Research Paper Advance Articles
Metabolic switch in the aging astrocyte supported via integrative approach comprising network and transcriptome analyses
- 1 Instituto de Nutrición y Tecnología de Alimentos (INTA), Universidad de Chile, Santiago, Región Metropolitana 7800003, Chile
- 2 Department of Physics, Universidad de Chile, Santiago, Región Metropolitana 7800003, Chile
- 3 Center for the Development of Nanoscience and Nanotechnology, CEDENNA, Santiago, Región Metropolitana 7800003, Chile
- 4 Department of Physics, Center for Advanced Nanoscience, University of California, San Diego, CA 92093, USA
- 5 Centro de Estudios Científicos (CECs), Valdivia 5110466, Chile
- 6 Facultad de Medicina y Ciencia, Universidad San Sebastián, Valdivia, Región de Los Ríos 5110773, Chile
- 7 Department of Biology, Laboratory of Cellular and Neuronal Dynamics, Faculty of Sciences, Universidad de Chile, Santiago, Región Metropolitana 7800003, Chile
- 8 Geroscience Center for Brain Health and Metabolism (GERO), Santiago, Región Metropolitana 7800003, Chile
- 9 Facultad de Medicina y Ciencia, Universidad San Sebastián, Santiago, Región Metropolitana 7510157, Chile
- 10 The Buck Institute for Research on Aging, Novato, CA 94945, USA
Received: December 22, 2022 Accepted: March 20, 2023 Published: April 18, 2023
https://doi.org/10.18632/aging.204663How to Cite
Copyright: © 2023 Acevedo et al. This is an open access article distributed under the terms of the Creative Commons Attribution License (CC BY 3.0), which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are credited.
Abstract
Dysregulated central-energy metabolism is a hallmark of brain aging. Supplying enough energy for neurotransmission relies on the neuron-astrocyte metabolic network. To identify genes contributing to age-associated brain functional decline, we formulated an approach to analyze the metabolic network by integrating flux, network structure and transcriptomic databases of neurotransmission and aging. Our findings support that during brain aging: (1) The astrocyte undergoes a metabolic switch from aerobic glycolysis to oxidative phosphorylation, decreasing lactate supply to the neuron, while the neuron suffers intrinsic energetic deficit by downregulation of Krebs cycle genes, including mdh1 and mdh2 (Malate-Aspartate Shuttle); (2) Branched-chain amino acid degradation genes were downregulated, identifying dld as a central regulator; (3) Ketone body synthesis increases in the neuron, while the astrocyte increases their utilization, in line with neuronal energy deficit in favor of astrocytes. We identified candidates for preclinical studies targeting energy metabolism to prevent age-associated cognitive decline.
Introduction
Energy metabolism, essential for brain function, is one of the main processes dysregulated during brain aging (reviewed in [1, 2]). Although the brain constitutes only 2% of total body mass, it represents 20–25% of total body energy expenditure [3, 4], where most of it is used for re-establishing cation gradients after neurotransmission [5], a process mediated by sodium/potassium-ATPase pumps [6, 7]. To meet this high energy demand, the neuron and astrocyte form a two-cell metabolic network (The neuron-astrocyte metabolic network) with extensive metabolite exchange [4, 8]. One example of metabolic exchange is the astrocyte-neuron lactate shuttle (ANLS) [2]. The astrocyte performs aerobic glycolysis, converts pyruvate into lactate, and then transports it to the neuron to fuel ATP synthesis via oxidative phosphorylation [9, 10]. The neuron-astrocyte metabolic network also performs the glutamate-glutamine cycle (GGC). In the GGC, astrocytes take up glutamate -the main excitatory neurotransmitter in the central nervous system- after neurotransmission. Inside the astrocyte, glutamate is converted into glutamine, shuttled back to the neuron, and re-converted into glutamate for a new neurotransmission cycle [11–14]. The ANLS, GGC, and the exchange of sodium and potassium constitute essential metabolic interactions between neurons and astrocytes, and they are closely related to energy metabolism. Indeed, energy availability is vital to ensure proper neurotransmission. However, during human brain aging, metabolism becomes dysregulated in the brain. Healthy aged human individuals display slower mitochondrial metabolism and glutamate-glutamine cycle neuronal flux (−28%) when compared with healthy young individuals. In comparison, astroglial mitochondrial flux is 30% faster [15]. In rats, adult primary astrocyte cultures also display a higher mitochondrial oxidative metabolism when compared with astrocytes derived from young rats [16]. To date, the only intervention demonstrated to extend lifespan in several model organisms is caloric restriction, a metabolic intervention where animal models are fed a diet consisting of 60–70% of the calorie intake in a regular diet [17]. This further supports the role of energy metabolism during aging. Metabolic challenges like the ketogenic diet [18, 19] and intermittent fasting that aim to mimic the metabolic state entered during caloric restriction have also been shown to extend lifespan and health-span [20]. Furthermore, a phase II clinical trial using a fasting-mimicking diet improved metabolic health [21].
The complexity of brain aging is determined by the diversity and number of metabolic pathways that contribute to energy balance. The molecular mechanisms underlying age-associated dysregulation of brain energy metabolism remain mostly unknown. Complex systems -particularly metabolic pathways- are studied by modeling them as networks, which allows to simulate and probe complex phenomena, such as aging, in a computationally tractable and interpretable fashion [22, 23]. Here, we present a novel network-wise approach mapping complex interactions into a graph representation to discover energy-related genes in the neuron-astrocyte metabolic network that may contribute to brain aging. We used a genome-scale model of the neuron-astrocyte metabolic network [24] and analyzed it using complementary flux and network-based methods. Flux-based methods allowed us to identify reactions critical for maintaining optimal neurotransmission.
