Thursday, 17 November 2016

Lifestyle interventions for type 2 diabetes prevention in women with prior gestational diabetes: A systematic review and meta-analysis of behavioural, anthropometric and metabolic outcomes

. 2015; 2: 448–461.
Published online 2015 May 24. doi:  10.1016/j.pmedr.2015.05.009
PMCID: PMC4721374

aSchool of Psychological & Health Sciences, University of Strathclyde, Glasgow, Scotland, G1 1QE, United Kingdom
bBritish Heart Foundation Glasgow Cardiovascular Research Centre, 126 University Place, Glasgow G11 8TA, United Kingdom
Corresponding author at: School of Psychological & Health Sciences, Room 532 Graham Hills Building, University of Strathclyde, 40 George Street, Glasgow, G1 1QE, United Kingdom. ku.ca.htarts@krik.nosilA

Abstract

Purpose

To systematically review lifestyle interventions for women with prior Gestational Diabetes Mellitus (GDM) to report study characteristics, intervention design and study quality and explore changes in 1) diet, physical activity and sedentary behaviour; 2) anthropometric outcomes and; 3) glycaemic control and diabetes risk.

Methods

Databases (Web of Science, CCRCT, EMBASE and Science DIRECT) were searched (1980 to April 2014) using keywords for controlled or pre–post design trials of lifestyle intervention targeting women with previous GDM reporting at least one behavioural, anthropometric or diabetes outcome. Selected studies were narratively synthesized with anthropometric and glycaemic outcomes synthesized using meta-analysis.

Results

Three of 13 included studies were rated as low bias risk. Recruitment rates were poor but study retention good. Six of 11 studies reporting on physical activity reported favourable intervention effects. All six studies reporting on diet reported favourable intervention effects. In meta-analysis, significant weight-loss was attributable to one Chinese population study (WMD = − 1.06 kg (95% CI = − 1.68, − 0.44)). Lifestyle interventions did not change fasting blood glucose (WMD = − 0.05 mmol/L, 95% CI = − 0.21, 0.11) or type 2 diabetes risk.

Conclusions

Lack of methodologically robust trials gives limited evidence for the success of lifestyle interventions in women with prior GDM. Recruitment into trials is challenging.
Keywords: Gestational diabetes, Lifestyle, Review

Introduction

Gestational Diabetes Mellitus (GDM) is a form of diabetes that is diagnosed during pregnancy and affects up to 16% of pregnant women (). Recent changes in guidelines () for clinical diagnosis of GDM, in addition to upward trends in obesity and unhealthy lifestyles, has increased the number of women being diagnosed (). Progression to type 2 diabetes for women with GDM is reported to be between 15 and 50% at 5 years (). Furthermore weight and BMI are significant predictors of development of type 2 diabetes at 15-year follow-up ().
Guidelines on type 2 diabetes prevention () clearly state that high-risk populations, such as women with GDM, should be offered lifestyle interventions. In women with GDM, physical activity and dietary change successfully improves glycaemic control, body composition, reduces requirements for insulin and may prevent onset GDM in subsequent pregnancies and future development of type 2 diabetes (, ). The Diabetes Prevention Program (DPP) showed that lifestyle interventions and Metformin reduced type 2 diabetes incidence by 58% and 31% respectively in people with impaired glucose tolerance (IGT), including those with a history of GDM (). These reductions in incidence rate were maintained up to 10 years ().
Several studies examining the effectiveness of lifestyle interventions in women with prior GDM have recently been published (, , ) and more trials are in progress (, , ), however, evidence from intervention trials within the general population of pregnant and postpartum women suggests that behaviour change is challenging in these groups (, ). Similarly, research with GDM populations have reported difficulties recruiting or retaining participants (), and compared with women with IGT and no prior history of GDM, poorer engagement in lifestyle changes (). These findings suggest that lifestyle interventions and research methods may require adaptation for women with GDM. Lifestyle interventions for preventing type 2 diabetes in women with prior GDM have not been systematically reviewed to date, yet this is important to inform future research and practice.
The objectives of this research were to systematically review published studies investigating lifestyle interventions for women with previous diagnosis of GDM to explore changes in 1) behavioural outcomes (diet, physical activity and sedentary behaviour); 2) anthropometric outcomes and; 3) glycaemic control and diabetes risk. Study characteristics and quality in addition to intervention content and design are also reported.

