Title: Beth Hartman Ellis, PhD
1QualityNet ConferenceSeptember 21, 2006
Medicare Health Outcomes Survey Health Status
Disparities in Medicare Managed Care
Beneficiaries
- Beth Hartman Ellis, PhD
- MaryAnne D. Hope, MS
- Health Services Advisory Group
- Phoenix, AZ
2Medicare Health Outcomes SurveyBackground
- The Medicare Health Outcomes Survey (HOS)
- Assesses each Medicare Advantage (MA) health
plans ability to maintain or improve the
physical and mental health functioning of its
Medicare beneficiaries over a two-year period - Is sponsored by CMS
- Launched in 1998
- First Medicare managed care outcomes measure
- More than 1.8 million Medicare beneficiaries
surveyed to date
3 Medicare Health Outcomes SurveyMethodology
- MA members are surveyed at baseline, and
respondents are resurveyed two years later - A cohort comprises respondents from one baseline
and associated follow up - Baseline cohort of 1,000 beneficiaries randomly
sampled from each participating plan - In plans with less than 1,000, all MA
beneficiaries are sampled - Survey mailed to baseline sample
- Telephone follow up of non-respondents
4Medicare Health Outcomes SurveyPopulation
- Beneficiaries included in the HOS
- Community dwelling
- Nursing home
- Institution
- Disabled under 65
- End stage renal disease patients excluded
5Survey Content
6Research Goal for Current Study
- To examine physical health status after a
two-year interval for living and deceased
Medicare managed care beneficiaries
7Analytic Sample for Current Study
- Medicare HOS 2002 2004 Cohort 5 Baseline and
Follow Up data - 60,317 beneficiaries
- 65 and over, physical component summary
- (PCS) score at Baseline
- 6,993 of these beneficiaries were deceased
- at follow up and included in the analyses
-
8Excluded Groups at Follow Up
- Excluded Groups at follow up
- 1. Invalid survey at follow up (n781)
- Beneficiaries not enrolled in the plan, bad
address and non-working/unlisted phone number - 2. Voluntarily disenrolled at follow up
(n18,603) - Beneficiaries who left their plan between
baseline and follow up - 3. Involuntarily disenrolled at follow up
(n8,111) - Beneficiaries whose plans were no longer
available at follow up - 4. Non-respondents at follow up (n12,733)
- Beneficiaries who did not respond to the survey
at follow up
9Analytic Strategy for Current Study
- We employed the methodology by Diehr and
colleagues (2001) for including the deceased in
health outcomes research - Healthy at follow up defined as a response of
excellent, very good, or good to the question,
In general, would you say your health is..
10Analytic Strategy for Current Study, contd
- Logistic regression used to obtain the
probability of being healthy at follow up,
estimated from the baseline PCS score - Deceased assigned a value of zero
- Clustering among health plans assessed with the
intraclass correlation coefficient - found to be
0.02, suggesting clustering (Cohen et al., 2003) - Solution multilevel model
- SAS PROC MIXED
11Analytic Strategy for CurrentStudy, contd
Reference groups for regression models
- Race - White
- Income of 50,000 and over
- College graduate
- Male
- Married
- Not a Medicaid recipient
- Self-respondent
- Non-smoker
- No chronic conditions
- Negative response to 3 depression screening
questions
12Analytic Strategy for Current Study, contd
- Two multilevel models constructed
- Demographics only
- Demographics and health risks
- Smoker
- Positive depression screen
- Sum of an individuals chronic conditions
13Specific Predictors
- Demographics
- Race African American, Hispanic, Asian/Pacific
Islander, American Indian/Alaskan Native, Other
Race - Household Income
- Less than 10,000
- 10,000 to 19,999
- 20,000 - 29,999
- 30,000 - 49,999
- Missing income
14Specific Predictors, contd
- Demographics, continued
- Educational level
- 8th grade or less
