| Literature DB >> 22809064 |
Christie M Bartels, Jessica M Saucier, Carolyn T Thorpe, Amy J H Kind, Nancy Pandhi, Karen E Hansen, Maureen A Smith.
Abstract
INTRODUCTION: Diabetes mellitus is a key predictor of mortality in rheumatoid arthritis (RA) patients. Both RA and diabetes increase the risk of cardiovascular disease (CVD), yet understanding of how comorbid RA impacts the receipt of guideline-based diabetes care is limited. The purpose of this study was to examine how the presence of RA affected hemoglobin A1C (A1c) and lipid measurement in older adults with diabetes.Entities:
Mesh:
Year: 2012 PMID: 22809064 PMCID: PMC3580560 DOI: 10.1186/ar3915
Source DB: PubMed Journal: Arthritis Res Ther ISSN: 1478-6354 Impact factor: 5.156
Figure 1Cohort selection flow diagram for Medicare diabetes patients with and without comorbid RA.
Characteristics of Medicare diabetes patients with and without RA (N = 256,331)
| Characteristic | DM + RA | DM no RA (n = 250,759) | ||
|---|---|---|---|---|
| Age | 65 to 74 years | 3,056 (54.9) | 136,288 (54.4) | 0.47 |
| 75 to 84 years | 2,124 (38.1) | 95,540 (38.1) | 1 | |
| 85+ years | 392 (7.0) | 18,931 (7.6) | 0.16 | |
| Female | 4,164 (74.7) | 151,846 (60.6) | <0.01 | |
| Race/ethnicity | White | 4,318 (77.5) | 207,565 (82.8) | <0.01 |
| Black | 716 (12.9) | 26,495 (10.6) | <0.01 | |
| Other | 538 (9.7) | 16,699 (6.7) | <0.01 | |
| Medicaid | 1,480 (26.6) | 46,944 (18.7) | <0.01 | |
| RUCA category | Urban | 3,936 (71.8) | 164,742 (66.4) | <0.01 |
| Suburban | 407 (7.4) | 23,007 (9.3) | <0.01 | |
| Large town | 554 (10.1) | 31,229 (12.6) | <0.01 | |
| Small town | 586 (10.7) | 29,033 (11.7) | <0.01 | |
| Myocardial infarction | 266 (4.8) | 11,146 (4.4) | 0.24 | |
| Ischemic heart disease | 3,237 (58.0) | 126,690 (50.5) | <0.01 | |
| Congestive heart failure | 2,063 (37.0) | 73,057 (29.1) | <0.01 | |
| Stroke/Transient ischemic attack | 793 (14.2) | 31,971 (12.8) | <0.01 | |
| Hyperlipidemia | 4,151 (74.5) | 190,713 (76.1) | <0.01 | |
| Peripheral vascular disease | 2,410 (43.3) | 82,440 (32.9) | <0.01 | |
| Chronic kidney disease | 952 (17.1) | 35,984 (14.4) | <0.01 | |
| Lower extremity ulcers | 703 (12.6) | 17,815 (7.1) | <0.01 | |
| Amputation | 50 (0.9) | 1,587 (0.6) | <0.05 | |
| Diabetic eye disease | 765 (13.7) | 40,417 (16.1) | <0.01 | |
| Orthopedic surgery, n (%) | 1,452 (26.1) | 32,121 (12.8) | <0.01 | |
| Gait device, n (%) | 492 (8.8) | 12,768 (5.1) | <0.01 | |
| HCC score, mean (SD) | 1.55 (1.04) | 0.82 (0.80) | <0.01 | |
| Hospitalization 2004 to 2006, n (%) | 3,379 (60.6) | 125,168 (49.9) | <0.01 | |
| Total unique providers, three-year mean (SD) | 8.8 (5.7) | 6.3 (4.0) | <0.01 | |
| Total outpatient visits, annual mean (SD) | 14.7 (9.3) | 9.6 (6.7) | <0.01 | |
| PCP visits, annual mean (SD) | 7.0 (5.9) | 5.3 (4.0) | <0.01 | |
| Rheumatology visits, annual mean (SD) | 2.0 (3.1) | 0.1 (0.5) | <0.01 | |
| Other specialty visits, annual mean (SD) | 5.6 (5.8) | 4.1 (4.7) | <0.01 | |
DM, Diabetes mellitus; HCC, Hierarchical Condition Categories; PCP, Primary care provider; RA, Rheumatoid arthritis; RUCA, Rural Urban Commuting Area; SD, Standard deviation
Adjusted predicted probabilities and risk ratios for relationship between RA and diabetes testing (N = 256,331)*
| Unadjusted testing | Adjusted predicted probability | 95% CI | Odds ratio | 95% CI | |
|---|---|---|---|---|---|
| DM no RA | 56.9 | 57.1 | 56.9 to 57.3 | Referent | |
| DM + RA | 51.8 | 53.2 | 51.8 to 54.5 | 0.84 | 0.80 to 0.89 |
| DM no RA | 76.7 | 76.7 | 76.5 to 76.8 | Referent | |
| DM + RA | 75.5 | 77.8 | 76.8 to 78.8 | 1.08 | 1.01 to 1.16 |
*Models also adjusted for age, gender, race/ethnicity, Medicaid buy-in, RUCA code, HCC quartile, hospitalization in a three-year period, specific co-morbidities including diabetes complications, hyperlipidemia, chronic kidney disease, CVD, orthopedic surgeries, gait device, PCP visits and total providers.
Figure 2Multivariate adjusted risk ratios for diabetes testing by additional disease covariates (N=256,331). Note that the full model also included age, gender, race/ethnicity, Medicaid buy-in, gait device use, orthopedic surgery status, HCC quartiles, hyperlipidemia, hospitalization status, PCP vists, provider number quartile, and RUCA rurality codes.