[Automatic segmentation of dental cone-beam computed tomography scans using a deep learning framework].

IF 0.9 4区 医学 Q3 MEDICINE, GENERAL & INTERNAL Orvosi hetilap Pub Date : 2024-08-11 DOI:10.1556/650.2024.33098
Alexandra Hegyi, Kristóf Somodi, Csaba Pintér, Bálint Molnár, Péter Windisch, David García-Mato, Andres Diaz-Pinto, Dániel Palkovics
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Abstract

Introduction: The goal of segmentation is to reconstruct cone-beam computed tomography (CBCT) images in three dimensions (3D). In oral surgery and periodontology, digital data processing enables 3D planning of surgical interventions. Commonly used threshold-based segmentation is fast but inaccurate, whereas semi-automatic methods are sufficiently accurate but time-consuming. Recently, with artificial intelligence-based technologies, automatic segmentation of CBCT images has become feasible. Objective: To present a deep learning segmentation model trained on CBCT images derived from clinical practice and to evaluate its efficiency. Method: The study consisted of three phases: establishing the training dataset, training the deep learning model and testing its accuracy. CBCT images of 70, partially edentulous patients were used to establish the training dataset. The deep learning model, based on the SegResNet architecture, was developed within the MONAI framework. To verify the accuracy of the deep learning model, 15 CBCT scans were used processed using the deep learning-based segmentation and semi-automatic segmentation, and the results were compared. Results: The similarity between the two methods, based on intersection over union, was on average 0.91 ± 0.02. The average Dice similarity coefficient was 0.95 ± 0.01, and the average Hausdorff (95%) distance was 0.67 mm ± 0.22 mm. There was no statistically significant difference in the volume of the 3D models segmented by the deep learning architecture compared to those created by semi-automatic segmentation (p = 0.31). Discussion: The deep learning model used in our study performed segmentation of CBCT images with accuracy comparable to other artificial intelligence-based systems reported in the literature. Since the CBCT images were sourced from routine clinical practice, the deep learning model segmented periodontal bone topography and alveolar ridge defects with relatively high reliability. Conclusion: The deep learning model accurately segmented the mandible in dental CBCT scans. Therefore, the deep learning-based 3D models could be suitable for digital planning of reconstructive oral and periodontal surgical interventions. Orv Hetil. 2024; 165(32): 1242–1251.

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[使用深度学习框架自动分割牙科锥束计算机断层扫描图像]。
摘要:分割的目的是在三维(3D)中重建锥形束计算机断层扫描(CBCT)图像。在口腔外科和牙周病学中,数字数据处理使手术干预的三维规划成为可能。常用的基于阈值的分割方法快速但不准确,半自动分割方法足够准确但耗时。近年来,随着人工智能技术的发展,CBCT图像的自动分割已经成为可能。目的:提出一种基于临床CBCT图像训练的深度学习分割模型,并评价其有效性。方法:研究分为三个阶段:建立训练数据集、训练深度学习模型和测试其准确性。使用70例部分缺牙患者的CBCT图像建立训练数据集。基于SegResNet架构的深度学习模型是在MONAI框架内开发的。为了验证深度学习模型的准确性,使用基于深度学习的分割和半自动分割对15个CBCT扫描图像进行处理,并对结果进行比较。结果:两种方法的相似度平均为0.91±0.02。平均Dice相似系数为0.95±0.01,平均Hausdorff(95%)距离为0.67 mm±0.22 mm。与半自动分割创建的3D模型相比,深度学习架构分割的3D模型体积无统计学意义差异(p = 0.31)。讨论:我们研究中使用的深度学习模型对CBCT图像进行分割,其准确性与文献中报道的其他基于人工智能的系统相当。由于CBCT图像来源于常规临床实践,深度学习模型对牙周骨形貌和牙槽嵴缺损的分割可靠性较高。结论:深度学习模型在牙体CBCT扫描中对下颌骨进行了准确的分割。因此,基于深度学习的三维模型可以适用于口腔和牙周重建手术干预的数字化规划。奥夫·海泰尔。2024;165(32): 1242 - 1251。
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来源期刊
Orvosi hetilap
Orvosi hetilap MEDICINE, GENERAL & INTERNAL-
CiteScore
1.20
自引率
50.00%
发文量
274
期刊介绍: The journal publishes original and review papers in the fields of experimental and clinical medicine. It covers epidemiology, diagnostics, therapy and the prevention of human diseases as well as papers of medical history. Orvosi Hetilap is the oldest, still in-print, Hungarian publication and also the one-and-only weekly published scientific journal in Hungary. The strategy of the journal is based on the Curatorium of the Lajos Markusovszky Foundation and on the National and International Editorial Board. The 150 year-old journal is part of the Hungarian Cultural Heritage.
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