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Abstract

Objective:

The authors aimed to evaluate changes in use of government-subsidized primary mental health services, through the Medicare Benefits Schedule (MBS), by young people during the first year of the COVID-19 pandemic in Australia and whether changes were associated with age, sex, socioeconomic status, and residence in particular geographical areas.

Methods:

Interrupted time-series analyses were conducted by using quarterly mental health MBS service data (all young people ages 12–25 years, 2015–2020) for individual Statistical Area Level 3 areas across Australia. The data captured >22.4 million service records. Meta-analysis and meta-regression models estimated the pandemic interruption effect at the national level and delineated factors influencing these estimates.

Results:

Compared with expected prepandemic trends, a 6.2% (95% CI=5.3%–7.2%) increase was noted for all young people in use of MBS mental health services in 2020. Substantial differences were found between age and sex subgroups, with a higher increase among females and young people ages 18–25. A decreasing trend was observed for males ages 18–25 (3.5% reduction, 95% CI=2.5%–4.5%). The interruption effect was strongly associated with socioeconomic status. Service uptake increased in areas of high socioeconomic status, with smaller or limited uptake in areas of low socioeconomic status.

Conclusions:

During 2020, young people’s use of primary mental health services increased overall. However, increases were inequitably distributed and relatively low, compared with increases in population-level mental health burden. Policy makers should address barriers to primary care access for young people, particularly for young males and those from socioeconomically disadvantaged backgrounds.

HIGHLIGHTS

In the first year of the COVID-19 pandemic, increases in use of mental health services funded by the Medicare Benefits Schedule (MBS) were observed among young people ages 18–25 years in Australia, particularly among females.
Decreased or limited service use was noted among males ages 18–25 and young people from socioeconomic disadvantaged areas.
In the first year of the pandemic, growth in MBS-funded mental health services for young people only partially met increased need for care, and growth was inequitably distributed.
Reducing barriers to service use for males and for young people from disadvantaged areas should be prioritized.
Three-quarters of mental disorders emerge by age 25 years (1), and mental disorders are the primary source of disease burden among young people between the ages of 15 and 25 (2). The COVID-19 pandemic has been associated with an escalation in anxiety and depressive disorders among young people (3). Stringent lockdowns and social restrictions, closure of businesses and schools, and fear of infection are likely to have a negative impact on multiple domains important to young people’s mental health, such as schoolwork, financial security, social participation, and family relationships (3, 4). The pandemic has also exacerbated existing mental ill health (a term broadly referring to mental illness and mental health problems) because of disruptions of care, isolation, and reduced family and social supports (5).
Pandemic-related increases in mental health burden have been reported for Australian youths (4, 6). Recent online surveys indicate that three-quarters of young people (ages 12–18) in Australia have experienced a worsening in mental health since the pandemic began (4); the proportion of young people experiencing severe psychological distress increased from 14% in 2017 to 22% in April 2020 (7), and subjective ability to cope declined from 81% before the pandemic to 45% in April 2020 (8). Among those attending headspace, Australia’s federally funded youth-specific primary mental health services (9, 10), more than three-quarters reported worse mental health since the outbreak, with COVID-19 negatively affecting mood, well-being, or sleep (11).
The pandemic may also affect subgroups of young people differently. Findings from the 2021 Mission Australia Youth Survey (N=20,207) indicated that COVID-19 had the greatest impact on the mental health of females, individuals living in Victoria (the state with the most enduring lockdowns—i.e., statewide “stay at home” restrictions from March 31 to May 12, 2020, and from July 9 to October 27, 2020), and students in their final years of secondary school (12). The pandemic may also magnify existing vulnerabilities—interrupting everyday life, creating difficulty in accessing care, and increasing financial hardship (13, 14).
In Australia, mental health care for young people is predominantly provided by primary care services. Young people can access a range of primary mental health care services provided by medical practitioners, psychiatrists, psychologists, and other allied health professionals. These services are sometimes fully funded, but more commonly partially rebated, by the Medicare Benefits Schedule (MBS). Under the Australian universal health insurance scheme (Medicare), community-based primary health care services provided by medical practitioners and some other health care providers are supported by patient access to Medicare benefits or rebates, with the list of health professional services being managed and maintained as the MBS. In 2019–2020, payments made for mental health services as itemized on the MBS accounted for about 12% of total mental health expenditures. The remainder of the expenditures was for state and territory specialized mental health services (e.g., 60% for inpatient admissions), medications (5%), a range of national programs and initiatives (17%), and private health insurance (5%) (15).
In response to the growing mental health crisis, the Australian Government introduced a wide range of additions to the MBS to support telehealth since March 2020 and expanded the 10 MBS-subsidized psychological therapy sessions to 20 starting in October 2020 (15). Given the epidemiological evidence of increasing mental ill-health burden, an increase in government service subsidies, and an increased flexibility in care delivery, it is likely that an increase in primary mental health service use would be observed. However, the extent to which MBS-subsidized mental health care provided adequate and equitable responses to the increasing demands under the restricted capacity in existing service system infrastructure remains unknown.
At this critical period of development, it is important to ensure that prevention and early intervention services are in place for young people to avoid worsened long-term mental health outcomes, particularly for those who were most vulnerable and more affected by the pandemic. To better support young people in recovering from the adverse effects of the pandemic, a need has emerged to understand changes in the use of mental health services by young people. The aims of this study were to determine changes in the rates and trends of use of MBS-subsidized mental health services by young people during the first year of the COVID-19 pandemic in Australia, to compare differences in changes by age (12–17 vs. 18–25 years) and sex, and to investigate factors (e.g., socioeconomic status and residence in particular geographical areas) associated with changes in the use of MBS-subsidized mental health services. Given the clear epidemiological evidence of increasing mental ill-health burden, an increase in government service subsidies, and the greater flexibility of care delivery (i.e., telehealth), we hypothesized that the uptake of MBS-funded primary mental health services had increased as a result of COVID-19.

