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spVC for the detection and interpretation of spatial gene expression variation

Shan Yu, Wei Vivian Li

2024Genome biology19 citationsDOIOpen Access PDF

Abstract

Spatially resolved transcriptomics technologies have opened new avenues for understanding gene expression heterogeneity in spatial contexts. However, existing methods for identifying spatially variable genes often focus solely on statistical significance, limiting their ability to capture continuous expression patterns and integrate spot-level covariates. To address these challenges, we introduce spVC, a statistical method based on a generalized Poisson model. spVC seamlessly integrates constant and spatially varying effects of covariates, facilitating comprehensive exploration of gene expression variability and enhancing interpretability. Simulation and real data applications confirm spVC's accuracy in these tasks, highlighting its versatility in spatial transcriptomics analysis.

Topics & Concepts

BiologyHuman geneticsVariation (astronomy)Evolutionary biologyComputational biologyInterpretation (philosophy)GeneticsGeneExpression (computer science)Genome BiologyGenomicsGenomeComputer scienceAstrophysicsProgramming languagePhysicsSingle-cell and spatial transcriptomicsGene expression and cancer classification
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