Abstract
Background
Measuring health related quality-of-life (HRQoL) of the general population is essential to establish a reference for health outcome evaluations. This study sought to establish EQ-5D-5L population norms in Australia and to investigate the heterogeneity of HRQoL between sociodemographic variables.
Methods
A cross-sectional study comprising of a representative sample of Australia’s general population (n = 9958) aged 18 or older. Recruitment quotas were set for the Australian census population by age, sex, state/territory of residence and rurality. Participants were recruited by Qualtrics through its database of over 800,000 registered panel members and asked to value their own state of health using the EQ-5D-5L domains and the EuroQol-Visual Analogue Scale (EQ-VAS). An Australian value set developed using Discreet Choice Experiment was used to calculate utility scores.
Results
The estimated mean EQ-5D-5L index for Australia’s general population was 0.86 (standard deviation [SD] 0.19), and the EQ-VAS score was estimated as 73.2 (SD 21.7). 23.9% of the study population reported being in the best health state (11,111). Younger people, current smokers, people who are unemployed and people with more financial stress reported a lower EQ-5D-5L index score (p < 0.001). Residents in the major cities, inner regional and outer regional Australia reported higher health utility scores than those residing in remote and very remote Australia.
Conclusions
This is the first Australian study to apply the EQ-5D-5L in a nationally representative sample. The EQ-5D-5L Australian population norms obtained can be used as reference scores for future population health evaluations and comparisons. The findings facilitate a national reference for clinical, economic, and policy decision-making processes and provide a fuller understanding of the Australian population’s HRQoL.
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Introduction
In 1946 the World Health Organization defined health as “a state of complete physical, mental, and social well-being and not merely the absence of disease or infirmity” [1]. Although this definition is one of the most widely known, it has been debated and said to lack operational value [2]. Subsequently, several self-reported Health-Related Quality of Life (HRQoL) instruments have been developed that include the generally agreed upon aspects of HRQoL: physical, mental, and social well-being [3]. HRQoL is commonly used for economic evaluations, research and health interventions and policies; and for monitoring the health status of the general population [4, 5]. A frequently used measure of economic evaluations is the quality adjusted life year (QALY) [6]. QALY is derived from a combination of HRQoL and length of life into a single index summary measure [6]. QALY has also been used to quantify health outcomes for cost-utility analyses which are broadly used to guide health care resource allocation [7]. HRQoL measures are often adopted for use in research in clinical and epidemiological studies to assess the impacts associated with health conditions on individuals’ well-being, as well as outcomes of healthcare interventions. National HRQoL surveillance can assess how a population is changing over time and identify unmet population health needs [8]. Therefore, identifying national population norms for HRQoL is an essential element for the development and evaluation of health care services.
The EQ-5D was developed in 1990 and is the world’s most widely applied HRQoL and patient-reported outcomes measure [6, 9]. The EQ-5D contains five dimensions of health: mobility, self‐care, usual activities, pain/discomfort, and anxiety/depression [9]. The original three level version (EQ-5D-3L) contains three responses to the five dimensions/questions including: no problem; some problems; and extreme problems [9]. A five-level version (EQ-5D-5L) was released in 2009 and contains five levels of responses to the five domains: no problems; slight problems; moderate problems; severe problems; and extreme problems [9]. The EQ-5D-5L has demonstrated reduced ceiling effects and improved the sensitivity of the 3L version for detecting clinically important differences in HRQoL [10,11,12]. Therefore, the 5L version is replacing the 3L version as the preferred measure in HRQoL population-wide studies and health economic evaluations [9].
The EQ-5D-5L is a preference-based measure widely used in cost-utility analysis. The 5L version has been validated and utilised across multiple diseases, conditions and locations. More recently, the EQ-5D-5L has been used in routine outcomes measurement in hospital settings to assess the performance and productivity of healthcare systems [15]. The utility values can easily be converted into QALY and used to conduct cost–utility analysis in economic evaluations. To achieve this, a 5L value set for the country is needed. In Australia, a 5L value set using the standardised valuation study protocol is not available, however an alternative value set using the discrete choice experiment (DCE) method was developed in 2023 [13]. Population norms for HRQoL play an important role as a reference group to facilitate comparisons among people with specific conditions with data on the average person of a similar age and/or sex within the same community [14]. They can also be compared against to assess the incremental effectiveness of interventions in economic evaluations and can be used to support policy makers identify gaps, and detect health priorities to which to allocate resources to reduce inequalities [6, 15, 16].
