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A systematic review of peer support interventions for student mental health and well-being in higher education

Published online by Cambridge University Press:  15 December 2023

Julia Pointon-Haas*
Affiliation:
Institute of Psychiatry, Psychology and Neuroscience, Department of Psychology, King's College London, UK
Luqmaan Waqar
Affiliation:
Institute of Psychiatry, Psychology and Neuroscience, Department of Psychology, King's College London, UK
Rebecca Upsher
Affiliation:
Institute of Psychiatry, Psychology and Neuroscience, Department of Psychology, King's College London, UK
Juliet Foster
Affiliation:
Institute of Psychiatry, Psychology and Neuroscience, Department of Psychology, King's College London, UK
Nicola Byrom
Affiliation:
Institute of Psychiatry, Psychology and Neuroscience, Department of Psychology, King's College London, UK
Jennifer Oates
Affiliation:
School of Health Sciences, Faculty of Health and Medical Sciences, University of Surrey, UK
*
Correspondence: Julia Pointon-Haas. Email: julia.a.pointon-haas@kcl.ac.uk
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Abstract

Background

Higher education institutions (HEIs) are seeking effective ways to address the rising demand for student mental health services. Peer support is widely considered a viable option to increase service capacity; however, there are no agreed definitions of peer support, making it difficult to establish its impact on student mental health and well-being.

Aims

This systematic review aims to better understand and evaluate peer support in HEIs.

Method

Five databases, OpenGrey and Grey Matters were searched in May 2021. Included studies were quantitative, longitudinal (with and without a control) or cross-sectional with a control. The vote-counting method was used for synthesis. The risk of bias was assessed with the National Institutes of Health Quality Assessment Tool.

Results

Three types of peer support were represented in 28 papers: peer-led support groups, peer mentoring and peer learning. Peer learning and peer mentoring had more positive, significant results reported for the outcomes of anxiety and stress. Peer-led support groups were the only type targeting students with mental health difficulties.

Conclusions

The heterogeneity of measures and outcomes prevents firm conclusions on the effectiveness of peer support for mental health and well-being. Most studies were rated ‘poor’ or ‘fair’ in their risk of bias. There is not a solid evidence base for the effectiveness of peer support. Nonetheless, HEIs can use the terminology developed in this review for shared discussions that guide more robust research and evaluation of peer support as an intervention.

Type
Review
Creative Commons
Creative Common License - CCCreative Common License - BY
This is an Open Access article, distributed under the terms of the Creative Commons Attribution licence (http://creativecommons.org/licenses/by/4.0/), which permits unrestricted re-use, distribution and reproduction, provided the original article is properly cited.
Copyright
Copyright © The Author(s), 2023. Published by Cambridge University Press on behalf of the Royal College of Psychiatrists

There are growing concerns for students’ mental health in higher education,Reference Brown1 with significant numbers of students reporting distress.Reference Neves and Hillman2 Higher education institutions (HEIs) refer to any tertiary education leading to an academic degree award.3 In the World Health Organization's international college student survey, a third of first-year students screened positive for at least one common anxiety, mood or substance use disorder as defined by the DSM-IV.Reference Auerbach, Mortier, Bruffaerts, Alonso, Benjet and Cuijpers4 Correspondingly, British HEIs reported a 94% increase in demand for counselling services from 2012 to 2017.Reference Thorley5 Despite service demand rising, only 4.9% of students disclosed a mental health condition to their HEI as a disability in the 2019–2020 enrolment,6 indicating that barriers to student help-seeking still exist. HEIs are seeking effective ways to support students, considering the increased demand and low disclosure rates. Globally, a settings-based, whole-systems approach to improving health has been widely advocated for.Reference Whitelaw, Baxendale, Bryce, MacHardy, Young and Witney710 In UK HEIs, this has gained momentum with the ‘University Mental Health Charter’, which outlines how institutions can take a ‘whole-university’ approach to mental health and encourages peer support to be represented in their strategies.Reference Hughes and Spanner11

Peer support is ‘support provided by and for people with similar conditions, problems or experiences’.Reference Gulliver and Byrom12 It can be delivered in various ways, including one-to-one mentoring and self-help groups.Reference Solomon13 Convening people with similar experiences creates a supportive space underpinned by respect, collective responsibility and an agreement on what is helpful.Reference Mead, Hilton and Curtis14 Two approaches exist: informal and formal. Informal peer support happens naturally within communities when people help others in similar circumstances based on their lived experience.Reference Gulliver and Byrom12 Without structure, this form of peer support is challenging to evaluate. In contrast, formal peer support brings people with similar experiences together intentionally to share knowledge for mutual benefit, building social connection and reducing loneliness.Reference Solomon13,Reference Schubert, Borkman and Powell15 Formal peer support will be the focus of this review, with the term generally describing higher education students helping each other based on their common lived experience of being a student.

Students find peer support easy to use, and recent research suggests it can increase support service accessibility.Reference Suresh, Karkossa, Richard and Karia16 Students disclose more to peers than to their HEIs: 75% of students who experienced mental health difficulties reported telling a peer.17 Since students prefer seeking help from friends more than professional services,Reference Rickwood, Deane, Wilson and Ciarrochi18,Reference Ebert, Mortier, Kaehlke, Bruffaerts, Baumeister and Auerbach19 HEIs want to harness this natural preference through peer support, as recommended in the University Mental Health Charter.Reference Hughes and Spanner11 A quantitative meta-analysis of 23 peer-run programmes for depression in community health settings found that the interventions produced significant reductions in depressive symptoms, performing as well as professional-led interventions and significantly better than no treatment.Reference Bryan and Arkowitz20 Although peer support is used by many and seems promising, its effectiveness in higher education settings is unknown.Reference John, Page, Martin and Whittaker21

There is currently no comprehensive quantitative review of the published and grey literature on peer support interventions evaluated in higher education settings. Peer support in clinical settings is well defined, with competency standards and fidelity assessments providing an emerging standard of practice.Reference Fortuna, Solomon and Rivera22 In contrast, different forms of peer support exist in HEIs, and guidance is still needed to delineate between models.Reference Monk and Purnell23 Limited search terms in a previous systematic review,Reference John, Page, Martin and Whittaker21 which included only three studies, missed relevant research on other forms of peer support. Although studies outline individual benefits for specific types of peer support in higher education settings,Reference Byrom24Reference Bosmans, Young and McLoughlin27 no current reviews collate all forms of peer support in HEIs that target mental health and well-being in the literature.

