Artificial Intelligence in Fractured Dental Implant Detection and Classification: Evaluation Using Dataset from Two Dental Hospitals

Fracture of a dental implant (DI) is a rare mechanical complication that is a critical cause of DI failure and explantation. The purpose of this study was to evaluate the reliability and validity of a three different deep convolutional neural network (DCNN) architectures (VGGNet-19, GoogLeNet Incept...

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Main Authors: Dong-Woon Lee, Sung-Yong Kim, Seong-Nyum Jeong, Jae-Hong Lee
Format: Article
Language:English
Published: MDPI AG 2021-02-01
Series:Diagnostics
Subjects:
Online Access:https://www.mdpi.com/2075-4418/11/2/233
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spelling doaj-674e61bbf3ed47cea36867dfd434cfdf2021-02-04T00:05:33ZengMDPI AGDiagnostics2075-44182021-02-011123323310.3390/diagnostics11020233Artificial Intelligence in Fractured Dental Implant Detection and Classification: Evaluation Using Dataset from Two Dental HospitalsDong-Woon Lee0Sung-Yong Kim1Seong-Nyum Jeong2Jae-Hong Lee3Department of Periodontology, Veterans Health Service Medical Center, Seoul 05368, KoreaDepartment of Prosthodontics, Veterans Health Service Medical Center, Seoul 05368, KoreaDepartment of Periodontology, Daejeon Dental Hospital, Institute of Wonkwang Dental Research, Wonkwang University College of Dentistry, Daejeon 35233, KoreaDepartment of Periodontology, Daejeon Dental Hospital, Institute of Wonkwang Dental Research, Wonkwang University College of Dentistry, Daejeon 35233, KoreaFracture of a dental implant (DI) is a rare mechanical complication that is a critical cause of DI failure and explantation. The purpose of this study was to evaluate the reliability and validity of a three different deep convolutional neural network (DCNN) architectures (VGGNet-19, GoogLeNet Inception-v3, and automated DCNN) for the detection and classification of fractured DI using panoramic and periapical radiographic images. A total of 21,398 DIs were reviewed at two dental hospitals, and 251 intact and 194 fractured DI radiographic images were identified and included as the dataset in this study. All three DCNN architectures achieved a fractured DI detection and classification accuracy of over 0.80 AUC. In particular, automated DCNN architecture using periapical images showed the highest and most reliable detection (AUC = 0.984, 95% CI = 0.900–1.000) and classification (AUC = 0.869, 95% CI = 0.778–0.929) accuracy performance compared to fine-tuned and pre-trained VGGNet-19 and GoogLeNet Inception-v3 architectures. The three DCNN architectures showed acceptable accuracy in the detection and classification of fractured DIs, with the best accuracy performance achieved by the automated DCNN architecture using only periapical images.https://www.mdpi.com/2075-4418/11/2/233artificial intelligencedental implantsdeep learningsupervised machine learning
collection DOAJ
language English
format Article
sources DOAJ
author Dong-Woon Lee
Sung-Yong Kim
Seong-Nyum Jeong
Jae-Hong Lee
spellingShingle Dong-Woon Lee
Sung-Yong Kim
Seong-Nyum Jeong
Jae-Hong Lee
Artificial Intelligence in Fractured Dental Implant Detection and Classification: Evaluation Using Dataset from Two Dental Hospitals
Diagnostics
artificial intelligence
dental implants
deep learning
supervised machine learning
author_facet Dong-Woon Lee
Sung-Yong Kim
Seong-Nyum Jeong
Jae-Hong Lee
author_sort Dong-Woon Lee
title Artificial Intelligence in Fractured Dental Implant Detection and Classification: Evaluation Using Dataset from Two Dental Hospitals
title_short Artificial Intelligence in Fractured Dental Implant Detection and Classification: Evaluation Using Dataset from Two Dental Hospitals
title_full Artificial Intelligence in Fractured Dental Implant Detection and Classification: Evaluation Using Dataset from Two Dental Hospitals
title_fullStr Artificial Intelligence in Fractured Dental Implant Detection and Classification: Evaluation Using Dataset from Two Dental Hospitals
title_full_unstemmed Artificial Intelligence in Fractured Dental Implant Detection and Classification: Evaluation Using Dataset from Two Dental Hospitals
title_sort artificial intelligence in fractured dental implant detection and classification: evaluation using dataset from two dental hospitals
publisher MDPI AG
series Diagnostics
issn 2075-4418
publishDate 2021-02-01
description Fracture of a dental implant (DI) is a rare mechanical complication that is a critical cause of DI failure and explantation. The purpose of this study was to evaluate the reliability and validity of a three different deep convolutional neural network (DCNN) architectures (VGGNet-19, GoogLeNet Inception-v3, and automated DCNN) for the detection and classification of fractured DI using panoramic and periapical radiographic images. A total of 21,398 DIs were reviewed at two dental hospitals, and 251 intact and 194 fractured DI radiographic images were identified and included as the dataset in this study. All three DCNN architectures achieved a fractured DI detection and classification accuracy of over 0.80 AUC. In particular, automated DCNN architecture using periapical images showed the highest and most reliable detection (AUC = 0.984, 95% CI = 0.900–1.000) and classification (AUC = 0.869, 95% CI = 0.778–0.929) accuracy performance compared to fine-tuned and pre-trained VGGNet-19 and GoogLeNet Inception-v3 architectures. The three DCNN architectures showed acceptable accuracy in the detection and classification of fractured DIs, with the best accuracy performance achieved by the automated DCNN architecture using only periapical images.
topic artificial intelligence
dental implants
deep learning
supervised machine learning
url https://www.mdpi.com/2075-4418/11/2/233
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