Literature DB >> 30477443

Retention strategies in longitudinal cohort studies: a systematic review and meta-analysis.

Samantha Teague1, George J Youssef1,2, Jacqui A Macdonald1,2,3, Emma Sciberras1,2, Adrian Shatte4, Matthew Fuller-Tyszkiewicz1, Chris Greenwood1, Jennifer McIntosh1,2, Craig A Olsson1,2,3,5, Delyse Hutchinson6,7,8,9.   

Abstract

BACKGROUND: Participant retention strategies that minimise attrition in longitudinal cohort studies have evolved considerably in recent years. This study aimed to assess, via systematic review and meta-analysis, the effectiveness of both traditional strategies and contemporary innovations for retention adopted by longitudinal cohort studies in the past decade.
METHODS: Health research databases were searched for retention strategies used within longitudinal cohort studies published in the 10-years prior, with 143 eligible longitudinal cohort studies identified (141 articles; sample size range: 30 to 61,895). Details on retention strategies and rates, research designs, and participant demographics were extracted. Meta-analyses of retained proportions were performed to examine the association between cohort retention rate and individual and thematically grouped retention strategies.
RESULTS: Results identified 95 retention strategies, broadly classed as either: barrier-reduction, community-building, follow-up/reminder, or tracing strategies. Forty-four of these strategies had not been identified in previous reviews. Meta-regressions indicated that studies using barrier-reduction strategies retained 10% more of their sample (95%CI [0.13 to 1.08]; p = .01); however, studies using follow-up/reminder strategies lost an additional 10% of their sample (95%CI [- 1.19 to - 0.21]; p = .02). The overall number of strategies employed was not associated with retention.
CONCLUSIONS: Employing a larger number of retention strategies may not be associated with improved retention in longitudinal cohort studies, contrary to earlier narrative reviews. Results suggest that strategies that aim to reduce participant burden (e.g., flexibility in data collection methods) might be most effective in maximising cohort retention.

Entities:  

Keywords:  Attrition; Cohort; Drop-out; Engagement; Follow-up; Longitudinal; Retention

Mesh:

Year:  2018        PMID: 30477443      PMCID: PMC6258319          DOI: 10.1186/s12874-018-0586-7

Source DB:  PubMed          Journal:  BMC Med Res Methodol        ISSN: 1471-2288            Impact factor:   4.615


Background

Longitudinal cohort studies play a central role in advancing understanding of the onset and progression of physical and mental health problems. Cohort studies assess, and often compare, the incidence of a condition within a group of people who share common characteristics (e.g., being born in the same year) [1]. A key advantage of longitudinal cohort studies over other research designs is that repeated measures data temporally orders exposures and outcomes to facilitate causal inference [2]. However, significant and systematic attrition can reduce the generalisability of outcomes and the statistical power to detect effects of interest [3]. Systematic attrition in longitudinal research occurs most often in older, non-white male participants with limited education and/or multiple health problems [4]. Long duration and repeated assessments can also increase attrition due to the significant burden on participants [4]. Given the expense of longitudinal cohort studies, effective strategies that engage and retain cohort participants are critical to the integrity of research outcomes [5, 6]. In the last decade, longitudinal data collection methods and cohort retention strategies have evolved considerably. So too have participant expectations of organisations (research and otherwise) that seek information from individuals [7, 8]. Established retention strategies within longitudinal cohort studies include: cash or gift incentives, sending reminder letters to participants, re-sending surveys, and offering alternative methods of data collection (for a review, see [6]). Booker et al. [6] demonstrated that these strategies were effective in longitudinal cohort studies that used the traditional data collection methods of postal surveys, face-to-face visits (home or on-site), and telephone interviews or surveys. However, these cohort retention strategies may not be as well suited to contemporary methods of collecting longitudinal data, such as web and mobile surveys [9], wearable sensors (e.g., FitBits) [10], short message services (SMS) [11], and groupware systems (e.g., video conferencing) [12]. Novel methods of engaging participants such as web advertising [13], social media [14], and electronic reminders [15], are also now being employed in cohort studies using both traditional and modern longitudinal data collection methods. A systematic review on the effectiveness of established and emerging cohort retention strategies in longitudinal cohort studies would provide guidance to researchers and funders on maximising cohort maintenance within these high investment programs of research. Previous reviews of retention strategies in health research include [4, 6, 16, 17]; only one of these reviews focused specifically on longitudinal cohort research designs [6]. Booker et al. [6] conducted a narrative review of retention strategies in longitudinal cohort studies, including incentives, reminders, repeat visits/questionnaires, and alternative methods of data collection, finding that incentives and reminder strategies improved cohort retention. However, this review was limited by the small number of studies identified for each retention strategy, which resulted in the identification of a restricted breadth of retention strategies and the inability to synthesise findings empirically. Further, Booker et al. [6] did not include research completed after 2006 and thus were unable to investigate emerging cohort retention strategies. Brueton et al. [16] completed a more recent review of retention strategies that included both established and emerging digital data collection retention strategies. However, the authors specifically excluded longitudinal cohort studies and instead focused on participant retention in intervention trials. Differences between intervention and longitudinal cohort studies, such as research design factors (e.g., study duration) and the motivations of the participants in joining or withdrawing from studies, may impact the usefulness of retention strategies across both study designs [4, 6]. A review of retention strategies reported in modern longitudinal cohort studies is pertinent and timely, given the emergence of digital retention strategies alongside established retention methods. Maximising cohort retention in longitudinal research can reduce the administration costs of conducting research, improve the efficiency of research processes, and reduce outcome biases for studies by adopting an evidence-based cohort retention framework. In this review, we aimed to: (i) identify retention strategies used in recent longitudinal cohort studies; (ii) examine whether retention rate was moderated by different study or participant characteristics (i.e., number of waves, study duration, sample size, population type, gender, age, country); (iii) estimate the retention rate in studies that use specific retention strategies, and contrast this retention rate with studies that do not use specific retention strategies; (iv) examine whether retention rate is associated with the number of retention strategies used; (v) examine which retention strategies were the strongest independent predictors of retention rate; and (vi) contrast the retention rate based on whether studies utilised emerging or established strategies. Moreover, to ensure that recent innovations in retention strategies were identified, this review focused on literature published within the past 10 years.

Method

Search strategy

A systematic review was performed as per the Preferred Reporting Items for Systematic Reviews and Meta-Analyses (PRISMA) guidelines [18]. Two search strategies were implemented. First, the electronic databases Medline, PsycINFO, Embase, CINAHL, AMED, and the Cochrane Library, were searched in July, 2016 using search terms relevant to three themes: (i) attrition, (ii) retention, and (iii) study design (Additional file 1: Table S1). The electronic search was limited to articles published from 2006 onwards in English, to avoid duplication of literature with the previous review on this topic [6]. The search was adapted to suit each database. Second, the reference lists of all articles selected for review were manually searched.

Inclusion and exclusion criteria

The inclusion and exclusion criteria were determined prior to implementing the search strategy. Articles were included in the review if: (i) the article described a cohort study, which was defined as a representative sample of a group or population who share a common experience or condition [2], (ii) the article reported at least one wave of follow-up data collection with a participant/proxy, (iii) participant retention data were reported, and (iv) retention strategies were reported. Articles were excluded if: (i) the article was not available in English; (ii) the article was not published in a peer-reviewed publication (e.g., conference abstracts or dissertations); and, (iii) the article’s research design was cross-sectional, involved data linkage only, or the article was a clinical or non-clinical trial evaluating the effectiveness of treatment regimens or intervention/prevention programmes (for an existing review of retention in intervention studies, see (12)).

