Journal of Obesity & Metabolic Syndrome

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J Obes Metab Syndr 2020; 29(4): 292-302

Published online December 30, 2020 https://doi.org/10.7570/jomes20074

Copyright © Korean Society for the Study of Obesity.

Psycho-Physiological Responses to a 4-Month High-Intensity Interval Training-Centered Multidisciplinary Weight-Loss Intervention in Adolescents with Obesity

Marwa Khammassi1,2,3,* , Maud Miguet1, Valérie julian4, Charlotte Cardenoux5, Yves Boirie6,7,8,9, Martine Duclos6,7,8,9, Bruno Pereira10, David Thivel1,7

1Clermont Auvergne University, EA 3533, Laboratory of the Metabolic Adaptations to Exercise under Physiological and Pathological Conditions (AME2P), Clermont-Ferrand, France; 2Research Unit, Sportive Performance and Physical Rehabilitation, High Institute of Sports and Physical Education of Kef, University of Jendouba, Kef; 3Faculty of Science of Bizerte, University of Carthage, Zarzouna, Tunisia; 4CHU med du sport CHU Clermont-Ferrand, Clermont-Ferrand; 5CMI Romagnat, Clermont-Ferrand; 6INRA/UMR 1019, Clermont-Ferrand; 7CRNH-Auvergne, Clermont-Ferrand; 8University Clermont 1, UFR Medicine, Clermont-Ferrand; 9Departments of Human Nutrition and Sport Medicine and Functional Explorations, Clermont-Ferrand University Hospital, G. Montpied Hospital, Clermont-Ferrand; 10Clermont-Ferrand University Hospital, Biostatistics Unit (DRCI), Clermont-Ferrand, France

Correspondence to:
Marwa Khammassi
https://orcid.org/0000-0002-5509-5997
Clermont Auvergne University, EA 3533, Laboratory of the Metabolic Adaptations to Exercise under Physiological and Pathological Conditions (AME2P), BP 80026, F-63171 Aubière Cedex, France
Tel: +33-4-73-40-76-79
Fax: +33-4-73-40-76-79
E-mail: khammassimarwa.issep@hotmail.com

Received: July 7, 2020; Reviewed : July 31, 2020; Accepted: September 10, 2020

This is an Open Access article distributed under the terms of the Creative Commons Attribution Non-Commercial License (http://creativecommons.org/licenses/by-nc/4.0/) which permits unrestricted non-commercial use, distribution, and reproduction in any medium, provided the original work is properly cited.

Background: To evaluate the impact of 4 months of a high-intensity interval training (HIIT)-centered weightmanagement intervention on health-related quality of life (HR-QOL), health perception (HP) and physical selfperception (PSP) in adolescents with obesity.
Methods: Fifty-six adolescents with obesity (28 girls; mean body mass index [BMI], 35±4.89 kg/m2; z-BMI, 2.3±0.3; 11–17 years) followed a multidisciplinary weight-management intervention composed of nutritional counseling, HIIT program, and health-related therapeutic education. Anthropometric parameters, body composition (dual X-ray absorptiometry), and maximal aerobic capacities (maximal oxygen consumption [VO2peak]) were assessed, and self-reported questionnaires were used to assess HR-QOL (36-item short form survey), HP and PSP at baseline (T0) and post-intervention (T1).
Results: Body weight (92.6±18.9 to 85.9±16.2 kg), BMI (35.0±4.8 to 32.1±4.5 kg/m2), z-BMI (2.3±0.3 to 2.1±0.3) and fat mass percentage (36.0%±9.1% to 30.4%±7.8%) were significantly decreased (P<0.001) between T0 and T1. There was a tendency for VO2peak to increase from 26.35±5.81 mL/kg/min at T0 to 28.79±6.59 mL/kg/min at T1 (P=0.06). Physical functioning (P=0.002), physical limitation (P=0.048), general health (P<0.001) and bodily pain (P=0.030) were improved at T1. A significant improvement occurred in dimensions of HP such as physical condition (P=0.001), adiposity (P<0.001), alimentation (P<0.001), general health (P=0.038), and perceived general health (P=0.001). In addition, there was an improvement in items of PSP such as self-perceived coordination (P=0.022), endurance (P=0.001) and activity (P=0.001), global self-concept (P=0.015), and appearance (P=0.016). Physical but not mental HR-QOL domains, HP and PSP were associated with weight reduction.
Conclusion: While HIIT favors improved HR-QOL, HP status and PSP in adolescents with obesity, physical but not mental HR-QOL, HP and PSP were associated with weight reduction.

