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Assembling spatial clustering framework for heterogeneous spatial transcriptomics data with GRAPHDeep

Teng Liu, Zhaoyu Fang, Xin Li, Lining Zhang, Dong-Sheng Cao, Min Li, Mingzhu Yin
Bioinformatics (2024)

Spatial clustering is essential and challenging for spatial transcriptomics’ data analysis to unravel tissue microenvironment and biological function. Graph neural networks are promising to address gene expression profiles and spatial location information in spatial transcriptomics to generate latent representations. However, choosing an appropriate graph deep learning module and graph neural network necessitates further exploration and investigation.

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