Abstract
Objectives: To estimate (1) productive life years (PLYs) lost because of chronic conditions in Australians aged 45–64 years from 2010 to 2030, and (2) the impact of this loss on gross domestic product (GDP) over the same period.
Design, setting and participants: A microsimulation model, Health&WealthMOD2030, was used to project lost PLYs caused by chronic conditions from 2010 to 2030. The base population consisted of respondents aged 45–64 years to the Australian Bureau of Statistics Survey of Disability, Ageing and Carers 2003 and 2009. The national impact of lost PLYs was assessed with Treasury’s GDP equation.
Main outcome measures: Lost PLYs due to chronic disease at 2010, 2015, 2020, 2025 and 2030 (ie, whole life years lost because of chronic disease); the national impact of lost PLYs at the same time points (GDP loss caused by PLYs); the effects of population growth, labour force trends and chronic disease trends on lost PLYs and GDP at each time point.
Results: Using Health&WealthMOD2030, we estimated a loss of 347 000 PLYs in 2010; this was projected to increase to 459 000 in 2030 (32.28% increase over 20 years). The leading chronic conditions associated with premature exits from the labour force were back problems, arthritis and mental and behavioural problems. The percentage increase in the number of PLYs lost by those aged 45–64 years was greater than that of population growth for this age group (32.28% v 27.80%). The strongest driver of the increase in lost PLYs was population growth (accounting for 89.18% of the increase), followed by chronic condition trends (8.28%).
Conclusion: Our study estimates an increase of 112 000 lost PLYs caused by chronic illness in older workers in Australia between 2010 and 2030, with the most rapid growth projected to occur in men aged 55–59 years and in women aged 60–64 years. The national impact of this lost labour force participation on GDP was estimated to be $37.79 billion in 2010, increasing to $63.73 billion in 2030.
Globally, there has been a substantial increase in the number of years lived with disability (YLDs) over the past 20 years. The YLDs for 1160 sequelae of 289 diseases and injuries were estimated as part of the 2010 Global Burden of Disease study: global YLDs from all causes had increased from 583 million in 1990 to 777 million in 2010.1 The main contributors to YLDs were mental and behavioural disorders, musculoskeletal disorders, and diabetes or endocrine diseases. While the Global Burden of Disease study measured YLDs at particular time points, governments have become increasingly concerned by lost productive life years (PLYs) caused by chronic disease at particular time points. We define PLYs as the loss of productivity that results from individuals not being able to participate in the labour force because of their chronic conditions. Few studies have undertaken a thorough assessment of the impact of chronic disease on labour productivity, and most have focused only on the burden of single diseases. Recent studies have shown that chronic disease can negatively affect the labour market and related outcomes, such as reduced income, greater welfare dependency and earlier retirement.2
The significant costs of premature retirement caused by chronic disease have been highlighted for most Organisation for Economic Co-operation and Development (OECD) countries.3 Premature retirement has attracted considerable attention in Australia, where unemployment is low (5.8% in June 2014) compared with other OECD countries4 and there are substantial labour shortages in a number of industries. The Australian Treasury maintains that Australia’s financial position can only be improved by increasing productivity, population growth and labour force participation.5 Having a large number of people excluded from the labour force by ill health is likely to constrain economic growth.
The impacts of an ageing population and labour shortages on a country’s fiscal position have featured heavily in recent reports by supranational organisations, such as the OECD and the World Health Organization,3,6 and national governments, including the Australian Government.5 A range of policies have been adopted by the six OECD countries participating in the Workforce Aging in the New Economy (WANE) project (including Australia) to encourage the labour force participation of older workers,7 including abolishing mandatory retirement; changes to national pension and welfare systems, and disability and employment insurance; active labour-market policies; and promoting phased or gradual retirements.
If chronic conditions are one of the main barriers to labour force participation, financial incentives alone may not be sufficient to maximise the contribution of older workers. Studies from the United States and Canada have shown that employment rates among older persons with musculoskeletal conditions,8 mental illness9 and other chronic conditions are lower than those among older people without these conditions.10 Similar studies from Australia and New Zealand have found that back pain,11 arthritis,12 mental illness,13 type 2 diabetes14 and cardiovascular disease15 are linked with lower labour force participation. With an ageing population, there is a risk that chronic conditions will further limit labour force capacity.
