Litcius/Paper detail

Asymmetric Adaptive Heterogeneous Network for Multi-Modality Medical Image Segmentation

Shenhai Zheng, Xin Ye, Chaohui Yang, Lei Yu, Weisheng Li, Xinbo Gao, Yue Zhao

2025IEEE Transactions on Medical Imaging50 citationsDOI

Abstract

Existing studies of multi-modality medical image segmentation tend to aggregate all modalities without discrimination and employ multiple symmetric encoders or decoders for feature extraction and fusion. They often overlook the different contributions to visual representation and intelligent decisions among multi-modality images. Motivated by this discovery, this paper proposes an asymmetric adaptive heterogeneous network for multi-modality image feature extraction with modality discrimination and adaptive fusion. For feature extraction, it uses a heterogeneous two-stream asymmetric feature-bridging network to extract complementary features from auxiliary multi-modality and leading single-modality images, respectively. For feature adaptive fusion, the proposed Transformer-CNN Feature Alignment and Fusion (T-CFAF) module enhances the leading single-modality information, and the Cross-Modality Heterogeneous Graph Fusion (CMHGF) module further fuses multi-modality features at a high-level semantic layer adaptively. Comparative evaluation with ten segmentation models on six datasets demonstrates significant efficiency gains as well as highly competitive segmentation accuracy. (Our code is publicly available at https://github.com/joker-527/AAHN).

Topics & Concepts

Image segmentationArtificial intelligenceComputer scienceComputer visionMedical imagingModality (human–computer interaction)SegmentationImage (mathematics)Scale-space segmentationPattern recognition (psychology)Medical Image Segmentation TechniquesBrain Tumor Detection and ClassificationAI in cancer detection