Literature DB >> 29075106

Treatment adherence and disease burden of individuals with rheumatic diseases admitted as outpatients to a large rheumatology center in Shanghai, China.

Le Zhang1, Guo Hong Lu1, Shuang Ye2, Bin Wu1, Yi Shen3, Ting Li2.   

Abstract

PURPOSE: The purpose of this study was to determine treatment adherence and disease burden, analyze detailed medication problems experienced by patients, and identify factors associated with adherence in patients with rheumatic diseases in China. PATIENTS AND METHODS: Patients with confirmed diagnoses of ankylosing spondylitis (AS), rheumatoid arthritis (RA), and systemic lupus erythematosus (SLE) were recruited, regardless of demographics, disease severity, and treatment characteristics. Adherence was assessed using the Compliance Questionnaire for Rheumatology and interview-based self-reports. A backwards-stepwise multivariate regression analysis was used to identify factors associated with adherence.
RESULTS: We collected data on 252 patients who had a rheumatic disease and visited our outpatient clinic in January or February of 2017. There were 121 patients with SLE, 70 with RA, and 61 with AS. The overall adherence rate was 41.7%, with 48.7% for SLE patients, 38.6% for RA patients, and 31.1% for AS patients. The overall EuroQol (EQ)-index was 0.761; AS patients had the best EQ-index (0.792), followed by those with SLE (0.780) and RA (0.700). SLE patients also had greater annual direct costs (US$5,103.58) than RA or AS patients.
CONCLUSION: Overall, 41.7% of our rheumatic disease patients were adherent to treatment, lower than in many other parts of the world. This indicates that it is important to identify methods that improve adherence in this population. It is particularly important to improve the health status and reduce the disease burden of patients with SLE, the most common of the three rheumatic diseases we analyzed. Our results suggest that reminder tools may improve adherence. Further prospective research is needed to confirm whether reminder tools and other measures can improve patient compliance.

Entities:  

Keywords:  EQ-5D; SLE; adherence; disease burden; rheumatic disease

Year:  2017        PMID: 29075106      PMCID: PMC5609799          DOI: 10.2147/PPA.S144624

Source DB:  PubMed          Journal:  Patient Prefer Adherence        ISSN: 1177-889X            Impact factor:   2.711


Introduction

Rheumatoid arthritis (RA), ankylosing spondylitis (AS), and systemic lupus erythematosus (SLE) are major autoimmune and rheumatic diseases. Patients with any of these chronic conditions need long-term medication(s) to control disease progression. Adherence, defined as the extent to which a patient correctly follows medical advice, also plays an important role. One of the main causes of persistent disease activity may be the lack of adherence to treatment, because “drugs don’t work in patients who don’t take them”.1 Previous studies of SLE patients, which had different objectives and methodologies, reported that adherence ranged from 3% to 76%,2–5 but there are no such data for mainland China. Moreover, chronic rheumatic conditions, such as RA, AS, and SLE, result in substantial burdens for patients and their families.6–10 The direct costs of a rheumatic disease can reach US$71,334.00 per patient per year in the Unites States, and costs are greater in those who develop organ dysfunction (such as lupus nephritis), disease flares, high disease activity, and disease of long duration.11 Again, there are limited data on these costs for mainland China. Previous studies estimated the prevalence of SLE in mainland China was 0.30% to 0.376%, the prevalence of RA in mainland China was 0.2% to 0.4%, and the prevalence of AS in Guangdong Province of mainland China was 0.38%.12–14 China’s population is 1.375 billion, so there may be more than 10 million patients with one of these rheumatic diseases in China. Therefore, it is necessary to identify potential problems with treatment adherence in this population, and to determine the best approaches to resolve these problems. The aims of this study of patients with rheumatic diseases in China were to determine the burden of rheumatic diseases and patient adherence to treatment; identify the detailed medication problems experienced by these patients; and analyze factors associated with adherence using a multi-factor regression analysis.

Material and methods

Study design

This study was conducted at the Outpatient Clinic of Renji Hospital, Shanghai, China. The research protocol was approved by Shanghai Jiaotong University of Medicine, Renji Hospital Ethics Committee (approval no [2016] 216K). This center is one of the largest rheumatology centers in China, and the patients are from all over the country. All participating patients provided written informed consent and completed questionnaires which assessed adherence to treatment, health status, and disease burden.

