Literature DB >> 29785095

Factors affecting medication adherence in community-managed patients with hypertension based on the principal component analysis: evidence from Xinjiang, China.

Yuji Zhang1, Xiaoju Li1, Lu Mao1, Mei Zhang1, Ke Li1, Yinxia Zheng1, Wangfei Cui1, Hongpo Yin1, Yanli He1, Mingxia Jing1.   

Abstract

PURPOSE: The analysis of factors affecting the nonadherence to antihypertensive medications is important in the control of blood pressure among patients with hypertension. The purpose of this study was to assess the relationship between factors and medication adherence in Xinjiang community-managed patients with hypertension based on the principal component analysis. PATIENTS AND METHODS: A total of 1,916 community-managed patients with hypertension, selected randomly through a multi-stage sampling, participated in the survey. Self-designed questionnaires were used to classify the participants as either adherent or nonadherent to their medication regimen. A principal component analysis was used in order to eliminate the correlation between factors. Factors related to nonadherence were analyzed by using a χ2-test and a binary logistic regression model.
RESULTS: This study extracted nine common factors, with a cumulative variance contribution rate of 63.6%. Further analysis revealed that the following variables were significantly related to nonadherence: severity of disease, community management, diabetes, and taking traditional medications.
CONCLUSION: Community management plays an important role in improving the patients' medication-taking behavior. Regular medication regimen instruction and better community management services through community-level have the potential to reduce nonadherence. Mild hypertensive patients should be monitored by community health care providers.

Entities:  

Keywords:  China; community management; factors; hypertension; medication adherence; principal component analysis

Year:  2018        PMID: 29785095      PMCID: PMC5955046          DOI: 10.2147/PPA.S158662

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


Introduction

Hypertension is one of the major public health issues around the world and is among the major modifiable risk factors of cardiovascular diseases.1,2 The World Health Organization (WHO) reported that hypertension is estimated to have caused 9.4 million deaths and 7% of the disease burden in 2010, and the situation is still deteriorating.3 In China, the prevalence of hypertension is 32.5%. About one-third of Chinese adults need antihypertensive treatment, but only 46.4% of them are being treated with anti-hypertensive medications, resulting in an overall control rate of 4.2%.4 Nonadherence to antihypertensive medication is the main reason for the ineffective control of blood pressure. One study had shown that patients’ adherence to their medication regimen reduces the risk of myocardial infarction by 20%–25%, cardiac failure by >50%, and stroke by 35%–40%.5 Nonadherence to medication regimens is common among patients with hypertension worldwide, especially in China, with nonadherence rate ranged from 40.3% to 78.7%.6–10 Hence, the factors associated with adherence to antihypertensive medications have been a topic of interest. Factors that affect adherence to antihypertensive medications are complex. The WHO classified those multidimensional factors into patient-, social/economic-, condition-, therapy-, and health care team-related factors.11 Community management is the main factor that influences the effects of treatment and control of blood pressure in patients with hypertension. Fikri-Benbrahim et al conducted a survey in Spanish and found that medication adherence in patients with hypertension under the management of a community pharmacist is 4.07 times higher than those without management.12 A study conducted in the USA showed that medication adherence increased by 36% through regular follow-ups, individualized education on medication by community pharmacists, and the use of blister packs in dispensing medications.13 Two systematic reviews reported that medication management, educational interventions directed to the patients, and more frequent follow-up appointments or contacts were the most frequently used community management methods in many countries, effectively increasing the medication adherence of patients.14,15 In 2009, China launched new health care reforms, which include strategies that are closely linked with chronic disease control, including management of hypertension. Patients with hypertension aged ≥35 years were provided free management services by the local primary health care workers, including health records, free blood pressure measurement, regular follow-ups every 3 months, and health education.16,17 Many studies were conducted to investigate the factors associated with medication adherence in community-managed patients with hypertension.8,18–25 Wang et al analyzed seven factors, including age, gender, and number of comorbidities, affecting the medication adherence among Chinese community-managed elderly patients with hypertension by using a multivariate linear regression model.20 The same model was also used by Ma to analyze 13 factors, including age, gender, and medications used, associated with antihypertensive medication adherence in patients living in the rural areas of Shanxi, China.8 Moreover, Bishopric et al analyzed 29 factors affecting the medication adherence of patients with hypertension living in a rural Vietnamese community by using a multiple logistic regression model.19 Most studies used a regression model to analyze the multidimensional factors that affect the patients’ adherence to antihypertensive medications.26–31 Although these factors maybe correlated, it was difficult to propose a strategy to improve the measures for medication adherence using a unidimensional factor. On the other hand, a regression model could not solve the colinearity in complex factors. Thus, this study reduced dimensions to solve colinearity in multidimensional factors of medication adherence by using a principal component analysis method, which was convenient for policy makers to make future interventions. Xinjiang is located in the northwestern region of China. In 2015, the per capita gross domestic product of Xinjiang was 40,036 yuan, and the number of general practitioners per 10,000 permanent populations were 1.25; it has an underdeveloped economy and has areas with relatively scanty health resources.32,33 The prevalence of hypertension in Xinjiang is 33.34%, which was higher than the national prevalence rate. However, the control rate is only 10.8%.34 Prior studies reported that the prevalence of medication adherence among patients with hypertension in Xinjiang ranged from 34.0% to 53.5%, which was also higher than the national prevalence rate.10,35–40 The patients with hypertension in Xinjiang had poor medication adherence and blood pressure control. Thus, this study aimed to assess the relationship between factors and medication adherence in Xinjiang community-managed patients with hypertension using the principal component analysis, with a certain reference to other areas with underdeveloped economies and scanty health sources.

