Eating Disorders Risk Assessment and Body Esteem among Amateur and Professional Football Players
Abstract
:1. Introduction
2. Materials and Methods
2.1. Procedure for the Study
2.2. Participants
2.3. Survey Tools
2.4. Body Mass Index (BMI)
2.5. EAT-26
- The final score on the EAT-26 questionnaire is the sum of the scores obtained from 26 questions on attitudes toward nutrition. Questions 1 through 25 are scored as follows: Always = 3 points; Usually = 2 points; Often = 1 point; Other answers = 0 points. Question 26, meanwhile, is scored oppositely: Never = 3 points, etc. The total score of the test can range from 0 to 78. A person scoring ≥20 is considered at risk of developing an ED and should consult a specialist for further diagnosis.
- Questions about behavioral patterns may suggest the presence of symptoms of an ED or recent significant weight loss. These questions focus on compensatory behaviors such as the use of laxatives, provoking vomiting, overeating, excessive physical activity, and rapid and significant weight loss in a short period. An affirmative answer to any of these questions may suggest the presence of abnormalities and the need for further diagnosis of ED.
- The survey includes precise questions about respondents’ height, weight, and gender, which are used to calculate body mass index. BMI can suggest possible risks of ED if weight is low compared with age standards. Evaluating BMI in the context of respondents’ height, weight, and gender data identifies potential risks and the need for further analysis of subjects. Table 3 shows interpretations of BMI compared with age standards.
2.6. BES
2.7. Statistical Analysis
3. Results
3.1. Sample Characteristics
3.2. BMI of Participants
3.3. Risk of ED
3.4. Attitude towards One’s Own Body
4. Discussion
Strengths and Limitations
5. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Level | Name Od Competition Level | Status of the Competition | Sports Level |
---|---|---|---|
1 | Ekstraklasa | Central games | Professional football |
2 | I league | Central games | Professional football |
3 | II league | Central games | Professional football |
4 | III league | Central games | Professional football |
5 | IV league | Regional games | Amateur football |
6 | District class | Regional games | Amateur football |
7 | A class | Regional games | Amateur football |
8 | B class | Disctrict games | Amateur football |
9 | C class | Disctrict games | Amateur football |
BMI (kg/m2) | Interpretation of BMI |
---|---|
<18.5 | Underweight |
18.50–24.99 | Body weight normal |
25.00–29.99 | Overweight |
30.00–34.99 | First-degree obesity |
35.00–39.99 | Second-degree obesity |
≥40.00 | Third-degree obesity |
Age | 9 | 10 | 11 | 12 | 13 | 14 | 15 | 16 | 17 | 18 | 19 | 20 | >20 |
---|---|---|---|---|---|---|---|---|---|---|---|---|---|
BMI-male | 14.0 | 14.5 | 15.0 | 15.0 | 16.0 | 16.5 | 17.0 | 17.5 | 18.0 | 18.5 | 19.0 | 19.5 | 20.5 |
Stens | 16–19 Years | 20–29 Years | 30–39 Years | ||||||
---|---|---|---|---|---|---|---|---|---|
PA | UBS | PC | PA | UBS | PC | PA | UBS | PC | |
1 | ≤26 | ≤20 | ≤29 | ≤28 | ≤23 | ≤32 | ≤28 | ≤22 | ≤32 |
