Centers in Minority Institutions (RCMI) Translational Research Network (RTRN) Data Coordinating Center (DCC) and discuss its applicability to cardiovascular studies.
Geo-referencing, geocoding and geospatial analyses were conducted for 500 randomly selected home addresses in a U.S. southeastern Metropolitan area. The correlation coefficient, factor analysis and Cronbach's alpha (α) were estimated to quantify measures of the internal consistency, reliability and construct/criterion/discriminant validity of the cardiovascular-related geospatial variables (walk score, number of hospitals, fast food restaurants, parks and sidewalks).
Cronbach's α for CVD GEOSPATIAL variables was 95.5%, implying successful internal consistency. Walk scores were significantly correlated with number of hospitals (r = 0.715; p < 0.0001), fast food restaurants (r = 0.729; p < 0.0001), parks (r = 0.773; p < 0.0001) and sidewalks (r = 0.648; p < 0.0001) within a mile from homes. It was also significantly associated with diversity index (r = 0.138, p = 0.0023), median household incomes (r = -0.181; p < 0.0001), and owner occupied rates (r = -0.440; p < 0.0001). However, its non-significant correlation was found with median age, vulnerability, unemployment rate, labor force, and population growth rate.
Our data demonstrates that geospatial data generated by the web-based application were internally consistent and demonstrated satisfactory validity. Therefore, the GIS application may be useful to apply to cardiovascular-related studies aimed to investigate potential impact of geospatial factors on diseases and/or the long-term effect of clinical trials.
有大量证据表明,在给定的时间范围内,社区特征与特定空间内居民的健康状况显著相关。本研究旨在对一个基于网络的地理信息系统(GIS)应用程序进行统计学验证,该应用程序旨在支持由美国国立卫生研究院(NIH)资助的少数族裔机构研究中心(RCMI)转化研究网络(RTRN)数据协调中心(DCC)开展的心血管相关研究,并讨论其在心血管研究中的适用性。
对美国东南部一个大都市地区随机选取的500个家庭住址进行地理参考、地理编码和地理空间分析。估计相关系数、因子分析和克朗巴哈系数(α),以量化心血管相关地理空间变量(步行分数、医院数量、快餐店数量、公园数量和人行道数量)的内部一致性、可靠性以及结构/标准/判别效度的测量指标。
心血管疾病地理空间变量的克朗巴哈系数(α)为95.5%,表明内部一致性良好。步行分数与距离住所一英里范围内的医院数量(r = 0.715;p < 0.0001)、快餐店数量(r = 0.729;p < 0.0001)、公园数量(r = 0.773;p < 0.0001)和人行道数量(r = 0.648;p < 0.0001)显著相关。它还与多样性指数(r = 0.138,p = 0.0023)、家庭收入中位数(r = -0.181;p < 0.0001)和自有住房率(r = -0.440;p < 0.0001)显著相关。然而,发现其与年龄中位数、脆弱性、失业率、劳动力和人口增长率无显著相关性。
我们的数据表明,基于网络的应用程序生成的地理空间数据内部一致且效度良好。因此,该GIS应用程序可能有助于应用于旨在研究地理空间因素对疾病的潜在影响和/或临床试验长期效果的心血管相关研究。