Detecting anomalous anatomic regions in spatial transcriptomics with STANDS

Detection and Dissection of Anomalous Tissue Domains (DDATD) from multi-sample spatial transcriptomics (ST) data provides unprecedented opportunities to characterize anomalous tissue domains (ATDs), revealing both population-level and individual-specific pathogenic factors for understanding pathogen...

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Veröffentlicht in:Nature communications 2024-09, Vol.15 (1), p.8223-23, Article 8223
Hauptverfasser: Xu, Kaichen, Lu, Yan, Hou, Suyang, Liu, Kainan, Du, Yihang, Huang, Mengqian, Feng, Hao, Wu, Hao, Sun, Xiaobo
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Sprache:eng
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Zusammenfassung:Detection and Dissection of Anomalous Tissue Domains (DDATD) from multi-sample spatial transcriptomics (ST) data provides unprecedented opportunities to characterize anomalous tissue domains (ATDs), revealing both population-level and individual-specific pathogenic factors for understanding pathogenic heterogeneities behind diseases. However, no current methods can perform de novo DDATD from ST data, especially in the multi-sample context. Here, we introduce STANDS, an innovative framework based on Generative Adversarial Networks which integrates three core tasks in multi-sample DDATD: detecting, aligning, and subtyping ATDs. STANDS incorporates multimodal-learning, transfer-learning, and style-transfer techniques to effectively address major challenges in multi-sample DDATD, including complications caused by unalignable ATDs, under-utilization of multimodal information, and scarcity of normal ST datasets necessary for comparative analysis. Extensive benchmarks from diverse datasets demonstrate STAND’s superiority in identifying both common and individual-specific ATDs and further dissecting them into biologically distinct subdomains. STANDS also provides clues to developing ATDs visually indistinguishable from surrounding normal tissues. The authors introduce STANDS, a GAN-based framework that integrates three core tasks for the multi-sample detection and dissection of anomalous tissue domains from spatial transcriptomics data, revealing pathogenic heterogeneity behind diseases.
ISSN:2041-1723
2041-1723
DOI:10.1038/s41467-024-52445-9