On the other hand, network-based methods (centrality) searched for reactions that may modulate neurotransmission via network-wide effects. This analysis provided us with a set of genes (metabolic hub genes) that are key for neurotransmission in terms of flux distribution and network structure. Next, we determined which metabolic hub genes showed differential abundance associated with neurotransmission and/or brain aging in the neuron and/or astrocyte, thus getting a final set of genes called differential hub genes (DHG). These gene set represents a validation of network analysis contrasting numerical predictions with experimental data, including expected and novel results.
Functional annotation analysis of DHGs led to the following main findings: (1) Gene expression changes in both the neuron and astrocyte suggest an energetic deficit in the neuron, mainly by substantial downregulation of tricarboxylic acid (TCA) cycle in the aging neuron; (2) In line with the neuronal energy deficit, our results suggest that the aging astrocyte undertakes a metabolic switch from aerobic glycolysis to oxidative metabolism, where glucose is directed to CO2 instead of lactate; (3) Impaired branched-chain amino acid degradation in both the neuron and astrocyte, mainly supported by downregulation of the dld gene during aging. This gene encodes for a subunit of the branched-chain amino acid (BCAA) dehydrogenase complex, which catalyzes an early step in BCAA degradation; (4) Altered ketone body metabolism, where gene expression changes in the neuron agree with an increased synthesis during brain aging, while in the aging astrocyte bdh1 is upregulated. This gene catalyzes the interconversion between acetoacetate and β-hydroxybutyrate, the main two ketone bodies required for ketone body utilization. These findings further support that energy metabolism is favored in the astrocyte, in detriment of neuronal energy supply; (5) Downregulation of genes associated with synaptic transmission in the neuron, including downregulation of Na/K-ATPase pumps in the aging neuron, and lower glutamate synthesis in both neuron and astrocyte; (6) Our results suggest that the aging neuron downregulates genes that supply the one carbon and tetrahydrofolate (THF) pool, which is required for the synthesis of the methylation precursor S-adenosylmethionine (SAM) and antioxidant glutathione synthesis. Instead, the aging astrocyte displays expression changes that agree with an increase in the THF pool available for glutathione synthesis as an antioxidant strategy, which is also in line with the metabolic switch into an oxidative metabolism in the astrocyte (which requires more antioxidation).
The genes identified here are valuable candidates for future studies to understand the molecular mechanisms of healthy brain aging and prevent brain age-associated failure using energy metabolism as a target. We also highlight how our approach provides a robust and tractable number of final gene candidates for future studies, using an integrative analysis of the two-cell neuron-astrocyte metabolic network, which may be applied to other metabolic models.
Results
Workflow overview
To facilitate reading of the following sections, we provide an overview of the analyses performed in simple terms. We started by using a previously available genome-scale neuron-astrocyte (N-A) metabolic network model [24], which included all metabolic reactions and transport events (each representing a node in the network) that occur in each cell across subcellular compartments, as well as transport between cell types. Genome-scale metabolic models are constructed using genome-wide gene expression data to only include nodes that are present in neurons and/or astrocytes [24] (Figure 1A). We used this N-A metabolic network to perform a Flux Balance Analysis (FBA) (Figure 1B) and a Centrality Analysis (Figure 1C). Broadly, the FBA calculates the extent to which the flux through each node in the N-A metabolic network should be modified for optimal achievement of the metabolic objective, which we defined as glutamatergic neurotransmission workload i.e., energy burden derived from neurotransmission). This is defined as the optimal metabolic response. The FBA identifies two types of nodes: flux nodes, which are those that most contribute to optimally achieving the metabolic objective of neurotransmission workload, and sensitive nodes, which are the key nodes exerting control over neurotransmission workload. Merging these two types of nodes yielded the list of optimal nodes, where each node has been previously associated with specific genes. We defined optimal genes as the list of genes associated with optimal nodes.
Figure 1. Summary flowchart of network analyses depicting how optimal and central genes were identified, which merged together form the hub genes group. (A) A genome-scale metabolic model from Lewis et al., 2010 was used. This network was analyzed first using. (B) Flux Balance Analysis, from which Flux and Sensitive Nodes were identified. Merging these two node lists yielded Optimal Nodes, from which Optimal Genes were identified. Sensitive Nodes were then analyzed using. (C) Centrality Analysis, which allowed identifying Central Nodes, from which Central Genes were identified. Merging the list of Optimal and Central Genes produced the Hub Genes list. (D) See boxes in dashed lines for the explanation of each type of analysis.
The FBA was followed by a centrality analysis, which analyzes intrinsic network structure, and is therefore independent of flux. In a centrality analysis, each node in the network has a centrality score, which, largely, represents the number of connections and pathways each node participates in. We calculated how the removal of each individual node in the network affected the centrality score of sensitive nodes identified in the previous step, as those represent the ones that exert control over the metabolic objective. Nodes significantly altering the centrality of sensitive nodes were defined as central nodes, from which the list of central genes was obtained. By merging optimal and central node lists we obtained the list of hub genes (Figure 1D), which represent the genes that most affect glutamatergic neurotransmission workload, and therefore play a key role in N-A metabolic network function.
Having identified hub genes that play key roles in the N-A metabolic network, we next determined which of these were differentially expressed, i.e., up- or downregulated after neurotransmission and/or brain aging in the neuron and/or astrocyte (Figure 2A). To achieve this, we used previously available transcriptomic databases for neurotransmission (Figure 2B) and brain aging (Figure 2C) [12, 25]. The last step in gene selection identified hub genes that were differentially expressed during neurotransmission and/or brain aging (see shaded area in Venn diagram, Figure 2D) defined as differential hub genes (DHG) (Figure 2E). This curated group of genes represents those that most contribute to achieving glutamatergic neurotransmission workload. The ultimate goal of this integrative analysis was to identify genes and pathways important for neurotransmission, which fail during brain aging, thus constituting candidates to explain age-associated cognitive decline. To achieve this, the final step was a KEGG pathway enrichment analysis of DHG, which allowed us to identify the predominant metabolic pathways.
