Search Results
-
1
Uncovering the spectrum of orthostatic hypotension in athletes with spinal cord injury: Implications for diagnosis, classification, and performance
Sobeeh, M. G., Malik, R. N., Thordarson, T., Currie, K. D., Hubli, M., West, C. R., Sachdeva, R., Krassioukov, A.Published in Medicine & Science in Sports & Exercise (2026)article -
2
-
3
-
4
-
5
A field-based predictive model for evidence-based classification in male footballers with cerebral palsy
Reina, R., Quesada Rico, J. A., Sarabia, J. M., Roldan, A., Castillo, D., Iturricastillo, A., Henríquez, M., Cornejo, M. I., Yanci, J.Published in Scandinavian Journal of Medicine & Science in Sports (2026)article -
6
-
7
-
8
-
9
-
10
-
11
Beyond self-reports after anterior cruciate ligament injury - machine learning methods for classifying and identifying movement patterns related to fear of re-injury
Karbalaie, A., Strong, A., Nordström, T., Schelin, L., Selling, J., Grip, H., Prorok, K., Häger, C. K.Published in Journal of Sports Sciences (2026)article -
12
-
13
-
14
-
15
-
16
-
17
-
18
Deriving movement categories in rugby sevens
Finnegan, C., Scriney, M., O`Hagan, A. D., McManus, L., Curran, O., Walsh, J. C., Bezbradica, M.Published in European Journal of Sport Science (2026)article -
19
Muscle injuries in 90 professional football players over 10 consecutive seasons: A comparison of two classification systems and their association with return-to-play time
Huber, P. J., Schönnagel, B., Dalos, D., Frosch, K.-H., Adam, G., Welsch, G. H.Published in Scandinavian Journal of Medicine & Science in Sports (2025)article -
20