Recruitment and data collection

Outpatients using rheumatic drugs were considered for inclusion if they fulfilled the American College of Rheumatology 1987 or 2012 criteria for SLE, RA, or AS and visited the Outpatient Clinic of the South Campus of Renji Hospital in January or February of 2017. Patients were excluded if they were illiterate, had severe mental disorders, or had serious physical constraints. All others were included, regardless of demographics, disease characteristics, or treatment characteristics. Data were collected on demographic characteristics (age, sex, marital status, education level, employment, physical strength, monthly per capita income, and type of medical insurance), disease characteristics (diagnosis, duration, comorbidities, direct costs, indirect costs, and health status based on EuroQol five dimensions [EQ-5D] score), and treatment characteristics (types of pills prescribed daily, use of a glucocorticoid [GC], use of disease modifying antirheumatic drugs [DMARDs], use of non-steroidal anti-inflammatory drugs [NSAIDs], use of a biological DMARD, dosing frequency, side effects, Compliance Questionnaire for Rheumatology [CQR] score, use of tools such as medication reminders, and use of alternative medicines [traditional Chinese medicines, physical therapy, herbs, etc.]).

Self-reported adherence

Adherence was assessed using two self-reported measures: the CQR and an interview-based self-report. The CQR consists of 19 statements concerning medication intake, in which the patient indicates the extent of agreement to each statement using a 4-point Likert scale.15 Nonadherence was defined by a CQR score below 80%.16 CQR only measures adherence indirectly, so an interview-based self-report was also given. During this 10 min interview, there were two direct questions about each prescribed medication: “Do you sometimes forget a dose?” and “Do you have any confusion about the medications you are taking?”. More than one missed dose per month was defined as nonadherence. To analyze specific medication problems, we conducted further interviews, and then summarized these problems into four categories: error in directions; missing dose; unknown precautions; and adjust dosage or stop taking the medicine without doctor’s directions. If the prescription for a drug, such as an NSAID, was “as needed” (p.r.n.), then the patient could not be classified as nonadherent for this drug.

Measurement of quality of life

The general health status of patients was evaluated using the Chinese version of the general population-based three-level EQ-5D-3L questionnaire.17,18 Each EQ-5D-3L health state was scored as 1 (no problems), 2 (some/moderate problems), or 3 (extreme problems) to indicate functional levels in five dimensions (mobility, self-care, usual activities, pain/discomfort, and anxiety/depression). The “time-trade-off”, a part of the EQ-5D-index, was also used to assess quality of life.

Disease burden

The 1-year data of participants who completed the protocol were analyzed, and the average total annual cost per patient was calculated. The direct costs consisted of outpatient expenses (laboratory tests, drugs, registered fees, etc., with data collected by invoice); hospitalization expenses (hospital admission fees, laboratory tests, drugs, devices, aids, etc., with data collected by invoice); and non-medical costs (fees for transportation to clinics, community services such as home care, and purchase of adaptive devices, with data collected from self-reports). The indirect costs, with data collected from self-reports, consisted of costs due to time incurred by patients and care givers and costs due to a patient’s inability to work.

Statistical analysis

Descriptive data are presented as means (±SD) or numbers (percentages), depending on the distribution of the measured variable. The effects of demographic characteristics, disease characteristics, and treatment characteristics on adherence (determined according to the interview-based self-report) were first assessed using a univariate analysis of group differences, with no correction for multiple testing (α =0.05). We used a chi-square test to evaluate the significance of differences in proportions, and an independent sample t-test to evaluate the significance of differences in means. Then, a backwards-stepwise multivariate analysis was performed to account for confounding. All variables that had P-values below 0.4 in the univariate analysis were entered into the multivariate model, in which adherence (assessed by the interview-based self-report) was the dependent variable. Data were analyzed using SPSS (version 21.0). All costs were converted into US$ from CNY at the exchange rate of 6.6423, the average in 2016 according to the National Bureau of Statistics.

Results

Demographic and clinical characteristics of the study population

Table 1 shows the demographic and clinical characteristics of the study population (n=252). A total of 185 patients (73.4%) were female and the overall mean (±SD) age was 40.1 (±15.4) years. A total of 76.6% of the patients were married, 61.1% were employed, and 56.0% had a secondary education. A total of 201 (79.8%) had jobs with little physical activity (office jobs, etc.), and about half of the patients had monthly incomes of 1,000–5,999 Yuan. The per capita disposable income in China was 21,966.19 Yuan per year (1,830.52 Yuan per month) in 2015, according to the National Bureau of Statistics.
Table 1

Demographic and clinical characteristics of outpatients with rheumatic diseases (n=252)

Sociodemographic characteristicsn (%)
Age (years), mean (SD)40.13 (15.39)
Sex, female185 (73.41)
Marital status
 Married193 (76.58)
 Other marital status59 (23.41)
Education level
 Primary (0–6 years)25 (9.92)
 Secondary (7–12 years)141 (55.95)
 Higher (>12 years)86 (34.12)
Employment
 Employed154 (61.11)
 Unemployed98 (38.89)
Work activity
 Low level of activity (office etc)201 (79.76)
 Light or moderate activity (assembly line work, installers etc)45 (17.85)
 Heavy-activity (steelmaking, agriculture etc)6 (2.38)
Monthly per capita income
 <1,000 CNY13 (5.16)
 1,000–5,999 CNY129 (51.19)
 6,000–9,999 CNY64 (25.40)
 >10,000 CNY46 (18.25)
Type of medical insurance
 Rural cooperative medical care20 (7.93)
 Urban medical insurance180 (71.43)
 Self-funded52 (20.64)