Keywords: High-intensity interval training, Quality of life, Health perception, Adolescents, Obesity

Pediatric obesity, resulting mainly from a physically inactive lifestyle and inappropriate dietary habits, is becoming one of the major public health problems of the 21th century.1,2 Early prevention strategies remain a high priority given the negative health consequences of being overweight/obese during adolescence but also later in life.3 Indeed, pre-pubertal children with obesity have a 20% to 50% higher risk of remaining obese once adult, which rises to between 50% and 70% in pubertal adolescents with obesity.4 This rising prevalence of obesity is associated with a concomitant increase of several medical complications such as functional impairments, metabolic disorders and altered psychological health among others, which has been well documented in the literature.5,6

The prevention and the treatment of obesity, which is considered a multifactorial disorder, requires effective multifaceted interventions.7 Multidisciplinary weight-loss interventions combining physical activity, nutritional guidelines and psychological support have been recommended and found effective for the treatment of pediatric obesity and its related complications (physical and psychological complications).8,9 However, evidence regarding the effect of such interventions on health-related quality of life (HR-QOL) in children and adolescents remains scarce. Recently, Khammassi et al.10 found improvements in the main dimensions of HR-QOL, such as physical functioning, general health, physical score and mental score, in adolescents with obesity who underwent a 10-month multidisciplinary weight loss program. In addition to quality of life, which basically refers to wellbeing, the authors also assessed the effects of their intervention on the adolescents’ perception of their health, which could be defined as what they self-believe about their own physical fitness, weight, diet, sleep quality or level of stress.11,12 According to their results, the adolescents also improved their overall health perception (HP). Freitas et al.13 also found improved HR-QOL in adolescents with obesity in response to a 12-week multidisciplinary weight management program combined with clinical counseling, physical activity (moderate aerobic training), and nutritional education with or without psychological support. Interestingly, these HR-QOL benefits were greater in the group of adolescents who received psychological counseling.13

While most of the available studies used multidisciplinary interventions that included moderate-intensity aerobics plus resistance exercises, more recent studies compared the effect of different physical activity programs. For instance, Lopera et al.14 compared the effect of 16 weeks of land versus water-based physical interventions of similar work volume, in adolescents with obesity. While both interventions improved HR-QOL, the land-based program had particular effects on the social and psychosocial dimensions of HR-QOL as well as on the total HR-QOL score compared with the water-based program. Similarly, Rey et al.15 assessed the effect of 5 weeks vigorous interval training combined with dietary counseling on the physical self-perception (PSP) of adolescents with obesity demonstrating improved self-perception of endurance, activity level, sport competence, global physical self-concept and appearance.

Although a lot of attention has been given to the use of high-intensity interval training (HIIT) as an effective strategy among adolescents with obesity,16-18 to our knowledge, the psychological responses to this exercise modality in this population remains unknown. In 2017, Svensson et al.19 compared the effects of 16 weeks HIIT or moderate-intensity training on HR-QOL among adults with obesity. While both groups improved overall HR-QOL, greater effects were observed in the HIIT group, particularly regarding physical functioning, vitality and general health, improvements that were however not associated with changes in body mass of aerobic capacities.

Since the achievement and maintenance of weight loss may rely mainly on the psychological responses to our interventions, it is of high importance to improve the assessment and understanding of the responses to HIIT in adolescents with obesity. Therefore, the first aim of the present study was to examine for the first time the impact of a 16-week HIIT on HR-QOL, HP, and PSP in adolescents with obesity. The second aim was to explore whether observed changes were associated with changes in body weight, body composition and aerobic capacity.

