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ZePT: Zero-Shot Pan-Tumor Segmentation via Query-Disentangling and Self-Prompting

Authors :
Jiang, Yankai
Huang, Zhongzhen
Zhang, Rongzhao
Zhang, Xiaofan
Zhang, Shaoting
Publication Year :
2023

Abstract

The long-tailed distribution problem in medical image analysis reflects a high prevalence of common conditions and a low prevalence of rare ones, which poses a significant challenge in developing a unified model capable of identifying rare or novel tumor categories not encountered during training. In this paper, we propose a new zero-shot pan-tumor segmentation framework (ZePT) based on query-disentangling and self-prompting to segment unseen tumor categories beyond the training set. ZePT disentangles the object queries into two subsets and trains them in two stages. Initially, it learns a set of fundamental queries for organ segmentation through an object-aware feature grouping strategy, which gathers organ-level visual features. Subsequently, it refines the other set of advanced queries that focus on the auto-generated visual prompts for unseen tumor segmentation. Moreover, we introduce query-knowledge alignment at the feature level to enhance each query's discriminative representation and generalizability. Extensive experiments on various tumor segmentation tasks demonstrate the performance superiority of ZePT, which surpasses the previous counterparts and evidence the promising ability for zero-shot tumor segmentation in real-world settings.<br />Comment: This paper has been accepted by CVPR 2024

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2312.04964
Document Type :
Working Paper