Assessing Large Multimodal Models for One-Shot Learning and Interpretability in Biomedical Image Classification

评估用于生物医学图像分类的大型多模态模型的单样本学习和可解释性

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Abstract

Image classification plays a pivotal role in analyzing biomedical images, serving as a cornerstone for both biological research and clinical diagnostics. It is demonstrated that large multimodal models (LMMs), like GPT-4, excel in one-shot learning, generalization, interpretability, and text-driven image classification across diverse biomedical tasks. These tasks include the classification of tissues, cell types, cellular states, and disease status. LMMs stand out from traditional single-modal classification approaches, which often require large training datasets and offer limited interpretability.

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