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深度学习在口腔颌面外科 CT 重建、骨分割和手术规划中的应用综述。

A review on the application of deep learning for CT reconstruction, bone segmentation and surgical planning in oral and maxillofacial surgery.

机构信息

Department of Oral and Maxillofacial Surgery/Pathology, Amsterdam UMC and Academic Centre for Dentistry Amsterdam (ACTA), Vrije Universiteit Amsterdam, 3D Innovationlab, Amsterdam Movement Sciences, Amsterdam, The Netherlands.

Institute for Medical Systems Biology, University Hospital Hamburg-Eppendorf, Hamburg, Germany.

出版信息

Dentomaxillofac Radiol. 2022 Sep 1;51(7):20210437. doi: 10.1259/dmfr.20210437. Epub 2022 May 23.

Abstract

Computer-assisted surgery (CAS) allows clinicians to personalize treatments and surgical interventions and has therefore become an increasingly popular treatment modality in maxillofacial surgery. The current maxillofacial CAS consists of three main steps: (1) CT image reconstruction, (2) bone segmentation, and (3) surgical planning. However, each of these three steps can introduce errors that can heavily affect the treatment outcome. As a consequence, tedious and time-consuming manual post-processing is often necessary to ensure that each step is performed adequately. One way to overcome this issue is by developing and implementing neural networks (NNs) within the maxillofacial CAS workflow. These learning algorithms can be trained to perform specific tasks without the need for explicitly defined rules. In recent years, an extremely large number of novel NN approaches have been proposed for a wide variety of applications, which makes it a difficult task to keep up with all relevant developments. This study therefore aimed to summarize and review all relevant NN approaches applied for CT image reconstruction, bone segmentation, and surgical planning. After full text screening, 76 publications were identified: 32 focusing on CT image reconstruction, 33 focusing on bone segmentation and 11 focusing on surgical planning. Generally, convolutional NNs were most widely used in the identified studies, although the multilayer perceptron was most commonly applied in surgical planning tasks. Moreover, the drawbacks of current approaches and promising research avenues are discussed.

摘要

计算机辅助手术 (CAS) 允许临床医生对治疗方法和手术干预进行个性化定制,因此已成为颌面外科中越来越受欢迎的治疗方式。目前的颌面 CAS 主要包括三个步骤:(1) CT 图像重建,(2) 骨骼分割,和 (3) 手术规划。然而,这三个步骤中的每一步都可能引入误差,从而严重影响治疗效果。因此,通常需要进行繁琐且耗时的手动后处理,以确保每个步骤都得到充分执行。一种克服此问题的方法是在颌面 CAS 工作流程中开发和实施神经网络 (NN)。这些学习算法可以接受培训以执行特定任务,而无需明确定义规则。近年来,已经提出了大量新的 NN 方法来处理各种应用,因此很难跟上所有相关的发展。因此,本研究旨在总结和回顾所有应用于 CT 图像重建、骨骼分割和手术规划的相关 NN 方法。经过全文筛选,确定了 76 篇相关文献:32 篇聚焦于 CT 图像重建,33 篇聚焦于骨骼分割,11 篇聚焦于手术规划。一般来说,在已确定的研究中,卷积神经网络的应用最为广泛,尽管多层感知机在手术规划任务中应用最为广泛。此外,还讨论了当前方法的缺点和有前途的研究方向。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/6714/9522976/5e8d399b9b9c/dmfr.20210437.g001.jpg

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