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Real-Time Performance Prediction in Long-Distance Trail Running: A Practical Model Based on Terrain Difficulty and

Héctor Gutiérrez1, Eduardo Piedrafita1, Pablo Jesús Bascuas1

  • 1Facultad de Ciencias de la Salud, Universidad San Jorge, Autovía A-23 Zaragoza-Huesca, km 299, Villanueva de Gállego, 50830 Zaragoza, Spain.

Sports (Basel, Switzerland)
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Summary
This summary is machine-generated.

This study introduces a real-time predictive model for trail running races, using in-race data to estimate finish times. The model accurately forecasts performance, aiding athletes in adjusting strategies during marathons and ultra-trail events.

Keywords:
endurance sportsfatigue managementpacing strategyperformance monitoringtrail running

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Area of Science:

  • Sports Science
  • Endurance Sports Analytics
  • Performance Prediction Modeling

Background:

  • Traditional performance prediction models for trail running often rely on lab tests or pre-race data, limiting practical, real-time application.
  • Accurate prediction of marathon and ultra-trail race performance is crucial for strategic planning and injury prevention.

Purpose of the Study:

  • To develop and validate a real-time predictive model for marathon and ultra-trail races using in-race data.
  • To assess the model's predictive power across different sexes and race types.
  • To provide a practical tool for athletes and coaches to monitor and optimize race strategy.

Main Methods:

  • Analysis of 947 runners from the 'Trail Valle de Tena' event.
  • Development of predictive equations using data from the first third of the race.
  • Inclusion of variables such as weighted time (WTn), pacing variability (WTVn,n+2), and checkpoint percentile rank (CPRn).

Main Results:

  • The developed model demonstrated strong predictive power, with an adjusted R-squared value greater than 0.95.
  • The model effectively estimated total race time using only early-race data.
  • Key variables (WTn, WTVn,n+2, CPRn) reflected a runner's ability to manage elevation and pacing consistency.

Conclusions:

  • The real-time predictive model is highly applicable in field conditions, offering a practical alternative to lab-based methods.
  • The model provides valuable insights for fatigue management and performance optimization during endurance races.
  • Further validation in similar events is recommended to confirm its utility for training and competition planning.