基于语义分割的食管癌病理切片自动分割

Sizhe Li, Jiawei Zhang, Yuzhen Jin, Liping Zheng, Jilan Xu, Guanzhen Yu, Yanchun Zhang
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引用次数: 2

摘要

食管癌组织病理图像的癌区分割是判断食管癌分期的关键步骤。这项任务非常重要。然而,手工分割将花费大量的时间。计算病理学的兴起导致了自动检测癌症区域方法的发展。在自动分割问题中,一个标记良好的数据集是最重要的部分。本文的主要贡献之一是建立了一个包含1388个斑块(958个含有肿瘤细胞的正常斑块和430个含有肿瘤细胞的异常斑块)的数据集,这些斑块被标记为癌症,所有这些斑块都是由专业病理学家手工标记和监督的。我们在我们的数据集上测试了目前流行的网络,如DeeplabV3, FCN+ResNet, Unet等。FCN+ResNet在我们的数据集上取得了最好的性能,平均IoU(85.06%)和像素Acc(92.63%)最高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automatic segmentation of esophageal cancer pathological sections based on semantic segmentation
The cancer area segmentation of esophageal histopathology images is a crucial step in determining the stage of esophageal cancer. This task is very important. However, manual segmentation will cost a lot of time. The rise of computational pathology has led to the development of automatic methods for cancer area detection. In the automatic segmentation problem, a well-labeled dataset is the most important part. One of the main contributions of this paper is to establish a dataset contains 1388 patches (958 Normal and 430 Abnormal containing tumor cells), marked with cancer, all of which are manually labeled and supervised by professional pathologists. We test the currently popular networks on our dataset, such as DeeplabV3, FCN+ResNet, Unet and so on. And FCN+ResNet achieves the best performance on our dataset with the highest Mean IoU (85.06%) and Pixel Acc (92.63%).
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