Population

Adolescents with obesity were recruited from an inpatient weight-management intervention (Pediatric Obesity Service Sesame, Centre Médical Infantile de Romagnat, Romagnat, France). Fifty-six adolescents (28 girls and 28 boys; mean body mass index [BMI], 35±4.89 kg/m2; mean BMI z-score, 2.34±0.31; BMI percentile, 98.58±0.95) aged from 11–17 years were screened for the study. The main inclusion criteria were primary obesity (BMI >95th percentile of the Centers for Disease Control reference charts; Centers for Disease Control and Prevention 1999–2000); no pre-existing medical condition that would restrict participants from engaging in regular exercise; and not being engaged in more than 2 hours of structured physical activity per week (International Physical Activity Questionnaire).

All experiments were performed in accordance with the principles of the Declaration of Helsinki and were formally approved by the local Ethical Committee (CPP Sud Est VI: AU1178; Clinical Trial NCT02482220). Adolescents and their legal representatives were given study information sheets and provided dsigned informed consent.

Study design

All adolescents were medically screened by a pediatrician to ensure appropriate recruitment. Subsequently, their baseline anthropometric profile, body composition (measured by dual X-ray absorptiometry [DXA]) and individual aerobic capacities (maximal oxygen consumption [VO2peak]) were assessed. The HR-QOL (36-item short form survey [SF-36]), HP (HP questionnaire) and PSP (PSP questionnaire) self-reported by the adolescents were also evaluated. The adolescents then joined the local Pediatric Obesity Center (Service Sesame, Centre Médical Infantile de Romagnat, Romagnat, France) for a 4-month inpatient multidisciplinary weight-management program combining nutritional counseling, physical training (HIIT exercises+leisure-time activities), and health-related therapeutic education. All measurements were replicated by the end of the 16-week intervention.

Anthropometric measurements and body composition

Body weight and height were measured according to the recommended procedure in indoor clothing and without shoes, and they were recorded to the nearest 0.1 kg and 0.5 cm, respectively. Subjects were weighed on a reliable digital scale (SECA, Les Mureaux, France). Height was measured by a standard wall-mounted stadiometer (SECA). BMI was calculated as body weight (kg) divided by height (m) squared (kg/m2); and reported on appropriate growth curves. Body composition was obtained using DXA following standardized procedures (QDR4500A scanner; Hologic, Waltham, MA, USA).

Maximal oxygen uptake test (VO2)

Each participant performed an incremental exercise test to exhaustion on a traditional concentric ergometer20 to determine VO2peak. The test consisted of pedaling for 3 minutes with an initial power of 30 W, followed by increments in power of 15 W at 1-minute intervals until exhaustion. Participants were requested to wear a polar heart rate monitor (Polar V800) during the test to observe maximal heart rate percentage throughout the test. Cardiac electrical activity (Ultima Series, Saint Paul, MN, USA) was monitored in addition to breath by breath gas exchange (BreezeSuite, Saint Paul, MN, USA) to determine VO2 and carbon dioxide (CO2) production (VCO2). Volumes and gases were calibrated before each test. The validation of VO2peak attainment was based on these criteria: (1) heart rate >90% of the theoretical maximum heart rate (210−0.65×age), (2) respiratory exchange ratio (VCO2/VO2) >1.1 and/or VO2 plateau despite increasing exercise intensity. When the subject could no longer maintain the required speed imposed, the test was stopped and the VO2peak was defined as the average of the last 30 seconds of exercise before exhaustion.

Multidisciplinary weight loss program

The 16-week inpatient multidisciplinary weight-loss intervention combined physical exercise (4/wk), nutritional education (2/mo) and psychological support (1/mo). The adolescents received an isocaloric diet based on recommendations for their age and sex.21 Physical activity included aquatic activities (1/wk), leisure-time activities (e.g., ball games; 1/wk) and HIIT+strength training (2/wk). In addition, the adolescents performed 2 hours of physical education per week at school. The HIIT session started with 15 minutes intermittent exercise on an ergometer bicycle, alternating 30 seconds intense exercise and 30 seconds active recovery (free but compulsory pedaling), also followed by strength training (2 times/wk). After a 5-minute warm-up set at 60% of the adolescents VO2peak, the intensity of the HIIT exercise followed a progressive increase from 75% of baseline VO2peak, ending at 90%. The cycling intensity of HIIT was controlled using mechanical workload settings. Regarding the strength training, tests were realized for each of the selected exercises to determine the participants maximal 10 repetitions. The exercises were the bench press, pulley (lat pull-down), leg-press, curl, ankle extension machine (sitting), curl machine for triceps, abdominal machine and trunk extensor machine. The adolescents had to perform 10 repetitions of each exercise interspersed by one minute of rest; and to repeat this three times, with a rest period of 4 minutes between each round. The training intensity was set individually and progressively increased from 65% to 85% of 10 maximal repetitions at the post-intervention. This training program has already been implemented with success in this population.22

