StereoSiTE: A framework to spatially and quantitatively profile the cellular neighborhood organized iTME
StereoSiTE: A framework to spatially and quantitatively profile the cellular neighborhood organized iTME
With emerging of Spatial Transcriptomics (ST) technology, a powerful algorithmic framework to quantitatively evaluate the active cell-cell interactions in the bio-function associated iTME unit will pave the ways to understand the mechanism underlying tumor biology. This study provides the StereoSiTE incorporating open source bioinformatics tools with the self-developed algorithm, SCII, to dissect a cellular neighborhood (CN) organized iTME based on cellular compositions, and to accurately infer the functional cell-cell communications with quantitatively defined interaction intensity in ST data. We applied StereoSiTE to deeply decode ST data of the xenograft models receiving immunoagonist. Results demonstrated that the neutrophils dominated CN5 might attribute to iTME remodeling after treatment. To be noted, SCII analyzed the spatially resolved interaction intensity inferring a neutrophil leading communication network which was proved to actively function by analysis of Transcriptional Factor Regulon and Protein-Protein Interaction. Altogether, StereoSiTE is a promising framework for ST data to spatially reveal tumoribiology mechanisms.
Xu Yisong、Liu Chuandong、Teng Fei、Huang Caili、Luo Bingying、Xie Min、Wu Liang、Xu Xun、Liao Sha、Zhang Jiajun、Liu Xing、Chen Ao、Li Mei、Qu Chi、Xi Feng、Liu Xuanzhu、Zhu Na、Li Yuxiang、Huang Huaqiang
肿瘤学细胞生物学
Xu Yisong,Liu Chuandong,Teng Fei,Huang Caili,Luo Bingying,Xie Min,Wu Liang,Xu Xun,Liao Sha,Zhang Jiajun,Liu Xing,Chen Ao,Li Mei,Qu Chi,Xi Feng,Liu Xuanzhu,Zhu Na,Li Yuxiang,Huang Huaqiang.StereoSiTE: A framework to spatially and quantitatively profile the cellular neighborhood organized iTME[EB/OL].(2025-03-28)[2025-08-02].https://www.biorxiv.org/content/10.1101/2022.12.31.522366.点此复制
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