Loading or Unloading? This Is the Question! A Multi-Season Study in Professional Football Players
Highlights
- LEI, derived from a machine learning model, was sensitive to variations in weekly load, particularly for total distance and mechanical load.
- The research confirmed that reducing weekly loads through tapering strategies, especially for players in poor or normal readiness conditions, helps improve their LEI and overall neuromuscular readiness. However, for players in good readiness, large reductions in training load can lead to insufficient training stimuli, impairing performance.
- Personalized training load adjustments based on neuromuscular readiness, as indicated by LEI, are crucial for optimizing performance and preventing fatigue in elite football players.
- Football practitioners should consider reducing training loads for players with poor readiness while maintaining or slightly increasing it for those in better condition to sustain high performance throughout a season.
Abstract
:1. Introduction
2. Materials and Methods
2.1. Study Design
2.2. Participants
2.3. External Load Data Collection
3. Data Analysis
3.1. Calculation of the Locomotor Efficiency Index
3.2. Definition of the Different Training Scenarios
3.2.1. Weekly Readiness
- Bad readiness: players exhibited a weekly LEI value lower than −0.5.
- Normal readiness: players exhibited a weekly LEI value between −0.5 and 0.5.
- Good readiness: players exhibited a weekly LEI value higher than 0.5.
3.2.2. Week-to-Week Load Fluctuation
- Large decrease: <30% of the individual weekly load;
- Moderate decrease: between −30% and −10% of the individual weekly load;
- No variation: between −10% and +10% of the individual weekly load;
- Moderate increase; between +10% and +30% of the individual weekly load;
- Large increase: >30% of the individual weekly load.
3.2.3. Week-to-Week LEI Variation
4. Statistical Analysis
5. Results
- Total Distance
- Distance > 25.2 km/h (m)
- Mechanical Load (cnt)
6. Discussion
7. Limitations and Future Research Perspectives
8. Practical Applications
9. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Predictors | Total distance (m) Distance > 7.2 km/h (m) Number of decelerations < −2.5 (m/s2) Number of accelerations > 2.5 (m/s2) Max speed (km/h) Max decelerations (m/s2) Max decelerations (m/s2) |
Target | PlayerLoadTM (PL) |
Season | External Load Parameter | Week-to-Week Load Fluctuation Condition | ||||
---|---|---|---|---|---|---|
Large Decrease | Moderate Decrease | No Variation | Large Increase | Moderate Increase | ||
Season 2021/22 | Total distance | 0.70 (±2.33) | 0.32 (±2.14) | −0.13 (±2.28) | −1.03 (±2.74) | −0.37 (±2.16) |
Distance > 25.2 km/h | 0.31 (±2.35) | −0.31 (±2.28) | 0.03 (±2.42) | −0.50 (±2.63) | −0.38 (±2.29) | |
Mechanical load | 0.30 (±2.42) | 0.22 (±2.17) | −0.15 (±2.51) | −0.50 (±2.22) | −0.54 (±2.44) | |
Season 2022/23 | Total distance | 0.64 (±2.40) | −0.22 (±2.36) | −0.10 (±2.26) | −0.49 (±2.55) | −0.33 (±2.80) |
Distance > 25.2 km/h | −0.03 (±2.35) | 0.01 (±2.56) | −0.07 (±1.80) | −0.38 (±2.61) | −0.27 (±2.73) | |
Mechanical load | 0.08 (±2.57) | −0.10 (±2.24) | −0.17 (±2.13) | −0.18 (±2.77) | −0.33 (±2.78) | |
Overall | Total distance | 0.67 (±2.36) | 0.09 (±2.25) | −0.12 (±2.27) | −0.35 (±2.66) | −0.77 (±2.50) |
Distance > 25.2 km/h | 0.18 (±2.35) | −0.19 (±2.39) | −0.01 (±2.22) | −0.46 (±2.61) | −0.33 (±2.50) | |
Mechanical load | 0.26 (±2.48) | 0.08 (±2.21) | −0.16 (±2.38) | −0.38 (±2.44) | −0.44 (±2.60) |