Study selection, data extraction, and quality assessment

The search strategy resulted in 9225 articles after removing duplicates. In total, 141 articles were identified, screened, and determined to be eligible for inclusion (see Fig. 1). Data were extracted and summarised for each of the 141 articles on: (i) the research design, including baseline sample population and sample size, the number of data collection waves reported, and the duration in years between the first and last waves of data collection; (ii) the cohort demographics, including mean sample age at baseline (or age range if mean age was not reported), proportion of male participants, country of cohort participants, and whether the cohort was clinical or non-clinical; and (iii) retention data, including the retention rate between baseline and the final data collection wave reported, and the specific retention strategies. Finally, we examined the suitability of each article in addressing the current study’s research question. Articles that listed cohort attrition or retention as a research question or objective were categorised as “retention-focused”, and conversely articles that did not focus on attrition or retention were categorised as “non-retention-focused”. No articles were excluded on the basis of this quality assessment.
Fig. 1

PRISMA procedural flow chart of the search and identification process

PRISMA procedural flow chart of the search and identification process

Statistical method

We used meta-analysis (and meta-regression) to address the aims of the study. Meta-analyses were conducted using the Metafor package v1.9.8 [19] in R software v3.3.1 [20]. The retention rate, defined as the number of individuals who remained in the study at the last wave of data collection as a proportion of the total number of participants recruited at the baseline assessment, was the primary effect size measure of interest. All meta-analyses were conducted using inverse variance weighting, with random effects specified to account for between study heterogeneity. A binomial-normal model (with logit link) was used as the basis for analysis, which is appropriate when the effect size of interest is measured as a proportion. Where appropriate, meta-analytic effects were back-transformed to represent the median meta-analytic retention rate. We also report the I2 statistic as a measure of study heterogeneity, interpreted using the guidelines of Higgins et al. [21]. Meta-analyses were conducted when at least two independent studies contributed to the meta-analysis. To examine the effect of gender on retention rate, we created a binary variable to denote studies as comprising a higher proportion of either male or female samples (Proportion of male participants in “male” grouping: M(SD) = 73.6%(0.20); Proportion of female participants in “female” grouping: M(SD) = 75.0%(0.21)). To examine the effect of country development level on retention rate, each study country was categorised as either high or low development level by using a mean-split of each nation’s Human Development Index – a measure of relative opportunity for longevity, education, and income, with a score range of 0 (low) to 1 (high) (Low HDI group M(SD) = 0.66(0.10); High HDI group M(SD) = 0.92(0.02)) [22]. Retention strategies were coded as either established or emerging, depending on their presence or absence in any of the earlier systematic reviews on participant retention strategies [4, 6, 16, 17]. Finally, all meta-regressions adjusted for study duration and number of waves (except when these were specifically examined as predictor variables), given these were deemed to be likely confounding variables in analyses.

Results

Cohort, participant, and article characteristics

The 141 articles identified for review described 143 cohorts (41 clinical and 102 non-clinical). Cohorts are summarised in Table 1. Overall the mean sample size reported in the first wave of each article was 3585 participants (range = 30 to 61,895). Articles reported a mean retention rate of 73.5% (SD = 20.1%), with 4.6 waves (SD = 8.0), over 4.3 years (SD = 5.0). The average baseline participant age was 30.0 years (SD = 22.0), and the average baseline proportion of male participants across samples was 40% (SD = 0.30). Studies were conducted in 28 different countries with a mean Human Development Index of 0.79 (SD = 0.15), indicating that studies were more likely to be conducted in countries with high-levels human development. Cohort attrition/retention was identified as a specific research question or objective of interest in 55 of the 141 articles, indicating that most articles were not focused on participant retention. Retention-focused articles reported significantly more retention strategies than non-retention-focused articles (non-retention-focused: M(SD) = 3.3(3.1); retention-focused: M(SD) = 11.0(7.02); t(141) = − 9.00, p < .001); however, no differences were found for the study sample size, number of waves, study duration, or retention rate. High heterogeneity was identified in all results, as expected given the diversity of research questions, methodologies, and cohorts across articles [21].
Table 1

