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

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 metabo...

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Autores principales: Alghamdi, Norah, Chang, Wennan, Dang, Pengtao, Lu, Xiaoyu, Wan, Changlin, Gampala, Silpa, Huang, Zhi, Wang, Jiashi, Ma, Qin, Zang, Yong, Fishel, Melissa, Cao, Sha, Zhang, Chi
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Cold Spring Harbor Laboratory Press 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8494226/
https://www.ncbi.nlm.nih.gov/pubmed/34301623
http://dx.doi.org/10.1101/gr.271205.120
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author Alghamdi, Norah
Chang, Wennan
Dang, Pengtao
Lu, Xiaoyu
Wan, Changlin
Gampala, Silpa
Huang, Zhi
Wang, Jiashi
Ma, Qin
Zang, Yong
Fishel, Melissa
Cao, Sha
Zhang, Chi
author_facet Alghamdi, Norah
Chang, Wennan
Dang, Pengtao
Lu, Xiaoyu
Wan, Changlin
Gampala, Silpa
Huang, Zhi
Wang, Jiashi
Ma, Qin
Zang, Yong
Fishel, Melissa
Cao, Sha
Zhang, Chi
author_sort Alghamdi, Norah
collection PubMed
description 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.
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spelling pubmed-84942262021-10-07 A graph neural network model to estimate cell-wise metabolic flux using single-cell RNA-seq data Alghamdi, Norah Chang, Wennan Dang, Pengtao Lu, Xiaoyu Wan, Changlin Gampala, Silpa Huang, Zhi Wang, Jiashi Ma, Qin Zang, Yong Fishel, Melissa Cao, Sha Zhang, Chi Genome Res Method 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. Cold Spring Harbor Laboratory Press 2021-10 /pmc/articles/PMC8494226/ /pubmed/34301623 http://dx.doi.org/10.1101/gr.271205.120 Text en © 2021 Alghamdi et al.; Published by Cold Spring Harbor Laboratory Press https://creativecommons.org/licenses/by-nc/4.0/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/ (https://creativecommons.org/licenses/by-nc/4.0/) .
spellingShingle Method
Alghamdi, Norah
Chang, Wennan
Dang, Pengtao
Lu, Xiaoyu
Wan, Changlin
Gampala, Silpa
Huang, Zhi
Wang, Jiashi
Ma, Qin
Zang, Yong
Fishel, Melissa
Cao, Sha
Zhang, Chi
A graph neural network model to estimate cell-wise metabolic flux using single-cell RNA-seq data
title A graph neural network model to estimate cell-wise metabolic flux using single-cell RNA-seq data
title_full A graph neural network model to estimate cell-wise metabolic flux using single-cell RNA-seq data
title_fullStr A graph neural network model to estimate cell-wise metabolic flux using single-cell RNA-seq data
title_full_unstemmed A graph neural network model to estimate cell-wise metabolic flux using single-cell RNA-seq data
title_short A graph neural network model to estimate cell-wise metabolic flux using single-cell RNA-seq data
title_sort graph neural network model to estimate cell-wise metabolic flux using single-cell rna-seq data
topic Method
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8494226/
https://www.ncbi.nlm.nih.gov/pubmed/34301623
http://dx.doi.org/10.1101/gr.271205.120
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