The aims of this study were to estimate (1) the PLYs lost to chronic conditions in Australians aged 45–64 years for each 5-year period from 2010 to 2030; and (2) the impact of these lost PLYs in terms of lost gross domestic product (GDP). The effects of population ageing, population growth, labour force trends and chronic disease trends are also captured in these estimates.
Methods
Data
We analysed output data from a microsimulation model called Health&WealthMOD2030,16 which is Australia’s first microsimulation model of the impact on long-term productivity over a 20-year period (2010–2030) of chronic disease and disability in the population aged 45–64 years.
The base population consists of unit record data from the cross-sectional Australian Bureau of Statistics (ABS) Surveys of Disability, Ageing and Carers (SDAC) 2003 and 2009.17,18 The records of persons aged 45–64 years and members of their family income unit were extracted. The records include data on demographic variables (age, sex, family type); socioeconomic variables (education, welfare payments); labour force variables (labour force participation, retirement); and health variables (chronic conditions, type and extent of disability).
The Australian Population and Policy Simulation Model (APPSIM)19 was used to age the SDAC data to represent the expected population in 2030. APPSIM is a dynamic population microsimulation model developed by the National Centre for Social and Economic Modelling (NATSEM) at the University of Canberra in collaboration with 12 Australian Government departments. APPSIM is based on a 1% sample from the 2001 ABS Census of Housing and Population (the ABS Household Sample File Australia 2001).19 It simulates all major lifetime events experienced by Australians on the basis of the probability of their occurring to people in Australia. Simulated snapshots of the Australian population from 2010 to 2030 generated by APPSIM were used in this study.
To account for epidemiological trends in chronic conditions, we applied the same trends in incidence that were used in the 2003 Australian Burden of Disease and Injury Study,16,20 which projected trends for the period 2003–2023, after which it was assumed that time rates would stabilise. We calculated proportional changes in the prevalence of chronic conditions and applied these to the corresponding diseases in the SDAC data, aggregated into the following categories: stroke, cancer (almost stable in men and women), ischaemic heart disease (decreasing rate in men and women), type 2 diabetes (increasing rate in men and women) and chronic obstructive pulmonary disease (stable in men; increasing rate in women). In the absence of data about trends, the rates for all other conditions were assumed to remain stable. Based on proportional changes, the prevalence of chronic conditions in Australians aged 45–64 years was projected for 2010 and 2030 by 5-year age groups and sex.
To account for population growth and trends in labour force participation in our PLY projections, we used 2013–2014 population and labour force projections provided by the Australian Treasury. We extracted population projections and projected full-time and part-time employment rates to 2030 for Australians aged 45–64 years by 5-year age groups and sex.16
The SDAC 2003 and 2009 data were separately reweighted to match the 2010 Australian population according to the ABS GREGWT reweighting algorithm,16 which takes into account key demographic and other changes in the population between 2003 and 2009. After reweighting, the datasets were combined and the weights halved so that the total weighted population in this new dataset matched the 2010 Australian population. A diagram of how the tools and datasets (both the source data and the datasets assembled thereafter) were used in this study is included in Appendix 1.
Our use of ABS SDAC 2003 and 2009 data was approved by the ABS Microdata Review Panel.
Labour force participation and chronic conditions
In the SDAC 2003 and 2009 surveys, respondents were asked to nominate their current labour force status, with the following options:
Employed working full-time;
Employed working part-time;
Unemployed looking for full-time work;
Unemployed looking for part-time work;
Not in the labour force; and
Not applicable.
For those who were not in the labour force, the main reason for not looking for work was also sought; in particular, respondents were asked whether they were out of the labour force because of their “own ill health or disability”. Respondents were also asked whether they had a long-term condition and, if so, to nominate the type of condition they had from a list of 80 conditions and injuries. Those identified as being out of the labour force due to ill health or disability were classified in this study as having lost PLYs because of a chronic condition.17,18
Statistical analysis
Outputs from Health&WealthMOD2030 were used to generate descriptive statistics of the relationship between chronic disease, PLYs lost and labour force participation of older workers in 2010, 2015, 2020, 2025 and 2030, by age group and sex.
