Automated condylar seating assessment using a deep learning-based three-step approach.

IF 3.1 2区 医学 Q1 DENTISTRY, ORAL SURGERY & MEDICINE
Bo Berends, Shankeeth Vinayahalingam, Frank Baan, Tabea Flügge, Thomas Maal, Stefaan Bergé, Guide de Jong, Tong Xi
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引用次数: 0

Abstract

Objectives: In orthognatic surgery, one of the primary determinants for reliable three-dimensional virtual surgery planning (3D VSP) and an accurate transfer of 3D VSP to the patient in the operation room is the condylar seating. Incorrectly seated condyles would primarily affect the accuracy of maxillary-first bimaxillary osteotomies as the maxillary repositioning is dependent on the positioning of the mandible in the cone-beam computed tomography (CBCT) scan. This study aimed to develop and validate a novel tool by utilizing a deep learning algorithm that automatically evaluates the condylar seating based on CBCT images as a proof of concept.

Materials and methods: As a reference, 60 CBCT scans (120 condyles) were labeled. The automatic assessment of condylar seating included three main parts: segmentation module, ray-casting, and feed-forward neural network (FFNN). The AI-based algorithm was trained and tested using fivefold cross validation. The method's performance was evaluated by comparing the labeled ground truth with the model predictions on the validation dataset.

Results: The model achieved an accuracy of 0.80, positive predictive value of 0.61, negative predictive value of 0.9 and F1-score of 0.71. The sensitivity and specificity of the model was 0.86 and 0.78, respectively. The mean AUC over all folds was 0.87.

Conclusion: The innovative integration of multi-step segmentation, ray-casting and a FFNN demonstrated to be a viable approach for automating condylar seating assessment and have obtained encouraging results.

Clinical relevance: Automated condylar seating assessment using deep learning may improve orthognathic surgery, preventing errors and enhancing patient outcomes in maxillary-first bimaxillary osteotomies.

Abstract Image

使用基于深度学习的三步法自动评估髁状突坐位。
目的:在正颌外科手术中,可靠的三维虚拟手术规划(3D VSP)以及在手术室中将 3D VSP 准确传输给患者的主要决定因素之一是髁状突的就位。不正确的髁状突就位主要会影响上颌先行双颌截骨术的准确性,因为上颌的重新定位取决于锥形束计算机断层扫描(CBCT)中下颌骨的定位。本研究旨在开发和验证一种新型工具,利用深度学习算法根据 CBCT 图像自动评估髁状突就位,以此作为概念验证:作为参考,标记了 60 张 CBCT 扫描图像(120 个髁突)。髁突坐位自动评估包括三个主要部分:分割模块、光线铸造和前馈神经网络(FFNN)。基于人工智能的算法通过五倍交叉验证进行了训练和测试。通过比较标注的地面真实数据和模型对验证数据集的预测,对该方法的性能进行了评估:结果:该模型的准确率为 0.80,阳性预测值为 0.61,阴性预测值为 0.9,F1 分数为 0.71。模型的灵敏度和特异度分别为 0.86 和 0.78。所有褶皱的平均 AUC 为 0.87:结论:多步骤分割、光线铸造和 FFNN 的创新整合被证明是一种可行的髁状突坐位自动评估方法,并取得了令人鼓舞的结果:利用深度学习自动评估髁状突坐位可改善正颌外科手术,在上颌第一双颌截骨术中防止错误并提高患者疗效。
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来源期刊
Clinical Oral Investigations
Clinical Oral Investigations 医学-牙科与口腔外科
CiteScore
6.30
自引率
5.90%
发文量
484
审稿时长
3 months
期刊介绍: The journal Clinical Oral Investigations is a multidisciplinary, international forum for publication of research from all fields of oral medicine. The journal publishes original scientific articles and invited reviews which provide up-to-date results of basic and clinical studies in oral and maxillofacial science and medicine. The aim is to clarify the relevance of new results to modern practice, for an international readership. Coverage includes maxillofacial and oral surgery, prosthetics and restorative dentistry, operative dentistry, endodontics, periodontology, orthodontics, dental materials science, clinical trials, epidemiology, pedodontics, oral implant, preventive dentistiry, oral pathology, oral basic sciences and more.
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