Towards a complex systems approach in sports injury research: simulating running-related injury development with agent-based modelling
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Rasmus Oestergaard Nielsen | Paul M Salmon | Gemma J M Read | Adam Hulme | Jason Thompson | P. Salmon | G. Read | A. Hulme | Jason Thompson | R. Nielsen
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