Disease characteristicsn (%)

Disease
 SLE121 (48.02)
 RA70 (27.78)
 AS61 (24.21)
Disease duration
 <1 year52 (20.63)
 1–5 years102 (40.47)
 ≥5 years98 (38.89)
Comorbidities
 0115 (45.63)
 1–2113 (44.84)
 ≥324 (9.52)
EQ-5D index, mean (SD)0.76 (0.17)

Treatment characteristicsn (%)

Types of pills prescribed daily, mean (SD)4.16 (2.21)
Use of GC159 (63.10)
Number of DMARDs, mean (SD)1.38 (0.72)
Use of NSAIDs66 (26.19)
Use of biological DMARDs35 (13.89)
Daily dosing frequency
 < Once daily14 (5.56)
 Once daily27 (10.71)
 Twice daily143 (56.74)
 Thrice daily63 (25.00)
 > Thrice daily5 (1.98)
Side effects
 066 (26.19)
 1–2164 (65.08)
 ≥322 (8.73)
CQR19, mean (SD)75.84 (11.59)
Use of tools such as medication reminders140 (55.56)
Use of alternative medicines98 (38.89)

Abbreviations: AS, ankylosing spondylitis; CQR, Compliance Questionnaire for Rheumatology; DMARDs, disease modifying antirheumatic drugs; EQ-5D, EuroQol five dimensions; GC, glucocorticoid; NSAIDs, non-steroidal anti-inflammatory drugs; RA, rheumatoid arthritis; SLE, systemic lupus erythematosus.

Analysis of disease characteristics shows that SLE (48.0%) was the most common of the three rheumatic diseases (Table 1). A total of 102 patients (40.5%) had disease durations of 1 to 5 years. Most patients had no comorbidities (45.6%) or 1–2 comorbidities (44.8%). The overall mean EQ-5D index was 0.76 (±0.17). Analysis of treatments indicated that these patients took an average of 4.16 (±2.21) types of drugs daily. The most commonly used drugs were GCs (63.1%), NSAIDs (26.2%), and biological DMARDs (13.9%). These patients also received an average of 1.38 (±0.72) different kinds of traditional DMARDs, and 56.7% of patients took medicines twice daily. The mean CQR score was 75.8 (±11.6), 55.56% of subjects used medication reminders, and 38.9% used an alternative treatment (traditional Chinese medicine, physical therapy, herbs, etc.). Among all 252 patients, the annual direct cost per patient was 26,942 (±55,455) CNY (Table 2). These direct costs consisted of outpatient costs of 9,333 (±16,367) CNY, hospitalization costs of 14,711 (±52,205) CNY, and non-medical costs (such as transportation to clinics and hotel expenses) of 2,898 (±8,351) CNY. The overall annual indirect cost per patient was 6,634 (±25,578) CNY. Separate analysis of RA, SLE, and AS patients indicated that SLE patients had the greatest economic burden (direct annual cost per patient: 33,899±73,278 CNY, indirect annual cost per patient: 8,993±28,139 CNY). Moreover, 4.84% of AS patients, 7.37% of SLE patients, and 16.9% of RA patients had total direct medical costs that were greater than their annual household incomes.
Table 2

Disease burden and adherencea of patients with rheumatic diseases (n=252)

TotalAdherentNonadherent
All patients (CNY/year)
 Direct cost, mean (SD)26,942.10 (55,455.02)30,950.17 (70,447.23)23,180.68 (36,043.77)
  Outpatient9,333.02 (16,367.63)9,973.77 (15,983.10)8,731.71 (16,759.82)
  Hospitalization14,711.51 (52,204.57)18,250.82 (67,644.11)11,390.00 (31,429.68)
  Non-medical2,897.57 (8,350.65)2,725.58 (6,420.65)3,058.98 (9,846.85)
 Indirect cost, mean (SD)6,633.73 (25,578.30)6,235.25 (22,062.18)7,007.69 (28,568.36)
 Beyond annual household income, n (%)24 (9.49)14 (11.10)10 (7.69)
SLE patients (CNY/year)
 Direct cost, mean (SD)33,899.49 (73,277.78)37,945.14 (95,359.95)30,049.60 (43,428.34)
  Outpatient7,009.13 (8,252.41)7,663.05 (8,276.01)63,86.85 (8,248.68)
  Hospitalization15,682.23 (36,911.15)27,889.83 (94,643.66)20,785.48 (42,642.21)
  Non-medical2,640.77 (4,861.53)2,392.25 (4,249.73)2,877.26 (5,404.20)
 Indirect cost, mean (SD)8,992.56 (28,139.07)9,500.00 (29,549.13)8,509.68 (26,962.16)
 Beyond annual household income, n (%)9 (7.37)6 (10.00)3 (4.84)
AS patients (CNY/year)
 Direct cost, mean (SD)21,453.59 (29,035.60)27,609.33 (33,327.80)15,496.42 (23,191.61)
  Outpatient13,309.54 (21,804.46)17,871.07 (26,122.09)8,895.16 (15,821.10)
  Hospitalization3,878.69 (9,463.41)4,936.67 (10,049.34)2,854.84 (8,904.30)
  Non-medical4,265.36 (13,107.43)4,801.60 (10,979.86)3,746.42 (15,050.08)
 Indirect cost, mean (SD)3,134.43 (10,579.71)3,753.33 (10,480.81)2,535.48 (10,813.00)
 Beyond annual household income, n (%)3 (4.84)2 (6.45)1 (3.22)
RA patients (CNY/year)
 Direct cost, mean (SD)19,698.61 (30,829.78)21,481.15 (32,922.25)18,108.78 (29,202.56)
  Outpatient9,884.79 (20,467.36)6,925.70 (12,063.45)12,523.97 (25,658.80)
  Hospitalization7,664.29 (19,058.40)13,121.21 (24,707.99)2,797.30 (10,093.63)
  Non-medical2,149.54 (7,799.47)1,434.24 (2,815.46)2,787.51 (10,424.05)
 Indirect cost, mean (SD)5,605.71 (29,730.60)2,654.55 (10,940.78)8,237.84 (39,656.69)
 Beyond annual household income, n (%)12 (16.90)6 (18.18)6 (16.21)