Methods

Data Source

We requested quarterly counts of mental health MBS service sessions held between January 2011 and December 2020 from Services Australia, the Australian Government Department of Health (data were received on May 17, 2021, and descriptions of MBS services are presented in a table in the online supplement to this article). Services Australia provided data that were deidentified and aggregated by Statistical Area Level 3 (SA3) (boundaries approximate local government areas) for all young people ages 12–25 years, stratified by sex (males vs. females) and age (adolescents, ages 12–17, vs. young adults, ages 18–25). Counts <10 were suppressed to protect privacy. Because of various factors, including developmental differences and increasing autonomy (health care and financial), data for minors (ages 12–17) and for those ages ≥18 were examined separately.
The estimated residential population (ERP) for 2011–2020 for the matching age and sex subgroups by SA3 was obtained from the Australian Bureau of Statistics. Index of Relative Socio-economic Advantage and Disadvantage (IRSAD) scores for individual SA3s were estimated as the weighted average of included scores for SA2s (representing smaller geographical units, compared with SA3s, and approximating local towns) in 2016 (16). IRSAD is an area-based socioeconomic status measure that summarizes census information about the economic and social conditions of local residents, including measures of both relative advantage and disadvantage (higher scores indicate a relative lack of disadvantage and greater general advantage) (16). SA3-level IRSAD scores ranged from 748.6 to 1,166.6 (first quartile to third quantile: 943.3–1,044.8) (see figure in the online supplement).
Ethics approval for this study was provided by the University of Melbourne Human Research Ethics Committee and Human Ethics and Advisory Group (2056431.1).

Statistical Analysis

All analyses were conducted with R, version 4.0.2 (2020-06-22). A summary of these analyses is provided below (for detailed descriptions, see the online supplement).

Descriptive analysis.

Simple descriptive statistics (mean and interquartile range) and boxplots were used to first compare rates of use of MBS services in 2019 and in 2020 (the first year of the pandemic) for all young people and by age and sex subgroups.

Interrupted time-series analysis.

To account for different preexisting trends and levels of pandemic impact, interrupted time-series analyses of MBS service counts were conducted for individual SA3s by using generalized linear models (GLMs). In these models, changes in MBS service use during the pandemic year were compared with historical trends with an interruption effect. Because only limited time points were available since the start of the pandemic, postinterruption changes in trends were not estimated. Because of the presence of possible nonlinear trends over longer series, primary analyses were conducted with data collected between 2015 and 2020, and additional sensitivity analyses were conducted with data collected between 2011 and 2020.
Within individual time-series models, we controlled for a long-term trend and seasonality. SA3-level ERP for each quarter of the year was controlled for as an offset (to model population rates instead of counts). GLMs with a quasi-Poisson distribution of outcome and a log-link function were used to account for overdispersion, and a first-order autocorrelation (AR1) structure was used to correct for residual temporal autocorrelation. Additional sensitivity analyses were conducted without the AR1 structure.
GLMs estimated the relative risk (RR) of the COVID-19 interruption effect, which can be interpreted as changes in use of MBS services during the COVID-19 pandemic year in addition to existing trends in service use. An RR >1 indicates an increase in rates of service use beyond what was expected during the pandemic, whereas an RR <1 indicates a decrease in service rates below what was expected. Separate models were conducted for services used by all young people as well separately for age and sex subgroups.