We analysed the expected growth in the number of people aged 45–64 years who would lose PLYs (and the growth in the number of persons employed with and without chronic disease) at each of the five time points. Projected changes were driven by population growth, population ageing, chronic condition trends and labour force trends (by age group and sex). The contributions of each driver to the number of workers aged 45–64 years in each of the labour force groups to 2030 were disaggregated. All analyses were conducted in SAS V9.3 (SAS Institute).
GDP equation
The impact of PLYs lost to chronic disease in the 45–64-year-old age group on national GDP was calculated using the GDP formula of the Australian Treasury:
GDP = (GDP/H) × (H/EMP) × (EMP/LF) × (LF/Pop15+) × Pop15+
where H is the total number of hours worked, EMP is the total number of persons employed, LF is the size of the labour force, and Pop15+ is the population aged 15 years or more.21
Results
Of the 25 104 people aged 45–64 years surveyed in the combined SDACs 2003 and 2009, 1410 (5.62%) were out of the labour force because of a chronic condition, 12 682 (50.51%) were employed full-time, 5185 (20.65%) were employed part-time, and 5827 (23.21%) were unemployed or not in the labour force in 2010 for reasons other than ill health. After weighting, these data corresponded to 347 000 PLYs lost because individuals had withdrawn from the labour force due to ill health, 3 025 000 individuals employed full-time, 1 122 000 employed part-time and 1 086 000 unemployed or not in the labour force for reasons other than ill health (total population, 5 580 000 people). The projected number of PLYs for 2030 was 459 000 in a population of 7 130 000, an increase of 32.28%. In terms of persons in the labour force, it is projected that 3 979 000 individuals will be employed full-time, 1 576 000 part-time and 1 116 000 will be unemployed or not in the labour force for reasons other than ill health (Box 1). Growth in the number of people employed full- or part-time with a chronic condition (35.12% and 42.99%, respectively) was greater than growth in the number of people employed full- or part-time without a chronic condition (28.31% and 37.33%, respectively).
Box 2 shows the number of PLYs lost in those aged 45–64 years in 2010 and 2030, according to the main chronic condition. Back problems were the major contributors to PLYs lost at each time point (23.27% of PLYs lost to chronic conditions in 2010, 21.37% in 2030). Other important contributors were arthritis (13.26% in 2010, 13.31% in 2030), mental and behavioural disorders (other than depression; 9.58% in 2010, 9.49% in 2030) and depression (7.06% in 2010, 6.33% in 2030). There was little change over time in the relative proportions of people out of the labour force with each condition.
Box 3 shows the contributions of population growth, ageing, chronic disease trends and labour force trends to the increase in PLYs lost and labour force participation (with and without chronic illness) from 2010 to 2030. Of the projected 32.28% increase in PLYs lost to ill health between 2010 and 2030, 89.18% is due to population growth (including 3.97% attributable to ageing) and 8.28% to chronic disease trends. Population growth is the largest driver of full-time employment, whereas labour force trends are the largest driver of part-time employment.
The contribution of population growth, chronic condition trends and labour force trends to the estimated increase in PLYs lost for those aged 45–64 years (and the different labour force groups) from 2010 to 2030 (by age group and sex) are shown in Appendix 2. The largest projected increase in PLYs lost due to chronic conditions is for men aged 55–59 years (38.39%) and women aged 60–64 years (38.90%). There is also considerable projected growth in employment linked with Treasury’s projections of rising demand for labour and labour force participation trends.16 For men employed full-time, the largest increase in employment is projected to occur among those aged 60–64 years (37.51%); the largest increase for women is projected to occur among those aged 55–59 years (63.43%), almost twice the increase for older men.
Population growth makes the largest contribution to growth in both PLYs lost and in the labour force between 2010 and 2030. The contribution of disease trends to PLYs lost, after removing population and labour force trends, was largest for men out of the labour force because of ill health and who were aged 50–54 years (10.23%) or 55–59 years (9.62%). For women, the contribution of disease trends was greatest in those aged 60–64 years who were not in the labour force because of a chronic condition (13.04%). The positive contribution of labour trends to growth in full-time employment was larger in every age group for women than for men, reflecting changes in female labour force participation and education.5 For part-time employment, large reductions were projected for men aged 45–49 and 50–54 years (26.69% and 9.66%, respectively), and large increases for women of all ages (Appendix 2).