Health-related quality of life

The SF-36 that was developed by Ware and Sherbourne was used in our study to assess HR-QOL in adolescents. The SF-36 evaluates health based on scores of 0–100 with higher scores indicating a good state of QOL. Based on 36 items, this questionnaire measures eight domains: general health, physical functioning, physical role, pain, vitality, social functioning, role emotional, and mental health.23 A physical component scale (PCS) and mental component scale (MCS) can then be calculated.24 The validity of this questionnaire has been previously reported in adolescents with obesity.10

Health perception (health perception scale)

All adolescents were asked to complete a short self-administered questionnaire specifically designed to explore their perception of health (“HP scale”). Six criteria were investigated: perceived (1) physical fitness, (2) ideal weight, (3) healthy balanced diet, (4) sleep quality, (5) stress level, and (6) general health. A 10-point scale from 1 (not at all) to 10 (very much) was used to assess each item. The six individual scores were computed to obtain a global score for HP. This questionnaire has been shown to provide satisfactory results in both adults11,21 and adolescents with obesity.10

Physical self-perception

PSPs were measured with the French version of the short form of the physical self-description questionnaire.25 This questionnaire contains 40 items that measure 11 physical self-dimensions: coordination, strength, flexibility, endurance, global self-esteem, health, activity, body fat, sport competence, global physical self-concept, and appearance. A 6-point scale from 1 (false) to 6 (true) was used to assess each item. The eleven individual scores were computed to obtain a global score for PSP. The validity of this questionnaire in children and adolescents with obesity has been reported previously.15

Statistical procedures

The sample size estimation was determined according to (1) the CONSORT 2010 statement and (2) Cohen’s recommendations,26 who has defined effect-size (ES) bounds as small (ES 0.2), medium (ES 0.5) and large (ES 0.8, “grossly perceptible and therefore large”). Therefore, with more than 50 participants at each time point evaluation (baseline and at the post-intervention), an ES greater than 0.5 can be hypothesized for a two-tailed type I error at 5%, a statistical power greater than 95% and an intra-individual correlation coefficient at 0.5 to take into account between and within participant variability.

Statistical analyses were performed using Stata version 15 (StataCorp., College Station, TX, USA). All tests were two-tailed, with a type I error set at 0.05. Continuous data were expressed as mean±standard deviation. The assumption of normality was assessed by using the Shapiro-Wilk test. The comparisons between baseline and post-intervention were performed using Student paired t-test or Wilcoxon’s test when the assumptions of the t-test were not met. As proposed by Feise27 a particular focus has been also given to the magnitude of differences, in addition to inferential statistical tests expressed using P-values and Hedges’ ESs with 95% confidence intervals. Typical error and intra-class coefficients (ICCs) for the differences between baseline and T1 are also provided. Then, the changes between baseline and the post-intervention were calculated. The study of relationships between anthropometric, body composition and aerobic capacity variations and HR-QOL, HP, and PSP changes was conducted using Pearson or Spearman coefficient correlation, applying a Sidak’s type I error correction to take into account multiple comparisons.

Anthropometric measurements, body composition, and aerobic capacities

As detailed in Table 1, body weight, BMI and fat mass percentage were all significantly reduced by the intervention (P<0.001), while fat-free mass (FFM, kg) and VO2peak remains unchanged (P=0.083 and P=0.062, respectively).

Health perception

Data related to changes in HP during the 16-week intervention are summarized in Table 2. Significant improvements were observed in the dimensions of HP, such as physical condition (P<0.001), adiposity (P<0.001), alimentation (P<0.001), general health (P=0.038), and general health perceived (P=0.001). Neither sleep nor stress were improved by the intervention.

