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Racial, socioeconomic, and geographic disparities of female breast cancer in Texas.

机译:德克萨斯州女性乳腺癌的种族,社会经济和地理差异。

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摘要

Breast cancer, as the most common cancer among women, has been reported to display remarkable health disparities in the continuum of late-stage diagnosis, utilization of mammography, treatment options, as well as survival and mortality. These inequalities are experienced by different subpopulations and related to a complex set of factors, such as education, socioeconomic, race, geography, unequal access to health resources, and health-related policies. Existing knowledge about these factors and mechanisms causing these disparities in breast cancer outcomes is limited. Few studies have examined how racial disparities in breast cancer vary across geographic regions, which is key information for any attempt to allocate limited health resources more effectively and efficiently. To date, research on racial and socioeconomic disparities of breast cancer mainly proceeds by combining epidemiological data and investigating risk factors for the population under study. By doing so, one overlooks the geographical variations of breast cancer outcomes, a piece of information that is critical to target regions in intervention programs. Investigating racial disparities across regions can provide useful insights and reveal unknown risk factors for breast cancer, thereby helping health-policy makers to improve the overall health outcome of breast cancer among women.;Within the framework of Geographic Information Systems (GIS), this research conducted spatial and statistical analysis to identify the census tracts that displayed significant racial disparities in late-stage diagnosis and breast cancer mortality for both African-American and Hispanic women compared with their non-Hispanic white counterparts in Texas from 1995–2005. These disparities were measured in terms of rate difference (RD) and rate ratio (RR) and accounted for the population size of each census tract. The significance of these disparities was evaluated statistically and the results were corrected for multiple testing using the false discovery rate approach. For African-American women with the RD measurement, 278 and 188 census tracts displayed significant racial disparities for breast cancer mortality and late-stage diagnosis respectively in the 4,388 census tracts in Texas. These figures were larger for Hispanic women, with 328 and 266 census tracts respectively. Fewer Census tracts tested significant for the RR measurement. Most of the census tracts with significant racial disparities were located in the metropolitan areas of Houston, Dallas, and Austin-San Antonio for African-American women. Hispanics were also found to have significant racial disparities in the Southwest border of Texas. Logistic regression between the significance of the RD statistic for the two types of health outcomes indicated that a census tract with significant racial disparities for late-stage diagnosis was 30 times more likely to test significant for racial disparities in breast cancer mortality.;Logistic regression was also utilized to investigate the spatial connection of significant racial disparities in late-stage diagnosis and breast cancer mortality. The socioeconomic status (SES) was categorized into groups of low, middle, and high based on the percentage of population living under the federal poverty line. For the two minority groups, low and middle SES census tracts were more likely to report significant racial disparities for both health outcomes. About 40% of the census tracts with significant racial disparities for breast cancer mortality also displayed significant disparities for late-stage diagnosis. Linear regression was then used to quantify the relationships between the magnitude of racial disparities in mortality and late-stage diagnosis for breast cancer. The correlation coefficient was 0.23 for the RD measurement and 0.45 for the RR measurement for both minority groups. Moran's I, however, indicated the presence of spatial autocorrelation in the regression residuals, which might reflect the non-stationarity of the regression coefficients and/or the existence of unknown spatial factors. Therefore, the regression models were weighted geographically to account for the spatial variations of observations.;Furthermore, potential risk factors such as demographic characteristics, SES, and spatial accessibility were added to racial