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      Uncertainty-Rectified YOLO-SAM for Weakly Supervised ICH Segmentation

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          Abstract

          Intracranial hemorrhage (ICH) is a life-threatening condition that requires rapid and accurate diagnosis to improve treatment outcomes and patient survival rates. Recent advancements in supervised deep learning have greatly improved the analysis of medical images, but often rely on extensive datasets with high-quality annotations, which are costly, time-consuming, and require medical expertise to prepare. To mitigate the need for large amounts of expert-prepared segmentation data, we have developed a novel weakly supervised ICH segmentation method that utilizes the YOLO object detection model and an uncertainty-rectified Segment Anything Model (SAM). In addition, we have proposed a novel point prompt generator for this model to further improve segmentation results with YOLO-predicted bounding box prompts. Our approach achieved a high accuracy of 0.933 and an AUC of 0.796 in ICH detection, along with a mean Dice score of 0.629 for ICH segmentation, outperforming existing weakly supervised and popular supervised (UNet and Swin-UNETR) approaches. Overall, the proposed method provides a robust and accurate alternative to the more commonly used supervised techniques for ICH quantification without requiring refined segmentation ground truths during model training.

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          Author and article information

          Journal
          29 July 2024
          Article
          2407.20461
          86daf1d4-31c4-4d98-a911-317126a2131b

          http://creativecommons.org/licenses/by-nc-sa/4.0/

          History
          Custom metadata
          Manuscript was accepted at SWITCH2024. 10 pages, 2 figures
          cs.CV

          Computer vision & Pattern recognition
          Computer vision & Pattern recognition

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