The coronavirus (COVID-19) pandemic introduced unprecedented changes for students, such as exam cancellations, escalation of digital learning and uncertainty over their futures. University students had to face additional challenges, including virtual campuses, socially distanced lectures and the closing of student spaces. The impact of the pandemic may have exacerbated pre-existing concerns of increases in prevalence of mental health problems in university students. Reference Auerbach, Mortier, Bruffaerts, Alonso, Benjet and Cuijpers1
During the pandemic, several surveys reported high levels of psychological distress, anxiety, depression and stress. Reference Tang, McEnery, Chandler, Toro, Walasek and Friend2–Reference Gewalt, Berger, Krisam and Breuer6 A cross-sectional survey of 895 university students in the UK found that approximately 40% met the threshold for moderate to severe anxiety and depression in summer 2020. Reference Tang, McEnery, Chandler, Toro, Walasek and Friend2 A longitudinal survey of 254 university students, also in the UK, found a significant increase in depressive symptoms and decrease in well-being during the April–May 2020 lockdown compared with pre-pandemic periods. Reference Evans, Alkan, Bhangoo, Tenenbaum and Ng-Knight3 Moreover, increased mental health problems during the pandemic may be associated with academic outcomes; a cross-sectional survey of 5021 students across four universities in Germany found high levels of depression and approximately half of university students were struggling with workload, felt overwhelmed with increases in workload and were worried about not being able to complete the academic year. Reference Matos Fialho, Spatafora, Kühne, Busse, Helmer and Zeeb7 However, most studies do not have both pre- and peri-pandemic data, peri-pandemic data beyond late 2020 and/or large samples, which limits the comparison of student mental health profiles.
Research priorities
Research priorities informed by university students’ experiences highlight an urgent need to understand the explanatory factors of poor mental health, especially experiences of students from minority groups. Reference Sampson, Priestley, Dodd, Broglia, Wykes and Robotham8 Cross-sectional surveys have found potential risk factors for poor mental health and its impact on academic outcomes in university students, such as being female or non-binary, Reference Tang, McEnery, Chandler, Toro, Walasek and Friend2,Reference Wathelet, Duhem, Vaiva, Baubet, Habran and Veerapa5,Reference Gewalt, Berger, Krisam and Breuer6,Reference Prowse, Sherratt, Abizaid, Gabrys, Hellemans and Patterson9,Reference Lin, Schleider, Nelson, Richmond and Eaton10 of younger age, Reference Tang, McEnery, Chandler, Toro, Walasek and Friend2,Reference Lin, Schleider, Nelson, Richmond and Eaton10 from a minority ethnic group Reference Lin, Schleider, Nelson, Richmond and Eaton10 and having a disability. Reference Aguilar and Lipson11–Reference Lett, Tamaian and Klest13 Additionally, surveys using samples of lesbian, gay, bisexual and transgender (LGBT) university students found relatively high psychological distress, anxiety and depression during the pandemic. Reference Gonzales, de Mola, Gavulic, McKay and Purcell14,Reference Salerno, Shrader, Algarin, Lee and Fish15 Understanding explanatory factors for poor student mental health, especially during the pandemic, is urgently needed to inform service provision in university mental health services. However, most studies assess characteristics only broadly (e.g. Asian or LGBT) or not at all (e.g. disability and student fee status are not routinely collected). These measurement limitations prevent finer-grained analysis of potential mental health differences across student groups to understand what drives these changes.
This study aims to use routine university student service entry data to understand psychological distress, clinical risk and impact on academic outcomes. Specifically, we aim to investigate: (a) whether psychological distress, clinical risk and impact of problems on academic outcomes at service entry differed before and during the pandemic; and (b) whether psychological distress, clinical risk and impact of problems on academic outcomes at service entry were associated with sociodemographic factors (age, gender, ethnicity, sexual orientation, fee status and disability status) before and during the pandemic.
