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基于神经网络的口腔内放射影像解剖区域分类。

Intraoral radiograph anatomical region classification using neural networks.

机构信息

School of Dentistry, Aristotle University of Thessaloniki, 28is Oktobriou 62, 54 642, Thessaloníki, Greece.

School of Dentistry, Aristotle University of Thessaloniki, Faculty of Dentistry, University Campus, 54 124, Thessaloníki, Greece.

出版信息

Int J Comput Assist Radiol Surg. 2021 Mar;16(3):447-455. doi: 10.1007/s11548-021-02321-4. Epub 2021 Feb 24.

Abstract

PURPOSE

Dental radiography represents 13% of all radiological diagnostic imaging. Eliminating the need for manual classification of digital intraoral radiographs could be especially impactful in terms of time savings and metadata quality. However, automating the task can be challenging due to the limited variation and possible overlap of the depicted anatomy. This study attempted to use neural networks to automate the classification of anatomical regions in intraoral radiographs among 22 unique anatomical classes.

METHODS

Thirty-six literature-based neural network models were systematically developed and trained with full supervision and three different data augmentation strategies. Only libre software and limited computational resources were utilized. The training and validation datasets consisted of 15,254 intraoral periapical and bite-wing radiographs, previously obtained for diagnostic purposes. All models were then comparatively evaluated on a separate dataset as regards their classification performance. Top-1 accuracy, area-under-the-curve and F1-score were used as performance metrics. Pairwise comparisons were performed among all models with Mc Nemar's test.

RESULTS

Cochran's Q test indicated a statistically significant difference in classification performance across all models (p < 0.001). Post hoc analysis showed that while most models performed adequately on the task, advanced architectures used in deep learning such as VGG16, MobilenetV2 and InceptionResnetV2 were more robust to image distortions than those in the baseline group (MLPs, 3-block convolutional models). Advanced models exhibited classification accuracy ranging from 81 to 89%, F1-score between 0.71 and 0.86 and AUC of 0.86 to 0.94.

CONCLUSIONS

According to our findings, automated classification of anatomical classes in digital intraoral radiographs is feasible with an expected top-1 classification accuracy of almost 90%, even for images with significant distortions or overlapping anatomy. Model architecture, data augmentation strategies, the use of pooling and normalization layers as well as model capacity were identified as the factors most contributing to classification performance.

摘要

目的

牙科放射学占所有放射诊断成像的 13%。消除对数字口腔内射线照相术进行手动分类的需求,在节省时间和元数据质量方面可能特别有意义。然而,由于所描绘解剖结构的变化有限且可能重叠,自动化该任务可能具有挑战性。本研究试图使用神经网络自动对 22 个独特解剖类别中的口腔内射线照相的解剖区域进行分类。

方法

系统地开发了 36 种基于文献的神经网络模型,并进行了全面监督和三种不同的数据增强策略的培训。仅使用自由软件和有限的计算资源。训练和验证数据集由 15254 张口腔根尖和咬翼射线照片组成,这些照片是为诊断目的而预先获得的。然后,根据其分类性能,将所有模型在单独的数据集中进行比较评估。使用准确率、曲线下面积和 F1 分数作为性能指标。使用 McNemar 检验对所有模型进行了两两比较。

结果

Cochran's Q 检验表明,所有模型的分类性能存在统计学上的显著差异(p<0.001)。事后分析表明,虽然大多数模型在任务中表现良好,但深度学习中使用的高级架构,如 VGG16、MobilenetV2 和 InceptionResnetV2,比基线组中的模型(MLPs、3 块卷积模型)对图像变形更稳健。高级模型的分类准确率范围为 81%至 89%,F1 分数范围为 0.71 至 0.86,AUC 范围为 0.86 至 0.94。

结论

根据我们的发现,即使对于具有明显变形或重叠解剖结构的图像,使用高级架构,数据增强策略,池化和归一化层的使用以及模型容量,数字口腔内射线照相的解剖类别的自动分类是可行的,预计最高分类准确率接近 90%。

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