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Article

An Exploratory Analysis of Factors Associated with Health-Related Physical Fitness in Adolescents. The ASSO Project

1
Sport and Exercise Sciences Research Unit, SPPF Department, University of Palermo, 90144 Palermo, Italy
2
PhD Program in Health Promotion and Cognitive Sciences, University of Palermo, 90128 Palermo, Italy
3
Department of Biomedical Sciences, University of Padua, 35100 Padua, Italy
4
POSTURALAB Italia, 90100 Palermo, Italy
5
Department of Physical Activity and Sport, University of Murcia, 30720 Murcia, Spain
*
Author to whom correspondence should be addressed.
Sustainability 2018, 10(6), 1847; https://doi.org/10.3390/su10061847
Submission received: 29 March 2018 / Revised: 23 May 2018 / Accepted: 29 May 2018 / Published: 2 June 2018
(This article belongs to the Special Issue Physical Activity as a Means of Culture, Leisure and Free Time)

Abstract

:
Monitoring physical fitness (fitness) and identifying, since the beginning, possible determinants in youth could be useful to preserve health and avoid morbidities in adulthood. The main objective of this study is to provide details on the fitness levels of a sample of adolescents living in the Southern area of Italy and describe its associations with biological/genetic, socio-cultural/environmental, and lifestyle (physical activity/sedentariness, alcohol/smoking, meal patterns/habits) factors. The study was conducted within the Adolescence Surveillance System for Obesity Prevention (ASSO) project, funded by the Italian Ministry of Health and examining adolescents’ lifestyle in relation to obesity. Fitness measures were collected through the ASSO-fitness tests battery (FTB) and examined in relation to 79 selected possible influencing factors, which were collected through a web-based questionnaire included in the ASSO-NutFit software. Logistic regression analyses were performed to assess associations, with ORs and 95% CIs estimated as crude and adjusted. A total of 919 participants were initially recruited, but fitness data were collected for 544 students aged 13–19 (68% M, 32% F). Fitness level was low for 14.2% of the students, medium for 67.8%, and high for 18.0%. The independent determinants of low physical fitness in our sample of adolescents were included in the biological/genetic and physical activity/sedentariness dimensions: female gender (Adj OR 8.33, CI 2.08–33.33), obesity (Adj OR 1.97, CI 1.10–9.22), practicing sport less than 3 h/week (Adj OR 6.09, CI 1.63–22.72), practicing sport with strength/speed as prevalent biomotor ability (Adj OR 8.97, CI 1.43–56.19), using PC/internet for more than 3 h/day (Adj OR 4.46, CI 1.17–16.98). Drinking alcohol was instead a protective factor. This study confirms that females and obese individuals need more attention in the interventions aimed at increasing fitness levels. It suggests that local actions should be implemented with the aim of increasing sport practices and reducing sedentary time spent in front of PC/internet. The focus should be particularly addressed to sports with strength or speed as dominant biomotor abilities.

1. Introduction

The relationship between health-related physical fitness (fitness) and health status of young people has been previously demonstrated [1,2,3,4,5]. It is also clear that fitness levels should be monitored in order to preserve health and prevent morbidities in adulthood for several disorders, including cardiovascular diseases, obesity, metabolic syndrome, and also mortality, and to reduce health care costs [6,7,8,9]. Moreover, fitness is related to academic performance that includes cognitive skills and attitudes (e.g., attention, memory, comprehension), academic behaviors (e.g., organization, attendance, impulse control), and achievement (e.g., standardized test scores, grade point averages) [10,11,12,13]. As mentioned above, scientific literature reports the relation among low fitness levels of adolescents and several factors involving genetic, biological, familiar, environmental, and behavioral aspects, such as female gender, low income, low consumption of dairy products and/or bread/cereals, increased consumption of sweetened beverages, insufficient physical activity level, excessive screen time, and excess body fat [14,15,16,17]. School represents the correct environment where adolescents’ fitness could be assessed and monitored [12,18], with the aim of identifying possible low fitness levels and use appropriate interventions to increase them. Moreover, the identification of the factors that could influence fitness levels since childhood or adolescence is important and should be carried out in parallel with fitness monitoring [14].
Even though risk factor analysis nowadays represents a new challenge in many research fields, included also health promotion, sociodemographic, and behavioral sciences [1,19], as far as we know only few studies used it to report data concerning the potential association between physical fitness and risk factors [20,21]. Information on adolescents’ physical fitness in different geographical areas and according to different cultures is very important to drive public health actions aimed at preventing the above-mentioned disorders in the adult life. To our knowledge, no data on the determinants of fitness level are available in the literature on adolescents from Southern Italy. In this context falls the Adolescents and Surveillance System for Obesity prevention project (ASSO), which was funded by the Italian Ministry of Health. The project developed different tools for the collection of adolescents’ health assessments and proposed a surveillance system eligible at national level [18,22,23,24,25,26]. Detailed information on adolescents’ fitness and several possible related variables were also collected within the project. The main purpose of this investigation is to provide a framework of the fitness level of adolescents living in the Southern area of Italy and describe its association with different biological/genetic, socio-cultural/environmental, and lifestyle factors, in order to supply stakeholders with substantial information useful to target prevention policies and action plans in the public health sector.

