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This paper proposes a novel cross-modal conditional diffusion model to address the low resolution and restoration uncertainty issues in spatial transcriptomics (ST) by integrating histology images. The model utilizes a multi-modal disentangling network with cross-modal adaptive modulation to effectively leverage complementary information from histology images, leading to improved super-resolution of ST maps.
Enhancing spatial transcriptomics resolution can lead to more precise disease diagnosis and drug discovery by providing a deeper understanding of cellular interactions and gene expression patterns within tissues.