Research article - (2016)15, 606 - 615 |
Doping Attitudes and Covariates of Potential Doping Behaviour in High-Level Team-Sport Athletes; Gender Specific Analysis |
Damir Sekulic1,2,, Enver Tahiraj3,4, Milan Zvan5, Natasa Zenic1, Ognjen Uljevic1, Blaz Lesnik5 |
Key words: Performance-enhancing substances, knowledge, attitude, athletes |
Key Points |
|
|
|
Participants |
The participants were 457 athletes (179 females) involved in four sports: volleyball (n = 77; 39 females), handball (n = 103; 34 females), soccer (n = 163; 58 females) and basketball (n = 114; 48 females) from Kosovo. Although there are other team sports worth studying, in this investigation we have been focused on four most popular team-sports in the region. The sports were selected on a basis of three criteria: (i) Olympic sports, (ii) national-level league competition is organised both for males and females at senior (+18 years of age) and junior level, and (iii) Kosovar National teams are involved in international competitions (i.e. Kosovar national sport association is a member of International Federation). Kosovar athletes involved in competitions of the highest national level during the 2013–2014 competitive season (i.e. first division athletes) who were older than 18 years, were invited to participate in the testing by the Ministry of Culture, Youth and Sport of the Republic of Kosovo. None of the athletes refused to participate, and each team was tested in one day only to avoid communication between athletes. Therefore only those athletes who were present at the training on a testing day were included in investigation. The study complied with all ethical guidelines and received approval from the Institutional Ethics Review Board at the corresponding author’s institution (EBO 10/09/2014-1). |
Variables and measurement |
All of the variables were collected by a previously validated questionnaires: (i) Questionnaire of Substance Use (QSU) (Zenic et al., The QSU includes questions on socio-demographics, sport-factors, cigarette smoking, alcohol drinking, consumption of dietary supplements and doping-factors. The socio-demographic data included: age (in years), gender and education level (responses included “Elementary school”, “High school”, “College/university degree”). Athletes were asked about their dietary supplementation (“Regularly”, “Occasionally”, “No”), cigarette smoking (“Non-smoker”, “”Quitted”, “From time to time, but not daily”, “Daily smoking”) and binge drinking (“No, never”, Couple of times per year”, “Once a month or so”, “Once a week or so”). Sport factors were assessed by questions on: (i) the type of sport they were involved in (“Basketball”, “Soccer”, “Handball”, “Volleyball”); (ii) their experience in that sport (in years); and (iii) competitive results achieved in (iiia) junior-age level (until 18 years of age), and (iiia) senior-age level (+18 years of age; both: “Regional level”, National level”, “National team/international level”). Doping-related factors were assessed by asking participants their opinions about: (i) the occurrence of doping in the sport they were involved in (“I don’t think doping is used in my sport”, “Not sure about it”, “Occurs, but rarely”, “Doping is often in my sport”), (ii) number of doping testing (“Never tested on doping”, “Once or twice”, Three times and more”), and (iii) their potential doping behaviour (“I would engage in doping if it would help me”, “Not sure” and “I do not intend to engage in doping in future”). For the purposes of logistic analysis and calculating the odds ratios (ORs) (see the section on statistics), the athletes were divided into two groups: non-doping athletes (those who responded negatively to the question about potential doping behaviour; coded as 1) and doping athletes (those who responded positively; coded as 2). Those who answered “Not sure” were not included in these analyses. The KD questionnaire consisted of 10 questions. Each question (statement) was in a “true (T) or false (F)” format; if the answer was correct, the athletes scored one point. The final results ranged from 0 to 10. The correct answers were based on WADA standards. The questions were as follows: (1) Diuretics are considered doping because of their influence on body weight reduction (F); (2) Doping control officers should notify athletes of their testing intentions a few hours prior to any testing (F); (3) If an athlete has an out-of-competition doping test, four weeks