用于组织病理学图像细胞核分割的带有锐块的信息添加 U-Net

Anusua Basu, Mainak Deb, Arunita Das, Krishna Gopal Dhal
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引用次数: 0

摘要

摘要 从组织病理学图像中分割细胞核是早期识别和诊断多种疾病的关键步骤。由于组织病理学图像的复杂性,准确分割细胞核并非易事。然而,最近发现卷积神经网络(CNN)是一种可行的选择。众所周知的卷积神经网络模型,即 U-Net,已在医学领域证明了其图像分割的有效性。不过,U-Net 也有一些缺点,例如在经过特定步骤传输后会丢失信息。另一个重要问题是,在跳接过程中,编码器和解码器子网络中的特征可能不匹配,这可能导致语义不相关的信息融合,从而在整个学习过程中出现模糊的特征图。为了解决这些问题,有人提出了一种改进的 U-Net 架构,称为 "带锐块的信息添加 U-Net (IASB-U-Net)",用于组织病理学图像的细胞核分割。在提出的模型中,每一层之后的编码器-解码器路径中都添加了信息,并利用锐化空间滤波器来代替跳过连接。对合并数据集的实验研究表明,与 U-Net、Dense U-Net、SCPP Net 和 LiverNet 等成熟的 CNN 模型相比,所提出的 IASB-U-Net 能产生具有竞争力的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

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Information Added U-Net with Sharp Block for Nucleus Segmentation of Histopathology Images

Segmenting nuclei from histopathology images is a crucial step in the early identification and diagnosis of several diseases. Due to the complexity of histopathology images, accurate nucleus segmentation is not a simple operation. However, convolutional neural networks (CNNs) have recently been revealed to be a viable option. The well-known CNN model, namely the U-Net, demonstrated its image segmentation effectiveness in medical field. However, U-Net has several drawbacks, such as information loss after transmission through particular steps. Another significant one is the likelihood of feature mismatches in the encoder and decoder sub-networks in skip connection, which can lead to the fusing of semantically unrelated information and, as a consequence, fuzzy feature maps throughout the learning process. In order to solve these issues, an improved U-Net architecture called Information Added U-Net with Sharp Block (IASB-U-Net) has been proposed for nuclei segmentation from histopathology images. Information is added to the encoder-decoder path in the proposed model after each layer, and sharpening spatial filters are utilized in place of skip connections. The experimental study over a merged dataset demonstrates that the proposed IASB-U-Net produces competitive results when compared to established CNN models such as U-Net, Dense U-Net, SCPP Net, and LiverNet.

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来源期刊
CiteScore
1.50
自引率
11.10%
发文量
25
期刊介绍: The journal covers a wide range of issues in information optics such as optical memory, mechanisms for optical data recording and processing, photosensitive materials, optical, optoelectronic and holographic nanostructures, and many other related topics. Papers on memory systems using holographic and biological structures and concepts of brain operation are also included. The journal pays particular attention to research in the field of neural net systems that may lead to a new generation of computional technologies by endowing them with intelligence.
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