基于深度学习策略的细胞核自动分割

Ayush Mandloi, Ushnesha Daripa, Mukta Sharma, M. Bhattacharya
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引用次数: 3

摘要

组织病理标本图像自动分析可用于脑肿瘤、乳腺恶性肿瘤、结肠癌等疾病的早期提取和检测。癌症的早期发现可以让病人采取适当的治疗。本文提出了一种基于深度学习的2- D组织图像的细胞核自动分割方法。该方法采用U-Net结构,并对其超参数进行调整,实现对细胞核的分割。所提出的解决方案是建立在U - Net体系结构的高度自适应特性之上的。该方法的核分割任务包括对图像中的核进行检测和提取前景,同时将连接的前景区域分割成分离的核掩模。在实验结果中,使用具有乳腺癌组织病理细胞图像的数据集对所提出的方法进行了测试。结果表明,基于深度学习的方法在细胞核分割方面达到了86%的平均准确率,并且优于其他深度学习架构。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Automatic Cell Nuclei Segmentation based on Deep Learning Strategies
Automatic analysis of histopathology specimens images can be utilized in early extraction and detection of diseases such brain tumor, breast malignancy, colon cancer etc. The early detection of cancer may allow patients to take proper treatment. In this paper, an automatic cell nuclei segmentation based on deep learning strategies using 2-$D$ histological images is proposed. In the proposed approach U-Net architecture is used and its hyper parameters are tuned to segment the cell nuclei. The proposed solution is built upon the highly adaptive nature of U - Net architecture. The task of nuclei segmentation in the proposed approach includes detection of nuclei in an image and extracting the foreground, while segmenting the connected foreground area into separated nuclei masks. In the experimental results the proposed approach is tested using the dataset having histopathological cell images of breast cancer. The results shows that the proposed deep learning based approach achieved the 86 % average accuracy in segmentation of cell nuclei and also outperforms the other deep learning architectures.
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