External Load Parameter | Readiness Condition | Week-to-Week Load Fluctuation | β | 95% CI | p-Value |
---|---|---|---|---|---|
Total distance | Bad readiness | Large decrease | 2.07 | [1.20 to 2.94] | 0.001 |
Moderate decrease | 0.41 | [−0.40 to 1.24] | 0.319 | ||
Moderate increase | −0.18 | [−1.03 to 0.66] | 0.666 | ||
Large increase | 0.39 | [−0.46 to 1.24] | 0.365 | ||
No variation | 0 a | 0 a | 0 a | ||
Normal readiness | Large decrease | 0.82 | [0.48 to 1.17] | 0.001 | |
Moderate decrease | 0.23 | [−0.05 to 0.52] | 0.115 | ||
Moderate increase | −0.40 | [−0.73 to −0.07] | 0.016 | ||
Large increase | −0.78 | [−1.10 to −0.46] | 0.001 | ||
No variation | 0 a | 0 a | 0 a | ||
Good readiness | Large decrease | −1.22 | [−2.43 to −0.01] | 0.047 | |
Moderate decrease | 0.26 | [−0.84 to 1.36] | 0.640 | ||
Moderate increase | 0.14 | [−0.77 to 1.07] | 0.753 | ||
Large increase | −1.05 | [−1.91 to −0.18] | 0.018 | ||
No variation | 0 a | 0 a | 0 a | ||
Distance > 25.2 km/h | Bad readiness | Large decrease | 0.15 | [−0.81 to 1.11] | 0.757 |
Moderate decrease | −0.94 | [−2.08 to 0.20] | 0.106 | ||
Moderate increase | −0.55 | [−1.77 to 0.66] | 0.373 | ||
Large increase | −0.30 | [−1.27 to 0.67] | 0.546 | ||
No variation | 0 a | 0 a | 0 a | ||
Normal readiness | Large decrease | 0.33 | [−0.02 to 0.69] | 0.067 | |
Moderate decrease | 0.13 | [−0.28 to 0.55] | 0.524 | ||
Moderate increase | −0.21 | [−0.66 to 0.23] | 0.348 | ||
Large increase | −0.15 | [−0.50 to 0.20] | 0.397 | ||
No variation | 0 a | 0 a | 0 a | ||
Good readiness | Large decrease | −0.56 | [−1.70 to 0.56] | 0.323 | |
Moderate decrease | −0.16 | [−1.46 to 1.14] | 0.808 | ||
Moderate increase | −0.29 | [−1.94 to 1.36] | 0.728 | ||
Large increase | −0.90 | [−1.92 to 0.11] | 0.081 | ||
No variation | 0 a | 0 a | 0 a | ||
Mechanical load | Bad readiness | Large decrease | 1.23 | [0.35 to 2.12] | 0.006 |
Moderate decrease | 0.93 | [0.06 to 1.79] | 0.035 | ||
Moderate increase | −0.34 | [−1.26 to 0.57] | 0.459 | ||
Large increase | 0.51 | [−0.33 to 1.37] | 0.235 | ||
No variation | 0 a | 0 a | 0 a | ||
Normal readiness | Large decrease | 0.48 | [0.14 to 0.82] | 0.005 | |
Moderate decrease | 0.12 | [−0.18 to 0.44] | 0.428 | ||
Moderate increase | −0.32 | [−0.67 to 0.02] | 0.062 | ||
Large increase | −0.48 | [−0.81 to −0.16] | 0.004 | ||
No variation | 0 a | 0 a | 0 a | ||
Good readiness | Large decrease | −1.13 | [−2.38 to 0.11] | 0.074 | |
Moderate decrease | −0.56 | [−1.61 to 0.48] | 0.291 | ||
Moderate increase | −0.19 | [−1.20 to 0.81] | 0.710 | ||
Large increase | −0.65 | [−1.54 to 0.23] | 0.149 | ||
No variation | 0 a | 0 a | 0 a |
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Mandorino, M.; Tessitore, A.; Lacome, M. Loading or Unloading? This Is the Question! A Multi-Season Study in Professional Football Players. Sports 2024, 12, 148. https://doi.org/10.3390/sports12060148
Mandorino M, Tessitore A, Lacome M. Loading or Unloading? This Is the Question! A Multi-Season Study in Professional Football Players. Sports. 2024; 12(6):148. https://doi.org/10.3390/sports12060148
Chicago/Turabian StyleMandorino, Mauro, Antonio Tessitore, and Mathieu Lacome. 2024. "Loading or Unloading? This Is the Question! A Multi-Season Study in Professional Football Players" Sports 12, no. 6: 148. https://doi.org/10.3390/sports12060148
APA StyleMandorino, M., Tessitore, A., & Lacome, M. (2024). Loading or Unloading? This Is the Question! A Multi-Season Study in Professional Football Players. Sports, 12(6), 148. https://doi.org/10.3390/sports12060148