Author:
Túrós Demeter,Vasiljevic Jelica,Hahn Kerstin,Rottenberg Sven,Valdeolivas Alberto
Abstract
AbstractDissecting tissue compartments in spatial transcriptomics (ST) remains challenging due to limited spatial resolution and dependence on single-cell reference data. We present Chrysalis, a novel method to rapidly detect tissue compartments through spatially variable gene (SVG) detection and archetypal analysis without external references. We applied Chrysalis on ST datasets originating from various species, tissues and technologies and demonstrated state-of-the-art performance in identifying cellular niches.
Publisher
Cold Spring Harbor Laboratory
Cited by
1 articles.
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