Automatic classification of medical X-ray images with convolutional neural networks

Xolisani Nkwentsha, Anicet Hounkanrin, F. Nicolls
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引用次数: 3

Abstract

The classification of medical images is an important step for image-based clinical decision support systems. With the number of images taken per patient scan rapidly increasing, there is a need for automatic medical image classification systems that are accurate because manual classification and annotation is time-consuming and prone to errors. This paper focuses on automatic classification of X-ray image from the ImageCLEF 2009 dataset based on anatomical and biological information using the InceptionV3 model. The X-ray images are prepared and preprocessed with two different padding techniques, two image enhancement techniques and layering to convert the grey-scale images to 3-channel images to prepare them for InceptionV3. In terms of classification loss, constant padding with no enhancements had the best performance with an accuracy of 68.67% and a loss of 1.442. In terms of classification accuracy, constant padding with enhancement had the best performance with an accuracy of 71.34% and a loss of 1.608.
基于卷积神经网络的医学x射线图像自动分类
医学图像的分类是基于图像的临床决策支持系统的重要步骤。随着每次患者扫描所拍摄的图像数量的迅速增加,由于手动分类和注释耗时且容易出错,因此需要准确的自动医学图像分类系统。本文主要研究了基于解剖和生物信息的ImageCLEF 2009数据集x射线图像的InceptionV3模型自动分类。采用两种不同的填充技术、两种图像增强技术和分层技术对x射线图像进行制备和预处理,将灰度图像转换为3通道图像,为InceptionV3做准备。在分类损失方面,不增强的固定填充的准确率为68.67%,损失为1.442,性能最好。在分类精度方面,增强的恒填充性能最好,准确率为71.34%,损失为1.608。
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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