Constraint-based modelling (CBM) is a computational method used in systems biology to predict metabolic fluxes. However, modelling metabolic fluxes with CBM remains challenging due to the complexity of metabolism and the need for omics data integration. This study introduces scFBApy, a Python-based tool for simulating CBM and the metabolic cooperation between cells. It allows the flux simulation of a population of networks for a target objective, such as biomass production, with or without cooperation. The tool integrates single-cell transcriptomics data using Reaction Activity Scores and uses a denoising algorithm for pre-processing scRNA-seq data. Five real-world scRNA-seq datasets were used to demonstrate the applicability of the pipeline. Results showed that cooperation between cells increased biomass production compared to independent cell simulations. The scFBApy package provides an open-source alternative to MATLAB-based CBM tools.

Galuzzi, B., Damiani, C. (2024). scFBApy: A Python Framework for Super-Network Flux Balance Analysis. In Artificial Life and Evolutionary Computation 17th Italian Workshop, WIVACE 2023, Venice, Italy, September 6–8, 2023, Revised Selected Papers (pp.88-97). Springer Science and Business Media Deutschland GmbH [10.1007/978-3-031-57430-6_8].

scFBApy: A Python Framework for Super-Network Flux Balance Analysis

Galuzzi, BG;Damiani, C
2024

Abstract

Constraint-based modelling (CBM) is a computational method used in systems biology to predict metabolic fluxes. However, modelling metabolic fluxes with CBM remains challenging due to the complexity of metabolism and the need for omics data integration. This study introduces scFBApy, a Python-based tool for simulating CBM and the metabolic cooperation between cells. It allows the flux simulation of a population of networks for a target objective, such as biomass production, with or without cooperation. The tool integrates single-cell transcriptomics data using Reaction Activity Scores and uses a denoising algorithm for pre-processing scRNA-seq data. Five real-world scRNA-seq datasets were used to demonstrate the applicability of the pipeline. Results showed that cooperation between cells increased biomass production compared to independent cell simulations. The scFBApy package provides an open-source alternative to MATLAB-based CBM tools.
paper
Constraint-based modelling; Flux Balance Analysis; Metabolic networks; super-network based modelling;
English
17th Italian Workshop on Artificial Life and Evolutionary Computation, WIVACE 2023 - September 6–8, 2023
2023
Villani, M; Cagnoni, S; Serra, R
Artificial Life and Evolutionary Computation 17th Italian Workshop, WIVACE 2023, Venice, Italy, September 6–8, 2023, Revised Selected Papers
9783031574290
2024
1977 CCIS
88
97
reserved
Galuzzi, B., Damiani, C. (2024). scFBApy: A Python Framework for Super-Network Flux Balance Analysis. In Artificial Life and Evolutionary Computation 17th Italian Workshop, WIVACE 2023, Venice, Italy, September 6–8, 2023, Revised Selected Papers (pp.88-97). Springer Science and Business Media Deutschland GmbH [10.1007/978-3-031-57430-6_8].
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/10281/473932
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