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Article

The Motivational Level of Performance Swimmers and Its Impact on the Risk of Sports Dropout

Faculty of Physical Education and Sport, National University of Physical Education and Sports, 060057 Bucharest, Romania
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Author to whom correspondence should be addressed.
Sports 2025, 13(4), 125; https://doi.org/10.3390/sports13040125
Submission received: 10 March 2025 / Revised: 2 April 2025 / Accepted: 10 April 2025 / Published: 17 April 2025

Abstract

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Background: Motivation is a crucial factor in maintaining athletic performance and preventing dropout among competitive athletes. This process is influenced by both physical and psychosocial factors, which interact and shape decision—making regarding continued participation or withdrawal from sports. Aim: This study examines the motivational level of competitive swimmers in Romania, related to the dropout perspective. Methods: In order to conduct the research, the AMI (Achievement Motivation Inventory)—a validated psychometric tool was used in two distinct phases, conducted six months apart. The study included N = 20 swimmers, finalists and medalists in national swimming competitions. The intervention consisted of motivational coaching, personalized training plans, and the development of mental skills. Results: The results highlighted significant improvements in dimensions such as success confidence, compensatory effort, and goal-setting, indicating the positive effects of the intervention on athletes’ motivation. Inferential analysis using Student t-test confirmed significant differences between the initial and final assessments, for eagerness to learn (p = 0.035), status orientation (p = 0.03) and the Wilcoxon test revealed significant difference for general motivational index (p = 0.020). Conclusions: The findings underscore the importance of psychological approaches in training high-performance athletes, showing that maintaining motivation and clarifying goals are essential factors in preventing sports dropout. The conclusions of this research can serve as a foundation for developing coaching strategies aimed at supporting continuity in performance swimming and reducing the dropout rate among competitive swimmers. Our findings confirm similar studies emphasizing the role of the training patterns and coach influence not just on the performing athlete, but also on his psychosocial individual development.

1. Introduction

Sports dropout is a challenging topic in high-performance sports, especially in disciplines such as swimming, which require rigorous training and strong mental resilience. Sports dropout refers to the voluntary, conscious, and premature decision of athletes to discontinue systematic training and competition participation before reaching their full potential. Some experts suggest that the reasons for participation and withdrawal from sports may not be directly connected and emphasize the importance of understanding the processes young athletes go through before quitting sports. These processes are influenced by both physical factors (maturation level, training patterns) and psychosocial factors (coaches, parents, siblings, peers), which interact and shape decision-making regarding continued participation or withdrawal from sports [1].
The decentering concept, mentioned by Diotaiuti, Valente, Corrado & Mancone (2023) is like a mental technique, which helps athletes to step back from negative emotions and convert stressful situations in opportunities to further develop their sport career, alleviating the dropout tendency [2].
Existing studies highlight that motivation plays a central role in developing athletic skills and achieving competitive goals, being influenced by factors such as the training environment, social support, personal objectives, and the perception of success [3,4]. Authors like Rocchi & al (2020) analyzed athletes’ perceptions of coaches’ behaviors and their motivation, as predictors of future sport results [5].
To date, most research on sports withdrawal has relied on two main theoretical frameworks: achievement goal theory and self-determination theory [6]. Researchers have, thus, sought to analyze coping strategies and achievement motivation dimensions among elite athletes, considering these variables as essential resources for optimal performance in sports. Achievement motivation not only aids in reaching higher goals but also in sustaining long-term engagement in sports [7], particularly in light of the changes observed among adolescents and experienced athletes who drop out of competitive sports for various reasons. In this context, sports dropout can be seen as a maladaptive behavior resulting from low self-determination [8], influenced by interpersonal relationships and specific circumstances [3]. These two theories provide a perspective on children’s and adolescents’ motivation to engage, persist, or withdraw from sports.
In individual sports such as swimming, athletic motivation is frequently assessed and monitored to prevent declining interest and potential dropout issues often reported in international endurance sports research [9,10].
Competitive swimming requires constant commitment and a high level of self-discipline. Therefore, young athletes often face challenges in balancing academic demands with intense training schedules, which can lead to demotivation and premature dropout. The study by Fraser-Thomas et al. (2008) highlights factors contributing to sports dropout, including lack of time, performance stagnation, health issues, and the perception of an overly demanding training environment. In this context, motivational testing becomes a crucial tool for identifying risk factors and implementing timely interventions to prevent sports dropout [11].
This phenomenon in high-performance sports poses a major challenge for coaches and sports clubs, with long-term implications for athletes’ physical and psychological well-being.
The findings of Pissaniello A. et al. (2024), in Italy, reinforce the need for a balanced and supportive sports framework that prioritizes young athletes’ well-being (age 8–13), ensuring they can fully experience the physical, psychological, and social benefits of sports participation [12].
Interventions aimed at increasing motivation can have a significant impact on athletes’ performance and their decision to continue practicing high-performance sports. A positive training environment focused on personal development and long-term goal setting can prevent burnout and encourage athletes to maintain their sports careers. The study of Beaudoin C. et al. (2015) underscores the importance of the Long-Term Athlete Development (LTAD) model as a foundational framework for Canadian sport, with widespread adoption among sport governing bodies [13]. Overall, while the LTAD model presents a valuable approach to long-term athlete development, its full integration requires stronger institutional support, clearer practical applications, and ongoing research to validate its effectiveness across all sports disciplines.
The present study is particularly relevant for Romania, where the phenomenon of sports dropout among performance swimmers represents a major challenge for coaches and sports clubs.

