Medical Image Segmentation
Medical image segmentation aims to automatically delineate specific anatomical structures or regions of interest within medical images, facilitating accurate diagnosis and treatment planning. Current research heavily focuses on improving segmentation accuracy and efficiency using advanced architectures like U-Net and its variants, Vision Transformers, and Large Language Models, often incorporating techniques such as multi-scale feature extraction, attention mechanisms, and test-time training. These advancements are crucial for improving diagnostic capabilities, accelerating clinical workflows, and enabling more precise and personalized medicine. Furthermore, research is actively addressing challenges like limited annotated data through semi-supervised learning and the use of foundation models for improved generalization across different imaging modalities and clinical settings.
Papers
SP${ }^3$ : Superpixel-propagated pseudo-label learning for weakly semi-supervised medical image segmentation
Shiman Li, Jiayue Zhao, Shaolei Liu, Xiaokun Dai, Chenxi Zhang, Zhijian Song
TP-UNet: Temporal Prompt Guided UNet for Medical Image Segmentation
Ranmin Wang, Limin Zhuang, Hongkun Chen, Boyan Xu, Ruichu Cai
Label Filling via Mixed Supervision for Medical Image Segmentation from Noisy Annotations
Ming Li, Wei Shen, Qingli Li, Yan Wang
Leveraging CORAL-Correlation Consistency Network for Semi-Supervised Left Atrium MRI Segmentation
Xinze Li, Runlin Huang, Zhenghao Wu, Bohan Yang, Wentao Fan, Chengzhang Zhu, Weifeng Su
SemSim: Revisiting Weak-to-Strong Consistency from a Semantic Similarity Perspective for Semi-supervised Medical Image Segmentation
Shiao Xie, Hongyi Wang, Ziwei Niu, Hao Sun, Shuyi Ouyang, Yen-Wei Chen, Lanfen Lin
Day-Night Adaptation: An Innovative Source-free Adaptation Framework for Medical Image Segmentation
Ziyang Chen, Yiwen Ye, Yongsheng Pan, Yong Xia