反褶积
计算机科学
空间分析
鉴定(生物学)
插值(计算机图形学)
人工智能
模式识别(心理学)
计算生物学
数据挖掘
生物
算法
图像(数学)
遥感
地理
植物
作者
Tianjiao Zhang,Shenghe Li,Ruolan Zhang,Hongfei Zhang,Zhongqian Zhao,Hao Sun,Zhenao Wu,Guohua Wang
标识
DOI:10.1002/advs.202506176
摘要
Abstract The rapid advancement of spatial transcriptomics has provided a critical data foundation for the high‐resolution characterization of tissue spatial domains. Traditional methods for spatial domain identification primarily rely on gene expression data from sampled spots in low‐resolution spatial transcriptomic data, often overlooking valuable information between spots that can be crucial for domain identification. Furthermore, these methods are limited by their focus on gene expression data from neighboring spots, without fully integrating prior knowledge of cell types within the tissue's spatial structure. To address these challenges, SGCD, a novel method for tissue spatial domain identification based on data interpolation and cell type deconvolution is proposed. SGCD utilizes interpolation techniques to estimate gene expression data for cells in the gaps between spots and applies deconvolution to extract cell type information from both spots and interstitial regions. By integrating gene expression, cell type, and spatial location data, SGCD achieves accurate delineation of complex spatial domains through graph contrastive learning. Evaluations on various publicly available datasets, including the human dorsolateral prefrontal cortex, mouse brain, pancreatic ductal adenocarcinoma, and breast cancer, demonstrate that SGCD significantly outperforms existing methods in both accuracy and detail, offering strong support for advancing the understanding of tissue functions and disease mechanisms.
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