Methods

The review was registered with PROSPERO International prospective register of systematic reviews (www.crd.york.ac.uk/PROSPERO). Methods of the review followed COCHRANE (http://www.cochrane.org) and PRISMA guidance (http://www.prisma-statement.org), which specify recommended quality criteria for conducting and reporting systematic reviews and meta-analyses.

Study selection

We included lifestyle intervention studies targeting women with previous diagnosis of GDM. Although recruitment and interventions could commence during pregnancy, as the focus was on prevention of type 2 diabetes in women with prior GDM, studies were only included if they reported interventions and outcomes during the postpartum period. Included interventions were those promoting weight loss or physical activity, change in diet, or decreasing sedentary behaviour and delivered via structured exercise programmes, lifestyle counselling, health education, and self-management programmes. Studies had to include at least one behavioural (diet, physical activity or sedentary behaviour) anthropometric (weight, BMI, percent body fat, waist or hip circumference) or diabetes outcome (measure of glycaemic control or diabetes risk). We included randomised controlled trials (RCTs), controlled trials or pre–post studies in the systematic review, however only RCTs were included in meta-analysis. We included all control/comparison groups (e.g. usual care, a waiting list, no treatment and/or a minimal intervention (e.g. leaflet)).
Studies not in the English language; dissertations, expert opinion, non-published studies and conference abstracts were excluded, however we contacted authors of relevant conference abstracts/protocol/baseline/methods papers to identify published data. Studies conducted with pregnant women with no diagnosis of GDM, pre-existing or current type 1 or type 2 diabetes, or women with a positive glucose challenge test who did not meet criteria for GDM were also excluded. There were no exclusions based on time since GDM diagnosis.
Studies obviously not meeting inclusion criteria were eliminated at title stage, thereafter abstracts were reviewed. Fig. 1 notes reasons for exclusion. Remaining studies were downloaded for full-text review.
Fig. 1
Flow of search and selection process.

Data sources and searches

The search strategy was developed in consultation with a subject specialist librarian. We searched the following databases: Web of Science (inclusive of Medline), Cochrane Library: Cochrane Central Register of Controlled Trials (CCRCT), EMBASE (on OVID), Science DIRECT from 1980–April 2014, selecting English-only abstracts. Terms used were: (pregnancy diabetes mellitus or gestational diabetes) AND TOPIC: (intervention* or prevent*) AND TOPIC: (“physical activity” or walking or exercise or sedentary or sitting or diet or lifestyle) AND TOPIC: (controlled study or trial*). Reference lists from all included papers were searched.

Data extraction and quality assessment

One author searched and extracted data from all studies (ASG). Two authors (AFK & ARH) reviewed in total 50% (i.e. 25% each) of full-text studies to check they met inclusion criteria, check correct extraction of data and assess quality assessment indicators. A data extraction form was developed to extract data on: study population, interventions and comparator conditions, recruitment and retention methods and all relevant outcomes (i.e. behavioural, anthropometric, progression to type 2 diabetes and glycaemic control). The CONSORT flow diagram was used to extract numbers approached, randomised, allocated and receiving the intervention/comparator conditions and numbers and reasons for loss-to-follow-up (). Authors were contacted if further information was required.
Methodological quality was assessed using criteria for judging bias in intervention studies recommended by Cochrane. All studies were coded as adequate, not adequate, unclear or not applicable in relation to sequence generation, allocation concealment, blinding of outcome assessors, retention at follow-up and handling of data (criteria for coding given in Table 2). These quality indicators were then used to assign each study with an overall risk of bias rating of high, low or unclear.
Table 2
Risk of bias among included studies.

Data synthesis and analysis

All extracted study characteristics and risk of bias data was entered into evidence tables (See Table 1, Table 2). A synthesis is summarized in the results section below. After extraction the following outcomes were synthesized using meta-analysis: anthropometric – change in weight (available in five studies) and glycaemic – change in fasting blood glucose (available in four studies). Inclusion within the meta-analysis was dependent on the study being of a randomised controlled design and data being reported within the paper or from author contacts. We did not conduct a meta-analysis of behavioural outcomes due to large variability in the methods of measurement and units of measure for the behaviour.
Table 1
Study characteristics, efficacy outcomes and risk of bias for included studies.
For the meta-analyses, we conducted random effects analysis in RevMan 5.0, analysing the between-groups difference in each outcome at the last follow-up point or between groups change from baseline (depending on what was reported in the published paper) using the weighted mean difference (WMD) measure. We present outcomes in terms of efficacy in the short-term (e.g. 13 weeks or less follow-up), short-medium term (i.e. 6 months follow-up), medium-term (i.e. 12 months follow-up) and long-term (i.e. 24 months follow-up or greater). Heterogeneity was investigated using chi-square (Q-statistic), based on observing a p-value of < 0.05, and the I2 test, with levels > 50% suggestive of substantial heterogeneity. We did not conduct assessment of publication bias due to the small number of studies eligible for inclusion in the meta-analysis.

