Skip to main content
Advertisement
Browse Subject Areas
?

Click through the PLOS taxonomy to find articles in your field.

For more information about PLOS Subject Areas, click here.

  • Loading metrics

Effects of a Multi-Disciplinary Lifestyle Intervention on Cardiometabolic Risk Factors in Young Women with Abdominal Obesity: A Randomised Controlled Trial

  • Bianca L. Share ,

    bianca.share@acu.edu.au

    ‡ BLS, GAN, and JGK contributed equally to this work. PO, JKP, and EAA also contributed equally.

    Affiliation School of Exercise Science, Australian Catholic University, Melbourne, Victoria, Australia

  • Geraldine A. Naughton ,

    ‡ BLS, GAN, and JGK contributed equally to this work. PO, JKP, and EAA also contributed equally.

    Affiliations School of Exercise Science, Australian Catholic University, Melbourne, Victoria, Australia, Murdoch Childrens Research Institute, Melbourne, Victoria, Australia

  • Philippe Obert ,

    ‡ BLS, GAN, and JGK contributed equally to this work. PO, JKP, and EAA also contributed equally.

    Affiliations School of Exercise Science, Australian Catholic University, Melbourne, Victoria, Australia, LAPEC, EA4278, University of Avignon, Avignon, France

  • Jennifer K. Peat ,

    ‡ BLS, GAN, and JGK contributed equally to this work. PO, JKP, and EAA also contributed equally.

    Affiliation Faculty of Health Sciences, Australian Catholic University, Sydney, NSW, Australia

  • Elizabeth A. Aumand ,

    ‡ BLS, GAN, and JGK contributed equally to this work. PO, JKP, and EAA also contributed equally.

    Affiliation School of Exercise Science, Australian Catholic University, Melbourne, Victoria, Australia

  • Justin G. Kemp

    ‡ BLS, GAN, and JGK contributed equally to this work. PO, JKP, and EAA also contributed equally.

    Affiliation School of Exercise Science, Australian Catholic University, Melbourne, Victoria, Australia

Abstract

Background

Young women are under-represented in cardiovascular disease research, with obesity and cardiometabolic risk factor interventions generally targeting older adults. Furthermore, appropriate study designs for young women remain uncertain. This study aimed to assess the impact of a 12 week multi-disciplinary lifestyle intervention on cardiometabolic risk factors in premenopausal women with abdominal obesity.

Methods

Women aged 18–30 y with abdominal obesity [waist circumference (WC) ≥ 80 cm] were randomised to a 12 week lifestyle intervention (n = 26) of physical activity, nutrition education and cognitive behavioural therapy, or a wait-list control group (n = 17). Both groups completed anthropometric, biochemical, nutrition and fitness testing, at pre (0 weeks) and post (12 weeks), with intervention participants completed follow-up testing at 24 weeks.

Results

Results from a linear mixed model showed no between-group differences, other than increased physical activity in the intervention group, at post. In the intervention group alone, positive within-group changes were observed in WC, waist-hip-ratio (WHR), waist-height-ratio (WHtR), resting heart rate, blood pressure, predicted VO2max, and total energy intake. Most changes were maintained at 24 weeks post-intervention. Similar within-group improvements were observed in control participants in WC, WHR, WHtR, and systolic blood pressure but no changes were detected in physical activity and nutrition.

Conclusions

Cardiometabolic risk factors were decreased as a result of a lifestyle intervention in young women with abdominal obesity. It is difficult to describe observations in the control group without greater understanding of the behaviour of wait-list participants.

Trial Registration

Australian New Zealand Clinical Trials Registry ACTRN12612001017819

Introduction

Cardiovascular disease (CVD) represents a major health threat to women worldwide [1], consequently placing substantial burden on public health systems. Most risk factors for CVD, including overweight/obesity and physical inactivity, can be modified through lifestyle interventions [2,3]. The rising prevalence of overweight and obesity is a worldwide concern among young women from developed and developing nations [4]. Currently, 51% of non-hispanic white American women aged 20–39 years are either overweight or obese [5], while prevalence among women in the United Kingdom [6], and Australia [7] aged 25–34 years are 47% and 42%, respectively. An average weight gain of 6 to 12 kg between the ages of 20 to 30 years was noted in a large longitudinal study of women’s health [8], and this weight gain was more than for any other age group [8,9]. Concurrently, sedentary behaviour is increasing in young women [10], with 85% of women aged 18–35 years reporting inactive lifestyles and decreased physical activity [9]. Among women, weight gain is not only a risk factor for CVD but increases the risk of the metabolic syndrome [11], type 2 diabetes mellitus, depression, polycystic ovarian syndrome, infertility and adverse pregnancy outcomes [12].

