Volume 42 | Number 6p2 | December 2007

Abstract List

Donna D. McAlpine, Timothy J. Beebe, Michael Davern, Kathleen T. Call


Objective

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.


Data Sources

Minnesota Medicaid enrollee files matched to self‐report information from a telephone/mail survey of 4,902 enrollees conducted in 2003.


Study Design

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.


Data Extraction

Race/ethnicity fields from administrative Medicaid files were extracted and merged with self‐report data.


Principal Findings

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.


Conclusions

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.