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Geographic Information System Methodologies and Spatial Analysis in Health and Environmental Disparity.

机译:健康和环境差异中的地理信息系统方法论和空间分析。

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摘要

Studies reported that racial/ethnic minorities living in disadvantaged neighborhoods experienced a greater rate of exposure to environmental hazards. Knowledge of environmental exposure risks, distributional patterns and their effects on population health require a geographic perspective while investigating social injustices to better understand the causes of health disparities among different populations. However, previous studies often fail to recognize processes and assumptions of spatial analyses. In this paper, we demonstrated the importance of such processes. We used exploratory spatial data analysis methods to examine potential spatial patterns of demographic and cancer risk distributions in Chicago. First, we examined the presence of overall spatial clustering using Moran's I statistic. Our Global Moran's I statistic showed clustering for percent poverty, percent black and non-point cancer risk in predominantly poor neighborhoods in Chicago. Local autocorrelation was conducted to identify spatial clusters and spatial outliers. Local indicators of spatial association provided univariate significant maps, cluster maps and scatterplots which identified spatial clusters for percent poverty, percent black and non-point cancer risk in Chicago. We then conducted bivariate analysis which showed that standardized high percent poverty was significantly correlated with a standardized high neighboring non-point source cancer risk. These findings were conclusive evidence that indicated the presence of spatial clusters, while the strengths of the associations cannot be determined. The findings warrant further analysis with spatial regression methods.
机译:研究报告说,生活在处境不利地区的种族/族裔少数民族遭受环境危害的几率更高。了解环境暴露风险,分布方式及其对人口健康的影响,需要地理上的观点,同时还要调查社会不公,以更好地了解不同人群之间健康差异的原因。但是,以前的研究通常无法识别空间分析的过程和假设。在本文中,我们证明了此类过程的重要性。我们使用探索性空间数据分析方法来检查芝加哥人口统计学和癌症风险分布的潜在空间格局。首先,我们使用Moran的I统计量检查了整体空间聚类的存在。我们的全球Moran's I统计数据表明,在芝加哥主要贫困地区,贫困率,黑人患病率和非点源性癌症风险呈聚类。进行局部自相关以识别空间聚类和空间离群值。空间联系的局部指标提供了单变量的重要图,聚类图和散点图,这些图确定了芝加哥的贫困百分比,黑人和非点癌症风险百分比的空间聚类。然后,我们进行了双变量分析,结果表明,标准化的高贫困率与标准化的高邻近非点源性癌症风险显着相关。这些发现是确凿的证据,表明存在空间簇,而无法确定关联的强度。这些发现需要使用空间回归方法进行进一步分析。

著录项

  • 作者

    Osiecki, Kristin M.;

  • 作者单位

    University of Illinois at Chicago.;

  • 授予单位 University of Illinois at Chicago.;
  • 学科 Environmental Health.;Sociology Environmental Justice.;Health Sciences Epidemiology.
  • 学位 Ph.D.
  • 年度 2013
  • 页码 115 p.
  • 总页数 115
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 遥感技术;
  • 关键词

  • 入库时间 2022-08-17 11:40:56

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