Despite global strategies for preventive health, there is poor understanding of early risk factors (cardiometabolic risk factors) in young women, and lifestyle interventions can improve health outcomes. Moreover, research assessing the effectiveness of weight management interventions specifically targeting young women is relatively recent [13]. Effective age-appropriate interventions for improving cardiometabolic risk are required for young adults born between 1977 to 1994 (“Generation Y”) who share an urgency for feedback and success [14,15]. The limited research that has been conducted in young overweight/obese women suggests they are difficult to recruit for weight management trials, with high attrition and limited success in losing weight compared with older populations [16]. Furthermore, limited evidence exists to inform the implementation of lifestyle intervention programs targeting young women [17].

Poorer retention but greater success has been reported when results of an online team-based weight loss lifestyle intervention were compared in younger and older adults [17]. However, not all studies of weight loss in young adults following lifestyle interventions report statistical significance [18]. To date, the effectiveness and long-term success of multi-disciplinary lifestyle interventions delivered face-to-face that directly target weight loss in young women remain uncertain [19]. Nonetheless exercise interventions appear to require strong familiarisation of the required physical activity along with some formal contact with the participant. Also, exercise alone is less likely to be effective in weight loss than when combined with some nutrition and psychological support [20].

Therefore, the primary aim of this study was to assess the effectiveness of a lifestyle intervention for reducing CVD risk in young women with abdominal obesity, using a randomised controlled trial (RCT) design. Specifically, the RCT involved a 12-week multi-disciplinary program (physical activity, nutrition education, cognitive behavioural therapy) with Caucasian women aged 18 to 30 years, who shared the cardiometabolic risk factor of abdominal obesity [elevated waist circumference (WC) ≥ 80 cm]. A secondary aim was to examine the effectiveness of the intervention through an improved understanding of the sustainability of any changes. It was hypothesised that the lifestyle intervention would be effective (and sustainable) in reducing cardiometabolic risk in young women with abdominal obesity.

Materials and Methods

The study protocol was approved by the Australian Catholic University Human Research Ethics Committee (V2009-91) on December 18th 2009 (S1 and S2 Texts). The authors confirm that all ongoing and related trials for this intervention are registered with the Australian New Zealand Clinical Trials Registry (Identifier: ACTRN12612001017819) and the CONSORT reporting guidelines for clinical trials were followed (S1 Table). Data were collected between August 2010 and February 2012. Written informed consent was obtained from all participants.

Participants

Sixty-two female Caucasian tertiary students at risk of CVD volunteered for this study. Advertisements for recruitment specifically sought young women with abdominal obesity (WC ≥ 80 cm), who were also leading a sedentary lifestyle. Included were women aged 18 to 30 years; with a waist circumference ≥ 80 cm, and who were physically inactive (< 210 minutes per week of organised physical activity in the past six months). Exclusion criteria were being pregnant or breastfeeding; a history of bariatric surgery; and/or having a diagnosis of liver or kidney disease; heart arrhythmia; insulin dependent diabetes mellitus; polycystic ovarian syndrome; thyroid abnormalities. All participants were non-smokers.

A power analyses estimated that 18 participants per group would provide the appropriate sample size to detect a large between-subject difference of 1.0 standard deviation (β = 80%, alpha P < 0.05) in waist circumference from pre-intervention to post-intervention. To allow for 20% attrition, there was an attempt to recruit an initial sample size of 44 participants (22 per group). Fig 1 shows the participation of individuals in this study. From 62 women who responded to the recruitment strategy, 11 prospective participants were excluded, and a further 12 did not respond to preliminary contact. Therefore, 39 willing participants underwent pre-intervention/pre-control testing, after which group (block) randomisation occurred via a central administrator who allocated participants to either the intervention group or wait-list (delayed-start) control group. A wait-list control design was chosen because the investigators desired an ethically-sound model which provided all participants with access to the lifestyle intervention. Also, a wait-list control group was considered more appropriate than a passive control group given that health risks were comparable in both groups. After allocation to the wait-list control group for 12 weeks, only four participants continued into the lifestyle intervention phase. Participants were not blinded to their group, but where possible assessors were blinded to group allocation.

thumbnail
Fig 1. CONSORT participant flow-chart of intervention and control participants.

https://doi.org/10.1371/journal.pone.0130270.g001

Experimental design

For each testing period (0, 12, 24 weeks), participants attended the laboratory on two occasions. They were requested to refrain from strenuous physical activity in the 24 hours prior to all laboratory sessions. The first visit required the participant to arrive in a fasted state and clinical testing lasted 75 minutes. The second visit of 60 minutes required participants to abstain from caffeine and alcohol for 12 hours.

For the intervention group, testing of cardiometabolic risk factors was performed at pre-intervention (0 weeks), post-intervention (12 weeks) and following a short-term sustainability phase (24 weeks). The control group underwent testing at pre-control and post-control (12 weeks) time periods only. For all testing, measurements were taken at the same time of day (±2 hours) and by the same researcher. For participants in the control group, monthly contact was made to remind them of the control criteria. For the sustainability phase between post-intervention (12 weeks) testing and the following 12 weeks, a sustainability strategy was delivered electronically to the intervention group. This involved a fortnightly newsletter on healthy living tips from evidence-based resources.

