Children’s dental panoramic radiographs dataset for caries segmentation and dental disease detection

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作者
Yifan Zhang
Fan Ye
Lingxiao Chen
Feng Xu
Xiaodiao Chen
Hongkun Wu
Mingguo Cao
Yunxiang Li
Yaqi Wang
Xingru Huang
机构
[1] Sichuan University,State Key Laboratory of Oral Diseases, National Clinical Research Center for Oral Diseases, West China Hospital of Stomatology
[2] Tohoku University Graduate School of Dentistry,Division of Advanced Prosthetic Dentistry
[3] Hangzhou Dental Hospital Group,Lishui University, School of Medicine, Hangzhou Geriatric Stomatology Hospital
[4] Lishui University,School of Medicine and Health Sciences
[5] Lishui,College of Media Engineering
[6] Hangzhou Dianzi University,Department of Radiation Oncology
[7] Communication University of Zhejiang,School of Electronic Engineering and Computer Science
[8] University of Texas Southwestern Medical Center,undefined
[9] Queen Mary University of London,undefined
[10] Mile End Road,undefined
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摘要
When dentists see pediatric patients with more complex tooth development than adults during tooth replacement, they need to manually determine the patient’s disease with the help of preoperative dental panoramic radiographs. To the best of our knowledge, there is no international public dataset for children’s teeth and only a few datasets for adults’ teeth, which limits the development of deep learning algorithms for segmenting teeth and automatically analyzing diseases. Therefore, we collected dental panoramic radiographs and cases from 106 pediatric patients aged 2 to 13 years old, and with the help of the efficient and intelligent interactive segmentation annotation software EISeg (Efficient Interactive Segmentation) and the image annotation software LabelMe. We propose the world’s first dataset of children’s dental panoramic radiographs for caries segmentation and dental disease detection by segmenting and detecting annotations. In addition, another 93 dental panoramic radiographs of pediatric patients, together with our three internationally published adult dental datasets with a total of 2,692 images, were collected and made into a segmentation dataset suitable for deep learning.
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