STAMP: Single-cell transcriptomics analysis and multimodal profiling through imaging

STAMP:基于成像技术的单细胞转录组学分析和多模态分析

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作者:Emanuele Pitino ,Anna Pascual-Reguant ,Felipe Segato-Dezem ,Kellie Wise ,Irepan Salvador-Martinez ,Helena Lucia Crowell ,Maycon Marção ,Max Ruiz ,Elise Courtois ,William F Flynn ,Santhosh Sivajothi ,Emily Soja ,Ginevra Caratù ,German Atzin Mora-Roldan ,B Kate Dredge ,Yutian Liu ,Hannah Chasteen ,Monika Mohenska ,Juan C Nieto ,Raymond K H Yip ,Ruvimbo D Mishi ,José M Polo ,Mohmed Abdalfttah ,Adrienne E Sullivan ,Jasmine T Plummer ,Holger Heyn ,Luciano G Martelotto

Abstract

Single-cell RNA sequencing has revolutionized our understanding of cellular diversity but remains constrained by scalability, high costs, and the destruction of cells during analysis. To overcome these challenges, we developed STAMP (single-cell transcriptomics analysis and multimodal profiling), a highly scalable approach for the profiling of single cells. By leveraging transcriptomics and proteomics imaging platforms, STAMP eliminates sequencing costs, enabling cost-efficient single-cell genomics of millions of cells. Immobilizing (stamping) cells in suspension onto imaging slides, STAMP supports multimodal (RNA, protein, and H&E) profiling, while retaining cellular structure and morphology. We demonstrate STAMP's versatility by profiling peripheral blood mononuclear cells, cell lines, and stem cells. We highlight the capability of STAMP to identify ultra-rare cell populations, simulate clinical applications, and show its utility for large-scale perturbation studies. In total, we present data for 10,962,092 high-quality cells/nuclei and 6,030,429,954 transcripts. STAMP makes high-resolution cellular profiling more accessible, scalable, and affordable.

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