Neither the investigators nor the participants were blinded to group allocation as this was considered impractical for the long-term investigation and limited members of the research team. However, to minimise contamination, participants in the intervention group were asked to refrain from disclosing their intervention experience to researchers assigned to data collection and/or analysis and to wait-list control participants. To further minimise bias, assessor blinding occurred within dietary measures and biochemical analyses. For the primary outcome variable of WC, measures were completed in duplicate with reported measures of reliability: coefficient of variation (CV), intraclass correlation coefficient (ICC) and measurement error (ME).

Testing measures

Survey data.

A self-administered lifestyle survey was completed to provide data on (i) health status and medical conditions, (ii) nutrition (including alcohol consumption), and (iii) current physical activity habits. The lifestyle survey (S3 Text) was developed specifically for the study and validated using the process of face validation [21].

Anthropometric assessment.

Body composition was assessed via waist circumference (WC), hip circumference, body mass index (BMI), and body mass. WC was measured to the nearest 0.1 cm in the horizontal plane at the level of the midpoint between the iliac crest and lower costal margin [11]. For WC, CV = 1.26%, ICC (3, 1) = 0.986 and ME = 1.34%, which equates to an error range of ± 2.6 cm. Body mass was measured to the nearest 0.1 kg using digital scales (Tanita, Tokyo, Japan), and height was estimated to the nearest 0.1 cm using a wall-mounted stadiometer (Seca, Germany). BMI was calculated, with overweight/obesity defined as BMI ≥ 25 kg·m-2 [1]. Waist-to-hip ratio (WHR), and waist-to-height ratio (WHtR) were calculated by dividing participants WC (cm) by their hip circumference (cm) and height (cm), respectively (Browning 2010; WHO, 2000).

Metabolic syndrome markers and additional biochemical parameters: Metabolic syndrome was defined according to the most recent and unified criteria [11]. Markers of insulin resistance, including fasting insulin and homeostasis model assessment of insulin resistance (HOMA-IR), and the pro-inflammatory marker high sensitivity C-reactive protein (hs-CRP), were also measured in this study.

Following an overnight fast, intravenous blood was collected Blood lipid profiling of serum concentrations of triglycerides, total cholesterol and high-density lipoprotein (HDL) cholesterol were measured using the Reflotron Plus desktop analyser (Roche, Switzerland). Fasting plasma glucose, insulin and hs-CRP concentrations were analysed by clinical pathology at a leading hospital. Insulin resistance was estimated by HOMA-IR using the equation [22]. For hs-CRP, a value > 3.0 mg·l-1 was deemed high risk [23].

After 10 minutes of rest in a quiet, temperature controlled room SBP and DBP were obtained in duplicate from the left arm with an automated digital sphygmomanometer (Carescape V100, Dinamap, GE technology, USA) with the participant in the supine position.

Health and fitness evaluations.

The YMCA graded submaximal cycle ergometer test [24] was used to estimate aerobic power (predicted VO2max), where heart rate was extrapolated against work rate (W) using regression analysis. Physical activity behaviour (S3 Text) was obtained via a 7-day recall [25].

Within the acknowledged limitations of dietary recall [26], 100% of participants completed a three-day food and beverage recall on two consecutive weekdays and on either a Saturday or Sunday of their usual diet. Instructions were provided on how to complete the diary and diagrams of portion sizes were also shown and discussed (S3 Text). Participants were encouraged not to alter their habitual diet during the three day recall period. Macro- and micro-nutrient intakes were analysed by a research dietician, blinded to grouping, using the FoodWorks7 Professional program (Xyris software, Highgate Hill, Queensland, Australia). An estimation of average daily energy intake was also calculated.

Intervention

The 12-wk lifestyle intervention was comprised of three main components: (1) physical activity (2) nutrition education, and (3) cognitive behavioural therapy (S2 Table). In contrast, participants in the wait-list control group (n = 17) were instructed to continue existing lifestyle choices, and after 12 weeks were invited to complete the lifestyle intervention.

Physical activity.

Participants undertaking the intervention completed two supervised exercise sessions (progressive circuit training) and one unsupervised, but were prescribed one home-based session (brisk walk or jog) per week. All sessions were devised and administered by a qualified Exercise Scientist who has experience in exercise prescription for elite and healthy populations. The supervised sessions consisted of a general warm-up, a combination of aerobic activities, dynamic strength and/or resistance training, abdominal conditioning, and stretching. Session duration lasted approximately 60 min, with the intensity of the exercise increasing from 6.0 to 8.5 on the OMNI Picture System (ranging from 0 = extremely easy to 10 = extremely hard)[27], by the end of the 12-week period. Intensity was verified during most exercise sessions with a Polar heart rate monitor (Polar Electro, Finland). The home-based, unsupervised training session involved a brisk walk or jog at an RPE of 5–7 on the OMNI Picture System [27]. Participants were encouraged to incorporate intermittent high-intensity intervals into their session. Duration of the session progressed from 30 minutes at intervention commencement to 45 minutes at program completion. As a measure of compliance, participants maintained a detailed training diary including any extra activities they completed during the intervention. The Bruce protocol [28] was completed every three weeks to ensure accuracy of progressive overload of aerobic fitness during the program. Upper (chest-press) and lower (leg-press) body strength was tested via a 5-repetition maximum test to guide the strength and resistance component of the exercise intervention [29]. Sessions occurred in both the gym on campus and at a local park.

