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Journal Article Multi-Scale 3D Cephalometric Landmark Detection based on Direct Regression with 3D CNN Architectures
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Authors
Chanho Song, Yoosoo Jeong, Hyungkyu Huh, Jee-Woong Park, Jun-Young Paeng, Jaemyung Ahn, Jaebum Son, Euisung Jung
Issue Date
2024-11
Citation
DIAGNOSTICS, v.14, no.22, pp.1-12
ISSN
2075-4418
Publisher
MDPI
Language
English
Type
Journal Article
DOI
https://dx.doi.org/10.3390/diagnostics14222605
Abstract
Background: Cephalometric analysis is important in diagnosing and planning treatments for patients, traditionally relying on 2D cephalometric radiographs. With advancements in 3D imaging, automated landmark detection using deep learning has gained prominence. However, 3D imaging introduces challenges due to increased network complexity and computational demands. This study proposes a multi-scale 3D CNN-based approach utilizing direct regression to improve the accuracy of maxillofacial landmark detection. Methods: The method employs a coarse-to-fine framework, first identifying landmarks in a global context and then refining their positions using localized 3D patches. A clinical dataset of 150 CT scans from maxillofacial surgery patients, annotated with 30 anatomical landmarks, was used for training and evaluation. Results: The proposed method achieved an average RMSE of 2.238 mm, outperforming conventional 3D CNN architectures. The approach demonstrated consistent detection without failure cases. Conclusions: Our multi-scale-based 3D CNN framework provides a reliable method for automated landmark detection in maxillofacial CT images, showing potential for other clinical applications.
KSP Keywords
3D CNN, 3D imaging, Anatomical landmarks, Automated landmark detection, Based Approach, CT image, CT scan, Cephalometric analysis, Maxillofacial surgery, Multi-scale, Training and evaluation
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