Exploring Generalizable Distillation for Efficient Medical Image Segmentation
Xingqun Qi, Zhuojie Wu, Min Ren, Muyi Sun, Caifeng Shan, Zhenan Sun

TL;DR
This paper introduces a novel framework for cross-domain medical image segmentation that combines domain-invariant representation learning with specialized distillation schemes to enhance generalization and efficiency.
Contribution
The paper proposes Model-Specific Alignment Networks and two distillation schemes, DCGD and DICD, to improve cross-domain medical image segmentation with lightweight models.
Findings
Outperforms existing methods on Liver and Retinal Vessel datasets.
Achieves better generalization across different medical imaging domains.
Demonstrates effectiveness of domain-invariant features and distillation strategies.
Abstract
Efficient medical image segmentation aims to provide accurate pixel-wise predictions for medical images with a lightweight implementation framework. However, lightweight frameworks generally fail to achieve superior performance and suffer from poor generalizable ability on cross-domain tasks. In this paper, we explore the generalizable knowledge distillation for the efficient segmentation of cross-domain medical images. Considering the domain gaps between different medical datasets, we propose the Model-Specific Alignment Networks (MSAN) to obtain the domain-invariant representations. Meanwhile, a customized Alignment Consistency Training (ACT) strategy is designed to promote the MSAN training. Considering the domain-invariant representative vectors in MSAN, we propose two generalizable knowledge distillation schemes for cross-domain distillation, Dual Contrastive Graph Distillation…
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Taxonomy
TopicsRadiomics and Machine Learning in Medical Imaging · Brain Tumor Detection and Classification · Medical Imaging and Analysis
MethodsKnowledge Distillation
