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运用空间回归分析规划特定地区的艾滋病毒预防和干预方案。

Planning area-specific prevention and intervention programs for HIV using spatial regression analysis.

机构信息

Strategic Information Division, HIV/AIDS, Hepatitis, STD, and TB Administration (HAHSTA), District of Columbia Department of Health, 899 North Capitol St. NE / Fourth Floor, Washington, DC 20002, USA.

George Washington University, Milken Institute School of Public Health, Department of Epidemiology and Biostatistics, 950 New Hampshire Ave NW, Washington, DC 20052, USA.

出版信息

Public Health. 2019 Apr;169:41-49. doi: 10.1016/j.puhe.2019.01.009. Epub 2019 Feb 25.

Abstract

OBJECTIVE

The study was conducted to inform area-based prevention intervention programs and plan resource allocation to reduce new infections in the District of Columbia (DC), United States of America.

STUDY DESIGN

The analysis used spatial regression to evaluate the spatial heterogeneity of the new HIV rate and its association with sexually transmitted infection repeaters (STIREPs) and socio-economic as well as demographic characteristics. The HIV and STIREP data were obtained from the DC Department of Health surveillance data (2010-2016). Other covariates were obtained from the American Community Survey, 2016.

METHODS

Ordinary least squares (OLS) and geographically weighted regression (GWR) were used to compare global and local relationships. GWR-computed robust results were compared with other spatial regression methods such as spatial lag or spatial error methods.

RESULTS

For the OLS model, age, high school dropouts (NHSD), and the black population had an association with new HIV diagnoses (HIVDV). The results from the GWR model demonstrate spatial variations of association of STIREPs; mean age of each block group; and percentage of female population, NHSD, unemployment, and poverty with HIVDV. Akaike information criterion (AICc) value for the global model was 2770.99, and R was 0.54 (54%). The R and AICc of the GWR model was 0.81 (81%) and 2580.84, respectively, where the latter showed a 0.27 (27%) increase in R and a decreased AICc.

CONCLUSION

These results will assist in planning HIV prevention and intervention strategies. These results will also be used for targeted testing, planning pre-exposure prophylaxis, and access to health care. The results will help plan resource allocation to community-based providers for prevention intervention programs and fund public health programs such as condom distribution, mobile vans, and youth-based sex education.

摘要

目的

本研究旨在为美国哥伦比亚特区(DC)的基于区域的预防干预计划提供信息,并规划资源分配以减少新的感染。

研究设计

该分析使用空间回归来评估新的 HIV 率的空间异质性及其与性传播感染再发者(STIREPs)以及社会经济和人口统计学特征的关联。HIV 和 STIREP 数据来自 DC 卫生监测数据(2010-2016 年)。其他协变量来自 2016 年美国社区调查。

方法

使用普通最小二乘法(OLS)和地理加权回归(GWR)来比较全局和局部关系。比较了 GWR 计算的稳健结果与其他空间回归方法,如空间滞后或空间误差方法。

结果

对于 OLS 模型,年龄、高中辍学(NHSD)和黑人人口与新的 HIV 诊断(HIVDV)有关。GWR 模型的结果表明,STIREPs 的关联存在空间变化;每个街区组的平均年龄;以及女性人口、NHSD、失业率和贫困率与 HIVDV 的百分比。全局模型的 Akaike 信息准则(AICc)值为 2770.99,R 为 0.54(54%)。GWR 模型的 R 和 AICc 分别为 0.81(81%)和 2580.84,后者的 R 增加了 0.27(27%),AICc 降低了。

结论

这些结果将有助于规划 HIV 预防和干预策略。这些结果还将用于有针对性的测试、规划暴露前预防和获得医疗保健。这些结果将有助于为基于社区的提供者规划预防干预计划的资源分配,并为 condom 分发、流动车和以青年为基础的性教育等公共卫生计划提供资金。

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