SSM-Net: Semi-supervised multi-task network for joint lesion segmentation and classification from pancreatic EUS images
Abstract: Highlights•A semi-supervised network is designed to classify and segment pancreatic mass.•Saliency-aware contrastive loss is introduce to capture unlabeled data features.•Attention modules are proposed to classify and segment pancreatic lesions.•A large EUS-based pancreas image dataset is collected, containing about 500 patients.
External IDs:doi:10.1016/j.artmed.2024.102919
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