Multi-sample non-negative spatial factorization

bioRxiv [Preprint]. 2024 Nov 27:2024.07.01.599554. doi: 10.1101/2024.07.01.599554.

Abstract

Analyzing multi-sample spatial transcriptomics data requires accounting for biological variation. We present multi-sample non-negative spatial factorization (mNSF), an alignment-free framework extending single-sample spatial factorization (NSF) to multi-sample datasets. mNSF incorporates sample-specific spatial correlation modeling and extracts low-dimensional data representations. Through simulations and real data analysis, we demonstrate mNSF's efficacy in identifying true factors, shared anatomical regions, and region-specific biological functions. mNSF's performance is comparable to alignment-based methods when alignment is feasible, while enabling analysis in scenarios where spatial alignment is unfeasible. mNSF shows promise as a robust method for analyzing spatially resolved transcriptomics data across multiple samples.

Keywords: dimensionality reduction; matrix factorization; multi-sample analysis; spatial gene expression; spatial transcriptomics.

Publication types

  • Preprint