should elapse before their next doping test (F); (4) If a doping control officer does not provide valid proof of identity, an athlete can refuse to participate in the testing (T); (5) A “masking agent” is someone who helps an athlete hide their use of doping and is therefore equally responsible for doping offences (F); (6) The use of amphetamines in cycling has been related to several cases of death due to cardiovascular failure (T); (7) The use of amphetamines by women is related to male-like changes in body appearance (F); (8) Synthetic testosterone (i.e., steroids) increases the quantity of erythrocytes and is therefore common in endurance sports and not prevalent in strength/power sports (F); (9) Use of synthetic testosterone (i.e., steroids) inhibits the production of natural (endogenous) testosterone (T); (10) When an athlete reports undergoing official medical treatment, he/she cannot be tested for doping (F). Knowledge on doping side effects was asked by items 5, 6, 7, 8 and 9, while items 1, 2, 3, 4 and 10 targeted the knowledge on anti-doping regulations. The KSN consisted of test questions using the same evaluation system as previously explained for KD. The KSN questions were as follows: (1) The negative side effects of excessive sweating are best cured by drinking pure water (F); (2) After a competition day is over, it is better to not eat for 4 hours after a competition (F); (3) Dark yellow urine is a sign of proper hydration of the body (F); (4) For the first meal after a match, chicken breast (white meat) and eggs are a better choice than pasta (F); (5) Dried fruit is an excellent source of carbohydrates (T); (6) Protein supplementation requires an increased intake of water (T); (7) Fresh fruit and vegetables are the best source of high-quality proteins (F); (8) Egg yolk and poultry are a valuable source of vitamins B and C (F); (9) Carbohydrate-laden meals should be avoided before matches because they encourage urination and therefore dehydration (F); (10) A decrease in body weight as a result of a single training day indicates dehydration (T). Items 1, 3 and 10 examined knowledge of hydration/dehydration; questions 2, 4 and 6 targeted knowledge of nutrition strategies aimed at recovery; and questions 5, 7, 8 and 9 were general questions about knowledge of nutrition. The KSN is based on recent literature in the field of sport nutrition (Maughan and Shirreffs, The PEAS questionnaire consisted of the following 17 questions: (1) Doping is necessary to be competitive; (2) Doping is not cheating since everyone does it; (3) Athletes often lose time due to injuries and drugs can help to make up the lost time; (4) Only the quality of performance should matter, not the way athletes achieve it; (5) Athletes in my sport are pressured to take performance-enhancing drugs; (6) Athletes who take recreational drugs use them because they help them in sport situations; (7) Athletes should not feel guilty about breaking the rules and taking performance-enhancing drugs; (8) The risks related to doping are exaggerated; (9) Athletes have no alternative career choices, but sport; (10) Recreational drugs give the motivation to train and compete at the highest level; (11) Doping is an unavoidable part of competitive sport; (12) Recreational drugs help to overcome boredom during training; (13) There is no difference between drugs and speedy swimsuits that are all used to enhance performance; (14) Media should talk less about doping; (15) The media blows the doping issue out of proportion; (16) Health problems related to rigorous training and injuries are just as bad as from doping; (17) Legalising performance enhancements would be beneficial for sports. For each question an athlete responded on a six-point scale from “strongly disagree” to “strongly agree”, resulting in theoretical scale ranging from 17 to 102. Testing was conducted in groups of at least five athletes who were informed that the survey was strictly anonymous, they could refuse to participate, they could leave some of the questions and/or the entire questionnaire unanswered and that returning the completed questionnaire was considered consent to participate in the study. After testing, the questionnaires were placed in a sealed box that was opened the day after the testing. For those athletes who participated in the testing, the response rate was higher than 99%, and only three athletes returned the questionnaire unanswered. For the purposes of this study, the questionnaires were translated into the Albanian language and the reliability of all questionnaires was tested among 17 athletes who had responded to the questionnaire twice in the time frame of two weeks. The percentage of equally answered statements in the QSU was 89%, with a test-retest correlation of 0.90 for KD, 0.86 for KSN and 0.90 for PEAS, demonstrating appropriate reliability of the measurement tool. Different types of validity for the questionnaires are extensively reported in previous studies (Kondric et al., |
