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利用循环生成对抗网络实现细胞图像中吉姆萨染色与巴氏染色之间的相互转换

Mutual stain conversion between Giemsa and Papanicolaou in cytological images using cycle generative adversarial network.

作者信息

Teramoto Atsushi, Yamada Ayumi, Tsukamoto Tetsuya, Kiriyama Yuka, Sakurai Eiko, Shiogama Kazuya, Michiba Ayano, Imaizumi Kazuyoshi, Saito Kuniaki, Fujita Hiroshi

机构信息

Graduate School of Health Sciences, Fujita Health University, Aichi, Japan.

School of Medicine, Fujita Health University, Aichi, Japan.

出版信息

Heliyon. 2021 Feb 24;7(2):e06331. doi: 10.1016/j.heliyon.2021.e06331. eCollection 2021 Feb.

Abstract

OBJECTIVE

Papanicolaou and Giemsa stains used in cytology have different characteristics and complementary roles. In this study, we focused on cycle-consistent generative adversarial network (CycleGAN), which is an image translation technique using deep learning, and we conducted mutual stain conversion between Giemsa and Papanicolaou in cytological images using CycleGAN.

METHODS

A total of 191 Giemsa-stained images and 209 Papanicolaou-stained images were collected from 63 patients with lung cancer. From those images, 67 images from nine cases were used for testing and the remaining images were used for training. For data augmentation, the number of training images was increased by rotation and inversion, and the images were pipelined to CycleGAN to train the mutual conversion process involving Giemsa- and Papanicolaou-stained images. Three pathologists and three cytotechnologists performed visual evaluations of the authenticity of cell nuclei, cytoplasm, and cell layouts of the test images translated using CycleGAN.

RESULTS

As a result of converting Giemsa-stained images into Papanicolaou-stained images, the background red blood cell patterns present in Giemsa-stained images disappeared, and cell patterns that reproduced the shape and staining of the cell nuclei and cytoplasm peculiar to Papanicolaou staining were obtained. Regarding the reverse-translated results, nuclei became larger, and red blood cells that were not evident in Papanicolaou-stained images appeared. After visual evaluation, although actual images exhibited better results than converted images, the results were promising for various applications.

DISCUSSION

The stain translation technique investigated in this paper can complement specimens under conditions where only single stained specimens are available; it also has potential applications in the massive training of artificial intelligence systems for cell classification, and can also be used for training cytotechnologist and pathologists.

摘要

目的

细胞学中使用的巴氏染色法和吉姆萨染色法具有不同的特点和互补作用。在本研究中,我们聚焦于循环一致生成对抗网络(CycleGAN),这是一种利用深度学习的图像翻译技术,我们使用CycleGAN对细胞学图像中的吉姆萨染色和巴氏染色进行相互染色转换。

方法

从63例肺癌患者中收集了总共191张吉姆萨染色图像和209张巴氏染色图像。从这些图像中,选取9例的67张图像用于测试,其余图像用于训练。为了进行数据增强,通过旋转和翻转增加训练图像的数量,并将图像输入CycleGAN以训练涉及吉姆萨染色和巴氏染色图像的相互转换过程。三名病理学家和三名细胞技术人员对使用CycleGAN翻译的测试图像的细胞核、细胞质和细胞布局的真实性进行了视觉评估。

结果

将吉姆萨染色图像转换为巴氏染色图像后,吉姆萨染色图像中存在的背景红细胞模式消失,获得了再现巴氏染色特有的细胞核和细胞质形状及染色的细胞模式。关于反向翻译的结果,细胞核变大,巴氏染色图像中不明显的红细胞出现。经过视觉评估,虽然实际图像的结果优于转换后的图像,但这些结果在各种应用中很有前景。

讨论

本文研究的染色翻译技术可以在只有单一染色标本的条件下对标本进行补充;它在人工智能系统的大规模细胞分类训练中也有潜在应用,还可用于培训细胞技术人员和病理学家。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/6ca7/7921513/c622f0af21cb/gr1.jpg

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