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Relationship between national mental health expenditure and quality of care in longer-term psychiatric and social care facilities in Europe: cross-sectional study

Published online by Cambridge University Press:  02 January 2018

Tatiana Taylor Salisbury*
Affiliation:
Health Service and Population Research Department, Institute of Psychiatry, Psychology and Neuroscience, King's College London, and Department of Population Health, London School of Hygiene and Tropical Medicine, London
Helen Killaspy
Affiliation:
Division of Psychiatry, University College London, London, UK
Michael King
Affiliation:
Division of Psychiatry, University College London, London, UK
*
Tatiana Taylor Salisbury, Health Service and Population Research Department, Institute of Psychiatry, Psychology and Neuroscience, King's College London, De Crespigny Park, London SE5 8AF, UK. Email: [email protected]
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Abstract

Background

It is not known whether increased mental health expenditure is associated with better outcomes.

Aims

To estimate the association between national mental health expenditure and (a) quality of longer-term mental healthcare, (b) service users' ratings of that care in eight European countries.

Method

National mental health expenditure (per cent of health budget spent on mental health) was calculated from international sources. Multilevel models were developed to assess associations with quality of care and service user experiences of care using ratings of 171 facility managers and 1429 service users.

Results

Significant positive associations were found between mental health spend and (a) six of seven quality of care domains; and (b) service user autonomy and experiences of care.

Conclusions

Greater national mental health expenditure was associated with higher quality of care and better service user experience.

Type
Papers
Copyright
Copyright © The Royal College of Psychiatrists 2017 

In its report entitled Mental Health: New Understanding, New Hope, the World Health Organization (WHO) highlights the need to prioritise mental health and the need to increase expenditure on promotion, prevention and treatment. 1 More recently, mental health has been included in the Sustainable Development Goals as one of the key health priorities. 2 Previous research examining the mental health facility expenditure and the quality of care they provide suggest a positive association. Reference Knapp, Hallam, Beecham and Baines3 However, it is unclear whether or not greater mental health expenditure at the national level trickles down to better outcomes. The development of the Quality Indicator for Rehabilitative Care (QuIRC), the first internationally standardised tool to assess the quality of care provided in longer-term mental health facilities, Reference Killaspy, King, Wright, White, McCrone and Kallert4 has made it possible to estimate the relationship between national mental health expenditure and quality of care for individuals with longer-term, severe and complex mental health problems. Although a relatively small group, these individuals absorb a high proportion of national mental health budgets because of their need for high levels of support and are, therefore, an ideal population in which to examine this relationship. 5 Using data collected during the development of the QuIRC, we investigated the association between national mental health expenditure and (a) the quality of care provided in longer-term psychiatric and social care facilities, and (b) service user ratings of the care received, the therapeutic milieu of the facility and their individual autonomy.

Method

Participants and procedures

Hospital and community-based residential facilities for people with longer-term mental health problems were purposively sampled in ten European countries as part of the DEMoBinc project. Facilities providing care exclusively to a specific subgroup of service users (for example older people, individuals with intellectual disabilities, patients in forensic settings) were excluded. Facility managers and a random sample of 5–13 service users in each facility participated in face-to-face interviews with a DEMoBinc researcher after providing informed consent to take part in the study. Service users were excluded only if they were not available at the time the researcher was recruiting participants, lacked mental capacity to provide informed consent or were unable to complete the interview. A detailed description of the sampling process is provided by Killaspy and colleagues. Reference Killaspy, King, Wright, White, McCrone and Kallert4 The DEMoBinc project was approved by the relevant ethics committee in each country (see online supplement DS1 for details)

Facility manager ratings of quality of care

The QuIRC was developed through (a) the synthesis of a systematic review of the evidence for high-quality care, Reference Taylor, Killaspy, Wright, Turton, White and Kallert6 results from Delphi exercises with service users, carers, advocates and mental health professionals on what helps assist recovery Reference Turton, Wright, Killaspy, King, White and Taylor7 and national care standards from each of the ten participating countries; and (b) piloting among 213 longer-term psychiatric and social care facilities across ten European countries (Bulgaria, Czech Republic, Germany, Greece, Italy, the Netherlands, Poland, Portugal, Spain and the UK), which took place in 2009. Reference Killaspy, White, Wright, Taylor, Turton and Kallert8 The QuIRC was validated using service user ratings of care to ensure manager's responses accurately reflected the care provided within the facility.

