GRIDGEN: Guided Region Identification based on Density of GENes – a transcript density-based approach to characterize tissues by spatial transcriptomics

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Abstract

Spatial omics brought unprecedented power to study biological processes within tissues while preserving spatial context and morphology. Most spatial proteomics and transcriptomics analyses methods are cell-centric, relying on cell segmentation to identify and characterize individual cells before downstream tasks. However, certain biological questions may be better addressed using cell-free approaches, which also eliminate unnecessary computations when cell segmentation is not essential. To address this need, we developed GRIDGEN (Guided Region Identification based on Density of GENes), an approach for defining regions of interest based on transcript density. GRIDGEN enables the identification of biologically relevant tissue compartments, including interfaces between regions, phenotype-enriched areas, and zones defined by specific gene signatures, supporting analyses such as pathway enrichment. We demonstrated the utility of GRIDGEN by applying it to spatial transcriptomics data from CosMx and Xenium platforms in colorectal cancer (CRC) samples.

By bypassing cell segmentation, our approach enables flexible analysis of spatial omics data, supporting the study of biological processes across diverse tissue structures and microenvironments. Nevertheless, GRIDGEN can be easily integrated with cell segmentation strategies for complementary analyses. GRIDGEN thus broadens the analytical toolkit for spatial omics, enabling both cell-free and cell-based insights.

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