TopoSeg: Topology-Aware Nuclear Instance Segmentation

Jul 1, 2023·
Hongliang He*
,
Jun Wang*
,
Pengxu Wei
,
Fan Xu
,
Xiangyang Ji
,
Chang Liu
,
Jie Chen
· 0 min read
The schematic illustration of pixel-wise loss and topology-aware loss
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