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首页> 外文期刊>International journal of imaging systems and technology >Cell-type based semantic segmentation of histopathological images using deep convolutional neural networks
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Cell-type based semantic segmentation of histopathological images using deep convolutional neural networks

机译:使用深度卷积神经网络的组织病理图像基于细胞类型的语义分割

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Histopathological whole-slide image (WSI) analysis is still one of the most important ways to identify regions of cancer risk. For cancer in which early diagnosis is vital, pathologists are at the center of the decision-making process. Thanks to the widespread use of digital pathology and the development of artificial intelligence methods, automatic histopathological image analysis methods help pathologists in their decision-making process. In this process, rather than producing labels for whole-slide image patches, semantic segmentation is very useful, which facilitates the pathologists' interpretation. In this study, automatic semantic segmentation based on cell type is proposed for the first time in the literature using novel deep convolutional networks structure (DCNN). We presents semantic information on four classes, including white areas in the whole-slide image, tissue without cells, tissue with normal cells and tissue with cancerous cells. This visual information presented to the pathologist is an easy-to-understand picture of the status of the cells and their implications for the spread of cancerous cells. A new DCNN architecture is created, inspired by the residual network and deconvolution network architecture. Our network is trained end-to-end manner with histopathological image patches for cell structures to be more discriminative. The proposed method not only produces more successful results than other state-of-art semantic segmentation algorithms with 9.2% training error and 88.89% F-score for test, but also has the most important advantage in that it has the ability to generate automatic information about the cancer and also provides information that pathologists can quickly interpret.
机译:组织病理学全幻灯片图像(WSI)分析仍然是识别癌症风险区域的最重要方法之一。对于早期诊断至关重要的癌症,病理学家是决策过程的中心。由于数字病理学的广泛使用和人工智能方法的发展,自动组织病理学图像分析方法可帮助病理学家进行决策。在此过程中,语义分割非常有用,而不是为整个幻灯片图像补丁生成标签,这有助于病理学家进行解释。在这项研究中,文献首次使用新颖的深度卷积网络结构(DCNN)提出了基于单元格类型的自动语义分割。我们提供了四类语义信息,包括整个幻灯片图像中的白色区域,无细胞组织,具有正常细胞的组织和具有癌细胞的组织。提供给病理学家的视觉信息是细胞状态及其对癌细胞扩散的影响的易于理解的图片。受残留网络和反卷积网络体系结构的启发,创建了一个新的DCNN体系结构。我们的网络以组织病理学图像补丁为首尾相接的方式进行训练,以使细胞结构更具区分性。所提出的方法不仅比其他具有9.2%的训练错误和88.89%的F评分的最新语义分割算法产生更成功的结果,而且还具有最重要的优势,因为它具有自动生成信息的能力。有关癌症的信息,还提供了病理学家可以快速解释的信息。

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