Abstract
MOTIVATION: Spatial transcriptomics (ST) addresses the loss of spatial context in single-cell RNA-sequencing by simultaneously capturing gene expression and spatial location information. A critical task of ST is the identification of spatial domains. However, challenges such as high noise levels and data sparsity make the identification process more difficult. RESULTS: To tackle these challenges, STMGAMF, a multi-view graph convolutional network model that employs an adaptive adjacency matrix and a multi-strategy fusion mechanism is proposed. STMGAMF dynamically adjusts the edge weights to capture complex spatial structures during training by implementing the adaptive adjacency matrix and optimizes the embedded features through the multi-strategy fusion mechanism. STMGAMF is evaluated on multiple ST datasets and outperforms existing algorithms in tasks like spatial domain identification, visualization, and spatial trajectory inference. Its robust performance in spatial domain identification and strong generalization capability position STMGAMF as a valuable tool for unraveling the complexity of tissue structures and underlying biological processes. AVAILABILITY AND IMPLEMENTATION: Source code is available at Github (https://github.com/Fuyh0628/STMGAMF) and Zenodo (https://zenodo.org/records/15103358).