Brett O'Hara1.
Abstract
OBJECTIVE: To assess the quality of new modeled estimates of health insurance based on a federal survey. DATA SOURCES/STUDY
SETTING: The study uses data from the Annual Social and Economic Supplements to the Current Population Survey (CPS ASEC), calendar years 2001-2003. Health insurance estimates for low-income populations are analyzed. STUDY
DESIGN: To assess a method for making estimates for uninsured low-income persons, survey estimates of low-income children are compared with modeled estimates. Inferences can be drawn from this comparison and the method is extended to account for demographic groups. DATA COLLECTION: Data for 2001-2002 CPS ASEC were self-tabulated for low-income children aged 0-17. A special tabulation of the CPS ASEC was used to categorize the numbers of uninsured by age, race, sex, and Hispanic origin by low income at the state level. This special tabulation was the underlying data for the model. Principal Findings. The modeled estimates reduce the variance and margin of error substantially compared with the survey estimates.
CONCLUSIONS: These health insurance estimates are credible and increase the precision for the low-income uninsured population. They have broad uses for policy makers and program administrators who focus on the uninsured in special populations. No claim to original U.S. government works. © Health Research and Educational Trust.
OBJECTIVE: To assess the quality of new modeled estimates of health insurance based on a federal survey. DATA SOURCES/STUDY
SETTING: The study uses data from the Annual Social and Economic Supplements to the Current Population Survey (CPS ASEC), calendar years 2001-2003. Health insurance estimates for low-income populations are analyzed. STUDY
DESIGN: To assess a method for making estimates for uninsured low-income persons, survey estimates of low-income children are compared with modeled estimates. Inferences can be drawn from this comparison and the method is extended to account for demographic groups. DATA COLLECTION: Data for 2001-2002 CPS ASEC were self-tabulated for low-income children aged 0-17. A special tabulation of the CPS ASEC was used to categorize the numbers of uninsured by age, race, sex, and Hispanic origin by low income at the state level. This special tabulation was the underlying data for the model. Principal Findings. The modeled estimates reduce the variance and margin of error substantially compared with the survey estimates.
CONCLUSIONS: These health insurance estimates are credible and increase the precision for the low-income uninsured population. They have broad uses for policy makers and program administrators who focus on the uninsured in special populations. No claim to original U.S. government works. © Health Research and Educational Trust.
Entities:
Mesh:
Year: 2008
PMID: 18459952 PMCID: PMC2653896 DOI: 10.1111/j.1475-6773.2008.00851.x
Source DB: PubMed Journal: Health Serv Res ISSN: 0017-9124 Impact factor: 3.402