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Pyramid Pooling Channel Attention Network for esophageal tissue segmentation on OCT images

机译:金字塔汇集通道注意力网络用于OCT图像的食管组织细分网络

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The automatic segmentation of esophageal tissue layers in OCT images is essential for the study of esophageal diseases and computer-aided diagnosis. The tissue layer thickness of the esophagus is an important diagnostic sign for many esophageal diseases. Manually marking the boundary to calculate the average thickness of each layer is time-consuming and susceptible to subjective factors of the marker. In this paper, we propose a Pyramid Pooling Channel Attention Network (PPCANet) for the tissue segmentation. On the basis of the PSPNet, a channel attention module is introduced to selectively emphasize interdependent channel maps by integrating associated features among all channel maps, which makes the segmentation more precise. The potential clinical application of PPCANet for detecting eosinophilic esophagitis (EoE), an esophageal disease, is also presented in this paper.
机译:OCT图像中食管组织层的自动分割对于食管疾病和计算机辅助诊断研究至关重要。食道的组织层厚度是许多食管疾病的重要诊断标志。手动标记边界以计算每层的平均厚度是耗时和易受标记的主观因素的影响。在本文中,我们提出了一种用于组织分割的金字塔汇集通道注意网络(PPCanet)。在PSPNET的基础上,引入通道注意模块以通过集成所有信道映射之间的相关特征来选择性地强调相互依存的信道映射,这使得分段更精确。本文还提出了PPCanet检测嗜酸性食道炎(EOE),食管疾病的潜在临床应用。

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