As a result of the 347 000 PLYs lost because of a chronic condition in individuals aged 45–64 years, there was an estimated loss of GDP of $37.79 billion in 2010. In 2030, the loss of 459 000 PLYs will result in a projected GDP loss of $63.73 billion (expressed in 2010 dollars; Box 4). These projected reductions in GDP correspond to 9.47% of GDP associated with the 45–64-year-old subpopulation in 2010 and to 10.29% in 2030.
If the projected growth in the prevalence of chronic conditions between 2010 and 2030 was only half that assumed by our main analysis, an estimated 453 000 PLYs would be lost by those aged 45–64 years because of chronic conditions in 2030, resulting in a projected loss of GDP of $62.89 billion. However, if the projected growth is doubled, the estimated PLYs lost would be 589 000 in 2030, resulting in a projected GDP loss of $81.78 billion (expressed in 2010 dollars).
Discussion
Using output from Health&WealthMOD2030, we projected the number of PLYs lost because of chronic health conditions in Australians aged 45–64 years from 2010 to 2030. We established that there were 347 000 PLYs lost due to chronic disease in those aged 45–64 years in 2010, projected to increase to 459 000 in 2030.
The PLYs lost among older workers due to chronic conditions are likely to have significant flow-on effects for individuals and governments. Our group has previously calculated the substantial impacts of ill health on all-source income, taxation and welfare payments for older workers (and government) in Australia in 2010.2,13 We also found that ill health resulted in significantly lower incomes and lower accumulated wealth and savings for those who had retired early because of their ill health22 and a greater risk of poverty.23
Our study has a number of limitations. First, the impact of chronic disease on labour force participation is based on respondents’ self-reports of their main chronic condition. Although self-reported health is considered a valid parameter,24 bias in the results cannot be excluded. Second, the SDACs 2003 and 2009 provided cross-sectional data. It is therefore possible to identify correlations but not causal relationships between parameters. It should be noted, however, the SDAC surveys included a specific category for being out of the labour force because of chronic disease (“own ill health or disability”) that could only be selected by those who had first stated they were not in the labour force. We thus identified those who are not in the labour force and then the main reason for their not being in the labour force (eg, ill health).
As the population ages, it is crucial that governments continue to adopt measures that retain as many working-age individuals in the labour force as possible. The former Federal Treasurer Wayne Swan noted in his 2011–12 Budget speech that: “… our economy can’t afford to waste a single pair of capable hands.”25 Retaining older people in the workforce will enable greater economic growth and provide government revenue for spending on vital services, including health care.5
Achieving these goals requires governments to take a more holistic approach to increasing labour force participation among older workers — an approach that considers the interaction of health, illness prevention, work capacity and government priorities (such as economic growth). Directing resources towards the introduction of effective interventions to prevent and treat the chronic conditions associated with the highest rates of premature exit from the labour force by older workers (back problems, arthritis, mental and behavioural disorders) is likely to improve the work capacity of this group (or, put another way, reduce the loss of PLYs predicted by our study) and thereby Australia’s future finances.
Box 1 – Labour force status of Australians aged 45–64 years, projected to 2030
Labour force status |
Survey records (%) |
Weighted population (%) |
Growth, 2010–2030 |
||||||||||||
2010 |
2015 |
2020 |
2025 |
2030 |
|||||||||||
Employed full-time with a chronic condition |
6076 (24.20%) |
1 452 000 (26.03%) |
1 565 000 (22.92%) |
1 722 000 (27.02%) |