Defining a ‘peer’ is also critical to understanding how the kinds of peer support in higher education differ. In broader contexts, definitions of a peer most commonly refer to those who have lived experience with mental health difficulties or have used mental health services in clinical settings.Reference King and Simmons28 In HEIs, however, other identities, such as ethnicity, sexual orientation or course of study, may provide an additional point of connection. For example, research recommends creating more peer support spaces for Black students.Reference Stoll, Yalipende, Byrom, Hatch and Lempp29,Reference Stoll, Yalipende and Haas30 A synthesis of the definitions of peer support and what it means to be a peer are needed to inform and evaluate current practice, direct future research and clarify the role of peer support in a whole-university approach to student mental health and well-being.

The aim of this review was to screen relevant literature on peer support interventions evaluated in higher education settings worldwide, to identify current practice and assess its effect on measures of student mental health and well-being, by undertaking the following objectives: (a) to synthesise and categorise types of peer support and define peers according to study characteristics; and (b) to evaluate the effectiveness of peer support in higher education for improving student mental health and well-being according to the developed intervention categories.

For the purpose of this review, mental health and well-being are defined according to the University Mental Health Charter. Mental health refers to ‘a full spectrum of experiences ranging from good mental health to mental illness’ and well-being encompasses ‘a wider framework, of which mental health is an integral part, but which also includes physical and social wellbeing’.Reference Hughes and Spanner11

Method

The systematic review protocol was registered with the International Prospective Register of Systematic Reviews (PROSPERO; identifier: CRD42021256552). No amendments were made. The review followed the Preferred Reporting Items for Systematic Reviews and Meta-Analyses (PRISMA)Reference Brennan and Munn31,Reference Page, McKenzie, Bossuyt, Boutron, Hoffmann and Mulrow32 and Synthesis Without Meta-Analysis (SWiM) guidance.Reference Campbell, McKenzie, Sowden, Katikireddi, Brennan and Ellis33

Eligibility criteria

Studies with a quantitative longitudinal design were included, with and without a control, or comparator. Cross-sectional studies with a control condition were included. Cross-sectional studies lacking a control were excluded. Qualitative-only studies were excluded. Any students (aged ≥18 years) in HEIs were included. Interventions delivering peer support in higher education were included. Interventions that provided a one-off psychoeducation initiative were excluded.

Studies with and without a comparator, or control, were included. Comparator conditions included those not participating in peer support, a waitlist, informal groups, website access only, year group or faculty mentoring. Where a study used a comparator, the population had to be from a similar higher education setting as the primary intervention.

The outcome of this review was a change in the quantitative measure of well-being or mental health for HEI students, such as stress, anxiety, depression, well-being, loneliness and belonging. Studies were excluded if no quantitative measures were reported. Outcomes for anyone other than students receiving the peer support intervention were excluded.

Information sources

In May 2021, a worldwide systematic search of studies written in English was conducted in the databases: Ovid (PsycINFO, Medline, EMBASE), Web of Science (Core Collection) and the Education Resources Information Center (ERIC). The search was limited to the past 30 years in alignment with a previous review that included a study from 1991.Reference Bryan and Arkowitz20 Grey literature was searched for through OpenGrey34 and Grey Matters.35

Search strategy

Search terms were developed in PsycINFO and adapted for other databases. Key words included population terms (e.g. ‘university’ or ‘student’), intervention terms (e.g. ‘peer support’, ‘peer mentoring’ or ‘peer-assisted learning’ or ‘peer to peer’ or ‘peer tutoring’ or ‘peer health education’) and outcome terms (e.g. ‘mental health’ or ‘well-being’). A complete search strategy (see Supplementary Table 1 available at https://doi.org/10.1192/bjo.2023.603) was developed with existing systematic reviews with similar keywords, to identify relevant MeSH and free-text terms.Reference John, Page, Martin and Whittaker21,Reference Upsher, Nobili, Hughes and Byrom36,Reference Lyons, Cooper and Lloyd-Evans37 Free-text terms identified in relevant studies from a scoping review were also included (e.g.Reference Monk and Purnell23Reference Jacobi26). Grey literature was identified through OpenGrey34 and Grey Matters,35 a scoping review and backward citation tracking of included full-text studies. Authors were contacted during the search process via email for clarification or full-text articles.

Selection process

In stage 1, titles and abstracts of papers identified by electronic searches were exported to the Windows desktop version of Clarivate EndNote 20 (London, UK; see https://endnote.com/downloads) from all databases, to remove duplicates.Reference Hupe38 The citations were then exported using a Windows browser with the web-based software as a service application, ‘Rayyan-intelligent systematic review’ (Qatar Computing Reseach Institute, Boston, USA; see www.rayyan.ai), where independent screening by two researchers was conducted.Reference Ouzzani, Hammady, Fedorowicz and Elmagarmid39 The lead reviewer (J.P.-H.) screened all titles and abstracts, and the second researcher (L.W.) screened 50%. If there was any uncertainty at this stage, papers were included for full-text review. In stage 2, full texts of all papers included in stage 1 were independently screened for inclusion by both researchers (J.P.-H. and L.W.). Any discrepancies were resolved by a third researcher (J.F.).

Data collection process

Data extraction was managed in Windows Microsoft Excel (version 2309) with tables (e.g. study characteristics) and figures (e.g. risk-of-bias data) created. The team developed and approved a data extraction form before being piloted on five studies independently by two researchers (J.P.-H. and L.W.). Data extraction for these studies was compared and refined before applying it to all included studies.

Data items

The following data items were extracted upon availability and reported:

  1. (a) Publication characteristics: year of publication, country and HEI of recruitment;

  2. (b) Methodology and study design: longitudinal or cross-sectional with a control;

  3. (c) Population characteristics: sample size, attrition, the mental health status of the population, level of study, students’ year of study, gender, mean age and ethnicity;

  4. (d) Intervention characteristics: type and objective of peer support, number of peer support sessions, duration of intervention, format of delivery and who the peer support is for;

  5. (e) Outcome characteristics/measures: quantitative measures of well-being and/or mental health at pre- and post-intervention for longitudinal studies (with or without a control) or at a particular time point with a control for cross-sectional studies;

  6. (f) Results: mean and standard deviation at baseline and follow-up, P-value and confidence intervals from the intervention group and comparator (where applicable).

Missing data was denoted as ‘not reported’ to indicate its absence for the risk-of-bias assessment.