The instrument is completed by the facility manager and includes 145 items, 86 of which yield percentage scores for the quality of care provided in seven domains: living environment; therapeutic environment; treatments and interventions; self-management and autonomy; social interface; human rights; and recovery-based practice (Table DS1). Higher scores indicate better quality care. The instrument was found to have high internal consistency (Cronbach's α = 0.89) and good interrater reliability (average intraclass correlation coefficient (ICC) = 0.95). Reference Killaspy, White, Wright, Taylor, Turton and Kallert8

Service user ratings of care

Service users completed standardised assessments of quality of life (Manchester Short Assessment of Quality of Life), Reference Priebe, Huxley, Knight and Evans9 autonomy (Resident Choice Scale), Reference Hatton, Emerson, Roberts, Gergory, Kessissoglou and Walsh10 experiences of care (Your Treatment and Care) Reference Webb, Clifford, Fowler, Morgan and Hanson11 and the therapeutic milieu of the facility (Good Milieu Index) Reference R⊘ssberg and Friis12 (Table DS1) in 2009. For all measures, higher scores indicate a more positive experience of care or outcome. Demographic information, including age, gender, diagnosis and date of admission, was sought from the service user and corroborated using case notes.

Mental health expenditure

National mental health expenditure was estimated as the percentage of the health budget spent on mental health in each country and was used in all analyses. No single source reported expenditure data for all included countries; therefore, estimates were collected from the WHO Mental Health Atlas 2005 (reporting data from 2004) 13 and data from the Mental Health Economics European Network (MHEEN) Reference Medeiros, McDaid and Knapp14 that were based on best available information such as government reports and journal articles. The data include all direct health costs associated with mental health problems such as service utilisation and medication. As Spanish data were reported by region, the average percentage of the health budget spent on mental health across all regions was used as the national statistic. Expenditure information was not available for Greece, therefore, its data were excluded from analyses in this study.

Confounding variables

Potential confounding variables at both facility and country levels were included a priori, based on the findings of studies previously conducted among this service user group and longer-term mental health treatment settings, Reference Taylor, Killaspy, Wright, Turton, White and Kallert6 professional opinion and availability of data. Data on facility type (hospital or community), the full-time equivalent (FTE) staff/service user ratio (below or above sample mean) and presence of a maximum length of stay within the facility (yes or no) were collected during the development of the QuIRC. All three variables indicate the goals and expectations of mental healthcare. Country-level variables were limited to publicly available data. Data on stigma perceived by service users with schizophrenia in each country were obtained from Thornicroft and colleagues' paper on the development of the Discrimination and Stigma Scale (DISC). Reference Thornicroft, Brohan, Rose, Sartorius and Leese15 Data were reported for all included countries except the Czech Republic and consequently, Czech data were excluded from the analyses. The year mental health policies were introduced in each country was obtained from the WHO Mental Health Atlas 2005 country reports to calculate the number of years to 2011 since their introduction.

Data analysis

Multilevel modelling was used to analyse the data to allow for effects of data clustering at the service user, facility and country levels. For each dependent variable (QuIRC domain ratings and service user rated outcomes), four models incorporating confounding variables at the relevant service user, facility and country levels were developed to examine its association with national mental health expenditure (the independent variable). A model of best fit was selected for each dependent variable using the corrected Akaike Information Criterion (AICc). Reference Akaike16 The AIC value represents the difference between the approximated true model and the model that has been developed. The greater the difference between these models, the worse the fit. The AICc was developed to account for small sample sizes. An AICc value was calculated for each of the four models. The model with the lowest value was deemed the best fitting model for the dependent variable. All models were checked to ensure assumptions of normality and homoscedasticity were not violated. Data were analysed using Stata release 12.