Figure 2. Summary flowchart of integration of hub genes with transcriptomic data generated during neurotransmission and brain aging. (A) Transcriptomic data during neurotransmission (Hasel et al., 2017) and aging (Tabula Muris Consortium, 2020), reporting differentially expressed genes during each process in the neuron and/or astrocyte was obtained. This allowed us to obtain a list of differentially expressed (DE) genes in both cell types during. (B) neurotransmission and/or (C) brain aging. (D) Venn diagram showing common genes: (1) Between DE genes during neurotransmission and hub genes (pink and green sets); (2) Between DE genes during brain aging and hub genes (yellow and green sets), and (3) The intersection between all three gene groups (pink, yellow and green sets). (E) The differential hub genes (DHG) list is shown in (D) in the shaded area.
Flux-based analysis identifies optimal nodes in the neuron-astrocyte network required for glutamatergic neurotransmission workload
Regarding the FBA (Figure 1B), in this analysis we defined three sub-objectives that represent key processes required for achieving neurotransmission workload: (1) The astrocyte-neuron lactate shuttle (ANLS), (2) The glutamate-glutamine cycle (GGC), and (3) Sodium removal by Na/K-ATPase pumps (Figure 3A–3C). The FBA therefore determined how to optimize flux through these three processes by identifying flux and sensitive nodes (Figure 1B). Furthermore, for the results to be biologically coherent, we used experimentally determined flux values during neurotransmission as constraints. These were the neuronal and astrocytic glucose and oxygen consumption rates, and neuronal ATP maintenance rate, reported by Fernandez-Moncada et al. [26] and Baeza-Lehnert et al. [6]. Also, metabolite steady state was imposed as a constraint. This means that intracellular metabolite concentration levels remain constant under neurotransmission (see Supplementary Theoretical Framework Section 1.2 on how this is relevant for the analysis).
Figure 3. Identification of optimal nodes using flux balance analysis in the neuron-astrocyte metabolic network suggests division of labor between the neuron and astrocyte in response to neurotransmission workload. (A–C) Reactions considered in the metabolic objective; here, metabolite names correspond to the same as in the model reported by Lewis et al. (2010). (A) Fluxes associated with the Astrocyte-Neuron Lactate Shuttle (ANLS); left side: Lactate efflux from astrocyte to the interstitial space (Lact-Ast); right side: Lactate from the interstitial space entering neurons (Lact-Neu). (B) Fluxes related to the Glutamate-Glutamine Cycle (GGC); left side: vesicle-exported glutamate from neuron (GluVe-Neu); right side: glutamine excretion from astrocyte (GlnEx-As). (C) Neuronal sodium efflux associated with its removal via sodium ATPase pump. (D–G) Phenotypìc phase planes are shown as two-dimensional color maps. Here, the Flux Balance Analysis (FBA) solution is represented by the red-filled circle, while all fluxes shown correspond to micromolar per second (uM/s). A white piece-wise line depicts the specific contour level of the solution. (H) The neuron-astrocyte metabolic network is represented as a bipartite network; here, node shape (circle or square) denotes the partition where it belongs, i.e., reaction or metabolite. (I) left side, flux values distribution in each cell; right side: the bipartite network presented in (H) showing node size proportional to absolute flux. (J) left side, sensitivity values distribution in each cell; right side: the bipartite network presented in (H) showing node size proportional to absolute sensitivity. (K) Distribution of the Absolute Optimality values in neuron and astrocyte, the 90 percentile is highlighted by a red dashed line. This line depicts the cutoff over which a reaction was classified as an optimal metabolic reaction. (L) Optimal metabolic reactions (descending order) sorted by their Absolute Optimality and presented alongside their flux and sensitivity.
Figure 3D–3G depict fluxes previously associated with the metabolic sub-objectives ANLS, GGC and Na/K-ATPase pumps in phenotypic phase planes (PhPPs), where non-zero slopes can be observed (see Methods section Phenotypic Phase Plane Analysis for details). These allowed validating that each sub-objective is dependent on oxygen and glucose uptake rates, which is a hallmark of brain metabolism. The optimal flux that maximizes each metabolic sub-objective is shown as a red-filled circle in each PhPP (Figure 3D–3G). Figure 3D shows that the calculated optimal neuronal sodium efflux associated with removal through Na/K-ATPase pumps was 350 uM/s. Also, Figure 3E shows that lactate efflux from the astrocyte was 6.913 uM/s, and Figure 3F that vesicle-mediated export of glutamate from the neuron was 4.138 uM/s (influx into the complementary cell and other relevant fluxes are shown in Supplementary Table 1). Furthermore, from Figure 3G it is possible to assume that the optimal solution is unique since it is located on a vertex. In addition, the optimal metabolic response was associated with complete (aerobic) glucose oxidation. In this sense, six oxygen molecules oxidized one glucose molecule (Supplementary Figure 1A), while ATP yield was close to 27.5 ATP molecules per glucose molecule (Supplementary Figure 1B). Of note, it is possible that this last yield was lower than the theoretical one due to flux to other pathways such as the pentose phosphate pathway and reactions that exit the tricarboxylic acid cycle (TCA), e.g., glutamate synthesis and the malate-aspartate shuttle (MAS). Furthermore, in line with what Baeza-Lehnert et al. [6] reported, we observed flux coupling between ATP demand from the sodium ATPase pump and ATP supply from oxidative phosphorylation in neurons (Supplementary Figure 2). Overall, our model was mathematically consistent and agreed with the biology of neurons and astrocytes undergoing neurotransmission.
