Litcius/Paper detail

FLUXestimator: a webserver for predicting metabolic flux and variations using transcriptomics data

Zixuan Zhang, Haiqi Zhu, Pengtao Dang, Jia Wang, Wennan Chang, Xiao Wang, Norah Alghamdi, Alex Lu, Yong Zang, Wenzhuo Wu, Yijie Wang, Yu Zhang, Sha Cao, Chi Zhang

2023Nucleic Acids Research13 citationsDOIOpen Access PDF

Abstract

Quantitative assessment of single cell fluxome is critical for understanding the metabolic heterogeneity in diseases. Unfortunately, laboratory-based single cell fluxomics is currently impractical, and the current computational tools for flux estimation are not designed for single cell-level prediction. Given the well-established link between transcriptomic and metabolomic profiles, leveraging single cell transcriptomics data to predict single cell fluxome is not only feasible but also an urgent task. In this study, we present FLUXestimator, an online platform for predicting metabolic fluxome and variations using single cell or general transcriptomics data of large sample-size. The FLUXestimator webserver implements a recently developed unsupervised approach called single cell flux estimation analysis (scFEA), which uses a new neural network architecture to estimate reaction rates from transcriptomics data. To the best of our knowledge, FLUXestimator is the first web-based tool dedicated to predicting cell-/sample-wise metabolic flux and metabolite variations using transcriptomics data of human, mouse and 15 other common experimental organisms. The FLUXestimator webserver is available at http://scFLUX.org/, and stand-alone tools for local use are available at https://github.com/changwn/scFEA. Our tool provides a new avenue for studying metabolic heterogeneity in diseases and has the potential to facilitate the development of new therapeutic strategies.

Topics & Concepts

BiologyTranscriptomeMetabolomicsWeb serverComputational biologyComputer scienceFlux (metallurgy)BioinformaticsData miningThe InternetGeneticsWorld Wide WebGeneGene expressionMetallurgyMaterials scienceSingle-cell and spatial transcriptomicsMetabolomics and Mass Spectrometry StudiesBioinformatics and Genomic Networks