Classifying Three-Wall Intrabony Defects from Intraoral Radiographs Using Deep Learning-Based Convolutional Neural Network Models.

Q1 Dentistry European Journal of Dentistry Pub Date : 2024-11-21 DOI:10.1055/s-0044-1791784
Kanteera Piroonsan, Kununya Pimolbutr, Kallapat Tansriratanawong
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Abstract

Objective:  Intraoral radiographs are used in periodontal therapy to understand interdental bony health and defects. However, identifying three-wall bony defects is challenging due to their variations. Therefore, this study aimed to classify three-wall intrabony defects using deep learning-based convolutional neural network (CNN) models to distinguish between three-wall and non-three-wall bony defects via intraoral radiographs.

Materials and methods:  A total of 1,369 radiographs were obtained from 556 patients who had undergone periodontal surgery. These radiographs, each featuring at least one area of intrabony defect, were categorized into 15 datasets based on the presence of three-wall or non-three-wall intrabony defects. We then trained six CNN models-InceptionV3, InceptionResNetV2, ResNet50V2, MobileNetV3Large, EfficientNetV2B1, and VGG19-using these datasets. Model performance was assessed based on the area under curve (AUC), with an AUC value ≥ 0.7 considered acceptable. Various metrics were thoroughly examined, including accuracy, precision, recall, specificity, negative predictive value (NPV), and F1 score.

Results:  In datasets excluding circumferential defects from bitewing radiographs, InceptionResNetV2, ResNet50V2, MobileNetV3Large, and VGG19 achieved AUC values of 0.70, 0.73, 0.77, and 0.75, respectively. Among these models, the VGG19 model exhibited the best performance, with an accuracy of 0.75, precision of 0.78, recall of 0.82, specificity of 0.67, NPV of 0.88, and an F1 score of 0.75.

Conclusion:  The CNN models used in the study showed an AUC value of 0.7 to 0.77 for classifying three-wall intrabony defects. These values demonstrate the potential clinical application of this approach for periodontal examination, diagnosis, and treatment planning for periodontal surgery.

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利用基于深度学习的卷积神经网络模型从口内X光片对三壁骨内缺陷进行分类。
目的:口内X光片用于牙周治疗,以了解牙间骨骼健康和缺陷情况。然而,由于三壁骨性缺损各不相同,识别三壁骨性缺损具有挑战性。因此,本研究旨在使用基于深度学习的卷积神经网络(CNN)模型对三壁骨内缺陷进行分类,以通过口内X光片区分三壁骨缺陷和非三壁骨缺陷:从 556 名接受过牙周手术的患者身上共获取了 1,369 张射线照片。根据是否存在三壁或非三壁骨内缺损,将每张至少有一个骨内缺损区域的照片分为 15 个数据集。然后,我们利用这些数据集训练了六个 CNN 模型--InceptionV3、InceptionResNetV2、ResNet50V2、MobileNetV3Large、EfficientNetV2B1 和 VGG19。模型性能根据曲线下面积(AUC)进行评估,AUC 值≥ 0.7 即可接受。对各种指标进行了全面检查,包括准确度、精确度、召回率、特异性、阴性预测值(NPV)和 F1 分数:在不包括咬翼X光片周缘缺损的数据集中,InceptionResNetV2、ResNet50V2、MobileNetV3Large 和 VGG19 的 AUC 值分别为 0.70、0.73、0.77 和 0.75。在这些模型中,VGG19 模型表现最佳,准确度为 0.75,精确度为 0.78,召回率为 0.82,特异性为 0.67,净现值为 0.88,F1 分数为 0.75:研究中使用的 CNN 模型在对三壁骨内缺损进行分类时的 AUC 值为 0.7 至 0.77。这些数值证明了这种方法在牙周检查、诊断和牙周手术治疗计划中的潜在临床应用价值。
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来源期刊
European Journal of Dentistry
European Journal of Dentistry Dentistry-Dentistry (all)
CiteScore
5.10
自引率
0.00%
发文量
161
期刊介绍: The European Journal of Dentistry is the official journal of the Dental Investigations Society, based in Turkey. It is a double-blinded peer-reviewed, Open Access, multi-disciplinary international journal addressing various aspects of dentistry. The journal''s board consists of eminent investigators in dentistry from across the globe and presents an ideal international composition. The journal encourages its authors to submit original investigations, reviews, and reports addressing various divisions of dentistry including oral pathology, prosthodontics, endodontics, orthodontics etc. It is available both online and in print.
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