Association between quality of care and mental health expenditure

Four, two-level models were developed to examine the association between quality of care and mental health expenditure, which considered confounding variables at the country and facility levels (online Fig. DS1). In model A, each QuIRC domain was modelled separately as a dependent, facility-level (level 1) variable. National mental health expenditure was entered as an independent, country-level (level 2) variable. In model B, the independent variables facility type and FTE staff/service user ratio were added to model A as facility-level fixed effects. In model C, the degree of national stigma and the number of years since the introduction of mental health policies were added as country-level fixed effects, independent variables to model A. In model D, all facility and country independent variables were added to model A as fixed effects. Variables were added as fixed effects because of the small number of countries (highest level groups) included in the models and the non-random selection of countries and facilities.

Association between service user ratings of care and mental health expenditure

The association between service user ratings of care was examined in four, three-level models which considered potential confounding variables at the country and facility levels (online Fig. DS2). In model E, each service user rating was modelled separately as a dependent variable at the service user level (level 1). Mental health expenditure was entered into the same model as the independent variable with fixed effect at the country level (level 3). In model F, the independent variables facility type and staff/service user ratio were added as facility-level (level 2) fixed effects. In model G, the degree of national stigma and the number of years since the introduction of mental health policies were added to model E as level 3 independent, fixed-effect variables. In model H, both facility and country independent variables were added to model E as fixed effects.

Results

Managers of 171 longer-term psychiatric and social care facilities and 1429 users of these services from across eight countries involved in developing the QuIRC were interviewed (online Fig. DS3). The majority of facilities were located in the community (67.2%) and had a mean of 26 (s.d. = 21) beds. A total of 133 (77.8%) facilities had no stated maximum length of stay. The mean length of stay was 4.5 years. The average service user was a man (63.4%) and 45 years of age. Schizophrenia/other psychosis was the most common diagnosis (71.6%). National variations in mean QuIRC domain scores and service user ratings of care are presented in Table 1.

Table 1 Included country characteristics a

Country
Sample Portugal Bulgaria Poland Italy Spain Netherlands UK Germany
Health budget spent
on mental health, %
5.79 2.30 2.50 3.50 b 5.00 b 5.89 b 7.00 10.00 10.14 b
Per capita mental health
expenditure, Int$
117.42 37.21 7.58 22.02 c 110.20 c 94.65 c 182.84 198.90 285.95 c
QuIRC domain score,
mean (s.d.)
    Living environment 60.92 (16.04) 59.18 (15.64) 54.10 (18.06) 49.02 (12.87) 64.75 (9.57) 46.48 (16.81) 70.14 (13.95) 67.05 (10.75) 73.81 (7.92)
    Therapeutic
    environment
52.15 (9.73) 47.82 (10.55) 45.56 (12.17) 47.47 (8.58) 52.60 (6.83) 55.72 (8.04) 51.58 (4.86) 64.52 (6.03) 51.78 (7.22)
    Self-management
    and autonomy
55.68 (15.80) 49.63 (16.47) 44.95 (19.19) 44.06 (9.61) 53.18 (9.11) 46.86 (10.28) 65.98 (9.83) 68.69 (11.03) 71.85 (8.28)
    Social interface 48.59 (15.28) 51.96 (19.33) 45.76 (17.68) 40.09 (14.04) 49.98 (11.85) 59.55 (16.38) 47.01 (33.38) 53.95 (12.74) 40.32 (11.52)
    Treatments and
    interventions
51.17 (9.35) 46.49 (10.13) 48.48 (11.37) 46.24 (7.72) 50.55 (6.69) 53.97 (9.55) 52.74 (7.06) 59.50 (8.03) 51.57 (8.46)
    Human rights 57.36 (13.12) 48.70 (11.85) 52.36 (14.39) 52.97 (10.41) 48.11 (9.60) 53.73 (9.10) 70.78 (6.44) 69.7 (9.19) 65.74 (5.71)
    Recovery-based
    practice
52.29 (12.81) 44.16 (13.41) 45.48 (15.94) 46.08 (10.26) 48.43 (8.12) 55.42 (8.80) 51.71 (8.65) 65.92 (9.67) 62.39 (8.77)
Service user rating
scores, mean (s.d.)
    Quality of life 4.61 (0.89) 4.63 (0.87) 4.19 (0.89) 4.60 (0.85) 4.61 (0.75) 4.63 (0.94) 4.79 (0.89) 4.52 (0.86) 4.88 (0.89)
    Autonomy 59.42 (12.21) 52.41 (11.90) 47.93 (9.72) 51.28 (7.46) 65.30 (7.17) 55.59 (10.92) 72.65 (7.45) 67.13 (8.29) 64.54 (7.54)
    Experiences of care 17.47 (4.89) 15.71 (4.79) 16.12 (4.61) 17.18 (5.17) 18.56 (4.53) 16.58 (4.84) 18.96 (4.60) 18.90 (5.36) 18.08 (4.14)
    Therapeutic milieu 17.36 (4.20) 17.39 (4.31) 17.05 (4.04) 18.01 (4.08) 18.01 (4.11) 16.83 (4.36) 17.34 (4.06) 16.91 (4.40) 17.38 (4.13)

