Suppr超能文献

使用多类别和简化全景 X 光数据集评估三个卷积神经网络版本在对象检测和分割方面的性能。

Performance evaluation of three versions of a convolutional neural network for object detection and segmentation using a multiclass and reduced panoramic radiograph dataset.

机构信息

Department of Conservative and Prosthetic Dentistry, Faculty of Dentistry, Complutense University of Madrid. Plaza Ramón y Cajal s/n - 28040 Madrid, España.

Department of Computer Languages and Systems and Software Engineering, Polytechnic University of Madrid. Campus Montegancedo s/n - 28660 Boadilla del Monte, Madrid. Spain.

出版信息

J Dent. 2024 May;144:104891. doi: 10.1016/j.jdent.2024.104891. Epub 2024 Feb 16.

Abstract

OBJECTIVES

To evaluate the diagnostic performance of three versions of a deep-learning convolutional neural network in terms of object detection and segmentation using a multiclass panoramic radiograph dataset.

METHODS

A total of 600 orthopantomographies were randomly selected for this study and manually annotated by a single operator using an image annotation tool (COCO Annotator v.11.0.1) to establish ground truth. The annotation classes included teeth, maxilla, mandible, inferior alveolar nerve, dento- and implant-supported crowns/pontics, endodontic treatment, resin-based restorations, metallic restorations, and implants. The dataset was then divided into training, validation, and testing subsets, which were used to train versions 5, 7, and 8 of You Only Look Once (YOLO) Neural Network. Results were stored, and a posterior performance analysis was carried out by calculating the precision (P), recall (R), F1 Score, Intersection over Union (IoU), and mean average precision (mAP) at 0.5 and 0.5-0.95 thresholds. The confusion matrix and recall precision graphs were also sketched.

RESULTS

YOLOv5s showed an improvement in object detection results with an average R = 0.634, P = 0.781, mAP0.5 = 0.631, and mAP0.5-0.95 = 0.392. YOLOv7m achieved the best object detection results with average R = 0.793, P = 0.779, mAP0.5 = 0.740, and mAP0.5-0.95 = 0,481. For object segmentation, YOLOv8m obtained the best average results (R = 0.589, P = 0.755, mAP0.5 = 0.591, and mAP0.5-0.95 = 0.272).

CONCLUSIONS

YOLOv7m was better suited for object detection, while YOLOv8m demonstrated superior performance in object segmentation. The most frequent error in object detection was related to background classification. Conversely, in object segmentation, there is a tendency to misclassify True Positives across different dental treatment categories.

CLINICAL SIGNIFICANCE

General diagnostic and treatment decisions based on panoramic radiographs can be enhanced using new artificial intelligence-based tools. Nevertheless, the reliability of these neural networks should be subjected to training and validation to ensure their generalizability.

摘要

目的

使用多类别全景射线照片数据集,评估三种版本的深度学习卷积神经网络在目标检测和分割方面的诊断性能。

方法

本研究共随机选择了 600 张口腔全景片,并由一名操作人员使用图像注释工具(COCO Annotator v.11.0.1)进行手动注释,以建立真实值。注释类别包括牙齿、上颌骨、下颌骨、下牙槽神经、牙和种植体支持的牙冠/桥、牙髓治疗、树脂修复体、金属修复体和种植体。然后,将数据集分为训练、验证和测试子集,用于训练版本 5、7 和 8 的 You Only Look Once (YOLO) 神经网络。结果被存储,并通过计算 0.5 和 0.5-0.95 阈值的精度 (P)、召回率 (R)、F1 分数、交并比 (IoU) 和平均精度 (mAP) 来进行后续性能分析。还绘制了混淆矩阵和召回精度图。

结果

YOLOv5s 在目标检测结果方面显示出改进,平均 R = 0.634、P = 0.781、mAP0.5 = 0.631 和 mAP0.5-0.95 = 0.392。YOLOv7m 实现了最佳的目标检测结果,平均 R = 0.793、P = 0.779、mAP0.5 = 0.740 和 mAP0.5-0.95 = 0.481。对于目标分割,YOLOv8m 获得了最佳的平均结果(R = 0.589、P = 0.755、mAP0.5 = 0.591 和 mAP0.5-0.95 = 0.272)。

结论

YOLOv7m 更适合目标检测,而 YOLOv8m 在目标分割方面表现出更好的性能。目标检测中最常见的错误与背景分类有关。相反,在目标分割中,存在将真实阳性分类到不同牙齿治疗类别的趋势。

临床意义

使用新的基于人工智能的工具可以增强基于全景射线照片的一般诊断和治疗决策。然而,这些神经网络的可靠性应该经过训练和验证,以确保其通用性。

文献AI研究员

20分钟写一篇综述,助力文献阅读效率提升50倍。

立即体验

用中文搜PubMed

大模型驱动的PubMed中文搜索引擎

马上搜索

文档翻译

学术文献翻译模型,支持多种主流文档格式。

立即体验