Study risk-of-bias assessment

The methodological quality of studies included in the review was assessed independently by two reviewers (J.P.-H. and L.W.). A modified American National Institutes of Health (NIH): National Heart, Lung and Blood Institute Health Topics Study Quality Assessment Tool for ‘Before-After (Pre-Post) Studies With No Control Group’ was used.40 This approach to the risk of bias was chosen as many of the studies lacked a control, and similar reviews demonstrated its utility in higher education settings.Reference Upsher, Nobili, Hughes and Byrom36

The following outlines the 12 items from the tool used to determine the risk of bias: (item 1) clear study question; (item 2) prespecified eligibility criteria; (item 3) study participants representative; (item 4) all eligible participants enrolled; (item 5) sample size sufficiently large; (item 6) intervention clearly described and delivered consistently; (item 7) outcomes measures prespecified, valid, reliable and assessed consistently across all participants; (item 8) blinding; (item 9) 20% or less attrition in follow-up; (item 10) statistical methods examined changes in outcome measures/statistical tests conducted that provided P-values; (item 11) outcome measures taken multiple times before and after intervention; and (item 12) group level intervention took into account individual-level data to determine effects.40 For this review, items 8 and 12 were excluded, as they were irrelevant to any of the included studies.

For each study, all items were rated according to the guidance as ‘yes’ (met criteria), ‘no’ (did not satisfy criteria), ‘not reported’, ‘cannot determine’ (unclear from information) or ‘not applicable (not relevant to particular study).40 Reviewers used these ratings to make a qualitative assessment of overall risk of bias, using the ratings of ‘good’, ‘fair’ or ‘poor’. All risk-of-bias scorings are outlined for study in Supplementary Table 2.

Effect measures

The baseline and post-intervention time points were used only in data extraction to calculate pre (time point 1) and post (time point 2) studies. The mean differences and P-values between pre and post of intervention and control group (when applicable) were calculated with raw data reported in individual longitudinal studies (if available). For cross-sectional studies with a control group, mean differences were calculated between groups at the post-intervention time point (as baseline data was not reported). Outcome data beyond post-intervention were not synthesised. When data was unavailable for calculating mean differences, ‘CD’ (cannot determine) was used.

Standardised mean differences (Cohen's d) with 95% confidence intervals were calculated when longitudinal studies included a control group. The calculations were made in StataMP version 17 for Windows,41 with the raw scores of each intervention/control measure, including sample size, mean difference and s.d. For longitudinal studies without a control group, available data such as P-value, Cohen's d and t-values were extracted. The significance of outcomes was also reported, which included the directionality of an improvement or decline.

Synthesis methods

A meta-analysis was not appropriate because of the heterogeneity of study methodologies. The vote counting method outlined in the SWiM reporting guidelines was used.Reference Campbell, McKenzie, Sowden, Katikireddi, Brennan and Ellis33 Missing data are denoted in the tables. Outcome data were tabulated for each included study and stratified by type of peer support intervention. The most common outcomes assessed in this review were stress, anxiety and depression. In each vote counting synthesis, the following was reported: the number and percentage of studies that affected the most common outcome for each peer support category, the binomial test indicating the probability of the results if the intervention was ineffective (i.e. equal to 0.5) and the 95% confidence intervals for the percentage of effects favouring the intervention.Reference McKenzie and Brennan42 The binomial test was calculated in StataMP version 17,41 using the syntax ‘bitesti X Y 0.5’, whereas the 95% confidence intervals were calculated with the syntax ‘cii proportions X Y, level (95)’, where X equates to the number of effects and Y is the number of effects favouring the intervention.

Results

Study selection

As summarised in Fig. 1, 12 763 records remained after duplicates were removed. A total of 57 papers were included for full-text screening, and a final 28 papers were included.

Fig. 1 Process of identifying eligible studies for inclusion.

Study design characteristics

The study characteristics are outlined in Table 1 alphabetically according to the author, with a reference number used in square brackets for the results section only. The most common study type was the pre–post with a control design. Many studies (n = 12) adopted this approach [1, 4, 6–8, 14, 17, 20, 24–26, 28], whereas others (n = 7) employed a pre–post without controls design [2–3, 10–12, 15, 27]. Although some studies (n = 8) used a randomised controlled trial design [5, 9, 16, 18–19, 21–23], one of these studies [19] only used relevant mental health measures at time point 2, so that this study was analysed as a cross-sectional study with a control design along with one other study [13].

Table 1 Summary of study characteristics in review

Population characteristics

Many studies (n = 13) targeted students by year of study, with the majority of studies offering peer support for lower-year students such as ‘first year’ [1, 4, 11–12, 18–19, 22–24] or ‘freshmen and sophomores’ [17]. Students were also recruited by discipline (n = 12); ‘nursing/nurse anaesthetists’ [2, 13, 20] and ‘psychology’ [4, 8, 26] courses were the most common. Other population criteria included ‘lived experience of mental health difficulties’ [5, 9], ‘student status’ [22, 28], ‘ethnicity’ [15, 24] and ‘age’ [2, 5, 20, 22]. The complete list is included in Table 1.

Other population characteristics were also extracted. One study focused on postgraduate students [13]. Others invited both undergraduates and postgraduates students to participate [1, 9]. All other studies were for undergraduate students. The majority of studies reported binary biological sex (male versus female). Of these, five reported the percentage of females in their sample only, leaving the reader to infer that the remaining percentage were males. Of the 22 studies that reported on binary sex in the baseline intervention group, the average proportion was 64.1% females and 35.9% males. Only one study used the term gender instead of sex in reporting; it was still presented in a binary way (44.4% men and 55.6% women [8]. Three studies [3, 13, 15] reported beyond binary sex, with options like ‘other’, ‘non-binary’ or ‘unspecified’ making up an average of 6.9%, along with 59.3% females and 33.8% males. The average mean age across the 20 studies that reported this for the intervention group was 21.6 years of age. Not enough studies reported clearly on gender, sex or mean age in the control group to desegregate this data. Similarly, few studies reported on ethnicity.

Intervention characteristics

Two intervention characteristics were important during this review: how a peer was defined and what type of peer support was investigated. To understand how the studies described a peer, we investigated how students were recruited for peer support (the population) and who facilitated the interventions. The studies referred to these students in various ways, including ‘leaders’, ‘peer supporters’ and ‘peer mentors’. This review uses the term ‘peer facilitators’ to describe any peer leading the intervention. Each study's population and peer facilitator are presented in Table 1. The shared experiences or identities between the peer facilitators and those accessing peer support helped to define a peer. Peer facilitators were frequently defined by their ‘seniority/year’ (n = 13) [1, 4, 6, 11–13, 19–24, 27] or ‘course of study’ (n = 11) [2, 6–8, 18–22, 24, 27]. A smaller number of studies recruited peer facilitators by ‘interest’ [3, 23], ‘gender’ [8, 16], ‘age’ [2], ‘lived experience’ of mental health difficulties’ [5, 9] or ‘heritage’ [15, 28]. Five studies created groups where all students participated and supported each other equally for mutual support [9, 14, 17, 25–26]. One study did not specify how they recruited [10]. These experiences and identities further defined being a peer beyond being a student in higher education.

