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Original Research

Mediating Effect Of The Motivation For Medication Use On Disease Management And Medication Adherence Among Community-Dwelling Patients With Schizophrenia

, , ORCID Icon, , & ORCID Icon
Pages 1877-1887 | Published online: 05 Nov 2019

Abstract

Background

Nearly half of patients with schizophrenia do not adhere to the long-term medical treatment needed to manage their disease. Programs to promote medication adherence include promotion of motivation as a critical element to influence task performance.

Purpose

This study investigated the mediating effect of motivation for medication use on disease management and medication adherence in schizophrenia.

Methods

This cross-sectional, descriptive correlational study enrolled a convenience sample of 373 community-dwelling patients with schizophrenia in the northern and central regions of Taiwan. Data were collected with questionnaires and a series of validated assessment tools. Hierarchical regression was used to analyze the mediating effect of motivation for medication use on disease management and medication adherence.

Results

The medication adherence rate of the patients was 47.2%. The mediating effect of motivation for medication use on therapeutic alliance and medication adherence was 50%, whereas that on insight and medication adherence was 41% and that on medical social support and medication adherence was 72%.

Conclusion

Developing a medication motivation care model may be more effective than promoting therapeutic alliance, insight, or medical social support for promoting medication adherence. It also had greater impact on preventing relapses of community-dwelling patients with schizophrenia.

Introduction

The worldwide prevalence of schizophrenia is 0.25–0.64%.Citation1 In Taiwan, it is 0.5% and has increased by 1.34–2.87% in the past five years.Citation2 Schizophrenia symptoms include delusions, hallucinations, and disorganized behavior and speech that can be stabilized by appropriate medical treatment.Citation3,Citation4 Deinstitutionalization and development of mental health services have resulted in an ongoing increase in the proportion of patients with schizophrenia living in the community, which is currently estimated at 75–95%. Medication adherence is essential for successful psychiatric rehabilitation or recovery; however, this adherence is generally <50% in schizophrenia and other psychotic disorders.Citation5 Medication adherence and maintaining stable condition is vital in Taiwan and other Asian countries as aging patients with mental disorders who live in the community are given daily care by family members.Citation2,Citation6

Medication adherence has been achieved in patient-centered therapeutic alliance models, wherein healthcare providers and patients discuss treatment with mutual acceptance of an agreement with treatment. Patients can then perform medication self-management and self-maintenance behaviors.Citation7,Citation8 A recent systematic review found that only 47% of patients with schizophrenia adhere to medication.Citation5 Non-adherence causes relapses and hospitalizations that have adverse effects on global function and quality of life.Citation8,Citation9 Recent studies have reported increased relapse rates with nonadherence in each of the first three years of treatment—from 79% in the first year to 94% in the second year. The recurrence rate was only 3% with continuing adherence to prescribed medications.Citation10,Citation11 Non-adherence also leads to decreased effectiveness of drug treatment, increased risk of violent behavior or suicide, decreased life satisfaction, and increased healthcare costs.Citation12,Citation13

An extensive review of the literature revealed that the following factors have impact on medication adherence: sex, age, marital status, education level, employment status, illness duration, number of hospitalizations, global function, symptoms, types of antipsychotic medication, drug formulation, daily dose, side effects, therapeutic alliance, insight, and medical and social support. Thus, they were included in the analysis.Citation5,Citation14Citation18 Among them, therapeutic alliance, insight, and medical social support have reliable predictive power for medication adherence,Citation2,Citation19 so healthcare professionals are addressing these factors by using disease management to improve medication adherence in patients with schizophrenia. However, 40% of the patients were unaware of their diseaseCitation20 and 21.5% had low social support,Citation21 indicating that disease management cannot be easily improved immediately by changing these disease management-related factors for improving medication adherence. Other valid factors such as motivation for medication use and new strategies for improving medication adherence should be explored.