Int$, international dollar (hypothetical currency that reflects each country's purchasing power relative to the US dollar); QuIRC, Quality Indicator for Rehabilitative Care.

a. Data from Mental Health Atlas 2005 by World Health Organization (2005) except where denoted. 13

b. Data from Medeiros et al (2008). Reference Medeiros, McDaid and Knapp14

c. Statistic calculated using information from WHO 13 and Medeiros et al (2008). Reference Medeiros, McDaid and Knapp14

Increased national mental health expenditure was found to be significantly associated with all QuIRC domain scores except social interface (Table 2). Positive significant associations were also found between expenditure and service user ratings of autonomy, quality of life and experiences of care. Mental health expenditure and service user rated therapeutic milieu were not significantly correlated.

Table 2 Correlation between mental health expenditure and quality and service user ratings of care

Pearson correlation, r
Percentage
mental health
expenditure
Per capita
mental health
expenditure
Living environment 0.38*** 0.17*
Therapeutic environment 0.41*** 0.18**
Self-management and autonomy 0.60*** 0.30***
Social interface 0.00 −0.03
Treatments and interventions 0.34*** 0.13
Human rights 0.55*** 0.30***
Recovery-based practice 0.56*** 0.32***
Autonomy 0.51*** 0.55***
Quality of life 0.12*** 0.15***
Experiences of care 0.18*** 0.18***
Therapeutic milieu −0.03 −0.02

* P < 0.05;

** P ⩽ 0.01;

*** P ⩽ 0.001.

In models of best fit, increased national mental health expenditure was associated with higher QuIRC domain scores for living environment (model D, coefficient 1.85, t = 3.26, P ⩽ 0.001, Table 3 and online Tables DS2–8), therapeutic environment (model B, coefficient 1.46, t = 3.16, P ⩽ 0.01), treatments and interventions (model B; coefficient 1.12, t = 3.51, P ⩽ 0.001), self-management and autonomy (model D; coefficient 3.17, t = 6.18, P ⩽ 0.001), human rights (model D, coefficient 2.85, t = 3.38, P ⩽ 0.001), and recovery-based practice (model B, coefficient 2.40, t = 7.44, P ⩽ 0.001). A 1% increase in the percentage of the health budget spent on mental health was associated with an increase in domain scores ranging from 1.12–3.17%. However, no statistically significant association was found between expenditure and the social interface domain.

Table 3 Main effects of mental health expenditure on quality of care

Living
environment,
model D
Therapeutic
environment,
model B
Self-management
and autonomy,
model D
Social
interface,
model B
Treatments and
interventions,
model B
Human
rights,
model D
Recovery-based
practice,
model B
Intercept, mean (s.e.) −2.12 (13.15) 45.11*** (2.94) −0.74 (11.90) 50.68*** (5.13) 45.64*** (2.00) 36.95 (19.47) 37.70*** (2.02)
Fixed-effects parameter
estimate (s.e.)
Percentage mental health
expenditure
1.85*** (0.57) 1.46** (0.46) 3.17*** (0.51) 0.09 (0.81) 1.12*** (0.32) 2.85*** (0.84) 2.40*** (0.32)
Unit type
    Hospital Reference Reference Reference Reference Reference Reference Reference
    Community 12.79*** (2.12) −3.67* (1.50) 4.42* (2.16) −5.89* (2.63) −2.54 (1.56) 0.59 (1.85) −0.17 (1.88)
Staff/service user ratio
    <0.52 Reference Reference Reference Reference Reference Reference Reference
    ⩾0.52 −1.72 (2.75) 3.06 (1.81) 1.20 (2.66) 3.83 (3.17) 2.42 (1.71) 3.01 (2.38) 2.73 (1.93)
Mental health legislation a 0.16 (0.22) 0.15 (0.19) −0.30 (0.33)
Stigma 8.38*** (2.20) 6.50** (1.99) 1.65 (3.27)
Random parameters
variance (s.e.)
Level 1 (country) 5.68 (9.39) 10.05 (7.85) 3.23 (7.26) 30.55 (23.99) 2.14 (3.44) 28.35 (23.20) 0.00 (0.00)
Level 2 (facility) 148.21 (16.52) 65.43 (7.29) 142.84 (15.90) 199.88 (22.28) 73.86 (8.22) 97.60 (10.87) 113.29 (12.40)

