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首页> 外文期刊>Emerging and Selected Topics in Circuits and Systems, IEEE Journal on >Hematoxylin and Eosin (H&E) Stained Liver Portal Area Segmentation Using Multi-Scale Receptive Field Convolutional Neural Network
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Hematoxylin and Eosin (H&E) Stained Liver Portal Area Segmentation Using Multi-Scale Receptive Field Convolutional Neural Network

机译:苏木精和曙红(H&E)使用多尺度接收领域卷积神经网络染色肝栅区分割

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Portal area segmentation is an important step in the quantitative histological analysis process for hepatitis grading. However, portal areas often appear of different sizes and appearances due to the variations of surrounding components such as the ductule, bile duct, artery, and portal vein. The slim fibrosis expanding from the portal area further increases challenges of the portal area segmentation. A Multi-scale Receptive Field Convolutional Neural Network (MRF-CNN) for the segmentation of the liver portal areas in hematoxylin and eosin (HE) stained whole slide images (WSIs) is proposed in this paper. The MRF-CNN adopts the atrous spatial pyramid pooling (ASPP) with multiple atrous rates and symmetric encoder-decoder with feature concatenation architecture. The atrous rates in ASPP are devised of receptive fields to extract features of meaningful tissue components in parallel in portal areas. Along with the MRF-CNN, a small object sensitive loss function is also proposed to have the network focus on small portal areas and slim fibrosis. The results show that the proposed model achieves Intersection over Union (IOU) of 0.87 and sensitivity of 0.92. Compared to recent segmentation researches such as Fully Convolutional Network (FCN), U-Net and SegNet, the proposed network achieves an overall the best IOU and sensitivity performance. Experimental results also show that the designed ASPP block benefits in feature extraction, and the ability of identifying small objects in proposed small object sensitive loss has a significant improvement of the segmentation result comparing to the original cross entropy loss.
机译:门区分割是肝炎分级的定量组织学分析过程中的一个重要步骤。然而,由于围绕导管,胆管,动脉和门静脉等周围部件的变化,门户网站区域通常出现不同的尺寸和外观。从门户网站区域扩展的纤细纤维化进一步增加了门户区分割的挑战。本文提出了一种用于血液杂志和曙红(HESIN)中肝脏门区分割的多尺度接受场卷积神经网络(MRF-CNN)染色了整个幻灯片图像(WSIS)。 MRF-CNN采用具有多个级别的空间金字塔池(ASPP),以及具有特征级联架构的多个级速率和对称编码器解码器。 ASPP中的不足速率被设计为接受领域,以在门户地区平行提取有意义的组织成分的特征。除了MRF-CNN之外,还提出了一种小型对象敏感损失功能,以使网络专注于小型门户区和纤维化纤维化。结果表明,该建议的模型实现了0.87的联盟(IOU)的交叉,灵敏度为0.92。与最近的分割研究相比,如全卷积网络(FCN),U-Net和SEGNET等,所提出的网络总体上最好的IOU和敏感性。实验结果还表明,在特征提取中设计的ASPP块益处,以及在提出的小对象敏感损失中识别小物体的能力具有与原始交叉熵损耗相比的分割结果的显着改进。

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