Motivation is a goal-oriented idea and can trigger and affect behavior, and all activities or behaviors of individuals are caused by motivation.Citation22 Motivation has an essential influence on task performance. The theory of planned behavior (TPB) describes three preinfluence factors for motivation: attitude toward behavior, subjective norms, and perceived behavioral control. These internal and external factors affect motivation, which in turn affects the performanceCitation22 Based on TPB, the definition of motivation for medication use in this study is to perform medication adherence.

The motivation for medication use could be motivated by internal or external factors. For example, the patients had stated that “the medicine can’t stop, I know… This medicine can make me feel better. Because I can take normal life and let me keep away from the darkness.” “My mother has been taking care of me for more than 10 years. I want to continue taking medicine, don’t let my mother work hard.” “I am willing to continue taking medicine because my illness may be good, then I can find a work.” These reasons, including internal and external factors, can promote the patient’s motivation regarding medication use and improve medication adherence. Therefore, the motivation for medication use is a very important factor.Citation23,Citation24 related to medication adherence.

However, very little research exploring the impact of motivation for medication use on disease management factors and medication adherence is available; only one quantitative study that investigated the mediating effect of motivation for medication use in patients with schizophrenia, but it did not consider or control for the influence of multiple factors on adherence.Citation25

Objectives And Hypothesis

The objectives of the study were as follows: (i) determine variables significantly associated with medication adherence; (ii) after controlling significant medication adherence factors (patient-, condition-, and medication-related factors), exploring the mediating effect of the motivation for medication use on the relationships between disease management-related factors (e.g., therapeutic alliance, insight, and medical social support) and medication adherence. The main hypothesis was that motivation for medication use has a mediating effect on the relationship between disease management-related factors and medication adherence.

Methods

Design And Theoretical Framework

This cross-sectional study used correlation and regression analysis to describe the influence factors on medication adherence and investigated the mediating effect of motivation for medication use on the relationship between disease management-related factors and medication adherence. In this study, after controlling for patient-, condition-, and medication-related variables, the mediating effect of motivation for medication use on the relationship between disease management-related factors and medication adherence was estimated. The theoretical framework is shown in .

Figure 1 Theoretical framework of this study.

Figure 1 Theoretical framework of this study.

Setting And Participants

The study sample was conveniently selected from the outpatient departments, psychiatric day-care centers, and home care treatment populations of two psychiatric hospitals in northern and central Taiwan during 8 months from September 1, 2016, to April 30, 2017.

Patients with a primary diagnosis of schizophrenia following the DSM-5 criteria,Citation26 aged 20–64 years, receiving at least one type of antipsychotic medication, and willing to participate and to receive treatment at one of the study centers were eligible for inclusion. Patients with comorbid organic brain disease, substance abuse, neurocognitive disorders, or intellectual disability or residents at psychiatric long-term care institutions or nursing homes were excluded. A psychiatrist referred eligible patients after they were found mentally stable and competent to participate in this study. Data collection began after informed written consent was obtained.

Data Collection And Ethics Approval

The study was conducted following the ethical principles of the declaration of Helsinki. The owners of the assessment scales permitted to the use of their instruments. The institutional review boards of the Tsaotun Psychiatric Center, Ministry of Health and Welfare (IRB no. 105026) and Tri-Service General Hospital (TSGHIRB no. 1-105-05-124) approved the study.

The data collection locations for the participants of outpatient departments and psychiatric day care were in the independent, comfortable, and private scheduled rooms. The participants of home-care treatment were in their home for data collection. Interviewers of outpatient and day care did not involve the health care services of the subjects. Although interviewers of home care were their responsible home-care nurses, it is more able to reduce the resistance to collect data than strangers who do involved in the care services. The participants filled out the questionnaires by themselves, including basic data form, Glasgow Antipsychotic Side-effect Scale (GASS), WAI-s, MOS-SSS, University of Rhode Island Change Assessment (URICA), and Medication Adherence Rating Scale (MARS); then, the interviewers (home-care nurses or researchers) completed the assessor-rated questionnaires, including Global Assessment of Functioning (GAF), Brief Psychiatric Rating Scale (BPRS), and 9-item Schedule for assessment Insight in Psychosis (SIP). The total time taken for data collection was about 30 mins, and data were collected only once.

