A YOLO-V5 approach for the evaluation of normal fillings and overhanging fillings: an artificial intelligence study.

IF 1.5 4区 医学 Q3 DENTISTRY, ORAL SURGERY & MEDICINE Brazilian oral research Pub Date : 2024-09-30 eCollection Date: 2024-01-01 DOI:10.1590/1807-3107bor-2024.vol38.0098
Nilgün Akgül, Cemile Yilmaz, Elif Bilgir, Özer Çelik, Oğuzhan Baydar, İbrahim Şevki Bayrakdar
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Abstract

Dental fillings, frequently used in dentistry to address various dental tissue issues, may pose problems when not aligned with the anatomical contours and physiology of dental and periodontal tissues. Our study aims to detect the prevalence and distribution of normal and overhanging filling restorations using a deep CNN architecture trained through supervised learning, on panoramic radiography images. A total of 10480 fillings and 2491 overhanging fillings were labeled using CranioCatch software from 2473 and 1850 images, respectively. After the data obtaining phase, validation (80%), training 10%), and test-groups (10%) were formed from images for both labelling. The YOLOv5x architecture was used to develop the AI model. The model's performance was assessed through a confusion matrix and sensitivity, precision, and F1 score values of the model were calculated. For filling, sensitivity is 0.95, precision is 0.97, and F1 score is 0.96; for overhanging were determined to be 0.86, 0.89, and 0.87, respectively. The results demonstrate the capacity of the YOLOv5 algorithm to segment dental radiographs efficiently and accurately and demonstrate proficiency in detecting and distinguishing between normal and overhanging filling restorations.

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评估正常填充物和悬垂填充物的 YOLO-V5 方法:一项人工智能研究。
牙科中经常使用补牙来解决各种牙体组织问题,但如果补牙与牙体和牙周组织的解剖轮廓和生理结构不一致,就会产生问题。我们的研究旨在使用通过监督学习训练的深度 CNN 架构,在全景放射影像上检测正常和悬垂补牙修复体的普遍性和分布情况。使用 CranioCatch 软件分别从 2473 张和 1850 张图像中标记了 10480 个充填物和 2491 个悬垂充填物。数据获取阶段结束后,根据两组标记图像分别组成验证组(80%)、训练组(10%)和测试组(10%)。人工智能模型采用 YOLOv5x 架构开发。通过混淆矩阵评估了模型的性能,并计算了模型的灵敏度、精确度和 F1 分数值。对于填充,灵敏度为 0.95,精确度为 0.97,F1 分数为 0.96;对于悬挂,灵敏度、精确度和 F1 分数分别为 0.86、0.89 和 0.87。结果表明,YOLOv5 算法能够高效、准确地分割牙科 X 光片,并能熟练检测和区分正常和悬雍垂充填修复体。
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来源期刊
CiteScore
3.70
自引率
4.00%
发文量
107
审稿时长
12 weeks
期刊最新文献
Brazilian Oral Pathology and Oral Medicine: current state of the study of rare diseases. A novel low shrinkage dimethacrylate monomer as an alternative to BisGMA for adhesive and resin-based composite applications. A YOLO-V5 approach for the evaluation of normal fillings and overhanging fillings: an artificial intelligence study. Cross-cultural adaptation of the eHealth Literacy Scale for Brazilian adolescents. Influence of the digital file format on radiographic diagnostic in dentistry: a scoping review.
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