ID | 119604 |
タイトル別表記 | Segmentation of Mandibular Canal on Dental Cone Beam CT Images with AI Development Support Software for Medical Images
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著者 |
鳥井, 浩平
徳島大学
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キーワード | 医用画像
人工知能
セグメンテーション
CBCT
下顎管
Medical Images
Artificial Intelligence (AI)
Segmentation
Cone Beam CT(CBCT)
Mandibular Canal
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資料タイプ |
学術雑誌論文
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抄録 | The primary barrier to the development of artificial intelligence (AI) in medical imaging is data collection. Medical professionals generate training data for the development of medical imaging AI; however, this process is time-consuming and labor-intensive. Consequently, insufficient data collection frequently results in the premature discontinuation of AI model development. To address this challenge, we developed a software tool named ‘Aidia’ to support the research and development of medical imaging AI. Aidia offers functionalities such as a medical image viewer, data annotation, model training for various tasks, model evaluation, and automated annotation using trained models. For data annotation, Aidia allows users to annotate images by generating polygons, rectangles, polylines, lines, and points. Aidia supports Digital Imaging and Communications in Medicine images as well as general image formats, and we optimized it for annotating medical images. Moreover, Aidia utilizes open-source Python and PyQt5 libraries to build a cross-platform graphical user interface. Thus, Aidia provides a platform where medical professionals can develop, evaluate, and create training data for AI models at no cost. In this study, we developed a segmentation model based on U-Net to predict mandibular canals in cross-sectional jawbone images using Aidia. We collected 8,287 images annotated by a radiologist and trained the segmentation model using these data. The trained model achieved a precision of 0.805, recall of 0.752, F1 score of 0.777, and average precision of 0.869 on test data, accurately generating training data for the test images. Aidia is a promising solution for AI development and image annotation in the medical field.
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掲載誌名 |
歯科放射線
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ISSN | 03899705
21856311
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cat書誌ID | AN00101479
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出版者 | 日本歯科放射線学会
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巻 | 64
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号 | 1
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開始ページ | 11
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終了ページ | 19
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発行日 | 2024
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EDB ID | |
出版社版DOI | |
出版社版URL | |
フルテキストファイル | |
言語 |
jpn
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著者版フラグ |
出版社版
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部局 |
理工学系
歯学系
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