Deploying a novel deep learning framework for segmentation of specifc anatomical structures on cone‑beam CT
Künye
Yüce, F., Büyük, C., Bilgir, E., Çelik, Ö., Bayrakdar, İŞ. Deploying a novel deep learning framework for segmentation of specific anatomical structures on cone-beam CT. Oral Radiol (2025).Özet
Aim Cone-beam computed tomography (CBCT) imaging plays a crucial role in dentistry, with automatic prediction of ana tomical structures on CBCT images potentially enhancing diagnostic and planning procedures. This study aims to predict
anatomical structures automatically on CBCT images using a deep learning algorithm.
Materials and methods CBCT images from 70 patients were analyzed. Anatomical structures were annotated using a regional
segmentation tool within an annotation software by two dentomaxillofacial radiologists. Each volumetric dataset comprised
405 slices, with relevant anatomical structures marked in each slice. Seventy DICOM images were converted to Nifti format,
with seven reserved for testing and the remaining sixty-three used for training. The training utilized nnUNetv2 with an initial
learning rate of 0.01, decreasing by 0.00001 at each epoch, and was conducted for 1000 epochs. Statistical analysis included
accuracy, Dice score, precision, and recall results.
Results The segmentation model achieved an accuracy of 0.99 for nasal fossa, maxillary sinus, nasopalatine canal, mandibu lar canal, foramen mentale, and foramen mandible, with corresponding Dice scores of 0.85, 0.98, 0.79, 0.73, 0.78, and 0.74,
respectively. Precision values ranged from 0.73 to 0.98. Maxillary sinus segmentation exhibited the highest performance,
while mandibular canal segmentation showed the lowest performance.
Conclusion The results demonstrate high accuracy and precision across most structures, with varying Dice scores indicating
the consistency of segmentation. Overall, our segmentation model exhibits robust performance in delineating anatomical
features in CBCT images, promising potential applications in dental diagnostics and treatment planning.
Kaynak
Oral RadiologyBağlantı
https://link.springer.com/article/10.1007/s11282-025-00831-4https://doi.org/10.1007/s11282-025-00831-4
https://hdl.handle.net/20.500.12780/1147