The Relationship between Training Load Measures and Next-Day Well-Being in Rugby Union Players
Abstract
:1. Introduction
2. Materials and Methods
2.1. Experimental Approach to the Problem
2.2. Subjects
2.3. Physiological Testing
2.4. Training Load
2.5. Subjective Well-Being
2.6. Statistical Analysis
3. Results
3.1. Internal Load Measures
3.2. External Load Measures
4. Discussion
5. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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1 | 2 | 3 | 4 | 5 | |
---|---|---|---|---|---|
FATIGUE | Always tired | More tired than normal | Normal | Fresh | Very fresh |
SLEEP QUALITY | Insomnia | Restless sleep | Difficulty falling asleep | Good | Very restful |
GENERAL MUSCLE SORENESS | Very sore | Increase in soreness/tightness | Normal | Feeling good | Feeling great |
STRESS LEVELS | Highly stressed | Feeling stressed | Normal | Relaxed | Very relaxed |
MOOD | Highly annoyed: irritable: down | Snappiness at team-mates, family, and co-workers | Less interested in objects & or activities than usual | A generally good mood | Very positive mood |
Load Measure | Well-Being Questionnaire (WB) | ||||||
---|---|---|---|---|---|---|---|
Fatigue | Sleep Quality | Muscle Soreness | Stress Levels | Mood | Total Well-Being | ||
sRPE (AU) HML = 909.20 MML = 504.72 (±96.51) | R2 | 0.16 | 0.12 | 0.13 | 0.67 | 0.39 | 0.34 |
Estimate (95% CI) | −0.00 (−0.003 to 0.000) | −0.00 (−0.002 to 0.001) | −0.00 (−0.003 to −0.001) | −0.00 (−0.002 to 0.001) | 0.00 (−0.001 to 0.002) | −0.00 (−0.008 to −0.000) | |
Probability ∆ < 0 < | 0.97 < 0 < 0.03 | 0.76 < 0 < 0.24 | 1.00 < 0 < 0.00 | 0.88 < 0 < 0.12 | 0.33 < 0 < 0.67 | 0.98 < 0 < 0.02 | |
iTRIMP (AU) HML = 726.42 MML = 298.43 (±71.11) | R2 | 0.12 | 0.12 | 0.15 | 0.66 | 0.39 | 0.32 |
Estimate (95% CI) | −0.00 (−0.005 to 0.002) | −0.00 (−0.003to 0.001) | −0.01 (−0.007 to 0.001) | −0.00 (−0.003 to 0.002) | −0.00 (−0.003 to 0.002) | −0.01 (−0.018 to 0.000) | |
Probability ∆ < 0 < | 0.84 < 0 < 0.16 | 0.53 < 0 < 0.47 | 1.00 < 0 < 0.00 | 0.76 < 0 < 0.24 | 0.63 < 0 < 0.37 | 0.98 < 0 < 0.02 | |
luTRIMP (AU) HML = 295.60 MML = 156.34 (±32.53) | R2 | 0.11 | 0.11 | 0.08 | 0.66 | 0.39 | 0.30 |
Estimate (95% CI) | −0.00 (−0.010 to 0.004) | −0.00 (−0.010 to 0.002) | −0.01 (−0.012 to 0.000) | −0.00 (−0.006 to 0.003) | −0.00 (−0.006 to 0.004) | −0.01 (−0.027 to 0.007) | |
Probability ∆ < 0 < | 0.80 < 0 < 0.12 | 0.33 < 0 < 0.67 | 0.97 < 0 < 0.03 | 0.71 < 0 < 0.29 | 0.68 < 0 < 0.32 | 0.88 < 0 < 0.12 | |
eTRIMP (AU) HML = 350.77 MML = 221.14 (±48.42) | R2 | 0.12 | 0.11 | 0.10 | 0.66 | 0.39 | 0.30 |
Estimate (95% CI) | −0.00 (−0.007 to 0.002) | −0.00 (−0.004 to 0.004) | −0.01 (−0.009 to 0.001) | −0.00 (−0.004 to 0.003) | −0.00 (−0.004 to 0.003) | −0.01 (−0.024 to 0.000) | |
Probability ∆ < 0 < | 0.86 < 0 < 0.14 | 0.55 < 0 < 0.45 | 0.99 < 0 < 0.01 | 0.59 < 0 < 0.41 | 0.62 < 0 < 0.38 | 0.96 < 0 < 0.04 | |
bTRIMP (AU) HML = 353.56 MML = 168.79 (±38.38) | R2 | 0.11 | 0.11 | 0.10 | 0.66 | 0.39 | 0.31 |
Estimate (95% CI) | −0.00 (−0.001 to 0.004) | −0.01 (−0.007 to 0.005) | −0.01 (−0.013 to 0.001) | −0.00 (−0.007 to 0.004) | −0.00 (−0.006 to 0.005) | −0.02 (−0.035 to 0.002) | |
Probability ∆ < 0 < | 0.76 < 0 < 0.24 | 0.64 < 0 < 0.36 | 0.99 < 0 < 0.01 | 0.68 < 0 < 0.32 | 0.59 < 0 < 0.41 | 0.95 < 0 < 0.05 |
