Brain Tumor Segmentation
Brain tumor segmentation involves automatically identifying and outlining tumor regions in medical images, primarily MRI scans, to aid in diagnosis and treatment planning. Current research focuses on improving segmentation accuracy and robustness using advanced deep learning architectures like U-Net and its variants (e.g., Swin UNETR, nnU-Net), often incorporating attention mechanisms and multi-scale feature extraction to better handle the complex heterogeneity of brain tumors. These advancements are crucial for improving the speed and accuracy of clinical diagnosis, facilitating personalized treatment strategies, and potentially leading to better patient outcomes. Furthermore, significant effort is dedicated to addressing challenges like missing modalities and imbalanced datasets.
Papers
Improved Unet brain tumor image segmentation based on GSConv module and ECA attention mechanism
Qiyuan Tian, Zhuoyue Wang, Xiaoling Cui
Multiscale Encoder and Omni-Dimensional Dynamic Convolution Enrichment in nnU-Net for Brain Tumor Segmentation
Sahaj K. Mistry, Sourav Saini, Aashray Gupta, Aayush Gupta, Sunny Rai, Vinit Jakhetiya, Ujjwal Baid, Sharath Chandra Guntuku