Note:

Adherence was defined as 0 or 1 missed doses per month during the 2-month study period.

Abbreviations: AS, ankylosing spondylitis; RA, rheumatoid arthritis; SLE, systemic lupus erythematosus.

Adherence and quality of life

Analysis of treatment adherence, based on CQR results and personal interviews, indicated large variations among our patients (Table 3). More specifically, 48.4% patients overall had a good medication adherence, based on a CQR of 80% or more, and 41.7% of patients reported never having forgotten to take a medication, based on face-to-face interviews. Among patients who reported sometimes forgetting a dose (medication problem no 2), 17 cases were found difficult to be identified by CQR, “I was busy that time, so I missed the time to take the medicines. But I would remember to take my drugs when I went out” (questions 9 and 19 of CQR). Among all medication problems, missing a dose was the main problem (31.7%). We also found that SLE patients were more likely to stop taking a drug or adjust the dosage (mostly GCs) by themselves (medication problem no 4). RA patients had the lowest EQ-index (mean: 0.700), whereas AS patients had a mean EQ-index of 0.792, and SLE patients had a mean EQ-index of 0.780.
Table 3

Medication problems, EQ-5D score, and CQR19 score of patients with rheumatic diseases (n=252)a

MP noAS (%)RA (%)SLE (%)Total (%)
116.3911.4318.1815.87
224.5922.8640.4931.74
38.201.438.266.34
49.8311.4316.5313.49
EQ-5D (mean)0.7920.7000.7800.761
CQR ≥80 (%)49.1847.1448.7648.41
Adherence (%)31.1438.5748.7641.67

Notes:

Adherence was defined as 0 or 1 missed doses per month during the 2-month study period. MP no 1: usage error; MP no 2: missing dose; MP no 3: precautions unknown; MP no 4: adjustment of dosage or cessation of medicine.

Abbreviations: AS, ankylosing spondylitis; CQR, Compliance Questionnaire for Rheumatology; EQ-5D, EuroQol five dimensions; MP, medication problem; RA, rheumatoid arthritis; SLE, systemic lupus erythematosus.

Univariate analysis of factors associated with adherence

Table 4 shows the results of a univariate analysis of the effects of different demographic and clinical characteristics on adherence. Among all 252 patients, employment, disease duration, comorbidities, use of a biological DMARD, drug side effects, CQR19 score, and use of tools such as reminders were associated with adherence (P<0.05 for all comparisons). Age, sex, marital status, type of medical insurance, comorbidities, and hospitalization were unrelated to adherence (P>0.05 for all comparisons). Analysis of SLE patients indicated that disease duration, comorbidities, drug side effects, and use of tools such as medication reminders were associated with adherence (P<0.05 for all comparisons).
Table 4