The three categories of peer support created for this review to delineate between types are outlined below. A definition of each type is provided, along with the nomenclature process. The assigned category and each study's terminology (when different) are provided in Table 1.

Peer-led support group

This peer support gathers groups of students for mutual support. The most used terms of ‘peer-led/peer leader’ groups [5, 8, 14–16, 18, 19, 21] and ‘support groups’ [9, 14, 18–19, 25] or ‘group support’ [3, 16, 22] were both featured in eight studies.

Peer mentoring

Peer mentoring relies on higher-year/more experienced students to support lower-year/less experienced students. Eight studies used the term ‘peer mentoring’ [4, 11–13, 20, 23–24, 28], whereas two others used similar terms such as ‘specialised peer mentoring’ [27] or ‘peer dyad mentoring’ [2]. One study used ‘peer helper’ [7], but this was a one-to-one pairing of a more experienced student with a less experienced student.

Peer learning

This describes peer support that convenes students based on academic objectives. Terms used for this included ‘cooperative learning’ [17], ‘peer-assisted learning’ [1] and ‘peer-led team learning’ [6]. As the terms ‘peer’ and ‘learning’ were used across these studies, this category was named ‘peer learning’.

Most studies were categorised as a peer-led support group (n = 14) or peer mentoring (n = 11). The least common category of peer support was peer learning (n = 3).

The categorisation of these three types of peer support was most challenging with peer mentoring in small groups. Most peer mentoring occurred on a one-to-one basis; however, one study [24] paired mentors with one to three students. The potential small group, mutual nature of this type of peer support made a consideration of it being a peer-led support group necessary. Because the defining factor of this peer support study was that it was for incoming at-risk Latino students, its objective and ultimately self-identification as being a form of peer mentoring decided its final categorisation.

Comparator (control) characteristics

In total, 21 studies used a control group. Comparators in this review varied and included examples such as groups not participating in peer support [1, 6, 7, 13, 17, 20–22, 24, 25–26, 28], a waitlist [5, 8, 16], a group that met informally on occasion [18–19], a separate HEI without peer support [4], students given access to a website only [9], students in a different course or year (without peer support) [14] and faculty mentor pairing [23].

Outcome characteristics

There were 18 outcomes identified. Stress was most commonly measured with the Perceived Stress ScaleReference Cohen, Kessler and Gordon43 (n = 8) [4, 10, 12, 14, 20, 22–24], with other measures being used only once, including the Chipas’ 2011 SurveyReference Chipas and McKenna44 [13] and the Depression, Anxiety and Stress Scale (DASS-21Reference Lovibond45) [25]. One study assessed stress by using two measures: the three-item House and Rizzo measureReference House and Rizzo46 and Allen'sReference Allen, McManus and Russell47 two-item measure of mentor-related stress [11].

For anxiety, six measures were used: the State-Trait Anxiety Inventory (STAI)Reference Spielberger48 (n = 4) [1, 2, 6, 8], Generalised Anxiety Disorder-7 scaleReference Spitzer, Kroenke, Williams and Löwe49 (n = 3) [1, 5, 21], Social Anxiety Questionnaire for AdultsReference Caballo, Salazar, Arias, Irurtia, Calderero and Graña50 (n = 1) [6], Liebowitz Social Anxiety ScaleReference Liebowitz, Coryell and Winokur51 (n = 1) [17], DASS-21Reference Lovibond45 (n = 1) [25] and the Adult Manifest Anxiety Scale – College VersionReference Reynolds, Richmond and Lowe52 (n = 1) [27].

Depression was assessed with the Beck Depression Inventory, Second EditionReference Beck, Steer and Brown53 (n = 1) [15], Center for Epidemiologic Studies Short Depression Scale 10Reference Kohout, Berkman, Evans and Cornoni-Huntley54 (n = 1) [5], DASS-21Reference Lovibond45 (n = 1) [25], ten-item Edinburgh Postnatal Depression ScaleReference Martin and Redshaw55 (n = 1) [24] and Patient Health Questionnaire-9Reference Adewuya, Ola and Afolabi56 (n = 1) [21].

Three studies measured well-being with the Shortened Warwick–Edinburgh Scale of WellbeingReference Stewart-Brown, Tennant, Tennant, Platt, Parkinson and Weich57,Reference Tennant, Hiller, Fishwick, Platt, Joseph and Weich58 (n = 1) [3], Positive and Negative Affect ScheduleReference Gençöz59,Reference Watson, Clark and Tellegen60 (PANAS; n = 1) [7] and Satisfaction with Life ScaleReference Diener61,Reference Koker62 (SWLS; n = 1) [7].

Loneliness was assessed with only one measure, the revised University of California – Los Angeles Loneliness ScaleReference Russell, Peplau and Cutrona63 (n = 3) [17–19].

Psychological distress was measured with the Clinical Outcomes in Routine Evaluation – Outcome MeasureReference Evans, Connell, Barkham, Margison, McGrath and Mellor-Clark64 (n = 1) [9], Brief Symptom InventoryReference Derogatis and Melisaratos65 (n = 1) [15] and the 12-item General Health QuestionnaireReference Goldberg and Williams66 (n = 1) [26].

The Index of General Affect from the Index of Wellbeing ScaleReference Campbell, Converse and Rodgers67 (n = 1) [4] and the PANASReference Crawford and Henry68 (n = 1) [16] measured negative affect.

These outcomes were measured in one study each: eating disorder pathology, measured with the Eating Disorder Examination QuestionnaireReference Fairburn and Beglin69 [16]; resilience, measured with the 25-item Resilience QuestionnaireReference Wagnild and Young70 [21]; quality of life, measured with the Linear Analogue Self-AssessmentReference Flugel Colle, Vincent, Cha, Loehrer, Bauer and Wahner-Roedler71 [21]; satisfaction with life, measured with the SWLSReference Pavot and Diener72 [9]; perceived social support, measured with the Social Provisions ScaleReference Cutrona, Russell, Jones and Perlman73 [18]; domains of functioning, measured with the Outcomes QuestionnaireReference Lambert, Hansen, Umphress, Lunnen, Okiishi and Burlingame74 [22]; belonging, measured with a 13-item questionnaire adapted for the study and based on the Institutional Integration ScaleReference French and Oakes75 [24]; self-efficacy, measured with a 13-item adapted questionnaireReference Sherer, Maddux, Mercandante, Prentice-Dunn, Jacobs and Rogers76,Reference Tipton and Worthington77 [24]; and self-esteem, measured with Rosenberg's Self-Esteem Scale78 [4].

