ContriMix introduces a domain label-free stain color augmentation method for digital pathology, outperforming existing methods on the Camelyon17-WILDS dataset.
MS-GCN enhances digital pathology models by integrating multiscale data, improving performance and interpretability.
Innovative CDFA-MIL framework enhances feature representation and fusion in digital pathology, setting a new benchmark.
Foundation models and information retrieval are revolutionizing digital pathology by offering valuable insights through a synergy of large deep models and conventional information retrieval methods.
ContriMix is a novel domain label-free stain color augmentation method that outperforms competing methods on the Camelyon17-WILDS dataset, improving model performance and generalization in digital pathology.
The author introduces innovative methods, including fast patch selection, lightweight feature extraction, and rotation-agnostic representation learning, to enhance histopathology image analysis efficiency and accuracy.
ContriMix introduces a domain label-free stain color augmentation method based on DRIT++, enhancing model performance in digital pathology. By leveraging sample stain color variation and random mixing, ContriMix generates synthetic images to improve classifier performance.