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QueST: Querying Functional and Structural Niches on Spatial Transcriptomics Data via Contrastive Subgraph Embedding

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Abstract

The functional or structural spatial regions within tissues, referred to as spatial niches, are elements for illustrating the spatial contexts of multicellular organisms. A key challenge is querying shared niches across diverse tissues, which is crucial for achieving a comprehensive understanding of the organization and phenotypes of cell populations. However, current data analysis methods predominantly focus on creating spatial-aware embeddings for cells, neglecting the development of niche-level representations for effective querying. To address this gap, we introduce QueST, a novel niche representation learning model designed for querying spatial niches across multiple samples. QueST utilizes a novel subgraph contrastive learning approach to explicitly capture niche-level characteristics and incorporates adversarial training to mitigate batch effects. We evaluate QueST on established benchmarks using human and mouse datasets, demonstrating its superiority over state-of-the-art graph representation learning methods in accurate niche queries. Overall, QueST offers a specialized model for spatial niche queries, paving the way for deeper insights into the patterns and mechanisms of cell spatial organization across tissues. Source code can be found at https://github.com/cmhimself/QueST.

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@article{chen2025_2410.10652,
  title={ Querying functional and structural niches on spatial transcriptomics data },
  author={ Mo Chen and Minsheng Hao and Xinquan Liu and Lin Deng and Chen Li and Dongfang Wang and Kui Hua and Xuegong Zhang and Lei Wei },
  journal={arXiv preprint arXiv:2410.10652},
  year={ 2025 }
}
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