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Titlebook: Domain Adaptation and Representation Transfer, and Distributed and Collaborative Learning; Second MICCAI Worksh Shadi Albarqouni,Spyridon B

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First U-Net Layers Contain More Domain Specific Information Than the Last Ones sites result in dramatic drops of CNN segmentation quality on unseen domains. Many of the recently proposed MRI domain adaptation methods operate with the last CNN layers to suppress domain shift. At the same time, the core manifestation of MRI variability is a considerable diversity of image inten
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Siloed Federated Learning for Multi-centric Histopathology Datasets machine learning, especially when applied in the medical domain where multi-centric data heterogeneity is common. Building on previous domain adaptation works, this paper proposes a novel federated learning approach for deep learning architectures via the introduction of local-statistic batch norma
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Inverse Distance Aggregation for Federated Learning with Non-IID Data scenarios is to have a more accurate shared model which is robust to noisy and out-of distribution clients. In this work, we tackle the problem of statistical heterogeneity in data for . which is highly plausible in medical data where for example the data comes from different sites with different s
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Federated Gradient Averaging for Multi-Site Training with Momentum-Based Optimizersifficulty of data sharing between institutions. However, contemporary multi-site techniques such as weight averaging and cyclic weight transfer make theoretical sacrifices to simplify implementation. In this paper, we implement federated gradient averaging (FGA), a variant of federated learning with
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https://doi.org/10.1007/978-3-031-25806-0 tasks. Despite improved performance, UNet++ introduces densely connected decoding blocks, some of which, however, are redundant for a specific task. In this paper, we propose .-UNet++ that allows us to automatically identify and discard redundant decoding blocks without the loss of precision. To th
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https://doi.org/10.1007/978-3-031-25914-2arge amounts of sample images and precisely annotated labels, which is difficult to get in medical field. Domain adaptation can utilize limited labeled images of source domain to improve the performance of target domain. In this paper, we propose a novel domain adaptive predicting-refinement network
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