Vascular Segmentation
Vascular segmentation, the automated identification and delineation of blood vessels in medical images, aims to improve diagnostic accuracy and treatment planning across various medical specialties. Current research focuses on enhancing the robustness and generalization of deep learning models, particularly U-Net and its variants, often incorporating techniques like attention mechanisms, deformable convolutions, and novel loss functions (e.g., centerline boundary Dice loss) to address challenges posed by image variability and limited training data. These advancements are crucial for applications ranging from diagnosing cardiovascular disease and ophthalmic conditions to guiding minimally invasive surgical procedures, ultimately improving patient care and accelerating medical research.
Papers
KaLDeX: Kalman Filter based Linear Deformable Cross Attention for Retina Vessel Segmentation
Zhihao Zhao, Shahrooz Faghihroohi, Yinzheng Zhao, Junjie Yang, Shipeng Zhong, Kai Huang, Nassir Navab, Boyang Li, M.Ali Nasseri
Vascular Segmentation of Functional Ultrasound Images using Deep Learning
Hana Sebia (AISTROSIGHT), Thomas Guyet (AISTROSIGHT), Mickaƫl Pereira (CERMEP - imagerie du vivant), Marco Valdebenito (CERMEP - imagerie du vivant), Hugues Berry (AISTROSIGHT), Benjamin Vidal (CERMEP - imagerie du vivant, CRNL)