Classification of Abnormality in Chest X-Ray Images by Transfer Learning of CheXNet

Mawanda Almuhayar, Henry Horng Shing Lu, Nur Iriawan
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引用次数: 3

Abstract

Deep learning development nowadays has attracted a lot of attention because of its effectiveness and good performance. The performance of deep learning in medical images analysis already can compete with medical image experts. However, there are experts that still believe deep learning only efficient for the big datasets, because of deep learning performance in small datasets still not satisfying enough. In this study, it is aimed to build a deep learning model for image classification that can achieve high accuracy using chest X-ray images with a relatively small dataset. We classify chest X-ray into a binary classification which is a normal image and image with abnormalities. We built and experimented our model using the public dataset of Shenzen Hospital dataset. We also use a different type of input based on different images preprocessing so that the model can perform accurate classification. Based on the result, pre-trained CheXNet with a newly trained fully connected network on the cropped dataset can achieve the accuracy 0.8761, the sensitivity 0.8909, and the specificity 0.8621. The performance of the model also influenced by the certain region inside the images, such as other regions outside the lung region and black colored region outside the body region.
基于CheXNet迁移学习的胸部x线图像异常分类
深度学习以其良好的性能和有效性引起了人们的广泛关注。深度学习在医学图像分析中的表现已经可以与医学图像专家相媲美。然而,仍然有专家认为深度学习只对大数据集有效,因为深度学习在小数据集上的表现仍然不够令人满意。本研究旨在利用相对较小的数据集,构建一个能够达到较高准确率的胸部x射线图像分类的深度学习模型。我们将胸部x线片分为正常图像和异常图像二分类。我们使用深圳医院的公共数据集建立并实验了我们的模型。我们还根据不同的图像预处理使用不同类型的输入,使模型能够进行准确的分类。在此基础上,使用新训练的全连接网络对裁剪后的数据集进行预训练的CheXNet,准确率为0.8761,灵敏度为0.8909,特异性为0.8621。模型的性能还受到图像内部某些区域的影响,例如肺区域以外的其他区域和身体区域以外的黑色区域。
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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