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Subcellular spatially resolved gene neighborhood networks in single cells

Zhou Fang, Adam J. Ford, Thomas Hu, Nicholas Zhang, Athanasios Mantalaris, Ahmet F. Coskun

2023Cell Reports Methods16 citationsDOIOpen Access PDF

Abstract

hybridization (FISH) generate molecular profiles of single cells at single-molecule resolution. Current spatial transcriptomics methods focus on the distribution of single genes. However, the spatial proximity of RNA transcripts can play an important role in cellular function. We demonstrate a spatially resolved gene neighborhood network (spaGNN) pipeline for the analysis of subcellular gene proximity relationships. In spaGNN, machine-learning-based clustering of subcellular spatial transcriptomics data yields subcellular density classes of multiplexed transcript features. The nearest-neighbor analysis produces heterogeneous gene proximity maps in distinct subcellular regions. We illustrate the cell-type-distinguishing capability of spaGNN using multiplexed error-robust FISH data of fibroblast and U2-OS cells and sequential FISH data of mesenchymal stem cells (MSCs), revealing tissue-source-specific MSC transcriptomics and spatial distribution characteristics. Overall, the spaGNN approach expands the spatial features that can be used for cell-type classification tasks.

Topics & Concepts

Computational biologyTranscriptomeSubcellular localizationPipeline (software)BiologyGeneCell typeComputer scienceGene expressionCellGeneticsProgramming languageSingle-cell and spatial transcriptomicsGene expression and cancer classificationCell Image Analysis Techniques
Subcellular spatially resolved gene neighborhood networks in single cells | Litcius