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Improving Nuclei Classification Performance in HE Stained Tissue Images Using Fully Convolutional Regression Network and Convolutional Neural Network

机译:使用完全卷积回归网络和卷积神经网络改善H&E染色组织图像中的核分类性能

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Detection and classification of nuclei in histopathology images is an important step in the research of understanding tumor microenvironment and evaluating cancer progression and prognosis. The task is challenging due to imaging factors such as varying cell morphologies, batch-to-batch variations in staining, and sample preparation. We present a two-stage deep learning pipeline that combines a Fully Convolutional Regression Network (FCRN) that performs nuclei localization with a Convolution Neural Network (CNN) that performs nuclei classification. Instead of using hand-crafted features, the system learns the visual features needed for detection and classification of nuclei making the process robust to the aforementioned variations. The performance of the proposed system has been quantitatively evaluated on images of hematoxylin and eosin (H&E) stained colon cancer tissues and compared to the previous studies using the same data set. The proposed deep learning system produces promising results for detection and classification of nuclei in histopathology images.
机译:组织病理学图像中核的检测和分类是了解肿瘤微环境和评估癌症进展和预后的研究的重要一步。由于成像因素,例如不同的细胞形态,染色分批变化以及样品制备,该任务是挑战。我们介绍了一个两级的深度学习管道,它结合了完全卷积的回归网络(FCRN),该网络(FCRN)与执行核分类的卷积神经网络(CNN)进行核心定位。该系统而不是使用手工制作的功能,而不是使用手工制作的功能,了解核的检测和分类所需的视觉特征,使得过程鲁棒到上述变化。已经定量地评估了所提出的系统的性能,对苏木精和曙红(H&E)染色的结肠癌组织的图像进行了评估,并与使用相同数据集的先前研究相比。所提出的深度学习系统产生了有希望的核心核在组织病理学图像中的检测和分类结果。

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