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Improving on analyses of self-reported data in a large-scale health survey by using information from an examination-based survey.

机译:通过使用基于检查的调查中的信息来改进大型健康调查中自我报告数据的分析。

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Common data sources for assessing the health of a population of interest include large-scale surveys based on interviews that often pose questions requiring a self-report, such as, 'Has a doctor or other health professional ever told you that you have health condition of interest?' or 'What is your (height/weight)?' Answers to such questions might not always reflect the true prevalences of health conditions (for example, if a respondent misreports height/weight or does not have access to a doctor or other health professional). Such 'measurement error' in health data could affect inferences about measures of health and health disparities. Drawing on two surveys conducted by the National Center for Health Statistics, this paper describes an imputation-based strategy for using clinical information from an examination-based health survey to improve on analyses of self-reported data in a larger interview-based health survey. Models predicting clinical values from self-reported values and covariates are fitted to data from the National Health and Nutrition Examination Survey (NHANES), which asks self-report questions during an interview component and also obtains clinical measurements during a physical examination component. The fitted models are used to multiply impute clinical values for the National Health Interview Survey (NHIS), a larger survey that obtains data solely via interviews. Illustrations involving hypertension, diabetes, and obesity suggest that estimates of health measures based on the multiply imputed clinical values are different from those based on the NHIS self-reported data alone and have smaller estimated standard errors than those based solely on the NHANES clinical data. The paper discusses the relationship of the methods used in the study to two-phase/two-stage/validation sampling and estimation, along with limitations, practical considerations, and areas for future research.
机译:用于评估目标人群健康状况的常见数据源包括基于访谈的大规模调查,这些访谈经常会提出需要自我报告的问题,例如“医生或其他卫生专业人员曾经告诉过您您的健康状况如何吗?利益?'或“您的(身高/体重)是多少?”对此类问题的答案可能并不总是能反映出真正的健康状况(例如,如果受访者误报了身高/体重或无法获得医生或其他保健专业人员的帮助)。健康数据中的这种“测量误差”可能会影响有关健康测量和健康差异的推论。基于国家卫生统计中心进行的两次调查,本文介绍了一种基于归因的策略,该策略使用基于检查的健康调查中的临床信息来改进基于较大访谈的健康调查中自我报告数据的分析。根据自我报告的值和协变量预测临床值的模型适用于国家健康与营养检查调查(NHANES)的数据,该调查在面试部分询问自我报告的问题,并在体检部分获得临床测量值。拟合模型用于乘以国家健康访问调查(NHIS)的估算临床值,后者是一个较大的调查,仅通过访问即可获取数据。涉及高血压,糖尿病和肥胖症的插图表明,基于多重估算临床值的健康测量值估计值与仅基于NHIS自报告数据的估计值不同,并且其估计标准误比仅基于NHANES临床数据的估计值小。本文讨论了该研究方法与两阶段/两阶段/验证采样和估计之间的关系,以及局限性,实际考虑因素和未来研究领域。

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