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Modeling Health Insurance Coverage Estimates for Minnesota Counties Joint Statistical Meetings Miami Beach, Florida August 1, 2011 Joanna Turner and Peter Graven State Health Access Data Assistance Center  (SHADAC) University of Minnesota, School of Public Health Supported by a grant from The Robert Wood Johnson Foundation
Acknowledgements Thanks to the Minnesota Department of Health, Health Economics Program for their support of this work www.health.state.mn.us/healtheconomics 2
3 Outline Background Research Objective Methodology Results
Background Minnesota Health Access Survey (MNHA)  Telephone survey conducted every 2 years Provides MN and regional estimates, including estimates for select populous counties and cities County level estimates are frequently requested data 4
U.S. Census Bureau County Level  Uninsurance Estimates American Community Survey (ACS) 1-year estimates: 12 Minnesota counties (Available)  3-year estimates: 47 Minnesota counties (Fall 2011) 5-year estimates: 87 Minnesota counties (Fall 2013) Small Area Health Insurance Estimates Program (SAHIE) 2007 estimates (most recent year) for all 87 Minnesota counties Release of 2008 and 2009 estimates planned for    Fall 2011 5
Research Objective Produce Minnesota uninsurance rates by county for 2009 Use the Minnesota Health Access Survey (MNHA) Use other sources of uninsurance estimates Include estimates of uncertainty  Allow for future input sources Use methods accessible to Minnesota Department of Health staff  Use methods that can be applied to other states 6
Methodology Hierarchical Bayesian Small Area Estimation (SAE) Model  Spatial Conditional Autoregressive (CAR) errors ACS county level estimates Hierarchical Bayesian Simultaneous Equation Model (SEM) 2009 MNHA 2009 ACS 2008 ACS 2007 SAHIE 7
Methodology Overview 8 2009 MNHA direct estimates of uninsurance – county level 2009 MNHA SAE Model  2009 MNHA SAE Estimates 2005-2009 ACS 5-year estimates of demographics  – county level Additional Data Sources  – county level  Simultaneous Equation Model 2007 SAHIE Estimates 2008, 2009 ACS 1-year estimates of uninsurance - PUMA level 2008, 2009 ACS County Model  2008, 2009 ACS County Estimates PUMA-County Crosswalk Final Results: 2009 MN County Estimates of Uninsurance
MNHA SAE Model (1) Telephone survey conducted every 2 years Primarily collects data on one randomly selected member of household (target) Certain information, such as health insurance coverage, is collected for all household members Provides MN and regional estimates, including estimates for select populous counties and cities 2009 complete (turned) file of all household members has a sample size of 31,802  9
MNHA SAE Model (2) Area-level spatial conditional autoregressive (CAR) model Covariates X include ACS 5-year data, Census Bureau population estimates, and additional sources including administrative records. For example: Quarterly Census of Employment and Wages (QCEW) Local Area Unemployment Statistics (LAUS) 10
MNHA SAE Model (3) Variables predicting the direct estimate of uninsurance in the MNHA survey:  Immigration Rate, 2000-2009 (Population estimates) Percent Employed Working in Retail, 2009 (QCEW) Percent Moved into State, 2005-2009 (ACS) Weekly Wage, 2009 (QCEW) Percent White, 2005-2009 (ACS) Percent Land in Farms, 2007 (USDA) Percent 65 and Over, 2005-2009 (ACS) Average Unemployment Rate, 2009 (LAUS)  11
Methodology Overview – ACS County 12 2009 MNHA direct estimates of uninsurance – county level 2009 MNHA SAE Model  2009 MNHA SAE Estimates 2005-2009 ACS 5-year estimates of demographics  – county level Additional Data Sources  – county level  Simultaneous Equation Model 2007 SAHIE Estimates 2008, 2009 ACS 1-year estimates of uninsurance - PUMA level 2008, 2009 ACS County Model  2008, 2009 ACS County Estimates PUMA-County Crosswalk Final Results: 2009 MN County Estimates of Uninsurance
13 Public Use Microdata Area (PUMA)
ACS County Model Two types of estimates County estimate exists in 1-year ACS (12 counties) ,[object Object],County is a subset of PUMA (75 counties) ,[object Object]
SE is the PUMA estimate times the ratio of the PUMA poverty SE divided by the county poverty SE14
Methodology Overview – SAHIE 15 2009 MNHA direct estimates of uninsurance – county level 2009 MNHA SAE Model  2009 MNHA SAE Estimates 2005-2009 ACS 5-year estimates of demographics  – county level Additional Data Sources  – county level  Simultaneous Equation Model 2007 SAHIE Estimates 2008, 2009 ACS 1-year estimates of uninsurance - PUMA level 2008, 2009 ACS County Model  2008, 2009 ACS County Estimates PUMA-County Crosswalk Final Results: 2009 MN County Estimates of Uninsurance
SAHIE Estimates Census Bureau's Small Area Health Insurance Estimates (SAHIE) program produces model-based estimates of health insurance coverage State estimates by age/sex/race/income categories County estimates by age/sex/income categories Estimates are for 0-64 so we need to make a correction to use in our all ages model 16 𝑈𝑛𝑖𝑛𝐴𝑙𝑙𝑆𝐴𝐻𝐼𝐸=𝑈𝑛𝑖𝑛𝑢𝑛𝑑𝑒𝑟65𝑆𝐴𝐻𝐼𝐸−𝑈𝑛𝑖𝑛𝑢𝑛𝑑𝑒𝑟65𝑆𝐴𝐻𝐼𝐸∗𝑈𝑛𝑖𝑛𝑢𝑛𝑑𝑒𝑟65𝑆𝐴𝐻𝐼𝐸+𝑃𝑟𝑜𝑝65𝑜𝑣𝑒𝑟𝐴𝐶𝑆5𝑦𝑒𝑎𝑟∗𝑈𝑛𝑖𝑛65𝑜𝑣𝑒𝑟𝐶𝑃𝑆  