Health-related quality of life

Data related to changes in HR-QOL during the 16-week intervention are presented in Table 3. Significant improvements were observed in the dimensions of HR-QOL after the program, such as physical functioning (P=0.002), physical limitations (P=0.048), bodily pain (P=0.030), general health (P<0.001), and PCS (P<0.001). None of the other dimensions of the SF-36 questionnaire were significantly modified.

Physical self-perception

Table 4 details the effect of the intervention on the PSP components. Self-perceived coordination (P=0.022), endurance (P=0.001), activity (P<0.001), global self-concept (P=0.015), and appearance (P=0.016) were significantly improved while perceived sport competence and perceived body fat almost reached significance (P=0.054 and P=0.064 respectively). Whereas the other dimensions of the questionnaire did not significantly change, the global computed PSP score was significantly improved (P=0.006).

Correlations between anthropometric, body composition and aerobic capacities variations with HR-QOL, HP, and PSP changes

The heatmap in Fig. 1 presents the different correlations obtained between the variables in the study. Regarding HP, negative correlations between Δweight and Δphysical condition (r=–0.33, P<0.05), Δgeneral health (r=–0.39, P<0.05), and Δgeneral health perceived (r=–0.42, P<0.05) were observed. Similarly, negative relationships were found between ΔBMI and Δphysical conditions (r=–0.46, P<0.05), Δalimentation (r=–0.37, P<0.05), and Δgeneral health perceived (r=–0.35, P<0.05). The ΔFFM was negatively correlated with Δadiposity (r=–0.33, P<0.05) and ΔVO2peak was correlated negatively with Δphysical condition (r=–0.40, P<0.05) and Δstress (r=–0.39, P<0.05).

Regarding HR-QOL, Δweight was found to correlate negatively with Δgeneral heath (r=–0.45, P<0.05), and Δvitality (r=–0.37, P<0.05). Similarly, a negative correlation was observed between ΔBMI and Δphysical functioning (r=–0.38, P<0.05), Δgeneral health (r=–0.49, P<0.05), Δphysical score (r=–0.34, P<0.05), and Δvitality (r=–0.36, P<0.05). ΔZscore was correlated negatively with physical functioning (r=–0.34, P<0.05). Finally, regarding Δweight, the ΔZscore, ΔBMI percentile and ΔVO2peak were positively correlated with Δbody fat (r=0.44, r=0.59, r=0.49, and r=0.53, respectively, P<0.05) and ΔFFM was negatively correlated with Δflexibility (r=–0.41, P<0.05).

The main goal of the present study was to question the effects of 16 weeks of HIIT as a component of a multidisciplinary weight-loss intervention, on HR-QOL, HP, and PSP in adolescents with obesity. According to our results, the intervention favored improvements in the physical dimension of quality of life as well as in the HP and PSP of the adolescents. In addition, our results suggest that the improvements in the physical dimension of HR-QOL, HP, and PSP, might be associated with the observed changes in body weight. The adolescents showed marked improvement in body composition and HP, which may, in turn, have led to improvements in perceived physical condition, adiposity, alimentation, general health and perceived general health. The physical functioning, physical limitations, bodily pain, and general health items of the SF-36 and PCS increased significantly with the intervention, while the mental dimension of the SF-36 questionnaire remained unchanged. In addition, our HIIT intervention was effective in improving some dimensions of the PSP questionnaire, such as coordination, endurance, activity, sport competence, global physical self-concept, appearance and the PSP general score.

