McAlpine Donna D, Beebe Timothy J, Davern Michael, Call Kathleen T
School of Public Health, University of Minnesota, 420 Delaware Street SE, MMC 729, Minneapolis, MN 55455, USA.
Health Serv Res. 2007 Dec;42(6 Pt 2):2373-88. doi: 10.1111/j.1475-6773.2007.00771.x.
This paper measures agreement between survey and administrative measures of race/ethnicity for Medicaid enrollees. Level of agreement and the demographic and health-related characteristics associated with misclassification on the administrative measure are examined.
Minnesota Medicaid enrollee files matched to self-report information from a telephone/mail survey of 4,902 enrollees conducted in 2003.
Measures of agreement between the two measures of race/ethnicity are computed. Using logistic regression, we also assess whether misclassification of race/ethnicity on administrative files is associated with demographic factors, health status, health care utilization, or ratings of quality of health care.
Race/ethnicity fields from administrative Medicaid files were extracted and merged with self-report data.
The administrative data correctly classified 94 percent of cases on race/ethnicity. Persons who self-identified as Hispanic and those whose home language was English had the greater odds (compared with persons who self-identified as white and those whose home language was not English) of being misclassified in administrative data. Persons classified as unknown/other on administrative data were more likely to self-identify as white.
In this case study in Minnesota, researchers can be reasonably confident that the racial designations on Medicaid administrative data comport with how enrollees self-identify. Moreover, misclassification is not associated with common measures of health status, utilization, and ratings of quality of care. Further replication is recommended given variation in how race information is collected and coded by Medicaid agencies in different states.
本文衡量了医疗补助计划参保者种族/族裔的调查测量与行政测量之间的一致性。研究考察了一致性水平以及与行政测量中错误分类相关的人口统计学和健康相关特征。
明尼苏达州医疗补助计划参保者档案,与2003年对4902名参保者进行的电话/邮件调查中的自我报告信息相匹配。
计算两种种族/族裔测量方法之间的一致性指标。我们还使用逻辑回归评估行政档案中种族/族裔的错误分类是否与人口统计学因素、健康状况、医疗保健利用情况或医疗保健质量评级相关。
提取医疗补助行政档案中的种族/族裔字段,并与自我报告数据合并。
行政数据正确分类了94%的种族/族裔案例。自我认定为西班牙裔的人和母语为英语的人(与自我认定为白人的人和母语不是英语的人相比)在行政数据中被错误分类的几率更高。行政数据中被归类为未知/其他的人更有可能自我认定为白人。
在明尼苏达州的这个案例研究中,研究人员可以合理地确信医疗补助行政数据中的种族指定与参保者的自我认定方式相符。此外,错误分类与健康状况、利用情况和护理质量评级的常见指标无关。鉴于不同州的医疗补助机构收集和编码种族信息的方式存在差异,建议进一步进行复制研究。