2 | 27–30 | 21–23 | 30–34 | 29–31 | 24–26 | 33–36 | 29–31 | 23–25 | 33–36 |
3 | 31–33 | 24–26 | 35–38 | 32–34 | 27–29 | 37–40 | 32–34 | 26–28 | 37–40 |
4 | 34–36 | 27–30 | 39–43 | 35–37 | 30–31 | 41–45 | 35–37 | 29–31 | 41–44 |
5 | 37–39 | 31–33 | 44–47 | 38–41 | 32–34 | 46–49 | 38–40 | 32–34 | 45–48 |
6 | 40–43 | 34–36 | 48–52 | 42–44 | 35–37 | 50–53 | 41–44 | 35–36 | 49–52 |
7 | 44–46 | 37–39 | 53–56 | 45–47 | 38–40 | 54–57 | 45–47 | 37–39 | 53–56 |
8 | 47–49 | 40–42 | 57–61 | 48–50 | 41–43 | 58–61 | 48–50 | 40–42 | 57–60 |
9 | 50–52 | 43–45 | 62–65 | 51–54 | 44–46 | 62–65 | 51–53 | 43–45 | 61–64 |
10 | ≥53 | ≥46 | ≥66 | ≥55 | ≥47 | ≥66 | ≥54 | ≥46 | ≥65 |
Total (n = 90) | AF (n = 59) | PF (n = 31) | p-Value | |
---|---|---|---|---|
Age [years] (X ± SD) | 28.21 ± 5.11 | 28.52 ± 4.48 | 27.65 ± 6.18 | 0.450 |
Height [cm] (X ± SD) | 181.41 ± 6.62 | 179.1 ± 5.86 | 185. 81 ± 5.75 | 0.001 * |
Body mass [kg] (X ± SD) | 78.92 ± 8.36 | 77.62 ± 8.37 | 81.42 ± 7.89 | 0.04 * |
BMI [kg/m2] (X ± SD) | 23.95 ± 1.91 | 24.15 ± 1.9 | 23.57 ± 1.89 | 0.171 |
Sports seniority [years] (X ± SD) | 18.82 ± 4.77 | 19.58 ± 4.65 | 17.38 ± 4.74 | 0.038 * |
Training units per week (X ± SD) | 3.48 ± 1.3 | 3.5 ± 0.51 | 4.77 ± 1.02 | 0.001 * |
Sports Level | AF (n = 59) n (%) | PF (n = 31) n (%) | Total (n = 90) n (%) | p-Value |
---|---|---|---|---|
Exclusions of food products from the diet | ||||
I do not exclude | 39 (66.10) | 19 (61.29) | 58 (64.44) | 0.579 |
Red meat | 2 (3.39) | 1 (3.23) | 3 (3.33) | |
Fruits | 2 (3.39) | 0 | 2 (2.22) | |
Fish and seafood | 2 (3.39) | 6 (19.35) | 4 (4.44) | |
Nuts | 2 (3.39) | 1 (3.23) | 3 (3.33) | |
Monosaccharides | 2 (3.39) | 0 | 2 (2.22) | |
Products contain lactose | 10 (25.64) | 6 (19.35) | 16 (17.78) | |
How to adapt diet to increased physical activity | ||||
Increase carbohydrate intake | 3 (5.1) | 14 (45.2) | 17 (18.9) | 0.001 * |
Increase fluid intake | 25 (42.4) | 13 (41.9) | 38 (42.2) | 0.969 |
Increase protein intake | 17 (29.3) | 18 (51.4) | 35 (39.3) | 0.006 * |
Reduce fat intake | 6 (10.2) | 1 (3.2) | 7 (7.8) | 0.247 |
Restrict the consumption of sweets | 14 (23.7) | 0 | 14 (15.6) | 0.003 * |
Increase the energy intake on training/match days | 9 (15.3) | 14 (45.2) | 23 (25.6) | 0.002 * |
Eating before and after physical activity | 12 (20.3) | 11 (35.5) | 23 (25.6) | 0.120 * |
Sports Level | AF (n = 59) | PF (n = 31) | Total (n = 90) | p-Value |
---|---|---|---|---|
Time of use of social media during the day n (%) | ||||
Up to 1 h | 15 (25.4) | 0 | 15 (16.7) | 0.009 * |
1–2 h | 21 (35.6) | 18 (58.1) | 39 (43.3) | |
2–3 h | 15 (25.4) | 6 (19.4) | 21 (23.3) | |
above 3 h | 8 (22.6) | 7 (16.7) | 15 (16.7) | |
The most common type of social media n (%) | ||||
Tik-Tok | 6 (10.2) | 5 (16.1) | 11 (12.2) | 0.086 |
21 (35.6) | 17. (54.8) | 38 (42.2) | ||
5 (8.5) | 4 (12.9) | 9 (10) | ||
24 (40.7) | 5 (16.1) | 29 (32.2) | ||
Different | 3 (5.1) | 0 | 3 (3.3) | |
Purpose of using social media n (%) | ||||
Relax | 44 (74.6) | 25 (80.6) | 69 (76.7) | 0.523 |
I’m looking for information on sports | 29 (49.2) | 16 (51.6) | 45 (50.0) | 0.827 |
I look for information on diet/nutrition | 16 (27.1) | 11 (35.5) | 27 (30.0) | 0.416 |
