Skip to main navigation Skip to search Skip to main content

Time-to-event analysis for sports injury research part 1: time-varying exposures

  • Rasmus Nielsen
  • , MIchael Lejbach Bertelsen
  • , Daniel Ramskov
  • , Merete Møller
  • , Adam Hulme
  • , Daniel Theisen
  • , Caroline Finch
  • , Laura Victoria Fortington
  • , Mohammad Ali Mansournia
  • , Erik Parner
  • Aarhus University
  • University of Southern Denmark
  • Federation University Australia, Australian Collaboration for Research into Injury in Sports and its Prevention.
  • Centre of Human Factors and Sociotechnical Systems. University of the Sunshine Coast
  • Sports Medicine Research Laboratory, Luxembourg Institute of Health, Luxembourg, Luxembourg
  • School of Medical and Health Sciences, Edith Cowan University, Western Australia, Australia.
  • Tehran University of Medical Sciences

Research output: Contribution to journalJournal articleResearchpeer-review

Abstract

Background ‘How much change in training load is too much before injury is sustained, among different athletes?’ is a key question in sports medicine and sports science. To address this question the investigator/practitioner must analyse exposure variables that change over time, such as change in training load. Very few studies have included time-varying exposures (eg, training load) and time-varying effect-measure modifiers (eg, previous injury, biomechanics, sleep/stress) when studying sports injury aetiology.Aim To discuss advanced statistical methods suitable for the complex analysis of time-varying exposures such as changes in training load and injury-related outcomes.Content Time-varying exposures and time-varying effect-measure modifiers can be used in time-to-event models to investigate sport injury aetiology. We address four key-questions (i) Does time-to-event modelling allow change in training load to be included as a time-varying exposure for sport injury development? (ii) Why is time-to-event analysis superior to other analytical concepts when analysing training-load related data that changes status over time? (iii) How can researchers include change in training load in a time-to-event analysis? and, (iv) Are researchers able to include other time-varying variables into time-to-event analyses? We emphasise that cleaning datasets, setting up the data, performing analyses with time-varying variables and interpreting the results is time-consuming, and requires dedication. It may need you to ask for assistance from methodological peers as the analytical approaches presented this paper require specialist knowledge and well-honed statistical skills.Conclusion To increase knowledge about the association between changes in training load and injury, we encourage sports injury researchers to collaborate with statisticians and/or methodological epidemiologists to carefully consider applying time-to-event models to prospective sports injury data. This will ensure appropriate interpretation of time-to-event data.
Original languageEnglish
JournalBritish Journal of Sports Medicine
Volume53
Issue number1
Pages (from-to)61-68
Number of pages8
ISSN0306-3674
DOIs
Publication statusPublished - 9 Nov 2018

Keywords

  • physiotherapy

Fingerprint

Dive into the research topics of 'Time-to-event analysis for sports injury research part 1: time-varying exposures'. Together they form a unique fingerprint.

Cite this