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Titlebook: Medical Image Computing and Computer Assisted Intervention – MICCAI 2023; 26th International C Hayit Greenspan,Anant Madabhushi,Russell Tay

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YONA: You Only Need One Adjacent Reference-Frame for Accurate and Fast Video Polyp Detection making them a valuable resource for deep learning methods. However, unlike common fixed-camera video, the camera-moving scene in colonoscopy videos can cause rapid video jitters, leading to unstable training for existing video detection models. In this paper, we propose the . (.ou .nly .eed one .dj
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Patients and Slides are Equal: A Multi-level Multi-instance Learning Framework for Pathological Imagween patches and slides. However, in clinical medicine, doctors use slide-level labels to summarize patient-level labels as a diagnostic result, indicating the involvement of three levels of patch, slide, and patient in actual pathology image analysis, which we refer to as the multi-level multi-inst
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DiffULD: Diffusive Universal Lesion Detectionrted by anchor-based detection designs, but they have inherent drawbacks due to the use of anchors: .and . Diffusion probability models (DPM) have demonstrated outstanding capabilities in many vision tasks. Many DPM-based approaches achieve great success in natural image object detection without usi
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Graph-Theoretic Automatic Lesion Tracking and Detection of Patterns of Lesion Changes in Longitudinacess is currently partial, time-consuming and subject to variability. We present a new, generic, graph-based method for tracking individual lesion changes and detecting patterns in the evolution of lesions over time. The tasks are formalized as graph-theoretic problems in which lesions are vertices
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