2. Materials and Methods

The purpose of this research is to analyze the motivational levels of competitive swimmers in Romania and to assess the impact of a personalized coaching intervention on sports motivation using the Adolescent Motivation for Interpersonal and Achievement Scale test (AMI), adapted for Romania under AMI license OL-00011862/2024-01-30.
Hypothesis. 
A structured psychological intervention on the performance swimmers within the precompetitive period will help enhance the motivational dimensions revealed in the AMI scale test.
The study seeks to identify motivational changes recorded across two distinct testing phases, conducted six months apart, as well as to highlight the factors that contribute to maintaining athletic performance and preventing sports dropout. This research aims to provide practical recommendations for coaches and sports specialists by developing personalized coaching programs designed to support long-term engagement in sports and reduce dropout rates among adolescent swimmers.
At the core of our intervention is the G.R.O.W. model (Goal, Reality, Options, and Will), which guided athletes in goal setting and action planning. Through brainstorming sessions and individual discussions, athletes were encouraged to explore their options, analyze their strengths, and develop personalized strategies to enhance their performance. In the final stage of the model, athletes committed to implementing their action plans, with ongoing support from their coaches throughout the process.
The AMI is a validated psychometric tool used to assess athletes’ motivation. In this study, the initial AMI testing was conducted in January 2024 via the Test Central platform. The participant group included 20 competitive swimmers, consisting of 10 female and 10 male athletes, aged 16 to 22 years, all of whom were finalists or medalists in national swimming competitions. The research did not aim at comparing the gender oriented motivational dimensions, but intended to emphasize the progress for each group, after the experimental period.
The final testing took place in July 2024, using the same platform and methodology.
These findings highlight the diversity of factors influencing athletes’ decisions to withdraw from competitive sports, emphasizing personal, professional, performance-related.
During the research, it was observed that some athletes withdrew from the project or even from competitive swimming altogether. Of the 20 participants who initially took the AMI test, five athletes (two boys and two girls) later dropped out. The reasons cited (Table 1) align with findings from other studies on the determinants of sports dropout among young athletes [14]. The findings of the systematic review conducted by Back J. et al. (2022) highlight the crucial role of motivation and sport experience in preventing dropout among adolescent team sport athletes [15]. The results emphasize the need for sports organizations, coaches, and parents to foster a high-quality motivational climate that satisfies athletes’ psychological needs and encourages long-term commitment. The strongest predictors of dropout were related to self-determined motivation, attitudes, and social norms, reinforcing the importance of autonomy-supportive environments. Additionally, the study identifies a gap in prospective research on dropout determinants, underscoring the necessity for further investigations. Implementing educational programs for coaches focused on autonomy-supportive coaching strategies can significantly enhance athlete retention and mitigate dropout risks.
A systematic review by Monteiro et al. (2017) stated that regardless of the research design of the analyzed studies, the main reasons related to dropout in swimming include: conflicts with coaches’ failure in competence improvement, parents’ pressure, lack of fun, boredom, etc [16]. Thus, preventing dropout has to address its determinants, in the long run.
Although objective performance is important, and the ultimate goal is to improve athletic results, the primary objective of our research was to evaluate the psychological components of sports dropout.
The low number of athletes participating in the AMI testing can be explained by the fact that competitive swimming in Romania is a niche sport, with a limited number of athletes reaching a high competitive level. As presented in Table 2, there is a certain dynamics of the number of participants in the National Swimming Championships for Seniors, Youth, and Juniors, but only a small fraction make it to the finals and win medals.
Under these circumstances, the study group represents the top tier of this age category, consisting exclusively of finalists and medalists at national competitions. Therefore, the small number of participants is justified by the fact that few athletes meet the performance profile targeted by the research, which adds relevance and specificity to the obtained results. Additionally, these athletes exhibit a higher level of motivation, focused on performance, and follow a relatively uniform athletic lifestyle, characterized by a comparable training schedule and educational path. By analyzing this specific group, we aimed to gain deeper insights into the factors contributing to their success, as well as the challenges they face.
The AMI test (extended version) includes 170 items, with responses recorded on a 7-point Likert scale. The results are grouped into 17 structural scales, and a global motivational index is calculated. The test administration time varies from 10 to 30 min (TestCentral—D&D Consultants Grup—O.S. Organizzazioni Speciali Romania).
The standard, brut and stanine score, raw score, and stanine score are terms used in the evaluation and interpretation of AMI test results and serve as psychological measurement tools. These terms are employed to compare and interpret an athlete’s individual performance against a given norm or reference distribution.
Based on the analyzed AMI test data, we implemented coaching techniques to improve the athletic training plan. The AMI test battery specifies that perseverance and athletic performance variables do not have a direct significant relationship, but we can still adjust training sessions to maximize athletic potential.
Awareness is essential in any athletic activity, as it provides control over reality and allows athletes to understand and improve their performance. In competitive sports, kinesthetic awareness—the ability to perceive one’s own body movements—is crucial. It helps athletes detect and quickly correct inefficiencies in their movements, leading to smoother and more efficient technical execution.
In order to enhance motivation, increase awareness of the training process, and improve relationships among teammates and with the coach, we evaluated and implemented the following strategies in the 2024 athletic training plan (Appendix A, Table A1b).

2.1. Motivation and SMART Goals (Mesostructure 7, January 22–March 31)

During this period, we implemented SMART goals (Specific, Measurable, Achievable, Relevant, and Time-bound) on short, medium, and long-term levels for each athlete, based on previous progress and individual objectives. This phase began immediately after the first AMI test in January, providing each athlete with clarity and direction.
The standard, brut and stanine score were essential tools for tracking development.

2.2. Constructive Feedback and Self-Assessment (Mesostructure 8, April 1–April 14)

Providing continuous and constructive feedback became central. After each major training session, athletes received personalized feedback focused on individual progress. Additionally, at the end of each mesostructure, we organized group reflection sessions, where athletes analyzed their performances and set new objectives for the upcoming period.

2.3. Awareness and Mental Visualization (Mesostructures 7 and 8)

To improve focus and technique, we introduced mental visualization sessions once per week. During these sessions, athletes visualized the perfect execution of swimming techniques, race progressions, and even the moment of victory.
We also introduced mindfulness training or short meditation sessions after important training sessions to manage stress and enhance concentration.

2.4. Team Building and Communication with the Coach (Mesostructure 7, January 22–March 31)

Team communication and relationships are essential for long-term success. We organized monthly team-building activities, such as trips or team games, to strengthen bonds among athletes. Additionally, we encouraged open communication between athletes and coaches through periodic discussion sessions, where athletes could give and receive feedback in a non-judgmental environment.