Results

Identification of studies

A total of 1239 citations were identified, of these 925 were excluded at title stage and 265 at abstract stage. We assessed 28 primary studies and 21 reviews for potentially relevant studies. We did not find any additional citations within the reviews. Of the primary studies, 12 were excluded due to not being conducted within a GDM population (however, some included a limited number of women with GDM as ‘high-risk’ individuals but results could not be separated). A further three articles were excluded due to being conducted solely in pregnancy, not targeting weight loss/behaviour change or not reporting the results of an intervention (see Fig. 1).
In total 13 studies were included in the systematic review (, , , , , , , , , , , , ), five in the meta-analysis of anthropometric outcomes (, , , , , , ) and four in the meta-analysis of glucose outcomes (, , , ). Two eligible studies included in the review were found as a result of the cited reference search, while all others were identified via the database search.

Study characteristics

Table 1 summarizes study descriptors, intervention and comparator conditions, outcomes and findings.
Of the 13 studies, ten were RCTs (, , , , , , , , , ). Two studies were pre–post (, ) and one was an RCT cross-over design (). All RCTs, except (), adopted a two-group design. Ratner et al. () reported data from women with a history of GDM from the DPP intervention, using a three-group design (i.e. lifestyle intervention, metformin and a drug–placebo control). Five studies took place in the US (, , , , ), five in Australia (, , , , ), one in China (), one in Hong Kong () and one in Malaysia ().

Interventions

Three study interventions targeted physical activity only, through face-to-face counselling and follow-up phone calls (, ) or a web-based pedometer intervention (). Two targeted diet only through through face-to-face counselling () or telephone-based education (). Eight targeted a combination of diet and physical activity (, , , , , , , ). Three studies provided information related to intervention adherence (, , ).

Comparators

Comparison conditions were metformin and a placebo drug (), educational information focused on conventional dietary recommendations (), written educational materials (, , , , ), and usual care/no treatment (, ). Hu et al. () also provided lifestyle change information via two face to face education classes at baseline and annually via phone/mail. In Wein et al. (), the intervention group received dietary intervention, however both groups were “advised to exercise regularly” (e.g. at least 30 min, three times per week). In Peterson et al. () participants acted as their own comparator condition with a change in dietary prescription (from 40% to 55% or 55% to 40% of carbohydrate content) at the mid-point (6-weeks) of the intervention.

Recruitment

12 studies provided information on recruitment methods used (see Table 1). The majority of studies recruited participants from hospital clinic settings (, , , , , , , , ). Recruitment ranged from 7% to 28% of all GDM clinic attendees (where information available (, , , )). A large number of women with GDM were contacted, with rates of successful recruitment varying between 19 and 70% (Table 1). Hu et al. () reported the most favourable recruitment rate using follow-up call(s) after mailing out a study letter to clinic attendees. Poorest recruitment was in Kim et al. (), where participants had to sign up proactively by providing an email address (). It took 10 months () to recruit for a small study (< 50 participants) and between 2–4 years for studies with > 100 participants (, , ). However, most studies provided no details on length of time to recruit.

Retention

Retention rate at the last follow-up point in the included studies was generally between 80–100%(, , , , , , , ). In two studies, the last follow-up point was at 12–13 weeks (, ) and was between 6–12 months after baseline in other studies (see Table 1). Three studies reported good retention at later follow-ups (i.e. > 90%(; ) at three years and () at 51 months). Limited details were provided on reasons for loss to follow-up or methods used to retain participants across most studies. Two studies reported lower retention [i.e. 77% [26] and 68% at six months and 12 weeks (), respectively].

Methodological quality

Table 2 presents an assessment of risk of bias for each study. Overall, three of the 13 studies were rated as low risk of bias (, , ), all used blinded outcomes assessors and provided details of how the randomization sequence was independently developed and allocation to study groups was concealed from investigators. Three studies were rated as high risk of bias, due to studies being non-controlled (, ) or randomization being known prior to baseline assessments (). Seven (54%) were unclear as key study indicators were not adequately described (, , , , , , ).