One study used multiple measurements for outcomes [28]. It explored psychological adaptation by using a six-item questionnaire similar to the PANASReference Koenig-Lewis, Palmer, Dermody and Urbye79 and a four-item scale gauging life satisfaction.Reference Esses, Burstein, Ravanera, Hallman and Medianu80 It also measured acculturative stress by using the homesickness and perceived discrimination subscales from the Acculturative Stress Scale for International Students,Reference Sandhu and Asrabadi81 the language difficulty subscale from the Index of Life StressReference Yang and Clum82 and the Perceived Language Discrimination ScaleReference Wei, Wang and Ku83 [28].

Quality assessment: risk of bias

The overall risk of bias for each study is outlined in Table 1. Out of the 28 included studies, five were rated ‘good’ and four were rated ‘good/fair’. In addition, 12 were rated as ‘fair’, one was rated as ‘fair/poor’ and six were rated as ‘poor’.

All studies stated their objective, clarified eligibility criteria, described the representativeness of the population, presented entry criteria, referred to the intervention and defined the well-being or mental health outcome. The quality ratings were thus determined according to sample size, attrition rate, statistical values and multiple time point measurement. Most (n = 22) studies were not adequately powered or did not report power analysis [1, 2, 4, 6–15, 17, 20, 22, 23–28]. Many (n = 13) had low retention, with loss to follow-up after baseline higher than 20% [3–4, 9, 13, 18–19, 25]. Other studies did not report enough information to determine attrition rates [1, 11, 14, 24, 26–27]. The statistical tests were not reported in five studies [12, 14, 19–20, 24]. Other studies did not report basic statistics such as the number of participants in the intervention/control group at pre- and post- time points, P-values, mean or s.d. at both baseline and follow-up [11–12, 14, 24]. Most studies (n = 20) had two time points and did not assess the outcome beyond the pre–post intervention [1, 2, 4, 6, 9–11, 13–15, 17, 19–22, 24–28].

If our synthesis was constrained to studies that were rated as ‘good’ or ‘good/fair’, we would retain studies. Of these, no peer learning would be represented. We only identified three studies of peer learning. All of these studies were rated as ‘fair’ with no power analysis reported and only two time points measured. Constraining the synthesis does not change the proportional representation of peer mentoring and peer-led support group studies.

Individual study results

Every included study is outlined in Table 2, with the well-being and mental health outcome effect estimates provided where possible. A complete list of the acronyms and definitions of mental health and well-being measures are provided in Supplementary Table 3.

Table 2 Effect estimates for mental health/well-being outcomes per individual study

Note: Information not reported within the table was not reported in the reviewed studies.

SWEMWBS, Shortened Warwick–Edinburgh Scale of Wellbeing; CES-D, Center for Epidemiologic Studies Depression Scale; GAD-7, Generalised Anxiety Disorder; SMD, Standardized Mean Difference; STAI, State-Trait Anxiety Inventory; CORE-OM, CORE Outcome Measure; SWLS, Satisfaction with Life Scale; PSS, Perceived Stress Scale; BDI-II, Beck Depression Inventory; BSI, Brief Symptom Inventory; PANAS, Positive and Negative Affect Schedule; EDE-Q, Eating Disorder Examination Questionnaire; UCLA, University of California – Los Angeles; SPS, Social Provisions Scale; PHQ-9, Primary Health Questionnaire; LASA, Linear Analogue Self-Assessment; RS15, Resilience; OQ-45.2, Outcomes Questionnaire; DASS-21, Depression, Anxiety and Stress Scale; GHQ-12, General Health Questionnaire; EPDS, Edinburgh Postnatal Examination Questionnaire; AMAS-C, Adult Manifest Anxiety Scale – College Version; ASSIS, Acculturative Stress Scale for International Students; SAQ, Social Anxiety Questionnaire for Adult; R-UCLA, Revised University of California – Los Angeles; LSAS, Liebowitz Social Anxiety Scale.

* P < 0.05.

Results of syntheses

The most frequent outcomes evaluated were stress, anxiety and depression (for peer-led support groups only). Vote counting is reported for these outcomes based on the direction of effect with the binomial probability test and 95% confidence intervals. Effect estimates for less frequently reported outcomes with sufficient data available are reported in Table 2.

Peer-led support group

Four studies analysed the effect of the intervention on depression. One study had significant results (25%, 95% CI 0.63–80.59%, P = 0.625) with a decline in depression symptoms; however, its risk of bias was ‘fair’. The other three studies all found no significant results.

Three studies reported the effect of the intervention on anxiety. One study (33.3%, 95% CI 0.84–90.57%, P = 1.00) favoured the intervention with reduced anxiety and was rated as ‘good/fair’ in the risk-of-bias assessment. Two studies found no significant results for anxiety.

Three studies analysed stress as an outcome. One study (33.3%, 95% CI 0.84–90.57%, P = 1.00) had a significant decline in stress, but it was rated as ‘fair’ in the risk-of-bias assessment. One study in this category did not have any significant findings for stress, whereas the other had mixed results, with no significant findings for stress but significant improvements in functioning.

Peer mentoring

Two peer mentoring studies measured anxiety. One had a significant decrease in anxiety; the other found non-significant results.

Five studies (62.5%, 95% CI 24.49–91.48%, P = 0.73) found significant results for stress. Of these significant positive results for stress, two of the studies were rated as ‘fair’ following risk-of-bias assessment. The other studies were rated as ‘poor’. Three studies found no significant reduction in stress, but one of these had mixed results, with significant improvements to negative affect.

Peer learning

All three peer learning studies measured anxiety. Although one study had mixed results, the other two reported significant intervention effects (66.67%, 95% CI 9.43–99.16%, P = 1.00). All three studies were rated as ‘fair’ in their risk-of-bias assessment, with no power analysis reported and only two time points measured.

Discussion

This review demonstrates a wide variation in interventions and terminology used to describe peer support. Although many use the label to encapsulate all forms of peer support, this does not capture the nuances of different peer support interventions. Previous reviews only using peer support as a search term exhibit this, finding just three studies and missing relevant work.Reference John, Page, Martin and Whittaker21 We found peer support for student mental health and well-being referred to as everything from cooperative learning to peer-led social support groups. There is little consistency in the terminology. Without a shared vocabulary, it is difficult to understand how different forms of peer support may benefit higher education students. This review identified three main categories of peer support: peer-led support groups, peer mentoring and peer learning. A shared understanding and use of these categorical terms beyond peer support is imperative to future research and dissemination. However, first the definition of a peer needs to be clarified.

Defining a peer

The lack of consistent terminology brings into question how HEIs define a peer. Although peer support is broadly about people supporting each other based on shared experiences,Reference Gulliver and Byrom12 more is required to define a peer in HEIs. This review defined peer support as higher education students helping each other since all peer facilitators and students accessing peer support had this identity. However, other identities are also being used to define a peer by ‘course’, ‘year/seniority’, ‘heritage’, ‘age’ and ‘lived experience of mental health difficulties’.