a. Years since introduction of legislation.

* P < 0.05;

** P ⩽ 0.01;

*** P ⩽ 0.001.

Among service user ratings of care, national mental health expenditure was positively associated with autonomy (model H, coefficient 2.27, t = 2.48, P = 0.01; see Table 4 and DS9–12) and experiences of care (model E, coefficient 0.29, t = 2.62, P = 0.01). However, expenditure was not found to be statistically significantly associated with quality of life or therapeutic milieu. All models of best fit met the assumptions of normality. All models except autonomy were found to have uniform variance of error terms (i.e. homoscedasticity). In order to reduce bias in standard errors, and, as a result, the validity of the models' confidence intervals, three service-user-level outliers were removed.

Table 4 Main effects of mental health expenditure on service user ratings of care

Autonomy,
model H
Quality of life,
model E
Experiences of care,
model E
Therapeutic milieu,
model F
Intercept, mean (s.e.) 30.72 (21.03) 4.40*** (0.15) 15.88*** (0.71) 17.42*** (3.52)
Fixed-effects parameter estimate (s.e.)
Percentage mental health expenditure 2.27** (0.92) 0.04 (0.02) 0.29** (0.11) −0.08 (0.06)
Unit type
    Hospital Reference Reference Reference Reference
    Community 3.01* (1.16) 0.74* (0.32)
Staff/service user ratio
    <0.52 Reference Reference Reference Reference
    ⩾0.52 0.71 (1.53) −0.15 (0.33)
Mental health legislation a −0.11 (0.36)
Stigma 3.23 (3.54)
Random parameters variance (s.e.)
Level 1 (country) 38.67 (28.60) 0.03 (0.02) 0.54 (0.45) 0.02 (0.10)
Level 2 (facility) 31.24 (4.24) 0.05 (0.02) 2.70 (0.59) 1.28 (0.37)
Level 3 (service user) 51.34 (2.05) 0.71 (0.03) 20.07 (0.80) 16.28 (0.65)

a. Years since introduction of legislation.

* P < 0.05;

** P ⩽ 0.01;

*** P ⩽ 0.001.

Discussion

Expenditure on mental health services, although varied, is largely limited throughout Europe. Previous research found better service user outcomes were associated with greater residential facility expenditure in England, Germany and Italy. Reference Knapp, Beecham, McDaid, Matosevic and Smith17 However, evidence of the impact of mental health expenditure at the national level did not exist. This study aimed to address this gap in knowledge. We investigated the relationship between expenditure and quality of care in a large sample of service users who are the most severely affected and resource dependent seen by mental health services. We found greater national expenditure on mental health services was associated with better quality care, greater service user autonomy and more positive service user experiences of care.

Mental health expenditure was not found to be significantly associated with social interface. The social interface domain of the QuIRC includes questions related to service user participation in activities within the facility and the wider community, staff encouragement and support of service users to engage in activities and the strength of social networks. Facility type was found to have the greatest influence on this domain with service users in hospital settings having higher levels of interaction. This finding seems counter-intuitive given one of the arguments for deinstitutionalisation was increased social integration. However, questions associated with the social interface domain may be more accurately answered by managers of hospital-based facilities who may be better able to monitor service user activities and relationships outside the facility because of the heightened restrictions often placed on service users as compared with those in community settings.