Method
Study design
We used a repeated cross-sectional design. Data were collected from students (n = 10 851) who attended a student counselling and mental health support (CMHS) service in a university in London, UK, across four academic years (August 2018 to July 2019, August 2019 to July 2020, August 2020 to July 2021, and August 2021 to July 2022). The university is one of the largest in London, with a diverse community of over 47 000 undergraduate and postgraduate students from 160 countries, and a higher representation of minority ethnic and gender groups compared with the UK population. Data were collected as routine measures completed by students on registration with the service to inform the initial assessment process. Students with complete sociodemographic and outcome data were included in the analysis sample. Approval for secondary data analysis of routine service data was granted by King’s College London University Research Data Storage and students provided consent to the service privacy policy, which permits data collection and reporting for audit and service improvement purposes.
Sample
Students completed an online self-referred form to register with the CMHS service. To enter the service, students had to meet the following inclusion criteria: (a) enrolled at the university for a degree programme, (b) registered with a general practitioner in the UK, (c) and not have already registered with the service in the past 3 months. Once registered, students were offered an initial assessment and brief psychological intervention for mild to moderate mental health problems by qualified counsellors (e.g. counselling and clinical psychologists, psychotherapists and mental health advisors). Students with complete sociodemographic and routine mental health measures data were included in analysis.
Measures
The online registration form that students complete at service entry includes measures on sociodemographic information, mental health and perceived impact of problems on academic outcomes. Students were also given these same questions at end of treatment. However, only measures assessed at service entry are used in this paper, as we were only interested in mental health profiles in students when presenting to the service.
Pre- and peri-pandemic
We present four academic years of data (August 2018–July 2022), which covered three national lockdowns, implementation of various social restrictions and changes in service delivery. In the UK, three national lockdowns occurred: March–June 2020, November–December 2020 and January–March 2021. At the start of the pandemic, university teaching and CMHS service delivery were moved online, and students were advised to return home. Service delivery then transitioned to a hybrid mode in the 2020–2021 academic year and moved fully back to in-person in 2021–2022. Academic years at the student’s entry to the service were combined into pre-pandemic (August 2018 to July 2019 and August 2019 to 17 March 2020) and peri-pandemic (18 March 2020 to July 2022) groups.
Sociodemographic variables
Self-reported sociodemographic information was assessed, including age, gender, ethnicity, sexual orientation, fee status and disability status. Age was treated as a continuous and categorical variable (16–24, 25–34 and ≥34 years). Gender was a categorical variable with male, female and other gender (non-binary/genderqueer) options. Ethnicity was categorised into Black (African, Caribbean and any other Black background), South Asian (Bangladeshi, Indian and Pakistani), Chinese, Other Asian (any other Asian background), White British, Other White (White Irish and any other White background), Mixed (White and Asian, White and Black African, White and Black Caribbean, and any other Mixed background) and Other ethnic background options. Although it was possible to have even more granular ethnic categories, we used these categories to ensure that there were enough respondents in each group. Sexual orientation was a categorical variable with heterosexual, bisexual, gay/lesbian and not sure/queer options. Fee status was a categorical variable with home, European Union (EU) and overseas student options. Disability was a categorical variable with disability registration and no disability registration options.
Outcomes
Psychological distress and clinical risk were assessed using the Clinical Outcomes in Routine Evaluation (CORE-OM) scale. Reference Evans, Connell, Barkham, Margison, McGrath and Mellor-Clark16 The 34-item self-report measure assesses psychological distress in the past week across four domains: subjective well-being, mental health problems and their symptoms, life functioning and risk/harm. Scores are presented as a total raw score (0–40), where higher scores represent worse psychological distress. Reference McInnes17 A total clinical risk score was calculated by totalling the risk/harm domain, presented as total scores of 0–4. 18 The clinical cut-off for the CORE-OM total and risk scores are 10 and 1 respectively.
