SpatialMAGIC: A Hybrid Framework Integrating Graph Diffusion and Spatial Attention for Spatial Transcriptomics Imputation
Sayeem Bin Zaman, Fahim Hafiz, Riasat Azim

TL;DR
SpatialMAGIC is a hybrid framework that combines graph diffusion and spatial attention to improve imputation of spatial transcriptomics data, enhancing biological signal recovery and downstream analysis accuracy.
Contribution
It introduces a novel hybrid model integrating graph diffusion with transformer-based spatial attention for superior spatial transcriptomics imputation.
Findings
Outperforms existing methods like MAGIC and attention models across multiple datasets.
Achieves high clustering accuracy with ARI scores up to 0.4216.
Enhances biological interpretability by preserving tissue architecture and gene regulation signals.
Abstract
Spatial transcriptomics (ST) enables mapping gene expression with spatial context but is severely affected by high sparsity and technical noise, which conceals true biological signals and hinders downstream analyses. To address these challenges, SpatialMagic was proposed, which is a hybrid imputation model combining MAGIC-based graph diffusion with transformer-based spatial self-attention. The long-range dependencies in the gene expression are captured by graph diffusion, and local neighborhood structure is captured by spatial attention models, which allow for recovering the missing expression values, retaining spatial consistency. Across multiple platforms, SpatialMagic consistently outperforms existing baselines, including MAGIC and attention-based models, achieving peak Adjusted Rand Index (ARI) scores in clustering accuracy of 0.3301 on high-resolution Stereo-Seq data, 0.3074 on…
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Taxonomy
TopicsSingle-cell and spatial transcriptomics · Gene expression and cancer classification · Bioinformatics and Genomic Networks