Methodology Overview – SEM Model 17 2009 MNHA direct estimates of uninsurance – county level 2009 MNHA SAE Model  2009 MNHA SAE Estimates 2005-2009 ACS 5-year estimates of demographics  – county level Additional Data Sources  – county level  Simultaneous Equation Model 2007 SAHIE Estimates 2008, 2009 ACS 1-year estimates of uninsurance - PUMA level 2008, 2009 ACS County Model  2008, 2009 ACS County Estimates PUMA-County Crosswalk Final Results: 2009 MN County Estimates of Uninsurance
Simultaneous Equation Model (SEM) 18 Model Prediction
Limitations/Enhancements MNHA SAE model could include more advanced variable selection and transformations MNHA SAE model could take advantage of information outside the state Multi-staged methodology removes non-parametric errors Integrated model could propagate errors more accurately 19
20 SEM Model Results - Percent Uninsured
SEM Model Results - Precision Standard Deviation from SEM model ranges between (0.5-1.3) Coefficient of Variation (CV)  CV=Standard deviation/Estimate Used as threshold for release by Census/NCHS >30% CV estimates are unreliable Ranges between (5.7%-14.4%) 21
22 SEM Model Results - CV
23 SEM Model Results - Source Comparison
Conclusions Produced uninsurance estimates and estimates of uncertainty using a state survey and multiple outcomes Methodology is accessible and can be applied to other states 24

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Pres jsm2011 aug1_turner

  • 1. Modeling Health Insurance Coverage Estimates for Minnesota Counties Joint Statistical Meetings Miami Beach, Florida August 1, 2011 Joanna Turner and Peter Graven State Health Access Data Assistance Center (SHADAC) University of Minnesota, School of Public Health Supported by a grant from The Robert Wood Johnson Foundation
  • 2. Acknowledgements Thanks to the Minnesota Department of Health, Health Economics Program for their support of this work www.health.state.mn.us/healtheconomics 2
  • 3. 3 Outline Background Research Objective Methodology Results
  • 4. Background Minnesota Health Access Survey (MNHA) Telephone survey conducted every 2 years Provides MN and regional estimates, including estimates for select populous counties and cities County level estimates are frequently requested data 4
  • 5. U.S. Census Bureau County Level Uninsurance Estimates American Community Survey (ACS) 1-year estimates: 12 Minnesota counties (Available) 3-year estimates: 47 Minnesota counties (Fall 2011) 5-year estimates: 87 Minnesota counties (Fall 2013) Small Area Health Insurance Estimates Program (SAHIE) 2007 estimates (most recent year) for all 87 Minnesota counties Release of 2008 and 2009 estimates planned for Fall 2011 5
  • 6. Research Objective Produce Minnesota uninsurance rates by county for 2009 Use the Minnesota Health Access Survey (MNHA) Use other sources of uninsurance estimates Include estimates of uncertainty Allow for future input sources Use methods accessible to Minnesota Department of Health staff Use methods that can be applied to other states 6
  • 7. Methodology Hierarchical Bayesian Small Area Estimation (SAE) Model Spatial Conditional Autoregressive (CAR) errors ACS county level estimates Hierarchical Bayesian Simultaneous Equation Model (SEM) 2009 MNHA 2009 ACS 2008 ACS 2007 SAHIE 7
  • 8. Methodology Overview 8 2009 MNHA direct estimates of uninsurance – county level 2009 MNHA SAE Model 2009 MNHA SAE Estimates 2005-2009 ACS 5-year estimates of demographics – county level Additional Data Sources – county level Simultaneous Equation Model 2007 SAHIE Estimates 2008, 2009 ACS 1-year estimates of uninsurance - PUMA level 2008, 2009 ACS County Model 2008, 2009 ACS County Estimates PUMA-County Crosswalk Final Results: 2009 MN County Estimates of Uninsurance
  • 9. MNHA SAE Model (1) Telephone survey conducted every 2 years Primarily collects data on one randomly selected member of household (target) Certain information, such as health insurance coverage, is collected for all household members Provides MN and regional estimates, including estimates for select populous counties and cities 2009 complete (turned) file of all household members has a sample size of 31,802 9
  • 10. MNHA SAE Model (2) Area-level spatial conditional autoregressive (CAR) model Covariates X include ACS 5-year data, Census Bureau population estimates, and additional sources including administrative records. For example: Quarterly Census of Employment and Wages (QCEW) Local Area Unemployment Statistics (LAUS) 10
  • 11. MNHA SAE Model (3) Variables predicting the direct estimate of uninsurance in the MNHA survey: Immigration Rate, 2000-2009 (Population estimates) Percent Employed Working in Retail, 2009 (QCEW) Percent Moved into State, 2005-2009 (ACS) Weekly Wage, 2009 (QCEW) Percent White, 2005-2009 (ACS) Percent Land in Farms, 2007 (USDA) Percent 65 and Over, 2005-2009 (ACS) Average Unemployment Rate, 2009 (LAUS) 11
  • 12. Methodology Overview – ACS County 12 2009 MNHA direct estimates of uninsurance – county level 2009 MNHA SAE Model 2009 MNHA SAE Estimates 2005-2009 ACS 5-year estimates of demographics – county level Additional Data Sources – county level Simultaneous Equation Model 2007 SAHIE Estimates 2008, 2009 ACS 1-year estimates of uninsurance - PUMA level 2008, 2009 ACS County Model 2008, 2009 ACS County Estimates PUMA-County Crosswalk Final Results: 2009 MN County Estimates of Uninsurance
  • 13. 13 Public Use Microdata Area (PUMA)
  • 14.
