Research article - (2025)24, 503 - 512 DOI: https://doi.org/10.52082/jssm.2025.503 |
Comparing Individualized vs. Non-Individualized Locomotor Profiling on High-Intensity Interval Training Adaptations in Soccer Players: A Randomized Parallel Study |
DongMing Zhu, DongMei Song, ZhiDa Huang![]() |
Key words: Football, intermittent training, aerobic fitness, anaerobic fitness |
Key Points |
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Approach to the problem |
Our study utilized a randomized, controlled, parallel-group design, comprising three experimental groups and one control group. The experimental groups completed two additional HIIT sessions per week for six weeks, supplementing their regular team training. In contrast, the control group continued with their standard training regimen, without any added HIIT intervention. Two teams participated in the study, and players from both teams were distributed across all four groups to ensure balance and reduce bias related to team-specific training practices. The intervention was conducted during the early-season period. Randomization was performed using an online tool (Research Randomizer), with stratified randomization employed to ensure balanced representation of player profiles (speed, endurance, and hybrid) across all groups. Blinding was ensured only for the evaluators, who were unaware of the participants’ group allocation. |
Participants |
To determine the necessary sample size for the 2 (assessment moments, within-subjects) x 4 (groups, between-subjects) mixed ANOVA design, an a priori power analysis was conducted using G*Power software (Version 3.1.9.7). Based on an anticipated medium effect size for the interaction (Cohen's f = 0.30), a desired statistical power of 0.80, and a significance level (α) of 0.05, the analysis revealed a required total sample size of 36 participants. To prevent dropout, the researchers recruited more participants than the recommended number. The research team approached two local soccer teams competing at the same competitive level. Both teams trained under similar conditions, with three training sessions per week and official matches on weekends. Team managers communicated with the players and their legal guardians to invite them to participate. Those who agreed were enrolled as volunteers in the study. The inclusion criteria, defined a priori, were as follows: (i) male players aged between 16 and 17 years; (ii) outfield players; (iii) participation in both pre- and post-intervention assessments; and (iv) attendance exceeded 90% across all HIIT intervention sessions. Exclusion criteria included: (i) sustaining an injury in the month prior the intervention or during the intervention period; (ii) participating in any additional strength and conditioning programs beyond regular team training; (iii) missing any of the specific HIIT sessions or assessment time points; and (iv) being goalkeeper. Out of 52 potential players initially identified, 5 were excluded for being goalkeepers and 1 was excluded due to an injury sustained prior to the first assessment ( Prior to data collection, informed consent was obtained from both the participants and their legal guardians, ensuring their voluntary participation and full understanding of the study's purpose, procedures, and potential risks and benefits. All procedures adhered to the principles outlined in the Helsinki Declaration, emphasizing the protection of participants' well-being, confidentiality, and right to withdraw at any time without consequence. Approval for this research was obtained from the Nanchang Institute of Science & Technology ethics committee (code number NIST20250427) to ensure ethical conduct throughout the study. |
HIIT interventions |
Two main types of HIIT interventions were implemented: long-interval HIIT and repeated sprint training (RST). In the HIITind group, players with a speed-oriented profile were assigned to RST, while those with an endurance-oriented profile were assigned to long-interval HIIT ( Following the initial assessments, each player's locomotor profile was identified, and participants were then randomly assigned to their respective groups. Allocation was conducted prior to the intervention, and no changes were made to the groups during the study. The intervention began the week immediately after the assessments and was carried out twice per week for six consecutive weeks. Each HIIT session was conducted during the team's first training session of the week - 48 hours of rest and before the start of the regular field training with the coaches. The second HIIT session was delivered during the second training day of the week, with a 24-hour interval after the previous training session. The HIIT interventions were prescribed by the research team with the support of the team’s staff. The intervention sessions were conducted at approximately 5:00 PM and began with a standardized warm-up focused on the lower limbs. This included 5 minutes of light jogging, 5 minutes of dynamic stretching, and 5 minutes of lower-limb potentiation exercises. Following a 3-minute rest period, players proceeded with the HIIT interventions. In addition to HIIT, the players followed their regular training programs conducted and managed by their respective coaching staff, without any interference from the research team. All players underwent the same training within their teams, with natural variations reflecting the specific methodologies used by different coaching staffs. Adherence to the HIIT sessions was monitored during each training session. The adherence rates were 94.7 ± 1.2% for HIITind, 95.1 ± 2.1% for HIITlong, and 93.6 ± 0.9% for RST. |