2. Materials and Methods

The ASSO study protocol was approved by the Ethical Committee of the Azienda Ospedaliera Universitaria Policlinico “Paolo Giaccone” in Palermo (approval code no. 9/2011). All procedures were accurately prepared and multidisciplinary ASSO team members—including researchers, school teachers, and experts—were trained and provided with proper standard operating procedures (SOPs). These procedures described in detail the use of the ASSO tools that included an ASSO-fitness test battery (FTB) [18,24] to assess students’ health-related fitness, a set of classic anthropometric tools and a web-based software ASSO-NutFit [22] to collect data on biological/genetic factors, socio-cultural and environmental variables, and life habits.

2.1. ASSO-FTB and Anthropometric Tools

The ASSO-FTB is made up of five selected tests for the assessment of the physical fitness components: (1) the hand-grip strength test (HGt) to assess upper body maximal strength; (2) the standing broad jump test (SBJt) to assess lower body maximal strength; (3) the sit ups test to exhaustion (SUtex) to assess muscular endurance; (4) the 4 × 10 m shuttle run test (4 × 10 m SRt) to assess speed and agility; and (5) the 20 m shuttle run test (20 m SRt) to assess endurance/aerobic capacity [24]. The best score of three performances was retained for the subsequent analysis, except for the SUtex and the 20 m SRt, which were performed only once. From the measures of the five major physical fitness components, through the principal components analysis (PCA), a continuous fitness level score (the Fit-Score), and a Likert-type scale on the Fit-Score values was applied to obtain a classification of the individual level of fitness: very poor (X < P20), poor (P20 ≤ X < P40), medium (P40 ≤ X < P60), good (P60 ≤ X < P80), and very good (X ≥ P80) [24]. Teachers of motor activity were responsible both of fitness and anthropometric (weight, height, and waist circumference) measurements. These last ones were collected using a calibrated scale, a stadiometer and a non-elastic meter, respectively, provided by the schools. Weight status categories were taken from the cut off points by the International Obesity Task Force [27,28].

2.2. ASSO-NutFit Software

The web-based ASSO-NutFit software included all questionnaires to collect different variables, i.e., the ASSO-PIQ (personal information questionnaire), with questions regarding participant and family information, neonatal and clinical assessment; the ASSO-PASAQ (physical activity, smoke, and alcohol questionnaire), for physical activity, smoking, alcoholic drinks and other beverages assessment; and the ASSO-FHQ (food habits questionnaire), which consisted of six items regarding breakfast, school break, lunch, afternoon break, dinner, and various habits such as eating out, eating ready meals, organic food, fresh food, or food from vending machines. The last questionnaire is the ASSO-FFQ (food frequency questionnaire), that was not used for the purpose of this study [22]. The principles of the Italian data protection (196/2003) were guaranteed for the collected information. A multi-phase sampling was used to recruit students from classes first to fourth of public and private high schools in Palermo city, in the year 2013. Participants were asked to provide informed consent signed by their parents.

