Litcius/Paper detail

GTAD: a graph-based approach for cell spatial composition inference from integrated scRNA-seq and ST-seq data

Tianjiao Zhang, Ziheng Zhang, Liangyu Li, Benzhi Dong, Guohua Wang, Dandan Zhang

2023Briefings in Bioinformatics14 citationsDOIOpen Access PDF

Abstract

With the emergence of spatial transcriptome sequencing (ST-seq), research now heavily relies on the joint analysis of ST-seq and single-cell RNA sequencing (scRNA-seq) data to precisely identify cell spatial composition in tissues. However, common methods for combining these datasets often merge data from multiple cells to generate pseudo-ST data, overlooking topological relationships and failing to represent spatial arrangements accurately. We introduce GTAD, a method utilizing the Graph Attention Network for deconvolution of integrated scRNA-seq and ST-seq data. GTAD effectively captures cell spatial relationships and topological structures within tissues using a graph-based approach, enhancing cell-type identification and our understanding of complex tissue cellular landscapes. By integrating scRNA-seq and ST data into a unified graph structure, GTAD outperforms traditional 'pseudo-ST' methods, providing robust and information-rich results. GTAD performs exceptionally well with synthesized spatial data and accurately identifies cell spatial composition in tissues like the mouse cerebral cortex, cerebellum, developing human heart and pancreatic ductal carcinoma. GTAD holds the potential to enhance our understanding of tissue microenvironments and cellular diversity in complex bio-logical systems. The source code is available at https://github.com/zzhjs/GTAD.

Topics & Concepts

Computer scienceSpatial analysisGraphDeconvolutionData typeComputational biologyTheoretical computer scienceBiologyAlgorithmGeographyProgramming languageRemote sensingSingle-cell and spatial transcriptomicsGene expression and cancer classificationCell Image Analysis Techniques