Statistical analyses | |
All variables were checked for normality of the distribution by Kolmogorov Smirnov’s test. Further, statistics included counts and frequencies (for nominal and ordinal variables), and/or means and standard deviations (for continuous variables). The differences for doping likelihood were assessed by calculating the odds ratio (OR) and 95% confidence interval (95%CI). ORs were calculated as follows:
where DA presents athletes with positive attitude toward doping, NDA – athletes with negative attitude toward doping, and subscripted numbers present each of the compared groups (McHugh, A t-test and analysis of the variance (F-test) were used to establish differences for continuous variables (age, experience, KD, KSN, PEAS) between genders and sports. Mann-Whitney test was used to establish differences for ordinal variables (i.e. Sport achievement/result, Smoking cigarettes, Binge alcohol drinking). The association between PEAS and potential doping behaviour as measured by SUM questionnaire was assessed by calculating Spearman’s rank order correlations. Simple logistic regressions were calculated to define the associations between covariates (socio-demographic-factors, sport-factors, doping-related factors, PEAS, KSN and KD) and a binomial criterion – doping likelihood (see above for details). Previous studies have found that athletes’ personal opinion about the presence of doping in sports as strongly associated doping behaviour in various sports, while WADA statistics have reported significant differences among sports in positive findings on doping substances (Kondric et al., |
|
|
Despite some significant age differences (i.e. the volleyball athletes were somewhat older than the other athletes; F test: 10.62, p < 0.01), the athletes were actually of a similar age (21.31 ± 3.50 years, 21.06 ± 2.77 years, 23.61 ± 2.89 years, and 22.02 ± 3.92 years for basketball, soccer, volleyball and handball, respectively). The experience in sport was equal across sports (8.01 ± 4.01 years of experience on average; F test: 0.55, p > 0.05). Athletes involved in different sports achieved similar results for KSN (2.15 ± 1.40) and KD (4.02 ± 2.00), with no significant differences between sports (F test: 0.99 and 0.94, p > 0.05, for KD and KSN, respectively). The highest prevalence of doping likelihood was found for basketball (60% athletes who declared negative tendency toward doping in future), followed by handball (negative tendency: 61%), soccer (negative tendency: 63%) and volleyball (negative tendency: 67%). There was no difference between genders in age (21.84 ± 3.51 and 21.98 ± 3.18, t-value: -0.41, p > 0.05), experience in sport (8.23 ± 3.75 and 7.70 ± 3.21, t-value: 1.80, p > 0.05), KD (2.11 ± 1.31 and 2.20 ± 1.67, t-value: 1.21, p > 0.05), and KSN (4.01 ± 2.20 and 4.04±1.90, t-value: 0.12, p > 0.05; for males and females, respectively). The PEAS score was higher in males than in females (46.12 ± 11.43 and 41.54 ± 14.11; for males and females, respectively; t-value: 2.11, p < 0.05). Female athletes were better educated (MW: 2.31, p < 0.05), and achieved a better sport result at senior level (MW: 2.13, p < 0.05). In overall, the 86% of athletes had never been tested for prohibited substances (doping), and about 60% believed that doping is not prevalent in their sport. Females are less convinced that doping is prevalent in their sport than males (MW: 2.01, p < 0.05) ( Males were more prone to doping than females (OR: 1.6; 95%CI: 1.0-2.6). When observed for each sport separately, significant differences in odds toward potential doping behavior were found for basketball (OR: 2.9; 95%CI: 1.1-7.6), and handball (OR: 3.2; 95%CI: 1.1-9.4), with no significant difference between genders for soccer (OR: 1.1; 95%CI: 0.4-3.4), and volleyball (OR: 1.2; 95%CI: 0.5-2.9) ( The high correlation between PEAS and doping likelihood (0.87 and 0.89 for males and