Description of cohorts reported in the included articles

SampleReferenceStudy NameWave 1 Sample SizeWave 1 Mean AgeOverall Retention RateNo. WavesStudy Duration (years)No. Retention Strategies
Clinical cohort studies
 Adolescent and adult non-injecting heroin users[32]Project Brown30016–4098%21.009
 Adolescent/young adult cancer patients[33]Resilience in Adolescents and Young Adults with Cancer Study5217.635%31.504
 Adolescent/Young Adult mobile young injection drug users[34]1012248%62.009
 Adolescents and young adults with Type 1 Diabetes[35]Young Adult Diabetes Assessment (YADA)20417–1897%35.0018
 Adult asthmatic pregnant women[36]Syracuse AUDIT (Assessment of Urban Dwellings for Indoor Toxics)10325.486%51.009
 Adult cannabis users[37]1933284%900.253
 Adult entitlement claimants from the Accident Compensation Corporation[38]Prospective Outcomes of Injury Study (POIS)285618–6479%42.004
 Adult major trauma patients[39]Victorian State Trauma Registry11024070%20.503
 Adult myocardial infarction survivors[40]Western New York Acute Myocardial Infarction (MI) Study8845490%47.002
 Adult parents of overweight children with low-income[41]3720–50+46%261.0014
 Adult Puerto Rican/Mexicans with a mental health diagnosis[42]6818–5059%35.0020
 Adult smokers and non-smoker comparisons[43]International Tobacco Control (ITC) China Survey600118–55+68%33.007
 Adult spinal surgery patients[44]Danish spine surgery registry (Danespine)50658.94100%31.001
 Adult survivors of ARDS[45]Toronto Acute Respiratory Distress Syndrome (ARDS) Study10986%35.0018
 Adult survivors of SARS[45]Toronto Severe acute respiratory syndrome (SARS) Study11791%22.0017
 Adults with diabetes[46]Living with Diabetes Study395161.481%33.0015
 Adult women at-risk of cardiovascular events[47]PREDICT Study111021+90%92.0012
 Adult women at-risk of HIV infection[48]4112194%21.004
 Adult women breast cancer survivors[49]12159.796%21.003
 Adult women with HIV/AIDS[50]Instituto de Pesquisa Clínica Evandro Chagas (IPEC) Cohort of Women Living with HIV/ AIDS followed up in Fundação Oswaldo Cruz (FIOCRUZ) Rio de Janeiro2253256%33.002
 Adults at first-episode psychosis[51]7118–6070%35.001
 Adults at-risk for HIV infection[52]219118–4977%21.004
 Adults at-risk of problem gambling plus comparison group[53]Quinte Longitudinal Study412146.194%55.001
 Adults who self-harm[54]15028.495%36.004
 Adults who use urinary catheters[55]3343100%40.502
 Adults with acute transient ischemic attack or stroke[56]Oxford Vascular Study123675.298%710.003
 Adults with Alzheimers Disease[57]REAL.FR study68677.959%22.003
 Adults with Alzheimers Disease (AD) and their carers[58]407881%51.0016
 Adults with Alzheimers Disease or Mild Cognitive Impairment and comparison[59]Australian Imaging, Biomarkers and Lifestyle Flagship Study of Ageing (AIBL)111269.790%21.503
 Adults with aneurysmal subarachnoid hemorrhage (aSAH)[60]Family Caregiver study595283%41.005
 Adults with back pain[61]25030–5968%147.003
 Adults with primary malignant brain tumour (PMBT) and their caregivers[60]20-Hete Study49653.1290%31.003
 Adults with primary Sjögren’s syndrome[62]22252.570%27.602
 Adults with schizophrenia and comparison group[63]562189%22.001
 Adults with Severe Traumatic Brain Injury[64]PariS-TBI study5044260%24.006
 Adults with temporomandibular disorders[65]Orofacial Pain: Prospective Evaluation and Risk Assessment (OPPERA) Study32633184%112.805
 Adults with traumatic brain injury[66]Tasmanian Neurotrauma Register (TNTR)94736.119%73.005
 Adults with Traumatic Brain Injury[67]7767.157%30.501
 Adult burn victims[68]Burns Registry of Australia and New Zealand46341.821%52.004
 Caregivers of adult cancer patients[69]2065785%31.101
 Child twins and their siblings[70]Australian Twin ADHD Project (ATAP)19384–1243%39.003
 Children at-risk of HIV infection[71]AIDS-ill families study351513.597%21.009
 Children at-risk of thyroid cancer and comparison group[72]6001188%28.009
 Children exposed to Cocaine/opiate and comparison[73]Maternal Lifestyle Study (MLS)13,8880.176%515.0016
 Children perinatally infected with HIV and comparison[74]IMPAACT P1055 Psychiatric Co-Morbidity Study58212.481%22.003
 Children who were former child soldiers[75]26010–1769%36.003
 Children with ADHD and a sibling for comparison[26]International Multicenter ADHD Genetics (IMAGE) study45911.476%26.001
 Children with ADHD and comparisons[76]Berkeley Girls with ADHD Longitudinal Study (BGALS)2289.695%310.002
 Female adolescent/young adult survivors of a mass campus shooting[77]8121981%72.501
 Infants at-risk of developing diabetes[78]The Environmental Determinants of Diabetets in the Young (TEDDY) study41380.474%31.001
 Male sex workers[79]5017–26+34%20.504
 Men who have Sex with Men[25]Bangkok Men who have Sex with Men Cohort Study (BMCS)17442690%103.003
 Men who have Sex with Men[80]260722.722%20.252
 Men who have Sex with Men[81]71018–5474%21.005
 Men who have Sex with Men[82]10032870%82.601
 Men who have Sex with Men[83]5112955%30.755
 Men who have Sex with Men[84]2783216%31.005
 Men who have Sex with Men[85]32730.892%31.001
 Population at-risk for HIV infection[86]100013–4977%52.503
Non-clinical cohort studies
 Adolescent mother-child dyads[87]9714–2038%34.009
 Adolescent population[88]Danish Youth Cohort12,49813.425%32.001
 Adolescent population[89]Dating It Safe96416.186%21.001
 Adolescent population[90]Healthy Teens Longitudinal Study61114.866%76.001
 Adolescent population[91]International Youth Development Study (IYDS)18581398%32.004
 Adolescent population[92]TRacking Adolescents’ Individual Lives Survey (TRAILS)277311.179%48.001
 Adolescent population[93]Youth Asset Study (YAS)111712–1797%54.0032
 Adolescent population[94]153514.957%21.001
 Adolescent population[95]49713.0386%66.001
 Adolescent/Young adult twins[96]Minnesota Twin Family Study (MTFS)12521793%412.001
 Adult African American population[97]Religion and Health in African Americans (RHIAA) study280354.8640%22.5016
 Adult African American women[98]Study of Environment, Lifestyle and Fibroids (SELF)169623–3487%21.673
 Adult Alaska Native and American  Indian population[99]Education and Research Towards Health (EARTH) study382818–55+88%21.5018
 Adult low income mothers[100]Welfare Client Longitudinal Study (WCLS)49818–35+89%21.0011
 Adult male population[101]Florey Adelaide Male Ageing Study (FAMAS)11955596%21.0014
 Adult mother-child dyads[102]43180.284%51.003
 Adult mother-child dyads[103]36513.764%21.004
 Adult officeworkers[104]5342100%261.001
 Adult online panel members[105]ATTEMPT Cohort200947.952%51.003
 Adult online panel members[106]20233.847%30.001
 Adult population[107]Baltimore Epidemiologic Catchment Area Follow-up348118–65+53%323.001
 Adult population[108]Healthy Aging in Neighborhoods of Diversity across the Life Span (HANDLS) study372230–6479%34.0012
 Adult population[109]Heart Strategies Concentrating on Risk Evaluation (Heart SCORE) study184159.184%54.0011
 Adult population[110]Helsinki Aging Study (HAS)1708042%25.003
 Adult population[111]Knee Clinical Assessment Study (CAS(K))81950–80+95%21.503
 Adult population[112]Longitudinal Assessment of Women (LAW)51164.796%55.0016
 Adult population[113]Midlife in the United States (MIDUS)710825–7475%210.004
 Adult population[114]MRC National Survey of Health and Development (NSHD)316360–6484%29.002
 Adult population[115]Netherlands Mental Health Survey and Incidence Study (NEMESIS-2)18–6418+80%23.009
 Adult population[116]Netherlands Study of Depression and Anxiety (NESDA)298139.987%22.0010
 Adult population[117]New Zealand Attitudes and Values Study65184862%43.0012
 Adult population[118]NutriNet-Santé Cohort Study15,00018+44%22.008
 Adult population[119]People’s Republic of China-United States of America (PRC-USA) Collaborative Study of Cardiovascular and Cardiopulmonary Epidemiology173957.794%35.001
 Adult population[120]Quinte Longitudinal Study (QLS)412118–65+94%55.001
 Adult population[121]Study of health in Pomerania (SHIP)626720–7984%25.0010
 Adult population[122]Study of Use of Products and Exposure-Related Behavior (SUPERB)4813647%93.003
 Adult population[123]70048.871%42.002
 Adult pregnant women[124]Drakenstein Child Health Study (DCHS)58526.690%21.336
 Adult pregnant women[125]G-GrippeNet (GGNET) Project1533478%100.202
 Adult pregnant women[126]Maternal Anxiety in Relation to Infant Development (MARI) Study3062890%72.002
 Adult pregnant women[127]Mater-University Study of Pregnancy (MUSP)675324.388%627.005
 Adult pregnant women[128]Pregnancy, Infection, and Nutrition Study2623070%22.005
 Adult pregnant women[129]11831.672%41.001
 Adult pregnant women[130]40,33330.365%20.751
 Adult pregnant women[131]104018–34+71%31.101
 Adult premenopausal women[132]Uterine Fibroid Study (UFS)114135–4985%38.005
 Adult South Asians living in US[133]Mediators of Atherosclerosis in South Asians Living in America (MASALA) study90640–8448%20.756
 Adult veterans[134]13193379%21.004
 Adult women[135]Australian Longitudinal Study on Women’s Health14,24718–2377%44.008
 Adult women[136]Australian Longitudinal Study on Women’s Health40,39518–7580%26.005
 Adult women[137]Manitoba Breast Screening Program47,63750–6880%22.505
 Adult women[138]143540–5072%33.0013
 Adult women[139]48,1253891%212.005
 Adult women hoping to become pregnant[140]3029.443%41.502
 Adult/Young Adult Probationers[141]19917–3552%515.007
 Birth cohort[142]Australian Aboriginal Birth Cohort study686072%318.0031
 Birth cohort[143]Birth to Twenty (BT20) birth cohort3273070%1916.0016
 Birth cohort[144]Danish National Birth Cohort61,895063%27.001
 Birth cohort[145]ECAGE Project (Study of Food Intake and Eating Behavior of Pregnant Women)462094%30.652
 Birth cohort[146]Environments for Healthy Living (EHL)3368065%25.507
 Birth cohort[147]Geographic research on wellbeing (GROW) study9256733%27.009
 Birth cohort[148]Growing up in New Zealand6846095%20.7523
 Birth cohort[149]Japan Children’s Study (JCS)4670.381%63.5013
 Birth cohort[150]Nascita e INFanzia gli Effetti dell’Ambiente (NINFEA) cohort7003078%44.006
 Birth cohort[151]413095%20.501
 Birth cohort[152]1196046%530.001
 Birth cohort of children from Lesbian parents[153]US National Longitudinal Lesbian Family Study (NLLFS)154093%517.001
 Child African-American population and their parents[154]763.470%23.5018
 Child monozygotic (MZ) and dizygotic (DZ) twins[155]University of Southern California Study of Risk Factors for Antisocial Behavior (USC RFAB)1569959%58.0010
 Child population[156]Danish youth cohort Vestliv305414.564%36.001
 Child population[157]Ho Chi Minh City Youth Cohort75911.877%55.004
 Child population[158]4051191%44.0017
 Indigenous adolescents[159]67111.379%88.007
 Mother-child dyads[160]Center for Oral Health Research in Appalachia 2 (COHRA2) Study74428.479%22.501
 Older adults[161]Cardiovascular Health Study (CHS)58887346%27.002
 Older adults[162]Chinese Longitudinal Healthy Longevity Survey (CLHLS)16,02065+56%32.001
 Older adults[163]Longitudinal Aging Study Amsterdam (LASA)31077032%617.006
 Older adults[164]New England Centenarian Study (NECS)75997+86%23.501
 Older adults[165]Newcastle 85+ Study85485+40%45.0011
 Older adults[166]Physiological Research to Improve Sleep and Memory Project78.270+83%32.0024
 Older adults[167]UAB Study of Aging100065+95%24.0016
 Population during political turmoil[168]8893689%20.501
 Population during political turmoil[169]102233.985%26.007
 Young adult women population[170]Chlamydia Incidence and Re-infection Rates Study (CIRIS)11162179%31.0013
Overall Mean (Std Dev)3459 (8979)24.7 (23.5)73.9% (20.1%)4.6 (8.0)4.5 (5.1)6.2 (6.2)
Description of cohorts reported in the included articles

