Tumor Segmentation
Tumor segmentation, the automated identification and delineation of tumors in medical images, aims to improve diagnostic accuracy and treatment planning. Current research emphasizes robust segmentation across diverse imaging modalities (MRI, CT, PET) and scanners, often employing deep learning architectures like U-Net, Swin-UNet, and transformers, and addressing challenges such as missing modalities and domain shifts through techniques like knowledge distillation, multi-task learning, and data augmentation. These advancements hold significant promise for improving cancer diagnosis, treatment personalization, and ultimately, patient outcomes.
Papers
UMambaAdj: Advancing GTV Segmentation for Head and Neck Cancer in MRI-Guided RT with UMamba and nnU-Net ResEnc Planner
Jintao Ren, Kim Hochreuter, Jesper Folsted Kallehauge, Stine Sofia Korreman
Towards Neural Scaling Laws for Time Series Foundation Models
Qingren Yao, Chao-Han Huck Yang, Renhe Jiang, Yuxuan Liang, Ming Jin, Shirui Pan
Cross-Task Pretraining for Cross-Organ Cross-Scanner Adenocarcinoma Segmentation
Adrian Galdran
Sine Wave Normalization for Deep Learning-Based Tumor Segmentation in CT/PET Imaging
Jintao Ren, Muheng Li, Stine Sofia Korreman
Understanding Stain Separation Improves Cross-Scanner Adenocarcinoma Segmentation with Joint Multi-Task Learning
Ho Heon Kim, Won Chan Jeong, Young Shin Ko, Young Jin Park
Tumor aware recurrent inter-patient deformable image registration of computed tomography scans with lung cancer
Jue Jiang, Chloe Min Seo Choi, Maria Thor, Joseph O. Deasy, Harini Veeraraghavan
Cross-Organ and Cross-Scanner Adenocarcinoma Segmentation using Rein to Fine-tune Vision Foundation Models
Pengzhou Cai, Xueyuan Zhang, Ze Zhao