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Physiol Behav ; 225: 113110, 2020 10 15.
Artículo en Inglés | MEDLINE | ID: mdl-32738318

RESUMEN

OBJECTIVE: Present study examines predictors of the overall race time and disciplines in the Olympic distance triathlon. METHODS: Thirty-nine male and six female triathletes were evaluated for anthropometric, physiological, genetic, training, clinical and circadian characteristics. Body composition, maximum capacity for oxygen uptake (V˙O2max), maximum aerobic velocity (MAV), anaerobic threshold (AT), triathlon experience (TE) and XX genotype for α-actinin 3 affected total race time (p<0.05). RESULTS: Total race time can be predicted by MAV (ß = -0.430, t = -3.225, p = 0.003), TE (ß = -0.378, t = -3.605, p = 0.001), and percentage of lean mass (%LM) (ß = -0.332, t = -2.503, p = 0.017). Swimming can be predicted by MAV (ß = -0.403, t = -3.239, p = 0.002), TE (ß = -0.339, t = -2.876, p = 0.007), and AT%V˙O2max (ß = 0.281, t = 2.278, p = 0.028). Cycling can be predicted by MAV (ß = -0.341, t = -2.333, p = 0.025), TE (ß = -0.363, t = -3.172, p = 0.003), and %LM (ß = -0.326, t = -2.265, p = 0.029). In running split, MAV (ß = -0.768, t = -6.222, p < 0.001) was the only parameter present in the best multiple linear regression model. CONCLUSION: The most important variables in multiple regression models for estimating performance were MAV, TE, AT and %LM.


Asunto(s)
Ciclismo , Carrera , Composición Corporal , Femenino , Humanos , Masculino , Consumo de Oxígeno , Resistencia Física , Natación , Factores de Tiempo
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