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Metabolomics and in-silico analysis reveal critical energy deregulations in animal models of Parkinson’s disease

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Academic year: 2021

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Figure 1. Energy metabolism model for the cerebral tissue. The states of the model (in capital letters) are defined as follows: GLC, glucose;
Figure 3. Basal indicator for WT and CCCP stressed models.
Figure 5. Comparison of fluxes and metabolic ratios. Model simulations of WT control (black line), CCCP stressed (red line) and parkin knockout (bleue line) brain cells

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Keywords: Renewable energies, energy performance indicators, monitoring system, smart transducers, control algorithms, predictive control, optimal control, high