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Restoration of Marker Occluded Hematoxylin and Eosin Stained Whole Slide Histology Images Using Generative Adversarial Networks

机译:使用生成对抗网络恢复标记的苏木精和曙红染色的完整玻片组织学图像

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It is common for pathologists to annotate specific regions of the tissue, such as tumor, directly on the glass slide with markers. Although this practice was helpful prior to the advent of histology whole slide digitization, it often occludes important details which are increasingly relevant to immuno-oncology due to recent advancements in digital pathology imaging techniques. The current work uses a generative adversarial network with cycle loss to remove these annotations while still maintaining the underlying structure of the tissue by solving an image-to-image translation problem. We train our network on up to 300 whole slide images with marker inks and show that 70% of the corrected image patches are indistinguishable from originally uncontaminated image tissue to a human expert. This portion increases 97% when we replace the human expert with a deep residual network. We demonstrated the fidelity of the method to the original image by calculating the correlation between image gradient magnitudes. We observed a revival of up to 94,000 nuclei per slide in our dataset, the majority of which were located on tissue border.
机译:病理学家通常直接在玻璃载玻片上用标记注释组织的特定区域,例如肿瘤。尽管这种做法在组织学全玻片数字化出现之前是有帮助的,但由于数字病理成像技术的最新发展,它常常会掩盖与免疫肿瘤学越来越相关的重要细节。当前的工作使用具有周期损失的生成对抗网络来删除这些注释,同时仍通过解决图像到图像的转换问题来保持组织的基础结构。我们使用标记墨水在多达300张整个幻灯片图像上训练我们的网络,并显示70%的校正图像斑块与最初未受污染的图像组织与人类专家是无法区分的。当我们用深层的残差网络代替人类专家时,这部分增加了97%。通过计算图像梯度幅度之间的相关性,我们证明了该方法对原始图像的保真度。我们在数据集中观察到每张幻灯片最多可恢复94,000个核,其中大多数位于组织边界。

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