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Tumor Segmentation

Tumor Segmentation is the task of identifying the spatial location of a tumor. It is a pixel-level prediction where each pixel is classified as a tumor or background. The most popular benchmark for this task is the BraTS dataset. The models are typically evaluated with the Dice Score metric.

Papers

Showing 641650 of 786 papers

TitleStatusHype
Unsupervised Brain Tumor Segmentation with Image-based Prompts0
Selective experience replay compression using coresets for lifelong deep reinforcement learning in medical imaging0
3D Kidneys and Kidney Tumor Semantic Segmentation using Boundary-Aware Networks0
Self-calibrated convolution towards glioma segmentation0
An Efficient Solution for Breast Tumor Segmentation and Classification in Ultrasound Images Using Deep Adversarial Learning0
Self-semantic contour adaptation for cross modality brain tumor segmentation0
Self-supervised Feature Learning for 3D Medical Images by Playing a Rubik's Cube0
Self-Supervised Learning for 3D Medical Image Analysis using 3D SimCLR and Monte Carlo Dropout0
Self-Supervised Learning for Organs At Risk and Tumor Segmentation with Uncertainty Quantification0
Self-supervised learning improves robustness of deep learning lung tumor segmentation to CT imaging differences0
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