Relationship between retention rate and study or participant characteristics

To examine whether retention rate was moderated by study characteristics (i.e., number of waves, study duration, sample size, study focus on retention strategies or not) or by participant characteristics (i.e., population type, gender, age, country development level), a series of meta-regressions was performed, one for each characteristic under examination. Retention rate was not moderated by: number of waves (b < 0.001; 95%CI [− 0.02 to 0.03], p = .77); study duration (b = − 0.02; 95%CI [− 0.06 to 0.02]; p = .34); sample size (b < − 0.001; 95%CI [− 0.00 to 0.00]; p = 0.48); or articles’ focus on retention strategies (b = − 0.12; 95%CI [− 0.54 to 0.30]; p = .57). Additionally, retention rate was not associated with the sample characteristics of: cohort type (clinical or non-clinical) (b = 0.04; 95%CI [− 0.42 to – 0.51]; p = .86); mean age (b = 0.02; 95%CI [− 0.01 to 0.01]; p = .74); or country development level (b = 0.11; 95%CI [− 0.46 to 0.68]; p = .71). However, gender was a significant moderator of retention rate (b = − 0.67; 95%CI [− 1.14 to − 0.20]; p < .01)). Namely, cohorts with more female participants (median retention = 81.5%, 95%CI [77.6% to 84.9%]) reported higher retention rates than articles with more male participants (median retention = 70.1%; 95%CI [60.1% to 78.5%]), after controlling for study duration and number of waves.

Relationship between retention rate and retention strategy types

A total of 95 retention strategies was identified, with an average of 6.2 strategies per article (SD = 6.2). The most common retention strategies were: cash/voucher incentives to complete a follow-up assessment (n = 59), sending a postcard or letter reminder to complete a follow-up assessment (n = 43), and offering participants alternative methods of data collection, such as completing an interview face-to-face or over the phone (n = 36). Retention strategies were grouped into four main retention strategy domains: (i) barrier-reduction strategies, such as offering childcare services, assistance with parking and transport, and engaging a participant sub-sample to evaluate data collection methods for the next wave; (ii) community-building strategies, such as creating a recognisable study brand via logos and colour schemes, giving away study merchandise to create a sense of project community (e.g., t-shirts with study logo), and sharing study results, news and events with participants via newsletters, social media, and feedback reports; (iii) strategies to improve follow-up rates within each wave, including cash or voucher incentives for varying levels of assessment completion, and use of phone calls, SMS, house visits, mail and email reminders to participants to complete assessments; and (iv) tracing strategies, such as collecting the details of alternative contact persons for each participant at baseline, using public or non-public records to find updated contact information for participants, and collecting detailed participant contact information via a locator document (e.g. full name, address, social security number, phone numbers, email addresses, etc.). The most commonly reported category was strategies to improve follow-up rates within waves, identified 306 times within the 143 cohorts, followed by barrier-reduction strategies (adopted 268 times), community-building strategies (adopted 181 times), and tracing strategies (adopted 138 times). Table 2 presents the retention strategies used, grouped by retention strategy domain. It compares the retention rate for those studies that did, or did not utilise a specific retention strategy type or domain. Of the 95 individual retention strategies examined, three demonstrated moderation of the retention rate. First, improved retention was associated with offering participants alternative methods of data collection (e.g., completing an interview face-to-face or over the phone) (median retention using strategy = 86.1%; median retention not using strategy = 76.3%; b = 0.24, p = .01), and having participants complete a locator document at baseline (median retention using strategy = 90.9%; median retention not using strategy = 78.1%; b = 0.49, p = 0.02). Finally, lower retention was associated with use of phone call reminders to participants to complete a follow-up wave (median retention using strategy = 72.7%; median retention not using strategy = 80.6%; b = 0.25, p = .05). There was weak evidence against the null hypothesis of no moderation effect for a further three strategies. This included having consistent research team members (median retention using strategy = 87.3%; median retention not using strategy = 78.1%; b = 0.67, p = .09); offering site and home visits for data collection (median retention using strategy = 83.9%; median retention not using strategy = 77.4%; b = 0.46, p = .07); and sending participants thank you, birthday or holiday cards (median retention using strategy = 84.9%; median retention not using strategy = 77.5%; b = 0.50, p = .07). There was no evidence to support a moderated retention rate by any other specific retention strategy type.
Table 2