Patients and methods

Sampling and settings

We conducted a cross-sectional survey by using a self-designed questionnaire at three areas in Xinjiang, China, between April and August 2016. A total of 1,916 patients with hypertension participated in this study. Using a multi-stage sampling method based on the economic status and population size in Xinjiang, nine communities of the three areas were selected as samples. The following were the inclusion criteria of this study: individuals who 1) were diagnosed with hypertension by clinical doctors, 2) were managed by a community, 3) had a systolic blood pressure ≥140 mmHg and/or a diastolic blood pressure ≥90 mmHg, and 4) were taking at least one antihypertensive medication during the survey period. On the other hand, the exclusion criteria were as follows: those who 1) had communication difficulties such as visual impairment and poor hearing, 2) exhibited severe cognitive impairment or diagnosed with dementia and mental disorder, 3) were too sick to participate in this study, and 4) were uncooperative. A pilot study was conducted on one of the sampled community, which was composed of 159 patients with hypertension who were not included in the final study sample. The sample size was calculated based on the number of participants required to maintain a statistical power for the statistical tests used in data analysis. Since there was no available literature showing the prevalence of adherence among the Xinjiang community in general, the following variables were used: an expected prevalence rate of 76%,41 a two-sided, 0.05 significance level test with a 90% statistical power, and a minimum of 127 participants.

Questionnaire and definition of variables

A self-designed questionnaire was used as a data collection tool, which was designed similar to that used in the extensive literature review of similar studies.38,42,43 The questionnaire included: 1) patient’s demographics such as age, sex, marital status, education, insurance, annual household income, and number of family members; 2) clinical characteristics such as health status, comorbidities, sickness status, and blood pressure control status; 3) patient’s medication adherence; and 4) health services used such as outpatient visits, hospitalization visits, and emergency visits. The data were collected through a face-to-face interview, which lasted for an average of 15–20 minutes. This study used the following self-report questions to measure the patient’s medication adherence: 1) Can you take your antihypertensive medication everyday based on the frequency prescribed by doctors? 2) Can you take your antihypertensive medication everyday based on the timing prescribed by doctors? 3) Can you take your antihypertensive medication everyday based on the required dose prescribed by doctors? and 4) Do you continuously take your antihypertensive medication? The 4-scale answers of the first three questions include: 1) never complete, 2) sometimes complete, 3) usually complete, and 4) always complete. The patients were asked to select the following options to answer the last question: 1) discontinued the medication, 2) took the medications intermittently, 3) took the medications continuously but below the prescribed dose, and 4) took the medications continuously without interruption. The participants who chose either the third or the fourth options as answers to all four questions were identified as adherent; those who did not were considered as nonadherent.44,45 The standardized Cronbach’s α, a measure of reliability, was a total of 0.804. In addition, blood pressure control is considered as a binary variable; thus, patients with a systolic blood pressure <140 mmHg and/or a diastolic blood pressure <90 mmHg are regarded as having control over their blood.42,43 Regular clinical check was a binary variable, patients who were considered having regular clinical check should have at least once clinical check within 3 months, otherwise they were considered to have no regular clinical check. Regular blood pressure check was a dichotomous variable, patients with regular blood pressure check should measure their blood pressure at least once within a week, if not, they were considered to have no regular blood pressure check. Complication variable was divided into two categories based on whether patients had hypertension-related complications or not. Number of comorbidities was divided into three categories: having no comorbidity, having one or two comorbidities, and having more than three comorbidities. In this study, comorbidity was referred to other chronic diseases except hypertension. All patients were categorized as insured or uninsured for outpatient medical reimbursement policy. Duration was divided into three categories based on the time that patients were diagnosed with hypertension. Self-reported severity of hypertension was divided into four categories based on the patients’ severity of their disease.

