2024
DOI: 10.1101/2024.03.19.585725
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Interpretable Spatial Gradient Analysis for Spatial Transcriptomics Data

Qingnan Liang,
Luisa Solis Soto,
Cara Haymaker
et al.

Abstract: Cellular anatomy and signaling vary across niches, which can induce gradated gene expressions in subpopulations of cells. Such spatial transcriptomic gradient (STG) makes a significant source of intra-tumor heterogeneity and can influence tumor invasion, progression, and response to treatment. Here we report Local Spatial Gradient Inference (LSGI), a computational framework that systematically identifies spatial locations with prominent, interpretable STGs from spatial transcriptomic (ST) data. To achieve so, … Show more

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