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2023
DOI: 10.1101/2023.12.11.570118
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Enzyme fluctuations data improve inference of metabolic interaction networks with an inverse differential Jacobian approach

Jiahang Li,
Wolfram Weckwerth,
Steffen Waldherr

Abstract: The development of next-generation sequencing and single-cell technology has generated vast genome-scale multi-omics datasets. Dedicated mathematical algorithms are required to dissect intricate molecular causality within metabolic networks using these datasets. Based on the network analysis, recent research has introduced the inverse differential Jacobian algorithm, which combines metabolic interaction network construction and covariance matrix analysis of genome-scale metabolomics data to elucidate system re… Show more

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