Data analysis

Statistical analyses were performed using the SPSS version 24.0. Frequencies and percentages were calculated for categorical variables. The categorical variables were tested using a univariate chi-square test. This study used a principal component analysis to transform some of the factors into aggregative indicators in order to eliminate the correlation between factors. A binary logistic regression analysis was used to evaluate the odds ratios of factors that showed a statistically significant association with the medication adherence in the univariate analysis. P-value <0.05 was considered statistically significant.

Ethics statement

This study was approved by the Ethics Committee of the Shihezi University. The study was funded and permitted by the National Natural Science Foundation of China (project identification code: 71363047). The participants were assured that their answers in this study would not impact their subsequent benefits. Their personal information such as name, address, and identification number were collected to be used in the later follow-up studies, and all data are kept strictly confidential and secured. The data gathered are only used in this study. Investigators read and explained the informed consent, and all participants gave written informed consent (signed or fingerprinted if illiterate) before the questionnaire began.

Results

Sample characteristics

The demographic characteristics of the respondents are shown in Table 1; a total of 2,191 patients with hypertension participated in this study, with an effective response rate of 87.4%. However, the number of samples selected in this study was only a total of 1,916. Females accounted for 1,154 (60.2%) of the total samples. The average age of the total samples was 72.21±7.707 years (from 38 to 97 years). Most of them were living with more than one family member (87.2%) and some were married (79.3%). Most of them were retired (92.7%) and some of them availed the outpatient medical reimbursement policy (29.6%). Just one-third of the patients were either illiterate (37.9%) or only had attained primary education (33.0%), and one-tenth of them had attained high school education or above (10.5%). Using a bivariate analysis, this study found that age, residence, educational level, annual household income, and outpatient medical reimbursement were statistically associated with nonadherence (P<0.05). Patients living in rural areas and those with no outpatient insurance reimbursement had significantly higher rates of nonadherence. Further comparison in each group was performed, and a statistical significant difference was revealed between the participants in the 35–64, 65–69, and 70–74 age groups (χ2=8.320, P=0.004; χ2=9.963, P=0.002). Patients aged <70 years, those with a middle school degree, and those whose annual household income <48,000 yuan had significantly higher nonadherence rates than those aged 70–74 years, with high school degree or above, and whose annual household income was 48,000–68,399 yuan.
Table 1

Adherence level based on sociodemographic characteristics

Demographic characteristicsTotal(n=1,916)
Adherence(n=1,629)
Nonadherence(n=287)
χ2P-value
n%n%n%
Age (years)12.5640.014a
 35–6424913.020381.54618.5
 65–6935218.428781.56518.5
 70–7451426.845889.15610.9
 75–8051827.043984.77915.3
 >8028314.824285.54114.5
Gender2.8290.093
 Male76239.863583.312716.7
 Female1,15460.299486.116013.9
Race0.3190.572
 Han1,87497.81,59285.028215.0
 Others422.23788.1511.9
Residence4.5490.033a
 Urban58330.451187.77212.3
 Rural1,33369.61,11883.921516.1
Marital status0.3390.560
 Married1,52079.31,29685.322414.7
 Others39620.733384.16315.9
Educational level12.0040.007a
 Illiterate72737.962385.710414.3
 Primary school63233.053985.39314.7
 Middle school35618.628580.17119.9
 High school or above20110.518290.5199.5
Family members0.0180.893
 124512.820985.33614.7
 >11,67187.21,42085.025115.0
Underprivileged0.2810.596
 No1,84096.01,56685.127414.9
 Yes764.06382.91317.1
Annual household income (yuan)7.7990.020a
 <48,00060631.649982.310717.7
 48,000–68,39966134.558187.98012.1
 ≥68,40064933.954984.610015.4
Employment4.9440.084
 Unemployed552.94378.21221.8
 Employed854.46778.81821.2
 Retired1,77692.71,51985.525714.5
Outpatient medical reimbursement11.3950.001a
 No1,34870.41,12283.222616.8
 Yes56829.650789.36110.7

Note:

P<0.05.

