用于跨域腺癌分段的域和内容自适应卷积

Frauke Wilm, Mathias Öttl, Marc Aubreville, Katharina Breininger
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引用次数: 0

摘要

虽然这些网络的性能可以与医学专家媲美,但它们的性能可能会受到分布外数据的阻碍。跨器官和跨扫描仪腺癌分割(COSAS)挑战赛旨在解决形态学和扫描仪引起的域偏移情况下的跨域腺癌分割任务。在本文中,我们提出了一个基于 U-Net 的分割框架,旨在应对这一挑战。在最终的挑战测试集上,我们的方法在跨器官轨迹和跨扫描仪轨迹上分别获得了 0.8020 和 0.8527 的分割分数,成为表现最好的提交论文。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Domain and Content Adaptive Convolutions for Cross-Domain Adenocarcinoma Segmentation
Recent advances in computer-aided diagnosis for histopathology have been largely driven by the use of deep learning models for automated image analysis. While these networks can perform on par with medical experts, their performance can be impeded by out-of-distribution data. The Cross-Organ and Cross-Scanner Adenocarcinoma Segmentation (COSAS) challenge aimed to address the task of cross-domain adenocarcinoma segmentation in the presence of morphological and scanner-induced domain shifts. In this paper, we present a U-Net-based segmentation framework designed to tackle this challenge. Our approach achieved segmentation scores of 0.8020 for the cross-organ track and 0.8527 for the cross-scanner track on the final challenge test sets, ranking it the best-performing submission.
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