Yang Wei-Fa, Su Yu-Xiong
Division of Oral and Maxillofacial Surgery, Faculty of Dentistry, The University of Hong Kong, Hong Kong Special Administrative Region.
Division of Oral and Maxillofacial Surgery, Faculty of Dentistry, The University of Hong Kong, Hong Kong Special Administrative Region.
Oral Oncol. 2021 Jul;118:105360. doi: 10.1016/j.oraloncology.2021.105360. Epub 2021 May 24.
The image segmentation of skull CT is the cornerstone for the computer-assisted craniomaxillofacial surgery in multiple aspects. This study aims to introduce an AI-enabled automatic segmentation and propose its prospect in facilitating the computer-assisted surgery.
Three patients enrolled in a clinical trial of computer-assisted craniomaxillofacial surgery were randomly selected for this study. The preoperative helical CT scans of the head and neck region were subjected to the AI-enabled automatic segmentation in Mimics Viewer. The performance of AI segmentation was evaluated based on the requirements of computer-assisted surgery.
All three patients were successfully segmented by the AI-enabled automatic segmentation. The performance of AI segmentation was excellent regarding key anatomical structures. The overall quality of bone surface was satisfying. The median DICE coefficient was 92.4% for the maxilla, and 94.9% for the mandible, which fulfilled the requirements of computer-assisted craniomaxillofacial surgery.
The AI-enabled automatic segmentation could facilitate the preoperative virtual planning and postoperative outcome verification, which formed a feedback loop to enhance the current workflow of computer-assisted surgery. More studies are warranted to confirm the robustness of AI segmentation with more cases.
颅骨CT图像分割在多个方面是计算机辅助颅颌面外科手术的基石。本研究旨在介绍一种基于人工智能的自动分割方法,并探讨其在促进计算机辅助手术方面的前景。
本研究随机选取了3例参加计算机辅助颅颌面外科手术临床试验的患者。对头颈部区域的术前螺旋CT扫描在Mimics Viewer中进行基于人工智能的自动分割。基于计算机辅助手术的要求评估人工智能分割的性能。
所有3例患者均通过基于人工智能的自动分割成功完成分割。人工智能分割在关键解剖结构方面表现出色。骨表面的整体质量令人满意。上颌骨的中位DICE系数为92.4%,下颌骨为94.9%,满足计算机辅助颅颌面外科手术的要求。
基于人工智能的自动分割可促进术前虚拟规划和术后结果验证,形成一个反馈回路以优化当前计算机辅助手术工作流程。需要更多研究以通过更多病例证实人工智能分割的稳健性。