A Novel Artificial Intelligence Approach to Kennedy Classification for Partially Edentulous Patients Using Panoramic Radiographs.

IF 1.2 Q3 DENTISTRY, ORAL SURGERY & MEDICINE
N A Hassan, A Abdelmongi, S Magdi, M Shaltout, Y Aboelhasan, Y Elhariry, E H Mohamed
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引用次数: 0

Abstract

Objectives: This study aimed to develop an artificial intelligence system for automated classification of partially edentulous arches from panoramic radiographs using the Kennedy classification system and Applegate's rules, alongside identifying existing teeth for automated reporting.

Methods: From 5261 anonymized digital panoramic radiographs collected from publicly available datasets, 1875 high-quality images were selected and divided into training (80%), validation (10%), and testing (10%) sets. Teeth were manually annotated on the Roboflow platform following the Universal Numbering System. To enhance model robustness, data augmentation techniques were applied, expanding the dataset to 2398 images. For tooth detection, a YOLOv8s deep learning model was trained for 80 epochs (batch size: 16, learning rate: 0.01). Performance was evaluated using precision, recall, F1 score, and mean average precision. Detected teeth were used to classify partially edentulous areas based on the Kennedy system. Modification areas were identified by analyzing detected and missing teeth, measuring bounded distances in millimetres, and classifying free-end saddle gaps.

Results: The YOLOv8s model achieved a mean average precision (mAP50) of 98.1% for tooth identification, with precision and recall of 95.7% and 95.8%, respectively. For Kennedy classification, the model demonstrated precision of 0.962, recall of 0.931, and an F1-score of 0.939 across maxillary and mandibular arches.

Conclusions: The high accuracy and efficiency of this AI-driven approach can standardize classification, reduce diagnostic variability, and alleviate the workload for dental professionals, enabling seamless integration into clinical practice.

Clinical relevance: This AI system provides a consistent, accurate, and reliable method for classifying partially edentulous arches from panoramic radiographs, reducing manual assessment variability, easing practitioner workload, and enabling large-scale analysis of partial edentulism prevalence.

使用全景 X 光片对部分缺牙患者进行肯尼迪分类的新型人工智能方法。
目的:本研究旨在开发一种人工智能系统,用于使用Kennedy分类系统和Applegate规则对全景x光片上的部分无牙弓进行自动分类,同时识别现有牙齿进行自动报告。方法:从公开数据集中收集的5261张匿名数字全景x线照片中,选择1875张高质量图像,分为训练集(80%)、验证集(10%)和测试集(10%)。按照通用编号系统在Roboflow平台上手动标注牙齿。为了增强模型的鲁棒性,采用了数据增强技术,将数据集扩展到2398张图像。对于牙齿检测,YOLOv8s深度学习模型训练了80 epoch (batch size: 16,学习率:0.01)。使用精度、召回率、F1分数和平均精度来评估性能。根据Kennedy系统对检测到的牙齿进行部分无牙区分类。通过分析检测到的和缺失的牙齿,测量以毫米为单位的有界距离,并对自由端鞍间隙进行分类,确定修改区域。结果:YOLOv8s模型对牙齿识别的平均准确率(mAP50)为98.1%,准确率和召回率分别为95.7%和95.8%。对于Kennedy分类,模型的准确率为0.962,召回率为0.931,上颌和下颌弓的f1评分为0.939。结论:这种人工智能驱动的方法具有较高的准确性和效率,可以规范分类,减少诊断的可变性,减轻牙科专业人员的工作量,实现与临床实践的无缝集成。临床相关性:该人工智能系统为从全景x线片中分类部分无牙弓提供了一致、准确和可靠的方法,减少了人工评估的可变性,减轻了医生的工作量,并实现了对部分无牙症患病率的大规模分析。
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来源期刊
CiteScore
2.30
自引率
7.70%
发文量
0
期刊介绍: The European Journal of Prosthodontics and Restorative Dentistry is published quarterly and includes clinical and research articles in subjects such as prosthodontics, operative dentistry, implantology, endodontics, periodontics and dental materials.
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