The EQ-5D-5L population norms and sociodemographic characteristics have been reported and validated in many countries such as Germany [17], Italy [18, 19], Japan [20], Poland [21], Spain [22], Uruguay [23], Vietnam [24] and the United Kingdom (UK) [11]. Although population norms for EQ-5D-5L have been developed for South Australia [25], none have been created for the general Australian population. Therefore, this study aimed to estimate the population norms for the EQ-5D-5L for Australia using a large nationally representative sample and the DCE based value set for Australia; and to investigate the heterogeneity of HRQoL between sociodemographic variables using the EQ-5D-5L utility and the EuroQol-Visual Analogue Scale (EQ-VAS) [26].
Methods
Sample size
The current cross-sectional study was conducted with a demographically representative Australian sample of adults aged 18 years or older from 12 July 2021 to 2 August 2021. This study is a part of a larger study of breathlessness in the Australian population [25]. The original sample size was calculated based on the prevalence rate of moderate to severe breathlessness in Australia (estimated to be between 1.0 and 2.6%).
Recruitment methods
Participants were invited to complete an online survey using the Qualtrics platform (Utah, USA) through its database of over 800,000 registered panel members. Recruitment quotas were set for combinations of all four demographic parameters based on the Australian 2016 census population by age, sex, state/territory of residence and rurality [27].
The survey was piloted with members of the Improving Palliative, Aged and Chronic Care through Clinical Research and Translation (IMPACCT) Consumer Advisory Group (University of Technology Sydney) and 110 Qualtrics panellists before general recruitment. Panel members provided initial informed consent when joining Qualtrics’ panel and then, subsequently, chose and agreed to participate in this survey. The survey took between 16 and 20 min to complete. This was part of a larger study that looked at the reporting of breathlessness as a symptom in clinical consultations in Australia [28].
Measures
Sociodemographic characteristics
Sociodemographic characteristics collected in the survey included age, sex, state, postcode (used to code remoteness area) [29], height and weight (used to calculate Body Mass Index (BMI)), smoking status, employment status and financial stress. Age was categorised into seven categories: 18 to 24 years, 25 to 34 years, 35 to 44 years, 45 to 54 years, 55 to 64 years, 65 to 74 years, and 75 years or older to align with other EQ-5D-5L studies. Missing data were excluded from the analyses.
EQ-5D-5L
EQ-5D-5L was used to assess HRQoL [10]. The EQ-5D-5L consists of five questions (dimensions) with five response levels: no problems (Level 1); slight; moderate; severe; and extreme problems (Level 5). The combination of the level from each dimension created a health score, which ranged from 11,111 (full health) to 55,555 (worst health) [10]. EQ-5D-5L health states are converted into a single index ‘utility’ score using a scoring algorithm based on public preferences. The utility score is measured on a scale from ‘0’ to ‘1’ where ‘0’ represents being dead and ‘1’ being in full health. Negative scores are possible, indicating a health state worse than death. A DCE based value set for Australia was used to calculate utility scores as a value set using the EQ-VT standardised protocol for Australia is not yet available[26, 30]. The EQ-5D-5L also contains the EQ-VAS, which is a single rating of self-perceived health and is scored on a scale ranging from 0 (worst imaginable health state) to 100 (best imaginable health state) [31].
A sensitivity analysis was conducted in the supplementary material to compare the impact of the Australian value set developed using the DCE duration valuation protocol and the US [1] and Italian [2] value sets, developed using the EQ-VT v2.1 protocol.
