A Random Forest Machine Learning Framework to Reduce Running Injuries in Young Triathletes

Sensors (Basel). 2020 Nov 9;20(21):6388. doi: 10.3390/s20216388.

Abstract

Background: The running segment of a triathlon produces 70% of the lower limb injuries. Previous research has shown a clear association between kinematic patterns and specific injuries during running.

Methods: After completing a seven-month gait retraining program, a questionnaire was used to assess 19 triathletes for the incidence of injuries. They were also biomechanically analyzed at the beginning and end of the program while running at a speed of 90% of their maximum aerobic speed (MAS) using surface sensor dynamic electromyography and kinematic analysis. We used classification tree (random forest) techniques from the field of artificial intelligence to identify linear and non-linear relationships between different biomechanical patterns and injuries to identify which styles best prevent injuries.

Results: Fewer injuries occurred after completing the program, with athletes showing less pelvic fall and greater activation in gluteus medius during the first phase of the float phase, with increased trunk extension, knee flexion, and decreased ankle dorsiflexion during the initial contact with the ground.

Conclusions: The triathletes who had suffered the most injuries ran with increased pelvic drop and less activation in gluteus medius during the first phase of the float phase. Contralateral pelvic drop seems to be an important variable in the incidence of injuries in young triathletes.

Keywords: gait retraining; kinematics; running.

MeSH terms

  • Adolescent
  • Athletes
  • Athletic Injuries / prevention & control*
  • Biomechanical Phenomena
  • Electromyography
  • Gait*
  • Humans
  • Machine Learning*
  • Running / injuries*