Graphical user interface-based convolutional neural network models for detecting nasopalatine duct cysts using panoramic radiography
Abstract Nasopalatine duct cysts are difficult to detect on panoramic radiographs due to obstructive shadows and are often overlooked. Therefore, sensitive detection using panoramic radiography is clinically important. This study aimed to create a trained model to detect nasopalatine duct cysts from...
Main Authors: | , , , , , , |
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Nature Portfolio
2024-04-01
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Series: | Scientific Reports |
Online Access: | https://doi.org/10.1038/s41598-024-57632-8 |
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author | Kotaro Ito Naohisa Hirahara Hirotaka Muraoka Eri Sawada Satoshi Tokunaga Tomohiro Komatsu Takashi Kaneda |
author_facet | Kotaro Ito Naohisa Hirahara Hirotaka Muraoka Eri Sawada Satoshi Tokunaga Tomohiro Komatsu Takashi Kaneda |
author_sort | Kotaro Ito |
collection | DOAJ |
description | Abstract Nasopalatine duct cysts are difficult to detect on panoramic radiographs due to obstructive shadows and are often overlooked. Therefore, sensitive detection using panoramic radiography is clinically important. This study aimed to create a trained model to detect nasopalatine duct cysts from panoramic radiographs in a graphical user interface-based environment. This study was conducted on panoramic radiographs and CT images of 115 patients with nasopalatine duct cysts. As controls, 230 age- and sex-matched patients without cysts were selected from the same database. The 345 pre-processed panoramic radiographs were divided into 216 training data sets, 54 validation data sets, and 75 test data sets. Deep learning was performed for 400 epochs using pretrained-LeNet and pretrained-VGG16 as the convolutional neural networks to classify the cysts. The deep learning system's accuracy, sensitivity, and specificity using LeNet and VGG16 were calculated. LeNet and VGG16 showed an accuracy rate of 85.3% and 88.0%, respectively. A simple deep learning method using a graphical user interface-based Windows machine was able to create a trained model to detect nasopalatine duct cysts from panoramic radiographs, and may be used to prevent such cysts being overlooked during imaging. |
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format | Article |
id | doaj.art-24af247c0c23441ca6f8f59382302fd3 |
institution | Directory Open Access Journal |
issn | 2045-2322 |
language | English |
last_indexed | 2024-04-24T12:40:11Z |
publishDate | 2024-04-01 |
publisher | Nature Portfolio |
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series | Scientific Reports |
spelling | doaj.art-24af247c0c23441ca6f8f59382302fd32024-04-07T11:17:38ZengNature PortfolioScientific Reports2045-23222024-04-011411710.1038/s41598-024-57632-8Graphical user interface-based convolutional neural network models for detecting nasopalatine duct cysts using panoramic radiographyKotaro Ito0Naohisa Hirahara1Hirotaka Muraoka2Eri Sawada3Satoshi Tokunaga4Tomohiro Komatsu5Takashi Kaneda6Department of Radiology, Nihon University School of Dentistry at MatsudoDepartment of Radiology, Nihon University School of Dentistry at MatsudoDepartment of Radiology, Nihon University School of Dentistry at MatsudoDepartment of Radiology, Nihon University School of Dentistry at MatsudoDepartment of Radiology, Nihon University School of Dentistry at MatsudoDepartment of Radiology, Nihon University School of Dentistry at MatsudoDepartment of Radiology, Nihon University School of Dentistry at MatsudoAbstract Nasopalatine duct cysts are difficult to detect on panoramic radiographs due to obstructive shadows and are often overlooked. Therefore, sensitive detection using panoramic radiography is clinically important. This study aimed to create a trained model to detect nasopalatine duct cysts from panoramic radiographs in a graphical user interface-based environment. This study was conducted on panoramic radiographs and CT images of 115 patients with nasopalatine duct cysts. As controls, 230 age- and sex-matched patients without cysts were selected from the same database. The 345 pre-processed panoramic radiographs were divided into 216 training data sets, 54 validation data sets, and 75 test data sets. Deep learning was performed for 400 epochs using pretrained-LeNet and pretrained-VGG16 as the convolutional neural networks to classify the cysts. The deep learning system's accuracy, sensitivity, and specificity using LeNet and VGG16 were calculated. LeNet and VGG16 showed an accuracy rate of 85.3% and 88.0%, respectively. A simple deep learning method using a graphical user interface-based Windows machine was able to create a trained model to detect nasopalatine duct cysts from panoramic radiographs, and may be used to prevent such cysts being overlooked during imaging.https://doi.org/10.1038/s41598-024-57632-8 |
spellingShingle | Kotaro Ito Naohisa Hirahara Hirotaka Muraoka Eri Sawada Satoshi Tokunaga Tomohiro Komatsu Takashi Kaneda Graphical user interface-based convolutional neural network models for detecting nasopalatine duct cysts using panoramic radiography Scientific Reports |
title | Graphical user interface-based convolutional neural network models for detecting nasopalatine duct cysts using panoramic radiography |
title_full | Graphical user interface-based convolutional neural network models for detecting nasopalatine duct cysts using panoramic radiography |
title_fullStr | Graphical user interface-based convolutional neural network models for detecting nasopalatine duct cysts using panoramic radiography |
title_full_unstemmed | Graphical user interface-based convolutional neural network models for detecting nasopalatine duct cysts using panoramic radiography |
title_short | Graphical user interface-based convolutional neural network models for detecting nasopalatine duct cysts using panoramic radiography |
title_sort | graphical user interface based convolutional neural network models for detecting nasopalatine duct cysts using panoramic radiography |
url | https://doi.org/10.1038/s41598-024-57632-8 |
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