2.5. G.R.O.W. Model Integration

Team communication and relationships are essential for long-term success. We organized monthly team-building activities, such as trips or team games, to strengthen bonds among athletes. Additionally, we encouraged open communication between athletes and coaches through periodic discussion sessions, where athletes could give and receive feedback in a non-judgmental environment.
We also integrated the G.R.O.W. Model (Goal, Reality, Options, and Will), which helped athletes clarify their current situation, define their objectives, identify obstacles, and develop strategies to overcome them. This model was applied at the beginning of the preparation period and before competitions, enhancing confidence and performance.
By implementing these strategies in Macrostructure II, we aimed to provide each athlete with technical, psychological, and relational support, preventing dropout and improving both individual and team performance.
The interpretation of the AMI profile, which includes the analysis of scores for each scale, provides a detailed and coherent description of individual motivation for performance. This interpretation allows for the identification of intra-individual differences and specific aspects of performance motivation. Individuals with high scores on the general motivational index are often determined and motivated, displaying perseverance, a willingness to exert effort, and a strong belief that their own effort and abilities generate the desired results. These individuals may be confident in their abilities and personal success, or they may experience a fear of failure—both situations motivating them to put in additional effort.
For the statistical processing of the study data, the software IBM SPSS Statistics for Windows, Version 29.0 (Armonk, NY, USA: IBM Corp.) was used. Nominal data were presented as absolute frequency and percentage, while continuous variables were expressed through mean values, standard deviation, minimum, and maximum values.
In order to compare two sets of dependent or paired data, we used the Wilcoxon test, a nonparametric test, since the data did not meet the normality assumptions required for the paired-sample t-test. The Wilcoxon test is typically applied when two measurements are taken from the same subjects (e.g., before and after implementing an intervention plan) to assess whether a significant difference exists between the two measurements.
For comparing the means of parameters between groups, the Kruskal–Wallis H test was used, given that the variables exhibited a non-Gaussian distribution. A statistical significance coefficient of p < 0.05 was considered valid.

3. Results

We analyzed the descriptive and statistical results from two testing sessions to highlight significant differences in the scales, separating the two genders, female and male, by first examining the standard score. These are normalized scores with a mean of 100 and a standard deviation of 10, obtained by standardizing the raw scores. Standardized scores facilitate easier comparisons between different datasets and with other samples.
An increase in self-confidence, measured through the success security item (from 98.52 to 105.38), indicates an improvement in athletes’ confidence in their ability to achieve positive results, which can lead to enhanced competitive performance (Table 3 and Table 4).
An increase in the eagerness to learn (from 101.97 to 108.30) suggests a heightened interest in personal development and technical skill improvement—an essential factor in high-performance sports.
The clarification of personal goals, reflected by the goal-setting score (from 99.41 to 107.13), represents a key factor in maintaining long-term motivation.
Perseverance, fearlessness, flexibility, and dominance remained relatively constant, indicating the need for different strategies to stimulate these aspects. These traits may be harder to influence in the short term and are often affected by external factors such as competition-related stress, family environment, and peer relationships.
Results highlight the positive effects of the intervention and provide a foundation for optimizing future strategies (Figure 1).
The Shapiro–Wilk test checks whether a variable follows a normal distribution. A p-value < 0.05 suggests that the variable does not meet the normality assumptions. Levene’s Test for Homogeneity of Variance checks if different groups have equal variances (a key assumption in ANOVA and other parametric tests). A p-value < 0.05 illustrates significant difference in variances and the assumption is not met.
Indicators that do not meet the assumption of normality are as follows: Pride in Productivity (W = 0.867, p < 0.001), Independence (W = 0.94, p = 0.05), right on the borderline and General Motivational Index (W = 0.937, p = 0.04).
For all variables that meet the assumption of normality and homogeneity of variance parametric tests (e.g., t-test, ANOVA, Regression, etc.) are recommended. For the variables that do not meet these criteria (Pride in Productivity p = 0.001 and General Motivational Index p = 0.04), non-parametric tests are recommended (Wilcoxon rank, Kruskal–Wallis)
Results (Table 5 and Table 6) highlight the positive effects of the intervention and provide a foundation for optimizing future strategies.
To examine whether there are statistically significant differences between two independent groups on various psychological/motivational indicators, the criteria to be met are p-value < 0.05 → statistically significant difference between groups and Cohen’s d → effect size, i.e., the practical importance of the difference: 0.2 = small, 0.5 = medium, 0.8 = large.
Table 6 presents Student t-test for variables with normal distribution and the Wilcoxon test for variable with non-normal distribution. The results emphasize that only three indicators show both statistical significance (p < 0.05) and moderate-to-strong effect sizes, indicating real and meaningful group differences: Desire to Learn (p = 0.03, d = −0.7345) has a medium-to-large Cohen effect, meaning a statistically and practically relevant difference, Status Orientation (p = 0.030, d = −0.7588) has a medium-to-large, meaning significant and impactful difference in scores, and General Motivational Index (p = 0.02 d = −0.62) has a medium-to-large group means differ significantly. The overall increase in motivation is significant, indicating the success of the intervention.
While not strictly significant, there are variables that show moderate effect sizes and should not be dismissed, especially in exploratory or applied research contexts. These variables include Self-Control/Self-Discipline (p = 0.080, d = −0.604), which shows a moderate effect; worth investigating further is the Goal Setting (p = 0.085, d = −0.596), which shows close to significance; moderate impact.
The remaining indicators (e.g., Perseverance, Dominance, Absorption, Fearlessness, etc.) did not yield significant p-values (p > 0.10) and have small or negligible effect sizes, suggesting group means are statistically and practically similar.