The interviewers (nine home-care nurses) had been trained to follow the research ethical principles, and strictly respected the rights of the research subjects to reduce the potential reporting biases. The assessor-rated questionnaires were used by nine nurses who were trained; they evaluated the same case and discussed inconsistencies. The intraclass correlation (ICC) was above 0.80 to reach the inter-rater reliability.

Participants gave written consent after they were informed of the purpose and procedures of the study, being assured of the confidentiality and anonymity of the study data. The participants were guaranteed the right to voluntary participation and withdrawal at any time without any effect on the treatment received. If the participants wanted to interrupt the research process, interviewers did not force them to finish, and their answers did not influence their care services in the further to protect their rights. The results were known only to the team members. The professional staff of outpatient and day-care departments were not informed about the results; however, the home staff collected the data, and thus, they were aware of the data. Statistical analyses were performed anonymously.

Measure Variables And Tool

Control Variables

The control variables, including patient sex, age, marital status, education level, employment status, illness duration, number of hospitalizations, global function, symptoms, type of antipsychotic, drug formulation, daily dose, and side effects were obtained from the patients’ self‐report and nurse-administered assessment questionnaires.

The assessor-rated questionnaires consisted of the following three measurement tools: the Global Assessment of Functioning (GAF), Brief Psychiatric Rating Scale (BPRS), and Glasgow Antipsychotic Side-effect Scale (GASS). The single-term GAF uses a 0–100 Likert scale to measure the overall psychosocial and employment function, with higher scores indicating better functioning.Citation27 The intraclass correlation coefficient of GAF was 0.89–0.95, showing good reliability. The validity of GAF was significantly correlated with the Scale for the Assessment of Negative Symptoms (SANS) and Scale for the Assessment of Positive Symptoms (SAPS) that had good reliability and validity.Citation28 The 16-item BPRS uses a 7-point Likert scale to measure the psychiatric symptoms and psychopathology, with higher scores indicating worse psychopathology, with good reliability and validity.Citation29 The 22-item GASS uses a 4-point Likert scale to measure the severity of the adverse effects of the antipsychotic medication, with higher scores indicating more frequent adverse events.Citation30 The Cronbach α of GASS was 0.79,Citation31 and the validity of GASS was significantly correlated with Liverpool University Neuroleptic Side Effect Rating Scale (LUNSERS)Citation30 that had good reliability and validity.Citation30,Citation31

Independent Variables And Mediators

The disease management-related factors, therapeutic alliance, insight, and medical social support were independent variables. The mediator variable was motivation for medication use. These variables were obtained from the patient self‐report and nurse-administered assessment questionnaires.

The 12-item Working Alliance Inventory-Short (WAI-S) uses a 7-point Likert scale to measure therapeutic alliance, with higher scores indicating better therapeutic alliance.Citation32 The Cronbach α of WAI-S was.90,Citation33 the total variance explained was 73.4%,Citation34 indicating good reliability and validity.Citation33,Citation34 The Medical Outcome Study Social Support Survey (MOS-SSS) uses a 5-point Likert scale to measure the medical social support, with higher scores indicating better support.Citation35 The Cronbach α of MOS-SSS was.97, the total variance explained was 72.7%, with good reliability and validity.Citation36 SIP uses a 5-point Likert scale, with higher scores indicating poor insight.Citation37 The Cronbach α of SIP was 0.92, and the criterion-related validity of SIP was significantly correlated with Scale to assess Unawareness of Mental Disorder, with good reliability and validity.Citation37

The 32-item URICA uses a 5-point Likert scale to measure motivation for medication use, with higher scores indicating better motivation.Citation38 The Cronbach α of URICA was 0.65–0.73, the total variance explained was 41.1%, indicating good reliability and validity.Citation38 For this study, all the Cronbach’s α of the questionnaires were confirmed >0.70 (GASS = 0.89; WAI-s = 0.92; MOS-SSS = 0.91; BPRS = 0.76; SIP = 0.89; URICA = 0.92) had good reliability.

