Atlas-scale metabolic activities inferred from single-cell and spatial transcriptomics

Erick Armingol(Wellcome Sanger Institute), James Ashcroft(Wellcome Sanger Institute), Magda Marečková(University of Oxford), Martin Prete(Wellcome Sanger Institute), Valentina Lorenzi(Wellcome Sanger Institute), Cecilia Mazzeo(Wellcome Sanger Institute), Jimmy Tsz Hang Lee(Wellcome Sanger Institute), Marie Moullet(Wellcome Sanger Institute), Omer Ali Bayraktar(Wellcome Sanger Institute), Christian M. Becker(University of Oxford), Krina T. Zondervan(University of Oxford), Luz García‐Alonso(Wellcome Sanger Institute), Nathan E. Lewis(University of Georgia), Roser Vento‐Tormo(University of Georgia)
bioRxiv (Cold Spring Harbor Laboratory)
May 14, 2025
Cited by 15Open Access
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Abstract

Metabolism supplies energy, building blocks, and signaling molecules vital for cell function and communication, but methods to directly measure it at single-cell and/or spatial resolutions remain technically challenging and inaccessible for most researchers. Single-cell and spatial transcriptomics offer high-throughput data alternatives with a rich ecosystem of computational tools. Here, we present scCellFie, a computational framework to infer metabolic activities from human and mouse transcriptomic data at single-cell and spatial resolution. Applied to ~30 million cell profiles, we generated a comprehensive metabolic atlas across human organs, identifying organ- and cell-type-specific activities. In the endometrium, scCellFie reveals metabolic programs contributing to healthy tissue remodeling during the menstrual cycle, with temporal patterns replicated in data from in vitro cultures. We also uncover disease-associated metabolic alterations in endometriosis and endometrial carcinoma, linked to proinflammatory macrophages, and metabolite-mediated epithelial cell communication, respectively. Ultimately, scCellFie provides a scalable toolbox for extracting interpretable metabolic functionalities from transcriptomic data.


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