Table 2 presents the clinical characteristics of patients. This shows that over half of the patients had hypertensive-related complications for >10 years (63.6%, 60.9%). Half of the patients had one or two comorbidities (56.8%). Approximately two-thirds of the patients took one antihypertensive medication (71.2%). Over half of them were either asymptomatic (37.7%) or had experienced just a mild discomfort (45.8%). Furthermore, only one-third of the patients checked their blood pressure regularly (37.0%), and only a few of them checked their health regularly (27.2%). More than half of the patients were not able to achieve a normal blood pressure (59.8%), and a few of them were trustful of the general practitioners (27.6%). Patients without hypertension-related complications, those with shorter duration of hypertension, those who had not checked their health or blood pressure regularly, those without diabetes, those taking fixed-dose combination medications, those taking traditional medications, and those with uncontrolled blood pressure were more likely nonadherent to their antihypertensive medication regimen. Moreover, further comparison found that patients with no comorbidities had significantly higher nonadherence rates than those with over three comorbidities (χ2=7.427, P=0.006). Similarly, patients who were uncertain to trust doctors had significantly higher nonadherence rates than those who trust the specialists (χ2=7.562, P=0.006).
Table 2

Clinical characteristics of patients with hypertension

Clinical characteristicsTotal(n=1,916)
Adherence(n=1,629)
Nonadherence(n=287)
χ2P-value
n%n%n%
Self-reported health status4.7050.095
  (Very) Poor35218.431088.14211.9
 Average87345.674585.312814.7
 Well69136.157483.111716.9
Self-reported severity of hypertension1.6240.654
 Asymptomatic72237.761985.710314.3
 Mild discomfort87745.873683.914116.1
 Moderate discomfort26413.822886.43613.6
 Extreme discomfort532.84686.8713.2
Complication9.0400.003a
 No69736.457081.812718.2
 Yes1,21963.61,05986.916013.1
Number of comorbidities7.4230.024a
 033117.326981.36218.7
 1 or 21,08956.892384.816615.2
 ≥349625.943788.15911.9
Comorbidity
 Patients with diabetes59931.353389.06611.010.7340.001a
 Patients with heart diseases1,01853.187786.114113.92.1720.141
 Patients with cerebrovascular diseases65033.956286.58813.51.6030.205
Duration (years)33.3690.000a
 1–429415.322175.27324.8
 5–945523.737883.17716.9
 ≥101,16760.91,03088.313711.7
Numbers of drugs3.5360.171
 11,36471.21,15084.321415.7
 247024.540486.06614.0
 ≥3824.37591.578.5
Drug classes
 Calcium channel blocker1,25665.61,08086.017614.02.6740.102
 ACE inhibitor24212.620383.93916.10.2810.596
 ARB31416.427687.93812.12.4410.118
 β-Blocker33917.730088.53911.53.9050.048a
 Diuretic854.47385.91214.10.0520.820
 Fixed-dose combinations1487.711678.43221.65.5570.018a
 Traditional medicines834.36375.92024.15.6630.017a
Regular clinical check11.9640.001a
 No1,39572.81,16283.323316.7
 Yes52127.246789.65410.4
Regular blood pressure check11.9390.001a
 No1,20863.01,00182.920717.1
 Yes70837.062888.78011.3
Blood pressure13.6930.000a
 Uncontrolled1,14659.894682.520017.5
 Controlled77040.268388.78711.3
Trust in different doctors8.0570.018a
 Specialist1,04054.389786.314313.8
 General practitioner52927.645485.87514.2
 Uncertain34718.127880.16919.9
Health service utilizations in the past 1 year0.0020.965
 No1,46476.41,24585.021915.0
 Yes45223.638485.06815.0

Note:

P<0.05.

Abbreviations: ACE, angiotensin-converting enzyme; ARB, angiotensin II receptor blocker.

Results of the principal component analysis of factors

This study examined the correlation between all variables (data are shown in the Supplementary material). The results showed strong correlations in many variables besides race. In addition, the questions about comorbidities and drug classes were presented in multiple choice questions in the questionnaire, which could not be used for the principal component analysis. Then we conducted the component analysis with factors except race, comorbidities, and drug classes. The results of the principal component analysis of the factors are shown in Table 3. This study performed the Kaiser-Meyer-Olkin (KMO) and Bartlett’s test of sphericity and found a potential correlation between the factors in this study; thus, it was fit to conduct a factor analysis (KMO value is 0.650, Bartlett’s test P-value <0.001). This study extracted nine common factors, that is, severity of disease, family, community management, individual factor, social factor, health status, gender, treatment, and economic status, and the cumulative variance contribution rates reached 63.625%. The initial eigenvalues for all nine factors were 2.475, 2.334, 1.697, 1.392, 1.22, 1.193, 1.059, 1.017, and 0.974; all of them were >0.5. The first common factor represents the following five variables: complication, number of comorbidities, outpatient medical reimbursement, duration, and self-reported severity of hypertension. The second common factor could explain the following three variables: marital status, family members, and annual household income. Similarly, the third common factor represents blood pressure, regular clinical check, and regular blood pressure check. Moreover, the fourth common factor indicates the patient’s residence and age. The fifth common factor comprises patient’s educational level and employment. The sixth common factor reflects only self-reported health status. Gender is mainly explained by the seventh factor. The eighth common factor reflected the numbers of drugs, health service utilizations in past year, and trust in different doctors. The last common factor explains the underprivileged solely.
Table 3

