SAGE: Shape-Adapting Gated Experts for Adaptive Histopathology Image Segmentation
Researchers have developed two novel frameworks, SAGE and SegMoTE, to improve medical image segmentation. SAGE utilizes a dynamic expert routing system to adapt to variations in cell size and shape, achieving high Dice scores on multiple datasets. SegMoTE, on the other hand, efficiently adapts general segmentation models like SAM to medical imaging tasks with minimal learnable parameters and reduced annotation costs. Both approaches aim to enhance the accuracy and practicality of AI in clinical diagnostics. AI
IMPACT These new segmentation models offer improved accuracy and efficiency for clinical diagnostics, potentially reducing annotation costs and enhancing the deployment of AI in healthcare.