Median meta-analytic retention rates for each retention strategy

Studies using strategyStudies not using strategyAbsolute Difference P I2
N Retention Rate (Lower CI - Upper CI) N Retention Rate (Lower CI - Upper CI)
Reducing barriers to participation (Any vs None)1090.81 (0.77–0.84)340.71 (0.62–0.78)0.100.01*99.87%
 Adapt materials for mixed abilities (e.g., non-English speaking participants)40.74 (0.37–0.93)1390.79 (0.75–0.82)− 0.050.6799.88%
 Adjust inclusion criteria1na
 Adjust lab to be more home-like, less clinical20.81 (0.77–0.84)1410.79 (0.75–0.82)0.020.8499.89%
 Advisory group20.68 (0.58–0.77)1410.79 (0.75–0.82)− 0.110.5699.89%
 Alternative method of data collection360.86 (0.78–0.92)1070.76 (0.72–0.8)0.100.01**99.88%
 Anonymity for participants1na
 Assistance with postage costs50.88 (0.73–0.95)1380.79 (0.75–0.82)0.090.2199.89%
 Assistance with transport/parking/directions120.8 (0.73–0.86)1310.79 (0.75–0.82)0.010.7299.88%
 Catering/refreshments100.87 (0.8–0.92)1330.78 (0.74–0.82)0.090.1399.88%
 Child care30.68 (0.51–0.82)1400.79 (0.75–0.82)− 0.110.3699.89%
 Consistency in research staff110.87 (0.77–0.93)1320.78 (0.74–0.82)0.090.0999.88%
 Partial data collected from proxy/data linkage270.81 (0.73–0.86)1160.79 (0.74–0.82)0.020.4299.88%
 Adapt materials for different languages120.84 (0.72–0.92)1310.78 (0.75–0.82)0.060.3999.88%
 Extended data collection window70.74 (0.54–0.88)1360.79 (0.75–0.82)− 0.050.5299.88%
 Flexibility from research team (e.g., hours called, scheduling)240.83 (0.76–0.89)1190.78 (0.74–0.82)0.050.2399.88%
 Focus group on survey design20.72 (0.7–0.75)1410.79 (0.75–0.82)−0.070.9399.89%
 Hiring, training, and support of staff210.84 (0.77–0.9)1220.78 (0.74–0.82)0.060.1199.88%
 Matching staff to participants, e.g., by language spoken, nature of questions20.94 (0.91–0.96)1410.79 (0.75–0.82)0.150.1499.88%
 Minimising time between data collection points1na
 Pilot testing40.81 (0.63–0.91)1390.79 (0.75–0.82)0.020.9399.89%
 Prioritising measures120.73 (0.6–0.82)1310.8 (0.76–0.83)−0.070.3799.89%
 Recruiting for long-term retention100.83 (0.67–0.92)1330.79 (0.75–0.82)0.040.5099.87%
 Schedule two participants simultaneously - often family or friends20.76 (0.66–0.84)1410.79 (0.75–0.82)−0.030.9299.89%
 Simple, efficient procedure1na
 Site and home visits310.84 (0.78–0.88)1120.77 (0.73–0.81)0.070.0799.88%
 Skip waves150.84 (0.75–0.9)1280.78 (0.74–0.82)0.060.2599.88%
 Splitting data collection over multiple sessions20.79 (0.78–0.81)1410.79 (0.75–0.82)0.000.9099.89%
 Survey design (e.g., order of survey items)30.77 (0.52–0.91)1400.79 (0.75–0.82)−0.020.8899.88%
 Toll-free project phone number50.75 (0.57–0.88)1380.79 (0.75–0.82)−0.040.7599.89%
Creating a project community (Any vs None)590.80 (0.75–0.85)840.78 (0.73–0.82)0.020.4899.88%
 Advisory group20.68 (0.58–0.77)1410.79 (0.75–0.82)− 0.110.5699.89%
 Branding140.79 (0.65–0.89)1290.79 (0.75–0.82)0.000.9999.88%
 Certificate of appreciation/completion20.83 (0.28–0.98)1410.79 (0.75–0.82)0.040.8299.88%
 Champion participants1na
 Educating the community on research50.87 (0.7–0.95)1380.79 (0.75–0.82)0.080.4099.89%
 Emphasising benefits of study30.82 (0.7–0.9)1400.79 (0.75–0.82)0.030.7999.89%
 Events/opportunity to meet other participants90.69 (0.54–0.82)1340.8 (0.76–0.83)−0.110.2399.88%
 Feedback report100.84 (0.73–0.91)1330.79 (0.75–0.82)0.050.3999.88%
 Gaining support of relevant institutions and organisations40.85 (0.71–0.93)1390.79 (0.75–0.82)0.060.5799.89%
 Gift/ freebies190.8 (0.67–0.88)1240.79 (0.75–0.82)0.010.9099.89%
 Hiring, training, and support of staff210.84 (0.77–0.9)1220.78 (0.74–0.82)0.060.1199.88%
 Letter from chief investigator1na
 Media coverage30.7 (0.69–0.72)1400.79 (0.75–0.82)−0.090.8299.89%
 Newsletter/e-newsletter240.83 (0.76–0.89)1190.78 (0.74–0.82)0.050.2399.88%
 Opportunity to participate in other research1na
 Photo album20.72 (0.69–0.75)1410.79 (0.75–0.82)−0.070.7599.89%
 Building rapport220.79 (0.69–0.86)1210.79 (0.75–0.82)0.000.9799.89%
 Sharing study results50.88 (0.66–0.97)1380.79 (0.75–0.82)0.090.2499.89%
 Social media20.89 (0.72–0.96)1410.79 (0.75–0.82)0.100.3999.89%
 Study membership card1na
 Thank you, birthday, and holiday cards250.85 (0.79–0.9)1180.78 (0.73–0.81)0.070.0799.88%
 Time with chief investigator20.92 (0.8–0.97)1410.79 (0.75–0.82)0.130.2499.89%
 Website30.80 (0.47–0.94)1400.79 (0.75–0.82)0.011.0099.88%
Follow-up/Reminder strategies (Any vs None)1110.76 (0.72–0.80)320.86 (0.79–0.91)−0.100.02*99.86%
 Follow-up brochure20.78 (0.74–0.81)1410.79 (0.75–0.82)− 0.010.9799.89%
 Budgeting for multiple contact attempts1na
 Extra incentive to complete all data collection points20.93 (0.77–0.98)1410.79 (0.75–0.82)0.140.1799.89%
 Gift/ freebies incentives (e.g., t-shirts, discount cards)180.8 (0.67–0.88)1250.79 (0.75–0.82)0.010.9099.89%
 Hiring, training, and support of staff210.84 (0.77–0.9)1220.78 (0.74–0.82)0.060.1199.88%
 Incentive (cash/vouchers)590.78 (0.72–0.82)840.8 (0.75–0.84)−0.020.4599.88%
 Incentive increasing value over time100.78 (0.62–0.88)1330.79 (0.75–0.82)− 0.010.8199.88%
 Incentives raffles/competitions110.86 (0.71–0.94)1320.78 (0.75–0.82)0.080.2299.88%
 Increased incentive for hard-to-reach Pp60.68 (0.47–0.84)1370.79 (0.76–0.83)−0.110.2499.88%
 Limiting number of calls etc. based on participants’ response1na
 Medical assistance (e.g., diagnostic testing)270.74 (0.64–0.82)1160.8 (0.76–0.84)−0.060.1799.88%
 Phone Follow-up110.80 (0.67–0.89)1320.79 (0.75–0.82)0.010.9099.88%
 Provide referrals, e.g., medical or legal90.85 (0.77–0.91)1340.78 (0.75–0.82)0.070.2699.89%
 Resend survey once60.77 (0.64–0.86)1370.79 (0.75–0.82)−0.020.7999.88%
 Resend survey multiple times100.76 (0.64–0.84)1330.79 (0.75–0.83)−0.030.6399.88%
 SMS follow-up1na
 Website follow-up80.81 (0.62–0.91)1350.79 (0.75–0.82)0.020.9399.88%
 Email reminder130.73 (0.58–0.85)1300.79 (0.76–0.83)−0.060.3199.88%
 Face-to-face reminder (e.g., home visit)70.85 (0.67–0.94)1360.79 (0.75–0.82)0.060.3399.89%
 Phone call reminder340.73 (0.63–0.8)1090.81 (0.77–0.84)−0.080.05*99.88%
 Postcard/letter reminder430.77 (0.7–0.83)1000.80 (0.75–0.84)−0.030.5099.88%
 SMS reminder50.85 (0.8–0.9)1380.79 (0.75–0.82)0.060.4299.89%
 Reminders (unspecified)1na
Tracing strategies (Any vs None)530.80 (0.73–0.85)900.78 (0.74–0.83)0.020.6299.88%
 Tracing via alternative contacts280.82 (0.75–0.87)1150.78 (0.74–0.82)0.040.3299.88%
 Case-review meetings1na
 Tracing via change of address cards20.74 (0.43–0.91)1410.79 (0.75–0.82)−0.050.9599.89%
 Tracing via email20.74 (0.43–0.92)1410.79 (0.75–0.82)−0.050.8299.89%
 Extensive location tracking information, e.g., known ‘hangouts’1na
 Hiring, training, and support of staff210.84 (0.77–0.9)1220.78 (0.74–0.82)0.060.1199.88%
 Tracing via house visit1na
 Tracing via incentive for staff members20.72 (0.67–0.76)1410.79 (0.75–0.82)−0.070.6999.89%
 Tracing via incentive to update contact details30.86 (0.62–0.96)1400.79 (0.75–0.82)0.070.4399.88%
 Tracing via letter90.77 (0.51–0.91)1340.79 (0.75–0.82)−0.020.7299.89%
 Tracing via locator form documentation*70.91 (0.79–0.97)1360.78 (0.74–0.81)0.130.02*99.88%
 Tracing via phone call80.67 (0.51–0.8)1350.8 (0.76–0.83)−0.130.1299.88%
 Tracing via private investigator1na
 Tracing via SMS1na
 Tracing via social media30.79 (0.39–0.95)1400.79 (0.75–0.82)0.000.9299.89%
 Tracing via tracing via public records200.82 (0.73–0.88)1230.78 (0.74–0.82)0.040.3799.88%
 Tracing via tracking database150.83 (0.73–0.9)1280.78 (0.74–0.82)0.050.3299.88%
 Tracing via update your details form40.9 (0.81–0.96)1390.79 (0.75–0.82)0.110.1599.89%
 Tracing via website20.80 (0.79–0.81)1410.79 (0.75–0.82)0.010.9999.89%
 Tracing via non-public records, e.g., apartment complex managers70.82 (0.66–0.92)1360.79 (0.75–0.82)0.030.5999.89%

