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Coupling constrained-based flux sampling and clustering to tackle cancer metabolic heterogeneity

Authors :
Galuzzi, B
Izzo, S
Giampaolo, F
Cuomo, S
Vanoni, M
Alberghina, L
Damiani, C
Piccialli, F
Galuzzi, BG
Vanoni, ME
Galuzzi, B
Izzo, S
Giampaolo, F
Cuomo, S
Vanoni, M
Alberghina, L
Damiani, C
Piccialli, F
Galuzzi, BG
Vanoni, ME
Publication Year :
2023

Abstract

Characterizing the heterogeneity of cancer metabolism requires the knowledge of metabolic fluxes in different tumor types. These fluxes cannot be directly determined, especially at a sub-cellular level. Still, they can be obtained numerically through constraint-based steady-state models after integrating other high-throughput -omics data, such as transcriptomics. In this work, we proposed to study cancer metabolism through data analysis and machine learning methodologies. To this aim, we considered transcriptomics profiles for a large set of cancer cells. Using a core metabolic network as a scaffold, we generated many feasible flux distributions for each cancer cell. Then, we used cluster analysis to analyze these data. This preliminary analysis revealed three well-separated clusters having different metabolic behaviors.

Details

Database :
OAIster
Notes :
English
Publication Type :
Electronic Resource
Accession number :
edsoai.on1405304565
Document Type :
Electronic Resource