Mapping isoforms and regulatory mechanisms from spatial transcriptomics data with SPLISOSM.

Publication Type Academic Article
Authors Su J, Qu Y, Schertzer M, Yang H, Jiang J, Lhakhang T, Nelson T, Park S, Lai Q, Fu X, Choi S, Knowles D, Rabadan R
Journal Nat Biotechnol
Date Published 01/05/2026
ISSN 1546-1696
Abstract Transcript diversity including splicing and alternative 3' end usage is crucial for cellular identity and adaptation, yet its spatial coordination remains poorly understood. Here we present SPLISOSM (spatial isoform statistical modeling), a method for detecting isoform-resolution patterns from spatial transcriptomics data. SPLISOSM uses multivariate testing with nonparametric kernels to account for spot-level and isoform-level dependencies, achieving high statistical power on sparse data. In the mouse brain, we identify over 1,000 spatially variable transcript diversity events, primarily in synaptic signaling pathways linked to neuropsychiatric disorders, and uncover both known and previously unknown regulatory relationships with region-specific RNA binding proteins. We further show that these patterns are evolutionarily conserved between mouse and human prefrontal cortex. Analysis of human glioblastoma highlights pervasive transcript diversity in antigen presentation and adhesion genes associated with specific microenvironmental conditions. Together, we present a comprehensive spatial splicing analysis in the brain under normal and neoplastic conditions.
DOI 10.1038/s41587-025-02965-6
PubMed ID 41491254
Back to Top