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Bayesian Regression Facilitates Quantitative Modeling of Cell Metabolism.

Teddy GrovesNicholas Luke CowieLars Keld Nielsen
Published in: ACS synthetic biology (2024)
This paper presents Maud, a command-line application that implements Bayesian statistical inference for kinetic models of biochemical metabolic reaction networks. Maud takes into account quantitative information from omics experiments and background knowledge as well as structural information about kinetic mechanisms, regulatory interactions, and enzyme knockouts. Our paper reviews the existing options in this area, presents a case study illustrating how Maud can be used to analyze a metabolic network, and explains the biological, statistical, and computational design decisions underpinning Maud.
Keyphrases
  • single cell
  • high resolution
  • health information
  • healthcare
  • randomized controlled trial
  • stem cells
  • mesenchymal stem cells