Impact of problems on academic outcomes was assessed using the Counselling Impact on Academic Outcomes (CIAO) scale. Reference Wallace19 The 9-item self-report measure assesses the perceived impacts of their problems on academic outcomes (questions 1–3) and of counselling on their academic outcomes (questions 4–9). In this study, we only use scores from questions 1–3, as only these were asked at service entry. The perceived impact of their problems on academic outcomes are presented as a total raw score (3–15), where higher scores indicate that problems more frequently had a negative impact on their academic outcomes, such as thoughts of leaving their course, ability to study and overall student experience.
Statistical analysis
Analyses were done using Stata 17 for Windows. For descriptive analyses, we summarised our sample by sociodemographic variables, both for complete and missing data.
For research question 1 (whether psychological distress, clinical risk and impact of problems on academic outcomes at service entry differed before and during the pandemic), we first tested the normal distribution of the outcomes. As the data were not normally distributed, Wilcoxon signed-rank tests were used to examine mean differences between the two groups of students, with the pandemic as the independent categorical variable (pre- and peri-pandemic) and psychological distress (CORE-OM total score), clinical risk (CORE-OM risk score) and impact of problems on academic outcomes (CIAO total score) as the dependent variables.
For research question 2 (potential explanatory factors for psychological distress, clinical risk and impact of problems on academic outcomes), we ran separate univariable linear regression models to assess the unadjusted association between sociodemographic variables (age, gender, ethnicity, sexual orientation, fee status and disability status) and psychological distress, clinical risk and impact of problems on academic outcomes in the whole cohort. We then adjusted the model for all other sociodemographic variables.
We performed sensitivity analyses too. For research question 1, we investigated whether the differences in outcomes between pre- and peri-pandemic were explained by academic years (August 2018 to July 2019, August 2019 to July 2020, August 2020 to July 2021, and August 2021 to July 2022) using one-way analysis of variance (ANOVA) and post hoc Tukey tests. For research question 2, we investigated whether associations between sociodemographic variables and outcomes differed between pandemic time points by running regression models with the separate pre- and peri-pandemic groups. Additionally, we imputed sociodemographic variables and outcomes in 50 data-sets and reran the separate unadjusted and adjusted models. To impute missing data using multiple imputation by chained equations, we used all sample characteristics, outcomes and pandemic time point (pre- and peri-pandemic) as an auxiliary variable.
Results
Participant characteristics
Of the respondents included in the analysis (n = 9517), 4522 presented to the service pre-pandemic and 4995 peri-pandemic (Table 1). Over 76% of students were 16–24 years old and 77.5% were female. Most students identified as heterosexual (73.9%). The largest ethnic groups in the sample were White British (29.7%) and Other White (21.8%). The majority of students were classified as home students (63%) and few students were registered as having a disability (12.6%). Students who presented to the CMHS service between the pre- and peri-pandemic time points shared differences across all sample characteristics. The sample’s outcomes were clinically significant, with the following mean (s.d.) scores: 19.60 (5.81) on the CORE-OM total score; 2.46 (3.27) on the CORE-OM risk score; and 6.73 (2.87) on the CIAO total score. The 538 students who did not have all outcome variables available were excluded from the analysis (Supplementary Table 1, available at https://doi.org/10.1192/bjo.2024.868).
Table 1 Characteristics of students with complete data for all sociodemographic and outcome variables

Missing data
Of the whole cohort (n = 10 055), 9517 had complete sociodemographic and outcome data and 538 were missing at least one sociodemographic or outcome data (Supplementary Table 1). Within the pre-pandemic group (n = 4666), 4522 had complete sociodemographic and outcome data and 144 had some missing sociodemographic and outcome data. Within the peri-pandemic group (n = 5389), 4995 had complete sociodemographic and outcome data and 394 had some missing sociodemographic and outcome data.