- Some high school
- High school graduate/GED
- Some college/2 year degree
- Gender
- Female
- Age
- Proxy respondent
15Specific Predictors, contd
- Demographics, continued
- Marital Status
- Divorced/separated
- Widowed
- Never married
- Medicaid Status
- Dually eligible (Medicaid Medicare)
- Smoking Status
- Smoker (every day/some days/smoked 100 cigarettes
in your life)
16Specific Predictors, contd
- Positive depression screen
- Positive response to any of the 3 depression
screening questions in the HOS - Comorbidities
- Individuals sum of 9 chronic conditions
17Demographics Model
18Demographics and Health Risks Model
19Excluded Groups Comparison at Baseline
- Effect sizes for proportions (Cohen, 1988) and
Hedges g for means (Rosenthal Rosnow, 1991)
used to assess significance of findings
20Excluded Groups Comparison at Baseline, contd
- The invalid survey group had significantly
- More Hispanics
- Less Whites
- More with 8th grade education or less
- More with less than 10,000 household income
- Small effect size gt 0.20 lt 0.50
- Medium effect size gt 0.50 - lt 0.80
- Large effect size gt 0.80
21Excluded Groups Comparison at Baseline, contd
- The invalid survey group had significantly
- Less homeowners
- More dually eligible
- More who had a positive depression screen
- Older
- Lower PCS and MCS scores
- More impaired ADLs
- Small effect size gt 0.20 lt 0.50
- Medium effect size gt 0.50 - lt 0.80
- Large effect size gt 0.80
22Conclusions
- Probability of not being healthy at follow up
related to - Low socioeconomic status
- Low educational level
- Female
- Proxy respondent
- Medicaid recipient (dually eligible)
- Positive depression screen
- Chronic conditions
- Advanced age
23Conclusions, contd
- Demographics and health risks model
- Better overall fit compared to the demographics
only model - Socioeconomic disparities exist in Medicare
managed care for enrollees in this sample
24Conclusions, contd
- Medicare managed care plans and QIOs should
consider targeting beneficiaries with low income
and low educational levels, depression, and
comorbidities for disease management programs
25Medicare HOS Webinars
- Getting the Most out of Your Medicare HOS
Reports held September 14, 2006 - Upcoming Webinars
- A Guide for Researchers
- October 18, 2006
- Mining Your HOS Data A Toolkit
- November 14, 2006
-
- Check the HOS Website for information
- about specific dates
26Contact Information
- Beth Hartman Ellis, PhD Bellis_at_azqio.sdps.org
- 602.665.6133
- MaryAnne D. Hope, MS Mhope_at_azqio.sdps.org
- 602.745.6211
- HOS Web Site www.hosonline.org
- HOS Technical Support
- Medicare HOS Information and Technical Support
Telephone Line - 1-888-880-0077
- E-Mail
- hos_at_azqio.sdps.org
27References
- Agency for Healthcare Research and Quality
(2005). National Healthcare Disparities Report.
Available at www.ahrq.gov/qual/nhdr05/nhdr05htm.
- Cohen, J. (1988). Statistical Power Analysis for
the Behavioral Sciences (2nd ed). Hillsdale, NJ
Lawrence Erlbaum Associates. - Cohen, J., Cohen, P., West, S.G., Aiken, L.S.
(2003). Applied multiple regression/correlation
analysis for the behavioral sciences (3rd ed).
Mahwah, NJ Lawrence Erlbaum Associates. - Diehr, P., Patrick, D.L., Spertus, J., et al.
(2001). Transforming self-rated health and the
SF-36 scales to include death and improve
interpretability. Medical Care 39 (7) 670-680. - Menard, S. (1995). Applied logistic regression
analysis. Sage Series Quantitative Applications
in the Social Sciences. Thousand Oaks, CA Sage
Publications. - Rosenthal, R. Rosnow, R. L. (1991). Essentials
of behavioral research methods and data analysis
(2nd ed). Columbus, OH McGraw-Hill. - Singer, J. (1998). Using SAS PROC MIXED to fit
multilevel models, hierarchial models, and
individual growth models. Journal of Educational
and Behavioral Statistics, 24(4), 323-355. -