3.1. Significant Increases After the Intervention in Male Subjects (Table 7, Figure 2)

  • Dominance: the increase between the two tests (103.91 → 108.82) indicates a significant improvement in self-confidence and the athletes’ willingness to take initiative in difficult situations (p = 0.05). This progress suggests that the intervention contributed to developing leadership traits and enhancing athletes’ ability to make effective decisions under pressure.
  • Confidence in Success: the improvement in confidence in achieving set goals (105.43 → 111.17, p = 0.05) may be attributed to psychological interventions that emphasized the importance of positive thinking and effective goal-setting strategies.
  • Compensatory Effort: the significant increase in compensatory effort (p = 0.012) indicates that athletes are more willing to put in extra effort to overcome obstacles and challenges. This improvement is essential in high-performance sports, where resilience and the ability to cope with challenges are critical.
  • Goal Setting: the significant improvement in goal setting (p = 0.025) indicates that athletes set clearer and more ambitious goals. This also includes the ability to develop effective strategies to achieve these goals. The progress may be attributed to interventions that emphasized the importance of planning and setting short-, medium-, and long-term objectives.
  • Pride in Productivity: p = 0.021; the significant improvement in performance pride reflects increased satisfaction with their achievements. This can lead to stronger intrinsic motivation and a greater desire to continue progressing.
  • Eagerness to Learn: p = 0.017; the increase in the desire to learn indicates greater openness among athletes to improve their skills and learn from new experiences, as well as their receptiveness to feedback.
  • Status Orientation: p = 0.017; status orientation has significantly increased, indicating that athletes are more motivated to improve their position and recognition within the group or competitions.
  • General Motivational Index: p = 0.012; athletes exhibit a stronger motivation to achieve high performance and remain engaged in their sport. This aspect is crucial for maintaining long-term commitment and reducing the risk of sports dropout.
Table 7. Descriptive Analysis—Male Group (Initial and Final Testing).
Table 7. Descriptive Analysis—Male Group (Initial and Final Testing).
Indicators N Mean Standard Deviation Minimum Maximum
Dimensions IFIFIFIFIF
Perseverance/Persistence 108100.6998.6314.6214.2382.3482.34122.23119.57
Dominance 108103.90108.8110.9110.8092.48100.20123.35127.98
Commitment/Engagement 108109.91110.519.2812.7596.6595.19127.26128.72
Confidence in Success 108105.43111.1610.4212.8191.7595.94122.47129.46
Flexibility 10897.76104.079.8196.86986.6091.91113.19114.96
Absorption/Flow 108105.00108.527.90914.5495.5788.73116.09128.40
Fearlessness 10895.9197.10815.4916.6074.5885.66125.83131.37
Internality 108104.12106.7612.0911.3085.2591.83123.33123.33
Compensatory Effort 108106.81114.0812.009.29488.05107.11126.17129.11
Pride in Productivity 108106.74112.925.9013.07596.73109.25114.26116.76
Eagerness to Learn 10898.30112.1516.2913.2968.3197.15122.15133.69
Preference for Difficult Tasks 108104.19105.6017.0316.0885.0481.21134.85131.02
Independence 108100.91105.2211.3910.5686.0592.80118.14123.21
Self-Control/Self-Discipline 10895.10101.058.53314.4283.8682.42109.80128.53
Status Orientation 108102.28110.957.9638.6692.38102.54115.25122.87
Competitiveness 108101.37105.3314.7713.7575.8889.89124.90127.70
Goal Setting 108103.46111.5310.9114.1587.7592.61118.54134.75
General Motivational Index 108103.62110.3711.1513.2490.9695.93126.03134.11
Figure 2. Descriptive analysis of test 1 and 2 results based on Male subjects on the overall mean score.
Figure 2. Descriptive analysis of test 1 and 2 results based on Male subjects on the overall mean score.
Sports 13 00125 g002

3.2. Observable Improvements After Intervention in Female Subjects (Table 8, Figure 3)

  • Perseverance: 95.17 → 99.30; the increase in perseverance reflects an improvement in intrinsic motivation and mental resilience among athletes. A higher level suggests that athletes become more capable of achieving long-term goals and overcoming difficult moments in their careers.
  • Dominance: 97.11 → 102.32; this increase suggests a significant improvement in self-confidence and athletes’ willingness to take an active and dominant role in competitions. Athletes become more comfortable asserting their position and making decisions under pressure.
  • Goal Setting: 95.37 → 102.74; in high-performance sports, goal setting is crucial for improving results. The fact that athletes have become more efficient in establishing and pursuing their objectives has contributed to the improvement of other motivational scales, fostering a winning mindset.
The difference between the two genders may indicate that male athletes are more receptive to the implemented interventions or that the coaching strategies were more effective for them. In contrast, female athletes might require different techniques to generate significant changes in motivation and performance.
For female athletes, the Wilcoxon test (Table 8) did not reveal statistically significant changes. This suggests that the applied intervention did not have a strong enough impact on the measured psychological variables for this group.
Table 8. Descriptive Analysis—Female Group (Initial and Final Testing).
Table 8. Descriptive Analysis—Female Group (Initial and Final Testing).
Indicators N Mean Standard Deviation Minimum Maximum
Dimensions IFIFIFIFIF
Perseverance/Persistence 10895.1799.2978.4139.20779.6886.33106.28112.93
Dominance 10897.11102.3211.667.04678.6092.48109.46114.09
Commitment/Engagement 10895.33103.207.02213.1083.5386.44103.94122.89
Confidence in Succes 10891.6099.60211.1811.0173.5987.56109.90114.09
Flexibility 10898.1195.4616.5949.89584.8277.73106.10109.65
Absorption/Flow 10899.11104.469.0879.97480.5291.46113.35124.30
Fearlessness 10893.4293.63019.1811.6062.1275.97124.45113.37
Internality 108103.12105.737.1878.80286.9093.53113.39118.36
Compensatory Effort 10897.14102.5215.5115.4861.6682.18114.44129.11
Pride in Productivity 10898.48105.4912.438.46267.9594.23114.26115.51
Eagerness to Learn 10895.03100.278.13011.3581.7781.77106.77116.38
Preference for Difficult Tasks 10894.2399.6410.328.44075.4690.79106.11117.61
Independence 10894.4998.718.5757.44687.7482.67111.39106.32
Self-Control/Self-Discipline 10889.9196.105.99110.4783.8679.54104.03114.12
Status Orientation 10895.67102.7012.0810.2273.3287.29113.98115.25
Competitiveness 10896.7598.819.41712.5977.2878.68108.10122.10
Goal Setting 10895.36102.7313.2312.0566.6889.37112.06121.78
General Motivational Index 10894.18101.006.6478.72978.4088.47100.78114.59
Figure 3. Descriptive analysis of test 1 and 2 results based on Female subjects on the overall mean score.
Figure 3. Descriptive analysis of test 1 and 2 results based on Female subjects on the overall mean score.
Sports 13 00125 g003
In synthesis, a comparison pre-test and post-test between female and male swimmers revealed that male athletes significantly improved their motivational dimensions in 8 out of 18 due to the psychological training, while the female group was much less receptive to the implemented intervention, with no significant increases at all levels.
Analyzing the values in Table 9, one may observe that most variables had a normal distribution (Shapiro–Wilk; p > 0.05) and met the homogeneity of variances (Levene; >0.05) assumptions. An important exception is Persistence, which does not meet the homogeneity of variances criterion that is eliminatory for ANOVA. For Persistence we applied Wilcoxon, which showed no significant difference between testing (1 and 2) and gender (Male/Female). One may observe very few exceptions of normality for Dominance, Fearlessness, Compensatory Effort for Male, T2 and Independence and General Motivational Index for Female T1.
We present in Table 10 the comparisons of the variances across the means of female and male participants.
The ANOVA table emphasize that there are significant differences between groups (Female/Male) for Commitment/Engagement (F = 10.264, p = 0.003), Confidence in Success (F = 11.096, p = 0.002), Compensatory Effort (F = 5.536, p = 0.025), Pride in Productivity (F = 7.160, p = 0.011), Status Orientation (F = 4.463, p = 0.042), and General Motivational Index (F = 7.348, p = 0.010).