disparities in late-stage diagnosis as covariates of a logistic regression to investigate their contributions to the significance of racial disparities in breast cancer mortality. Principal component analysis (PCA) was utilized to reduce the multicollinearity among covariates and summarized the correlation structure displayed by the fourteen variables that were used to measure socio-demographic conditions and spatial accessibility to mammography facilities. The logistic regression analysis revealed that a census tract with significant racial disparities in late-stage diagnosis was 4 times more likely to have significant racial disparities in breast cancer mortality. Lower SES played an important role in determining whether a census tract displayed significant racial disparities in breast cancer mortality. However, proximity to mammography facilities had no impacts on the presence of significant racial disparities in breast cancer mortality for Hispanics, while centroids of census tracts that were closer to mammography facilities were more likely to have significant racial disparities for African-American women. For these women, most census tracts with significant racial disparities were located within the metropolitan areas which had higher concentration of health care facilities. In addition to the metropolitan areas, significant racial disparities for Hispanics were also found along the Southwest border of Texas, which lacked health care and had longer driving distance and time to mammography facilities.;This research analyzed the spatial patterns of racial disparities in late-stage diagnosis and breast cancer mortality, which shed new insights on the location of problematic areas and could help prioritizing the areas for effective intervention programs by accounting for population distributions. The identified risk factors in racial disparities could help develop community-based intervention models and lead to a more efficient allocation of limited health resources with the ultimata goal of saving women's life. Subsidized health insurances and free mammograms for disadvantaged African-Americans and Hispanics could be applied at local communities to reduce racial disparities in breast cancer. The long term goal to improve the African-American and Hispanic women's health is to boost their income and enhance their social status through educational attainment.
机译:据报道,乳腺癌是妇女中最常见的癌症,在后期诊断,乳腺X线摄影的使用,治疗选择以及生存和死亡率的连续性方面显示出显着的健康差异。这些不平等现象是由不同的亚人群经历的,并且与一系列复杂的因素有关,例如教育,社会经济,种族,地理,获取卫生资源的机会不平等以及与卫生相关的政策。关于导致乳腺癌结果差异的这些因素和机制的现有知识是有限的。很少有研究检查乳腺癌的种族差异在不同地理区域之间的差异,这是任何试图更有效和高效地分配有限的健康资源的关键信息。迄今为止,关于乳腺癌的种族和社会经济差异的研究主要是通过结合流行病学数据和调查所研究人群的危险因素来进行的。这样一来,人们就忽略了乳腺癌预后的地理差异,这对干预计划中的目标区域至关重要。调查各地区的种族差异可以提供有用的见解并揭示乳腺癌的未知风险因素,从而帮助健康政策制定者改善女性乳腺癌的整体健康状况。;在地理信息系统(GIS)的框架内进行了空间和统计分析,以发现与1995年至2005年在德克萨斯州的非西班牙裔白人相比,非洲裔美国人和西班牙裔妇女在晚期诊断和乳腺癌死亡率方面显示出显着种族差异的人口普查区域。这些差异是通过比率差(RD)和比率(RR)来衡量的,并考虑了每个人口普查区的人口规模。对这些差异的显着性进行统计评估,并使用错误发现率方法对多次测试的结果进行校正。对于进行RD测量的非裔美国女性,得克萨斯州的4388个人口普查区分别有278个和188个人口普查区显示出显着的种族差异,导致乳腺癌死亡率和晚期诊断。对于西班牙裔妇女来说,这些数字更大,分别有328和266个人口普查区。较少的普查数据对RR测量具有重要意义。大多数种族差异显着的人口普查区都位于休斯敦,达拉斯和奥斯丁-圣安东尼奥等大城市的非裔美国妇女。西班牙裔美国人还被发现在德克萨斯州西南边境地区存在明显的种族差异。 RD统计量对两种健康结局的显着性之间的Logistic回归表明,对于晚期诊断而言,种族差异显着的普查区在乳腺癌死亡率中检验种族差异的可能性要高30倍。也用于研究晚期种族差异显着的空间联系以及乳腺癌的死亡率。根据生活在联邦贫困线以下的人口百分比,将社会经济地位(SES)分为低,中和高三类。对于这两个少数族裔,低和中度SES普查区更有可能报告两种健康结局均存在重大种族差异。种族差异显着的人口普查区中有40%的乳腺癌死亡率在后期诊断中也显示出显着差异。然后,使用线性回归来量化种族差异在死亡率和乳腺癌晚期诊断之间的关系。两组少数民族的RD测量相关系数为0.23,RR测量相关系数为0.45。然而,Moran的I表明回归残差中存在空间自相关,这可能反映了回归系数的非平稳性和/或未知空间因素的存在。因此,对回归模型进行地理加权以说明观测值的空间变化;此外,还应考虑潜在的风险因素,例如人口统计特征,SES,以及空间可及性在后期诊断中被添加到种族差异中,作为逻辑回归的协变量,以研究它们对种族差异在乳腺癌死亡率中的重要性的贡献。主成分分析(PCA)用于减少协变量之间的多重共线性,并总结了十四个变量所显示的相关结构,这些变量用于测量社会人口统计学条件和乳腺X射线摄影设备的空间可及性。 Logistic回归分析显示,在晚期诊断中具有显着种族差异的普查区在乳腺癌死亡率中具有显着种族差异的可能性是后者的4倍。较低的SES在确定普查系统是否在乳腺癌死亡率中显示出明显的种族差异方面起着重要作用。但是,靠近乳腺X射线摄影设备对西班牙裔乳腺癌死亡率存在显着种族差异没有影响,而更接近乳腺X射线摄影设备的人口普查质心对于非裔美国妇女而言更可能具有显着的种族差异。对于这些妇女,大多数种族差异显着的人口普查区都位于大都市地区,那里的医疗设施比较集中。除大都市地区外,在德克萨斯州的西南边界还发现了西班牙裔的重大种族差异,该地区缺乏医疗保健,到乳腺X射线摄影设备的行驶距离和时间也更长。阶段诊断和乳腺癌死亡率,这为有问题的区域的位置提供了新的见解,并可以通过考虑人口分布来帮助确定优先区域,以制定有效的干预计划。确定的种族差异风险因素可以帮助建立基于社区的干预模型,并以节省妇女生命的最终目标,更有效地分配有限的卫生资源。可以在当地社区为处于不利地位的非裔美国人和西班牙裔美国人提供补贴的健康保险和免费的乳房X线照片,以减少乳腺癌中的种族差异。改善非裔美国人和西班牙裔妇女健康的长期目标是通过受教育程度来增加其收入并改善其社会地位。

著录项

  • 作者

    Tian, Nancy.;

  • 作者单位

    Texas State University - San Marcos.;

  • 授予单位 Texas State University - San Marcos.;
  • 学科 Health Sciences Public Health.;Information Science.
  • 学位 Ph.D.
  • 年度 2010
  • 页码 189 p.
  • 总页数 189
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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