Obtaining full-arch implant scan with smartphone video and deep learning: An in vitro investigation on trueness and precision.

IF 3.4 2区 医学 Q1 DENTISTRY, ORAL SURGERY & MEDICINE
Junying Li, Zhaozhao Chen, Fei Liu, Berna Saglik, Gusatvo Mendonca, Hom-Lay Wang
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引用次数: 0

Abstract

Purpose: To investigate the accuracy of complete-arch implant scans generated by a smartphone camera and a deep learning model.

Materials and methods: A deep learning model was trained to generate 3D scans from smartphone videos using a maxillary edentulous model with 6 implants and scan bodies (SBs). Three test groups were created: (1) deep learning 3D reconstruction with 1500 training epochs (DL1), (2) deep learning 3D reconstruction with 5000 training epochs (DL2), and (3) scans obtained from an intraoral scanner (IOS). Each method was repeated 10 times, with a desktop scanner scan as the reference. Test scans were aligned to the reference using two methods: (a) aligning all SBs to evaluate the overall fit, and (b) aligning just the first and second SBs to simulate passive fitting test of multiple implant-supported prostheses. Linear deviations from the reference model (trueness) and within each group (precision) were analyzed.

Results: For the overall fit, the DL2 group (67.69 ± 33.29 µm) showed significantly better (p < 0.05) mean trueness than the DL1 group (127.82 ± 73.07 µm), and similar trueness to the IOS group (57.42 ± 36.09 µm). However, the DL2 group (98.12 ± 59.85 µm) showed worse (p < 0.05) precision compared to the IOS group (64.54 ± 42.53 µm). In the virtual passive-fitting test, the DL2 group showed similar trueness and accuracy compared to the IOS group.

Conclusions: In the in vitro environment, combining smartphone videos with a deep learning model generated full arch implant scans with accuracy similar to an IOS. Although this accuracy is not good enough for clinical application, this approach shows promise as a potential direction for future development in economical full-arch implant scanning.

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来源期刊
CiteScore
7.90
自引率
15.00%
发文量
171
审稿时长
6-12 weeks
期刊介绍: The Journal of Prosthodontics promotes the advanced study and practice of prosthodontics, implant, esthetic, and reconstructive dentistry. It is the official journal of the American College of Prosthodontists, the American Dental Association-recognized voice of the Specialty of Prosthodontics. The journal publishes evidence-based original scientific articles presenting information that is relevant and useful to prosthodontists. Additionally, it publishes reports of innovative techniques, new instructional methodologies, and instructive clinical reports with an interdisciplinary flair. The journal is particularly focused on promoting the study and use of cutting-edge technology and positioning prosthodontists as the early-adopters of new technology in the dental community.
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