A similar proportion of the age, sexual orientation, fee status and disability groups had missing measurements for sociodemographic and outcome data across the pre- and peri-pandemic time points. Male students had a similar proportion of missing measurements for sociodemographic and outcome data compared with female students across the pre- and peri-pandemic time points, but non-binary/genderqueer students had a higher proportion of missing measurements for sociodemographic and outcome data at the pre-pandemic time point. Black, South Asian, Other Asian, White British, Other White, Mixed and Other ethnic groups had a similar proportion of missing measurements for sociodemographic and outcome data across the pre- and peri-pandemic time points, except Chinese students had a higher proportion of missing data at the peri-pandemic time point.
Differences in outcomes between pre- and peri-pandemic participants
As presented in Table 2 (n = 9517), students who entered the service pre-pandemic did not have significantly different mean psychological distress (z = 1.416, Cohen’s d = 0.03, 95% CI −0.007 to 0.074) or mean impact of problems on academic outcomes (z = 1.329, Cohen’s d = 0.03, 95% CI −0.008 to 0.073) compared with students who entered the service during the pandemic. Mean clinical risk was significantly higher in students who entered services pre-pandemic compared with peri-pandemic, albeit with very small effect size (z = 2.863, Cohen’s d = 0.04, 95% CI 0.003–0.083).
Table 2 CORE-OM and CIAO scores for the pre- and peri-pandemic samples (n = 9517)

CORE-OM, Clinical Outcomes in Routine Evaluation; CIAO, Counselling Impact on Academic Outcomes.
Potential explanatory factors
Unadjusted and adjusted linear regression analyses (n = 9517) are presented in Tables 3, 4 and 5.
Table 3 Linear regression analysis on the association between potential explanatory factors and CORE-OM total score (n = 9517)

CORE-OM, Clinical Outcomes in Routine Evaluation.
Table 4 Linear regression analysis on the association between potential explanatory factors and CORE-OM risk score (n = 9517)

CORE-OM, Clinical Outcomes in Routine Evaluation.
Table 5 Unadjusted and adjusted linear regression analysis on the association between potential explanatory factors and CIAO total score (n = 9517)

CIAO, Counselling Impact on Academic Outcomes.
Younger students had higher psychological distress (β = −0.067, 95% CI −0.093 to −0.042) and clinical risk (β = −0.078, 95% CI −0.092 to −0.063) compared with their older counterparts.
Students who identified as female had higher psychological distress (mean difference 0.746, 95% CI 0.463–1.028) compared with male students. Those who identified as non-binary/genderqueer also had higher psychological distress (mean difference 1.488, 95% CI 0.246–2.731) and clinical risk (mean difference 0.884, 95% CI 0.187–1.581) compared with male students.
Gay/lesbian students had higher clinical risk (mean difference 0.538, 95% CI 0.226–0.848) than heterosexual students. Bisexual and not sure/queer students had higher psychological distress (mean difference 0.830, 95% CI 0.466–1.194 and mean difference 0.789, 95% CI 0.386–1.192 respectively) and clinical risk (mean difference 1.121, 95% CI 0.917–1.325 and mean difference 0.726, 95% CI 0.501–0.952 respectively) compared with heterosexual counterparts.
Compared to their White counterparts, Black (mean difference 1.350, 95% CI 0.831–1.869), South Asian (mean difference 1.715, 95% CI 1.336–2.095), Chinese (mean difference 1.740, 95% CI 1.215–2.264), Other Asian (mean difference 2.062, 95% CI 1.540–2.585), Mixed (mean difference 0.522, 95% CI 0.072–0.971) and Other ethnic group (mean difference 2.072, 95% CI 1.468–2.675) students had higher psychological distress, South Asian (mean difference 0.481, 95% CI 0.268–0.694), Chinese (mean difference 1.21, 95% CI 0.920–1.510), Other Asian (mean difference 0.836, 95% CI 0.542–1.130) and Other ethnic group (mean difference 0.660, 95% CI 0.320–0.999) students had higher clinical risk and Black (mean difference 0.766, 95% CI 0.515–1.017), South Asian (mean difference 0.645, 95% CI 0.462–0.829), Chinese (mean difference 0.637, 95% CI 0.383–0.890), Other Asian (mean difference 0.880, 95% CI 0.627–1.133), Other White (mean difference 222, 95% CI 0.048–0.396), Mixed (mean difference 0.231, 95% CI 0.013–0.449) and Other ethnic group (mean difference 1.088, 95% CI 0.796–1.380) students had higher impact of problems on academic outcomes.