Nutrition education.

Participants in the intervention group received weekly nutrition education sessions guided by a qualified dietician about healthy eating choices from the existing Australian Dietary Guidelines [30]. This information provided education regarding non-dieting weight management and healthy eating principles. Following baseline analysis of a three-day food and beverage recall, nutrition education topics (S2 Table) targeted the perceived needs of the female participants. As such, nutrition was a workshop (educational focus) and did not prescribe a specific caloric intake nor ask participants to monitor their nutritional intake during the intervention.

Cognitive behavioural therapy.

Within the framework of self-determination theory [31], weekly 60-minute group sessions with a qualified counsellor provided participants with psychosocial support and developed skills to overcome personal barriers to lifestyle change (S2 Table). The program aimed, ultimately, to empower individuals to develop healthier eating and physical activity patterns [32].

Statistical analyses

Data were analysed using IBM SPSS Statistics, Version 20 for Windows (SPSS Inc, Chicago IL). Data were tested for normal distribution [33], with log transformation performed on data not normally distributed. All data are presented as means ± standard deviation. Statistical significance was set at P ≤ 0.05. A linear mixed-model analysis was used to calculate the differences between groups and across time for the intervention and control groups. Hedge’s g effect size was used to assess the magnitude of effect. An effect size ≥ 0.2 was considered small, ≥ 0.5 medium, and ≥ 0.8 large [34]. Mean differences and 95% confidence intervals (CI) are reported. An additional linear mixed-model calculation was determined for only the participants in each group who started and completed the study. No differences were found using both models. An independent t-test was used to compare differences between the two groups in changes from baseline to 12 weeks.

Results

A total of 39 participants were included in the linear mixed-model analysis. For reasons described (Fig 1), 27% of intervention participants and 35% of control participants failed to maintain study involvement beyond pre-intervention/pre-control measures. However, for those completing the intervention, compliance rates were high with 80% attendance at physical activity sessions and 74% at CBT sessions.

Between group differences

Table 1 shows the results of comparisons between the intervention and control groups before and following the intervention, using a linear mixed model analysis. With only one difference observed between groups at pre-intervention, this supports the homogeneity of the groups. At baseline none of the participants were classified as having the metabolic syndrome [11] however, a baseline difference was found in a higher resting heart rate, in the intervention group, with a moderate effect size (g = 0.79). With the exception of WC and weekly physical activity most cardiometabolic risk factors were within normal limits for the population at baseline testing (see footnotes Table 1). At post-intervention, only physical activity was higher in the intervention group than the control group, with a large effect size (g = 2.14). Similarly, both the absolute and percentage change in physical activity from pre to post testing were greater for the intervention group, as were the absolute and percentage changes in predicted VO2max when compared to controls.

thumbnail
Table 1. Between-group comparisons of cardiometabolic risk factors for the intervention and control group at pre (0 weeks) and post (12 weeks).

https://doi.org/10.1371/journal.pone.0130270.t001

Intervention group

For the intervention group, there were positive significant (P ≤ 0.05) changes pre-to post-intervention for WC (-5.8 cm, -6.4%), WHR (-0.02, -2.5%), WHtR (-0.03, -5.5%), SBP (-4 mmHg, -3.4%), DBP (-4.0 mmHg, -5.8%), resting heart rate (-8.0 bpm, -11%), predicted VO2max (+4.7 ml·kg-1·min-1, +15%), physical activity (+183 min·week-1, +97%) and total energy intake (-1312 kj, -22%) (Table 2). Absolute protein intake (g) decreased but this difference disappeared when the decreased total energy intake was accounted for.

thumbnail
Table 2. Within-group comparisons of cardiometabolic risk factors for the intervention group at pre-intervention, post-intervention, and sustainability.

https://doi.org/10.1371/journal.pone.0130270.t002

Many of the improvements observed at post-intervention were maintained at sustainability (24 weeks) testing including, WC, WHR, WHtR, DBP and resting heart rate (Table 2). The aforementioned cardiometabolic markers were significant from pre-intervention to sustainability testing (i.e. maintenance had occurred) but no further improvements were seen between post-testing to sustainability testing. In fact, predicted VO2max and physical activity reduced during the 12-week sustainability phase however, physical activity remained greater than at pre-intervention.