In addition to fluxes, the optimal metabolic response is shaped by sensitivity, which is equally relevant to flux in the FBA [27, 28]. Sensitivity values inform the extent to which a change in any given reaction modifies the optimal metabolic response. We calculated sensitivities and, together with fluxes, determined how they distributed throughout the neuron-astrocyte metabolic network. Interestingly, high-flux reactions were mostly neuronal (Figure 3I), while high-sensitivity reactions were mainly astrocytic (Figure 3J). This cellular separation among flux and sensitivity suggests neurotransmission sets up fluxes in neurons, and sensitivities in astrocytes. Next, we combined the flux and sensitivity of each node into a single quantity called Absolute Optimality (AO) (see Methods section Absolute Optimality for details). The AO informed us about the involvement any given node has in the achievement of the optimal response. All nodes that had an AO above the significant threshold were considered optimal nodes (Figures 1B and 3K). Figure 3L shows fluxes and sensitivities of optimal nodes separated by cell type and sorted in descending order for AO.
Taken together, the optimality analysis suggests a division of labor between neurons and astrocytes in response to neurotransmission workload. Here, the execution, represented by flux, is allocated to neurons, while control, represented by sensitivity, is executed by astrocytes.
Analysis of network structure based on sensitive nodes further supports the division of labor between the neuron and astrocyte in the network
We further analyzed the N-A metabolic network to enrich our analysis, by performing a centrality analysis (Figure 1C). While part of aging-derived damage to brain metabolism may reside in fast stationary events such as those represented by FBA results, much of aging deterioration may occur in non-steady state long-term events. Intrinsic network structure allows identifying long-term phenomena beyond steady state and short timescales (see Methods, Modeling rationale). As mentioned before, the centrality score of a node represents how connected the node is in the network. We calculated the extent to which each node in the network, when removed, affected the centrality of sensitive nodes identified in the previous step (see Methods, Absolute Centrality Contribution). Four complementary centrality metrics were employed to ensure analysis robustness; thus, each reaction was associated with four quantities. These accounted for how much a given reaction contributes to the centrality of the sensitive nodes and were denominated centrality contributions. As can be observed in Figure 4A, in astrocytes centrality contributions tended to be positive, while in neurons it was mostly negative. This result indicates that astrocytic nodes tend to increase the centrality of the sensitivity set, while neuronal nodes tend to decrease it. This finding suggests opposite and complementary roles between cells.
Figure 4. Centrality-based analysis of the neuron-astrocyte metabolic network further supports the division of labor between the neuron and astrocyte. (A) Distributions, separated by cell, of the contributions of each reaction to the centrality of the sensitivity set. (B) Unsupervised hierarchical clustering of the pairwise correlations between the contributions of each reaction to the centrality of the sensitivity set. The Absolute Centrality Contribution per reaction (ACC) is shown on the right-hand side of the heatmap. (C) Dimensionality reduction via Principal Component Analysis (PCA) of the pairwise correlations between the contributions of each reaction. (D) Distribution of ACC in the neuron (top) and astrocyte (bottom), here, the red dashed line by the 90% percentile indicates the cutoff over which reactions were considered central metabolic reactions. (E) ACC values for the central metabolic reaction separated by cell.
In Figure 4B, this behavior was confirmed via unsupervised clustering of the correlations between the centrality contributions of each node (see Methods section for details on this procedure). Here we see that centrality contributions from the same cell are clustered together. The latter was also confirmed via dimensionality reduction, where the 2-dimensional distribution of the centrality contributions also resembled the two-cell structure (Figure 4C). Next, we aggregated the four centrality contributions into a single index which was a normalized and absolute value representing the capacity of a node to change the centrality of sensitivity nodes. We called this index Absolute Centrality Contribution (ACC). The ACC for each reaction is shown on the right-hand side of the heatmap in Figure 4B (see the column with green bars). Finally, the nodes with the last tenth percentile of the ACC values from each cell were categorized as central nodes (Figure 4D). Interestingly, the astrocyte concentrated the highest ACC values (Figure 4E). Merging optimal and central genes resulted in the hub genes list, which represent the genes with the highest probability to affect or control the N-A metabolic network in achieving glutamatergic neurotransmission workload.
As a whole, positive centrality contributions in the astrocyte and negative in the neuron, along with the predominantly high ACC of the astrocyte suggest well-differentiated roles for the neuron and astrocyte. These results are in the same line with those obtained by the FBA supporting the division of labor between the two cells.
Identification of hub genes differentially regulated during neurotransmission and/or brain aging
Previously identified hub genes represent the scaffolding required for achieving glutamatergic neurotransmission, and among these, we sought to identify which were also differentially expressed during neurotransmission and/or brain aging. Disruption of these genes should lead to subpar neurotransmission workload, and therefore provide molecular insights into aging-associated brain functional decline. We denominated this group differential hub genes (DHG). To achieve this, we determined which of these were differentially expressed, i.e., up- or downregulated after neurotransmission and/or brain aging in the neuron and/or astrocyte (Figure 2A). We used available transcriptome databases for neurotransmission (Figure 2B) and brain aging (Figure 2C) [12, 25] (see shaded area in Venn diagram, Figure 2D and 2E).
On the one hand, the neurotransmission database reported transcriptomic changes occurring in neurons and astrocytes grown in a mixed culture setting, before and after neurostimulation, followed by RNA-seq [12]. The authors reported 4441 genes with differential abundance in the neuron and 1307 in the astrocyte (fold-change, FC ≥1.3 or ≤0.77 and padj-SSS-value <0.05). On the other hand, the brain aging database was generated using single-cell RNA sequencing to obtain the age-coefficient for each gene, which is equivalent to the fold-change of each gene when comparing neurons and astrocytes from aged and young mouse brains [25]. This study reported 5415 differentially abundant genes in neurons and 1294 in astrocytes when comparing 1–3 months old with 18–30 months old mice (age-coefficient threshold at 0.005 reported by authors as equivalent to a 10%-fold change and an FDR threshold of 0.01).
