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Titlebook: Brainlesion:Glioma, Multiple Sclerosis, Strokeand Traumatic Brain Injuries; 8th International Wo Spyridon Bakas,Alessandro Crimi,Reuben Dor

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An Efficient Cascade of U-Net-Like Convolutional Neural Networks Devoted to Brain Tumor Segmentationignant brain tumors. Gliomas are considered to be . tumors, affecting less than 10,000 people each year, with a 5-year survival rate of 6%. If intercepted at an early stage, they pose no danger; however, providing an accurate diagnosis has proven to be difficult. In this paper, we propose a cascade
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Tuning U-Net for Brain Tumor Segmentatione model architecture and training schedule. The proposed method further improves scores on both our internal cross validation and challenge validation data. The validation mean dice scores are: ET 0.8381, TC 0.8802, WT 0.9292, and mean Hausdorff95: ET 14.460, TC 5.840, WT 3.594.
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Infusing Domain Knowledge into nnU-Nets for Segmenting Brain Tumors in MRIBraTS Continuous Evaluation initiative, we exploit a 3D nnU-Net for this task which was ranked at the . place (out of 1600 participants) in the BraTS’21 Challenge. We benefit from an ensemble of deep models enhanced with the expert knowledge of a senior radiologist captured in a form of several post
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Unsupervised Anomaly Localization with Structural Feature-Autoencoders structural similarity loss that does not only consider differences in intensity but also in contrast and structure. Our method significantly increases performance on two medical data sets for brain MRI. Code and experiments are available at ..
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Transformer Based Models for Unsupervised Anomaly Segmentation in Brain MR Imagesers (ViTs) have emerged as a competitive alternative to CNNs. It relies on the self-attention mechanism that can relate image patches to each other. We investigate in this paper Transformer’s capabilities in building AEs for the reconstruction-based UAD task to reconstruct a coherent and more realis
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