Dependent Variables

The dependent variable of this study was medication adherence. Blood drug concentration and the number of calculated drugs are well-known objective measurement tools of medication adherence. Considering the high cost, time, and potential resistance of the participants toward these objective tools, a subjective measurement tool with good psychometric test was used in this study.

MARS is a valid and reliable new inventory for measuring medication adherence, consisting of ten questions developed by Thompson et al (2000). This scale ranges from 0 to 10 (as continuous variable, increased MARS scores indicated better adherence).Citation39 A principal-components analysis revealed the following three underlying factors: medication adherence behavior (accounted for 32% of the variance); subjects’ attitude to taking medication (accounted for 16% of the variance); and negative side effects and attitudes to psychotropic medication(accounted for 12% of the variance). These factors accounted for 59% of the total variance. Lithium levels and carer ratings of adherence were also recorded and used to verify compliance. The validity of MARS was significantly correlated with blood drug concentration (r = 0.60, p < 0.05).Citation39,Citation40 The Cronbach α of MARS was 0.72. We concluded that the tool had good reliability and validity with reasonable cost and time requirement. Therefore, this study did not use any other measurement tool or clinical information to repeatedly verify the patient’s medication adherence. For this study, Cronbach’s α of MARS had satisfaction reliability (MARS = 0.70).

Statistical Analysis

IBM SPSS version 21.0 (IBM Corp, Armonk, NY, USA) was used to calculate the reliability (Cronbach’s α) of each tool in this study to ensure the reliability of the research data. Then, we used SPSS software to describe frequency distributions, percentages, and means and standard deviations (SDs) of study variables to present participant characteristics, distribution of each variable.

For descriptive statistics, the MARS scores were calculated as binary variables. In inferential statistics (correlation and mediation analysis), MARS was a continuous variable; t-test and one-way analysis of variance were used to compare differences of categorical variables and medication adherence. Pearson’s correlation coefficient was used to describe the association between continuous variables and medication adherence to determine significant factors associated with medication adherence.

For exploring the mediating effect of the motivation for medication use, we controlled the significant factors associated with the medication adherence before using the causal steps in hierarchical regression to examine the mediating effect.Citation41 This study had confirmed the assumptions of regression, including residual normal distribution, homoscedasticity, independence, and multicollinearity.

The causal steps hierarchical regression requires three established paths (path a, path b, path c). In path a, independent variables had a significant effect on the mediating variable. In path b, when both the independent and mediating variable were added, mediating variable had a significant effect on dependence variable. In path c, the independent variables had a significant effect on the dependence variable. If the path c’ regression correlation coefficient (when both independent and mediating variable were added, the independent variable affects the dependent variable) is not significant, it is termed full mediation. If the path c’ regression correlation coefficient is significant, then it is called partial mediation.Citation42 Indirect effects might be missed if only the causal steps method is used.Citation43,Citation44 Therefore, the significance of indirect effects (Z > 1.96) was calculated as described by Sobel.Citation45

Results

Participant Characteristics And Medication Adherence

The response rate was 95.4%, with 373 of the 391 participants included in the analysis after exclusion of eight participants with incomplete questionnaires. The majority of participants (58.2%) were men; fewer than half had completed high school (44.5%); the average age was 46.61 years (SD = 9.1, range: 20–64); and more than two-thirds were single (70.8%) and unemployed (76.4%).When treated as a continuous variable, the average MARS score was 6.04 (SD = 2.43, range: 0–10).

To clearly show the status of medication adherence, the MARS score was divided into adherence and nonadherence.Citation46 The medication adherence rate was 47.2%, with 176 participants having scores >6. Participants receiving outpatient care had the highest adherence rate (62%); those receiving day care had an adherence rate of 56%, and those receiving home care had an adherence rate of 41%.