While the effect of weight-loss interventions on body composition, metabolic profile, or physical fitness have been widely questioned among adolescents with obesity, their psychological and mental health impact remain poorly explored. HR-QOL is reported to be inversely associated with weight gain and the risk of obesity in pediatric populations28 and there is a strong association between the degree of obesity and quality of life among children and adolescents.29 Previous studies have demonstrated that a reduction in weight is associated with an improvement in HR-QOL,30,31 and improvements in some aspects of HR-QOL have been observed and associated with a weight loss above 5%.32 While some studies have shown an improvement in the physical and mental dimensions of the SF-36 after weight-loss interventions in adolescents with obesity,10,33 others have only observed an improvement in the physical dimensions.12,34 The present work is in line with these latter studies and seems to be the first one to question the effect of HIIT on HR-QOL in adolescents with obesity. As previously underlined in adults,19 our results demonstrated that 16 weeks of HIIT induces a significant improvement in the physical dimension of HR-QOL only, resulting in the improvement of the physical functioning, physical limitations, bodily pain, and general health items of the SF-36 and of its global PCS.

In addition, the results of the present study have demonstrated an improvement in HP in adolescents who suffer from obesity; HP refers to the perception that individuals have of their own overall health.35 This greater HP by the post-intervention results from the improvements of the adolescents’ perceived physical condition, adiposity, alimentation, general health, and perceived general health. Our results are in line with the extant literature, even though the available evidence remains limited. Khammassi et al.10 showed a significant improvement in perceived physical condition, adiposity, healthy balanced diet, general health, and the general HP score after 5 and 10 months of a multidisciplinary weight-loss intervention among adolescents with obesity.

In our sample, HIIT not only seemed to improve HR-QOL and HP, it also induced positive effects on the PSP of the adolescents. In 2017, Rey et al.15 showed that a 5-week intervention combining vigorous interval training with a dietary education led to a better PSP in adolescent boys and girls with obesity, particularly in their perception of their endurance, physical activity, sport competence, self-concept, and appearance. Interestingly, this improved perception of their physical abilities was not concordant with the objectively assessed physical fitness of the adolescents. Indeed, the perceived fitness of the adolescent girls increased in response to the intervention, despite unchanged performances in their fitness tests.15 Although Rey et al.15 used a combination of various physical exercise performed at high intensity, they did not implement a proper HIIT and the present results are the first to question PSP in response to this modality in adolescents with obesity. In line with Rey et al.,15 our results suggest that 16 weeks of HIIT have positive effects on overall PSP in this population. Interestingly, better scores were observed regarding the physical subcomponents of the PSP while the perception of global self-esteem, global health and body fat percentage remained unchanged.

In addition to the observed beneficial effects of our HIIT intervention on overall HR-QOL, HP and PSP; body weight, BMI, and body fat percentage were improved while FFM and VO2peak did not change. The positive effect on body composition and body weight is in line with previously published studies and meta-analyses.3,16 However, the absence of improvement in FFM and VO2peak seems in contradiction with other studies.36,37 Importantly, our results did not reach significance, both FFM and VO2peak showed a tendency that might be due to the inter-individual variability of our sample. Our results, however, seem to indicate that the observed improvement in HR-QOL, HP, and PSP might not be associated with the observed changes in body weight, body composition, and physical fitness. While the changes in most of the HR-QOL components showed some associations with body weight loss and BMI decrease in the adolescents, no association was found for the changes in body composition and VO2peak. Similarly, the observed improvements of HP and PSP were not associated with anthropometric and body composition changes or with the variation in VO2peak. This corresponds with recent results from our team suggesting that the HR-QOL and HP response to a weight-loss intervention including physical activity might only be slightly related to body weight, fat mass and FFM changes.10 This seems to agree with the results proposed by Rey et al.15 who suggest that the psychological perception and health of the adolescents might be improved in response to weight loss, without concomitant improvements in objectively measured physical characteristics or performances.

Although the present study is the first to report evidence regarding the psycho-physiological responses to HIIT in adolescents with obesity, these results should be considered in light of some limitations. First, the clinical nature of the present results did not allow the inclusion of a control group following another type of exercise training (such as moderate-intensity continuous exercise, for instance) or of a group of adolescents without an intervention. Second, while heart rate was continuously measured during the session as a double method to control for the exercise intensity (in addition to the mechanical load imposed on the ergocycle) it was not recorded, which could have provided important additional supporting information. Another limitation is the lack of evaluation of the muscle strength and fitness of adolescents. Indeed, while we assessed VO2peak, it would have been interesting to also question whether the observed psychological improvements could be associated with better muscle capacities. As part of their clinical intervention, the adolescents received a normocaloric diet respecting the recommendation for their age while it would have been better to individualize their diet based on energetic needs, which was not possible for practical reasons. Although the inpatient nature of the intervention composes a methodological strength since it allows a high level of control on the compliance of the adolescents to the program and of their daily activities outside the program; it also restricts the interpretation and applicability of the results to other contexts such as the adolescents’ daily home-based free-living environment, or to the school setting where adolescents usually spend most of their time.

