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A Cascade Attention Network for Liver Lesion Classification in Weakly-Labeled Multi-phase CT Images

机译:叶片病变分类级联关注网络在弱标记的多相CT图像中

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Focal liver lesion classification is important to the diagnostics of liver disease. In clinics, lesion type is usually determined by multi-phase contrast-enhanced CT images. Previous methods of automatic liver lesion classification are conducted on lesion-level, which rely heavily on lesion-level annotations. In order to reduce the burden of annotation, in this paper, we explore automatic liver lesion classification with weakly-labeled CT images (i.e. with only image-level labels). The major challenge is how to localize the region of interests (ROIs) accurately by using only coarse image-level annotations and accordingly make the right lesion classification decision. We propose a cascade attention network to address the challenge by two stages: Firstly, a dual-attention dilated residual network (DADRN) is proposed to generate a class-specific lesion localization map, which incorporates spatial attention and channel attention blocks for capturing the high-level feature map's long-range dependencies and helps to synthesize a more semantic-consistent feature map, and thereby boosting weakly-supervised lesion localization and classification performance; Secondly, a multi-channel dilated residual network (MCDRN) embedded with a convolutional long short-term memory (CLSTM) block is proposed to extract temporal enhancement information and make the final classification decision. The experiment results show that our method could achieve a mean classification accuracy of 89.68%, which significantly mitigates the performance gap between weakly-supervised approaches and fully supervised counterparts.
机译:局灶性肝病变分类对肝病的诊断至关重要。在诊所,病变类型通常由多相对比度增强CT图像决定。以前的自动肝病变分类方法在病变水平上进行,依赖于病变级注释。为了减轻注释的负担,在本文中,我们用弱标记的CT图像探索自动肝病变分类(即只有图像级标签)。主要挑战是如何通过仅使用粗糙的图像级注释准确地本地化利益区域(ROIS),并相应地进行正确的病变分类决定。我们提出了一个级联关注网络来解决两个阶段的挑战:首先,提出了一种双重关注的剩余网络(DADRN)来生成特定的类病变定位地图,该地图包括用于捕获高的空间关注和通道注意力块-Level特征地图的远程依赖项,并有助于综合更语义一致的特征图,从而提高了弱监督的病变定位和分类性能;其次,提出了一种嵌入卷积长短期存储器(CLSTM)块的多通道扩张的残余网络(MCDRN)以提取时间增强信息并进行最终的分类决策。实验结果表明,我们的方法可以达到89.68%的平均分类准确性,这显着减轻了弱监督方法与完全监督的对应物之间的性能差距。

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