Physical fitness assessments |
Assessments were conducted during the week prior to the start of the 6-week intervention and in the week following the conclusion of the intervention period. Each assessment took place after 48 hours of rest, and both occurred during the first training session of the week. The evaluations were carried out at 5:00 PM in the afternoon, at the team's facilities. The testing began in a private room with anthropometric measurements, followed by a standardized warm-up protocol, and then proceeded with the same sequence of tests: countermovement jump (CMJ), 30-meter linear sprint, repeated sprint ability (RSA), and the 5-minute running test. A 5-minute rest period was taken between each test. The field tests were conducted on synthetic turf at the team's practice field. Outdoor temperatures were approximately 19.4 ± 1.2°C, with a relative humidity of 61.2 ± 2.8%. |
Countermovement jump (CMJ) |
The capacity to generate forceful leg movements was gauged via the countermovement jump (CMJ) protocol. Utilizing a stable testing surface, participants performed the CMJ, with the MyJump 2 mobile application serving as the measurement instrument for vertical displacement. This application has been shown to provide dependable and accurate measurements of vertical jump height when benchmarked against photoelectric cell technology (Bogataj et al., |
Linear sprint speed at 30-m |
To evaluate maximum running speed, a 30-meter sprint test was administered. Participants began from a stationary stance, positioning their dominant foot just behind the starting line. The duration of the sprint was recorded using the Photo Finish mobile application (Marco-Contreras et al., |
Repeated Sprint Ability (RSA) |
The repeated sprint ability (RSA) was assessed using a test protocol involving six shuttle sprints, each covering 40 meters (20 meters in one direction and 20 meters back) (Rampinini et al., |
5-minute running test |
Maximal aerobic speed (MAS) was estimated through a 5-minute continuous running test. This test has been previously validated as an accurate method for estimating maximal aerobic speed (MAS) when compared to the treadmill test (Berthon et al., |
Locomotor profile |
Participants were categorized based on their individual locomotor characteristics using the anaerobic speed reserve (ASR). The ASR was determined by calculating the difference between their maximal sprinting speed (MSS), as assessed by the 30-meter sprint, and their estimated maximal aerobic speed (MAS), derived from the 5-minute running test. This resulting ASR value provided a measure of the speed range available to each player above their aerobic threshold, reflecting their capacity for high-intensity, intermittent activities. These ASR values were then used as a basis for classifying players into distinct locomotor profiles for subsequent analysis. To classify participants into endurance, hybrid, and speed profiles based on their ASRpre values, the data was grouped according to the training intervention (HIITind, HIITlong, RST, and Control). Within each group, ASRpre values were sorted in ascending order and divided into three approximately equal parts. The division was done by computing the integer division of the group size by 3 (i.e., n // 3), with any remaining individuals assigned to the middle (hybrid) category to ensure balanced grouping. The lowest third were categorized as having an "Endurance" profile, representing individuals with the lowest ASRpre scores, potentially indicating higher fatigue resistance or aerobic dominance. The middle third, including any remainder from the division, were labeled "Hybrid", reflecting a balanced physiological profile, while the highest third were classified under the "Speed" profile, likely representing more anaerobically inclined or power-oriented individuals. For the HIITind group, ASRpre values ≤13.22 were Endurance, between 13.22 and 14.2 were Hybrid, and >14.2 were Speed. In the HIITlong group, values ≤13.24 were Endurance, 13.24–14.06 were Hybrid, and >14.06 were Speed. For RST, the cutoffs were ≤13.22 (Endurance), 13.22-14.24 (Hybrid), and >14.24 (Speed). Lastly, in the Control group, values ≤13.4 were categorized as Endurance, 13.4-14.52 as Hybrid, and >14.52 as Speed. This classification offers a practical way to interpret physiological tendencies based on relative ASR performance within each training context. |