Changes in behavioural outcomes

Eleven studies reported changes in behavioural outcomes (, , , , , , , , , ). See Table 1 for changes in physical activity, diet and sedentary behaviour.

Physical activity

Eleven studies reported on change in physical activity behaviour. Six studies found significant increases in physical activity among women with prior GDM after receiving lifestyle interventions targeting PA only (), PA and diet (, , , , ). Only one of these studies was rated as low risk of bias (). Of the six studies reporting change, three were change from baseline to follow-up (, , ) and three were compared to physical activity behaviour among controls (, , ).

Sedentary time

Two studies reported on change in sedentary behaviour via self-reported sitting time (, ). Both report significant declines relative to the control group following lifestyle interventions, although the changes were small and associated with large confidence intervals. Neither study was rated as low risk of bias.

Diet

Six studies reported on change in dietary intake (, , , , , ). All found some positive effects on some dietary variables favouring the intervention group (, , , , , ) including one study rated as low risk of bias (). In one study changes in dietary variables were from baseline () and in three studies changes were relative to the control group (, , ). One study found that both intensive and low-intensity (i.e. written) dietary advice resulted in modest improvements to diet (). In one study () both groups received different dietary interventions (i.e. focusing on low glycaemic index or conventional low-fat dietary advice) with resultant favourable changes in dietary variables.

Changes in anthropometric outcomes

Anthropometric outcomes were reported in all 13 studies: weight in nine studies (, , , , , , , , ); BMI in eight studies (, , , , , , , , ); percent body fat in three studies (, , ); waist circumference in five studies (, , , , ) and hip circumference in two studies (, ). Two studies reported on proportion achieving weight loss goals (, ). Peterson et al. () and Wan Man Shek et al. () measured percent body fat and waist-hip ratio respectively but did not provide results.
Six studies found a significant reduction in weight, BMI, percent body fat and/or waist–hip ratio among participants taking part in the intervention group (, , , , , ). Again only one of these studies () was rated as low risk of bias. Of these, three were changes from baseline (, , ) and three were relative to a control group (, , ).
Among lifestyle interventions targeting diet and physical activity/sedentary behaviour, Ratner et al. () reported average weight loss for women with a history of GDM within the lifestyle intervention group of 5 kg at six months, however this was not maintained until three years and therefore weight loss was poorer at three years compared to weight loss among women with impaired glucose tolerance without a history of GDM. Two other studies reported favourable changes compared to controls (, ).
Seven other studies found no significant effects of lifestyle interventions on anthropometric outcomes at follow-up (, , , , , , ). However, Wan Man Shek et al. () found the difference between the groups in reduction in weight and percent body fat were close to significance (p = 0.06 and p = 0.05), with heavier participants being more likely to be diagnosed with type two diabetes at 36 months follow-up). Also Ferrara et al. () found lifestyle intervention participants were more likely to reach postpartum weight loss goals, but only if they had not gained excessive gestational weight during pregnancy.

Meta-analysis of weight outcomes

Lifestyle interventions resulted in a statistically significant reduction in weight (kg) based on data from five studies (, , , , ), see Fig. 2 (WMD = − 1.06 kg (95% CI = − 1.68, − 0.44, p < 0.01, I = 0%). However, as shown in Fig. 2, this significant effect was attributable to the reduction at 12 months follow-up in Hu et al. () (i.e. − 1.19 kg, 95% CI = − 1.87, − 0.51) due to the large sample size (and therefore weighting) of this trial.
Fig. 2
Meta-analysis of weight loss.

Changes in glycaemic outcomes and diabetes risk


Glycaemic control outcomes

Glycaemic outcomes were reported in nine studies (, , , , , , , , ) including one study rated as low risk of bias (). These were: HbA1c (, ), fasting insulin (, , , ), fasting blood glucose (, , , , , ), 2-hour blood glucose (, , , , ), and HOMA–IR (, , ). Four studies did not report any glycaemic outcomes (, , , ). Overall three studies reported a significant positive effect of lifestyle interventions on at least one glycaemic outcome (, , ). Effects reported included a reduction in 2-hour blood glucose relative to controls among those receiving dietary interventions only (, ) and reduced HOMA–IR and fasting insulin relative to controls (). In five studies, there was no effect of lifestyle interventions on glycaemic outcomes from baseline (, , ) or relative to controls (, , ). In one non-controlled study there was an increase in HbA1c from baseline ().

