Gland segmentation is a critical step to quantitatively assess the morphology of glands in histopathology image analysis. However, it is challenging to separate densely clustered glands accurately. Existing deep learning-based approaches attempted to use contour-based techniques to alleviate this issue but only achieved limited success. To address this challenge, we propose a novel topology-aware network (TA-Net) to accurately separate densely clustered and severely deformed glands. The proposed TA-Net has a multitask learning architecture and enhances the generalization of gland segmentation by learning shared representation from two tasks: instance segmentation and gland topology estimation. The proposed topology loss computes gland topology using gland skeletons and markers. It drives the network to generate segmentation results that comply with the true gland topology. We validate the proposed approach on the GlaS and CRAG datasets using three quantitative metrics, F1-score, object-level Dice coefficient, and object-level Hausdorff distance. Extensive experiments demonstrate that TA-Net achieves state-of-the-art performance on the two datasets. TA-Net outperforms other approaches in the presence of densely clustered glands.
翻译:为解决这一问题,我们提议建立一个新型地貌意识网络(TA-Net),以精确地区分密集聚集和严重畸形的地貌。拟议的TA-Net有一个多重任务学习结构,通过学习从两个任务(例分解和地表学估计)中分享代表,加强地貌分化的普及性。拟议的地貌损失表层表层测量法利用地表骨和标记计算地貌表层表层学。它推动网络产生与真实地表层相一致的分解结果。我们用三种定量指标(F1-核心、对象级狄克系数和对象级Hausdorff距离)验证了拟议的格拉斯和中央大气分析小组数据集方法。广泛的实验显示,TA-Net在两个数据库中实现了“高原”状态的外表层表现。