Meta-analysis and meta-regression.

Estimated COVID-19 interruption effects for individual SA3s were pooled by using meta-analysis to obtain the estimated trend at the national level for all young people and for age and sex subgroups. Separate meta-regression models were conducted to evaluate whether the estimated interruption effects were associated with area socioeconomic status (measured by using IRSAD), location of residence (regional vs. metropolitan areas) and state (Victoria vs. other states).

Results

MBS-funded mental health service use data from 332 individual SA3s (excluding offshore and external territories) between 2011 and 2020 were obtained from Services Australia. The data captured >22.4 million service records for all young people ages 12–25 years for 10 years, with yearly records increasing from 1.4 million in 2011 to 3.3 million in 2022.

Use of MBS Mental Health Services During the Pandemic Year

For all young people (across all SA3s), the median increase in the rate of MBS mental health service use between 2019 and 2020 was 14.0% (Table 1). However, we noted variation in median service use rates over this period by sex, age, and location. The highest increase was observed among young females (median increase=20.4%), particularly in the last two quarters of the year 2020 (see figure in the online supplement). Rates among young males remained largely unchanged (median increase=2.8%) in 2020, compared with 2019 (Table 1). Service rates in 2020 varied substantially across SA3s, with lower rates observed in regional areas, compared with metropolitan areas, largely consistent with trends before the pandemic (see figures in the online supplement). Increases in service use were higher in Victoria than in other states for young people ages 18–25 (median increase=21% in Victoria and 14% in other states) and females (median increase=26% in Victoria and 19% in other states) (see table in the online supplement).
TABLE 1. Distribution of rates of MBS service use in the prepandemic (2019) and pandemic (2020) years for all young people and for age and sex subgroupsa
 Age in yearsSex
 All young people12–1718–25FemaleMale
Year and changeMedianQ1–Q3MedianQ1–Q3MedianQ1–Q3MedianQ1–Q3MedianQ1–Q3
2019639496–760572428–688696552–850837661–1,008438346–543
2020717551–889622470–787793618–997984779–1,231443360–569
Increase from 2019 to 2020 (%)14.08.4–20.312.64.0–21.015.79.9–21.820.414.0–28.02.8−2.9 to 8.5
a
Rates represent use of Medicare Benefits Schedule (MBS)–funded services per 1,000 population per year across all Statistical Area Level 3 areas. Q1–Q3, interquartile range for first to third quarter in indicated year. Rates were estimated from population data provided by the Australian Bureau of Statistics.

Interrupted Time-Series Analysis

Interrupted time-series analyses revealed a positive linear association between MBS service use during COVID-19 (RR) and higher socioeconomic status (as measured by IRSAD scores) (Figure 1). This trend was consistent across age and sex subgroups, but the trend was more pronounced for females in areas of higher socioeconomic status. A reduction in MBS service use was common among males in areas with higher socioeconomic disadvantage. Among females in most SA3s, the increase in MBS service use in 2020 was higher (or the reduction was smaller), compared with the trends among males (Figure 2A). However, this sex difference was relatively comparable among areas with different socioeconomic statuses (Figure 2C). Areas with a higher socioeconomic disadvantage tended to have slightly higher increases (or smaller reductions) in service use among those ages 18–25, compared with those ages 12–17 (Figure 2D)—a pattern that became less apparent in socioeconomically advantaged areas.
FIGURE 1. Estimated relative risks (RRs) for COVID-19 interruption effects by Index of Relative Socio-economic Advantage and Disadvantage (IRSAD) area scores, for age and sex subgroups and for the total cohorta
aAn RR >1 indicates an increase in rates of service use beyond what was expected during the pandemic, whereas an RR <1 indicates a decrease in service use rates below what was expected. Superimposed on the figure are locally weighted smoothed lines representing nonlinear associations between Index of Relative Socio-economic Advantage and Disadvantage (IRSAD) scores and estimated COVID-19 interruption effects across Statistical Area Level 3 (SA3) areas (solid lines; surrounding gray areas show the 95% CI). Data from three SA3s from Northern Territory with very low IRSAD scores were excluded as outliers.
FIGURE 2. Comparison between estimated relative risk (RR) for COVID-19 interruption effects among males versus females and among adolescents (ages 12–17 years) versus young adults (ages 18–25 years) and by Statistical Area Level 3 (SA3) IRSAD scorea
aThe diagonal dashed lines in panels A and B indicate that the estimated COVID-19 interruption effects were the same for the two subgroups. Superimposed on panels C and D are locally weighted smoothed lines representing nonlinear associations between Index of Relative Socio-economic Advantage and Disadvantage (IRSAD) scores and estimated COVID-19 interruption effects across SA3s (solid lines; surrounding gray areas show the 95% CI). Data from four SA3s from Northern Territory were outliers and were excluded.
Higher increases in MBS service use were observed in Victorian SA3s (except for young people ages 12–17), compared with other states and territories. Nationally, metropolitan SA3 areas also had higher increases, compared with regional SA3 areas (see figures in the online supplement).