Control group

Despite being requested to maintain normal lifestyle habits, the control group displayed several improvements from pre- to post-testing, including WC (-5.6 cm, -6.2%), WHR (-0.03, -3.8%), WHtR (-0.03, -5.5%) and SBP (-8.0 mmHg, -7.0%), while circulating triglycerides rose (Table 2). In contrast to the intervention group, there were no changes in reported DBP, reported physical activity, predicted VO2max, resting heart rate and energy intake following the 12-week control period.

Discussion

The effectiveness of the multi-disciplinary lifestyle intervention for reducing CVD risk in young women was highlighted by within-group improvements in a range of risk factors for the intervention group, with several of these improved markers retained 12 weeks after completion of the lifestyle intervention. Thus, these data suggest a relatively successful intervention for reducing CVD risk with promising sustainability. However, when between-group comparisons were made with the control group, the findings suggested a research design that was largely unsuccessful in identifying the effectiveness of the intervention phase. This raises several concerns associated with a wait-list control design when used with overweight/obese young women. Concerns from the current study support previous findings that describe more difficulties in retaining younger than older females to research trials [13].

Positive changes within the intervention group were demonstrated with improvements in WC related measures, systolic and diastolic blood pressure, aerobic fitness and physical activity, and dietary energy intake. Collectively, these measures imply that the intervention produced cardiovascular, more so than metabolic, benefits for the intervention group. The use of investigative procedures such as non-invasive echocardiography or MRI may provide insight into the significance of these changes [40].

Improvements in fitness and physical activity and reduced energy intake also suggest that the exercise and nutrition education components of the intervention, respectively, were effective. Moreover, there was strong evidence for sustainability of intervention-induced improvements at 24 weeks, suggesting that the CBT component produced positive behavioural change in participants. It has been shown that poor adherence to behavioural programs is a barrier to successful long-term weight maintenance beyond the completion of the intervention [41]. In the present study, adherence to the physical activity component and attendance at the CBT sessions was high amongst intervention participants. This might explain the success in maintenance of some cardiometabolic risk factors observed during the short-term sustainability phase. Additionally, it has been suggested that improvements in maintenance might be achieved through incorporating technology to monitor weight, physical activity and behaviour [42]. This type of innovation could be easily integrated into a population of young adults.

However, similar post-intervention changes in our wait-list control group, made it difficult to detect any anthropometric, biochemical, fitness or dietary differences between groups following the 12-week intervention phase. The control group in this RCT also displayed a decrease in WC that paralleled the intervention group, despite undetectable changes in self-reported physical activity and nutrition. The decreased WC of the control group is particularly difficult to explain without further investigative procedures such as accelerometry for physical activity and more rigorous dietary monitoring, but does suggest that basic awareness of CVD risk might be enough to evoke change in targeted populations [43,44].

Randomised controlled trials provide the highest level of evidence for the effects of an intervention and are deemed to be scientifically rigorous [45], with control groups employed to provide a contrast for the experimental group [46] and for establishing the efficacy of an intervention [47]. But changed outcomes that arise from a wait-list control condition can be detrimental rather than beneficial to a randomised controlled trial [46], and this occurred in the current study. Therefore, wait-list control designs might not be appropriate for this population.

Retention and compliance of wait-list participants is also an issue for consideration when planning control conditions essential for maintaining the rigour of a randomised control design. In this study, more than one-third of the control group failed to return for post-testing at 12 weeks despite researcher attempts to maintain contact. In contrast, once engaged in the intervention group, retention to lifestyle change was high for at least 24 weeks. It is postulated that assigning participants to the control group decreased their motivation to participate. Thus, the duration (12 weeks) and/or conditions (no changes to existing lifestyle) of the control group do not appear suitable for women of this age group and demographic. Alternative strategies for immediate engagement, perhaps via topics of interest using multimedia such as health-related apps or support groups might improve commitment and maintain control group compliance. There were also some difficulties encountered with recruitment, with almost a quarter of interested and eligible participants failing to engage after initial commitment (prior to group allocation). Complexities associated with recruiting young women for weight management trials, especially from ‘Generation Y’, may result in smaller sample sizes and require shorter periods of engagement [16].

Although not always the case [48], successful outcomes have been observed following lifestyle interventions with middle-aged [2] and older women [3]. Furthermore, a large scale success of weight loss has been observed in a recent eight year study of adults aged 45–65 years showing an 8.5% mean body weight loss after year one of a lifestyle program [49]. Subsequent monitoring indicated maintenance of approximately 4–5% over the 7 years. However difficulties in the external validity amongst younger adults (21–44 years) was acknowledged [19]. Moreover, there is a lack of effective lifestyle interventions for young adults, with no weight loss programs to date developed specifically to address the needs of this age group. Outcomes, enrolment and retention rates have been compared between younger (18–35 years, n = 21) and more mature (> 35 years, n = 277) adults (66% female) engaged in similar behavioural weight loss and physical activity programs [15]. Results showed attendance was 30% lower in young adults and they were 30% less likely to be retained for the 6-month assessment. Weight loss and increases in total physical activity from baseline to 6 months were significantly less in the younger population. Although the number of younger adults was relatively small, these results indicated that traditional interventions were less successful in young adults [15]. These findings are supported by results from other studies attempting to engage young adults [5052].