All inferential analyses adjusted for study duration and number of waves

na insufficient studies to perform meta-analysis

N No. effect in analysis

*p < .05

**p < .01

Median meta-analytic retention rates for each retention strategy All inferential analyses adjusted for study duration and number of waves na insufficient studies to perform meta-analysis N No. effect in analysis *p < .05 **p < .01 To examine whether the specific strategy domains of barrier-reduction, community-building, follow-up/reminder, and tracing retention strategies were associated with retention rate, a binary variable was created for each domain that denoted whether a study did or did not utilise one or more specific strategy types within that domain. As shown in Table 2, after controlling for study duration and number of waves, studies that utilised any barrier-reduction strategy had higher retention rates than those that did not use a barrier strategy (median retention using barrier strategies = 81.1%; median retention not using barrier strategies = 70.7%; b = 0.61, p = .01). Again after controlling for the study duration and number of waves, surprisingly, articles that reported use of at least one follow-up/reminder strategy had lower retention rates when compared to studies that did not utilise any follow-up/reminder (median retention using follow-up/reminder strategies = 76.4%; median retention not using follow-up/reminder strategies = 86.1%; b = − 0.32, p < .01). No relationships were found between retention rate and the use of any community-building or tracing retention strategies.

Relationship between retention rate and number of strategies used

To examine whether the cumulative number of retention strategies was associated with retention rate, we meta-regressed retention rate on to continuous variables representing the cumulative number of strategies used across strategy domains, and then within each domain separately. Greater number of retention strategies used (across all domains) was not associated with higher retention rate (b = 0.02; 95%CI [− 0.12 to 0.05], p = .21). When examined within each domain, controlling for study duration and number of waves, we found accumulation of barrier-reduction strategies was associated with higher retention (b = 0.12; 95%CI [0.02 to 0.22]; p = .02). In separate meta-regressions, no relationships with retention were identified between number of community-building strategies (b = − 0.03; 95%CI [− 0.18 to 0.11]; p = 0.63), follow-up strategies (b = − 0.03; 95%CI [− 0.14 to 0.09]; p = 0.65), or tracing strategies (b = 0.10; 95%CI [− 0.07 to 0.28]; p = .25).

Identifying strongest independent predictors of retention rate

Three separate meta-regression models were estimated to examine strongest predictors of retention rate within strategy domains and types. Table 3-Model 1 shows that when examining retention strategy types as cumulative variables for each domain, barrier-reduction was independently associated with higher retention (b = 0.17; 95%CI [0.03 to 0.31]; p = .02) and follow-up strategies was independently associated with lower retention (b = − 0.15; 95%CI [− 0.29 to − 0.01]; p = .04) beyond the effects of other retention strategy types. By contrast, Table 3-Model 2 demonstrates that when the retention rate was regressed on to all the binary indicator variables denoting whether the study did or did not utilise at least one strategy within that domain, only the use of follow-up/reminder strategies was independently associated with reduced retention rate (b = − 0.83; 95%CI [− 1.4 to − 0.27]; p < .01).
Table 3

Meta-analytic regression results between retention strategy themes and retention rate

EstimateCI (Lower - Upper) P I2
Model 1: Continuous total number of retention strategy types99.86%
 Barriers0.170.03–0.320.02*
 Community−0.03− 0.18 - 0.110.63
 Follow-up/reminder−0.15−0.29 - -0.010.04*
 Tracing0.11−0.06 - 0.270.22
 Study duration−0.04−0.08 - 0.000.06
 Number of waves0.00−0.02 - 0.030.81
Model 2: Binary usage of retention strategy types99.84%
 Barriers0.35−0.15 - 0.860.16
 Community0.35−0.14 - 0.830.16
 Follow-up/reminder−0.83−1.40 - -0.270.00**
 Tracing0.11−0.36 - 0.590.64
 Study duration−0.03−0.08 - 0.010.10
 Number of waves0.01−0.02 - 0.030.61
Model 3: All individual strategies with p < 0.199.85%
 Tracing - Locator form documentation0.59−0.44 - 1.620.26
 Follow-up - Reminder Phone call−0.72−1.20 - -0.250.00**
 Community - Thank you and birthday cards0.44−0.11 - 0.980.12
 Barriers - Site and home visits0.42−0.05 - 0.880.08
 Barriers - Consistency in research staff0.39−0.42 - 1.200.34
 Barriers - Alternative method of data collection0.590.14–1.050.01**
 Study duration−0.04− 0.08 - − 0.000.05*
 Number of waves-0.00−0.03 - 0.020.89

*p < .05

**p < .01

Meta-analytic regression results between retention strategy themes and retention rate *p < .05 **p < .01 Finally, we investigated whether the associations between individual strategies and retention rate remained after controlling for other effective individual strategies in a single model (see Table 3 Model 3). A meta-regression model was created by entering only individual retention strategies that were associated with a retention rate at the p < .10 level (as discussed in [23, 24]). Six individual strategies were eligible: (i) offering alternative methods of data collection; (ii) consistency in the research staff; (iii) offering site and home visits; (iv) thank you and birthday cards; (v) phone call reminders; and (vi) the use of a locator form (i.e., alternate contacts). Offering participants alternative methods of data collection was associated with improved retention, whilst the use of phone call reminders was associated with reduced retention (b = 0.59; 95%CI [0.13 to 1.05]; p = 0.01; b = − 0.72; 95%CI [− 1.18 to − 0.25]; p < .01, respectively). No associations were found between retention rates and the remaining four individual strategies.

Relationship between retention rate and emerging strategies

The final group-level analysis investigated the association between emerging retention strategies and retention rates. Within these 95 retention strategies, 44 emerging strategies were identified, including the application of social media and SMS to assist in tracing participants lost to follow-up, and the application of study websites and social media profiles for keeping participants up-to-date with the study’s news and events. Meta-regressions demonstrated that articles reporting a higher frequency of emerging retention strategies had higher retention, after controlling for study duration and number of waves (b = 0.08; 95%CI [0.01 to 0.16]; p = .03). Despite this, there was no difference in overall retention rates between those articles that did and did not report the use of emerging retention strategies (median retention using emerging strategies = 80.1%; median retention not using emerging strategies = 75.0%; b = 0.27, p = .27).