Demographic and clinical characteristics of adherent and nonadherent patients

Sociodemographic characteristicsTotal (n=252)
SLE (n=121)
RA (n=70)
AS (n=61)
Adherent n=122Nonadherent n=130P-valueSIGAdherent n=59Nonadherent n=62P-valueSIGP-valueSIGP-valueSIG
Age (years), mean (SD)39.66 (15.50)40.33 (14.73)0.642133.97 (11.23)36.18 (14.22)0.73020.68060.6503
Sex, female, n (%)93 (76.22)92 (76.22)0.402156 (94.91)58 (93.54)1.00000.86130.3737
Marital status, n (%)0.56431.00001.00000.3549
 Married91 (74.50)102 (78.46)41 (69.45)43 (69.27)
 Other31 (25.50)28 (21.53)18 (30.55)19 (30.73)
Education level, n (%)0.93960.35990.57290.7171
 Primary (0–6 yrs)12 (9.83)13 (10.00)4 (6.77)3 (4.83)
 Secondary (7–12 yrs)71 (58.20)70 (53.84)33 (55.93)38 (61.29)
 Higher (>12 yrs)39 (31.96)47 (36.15)22 (37.28)21 (33.87)
Employment, n (%)0.0681*1.00000.08480.0809
 Employed67 (54.91)87 (66.92)39 (66.45)41 (67.27)
 Unemployed55 (45.09)43 (33.08)20 (33.55)21 (32.73)
Work activity, n (%)0.16290.28710.41120.5346
 Less activity98 (80.33)103 (79.16)50 (84.82)52 (83.87)
 Light-to-moderate activity19 (15.57)26 (20.00)7 (11.18)10 (16.12)
 Heavy-activity5 (4.09)1 (0.76)2 (3.38)0 (0)
Monthly per capita income, n (%)0.11400.11300.17180.5918
 <1,000 CNY7 (5.73)6 (4.62)3 (5.08)3 (4.83)
 1,000–5,999 CNY65 (53.27)61 (46.92)29 (49.73)32 (51.63)
 6,000–9,999 CNY30 (25.60)30 (23.07)20 (33.34)14 (22.58)
 >10,000 CNY20 (16.39)26 (20.00)7 (11.09)13 (20.96)
Type of medical insurance, n (%)0.21780.30950.41850.8440
 Rural cooperative medical care6 (4.91)14 (10.76)3 (5.07)8 (12.90)
 Urban medical insurance91 (74.59)83 (63.85)42 (71.18)39 (62.90)
 Self-funded25 (20.49)25 (19.23)14 (23.73)15 (24.19)

Disease characteristic

Disease duration, n (%)0.0008**0.0296*0.10190.0903
 <1 year21 (17.21)31 (23.84)10 (16.36)15 (24.19)
 1–5 years52 (42.62)50 (38.46)23 (38.98)22 (35.36)
 ≥5 years49 (40.16)49 (37.69)26 (44.05)25 (40.82)
Comorbidities, n (%)0.0106*0.0350*0.38640.2162
 057 (46.72)58 (44.61)21 (35.45)17 (27.41)
 1–249 (40.16)64 (49.23)28 (47.45)42 (67.75)
 ≥316 (13.11)8 (5.38)10 (16.94)3 (4.83)
EQ-index, mean (SD)0.77 (0.16)0.75 (0.18)0.09230.78 (0.14)0.77 (0.17)0.56290.30020.1926

Disease burden (CNY/year)

Direct cost, mean (SD)30,950.17 (70,447.23)23,180.68 (36,043.77)0.576037,945.14 (95,359.95)30,049.60 (43,428.34)10.1042
 Outpatient expenditure9,973.77 (15,983.10)8,731.71 (16,759.82)0.38677,663.05 (8,276.01)6,386.85 (8,248.68)0.26230.69330.3395
 Hospitalization expenditure9,324.59 (24,104.53)11,390.00 (31,429.68)0.359027,889.83 (94,643.66)20,785.48 (42,642.21)0.10790.53950.2293
 Non-medical cost2,725.58 (6,420.65)3,058.98 (9,846.85)0.40032,392.25 (4,249.73)2,877.26 (5,404.20)0.19650.87740.5460
 Indirect cost, mean (SD)6,235.25 (22,062.18)7,007.69 (28,568.36)0.84689,500.00 (29,549.13)8,509.68 (26,962.16)0.34000.46290.3170

Treatment characteristic

Types of pills prescribed daily, mean (SD)3.94 (2.25)4.36 (2.15)0.30654.64 (1.96)4.84 (1.60)0.62910.84800.1804
Use of GC, n (%)42 (34.43)50 (38.46)0.48451 (1.69)4 (6.45)0.39140.58120.9768
Number of DMARDs, n (%)107 (87.70)68 (52.30)0.059058 (98.31)59 (96.36)0.70190.16830.0314*
Use of NSAIDs, n (%)28 (22.95)38 (29.23)0.187210 (11.94)6 (10.09)0.92460.35630.0497*
Use of a biologic DMARD, n (%)23 (18.95)12 (9.23)0.0429*1 (1.69)1 (1.61)1.00001.00000.0044**
Daily dosing frequency, n (%)0.13730.60040.29830.0534
 < Once daily11 (9.01)3 (2.30)0 (0)0 (0)
 Once daily19 (15.57)8 (6.55)3 (5.08)1 (1.61)
 Twice daily61 (50.00)82 (67.21)36 (61.01)42 (67.73)
 Thrice daily28 (22.95)30 (23.07)18 (30.50)17 (27.42)
 > Thrice daily3 (2.45)2 (1.54)2 (3.38)2 (3.23)
Side effects, n (%)0.0106*0.0350*0.38640.2162
 039 (31.91)27 (20.77)14 (23.72)6 (9.67)
 1–277 (63.14)87 (66.92)42 (65.91)47 (75.80)
 ≥36 (4.91)16 (12.30)4 (6.78)10 (16.13)
CQR, mean (SD)79.07 (11.28)72.81 (11.08)0.0000***81.53 (11.01)75.38 (12.23)0.07170.06130.0030**
Use of tools such as reminders, n (%)88 (72.13)52 (40.00)0.0000***47 (79.65)30 (48.38)0.0013**0.0007**0.0951
Use of alternative medicines, n (%)42 (34.42)56 (43.07)0.201118 (30.50)31 (50.00)0.06820.73760.6880