4. Discussion

Our analysis focused on high-performance swimmers in Romania, aged between 16 and 22 years, as we observed that the critical period in athletes’ development occurs within this age range. This finding is also supported by other [17], who, based on a meta-analysis of 10 relevant articles on dropout in football, stated that “the annual weighted mean dropout rate is 23.9% across the included cohorts”. They also found that annual dropout rates remain stable between the ages of 10 and 19, with higher rates for girls (26.8%) compared to boys (21.4%). Data indicate that up to two-thirds of participants aged 7 to 18 drop out of sports each year, with attrition rates being particularly high during adolescence.
This fact was also highlighted during our study, in which four athletes withdrew. The main reasons included academic commitments and the perception of an overly demanding training environment. The analysis of AMI scores revealed significant improvements in motivation and perseverance among athletes who completed the intervention.
The six-month duration of this research was intended as an exploration of the role of psychological preparation in competitive swimming, with the objective of assessing its influence on athletes’ mental states and overall performance. Given the rigorous demands of high-performance swimming, psychological resilience is a critical factor in maintaining motivation and achieving optimal results. By implementing a structured intervention within this timeframe, we sought to evaluate its immediate impact on athletes’ engagement, mindset, and training outcomes.
Nonetheless, discussions with the participating swimmers indicate that several athletes continue to apply key elements from the intervention beyond the study period. Many reported enhanced communication with their coaches and a more positive training environment, both of which are essential for sustained performance development. These qualitative findings suggest that psychological training and emotional support may have enduring benefits, emphasizing the necessity of ongoing psychological preparation in competitive swimming.
The results of the inferential analysis showed that our intervention led to significant increases in the scores for confidence in success, compensatory effort, and goal setting, suggesting that these aspects of motivation can be influenced through specialized interventions. Our findings align with the self-determination theory, which emphasizes the importance of autonomy, competence, and social relationships in developing intrinsic motivation [18].
The analysis of Student’s t-tests (Table 6) highlighted statistically significant improvements in several motivational variables essential for sports performance, namely eagerness to learn (p = 0.035), status orientation (p = 0.03), and the Wilcoxon test revealed significant difference for general motivational index (p = 0.020).
These increases indicate greater athlete engagement in the proposed intervention plan, particularly in terms of their ability to make extra efforts to overcome difficulties and set clear and ambitious goals.
The gender differences observed in various motivational aspects related to sports performance in our study are consistent for coaches who will incorporate these findings in their training approach. However, their study revealed that female respondents perceived a higher level of achievement motivation compared to male respondents.
In a nutshell, we can assert that our findings are confirmed by similar studies Fraser-Thomas, Cote and Deakin (2008), Uzzell, Knight, Pankow and Hill (2023), which stress the role of the training patterns and coach influence within a carefully designed sport programs not just on the performing athlete, but also on his psychosocial individual development [11,19].

5. Conclusions

The intervention plan we applied proved to be more effective for male athletes, showing a significant increase in motivational variables essential for sports performance.
In contrast, for female athletes, the intervention did not produce statistically significant results. Although improvements were noticed in most variables, they did not reach the significance threshold necessary to be considered statistically relevant.
The initial lower values recorded by female athletes in some variables, such as perseverance and desire to learn, may explain the relatively lower impact of the intervention on this group. These initial differences could be attributed to several factors, including the possibility that female athletes may face unique psychological or social challenges that were not fully addressed in the intervention. For instance, social expectations or the influence of external factors such as family and academic pressures may have a stronger impact on the motivation of female athletes compared to their male counterparts.
This may require motivation and coaching strategies that directly target weaker aspects, such as perseverance and the eagerness to learn.
Research has shown that female athletes, particularly those in adolescent and early adulthood stages, may be more motivated and confident when they can identify with a role model who embodies traits they admire, and who reflects their personal values and aspirations [20].
It is important to note, however, that societal expectations around female athletes’ physiques often differ from those of their male counterparts. Studies have highlighted that many young female athletes express concerns about their bodies becoming too muscular, which can deter them from fully embracing certain aspects of athletic training [21]. This is particularly relevant in sports where strength and muscle development are mandatory, such as swimming, athletics, or weight training. Female athletes may feel conflicted about achieving the necessary physical strength for high performance while maintaining a traditionally feminine body image.
Emerging from our findings some practical coaching recommendations could be useful in this respect; namely, integrating coaching techniques focused on emotional self-regulation, social support, and competitive stress management on a regular basis. The constant evaluation of athletes’ progress remains essential to adjusting interventions based on individual needs and results. In the context of developing a high-performing and sustainable sports system, integrating such strategies into athlete training can ensure continuity in competitive swimming and reduce the dropout rate, thereby strengthening the future of this sport at the national and international level.
The results of this study strengthen the necessity to conceive a training process with multidimensional outcomes, covering a wide range of physical, cognitive, emotional or social variables, managed by the coach and his professional staff. In the long run, sport professionals should try to incorporate within the lesson plans more varied contents, despite the training matrices applicable to cyclic sports, often related to installing psychological barriers and dropout syndrome in practitioners. Also, coaches should create instructional situations which could lead to enhancing responsibility and commitment in view to meet the targeted objectives.

