TY - JOUR
T1 - Efficient integration of spatial omics data for joint domain detection, matching, and alignment with stMSA
AU - Shu, Han
AU - Chen, Jing
AU - Xu, Chang
AU - Hu, Jialu
AU - Wang, Yongtian
AU - Peng, Jiajie
AU - Jiang, Qinghua
AU - Shang, Xuequn
AU - Wang, Tao
N1 - Publisher Copyright:
© 2025 Shu et al.
PY - 2025/10
Y1 - 2025/10
N2 - Spatial omics (SOs) are powerful methodologies that enable the study of genes, proteins, and other molecular features within the spatial context of tissue architecture. With the growing availability of SO data sets, researchers are eager to extract biological insights from larger data sets for a more comprehensive understanding. However, existing approaches focus on batch effect correction, often neglecting complex biological patterns in tissue slices, complicating feature integration and posing challenges when combining transcriptomics with other omics layers. Here, we introduce spatial multislice/omics analysis (stMSA), a deep graph contrastive learning model that incorporates graph auto-encoder techniques. stMSA is specifically designed to produce batch-corrected representations while retaining the distinct spatial patterns within each slice, considering both intra- and inter-batch relationships during integration. Extensive evaluations show that stMSA outperforms state-of-the-art methods in distinguishing tissue structures across diverse slices, even when faced with varying experimental protocols and sequencing technologies. Furthermore, stMSA effectively deciphers complex developmental trajectories by integrating spatial proteomics and transcriptomics data and excels in cross-slice matching and alignment for 3D tissue reconstruction.
AB - Spatial omics (SOs) are powerful methodologies that enable the study of genes, proteins, and other molecular features within the spatial context of tissue architecture. With the growing availability of SO data sets, researchers are eager to extract biological insights from larger data sets for a more comprehensive understanding. However, existing approaches focus on batch effect correction, often neglecting complex biological patterns in tissue slices, complicating feature integration and posing challenges when combining transcriptomics with other omics layers. Here, we introduce spatial multislice/omics analysis (stMSA), a deep graph contrastive learning model that incorporates graph auto-encoder techniques. stMSA is specifically designed to produce batch-corrected representations while retaining the distinct spatial patterns within each slice, considering both intra- and inter-batch relationships during integration. Extensive evaluations show that stMSA outperforms state-of-the-art methods in distinguishing tissue structures across diverse slices, even when faced with varying experimental protocols and sequencing technologies. Furthermore, stMSA effectively deciphers complex developmental trajectories by integrating spatial proteomics and transcriptomics data and excels in cross-slice matching and alignment for 3D tissue reconstruction.
UR - https://www.scopus.com/pages/publications/105017541090
U2 - 10.1101/gr.280584.125
DO - 10.1101/gr.280584.125
M3 - 文章
C2 - 40813248
AN - SCOPUS:105017541090
SN - 1088-9051
VL - 35
SP - 2285
EP - 2299
JO - Genome Research
JF - Genome Research
IS - 10
ER -