Spatially-Preserving Flattening for Location-Aware Classification of Findings in Chest X-Rays

Neha Srivathsa, Razi Mahmood, T. Syeda-Mahmood
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Abstract

Chest X-rays have become the focus of vigorous deep learning research in recent years due to the availability of large labeled datasets. While classification of anomalous findings is now possible, ensuring that they are correctly localized still remains challenging, as this requires recognition of anomalies within anatomical regions. Existing deep learning networks for fine-grained anomaly classification learn location-specific findings using architectures where the location and spatial contiguity information is lost during the flattening step before classification. In this paper, we present a new spatially preserving deep learning network that preserves location and shape information through auto-encoding of feature maps during flattening. The feature maps, auto-encoder and classifier are then trained in an end-to-end fashion to enable location aware classification of findings in chest X-rays. Results are shown on a large multi-hospital chest X-ray dataset indicating a significant improvement in the quality of finding classification over state-of-the-art methods.
保留空间的平坦化方法在胸部x射线中定位感知分类
近年来,由于大量标记数据集的可用性,胸部x射线已成为蓬勃发展的深度学习研究的焦点。虽然异常发现的分类现在是可能的,但确保它们被正确定位仍然是一个挑战,因为这需要在解剖区域内识别异常。现有的用于细粒度异常分类的深度学习网络使用在分类前的平坦步骤中丢失位置和空间邻近信息的架构来学习特定于位置的发现。在本文中,我们提出了一种新的空间保留深度学习网络,该网络通过在平坦化过程中对特征映射进行自动编码来保留位置和形状信息。然后以端到端的方式训练特征图、自动编码器和分类器,以实现对胸部x光检查结果的位置感知分类。结果显示在大型多医院胸部x射线数据集上,表明与最先进的方法相比,发现分类的质量有了显着提高。
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