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Original Research |
1 Departments of Family Medicine, and Community and Preventive Medicine, School of Medicine, University of Rochester, Rochester, Minn
2 Department of Family and Community Medicine, School of Medicine, University of California, Davis, Calif
3 Department of Family Medicine, School of Medicine, University of Washington, Seattle, Wash
CORRESPONDING AUTHOR Kevin Fiscella, MD, MPH Highland Family Medicine Center 885 South Ave Rochester, NY 14620 Kevin_Fiscella{at}URMC.rochester.edu
| ABSTRACT |
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METHODS We conducted a cross-sectional analysis of the 19961997 Community Tracking Study Household Survey among adults aged 18 to 64 years with private or Medicaid health insurance. We examined interactions between respondent educational level and HMO membership for the following measures: having a regular source of care and, in the past year, having had a physician visit, a mental health visit, a mammogram (women
50 years), an influenza vaccination (ages
55 years), or smoking cessation counseling (smokers).
RESULTS After adjustment for sociodemographic factors, community size, insurance type, physical and mental health status, and smoking, respondents with less education were significantly less likely to have had a physician visit or mental health visit, mammogram, or influenza vaccination in the past year. Disparities in receipt of preventive care by educational level were smaller among HMO members. Differences in disparities between HMO members and non-HMO members reached statistical significance for influenza vaccination and showed a trend for mental health visits (P = .06). Moreover, HMO members with less than 12 years of education received services at levels comparable to non-HMO members with more education.
CONCLUSIONS There are appreciable disparities in receipt of preventive care by education among nonelderly insured persons. HMO membership is associated with smaller disparities for some services. Those with the lowest levels of education appeared to benefit the most from HMO membership.
Key Words: Socioeconomic Factors Health Maintenance Organizations Ethnic Groups Blacks Hispanic Americans Delivery of Health Care Preventive Health Services
| INTRODUCTION |
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Because of a population focus and greater reliance on performance assessment, including accountability to accreditation organizations,9,10 health maintenance organizations (HMOs) are potentially positioned to improve health care to persons of low socioeconomic status and reduce disparities among plan members. Yet relatively little is known about the quality of care provided to persons of low socioeconomic status in HMOs or the impact of HMOs on disparities. In earlier studies, Ware and colleagues11,12 found that low-income, ill persons fared worse in HMOs than outside HMOs.
Others studies suggest that HMO membership has little effect on racial and ethnic disparities in influenza shots and health care utilization measures4,13 and might be associated with greater barriers and lower satisfaction for minorities.14
Using a large, nationally representative survey, we compared delivery of preventive clinical services among nonelderly adults enrolled in HMOs with those in non-HMO health care plans. Because HMOs can use population-level quality measures and educational campaigns, we hypothesized that we would observe smaller disparities in the delivery of these services by educational level among HMO members.
| METHODS |
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Regular source of care; likelihood of a physician visit, mental health visit, mammogram, or influenza vaccination in the past year; and receipt of smoking cessation counseling were each modeled as a function of HMO membership and patient educational level. Interactions by insurance type were also modeled. Covariates, described below, were selected using the Andersen-Aday behavioral model that identifies predisposing, enabling, and need factors.16
Primary Independent Variables
Education (Predisposing). Data were collected regarding respondents education (less than 12 years of completed education, 12 years, 1315 years and 16 or more).
Insurance (enabling). This was classified as private or Medicaid.
HMO membership (enabling). This was based on the respondents responses to a survey item asking whether their plan was an HMO or not.
Covariates
Race, Ethnicity, Language (Predisposing). The following 5, mutually exclusive categories were based on the respondents self-identification and the language in which the interview was conducted: white; black; Hispanic, English fluent; Hispanic, non-English fluent; and other race.
Demographic characteristics (predisposing). These categories include age (18 to 29, 30 to 44, and 45 to 64 years, but entered as a continuous variable in analyses of mammography and influenza vaccination, where the sample was limited to older adults), sex, marital status (married or not), family size, community size (large metropolitan region of more than 200,000 population, small metropolitan region of less than 200,000 population, or nonmetropolitan region), and household income (as a percentage of the federal poverty level for 1996: less than 100%; 100% to 199%; 200% to 299%; 300% to 399%; more than 400%).
Health status (need). We used self-reported health status as a proxy for need. Health status was assessed based on the Medical Outcomes Study Short Form 12-item health survey (SF-12). It includes 2 summary scores, 1 for physical health (range, 10 69; mean, 52 in this sample) and 1 for mental health (range, 8 71; mean, 51 in this sample). It has been shown to be reliable and valid compared with the well-established, longer SF-36.17,18
Smoking status (predisposing). Respondents were asked whether they currently smoked, formerly smoked, or never smoked.
Dependent Variables
We used standard dichotomous measures for medical, mental health, and preventive health services use.
Having a Regular Source of Care. This variable was dichotomous (
Is there a place you usually go when you are sick, or need advice about your health?
) This measure was also included as an independent covariate in analyses of the remaining dependent variables.
Physician Visit. This measure was based on a respondent report of at least 1 physician visit in the past year.