This study is not without limitations. Despite recruitment and retention strategies, the sample size, particularly in the control condition, was lower than anticipated at completion of the study, suggesting it was slightly under-powered. Additionally, the results are specific to Caucasian women at a tertiary institution. To capture any potential changes to control groups in a wait-list design, objective measures (e.g. accelerometers, fortnightly anthropometric measures) might be useful. In addition, the use of more objective measures of physical activity and dietary compliance would strengthen evidence of change in this age group of women. In agreement with previous reports, not all food and activity diaries were completed with precision. Future researchers may benefit from the use of diet quality changes rather than diet intake.

Nonetheless, the study contributes to a very limited number of healthy lifestyle interventions in young adult women (< 30 years of age) with cardiometabolic risk factors [50]. The multi-disciplinary lifestyle intervention confirms the potential value in health changes observed post-intervention, with favourable sustainability at a 12 weeks.

Conclusions

Within-group analysis showed that the multi-disciplinary lifestyle intervention comprising physical activity, nutrition education and CBT was positive for the reduction of CVD risk factors both immediately after and beyond the completion of the program. However, we also observed positive, but unexpected and difficult to explain, changes in the wait-list control group. Therefore, comparative lifestyle benefits for the intervention group may have been masked by undetectable weight management behaviour in the control group. When considered alongside the difficulties faced with recruitment and retention, especially in the nature of the control group, these results provide a challenge for prospective study designs with young women with cardiometabolic risk factors. Traditional RCT designs may be problematic for healthy lifestyle interventions in young women.

Supporting Information

S2 Table. Lifestyle intervention: Outline of the 12-week multi-disciplinary lifestyle intervention of physical activity, nutrition education and cognitive behavioural therapy.

https://doi.org/10.1371/journal.pone.0130270.s002

(DOC)

S1 Text. Application for ethical approval of research projects with human participants.

https://doi.org/10.1371/journal.pone.0130270.s003

(DOC)

S2 Text. Summary of research for ethics application.

https://doi.org/10.1371/journal.pone.0130270.s004

(DOC)

Acknowledgments

The authors are grateful to Bianca Gazzola for her contribution to the nutrition education component of the lifestyle intervention. Thanks are also extended to all of those women who participated in the Young Women’s Heart Health Study.

Author Contributions

Conceived and designed the experiments: BLS GAN PO JGK. Performed the experiments: BLS EAA. Analyzed the data: BLS JKP. Wrote the paper: BLS GAN JGK.