Research Limitations

Despite the valuable insights gained, several limitations must be acknowledged. The relatively small sample size (N = 20, later reduced to 16) restricts the generalizability of the findings. Future research should expand the participant pool to enhance the reliability and applicability of the results. Additionally, the study’s follow-up period was limited to six months, providing only a short-term perspective on the effects of the intervention. A longer longitudinal analysis would be necessary to determine whether the observed improvements in motivation and communication persist over time. Furthermore, the absence of a control group limits the ability to isolate the specific effects of the psychological intervention, as comparisons with athletes who did not receive the intervention could have strengthened the study’s conclusions.
Recognizing these limitations, we view this study as an important foundation for further research. Future investigations should incorporate larger sample sizes, extended follow-up periods, and control groups to provide a more comprehensive understanding of the long-term effects of psychological interventions.

Author Contributions

Conceptualization, V.B. and S.T.; methodology, V.B. and S.T.; software, A.B. and G.M.; validation, V.B., A.B., G.M. and S.T.; formal analysis, V.B., A.B., G.M. and S.T.; investigation, V.B. and G.M.; resources, V.B., A.B., G.M. and S.T.; data curation, A.B. and G.M.; writing—original draft preparation, A.B. and S.T.; writing—review and editing, A.B., G.M. and S.T.; visualization, A.B., G.M. and S.T.; supervision, S.T., A.B. and G.M.; project administration, V.B. and S.T.; funding acquisition, V.B. and G.M. All authors listed have made a substantial, direct, and intellectual equal contribution to the work and approved it for publication. All authors have read and agreed to the published version of the manuscript.

Funding

This research received no external funding.

Institutional Review Board Statement

The study was conducted in accordance with the Declaration of Helsinki and approved by the Institutional Review Board (or Ethics Committee) of the National University of Physical Education and Sport Bucharest_Doctoral School (protocol No. 50/17 January 2022).

Informed Consent Statement

Informed consent was obtained from all subjects involved in the study.

Data Availability Statement

The link to publicly raw datasets is https://drive.google.com/drive/folders/1NXcGOTh8hfcwi4A2LHaUov_Qjavu4ntT (accessed on 10 April 2025).

Conflicts of Interest

The authors declare no conflicts of interest.

Abbreviations

The following abbreviations are used in this manuscript:
AMIAchievement Motivation Inventory
MZCMesostructure
LTADThe Long-Term Athlete Development
G.R.O.W.Goal, Reality, Options, and Will
SMARTSpecific, Measurable, Achievable, Relevant, and Time-Bound

Appendix A

Table A1. Training periodization.
Table A1. Training periodization.
A1a. Training Plan of the 2023–2024 Season
Period/StageMezostructuresActivity LocationNo. of Training DaysNo. of Specific Training HoursNo. of General Physical Training HoursNo. of Rest DaysNo. of Competition Days
MACROSTRUCTURE I: 28 August–31 December 2023
Basic Preparation Stage MZC 1.
28 August–24 September
Steaua-Ghencea Base2472124-
Specific Preparation Stage MZC 2.
25 September–22 October
Steaua-Ghencea Base2472164-
Pre-competition Stage MZC 3.
23 October–5 November
Steaua-Ghencea Base123642-
Competition Period MZC 4.
6 November–12 November
Olympic Swimming Pool, Otopeni39104
Transition Stage MZC 5.
13 November–26 November
Steaua-Ghencea Base113283-
Basic Preparation Stage MZC 6.
27 November–31 December
Steaua-Ghencea Base23621414-
MACROSTRUCTURE II: 1 January–21 April 2024
Basic Preparation Stage MZC 7.
1 January–21 January
Steaua-Ghencea Base165083-
Specific Preparation Stage MZC 8.
22 January–31 March
Steaua-Ghencea Base601803010-
Pre-competition Stage MZC 9.
1 April–14 April
Steaua-Ghencea Base123642-
Competition Period MZC 10.
15 April–21 April
Olympic Swimming Pool, Otopeni26105
MACROSTRUCTURE III: 23 April–21 July 2024
Transition Stage MZC 11.
23 April–5 May 5
Steaua-Ghencea Base & Lia Manoliu Complex175283-
Specific Preparation Stage MZC 12.
6 May–30 June 30
Steaua-Ghencea Base & Lia Manoliu Complex48144248-
Pre-competition Stage MZC 13.
1 July–14 July
Steaua-Ghencea Base & Lia Manoliu Complex123642-
Competition Period MZC 14.
14 July–21 July
Olympic Swimming Pool, Târgu Mureș48103
Transition Stage/Non-specific Preparation MZC 15.
22 July–27 August
Steaua-Ghencea Base & Forban Sports Complex17341224-
Legend Macrostructure—long-term training period, completed with competitions
Mezostructure—medium term training period
A1b. Training Volume and Frequency Across Different Preparation Stages in Competitive Swimming
Period/Stage No. of km per WeekNo. of Training Sessions per Week
Basic Preparation Stage 30–406–8
Specific Preparation Stage 45–608–10
Pre-competition Stage 30–408
Competition Period 20–304–5 days of competition
Transition Stage 458

