| Literature DB >> 25991397 |
Nazia Rashid1, Gerald D Levy2, Yi-Lin Wu3, Chengyi Zheng3, River Koblick4, T Craig Cheetham3.
Abstract
Gout flares have been challenging to identify in retrospective databases due to gout flares not being well documented by diagnosis codes, making it difficult to conduct accurate database studies. Previous studies have used different algorithms, and in this study, we used a computer-based method to identify gout flares. The objectives of this study were to identify gout flares in gout patients newly initiated on urate-lowering therapy and evaluate factors associated with a patient experiencing gout flares after starting drug treatment. This was a retrospective cohort study identifying gout patients newly initiated on a urate-lowering therapy (ULT) during the study time period of January 1, 2007-December 31, 2010. The index date was the first dispensed ULT prescription during the study time period. Patients had to be ≥18 years of age on index date, have no history of prior ULT prescription during 12 months before index date, and were required to have 12 months of continuous membership with drug benefit during pre-/post-index. Electronic chart notes were reviewed to identify gout flares; these reviews helped create a validated computer-based method to further identify patients with gout flares and were categorized into 0 gout flares, 1-2 gout flares, and ≥3 gout flares during the 12 months post-index period. Multivariable logistic regression was used to examine patient and clinical factors associated with gout flares during the 12-month follow-up period. There were 8905 patients identified as the final cohort and 68 % of these patients had one or more gout flares during the 12-month follow-up: 2797 patients (31 %) had 0 gout flares, 4836 (54 %) had 1-2 gout flares, and 1272 patients (14 %) had ≥3 gout flares. Using a multivariate regression analyses, factors independently associated with 1-2 gout flares and ≥3 gout flares versus no gout flares were similar, however, with slight differences, such as younger patients were more likely to have 1-2 gout flares and patients ≥65 years of age had ≥3 gout flares. Factors such as male gender, not attaining sUA goal, having ≥3 comorbidities, diuretics use, no changes in initial ULT dose, and not adhering to ULT all were associated with gout flares versus no gout flares. Using a new method to identify gout flares, we had the opportunity to compare our findings with the previous studies. Our study findings echo other previous studies where older patients, male, diuretics, having a greater number of comorbidities, and non-adherence are more likely to have more gout flares during the first year of newly initiating ULT. There is an unmet need for patients with gout to be educated and managed more closely, especially during the first year.Entities:
Keywords: Adherence; Gout; Gout flares; Serum uric acid goal; Urate-lowering therapy
Mesh:
Substances:
Year: 2015 PMID: 25991397 PMCID: PMC4611012 DOI: 10.1007/s00296-015-3284-3
Source DB: PubMed Journal: Rheumatol Int ISSN: 0172-8172 Impact factor: 2.631
Fig. 1Sample selection flowchart
Baseline characteristics of study population categorized by gout flares