The present study is the first to evaluate the impact of HIIT as a component of a multidisciplinary weight-loss intervention on HR-QOL, HP, and PSP in adolescents with obesity. According to our results, a 4-month HIIT intervention favors HR-QL, HP, and PSP improvements. Physical HR-QOL but not mental HR-QOL domains, HP, and PSP were associated with weight reduction; none of them were associated with changes in aerobic fitness. Further studies are necessary to better understand the effect of physical activity interventions and particularly HIIT on these psycho-physiological variables in adolescents with obesity.

Study concept and design: DT; acquisition of data: all authors; analysis and interpretation of data: all authors; drafting of the manuscript: MK; critical revision of the manuscript: all authors; statistical analysis: BP; administrative, technical, or material support: all authors; and study supervision: DT.

Fig. 1. Heatmap representation of the correlations between changes (Δ) of the items and scores for health-related quality of life, health perception, physical self-perception, anthropometrics, body composition variables, and maximal aerobic capacities (VO2peak), between baseline (T0) and post-intervention (T1). The darkest is the box and the higher is the correlation. *P< 0.05. BMI, body mass index; FM, fat mass (% and kg); FFM, fat-free mass (kg); BMI pct, BMI percentile; VOpeak, maximal oxygen consumption; PSDQ, physical self-perception description questionnaire.

Effects of the HIIT program on anthropometric measurements, body composition and aerobic capacity in obese adolescents

Variable T0 T1 P TE ICC Hedges’s
Weight (kg) 92.69 ± 18.90 85.97 ± 16.27 < 0.001 0.03 0.97 –1.52 (–1.81 to–1.23)
BMI (kg/m2) 35 ± 4.89 32.11 ± 4.50 < 0.001 0.03 0.95 –1.92 (–2.22 to –1.63)
BMI percentile 98.58 ± 0.95 97.61 ± 2.39 < 0.001 0.01 0.45 –0.54 (–0.83 to –0.25)
Z score 2.34 ± 0.31 2.11 ± 0.36 < 0.001 0.06 0.87 –1.16 (–1.41 to –0.90)
FM (%) 36.05 ± 9.15 30.40 ± 7.86 < 0.001 0.05 0.96 –1.35 (–1.64 to –1.06)
FFM (kg) 54.99 ± 11.47 53.97 ± 10.43 0.083 0.04 0.96 –0.26 (–0.55 to 0.03)
VO2peak (mL/kg/min) 26.35 ± 5.81 28.79 ± 6.59 0.062 0.24 0.95 0.29 (–0.01 to 0.60)

Values are presented as mean± standard deviation.

HIIT, high-intensity interval training; T0, baseline; T1, post-intervention; TE, typical error; ICC, intra-class coefficient; BMI, body mass index; FM, fat mass; FFM, fat-free mass; VO2peak, maximal oxygen consumption.

Effects of HIIT program on health perception in obese adolescents

Variable T0 T1 P TE ICC Hedges’s
Physical condition 4.96 ± 2.69 6.39 ± 2.05 < 0.001 1.46 0.33 0.53 (0.23 to 0.82)
Adiposity 2.47 ± 1.89 4.14 ± 1.88 < 0.001 1.05 0.50 0.91 (0.61 to 1.21)
Alimentation 4.63 ± 2.30 6.25 ± 2.27 < 0.001 1.47 0.33 0.57 (0.35 to 0.94)
Sleep 6.65 ± 3.18 6.18 ± 2.82 0.230 0.89 0.36 –0.18 (–0.48 to 0.11)
Stress 5.96 ± 3.03 6.30 ± 3.18 0.529 1.21 0.28 0.09 (–0.20 to 0.39)
General health 6.04 ± 2.57 6.89 ± 2.10 0.038 1.17 0.30 0.31 (0.02 to 0.61)
General health perceived 5.13 ± 1.43 6.02 ± 1.42 0.001 0.59 0.20 0.52 (0.22 to 0.81)

Values are presented as mean± standard deviation.

