SlideCNA: spatial copy number alteration detection from Slide-seq-like spatial transcriptomics data
Author(s)
Zhang, Diane; Segerstolpe, Åsa; Slyper, Michal; Waldman, Julia; Murray, Evan; Strasser, Robert; Watter, Jan; Cohen, Ofir; Ashenberg, Orr; Abravanel, Daniel; Jané-Valbuena, Judit; Mages, Simon; Lako, Ana; ... Show more Show less
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Solid tumors are spatially heterogeneous in their genetic, molecular, and cellular composition, but recent spatial profiling studies have mostly charted genetic and RNA variation in tumors separately. To leverage the potential of RNA to identify copy number alterations (CNAs), we develop SlideCNA, a computational tool to extract CNA signals from sparse spatial transcriptomics data with near single cellular resolution. SlideCNA uses expression-aware spatial binning to overcome sparsity limitations while maintaining spatial signal to recover CNA patterns. We test SlideCNA on simulated and real Slide-seq data of (metastatic) breast cancer and demonstrate its potential for spatial subclone detection.
Date issued
2025-05-02Department
Broad Institute of MIT and Harvard; McGovern Institute for Brain Research at MITJournal
Genome Biology
Publisher
BioMed Central
Citation
Zhang, D., Segerstolpe, Å., Slyper, M. et al. SlideCNA: spatial copy number alteration detection from Slide-seq-like spatial transcriptomics data. Genome Biol 26, 112 (2025).
Version: Final published version