Coefficient of factor loading and total variance explained in principal component analysis

VariablesF1F2F3F4F5F6F7F8F9
Complication0.760−0.122−0.0340.016−0.116−0.1690.1020.298−0.041
Number of comorbidities0.613−0.186−0.0700.1200.0140.1520.1020.318−0.178
Outpatient medical reimbursement0.6040.1050.015−0.030−0.1360.4220.1540.212−0.004
Duration0.447−0.0800.012−0.3260.1220.0800.389−0.1000.112
Self-reported severity of hypertension0.437−0.247−0.1580.1930.0020.325−0.2350.013−0.26
Marital status0.1490.785−0.1980.1860.1680.122−0.042−0.0160.073
Family members0.1940.734−0.2230.1790.1850.2410.013−0.0020.152
Annual household income0.2790.670−0.014−0.1520.2300.1430.0230.0160.040
Blood pressure0.0630.0980.7960.1650.1440.026−0.0480.1230.017
Regular clinical check0.0740.0700.7160.2620.1180.011−0.019−0.0130.105
Regular blood pressure check0.2100.0930.5610.002−0.0110.036−0.130−0.036−0.077
Residence−0.117−0.096−0.2510.5660.214−0.379−0.0310.2690.121
Age0.237−0.2630.0150.5360.2230.0170.4480.0850.203
Educational level0.0150.4730.170−0.1800.547−0.117−0.019−0.045−0.285
Employment0.184−0.0190.016−0.3880.483−0.295−0.122−0.1120.144
Self-reported health status0.3230.1900.083−0.0410.0800.4760.3380.0940.138
Gender0.0700.4480.0780.2150.3150.3070.507−0.2200.015
Numbers of drugs0.3390.0380.003−0.098−0.345−0.0190.2720.4270.262
Health service utilizations in the past 1 year0.334−0.066−0.0030.348−0.166−0.110−0.2700.3950.214
Trust in different doctors0.3640.1300.101−0.277−0.0390.3100.2190.382−0.069
Underprivileged−0.050−0.1310.0220.0320.3760.286−0.0470.3450.720
Initial eigenvalues2.4752.3341.6971.3921.2201.1931.0591.0170.974
Cumulative %11.78622.90330.98537.61543.42349.10254.14358.98663.625

Notes: Bold entries reflect the information of specific original variables that each of factors (F1–F9) included. Some original variables’ information also marked as bold entries, because they have a higher value in the corresponding factors, although these original variables were included in other factors at last based on highest value. F1 reflects complication, number of comorbidities, outpatient medical reimbursement, duration, self-reported severity of hypertension, named severity of disease factor; F2 reflects marital status, family members, annual household income, named family factor; F3 reflects blood pressure, regular clinical check, regular blood pressure check, named community management factor; F4 reflects residence and age, named individual factor; F5 reflects educational level and employment, named social factor; F6 reflects self-reported health status, named health status factor; F7 reflects gender, named gender factor; F8 reflects number of drugs, health service utilization in the past 1 year,and trust in different doctors, named treatment factor; F9 reflects underprivileged, named economic status factor.

Abbreviation: F, factor.

Factors related to nonadherence in the logistic regression analysis

Table 4 presented the common factors that were associated with medication nonadherence; this study found that severity of disease, community management, and patients with diabetes had a statistically significant negative association with nonadherence (P<0.05). Those who had no complications, had no comorbidities, had not availed the outpatient medical reimbursement, had a shorter duration of hypertension, and had slight symptoms of hypertension were more likely non-adherent, whose nonadherence rate was 0.654 times lower than that of patients who had complications, had comorbidities, had availed the outpatient medical reimbursement, had a longer duration of hypertension, and had serious symptoms of hypertension. Similarly, patients with uncontrolled blood pressure and those without regular health or blood pressure check were more likely nonadherent, whose nonadherence rate was 0.731 times lower than that of patients with controlled blood pressure and those with regular health or blood pressure check. The nonadherence rate of patients with diabetes was 0.656 times lower than that of patients without diabetes. Taking traditional medicines was positively associated with nonadherence. This study found that severity of disease was the main factor associated with medication nonadherence.
Table 4

Common factors associated with medication nonadherence using a binary logistic regression analysis