Discussion

This study aimed to identify retention strategies employed in longitudinal cohort studies during the past decade, and to examine their effectiveness. We identified 143 longitudinal cohort studies that described retention strategies and outcomes, resulting in 95 different retention strategies. We then investigated whether study or participant characteristics moderated retention, the relationship between retention rate and retention strategy type, and whether new cohort retention strategies have emerged since previous reviews. In so doing, this study is the first meta-analysis of retention strategies conducted in longitudinal cohort studies. This research particularly complements the previous narrative review that investigated cohort retention strategies in longitudinal research [6], and the wider literature investigating participant retention strategies across health research designs (e.g., 4,16,17). Such research has important implications for maximising cohort retention and reducing research administration costs, which will subsequently improve the efficacy and quality of health research. We first investigated how study or participant characteristics may influence cohort retention. Study characteristics included sample size, study duration, number of waves, and country development level - none of which were associated with retention rate. Participant characteristics included mean age at baseline, cohort type (clinical or non-clinical), and gender. We found that cohort studies with a higher proportion of male participants had lower retention rates than studies with a higher proportion of female participants; no associations were found for participants’ age or cohort type. While difficulties in retaining male participants are well-documented in previous research (e.g., 4,20,21), our study noted that cohorts with a higher proportion of male participants were also more likely to be clinical samples than cohorts with a higher proportion of female participants. In addition, cohorts with a higher proportion of male participants were also disproportionately focused on high-risk groups, such as substance use and men who have sex with men (e.g., the Bangkok Men who have Sex with Men Cohort Study (BMCS) [25] and the International Multicenter ADHD Genetics (IMAGE) study [26]). Thus, the difficulties in retention reported in this study and the wider literature could potentially be attributed to the differential impact of these clinical issues that affect men more than women. Researchers working with hard-to-retain populations, such as men in particular clinical groupings, may benefit from investigating what retention strategies work within their specific populations and settings beyond the core retention strategies identified in this review. Second, we investigated the relationship between retention rate and retention strategies. We identified 95 different retention strategies, grouped thematically into four classes: barrier-reduction, community-building, follow-up, and tracing. Specific strategies associated with improved retention rates included the barrier-reduction strategy of offering alternative methods of data collection to participants (e.g., completing an interview over the phone or in person); and the tracing strategy of collecting detailed contact information from participants at baseline via a locator document. Further, weak evidence was found for one community-building and two further barrier-reduction strategies: (i) sending participants thank you, birthday or holiday cards; (ii) having consistent research team members, and; (iii) offering site and home visits for data collection. Overall, barrier-reduction strategies emerged as the strongest predictor of improved retention. Barrier-reduction strategies may be particularly useful in longitudinal research given participants are likely to experience significant changes in their capacity to remain involved across the study’s duration (typically years). Follow-up/reminder strategies, such as incentives and reminders, were associated with significantly poorer retention. This result was surprising, given that the previous review investigating retention strategies in longitudinal cohort studies found the opposite, that use of these follow-up/reminder strategies resulted in improved retention rates [6]. The lack of support for follow-up/reminder strategies found in the current review could be due to a number of extraneous variables including: (i) timing: studies may have implemented this strategy after other retention efforts proved ineffective; (ii) participant burden: the studies using follow-up/reminder strategies may have involved a high data collection burden (e.g., long surveys); (iii) sampling: studies using follow-up/reminder strategies may be over-represented in studies of difficult-to-retain populations, such as men. However, these explanations are unlikely, given that follow-up/reminder strategies were identified in most of the cohorts included in this review (111 out of the 143 cohorts), and the cohorts employing follow-up/reminder strategies did not differ by research design (sample size: t(141) = .67, p = .50; no. waves: t(141) = −.43, p = .67) or participant characteristics (age: t(141) = −.11, p = .91; gender: χ2(2,  = .37, p = .85; HDI: χ2(2, n = 143) = .01, p = .97). Differences were observed only for study duration (any M(SD) = 3.9(4.4); none (SD) = 5.8(6.4); t(141) = 2.00, p = .05). Alternatively, participants may perhaps view follow-up/reminder strategies as the research team “badgering” them to complete assessments, thereby damaging rapport. This negative perspective of follow-up/reminder strategies may be further exacerbated if the research team has not implemented sufficient barrier-reduction strategies to help make it easier for participants to remain involved in the study. Future research could consider investigating participants’ perspectives of retention strategies in longitudinal cohort studies, ensuring that both active and inactive participants are included, to better understand the costs and benefits of different approaches. Interestingly, the current study found that simply adding more cohort retention strategies did not result in higher retention rates. These results contradict the findings of Robinson et al. [17] and Davis et al. [4], who both found that the use of more retention strategies across multiple classes was associated with improved retention rates. However, neither study specifically examined participant retention in longitudinal cohort studies, and both synthesised their retention results using a narrative rather than meta-analytic approach. Given that the implementation of retention strategies can be costly in terms of both time and money, the overall number of strategies employed is important to evaluate. The interaction of quantity of retention strategies used and provision of flexibility needs to be better understood, given research protocols that accommodate the changing lives of participants should remain a key focus of retention efforts. Finally, we examined whether studies utilising new or emerging retention strategies had improved retention compared with studies using established strategies. Of the 95 retention strategies described in the included articles, 44 were identified as an emerging retention strategy that had not yet been described in extant systematic reviews examining participant retention [4, 6, 16, 17]. Emerging strategies included using social media and SMS to assist in tracing participants lost to follow-up, and the use of study websites and social media profiles for keeping participants up-to-date with study news and events. Emerging retention strategies were endorsed by only a handful of studies, and the use of a single emerging strategy was not significantly associated with retention rate. However, we found that studies that employed more emerging retention strategies were associated with improved retention rates. Importantly, emerging strategies were identified across all four retention strategy domains (barrier-reduction, community-building, follow-up/reminder, and tracing), demonstrating that the association between emerging strategies and improvements in retention are due to the use of modern technology to help achieve core cohort engagement goals. Thus, we recommend that researchers continue to innovate their retention efforts, particularly where such strategies may reduce participant burden. The current study has a number of limitations. First, the number of articles that focused on reporting retention strategies in detail was proportionally low compared to the number of articles that did not focus on reporting retention strategies. Although retention strategies were identified within 143 longitudinal cohorts, only 55 included cohort retention as a key focus area. Very few articles (n = 12) were identified that reported strategy-specific retention rates within the longitudinal cohort studies. The number of retention strategies reported by articles ranged from one to 32, with 35 of the 141 articles describing only one retention strategy. Longitudinal cohort studies should aim to publish protocol papers that delineate their cohort retention strategies, and ensure that the protocol is updated as retention efforts evolve. Second, net retention rates were calculated by the difference between the first and last wave of data collection reported in the article. Where specified, ineligible participants (e.g., participants recruited after the first wave, or deceased participants) were excluded from the retention rate calculation. However, some articles did not provide detailed information on the eligibility of the sample at the final wave, and thus it is possible that the retention rates calculated for some studies may be slightly inaccurate. This limitation could be addressed by researchers providing details on the eligibility of their samples at each wave. Third, high levels of heterogeneity were reported for most analyses in this study. This may best be explained by two factors. First, we expected to identify high heterogeneity given the diversity of research questions, methodologies, and cohorts reported across articles. Second, only a small number of studies were eligible for most meta-regressions in this paper, which reduces the precision of heterogeneity estimates [27]. This limitation could be addressed in future work, which could aim to investigate the effectiveness of different retention strategies within different subgroups. Finally, by nature of synthesising retention results across different samples and settings, the current study is unable to disaggregate nuanced effects of various retention strategies across specific contexts and populations, given results are pooled across multiple studies. The current study did address this broadly by investigating the effects of study and sample characteristics on retention. A final point to note is that available to researchers are a range of statistical or methodological approaches that can minimise potential biases introduced with attrition. Whilst beyond the scope of this paper, these approaches include formal statistical methods for addressing missingness due to attrition such as multiple imputation or full information maximum likelihood methods [28, 29]. Moreover, researchers may address attrition methodologically by using replacement sampling approaches that recruit new participants into a study to replace those who have dropped out, based on shared characteristics measured in the original sampling frame [30, 31]. All these methods provide useful avenues to address attrition once any employed retention strategies have been used to retain the largest proportion of the original sample as possible.