The differentially expressed genes reported in these databases were then cross-referenced to the hub genes identified in the network analyses, resulting in DHG (Figure 2D and 2E). In response to neurotransmission, we found 53 DHG in the neuron and 14 DHG in the astrocyte. While for brain aging, we found 73 in the neuron and 26 in the astrocyte.
Differential hub genes in the neuron suggest a metabolic deficit and impaired synaptic transmission during brain aging
We performed a pathway enrichment analysis using the KEGG pathway database, followed by manual curation to obtain a functional characterization of DHG in neurotransmission and brain aging (see Methods for manual curation criteria). Figure 5 shows KEGG pathways enriched in neuronal DHG during neurotransmission (Figure 5A–5F) and brain aging (Figure 5A’–5F’), where node colors indicate up (red nodes) or downregulation (blue nodes) during each process.
Figure 5. KEGG pathway enrichment of differential hub genes reveals that the aged neuron displays energetic deficit, dysfunctional neurotransmission, decreased branched-chain amino acid degradation and utilization of ketone bodies, and decreased one-carbon pool levels. KEGG pathway enrichment of differential hub genes was followed by manual curation of associated genes. The results are shown for neurotransmission (top panel) and aging (bottom panel). Oxidative phosphorylation (OxPhos, blue): high OxPhos levels during neurotransmission (A) but low OxPhos levels during aging (A’). Synaptic transmission: upregulated Na/K-ATPase pumps (orange) and glutamate synthesis (green) suggest active re-establishment of cation gradients (B) and high glutamate levels (C). The opposite was observed during aging (B’, C’). 3) Ketone body metabolism (yellow): decreased synthesis and increased degradation/utilization during neurotransmission (D), with the opposite observed during aging (D’). 4) Branched-chain amino acid (BCAA) degradation (purple): while differential hub genes involved in the degradation of BCAA were found downregulated during both neurotransmission (E) and aging (E’), dld, which encodes for a subunit of BCAA-decarboxylase, an early step in the degradation of all three BCAA was only downregulated during brain aging. 5) One carbon pool (pink): differential hub gene expression associated with one-carbon metabolism suggests high levels of one-carbon pool intermediates during neurotransmission (F) but low during aging (F’). Created with https://www.biorender.com/.
We identified five main biological processes with different regulation when comparing neurotransmission and brain aging. The first group contained DHG associated with central energy metabolism associated with KEGG pathways “Pyruvate metabolism”, “Citrate cycle (TCA cycle)” and “Central carbon metabolism in cancer” (Figure 5A and 5A’, blue). This last pathway was included because metabolic changes observed in cancer, such as the Warburg effect, also occur in the brain [29]. During neurotransmission, we observed upregulation of acss1, a mitochondrial enzyme that synthesizes acetyl-CoA from acetate, and of pdha1, which encodes for a subunit of the pyruvate dehydrogenase complex (PDC) (Figure 5A, blue). Upregulation of both enzymes agrees with increased acetyl-CoA levels and therefore suggests increased TCA flux, which would lead to high levels of oxidative phosphorylation. Instead, during aging, we observed downregulation of most genes involved in the three KEGG pathways mentioned above (except for fh1, which was upregulated). Notably, most of these DHG downregulated during neuronal aging participate in the TCA cycle. Plus, we found downregulation of three genes encoding for PDC subunits: pdha1, pdhb, and dld. These changes also suggest that acetyl-CoA entry into the neuronal TCA cycle and TCA cycle activity are impaired in the aged brain.
The second group was associated with synaptic activity, including a cluster of Na/K-ATPase pumps (Figure 5B and 5B’, orange) and enzymes that catalyze glutamate synthesis (Figure 5C and 5C’, green). During neurotransmission, they were upregulated, while in brain aging, they were downregulated except for atp1a2. Na/K-ATPase pumps are required to re-establish ion gradients after neurotransmission to allow the following cycle of synaptic activity. At the same time, glutamate is the primary excitatory neurotransmitter, for which these results agree with synaptic activity dysregulation during brain aging, with got1/2 as DHG regulating glutamate levels.
The third group corresponds to the “Synthesis and degradation of ketone bodies” pathway (Figure 5D and 5D’, yellow). During neurotransmission, hmgcs1, encoding for the cytosolic form of 3-hydroxy-3-methylglutaryl-CoA synthase 1 was upregulated while hmgcll1 (3-hydroxymethyl-3-methylglutaryl-CoA lyase like (1) was downregulated. Hmgcs1 catalyzes the formation of HMG-CoA, which is further converted into mevalonate for cholesterol synthesis (as opposed to the mitochondrial isoform hmgcs2, which catalyzes the first irreversible step in ketogenesis using the same substrates as hmgcs1). Instead, hmgcll1, which catalyzes the second irreversible step in ketogenesis and is downregulated, and oxct1, which catalyzes the interconversion between acetoacetyl-CoA and acetoacetate and was upregulated. These results suggest the downregulation of ketone body synthesis during neurotransmission while favoring an increased degradation or utilization (Figure 5D). In contrast, during neuronal aging, it is hmgcs2 which is upregulated (ketone body synthesis mitochondrial isoform), while hmgcs1 is downregulated. In addition, oxct1 and bdh1 are also downregulated (Figure 5D’). Bdh1 catalyzes the interconversion between acetoacetate and beta-hydroxybutyrate, the two main ketone bodies. Therefore, the downregulation of oxct1 and bdh1 suggest a decrease in ketone body turnover in the aged neuron.
The fourth group was associated with the “Valine, leucine, and isoleucine degradation” pathway, and therefore refers to branched-chain amino acid (BCAA) degradation (Figure 5E and 5E’, purple). While enzymes associated with BCAA degradation were downregulated during both neurotransmission and brain aging in the neuron, dld, which encodes for a subunit of the BCAA decarboxylase and thus catalyzes one of the first steps of the degradation of all three BCAA was only downregulated during brain aging (Figure 5E’), supporting downregulation of BCAA degradation during neuronal aging but possibly not during neurotransmission.
