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Preparation of Photothermal-Sensitive PDGF@ZIF-8-PDA@COL/PLGA-TCP Composite Scaffolds for Bone Defect Repair

Materials & Design(2022)

Department of Plastic and Reconstructive Surgery

Cited 16|Views19
Abstract
The repair of bone defects has long been a challenging and significant health question. Here, collagen hydrogel incorporating platelet-derived growth factor (PDGF)-loaded photopolymerizable ZIF-8-PDA nanoparticles (PDGF@ZIF-8-PDA@COL hydrogel) was prepared and perfused into 3D printed poly (lactide-co-glycolide)-tricalcium phosphate (PLGA-TCP) scaffolds. The resulting PDGF@ZIF-8-PDA@COL/ PLGA-TCP composite scaffolds were applied as a bone substitute for cranial bone defect repair. The photopolymerizable ZIF-8-PDA nanoparticles had a mean size of 226.2 +/- 5.3 nm with photothermal conversion capacity. PDGF@ZIF-8-PDA@COL/PLGA-TCP composite scaffolds showed a slower release of PDGF compared to PDGF release from collagen hydrogels. The composite scaffolds exhibited excellent antibacterial properties and good in vitro osteoconductive capacity. The osteoconductive activities of PDGF@ZIF8-PDA@COL/PLGA-TCP composite scaffolds were also investigated in a rat cranial bone defect model in vivo by micro-CT imaging, hematoxylin and eosin staining, Masson's trichrome staining, and immunohistochemical staining of osteogenesis-related markers. The PDGF@ZIF-8-PDA@COL/PLGA-TCP composite scaffolds accelerated cranial bone formation and gradually degraded over time. All these results provided strong evidence that PDGF@ZIF-8-PDA@COL/PLGA-TCP composite scaffolds might be a promising system for bone defect repair.(c) 2022 The Authors. Published by Elsevier Ltd. This is an open access article under the CC BY-NC-ND license (http://creativecommons.org/licenses/by-nc-nd/4.0/).
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Key words
Cranial defects,Photothermal,Growth factor,Composite scaffolds,Bone regeneration
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