2.3. Variables

The five classes of fitness level determined through the PCA were categorized into three classes (0 = high, 1 = medium, and 2 = low), and subsequently for the purpose of the logistic regression analysis into two classes (0 = high/medium and 1 = low). Risk factors examined for the associations were recorded in dichotomized classes with ‘0’ representing a healthier factor and ‘1’ representing a less healthy factor.
Possible determinants of fitness level addressed in the survey included initially 79 items, which were gathered into three dimensions, including (1) biological/genetic; (2) socio-cultural and environmental; and (3) lifestyle (physical activity/sedentariness, alcohol/smoking, meal patterns/habits). These dimensions were chosen by the authors according to recent literature that used ecological models to classify and conceptualize determinants of sedentary behavior, such as the social-ecological framework for the determinants of sedentary behaviors [19,29,30] and they were adapted for the purpose of this study to the fitness and to the available project’s data collected.
Among the biological and genetic factors, the following were considered for the associations: gender, age, weight status, birth weight, delivery time, delivery type, breastfeeding, breastfeeding duration, weaning time, metabolic risk, alcoholic risk, health risk, diagnosed diseases, parental diseases, malaise frequency, and overweight/obese parents. Age was categorized into students <16 and ≥16 years. Weight status was assessed according to the international BMI cut-off points developed by the Centers for Disease Control and Prevention (CDC) [31]. Birth weight was considered normal if comprised between 2.5 and 3.5 Kg; delivery time was categorized into full-term and pre-term, with pre-term birth being before 37 weeks of gestation; delivery time was natural or caesarean; breastfeeding (yes, not), breastfeeding duration (3–5 months, 6 months) and weaning (3–5 months, 6 months). The waist-to-height ratio was used to estimate the metabolic risk [32,33], while alcoholic risk was calculated on the basis of ethanol daily intake higher than 12 g. These risks are both indices of health risk, so they were assembled into one variable named “health risk”, with all adolescents showing both these parameters included in this class. The presence of diseases in adolescents was reported as diagnosed by a medical doctor. The malaise frequency was the frequency of the presence of subjective health complaints (SHCs) measured through an eight items checklist (“headache”, “stomach ache”, “backache”, “feeling low”, “irritable or bad tempered”, “feeling nervous or anxious”, “sleeping difficulties”, and “dizziness”) previously developed in the HBSC study (health behavior in school-aged children) [34], and adopted as such in the ASSO toolkit. Adolescents reported in the questionnaire also their parents’ weight status, with those having at least one parent overweight or obese considered at genetic risk.
Socio-cultural and environmental factors included: nationality; town of residence size (big, small center); study course type (lyceum, professional/technical institute), school type (public, private), school class, shared bedroom, number of family members, number of siblings, parents’ nationality, parents’ education (high including high school and university, and low including lower education classes), parents’ occupation, parents’ civil status (married, non-married), and family affluence scale (FAS), constructed by the sum of scores of the answers to questions about the presence of common goods such as computers, number of cars, single bedroom, and annual holidays [35].
Life habits included physical activity/sedentariness, alcohol consumption, smoking, and meal patterns/habits.
Different physical activities were summed up, such as playing outside, walking, going to school by active transportation means, doing motor activity at school, practicing sport, as well as sedentary activities, such as sleeping hours, doing homework, reading, watching TV, videogame playing, using PC/internet. Sedentary individuals were those showing a total screen time equal to or higher than 3 h/day (American Academy of Pediatrics 2001). Practicing sport (intended as vigorous intensity activity) for at least three hours/week was another indicator of high physical activity level [36].
Smoking habits included the variables of smoking at least once in life, current smoking and numbers of cigarettes per day. Among the alcohol habits, drinking alcohol, type of alcohol preference, and alcohol intake in days/week were the variables selected for the analysis.
The meal/food habits comprised different variables. An “adequate” breakfast or morning and afternoon breaks excluded carbonated beverages or other junk food; and an “adequate” lunch or dinner included a first or a second course with vegetables, fruit, bread, and excluded carbonated beverages or other junk food. Meals were considerate adequate in general if subjects consumed at least three adequate meals per day.
Eating out, eating industrial foods, eating organic food, eating fresh food and eating food from vending machines (never/rarely, weekly/daily) were summarized into one variable named “food habits” (‘correct’ if subjects had at least four correct behaviors).
Other habits were the use and type of supplements, having been advised a diet by the doctor, following a slimming regime.
All considered variables are included in Table 1.