Meta-Analysis and Meta-Regression

On average, a 6.2% (95% CI=5.3%–7.2%) additional increase was noted in use of MBS services in 2020 on top of existing trends (Figure 3). The increase was higher for females (11.8%, 95% CI=10.7%–12.9%) and those ages 18–25 (7.2%, 95% CI=6.2%–8.3%), whereas a decreasing trend was observed for males (3.5% reduction, 95% CI=2.5%–4.5%).
FIGURE 3. Pooled relative risks (RRs) for COVID-19 interruption effects estimated with random-effects meta-analysis, by age and sex subgroupsa
aCOVID-19 interruption effects were estimated with interrupted time-series models for individual Statistical Area Level 3 areas.
The COVID-19 interruption effect was strongly associated with area socioeconomic status (Table 2). That is, a 100-unit increase in IRSAD score (indicating increased socioeconomic advantage) was associated with an increase of between 4.6% and 7.7% in use of MBS services in 2020, after the analysis controlled for differences between regional and metropolitan areas and between Victoria and other states and territories. The highest association was found for young people ages 12–17 (7.7% per 100-unit increase in IRSAD, 95% CI=5.5%–10.0%). Despite overall lower increases observed in regional areas (see figure in the online supplement), meta-regression indicated higher increases for those ages 18–25 (3.1%, 95% CI=1.0%–5.2%) and females (3.4%, 95% CI=1.3%–5.6%) in regional areas, compared with metropolitan areas, with the same level of socioeconomic status and state category. Higher increases in use of MBS services were observed in Victoria for those ages 18–25 (10.1%, 95% CI=7.8%−12.5%) and females (6.6%, 95% CI=4.3%–8.9%), when the analysis controlled for IRSAD and location.
TABLE 2. Relative risks (RRs) from meta-regression analysis of the COVID-19 interruption effect estimated from interrupted time-series models for individual SA3s, for all young people and for age and sex subgroupsa
  Age in yearsSex
MeasureAll young people12–1718–25FemaleMale
Intercept     
 RR1.0381.0341.0381.087.952
 95% CI1.026–1.0501.016–1.0531.025–1.0511.073–1.101.937–.967
 p<.001<.001<.001<.001<.001
IRSAD     
 RR1.0611.0771.0511.0691.046
 95% CI1.047–1.0751.055–1.1001.035–1.0661.053–1.0851.028–1.064
 p<.001<.001<.001<.001<.001
Regional     
 RR1.0271.0231.0311.0341.017
 95% CI1.008–1.046.994–1.0521.010–1.0521.013–1.056.992–1.042
 p.005.12.003.001.19
Victoria     
 RR1.051.9761.1011.0661.014
 95% CI1.031–1.072.949–1.0041.078–1.1251.043–1.089.990–1.039
 p<.001.10<.001<.001.26
a
Index of Relative Socio-economic Advantage and Disadvantage (IRSAD) scores were centered at the mean (995.5), and the RR represented the relative risk per 100-unit increase in IRSAD scores (higher socioeconomic advantage); therefore, the intercept can be interpreted as the estimated COVID-19 interruption effect among Statistical Area Level 3 (SA3) areas with mean IRSAD scores in states other than Victoria. The estimated RRs for specific IRSAD scores can be calculated directly; for example, for all young people in areas with an IRSAD of 1,166.6, RRs can be calculated as 1.038×1.061(1,166.6−995.5)/100)=1.149, representing a 14.9% higher than expected increase in service use during the COVID-19 pandemic.
Results from the sensitivity analysis suggested that excluding the autocorrelation structure (i.e., the degree of similarity between a given time series and a lagged version of itself over successive time intervals) had little impact on results (see figure in the online supplement). A slightly smaller COVID-19 interruption effect was estimated from longer time-series analyses (from 2011 to 2020) (see figure in the online supplement), because increases in MBS service use were slightly higher in the early 2010s—likely because of changes in funding—which resulted in an overestimation of the historical trend and an underestimation of the COVID-19 impact.