Students with EU fee status had lower psychological distress (mean difference −0.374, 95% CI −0.712 to −0.035), clinical risk (mean difference −0.308, 95% CI −0.498 to −0.118) and impact of problems on academic outcomes (mean difference −0.252, 95% CI −0.415 to −0.088) compared with students with home fee status. Overseas students also had lower impact of problems on academic outcomes (mean difference −0.342, 95% CI −0.483 to −0.200) than those with home fee status.
Those registered with a disability had higher psychological distress (mean difference 1.155, 95% CI 0.802–1.508), clinical risk (mean difference 0.545, 95% CI 0.347–0.743) and impact of problems on academic outcomes (mean difference 0.729, 95% CI 0.559–0.900) compared with those without.
Sensitivity analyses
When the pandemic (pre- versus peri-pandemic) time points were broken down into academic years (2018–2019, 2019–2020, 2020–2021 and 2021–2022), post hoc Tukey tests found no significant differences between outcomes in individual academic years during the pandemic (Supplementary Table 2).
Linear regression models conducted on the pre- and peri-pandemic samples separately mainly found no differences (Supplementary Tables 3–5). However, students who identified as non-binary/genderqueer did not have higher psychological distress than male counterparts in the pre-pandemic sample or have higher clinical risk than male students in peri-pandemic. Other ethnic group students did not have higher psychological distress than White students in the pre-pandemic sample. Lastly, Other White and Mixed ethnic group students did not have higher impact of problems on academic outcomes than White students in the pre- or peri-pandemic samples. Multiple imputation analyses used a sample of 9616. Multiply imputed adjusted analyses were not different from complete cases across all outcomes (Supplementary Tables 6–8).
Discussion
Main findings
This study aimed to investigate (a) how psychological distress, clinical risk and impact of problems on academic outcomes differed before and during the COVID-19 pandemic; and (b) potential explanatory factors for psychological distress, clinical risk and impact of problems on academic outcomes in university students at service entry using routine data from a CMHS service.
Comparison of pre- and peri-pandemic samples suggests that there were no significant differences between psychological distress and impact of problems on academic outcomes in students presenting to the service with mental health problems. These findings are similar to other studies which found little change in general mental health outcomes between pre- and peri-pandemic time points in university students. Reference Sun, Wu, Fan, Dal Santo, Li and Jiang20 Our findings suggest clinical risk was significantly higher pre-pandemic compared with peri-pandemic, which contrasts with previous findings on increased prevalences of suicidal ideation and self-harm in student and adult samples. Reference Tang, McEnery, Chandler, Toro, Walasek and Friend2,Reference Farooq, Tunmore, Ali and Ayub21–Reference Sivertsen, Knapstad, Petrie, O’Connor, Lonning and Hysing23
Younger age was identified as significantly associated with higher psychological distress and clinical risk. Younger students may face several additional but universal challenges, which may explain why they present to the service with worse mental health outcomes; the challenges include managing the transition to university from school, moving away from home, losing familiar support networks, and still developing self-efficacy and socioemotional regulation skills. Although some studies suggest that psychological distress declines as age increases, Reference Charles, Rush, Piazza, Cerino, Mogle and Almeida25 it is unclear whether the reduction of psychological distress is related to temporal or generational changes, whereby younger students may have higher psychological distress compared with older students by default, because of when they were born.