I look for the news of the day | 35 (59.3) | 21 (67.7) | 56 (62.2) | 0.439 |
I check what’s going on with friends | 33 (55.9) | 27 (87.1) | 60 (66.7) | 0.003 * |
Comparing body image to photos of other players on social media n (%) | ||||
no, never | 41 (69.5) | 13 (41.9) | 54 (60) | 0.023 * |
yes, sometimes | 12 (20.3) | 14 (45.16) | 26 (28.9) | |
yes, often | 6 (10.2) | 4 (12.9) | 10 (11.1) |
EAT-26 | Total | AF (n = 59) | PF (n = 31) | p-Value | |||
---|---|---|---|---|---|---|---|
Elevated Risk | No Risk | Elevated Risk | No Risk | Elevated Risk | No Risk | Elevated Risk | |
Part A (X ± SD) | 82 (91.1) | 8 (8.9) | 52 (88.1) | 7 (11.9) | 30 (96.8) | 1 (3.2) | 0.171 |
Part B (X ± SD) | 81 (90.0) | 9 (10.0) | 53 (89.8) | 6 (10.2) | 28 (90.3) | 3 (9.7) | 0.941 |
Part C (X ± SD) | 87 (96.7) | 3 (3.3) | 57 (96.6) | 2 (3.4) | 30 (96.8) | 1 (3.2) | 0.967 |
Entire (X ± SD) | 75 (83.3) | 15 (16.7) | 48 (81.4) | 11 (18.6) | 27 (87.1) | 4 (12.9) | 0.487 |
Total (n = 90) | AF (n = 59) | PF (n = 31) | p-Value | |||||||
---|---|---|---|---|---|---|---|---|---|---|
PA [sten] X ± SD | 5.80 ± 2.27 | 5.31 ± 2.33 | 6.74 ± 1.86 | 0.008 * | ||||||
UBC [sten] X ± SD | 5.63 ± 2.22 | 5.29 ± 2.17 | 6.29 ± 2.21 | 0.031 * | ||||||
PC [sten] X ± SD | 5.79 ± 2.33 | 5.41 ± 2.35 | 6.52 ± 2.16 | 0.039 * | ||||||
Assessment of the Attractiveness Subscale: | Low | Medium | High | Low | Medium | High | Low | Medium | High | p-Value |
PA n (%) | 22 (24.4) | 47 (52.2%) | 21 (23.3) | 20 (33.9) | 27 (45.8) | 12 (20.03) | 2 (6.5) | 20 (64.5) | 9 (29.0) | 0.016 * |
UBS n (%) | 22 (24.4) | 47 (52.2%) | 21 (23.3) | 17 (28.8) | 33 (55.9) | 9 (15.3) | 6 (16.1) | 14 (45.2) | 12 (38.7) | 0.037 |
PC n (%) | 20 (22.2) | 50 (55.6) | 20 (22.2) | 16 (27.1) | 36 (61.0( | 7 (11.9) | 4 (12.9) | 14 (45.2) | 14 (41.9) | 0.004 * |
EAT-26 | Low | Average | High | p-Value | V Cramer |
---|---|---|---|---|---|
PA | |||||
No risk | 15 (20.0) | 41 (54.7) | 19 (25.3) | p = 0.085 | 0.234 |
Elevated Risk | 7 (46.7) | 6 (40.0) | 2 (13.3) | ||
UBS | |||||
No risk | 14 (18.7) | 43 (57.3) | 18 (24.0) | p = 0.014 * | 0.307 |
Elevated Risk | 8 (53.3) | 4 (26.7) | 3 (20.0) | ||
PC | |||||
No risk | 12 (16) | 46 (61.3) | 17 (22.7) | p = 0.005 * | 0.343 |
Elevated Risk | 8 (54.3) | 5 (26.7) | 3 (20.0) |
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Staśkiewicz-Bartecka, W.; Kardas, M. Eating Disorders Risk Assessment and Body Esteem among Amateur and Professional Football Players. Nutrients 2024, 16, 945. https://doi.org/10.3390/nu16070945
Staśkiewicz-Bartecka W, Kardas M. Eating Disorders Risk Assessment and Body Esteem among Amateur and Professional Football Players. Nutrients. 2024; 16(7):945. https://doi.org/10.3390/nu16070945
Chicago/Turabian StyleStaśkiewicz-Bartecka, Wiktoria, and Marek Kardas. 2024. "Eating Disorders Risk Assessment and Body Esteem among Amateur and Professional Football Players" Nutrients 16, no. 7: 945. https://doi.org/10.3390/nu16070945
APA StyleStaśkiewicz-Bartecka, W., & Kardas, M. (2024). Eating Disorders Risk Assessment and Body Esteem among Amateur and Professional Football Players. Nutrients, 16(7), 945. https://doi.org/10.3390/nu16070945