Racial disparities are widespread in healthcare. Disparities can have a strong influence on diabetes care. This manuscript explores the source of such disparities.
Background:
Over the past 2 decades, numerous studies have demonstrated the existence of racial disparities in patient care in the United States. Specifically, African Americans with diabetes are less likely to have recommended process of care measures performed and outcome benchmarks for quality of care.
Objectives:
To evaluate the delivery of diabetes care (processes and outcomes) associated with racial categories using a national web-based registry—the American Osteopathic Association Clinical Assessment Program (AOA-CAP).
Study Design:
A retrospective analysis of data retrieved from the AOA-CAP database on outcomes and process measures for diabetes.
Methods:
A total of 10,699 Caucasian and African American patients who received diabetes care had data entered into the AOA-CAP registry between July 1, 2005, and October 30, 2010. African Americans represented 3123 patients (29%), Caucasians 7576 (71%). Demographic, process of care, and outcomes comparisons between ethnicities were carried out using χ2 and t tests. Composite measures of process and outcomes of diabetes care were created to investigate the effect of race on care.
Results:
The process of care composite measure was significantly different among African American patients (P = .02) who were more likely to receive all indicated care than Caucasian patients (33.9% vs 31.6%). Evaluation of the composite outcome measure, which quantifies the percentage of patients achieving control of all 3 intermediate outcomes, was (P <.001) lower in African Americans than in Caucasians (8.1% vs 12.3%).
Conclusions:
African American patients with diabetes were as likely or more likely to have recommended process of care measures performed. In spite of this, intermediate diabetes outcomes were still poorer in the same African American population.
(Am J Manag Care. 2012;18(8):407-413)
Over the past 2 decades, numerous studies have clearly demonstrated that both racial and ethnic disparities exist in healthcare delivery and outcomes in the United States.1-3 In 2002, the Institute of Medicine defined disparities as “racial or ethnic differences in the quality of healthcare that are not caused by accessrelated factors or clinical needs, preferences, and appropriateness of intervention.”1 The report also highlighted the uncertainty in understanding the root causes of this disparity. As part of “Healthy People 2010,” the Department of Health and Human Services called for an elimination of disparities in healthcare.2 In order to meet this demand we must better understand the basis of the problem.
Previous data show that African Americans with diabetes are less likely to have recommended process of care measures such as glycated hemoglobin (A1C) and lipid measurements performed.3,4 There is also evidence to suggest that African Americans with diabetes in particular have disparate results on outcome measures such as blood glucose control, blood pressure control, A1C values, cholesterol values, and incidences of retinopathy, chronic kidney disease, and lower-extremity amputations.5-7 While it is clear that disparities in both process and outcomes exist, there continues to be a lack of understanding as to how these disparities are related and if they are consistently related to these opportunity gaps described above.8 This connection is critical to help guide parity in healthcare outcomes for all patients.
Physicians’ understanding of the significance and magnitude of the effects of racial disparities on healthcare appear to be lower than one might expect given the previously cited publications. In a study of cardiologists, for example, only one-third felt that racial health disparities existed.9 In the same study, only 1 in 8 felt that disparities existed within their own practice. In a review of cardiothoracic surgeons, while some surgeons acknowledged that disparities existed, most attributed these disparities to patient characteristics.10 These examples are not unique to 1 specialty or even to the care of chronic diseases in general. Rather, they are endemic to the US healthcare system.
Change in healthcare requires a multidisciplinary effort that includes significant physician, patient, and system changes. Physician-led, multidisciplinary teams need accurate, timely data to drive change.11 The evidence is variable that quality improvement practices can lessen disparities in diabetes care.12 One method is a systematic data collection and review with patient registries. Patient registries can provide a useful tool to aid in data collection and analysis.13 In order to understand the effect of disparities on processes and outcomes of care and maximize the benefit of these registries, it is imperative that race be included as a variable.14 We are using registries to understand quality opportunities and to judge performance at the healthcare provider level. Risk adjustment is important to isolate the effect of interventions or the contribution by the provider.
Using diabetes as a sample population, the authors explored a national database from osteopathic residency programs— the American Osteopathic Association Clinical Assessment Program (AOA-CAP). The authors evaluated the delivery of diabetes care to determine if there were differences in the process and outcomes of care associated with 2 racial categories.
