利用深度学习模型在螺旋计算机断层扫描上自动检测颧骨骨折。

IF 2.7
A Yari, P Fasih, L Kamali Hakim, A Asadi
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引用次数: 0

摘要

本研究的目的是评估YOLOv8深度学习模型检测颧骨骨折的性能。收集颧骨骨折的计算机断层扫描,并对所有切片进行注释,以识别骨折线,分为7类:颧腋缝、颧弓、颧额缝、颧骨缝、眶底、颧体和上颌窦壁。图像以6:2:2的比例分为训练、验证和测试数据集。计算了每个类别的性能指标。共获取轴位13988片,冠位14107片。训练后的算法准确率为94.2-97.9%。所有类别的召回率均超过90%,其中蝶颧缝骨骨折的召回率最高(96.6%)。平均精度最高的是颧弓骨折(0.827),最低的是颧体骨折(0.692)。颧腋缝骨骨折F1评分最高为96.7%,颧体骨折F1评分最低为82.1%。曲线下面积(AUC)在颧腋缝合处最高(0.943),颧骨体骨折处最低(0.876)。YOLOv8模型在自动检测颧骨骨折方面显示出良好的结果,在识别颧腋缝和颧弓骨折方面达到了最高的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automated detection of zygomatic fractures on spiral computed tomography using a deep learning model.

The aim of this study was to evaluate the performance of the YOLOv8 deep learning model for detecting zygomatic fractures. Computed tomography scans with zygomatic fractures were collected, with all slices annotated to identify fracture lines across seven categories: zygomaticomaxillary suture, zygomatic arch, zygomaticofrontal suture, sphenozygomatic suture, orbital floor, zygomatic body, and maxillary sinus wall. The images were divided into training, validation, and test datasets in a 6:2:2 ratio. Performance metrics were calculated for each category. A total of 13,988 axial and 14,107 coronal slices were retrieved. The trained algorithm achieved accuracy of 94.2-97.9%. Recall exceeded 90% across all categories, with sphenozygomatic suture fractures having the highest value (96.6%). Average precision was highest for zygomatic arch fractures (0.827) and lowest for zygomatic body fractures (0.692). The highest F1 score was 96.7% for zygomaticomaxillary suture fractures, and the lowest was 82.1% for zygomatic body fractures. Area under the curve (AUC) values were also highest for zygomaticomaxillary suture (0.943) and lowest for zygomatic body fractures (0.876). The YOLOv8 model demonstrated promising results in the automated detection of zygomatic fractures, achieving the highest performance in identifying fractures of the zygomaticomaxillary suture and zygomatic arch.

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