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部署一种用于在锥束CT上分割特定解剖结构的新型深度学习框架。

Deploying a novel deep learning framework for segmentation of specific anatomical structures on cone-beam CT.

作者信息

Yuce Fatma, Buyuk Cansu, Bilgir Elif, Çelik Özer, Bayrakdar İbrahim Şevki

机构信息

Dentistry Faculty, Dentomaxillofacial Radiology, Istanbul Kent University, Cihangir, Sıraselviler St. No:71, 34433, Beyoğlu/İstanbul, Türkiye.

Dentistry Faculty, Dentomaxillofacial Radiology, Istanbul Okan University, Istanbul, Türkiye.

出版信息

Oral Radiol. 2025 May 30. doi: 10.1007/s11282-025-00831-4.

Abstract

AIM

Cone-beam computed tomography (CBCT) imaging plays a crucial role in dentistry, with automatic prediction of anatomical 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, mandibular 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.

摘要

目的

锥形束计算机断层扫描(CBCT)成像在牙科领域发挥着关键作用,在CBCT图像上自动预测解剖结构可能会增强诊断和治疗计划程序。本研究旨在使用深度学习算法在CBCT图像上自动预测解剖结构。

材料与方法

分析了70例患者的CBCT图像。两名口腔颌面放射科医生使用注释软件中的区域分割工具对解剖结构进行注释。每个体积数据集包含405个切片,每个切片中标记了相关的解剖结构。70张DICOM图像被转换为Nifti格式,其中7张留作测试,其余63张用于训练。训练使用nnUNetv2,初始学习率为0.01,每个epoch下降0.00001,共进行1000个epoch。统计分析包括准确率、Dice分数、精确率和召回率结果。

结果

分割模型对鼻窝、上颌窦、鼻腭管、下颌管、颏孔和下颌孔的分割准确率达到0.99,相应的Dice分数分别为0.85、0.98、0.79、0.73、0.78和0.74。精确率值范围为0.73至0.98。上颌窦分割表现最佳,而下颌管分割表现最差。

结论

结果表明,大多数结构的分割具有较高的准确性和精确性,不同的Dice分数表明了分割的一致性。总体而言,我们的分割模型在描绘CBCT图像中的解剖特征方面表现出强大的性能,在牙科诊断和治疗计划中具有潜在的应用前景。

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