METHODS
Table 1
This study entailed retrospective analysis of national registry data collected from osteopathic family medicine and internal medicine residency programs. The AOA-CAP is a web-based registry providing a standard method of sampling patients and collecting information from medical records on key processes and outcomes of diabetes care. The diabetes module has been operational since 2003. Data are collected for the purposes of quality improvement and satisfaction of core competencies of systems-based practice and practice-based learning within osteopathic graduate medical education. The process and outcomes measures for the diabetes care database were developed from guidelines for diabetes care promulgated by the American Diabetes Association and the American Association of Clinical Endocrinologists.15,16 Measure development is overseen by the AOA-CAP Steering Committee with representation from internal medicine and family medicine program directors and leadership from the AOA. Clinical indicator definitions and constructs are “harmonized” with national organizations, including the National Committee on Quality Assurance, the American Medical Association Physician Consortium for Performance Improvement, and the National Quality Forum17-19 lists the numerator and denominator of each of the process of care measures and the intermediate outcome measures used in this analysis. Materials for AOA-CAP include documents standardizing patient selection, sampling, and data collection.
Residents imported the data on their own patients as part of a separate educational activity. There were no resident incentives or penalties based on how they performed on the data set for their patients. Information was abstracted from patient medical records using the most recent visit as a starting point and review of care prior to the most recent visit during a specified time period for each measure. Case selection for diabetes mellitus was based on any International Classification of Diseases, Ninth Revision, Clinical Modification diagnosis of diabetes. Patients included in the database had to be older than 18 years and have had diabetes for at least 1 year, as well as have had at least 2 visits to the clinic. Patients treated by diet and lifestyle alone were excluded, as they were often monitored less closely. A sample size of 40 patients per residency program was recommended in order to provide a meaningful sample. However, cases from all programs were used regardless of the number of cases contributed by the program. Analysis excluded data from non-Caucasian and non— African American patients. Information regarding patient demographics and treatment were collected from each medical record. Data elements were entered in a Health Insurance Portability and Accountability Act–compliant manner into a web-based data collection form along with program identification.
The population included for this study included all diabetic cases entered into the AOA-CAP registry between July 1, 2005, and October 30, 2010, with race designations of Caucasian or African American (as other race designations are minimally represented in the database). Composite process and outcome measures were based on the percentage of patients receiving all indicated care or achieving goals on all intermediate outcomes. The composites were developed to evaluate the summary performance across the 2 categories of race. Demographic, process of care, and outcome comparisons between races were carried out using χ2 and t tests, as appropriate. To investigate the potential bias introduced by differing demographic factors between the 2 races, multivariable analysis was used to evaluate the association between process and outcome composite and race. A hierarchical model using the type of residency program (family practice or internal medicine) as a class variable evaluated the effect of provider type on the findings. All analysis was completed using SAS Version 9.1 software (SAS Institute, Cary, North Carolina). This study was approved by the Geisinger Health System Institutional Review Board.
RESULTS
Table 2
A total of 10,699 patients with diabetes fit the criteria for this study. Data were abstracted across 195 osteopathic family medicine and internal medicine programs. African Americans represented 3123 patients (29%) and Caucasians 7576 (71%). The demographics of the patients are displayed in . There were significant baseline differences between the 2 ethnicities with regard to age: African American patients were on average 1.3 years younger (P <.001). The percentage of men was greater in the Caucasian population (45.2% vs 41.9%). In addition, African American patients were significantly more likely to be on insulin (P = .003). African American patients were significantly more likely to have Medicaid as the primary insurance (25.3% vs 19.4%; P <.001) and significantly less likely to have commercial insurance (21.8% vs 25.2% P <.001) or Medicare (32.1% vs 26.1%; P = .05) compared with Caucasians.
Table 3
Achievement of specific process or outcomes goals across ethnicity is displayed in . Higher rates of foot exam (P = .02), recommendation of ophthalmologic exam (P <.001), and screening for microalbuminuria (P >.001) were seen among the African American patients. The process composite measure, representing the percentage of patients with all indicated processes of care, was also significantly higher among African American patients (P = .02). However, intermediate diabetes outcomes were significantly lower in African Americans, including meeting the glucose (P <.001), blood pressure (P <.001), and LDL-C goals (P <.001). The composite outcome measure was also (P <.001) lower among African American patients.
Table 4
A multivariable model was used to evaluate the effect of demographic differences on the process and outcome composite scores. The results, displayed in , suggest that after adjusting for the demographic differences, African Americans were still significantly more likely to have indicated processes of care. Other factors that predicted meeting the process of care composite measure included male gender and patients requiring insulin. Self-pay status predicted an odds ratio (OR) of 0.56 for meeting the process of care measure. African American patients were significantly less likely to achieve treatment goals as measured by the intermediate outcomes (OR 0.67). Other factors predicting failure to meet the outcome composite measure included patients who required insulin (OR 0.44). The magnitude of difference between process composite scores demonstrated an OR of 1.25 (CI 1.06-1.47) higher than the percentage found on bivariate analysis. The difference between outcome composite scores was an OR of 0.67 (CI 0.51-0.89), similar to the magnitude found in bivariate analysis. Results of hierarchical modeling using provider type did not affect the associations found in logistic regression between race andother covariates.
