基于深度学习的三维头颅特征点检测的准确性和可靠性。

IF 3.4 3区 医学 Q2 MEDICINE, RESEARCH & EXPERIMENTAL
Boyan Liu, Chang Liu, Yutao Xiong, Hailin Zhu, Wei Zeng, Jinglong Chen, Jixiang Guo, Wei Liu, Wei Tang
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引用次数: 0

摘要

背景:三维(3D)地标检测对于评估颅面生长和计划手术至关重要,如正畸、正颌、创伤和整形手术。本研究旨在建立口腔颌面部区域的自动三维地标模型,并验证其在螺旋ct (SCT, 41个地标)和锥束ct (CBCT, 14个地标)扫描中的准确性、鲁棒性和泛化性。方法:采用优化的轻量级3D U-Net网络架构实现该模型。通过一项多中心回顾性诊断研究,对其准确性、稳健性和通用性进行了全面评估和验证。该模型在480例SCT和240例CBCT的数据集上进行了训练和测试。对320例SCT和150例CBCT病例的不同数据集进行了额外的推断。测量平均径向误差(MRE)和2、3和4毫米误差阈值内的成功率作为主要评价指标。对各坐标轴上的地标检测进行误差分析。对观察员进行了一致性测试。结果:SCT和CBCT的平均MRE始终低于1.3 mm,特别是在复杂情况下,如错颌、缺失牙标和存在金属伪影,MRE均低于1.4 mm。体外、内置SCT和CBCT组在2-4 mm处的MRE和SDR无显著差异。SCT骨标记比牙科标记更精确,骨/软组织和牙科/软组织之间没有差异。与骨标记相比,CBCT牙标记显示出更高的准确性。对各坐标轴的详细误差分析表明,冠状轴的错误率最高。该模型的实施显著提高了高级和初级专家的地标熟练度,分别提高了15.9%和28.9%,同时GUI交互时间也加快了6-9.5倍。结论:本研究表明,即使在复杂的场景下,人工智能驱动的模型也能实现口腔颌面部地标的高精度3D定位。该模型显示了作为一种有前途的计算机辅助工具的潜力,可以帮助专家进行准确和有效的定位分析;然而,其稳健性和普遍性需要前瞻性临床验证,以确保不同经验水平的效用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Accuracy and reliability of 3D cephalometric landmark detection with deep learning.

Background: Three-dimensional (3D) landmark detection is essential for assessing craniofacial growth and planning surgeries, such as orthodontic, orthognathic, traumatic, and plastic procedures. This study aimed to develop an automatic 3D landmarking model for oral and maxillofacial regions and to validate its accuracy, robustness and generalizability in both spiral computed tomography (SCT, 41 landmarks) and cone-beam computed tomography (CBCT, 14 landmarks) scans.

Methods: The model was implemented using an optimized lightweight 3D U-Net network architecture. Its accuracy, robustness and generalizability were thoroughly evaluated and validated through a multicenter retrospective diagnostic study. The model was trained and tested on a data set of 480 SCT and 240 CBCT cases. An additional inference on a different data set of 320 SCT and 150 CBCT cases was performed. Mean radial error (MRE) and success detection rate within 2-, 3-, and 4-mm error thresholds were measured as the primary evaluation metrics. Error analyses for landmark detection along each coordinate axis were performed. Consistency tests among observers were conducted.

Results: The average MRE for both SCT and CBCT was consistently below 1.3 mm and, notably, below 1.4 mm in complex conditions, such as malocclusion, missing dental landmarks, and the presence of metal artifacts. No significant differences in MRE and SDR at 2-4 mm were observed between external and internal SCT and CBCT sets. SCT bone landmarks were more precise than dental ones, with no difference between bone/soft tissue and dental/soft tissue. CBCT dental landmarks exhibited greater precision compared to bone landmarks. A detailed error analysis across the coordinate axes showed that the coronal axis had the highest error rates. The implementation of this model significantly improved the landmarking proficiency of senior and junior specialists by 15.9% and 28.9%, respectively, while also achieving a 6-9.5-fold acceleration in GUI interaction time.

Conclusions: This study shows that the AI-driven model delivers high-precision 3D localization of oral and maxillofacial landmarks, even in complex scenarios. The model demonstrates potential as a promising computer-aided tool to assist specialists in conducting accurate and efficient localization analyses; however, its robustness and generalizability require prospective clinical validation to ensure utility across varied experience levels.

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来源期刊
European Journal of Medical Research
European Journal of Medical Research 医学-医学:研究与实验
CiteScore
3.20
自引率
0.00%
发文量
247
审稿时长
>12 weeks
期刊介绍: European Journal of Medical Research publishes translational and clinical research of international interest across all medical disciplines, enabling clinicians and other researchers to learn about developments and innovations within these disciplines and across the boundaries between disciplines. The journal publishes high quality research and reviews and aims to ensure that the results of all well-conducted research are published, regardless of their outcome.
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