Of the studies that defined peers based on their year of study (n = 13), ten were for first-year students. Although this may not be surprising for peer mentoring, as it is defined by a higher-year student supporting a lower-year student, this was also seen in peer-led support groups and peer learning. Being described as an ‘acute stressor’, the transition into higher education strains well-being, as students face many changes and can struggle to settle in.Reference Gall, Evans and Bellerose111 Perhaps this is why so many peer support interventions are focused on first-year students; however, each year in higher education presents new challenges, with stress levels fluctuating throughout a degree. Conley et alReference Conley, Shapiro, Huguenel and Kirsch112 found that students in the USA enrolled in a 4-year degree had the poorest psychological functioning across the first two years of study, with improvements seen in the final two years. In England, anxiety triggered by higher education and psychological well-being fluctuated for 3-year degree students; however, depression rates were highest in the final year of study.Reference Bewick, Koutsopoulou, Miles, Slaa and Barkham113 This finding raises questions about whether students would also benefit from peer support beyond their first year. Of the four papers that offered peer support for higher-year students such as those in their second and third years,Reference Moir, Henning, Hassed, Moyes and Elley102,Reference Pinks, Warren-James and Katsikitis106 third yearsReference Short, Kinman and Baker107 and seniors,Reference Humphrey95 all were part of the peer-led support group category. None had significant results for improved student mental health and well-being outcomes. Although a need might exist, more research is needed to understand if peer support does improve the mental health and well-being of higher-year students.

Another common way to define a peer was through a course of study. Healthcare studies and psychology were the most frequent courses to offer peer support, with nine of the 12 studies falling within these disciplines. Compared with students from other degrees, studies indicate that medical students have higher rates of mental and emotional difficulties, increased levels of mental distress during training and are less likely to seek help.Reference MacLean, Booza and Balon114,Reference Jacob, Li, Martin, Burren, Watson and Kant115 In one study, however, students from the sciences and arts and humanities had significantly higher mean levels of depression than students from health sciences and social sciences.Reference Ruiz-Hernández, Guillén, Pina and Puente-López116 A study of nursing students in Spain and Chile found that levels of mental distress reduced over time, indicating that nursing education may be a protective factor against mental health disorders.Reference Reverté-Villarroya, Ortega, Raigal-Aran, Sauras-Colón, Ricomà-Muntané and Ballester-Ferrando117 Therefore, peer support should be evaluated with students across various courses to understand any differences.

Peer-led support groups

This review defined peer-led support groups as a type of peer support that aims to gather groups of students together for mutual support, which was a unique factor. Mutual support is ‘a process by which persons voluntarily come together to help each other address common problems or shared concerns’.Reference Davidson, Chinman, Kloos, Weingarten, Stayner and Kraemer Tebes118 Peers form self-help support groups by meeting for mutual assistance.Reference Byrom24 Although group settings offer mutual support for those attending, the review did not include outcomes for peer facilitators, so the mutuality of these groups warrants further investigation. From descriptions alone, it is hard to discern the extent of mutuality in support provision. Of the four studies that had all students act as facilitators,Reference Humphrey95,Reference Kocak98,Reference Pinks, Warren-James and Katsikitis106,Reference Short, Kinman and Baker107 all were part of the peer-led support group category except one, which was categorised as peer learning.Reference Kocak98 One study had facilitators take turns leading,Reference Eren-Sisman, Cigdemoglu and Geban87 whereas the others had all students trained with no set facilitator for the group sessions so that everyone was expected to participate equally.Reference Pinks, Warren-James and Katsikitis106,Reference Short, Kinman and Baker107

Peer-led support groups had the most mixed findings, so their efficacy remains to be seen. As the most frequently evaluated intervention type, 20 measures were used to explore 14 mental health and well-being outcomes. The various measures might demonstrate indecision on the objective of peer-led support groups. Similarly, the different measures could also be explained by the different delivery methods. Although the ‘group’ aspect of this category was the defining feature, the studies represented a range of interventions, such as a peer-run self-help group,Reference Byrom24 mutual support groupReference Freeman, Barker and Pistrang90 and peer-facilitated/-led stress management group/peer education.Reference Fontana, Hyra, Godfrey and Cermak89,Reference Frohn, Turecka, Katz and Noehammer91 The diverse delivery methods may explain the difference in outcome measures assessed and the mixed results of this category. However, many studies lacked detailed descriptions of the interventions. Hence, it is difficult to assess whether they are indeed distinct or if a difference in the nomenclature used to describe interventions explains these results. Based on the heterogenous literature for this peer support, it is impossible to identify when or why some forms improve student mental health. The peer-led support group is therefore a category of peer support that warrants further investigation using shared terminology and clear descriptions of the interventions to understand the factors associated with its efficacy.

Peer mentoring

In this review, we defined peer mentoring as a type of peer support that relies on higher-year/more experienced students to support lower-year/less experienced students. Mentoring is known broadly as a transfer of knowledge,Reference Parsloe and Wray119 where a more experienced, usually older, individual guides a mentee with less experience.Reference Budge120 Depending on the institution, peer mentoring goes by names such as a ‘parent’ programme, ‘buddy’ scheme or ‘family’ programme. No matter the title, peer mentoring programmes operate on the same belief that students who have more experience in higher education can mentor less experienced students.

Peer-led support groups were defined by their group nature; peer mentoring had more heterogeneity in approach. Most peer mentoring happened with mentors supporting mentees on a one-to-one basis, but three of the 11 papers took alternative approaches. These studies paired one mentor with up to three mentees,Reference Phinney, Torres Campos, Padilla Kallemeyn and Kim105 had a dyad with a group of mentees connecting with one mentorReference Fullick, Smith-Jentsch, Yarbrough and Scielzo92 or took a mixed approach with one-to-one meetings and homework assigned to the students receiving support.Reference Eryilmaz88 All alternative approaches to one-to-one peer mentoring had significant results in the assessed mental health and well-being measures. Overall, the included studies used 17 measures to evaluate ten outcomes. Stress was the predominant outcome, with 62.5% of the studies demonstrating significant, positive results for stress. Therefore, peer mentoring benefits student stress and takes a mostly one-to-one structure; however, other approaches can be helpful. The literature mostly agrees on peer mentoring terminology to describe this type of peer support.