DISCUSSION
Using a large national patient registry of patients from osteopathic family medicine and internal medicine residencies, we found that African American patients with diabetes were more likely to have recommended process of care measures performed. This was driven primarily by higher levels of foot exams, recommendations of ophthalmologic exam, and screenings for microalbuminuria among African American patients. In spite of this, intermediate diabetes outcomes were still poorer in the same African American population. The disparity in outcomes was consistent across all 3 outcome components, with African American patients achieving lower levels of control of glucose, blood pressure, and lipids. Hence, these patients may be seeing action without benefit.
Previous studies have shown that African Americans with diabetes are less likely to have process measures performed and to achieve favorable outcomes.3-7 Our findings differ, in that processes of care were performed more often for African American patients. Yet an outcome gap still exists. Nationally recognized process of care measures for diabetes15,16 are chosen based on their correlation with outcomes. Previous research has been mixed when directly comparing the processes and outcomes in ethnic populations. For example, some studies showed little or no difference in testing for A1C.20 At the same time much evidence suggests
that disparities in glycemic control outcomes exist.21 This relationship needs further study to elicit the unknown factors affecting this relationship. Further, this study did not have access to patient level end organ microvascular complications, such as legal blindness, neuropathy-associated neuropathic ulcers or amputations, and nephropathy leading to dialysis. These too need further study.
The primary focus of the AOA-CAP database program is quality improvement. Residency training programs are encouraged to use the comparison data to promote positive practice changes. It is possible that the resident group has become familiar with the database and has made changes to improve processes of care. One would expect that this would affect all ethnicities equally. However, if a deficit was present in a previous evaluation, it may have prompted the residents to pay special attention to an ethnicity when providing care. This was demonstrated in 1 study of quality improvement programs that targeted racial disparities in people with diabetes. In this study process of care measurement differences were not as predicted while disparities in intermediate outcomes persisted.12 A large meta-analysis of performance improvement studies targeted on glycemic control as an outcome showed only small to modest improvements.22 This may point to a real disconnect between processes and outcomes among African Americans with diabetes. Further, it may take longer to achieve improvements in outcome measures, as outcomes require time of treatment to take effect, while process of care changes can be more immediate. This data set has no information on the overall health of the patients enrolled in the study, and it is possible that there was a difference in severity of illness among ethnic groups prior to treatment.
The starting point for any effort to improve quality of care in ethnic populations involves a systematic evaluation of gaps across racial categories. While physician factors are clearly one target for intervention, the lack of correlation between physician processes and patient outcomes across racial categories complicates this approach. This leads one to consider other factors that may play a role in producing poor outcomes in ethnic populations.
While some point to socioeconomic and access differences as the root cause, access to care can mean many different things. While access to healthcare is likely to impact process of care measures, ability to pay for medications can also have a significant impact. Compared with non-Hispanic whites, African Americans are twice as likely to be uninsured.23,24 As noted in our population, African Americans were less likely to have Medicare or commercial insurance and more likely to have Medicaid. It is also true that most studies have found that disparities exist even with adjustments for socioeconomic1,25- 29 and access issues. One theory is that lack of insurance or underinsurance may impact medication access to a higher degree than physician access. This could explain why outcomes are still more disparate than processes of care.
The lack of evidence of a causal relationship between socioeconomic status, access, adherence, and ethnic disparities suggests that other factors such as genetics and unmeasured environmental factors must be considered. One study suggested that rates of end-stage renal disease among ethnic minorities were disparate despite similar medical care coverage.30 In this study, other complications were similar or lower relative to the Caucasian population. This suggests a possible genetic or environmental origin. This may be analogous to the different responses of Caucasians and African Americans to angiotensin- converting enzyme inhibitors and hydralazine and nitrates in heart failure.31 Another recent study suggested that African Americans have higher A1C across the full spectrum of glucose values.32 This further questions the use of A1C levels to determine care disparities.
