| Literature DB >> 25127241 |
Shiri Stempler1, Keren Yizhak2, Eytan Ruppin3.
Abstract
Accumulating evidence links numerous abnormalities in cerebral metabolism with the progression of Alzheimer's disease (AD), beginning in its early stages. Here, we integrate transcriptomic data from AD patients with a genome-scale computational human metabolic model to characterize the altered metabolism in AD, and employ state-of-the-art metabolic modelling methods to predict metabolic biomarkers and drug targets in AD. The metabolic descriptions derived are first tested and validated on a large scale versus existing AD proteomics and metabolomics data. Our analysis shows a significant decrease in the activity of several key metabolic pathways, including the carnitine shuttle, folate metabolism and mitochondrial transport. We predict several metabolic biomarkers of AD progression in the blood and the CSF, including succinate and prostaglandin D2. Vitamin D and steroid metabolism pathways are enriched with predicted drug targets that could mitigate the metabolic alterations observed. Taken together, this study provides the first network wide view of the metabolic alterations associated with AD progression. Most importantly, it offers a cohort of new metabolic leads for the diagnosis of AD and its treatment.Entities:
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Year: 2014 PMID: 25127241 PMCID: PMC4134302 DOI: 10.1371/journal.pone.0105383
Source DB: PubMed Journal: PLoS One ISSN: 1932-6203 Impact factor: 3.240
Figure 1The workflow of iMAT analysis.
A. First, we discretize the expression of each metabolic gene measured into 3 levels: high, moderate and low. Next, iMAT integrates these expression levels into the human metabolic model by maximizing the number of enzymes whose predicted flux activity is consistent with their expression level, yielding a prediction of the overall network flux distribution that is most consistent with the model's constraints under steady state. This analysis is done separately for the control and the AD states. B. A Toy example of the integration of the metabolic network and gene-expression by iMAT and the prediction of enzyme flux-activities (taken and modified from [18]). Circular nodes represent metabolites, solid edges represent reactions, and diamond nodes represent enzymes associated by arrows to the reactions they catalyze. Grey, red and green represent moderate, significantly low and significantly high expression of the enzyme-encoding genes, respectively. The predicted flux involving the activation of reactions is shown as green edges. Enzymes E4 and E7 are predicted to be post-transcriptionally up-regulated and down-regulated respectively.
iMAT's predictions of metabolic pathways whose activity is significantly decreased in AD.
| Pathway | p-value |
| Carnitine shuttle | 3.53E-18 |
| Folate metabolism* | 3.78E-13 |
| Transport, Mitochondrial* | 4.77E-11 |
| Fatty acid oxidation, peroxisome* | 1.16E-08 |
| Transport, Lysosomal | 2.31E-06 |
| Biotin metabolism | 2.56E-06 |
| N-glycan degradation | 7.52E-06 |
| IMP biosynthesis | 2.21E-05 |
| Valine, Leucine, and Isoleucine metabolism* | 6.31E-05 |
| Pyrimidine catabolism | 1.13E-03 |
| Arginine and Proline metabolism | 1.17E-03 |
| Phenylalanine metabolism | 1.62E-03 |
| Fatty acid metabolism* | 4.76E-03 |
The table lists the pathways that are significantly decreased in AD according to iMAT predictions, as compared with the activity of control reactions. * Metabolic pathways that were significantly altered both in gene expression itself and in the model. All the results presented pass FDR of 0.05.
Figure 2Key flux alterations in central metabolism predicted by iMAT for AD versus control states.
The figure depicts the changes in energy metabolism in both cytosol (c) and mitochondrion (m). Several key enzymes whose activity was reported to decrease in AD patients are detailed in blue: pyruvate dehydrogenase (PDH), α-ketoglutarate dehydrogenase (AKGDH) and carnitine acetyltransferase (CAT). * Reactions whose activity changed significantly already at the transcription level.
Metabolites whose secretion or uptake is markedly decreased in AD.
| Metabolite | Decreased secretion/uptake |
| Succinate | secretion |
| Prostaglandin D2 | secretion |
| D-Mannose | secretion |
| Sphingosylphosphorylcholine | uptake |
| Pentadecanoate | uptake |
| Heptadecanoate | uptake |
| D-Glucosamine | uptake |
Biomarkers predicted by both analyses of the cortex and the blood leukocytes in AD.
| Metabolite name | Cortex | Blood |
| diacylglycerol | secretion decrease | secretion increase |
| triacylglycerol | uptake decrease | uptake increase |
| hyaluronan | uptake decrease | secretion decrease |
| prostaglandin D2 | secretion decrease | secretion decrease |
| metanephrine | secretion decrease | secretion decrease |
* Highly confident biomarkers (no overlap between flux intervals that is predicted for the control and AD).
** Biomarkers that are altered only in AD blood leukocytes and not in MCI.
Figure 3MTA workflow.
MTA performs knockouts for each of the reactions in the metabolic model at the AD state (source), and assigns a score for each gene knockout reflecting the predicted extent by which this knockout may transform the metabolic state back to the healthy (target) state. Next, we aggregate the gene/reaction level predictions to identify the pathways whose knockout is predicted to be most successful in transforming the metabolic state as close as possible back to the healthy state.