Cross-level Cross-Scale Inference and Imputation of Single-cell Spatial Proteomics. uri icon

Overview

abstract

  • High-throughput single-cell and spatial omics technologies have transformed biological research. Despite these advances, reliably identifying the molecular drivers and their interplays across biological levels and scales remains a significant challenge. Current experimental methods are limited by batch effects, the lack of simultaneous multi-modal measurements in individual cells, limited coverage of measured proteins, poor generalization to unseen conditions, and insufficient spatial context at a single-cell resolution. To overcome these challenges, we introduce scProSpatial, a unified, multi-modal, multi-scale deep learning framework designed to infer and impute high fidelity single-cell spatial proteomics from scRNA-seqs. Through comprehensive evaluations, scProSpatial accurately predicts spatial abundances of proteins in the absence of shared transcriptomics features, expands protein coverages by 50 times, and generalizes robustly to out-of-distribution scenarios. A case study in metastatic breast cancer further illustrates its utility, demonstrating scProSpatial's potential to drive cross-level, cross-scale multi-omics integration and analysis and reveal deeper insights into complex biological systems.

publication date

  • July 28, 2025

Identity

PubMed Central ID

  • PMC12324605

Digital Object Identifier (DOI)

  • 10.21203/rs.3.rs-7108570/v1

PubMed ID

  • 40766228