Associated factorsCrude OR (95% CI)P-valueAdjusted ORb(95% CI)P-value
Patients with diabetes0.614 (0.458, 0.824)0.001a0.656 (0.479, 0.898)0.008a
β-Blocker0.697 (0.486, 0.999)0.049a0.979 (0.609, 1.573)0.929
Fixed-dose combinations1.637 (1.083, 2.474)0.019a1.638 (0.955, 2.808)0.073
Traditional medicines1.862 (1.108, 3.130)0.019a2.096 (1.097, 4.005)0.025a
Severity of disease (F1)0.702 (0.617, 0.799)0.000a0.654 (0.538, 0.795)0.000a
Family (F2)1.016 (0.896, 1.153)0.8021.013 (0.886, 1.157)0.853
Community management (F3)0.743 (0.649, 0.850)0.000a0.731 (0.635, 0.842)0.000a
Individual factor (F4)1.101 (0.972, 1.248)0.1311.090 (0.956, 1.242)0.197
Social factor (F5)0.896 (0.793, 1.013)0.0780.917 (0.798, 1.054)0.223
Health status (F6)0.989 (0.872, 1.122)0.8660.990 (0.868, 1.130)0.883
Gender (F7)0.897 (0.791, 1.017)0.0880.889 (0.776, 1.019)0.090
Treatment (F8)1.060 (0.935, 1.202)0.3601.074 (0.917, 1.258)0.376
Economic factor (F9)0.961 (0.845, 1.093)0.5450.930 (0.813, 1.065)0.294

Notes:

P<0.05.

The regression model was adjusted for residence, patients with heart diseases, patients with cerebrovascular diseases, calcium channel blocker, ACE inhibitor, ARB, and diuretic.

Abbreviations: OR, odds ratio; ACE, angiotensin-converting enzyme; ARB, angiotensin II receptor blocker; F, factor.

Discussion

Medication adherence is a key factor in achieving blood pressure control in patients with hypertension. Hence, finding the key factor affecting adherence to antihypertensive medications among community-managed patients with hypertension is important in improving the medication adherence. Prior studies have found that community management is one of the main factors that influenced the effects of treatment and blood pressure control in patients with hypertension. This study extracted nine common factors based on principal component analysis. Further logistic regression analysis found severity of disease factor, community-managed factor, taking traditional medications, and patients with diabetes as factors associated with antihypertensive medication nonadherence. We found that community management could increase the medication adherence in hypertensive patients; hence, we should insist community management in hypertensive patients and constantly improve management measures, improving patients’ medication adherence and health outcomes. Similar to prior studies, this study found that severity of disease factor is one of the factors of adherence in our results (OR=0.654, P<0.001). Hypertension is largely asymptomatic. Prior studies reported that patients with more chronic diseases, those having hypertension-related complications, or those with a longer duration of hypertension more likely received a regular care, understood the importance of adherence, and developed good habits of taking antihypertensive medications; therefore, their medication adherence improved.30,46 The results of this study were consistent with that of the previous studies. In China, the outpatient medical reimbursement policy was developed for chronic patients with complications; thus, utilization of this reimbursement policy is reflective of the severity of patients’ diseases. Patients who availed the policy have the privilege to receive a 60%–80% reimbursement of the medication cost combined with a coinsurance at a limit of 1,500–2,000 yuan each year. This study used principal component analysis and found that the outpatient reimbursement policy was developed based on the severity of patients’ diseases; thus, this policy can relieve patients’ financial burden to some extent and improve patients’ medication adherence. Our results are consistent with the findings of other studies.47 Meanwhile, these results would warn us whether patients with mild hypertension should be covered by the outpatient reimbursement policy or not; the feasibility could be explored in further studies. This study revealed that community management increased patients’ medication adherence. Shaik et al found that patients who were under poor community management were nonadherent to antihypertensive medication regimen.30 We also found that patients who do not have regular clinical and blood pressure checks and those who were not able to control their blood pressure were more likely nonadherent to their medication regimen. Thus, general practitioners should improve the standardized management and health education for patients with hypertension. In this study, around one-third of the hypertension patients with the comorbidity of diabetes were managed in the community due to hypertension and diabetes in 2009. The method used by general practitioners in managing patients with diabetes is the same as that used in patients with hypertension. One study conducted a survey on individuals with hypertension in Medicaid and reported that the comorbidities of diabetes were associated with decreased nonadherence to antihypertensive medications (OR=0.76, P<0.0001).27 We also found that patients with diabetes were adherent to their antihypertensive medications (OR=0.656, P<0.05). There maybe two reasons for this: if patients have both hypertension and diabetes, they will be dual managed by primary health-care providers in China, that is, these patients will recieve hypertension related community management and also diabetes related community management. The community management efforts for them are reinforced, potentially there will be improvements on medication adherence. To our surprise, in this literature, only 27.6% of the patients trusted their general practitioners, and 54.3% of them placed more trust in their specialists. In 2016, a community family physician model was put into force in China, which formed a service team composed of clinicians, general practitioners or village doctors, community nurses, and public health doctors. Patients with hypertension, patients with diabetes, elderly, and other target population were covered as a matter of priority. As the community family physician model was carried out, acceptance, trust, and compliance to primary health care institutions were improved in patients with hypertension living in Xinjiang, which is a good advantage for primary health care providers to manage and educate patients with hypertension.48 Another important finding was that patients who took traditional medications were considered nonadherent. This result was consistent with the findings of other studies.49–51 About 4.3% of the patients took traditional medications to control their blood pressure. Accordingly, 91.6% of the patients used Apocynum venetum. A. venetum is not included in the list of recommended antihypertensive medications. We found that some patients took A. venetum either as a tea or as a preparation to replace other antihypertensive medications. This made the patients’ medication regimen complicated as the A. venetum had potentially harmful effects. This may be one of the factors contributing to the poor medication adherence among patients with hypertension who take traditional medications. This study had several limitations. We could not perform the study to compare the adherence of patients with hypertension managed by community or not, because control group without community management was difficulty to be found in China. We could conduct further study to compare adherence of those with hypertension with short-time community management and those with long-time community management so as to explore the relationship between the adherence and community management through cohort study.