2.4. Statistical Analysis

The chi-squared test was applied to assess correlations between fitness level and all the considered variables. Factors that resulted associated were included in a logistic regression model and used to derive odds ratios (OR) and 95% confidence intervals (CI), and the adjusted ORs and CIs after controlling for potential confounders. Statistical significance was set at p < 0.05. The Stata/MP 12.0 software was used for the analyses (StataCorpLP, college Station, TX, USA).

3. Results

A total of 919 participants were initially recruited. Fitness tests comprising all the five tests included in the battery were collected for 544 students aged 13–19 (68% males, 32% females; mean age 16.3 ± 1.4 years) within the ASSO project [22,24]. Fitness level was low for 14.2% of the students, medium for 67.8%, and high for 18.0%.
In Table 1, descriptive data show the frequencies of the different considered factors and their correlation with fitness levels. The following 17 variables were found associated with fitness levels: gender, weight status, metabolic risk, alcoholic risk, malaise frequency, parents/family diseases (among the biological/genetic factors); school class, school public or private, father’s occupation extent (among the socio-cultural and environmental factors); minutes/day of physical activity, practicing sport, hours/week of sport, sport type (team or individual), biomotor ability prevalent in the practiced sport (endurance or strength/speed), using PC/internet, drinking alcohol, doctor advised diet (among the life habits).
After multivariate logistic regression analysis, the independent factors associated with fitness levels were the following: gender, weight status, practicing sport, hours/week of sport, prevalent sport biomotor ability, using PC/internet, drinking alcohol (Table 2). Female gender increased the risk of poor fitness level of eight times (Adj OR 8.33, CI 2.08–33.33); for the weight status, the risk of poor fitness level was around twice higher for obese (OR 1.97, CI 1.10–9.22) compared to normal weight children. Practicing less than 3 h/week of sport and practicing a sport of strength/speed increased the risk of poor fitness level of around six and nine times, respectively (Adj OR 6.09, CI 1.63–22.72; Adj OR 8.97, CI 1.43–56.19) compared to practicing more than 3 h/week and practicing a sport of endurance. The likelihood of having low fitness level was four and a half times higher for adolescents spending more than 1 h/day in front of PC/internet (Adj OR 4.46, CI 1.17–16.98). Unexpectedly, those drinking alcohol were more likely to have high fitness levels (OR 0.21, CI 0.06–0.77).

