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Titlebook: Medical Image Computing and Computer Assisted Intervention – MICCAI 2022; 25th International C Linwei Wang,Qi Dou,Shuo Li Conference procee

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S,R: Self-supervised Spectral Regression for Hyperspectral Histopathology Image Classificationd is restored by using the learned coefficients to reweight the remaining bands. Two pre-text tasks are designed: (1) S.R-CR, which regresses the linear coefficients, so that the pre-trained model understands the inherent structures of HSIs and the pathological characteristics of different morpholog
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Distilling Knowledge from Topological Representations for Pathological Complete Response Predictionrior performance by increasing the accuracy from previously 85.1% to 90.5% in the pCR prediction and reducing the topological computation time by about 66% on a public dataset for breast DCE-MRI images.
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SETMIL: Spatial Encoding Transformer-Based Multiple Instance Learning for Pathological Image Analysincoding design in the aggregating module further improves the context-information-encoding ability of SETMIL. (4) SETMIL designs a transformer-based pyramid multi-scale fusion module to comprehensively encode the information with different granularity using multi-scale receptive fields and make the
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Clinical-Realistic Annotation for Histopathology Images with Probabilistic Semi-supervision: A Worstkle the challenge, we 1) proposed a different annotation strategy to image data with different levels of disease severity, 2) combined semi- and self-supervised representation learning with probabilistic weakly supervision to make use of the proposed annotations, and 3) illustrated its effectiveness
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End-to-End Learning for Image-Based Detection of Molecular Alterations in Digital Pathologycer cases from The Cancer Genome Atlas. Results reach AUC scores of up to 94% and are shown to be competitive with state of the art two-stage pipelines. We believe our approach can facilitate future research in digital pathology and contribute to solve a large range of problems around the prediction
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S5CL: Unifying Fully-Supervised, Self-supervised, and Semi-supervised Learning Through Hierarchical rk on two public histopathological datasets show strong improvements in the case of sparse labels: for a H &E-stained colorectal cancer dataset, the accuracy increases by up to . compared to supervised cross-entropy loss; for a highly imbalanced dataset of single white blood cells from leukemia pati
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