Are Multilevel functional models the next step in sports biomechanics and wearable technology? A case study of Knee Biomechanics patterns in typical training sessions of recreational runners
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Marcos Matabuena | Sherveen Riazati | Nick Caplan | Phil Hayes | N. Caplan | Phil Hayes | M. Matabuena | S. Riazati
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