Notes:

P<0.05;

P<0.01;

P<0.001; adherence was defined as 0 or 1 missed doses per month during the 2-month study period.

Abbreviations: AS, ankylosing spondylitis; CQR, Compliance Questionnaire for Rheumatology; DMARD, disease modifying antirheumatic drug; EQ-5D, EuroQol five dimensions; GC, glucocorticoid; NSAID, non-steroidal anti-inflammatory drug; RA, rheumatoid arthritis; SIG, significance; SLE, systemic lupus erythematosus.

Multivariable logistic regression analysis of factors associated with adherence

Multivariable logistic regression analysis of all 252 patients indicated that use of tools such as reminders (OR =2.724, 95% CI: 1.381, 5.374, P<0.01), CQR score (OR =1.034, 95% CI: 1.009, 1.060, P<0.01), and use of a biological DMARD (OR =2.185, 95% CI: 0.925, 5.161, P<0.05) were positively associated with adherence (Table 5). Drug side effects (OR =0.701, 95% CI: 0.516, 0.953, P<0.01), being employed (OR =0.701, 95% CI: 0.516, 0.953, P<0.01), having a light-to-moderate activity job (OR =0.111, 95% CI 0.021, 0.579, P<0.01), having a heavy-activity job (OR =0.093, 95% CI: 0.016, 0.535, P<0.01), and use of alternative therapies (OR =0.483, 95% CI: 0.267, 0.873, P<0.01) were negatively associated with adherence.
Table 5

Multivariable logistic regression analysis of demographic and clinical characteristics associated with adherence in patients with rheumatic diseases (n=252)

CharacteristicBSEP-valueSIGExp(B)95% CI
Step 1a
 Use of tools such as reminders1.2360.3910.002**3.4411.598, 7.411
 CQR score0.0320.0140.023*1.0321.004, 1.061
 Duration <1 year0.803
 1–5 years−0.1780.4290.6780.8370.361, 1.939
 ≥5 years0.1010.3340.7621.1060.575, 2.128
 Side effects−0.2770.1960.1570.7580.517, 1.113
 Use of biologic0.5770.4600.2091.7810.724, 4.384
 No of DMARDs−0.1150.2350.6270.8920.562, 1.415
 Employed−0.6240.3120.046*0.5360.291, 0.988
 EQ-5D-index1.4950.9340.1094.4590.715, 27.814
 Monthly per capita income (6,000–9,999 CNY)0.285
 Monthly per capita income (<1,000 CNY)0.0530.7790.9451.0550.229, 4.853
 Monthly per capita income (>10,000 CNY)−0.6220.4470.1640.5370.223, 1.289
 Monthly per capita income (1,000–5,999 CNY)0.1770.3540.6161.1940.596, 2.390
 Types of pills prescribed daily−0.2910.2120.1700.7480.493, 1.133
 Work activity, less activity0.013*
 Light-to-moderate activity−2.9111.0200.004**0.0540.007, 0.402
 Heavy-activity−3.0971.0580.003**0.0450.006, 0.360
 Use of NSAIDs−0.0130.3250.9680.9870.522, 1.866
 Use of alternative medicines−0.7990.3150.011*0.4500.242, 0.834
 Type of medical insurance, rural cooperative medical care0.259
 Urban medical insurance−0.9350.6050.1220.3930.120, 1.284
 Self-funded0.1420.3690.7011.1520.559, 20,374
 Comorbidities0.2430.1520.1321.2580.933, 1.696
 Hospitalization expenditure0.2430.1930.2081.2760.873, 1.863
Step 10a
 Use of tools such as reminders1.0020.3470.004**2.7241.381, 5.374
 CQR scores0.0340.0130.007**1.0341.009, 1.060
 Side effects−0.3550.1570.023**0.7010.516, 0.953
 Use of biologics0.7820.4390.075*2.1850.925, 5.161
 Employed−0.6540.2930.026**0.5200.293, 0.924
 Work activity, less activity0.026**
 Light-to-moderate activity−2.2020.8450.009**0.1110.021, 0.579
 Heavy-activity−2.3790.8950.008**0.0930.016, 0.535
 Use of alternative medicines−0.7270.3020.016*0.4830.267, 0.873

Notes:

P<0.05;

P<0.01; adherence was defined as 0 or 1 missed doses per month during the 2-month study period.

