Computer-aided designed 3D-printed polymeric scaffolds for personalized reconstruction of maxillary and mandibular defects: a proof-of-concept study

Author:

Mattavelli DavideORCID,Verzeletti Vincenzo,Deganello Alberto,Fiorentino Antonio,Gualtieri Tommaso,Ferrari Marco,Taboni Stefano,Anfuso William,Ravanelli Marco,Rampinelli Vittorio,Grammatica Alberto,Buffoli Barbara,Maroldi Roberto,Elisabetta Ceretti,Rezzani Rita,Nicolai Piero,Piazza Cesare

Abstract

Abstract Purpose To investigate the potential reconstruction of complex maxillofacial defects using computer-aided design 3D-printed polymeric scaffolds by defining the production process, simulating the surgical procedure, and explore the feasibility and reproducibility of the whole algorithm. Methods This a preclinical study to investigate feasibility, reproducibility and efficacy of the reconstruction algorithm proposed. It encompassed 3 phases: (1) scaffold production (CAD and 3D-printing in polylactic acid); (2) surgical simulation on cadaver heads (navigation-guided osteotomies and scaffold fixation); (3) assessment of reconstruction (bone and occlusal morphological conformance, symmetry, and mechanical stress tests). Results Six cadaver heads were dissected. Six types of defects (3 mandibular and 3 maxillary) with different degree of complexity were tested. In all case the reconstruction algorithm could be successfully completed. Bone morphological conformance was optimal while the occlusal one was slightly higher. Mechanical stress tests were good (mean value, 318.6 and 286.4 N for maxillary and mandibular defects, respectively). Conclusions Our reconstructive algorithm was feasible and reproducible in a preclinical setting. Functional and aesthetic outcomes were satisfactory independently of the complexity of the defect.

Funder

Università degli Studi di Brescia

Publisher

Springer Science and Business Media LLC

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