TopoSeg: Topology-Aware Nuclear Instance Segmentation
Jul 1, 2023·,,,,,,·
0 min read
Hongliang He*
Jun Wang*
Pengxu Wei
Fan Xu
Xiangyang Ji
Chang Liu
Jie Chen

Abstract
Nuclear instance segmentation has been critical for pathology image analysis in medical science, eg, cancer diagnosis. Current methods typically adopt pixel-wise optimization for nuclei boundary exploration, where rich structural information could be lost for subsequent quantitative morphology assessment. To address this issue, we develop a topology-aware segmentation approach, termed TopoSeg, which exploits topological structure information to keep the predictions rational, especially in common situations with densely touching and overlapping nucleus instances. Concretely, TopoSeg builds on a topology-aware module (TAM), which encodes dynamic changes of different topology structures within the three-class probability maps (inside, boundary, and background) of the nuclei to persistence barcodes and makes the topology-aware loss function. To efficiently focus on regions with high topological errors, we propose an adaptive topology-aware selection (ATS) strategy to enhance the topology-aware optimization procedure further. Experiments on three nuclear instance segmentation datasets justify the superiority of TopoSeg, which achieves state-of-the-art performance.
Type
Publication
In International Conference of Computer Vision 2023