References

  1. 1. World Health Organisation (2006) Global database on body mass index: BMI classifications. Geneva, Switzerland: WHO.
  2. 2. Irving BA, Davis CK, Brock DW, Weltman JY, Swift D, Barrett EJ, et al. (2008) Effect of exercise training intensity on abdominal visceral fat and body composition. Med Sci Sports Exerc 40: 1863–1872. pmid:18845966
  3. 3. Kemmler W, Von Stengel S, Engelke K, Kalender WA (2009) Exercise decreases the risk of metabolic syndrome in elderly females. Med Sci Sports Exerc 41: 297–305. pmid:19127197
  4. 4. Stewart S, Tikellis G, Carrington C, Walker K, O’Dea K (2008) Australia’s ‘fat bomb’: A report on the long-term consequences of Australia’s expanding waistline on cardiovascular disease. Melbourne, Australia: Baker Heart Research Institute.
  5. 5. Flegal KM, Carroll MD, Kit BK, Ogden CL (2012) Prevalence of obesity and trends in the distribution of body mass index among US adults, 1999–2010. JAMA 307: 491–497. pmid:22253363
  6. 6. Health and Social Care Information Centre (2011) Health survey for England: Summary of key findings. London, United Kingdom: HSCIC.
  7. 7. Australian Bureau of Statistics (2013) Australian Health Survey: Updated results, 2011–12. Canberra, Australia: Australian Bureau of Statistics. https://doi.org/10.1016/j.ijrobp.2011.02.008 pmid:21489705
  8. 8. Lucke J, Waters B, Hockey R, Spallek M, Gibson R, Byles J, et al. (2007) Trends in women's risk factors and chronic conditions: Findings from the Australian Longitudinal Study on Women's Health. Women's Health 3: 423–432. pmid:19804018
  9. 9. Adamson LA, Brown W, Byles J, Chojenta C, Dobson A, Fitzgerald D, et al. (2007) Women's weight: Findings from the Australian Longitudinal study on women's health. Australia: Department of Helath and Ageing.
  10. 10. Cleland VJ, Schmidt MD, Salmon J, Dwyer TM, Venn A (2011) Correlates of pedometer-measured and self-reported physical activity among young Australian adults. J Sci Med Sport 14: 496–503. pmid:21622024
  11. 11. Alberti KG, Eckel RH, Grundy SM, Zimmet PZ, Cleeman JI, Donato KA, et al. (2009) Harmonizing the metabolic syndrome: A joint interim statement of the International Diabetes Federation Task Force on Epidemiology and Prevention; National Heart, Lung, and Blood Institute; American Heart Association; World Heart Federation; International Atherosclerosis Society; and International Association for the Study of Obesity. Circulation 120: 1640–1645. pmid:19805654
  12. 12. Emaus A, Veierod MB, Furberg AS, Espetvedt S, Friedenreich C, Ellison PT, et al. (2008) Physical activity, heart rate, metabolic profile, and estradiol in premenopausal women. Med Sci Sports Exerc 40: 1022–1030. pmid:18461005
  13. 13. Hutchesson MJ, Hulst J, Collins CE (2013) Weight management interventions targeting young women: a systematic review. J Acad Nutr Diet 113: 795–802. pmid:23473986
  14. 14. Martin C (2005) From high maintenance to high productivity: What managers need to know about Generation Y. Industrial and Commercial Training 37: 39–44.
  15. 15. Gokee-LaRose J, Gorin A, Raynor H, Laska M, Jeffery R, Levy R, et al. (2009) Are standard behavioural weight loss programs effective in young adults? Int J Obes 33: 1374–1380. pmid:19786967
  16. 16. Griffin HJ, O'Connor HT, Rooney KB, Steinbeck KS (2013) Effectiveness of strategies for recruiting overweight and obese Generation Y women to a clinical weight management trial. Asia Pac J Clin Nutr 22: 235–240. pmid:23635367
  17. 17. Gokee-LaRose J, Leahey TM, Weinberg BM, Kumar R, Wing RR (2012) Young Adults' Performance in a Low‐Intensity Weight Loss Campaign. Obesity 20: 2314–2316. pmid:22318313
  18. 18. Gokee-LaRose J, Gorin A, Wing R (2009) Behavioral self-regulation for weight loss in young adults: a randomized controlled trial. Int J Behav Nutr Phys Act 6: 10. pmid:19220909
  19. 19. Perri MG (2014) Effects of behavioral treatment on long‐term weight loss: Lessons learned from the look AHEAD trial. Obesity 22: 3–4. pmid:24415676
  20. 20. Lang A, Froelicher ES (2006) Management of overweight and obesity in adults: behavioral intervention for long-term weight loss and maintenance. Eur J Cardiovasc Nurs 5: 102–114. pmid:16406709
  21. 21. Gravetter F, Forzano L (2012) Research methods for the behavioral sciences. Belmont, CA, USA: Wadsworth.
  22. 22. Matthews D, Hosker J, Rudenski A, Naylor B, Treacher D, Turner R (1985) Homeostasis model assessment: Insulin resistance and beta-cell function from fasting plasma glucose and insulin concentrations in man. Diabetologia 28: 412–419. pmid:3899825
  23. 23. Pearson TA, Mensah GA, Alexander RW, Anderson JL, Cannon RO, Criqui MH, et al. (2003) Markers of inflammation and cardiovascular disease: application to clinical and public health practice: A statement for healthcare professionals from the Centers for Disease Control and Prevention and the American Heart Association. Circulation 107: 499–511. pmid:12551878
  24. 24. Golding L, Meyers C, Sinning W (1989) Y's way to physical fitness: The complete guide to fitness and instruction. Champaign, IL: Human Kinetics.
  25. 25. Sallis JF, Buono MJ, Roby JJ, Micale FG, Nelson JA (1993) Seven-day recall and other physical activity self-reports in children and adolescents. Med Sci Sports Exerc 25: 99–108. pmid:8423762