Bachward stepwise regression was used in this analysis.

Abbreviations: CQR, Compliance Questionnaire for Rheumatology; DMARD, disease modifying antirheumatic drug; EQ, EuroQol; GC, glucocorticoid; NSAID, non-steroidal anti-inflammatory drug; SIG, significance.

We also performed a separate analysis of SLE patients, because they accounted for 48% of all patients (Table 6). The results indicate that use of tools such as reminders (OR =6.252, 95% CI: 2.530, 15.444, P<0.01) was associated with adherence (Table 6). Moreover, having a heavy-activity job (OR =0.214, 95% CI: 0.060, 0.757, P<0.05) and use of alternative therapies (OR =0.265, 95% CI: 0.109, 0.645, P<0.01) were negatively associated with adherence (Table 6).
Table 6

Multivariable logistic regression analysis of demographic and clinical characteristics associated with adherence in SLE patients

CharacteristicBSEP-valueSIGExp(B)95% Cl
Step 1a
 Monthly per capita income (6,000–9,999 CNY)0.007**
 Monthly per capita income (<1,000 CNY)−0.9091.2390.4630.4030.036, 4.567
 Monthly per capita income (>10,000 CNY)−1.8890.7630.013*0.1510.034, 0.674
 Monthly per capita income (1,000–5,999 CNY)−0.1740.5450.7490.8400.289, 2.444
 Duration <1 year0.794
 1–5 years0.0070.6810.9921.0070.265, 3.825
 ≥5 years0.3150.5140.5401.3700.501, 3.752
 No of side effects−0.3140.2690.2420.7310.432, 1.237
 Use of alternative medicines−1.6360.5410.003**0.1950.067, 0.563
 CQR scores0.0380.0250.1301.0390.989, 1.092
 Comorbidities0.4940.2400.040*0.4270.203, 0.896
 Non-medical costs−0.0010.0010.1740.9990.998, 1.000
 Use of tools such as reminders1.3340.7220.0653.7960.923, 15.619
 Hospitalization expenditure−0.1590.3080.6060.8530.466, 1.560
 Outpatient expenditure0.0000.0000.4811.0000.999, 1.000
 Work activity, less activity0.119
 Light-to-moderate activity−2.4881.7440.1540.0830.003, 2.533
 Heavy-activity−3.4771.8540.0610.0310.001, 1.171
Step 9a
 Work activity, less activity0.037
 Light-to-moderate activity−0.6320.3600.0790.5320.263, 1.076
 Heavy-activity−1.5430.6450.017*0.2140.060, 0.757
 Use of tools such as reminders1.8330.4610.000**6.2522.530, 15.444
 Use of alternative medicines−1.3290.4540.003**0.2650.109, 0.645

Notes:

P<0.05;

P<0.01.

Bachward stepwise regression was used in this analysis.

Abbreviations: CQR, Compliance Questionnaire for Rheumatology; SIG, significance; SLE, systemic lupus erythematosus.