Data analysis
Descriptive statistics were used to compare the study sample with the Australian Census data 2021 [32], and to show the frequency of the response to the five domains by age category. To improve the accuracy of the results the data were weighted for age, sex, rurality and state of residence based on the 2021 Australian Census data.
As the EQ-5D-5L utility scores were non-normally distributed, non-parametric tests were used. The Mann–Whitney U test was used to compare the utility and EQ-VAS scores by sex. The Kruskal–Wallis H test was used to compare the utility and EQ-VAS scores by the categorical variables, including age category, state, remoteness area, BMI category, smoking status, employment status and financial stress. To account for multiple testing, the alpha level for the Kruskal–Wallis H test was adjusted to 0.00714 (0.05/7).
The Generalized Linear Model (GLM) was employed to explore the association between the sociodemographic variables and utility scores as well as EQ-VAS scores. This model can control skewness and heteroscedasticity. To account for overdispersion, a Quasipoisson distribution with a log link was utilised. This method requires non-negative values, therefore the disutility value (disutility = 1-utility value) was entered as the dependent variable [24]. Based on recently reported EQ-5D-5L population norms, it was hypothesised that older people and females were expected to have higher disutility scores and were entered first in the GLM (Model 1) [19, 33, 34]. Analyses were conducted using R studio and IBM SPSS Statistics 28.0 [35, 36].
Ethics
A participant information sheet with study details was provided before obtaining informed consent for this survey. This manuscript was written in accordance with the STROBE checklist [37]. Approval was obtained from the human research ethics committee (University of Technology Sydney; UTS HREC ETH20-5114).
Results
This study recruited 10,034 participants. There were 76 records that contained a missing key variable. There were 9,958 participants that were included in the analyses. The sample was similar to the Australian general population (Table 1). Compared to the general Australian population, the study participants had a higher mean age (39.8 vs. 47.8 years, respectively) and more participants that resided in major cities (71.7% vs. 78.4%, respectively). There were also no participants recruited from the Northern Territory, which accounts for 0.9% of the Australian population. There were no missing data for the EQ-5D-5L health states nor the EQ-VAS.
The frequencies of item responses for each EQ-5D-5L dimension, by age category, are presented in Table 2. A substantial proportion of respondents reported a problem on at least one of the five dimensions (76.1%). The most prevalent problems were reported for pain and discomfort (61.4%) followed by anxiety and depression (55.1%). In general, problems with mobility and pain/discomfort increased as age increased. In contrast, problems with anxiety and depression were higher in younger people and tended to decrease with age. This finding was robust when outliers were removed.
The mean utility score for the Australian general population was 0.86 (SD 0.19; 95% CI 0.85, 0.86) (Table 3) and the mean EQ-VAS score was 73.2 (SD 21.7; 95% CI 72.6, 73.4) (Table 4). Ten out of the 3,125 possible health states accounted for the over half of the sample (53.4%) (Table 5). Individuals rating themselves as ‘11,111’, assigned a mean score of 85.8 to their health state on the EQ-VAS.
The mean EQ-5D-5L utility scores by sociodemographic variables and mean EQ-VAS scores by age and sex are summarised in Tables 3 and 4 respectively. Overall, males had higher mean utility scores than females (0.86 (SD 0.20) versus 0.85 (SD 0.18); Z = − 7.0, p < 0.001). Lower utility scores were reported in younger age categories (X2 = 42.5, p < 0.001), people residing in more regional and remote Australia (X2 = 88.4, p < 0.001) and people experiencing financial stress (X2 = 664.5, p < 0.001). There were also statistically significant differences in EQ-VAS scores for age categories and sex (Table 4).
In the Quasipoisson models, advancing age was significantly associated with a positive impact on health status and disutility was higher for those who were self-employed, retired, unemployed or on unpaid leave (Table 6). In addition, residing in an inner regional area, higher capacity to save money and being retired or unemployed were also independent, statistically significant predictors of better health in the EQ-VAS multivariate regression analysis (Table 6). Sex was not a predictor of better health in the disutility models nor the EQ-VAS models (Table 6).