Meta-analysis of glycaemic outcomes

Lifestyle interventions did not result in a statistically significant reduction in fasting blood glucose based on data from four studies (, , , ) (The WMD = − 0.05 mmol/L, 95% CI = − 0.21, 0.11, p = 0.54, I = 39, see Fig. 3).
Fig. 3
Meta-analysis of fasting blood glucose change.

Progression to type 2 diabetes

Three studies reported on progression to type 2 diabetes (, , ). Findings at 36 months () and 51 months () were non-significant for rate reduction in diabetes risk. Ratner et al. () reported that lifestyle intervention was equally effective at reducing the rate of diabetes progression in women with and without a history of GDM. The numbers needed to treat with lifestyle intervention was higher among GDM women compared with women without GDM. Two studies reported on progression to normoglycemia (, ). Shyam et al. () reported the difference in rate was non-significant at six months (see Table 1). Cheung et al. () reported 63% returned to normoglycemia among the intervention group, compared to 75% among controls with no significance testing reported.

Other clinical outcomes

Although the objective of the review did not include extracting or reporting on other clinical outcomes three studies measured changes in blood pressure (BP) (i.e. systolic BP (, , ), diastolic BP (, , )) and blood lipids (i.e. triglyceride (, , , ), serum cholesterol (), HDL-cholesterol (, , ), LDL-cholesterol (, , ) and total cholesterol (, )). Details of changes in these clinical outcomes following lifestyle interventions are provided in Table 1.

Discussion

The results of this systematic review and meta-analysis suggest there is currently limited evidence from high quality studies on the effect of lifestyle interventions on behavioural, anthropometric and glycaemic outcomes among women with prior GDM.

Study characteristics

Study quality was poor with only 3 out of the 13 studies reviewed being rated as low risk of bias. None of the studies included were conducted in Europe. The majority of research targets both diet and physical activity. Interventions are mostly delivered through face to face contact. Few studies report of intervention adherence.
Recruitment to trials within this population appears to be challenging, but trials tend to achieve high retention rates. The majority of studies recruit from hospital clinics and few provide any detail on length of time required for recruitment. More research is required which explores feasible, acceptable and effective methods of recruitment to lifestyle interventions for this group of the population. There is tentative evidence that recruitment and starting lifestyle intervention during pregnancy is beneficial (). However qualitative research reports the feeling among women that the early postpartum stage is “too early” for considering lifestyle change (, ). Later recruitment could be targeted during annual glucose monitoring ().
Notably, previous analyses have suggested that later diabetes risk is influenced by a variety of risk factors including diagnostic glucose levels and ethnicity with more variable results between trials for family history, BMI and insulin use (). In general, intervention trials have not stratified for these risk factors or recently introduced categories of “overt diabetes in pregnancy” in the IADPSG and
Diabetes mellitus in pregnancy WHO. An exception is the DPP which recruited women with post partum IGT. It could be speculated that trials stratified to those most at risk might be more successful in recruitment and interventions.

Changes in behavioural outcomes

There is minimal evidence for a change in physical activity following lifestyle intervention in women with prior GDM, with six out of eleven studies reporting favourable change. The majority of these studies were rated as high or unclear risk of bias. The exception was the DPP, which was rated as low risk of bias and reported increased physical activity relative to the control group of 150 min of moderate–vigorous activity at one year (). However, these changes were not sustained at three year follow up (). It is worth highlighting that DPP recruited women with prior GDM on average 12 years since delivery, which may not be generalizable to a population of women with prior GDM who are recruited for lifestyle intervention at early stages (i.e. during pregnancy and/or within the first few years following delivery).
Findings on change in physical activity from this review need to be interpreted with some caution as all studies measured change in self-reported physical activity and sedentary behaviour. There is evidence that self-report measures can lead to under and overestimation of participation in physical activity (). Future research should incorporate objective methods (i.e. accelerometers) of measuring physical activity and sedentary behaviour. In addition few include sedentary behaviour in their interventions (, , ). This is important as sedentary behaviour is increasingly recognized as an important target for improving cardio metabolic indicators of type 2 diabetes ().
There was somewhat stronger evidence regarding change to dietary variables. One high-quality study found a reduction in percentage calories from fat among women engaged in an adapted version of the DPP intervention (). However, timing of recruitment may be important. Evidence from this review and other studies () suggests women who successfully adopt lifestyle changes during pregnancy may be more likely to return for preventative support () and be more successful at maintaining dietary change postpartum (). A number of studies in this review measured lifestyle intervention effects on dietary change; those not recruiting during pregnancy were also favourable, though these were of low quality or in unique populations (, , , ). Therefore, evidence for a positive impact of lifestyle interventions in women with prior GDM on dietary variables postpartum remains tentative.
Future research should also give consideration to the wider socio-economic, social and cultural environment in which women with prior GDM live, for example, there is evidence that inclusion of partners is important for changing physical activity and dietary behaviours among women with young children (, ) and is desired by women with prior GDM ().