Peer learning

This review defined peer learning as a type of peer support that convenes students based on academic objectives and tends to be situated in departments. Peer-led team learningReference Eren-Sisman, Cigdemoglu and Geban87 and cooperative learningReference Kocak98 contributed to this category. Cooperative learning creates spaces where students work toward a common purpose and assist each other in learning.Reference Johnson and Johonson121,Reference Lee, Ng and Jacobs122 Peer-led team learning is an experiential learning environment where students build knowledge, talk to each other and develop higher-level reasoning and problem-solving skills by thinking together about the conceptual side of learning.Reference Tien, Roth and Kampmeier123Reference Varma-Nelson, Coppola, Greenbowe, Pienta and Cooper125 Peer-assisted learning is also part of this category,Reference Bosmans, Young and McLoughlin27 with Bournemouth University defining it as ‘a scheme that fosters cross-year support between students on the same course’ while encouraging students to learn together and help each other.126 The approach to learning is socially focused.Reference Hilsdon127 In this way, peer learning is distinguished from other supportive activities because it is facilitative of student learning; structured and purposeful with training and support; reliant on small groups; open to everyone, non-compulsory and takes place in a safe, more relaxed environment.Reference Ody, Carey, Dunne and Owen128

Peer learning traditionally focuses on academic objectives. As such, there are few studies assessing the impact of this type of peer support on mental health and well-being. The data captured here, however, suggests that peer-led learning interventions may improve student mental health, with a significant impact on reducing anxiety. Thus, the positionality of peer learning in departments may be an opportunity for HEIs to take a settings-based approach to improve student mental health in the classroom.

Peer support in higher education versus community peer support

Although the promise of peer support in higher education is underpinned by the more established body of research on peer support in community health settings, two issues have been raised through this review. First, the measures being used differ. Two meta-analyses found significant reductions in depressive symptoms for peer support as an intervention in communities,Reference Bryan and Arkowitz20,Reference Pfeiffer, Heisler, Piette, Rogers and Valenstein129 which have been used to justify further exploration of peer support in higher education. Depression was measured as an outcome in only five studies in the higher education context. Of these, one was peer mentoring, which significantly favoured the intervention. The others were peer-led support groups, with only one of the four studies reporting significant benefits to depression. The lack of depression measures makes comparing findings in community settings to HEIs difficult.

Only two peer-led support group studies defined a peer based on their lived experience of mental health difficulties,Reference Conley, Hundert, Charles, Huguenel, Al-khouja and Qin86,Reference Freeman, Barker and Pistrang90 bringing them together with peer facilitators who self-identified as living with a ‘mental illness’ or ‘psychological problem’. This finding contrasts the definitions of a peer used in community mental health settings. The NHS website defines peer support workers as ‘people who have lived experience of mental health challenges themselves’ and who use their experiences to empathise with and support others. This inconsistency in how HEIs classify a peer in contrast to how a peer is defined in community mental health settings in the UK is essential. Because peer support in higher education does not seem to recruit facilitators or students based on lived experience with mental health difficulties, the basic definitions of a peer in a community versus a HEI differ. This disparity in definition and lack of shared outcome measures mean that the comparison between community programmes and peer support in higher education cannot currently be made with the literature.

Limitations of evidence included in the review

No grey literature met the inclusion criteria. A search was undertaken in OpenGrey34 and Grey Matters,35 but no results were found. In addition, no relevant grey literature was encountered through cross-referencing the included full-text studies. Although five reports were discovered in a scoping review, all were excluded after screening. They reported on peer support in higher education generally, undertook qualitative evaluation only or did not use a measure of student mental health or well-being that fit the study criteria.Reference Gulliver and Byrom12,Reference Stoll, Yalipende and Haas30,Reference Andrews, Clark and Davies130Reference Biggers, Yilmaz and Sweat132 Although grey literature can reduce publication bias and improve the comprehensiveness of a systematic review,Reference Paez133 more robust reporting in grey literature is needed to meet basic efficacy measures in higher education peer support.

Most included studies lacked a power analysis to assess whether sample sizes were sufficient to detect intervention effects. Of those that reported a power analysis, many had poor retention and/or small sample sizes, which may explain the many non-significant results of this review. Of the 28 included studies, 21 did not report a power analysis. One included study was a primarily qualitative study, where the quantitative element met the inclusion criteria, but the sample size was small (n = 2), affecting its quality.Reference Geng, Midford, Buckworth and Kersten93 Of the seven studies that did report a power analysis, one did not achieve the sample size required.Reference Head94 Four of these were rated as ‘good’ in the risk-of-bias assessment, but the two others were rated ‘fair’Reference Kilpela, Blomquist, Verzijl, Wilfred, Beyl and Becker97 and ‘fair/poor’Reference Mattanah, Brooks, Brand, Quimby and Ayers100 because of low retention and poor reporting of outcome measures. A similar review in higher education settings also found many underpowered studies, indicating the need to run interventions to broader cohorts of students across faculties, programmes or similar institutions to improve power.Reference Upsher, Nobili, Hughes and Byrom36 With only six studies reporting on the funding received, more funding may be required to make adequately powered studies a reality.

Many studies presented incomplete data; for example, unclear sample sizes and missing statistics/ raw data (i.e. means and s.d.). Demographics were also poorly reported, so that it was not possible to disaggregate gender, age or ethnicity for a helpful discussion. Despite many studies missing integral parts, available data were extracted when possible to calculate mean differences, P-values and standardised mean differences for a more consistent synthesis. The reporting in this review may indicate that better guidelines are required. One review of higher education interventions for student mental health and well-being recommended that medical reporting guidelinesReference Groves134,Reference Schulz, Altman and Moher135 are adapted to improve standards.Reference Upsher, Nobili, Hughes and Byrom36

Outcome measures were too heterogenous for meaningful comparison. Although anxiety and stress were the most common outcomes investigated in the literature, there was little consistency in measures. Although the Perceived Stress Scale was used most to measure stress (n = 8) and the STAI was used to measure anxiety (n = 4), many other measures were also applied to assess these common outcomes. Some measures, such as the PANAS, were used to measure different outcomes. For example, EryilmazReference Eryilmaz88 chose to use PANAS and the SWLS to measure subjective well-being, Kilpela et alReference Kilpela, Blomquist, Verzijl, Wilfred, Beyl and Becker97 used PANAS to measure negative affect and Thomson and EssesReference Thomson and Esses109 used PANAS to measure psychological adaptation. This lack of consistency is an obstacle to comparing and drawing conclusions on effective interventions. A ‘core set’ of well-being measures validated in higher education student populations has been recommended.Reference Dodd, Priestley, Tyrrell, Cygan, Newell and Byrom136 Similar guidance is needed for stress, anxiety and perhaps depression, as this review's most common outcome measures, to complement existing toolkits.Reference Broglia, Nisbet, Chow, Bone, Simmonds-Buckley and Knowles137

Limitations of the review process

A meta-analysis was not possible because of the outcome measure heterogeneity, few reported effect sizes (or raw data to calculate them) and limited information on the interventions to compare similar studies. Vote counting is considered a less robust way to synthesise evidence in a systematic review, since no information is given on the magnitude of effects, sample sizes are not considered and combining P-values is a more robust method.Reference Borenstein, Hedges, Higgins, Rothstein, Borenstein, Hedges, Higgins and Rothstein138 This systematic review is limited by the narrative synthesis taken; however, using SWiM guidelines improved reporting transparency.Reference Campbell, McKenzie, Sowden, Katikireddi, Brennan and Ellis33 Nonetheless, the synthesis method stipulated by the current evidence available in the field limits the conclusions that can be drawn.

