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Edit Banana: A framework for converting statistical formats into editable.
Medical SAM3: A Foundation Model for Universal Prompt-Driven Medical Image Segmentation
Comprehensive literature review on hybrid AI systems combining temporal knowledge graphs, clinical constraints, and generative models for emergency department decision support
STPath: A Generative Foundation Model for Integrating Spatial Transcriptomics and Whole Slide Images
A fourier transform based approach that enhances multiple instance learning to perform whole slide image classification.
[arXiv 2025] FairFedMed: Benchmarking Group Fairness in Federated Medical Imaging with FairLoRA
Medical SAM 2: Segment 3D Medical Images Via Segment Anything Model 2
[Science Advances] FairDiffusion: Enhancing Equity in Latent Diffusion Models via Fair Bayesian Perturbation
Open source tools for computational pathology - Nature BME
DSMIL: Dual-stream multiple instance learning networks for tumor detection in Whole Slide Image
[CVPR 2024] ViT-Lens: Towards Omni-modal Representations
Learning from Partial Label Proportions for Whole Slide Image Segmentation in MICCAI2024.
[CVPR 2024] Feature Re-Embedding: Towards Foundation Model-Level Performance in Computational Pathology
Awesome List of Digital and Computational Pathology Resources
AI-based pathology predicts origins for cancers of unknown primary - Nature
Pathology Foundation Model - Nature Medicine
Clinical Histopathology Imaging Evaluation Foundation Model
[MICCAI 24] The official code repository for paper "FairDiff: Fair Segmentation with Point-Image Diffusion".
[ECCV 2024] FairDomain: Achieving Fairness in Cross-Domain Medical Image Segmentation and Classification
[arXiv 2024] FairVision: Equitable Deep Learning for Eye Disease Screening via Fair Identity Scaling
[Journal of Biomedical and Health Informatics 2023] Artifact-Tolerant Clustering-Guided Contrastive Embedding Learning for Ophthalmic Images in Glaucoma
[CVPR 2024] FairCLIP: Harnessing Fairness in Vision-Language Learning