Conclusion

The data from this study showed that patients with less severity of diseases, those having poor community management, those without diabetes, and those who took traditional medications were nonadherent to their antihypertensive medication regimen. Community management plays an important role in improving the patients’ medication-taking behavior. Unlike the socioeconomic and disease determinants that can be difficult to change, regular provision of medication instructions and improved community management services at the community level can potentially reduce nonadherence. Managing patients with mild hypertension is the main focus of community health care providers to strengthen their standardized management and prevent the occurrence of complications and other adverse outcomes. Professional quality training of general practitioners should be strengthened to improve their patients’ trust. This study evaluated the factors affecting medication adherence among patients with hypertension living in Xinjiang, with some references to areas with poor health resources and underdeveloped economic conditions.
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Review 1.  Pharmacist interventions to enhance blood pressure control and adherence to antihypertensive therapy: Review and meta-analysis.

Authors:  Manuel P Morgado; Sandra R Morgado; Liliana C Mendes; Luísa J Pereira; Miguel Castelo-Branco
Journal:  Am J Health Syst Pharm       Date:  2011-02-01       Impact factor: 2.637

2.  Factors associated with medication adherence and persistence of treatment for hypertension in a Medicaid population.

Authors:  Scott A Baggarly; Robert J Kemp; Xiaojun Wang; A Dale Magoun
Journal:  Res Social Adm Pharm       Date:  2014-02-15

Review 3.  ACCF/AHA 2011 expert consensus document on hypertension in the elderly: a report of the American College of Cardiology Foundation Task Force on Clinical Expert Consensus Documents developed in collaboration with the American Academy of Neurology, American Geriatrics Society, American Society for Preventive Cardiology, American Society of Hypertension, American Society of Nephrology, Association of Black Cardiologists, and European Society of Hypertension.

Authors:  Wilbert S Aronow; Jerome L Fleg; Carl J Pepine; Nancy T Artinian; George Bakris; Alan S Brown; Keith C Ferdinand; Mary Ann Forciea; William H Frishman; Cheryl Jaigobin; John B Kostis; Giuseppi Mancia; Suzanne Oparil; Eduardo Ortiz; Efrain Reisin; Michael W Rich; Douglas D Schocken; Michael A Weber; Deborah J Wesley; Robert A Harrington; Eric R Bates; Deepak L Bhatt; Charles R Bridges; Mark J Eisenberg; Victor A Ferrari; John D Fisher; Timothy J Gardner; Federico Gentile; Michael F Gilson; Mark A Hlatky; Alice K Jacobs; Sanjay Kaul; David J Moliterno; Debabrata Mukherjee; Robert S Rosenson; James H Stein; Howard H Weitz; Deborah J Wesley
Journal:  J Am Soc Hypertens       Date:  2011 Jul-Aug

4.  Predictors of self-reported adherence to antihypertensive medicines: a multinational, cross-sectional survey.

Authors:  Valerie L Morrison; Emily A F Holmes; Sahdia Parveen; Catrin O Plumpton; Wendy Clyne; Sabina De Geest; Fabienne Dobbels; Bernard Vrijens; Przemyslaw Kardas; Dyfrig A Hughes
Journal:  Value Health       Date:  2015-03       Impact factor: 5.725

5.  Seventh report of the Joint National Committee on Prevention, Detection, Evaluation, and Treatment of High Blood Pressure.

