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3. Cine-MR Image Segmentation for Assessment of Small Bowel Motility Function Using 3D U-Net
4. Blood Vessel Segmentation from Fundus Images Using Modified U-net Convolutional Neural Network
5. Knowledge Distillation from Cross Teaching Teachers for Efficient Semi-supervised Abdominal Organ Segmentation in CT