Deep Convolutional Neural Network for Automated Staging of Periodontal Bone Loss Severity on Bite-wing Radiographs: An Eigen-CAM Explainability Mapping Approach.

Mediha Erturk, Muhammet Üsame Öziç, Melek Tassoker
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Abstract

Periodontal disease is a significant global oral health problem. Radiographic staging is critical in determining periodontitis severity and treatment requirements. This study aims to automatically stage periodontal bone loss using a deep learning approach using bite-wing images. A total of 1752 bite-wing images were used for the study. Radiological examinations were classified into 4 groups. Healthy (normal), no bone loss; stage I (mild destruction), bone loss in the coronal third (< 15%); stage II (moderate destruction), bone loss is in the coronal third and from 15 to 33% (15-33%); stage III-IV (severe destruction), bone loss extending from the middle third to the apical third with furcation destruction (> 33%). All images were converted to 512 × 400 dimensions using bilinear interpolation. The data was divided into 80% training validation and 20% testing. The classification module of the YOLOv8 deep learning model was used for the artificial intelligence-based classification of the images. Based on four class results, it was trained using fivefold cross-validation after transfer learning and fine tuning. After the training, 20% of test data, which the system had never seen, were analyzed using the artificial intelligence weights obtained in each cross-validation. Training and test results were calculated with average accuracy, precision, recall, and F1-score performance metrics. Test images were analyzed with Eigen-CAM explainability heat maps. In the classification of bite-wing images as healthy, mild destruction, moderate destruction, and severe destruction, training performance results were 86.100% accuracy, 84.790% precision, 82.350% recall, and 84.411% F1-score, and test performance results were 83.446% accuracy, 81.742% precision, 80.883% recall, and 81.090% F1-score. The deep learning model gave successful results in staging periodontal bone loss in bite-wing images. Classification scores were relatively high for normal (no bone loss) and severe bone loss in bite-wing images, as they are more clearly visible than mild and moderate damage.

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深度卷积神经网络用于自动分期咬翼X光片上的牙周骨损失严重程度:Eigen-CAM 可解释性映射法
牙周病是一个重大的全球性口腔健康问题。放射学分期对于确定牙周炎的严重程度和治疗要求至关重要。本研究旨在使用深度学习方法,利用咬翼图像对牙周骨质流失进行自动分期。研究共使用了 1752 张咬翼图像。放射学检查分为 4 组。健康组(正常),无骨质流失;I期(轻度破坏),冠状面三分之一处骨质流失(33%)。使用双线性插值法将所有图像转换为 512 × 400 尺寸。数据分为 80% 的训练验证和 20% 的测试。YOLOv8 深度学习模型的分类模块用于对图像进行基于人工智能的分类。根据四类结果,经过迁移学习和微调后,使用五倍交叉验证对其进行训练。训练结束后,使用每次交叉验证中获得的人工智能权重对系统从未见过的 20% 测试数据进行分析。训练和测试结果以平均准确率、精确度、召回率和 F1 分数等性能指标进行计算。测试图像使用 Eigen-CAM 可解释性热图进行分析。在将咬翼图像分类为健康、轻度破坏、中度破坏和严重破坏时,训练结果的准确率为 86.100%,精确率为 84.790%,召回率为 82.350%,F1 分数为 84.411%;测试结果的准确率为 83.446%,精确率为 81.742%,召回率为 80.883%,F1 分数为 81.090%。深度学习模型在对咬合翼图像中的牙周骨质流失进行分期方面取得了成功。咬合翼图像中正常(无骨质流失)和严重骨质流失的分类得分相对较高,因为它们比轻度和中度损伤更清晰可见。
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