Nnu-Net: a Self-Configuring Method for Deep Learning-Based Biomedical Image Segmentation
Nature Methods(2020)
Division of Medical Image Computing

Active, continual fine tuning of convolutional neural networks for reducing annotation efforts
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Modality Specific U-Net Variants for Biomedical Image Segmentation: A Survey
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Artificial Intelligence with Deep Learning in Nuclear Medicine and Radiology.
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Overall Survival Prediction of Glioma Patients with Multiregional Radiomics.
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A Fusion Biopsy Framework for Prostate Cancer Based on Deformable Superellipses and Nnu-Net
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Dual Supervised Sampling Networks for Real-Time Segmentation of Cervical Cell Nucleus
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A Deep Learning-Based Self-Adapting Ensemble Method for Segmentation in Gynecological Brachytherapy
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