Discussion

This is the first study to investigate the impact of the COVID-19 pandemic on the use of MBS-funded mental health services among young people ages 12–25 years across Australia. Our study identified a small increase in use of primary mental health services among young people in the first year of the pandemic—a finding that can be compared with those of recent epidemiological studies on stress and mental ill health during the pandemic. We noted different patterns of use of MBS mental health services as a function of sex, age, and areas with various socioeconomic status levels and lockdown experiences. Notably, we identified two equity issues of significant concern: the reduction or limited expansion of service utilization among males and in geographical areas of lower socioeconomic status.

Overall Changes in Trends

Overall use of MBS-funded mental health services among young people increased by 6.2% in 2019–2020, likely reflecting both increasing demands and changes in MBS funding policy. Consistent increasing patterns have been reported for mental health–related prescriptions and calls to helplines in Australia (15). However, our estimated increases are much lower than recently observed population-based increases in psychological distress and prevalence of common mental disorders during the pandemic (3, 6, 11). For example, a recent review suggested that the pandemic has led to an 11% increase in anxiety and depression at the population level in Australia (3), which could be higher for young people (17). The National Study of Mental Health and Wellbeing in 2020–2021 found that about half (46.6%) of young females and one-third (31.2%) of young males ages 16–26 had a mental disorder in the past 12 months, compared with 26% of all young people ages 16–26 in the same survey conducted in 2007 (18).
Although it is possible that increasing needs were met by other types of mental health care (e.g., private mental health services) that were not funded by MBS, many news articles and reports, as well as anecdotal information, have suggested long waitlists for accessing care and high levels of unmet needs (1922). Some have argued that the Australian Government’s Better Access Pandemic Support does not go far enough to meet existing needs, fails to appreciate disparities in service availability and long waitlists, and imposes prohibitive gap fees (i.e., out-of-pocket costs that are not covered by Medicare) (23).
Globally, mental health has declined as a result of the COVID-19 pandemic (3, 24), particularly among young people (17). Findings on the uptake of mental health services are more mixed (25, 26). A few studies observed reductions in service uptake during lockdowns, which was followed by an increase in demand (2729). Changes in service use may be related to both prepandemic factors shaping help-seeking behaviors (e.g., illness severity, mental health literacy, stigma, and cost) (30, 31) and pandemic-related factors (e.g., fear of infection, reduction in service availability, and uneven burdens imposed on people of different socioeconomic status) (26). However, to the best of our knowledge, no study has evaluated how population-level changes in service utilization were affected by factors such as socioeconomic status and lockdown experiences.

Sex Differences in Mental Health Service Uptake

The sex differences in mental health service use observed in this study (11.8% increase for females and 3.5% decrease for males) suggest a widening access gap for males. Rates of MBS service use among males were slightly more than half the rates among females in this population of young people, which further fell during the pandemic. Although prevalence rates of anxiety and depression were higher among females than among males both before and during the pandemic (6, 32), studies also have reported increased psychological distress among males during the pandemic (32, 33). Sex differences in symptom presentation and help seeking might contribute to a reduction in service use by males. Known barriers to mental health help seeking among young men include health literacy, cultural norms that endorse masculinity, stigma, and service acceptability (34).
There is mounting evidence that males experiencing affective disorders often report a constellation of externalizing signs and symptoms, beyond those included in current diagnostic criteria (35, 36). Indeed, the recently published DSM-5-TR in part acknowledges this evidence, stating that men with major depressive disorder (compared with women) report greater frequencies and intensities of alcohol or other drug misuse, risk taking, and poor impulse control (37). The magnification of externalizing symptoms may also affect the ability of parents to identify and support the needs for care among boys and young men.
MBS-funded services may not adequately address the clinical and engagement needs of young men experiencing or presenting with externalizing symptoms. Population-level data show that compared with young females, young males are less likely to engage with MBS-funded mental health care provided by headspace services, and when they do engage, they are more likely to discontinue care early (38). The degree to which help-seeking and symptom-presentation factors affect the mental health of young men both during and after the COVID-19 pandemic needs further scrutiny.

