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基于抗体的深度学习算法在甲状腺乳头状癌白细胞分割中的训练。

Antibody Supervised Training of a Deep Learning Based Algorithm for Leukocyte Segmentation in Papillary Thyroid Carcinoma.

出版信息

IEEE J Biomed Health Inform. 2021 Feb;25(2):422-428. doi: 10.1109/JBHI.2020.2994970. Epub 2021 Feb 5.

DOI:10.1109/JBHI.2020.2994970
PMID:32750899
Abstract

The quantity of leukocytes in papillary thyroid carcinoma (PTC) potentially have prognostic and treatment predictive value. Here, we propose a novel method for training a convolutional neural network (CNN) algorithm for segmenting leukocytes in PTCs. Tissue samples from two retrospective PTC cohort were obtained and representative tissue slides from twelve patients were stained with hematoxylin and eosin (HE) and digitized. Then, the HE slides were destained and restained immunohistochemically (IHC) with antibodies to the pan-leukocyte anti CD45 antigen and scanned again. The two stain-pairs of all representative tissue slides were registered, and image tiles of regions of interests were exported. The image tiles were processed and the 3,3'-diaminobenzidine (DAB) stained areas representing anti CD45 expression were turned into binary masks. These binary masks were applied as annotations on the HE image tiles and used in the training of a CNN algorithm. Ten whole slide images (WSIs) were used for training using a five-fold cross-validation and the remaining two slides were used as an independent test set for the trained model. For visual evaluation, the algorithm was run on all twelve WSIs, and in total 238,144 tiles sized 500 × 500 pixels were analyzed. The trained CNN algorithm had an intersection over union of 0.82 for detection of leukocytes in the HE image tiles when comparing the prediction masks to the ground truth anti CD45 mask. We conclude that this method for generating antibody supervised annotations using the destain-restain IHC guided annotations resulted in high accuracy segmentations of leukocytes in HE tissue images.

摘要

甲状腺乳头状癌 (PTC) 中的白细胞数量可能具有预后和治疗预测价值。在这里,我们提出了一种用于训练用于分割 PTC 中白细胞的卷积神经网络 (CNN) 算法的新方法。从两个回顾性 PTC 队列中获得组织样本,并对来自 12 名患者的代表性组织切片用苏木精和伊红 (HE) 染色并进行数字化。然后,将 HE 切片脱染并用针对白细胞 Pan-CD45 抗原的免疫组化 (IHC) 重新染色,并再次扫描。对所有代表性组织切片的两个染色对进行配准,并导出感兴趣区域的图像块。处理图像块,并将代表抗 CD45 表达的 3,3'-二氨基联苯胺 (DAB) 染色区域转换为二进制蒙版。这些二进制蒙版应用于 HE 图像块的注释中,并用于训练 CNN 算法。使用五重交叉验证对 10 张全幻灯片图像 (WSI) 进行训练,并用其余的两张幻灯片作为训练模型的独立测试集。用于视觉评估,在所有 12 张 WSI 上运行算法,总共分析了 238,144 个大小为 500×500 像素的图像块。当将预测蒙版与抗 CD45 蒙版的地面真实值进行比较时,训练有素的 CNN 算法在 HE 图像块中检测白细胞的交并比为 0.82。我们得出结论,使用脱染-复染 IHC 引导注释生成抗体监督注释的这种方法导致 HE 组织图像中白细胞的高精度分割。

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