Finally, the fifth group was associated with regulating one-carbon pool levels (Figure 5F and 5F’, pink), including pathways “Glycine, serine and threonine metabolism” and “One carbon pool by folate.” During neurotransmission, glycine degradation enzymes alas1 and amt were downregulated, while shmt2, which feeds the one-carbon pool by producing 5,10-methylenetetrahydrofolate was upregulated. Also, 2 out of 3 enzymes involved in the metabolism of one-carbon pool intermediates were upregulated (Figure 5F, pink). However, all enzymes (except for alas2) associated with these two pathways were downregulated during neuronal aging, suggesting a decrease in the one-carbon pool. We present a summary of all these changes in Table 1.
Table 1. Summary of the main biological processes and pathways identified among differential hub genes during neurotransmission and aging in the neuron.
Process or gene(s) | Associated KEGG pathways and biological processes | Differential hub genes upregulated after neurotransmission | Differential hub genes downregulated after neurotransmission | Differential hub genes upregulated in the aged brain | Differential hub genes downregulated in the aged brain |
Central energy metabolism: oxidative phosphorylation (OxPhos) | Pyruvate metabolism; Citrate cycle (TCA cycle); Central carbon metabolism in cancer | Acetyl-CoA synthesis: acss1, pdha1 (pdha1 is the subunit inhibited by phosphorylation by PDK regulating the activity of the whole pyruvate dehydrogenase complex (PDC)); Glucose uptake transporter: slc2a1; Lactate synthesis: ldha | TCA cycle enzymes: idh2, aco1 | fh1: malate synthesis | Pyruvate dehydrogenase complex (conversion of pyruvate into acetyl-CoA for entry into the TCA cycle): dld, pdha1, pdhb; dlst, dlat; Malate-aspartate shuttle for NADH transport into the mitochondrial matrix: mdh1, mdh2; Synthesis of alpha-ketoglutarate (which can exit TCA cycle as glutamate, connecting central metabolism and neurotransmission): idh1, idh2; Lactate synthesis from pyruvate: ldha, ldhb; Other TCA cycle enzymes: sdha, sdhb, aco2, hagh. |
Synaptic activity and glutamate | Na/K-ATPase pumps; glutamate synthesis | Na/K-ATPase pumps: atp1b1 (non-catalytic subunit, regulates translocation to the plasma membrane), atp1a3, atp1a1, atp1b2; Glutamate synthesis: got1 | – | Na/K-ATPase pumps: atp1a2 | Na/K-ATPase pumps: atp1b2, atp1b1, atp1b3, atp1a3; Glutamate synthesis: got1, got2 |
Ketone body metabolism | Synthesis and degradation of ketone bodies | hmgcs1: diverts ketone body precursors into cholesterol synthesis; oxct1 | hmgcll1: second irreversible step in ketogenesis, but it’s a cytosolic isoform. | hmgcs2: first rate-limiting step in ketogenesis. | bdh1: catalyzes interconversion of the two main ketone bodies, acetoacetate and beta-hydroxybutyrate (this conversion is required for ketone body utilization); oxct1: catalyzes reversible reaction between acetoacetyl-CoA and acetoacetate; hmgcs1 |
Branched-chain amino acid (BCAA) degradation | Valine, leucine and isoleucine degradation | – | aldh6a1: valine degradation; mccc2: leucine degradation (deficiency is an autosomal recessive disorder). | – | dld: subunit of the BCAA decarboxylase, catalyzes early step of the degradation of all three BCAA; mccc1: leucine degradation; hibadh: valine degradation. |
One carbon pool | Glycine, serine and threonine metabolism; One carbon pool by folate | shmt2: feeds the one carbon pool by increasing serine and 5,10-methylenetetrahydrofolate; Folate metabolism: mthfd1l, mthfd2 | Glycine degradation: alas1, amt; Folate metabolism: mthfd1 | alas2 | shmt2, alas1, gcat, mthfd2, mthfd2l. An overall decrease in genomic DNA methylation occurs during aging, and these changes agree with that. |
Differential hub gene abundance changes in the astrocyte suggest a metabolic switch during brain aging
We next performed the same pathway enrichment of DHG in the astrocyte during neurotransmission and brain aging, followed by manual curation. The number of DHG in the astrocyte was lower than those found in the neuron, leading also to a lower number of enriched pathways. All five biological processes described for the neuron were also found during astrocyte aging.
In the first group we identified DHG enriched in central energy metabolism pathways (Figure 6A and 6A’, blue). These were “Pyruvate metabolism” during both astrocyte neurotransmission and aging, while “Central metabolism in cancer” was only enriched during neurotransmission, and “Citrate cycle (TCA cycle)” was only enriched during astrocyte aging. The following changes were observed in the astrocyte during neurotransmission (Figure 6A). First, slc2a1, encoding for the leading glucose uptake transporter in the blood-brain barrier GLUT1 was upregulated. Second, ldha, which encodes for a subunit of lactate dehydrogenase (LDH) that favors lactate levels in the interconversion between pyruvate and lactate was also upregulated [30]. And third, pcx and acss1, which encode for enzymes that feed substrates into the TCA cycle, were downregulated. These changes suggest high glucose uptake during neurotransmission by the astrocyte, elevated lactate synthesis, and low TCA cycle flux, which agrees with an active astrocyte-neuron lactate shuttle (ANLS). In contrast, during astrocyte aging, we observed the following changes (Figure 6A’). Instead of ldha, we observed upregulation of ldhb, which encodes for an LDH subunit that favors pyruvate levels. Furthermore, mdh1 and mdh2, which encode for the cytosolic and mitochondrial malate dehydrogenases, respectively, were upregulated. These enzymes participate in the malate-aspartate shuttle, which transports reducing equivalents into mitochondria (NADH) therefore fueling the electron transport chain and ATP synthesis by oxidative phosphorylation. These changes observed in differential hub gene regulation suggest that oxidative metabolism is favored in the aged astrocyte instead of flux through the ANLS, affecting neuronal energy needs.
