基于深度学习的内切半透明模式检测。

IF 4.3 2区 医学 Q1 DENTISTRY, ORAL SURGERY & MEDICINE
Sthithika Shetty, Sivaranjani Gali, Venkatesh R, Jeswin Ms, Thippeswamy Mn
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引用次数: 0

摘要

问题陈述:前牙切牙透明度的评估对美容治疗效果有很大影响。这种评价大多是主观的,经常被牙科专业人员忽视。应用基于人工智能的模型检测前牙的切牙透明度对牙科医生的牙科修复实践有一定的价值,但目前还缺乏相关研究。目的:本研究的目的是评估深度学习模型预测前牙半透明模式的准确性。材料和方法:使用智能手机收集约240张18岁以上参与者的前牙联合摄影专家组(JPEG)图像。这些图像被调整为224×224像素,并根据有无半透明进行分类。增强技术增强了训练数据集,并使用了3模型深度学习方法:YOLOv5检测中门牙,Vision Transformers (ViT)识别半透明区域,U-Net分割半透明区域。图像被分成80到20进行训练和测试,使用准确性、精度、召回率、F1分数、混淆矩阵和骰子分数来评估性能。结果:YOLOv5在0.910的置信阈值下实现了1.00的精度。ViT系统的准确率为91.66%,其中64张图像中有58张预测正确,F1得分为94.83%。经过带注释图像训练后的U-Net分割准确率达到91%,dice score为0.948。结论:将YOLOv5用于检测,ViT用于分类,U-Net用于分割,展示了一种解决切部半透明分类的综合方法。利用深度学习模型的优势,可以在检测前牙切牙半透明模式时达到较高的准确度和精密度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deep learning-based detection of incisal translucency patterns.

Statement of problem: The evaluation of incisal translucency in anterior teeth greatly influences esthetic treatment outcomes. This evaluation is mostly subjective and often overlooked among dental professionals. The application of artificial intelligence-based models to detect the incisal translucency of anterior teeth may be of value to dentists in their restorative dental practice, but studies are lacking.

Purpose: The purpose of this study was to assess the accuracy of deep learning models in predicting the translucency patterns of anterior teeth.

Material and methods: Approximately 240 Joint Photographic Experts Group (JPEG) images of anterior teeth from participants over 18 years were collected using a smartphone. These images were resized to 224×224 pixels and classified by the presence or absence of translucency. Augmentation techniques enhanced the training dataset, and a 3-model deep learning approach was used: YOLOv5 detected central incisors, Vision Transformers (ViT) identified translucency, and U-Net segmented the translucent areas. The images were split 80 to 20 for training and testing, with performance evaluated using accuracy, precision, recall, F1 score, confusion matrix, and dice scores.

Results: YOLOv5 achieved a precision of 1.00 at a confidence threshold of 0.910. The ViT system showed an accuracy of 91.66%, with 58 of 64 images predicting correctly with an F1 score of 94.83%. U-Net segmentation after training with annotated images achieved an accuracy of 91% with a dice score of 0.948.

Conclusions: The integration of YOLOv5 for detection, ViT for classification, and U-Net for segmentation demonstrates a comprehensive approach to addressing the classification of incisal translucencies. By leveraging the strengths of deep learning models, high accuracy and precision can be achieved in detecting the incisal translucency patterns of anterior teeth.

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来源期刊
Journal of Prosthetic Dentistry
Journal of Prosthetic Dentistry 医学-牙科与口腔外科
CiteScore
7.00
自引率
13.00%
发文量
599
审稿时长
69 days
期刊介绍: The Journal of Prosthetic Dentistry is the leading professional journal devoted exclusively to prosthetic and restorative dentistry. The Journal is the official publication for 24 leading U.S. international prosthodontic organizations. The monthly publication features timely, original peer-reviewed articles on the newest techniques, dental materials, and research findings. The Journal serves prosthodontists and dentists in advanced practice, and features color photos that illustrate many step-by-step procedures. The Journal of Prosthetic Dentistry is included in Index Medicus and CINAHL.
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