MedCLIP
Medical image-text contrastive learning framework
A deep learning framework for contrastive learning from unpaired medical images and texts
EMNLP'22 | MedCLIP: Contrastive Learning from Unpaired Medical Images and Texts
456 stars
5 watching
51 forks
Language: Python
last commit: 7 months ago Related projects:
Repository | Description | Stars |
---|---|---|
perone/medicaltorch | A framework for building deep learning models on medical imaging data | 851 |
aphp/edsnlp | A modular NLP framework for extracting information from clinical notes, particularly French ones. | 113 |
imageomics/bioclip | A deep learning framework trained on a large biological image dataset to learn taxonomic labels and classify images. | 164 |
liuquande/feddg-elcfs | A framework for federated learning on medical image segmentation using continuous frequency space interpolation. | 240 |
baidu-research/ncrf | Automated detection of cancer metastasis using deep learning and conditional random fields. | 756 |
yinboc/liif | This project presents an approach to learning continuous image representation using a local implicit function. | 1,271 |
gwgundersen/dpcca | Develops a method to learn shared latent structure between biomedical images and gene expression data | 25 |
fangpingwan/deepcpi | A deep learning framework for large-scale in silico drug screening | 14 |
zhengwang100/rect | A deep learning framework for graph representation learning with partially labeled data | 18 |
mc-e/deep-generalized-unfolding-networks-for-image-restoration | An image restoration framework using neural networks with interpretable and adaptive structure for diverse applications | 131 |
hannes-brt/hebel | A deep learning library that provides GPU acceleration and various neural network models and training methods. | 1,169 |
tobypde/frrn | A software framework for training and evaluating full-resolution residual networks for semantic image segmentation tasks | 280 |
zhirongw/deep-mrf | A deep learning model for probabilistic image representation and generation based on Markov Random Fields | 76 |
guopengf/fl-mrcm | Improves deep learning-based magnetic resonance image reconstruction using federated learning and multi-institutional collaboration | 46 |
lucasb-eyer/pydensecrf | A Python wrapper for fully connected CRFs with Gaussian edge potentials used in computer vision and machine learning. | 1,952 |