Mental Health Visit. This measure was based on the respondents report that they had
seen or talked to a mental health professional such as a psychiatrist, psychologist, psychiatric nurse, or clinical social worker
in the past year.
Mammography. Respondents were asked whether they had received a mammogram in the past year (women older than 50 years, n = 7,418 for this subsample).
Influenza Vaccination. Respondents were asked whether they had received an influenza vaccination in the past year (adults 55 years and older, n = 4,277 for this subsample).
Smoking Cessation Counseling. Respondents who smoked were asked whether they had been counseled by their physician to quit smoking (adult smokers, n = 7,488 for this subsample).
Analysis
We conducted analyses using the statistical software package SUDAAN19 to account for the complex design of the CTS Household Survey.15 We compared HMO and non-HMO members overall and within each educational stratum.
Separate logistic regression models were developed for having a usual source of care (all) and receipt in the past year of at least 1 physician visit (all), at least 1 visit with a mental health professional (all), smoking cessation counseling (all smokers), mammography (women 50 years and older), and an influenza vaccination (all 55 years and older). We assessed for interaction between HMO status and education and also evaluated interactions between HMO status and income, race and ethnicity, and Medicaid insurance. To facilitate ease of interpretation of the size of the education and HMO effects, adjusted predicted marginal effects were calculated.20
| RESULTS |
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| DISCUSSION |
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To our knowledge, this study is first to examine specifically the impact of HMOs on educational disparities in health care utilization using nationally representative data. Previously reported results showed an absence of any apparent effect of HMOs on racial and ethnic disparities4 and an apparently harmful effect on health outcomes for ill persons of low socioeconomic status.1113 Our findings suggest that HMOs might have modest beneficial effects on at least some educational disparities in care.
These findings should be tempered by the limitations of the study. All data were based exclusively on self-report. There is some inaccuracy in self report of HMO membership; among privately insured persons in the CTS Household Survey, self-report of HMO membership had a sensitivity of 73% and specificity of 78%.24 Educational bias in reporting HMO membership alone, however, could not account for these findings. Only if educational bias in reporting HMO membership were correlated with a bias in reporting use of services would such a bias explain these findings. Available evidence suggests that self-report of receipt of preventive services appears to be a sensitive, but not specific, measure of actual receipt of the service.25,26 It is important to note that there does not appear to be educational bias in reporting.27,28 Thus, it appears unlikely that these results are primarily attributable to reporting bias.
Our data are now more than 5 years old. Considerable changes have occurred in managed care during this period.29 The extent to which these findings hold today is uncertain.
These analyses examined a limited array of health care indicators, mostly associated with prevention. We were not able examine educational disparities in care for chronic conditions or health outcomes. Thus, our findings and those from previous studies that suggest HMOs might adversely affect the health status of poorer, sicker patients are not directly comparable.11,12 Also, although we controlled for differences in the characteristics of HMO and non-HMO members, it is possible that unmeasured characteristics, such as attitudes about health care, differed between the 2 groups.
Our analyses did not account for differences in types of HMOs. It is possible that different types of HMOs have differing effects on disparities. Our analyses also did not account for HMO profit status. Not-for-profit HMOs have been shown to deliver higher quality care than investor-owned HMOs in areas measured by Health Plan Employer Data and Information Set (HEDIS) indicators.30 Clearly, differences among HMOs warrant further examination, because strengthening those kinds of HMOs that have a more beneficial effect on disparities represents a possible policy option for reducing disparities.
Although disparities tended to be smaller in HMOs, in most cases these disparities were not eliminated by HMO membership. Thus, there is ample opportunity for quality improvement. HMOs, by virtue of their population focus and reporting through the HEDIS, are better positioned than non-HMO plans to address disparities in care. Before they can begin to do so directly, however, they will need to begin collecting race, ethnicity, and education data on their members and begin stratifying their HEDIS performance measures by race-ethnicity and educational status.31 Once determined, these disparities can be targeted through quality improvement efforts using various approaches,32 including reminder letters33,34 and case management.35
We can only speculate about explanations for our findings. It is possible that lower copayments improve access to influenza vaccination within HMOs. It is also possible that HMO physicians are targeting their efforts toward members who have higher rates of smoking36 and who are at higher risk because of their lower educational status.37 Planwide interventions undertaken by HMOs to boost use of influenza immunizations, such as reminders to patients, might provide slightly greater benefit to patients who are less aware of the potential benefits of these services. At least among the elderly, health literacy might be even more important than educational level in promoting use of preventive care.38 It is possible that HMOs more effectively promote use of these services among this population. Alternatively, given the relatively small observed effect sizes, it is possible that these represent chance findings. Replication of these findings using other data sets is needed. Further research is also needed to assess the impact of improved preventive care on disparities in clinically relevant outcomes among persons with low educational levels enrolled in HMOs.
In summary, our results should help allay concerns that HMOs might have an adverse impact on receipt of preventive care by less educated persons. Instead, the results suggest, in some instances, a modest salutary effect of HMOs. Further progress in addressing disparities in managed care will likely require performance assessment and quality improvement based on educational attainment.31
| ACKNOWLEDGMENTS |
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| FOOTNOTES |
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Received for publication October 28, 2002. Accepted for publication November 4, 2002.
| REFERENCES |
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