1 830 000 (27.41%) |
1 962 000 (27.52%) |
35.12% |
||||||||
Employed full-time without a chronic condition |
6606 (26.31%) |
1 572 000 (28.18%) |
1 653 000 (24.21%) |
1 786 000 (28.02%) |
1 864 000 (27.92%) |
2 017 000 (28.29%) |
28.31% |
||||||||
Employed part-time with a chronic condition |
2812 (11.20%) |
621 000 (11.13%) |
1 565 000 (22.92%) |
769 000 (12.06%) |
825 000 (12.36%) |
888 000 (12.45%) |
42.99% |
||||||||
Employed part-time without a chronic condition |
2373 (9.45%) |
501 000 (8.98%) |
536 000 (7.85%) |
594 000 (9.32%) |
632 000 (9.47%) |
688 000 (9.65%) |
37.33% |
||||||||
Unemployed or not in the labour force for reasons other than ill health |
5827 (23.21%) |
1 086 000 (19.47%) |
1 129 000 (16.53%) |
1 090 000 (17.10%) |
1 092 000 (16.35%) |
1 116 000 (15.65%) |
2.76% |
||||||||
Productive life years lost due to chronic conditions in each year |
1410 (5.62%) |
347 000 (6.22%) |
380 000 (5.57%) |
413 000 (6.48%) |
434 000 (6.50%) |
459 000 (6.44%) |
32.28% |
||||||||
Total population |
25 104 |
5 580 000 |
5 945 000 |
6 374 000 |
6 677 000 |
7 130 000 |
27.80% |
||||||||
Box 2 – Main chronic conditions of people aged 45–64 years not in the labour force due to ill health in 2010 and 2030
Survey records |
2010 population |
2030 population |
Ranking |
||||||||||||
Number |
% |
Number |
% |
Number |
% |
2010 > 2030 |
|||||||||
Back problems (dorsopathies) |
306 |
22.16% |
79 000 |
23.27% |
96 000 |
21.37% |
1 > 1 |
||||||||
Arthritis |
208 |
15.06% |
45 000 |
13.26% |
60 000 |
13.31% |
2 > 2 |
||||||||
Mental and behavioural disorders |
140 |
10.14% |
32 000 |
9.58% |
43 000 |
9.49% |
3 > 3 |
||||||||
Cardiovascular disease* |
94 |
6.81% |
25 000 |
7.41% |
30 000 |
6.70% |
4 > 4 |
||||||||
Depression (excluding postnatal depression) |
94 |
6.81% |
24 000 |
7.06% |
28 000 |
6.33% |
5 > 6 |
||||||||
Injury/accident |
78 |
5.65% |
20 000 |
6.02% |
29 000 |
6.44% |
6 > 5 |
||||||||
Diseases of the nervous system |
79 |
5.72% |
20 000 |
5.76% |
26 000 |
5.86% |
7 > 7 |
||||||||
Other diseases of the musculoskeletal system and connective tissue |
74 |
5.36% |
16 000 |
4.76% |
24 000 |
5.30% |
8 > 8 |
||||||||
Cancer |
50 |
3.62% |
15 000 |
4.29% |
20 000 |
4.39% |
10 > 10 |
||||||||
Diabetes |
46 |
3.33% |
14 000 |
4.15% |
22 000 |
4.95% |
11 > 9 |
||||||||
Asthma |
34 |
2.46% |
8000 |
2.50% |
12 000 |
2.66% |
12 > 13 |
||||||||
Chronic obstructive pulmonary disease |
22 |
1.59% |
8000 |
2.22% |
14 000 |
3.01% |
13 > 12 |
||||||||
Diseases of the digestive system |
22 |
1.59% |
4000 |
1.30% |
8000 |
1.76% |
14 > 14 |
||||||||
Diseases of the ear and mastoid process |
23 |
1.67% |
4000 |
1.25% |
6000 |
1.42% |
15 > 15 |
||||||||
Diseases of the eye and adnexa |
18 |
1.30% |
4000 |
1.06% |
5000 |
1.10% |
16 > 16 |
||||||||
Other diseases of the respiratory system† |
9 |
0.65% |
2000 |
0.60% |
3000 |
0.77% |
17 > 17 |
||||||||
Other endocrine/nutritional and metabolic disorders |
5 |
0.36% |
1000 |
0.36% |
2000 |
0.42% |
18 > 19 |
||||||||
Diseases of the genitourinary system |
6 |
0.43% |
1000 |
0.32% |
2000 |
0.43% |
19 > 18 |
||||||||
Deafness/hearing loss, noise-induced |
2 |
0.14% |
342 |
0.10% |
322 |
0.07% |
20 > 20 |
||||||||
All other conditions |
71 |
5.14% |
16 000 |
4.73% |
19 000 |
4.22% |
9 > 11 |
||||||||
Not in the labour force due to ill health |
1381 |
— |
339 000 |
— |
449 000 |
— |
— |
||||||||
*Cardiovascular disease includes ischaemic heart diseases, stroke, high cholesterol level, hypertension (high blood pressure) and other diseases of the circulatory system. †Other diseases of the respiratory system include bronchitis/bronchiolitis, respiratory allergies (excluding allergic asthma) and emphysema. |
Box 3 – Contribution of main drivers to growth in productive life years lost and labour force participation between 2010 and 2030
Driver |
Employed full-time |
Employed part-time |
Productive life years lost due to chronic conditions |
||||||||||||
With a chronic condition |
Without a chronic condition |
With a chronic condition |
Without a chronic condition |
||||||||||||
Population growth (total) |
81.97% |
94.00% |
63.21% |
