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CRU-Net: A Deep Learning Network for Semantic Segmentation of Pathological Tissue Slices

机译:Cru-net:一种深度学习网络,用于病理组织切片的语义分割

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The study of cell nuclei is the starting point of modern medical pathology analysis and new drug development, and the semantic segmentation of pathological tissue slice images is a fundamental task of cell nucleus research[1]. This paper proposes a deep learning convolutional neural network for semantic segmentation of cell nuclei, where V-Net [6] is used as the basic framework for segmentation, and then the channel attention mechanism is added to its skip connections. The experiment is evaluated on the dataset of pathological tissue slice images, publicly released in the 2018 Kaggle Challenge data science bowl. The experimental results show that the improved deep learning convolutional neural network achieves excellent performance on the semantic segmentation task of pathological tissue slice images, and can be used as a tool for automatic segmentation of pathological tissue slice images.
机译:对细胞核的研究是现代医学病理分析和新药开发的起点,病理组织切片图像的语义分割是细胞核研究的基本任务[1]。 本文提出了一种深度学习卷积神经网络,用于细胞核的语义分割,其中V-Net [6]用作分割的基本框架,然后将信道注意机制添加到其跳过连接中。 该实验在公然组织切片图像的数据集上进行了评估,在2018年的演播赛挑战数据科学碗中公开发布。 实验结果表明,改进的深度学习卷积神经网络在病理组织切片图像的语义分割任务上实现了出色的性能,可以用作病理组织切片图像的自动分割工具。

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