Well-Being Questionnaire (WB) | |||||||
---|---|---|---|---|---|---|---|
Fatigue | Sleep Quality | Muscle Soreness | Stress Levels | Mood | Total Well-Being | ||
TD (m) HML = 9422.00 MML = 5570.96 (±1003.03) | R2 | 0.22 | 0.09 | 0.05 | 0.65 | 0.34 | 0.33 |
Estimate (95% CI) | −0.00 (−0.000 to 0.000) | −0.00 (−0.001 to 0.000) | −0.00 (−0.000 to 0.000) | −0.00 (−0.000 to 0.000) | −0.00 (−0.000 to 0.000) | −0.00 (−0.002 to 0.000) | |
Probability ∆ < 0 < | 0.67 < 0 < 0.33 | 0.81 < 0 < 0.19 | 0.55 < 0 < 0.45 | 0.81 < 0 < 0.19 | 0.65 < 0 < 0.35 | 0.86 < 0 < 0.14 | |
PL (AU) HML = 930.00 MML = 531.64 (±99.43) | R2 | 0.22 | 0.10 | 0.05 | 0.65 | 0.34 | 0.34 |
Estimate (95% CI) | −0.00 (−0.005 to 0.002) | −0.00 (−0.005 to 0.003) | −0.00 (−0.003 to 0.004) | −0.00 (−0.004 to 0.002) | −0.00 (−0.005 to 0.001) | −0.01 (−0.017 to 0.004) | |
Probability ∆ < 0 < | 0.74 < 0 < 0.26 | 0.92 < 0 < 0.08 | 0.46 < 0 < 0.54 | 0.75 < 0 < 0.25 | 0.83 < 0 < 0.17 | 0.88 < 0 < 0.12 | |
iHSD (m) HML = 3052.00 MML = 1673.80 (±367.01) | R2 | 0.23 | 0.09 | 0.05 | 0.65 | 0.36 | 0.37 |
Estimate (95% CI) | −0.00 (−0.001 to 0.000) | −0.00 (−0.001 to −0.000) | −0.00 (−0.001 to 0.000) | −0.000 (−0.001 to 0.000) | −0.00 (−0.001 to 0.001) | −0.00 (−0.005 to 0.000) | |
Probability ∆ < 0 < | 0.84 < 0 < 0.16 | 0.86 < 0 < 0.14 | 0.78 < 0 < 0.22 | 0.85 < 0 < 0.15 | 0.78 < 0 < 0.22 | 0.97 < 0 < 0.03 | |
HSD (m) HML = 2415.00 MML = 1249.04 (±303.14) | R2 | 0.24 | 0.10 | 0.06 | 0.65 | 0.35 | 0.37 |
Estimate (95% CI) | −0.00 (−0.002 to 0.000) | −0.00 (−0.000 to −0.000) | −0.00 (−0.001 to 0.000) | −0.00 (−0.001 to 0.000) | −0.00 (−0.001 to 0.001) | −0.00 (−0.001 to 0.000) | |
Probability ∆ < 0 < | 0.89 < 0 < 0.11 | 0.84 < 0 < 0.16 | 0.85 < 0 < 0.15 | 0.88 < 0 < 0.12 | 0.75 < 0 < 0.25 | 0.97 < 0 < 0.03 | |
VHSD (m) HML = 787.00 MML = 389.41 (±105.34) | R2 | 0.24 | 0.09 | 0.05 | 0.64 | 0.34 | 0.33 |
Estimate (95% CI) | −0.00 (−0.004 to 0.001) | −0.00 (−0.003 to 0.001) | −0.00 (−0.003 to 0.001) | −0.00 (−0.003 to 0.001) | −0.00 (−0.002 to 0.002) | −0.00 (−0.011 to 0.002) | |
Probability ∆ < 0 < | 0.86 < 0 < 0.14 | 0.86 < 0 < 0.14 | 0.76 < 0 < 0.24 | 0.75 < 0 < 0.25 | 0.54 < 0 < 0.46 | 0.90 < 0 < 0.10 |
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Taylor, R.; Myers, T.D.; Sanders, D.; Ellis, M.; Akubat, I. The Relationship between Training Load Measures and Next-Day Well-Being in Rugby Union Players. Appl. Sci. 2021, 11, 5926. https://doi.org/10.3390/app11135926
Taylor R, Myers TD, Sanders D, Ellis M, Akubat I. The Relationship between Training Load Measures and Next-Day Well-Being in Rugby Union Players. Applied Sciences. 2021; 11(13):5926. https://doi.org/10.3390/app11135926
Chicago/Turabian StyleTaylor, Richard, Tony D. Myers, Dajo Sanders, Matthew Ellis, and Ibrahim Akubat. 2021. "The Relationship between Training Load Measures and Next-Day Well-Being in Rugby Union Players" Applied Sciences 11, no. 13: 5926. https://doi.org/10.3390/app11135926
APA StyleTaylor, R., Myers, T. D., Sanders, D., Ellis, M., & Akubat, I. (2021). The Relationship between Training Load Measures and Next-Day Well-Being in Rugby Union Players. Applied Sciences, 11(13), 5926. https://doi.org/10.3390/app11135926