代谢组学
生物
电池类型
计算生物学
代谢物
细胞
代谢组
免疫系统
转录组
系统生物学
细胞生物学
生物信息学
生物化学
遗传学
基因表达
基因
作者
Thomas Hu,Mayar Allam,Shuangyi Cai,Walter Henderson,Brian Yueh,Aybuke Garipcan,Anton V. Ievlev,Maryam Afkarian,Semir Beyaz,Ahmet F. Coskun
标识
DOI:10.1038/s41467-023-43917-5
摘要
Abstract Metabolic reprogramming in cancer and immune cells occurs to support their increasing energy needs in biological tissues. Here we propose Single Cell Spatially resolved Metabolic (scSpaMet) framework for joint protein-metabolite profiling of single immune and cancer cells in male human tissues by incorporating untargeted spatial metabolomics and targeted multiplexed protein imaging in a single pipeline. We utilized the scSpaMet to profile cell types and spatial metabolomic maps of 19507, 31156, and 8215 single cells in human lung cancer, tonsil, and endometrium tissues, respectively. The scSpaMet analysis revealed cell type-dependent metabolite profiles and local metabolite competition of neighboring single cells in human tissues. Deep learning-based joint embedding revealed unique metabolite states within cell types. Trajectory inference showed metabolic patterns along cell differentiation paths. Here we show scSpaMet’s ability to quantify and visualize the cell-type specific and spatially resolved metabolic-protein mapping as an emerging tool for systems-level understanding of tissue biology.
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