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Comparing different deep learning architectures for classification of chest radiographs

机译:比较不同的深层学习架构对胸部射线照相分类

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Chest radiographs are among the most frequently acquired images in radiology and are often the subject of computer vision research. However, most of the models used to classify chest radiographs are derived from openly available deep neural networks, trained on large image datasets. These datasets differ from chest radiographs in that they are mostly color images and have substantially more labels. Therefore, very deep convolutional neural networks (CNN) designed for ImageNet and often representing more?complex relationships, might not be required for the comparably simpler task of classifying medical image data. Sixteen different architectures of CNN were compared regarding the classification?performance on two openly available datasets, the CheXpert and COVID-19 Image Data Collection. Areas under the receiver operating characteristics curves (AUROC) between 0.83 and 0.89 could be achieved on the CheXpert dataset. On the COVID-19 Image Data Collection, all models showed an excellent ability to detect COVID-19 and non-COVID pneumonia with AUROC values between 0.983 and 0.998. It could be observed, that more shallow networks may achieve results comparable to their deeper and more complex counterparts with shorter training times, enabling classification performances on medical image data close to the state-of-the-art methods even when using limited hardware.
机译:胸部射线照片是放射学中最常见的图像之一,并且通常是计算机视觉研究的主题。然而,用于对胸部X线片进行分类的大多数模型都来自公开可用的深神经网络,在大图像数据集上培训。这些数据集不同于胸部射线照片,因为它们主要是彩色图像,并且具有更多的标签。因此,对图像数据的相对更简单的任务,可能不需要非常深的卷积神经网络(CNN)设计用于想象成并且通常代表更复杂的关系。在分类上比较了十六个不同的CNN架构?在两个公开可用的数据集,Chexpert和Covid-19图像数据收集中的性能。在Chexpert DataSet上可以实现接收器操作特性曲线(AUROC)之间的区域。在CoVID-19图像数据收集中,所有模型都显示出具有0.983和0.998之间的Auroc值的Covid-19和非Covid肺炎的绝佳能力。可以观察到,更浅的网络可以实现与具有较短训练时间的更深层和更复杂的对应物的结果,使得即使在使用有限的硬件时,也能够对靠近最先进的方法的医学图像数据进行分类性能。

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