Figure 6. KEGG pathway enrichment analysis of astrocyte differential hub genes suggests a metabolic switch from aerobic glycolysis to oxidative phosphorylation during aging. (A and A’) Metabolic switch (blue): upregulation of ldha during neurotransmission but ldhb during aging. Ldha/b genes encode for subunits of lactate dehydrogenase, which catalyzes the interconversion of pyruvate into lactate. Ldha subunits favor lactate levels and were upregulated during neurotransmission, while ldhb favors pyruvate and is upregulated during aging. Also, the major glucose uptake transporter in the blood-brain barrier, encoded by slc2a1, was upregulated during neurotransmission only. Instead, during aging, mdh1/2 encode for enzymes of the malate-aspartate shuttle, which allows transport of NADH into the mitochondrial matrix to provide electrons for the ETC. Both genes were upregulated during aging, in agreement with a high OxPhos rate. (B and B’) Branched-chain amino acid (BCAA) degradation (purple): during neurotransmission, upregulation of slc7a5 was observed (amino acid transporter present in the cell surface and lysosome; participates in leucine uptake into the lysosome for degradation), while during aging, three enzymes involved in BCAA degradation, including dld, were downregulated. (C) Ketone body degradation/utilization (yellow): the enzyme encoded by bdh1 catalyzes the interconversion of acetoacetate and β-hydroxybutyrate, the two main ketone bodies, and was upregulated during aging only. (D) Synaptic transmission (green): abat encodes for an enzyme that breaks down GABA into glutamate and is downregulated during aging in the astrocyte. (E) One carbon pool (pink): differential hub gene expression associated with one-carbon metabolism suggests an increase in one-carbon pool during astrocyte aging. Created with https://www.biorender.com/.
The second group was related to branched-chain amino acid (BCAA) degradation (Figure 6B and 6B’, purple), where slc7a5, a cell surface amino acid transporter that is also present in the lysosome for leucine uptake for degradation, was upregulated during neurotransmission (Figure 6B, purple). In contrast, dld, aldh6a1, and hibadh, all BCAA degradation genes, were downregulated during brain aging (Figure 6B’, purple). These results are in line with BCAA accumulation in the astrocyte during brain aging.
The third group was associated with ketone body degradation/utilization (Figure 6C, yellow), where bdh1 was upregulated during brain aging. As mentioned previously, this gene encodes for the enzyme that catalyzes interconversion of acetoacetate and β-hydroxybutyrate, thus suggesting that the aged astrocyte favors ketone body degradation or utilization. The fourth group was associated with glutamate levels (Figure 6D, green), including abat, which encodes for an enzyme that degrades GABA converting it into glutamate. Abat was found downregulated during astrocyte aging. These results support a metabolic switch in the astrocyte during brain aging that decreases ANLS flux, which is required for meeting the high-energy neuronal demand, promoting ATP synthesis for the astrocyte’s use. Finally, the fifth group was related to one-carbon pool regulation (Figure 6E), where gcat was upregulated during aging, while gldc was downregulated. Gcat activity feeds the one-carbon pool while gldc consumes one carbon intermediates. These results strongly suggest that the aging astrocyte favors the one-carbon pool. A summary of all changes observed in the astrocyte is included in Table 2.
Table 2. Summary of the main biological processes and pathways identified among differential hub genes during neurotransmission and aging in the astrocyte.
Process or gene(s) | Associated KEGG pathways and biological processes | Differential hub genes upregulated after neurotransmission | Differential hub genes downregulated after neurotransmission | Differential hub genes upregulated in the aged brain | Differential hub genes downregulated in the aged brain |
Central energy metabolism: switch from aerobic glycolysis (neurotransmission) into oxidative phosphorylation metabolism | Pyruvate metabolism; Citrate cycle (TCA cycle); Central carbon metabolism in cancer | Aerobic glycolysis and astrocyte-neuron lactate shuttle (ANLS): ldha, catalyzes interconversion between pyruvate and lactate, favoring lactate; slc2a1 (a.k.a. GLUT1), the main glucose uptake transporter in the blood brain barrier | pcx, acss1: feed the TCA cycle with intermediates (TCA anabolic reactions). Also in agreement with aerobic glycolysis metabolic state | Oxidative metabolism: ldhb favors pyruvate levels instead of lactate (suggesting glycolytic flux in the aged astrocyte is directed towards its own ATP synthesis); mdh1 and mdh2 are involved in the malate-aspartate shuttle, which allows NADH transport into the mitochondria to provide electrons for the electron transport chain (also in agreement with favoring ATP synthesis in the aged astrocyte instead of the ANLS). | – |
Synaptic activity and glutamate | Na/K-ATPase pumps; glutamate synthesis | – | – | – | abat: catalyzes GABA degradation, producing glutamate. |
Ketone body metabolism | Synthesis and degradation of ketone bodies | – | – | bdh1: catalyzes interconversion of the two main ketone bodies, acetoacetate and beta-hydroxybutyrate (this conversion is required for ketone body utilization); hmgcs1: diverts ketone body precursors into cholesterol synthesis | – |
Branched-chain amino acid (BCAA) degradation | Valine, leucine and isoleucine degradation | slc7a5: cell surface amino acid transporter, also present in the lysosomal membrane for leucine uptake into the lysosome. | – | – | dld: subunit of the BCAA decarboxylase, catalyzes early step of the degradation of all three BCAA; aldh6a1 and hibadh: valine degradation |
One carbon pool levels | Glycine, serine and threonine metabolism; One carbon pool by folate | – | – | gcat: threonine degradation into glycine and acetyl-CoA | gldc: glycine degradation |
Differential hub genes previously associated with aging
As a final step, we performed functional annotation for each individual differential hub gene (see Supplementary Tables 2–7), to determine which had been previously annotated to aging annotations. Among annotated functional categories, we found the following associated with aging: (1) From gene ontology, “aging” (GO:0007568), “cell aging” (GO:0007569) and “multicellular organism aging” (GO:0010259); (2) From BioCarta (database containing maps of metabolic and signaling pathways) (see Supplementary Table 8). We only found six genes that had been previously annotated with these categories: abat (4-aminobutyrate aminotransferase), dld (dihydrolipoamide dehydrogenase), slc1a2 (solute carrier family 1 (glial high affinity glutamate transporter, member 2) and superoxide dismutases sod1, sod2, sod3 (see Supplementary Table 9).
