School of Public Health and the State Health Access Data Assistance Center, University of Minnesota, Minneapolis, Minnesota, USA.
Humphrey School of Public Affairs, University of Minnesota, Minneapolis, Minnesota, USA.
Health Serv Res. 2022 Aug;57(4):930-943. doi: 10.1111/1475-6773.13874. Epub 2021 Sep 27.
To examine factors associated with accurate reporting of private and public health insurance coverage.
Minnesota health plan enrollment records provided the sample for the Comparing Health Insurance Measurement Error (CHIME) study, a survey conducted in 2015 that randomly assigned enrollees to treatments that included health insurance questions from the American Community Survey (ACS) or the redesigned Current Population Survey Annual Social and Economic Supplement (CPS).
Reverse record check study that compared CHIME study survey responses to enrollment records of coverage type (direct purchase on and off the Marketplace, Medicaid, or MinnesotaCare), service use, subsidy receipt, and duration of coverage from a major insurer.
Using matched enrollment and CHIME survey data and logistic regression, we examined correlates of accurate insurance type reporting, including characteristics of the insurance coverage, the covered individual, respondent, and family.
Reporting accuracy across treatment and coverage type is high (77%-84%). As with past research, accurate reporting of public insurance is higher for people with characteristics consistent with eligibility for public insurance for both survey treatments. For the ACS treatment, reports of direct purchase insurance are more accurate for enrollees who receive a premium subsidy.
Given the complexity of health insurance measurement and frequently changing policy environment, differences in reporting accuracy across treatments or coverage types are not surprising. Several results have important implications for data editing and modeling routines. First, adding premium and subsidy questions in federal surveys should prove useful given the finding that subsidy receipt is associated with reporting accuracy. Second, across both survey treatments, people whose opportunity structures (race, ethnicity, and income) match public program eligibility are accurate reporters of this coverage. This evidence supports using these commonly collected demographic variables in simulation, imputation, and editing routines.
研究与私人和公共医疗保险覆盖范围准确报告相关的因素。
明尼苏达州健康计划参保记录为比较健康保险测量误差(CHIME)研究的样本,该研究是 2015 年进行的一项调查,随机分配参保人接受来自美国社区调查(ACS)或重新设计的当前人口调查年度社会经济补充调查(CPS)的医疗保险问题的治疗。
反向记录检查研究,将 CHIME 研究调查结果与参保类型(市场内外直接购买、医疗补助或明尼苏达州医保)、服务使用、补贴领取以及主要保险公司的保险覆盖期限的参保记录进行比较。
使用匹配的参保和 CHIME 调查数据和逻辑回归,我们研究了准确报告保险类型的相关因素,包括保险覆盖类型、参保人、受访者和家庭的特征。
在两种治疗和覆盖类型中,报告的准确性都很高(77%-84%)。与以往的研究一样,对于符合公共保险资格的参保人,无论是哪种调查治疗,公共保险的准确报告率都更高。对于 ACS 治疗,领取保费补贴的参保人直接购买保险的报告更准确。
鉴于健康保险测量的复杂性和经常变化的政策环境,不同治疗或覆盖类型之间的报告准确性差异并不奇怪。有几个结果对数据编辑和建模程序具有重要意义。首先,鉴于发现补贴领取与报告准确性相关,在联邦调查中增加保费和补贴问题应该会有所帮助。其次,在两种调查治疗中,机会结构(种族、族裔和收入)与公共计划资格相匹配的人是这种覆盖范围的准确报告者。这一证据支持在模拟、插补和编辑程序中使用这些常见的收集到的人口统计变量。