Female gender was associated with higher psychological distress. This complements existing research that female students have worse mental health outcomes compared with male counterparts, which may be due to caring responsibilities, disproportionate loss of employment and other factors. Reference Breslau, Roth, Baird, Carman and Collins26–Reference Victor, Muehlenkamp, Hayes, Lengel, Styer and Washburn28 Non-binary/genderqueer students were also more likely to report higher psychological distress and clinical risk than male students, which could be due to increased likelihood of childhood abuse or assault in relation to being gender non-conforming. Reference Rimes, Goodship, Ussher, Baker and West29 Although our study adds to the gender literature, as many studies treat gender as a binary variable, the number of non-binary/genderqueer students was very small so our finding should be carefully interpreted.
We found that being gay/lesbian was significantly associated with higher clinical risk and being bisexual and not sure/queer was significantly associated with higher psychological distress and clinical risk. This adds to the literature that LGBT people report more mental health problems than heterosexual adults, and bisexual and other queer people may have the worst outcomes. Reference Buspavanich, Lech, Lermer, Fischer, Berger and Vilsmaier30,Reference Dunlop, Hartley, Oladokun and Taylor31 This may be due to stigma and discrimination from heterosexual communities and within the queer communities. Importantly, our findings add to the sparse evidence on sexual orientation and mental health outcomes in UK university students, as most studies use general adult samples.
Asian, Black and Mixed ethnicity were significantly associated with increased psychological distress, clinical risk and impact of problems on academic outcomes. This has already been reflected in previous studies, which have suggested that experiences of structural racism and disproportionate material/academic hardship may be a reason for worse mental health outcomes in these groups. Reference Mpofu, Cooper, Ashley, Geda, Harding and Johns32,Reference Jabbari, Ferris, Frank, Malik and Bessaha33 Those who experienced perceived racism were also more likely to have trouble with executive functioning, Reference Mpofu, Cooper, Ashley, Geda, Harding and Johns32 which may affect academic outcomes. Our findings add to the existing literature that students from minority ethnic groups have worse mental health outcomes and provide more detailed breakdowns of mental health outcomes between ethnic groups than most studies are unable to do. Reference Proto and Quintana-Domeque34,Reference Chen and Lucock35
Being registered with a disability was significantly associated with increased psychological distress, clinical risk and impact of problems on academic outcomes. To our knowledge, no studies have shown this in a large UK university student sample, so our findings provide evidence for the disproportionate mental health needs of students with a disability. Potential reasons for the worse mental health and academic outcomes than those without disability may be poorer social connectedness, lack of social support, reduced self-efficacy and feeling not supported in their learning environment. Reference Dryer, Henning, Tyson and Shaw36,Reference McManus, Dryer and Henning37
Home fee status was significantly associated with increased psychological distress and impact of problems on academic outcomes. This replicates other studies which found that home/domestic students reported worse mental health outcomes than overseas/international students. Reference King, Rivera, Cunningham, Pickett, Harkness and McNevin38,Reference Jones, Lodder and Papadopoulos39 However, the only UK study used a small sample and did not adjust for potential confounding. Reference Jones, Lodder and Papadopoulos39 Although reasons for this disparity in outcomes are still unclear, possible explanations span from cultural stigma and reporting artefact to socioeconomic status and disproportionate resource provision for acculturation of international students.
Most of the explanatory factors were significantly associated with increased psychological distress, clinical risk and impact of problems on academic outcomes in both the pre- and peri-pandemic groups, suggesting that explanatory factors did not differ much between the pre- and peri-pandemic time points. This elucidates that these key explanatory factors are stably associated with poor mental health and academic outcomes in university students across time. This adds to our current understanding of risk factors for poor mental health in university students generally and in the context of the pandemic. Reference Xu, Su, Jiang, Guo, Lu and Liu40 This may suggest that pre-existing risk factors continue to play a role in shaping university student outcomes during the pandemic. However, the causal relationship between the pandemic and university student outcomes still needs further research.