Discussion
This study is the first to construct population norms for the EQ-5D-5L in a large nationally representative sample in Australia. It is also the first to compare HRQoL in Australia between sociodemographic variables. The results of this study can be used to supplement existing data, compare specific population groups with the general population, and inform healthcare research and policy making.
This study identified an EQ-5D-5L utility score of 0.86 and an EQ-VAS score of 73.2 in the general Australian population. This was lower than some of the previously reported national utility scores, such as those reported by China (0.96) [38], Japan (0.96) [20], Italy (0.93) [19], Vietnam (0.91) [24] and Poland (0.89) [21]. Countries with similar utility scores included New Zealand (0.85) [34], Canada (0.82) [39], Slovenia (0.81) [40], Norway (0.81) [41] and Iran (0.79) [42]. While the Australian utility scores were similar to comparable countries, such as New Zealand and Canada, the total and state utility scores were lower than the previously reported utility score in South Australia in 2016, of 0.91 [25]. These differences can be explained in part by the 2019 novel coronavirus pandemic (COVID-19). This study was conducted between July and August 2021, which was 16 months after the pandemic was declared by the World Health Organisation in March 11, 2020 [43]. The impact of COVID-19 on HRQoL has been observed in Sweden, which saw a reduction of 0.06 in EQ-VAS from pre-pandemic measurement in February 2020 to April 2020 and a reduction of 0.07 points between February 2020 and January 2021 [44]. The reduction in HRQoL was highest among the Swedish working age population [44]. This may indicate a shift, and probable reduction in national and global HRQoL.
This study found that HRQoL increased with age category. The opposite trend has been reported in many settings, with HRQoL (utility scores) generally decreasing as age increases, such as in Vietnam [24], Italy [19], Portugal [33], South Australia [25] and Poland [21]. As the data were weighted to the Australian population, this is unlikely to be due to a sample error. Although this was not measured directly, this unique finding may be attributed to the COVID-19 pandemic. This finding may also suggest that younger people were more affected by the physical and subsequent social isolation required to control the pandemic than older people. Recent literature supports this hypothesis with an Austrian study reporting a larger reduction in HRQoL across all domains (environmental, physical and social) in younger people when compared to older people post pandemic [45]. The increase in mental health issues reported in young people since the pandemic may also be contributing to the overall decline in HRQoL reported in younger people in other studies [46, 47].
The current study identified a higher percentage of young people (aged 18 to 24 years old) reporting a problem with anxiety/depression (72.3%) when compared to older people (aged 75 years or older) (35.5%). While higher levels of anxiety/depression in the youngest age groups have also been reported in Slovenia (52.0%)[40], Norway (43.2%)[41], Indonesia (40.1%)[48], China (32.1%)[49], and Hong Kong (30.1%)[50], they were considerably lower than this study. A previous population study conducted in South Australia in 2016 found the opposite trend, with 22.5% of people aged between 18 and 24 reporting a problem with anxiety/depression compared to 27.0% of people aged over 75 years old. By population, South Australia is the oldest jurisdictional population in the nation with a predominantly urban population and high levels of education, a combination of which may also contribute to the differences seen. A study from Poland found the same trend as the South Australian study [21]. This higher percentage of young people reporting a problem with anxiety/depression is also likely to be attributed to the COVID-19 pandemic [46]. A systematic review of the mental health changes of young people before and during the COVID-19 pandemic found that most studies reported a deterioration in the mental health in young people, with increased depression, anxiety and psychological distress after the pandemic started [47]. A Swedish study reported that during the pandemic, older people had significantly higher HRQoL when compared to younger age groups, when previously HRQoL had been consistent across all age categories [44]. This may indicate that younger people were impacted the most by the pandemic, and require more support, especially psychological support to return to their pre-COVID levels of HRQoL.