Conclusions

Overall, this study has important implications for the retention efforts of longitudinal cohort studies. Combined, these results suggest that researchers need to be strategic in choosing how to invest their resources to better target participant retention, rather than simply increasing the number of strategies applied. Projects should invest both time and funding into matching retention strategies to the sample prior to implementation, including careful consideration of unintended burden for participants. Finally, given the high number of emerging retention strategies identified, longitudinal research methods clearly continue to evolve. Longitudinal cohort studies may benefit from open and regular protocol revision to incorporate new strategies, particularly where these strategies may offer greater flexibility to participants. Table S1. Terms used in the electronic search strategy, adjusted as required for each database. (DOCX 12 kb)
  155 in total

1.  The role of conceptual frameworks in epidemiological analysis: a hierarchical approach.

Authors:  C G Victora; S R Huttly; S C Fuchs; M T Olinto
Journal:  Int J Epidemiol       Date:  1997-02       Impact factor: 7.196

2.  Mental and substance use disorders from early adolescence to young adulthood among indigenous young people: final diagnostic results from an 8-year panel study.

Authors:  Les B Whitbeck; Kelley J Sittner Hartshorn; Devan M Crawford; Melissa L Walls; Kari C Gentzler; Dan R Hoyt
Journal:  Soc Psychiatry Psychiatr Epidemiol       Date:  2014-02-02       Impact factor: 4.328

3.  Retention of African-American and White youth in a longitudinal substance use study.

Authors:  Lisa A Strycker; Susan C Duncan; Terry E Duncan; Haiou He; Nik Desai
Journal:  J Ethn Subst Abuse       Date:  2006       Impact factor: 1.507

4.  Maximising retention in a longitudinal study of genital Chlamydia trachomatis among young women in Australia.

Authors:  Jennifer Walker; Christopher K Fairley; Eve Urban; Marcus Y Chen; Catriona Bradshaw; Sandra M Walker; Basil Donovan; Sepehr N Tabrizi; Kathleen McNamee; Marian Currie; Marie Pirotta; John Kaldor; Lyle C Gurrin; Hudson Birden; Veerakathy Harindra; Francis J Bowden; Suzanne Garland; Jane M Gunn; Jane S Hocking
Journal:  BMC Public Health       Date:  2011-03-09       Impact factor: 3.295

5.  Age-related changes relevant to health in women: design, recruitment, and retention strategies for the Longitudinal Assessment of Women (LAW) study.

Authors:  Soo Keat Khoo; Sheila O'Neill; Catherine Travers; Brian Oldenburg
Journal:  J Womens Health (Larchmt)       Date:  2008 Jan-Feb       Impact factor: 2.681

6.  Postpartum behaviour as predictor of weight change from before pregnancy to one year postpartum.

Authors:  Ellen Althuizen; Mireille Nm van Poppel; Jeanne H de Vries; Jacob C Seidell; Willem van Mechelen
Journal:  BMC Public Health       Date:  2011-03-16       Impact factor: 3.295

7.  Incidence of HIV and Syphilis among Men Who Have Sex with Men (MSM) in Beijing: An Open Cohort Study.

Authors:  Guowu Liu; Hongyan Lu; Juan Wang; Dongyan Xia; Yanming Sun; Guodong Mi; Liming Wang
Journal:  PLoS One       Date:  2015-10-01       Impact factor: 3.240

8.  Household illness, poverty and physical and emotional child abuse victimisation: findings from South Africa's first prospective cohort study.

Authors:  Franziska Meinck; Lucie D Cluver; Mark E Boyes
Journal:  BMC Public Health       Date:  2015-05-01       Impact factor: 3.295

9.  Factors influencing enrollment: a case study from Birth to Twenty, the 1990 birth cohort in Soweto-Johannesburg.

Authors:  Linda M Richter; Saadhna Panday; Shane A Norris
Journal:  Eval Program Plann       Date:  2008-12-11

10.  Factors associated with dropout in a long term observational cohort of fishing communities around lake Victoria, Uganda.

Authors:  Andrew Abaasa; Gershim Asiki; Juliet Mpendo; Jonathan Levin; Janet Seeley; Leslie Nielsen; Ali Ssetaala; Annet Nanvubya; Jan De Bont; Pontiano Kaleebu; Anatoli Kamali
Journal:  BMC Res Notes       Date:  2015-12-24
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Authors:  Hannah K Galvin; Carolyn Petersen; Vignesh Subbian; Anthony Solomonides
Journal:  Appl Clin Inform       Date:  2019-11-06       Impact factor: 2.342

2.  Adolescents' Future Aspirations and Expectations in the Context of a Shifting Rural Economy.

Authors:  Erin Hiley Sharp; Jayson Seaman; Corinna Jenkins Tucker; Karen T Van Gundy; Cesar J Rebellon
Journal:  J Youth Adolesc       Date:  2019-10-26

3.  Thirty years later: Locating and interviewing participants of the Chicago Longitudinal Study.

Authors:  Suh-Ruu Ou; Christina F Mondi; Sangok Yoo; Kyungin Park; Brianne Warren; Arthur J Reynolds
Journal:  Early Child Res Q       Date:  2019-09-26

4.  Association Between Participant Contact Attempts and Reports of Being Bothered in a National, Longitudinal Cohort Study of ARDS Survivors.

Authors:  Michelle N Eakin; Thomas Eckmann; Victor D Dinglas; Ayodele A Akinremi; Megan Hosey; Ramona O Hopkins; Dale M Needham
Journal:  Chest       Date:  2020-03-17       Impact factor: 9.410

5.  Methodological challenges in conducting instrumentation research in non-communicative palliative care patients.

Authors:  Karen Snow Kaiser; Deborah B McGuire; Timothy J Keay; Mary Ellen Haisfield-Wolfe
Journal:  Appl Nurs Res       Date:  2019-11-06       Impact factor: 2.257

6.  Methods to Optimize Recruitment, Participation, and Retention Among Vulnerable Individuals Participating in a Longitudinal Clinical Trial.

Authors:  Kelly Doran; Anahi Collado; Hailey Taylor; Julia W Felton; Kayla N Tormohlen; Richard Yi
Journal:  Res Theory Nurs Pract       Date:  2021-02-01       Impact factor: 0.688

7.  Who Returns? Understanding Varieties of Longitudinal Participation in MIDUS.

Authors:  Jieun Song; Barry T Radler; Margie E Lachman; Marsha R Mailick; Yajuan Si; Carol D Ryff
Journal:  J Aging Health       Date:  2021-05-17

8.  Maternal temperament and character: associations to child behavior at the age of 3 years.

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Journal:  Child Adolesc Psychiatry Ment Health       Date:  2021-05-06       Impact factor: 3.033

9.  Using Marketing Automation to Modernize Data Collection in the California Teachers Study Cohort.

Authors:  Kristen E Savage; Jennifer L Benbow; Christine Duffy; Emma S Spielfogel; Nadia T Chung; Sophia S Wang; Maria Elena Martinez; James V Lacey
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10.  Clinician Use of HIV-Related Infographics During Clinic Visits in the Dominican Republic is Associated with Lower Viral Load and Other Improvements in Health Outcomes.

Authors:  Samantha Stonbraker; Jianfang Liu; Gabriella Sanabria; Maureen George; Silvia Cunto-Amesty; Carmela Alcántara; Ana F Abraído-Lanza; Mina Halpern; Tawandra Rowell-Cunsolo; Suzanne Bakken; Rebecca Schnall
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