| Patient and clinical characteristics | Total patients | ||
|---|---|---|---|
| No gout flares | 1–2 gout flares | ≥3 gout flares | |
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| Male | 2253 (81.0 %) | 3801 (79.2 %) | 991 (79.2 %) |
| Age (years) categories, | |||
| <55 | 953 (34.2 %) | 1970 (41.0 %)* | 381 (30.5 %)* |
| 55–64 | 792 (28.4 %) | 1123 (28.5 %)* | 277 (22.2 %)* |
| ≥65 | 1035 (37.2 %) | 1705 (35.5 %) | 592 (47.3 %)* |
| Race | |||
| Caucasian | 1187 (42.7 %) | 1972 (41.1 %) | 501 (40.1 %) |
| African-American | 392 (14.1 %) | 747 (15.6 %) | 229 (18.3 %)* |
| Hispanic | 536 (19.3 %) | 970 (20.2 %) | 268 (21.4 %) |
| Asian/Pacific Islander | 651 (23.4 %) | 1076 (22.4 %) | 240 (19.2 %) |
| Other | 14 (0.5 %) | 33 (0.7 %) | 12 (0.9 %) |
| Laboratory data | |||
| sUA | 2032 (72.6 %) | 3886 (80.4 %)* | 1175 (92.4 %)* |
| sUA (mg/dl) mean, SD | 8.73 ± 1.55 | 8.93 ± 1.68 | 9.26 ± 1.81* |
| eGFR | 2280 (81.5 %) | 3905 (80.7 %) | 1088 (85.5 %) |
| eGFR (ml/min/1.72 m2), mean, SD | 65.01 ± 18.09 | 64.79 ± 18.28* | 60.99 ± 18.96* |
| Comorbidities | |||
| Alcohol use | 87 (3.1 %) | 181 (3.7 %) | 64 (5.0 %)* |
| Diseases of the heartβ | 460 (16.4 %) | 835 (17.3 %) | 308 (24.2 %)* |
| Diabetes mellitus | 676 (24.2 %) | 1016 (21.0 %) | 313 (24.6 %) |
| Dyslipidemia | 1641 (58.7 %) | 2679 (55.4 %) | 716 (56.3 %) |
| Hypertension | 2001 (71.9 %) | 3367 (69.6 %) | 949 (74.6 %) |
| Obesity | 641 (22.9 %) | 1168 (24.2 %) | 302 (23.7 %) |
| Osteoarthritis | 469 (16.9 %) | 902 (18.8 %) | 310 (24.8 %)* |
| Rheumatoid arthritis | 17 (0.6 %) | 32 (0.7 %) | 16 (1.3 %)* |
| Anti-inflammatory medication, | |||
| NSAIDSa | 1510 (54.3 %) | 3199 (66.7 %)* | 839 (67.1 %)* |
| Corticosteroids | 454 (16.2 %) | 1456 (30.1 %)* | 607 (47.7 %)* |
| Colchicine | 924 (33.0 %) | 2515 (52.0 %)* | 816 (64.2 %)* |
| Any of the above | 2069 (74.4 %) | 4377 (91.2 %)* | 1192 (95.4 %)* |
| Concomitant medications | |||
| Antihypertensives | 2091 (74.8 %) | 3469 (71.8 %) | 970 (76.3 %) |
| Diuretics | 1331 (47.6 %) | 2345 (48.5 %) | 701 (55.1 %)* |
| Anti-hyperlipidemics | 1391 (49.8 %) | 2199 (45.5 %) | 590 (46.5 %) |
| Anti-diabetics | 556 (19.9 %) | 807 (16.7 %)* | 245 (19.3 %) |
| Initial ULT prescriber specialty | |||
| Primary care prescriber+ | 2027 (72.9 %) | 4078 (84.9 %)* | 1086 (86.9 %)* |
| Rheumatologist | 509 (18.3 %) | 241 (5.0 %)* | 13 (1.0 %)* |
| Other | 244 (8.8 %) | 524 (10.9 %) | 151 (12.1 %) |
Patients with 1–2 gout flares were compared to no gout flares group, and patients with ≥3 gout flares were compared to no gout flares group
* p value of <0.05 was statistically significant
βDiseases of the cardiovascular or blood vessels: heart failure, ischemic heart disease, deep vein thrombosis, cerebrovascular disease, peripheral vascular disease
+Primary care prescriber consisted of family medicine and internal medicine
a NSAIDS nonsteroidal anti-inflammatory drugs
Patient outcomes during 12 months post-index
| Outcomes | Total patients: | ||
|---|---|---|---|
| No gout flares | 1–2 gout flares | ≥3 gout flares | |
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| Adherence to ULT (PDC %) | |||
| Adherent (PDC ≥ 80 %) | 2042 (73.5 %) | 1861 (38.8 %)* | 352 (28.2 %)* |
| Non-adherent (PDC < 80 %) | 738 (26.5 %) | 2937 (61.2 %)* | 897 (71.8 %)* |