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Figure 1. Descriptive analysis of both testings—T1 and T2 results based on the overall mean score.
Figure 1. Descriptive analysis of both testings—T1 and T2 results based on the overall mean score.
Sports 13 00125 g001
Table 1. Reasons for dropout in competitive swimming.
Table 1. Reasons for dropout in competitive swimming.
SubjectReason for Dropout
Subject 5Difficulty balancing training and academic studies; age as a determining factor.
Subject 10Lack of satisfactory results; training schedule conflicting with school schedule.
Male—Subject 4Lack of satisfactory results; acknowledgment of physical limitations for high-performance sports.
Male—Subject 8Prioritization of professional career; full commitment to academic studies.
Table 2. The annual dynamics of the number of participants.
Table 2. The annual dynamics of the number of participants.
Year 2022Year 2023Year 2024
CompetitionTotal AthletesGender/Sex AthletesTotal AthletesGender/Sex AthletesTotal AthletesGender/Sex Athletes
Children’s Pentathlon366M—203  F—163396M—216  F—180212M—115  F—97
Children’s National Championships274M—150  F—124287M—169  F—118236M—220  F—178
Cadets’ Regional648M—396  F—252594M—246  F—218486M—254  F—232
Cadets’ National Championships 50 m.395M—237  F—158368M—224  F—138321M—167  F—154
Cadets’ National Championships 25 m.492M—311  F—181452M—286  F—166360M—196  F—164
Table 3. Descriptive Analysis of the initial testing for the entire group.
Table 3. Descriptive Analysis of the initial testing for the entire group.
Variable N Mean Standard Deviation Minimum Maximum
Perseverance/Persistence 2097.931011.9554379.68122.23
Dominance 20100.509511.5330378.60123.35
Commitment/Engagement 20102.623510.9583783.53127.26
Confidence in Success 2098.520512.6891273.59122.47
Flexibility 2097.94258.1431284.82113.19
Absorption/Flow 20102.06208.8261380.52116.09
Fearlessness 2094.671017.0194062.12125.83
Internality 20103.62559.6972285.25123.33
Compensatory Effort 20101.979514.3857961.66126.17
Pride in Productivity 20102.615010.3777167.95114.26
Eagerness to Learn 2096.672512.6463068.31122.15
Preference for Difficult Tasks 2099.215014.6344975.46134.85
Independence 2097.704010.3527486.05118.14
Self-Control/Self-Discipline 2092.50607.6536183.86109.80
Status Orientation 2098.983510.5230873.32115.25
Competitiveness 2099.061012.2895375.88124.90
Goal Setting 2099.416012.5156366.68118.54
General Motivational Index 2098.900010.1625778.40126.03
Table 4. Descriptive Analysis of the final testing (Post-Intervention) for the entire group.
Table 4. Descriptive Analysis of the final testing (Post-Intervention) for the entire group.
Variable N Mean Standard Deviation Minimum Maximum
Perseverance/Persistence 1698,968111,5886882,34119,57
Dominance 16105.56949.4286392.48127.98
Commitment/Engagement 16106.860013.0521486.44128.72
Confidence in Success 16105.385012.9998687.56129.46
Flexibility 1699.76949.3550177.73114.96
Absorption/Flow 16106.490612.2313088.73128.40
Fearlessness 1695.369413.9582375.97131.37
Internality 16106.25259.8027891.83123.33
Compensatory Effort 16108.307513.7080682.18129.11
Pride in Productivity 16109.20757.2490694.23116.76
Eagerness to Learn 16106.218113.4248881.77133.69
Preference for Difficult Tasks 16102.623812.7864881.21131.02
Independence 16101.97009.4500682.67123.21
Self-Control/Self-Discipline 1698.582512.4456479.54128.53
Status Orientation 16106.828810.0996287.29122.87
Competitiveness 16102.076313.1761578.68127.70
Goal Setting 16107.138113.4922789.37134.75
General Motivational Index 16105.688111.8714688.47134.11
Table 5. Normality and Homogeneity of Variances Assumptions.
Table 5. Normality and Homogeneity of Variances Assumptions.
Normality Test (Shapiro–Wilk)Homogeneity of Variances Test (Levene’s)NormalHomogen
IndicatorWpFdfdf2p
Perseverance/Persistence0.960.2690.0171340.9YesYes
Dominance0.950.1431.3591340.25YesYes
Commitment/Engagement0.970.4530.7541340.39YesYes
Confidence in Success0.980.7420.1861340.67YesYes
Flexibility0.970.390.0651340.8YesYes
Absorption/Flow0.980.731.8511340.18YesYes
Fearlessness0.960.2611.2071340.28YesYes
Internality0.980.6241.1211340.3YesYes
Compensatory Effort0.970.3560.0421340.84YesYes
Pride in Productivity0.87<0.0010.5011340.48NOYes
Eagerness to Learn0.980.8820.0721340.79YesYes
Preference for Difficult Tasks0.960.210.1321340.72YesYes
Independence0.940.050.7781340.38YesYes
Self-Control/Self-Discipline0.960.2243.0151340.09YesYes
Status Orientation0.970.4870.0791340.78YesYes
Competitiveness0.960.230.1561340.7YesYes
Goal Setting0.990.9290.2421340.63YesYes
General Motivational Index0.940.040.8581340.36NOYes
Table 6. Independent Samples t-test.
Table 6. Independent Samples t-test.
Student’s tStatisticdfpMean DifferenceSE DifferenceCohen’s dSig.
Perseverance/Persistence−0.262340.795−1.0373.96−0.0879No
Dominance−1.416340.166−5.063.57−0.4748No
Commitment/Engagement−1.059340.297−4.2364−0.3552No
Confidence in Success−1.596340.12−6.8654.3−0.5352No
Flexibility−0.626340.535−1.8272.92−0.21No