HRQoL tended to decrease as rurality increased in Australia. While this finding is challenging to compare to other countries—due to the differences in defining urban, regional, and rural populations—in general, this finding is consistent with previously reported literature. A recent study from China reported higher HRQoL in urban populations when compared to rural populations [38]. The same was found in Ireland, with people residing in urban areas experiencing better HRQoL when compared to people residing in rural areas [51], except for the dimension of anxiety and depression where people residing in urban areas exhibited greater anxiety and depression compared to people residing in rural areas [51]. In contrast, a study from 2020 in Quebec found no difference in HRQoL between their urban or rural populations [39]. Some of the reasons for the lower HRQoL and health in rural populations in Australia could be attributed to lower income, higher rates of alcohol use, occupational and physical risk taking as well as barriers to accessing health care, due to geographic spread, low population density, limited infrastructure, and the higher costs of delivering rural and remote health and social care [52]. This area continues to be a global challenge and a priority for many departments of health, including the Australian Government [53].
The largest strength of the current study is its large sample, which is a close representation of the Australian population and stratified by sex, age group and geographical region. However, the sample suffers from an under-representation of participants residing in the Northern Territory, which accounts for 0.9% of the Australian population [54]. Regardless of this issue, the current sample facilitated an exploration of the sociodemographic variations in HRQoL in Australia.
This study has several limitations. Firstly is the possibility of selection bias when conducting online surveys. Although the sample is generally representative for the Australian population in terms of key demographics (age, sex, state/territory of residence, rurality) it may be skewed towards participants with good computer literacy skills, especially as participants were registered with Qualtrics. This may have inflated the utility and EQ-VAS scores, as these are known to increase with education level [39, 50]. Secondly, potential social desirability bias may arise in studies involving the self-reporting of variables such as income. However, the use of an online survey may also mitigate social desirability bias in the EQ-5D responses, when compared face-to-face interviews. Thirdly, educational status was not collected nor included in the quotas or analyses. Therefore, the impact of the educational level of the participants on their HRQoL in the sample was unknown and was unable to be adjusted for. Fourthly, this study used cross-sectional data which provides a snapshot of the Australian general population at a certain point in time, thus, restricting the investigation of causal relationships between HRQoL and other sociodemographic characteristics over time. Finally, a potential limitation of this study is the time period in which data were collected, during the COVID-19 pandemic. This likely resulted in lower utility and EQ-VAS scores that may have been reported in a pre-COVID study. However, this may also assist researchers studying the impact of outbreaks such as COVID-19 on HRQoL to compare their findings with the Australian general population. Future research can also use the findings from this study to supplement existing data, compare specific population groups with the Australian general population, and inform healthcare research and policy making.
Conclusion
This study is the first to construct population norms for the EQ-5D-5L in a large nationally representative sample in Australia. The utility scores in Australia were similar to previously reported utility scores in comparable countries. A major finding of this study was lower HRQoL in younger than older people, especially in the anxiety and depression domain. This may reflect a greater impact of the COVID-19 pandemic on the mental health of younger than older people, a finding that has been reported in other studies. This study can serve as a national baseline for HRQoL in Australia. These population norms will facilitate empirical HRQoL comparisons between the general population and more specific patient groups, and longitudinal studies of general HRQoL population surveys. Public health authorities and researchers may use the sociodemographic findings as a basis to further investigate the healthcare needs of the Australian population, such the high level of anxiety and/or depression reported in young people, and rural variations.
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This study was funded by a University of Technology Sydney Faculty of Health Early Career Researcher Seed Grant (S Kochovska) and discretionary funds held by the academic teams involved in the collection and analyses of these data.
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LR wrote the first draft of the manuscript and performed the data analysis and interpretation. DC and SK contributed to the study conception and design. Material preparation, data collection and revising it critically for important intellectual content. ST contributed to the conception, analysis approach and interpretation of data for the work, and revising it critically for important intellectual content. All authors read and approved the final manuscript.
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Redwood, L., Currow, D., Kochovska, S. et al. Australian population norms for health-related quality of life measured using the EQ-5D–5L, and relationships with sociodemographic characteristics. Qual Life Res 33, 721–733 (2024). https://doi.org/10.1007/s11136-023-03558-z
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DOI: https://doi.org/10.1007/s11136-023-03558-z