Img2ST-Net: efficient high-resolution spatial omics prediction from whole-slide histology images via fully convolutional image-to-image learning. Academic Article uri icon

Overview

abstract

  • PURPOSE: 8 APPROACH: To address these limitations, we propose Img2ST-Net, a high-definition (HD) histology-to-ST generation framework for efficient and parallel high-resolution ST prediction. Unlike conventional spot-by-spot inference methods, Img2ST-Net employs a fully convolutional architecture to generate dense, HD gene expression maps in a parallelized manner. By modeling HD ST data as super-pixel representations, the task is reformulated from image-to-omics inference into a super-content image generation problem with hundreds or thousands of output channels. This design not only improves computational efficiency but also better preserves the spatial organization intrinsic to spatial omics data. To enhance robustness under sparse expression patterns, we further introduce SSIM-ST, a structural-similarity-based evaluation metric tailored for high-resolution ST analysis. RESULTS: 16 CONCLUSIONS: We present a scalable, biologically coherent framework for high-resolution ST prediction. Img2ST-Net offers a principled solution for efficient and accurate ST inference at scale. Our contributions lay the groundwork for next-generation ST modeling that is robust and resolution-aware.

publication date

  • November 7, 2025

Identity

PubMed Central ID

  • PMC12594103

Digital Object Identifier (DOI)

  • 10.1117/1.JMI.12.6.061410

PubMed ID

  • 41210922

Additional Document Info

volume

  • 12

issue

  • 6