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Transfer Learning via Deep Neural Networks for Implant Fixture System Classification Using Periapical Radiographs

In the absence of accurate medical records, it is critical to correctly classify implant fixture systems using periapical radiographs to provide accurate diagnoses and treatments to patients or to respond to complications. The purpose of this study was to evaluate whether deep neural networks can id...

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Autores principales: Kim, Jong-Eun, Nam, Na-Eun, Shim, June-Sung, Jung, Yun-Hoa, Cho, Bong-Hae, Hwang, Jae Joon
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2020
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7230319/
https://www.ncbi.nlm.nih.gov/pubmed/32295304
http://dx.doi.org/10.3390/jcm9041117
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author Kim, Jong-Eun
Nam, Na-Eun
Shim, June-Sung
Jung, Yun-Hoa
Cho, Bong-Hae
Hwang, Jae Joon
author_facet Kim, Jong-Eun
Nam, Na-Eun
Shim, June-Sung
Jung, Yun-Hoa
Cho, Bong-Hae
Hwang, Jae Joon
author_sort Kim, Jong-Eun
collection PubMed
description In the absence of accurate medical records, it is critical to correctly classify implant fixture systems using periapical radiographs to provide accurate diagnoses and treatments to patients or to respond to complications. The purpose of this study was to evaluate whether deep neural networks can identify four different types of implants on intraoral radiographs. In this study, images of 801 patients who underwent periapical radiographs between 2005 and 2019 at Yonsei University Dental Hospital were used. Images containing the following four types of implants were selected: Brånemark Mk TiUnite, Dentium Implantium, Straumann Bone Level, and Straumann Tissue Level. SqueezeNet, GoogLeNet, ResNet-18, MobileNet-v2, and ResNet-50 were tested to determine the optimal pre-trained network architecture. The accuracy, precision, recall, and F1 score were calculated for each network using a confusion matrix. All five models showed a test accuracy exceeding 90%. SqueezeNet and MobileNet-v2, which are small networks with less than four million parameters, showed an accuracy of approximately 96% and 97%, respectively. The results of this study confirmed that convolutional neural networks can classify the four implant fixtures with high accuracy even with a relatively small network and a small number of images. This may solve the inconveniences associated with unnecessary treatments and medical expenses caused by lack of knowledge about the exact type of implant.
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spelling pubmed-72303192020-05-22 Transfer Learning via Deep Neural Networks for Implant Fixture System Classification Using Periapical Radiographs Kim, Jong-Eun Nam, Na-Eun Shim, June-Sung Jung, Yun-Hoa Cho, Bong-Hae Hwang, Jae Joon J Clin Med Article In the absence of accurate medical records, it is critical to correctly classify implant fixture systems using periapical radiographs to provide accurate diagnoses and treatments to patients or to respond to complications. The purpose of this study was to evaluate whether deep neural networks can identify four different types of implants on intraoral radiographs. In this study, images of 801 patients who underwent periapical radiographs between 2005 and 2019 at Yonsei University Dental Hospital were used. Images containing the following four types of implants were selected: Brånemark Mk TiUnite, Dentium Implantium, Straumann Bone Level, and Straumann Tissue Level. SqueezeNet, GoogLeNet, ResNet-18, MobileNet-v2, and ResNet-50 were tested to determine the optimal pre-trained network architecture. The accuracy, precision, recall, and F1 score were calculated for each network using a confusion matrix. All five models showed a test accuracy exceeding 90%. SqueezeNet and MobileNet-v2, which are small networks with less than four million parameters, showed an accuracy of approximately 96% and 97%, respectively. The results of this study confirmed that convolutional neural networks can classify the four implant fixtures with high accuracy even with a relatively small network and a small number of images. This may solve the inconveniences associated with unnecessary treatments and medical expenses caused by lack of knowledge about the exact type of implant. MDPI 2020-04-14 /pmc/articles/PMC7230319/ /pubmed/32295304 http://dx.doi.org/10.3390/jcm9041117 Text en © 2020 by the authors. Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (http://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Kim, Jong-Eun
Nam, Na-Eun
Shim, June-Sung
Jung, Yun-Hoa
Cho, Bong-Hae
Hwang, Jae Joon
Transfer Learning via Deep Neural Networks for Implant Fixture System Classification Using Periapical Radiographs
title Transfer Learning via Deep Neural Networks for Implant Fixture System Classification Using Periapical Radiographs
title_full Transfer Learning via Deep Neural Networks for Implant Fixture System Classification Using Periapical Radiographs
title_fullStr Transfer Learning via Deep Neural Networks for Implant Fixture System Classification Using Periapical Radiographs
title_full_unstemmed Transfer Learning via Deep Neural Networks for Implant Fixture System Classification Using Periapical Radiographs
title_short Transfer Learning via Deep Neural Networks for Implant Fixture System Classification Using Periapical Radiographs
title_sort transfer learning via deep neural networks for implant fixture system classification using periapical radiographs
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7230319/
https://www.ncbi.nlm.nih.gov/pubmed/32295304
http://dx.doi.org/10.3390/jcm9041117
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