| ULT treatment information, | |||
| Dose increase | 2610 (94.6 %) | 791 (16.5 %)* | 67 (5.3 %)* |
| Dose equal | 153 (5.5 %) | 3927 (81.8 %)* | 1146 (91.7 %)* |
| Dose decrease | 17 (0.6 %) | 80 (1.7 %)* | 37 (3.0 %)* |
| Laboratory data at end of follow-up | |||
| sUA, | 1559 (56.0 %) | 3150 (65.1 %)* | 1117 (88.0 %)* |
| sUA levels, mean, SD | 5.82 ± 0.73 | 7.57 ± 1.98* | 8.64 ± 1.56* |
| At goal <6.0 mg/dl) (%) | 91.4 % | 45.8 %* | 21.2 %* |
| Anti-inflammatory medication during 12 months post-index, | |||
| NSAIDS | 1745 (62.8 %) | 3611 (75.2 %)* | 954 (76.3 %)* |
| Corticosteroids | 652 (23.38 %) | 2006 (41.5 %)* | 875 (68.9 %)* |
| Colchicine | 1065 (38.08 %) | 2994 (61.9 %)* | 1036 (81.4 %)* |
| Any of the above | 2288 (82.3) | 4658 (97.0 %)* | 1242 (99.4 %)* |
| ULT initial and last doses, mean, SD | |||
| Initial allopurinol dose, mean, SD | 202.94 ± 100.54 | 202.76 ± 120.50 | 194.18 ± 100.35 |
| Ending allopurinol dose, mean, SD | 230.41 ± 109.16 | 218.80 ± 99.85* | 206.53 ± 98.33* |
| Initial Febuxostat dose, mean, SD | 60.00 ± 28.28 | 50.00 ± 18.52* | 35.79 ± 8.38* |
| Ending Febuxostat dose, mean, SD | 53.82 ± 22.73 | 52.00 ± 19.32 | 45.57 ± 21.33* |
| Initial probenecid dose, mean, SD | 690.00 ± 362.86 | 681.82 ± 429.18 | 590.52 ± 218.14* |
| Ending probenecid dose, mean, SD | 926.88 ± 403.80 | 789.72 ± 364.12* | 752.00 ± 268.74* |
Patients with 1–2 gout flares were compared to no gout flares group, and patients with ≥gout flares were compared to no gout flares group
* p value of 0.05 was statistically significant
Multivariate logistic regression of factors associated with patients with gout flares versus no gout flares during 12-month follow-up in gout patients
| Study covariates | Patients with 1–2 flares versus patients with no gout flaresα | Patients with ≥3 flares versus patients with no gout flaresα |
|---|---|---|
| OR (95 % CI) | OR (95 % CI) | |
| Male patient (vs. female) | 1.53 (1.22, 1.66) | 1.95 (1.88, 2.12)* |
| Patient age categories | ||
| <65 years (reference group) | 1.00 | 1.00 |
| ≥65 years | 0.94 (0.82, 1.16) |
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| Race | ||
| Caucasian (reference group) | 1.00 | 1.00 |
| African-American | 1.02 (0.88, 1.18) | 1.20 (0.98, 1.46) |
| Hispanic | 0.96 (0.84, 1.09) | 1.06 (0.87, 1.29) |
| Asian/Pacific Islander | 1.03 (0.91, 1.17) | 1.14 (0.95, 1.37) |
| sUA data | ||
| sUA level above 6.0 mg/dl |
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| Comorbidity | ||
| 1 comorbidity |
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| 2 comorbidities | 1.14 (0.96,1.24) |
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| 3 or more comorbidities |
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| Other covariates | ||
| Anti-inflammatory |
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| Diuretics |
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| Rheumatologist as initial prescriber |
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OR odds ratio, CI Confidence interval
* Highlighted in bold means they are statistically significant
αAdjusted for sex, age, race, sUA levels, comorbidities, anti-inflammatory medications, diuretic use, and rheumatologist as a prescriber