深度卷积神经网络模型在肱骨骨折检测中的比较分析

A. Sasidhar, M. S. Thanabal
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引用次数: 0

摘要

深度学习在医学图像处理中起着关键作用。深度学习模型在该领域的应用之一是从x射线图像中检测骨折。卷积神经网络及其变体在医学图像处理中有着广泛的应用。MURA数据集通常用于检测骨折的各种研究,本工作也使用该数据集,特别是肱骨x线片图像。MURA数据集中的肱骨数据集包含有骨折和无骨折的图像。断裂图像包括在本作品中去除金属的图像。用卷积神经网络的DenseNet169模型和VGG模型两种变体进行了实验分析。以DenseNet169模型为例,实验了一个带有ImageNet预训练权值的模型和一个没有ImageNet预训练权值的模型。比较了这些CNN变体得到的结果,结果表明,使用ImageNet模型预训练权值的DenseNet169模型的性能优于其他两种模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Comparative Analysis of Deep Convolutional Neural Network Models for Humerus Bone Fracture Detection
Deep learning plays a key role in medical image processing. One of the applications of deep learning models in this domain is bone fracture detection from X-ray images. Convolutional neural network and its variants are used in wide range of medical image processing applications. MURA Dataset is commonly used in various studies that detect bone fractures and this work also uses that dataset, in specific the Humerus bone radiograph images. The humerus dataset in the MURA dataset contains both images with fracture and without fracture. The image with fracture includes images with metals which are removed in this work. Experimental analysis was made with two variants of convolutional neural network, DenseNet169 Model and the VGG Model. In case of the DenseNet169 model, a model with the pre trained weights of ImageNet and one without it is experimented. Results obtained with these variants of CNN are comparedand it shows that DenseNet169 model that uses pre-trained weights of ImageNet model performs better than the other two models.
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