4. Discussion

In this study, fitness levels and fitness-related factors were taken into account on a sample of adolescents attending high schools from Southern Italy. Results show that the main predictors of low physical fitness in our sample of adolescents are included in the biological/genetic and lifestyle (physical activity/sedentariness) dimensions.
With regard to the biological/genetic dimension, gender differences were found in the level of fitness, with males having significantly higher fitness levels. This could be explained by the fact that males seem to practice sport in a bigger extent than females, since girls should perceive more barriers related to body image, to tiredness and laziness than males [37]. Also, differences in weight were found out, with obese people being less likely to have a good fitness level compared to normal and underweight people. This is in line with different findings in the literature confirming that obesity is inversely related to fitness [17,23,38,39,40,41].
In the present study, socio-economic status (SES)—such as family’s education and occupation—was not significantly associated with fitness levels, as found by some studies [42] and in contrast with some others [43,44], whose difference seems to depend on the accessibility of the sports environment [45]. The present study involves a sample of Southern Italy, an area that for its climatic conditions offers free open places for practicing sports and physical activity, which are accessible also to people with lower economic availability.
In the lifestyle dimension, physical activity and sedentariness were mainly involved as associated factors. Adolescents practicing sport less than three hours/week have a risk six times higher of low fitness level, as previously found by another study [46]. Sports with strength/speed as dominant biomotor ability were found out to be important risk factors of low fitness levels compared to endurance sports.
Those spending more than 3 h/day in front of PC/internet have more than four times higher risk of low fitness. This result is confirmed in one study, showing that sedentary time influences fitness in children, even though this effect was mediated by physical activity [47]. It suggests that students should be encouraged to decrease time spent in front of PC or the internet, which are often used for leisure rather than for homework.
The multivariate analysis shows that low physical activity is not an independent risk factor of low fitness level, while the univariate shows more than double risk for those practicing low physical activity. This is in line with some studies showing a weak or not significant association between physical activity and physical fitness, also because daily physical activity explains a small proportion of aerobic activity that could be the mere fitness determinant [48,49,50]. Other studies, contrarily, show that the frequency of engagement in physical activity was highly associated to physical fitness [51,52]. Some studies, moreover, show that physical activity should be always considered together with correct nutrition, since interventions where both determinants were considered significantly increased fitness levels in students [53,54,55].
In the univariate logistic regression, the “individual” sport type was found to be associated with low fitness levels, but this was not confirmed in the multivariate one, showing that the type of sport is not an independent low fitness risk factor, maybe due to the fact that (a) at this age adolescents choose to practice more than one sport or they decide to change sport activity often (as declared); (b) we discovered a low rate of professional athletes amongst participants.
Among the lifestyle variables, the analysis found out that adolescents consuming alcoholic beverages have a medium/good fitness level. Currently, there is not a consensus on the relationship between fitness/physical activity and alcohol consumption in adolescents [56,57,58]. One study showed that adolescents with low upper-body musculoskeletal capacity had a lower risk of alcohol consumption [20]. Another one reported a greater likelihood of alcohol consumption and getting drunk occasionally among subjects with a lower aerobic capacity or with a upper and lower muscular strength [21,59]. Thus, authors feel that this alcohol-related behavior should be further analyzed before suggesting strategies and interventions. When, for example, class 4 is considered where almost all subjects are at health risk, a strong association was found out with fitness level; health risk was assessed through two components, one of this being the alcoholic risk; it could be suggested that only drinking more than 12 g of ethanol per day could be a risk factor for low overall fitness level, while simply drinking alcoholic beverages sometimes is not.
It should also be considered that most of those consuming alcohol are males in the present study, and a significant difference has been found out with around males consuming alcohol twice as much as females; thus, it could be argued that the effect of gender on the fitness level is significantly higher than the effect of alcohol consumption itself.
Food habits do not influence significantly fitness in the present study. This is not in line with the awareness that nutrition is an important part of athletic performance especially during childhood and adolescence, in addition to allowing for optimal growth and development [60]. Therefore, this matter has to be further investigated, also considering that some authors have evidenced that the level of adherence to the Mediterranean Diet was also a significant predictor of PF level [41]. An additional study is needed to deeply investigate on the relationship with food habits and consumptions.
This study has a limitation due to the sample not being representative of the national population, since it is limited to adolescents from a metropolitan area in Southern Italy; results cannot be extrapolated to the entire Italian population but can be useful to suggest interventions at local level. Moreover, the tools used for physical activity and sedentariness assessment were based on the validated web-based questionnaire but not on an accelerometer, which is a more objective tool to assess those behaviors.

5. Conclusions

This study provides information on the risk factors of the physical fitness in a sample of adolescents from Southern Italy, highlighting that the main predictors of low physical fitness in our sample of adolescents are included in the biological/genetic and lifestyle dimensions. It confirms that females and obese individuals need higher attention not only in terms of number of hours spent in practicing physical activity, but the typology of the performed activity (more strength, more agility, more skills and less generic and vague movements) is also crucial. This work suggests that local actions should be implemented with the aim of increasing sport practices and also reducing sedentary time spent in front of PC/internet.

Author Contributions

A.B. and G.T. conceptualized the research and were involved also on data curation and formal analysis. S.B., G.M. and A.P.a contributed on methodology definition and providing resources. A.G. and G.M. have been involved on manuscript writing and editing. M.G.L., A.P., .A.B. and G.T contributed on project implementation, manuscript revision and project supervision.

Conflicts of Interest

The authors declare no conflict of interest.