HIIT, high-intensity interval training; T0, baseline; T1, post-intervention; TE, typical error; ICC, intra-class coefficient.

Effects of HIIT program on health-related quality of life in obese adolescents

Variable T0 T1 P TE ICC Hedges’s
Physical functioning 75.10 ± 24.72 83.84 ± 20.26 0.002 0.26 0.73 0.48 (0.18 to 0.78)
Physical limitation 51.92 ± 25.17 59.88 ± 28.94 0.048 0.57 0.36 0.30 (0.00 to 0.60)
Bodily pain 76.49 ± 23.50 85.35 ± 18.32 0.030 0.39 0.23 0.33 (0.03 to 0.63)
General health 57.17 ± 16.69 68.31 ± 16.55 < 0.001 0.22 0.57 0.73 (0.43 to 1.03)
PCS score 65.30 ± 13.70 74.35 ± 14.07 < 0.001 0.22 0.55 0.71 (0.41 to 1.01)
Social functioning 70.83 ± 21.16 75.29 ± 24.01 0.321 0.47 0.13 0.15 (–0.15 to 0.45)
Emotional limitation 57.14 ± 35.36 58.73 ± 38.82 0.990 0.54 0.30 0.00 (–0.30 to 0.30)
Vitality 57.90 ± 15.05 58.37 ± 16.10 0.838 0.49 0.41 0.03 (–0.27 to 0.33)
Mental health 56.57 ± 16.84 58.05 ± 16.41 0.764 0.25 0.43 0.05 (–0.25 to 0.35)
MCS core 60.45 ± 16.91 62.52 ± 17.44 0.894 0.31 0.55 0.04 (–0.28 to 0.33)

Values are presented as mean± standard deviation.

HIIT, high-intensity interval training; T0, baseline; T1, post-intervention; TE, typical error; ICC, intra-class coefficient; PCS, physical component scale; MCS, mental component scale.

Effects of HIIT program on physical self-perception in obese adolescents

Variable T0 T1 P TE ICC Hedges’s
Coordination 3.26 ± 1.29 3.94 ± 1.22 0.022 0.75 0.20 0.43 (0.07 to 0.80)
Strength 3.69 ± 1.35 4.18 ± 1.19 0.096 0.55 0.17 0.31 (–0.06 to 0.68)
Flexibility 3.00 ± 1.42 3.21 ± 1.42 0.568 0.51 0.60 0.11 (–0.27 to 0.49)
Endurance 2.53 ± 1.32 3.54 ± 1.33 0.001 1.06 0.20 0.65 (0.28 to 1.02)
Global self-esteem 3.44 ± 0.80 3.67 ± 0.65 0.173 0.26 0.25 0.26 (–0.12 to 0.62)
Health 2.53 ± 1.16 1.93 ± 1.37 0.239 0.09 0.97 0.22 (–0.16 to 0.60)
Activity 2.62 ± 1.64 3.59 ± 1.62 < 0.001 0.92 0.61 0.70 (0.34 to 1.05)
Body fat 5.13 ± 1.18 4.50 ± 1.52 0.064 0.44 0.44 –0.34 (–0.71 to 0.02)
Sport competence 3.31 ± 1.76 4.00 ± 1.53 0.054 0.85 0.21 0.35 (0.00 to 0.70)
Global self-concept 2.78 ± 1.54 3.55 ± 1.67 0.015 0.87 0.48 0.44 (0.09 to 0.80)
Appearance 2.83 ± 1.30 3.61 ± 1.71 0.016 0.43 0.55 0.45 (0.08 to 0.82)
PSP general score 3.20 ± 0.83 3.72 ± 0.80 0.006 0.20 0.57 0.67 (0.28 to 1.07)

Values are presented as mean± standard deviation.

HIIT, high-intensity interval training; T0, baseline; T1, post-intervention; TE, typical error; ICC, intra-class coefficient; PSP, physical self-perception.

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