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基于迁移学习的口腔颌面医学影像模态分类研究:初步研究

Transfer Deep Learning for Dental and Maxillofacial Imaging Modality Classification: A Preliminary Study.

出版信息

J Clin Pediatr Dent. 2021 Oct 1;45(4):233-238. doi: 10.17796/1053-4625-45.4.3.

DOI:10.17796/1053-4625-45.4.3
PMID:34534307
Abstract

OBJECTIVE

To apply the technique of transfer deep learning on a small data set for automatic classification of X-ray modalities in dentistry.

STUDY DESIGN

For solving the problem of classification, the convolution neural networks based on VGG16, NASNetLarge and Xception architectures were used, which received pre-training on ImageNet subset. In this research, we used an in-house dataset created within the School of Dental Medicine, Tel Aviv University. The training dataset contained anonymized 496 digital Panoramic and Cephalometric X-ray images for orthodontic examinations from CS 8100 Digital Panoramic System (Carestream Dental LLC, Atlanta, USA). The models were trained using NVIDIA GeForce GTX 1080 Ti GPU. The study was approved by the ethical committee of Tel Aviv University.

RESULTS

The test dataset contained 124 X-ray images from 2 different devices: CS 8100 Digital Panoramic System and Planmeca ProMax 2D (Planmeca, Helsinki, Finland). X-ray images in the test database were not pre-processed. The accuracy of all neural network architectures was 100%. Following a result of almost absolute accuracy, the other statistical metrics were not relevant.

CONCLUSIONS

In this study, good results have been obtained for the automatic classification of different modalities of X-ray images used in dentistry. The most promising direction for the development of this kind of application is the transfer deep learning. Further studies on automatic classification of modalities, as well as sub-modalities, can maximally reduce occasional difficulties arising in this field in the daily practice of the dentist and, eventually, improve the quality of diagnosis and treatment.

摘要

目的

将迁移深度学习技术应用于小型数据集,以实现牙科 X 光模式的自动分类。

研究设计

为了解决分类问题,使用了基于 VGG16、NASNetLarge 和 Xception 架构的卷积神经网络,这些网络在 ImageNet 子集上进行了预训练。本研究使用了特拉维夫大学牙医学院内部创建的数据集。训练数据集包含来自 CS 8100 数字全景系统(美国亚特兰大 Carestream Dental LLC)的 496 张匿名正畸检查的数字全景和头颅 X 光图像。使用 NVIDIA GeForce GTX 1080 Ti GPU 对模型进行训练。该研究得到了特拉维夫大学伦理委员会的批准。

结果

测试数据集包含来自 2 种不同设备的 124 张 X 光图像:CS 8100 数字全景系统和 Planmeca ProMax 2D(芬兰赫尔辛基 Planmeca)。测试数据库中的 X 光图像未经预处理。所有神经网络架构的准确率均为 100%。在几乎绝对准确的结果之后,其他统计指标就不相关了。

结论

本研究在牙科中使用的不同类型 X 光图像的自动分类方面取得了良好的结果。这种应用的最有前途的发展方向是迁移深度学习。对模式以及子模式的自动分类的进一步研究,可以最大限度地减少牙医日常实践中出现的偶然困难,并最终提高诊断和治疗的质量。

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