Authors:  Aram V Chobanian; George L Bakris; Henry R Black; William C Cushman; Lee A Green; Joseph L Izzo; Daniel W Jones; Barry J Materson; Suzanne Oparil; Jackson T Wright; Edward J Roccella
Journal:  Hypertension       Date:  2003-12-01       Impact factor: 10.190

6.  The Burden of Hypertension and Associated Risk for Cardiovascular Mortality in China.

Authors:  Sarah Lewington; Ben Lacey; Robert Clarke; Yu Guo; Xiang Ling Kong; Ling Yang; Yiping Chen; Zheng Bian; Junshi Chen; Jinhuai Meng; Youping Xiong; Tianyou He; Zengchang Pang; Shuo Zhang; Rory Collins; Richard Peto; Liming Li; Zhengming Chen
Journal:  JAMA Intern Med       Date:  2016-04       Impact factor: 21.873

7.  Risk factors associated with antihypertensive medication nonadherence in a statewide Medicaid population.

Authors:  James E Bailey; Mohammed Hajjar; Bushra Shoib; Jun Tang; Mario M Ray; Jim Y Wan
Journal:  Am J Med Sci       Date:  2014-11       Impact factor: 2.378

Review 8.  Management of hypertension in the elderly population.

Authors:  Raymond V Oliva; George L Bakris
Journal:  J Gerontol A Biol Sci Med Sci       Date:  2012-08-22       Impact factor: 6.053

9.  Baseline medication adherence and blood pressure in a 24-month longitudinal hypertension study.

Authors:  Ryan Shaw; Hayden B Bosworth
Journal:  J Clin Nurs       Date:  2011-11-23       Impact factor: 3.036

Review 10.  The influence of health systems on hypertension awareness, treatment, and control: a systematic literature review.

Authors:  Will Maimaris; Jared Paty; Pablo Perel; Helena Legido-Quigley; Dina Balabanova; Robby Nieuwlaat; Martin McKee
Journal:  PLoS Med       Date:  2013-07-30       Impact factor: 11.069

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  6 in total

Review 1.  Prevalence of non-adherence to antihypertensive medication in Asia: a systematic review and meta-analysis.

Authors:  Sajid Mahmood; Zahraa Jalal; Muhammad Abdul Hadi; Tahir Mehmood Khan; M Sayeed Haque; Kifayat Ullah Shah
Journal:  Int J Clin Pharm       Date:  2021-01-29

2.  Perceived Illness and Treatment Adherence to Hypertension Among Patients Attending a Tertiary Hospital in Kathmandu, Nepal.

Authors:  Rajina Shakya; Sunil Shrestha; Roshani Gautam; Lalita Rai; Sabindra Maharjan; Gita Kumari Satyal; Bhuvan Kc; Mana Kumari Rai
Journal:  Patient Prefer Adherence       Date:  2020-11-20       Impact factor: 2.711

3.  Analysis of Adherence to Antihypertensive Drugs in Chinese Patients with Hypertension: A Retrospective Analysis Using the China Health Insurance Association Database.

Authors:  Bin Cui; Zhaohui Dong; Mengmeng Zhao; Shanshan Li; Hua Xiao; Zhitao Liu; Xiaowei Yan
Journal:  Patient Prefer Adherence       Date:  2020-07-17       Impact factor: 2.711

4.  Integrating factors associated with hypertensive patients' self-management using structural equation modeling: a cross-sectional study in Guangdong, China.

Authors:  Weiwei Ding; Tong Li; Qiying Su; Maohua Yuan; Aihua Lin
Journal:  Patient Prefer Adherence       Date:  2018-10-15       Impact factor: 2.711

5.  Utilisation of national community-based blood pressure monitoring service among adult Chinese and its association with hypertension treatment and blood pressure control-a mediation analysis.

Authors:  Hongxun Song; Donglan Zhang; Zhuo Chen; Ruoxi Wang; Shangfeng Tang; Ghose Bishwajit; Shanquan Chen; Da Feng; Tailai Wu; Yang Wang; Yanwei Su; Zhanchun Feng
Journal:  BMC Geriatr       Date:  2019-06-10       Impact factor: 3.921

6.  Decomposing the effect of drug benefit program on antihypertensive medication adherence among the elderly in urban China.

Authors:  Xiaochen Ma; Yuji Zhang; Mei Zhang; Xiaoju Li; Hongpo Yin; Ke Li; Mingxia Jing
Journal:  Patient Prefer Adherence       Date:  2019-07-11       Impact factor: 2.711

  6 in total

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