Detection of extracranial and intracranial calcified carotid artery atheromas in cone beam computed tomography using a deep learning convolutional neural network image segmentation approach

被引:2
|
作者
Alajaji, Shahd A. [1 ,2 ,3 ]
Amarin, Rula [4 ]
Masri, Radi [4 ]
Tavares, Tiffany [5 ]
Kumar, Vandana [1 ]
Price, Jeffery B. [1 ,2 ]
Sultan, Ahmed S. [1 ,2 ,6 ]
机构
[1] Univ Maryland, Sch Dent, Dept Oncol & Diagnost Sci, Baltimore, MD 20742 USA
[2] Univ Maryland, Sch Dent, Div Artificial Intelligence Res, Baltimore, MD 21201 USA
[3] King Saud Univ, Coll Dent, Dept Oral Med & Diagnost Sci, Riyadh, Saudi Arabia
[4] Univ Maryland, Sch Dent, Dept Adv Oral Sci & Therapeut, Baltimore, MD 21201 USA
[5] UT Hlth San Antonio, Sch Dent, Dept Comprehens Dent, San Antonio, TX USA
[6] Univ Maryland, Marlene & Stewart Greenebaum Comprehens Canc Ctr, Baltimore, MD 20742 USA
关键词
D O I
10.1016/j.oooo.2023.08.009
中图分类号
R78 [口腔科学];
学科分类号
1003 ;
摘要
Objective. We leveraged an artificial intelligence deep-learning convolutional neural network (DL CNN) to detect calcified carotid artery atheromas (CCAAs) on cone beam computed tomography (CBCT) images. Study Design. We obtained 137 full -volume CBCT scans with previously diagnosed CCAAs. The DL model was trained on 170 single axial CBCT slices, 90 with extracranial CCAAs and 80 with intracranial CCAAs. A board-certified oral and maxillofacial radiologist confirmed the presence of each CCAA. Transfer learning through a U-Net-based CNN architecture was utilized. Data allocation was 60% training, 10% validation, and 30% testing. We determined the accuracy of the DL model in detecting CCAA by calculating the mean training and validation accuracy and the area under the receiver operating characteristic curve (AUC). We reserved 5 randomly selected unseen full CBCT volumes for final testing. Results. The mean training and validation accuracy of the model in detecting extracranial CCAAs was 92% and 82%, respectively, and the AUC was 0.84 with 1.0 sensitivity and 0.69 specificity. The mean training and validation accuracy in detecting intracranial CCAAs was 61% and 70%, respectively, and the AUC was 0.5 with 0.93 sensitivity and 0.08 specificity. Testing of full -volume scans yielded an AUC of 0.72 and 0.55 for extracranial and intracranial CCAAs, respectively. Conclusion. Our DL model showed excellent discrimination in detecting extracranial CCAAs on axial CBCT images and acceptable discrimination on full -volumes but poor discrimination in detecting intracranial CCAAs, for which further research is required. (Oral Surg Oral Med Oral Pathol Oral Radiol 2024;138:162-172)
引用
收藏
页码:162 / 172
页数:11
相关论文
共 50 条
  • [1] Cone Beam Computed Tomography Image Quality Improvement Using a Deep Convolutional Neural Network
    Kida, Satoshi
    Nakamoto, Takahiro
    Nakano, Masahiro
    Nawa, Kanabu
    Haga, Akihiro
    Kotoku, Jun'ichi
    Yamashita, Hideomi
    Nakagawa, Keiichi
    CUREUS, 2018, 10 (04):
  • [2] Automated Detection of Cervical Carotid Artery Calcifications in Cone Beam Computed Tomographic Images Using Deep Convolutional Neural Networks
    Ajami, Maryam
    Tripathi, Pavani
    Ling, Haibin
    Mahdian, Mina
    DIAGNOSTICS, 2022, 12 (10)
  • [3] Deep Learning-Based Image Segmentation of Cone-Beam Computed Tomography Images for Oral Lesion Detection
    Wang, Xueling
    Meng, Xianmin
    Yan, Shu
    JOURNAL OF HEALTHCARE ENGINEERING, 2021, 2021
  • [4] Deep learning in cone-beam computed tomography image segmentation for the diagnosis and treatment of acute pulpitis
    Xiaoyan Zhang
    Xiaoyan Zhu
    Zhiqiang Xie
    The Journal of Supercomputing, 2022, 78 : 11245 - 11264
  • [5] Deep learning in cone-beam computed tomography image segmentation for the diagnosis and treatment of acute pulpitis
    Zhang, Xiaoyan
    Zhu, Xiaoyan
    Xie, Zhiqiang
    JOURNAL OF SUPERCOMPUTING, 2022, 78 (09): : 11245 - 11264
  • [6] Improvement on cone beam computed tomography in radiation treatment using a deep learning network
    Zhao, Yutong
    Guo, Kaiming
    Lee, Richard
    Ahmed, Naseer
    Dubey, Arbind
    McCurdy, Boyd
    MEDICAL PHYSICS, 2021, 48 (08) : 4680 - 4680
  • [7] Deep convolutional neural network-based automated segmentation of the maxillofacial complex from cone-beam computed tomography:A validation study
    Preda, Flavia
    Morgan, Nermin
    Van Gerven, Adriaan
    Nogueira-Reis, Fernanda
    Smolders, Andreas
    Wang, Xiaotong
    Nomidis, Stefanos
    Shaheen, Eman
    Willems, Holger
    Jacobs, Reinhilde
    JOURNAL OF DENTISTRY, 2022, 124
  • [8] Deep convolutional neural network-based automated segmentation of the maxillofacial complex from cone-beam computed tomography:A validation study
    Preda, Flavia
    Morgan, Nermin
    Van Gerven, Adriaan
    Nogueira-Reis, Fernanda
    Smolders, Andreas
    Wang, Xiaotong
    Nomidis, Stefanos
    Shaheen, Eman
    Willems, Holger
    Jacobs, Reinhilde
    JOURNAL OF DENTISTRY, 2022, 124
  • [9] Image correction for cone-beam computed tomography simulator using neural network corrector
    Chen, Chin-Sheng
    Hsu, Cheng-Yi
    Chen, Shih-Kang
    Lin, Chih-Jer
    Hsieh, Ching-Hao
    Liu, Yi-Hung
    ADVANCES IN MECHANICAL ENGINEERING, 2017, 9 (02)
  • [10] Automatic segmentation of dental cone-beam computed tomography scans using a deep learning framework
    Hegyi, Alexandra
    Somodi, Kristof
    Pinter, Csaba
    Molnar, Balint
    Windisch, Peter
    Garcia-Mato, David
    Diaz-Pinto, Andres
    Palkovics, Daniel
    ORVOSI HETILAP, 2024, 165 (32) : 1242 - 1251