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arxiv: 2406.05205 · v1 · pith:CSFKXUB3new · submitted 2024-06-07 · 💻 cs.CV · cs.CL· cs.LG· cs.MM· eess.IV

CPLIP: Zero-Shot Learning for Histopathology with Comprehensive Vision-Language Alignment

classification 💻 cs.CV cs.CLcs.LGcs.MMeess.IV
keywords cpliphistopathologyimageslearningmodelsvision-languageacrossalignment
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This paper proposes Comprehensive Pathology Language Image Pre-training (CPLIP), a new unsupervised technique designed to enhance the alignment of images and text in histopathology for tasks such as classification and segmentation. This methodology enriches vision-language models by leveraging extensive data without needing ground truth annotations. CPLIP involves constructing a pathology-specific dictionary, generating textual descriptions for images using language models, and retrieving relevant images for each text snippet via a pre-trained model. The model is then fine-tuned using a many-to-many contrastive learning method to align complex interrelated concepts across both modalities. Evaluated across multiple histopathology tasks, CPLIP shows notable improvements in zero-shot learning scenarios, outperforming existing methods in both interpretability and robustness and setting a higher benchmark for the application of vision-language models in the field. To encourage further research and replication, the code for CPLIP is available on GitHub at https://cplip.github.io/

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