Impacts of Socioeconomic Disadvantage

We observed a concerning inequitable socioeconomic distribution of the growth in mental health service use. For all young people, the areas with average IRSAD scores (995.5) increased by 3.8% during 2020; this change was expected to be a 14.9% increase in areas with the highest IRSAD (1,166.6) and a 10.3% reduction in areas with the lowest IRSAD (748.6) (calculated with the RRs for the intercept and the IRSAD for all young people in Table 2). Socioeconomic status was found to have a higher impact on service use among young people ages 12–17, compared with other age and sex subgroups. Although regional areas had smaller increases in service use than metropolitan areas, findings from multivariate meta-regression models suggested that this differential increase was likely driven by differences in socioeconomic status, particular for those ages 12–17, compared with other age and sex subgroups. The pandemic had a greater impact on low-income families (e.g., higher infection rates, more social isolation, greater income reduction, and decreasing access to resources) (39, 40). These additional challenges may have limited the capacity of these parents to assist young people seeking needed care (e.g., financial difficulties in paying out-of-pocket fees) (40).
We note that marked disparities in mental health problems and service access based on socioeconomic status existed in Australia before the pandemic (41, 42). The pandemic has likely exacerbated existing inequities (43), heightening barriers related to service availability and accessibility (44). The estimated steep socioeconomic gradient in this study also raises questions as to whether “more-of-the-same” policy responses based on MBS subsidies can reduce existing unequal service access distributions during a crisis or are likely to entrench such inequities (23). Out-of-pocket expenses for accessing psychiatrists and psychologists might be a greater barrier for young people from socioeconomically disadvantaged backgrounds (23). The current concentration of service providers in more affluent areas might also contribute to these issues (45).

Impact of Lockdowns in Victoria

The higher increase in service uptake in Victoria is consistent with reports of greater mental health impacts in this state because of strict restrictions and lengthy lockdowns (12). Higher service uptake might be related to the higher rate of MBS-subsidized telehealth use in Victoria (15), which may have made access to care easier for young people.

Strengths and Limitations

Key strengths of this study included the use of advanced statistical techniques and the most currently available MBS data. A range of sensitivity analyses ensured the findings’ robustness. Limitations of this study are related to the availability and nature of the MBS data. For example, aggregated SA3-level service counts were obtained to protect privacy, limiting the ability to further understand differences at the individual level (e.g., examination of more narrow age bands and whether services were provided to the same individuals) and service level (e.g., type of service provider and mode of service delivery, such as telehealth). Future efforts are needed to improve timely access to individual-level MBS data to better monitor and evaluate trends in service uptake. The quarterly time units did not reflect specific dates of events, such as the timing of lockdowns or the introduction of changes to the MBS. At the time of this evaluation, data were available from 2020 only, which limited our capacity to estimate the continued impacts of the pandemic and policy changes. Further, our data indicated only changes in service use; they did not reflect the severity of disorders or psychological distress and the needs and demands on services. For example, the data did not include those who failed to get help because of lack of service availability and long waitlists or those who accessed mental health services through other funding sources (e.g., private health insurance and schools). Future studies using individual-level and linked MBS data (e.g., examining emergency department presentations) are needed to better understand gaps in service provision and demands.
The ERPs used in this study did not reflect likely changes in population structure (primarily in areas with a higher international student population), which may have caused bias in rates of service use. However, this limitation was unlikely to have affected the generalizability of the study findings, because we used pooled effects.

Conclusions

Young people have been disproportionately affected by the COVID-19 pandemic, and it is likely that the conditions and risk factors for poor mental health will endure at least over the medium term. The Australian government’s investment in the expansion of MBS due to the pandemic does not seem to go far enough in addressing mental health concerns among young people (23). Young males and those from lower socioeconomic areas were found to be less likely to use services. Addressing these disparities might require policy instruments beyond MBS subsidies, such as investment in innovative and evidence-based mental health promotion and outreach service initiatives to improve access for young people with lower rates of service access—for example, providers may consider using alternative or blended-care models utilizing digital health platforms (23). Failure to address apparent systemic factors that impede service use risks leaving vulnerable young people with the greatest level of unmet needs without mental health treatment.

