Litcius/Paper detail

spaLLM: enhancing spatial domain analysis in multi-omics data through large language model integration

Longyu Li, Liyan Dong, Hao Zhang, Dong Xu, Yongli Li

2025Briefings in Bioinformatics11 citationsDOIOpen Access PDF

Abstract

Spatial multi-omics technologies provide valuable data on gene expression from various omics in the same tissue section while preserving spatial information. However, deciphering spatial domains within spatial omics data remains challenging due to the sparse gene expression. We propose spaLLM, the first multi-omics spatial domain analysis method that integrates large language models to enhance data representation. Our method combines a pre-trained single-cell language model (scGPT) with graph neural networks and multi-view attention mechanisms to compensate for limited gene expression information in spatial omics while improving sensitivity and resolution within modalities. SpaLLM processes multiple spatial modalities, including RNA, chromatin, and protein data, potentially adapting to emerging technologies and accommodating additional modalities. Benchmarking against eight state-of-the-art methods across four different datasets and platforms demonstrates that our model consistently outperforms other advanced methods across multiple supervised evaluation metrics. The source code for spaLLM is freely available at https://github.com/liiilongyi/spaLLM.

Topics & Concepts

Computer scienceModalitiesSpatial analysisBenchmarkingData miningDomain (mathematical analysis)OmicsGraphData scienceMachine learningArtificial intelligenceBioinformaticsBiologyTheoretical computer scienceGeographyMathematicsMarketingRemote sensingSocial scienceMathematical analysisSociologyBusinessSingle-cell and spatial transcriptomicsRNA modifications and cancerEpigenetics and DNA Methylation