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利用地理空间分析和紧急索赔数据改善少数民族健康监测。

Using Geospatial Analysis and Emergency Claims Data to Improve Minority Health Surveillance.

机构信息

Ronald O. Perelman Department of Emergency Medicine, New York University School of Medicine, 462 First Avenue, Room A345, New York, NY, 10016, USA.

Department of Population Health, New York University School of Medicine, 227 East 30th Street, New York, NY, 10016, USA.

出版信息

J Racial Ethn Health Disparities. 2018 Aug;5(4):712-720. doi: 10.1007/s40615-017-0415-4. Epub 2017 Aug 8.

Abstract

Traditional methods of health surveillance often under-represent racial and ethnic minorities. Our objective was to use geospatial analysis and emergency claims data to estimate local chronic disease prevalence separately for specific racial and ethnic groups. We also performed a regression analysis to identify associations between median household income and local disease prevalence among Black, Hispanic, Asian, and White adults in New York City. The study population included individuals who visited an emergency department at least once from 2009 to 2013. Our main outcomes were geospatial estimates of diabetes, hypertension, and asthma prevalence by Census tract as stratified by race and ethnicity. Using emergency claims data, we identified 4.9 million unique New York City adults with 28.5% of identifying as Black, 25.2% Hispanic, and 6.1% Asian. Age-adjusted disease prevalence was highest among Black and Hispanic adults for diabetes (13.4 and 13.1%), hypertension (28.7 and 24.1%), and asthma (9.9 and 10.1%). Correlation between disease prevalence maps demonstrated moderate overlap between Black and Hispanic adults for diabetes (0.49), hypertension (0.57), and asthma (0.58). In our regression analysis, we found that the association between low income and high disease prevalence was strongest for Hispanic adults, whereas increases in income had more modest reductions in disease prevalence for Black adults, especially for diabetes. Our geographically detailed maps of disease prevalence generate actionable evidence that can help direct health interventions to those communities with the highest health disparities. Using these novel geographic approaches, we reveal the underlying epidemiology of chronic disease for a racially and culturally diverse population.

摘要

传统的健康监测方法往往不能充分反映少数民族和族裔群体的情况。我们的目标是使用地理空间分析和紧急索赔数据,分别估计特定种族和族裔群体的当地慢性病患病率。我们还进行了回归分析,以确定纽约市黑人和西班牙裔、亚洲人和白人成年人的家庭收入中位数与当地疾病患病率之间的关联。研究人群包括 2009 年至 2013 年期间至少一次到急诊室就诊的个人。我们的主要结果是按种族和族裔分层的,以普查区为单位的糖尿病、高血压和哮喘患病率的地理空间估计。使用紧急索赔数据,我们确定了 490 万独特的纽约市成年人,其中 28.5%的人认定为黑人,25.2%的人认定为西班牙裔,6.1%的人认定为亚洲人。调整年龄后的疾病患病率在黑人和西班牙裔成年人中最高,糖尿病(13.4%和 13.1%)、高血压(28.7%和 24.1%)和哮喘(9.9%和 10.1%)。疾病患病率地图之间的相关性表明,黑人和西班牙裔成年人的糖尿病(0.49)、高血压(0.57)和哮喘(0.58)之间存在中度重叠。在我们的回归分析中,我们发现低收入与高疾病患病率之间的关联在西班牙裔成年人中最强,而收入增加对黑人成年人的疾病患病率的降低幅度较小,尤其是对糖尿病的影响。我们详细的疾病患病率地理地图提供了可操作的证据,可以帮助将卫生干预措施指向那些健康差距最大的社区。通过使用这些新颖的地理方法,我们揭示了一个种族和文化多样化人群的慢性疾病的潜在流行病学。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/5df9/5803484/3ed702bc0153/nihms898667f1.jpg

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