3D Medical Image Segmentation
3D medical image segmentation aims to automatically identify and delineate anatomical structures within three-dimensional medical scans, facilitating accurate diagnosis and treatment planning. Current research emphasizes developing efficient and accurate segmentation models, focusing on architectures like U-Nets, Transformers, and state-space models (e.g., Mamba), often incorporating techniques like self-attention and efficient feature fusion to improve performance and reduce computational costs. 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
Leveraging Task-Specific Knowledge from LLM for Semi-Supervised 3D Medical Image Segmentation
Suruchi Kumari, Aryan Das, Swalpa Kumar Roy, Indu Joshi, Pravendra Singh
SAM-Med3D-MoE: Towards a Non-Forgetting Segment Anything Model via Mixture of Experts for 3D Medical Image Segmentation
Guoan Wang, Jin Ye, Junlong Cheng, Tianbin Li, Zhaolin Chen, Jianfei Cai, Junjun He, Bohan Zhuang
Multi-Aperture Fusion of Transformer-Convolutional Network (MFTC-Net) for 3D Medical Image Segmentation and Visualization
Siyavash Shabani, Muhammad Sohaib, Sahar A. Mohammed, Bahram Parvin
Are Vision xLSTM Embedded UNet More Reliable in Medical 3D Image Segmentation?
Pallabi Dutta, Soham Bose, Swalpa Kumar Roy, Sushmita Mitra
SegFormer3D: an Efficient Transformer for 3D Medical Image Segmentation
Shehan Perera, Pouyan Navard, Alper Yilmaz
Post-Training Network Compression for 3D Medical Image Segmentation: Reducing Computational Efforts via Tucker Decomposition
Tobias Weber, Jakob Dexl, David Rügamer, Michael Ingrisch
nnU-Net Revisited: A Call for Rigorous Validation in 3D Medical Image Segmentation
Fabian Isensee, Tassilo Wald, Constantin Ulrich, Michael Baumgartner, Saikat Roy, Klaus Maier-Hein, Paul F. Jaeger