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使用锥形束计算机断层扫描(CBCT)对下颌骨双管进行人工智能驱动的分割。

AI-powered segmentation of bifid mandibular canals using CBCT.

作者信息

Gumussoy Ismail, Demirezer Kardelen, Duman Suayip Burak, Haylaz Emre, Bayrakdar Ibrahim Sevki, Celik Ozer, Syed Ali Zakir

机构信息

Department of Oral and Maxillofacial Radiology, Faculty of Dentistry, Sakarya University, Mithatpaşa Mah. Adnan Menderes Cad. No:122/B, Adapazarı, Sakarya, 54100, Turkey.

Department of Oral and Maxillofacial Radiology, Faculty of Dentistry, Inonu University, Malatya, Turkey.

出版信息

BMC Oral Health. 2025 Jun 4;25(1):907. doi: 10.1186/s12903-025-06311-9.

Abstract

OBJECTIVE

Accurate segmentation of the mandibular and bifid canals is crucial in dental implant planning to ensure safe implant placement, third molar extractions and other surgical interventions. The objective of this study is to develop and validate an innovative artificial intelligence tool for the efficient, and accurate segmentation of the mandibular and bifid canals on CBCT.

MATERIALS AND METHODS

CBCT data were screened to identify patients with clearly visible bifid canal variations, and their DICOM files were extracted. These DICOM files were then imported into the 3D Slicer open-source software, where bifid canals and mandibular canals were annotated. The annotated data, along with the raw DICOM files, were processed using the nnU-Netv2 training model by CranioCatch AI software team.

RESULTS

69 anonymized CBCT volumes in DICOM format were converted to NIfTI file format. The method, utilizing nnU-Net v2, accurately predicted the voxels associated with the mandibular canal, achieving an intersection of over 50% in nearly all samples. The accuracy, Dice score, precision, and recall scores for the mandibular canal/bifid canal were determined to be 0.99/0.99, 0.82/0.46, 0.85/0.70, and 0.80/0.42, respectively.

CONCLUSIONS

Despite the bifid canal segmentation not meeting the expected level of success, the findings indicate that the proposed method shows promising and has the potential to be utilized as a supplementary tool for mandibular canal segmentation. Due to the significance of accurately evaluating the mandibular canal before surgery, the use of artificial intelligence could assist in reducing the burden on practitioners by automating the complicated and time-consuming process of tracing and segmenting this structure.

CLINICAL RELEVANCE

Being able to distinguish bifid channels with artificial intelligence will help prevent neurovascular problems that may occur before or after surgery.

摘要

目的

在下颌种植规划中,准确分割下颌管和双管对于确保安全种植、拔除第三磨牙及其他手术干预至关重要。本研究的目的是开发并验证一种创新的人工智能工具,用于在锥形束计算机断层扫描(CBCT)上高效、准确地分割下颌管和双管。

材料与方法

筛选CBCT数据以识别双管变异清晰可见的患者,并提取其DICOM文件。然后将这些DICOM文件导入3D Slicer开源软件,在其中标注双管和下颌管。标注数据与原始DICOM文件一起由CranioCatch AI软件团队使用nnU-Netv2训练模型进行处理。

结果

69个DICOM格式的匿名CBCT容积被转换为NIfTI文件格式。该方法利用nnU-Net v2准确预测了与下颌管相关的体素,几乎在所有样本中交集均超过50%。下颌管/双管的准确度、Dice分数、精度和召回率分数分别确定为0.99/0.99、0.82/0.46、0.85/0.70和0.80/0.42。

结论

尽管双管分割未达到预期的成功水平,但研究结果表明所提出的方法具有前景,有潜力用作下颌管分割的辅助工具。由于术前准确评估下颌管的重要性,人工智能的使用可通过自动执行追踪和分割该结构这一复杂且耗时的过程来帮助减轻从业者的负担。

临床意义

能够用人工智能区分双管将有助于预防手术前后可能出现的神经血管问题。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/2497/12139318/fa38c27e17f1/12903_2025_6311_Fig1_HTML.jpg

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