Although the Cochrane tool for assessing risk of bias in randomised trials and other such tools is widely used,Reference Higgins, Thomas, Chandler, Cumpston, Li and Page139 most do not support multiple study designs.Reference Upsher, Nobili, Hughes and Byrom36 As this review had seven randomised controlled trials, two cross-sectional with control and 19 pre–post with and without control designs, a different tool was required. A modified NIH ‘Quality Assessment Tool for ‘Before-After (Pre-Post) Studies With No Control Group’ was used for the risk-of-bias assessment.40 The chosen method was limited in practice because it is designed for studies without a control group, so there were no criteria acknowledging if a study had a control group, which would strengthen its quality. This approach to risk-of-bias assessment was best-suited for the heterogeneity of our included studies;Reference Upsher, Nobili, Hughes and Byrom36 however, as some studies also had a cross-sectional design with a comparator, the chosen tool was an imperfect option.

In this study's synthesis, the initial baseline and post-intervention measures were included for pre–post intervention outcome measures. The post-intervention measures were synthesised for cross-sectional with a control design. This approach was used because studies included a mix of interim and follow-up measures at varying durations that did not allow for comparison. Although all time points were extracted to see if comparable data was available, only the pre–post measures for longitudinal studies and cross-sectional post-intervention data with control could be used for synthesis. Using the pre–post time points allowed for more comparison and generalisability in the extraction and synthesis process.

Finally, the methodology has an additional limitation. This paper focused on quantitative studies to meet the second of our objectives: to evaluate the effectiveness peer support in higher education. Future work may benefit from reviewing qualitative studies to confirm our categorisation of types of peer support and definitions of peer.

Implications of the results for practice, policy and future research

This systematic review found that peer support in higher education is defined in the literature according to three categories: peer-led support groups, peer mentoring and peer learning. By identifying this nomenclature, HEIs can start using a shared language when evaluating interventions and communicating best practice. It will also improve understanding of the strengths and limitations of peer support in more detail so that areas for further research can be prioritised.

Peer-led support groups come together for mutual support. Exploring the mutuality of peer support for the peer facilitators and those attending was beyond the scope of this review, but should be studied further. In addition, although this form of peer support was the only one to measure depression outcomes multiple times, results were mixed, which may indicate that the category is too broad. Alternatively, as this form of peer support is most comparable to community mental health settings, it may be that the gap in how HEIs and healthcare settings define a peer and measure different outcomes is the barrier to the identification of effective interventions. Further investigation is needed into what specific peer-led support group components improve efficacy.

Peer mentoring is mostly for incoming students to receive support from a higher-year/more experienced student. This type of peer support was the most homogeneous in the terminology used and implementation (one to one). Of the three peer support types, it was also the most promising for improving stress outcomes. Nonetheless, alternative approaches to peer mentoring (e.g. small groups) demonstrated significant results in other measures (e.g. affect and depression), indicating that more research is needed to understand how the structure of peer mentoring affects mental health and well-being outcomes.

Peer learning operates in groups and convenes for academic objectives. Results indicate that significant improvements in anxiety were linked to peer learning. HEIs should consider incorporating relevant measures into existing peer learning programmes so that further investigations of its benefits to mental health and academic outcomes can be made.

In conclusion, despite hopes that peer support in higher education would offer an accessible, setting-based solution to improving student support, the findings of this review are mixed. Of the three types of peer support, two had the most significantly positive results: peer learning reduced anxiety and peer mentoring reduced stress levels. Results for peer-led support groups, however, were varied. Although peer-led support group interventions assessed depression more than any other type of peer support, they did not show a majority of significant results for any of the outcomes measured.

Peer support interventions aimed at improving student mental health and well-being were set up with specific objectives, such as easing the transition into higher education (peer mentoring), meeting academic objectives (peer learning) or enhancing mutual support (peer-led support groups). Furthermore, how a peer was defined in the higher education context varied, which is crucial to understanding the intervention. Students’ years of study and discipline were common features of defining a peer. However, peer-led support groups were the only type that brought together students with lived experiences of mental health difficulties as peers, which is most similar to community mental health settings. This comparability warrants further investigation, as this type of peer support shows promising applications in wider communities.

Various modes of peer support that use specific definitions of a peer are more or less useful for different needs. Although HEIs consider peer support as a potential addition to support services, defining the type of peer support and what a peer is must be considered. Next, researchers and educators need to set standardised mental health and well-being metrics for the various types of peer support, so that more robust studies can be conducted. These findings should be shared widely, using better reporting guidance to elevate best practice. With this, HEIs can start to assess which types of peer support are helpful when and for whom, as part of a whole-university approach to support all students’ mental health and well-being. The definitions of peer support provided in this review, however, are the first steps toward a consistently shared vocabulary to tackle these challenges.

Supplementary material

Supplementary material is available online at https://doi.org/10.1192/bjo.2023.603

Data availability

The data that support the findings of this study are available from the corresponding author, J.P.-H., upon reasonable request.

Author contributions

J.P.-H. conceptualised the study, wrote, reviewed and edited the manuscript and was responsible for data curation, formal analysis, study investigation and methodology, project administration, resources, validation and visualisation. L.W. contributed to the study methodology and data curation. R.U. supervised the study and reviewed and edited the manuscript. J.F. and N.B. conceptualised and supervised the study, acquired funding and reviewed and edited the manuscript. J.O. conceptualised and supervised the study and reviewed and edited the manuscript.

Funding

This work was supported by the UK Research and Innovation Economic and Social Research Council London Interdisciplinary Social Science Doctoral Training Partnership (grant number ES/P000703/1). N.B. was partially supported by a grant from the Economics and Social Research Council: ES/S00324X/1.

Declaration of interest

None.

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Figure 0

Fig. 1 Process of identifying eligible studies for inclusion.

Figure 1

Table 1 Summary of study characteristics in review

Figure 2

Table 2 Effect estimates for mental health/well-being outcomes per individual study

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