Factors Associated With Medication Adherence

For inferential statistics, the medication adherence was calculated as a continuous variable. Medication adherence (MARS total score) was significantly correlated with the number of hospitalizations (r = −0.19, p <0.001); global function (r = 0.17, p = 0.001); symptoms (r = −0.18, p =0.001), and side effect (r = −0.12, p =0.017), but the relationship was very weak.Citation47 Therapeutic alliance (r =0.39, p =0.001), medical social support (r =0.25, p =0.001), insight (r = −0.31, p =0.001) were weakly correlated with medication adherence. Motivation for medication use (r =0.43, p =0.001) was moderate correlated with medication adherence.Citation47

Sex, age, marital status, education level, employment status, duration of illness, type of antipsychotic medication, drug formulation, and daily dose frequency were not significantly associated with medication adherence (p >0.05). The relationships between various factors and medication adherence are shown in .

Table 1 Distribution Of Various Factors And Relationships With Medication Adherence

Mediating Effects

Hierarchical regression assumes a residual normal distribution, homoscedasticity, and independence (Durbin–Watson test = 1.94–2.00) but not multicollinearity (variance inflation factor = 1.10–3.12; <10). The four paths of Baron and KennyCitation41 illustrate the mediation effects of the motivation for medication use on disease management (therapeutic alliance, insight, and medical social support) and medication adherence. The four paths of the mediation model are shown in . The mediating effects of the total, direct, and indirect influencers are shown in .

Figure 2 Mediating effects of motivation for medication use on disease management related factors and medication adherence.

Figure 2 Mediating effects of motivation for medication use on disease management related factors and medication adherence.

Table 2 Summary Of The Mediating Effects Of Motivation For Medication Use On Disease Management Related Factors And Medication Adherence

Motivation On Therapeutic Alliance And Medication Adherence

Path a (β =0.642, p < 0.001), path b (β = 0.270, p < 0.001), path c (β = 0.345, p < 0.001), and path c’ (β = 0.172, p = 0.007) also had a significant effect. The Sobel test for indirect effects of mediation was significant (Z = 4.21, p < 0.001). Therefore, the motivation for medication use had a partial mediating effect on therapeutic alliance and medication adherence. The direct effect of therapeutic alliance on medication adherence was 0.172, and the indirect effect through motivation for medication use was 0.173, the mediating effect was 50%.

Motivation On Insight And Medication Adherence

Path a (β = −0.339, p <0.001), path b (β = 0.335, p < 0.001), path c (β = −0.278, p < 0.001), and path c’ (β = −0.164, p = 0.004) also had a significant effect. The Sobel test for indirect effects of mediation was significant (Z = −4.43, p < 0.001). Therefore, the motivation for medication use had a partial mediating effect on insight and medication adherence. The direct effect of insight on medication adherence was −0.164, and the indirect effect through motivation for medication use was −0.114; the mediating effect was 41%.

Motivation On Medical Social Support And Medication Adherence

Path a (β = 0.407, p < 0.001), path b (β = 0.356, p < 0.001), path c (β = 0.201, p < 0.001) had a significant effect. The Sobel test for indirect effects of mediation was significant (Z = 5.24, p < 0.001). But, path c’ was not significant (β = 0.056, p = 0.289). Therefore, the motivation for medication use had a full mediating effect on medical social support and medication adherence. The direct effect of medical social support on medication adherence was 0.056, and the indirect effect by motivation for medication use was 0.145; the mediating effect was 72%.

Discussion

Using the scoring system described by Abrar et al,Citation46 medication adherence was 42% in community-dwelling patients with schizophrenia, indicating that more than half of the study participants were nonadherent. Medication adherence rate was the highest in outpatient care patients and the lowest in those with home care. Medication adherence was associated with functional status and cognitive level.Citation2,Citation48

After controlling for patient characteristics, illness condition, and medication prescription and dosage, motivation for medication use was a mediator of the contribution or influence of disease management to medication adherence. This result is consistent with TPB and research described by Rungruangsiripan et alCitation25 and supports motivation for medication use as a critical mediator of medication adherence. The transtheoretical model describes change as a progression through a series of stages depending on the motivation to change, and which cannot achieve the goal in a short period.Citation49

