LEGEND: Identifying Co-expressed Genes in Multimodal Transcriptomic Sequencing Data.

Tao Deng, Mengqian Huang, Kaichen Xu, Yan Lu, Yucheng Xu, Siyu Chen, Nina Xie, Qiuyue Tao, Hao Wu, Xiaobo Sun
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引用次数: 0

Abstract

Identifying co-expressed genes across tissue domains and cell types is essential for revealing co-functional genes involved in biological or pathological processes. While both single-cell RNA sequencing (scRNA-seq) and spatially resolved transcriptomic (SRT) data offer insights into gene co-expression patterns, current methods typically utilize either data type alone, potentially diluting the co-functionality signals within co-expressed gene groups. To bridge this gap, we introduce muLtimodal co-Expressed GENes finDer (LEGEND), a novel computational method that integrates scRNA-seq and SRT data for identifying groups of co-expressed genes at both cell type and tissue domain levels. LEGEND employs an innovative hierarchical clustering algorithm designed to maximize intra-cluster redundancy and inter-cluster complementarity, effectively capturing more nuanced patterns of gene co-expression and spatial coherence. Enrichment and co-function analyses further showcase the biological relevance of these gene clusters, and their utilities in exploring context-specific novel gene functions. Notably, LEGEND can reveal shifts in gene-gene interactions under different conditions, furnishing insights for disease-associated gene crosstalk. Moreover, LEGEND can be utilized to enhance the annotation accuracy of both spatial spots in SRT and single cells in scRNA-seq, and pioneers in identifying genes with designated spatial expression patterns. LEGEND is available at https://github.com/ToryDeng/LEGEND.

LEGEND:在多模态转录组测序数据中识别共表达基因。
识别跨组织结构域和细胞类型的共表达基因对于揭示参与生物或病理过程的共功能基因是必不可少的。虽然单细胞RNA测序(scRNA-seq)和空间解析转录组学(SRT)数据都提供了对基因共表达模式的见解,但目前的方法通常只使用任何一种数据类型,可能会稀释共表达基因组内的共功能信号。为了弥补这一差距,我们引入了多模态共表达基因查找器(LEGEND),这是一种整合scRNA-seq和SRT数据的新型计算方法,用于在细胞类型和组织结构域水平上识别共表达基因组。LEGEND采用了一种创新的分层聚类算法,旨在最大限度地提高簇内冗余和簇间互补性,有效捕捉更细微的基因共表达模式和空间一致性。富集和协同功能分析进一步展示了这些基因簇的生物学相关性,以及它们在探索环境特异性新基因功能方面的应用。值得注意的是,LEGEND可以揭示不同条件下基因相互作用的变化,为疾病相关基因串扰提供见解。此外,LEGEND可以提高SRT中空间点和scRNA-seq中单细胞的标注准确性,是识别特定空间表达模式基因的先驱。LEGEND可在https://github.com/ToryDeng/LEGEND上获得。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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