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Table 1. Descriptive statistics of the population sample. Asterisks on the variables indicate positive association with high fitness level (assessed through chi-square test).
Table 1. Descriptive statistics of the population sample. Asterisks on the variables indicate positive association with high fitness level (assessed through chi-square test).
BIOLOGICAL/GENETIC FACTORS
n% n% n% n%
Gender Age Weight status Birth weight
Male ***57162.1<16 years34838.1Normal/under *58371.9Normal49065.6
Female34837.9≥16 years56661.9Overweight/obese22828.1Under/Overweight25734.4
Delivery time Delivery type Breastfeeding Breastfeeding duration
Full-term *62283.3Natural40253.8Yes59880.0<5 months21736.3
Pre-term12516.7Caesarean34546.2Not14920.0≥5 months38163.7
Weaning time Metabolic risk Alcoholic risk Diagnosed diseases
3–5 months56375.4No ***53372.7No68688.9No651 87.1
6 months18424.6Yes20027.3Yes *8611.1Yes96 12.9
Malaise frequency Health riska Parents/family diseases Overweight/obese parents
Never/rarely **589 83.1No62973.7No *29839.9None22731.0
Weekly/daily12016.9Yes22526.3Yes44960.1At least one50669.0
Father’s weight status Mother’s weight status
Normal/under29239.8Normal/under50067.6
Overweight/obese44160.1Overweight/obese24032.4
SOCIO-CULTURAL AND ENVIRONMENTAL FACTORS
School type School class Study course type Family Affluence Scale
Public75281.81st-2nd class37941.2Lyceum41144.7High40954.8
Private *16718.23rd-4th class *54058.8Professional/technical50855.3Medium/low33845.2
No. family members No. siblings Father’s nationality Mother’s nationality
4 or more61482.21 or more60981.4Italian71497.1Italian71496.2
1–313317.8none13918.6Other212.9Other283.8
Father’s education Mother’s education Father’s occupation Father’s occupation type
High50268.3High51669.5Occupied68493.1Non manual job41664.2
Low23331.7Low22630.5Other c516.9Manual job232 35.8
Father’s occupation extent Mother’s occupation Mother’s occupation type Mother’s occupation extent
Full-time *37189.2Occupied43358.4Non manual job32477.3Full-time26381.2
Part-time4510.8Other b30941.6Manual job9522.7Part-time6118.8
LIFE HABITS
Physical activity/Sedentariness
Physical activity Playing outside (h/day) Walking (h/day) Way to go to school
More than 60 min/day *726 93.41 or more14240.71 or more26043.2walking/biking19024.6
Less than 60 min/day516.6Less than 120759.3Less than 134256.8car/bus/metro/tram/train58275.4
Practicing sport No. sports practiced Sport (h/week) Sport type
Yes *60978.9More than 126643.83 or more ***47761.8Team *38863.9
No16321.1134156.2Less than 329538.2Individual21936.1
Sport biomotor ability Sleeping (h/day) Doing homeworks Reading (h/day)
Endurance *50483.0Less than 712616.31 or less37180.51 or less24967.5
Strength/Speed10317.07 or more64683.7More than 110019.5More than 112032.5
Total screen time (h/day) TV watching (h/day) Videogames playing (h/day) Using PC/internet (h/day)
Less than 344857.12 or less43067.41 or less31165.11 or less *35951.4
3 or more 33642.9More than 220832.6More than 116734.9More than 134048.6
Smoking
Smoking at least once in life Current smoking Cigarettes no./day
No47461.4No66586.1Less than 53431.8
Yes29838.6Yes10713.9Five or more7268.2
Alcohol consumption
Drinking alcohol Alcohol preference Alcohol days/week Food habits in generald
No276 35.8Slightly alcoholic drinks, beer, wine29058.5Less than 170391.1Correct38850.3
Yes ***49664.2Cocktails, liqueurs20641.5One or more698.9Incorrect38449.7
