English

ST-Align: A Multimodal Foundation Model for Image-Gene Alignment in Spatial Transcriptomics

Computer Vision and Pattern Recognition 2024-11-27 v1 Genomics

Abstract

Spatial transcriptomics (ST) provides high-resolution pathological images and whole-transcriptomic expression profiles at individual spots across whole-slide scales. This setting makes it an ideal data source to develop multimodal foundation models. Although recent studies attempted to fine-tune visual encoders with trainable gene encoders based on spot-level, the absence of a wider slide perspective and spatial intrinsic relationships limits their ability to capture ST-specific insights effectively. Here, we introduce ST-Align, the first foundation model designed for ST that deeply aligns image-gene pairs by incorporating spatial context, effectively bridging pathological imaging with genomic features. We design a novel pretraining framework with a three-target alignment strategy for ST-Align, enabling (1) multi-scale alignment across image-gene pairs, capturing both spot- and niche-level contexts for a comprehensive perspective, and (2) cross-level alignment of multimodal insights, connecting localized cellular characteristics and broader tissue architecture. Additionally, ST-Align employs specialized encoders tailored to distinct ST contexts, followed by an Attention-Based Fusion Network (ABFN) for enhanced multimodal fusion, effectively merging domain-shared knowledge with ST-specific insights from both pathological and genomic data. We pre-trained ST-Align on 1.3 million spot-niche pairs and evaluated its performance through two downstream tasks across six datasets, demonstrating superior zero-shot and few-shot capabilities. ST-Align highlights the potential for reducing the cost of ST and providing valuable insights into the distinction of critical compositions within human tissue.

Keywords

Cite

@article{arxiv.2411.16793,
  title  = {ST-Align: A Multimodal Foundation Model for Image-Gene Alignment in Spatial Transcriptomics},
  author = {Yuxiang Lin and Ling Luo and Ying Chen and Xushi Zhang and Zihui Wang and Wenxian Yang and Mengsha Tong and Rongshan Yu},
  journal= {arXiv preprint arXiv:2411.16793},
  year   = {2024}
}
R2 v1 2026-06-28T20:12:06.917Z