Changes in anthropometric outcomes

There was limited evidence in this review for significant changes in anthropometric outcomes following lifestyle interventions among women with prior GDM. Although the meta-analyses for weight and BMI were statistically significant, the magnitude of change would not be considered clinically significant (); furthermore, one trial of unclear quality, conducted in a Chinese population () was responsible for the small effect size found. The exception to this was in the DPP study () which found significant weight loss in the first year following intensive lifestyle intervention among women with prior GDM, however this was not maintained at later stages and the population may not be generalizable, as discussed previously. Another high quality study found that an adapted DPP intervention promoted weight loss at 12 months, but only among women who successfully avoided excessive gestational weight gain during pregnancy and who received intensive lifestyle intervention immediately following GDM diagnosis (). It may be that women who more successfully adopt lifestyle changes during pregnancy feel more motivated, self-efficacious and supported, helping them to maintain behavioural changes into postpartum.
Results from the DPP trial have shown maintained weight loss to be the main predictor of risk reduction in type 2 diabetes prevention in the general population with IGT (). Therefore, it seems pertinent to focus on developing and testing lifestyle interventions that can produce successful long-term weight reduction among women with prior GDM. The present review found no high-quality studies reporting favourable long-term weight outcomes in this group, other than the subset of women from the DPP (). In the general obese population long-term (≥ 12 months) weight loss has been shown following behavioural interventions focusing on both diet and physical activity change (). Weight-loss medication improved the magnitude of weight reduction. On the one hand, among postpartum populations, dietary change alone is considered as effective for weight-loss as dietary change in combination with physical activity (). On the other hand, physical activity and sedentary behaviour change are important, particularly as women with prior GDM are at high future high risk of cardiovascular disease (). Physical activity is considered the most important modifiable risk factor for preventing cardiovascular disease among healthy young women (), independent of other risk factors, including BMI. This review showed that fewer studies focused on physical activity or sedentary behaviour, compared with dietary change. This may reflect preferences among women with prior GDM regarding how, when and what lifestyle changes are adopted or a greater emphasis on dietary change in interventions targeting women with GDM.

Changes in glycaemic outcomes and diabetes risk

Trials among women with prior GDM, not including the DPP, showed no robust evidence for change in glycaemic indicators or diabetes risk reduction, despite these being important health outcomes. However, with a few exceptions, trials did not appear to have been adequately powered or include long enough follow-ups to demonstrate change in diabetes risk reduction.

Summary

There is consensus that prevention of type 2 diabetes should be prioritized through lifestyle interventions (, , ). The recent diagnostic criteria for classification of GDM proposed by the International Association of Diabetes in Pregnancy Study Group (IADPSG) () offers opportunity for early lifestyle intervention and future prevention of Type 2 diabetes and other disease over the lifespan. This review shows that we currently lack an evidence base from methodologically robust trials for how to effectively promote lifestyle change among women with prior GDM. There is evidence quality of methodology is improving with future study protocols providing more detailed information and being methodologically more robust (, , , ). Recruitment to trials and adopting lifestyle changes appear challenging in this group. Further research is urgently required to explore feasible, acceptable and effective lifestyle interventions for this target group of the population.

Author contribution

A.S.G. contributed to conception and design of the study, led on data analysis, wrote the initial draft of the paper and reviewed the final draft. A.F.K. initiated the conception and design of the study, assisted in researching the data, reviewed initial drafts of the paper and completed the final submitted paper. A.R.H. made a substantial contribution to conception and design of the study, assisted in researching the data and reviewed initial and final drafts of the paper. R.S.L. contributed to conception and design of the study and reviewed initial and final drafts of the paper.

Conflict of interest

None of the authors of this paper report a conflict of interest in relation to the material covered in this paper.

Acknowledgments

This manuscript was funded by an internal grant from the University of Strathclyde.

Footnotes

The work conducted in relation to this review was funded by internal funding from the University of Strathclyde.

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