Biomechanical study using fuzzy systems to quantify collagen fiber recruitment and predict creep of the rabbit medial collateral ligament.
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C B Frank | N G Shrive | M M Reda Taha | A F Ali | G M Thornton | C. Frank | N. Shrive | G. Thornton | M. Taha | A. F. Ali
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