Absorption/Flow−1.262340.216−4.4293.51−0.4231No
Fearlessness−0.132340.896−0.6985.28−0.0444No
Internality−0.804340.427−2.6273.27−0.2696No
Compensatory Effort−1.339340.189−6.3284.73−0.4491No
Eagerness to Learn−2.19340.035−9.5464.36−0.7345Yes
Preference for Difficult Tasks−0.734340.468−3.4094.65−0.2461No
Independence−1.276340.21−4.2663.34−0.4281No
Self-Control/Self-Discipline−1.802340.08−6.0763.37−0.6044No
Status Orientation−2.262340.03−7.8453.47−0.7588Yes
Competitiveness−0.709340.483−3.0154.26−0.2376No
Goal Setting−1.777340.085−7.7224.35−0.596No
Note. Ha μ1 ≠ μ2
Wilcoxon Test for the Two Group-Level Assessments
Zp
Pride in Productivity−1.864 b0.062 NO
General Motivational Index−2.327 b0.020 Yes
b Wilcoxon test for variables with non-normal distribution.
Table 9. Normality, Homogeneity of Variances tests.
Table 9. Normality, Homogeneity of Variances tests.
IndicatorShapiro–Wilk pLevene’s Test of Equality of Error Variances
GenderFemaleMale
TestingT1T2T1T2Fdf1df2Sig.
Perseverance/Persistence0.80.60.340.427.7551340.009
Dominance0.10.110.120.020.0291340.865
Commitment/Engagement0.380.530.790.290.0001340.986
Confidence in Success0.920.120.360.390.1871340.668
Flexibility0.180.730.210.910.6861340.413
Absorption/Flow0.520.640.20.661.1881340.283
Fearlessness0.960.940.830.010.0131340.910
Internality0.230.420.350.732.0021340.166
Compensatory Effort0.140.930.960.011.2191340.277
Pride in Productivity0.050.320.350.173.2761340.079
Eagerness to Learn0.760.880.960.453.4751340.071
Preference for Difficult Tasks0.340.160.330.994.0181340.053
Independence0.010.090.360.31.7621340.193
Self-Control/Self-Discipline0.070.990.830.731.2121340.279
Status Orientation0.960.520.440.081.6841340.203
Competitiveness0.080.820.850.541.6511340.208
Goal Setting0.450.450.310.750.0421340.839
General Motivational Index0.030.80.310.433.8031340.059
Wilcoxon Signed-Rank Analysis Between Initial and Secondary Test Values
Gender
MaleFemale
ZpZp
Perseverance/Persistence−1.183 b0.237−0.677 b0.498
b Wilcoxon test for variables with non-normal distribution.
Table 10. ANOVA.
Table 10. ANOVA.
Sum of SquaresdfMean SquareFSig.
Perseverance/PersistenceBetween Groups69.250169.2500.5040.483
Within Groups4670.48834137.367
Total4739.73835
DominanceBetween Groups399.0671399.0673.6780.064
Within Groups3689.20234108.506
Total4088.26935
Commitment/EngagementBetween Groups1158.60811158.60810.2640.003
Within Groups3837.93834112.881
Total4996.54635
Confidence in SuccessBetween Groups1479.55611479.55611.0960.002
Within Groups4533.50834133.338
Total6013.06535
FlexibilityBetween Groups118.8101118.8101.6270.211
Within Groups2483.4953473.044
Total2602.30535
Absorption/FlowBetween Groups232.2071232.2072.1530.151
Within Groups3666.31134107.833
Total3898.51835
FearlessnessBetween Groups77.118177.1180.3140.579
Within Groups8353.24234245.684
Total8430.36035
InternalityBetween Groups9.19119.1910.0950.759
Within Groups3280.2573496.478
Total3289.44835
Compensatory EffortBetween Groups995.0871995.0875.5360.025
Within Groups6111.58834179.753
Total7106.67535
Pride in ProductivityBetween Groups560.2691560.2697.1600.011
Within Groups2660.5263478.251
Total3220.79535
Eagerness to LearnBetween Groups453.2641453.2642.5270.121
Within Groups6098.74234179.375
Total6552.00635
Preference for Difficult TasksBetween Groups602.0481602.0483.3990.074
Within Groups6022.84734177.143
Total6624.89535
IndependenceBetween Groups375.1971375.1974.0340.053
Within Groups3162.5313493.016
Total3537.72835
Self-Control/Self-DisciplineBetween Groups232.3591232.3592.2370.144
Within Groups3532.23834103.889
Total3764.59735
Status OrientationBetween Groups485.1011485.1014.4630.042
Within Groups3695.99734108.706
Total4181.09835
CompetitivenessBetween Groups268.9601268.9601.7300.197
Within Groups5285.63834155.460
Total5554.59835
Goal SettingBetween Groups636.8051636.8053.8660.057
Within Groups5600.05134164.707
Total6236.85635
General Motivational IndexBetween Groups797.2151797.2157.3480.010
Within Groups3688.62434108.489
Total4485.83935
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Brat, V.; Bota, A.; Mitrache, G.; Teodorescu, S. The Motivational Level of Performance Swimmers and Its Impact on the Risk of Sports Dropout. Sports 2025, 13, 125. https://doi.org/10.3390/sports13040125

AMA Style

Brat V, Bota A, Mitrache G, Teodorescu S. The Motivational Level of Performance Swimmers and Its Impact on the Risk of Sports Dropout. Sports. 2025; 13(4):125. https://doi.org/10.3390/sports13040125

Chicago/Turabian Style

Brat, Valentina, Aura Bota, Georgeta Mitrache, and Silvia Teodorescu. 2025. "The Motivational Level of Performance Swimmers and Its Impact on the Risk of Sports Dropout" Sports 13, no. 4: 125. https://doi.org/10.3390/sports13040125

APA Style

Brat, V., Bota, A., Mitrache, G., & Teodorescu, S. (2025). The Motivational Level of Performance Swimmers and Its Impact on the Risk of Sports Dropout. Sports, 13(4), 125. https://doi.org/10.3390/sports13040125

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