As the search for causal factors of racial disparities continues in medical treatment and outcomes, it is critical to increase awareness of the existence of these disparities. As noted previously, in a study of cardiologists published in 2005 it was found that one-third acknowledged that disparities occurred, while only 5% reported these differences in their own panel.9 A more recent survey of primary care physicians found that a large majority (88%) of respondents agreed that the problem existed while less than half felt that they were part of the problem.33 Race is an important yet poorly subscribed variable in patient care registries.14 One of the explicit goals for the use of the AOA-CAP registry in residency programs is to teach the core competencies of system-based practice and practice-based learning. It is crucial that cultural competence be included in this equation.
There are several limitations with the use of registry data. The use of a retrospective, self-reported registry could introduce reporting bias into the data set. The data for the AOACAP registry is entered by family medicine and internal medicine residents throughout the United States and is based on past patient experience. Data entry is not independently verified. The authors feel there is no reason to believe bias is introduced because the accreditation requirement of using AOA-CAP is based on data contribution, not levels of performance. In addition, the findings are consistent with previously reported norms such as the National Committee on Quality Assurance.16 There was a greater proportion of African Americans who were being treated with insulin, which may signal a difference in care that may adversely affect outcomes.
The sample for this study was large and geographically diverse. The logistics of the AOA-CAP registry make the data blinded at the level of the patient to both the individual entering the data and the researchers who collect and analyze the data. The power of the use of registries in quality and population health improvement has been previously noted.13 The authors feel that this is a reliable model for other studies that evaluate performance in clinical care. Despite recent attention, the problem of racial disparities continues to be widespread and to affect all aspects of care.34
CONCLUSIONS
Using a large national patient registry the authors found that African American patients with diabetes were more likely to have recommended process of care measures performed. In spite of this, intermediate diabetes outcomes were poorer in the same African American population compared with the Caucasian population. This action without benefit still leaves this population at increased risk of complications, early morbidity and mortality, and excess healthcare costs. Further research is necessary to better understand this discrepancy and rectify its effects.Acknowledgment
This study was funded by a grant from the Osteopathic Heritage Foundation, Columbus, OH. The authors thank Jennifer Arnette, MS, who contributed to statistical analysis of this data set. Eternal gratitude to Dwain Harper, DO, who provided data abstraction and analytic support for authors working with the AOA-CAP.
Author Affiliations: From Geisinger Health System (JBB), Danville, PA; Ohio University College of Osteopathic Medicine (JHS), Athens, OH; Applied Health Services (RS), Worthington, OH; OhioHealth (RS), Columbus, OH; Ohio University Heritage College of Osteopathic Medicine (RS), Athens, OH.
Address correspondance to: Jay H. Shubrook, DO, Associate Professor of Family Medicine, Ohio University Heritage College of Osteopathic Medicine, UMA Diabetes Center, 75 Hospital Dr, Athens, OH 45701. E-mail: shubrook@ohio.edu.1. Smedley BD, Stith AY, Nelson AR, eds; Committee on Understanding and Eliminating Racial and Ethnic Disparities in Health Care. Unequal Treatment: Confronting Racial and Ethnic Disparities in Health Care. Washington, DC: National Academies Press; 2003.
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5. Lanting LC, Joung IM, Mackenbach JP, Lamberts SW, Bootsma AH. Ethnic differences in mortality, end-stage complications, and quality of care among diabetic patients: a review. Diabetes Care. 2005;28(9): 2280-2288.
6. United States Renal Data System (USRDS). 2007 Annual Report, Atlas of End Stage Renal Disease in the United States. Bethesda, MD: National Institute of Diabetes and Digestive and Kidney Diseases; 2007.
7. Institute of Medicine. Unequal Treatment: Confronting Racial and Ethnic Disparities in Health Care. Washington, DC: National Academies Press; 2002.
8. Bierman AS, Lurie N, Collins KS, Eisenberg JM. Addressing racial and ethnic barriers to effective health care: the need for better data. Health Aff (Millwood). 2002;21(3):91-102.
9. Lurie N, Fremont A, Jain AK, et al. Racial and ethnic disparities in care: the perspectives of cardiologists. Circulation. 2005;111(10): 1264-1269.
10. Taylor SL, Fremont A, Jain AK, et al. Racial and ethnic disparities in care: the perspectives of cardiovascular surgeons. Ann Thorac Surg. 2006;81(12):531-536.
11. Ransom ER, Joshi MS, Nash DB, Ransom SB. The Healthcare Quality Book. 2nd ed. Chicago, IL: Health Administration Press; 2008: 131-149.
12. Sequist TD, Adams A, Zhang F, Ross-Degnan D, Ayanian JZ. Effect of quality improvement on racial disparities in diabetes care. Arch Intern Med. 2006;166(6):675-681.
