Medical Image Segmentation Task
Medical image segmentation aims to automatically delineate specific anatomical structures or pathologies within medical images, aiding diagnosis and treatment planning. Current research heavily focuses on improving accuracy and efficiency using various architectures, including U-Net variations, Transformers, and hybrid models that combine convolutional neural networks with attention mechanisms or state-space models, often incorporating techniques like test-time training and prompt engineering. These advancements are crucial for improving the speed and accuracy of medical image analysis, ultimately leading to better patient care and accelerating medical research.
Papers
Effective Segmentation of Post-Treatment Gliomas Using Simple Approaches: Artificial Sequence Generation and Ensemble Models
Heejong Kim, Leo Milecki, Mina C Moghadam, Fengbei Liu, Minh Nguyen, Eric Qiu, Abhishek Thanki, Mert R Sabuncu
ASSNet: Adaptive Semantic Segmentation Network for Microtumors and Multi-Organ Segmentation
Fuchen Zheng, Xinyi Chen, Xuhang Chen, Haolun Li, Xiaojiao Guo, Guoheng Huang, Chi-Man Pun, Shoujun Zhou
Generative AI Enables Medical Image Segmentation in Ultra Low-Data Regimes
Li Zhang, Basu Jindal, Ahmed Alaa, Robert Weinreb, David Wilson, Eran Segal, James Zou, Pengtao Xie
LSMS: Language-guided Scale-aware MedSegmentor for Medical Image Referring Segmentation
Shuyi Ouyang, Jinyang Zhang, Xiangye Lin, Xilai Wang, Qingqing Chen, Yen-Wei Chen, Lanfen Lin