PROST: quantitative identification of spatially variable genes and domain detection in spatial transcriptomics

被引:0
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作者
Yuchen Liang
Guowei Shi
Runlin Cai
Yuchen Yuan
Ziying Xie
Long Yu
Yingjian Huang
Qian Shi
Lizhe Wang
Jun Li
Zhonghui Tang
机构
[1] Sun Yat-sen University,School of Geography and Planning
[2] Sun Yat-sen University,Zhongshan School of Medicine
[3] China University of Geosciences,School of Computer Science
来源
Nature Communications | / 15卷
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摘要
Computational methods have been proposed to leverage spatially resolved transcriptomic data, pinpointing genes with spatial expression patterns and delineating tissue domains. However, existing approaches fall short in uniformly quantifying spatially variable genes (SVGs). Moreover, from a methodological viewpoint, while SVGs are naturally associated with depicting spatial domains, they are technically dissociated in most methods. Here, we present a framework (PROST) for the quantitative recognition of spatial transcriptomic patterns, consisting of (i) quantitatively characterizing spatial variations in gene expression patterns through the PROST Index; and (ii) unsupervised clustering of spatial domains via a self-attention mechanism. We demonstrate that PROST performs superior SVG identification and domain segmentation with various spatial resolutions, from multicellular to cellular levels. Importantly, PROST Index can be applied to prioritize spatial expression variations, facilitating the exploration of biological insights. Together, our study provides a flexible and robust framework for analyzing diverse spatial transcriptomic data.
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