Human running performance from real-world big data

Nat Commun. 2020 Oct 6;11(1):4936. doi: 10.1038/s41467-020-18737-6.

Abstract

Wearable exercise trackers provide data that encode information on individual running performance. These data hold great potential for enhancing our understanding of the complex interplay between training and performance. Here we demonstrate feasibility of this idea by applying a previously validated mathematical model to real-world running activities of ≈ 14,000 individuals with ≈ 1.6 million exercise sessions containing duration and distance, with a total distance of ≈ 20 million km. Our model depends on two performance parameters: an aerobic power index and an endurance index. Inclusion of endurance, which describes the decline in sustainable power over duration, offers novel insights into performance: a highly accurate race time prediction and the identification of key parameters such as the lactate threshold, commonly used in exercise physiology. Correlations between performance indices and training volume and intensity are quantified, pointing to an optimal training. Our findings hint at new ways to quantify and predict athletic performance under real-world conditions.

MeSH terms

  • Athletes
  • Big Data
  • Exercise / physiology
  • Humans
  • Lactic Acid / metabolism
  • Models, Theoretical*
  • Oxygen Consumption
  • Physical Endurance / physiology
  • Running / physiology*
  • Wearable Electronic Devices

Substances

  • Lactic Acid