首页> 外文期刊>Journal of Pathology Informatics >Antibody-supervised deep learning for quantification of tumor-infiltrating immune cells in hematoxylin and eosin stained breast cancer samples
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Antibody-supervised deep learning for quantification of tumor-infiltrating immune cells in hematoxylin and eosin stained breast cancer samples

机译:抗体监督的深度学习用于定量苏木精和曙红染色的乳腺癌样本中的肿瘤浸润免疫细胞

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Background&58; Immune cell infiltration in tumor is an emerging prognostic biomarker in breast cancer. The gold standard for quantification of immune cells in tissue sections is visual assessment through a microscope, which is subjective and semi-quantitative. In this study, we propose and evaluate an approach based on antibody-guided annotation and deep learning to quantify immune cell-rich areas in hematoxylin and eosin (H&E) stained samples. Methods&58; Consecutive sections of formalin-fixed parafin-embedded samples obtained from the primary tumor of twenty breast cancer patients were cut and stained with H&E and the pan-leukocyte CD45 antibody. The stained slides were digitally scanned, and a training set of immune cell-rich and cell-poor tissue regions was annotated in H&E whole-slide images using the CD45-expression as a guide. In analysis, the images were divided into small homogenous regions, superpixels, from which features were extracted using a pretrained convolutional neural network (CNN) and classified with a support of vector machine. The CNN approach was compared to texture-based classification and to visual assessments performed by two pathologists. Results&58; In a set of 123,442 labeled superpixels, the CNN approach achieved an F-score of 0.94 (range&58; 0.92-0.94) in discrimination of immune cell-rich and cell-poor regions, as compared to an F-score of 0.88 (range&58; 0.87-0.89) obtained with the texture-based classification. When compared to visual assessment of 200 images, an agreement of 90% (k &61; 0.79) to quantify immune infiltration with the CNN approach was achieved while the inter-observer agreement between pathologists was 90% (k &61; 0.78). Conclusions&58; Our findings indicate that deep learning can be applied to quantify immune cell infiltration in breast cancer samples using a basic morphology staining only. A good discrimination of immune cell-rich areas was achieved, well in concordance with both leukocyte antigen expression and pathologists′ visual assessment.
机译:背景&58;肿瘤中的免疫细胞浸润是乳腺癌中一种新兴的预后生物标志物。用于定量组织切片中免疫细胞的金标准是通过显微镜进行的目测评估,该显微镜是主观的和半定量的。在这项研究中,我们提出并评估了一种基于抗体指导注释和深度学习的方法,以量化苏木精和曙红(H&E)染色样品中的免疫细胞富集区域。方法&58;从20例乳腺癌患者的原发肿瘤中切取的福尔马林固定石蜡包埋样品的连续切片被切开,并用H&E和泛白细胞CD45抗体染色。对染色的载玻片进行数字扫描,并使用CD45表达作为指导,在H&E全载玻片图像中标注一组训练有免疫细胞富集和细胞贫乏的组织区域。在分析中,将图像分为均匀的小区域(超像素),然后使用预训练卷积神经网络(CNN)从中提取特征,并在矢量机的支持下进行分类。 CNN方法与基于纹理的分类以及由两名病理学家进行的视觉评估进行了比较。结果&58;在一组123,442个标记的超像素中,CNN方法在区分免疫细胞丰富和细胞贫乏区域方面实现了0.94(范围&58; 0.92-0.94)的F评分,而F评分为0.88(范围&58;范围&58;使用基于纹理的分类获得0.87-0.89)。与200幅图像的视觉评估相比,采用CNN方法量化免疫浸润的一致性达到了90%(k&61; 0.79),而病理学家之间的观察员间达成的共识是90%(k&61; 0.78)。结论&58;我们的发现表明,仅使用基本形态学染色,深度学习可用于量化乳腺癌样品中的免疫细胞浸润。与白细胞抗原表达和病理学家的目测评估一致,对免疫细胞丰富区域进行了良好的区分。

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