13. Gliklich RE, Dreyer NA, eds. Registries for Evaluating Patient Outcomes: A User’s Guide. AHRQ Publication No. 07-EHC001-1. Rockville, MD: Agency for Healthcare Research and Quality; 2007.
14. Hasnain-Wynia R, Baker DW. Obtaining data on patient race, ethnicity, and primary language in health care organizations: current challenges and proposed solutions. Health Serv Res. 2006;41(4, pt 1): 1501-1518.
15. American Diabetes Association: Standards of Care for Diabetes Mellitus Diabetes Care 2011. 34:suppl 1.
16. Rodbard HW, Blonde L, Braithwaite SS, et al. American Association of Clinical Endocrinologists medical guidelines for clinical practice for the management of diabetes mellitus. Endocr Pract. 2007;13(suppl 1): 1-68.
17. National Committee for Quality Assurance. HEDIS 2009 Guidelines. http://www.ncqa.org/tabid/784/Default.aspx. Published October 1, 2008. Accessed January 19, 2009.
18. American Medical Association. Physician Consortium for Performance Improvement Diabetes Guidelines. http://www.ama-assn.org/ama1/pub/upload/mm/pcpi/diabetesset.pdf. Published 2009. Accessed January 19, 2009.
19. National Quality Forum. Performance Measures for the Management of Adult Diabetes Mellitus. http://www.qualityforum.org/Measures_List.aspx. Published 2008. Accessed January 19, 2009.
20. Trivedi AN, Zaslavsky AM, Schneider EC, Ayanian JZ. Trends in the quality of care and racial disparities in Medicare managed care. N Engl J Med. 2005;353(7):692-700.
21. Kirk JK, D’Agostino RB Jr, Bell RA, et al. Disparities in HbA1c levels between African-American and non-Hispanic white adults with diabetes: a meta-analysis. Diabetes Care. 2006;29(9):2130-2136.
22. Shojania KG, Ranji SR, McDonald KM, et al. Effects of quality improvement strategies for type 2 diabetes on glycemic control: a metaregression analysis. JAMA. 2006;296(4):427-440.
23. Hargraves JL, Hadley J. The contribution of insurance coverage and community resources to reducing racial/ethnic disparities in access to care. Health Serv Res. 2003;38(3):809-829.
24. The Morehouse Medical Treatment and Effectiveness Center. Racial and ethnic differences in access to medical care: a synthesis of the literature. Menlo Park, CA: The Henry J. Kaiser Family Foundation; 2000.
25. Sheifer SE, Escarce JJ, Schulman KA. Race and sex differences in the management of coronary artery disease. Am Heart J. 2000;139(5): 848-857.
26. Kressin NR, Petersen LA. Racial differences in the use of invasive cardiovascular procedures: review of the literature and prescription for future research. Ann Intern Med. 2001;135(5):352-366.
27. Washington DL, Harada ND, Villa VM, et al. Racial variations in Department of Veterans Affairs ambulatory care use and unmet health care needs. Mil Med. 2002;167(3):235-241.
28. Washington DL, Villa V, Brown A, Damron-Rodriguez J, Harada N. Racial/ethnic variations in veterans’ ambulatory care use. Am J Public Health. 2005;95(12):2231-2237.
29. Kirby JB, Taliaferro G, Zuvekas SH. Explaining racial and ethnic disparities in health care. Med Care. 2006;44(5 suppl):164-172.
30. Karter AJ, Ferrara A, Liu JY, Moffet HH, Ackerson LM, Selby JV. Ethnic disparities in diabetic complications in an insured population. JAMA. 2002;287(19):2519-2527.
31. Carson P, Ziesche S, Johnson G, Cohn JN. Racial differences in response to therapy for heart failure: analysis of the Vasodilator-Heart Failure Trial Study Group. J Card Fail. 1999;5(3):178-187.
32. Ziemer DC, Kolm P, Weintraub WS, et al. Glucose-independent, black-white differences in hemoglobin A1c levels: a cross-sectional analysis of 2 studies. Ann Intern Med. 2010;152(12):770-777.
33. Sequist TD, Fitzmaurice GM, Marshall R, Shaykevich S, Gelb-Safran D, Ayanian JZ. Physician performance and racial disparities in diabetes mellitus care. Arch Intern Med. 2008;168(11):1145-1151.
34. US Department of Health and Human Services. Agency for Healthcare Research and Quality. Health care quality gaps and disparities persist in every state. Research Activities. 2011;371:1-3.
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