Acknowledgments

The authors acknowledge Services Australia, Australian Government Department of Health, for provision of data examined in this study.

Footnote

The data sets used in the study are owned by Services Australia, the Australian Government Department of Health, and are available from the corresponding author with the approval of the data custodians. All analytical code can be found online at https://doi.org/10.5281/zenodo.7272839.

Supplementary Material

File (appi.ps.20220345.ds001.pdf)

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Information & Authors

Information

Published In

Go to Psychiatric Services
Go to Psychiatric Services
Psychiatric Services
Pages: 581 - 588
PubMed: 36444529

History

Received: 4 July 2022
Revision received: 20 September 2022
Accepted: 3 October 2022
Published online: 29 November 2022
Published in print: June 01, 2023

Keywords

  1. COVID-19
  2. Mental health
  3. Help-seeking
  4. Community mental health services
  5. Self-help
  6. Primary care

Authors

Details

Caroline X. Gao, Ph.D. [email protected]
Centre for Youth Mental Health (Gao, Menssink, Filia, Rice, McGorry, Cotton) and Melbourne School of Population and Global Health (McDonald, Simons), University of Melbourne, Parkville, Victoria, Australia; Orygen, Parkville, Victoria, Australia (Gao, Hamilton, Menssink, Filia, Rice, McGorry, Cotton); headspace National Youth Mental Health Foundation, Melbourne (Rickwood); Faculty of Health, University of Canberra, Canberra, Australian Capital Territory, Australia (Rickwood); Brain and Mind, University of Sydney, Camperdown, New South Wales, Australia (Hickie).
Lachlan P. McDonald, M. Biostats.
Centre for Youth Mental Health (Gao, Menssink, Filia, Rice, McGorry, Cotton) and Melbourne School of Population and Global Health (McDonald, Simons), University of Melbourne, Parkville, Victoria, Australia; Orygen, Parkville, Victoria, Australia (Gao, Hamilton, Menssink, Filia, Rice, McGorry, Cotton); headspace National Youth Mental Health Foundation, Melbourne (Rickwood); Faculty of Health, University of Canberra, Canberra, Australian Capital Territory, Australia (Rickwood); Brain and Mind, University of Sydney, Camperdown, New South Wales, Australia (Hickie).
Matthew P. Hamilton, M.Sc.
Centre for Youth Mental Health (Gao, Menssink, Filia, Rice, McGorry, Cotton) and Melbourne School of Population and Global Health (McDonald, Simons), University of Melbourne, Parkville, Victoria, Australia; Orygen, Parkville, Victoria, Australia (Gao, Hamilton, Menssink, Filia, Rice, McGorry, Cotton); headspace National Youth Mental Health Foundation, Melbourne (Rickwood); Faculty of Health, University of Canberra, Canberra, Australian Capital Territory, Australia (Rickwood); Brain and Mind, University of Sydney, Camperdown, New South Wales, Australia (Hickie).
Koen Simons, Ph.D.
Centre for Youth Mental Health (Gao, Menssink, Filia, Rice, McGorry, Cotton) and Melbourne School of Population and Global Health (McDonald, Simons), University of Melbourne, Parkville, Victoria, Australia; Orygen, Parkville, Victoria, Australia (Gao, Hamilton, Menssink, Filia, Rice, McGorry, Cotton); headspace National Youth Mental Health Foundation, Melbourne (Rickwood); Faculty of Health, University of Canberra, Canberra, Australian Capital Territory, Australia (Rickwood); Brain and Mind, University of Sydney, Camperdown, New South Wales, Australia (Hickie).
Jana M. Menssink, Ph.D.
Centre for Youth Mental Health (Gao, Menssink, Filia, Rice, McGorry, Cotton) and Melbourne School of Population and Global Health (McDonald, Simons), University of Melbourne, Parkville, Victoria, Australia; Orygen, Parkville, Victoria, Australia (Gao, Hamilton, Menssink, Filia, Rice, McGorry, Cotton); headspace National Youth Mental Health Foundation, Melbourne (Rickwood); Faculty of Health, University of Canberra, Canberra, Australian Capital Territory, Australia (Rickwood); Brain and Mind, University of Sydney, Camperdown, New South Wales, Australia (Hickie).
Kate Filia, Ph.D.
