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Time-to-event analysis for sports injury research part 2: time-varying outcomes.

Rasmus Oestergaard NielsenMichael Lejbach BertelsenDaniel RamskovMerete MøllerAdam HulmeDaniel TheisenCaroline F Finch AoLauren Victoria FortingtonMohammad Ali MansourniaErik Thorlund Parner
Published in: British journal of sports medicine (2018)
Time-to-event analyses can handle time-varying outcomes, competing risk and multiple subsequent injuries. Although powerful, time-to-event has important requirements: researchers are encouraged to carefully consider prior to any data collection that five injuries per exposure state or transition is needed to avoid conducting statistical analyses on time-to-event data leading to biased results. This requirement becomes particularly difficult to accommodate when a stratified analysis is required as the number of variables increases exponentially for each additional strata included. In future sports injury research, we need stratified analyses if the target of our research is to respond to the question: 'how much change in training load is too much before injury is sustained, among athletes with different characteristics?' Responding to this question using multiple time-varying exposures (and outcomes) requires millions of injuries. This should not be a barrier for future research, but collaborations across borders to collecting the amount of data needed seems to be an important step forward.
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