Time-to-event analysis for sports injury research part 1: time-varying exposures
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M. Mansournia | C. Finch | D. Theisen | A. Hulme | L. Fortington | E. Parner | R. Nielsen | M. Møller | M. L. Bertelsen | D. Ramskov
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