Centre for Youth Mental Health (Gao, Menssink, Filia, Rice, McGorry, Cotton) and Melbourne School of Population and Global Health (McDonald, Simons), University of Melbourne, Parkville, Victoria, Australia; Orygen, Parkville, Victoria, Australia (Gao, Hamilton, Menssink, Filia, Rice, McGorry, Cotton); headspace National Youth Mental Health Foundation, Melbourne (Rickwood); Faculty of Health, University of Canberra, Canberra, Australian Capital Territory, Australia (Rickwood); Brain and Mind, University of Sydney, Camperdown, New South Wales, Australia (Hickie).
Debra Rickwood, Ph.D.
Centre for Youth Mental Health (Gao, Menssink, Filia, Rice, McGorry, Cotton) and Melbourne School of Population and Global Health (McDonald, Simons), University of Melbourne, Parkville, Victoria, Australia; Orygen, Parkville, Victoria, Australia (Gao, Hamilton, Menssink, Filia, Rice, McGorry, Cotton); headspace National Youth Mental Health Foundation, Melbourne (Rickwood); Faculty of Health, University of Canberra, Canberra, Australian Capital Territory, Australia (Rickwood); Brain and Mind, University of Sydney, Camperdown, New South Wales, Australia (Hickie).
Simon Rice, Ph.D.
Centre for Youth Mental Health (Gao, Menssink, Filia, Rice, McGorry, Cotton) and Melbourne School of Population and Global Health (McDonald, Simons), University of Melbourne, Parkville, Victoria, Australia; Orygen, Parkville, Victoria, Australia (Gao, Hamilton, Menssink, Filia, Rice, McGorry, Cotton); headspace National Youth Mental Health Foundation, Melbourne (Rickwood); Faculty of Health, University of Canberra, Canberra, Australian Capital Territory, Australia (Rickwood); Brain and Mind, University of Sydney, Camperdown, New South Wales, Australia (Hickie).
Ian Hickie, M.D.
Centre for Youth Mental Health (Gao, Menssink, Filia, Rice, McGorry, Cotton) and Melbourne School of Population and Global Health (McDonald, Simons), University of Melbourne, Parkville, Victoria, Australia; Orygen, Parkville, Victoria, Australia (Gao, Hamilton, Menssink, Filia, Rice, McGorry, Cotton); headspace National Youth Mental Health Foundation, Melbourne (Rickwood); Faculty of Health, University of Canberra, Canberra, Australian Capital Territory, Australia (Rickwood); Brain and Mind, University of Sydney, Camperdown, New South Wales, Australia (Hickie).
Patrick D. McGorry, M.D., Ph.D.
Centre for Youth Mental Health (Gao, Menssink, Filia, Rice, McGorry, Cotton) and Melbourne School of Population and Global Health (McDonald, Simons), University of Melbourne, Parkville, Victoria, Australia; Orygen, Parkville, Victoria, Australia (Gao, Hamilton, Menssink, Filia, Rice, McGorry, Cotton); headspace National Youth Mental Health Foundation, Melbourne (Rickwood); Faculty of Health, University of Canberra, Canberra, Australian Capital Territory, Australia (Rickwood); Brain and Mind, University of Sydney, Camperdown, New South Wales, Australia (Hickie).
Sue M. Cotton, Ph.D.
Centre for Youth Mental Health (Gao, Menssink, Filia, Rice, McGorry, Cotton) and Melbourne School of Population and Global Health (McDonald, Simons), University of Melbourne, Parkville, Victoria, Australia; Orygen, Parkville, Victoria, Australia (Gao, Hamilton, Menssink, Filia, Rice, McGorry, Cotton); headspace National Youth Mental Health Foundation, Melbourne (Rickwood); Faculty of Health, University of Canberra, Canberra, Australian Capital Territory, Australia (Rickwood); Brain and Mind, University of Sydney, Camperdown, New South Wales, Australia (Hickie).

Notes

Send correspondence to Dr. Gao ([email protected]).

Competing Interests

Dr. Hickie reports support for community-based projects from AstraZeneca, Eli Lily, Pfizer, Servier, and Wyeth. He is chief scientific adviser to and an equity shareholder in InnoWell Pty. Ltd. The other authors report no financial relationships with commercial interests.

Funding Information

This study was supported by Partnership Grants APP1076940 and APP1198696 from the National Health and Medical Research Council (NHMRC). This was a joint project between Orygen, the University of Melbourne, and headspace National Youth Mental Health Foundation. Dr. Cotton is supported by NHMRC Senior Research Fellowship APP1136344.

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