Journal Article10.1016/j.jgg.2024.09.015
SpaGRA: graph augmentation facilitates domain identification for spatially resolved transcriptomics
Xue Sun,Wei Zhang,Wenrui Li,Na Yu,Daoliang Zhang,Qi Zou,Qiongye Dong,Xianglin Zhang,Zhi‐Ping Liu,Zhiyuan Yuan,Rui Gao +10 more
1
TL;DR: SpaGRA, a graph augmentation method, improves spatial domain identification in spatially resolved transcriptomics by incorporating gene expression similarities and dynamic edge weights, outperforming existing methods on multiple datasets and revealing functional regions and key genes in various tissues.
read more
Abstract: Recent advances in spatially resolved transcriptomics (SRT) have provided new opportunities for characterizing spatial structures of various tissues. Graph-based geometric deep learning have gained widespread adoption for spatial domain identification tasks. Currently, most methods define adjacency relation between cells or spots by their spatial distance in SRT data, which overlooks key biological interactions like gene expression similarities, and leads to inaccuracies in spatial domain identification. To tackle this challenge, we propose a novel method, SpaGRA (https://github.com/sunxue-yy/SpaGRA), for automatic multi-relationship construction based on graph augmentation. SpaGRA uses spatial distance as prior knowledge and dynamically adjusts edge weights with multi-head graph attention networks (GATs). This helps SpaGRA to uncover diverse node relationships and enhance message passing in geometric contrastive learning. Additionally, SpaGRA uses these multi-view relationships to construct negative samples, addressing sampling bias posed by random selection. Experimental results show that SpaGRA demonstrates superior domain identification performance on multiple datasets generated from different protocols. Using SpaGRA, we analyzed the functional regions in the mouse hypothalamus, identified key genes related to heart development in mouse embryos, and observed cancer-associated fibroblasts enveloping cancer cells in the latest Visium HD data. Overall, SpaGRA can effectively characterize spatial structures across diverse SRT datasets.
read more
Chat with Paper
AI Agents for this Paper
Find similar papers on Google Scholar, PubMed and Arxiv
Write a critical review of this paper
Analyze citations of this paper to find unaddressed research gaps
Citations
Spatial Transcriptomics Reveals Molecular Biological Differences Between IDC and DCIS/LCIS in Breast Cancer
Zhaowei Zhou
- 25 Apr 2025
TL;DR: Spatial transcriptomics reveals molecular differences between invasive ductal carcinoma (IDC) and ductal carcinoma in situ/lobular carcinoma in situ (DCIS/LCIS) of the breast, highlighting NF-κB pathway activation and coordinated pathway reprogramming in IDC.
References
SCANPY: large-scale single-cell gene expression data analysis
TL;DR: This work presents Scanpy, a scalable toolkit for analyzing single-cell gene expression data that includes methods for preprocessing, visualization, clustering, pseudotime and trajectory inference, differential expression testing, and simulation of gene regulatory networks, and AnnData, a generic class for handling annotated data matrices.
Spatial reconstruction of single-cell gene expression data
TL;DR: Seurat is a computational strategy to infer cellular localization by integrating single-cell RNA-seq data with in situ RNA patterns, and correctly localizes rare subpopulations, accurately mapping both spatially restricted and scattered groups.
Spatially resolved, highly multiplexed RNA profiling in single cells
Kok Hao Chen,Alistair N. Boettiger,Jeffrey R. Moffitt,Siyuan Wang,Xiaowei Zhuang,Xiaowei Zhuang +5 more
TL;DR: This report reports multiplexed error-robust FISH (MERFISH), a single-molecule imaging method that allows thousands of RNA species to be imaged in single cells by using combinatorial FISH labeling with encoding schemes capable of detecting and/or correcting errors.
2.4K
Slide-seq: A scalable technology for measuring genome-wide expression at high spatial resolution
Samuel G. Rodriques,Samuel G. Rodriques,Robert R. Stickels,Robert R. Stickels,Aleksandrina Goeva,Carly A. Martin,Evan Murray,Charles R. Vanderburg,Joshua D. Welch,Linlin M. Chen,Fei Chen,Evan Z. Macosko,Evan Z. Macosko +12 more
TL;DR: Slide-seq provides a scalable method for obtaining spatially resolved gene expression data at resolutions comparable to the sizes of individual cells, and defines the temporal evolution of cell type–specific responses in a mouse model of traumatic brain injury.
1.9K
Single-cell in situ RNA profiling by sequential hybridization.
TL;DR: This Correspondence presents a sequential barcoding scheme to multiplex different mRNAs in single cells and uses super-resolution microscopy to resolve a large number of mRN as well as multiplexing them.