70.43% |
89.18% |
||||||||||
Growth due to population ageing (a component of total population growth) |
-0.92% |
-3.32% |
1.23% |
-3.32% |
3.97% |
||||||||||
Chronic disease trends |
1.78% |
-4.31% |
0.53% |
-2.73% |
8.28% |
||||||||||
Labour force trends |
10.42% |
8.39% |
26.45% |
26.78% |
NA |
||||||||||
Interaction effects |
5.83% |
1.92% |
9.81% |
5.52% |
2.54% |
||||||||||
NA = not applicable. |
Received 23 November 2024, accepted 23 November 2024
- Deborah J Schofield1
- Rupendra N Shrestha1
- Michelle Cunich1
- Robert Tanton2
- Simon Kelly2
- Megan E Passey3
- Lennert J Veerman4
- 1 University of Sydney, Sydney, NSW
- 2 University of Canberra, Canberra, ACT
- 3 University of Sydney, Lismore, NSW
- 4 University of Queensland, Brisbane, QLD
The development of the microsimulation model used in this research, Healthboyuan;amp;WealthMOD2030, is funded by the Australian Research Council (under grant LP100100158); Pfizer Australia is a partner to the grant. Megan Passey is supported by fellowships from the National Health and Medical Research Council, the Cancer Institute NSW and the Sydney Medical School Foundation.
We are financially independent of the funding sources, and the funding sources (including Pfizer Australia) played no part in the research design, the analysis, formulation or interpretation of the results, the decision to publish the research findings, or in any other aspect of the research process.
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Sharna Goulding
The World Health Organisation stated the direct and indirect effects of climate change will impose on the health status of the globe (1). Lost productive life years caused by chronic conditions in Australia aged 45-64 years, 2010-2030 estimates 112 000 lost productive life years is caused by chronic illnesses in this age bracket (2). However climate changes influence could exacerbate this estimate, costing the Australian government over 63.73 billion in lost labour force. Diabetes is a disease that is growing immensely with it predicted to rise to half a billion by 2030 which will impoverish families, account for a majority of the lost productive years and overwhelm health services (3). People with diabetes are more susceptible to heat and high humidity with studies showing more hospital admissions, illness and higher rates of mortality in extreme weather events (4). In Australia heatwaves have caused more deaths in the past 100 years than any other natural disaster and are becoming more intense, longer and are occurring more frequently. The number of hot days has doubled in the last 50 years as a consequence of climate change, which has caused more mortality and morbidity in people with diabetes (4,5).
Climate change and diabetes share the same pathways of rapid urbanisation, aging population and the global food system (3). Climate change and diabetes are the outcome of resource overconsumption and as one continues to increase so will the other, which will have a great economic burden from the loss of productive life years.
1. Kjellstrom T. Climate change exposures, chronic diseases and mental health in urban populations – a threat to health security, particularly for the poor and disadvantaged. Technical report. Kobe: World Health Organisation Kobe Centre. 2009.
2. Schofield DJ, Shrestha RN, Cunich M, Tanton R, Kelly S, Passey ME, et al. Lost productive life years caused by chronic conditions in Australians aged 45-64 years, 2010-2030. Med J Aust. 2015;203(6):260.
3. Dain K, Hadley L. Diabetes and climate change--two interconnected global challenges. Diabetes Res Clin Pract. 2012;97(2):337-9
4.Hansen AL, Bi P, Ryan P, Nitschke M, Pisaniello D, Tucker G. The effect of heat waves on hospital admissions for renal disease in a temperate city of Australia. Int J Epidemiol. 2008;37(6):1359-65.
5. Hughes L, Steffen W. Heatwaves: Hotter, Longer, More Often [Internet]. Climate Council of Australia [cited 2015 Sep 17]. Available from:
http://www.climatecouncil.org.au/uploads/9901f6614a2cac7b2b888f55b4dff9cc.pdf
Competing Interests: No relevant disclosures
Miss Sharna Goulding
Monash University