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Analysis of an Environmental Exposure Health Questionnaire in a Metropolitan Minority Population Utilizing Logistic Regression and Support Vector Machines

机译:利用Logistic回归和支持向量机的大都市少数民族人口环境暴露健康问卷分析

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摘要

The goal of this study was to analyze a 54-item instrument for assessment of perception of exposure to environmental contaminants within the context of the built environment, or exposome. This exposome was defined in five domains to include 1) home and hobby, 2) school, 3) community, 4) occupation, and 5) exposure history. Interviews were conducted with child-bearing-age minority women at Metro Nashville General Hospital at Meharry Medical College. Data were analyzed utilizing DTReg software for Support Vector Machine (SVM) modeling followed by an SPSS package for a logistic regression model. The target (outcome) variable of interest was respondent's residence by ZIP code. The results demonstrate that the rank order of important variables with respect to SVM modeling versus traditional logistic regression models is almost identical. This is the first study documenting that SVM analysis has discriminate power for determination of higher-ordered spatial relationships on an environmental exposure history questionnaire.
机译:这项研究的目的是分析一种54个项目的仪器,以评估在建筑环境或暴露环境下暴露于环境污染物的感知。该暴露体在五个领域中定义为:1)家庭和嗜好,2)学校,3)社区,4)职业和5)接触史。在Meharry医学院的Nashville总医院的育龄少数民族妇女进行了采访。数据使用DTReg软件进行支持向量机(SVM)建模,然后使用SPSS软件包进行逻辑回归模型分析。感兴趣的目标(结果)变量是邮政编码所在的受访者的住所。结果表明,相对于传统的逻辑回归模型,相对于SVM建模,重要变量的排名顺序几乎相同。这是第一项证明SVM分析具有区分力的功能,该能力可确定环境暴露历史问卷上的高阶空间关系。

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