* p < 0.05; ** p < 0.01; *** p < 0.001. a Adolescents at health risk are those who are both at metabolic and alcoholic risk; b Other = non-occupied, retired, housewife, student. c A proper meal excluded carbonated beverages or other junk food, for the breakfast or morning and afternoon breaks; and a proper meal including a first or a second course with vegetables, fruit, bread, and excluding carbonated beverages or other junk food, for lunch and dinner. d Food habits were derived by summing up eating out, eating ready meals, eating organic food, eating fresh food, eating food from vending machines. They were considered ‘correct’ if subjects had at least four correct behaviors.
Table 2. Raw and adjusted odds ratio (OR) with 95% confidence interval (CI) performed through logistic regression of the subjects’ fitness level.
Table 2. Raw and adjusted odds ratio (OR) with 95% confidence interval (CI) performed through logistic regression of the subjects’ fitness level.
Low Fitness Level (Medium/High as Reference)
VariablesOR (95% CI)Adj OR (95% CI)
Gender
Female1.001.00
Male0.17 (0.1–0.3) ***0.12 (0.03–0.48) **
Weight status
Normal weight1.001.00
Underweight2.22 (0.90–5.48)3.43 (0.02–8.67)
Overweight1.31 (0.71–22.39)2.98 (0.01–6.75)
Obese2.74 (1.19–6.26) *1.97 (1.10–9.22) *
Metabolic risk
No1.001.00
Yes1.99 (1.16–3.36) ***2.35 (0.38–14.62)
Alcoholic risk
No1.001.00
Yes0.16 (0.00–0.97) *0.81 (0.04–15.00)
Malaise frequency
Never/rarely1.001.00
Weekly/daily2.41 (1.16–4.82) **1.05 (0.26–4.22)
Parents/family diseases
No1.001.00
Yes2.01 (1.07- 3.93) *2.36 (0.61–9.06)
School class
1st–2nd classes1.001.00
3rd–4th classes0.53 (0.32–0.90) *1.04 (0.25–4.35)
School
Private1.001.00
Public2.13 (1.11–4.35) *2.23 (0.25–4.35)
Father’s occupation extent
Full-time1.001.00
Part-time3.04 (0.97–8.55) *4.86 (0.91–25.94)
Physical activity
≥60 min/day1.001.00
<60 min/day2.22 (0.01–5.27) *0.32 (0.01–12.62)
Practicing sport
Yes1.001.00
No2.01 (1.02–3.81) *1.00
Hours/week of sport
≥3 h1.001.00
<3 h3.17 (1.81–5.56) ***6.09 (1.63–22.72) **
Sport type
Team1.001.00
Individual2.09 (1.10–3.96) *0.79 (0.15–4.19)
Sport dominant biomotor ability
Endurance1.001.00
Strength/speed2.19 (1.04–4.41) *8.97 (1.43–56.19) *
PC/internet time
≤1 h1.001.00
>1 h1.92 (1.08–3.48) *4.46 (1.17–16.98) *
Drinking alcoholic beverages
No1.001.00
Yes0.26 (0.14–0.46) ***0.21 (0.06–0.77) *
Doctor advised diet
No1.001.00
Yes3.29 (1.47–7.00) ***4.49 (0.45–45.22)
* p < 0.05; ** p < 0.01; *** p < 0.001.

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Bianco, A.; Gentile, A.; Boca, S.; Paoli, A.; Messina, G.; Gómez-López, M.; Palma, A.; Tabacchi, G. An Exploratory Analysis of Factors Associated with Health-Related Physical Fitness in Adolescents. The ASSO Project. Sustainability 2018, 10, 1847. https://doi.org/10.3390/su10061847

AMA Style

Bianco A, Gentile A, Boca S, Paoli A, Messina G, Gómez-López M, Palma A, Tabacchi G. An Exploratory Analysis of Factors Associated with Health-Related Physical Fitness in Adolescents. The ASSO Project. Sustainability. 2018; 10(6):1847. https://doi.org/10.3390/su10061847

Chicago/Turabian Style

Bianco, Antonino, Ambra Gentile, Stefano Boca, Antonio Paoli, Giuseppe Messina, Manuel Gómez-López, Antonio Palma, and Garden Tabacchi. 2018. "An Exploratory Analysis of Factors Associated with Health-Related Physical Fitness in Adolescents. The ASSO Project" Sustainability 10, no. 6: 1847. https://doi.org/10.3390/su10061847

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