Effects of presession well-being perception on internal training load in female volleyball players
Purpose:
To evaluate if the internal training load (ITL; Edwards heart rate [HR]-based and session-rating of perceived exertion [RPE] methods) is affected by the presession well-being perception, age, and position in elite (ie, Serie A2) female volleyball training.
Methods:
Twelve female elite volleyball players (age: 22 [4] y, height: 1.80 [0.06] m, body mass: 74.1 [4.3] kg) were monitored using an HR monitor during 32 team training sessions (duration: 1:36:12 [0:22:24], in h:min:s). Linear mixed-effects models were applied to evaluate if well-being perception (ie, perceived sleep quality/disorders, stress level, fatigue, and delayed-onset muscle soreness) may affect ITL depending on age and tactical position.
Results:
Presession perceived fatigue influenced ITL according to the session-RPE (P = .032) but not according to the Edwards method. Age was inversely correlated to the Edwards method (P < .001) and directly correlated to the session-RPE (P = .027). Finally, central blockers experienced a higher training load than hitters (P < .001) and liberos (P < .001) for the Edwards method, as well as higher than hitters (P < .001), liberos (P = .003), and setters (P = .008) for session-RPE.
Conclusions:
Findings indicated that female volleyball players` perceived ITL is influenced by presession well-being status, age, and position. Therefore, coaches can benefit from this information to specifically predict players` ITL in relation to their individual characteristics.
© Copyright 2021 International Journal of Sports Physiology and Performance. All rights reserved.
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| Notations: | biological and medical sciences sport games |
| Published in: | International Journal of Sports Physiology and Performance |
| Language: | English |
| Published: |
2021
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| Online Access: | https://doi.org/10.1123/ijspp.2020-0387 |
| Volume: | 16 |
| Issue: | 5 |
| Pages: | 622-627 |
| Document types: | article |
| Level: | advanced |