The factors related to the mediating effects of the motivation for medication use on disease management and medication adherence in community-dwelling patients with schizophrenia are not well understood. Recent studies have investigated motivation-related factors in diabetes,Citation50,Citation51 epilepsy,Citation52 and hypertension,Citation53 these studies also supported the motivation for medication use is an essential mediator to medication adherence. Rungruangsiripan et alCitation25 reported that a low level of motivation affected medication adherence and mental health professionals in Taiwan and other developed countries had described disease management strategies and interventions that promote medication adherence.Citation54,Citation55 This study found that the influence of therapeutic alliance, insight, and medical social support on patient medication adherence was relatively smaller than that of the motivation for medication use. Mental health professionals may not fully appreciate the effect of enhancing patient motivation for medication use has on medication adherence. Published data on the mediating effects of motivation for medication use on medication adherence in patients with schizophrenia in Taiwan and other countries was inadequate.Citation56Citation60

The study results indicate that interventions to promote medication adherence, such as motivational interviews,Citation56,Citation60 may confer more significant benefits on increased medication adherence in schizophrenia, than other psychosocial interventions emphasizing therapeutic relationships, increasing insight, or providing medical social support. Motivation-based programs can help a majority of community-dwelling patients with schizophrenia who are not adherent to their antipsychotic regimen to control their psychotic symptoms, thus reducing relapse occurrence and the medical burden in society.

Strengths And Limitations

This may be the first study to focusing on the mediating effect of motivation for medication use as a link between disease management related factors and medication adherence in schizophrenia after controlling for multiple dimensions. The study included a large patient sample, and the findings can be generalized to the Taiwan general population.

The main variable in this study was only measured by MARS. Although MARS is subjective measurement tools and may be overestimate medication adherence, it had economically efficient, noninvasive procedure, suitable for clinical care, significantly related to objective blood drug concentration,Citation39,Citation61 and the meta-analysis indicated self-filling scale was a good estimation tool for medication adherence.Citation62 Therefore, we chose MARS as the measurement tool. This study was a cross-sectional, descriptive design lacking causal inference. A longitudinal study would be able to evaluate the causal relationships of variables. The explained variance of the URICA inventory is less than half, but it is a better analytical tool than the current one. We recommend developing more condition-specific motivation scales. We included as many variables that affect medication adherence as possible but may not have included all that was active. Future investigations of the relationships of medication adherence and motivation might include additional variables. It is also essential to develop motivational interviewing for community-dwelling patients with mental disorders and then use carefully designed randomized controlled trials to investigate the effectiveness of motivational interviewing on improving disease management and medication adherence.

Conclusion

Nearly half of the patients with schizophrenia were nonadherent to medication. The number of hospitalizations, symptoms, medication side effects, global function, therapeutic alliance, insight, medical social support, and motivation for medication use was associated with medication adherence. Disease management-related factors (therapeutic alliance, insight, and medical social support) significantly influenced medication adherence. If disease management factors are difficult to change, then the motivation for medication use is an essential mediator of medication adherence.

Implications For Practice

The findings support the casual relationship of motivation for medication use as a mediator of the disease management strategies used in mental healthcare services and the achieved level of medication adherence. Motivational interventions can enhance the effectiveness of current schizophrenia management practiced in community-based rehabilitation, involving therapeutic alliance, inducing insight, and medical social support. The study results can inform the design and evaluation of motivation-based adherence therapy to promote or enhance medication adherence in community-dwelling psychosis patients with poor medication adherence to reduce relapse and readmission.

Acknowledgments

The authors are grateful to the psychiatric center to contribute to the research and also the Taiwanese psychiatric nurses for their assistance in the recruitment of participants and data collection. The Ministry of Health and Welfare provided the funding required for this project (Grant No. 10647). The views and opinions expressed in this manuscript are the authors’ own.

Disclosure

The authors report no conflicts of interest in this work.

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