Computational Modeling of Lipid Metabolism in Yeast.

Abstract:

Lipid metabolism is essential for all major cell functions and has recently gained increasing attention in research and health studies. However, mathematical modeling by means of classical approaches such as stoichiometric networks and ordinary differential equation systems has not yet provided satisfactory insights, due to the complexity of lipid metabolism characterized by many different species with only slight differences and by promiscuous multifunctional enzymes. Here, we present an object-oriented stochastic model approach as a way to cope with the complex lipid metabolic network. While all lipid species are treated objects in the model, they can be modified by the respective converting reactions based on reaction rules, a hybrid method that integrates benefits of agent-based and classical stochastic simulation. This approach allows to follow the dynamics of all lipid species with different fatty acids, different degrees of saturation and different headgroups over time and to analyze the effect of parameter changes, potential mutations in the catalyzing enzymes or provision of different precursors. Applied to yeast metabolism during one cell cycle period, we could analyze the distribution of all lipids to the various membranes in time-dependent manner. The presented approach allows to efficiently treat the complexity of cellular lipid metabolism and to derive conclusions on the time- and location-dependent distributions of lipid species and their properties such as saturation. It is widely applicable, easily extendable and will provide further insights in healthy and diseased states of cell metabolism.

SEEK ID: https://seek.lisym.org/publications/77

PubMed ID: 27730126

Projects: LiSyM Pillar I: Early Metabolic Injury (LiSyM-EMI)

Publication type: Not specified

Journal: Front Mol Biosci

Citation: Front Mol Biosci. 2016 Sep 27;3:57. doi: 10.3389/fmolb.2016.00057. eCollection 2016.

Date Published: 27th Sep 2016

Registered Mode: Not specified

Authors: V. Schutzhold, J. Hahn, K. Tummler, E. Klipp

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Views: 4504

Created: 6th Feb 2018 at 17:02

Last updated: 8th Mar 2024 at 07:44

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