  26. 26. Magarey A, Watson J, Golley RK, Burrows T, Sutherland R, McNaughton SA, et al. (2011) Assessing dietary intake in children and adolescents: Considerations and recommendations for obesity research. Int J Pediatr Obes 6: 2–11. pmid:21923286
  27. 27. Robertson RJ (2004) Percieved exertion for practitioners: Rating effort with the OMNI picture system. Champaign, IL, USA: Human Kinetics.
  28. 28. Bruce RA, Kusumi F, Hosmer D (1973) Maximal oxygen intake and nomographic assessment of functional aerobic impairment in cardiovascular disease. Am Heart J 85: 546–562. pmid:4632004
  29. 29. Abadie B, Wentworth C (2000) Predictions of one repetition maximal strength from a 5–10 repetition submaximal strength test in college-aged females. Journal of Exercise Physiology Online. pp. 1–6.
  30. 30. National Health and Medical Reserach Council (2005) Dietary guidelines for Australians: A guide to healthy eating. Canberra, Australia: Department of Health and Ageing.
  31. 31. Deci EL, Ryan RM (1985) The general causality orientations scale: Self-determination in personality. J Res Personal 19: 109–134.
  32. 32. Miller W, Jacob A (2001) The health at any size paradigm for obesity treatment: The scientific evidence. Obes Rev 2: 37–45. pmid:12119636
  33. 33. Peat JK, Barton B (2005) Medical Statistics: A guide to data analysis and critical appraisal. Victoria, Australia: Blackwell Publishing.
  34. 34. Cohen J (1988) Statistical Power Analysis for Behavioural Sciences. New Jersey, USA: Lawrence Erlbaum Associates.
  35. 35. Browning LM, Hsieh SD, Ashwell M (2010) A systematic review of waist-to-height ratio as a screening tool for the prediction of cardiovascular disease and diabetes: 0·5 could be a suitable global boundary value. Nutrition Research Reviews 23: 247–269. pmid:20819243
  36. 36. National Cholesterol Education Program [NCEP] (2002) The third report of the NCEP expert panel on detection, evaluation, and treatment of high blood cholesterol in adults (Adult Treatment Panel III) final report. Circulation. pp. 3143–3421. pmid:12485966
  37. 37. Jensterle M, Weber M, Pfeifer M, Prezelj J, Pfutzner A, Janez A (2008) Assessment of insulin resistance in young women with polycystic ovary syndrome. Int J Gynaecol Obstet 102: 137–140. pmid:18504045
  38. 38. Brooks G, Fahey T, Baldwin K (2005) Exercise physiology: Human bioenergetics and its applications NY, USA: McGraw Hill.
  39. 39. Department of Health and Ageing (2005) National Physical Activity Guidelines for Australian Adults. Canberra, Australia: Australian Government.
  40. 40. Kosmala W, O'Moore-Sullivan TM, Plaksej R, Kuliczkowska-Plaksej J, Przewlocka-Kosmala M, Marwick TH (2008) Subclinical impairment of left ventricular function in young obese women: contributions of polycystic ovary disease and insulin resistance. J Clin Endocrinol Metab 93: 3748–3754. pmid:18682502
  41. 41. MacLean PS, Wing RR, Davidson T, Epstein L, Goodpaster B, Hall KD, et al. (2015) NIH working group report: Innovative research to improve maintenance of weight loss. Obesity 23: 7–15. pmid:25469998
  42. 42. Bray GA, Wadden TA (2015) Improving long‐term weight loss maintenance: Can we do it? Obesity 23: 2–3. pmid:25504330
  43. 43. Wake M, Lycett K, Clifford SA, Sabin MA, Gunn J, Gibbons K, et al. (2013) Shared care obesity management in 3–10 year old children: 12 month outcomes of HopSCOTCH randomised trial. Br Med J 346: f3092. pmid:23751902
  44. 44. Waters L, George AS, Chey T, Bauman A (2012) Weight change in control group participants in behavioural weight loss interventions: a systematic review and meta-regression study. BMC Med Res Methodol 12: 120. pmid:22873682
  45. 45. Peat JK (2002) Health Science Research: A handbook of quantitative methods. NSW, Australia: Allen & Unwin.
  46. 46. Elliott S, Brown J (2002) What are we doing to waiting list controls? Behav Res Ther 40: 1047–1052. pmid:12296489
  47. 47. Baucom D, Hahlweg K, Kuschel A (2003) Are waiting-list control groups needed in future marital therapy outcome research? Behav Ther 34: 179–188.
  48. 48. Crist LA, Champagne CM, Corsino L, Lien LF, Zhang G, Young DR (2012) Influence of change in aerobic fitness and weight on prevalence of metabolic syndrome. Prev Chronic Dis 9: E68. pmid:22405475
  49. 49. Look AHEAD Research Group (2014) Eight-year weight losses with an intensive lifestyle intervention: the look AHEAD study. Obesity 22: 5–13. pmid:24307184
  50. 50. Chang MW, Nitzke S, Brown R (2010) Design and outcomes of a Mothers In Motion behavioral intervention pilot study. J Nutr Educ Behav 42: S11–21. pmid:20399404
  51. 51. Donnelly JE, Hill JO, Jacobsen DJ, Potteiger J, Sullivan DK, Johnson SL, et al. (2003) Effects of a 16-month randomized controlled exercise trial on body weight and composition in young, overweight men and women. Arch Intern Med 163: 1343–1350. pmid:12796071
  52. 52. Thomson RL, Buckley JD, Noakes M, Clifton PM, Norman RJ, Brinkworth GD (2008) The effects of a hypocaloric diet with and without exercise training on body composition, cardiometabolic risk profile, and reproductive function in overweight and obese women with polycystic ovary syndrome. J Clin Endocrinol Metab 93: 3373–3380. pmid:18583464