A Novel Self-Assessment Method for Training Access Cavity on 3D Printed Endodontic Models

Author:

Meglioli Matteo1ORCID,Mergoni Giovanni1ORCID,Artioli Francesco1,Ghezzi Benedetta12ORCID,Manfredi Maddalena1,Macaluso Guido Maria12ORCID,Lumetti Simone12

Affiliation:

1. Center of Dental Medicine, Department of Medicine and Surgery, University of Parma, Via Gramsci 14, 43126 Parma, Italy

2. IMEM-CNR, Parco Area delle Scienze 37/A, 43124 Parma, Italy

Abstract

Background: New technologies can facilitate the transition from pre-clinical to clinical settings. We investigate students’ satisfaction with a novel learning method adopted in access cavity exercises. Methods: Students performed their access cavity on inexpensive, in-house 3D printed teeth. Their performances were evaluated by scanning the prepared teeth with an intraoral scanner and visualized using a mesh processing software. Then, the same software was used to align the tooth prepared by the student and the teacher’s one for self-assessment purposes. Students were asked to answer a questionnaire about their experiences with this new learning method. Results: From the teacher’s perspective, this novel learning approach was easy, straightforward and affordable. Overall, student feedback was positive: 73% found that access cavity assessment by scanning was more useful compared to a visual inspection under magnification and 57% reported that they had a better understanding of errors and mishaps. On the other hand, students pointed out that the material used to print teeth was too soft. Conclusion: The use of in-house 3D printed teeth in pre-clinical training is a simple way to overcome some of the drawbacks associated with extracted teeth, such as limited availability, variability, cross-infection control, and ethical constraints. The use of intraoral scanners and mesh processing software could improve student self-assessment.

Publisher

MDPI AG

Subject

General Dentistry

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