Fully automated film mounting in dental radiography: a deep learning model

被引:1
|
作者
Lin, Yu-Chun [1 ,2 ]
Chen, Meng-Chi [3 ]
Chen, Cheng-Hsueh [4 ]
Chen, Mu-Hsiung [5 ]
Liu, Kang-Yi [6 ]
Chang, Cheng-Chun [6 ]
机构
[1] Chang Gung Mem Hosp Linkou, Dept Med Imaging & Intervent, Taoyuan, Taiwan
[2] Chang Gung Univ, Dept Med Imaging & Radiol Sci, Taoyuan, Taiwan
[3] Chang Gung Mem Hosp Taipei, Dept Dent, Taipei, Taiwan
[4] Natl Taiwan Univ Hosp, Dept Dent, Hsin Chu Branch, Hsinchu, Taiwan
[5] Natl Taiwan Univ Hosp, Dept Dent, Taipei, Taiwan
[6] Natl Taipei Univ Technol, Dept Elect Engn, 1,Sec 3,Zhongxiao E Rd, Taipei 10608, Taiwan
关键词
Radiography; Dental; Deep learning;
D O I
10.1186/s12880-023-01064-9
中图分类号
R8 [特种医学]; R445 [影像诊断学];
学科分类号
1002 ; 100207 ; 1009 ;
摘要
BackgroundDental film mounting is an essential but time-consuming task in dental radiography, with manual methods often prone to errors. This study aims to develop a deep learning (DL) model for accurate automated classification and mounting of both intraoral and extraoral dental radiography.MethodThe present study employed a total of 22,334 intraoral images and 1,035 extraoral images to train the model. The performance of the model was tested on an independent internal dataset and two external datasets from different institutes. Images were categorized into 32 tooth areas. The VGG-16, ResNet-18, and ResNet-101 architectures were used for pretraining, with the ResNet-101 ultimately being chosen as the final trained model. The model's performance was evaluated using metrics of accuracy, precision, recall, and F1 score. Additionally, we evaluated the influence of misalignment on the model's accuracy and time efficiency.ResultsThe ResNet-101 model outperformed VGG-16 and ResNet-18 models, achieving the highest accuracy of 0.976, precision of 0.969, recall of 0.984, and F1-score of 0.977 (p < 0.05). For intraoral images, the overall accuracy remained consistent across both internal and external datasets, ranging from 0.963 to 0.972, without significant differences (p = 0.348). For extraoral images, the accuracy consistently achieved the highest value of 1 across all institutes. The model's accuracy decreased as the tilt angle of the X-ray film increased. The model achieved the highest accuracy of 0.981 with correctly aligned films, while the lowest accuracy of 0.937 was observed for films exhibiting severe misalignment of & PLUSMN; 15 & DEG; (p < 0.001). The average time required for the tasks of image rotation and classification for each image was 0.17 s, which was significantly faster than that of the manual process, which required 1.2 s (p < 0.001).ConclusionThis study demonstrated the potential of DL-based models in automating dental film mounting with high accuracy and efficiency. The proper alignment of X-ray films is crucial for accurate classification by the model.
引用
收藏
页数:9
相关论文
共 50 条
  • [11] Deep learning model for fully automated breast cancer detection system from thermograms
    Mohamed, Esraa A.
    Rashed, Essam A.
    Gaber, Tarek
    Karam, Omar
    PLOS ONE, 2022, 17 (01):
  • [12] Developing deep learning methods for classification of teeth in dental panoramic radiography
    Yilmaz, Serkan
    Tasyurek, Murat
    Amuk, Mehmet
    Celik, Mete
    Canger, Emin Murat
    ORAL SURGERY ORAL MEDICINE ORAL PATHOLOGY ORAL RADIOLOGY, 2024, 138 (01): : 118 - 127
  • [13] Automated radiography assessment of ankle joint instability using deep learning
    Seungha Noh
    Mu Sook Lee
    Byoung-Dai Lee
    Scientific Reports, 15 (1)
  • [14] Assessment of deep learning technique for fully automated mandibular segmentation
    Yurdakurban, Ebru
    Sukut, Yagizalp
    Duran, Gokhan Serhat
    AMERICAN JOURNAL OF ORTHODONTICS AND DENTOFACIAL ORTHOPEDICS, 2025, 167 (02) : 242 - 249
  • [15] Fully automated sinogram-based deep learning model for detection and classification of intracranial hemorrhage
    Sindhura, Chitimireddy
    Al Fahim, Mohammad
    Yalavarthy, Phaneendra K.
    Gorthi, Subrahmanyam
    MEDICAL PHYSICS, 2024, 51 (03) : 1944 - 1956
  • [16] Fully automated esophagus segmentation with a hierarchical deep learning approach
    Trullo, Roger
    Petitjean, Caroline
    Nie, Dong
    Shen, Dinggang
    Ruan, Su
    2017 IEEE INTERNATIONAL CONFERENCE ON SIGNAL AND IMAGE PROCESSING APPLICATIONS (ICSIPA), 2017, : 503 - 506
  • [17] Deep learning for the fully automated segmentation of the inner ear on MRI
    Akshayaa Vaidyanathan
    Marly F. J. A. van der Lubbe
    Ralph T. H. Leijenaar
    Marc van Hoof
    Fadila Zerka
    Benjamin Miraglio
    Sergey Primakov
    Alida A. Postma
    Tjasse D. Bruintjes
    Monique A. L. Bilderbeek
    Hammer Sebastiaan
    Patrick F. M. Dammeijer
    Vincent van Rompaey
    Henry C. Woodruff
    Wim Vos
    Seán Walsh
    Raymond van de Berg
    Philippe Lambin
    Scientific Reports, 11
  • [18] Deep learning for the fully automated segmentation of the inner ear on MRI
    Vaidyanathan, Akshayaa
    van der Lubbe, Marly F. J. A.
    Leijenaar, Ralph T. H.
    van Hoof, Marc
    Zerka, Fadila
    Miraglio, Benjamin
    Primakov, Sergey
    Postma, Alida A.
    Bruintjes, Tjasse D.
    Bilderbeek, Monique A. L.
    Sebastiaan, Hammer
    Dammeijer, Patrick F. M.
    van Rompaey, Vincent
    Woodruff, Henry C.
    Vos, Wim
    Walsh, Sean
    van de Berg, Raymond
    Lambin, Philippe
    SCIENTIFIC REPORTS, 2021, 11 (01)
  • [19] A Fully Automated Deep Learning Network for Brain Tumor Segmentation
    Yogananda, Chandan Ganesh Bangalore
    Shah, Bhavya R.
    Vejdani-Jahromi, Maryam
    Nalawade, Sahil S.
    Murugesan, Gowtham K.
    Yu, Frank F.
    Pinho, Marco C.
    Wagner, Benjamin C.
    Emblem, Kyrre E.
    Bjornerud, Atle
    Fei, Baowei
    Madhuranthakam, Ananth J.
    Maldjian, Joseph A.
    TOMOGRAPHY, 2020, 6 (02) : 186 - 193
  • [20] Fully Automated Deep Learning System for Bone Age Assessment
    Lee, Hyunkwang
    Tajmir, Shahein
    Lee, Jenny
    Zissen, Maurice
    Yeshiwas, Bethel Ayele
    Alkasab, Tarik K.
    Choy, Garry
    Do, Synho
    JOURNAL OF DIGITAL IMAGING, 2017, 30 (04) : 427 - 441