Fully automated identification of cephalometric landmarks for upper airway assessment using cascaded convolutional neural networks

被引:10
|
作者
Yoon, Hyun-Joo [1 ]
Kim, Dong-Ryul [1 ]
Gwon, Eunseo [2 ]
Kim, Namkug [2 ,3 ]
Baek, Seung-Hak [4 ]
Ahn, Hyo-Won [5 ]
Kim, Kyung-A [5 ]
Kim, Su-Jung [5 ]
机构
[1] Kyung Hee Univ, Grad Sch, Dept Dent, Seoul, South Korea
[2] Univ Ulsan, Asan Med Inst Convergence Sci & Technol, Asan Med Ctr, Dept Convergence Med,Coll Med, Seoul, South Korea
[3] Univ Ulsan, Asan Med Inst Convergence Sci & Technol, Dept Radiol, Asan Med Ctr,Coll Med, Seoul, South Korea
[4] Seoul Natl Univ, Sch Dent, Dept Orthodont, Seoul, South Korea
[5] Kyung Hee Univ, Sch Dent, Dept Orthodont, 1 Hoegi Dong, Seoul 02447, South Korea
关键词
ARTIFICIAL-INTELLIGENCE;
D O I
10.1093/ejo/cjab054
中图分类号
R78 [口腔科学];
学科分类号
1003 ;
摘要
Objectives The aim of the study was to evaluate the accuracy of a cascaded two-stage convolutional neural network (CNN) model in detecting upper airway (UA) soft tissue landmarks in comparison with the skeletal landmarks on the lateral cephalometric images. Materials and methods The dataset contained 600 lateral cephalograms of adult orthodontic patients, and the ground-truth positions of 16 landmarks (7 skeletal and 9 UA landmarks) were obtained from 500 learning dataset. We trained a UNet with EfficientNetB0 model through the region of interest-centred circular segmentation labelling process. Mean distance errors (MDEs, mm) of the CNN algorithm was compared with those from human examiners. Successful detection rates (SDRs, per cent) assessed within 1-4 mm precision ranges were compared between skeletal and UA landmarks. Results The proposed model achieved MDEs of 0.80 +/- 0.55 mm for skeletal landmarks and 1.78 +/- 1.21 mm for UA landmarks. The mean SDRs for UA landmarks were 72.22 per cent for 2 mm range, and 92.78 per cent for 4 mm range, contrasted with those for skeletal landmarks amounting to 93.43 and 98.71 per cent, respectively. As compared with mean interexaminer difference, however, this model showed higher detection accuracies for geometrically constructed UA landmarks on the nasopharynx (AD2 and Ss), while lower accuracies for anatomically located UA landmarks on the tongue (Td) and soft palate (Sb and St). Conclusion The proposed CNN model suggests the availability of an automated cephalometric UA assessment to be integrated with dentoskeletal and facial analysis.
引用
收藏
页码:66 / 77
页数:12
相关论文
共 50 条
  • [1] Accuracy of automated identification of lateral cephalometric landmarks using cascade convolutional neural networks on lateral cephalograms from nationwide multi-centres
    Kim, Jaerong
    Kim, Inhwan
    Kim, Yoon-Ji
    Kim, Minji
    Cho, Jin-Hyoung
    Hong, Mihee
    Kang, Kyung-Hwa
    Lim, Sung-Hoon
    Kim, Su-Jung
    Kim, Young Ho
    Kim, Namkug
    Sung, Sang-Jin
    Baek, Seung-Hak
    [J]. ORTHODONTICS & CRANIOFACIAL RESEARCH, 2021, 24 : 59 - 67
  • [2] Fully automated quantitative cephalometry using convolutional neural networks
    Arik S.Ö.
    Ibragimov B.
    Xing L.
    [J]. Journal of Medical Imaging, 2017, 4 (01)
  • [3] Automated detection of cephalometric landmarks using deep neural patchworks
    Weingart, Julia Vera
    Schlager, Stefan
    Metzger, Marc Christian
    Brandenburg, Leonard Simon
    Hein, Anna
    Schmelzeisen, Rainer
    Bamberg, Fabian
    Kim, Suam
    Kellner, Elias
    Reisert, Marco
    Russe, Maximilian Frederik
    [J]. DENTOMAXILLOFACIAL RADIOLOGY, 2023, 52 (06)
  • [4] Accuracy and clinical validity of automated cephalometric analysis using convolutional neural networks
    Kang, Seyun
    Kim, Inhwan
    Kim, Yoon-Ji
    Kim, Namkug
    Baek, Seung-Hak
    Sung, Sang-Jin
    [J]. ORTHODONTICS & CRANIOFACIAL RESEARCH, 2024, 27 (01) : 64 - 77
  • [5] Automated cephalometric landmark detection with confidence regions using Bayesian convolutional neural networks
    Jeong-Hoon Lee
    Hee-Jin Yu
    Min-ji Kim
    Jin-Woo Kim
    Jongeun Choi
    [J]. BMC Oral Health, 20
  • [6] Automated location of orofacial landmarks to characterize airway morphology in anaesthesia via deep convolutional neural networks
    Garcia-Garcia, Fernando
    Lee, Dae-Jin
    Mendoza-Garces, Francisco J.
    Irigoyen-Miro, Sofia
    Legarreta-Olabarrieta, Maria J.
    Garcia-Gutierrez, Susana
    Arostegui, Inmaculada
    [J]. COMPUTER METHODS AND PROGRAMS IN BIOMEDICINE, 2023, 232
  • [7] Fully automated carbonate petrography using deep convolutional neural networks
    Koeshidayatullah, Ardiansyah
    Morsilli, Michele
    Lehrmann, Daniel J.
    Al-Ramadan, Khalid
    Payne, Jonathan L.
    [J]. MARINE AND PETROLEUM GEOLOGY, 2020, 122 (122)
  • [8] Facial landmarks localization using cascaded neural networks
    Mahpod, Shahar
    Das, Rig
    Maiorana, Emanuele
    Keller, Yosi
    Campisi, Patrizio
    [J]. COMPUTER VISION AND IMAGE UNDERSTANDING, 2021, 205
  • [9] Automated cephalometric landmark detection with confidence regions using Bayesian convolutional neural networks
    Lee, Jeong-Hoon
    Yu, Hee-Jin
    Kim, Min-ji
    Kim, Jin-Woo
    Choi, Jongeun
    [J]. BMC ORAL HEALTH, 2020, 20 (01)
  • [10] Image Aesthetics Assessment Using Fully Convolutional Neural Networks
    Apostolidis, Konstantinos
    Mezaris, Vasileios
    [J]. MULTIMEDIA MODELING (MMM 2019), PT I, 2019, 11295 : 361 - 373