Classification of presence of missing teeth in each quadrant using deep learning artificial intelligence on panoramic radiographs of pediatric patients.

IF 1.5 4区 医学 Q3 DENTISTRY, ORAL SURGERY & MEDICINE
Journal of Clinical Pediatric Dentistry Pub Date : 2024-05-01 Epub Date: 2024-05-03 DOI:10.22514/jocpd.2024.062
Eunjin Kim, Jae Joon Hwang, Bong-Hae Cho, Eungyung Lee, Jonghyun Shin
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Abstract

Early tooth loss in pediatric patients can lead to various complications, making quick and accurate diagnosis essential. This study aimed to develop a novel deep learning model for classification of missing teeth on panoramic radiographs in pediatric patients and to assess the accuracy. The study included patients aged 8-16 years who visited the Pusan National University Dental Hospital and underwent panoramic radiography. A total of 806 panoramic radiographs were retrospectively analyzed to determine the presence or absence of missing teeth for each tooth number. Moreover, each panoramic radiograph was divided into four quadrants, each of a smaller size, containing both primary and permanent teeth, generating 3224 data. Quadrants with missing teeth (n = 1457) were set as the experimental group, and quadrants without missing teeth (n = 1767) were set as the control group. The data were split into training and validation sets in a 4:1 ratio, and a 5-fold cross-validation was conducted. A gradient-weighted class activation map was used to visualize the deep learning model. The average values of sensitivity, specificity, accuracy, precision, recall and F1-score of this deep learning model were 0.635, 0.814, 0.738, 0.730, 0.732 and 0.731, respectively. In the experimental group, the accuracy was the highest for missing canines and premolars, and the lowest for molars. The deep learning model exhibited a moderate to good distinguishing power with a classification performance of 0.730. This deep learning model and the newly defined small sized region of interest proved adequate for classifying the presence of missing teeth.

使用深度学习人工智能对儿科患者的全景照片进行分类,以确定每个象限是否存在缺失牙齿。
儿科患者早期牙齿缺失会导致各种并发症,因此快速准确的诊断至关重要。本研究旨在开发一种新型深度学习模型,用于对儿科患者全景X光片上的缺牙进行分类,并评估其准确性。研究对象包括在釜山大学牙科医院就诊并接受全景放射摄影的 8-16 岁患者。共对 806 张全景 X 光片进行了回顾性分析,以确定每个牙号是否存在缺失牙。此外,每张全景照片被分为四个象限,每个象限的尺寸较小,包含基牙和恒牙,共产生 3224 个数据。有缺失牙的象限(n = 1457)设为实验组,无缺失牙的象限(n = 1767)设为对照组。数据按 4:1 的比例分成训练集和验证集,并进行 5 倍交叉验证。梯度加权类激活图用于可视化深度学习模型。该深度学习模型的灵敏度、特异性、准确度、精确度、召回率和 F1 分数的平均值分别为 0.635、0.814、0.738、0.730、0.732 和 0.731。在实验组中,缺失犬齿和前臼齿的准确率最高,缺失臼齿的准确率最低。深度学习模型表现出中度到良好的区分能力,分类性能为 0.730。事实证明,该深度学习模型和新定义的小尺寸感兴趣区足以对缺失牙齿进行分类。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Journal of Clinical Pediatric Dentistry
Journal of Clinical Pediatric Dentistry DENTISTRY, ORAL SURGERY & MEDICINE-PEDIATRICS
CiteScore
1.80
自引率
7.70%
发文量
47
期刊介绍: The purpose of The Journal of Clinical Pediatric Dentistry is to provide clinically relevant information to enable the practicing dentist to have access to the state of the art in pediatric dentistry. From prevention, to information, to the management of different problems encountered in children''s related medical and dental problems, this peer-reviewed journal keeps you abreast of the latest news and developments related to pediatric dentistry.
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