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Automatic labeling of molecular biomarkers of immunohistochemistry images using fully convolutional networks

机译:使用完全卷积网络自动标记免疫组织化学图像的分子生物标记

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摘要

This paper addresses the problem of quantifying biomarkers in multi-stained tissues based on the color and spatial information of microscopy images of the tissue. A deep learning-based method that can automatically localize and quantify the regions expressing biomarker(s) in any selected area on a whole slide image is proposed. The deep learning network, which we refer to as Whole Image (WI)-Net, is a fully convolutional network whose input is the true RGB color image of a tissue and output is a map showing the locations of each biomarker. The WI-Net relies on a different network, Nuclei (N)-Net, which is a convolutional neural network that classifies each nucleus separately according to the biomarker(s) it expresses. In this study, images of immunohistochemistry (IHC)-stained slides were collected and used. Images of nuclei (4679 RGB images) were manually labeled based on the expressing biomarkers in each nucleus (as p16 positive, Ki-67 positive, p16 and Ki-67 positive, p16 and Ki-67 negative). The labeled nuclei images were used to train the N-Net (obtaining an accuracy of 92% in a test set). The trained N-Net was then extended to WI-Net that generated a map of all biomarkers in any selected sub-image of the whole slide image acquired by the scanner (instead of classifying every nucleus image). The results of our method compare well with the manual labeling by humans (average F-score of 0.96). In addition, we carried a layer-based immunohistochemical analysis of cervical epithelium, and showed that our method can be used by pathologists to differentiate between different grades of cervical intraepithelial neoplasia by quantitatively assessing the percentage of proliferating cells in the different layers of HPV positive lesions.
机译:本文基于组织显微图像的颜色和空间信息,解决了多染色组织中生物标志物定量的问题。提出了一种基于深度学习的方法,该方法可以自动定位和量化整个幻灯片图像上任何选定区域中表达生物标记的区域。深度学习网络,我们称为全图像(WI)-Net,是一个完全卷积的网络,其输入是组织的真实RGB彩色图像,输出是显示每个生物标记物位置的地图。 WI-Net依赖于一个不同的网络,即Nuclei(N)-Net,这是一个卷积神经网络,可以根据它表达的生物标记对每个原子核分别进行分类。在这项研究中,收集并使用了免疫组织化学(IHC)染色的载玻片的图像。基于每个原子核中表达的生物标记物(p16阳性,Ki-67阳性,p16和Ki-67阳性,p16和Ki-67阴性)手动标记细胞核图像(4679个RGB图像)。标记的核图像用于训练N-Net(在测试集中获得92%的准确度)。然后将训练有素的N-Net扩展到WI-Net,该网络会生成由扫描仪获取的整个幻灯片图像的任何选定子图像中所有生物标记的图(而不是对每个核图像进行分类)。我们的方法的结果与人工标记的结果相当(平均F值为0.96)。此外,我们对宫颈上皮细胞进行了基于层的免疫组织化学分析,结果表明,病理学家可通过定量评估HPV阳性病变不同层中增殖细胞的百分比,病理学家可利用我们的方法区分不同级别的宫颈上皮内瘤变。

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