Statistical procedures |
A two-way ANOVA was conducted using the delta values (post-pre) for each dependent variable, with the type of training and locomotor profile as independent variables. This analysis helped to control for baseline differences and isolate the impact of the intervention on the measured outcomes. Prior to the analysis, assumptions of normality, and homogeneity of variances. Normality was checked using the Shapiro-Wilk test, with p > 0.05 indicating no violation of the assumption. Homogeneity of variances was evaluated using Levene’s test, with p > 0.05 suggesting that this assumption was met. Sphericity was assessed using Mauchly’s test, and when violations were detected, corrections were applied using the Greenhouse-Geisser method. For significant main effects or interactions, post hoc analyses with Bonferroni corrections were performed to identify pairwise differences between group means. The effect size for main and interaction effects was measured using partial eta squared (ηp2), with values of 0.01, 0.06, and 0.14 indicating small, medium, and large effects, respectively. Cohen’s d was used to determine the magnitude (ES: effect size) of pairwise differences from post hoc analyses, with values of 0.20, 0.50, and 0.80 considered small, medium, and large, respectively. The significance level for all tests was set at p < 0.05, and all analyses were performed using SPSS software (version 28.0.0, USA). |
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Countermovement jump |
Maximal sprint speed |
Comparisons between groups for MSS delta values (post-pre) revealed significant differences (p < 0.001; ηp2 = 0.538). The control group showed significantly less improvement compared to RST (mean difference: -1.84 km/h; p < 0.001, Cohen's Additionally, RST showed significantly greater improvement in MSS compared to HIITind (mean difference: 1.78 km/h; p < 0.001, Cohen's |
Distance at 5-minute test |
Comparisons between groups for distance covered at 5-min test delta values (post-pre) revealed significant differences (p < 0.001; ηp2 = 0.972). The control group showed significantly less improvement compared to HIITind (mean difference: -113.19 m; p < 0.001, Cohen's |
Maximal aerobic speed |
Comparisons between groups for MAS delta values (post-pre) revealed significant differences (p < 0.001; ηp2 = 0.972). The control group showed significantly less improvement compared to HIITind (mean difference: -1.36 km/h; p < 0.001, Cohen's |
Anaerobic speed reserve |
Comparisons between groups for ASR delta values (post-pre) revealed significant differences (p < 0.001; ηp2 = 0.699). The control group showed significantly less improvement compared to HIITind (mean difference: -1.29 km/h; p = 0.019, Cohen's |
Repeated sprint ability |
Comparisons between groups for RSAmean delta values (post-pre) revealed significant differences (p < 0.001; ηp2 = 0.885). The control group showed significantly worse improvements compared to HIITind (mean difference: 0.26 s; p < 0.001, Cohen's |
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This study aimed to investigate whether adjusting HIIT interventions to youth players’ locomotor profiles would enhance training outcomes compared to non-individualized approaches. The findings revealed that all HIIT modalities - individualized (HIITind), long-interval (HIITlong), and repeated sprint training (RST) - led to significant improvements across aerobic, anaerobic, and neuromuscular capacities when compared to the control group. However, RST consistently elicited superior gains in neuromuscular and anaerobic performance measures, including CMJ, MSS, ASR, and RSAmean. In contrast, HIITind and HIITlong were more effective than RST in enhancing aerobic capacity, as reflected by improvements in both the 5-minute running test and MAS. No significant differences were found between HIITind and HIITlong across most outcomes, and the influence of locomotor profile was inconsistent, affecting only MSS and ASR. These results suggest that while individualized programming does not markedly outperform standardized protocols, the choice of HIIT modality - particularly RST versus aerobic-focused HIIT - plays a more critical role in driving specific physical adaptations. Research suggests that RST may be more effective than long interval high-intensity training for improving CMJ performance in soccer players. A previous study (Campos-Vazquez et al., A previous study (Cicioni-Kolsky et al., Our results also showed that RST was more effective than both HIITind and HIITlong in enhancing RSAmean. While similar findings have not yet been reported in soccer, evidence from tennis shows that RST leads to significantly greater improvements in RSA compared to traditional HIIT protocols (Fernandez-Fernandez et al., Both HIIT and RST enhance aerobic capacity, and fatigue resistance (Arazi et al., One of the primary limitations of this study is the inconsistency in the influence of locomotor profiles on training outcomes. Although individualized HIIT interventions (HIITind) fitted to players’ locomotor profiles were hypothesized to outperform non-individualized approaches, the findings revealed no significant differences across most outcomes. This suggests that individualized programming, while effective in improving performance compared to a control group, may not provide substantial benefits over standardized HIIT modalities. However, a limitation is that we grouped players into tertiles; a more refined approach may be needed to better approximate the individual needs and characteristics of each participant. Additionally, the study was limited by the variability in the adaptation responses of different athletes, especially given the complex interplay of factors like endurance and speed profiles, which may have influenced the specificity of the training stimulus. Also, confounding factors such as dietary and recovery strategies were not analyzed; future research should consider these to minimize potential bias. Finally, conducting the study within different teams may inherently carry specific effects from each team's regular training. Although allocation and randomization were performed within each team to minimize contextual bias, future research should aim to detail and monitor all training methodologies and their potential impact on observed adaptations. In practical terms, the results highlight the importance of selecting the right type of HIIT modality based on the specific physical adaptations desired for youth soccer players. While RST was particularly effective for improving neuromuscular and anaerobic performance, it may not be as effective as HIITind or HIITlong for enhancing aerobic capacity. Individualization may ultimately be more beneficial for managing acute stimulus and player tolerance rather than for long-term practical adaptations; however, this requires further research and exploration. Therefore, practitioners aiming to enhance anaerobic power or sprint performance might prioritize RST, involving multiple short sprints with limited recovery, especially during phases focusing on speed development. On the other hand, HIIT with longer intervals (e.g., 3-4 minutes at high intensity) have can be more interesting for improving aerobic power and aerobic endurance, suggesting their usefulness when the goal is to enhance high-intensity running ability. Further research is needed to investigate the long-term effects of these interventions and the role of locomotor profiles across more diverse competitive levels. Additionally, it is important to determine the relevance of specific HIIT interventions depending on the time of the season - an aspect that our study was unable to address. |
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The findings confirm that all HIIT interventions - whether individualized (HIITind), long-interval (HIITlong), or repeated sprint training (RST) - result in significant improvements in aerobic, anaerobic, and neuromuscular performance compared to a control group. However, RST emerged as the most effective approach for enhancing neuromuscular and anaerobic performance, particularly in measures like MSS and RSA. In contrast, HIITind and HIITlong were more beneficial for improving aerobic capacity. Despite the individualized approach, which aimed to match training to players' locomotor profiles, no clear advantage was observed over non-individualized training modalities. This suggests that the choice of training modality - particularly the emphasis on sprint- or endurance-focused protocols - may play a more significant role in driving specific physical adaptations than the individualization of the training program itself. However, this should be carefully considered in youth players, and further research is needed across other competitive levels. When designing HIIT programs, coaches can prioritize the specific performance goals of your players. If the goal is to boost speed, power, and repeated sprint ability, repeated sprint training (RST) can be a more recommended option. For enhancing aerobic endurance, both individualized and long-interval HIIT are effective. Importantly, designing HIIT sessions to individual player profiles does not necessarily provide added benefits over standard protocols. This possibly means coaches should focus more on choosing the right training modality. The current results stress the importance of selecting the right HIIT modality to achieve desired performance outcomes, while further investigation into the long-term effects and broader applicability of these training strategies is warranted. |
ACKNOWLEDGEMENTS |
The experiments comply with the current laws of the country in which they were performed. The authors have no conflict of interest to declare. The datasets generated during and/or analyzed during the current study are not publicly available but are available from the corresponding author who was an organizer of the study. |
AUTHOR BIOGRAPHY |
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REFERENCES |
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