females, respectively; p < 0.05) indicated that those two variables share more than 70% of the common variance, and both actually identify attitudes to doping (i.e. performance-enhancing substances). When calculated for male athletes, logistic regressions indicated higher odds of doping behaviour in those who had achieved a National team/International level (i.e. highest) sport result at junior level (Model I: OR: 1.54, 95%CI: 1.11-2.31; Model II: OR: 1.55, 95%CI: 1.10-2.01; Model III: OR: 1.49, 95%CI: 1.11-2.00), who consume dietary supplements regularly (Model I: OR: 1.21, 95%CI: 1.03-1.78; Model II: OR: 1.20, 95%CI: 1.02-1.76; Model III: OR: 1.20, 95%CI: 1.02-1.77) and those who believe that doping is frequent in their sport (Model I: OR: 3.00, 95%CI: 1.41-2.79; Model II: OR: 2.53, 95%CI: 1.67-3.11). A lower likelihood is evidenced for those male athletes who had achieved a higher competitive result at senior level (Model I: OR: 0.65, 95%CI: 0.22-0.76; Model II: OR: 0.65, 95%CI: 0.23-0.99; Model III: OR: 0.61, 95%CI: 0.31-0.98) ( In females, a higher likelihood of doping is evidenced for those who binge drink alcohol frequently/once a week or so (Model I: OR: 1.53, 95%CI: 1.04-2.98; Model II: OR: 1.52, 95%CI: 1.05-2.99; Model III: OR: 1.52, 95%CI: 1.06-3.00). A lower doping likelihood is found in older female athletes (Model I: OR: 0.87, 95%CI: 0.77-0.99; Model II: OR: 0.87, 95%CI: 0.75-0.99; Model III: OR: 0.86, 95%CI: 0.75-0.99) and those with better knowledge on sport nutrition (Model I: OR: 0.71, 95%CI: 0.58-0.88; Model II: OR: 0.71, 95%CI: 0.58-0.88; Model III: OR: 0.69, 95%CI: 0.56-0.87) ( |
|
|
This is one of the first studies to have specifically investigated factors associated with doping behaviour in females and males involved in team sports. The obtained results allow a meaningful comparison of potential doping behaviour and its covariates in these sports. Although the results allow a broad discussion of the problem, below we will mostly focus on those findings directly related to our study aims. Therefore, we will discuss: (i) prevalence and differences in doping likelihood between genders and sports; and (ii) gender-specific factors associated with potential doping behaviour. First, we will shortly overview the results obtained via the questionnaire that examined knowledge on doping. Generally, knowledge on doping is low. In brief, the team-sport athletes observed herein achieved the lowest results of all athletes from the region (territory of former Yugoslavia) who had been previously tested with the same questionnaire, including swimmers, synchronised swimmers, and rugby union players (Furjan Mandic et al., |
Doping likelihood |
The prevalence of doping likelihood (i.e. altogether, 63% of the athletes declared a negative tendency concerning doping) is within the expected values. In brief, previous studies using the same questionnaire (i.e. QSU) reported a similar tendency among racquet sport athletes (Kondric et al., Studies conducted so far indicate several possible reasons for differences in attitudes to doping between sports. In some investigations, individual sports (i.e. track and field, cycling etc.) are highlighted as ‘higher risk’ activities than team sports (handball, basketball etc.) (Lazuras et al., In short, of those sports studied so far the highest tendency for doping is evident in sports with high anaerobic demands, which at the same time are activities with a big risk of injury, either because of the tackle character of the game (i.e. rugby) or the extremely high intensity of the workload (i.e. weight lifting) (Rodek et al., When observed for the total sample (i.e. not dividing by sports), the prevalence of potential doping behaviour is higher in males. This is in accordance with previous studies that reported male athletes as being generally more permissive of doping behaviour than females (Alaranta et al., Studies performed so far have regularly reported that one’s personal opinion about the presence of doping in the sport is a strong predictor of doping behaviour (Rodek et al., While in basketball and handball males are more prone to doping, there was no significant gender-difference for potential doping behaviour in volleyball and soccer. The negative tendency for doping in volleyball is the highest of all studied sports, and this probably explains even the non-significant differences in doping tendency between genders for this sport. Meanwhile, the similar prevalence of doping likelihood in males and females involved in soccer is at least partially a consequence of the specific socio-cultural environment that characterises this sport. In short, soccer is generally perceived as a ‘male sport’, and of the more than 265 million players in the world, only 10% are women (FIFA). It is possible that this fact to some extent influence even a stronger tendency toward doping among female soccer players than among female athletes in other team sports observed herein. |
