Microenvironment-aware transcriptome reconstruction in spatial transcriptomics

Read the full article See related articles

Discuss this preprint

Start a discussion What are Sciety discussions?

Listed in

This article is not in any list yet, why not save it to one of your lists.
Log in to save this article

Abstract

Imaging-based spatial transcriptomics offers single-cell resolution but measures limited panels dominated by identity-defining genes, leaving transcriptome-wide variation unobserved. Existing approaches for predicting unmeasured genes rely mainly on shared-gene alignment, which recovers identity-related expression but fails to capture subtle microenvironment-driven variation within a cell type. We introduce Emerge, a framework that reconstructs transcriptome-scale expression by jointly modeling intrinsic transcriptional manifolds from single-cell RNA sequencing and the extrinsic niche organization observed in spatial data within a type-constrained optimal transport formulation. Across fourteen MERFISH and Xenium datasets from neural and tumor tissues, Emerge improves prediction accuracy, spatial coherence and recovery of within-type heterogeneity. The reconstructed transcriptomes reveal microenvironment-stratified astrocyte, stromal and fibroblast states that are only partially captured by measured panels or existing prediction approaches, establishing Emerge as a generalizable foundation for context-aware reconstruction in spatial biology.

Article activity feed