Identifying Spatial Co-occurrence in Healthy and InflAmed tissues (ISCHIA)

Atefeh Lafzi(Roche (Switzerland)), Costanza Borrelli(ETH Zurich), Simona Baghai Sain(ETH Zurich), Karsten Bach(ETH Zurich), Jonas A. Kretz(ETH Zurich), Kristina Handler(ETH Zurich), Daniel Regan-Komito(Roche (Switzerland)), Xenia Ficht(ETH Zurich), Andreas P. Frei(Roche (Switzerland)), Andreas E. Moor(ETH Zurich)
Molecular Systems Biology
January 15, 2024
Cited by 17Open Access
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Abstract

Sequencing-based spatial transcriptomics (ST) methods allow unbiased capturing of RNA molecules at barcoded spots, charting the distribution and localization of cell types and transcripts across a tissue. While the coarse resolution of these techniques is considered a disadvantage, we argue that the inherent proximity of transcriptomes captured on spots can be leveraged to reconstruct cellular networks. To this end, we developed ISCHIA (Identifying Spatial Co-occurrence in Healthy and InflAmed tissues), a computational framework to analyze the spatial co-occurrence of cell types and transcript species within spots. Co-occurrence analysis is complementary to differential gene expression, as it does not depend on the abundance of a given cell type or on the transcript expression levels, but rather on their spatial association in the tissue. We applied ISCHIA to analyze co-occurrence of cell types, ligands and receptors in a Visium dataset of human ulcerative colitis patients, and validated our findings at single-cell resolution on matched hybridization-based data. We uncover inflammation-induced cellular networks involving M cell and fibroblasts, as well as ligand-receptor interactions enriched in the inflamed human colon, and their associated gene signatures. Our results highlight the hypothesis-generating power and broad applicability of co-occurrence analysis on spatial transcriptomics data.


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