  • 15. SE is the PUMA estimate times the ratio of the PUMA poverty SE divided by the county poverty SE14
  • 16. Methodology Overview – SAHIE 15 2009 MNHA direct estimates of uninsurance – county level 2009 MNHA SAE Model 2009 MNHA SAE Estimates 2005-2009 ACS 5-year estimates of demographics – county level Additional Data Sources – county level Simultaneous Equation Model 2007 SAHIE Estimates 2008, 2009 ACS 1-year estimates of uninsurance - PUMA level 2008, 2009 ACS County Model 2008, 2009 ACS County Estimates PUMA-County Crosswalk Final Results: 2009 MN County Estimates of Uninsurance
  • 17. SAHIE Estimates Census Bureau's Small Area Health Insurance Estimates (SAHIE) program produces model-based estimates of health insurance coverage State estimates by age/sex/race/income categories County estimates by age/sex/income categories Estimates are for 0-64 so we need to make a correction to use in our all ages model 16 𝑈𝑛𝑖𝑛𝐴𝑙𝑙𝑆𝐴𝐻𝐼𝐸=𝑈𝑛𝑖𝑛𝑢𝑛𝑑𝑒𝑟65𝑆𝐴𝐻𝐼𝐸−𝑈𝑛𝑖𝑛𝑢𝑛𝑑𝑒𝑟65𝑆𝐴𝐻𝐼𝐸∗𝑈𝑛𝑖𝑛𝑢𝑛𝑑𝑒𝑟65𝑆𝐴𝐻𝐼𝐸+𝑃𝑟𝑜𝑝65𝑜𝑣𝑒𝑟𝐴𝐶𝑆5𝑦𝑒𝑎𝑟∗𝑈𝑛𝑖𝑛65𝑜𝑣𝑒𝑟𝐶𝑃𝑆  
  • 18. Methodology Overview – SEM Model 17 2009 MNHA direct estimates of uninsurance – county level 2009 MNHA SAE Model 2009 MNHA SAE Estimates 2005-2009 ACS 5-year estimates of demographics – county level Additional Data Sources – county level Simultaneous Equation Model 2007 SAHIE Estimates 2008, 2009 ACS 1-year estimates of uninsurance - PUMA level 2008, 2009 ACS County Model 2008, 2009 ACS County Estimates PUMA-County Crosswalk Final Results: 2009 MN County Estimates of Uninsurance
  • 19. Simultaneous Equation Model (SEM) 18 Model Prediction
  • 20. Limitations/Enhancements MNHA SAE model could include more advanced variable selection and transformations MNHA SAE model could take advantage of information outside the state Multi-staged methodology removes non-parametric errors Integrated model could propagate errors more accurately 19
  • 21. 20 SEM Model Results - Percent Uninsured
  • 22. SEM Model Results - Precision Standard Deviation from SEM model ranges between (0.5-1.3) Coefficient of Variation (CV) CV=Standard deviation/Estimate Used as threshold for release by Census/NCHS >30% CV estimates are unreliable Ranges between (5.7%-14.4%) 21
  • 23. 22 SEM Model Results - CV
  • 24. 23 SEM Model Results - Source Comparison
  • 25. Conclusions Produced uninsurance estimates and estimates of uncertainty using a state survey and multiple outcomes Methodology is accessible and can be applied to other states 24
  • 26. 25 Joanna Turner State Health Access Data Assistance Center University of Minnesota, Minneapolis, MN 612-624-4802 turn0053@umn.edu Sign up to receive our newsletter and updates at www.shadac.org facebook.com/shadac4states @SHADAC