Strengths and limitations
This study uses routine data of 9517 students across pre- and peri-pandemic time points who presented to a CMHS service. We include a wide range of important sociodemographic characteristics that many studies do not assess, including gender and sexual minorities, finer categories of ethnicity, fee status and disability registration. We were able to look across characteristics and adjust for them in analyses to provide stronger evidence on their associations with university student mental health and academic outcomes. Our data are largely complete and the proportion of missing measurements of sociodemographic and outcome data are mostly similar across characteristics and time points. This adds to the current literature and suggests potential risk factors that could be used to identify students who may need support. Our study emphasises the need to support groups of university students who may be at higher risk of poorer mental health and academic outcomes. In addition to psychological distress and clinical risks, we also assess impact on academic outcomes to understand the potential impact of mental health problems in university students and their experiences.
However, there are several limitations to our study. First, we could not assess some potential explanatory factors, such as socioeconomic and income factors, trans identity, pre-existing mental illness, educational attainment and course characteristics (e.g. mode and level of study), as data were not available. Second, we could not examine changes in mental health and academic outcomes longitudinally during the pandemic owing to the repeated cross-sectional design of our study. Third, our cohort captures only students who presented to the CMHS service. It therefore does not include students who did not access mental health support for whatever reason and it may not include students experiencing milder mental health problems. This potential sampling bias should be considered when interpreting our findings as these findings do not reflect population-level changes in student mental health before and during the pandemic.
Implications
Our findings prompt future research to parse causal pathways in poor university student mental health. The mechanisms of changes in psychological distress, clinical risk and impact of problems on academic outcomes is still unclear. Future research should explore the intersection of multiple social identities and how they interact in student mental health and academic outcomes. With emerging advanced statistical analyses using intersectional frameworks, intersectionality should be considered when investigating causal pathways in university mental health to inform enhanced and individualised care. Data post-July 2022 and end-of-treatment outcomes should also be analysed to examine potential longitudinal impacts of the pandemic on student mental health and the impact of the support offered by universities. In-depth qualitative studies could also be used to explore potential mechanisms of change in university student mental health.
Understanding what individual characteristics may be associated with worse psychological distress, clinical risk and impact of problems on academic outcomes may inform targeted outreach and support to those who may be more vulnerable. Methods such as digital and social media outreach, whole university campaigns or large-scale events could promote the use of CMHS services to university students and encourage uptake by specific populations.
Universities should ensure that strategies are implemented to reduce inequities that may be contributing to poorer mental health and academic outcomes. Emerging ideas of achieving this include integrating inclusive and culturally responsive pedagogy into curricula, establishing safe spaces for minority groups for community and support, clear reporting systems and processes for students who experience discrimination, and training and awareness campaigns.
We need to better understand how universities and student CMHS services can most efficiently and effectively support the mental health needs of university students. As the long-term consequences of the pandemic on university student mental health and academic outcomes are not fully established, it is crucial to ensure that systems are equipped to offer support to university students who need it.
Supplementary material
The supplementary material is available online at https://doi.org/10.1192/bjo.2024.868.
Data availability
The data are not publicly available but may be available on reasonable request from the corresponding author, A.A.
Acknowledgements
We thank all students whose data were used in this study. We are grateful to Deborah Ceccarelli for assistance with the data acquisition. We thank all the staff at the King’s College London Counselling and Mental Health Service.
Author contributions
B.C.F.C. and A.A. designed the study; A.A. provided access to the data. B.C.F.C. led the study with supervision from A.A.; B.C.F.C. analysed the data with support from J.S.H.; all authors provided interpretation of the findings; B.C.F.C. drafted the manuscript with input from A.A.; all authors reviewed and finalised the manuscript.
Funding
This research received no specific grant from any funding agency, commercial or not-for-profit sectors.
Declaration of interest
None.
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