A graph neural network model to estimate cell-wise metabolic flux using single-cell RNA-seq data

  1. Chi Zhang1,2
  1. 1Department of Medical and Molecular Genetics and Center for Computational Biology and Bioinformatics, Indiana University School of Medicine, Indianapolis, Indiana 46202, USA;
  2. 2Department of Electrical and Computer Engineering, Purdue University, Indianapolis, Indiana 46202, USA;
  3. 3Department of Pediatrics, Indiana University School of Medicine, Indianapolis, Indiana 46202, USA;
  4. 4Department of Biomedical Informatics, Ohio State University, Columbus, Ohio 43210, USA;
  5. 5Department of Biostatistics, Indiana University School of Medicine, Indianapolis, Indiana 46202, USA
  1. 6 These authors contributed equally to this work.

  • Corresponding authors: czhang87{at}iu.edu, mfishel{at}iu.edu, shacao{at}iu.edu
  • Abstract

    The metabolic heterogeneity and metabolic interplay between cells are known as significant contributors to disease treatment resistance. However, with the lack of a mature high-throughput single-cell metabolomics technology, we are yet to establish systematic understanding of the intra-tissue metabolic heterogeneity and cooperative mechanisms. To mitigate this knowledge gap, we developed a novel computational method, namely, single-cell flux estimation analysis (scFEA), to infer the cell-wise fluxome from single-cell RNA-sequencing (scRNA-seq) data. scFEA is empowered by a systematically reconstructed human metabolic map as a factor graph, a novel probabilistic model to leverage the flux balance constraints on scRNA-seq data, and a novel graph neural network–based optimization solver. The intricate information cascade from transcriptome to metabolome was captured using multilayer neural networks to capitulate the nonlinear dependency between enzymatic gene expressions and reaction rates. We experimentally validated scFEA by generating an scRNA-seq data set with matched metabolomics data on cells of perturbed oxygen and genetic conditions. Application of scFEA on this data set showed the consistency between predicted flux and the observed variation of metabolite abundance in the matched metabolomics data. We also applied scFEA on five publicly available scRNA-seq and spatial transcriptomics data sets and identified context- and cell group–specific metabolic variations. The cell-wise fluxome predicted by scFEA empowers a series of downstream analyses including identification of metabolic modules or cell groups that share common metabolic variations, sensitivity evaluation of enzymes with regards to their impact on the whole metabolic flux, and inference of cell–tissue and cell–cell metabolic communications.

    Footnotes

    • [Supplemental material is available for this article.]

    • Article published online before print. Article, supplemental material, and publication date are at https://www.genome.org/cgi/doi/10.1101/gr.271205.120.

    • Freely available online through the Genome Research Open Access option.

    • Received September 3, 2020.
    • Accepted July 1, 2021.

    This article, published in Genome Research, is available under a Creative Commons License (Attribution-NonCommercial 4.0 International), as described at http://creativecommons.org/licenses/by-nc/4.0/.

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