A model for the stretch-mediated enzymatic degradation of silk fibers

拉伸介导的丝纤维酶促降解模型

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作者:Jonathan A Kluge, Amy Thurber, Gary G Leisk, David L Kaplan, A Luis Dorfmann

Abstract

To restore physiological function through regenerative medicine, biomaterials introduced into the body must degrade at a rate that matches new tissue formation. For effective therapies, it is essential that we understand the interaction between physiological factors, such as routine mechanical loading specific to sites of implantation, and the resultant rate of material degradation. These relationships are poorly characterized at this time. We hypothesize that mechanical forces alter the rates of remodeling of biomaterials, and this impact is modulated by the concentration of enzymes and the duration of the mechanical loads encountered in situ. To test this hypothesis we subjected silk fibroin fibers to repeated cyclic loading in the presence of enzymatic degradation (either alpha-chymotrypsin or Protease XIV) and recorded the stress-strain response. Data were collected daily for a duration of 2 weeks and compared to the control cases of stretched fibers in the presence of phosphate buffered saline or non-stretched samples in the presence of enzyme alone. We observed that incubation with proteases in the absence of mechanical loads causes a reduction of the ultimate tensile strength but no change in stiffness. However, cyclic loading caused the accumulation of residual strain and softening in the material's properties. We utilize these data to formulate a mathematical model to account for residual strain and reduction of mechanical properties during silk fiber degradation. Numerical predictions are in fair agreement with experimental data. The improved understanding of the degradation phenomenon will be significant in many clinical repair cases and may be synergistic to decrease silk's mechanical properties after in vivo implantation.

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