Discussion

To the best of our knowledge, this is the first study to examine the medication adherence and financial burden of patients with rheumatic diseases (AS, RA, and SLE) in China, and also the first to evaluate quality of life using the EQ-5D of patients with SLE and AS in China. We defined adherence as more than one missed dose per month, because CQR only provides an indirect measure of adherence. Among all 252 patients, 41.67% were adherent, and SLE patients had the best adherence (48.76%), followed by RA patients (38.57%), and AS patients (31.14%). The overall EQ-index of our patients was 0.761; AS patients had the best EQ-index (0.792), followed by SLE patients (0.780), and RA patients (0.700). Thus, although SLE patients had the best adherence, their health status still needs improvement. SLE patients also had greater direct costs than the other two groups (US$5,103.58 per year). We found the overall mean CQR score was 75.8±11.6, below the cutoff of 80% used to indicate adherence. This also suggests that our rheumatic disease patients have poor adherence. Previous research indicated the worldwide adherence rate of SLE patients ranged from 3% to 76%.19 Thus, the nonadherence rate in our SLE patients (51.24%) was lower than in many other parts of the world. Moreover, nonadherence can lead to increased disease activity and multiple organ involvement.2,3,5,19 In addition, we recruited a considerable number of SLE patients in this study, and identified predictors of nonadherence. Previous studies differed in their conclusions regarding the factors that are associated with nonadherence. Some researchers argued that barriers to adherence should be assessed on an individual basis,16,20 but others identified specific factors associated with adherence in patients with rheumatic diseases, such as education level, marital status, language proficiency, race, comorbidities, high pharmacy costs, taking many pills, number of side effects, missing physician appointments, and quality of life.21–25 Our results indicate that side effects and use of alternative medicines were associated with nonadherence in patients with rheumatic diseases, in agreement with previous studies.25–27 Our conclusions were somewhat different from those of a previous study,28 because we found that working, having a job with light-to-moderate physical intensity (assembly line work, installers, etc.) or heavy physical activity (steelmaking, agriculture, etc.) were associated with nonadherence. The reasons for these findings require further study. We also found that use of a medication reminder tool was associated with increased adherence, in agreement with previous studies.29,30 We found that many patients (71/88) reported they missed a dose because they were busy with something else, so reminders may improve adherence in these patients. Long-term use of certain anti-rheumatic medications may adversely affect the quality of life. More specifically, previous research on Chinese patients with chronic diseases evaluated quality of life using the EQ-5D, and reported an EQ-index 0.79 to 0.94 for patients with diabetes, 0.78 to 0.93 for patients with hypertension, and 0.56 for patients with RA.31 To the best of our knowledge, the present study is the first to evaluate quality of life using the EQ-5D in SLE and AS patients from China. We found that the EQ-index was best for AS patients (0.792), followed by SLE patients (0.780), and RA patients (0.700). Thus, the health status of RA outpatients in our clinic was better than the average previously reported in China.31 Previous studies confirmed that caring for a patient with a chronic condition is a substantial financial burden for the patient and the family.6–8,11,32–34 The direct annual costs for an SLE patient can reach up to €4,748 (US$5,037) in Europe, up to US$6,269 in the United States, and costs increase further in those with organ dysfunction (such as lupus nephritis), disease flares, high disease activity, and disease of long duration.8,12,34 In our study, the annual direct costs of an SLE patient was 33,899.49±73,277.78 CNY (US$5,103±11,031), and, as indicated by the very large SD, there were large variations among patients, mostly due to differences in comorbidities. The differences of our results compared with those of previous studies might be due to differences in disease activity, duration of disease, and national consumption level. Moreover, we found that the direct costs of a nonadherent patient were less than those of an adherent patient, although the reasons for this finding are uncertain. We also found differences in adherence from the CQR (48.1%) and the face-to-face interview (41.7%). Among patients who reported sometimes forgetting a dose, 17 cases were not identified by the CQR. This finding indicates that the CQR did not measure adherence directly, and could lead to false-positive responses. The interview-based self-report we used probably provides a more accurate measure of adherence. Actually, there is no gold standard for the assessment of treatment adherence, and many methods are used to measure adherence, including the CQR, Morisky medication adherence scale, refill data, medication adherence self-report inventory, pill counting, physician’s evaluation, pharmacy refill data, pharmacokinetic markers, and patient interviews.35–41 Our results suggest that interview-based self-reports provide a more accurate measure of adherence than the CQR score.

Limitations

There were some limitations in our work. First, there was a small number of patients, which was partly due to rarity of rheumatic diseases. Second, our patients may not be representative of Chinese patients in general. Further research on this topic should seek to enroll more patients. Nevertheless, our results demonstrate that numerous factors potentially affect drug adherence. More specifically, the use of reminder tools was associated with increased adherence. Thus, use of reminder tools (an alarm clock, mobile phone messages, notepad, SMS, etc.) may be a simple and inexpensive method to increase adherence.

Conclusion

In summary, this was the first investigation to study treatment adherence, health status, and financial burden of patients with three types of rheumatic diseases (AS, RA, and SLE), and was also the first to evaluate treatment adherence of SLE and AS patients in China using the CQR. The overall proportion of adherence in our patients was 41.7%, lower than in many other geographic regions. Thus, it is important to identify approaches that improve the treatment adherence of Chinese patients with rheumatic diseases. Our results suggest that use of a reminder tool can improve adherence, but a future interventional study is needed to verify this hypothesis and to identify other measures which could improve adherence. Our results also suggest that it is necessary to further study the health status and disease burden of patients with SLE.
  38 in total

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Authors:  Tanja Schjødt Jørgensen; Lars Erik Kristensen; Robin Christensen; Henning Bliddal; Tove Lorenzen; Michael S Hansen; Mikkel Østergaard; Jørgen Jensen; Lida Zanjani; Toke Laursen; Sheraz Butt; Mette Y Dam; Hanne M Lindegaard; Jakob Espesen; Oliver Hendricks; Prabhat Kumar; Anita Kincses; Line H Larsen; Marlene Andersen; Esben K Næser; Dorte V Jensen; Jolanta Grydehøj; Barbara Unger; Ninna Dufour; Vibeke Sørensen; Sara Vildhøj; Inger Marie Jensen Hansen; Johnny Raun; Niels Steen Krogh; Merete Lund Hetland
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2.  High degree of nonadherence to disease-modifying antirheumatic drugs in patients with rheumatoid arthritis.

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6.  Investigating the safety and compliance of using csDMARDs in rheumatoid arthritis treatment through face-to-face interviews: a cross-sectional study in China.

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