Expenditure was not significantly associated with service user ratings of quality of life or therapeutic milieu. Our inability to find an association between expenditure and service user ratings of quality of life corroborate those of the European Psychiatric Services – Inputs Linked to Outcome Domains and Needs (EPSILON) study that found no association between the cost of psychiatric care and service user life satisfaction in five European countries. Reference Knapp, Chisholm, Leese, Amaddeo, Tansella and Schene18 Community-based facilities were significantly associated with higher ratings of therapeutic milieu. Therefore, the amount of money available for care may be less important to this variable than the place where the service user is located.

Limitations

Mental health expenditure may not have been reported uniformly across the countries included in this study. Expenditure was defined as the proportion of the health budget spent on mental health. However, these figures do not accurately reflect the level of expenditure on mental health in any country as funds often come from several sources including government organisations (for example local authorities, ministries), private insurance and out-of-pocket payments. The types of costs that are included in the health budget also differ by country. For example, some social care costs are included in the mental health budget in the UK, whereas psychotropic medication is subsidised by the Spanish social security system.

Missing expenditure and stigma data resulted in the exclusion of Greek and Czech data, respectively, from this study. The exclusion of Czech data was made as we felt it important to explore stigma associated with mental health problems as a potential confounding variable because of its potential to act as a barrier to appropriate mental health funding. Reference Sartorius19 However, as the exclusion of these data accounts for 20 and 29% of the country and service user sampling frame, respectively, it is important to understand the impact this exclusion has had on the validity of our findings. As a result, we re-ran our models without the stigma variable and an estimate of Greek mental health expenditure of 4.43% of the health budget as reported in the 2011 version of the Mental Health Atlas. 21 Although the models of best fit were different for the majority of outcome variables, there were only minor reductions in expenditure coefficient values and no changes in direction or significance levels. We therefore assume that the exclusion of these data did not have a substantial impact on our findings.

Analyses were constrained to facility and service user variables collected as part of the DEMoBinc project and country variables reported in the literature but reflect characteristics relevant to quality and service user ratings of care. The cross-sectional nature of the data made it impossible to investigate potential causal relationships. However, even given comprehensive longitudinal data on service user outcomes, causation may still be difficult to demonstrate given other uncontrolled influences and the possibility that changes in expenditure may not be large enough to have an impact. Despite these limitations, we believe the data from those countries included in this study to be representative of Europe in terms of variations in national wealth and systems of mental healthcare provision. Furthermore, the data are likely to represent the most comprehensive information on quality of longer-term mental healthcare facilities currently available internationally.

Implications

WHO forecasts predict the burden associated with mental disorders will rise to the second greatest contributor to the global burden of disease, over the next 20 years. 21 This prediction highlights the need to prioritise and improve the provision of mental healthcare. The results of our study suggest that national mental health expenditure is significantly associated with the quality and service user ratings of mental healthcare. Improved mental well-being not only leads to benefits for service users and their families but has related economic and health benefits for a nation including increased productivity Reference Wells, Sherbourne, Schoenbaum, Duan, Meredith and Unützer22,Reference Rollman, Belnap, Mazumdar, Houck, Zhu and Gardner23 and reduced mental and physical healthcare costs. Reference Chiles, Lambert and Hatch24 Future work in this area should attempt to include a wider array of country, facility and service user variables, as they become available, in order to build more robust models in which the effects of national mental health expenditure might be better understood and service users' outcomes and experiences improved.

Funding

This work stems from a study funded by the Sixth Framework of the European Commission. The funder had no input in data collection, analysis or manuscript preparation.

Acknowledgements

DEMoBinc was funded by the Sixth Framework of the European Commission and the authors gratefully acknowledge this support. We also acknowledge the role of the Maristán Network (http://redmaristan.org/), which facilitated the collaboration of a number of member countries in this study and DEMoBinc partners in collecting facility and service user data.

Footnotes

Declaration of interest

None.

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Figure 0

Table 1 Included country characteristicsa

Figure 1

Table 2 Correlation between mental health expenditure and quality and service user ratings of care

Figure 2

Table 3 Main effects of mental health expenditure on quality of care

Figure 3

Table 4 Main effects of mental health expenditure on service user ratings of care

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