用于组织病理学图像中细胞核分割的弯曲损失正则化网络

Haotian Wang, Min Xian, Aleksandar Vakanski
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引用次数: 0

摘要

分离重叠的细胞核是组织病理学图像分析的一大挑战。最近发表的方法在公共数据集上取得了可喜的整体性能,但在分割重叠的细胞核方面性能有限。为了解决这个问题,我们提出了用于细胞核分割的弯曲损失正则化网络。所提出的弯曲损失对曲率大的轮廓点进行高惩罚,对曲率小的轮廓点进行小惩罚。最小化弯曲损失可以避免生成包含多个核的轮廓。我们使用五个量化指标在 MoNuSeg 数据集上对所提出的方法进行了验证。在以下指标上,该方法优于六种最先进的方法:综合杰卡指数、骰子、识别质量和全景质量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
BENDING LOSS REGULARIZED NETWORK FOR NUCLEI SEGMENTATION IN HISTOPATHOLOGY IMAGES.

Separating overlapped nuclei is a major challenge in histopathology image analysis. Recently published approaches have achieved promising overall performance on public datasets; however, their performance in segmenting overlapped nuclei are limited. To address the issue, we propose the bending loss regularized network for nuclei segmentation. The proposed bending loss defines high penalties to contour points with large curvatures, and applies small penalties to contour points with small curvature. Minimizing the bending loss can avoid generating contours that encompass multiple nuclei. The proposed approach is validated on the MoNuSeg dataset using five quantitative metrics. It outperforms six state-of-the-art approaches on the following metrics: Aggregate Jaccard Index, Dice, Recognition Quality, and Panoptic Quality.

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