Prior-Guided DETR for Ultrasound Nodule Detection
Jingjing Wang, Zhuo Xiao, Xinning Yao, Bo Liu, Lijuan Niu, Xiangzhi Bai, Fugen Zhou

TL;DR
This paper introduces a prior-guided DETR framework for ultrasound nodule detection, integrating geometric and structural priors at multiple network stages to improve detection accuracy of complex nodules.
Contribution
It proposes a novel multi-stage prior incorporation approach, including a deformable FFN with prior regularization, a multi-scale spatial-frequency feature mixer, and dense feature interaction mechanisms.
Findings
Achieves superior detection accuracy on multiple datasets.
Outperforms 18 existing detection methods.
Effective in detecting complex and irregular nodules.
Abstract
Accurate detection of ultrasound nodules is essential for the early diagnosis and treatment of thyroid and breast cancers. However, this task remains challenging due to irregular nodule shapes, indistinct boundaries, substantial scale variations, and the presence of speckle noise that degrades structural visibility. To address these challenges, we propose a prior-guided DETR framework specifically designed for ultrasound nodule detection. Instead of relying on purely data-driven feature learning, the proposed framework progressively incorporates different prior knowledge at multiple stages of the network. First, a Spatially-adaptive Deformable FFN with Prior Regularization (SDFPR) is embedded into the CNN backbone to inject geometric priors into deformable sampling, stabilizing feature extraction for irregular and blurred nodules. Second, a Multi-scale Spatial-Frequency Feature Mixer…
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Taxonomy
TopicsAI in cancer detection · Advanced Neural Network Applications · Retinal Imaging and Analysis