Predictors of doping behaviour |
Previous studies have regularly reported a higher doping likelihood in those athletes who are convinced that doping is present in their sport (Rodek et al., High consumption of dietary supplements in males is recognised as a risk factor for doping behaviour. This finding is in line with previous studies where athletes who were engaged in legal performance-enhancement practices (i.e. dietary supplementation) are recognised as an ‘at-risk’ group for making a transition towards doping (Backhouse et al., The consumption of ‘everyday substances’ such as alcohol and cigarettes as a potential covariate of doping behaviour in athletes is studied since recently (Kondric et al., Females who achieved higher scores on KSN are less likely to engage in doping in future. This is not the first study to report a lower doping likelihood in athletes who possess better knowledge on sport nutrition, and similar results were presented previously for tennis players (Kondric et al., |
Limitations and strengths of the study |
The main study limitation is the cross-sectional study design. Accordingly, the results of the statistical analyses indicate an association, but causality cannot be determined. Additionally, the number of male athletes was somewhat greater than that of female athletes. As a result, achieving statistical significance of the calculated coefficients for female athletes was difficult. Additionally, this study is done in only one country of specific cultural and social background, and where doping controls are not common. Therefore, generalizability of the results is somewhat limited. Finally, questionnaires were self-administered and athletes could naturally lean to socially desirable answers. However, we believe that strict anonymity of the testing decreased the possibility that participants did not answer honestly. This is one of the first studies that examined the problem of doping behaviours and it’s covariates in team-sport athletes. Also, the studies done so far that used the same methodological approach allowed us to make a reasonable comparison with previous results. Therefore, we believe that findings, although not the final word on a problem contribute to the knowledge on a field. Knowing the strong connection between athletes with their coaches and physicians, similar analyses in athletes’ supportive teams are necessary. Also, in future studies it would be important to consider other approaches and theories (i.e. theory of planned behaviour, social-cognitive theory) in studying the problem of doping behaviour in team sports. |
|
|
The doping knowledge among Kosovar team-sport athletes is very low. Therefore, systematic anti-doping education is urgently needed. It should include: (i) topics on doping health hazards; and (ii) anti-doping regulations and policy. While the first topic is important due to awareness of doping as health-threatening behaviour, the second one is necessary to objectively inform athletes about their responsibilities, while also introducing them to the set of rights they have with regard to the global anti-doping programme. The highest risk of doping behaviour in males is found for those athletes who had been successful in their junior age and those who consume dietary supplements. Binge drinking is found as a risk factor for doping tendency in females. Therefore, in developing preventive programmes against doping, these most vulnerable groups of athletes should be specifically targeted. Our results suggest that an improvement of knowledge on sport nutrition might be a potentially effective method for reducing the tendency for doping in female team-sport athletes. The results show that the associations between the studied factors and doping behaviour are different between males and females. Therefore, the gender-specific approach to exploring the covariates of doping behaviour is warranted. |
AUTHOR BIOGRAPHY |
|
REFERENCES |
|