A Multi-Perspective Self-Supervised Generative Adversarial Network for FS to FFPE Stain Transfer

Yiyang Lin;Yifeng Wang;Zijie Fang;Zexin Li;Xianchao Guan;Danling Jiang;Yongbing Zhang
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Abstract

In clinical practice, frozen section (FS) images can be utilized to obtain the immediate pathological results of the patients in operation due to their fast production speed. However, compared with the formalin-fixed and paraffin-embedded (FFPE) images, the FS images greatly suffer from poor quality. Thus, it is of great significance to transfer the FS image to the FFPE one, which enables pathologists to observe high-quality images in operation. However, obtaining the paired FS and FFPE images is quite hard, so it is difficult to obtain accurate results using supervised methods. Apart from this, the FS to FFPE stain transfer faces many challenges. Firstly, the number and position of nuclei scattered throughout the image are hard to maintain during the transfer process. Secondly, transferring the blurry FS images to the clear FFPE ones is quite challenging. Thirdly, compared with the center regions of each patch, the edge regions are harder to transfer. To overcome these problems, a multi-perspective self-supervised GAN, incorporating three auxiliary tasks, is proposed to improve the performance of FS to FFPE stain transfer. Concretely, a nucleus consistency constraint is designed to enable the high-fidelity of nuclei, an FFPE guided image deblurring is proposed for improving the clarity, and a multi-field-of-view consistency constraint is designed to better generate the edge regions. Objective indicators and pathologists’ evaluation for experiments on the five datasets across different countries have demonstrated the effectiveness of our method. In addition, the validation in the downstream task of microsatellite instability prediction has also proved the performance improvement by transferring the FS images to FFPE ones. Our code link is https://github.com/linyiyang98/Self-Supervised-FS2FFPE.git.
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用于 FS 到 FFPE 染色转移的多视角自监督生成对抗网络
在临床实践中,冷冻切片(FS)图像由于制作速度快,可以获得手术中患者的即时病理结果。然而,与福尔马林固定和石蜡包埋(FFPE)图像相比,FS图像的质量明显较差。因此,将FS图像转换为FFPE图像,使病理学家在手术中观察到高质量的图像具有重要意义。然而,获得配对的FS和FFPE图像非常困难,因此使用监督方法很难获得准确的结果。除此之外,FS到FFPE染色转移还面临许多挑战。首先,在转移过程中,分散在图像中的核的数量和位置难以保持。其次,将模糊的FS图像传输到清晰的FFPE图像是相当具有挑战性的。第三,与每个斑块的中心区域相比,边缘区域更难转移。为了克服这些问题,提出了一种包含三个辅助任务的多视角自监督GAN,以提高FS到FFPE染色转移的性能。具体而言,设计了核一致性约束以实现核的高保真度,提出了FFPE引导图像去模糊以提高清晰度,设计了多视场一致性约束以更好地生成边缘区域。客观指标和病理学家对不同国家五个数据集实验的评价证明了我们方法的有效性。此外,在微卫星不稳定性预测下游任务中的验证也证明了将FS图像转换为FFPE图像可以提高性能。我们的代码链接是https://github.com/linyiyang98/Self-Supervised-FS2FFPE.git。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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