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Gradual Domain Adaptation for Segmenting Whole Slide Images Showing Pathological Variability

机译:用于分割整个幻灯片图像的逐步域适应,显示病理变异性

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Although there is a strong demand, the utilization of automated segmentation approaches in histopathological imaging is often inhibited by a high degree of variability. To tackle the thereby arising challenges, we propose an unsupervised "gradual" domain adaptation framework which exploits the knowledge that disease progression is a gradual process and that the approximate level-of-progression is known. We extend an existing approach by adding two methods for regularization of the fully-unsupervised adaptation process. Experiments performed on three datasets corresponding to three different renal pathologies showed excellent segmentation accuracies. The framework is not restricted to the considered task, but can also be adapted to other similar (biomedical) application scenarios.
机译:虽然需求强劲,但是在组织病理学成像中的自动分割方法的利用通常通过高度的可变性抑制。为了解决挑战,我们提出了一个无人监督的“渐进”域适应框架,该框架利用疾病进展是渐进过程的知识,并且近似的进展程度是已知的。我们通过添加两种方法来扩展现有方法,以进行完全无监督的适应过程的正则化。对应于三种不同肾病病理学的三个数据集进行的实验表明了优异的分段精度。该框架不限于所考虑的任务,但也可以适应其他类似(BioMedical)应用方案。

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