Discussion
In the present work, we analyzed the neuron-astrocyte metabolic network by integrating a flux-based approach (Flux Balance Analysis), and a centrality analysis, which addresses the intrinsic structure of the network. This network analysis was followed by cross-reference of the identified hub genes, with gene expression data for both cell types during neurotransmission and brain aging (see Workflow Overview in the Results section, and Figures 1 and 2). The integration of these three approaches allowed the identification of differential hub genes (DHG), which are a robust selection of gene candidates with a high probability of playing pivotal roles in the neuron-astrocyte metabolic network, and to explain the molecular mechanisms of age-associated brain functional decline. DHG were further analyzed using pathway enrichment analysis. This allowed identifying the main biological processes in which DHG participate during neurotransmission and/or brain aging.
Impaired central energy metabolism in the aged neuron
Brain energy metabolism dysfunction has been described as a hallmark of brain aging [1, 31], and metabolic deficit in the neuron during human brain aging has been reported [15]. This group reported that flux through the tricarboxylic acid (TCA) cycle decreased by 28% in the presynaptic neuron using in vivo magnetic resonance spectroscopy. However, the genes involved in this deficit remain largely unknown. Our analyses showed that the aging neuron downregulated a high number of TCA cycle genes, including:
(1) Subunits of the pyruvate dehydrogenase complex, dld (EC:1.8.1.4), pdha1 (EC:1.2.4.1), pdhb (EC:1.2.4.1), and dlat (EC:2.3.1.12), which catalyzes the conversion of pyruvate into acetyl-CoA for entry into the TCA cycle. Among these, it is worth highlighting that dld (EC:1.8.1.4) is also a catalytic subunit of two other essential dehydrogenase complexes: the α-ketoglutarate dehydrogenase complex (α-KGDH), which catalyzes the conversion from α-KG into succinyl-CoA (reaction that produces NADH in the mitochondrial matrix), and the branched-chain amino acid (BCAA) dehydrogenase complex. Remarkably, downregulation of dld severely affects overall metabolic function and causes the hereditary disease dihydrolipoamide dehydrogenase deficiency (OMIM: 246900) [32, 33].
(2) Two isoforms of malate dehydrogenase (mdh1 and mdh2) were downregulated in aging neurons. These enzymes are involved in the malate-aspartate shuttle (MAS), which allows the shuttling of NADH into the mitochondrial matrix [34], providing reducing equivalents for the electron transport chain (ETC). Furthermore, it has been shown that the expression of malate-aspartate shuttle enzymes decreases with normal aging and can be reverted using dietary restriction [35]. Also, loss-of-function mutations in the mdh2 gene are associated with severe neurological deficits in children (Ait-El-Mkadem et al., 2017). Notably, the NADH/NAD+ ratio is one of the driving forces of the ANLS together with pyruvate levels [36], highlighting these two enzymes as candidates to study age-associated brain functional decline.
(3) Downregulation of idh1 and idh2 (encoding for the enzymes Isocitrate Dehydrogenases 1 and 2), which catalyze α-ketoglutarate (α-KG) synthesis. This metabolite exits the TCA cycle and is converted into glutamate, which is the main excitatory neurotransmitter, and therefore it is central for metabolism since it connects energy metabolism with neurotransmission via glutamate.
These changes agree with previous findings of metabolic deficit in the neuron during aging and provide both previously reported genes (validating our modeling method) and novel gene targets. An energetic shortage in a cell with such high energy demand is critical and will necessarily lead to dysfunction.
Astrocyte metabolic switch from aerobic glycolysis to oxidative phosphorylation
Differential gene expression patterns in astrocytes indicate a metabolic switch from aerobic glycolysis to oxidative metabolism. Since astrocytes fuel neurons with lactate, this metabolic switch can lead to neuronal energy deficit. This behavior has been described previously as a selfish phenotype adopted by the astrocyte during aging [16]. Here, astrocytes use pyruvate for their ATP synthesis instead of shuttling it to neurons. In this regard, lactate dehydrogenase isoforms dictate the fate of pyruvate, either by favoring its conversion into lactate or by directing it into the TCA. Specifically, lactate dehydrogenase isoform LDH-5 favors lactate production, while isoform LDH-1 favors pyruvate production [30]. Consistent with the ANLS, the ldha1 gene (coding for polypeptides forming the LDH-5) increases in astrocytes during neurotransmission. Remarkably, the ldhb gene, which codes for the subunits of the polypeptides of LDH-1, was upregulated during brain aging. These findings support the glycolytic-to-oxidative metabolic switch in the astrocyte. Furthermore, while LDH-1 isoenzymes localize in both neurons and astrocytes, the LDH-5 isoenzymes localize exclusively in astrocytes [30]. Hence, it is highly relevant that ldhb increases in aged astrocytes.
Ldh upregulation occurs Drosophila melanogaster aging, where loss-of-function in either neurons or astrocytes leads to an increase in lifespan, while gain-of-function reduces lifespan [37]. Ldh overexpression also leads to increased neurodegeneration and motor function decline, while downregulation is neuroprotective [37]. However, specific studies on the ldha-to-ldhb switch in astrocytes have not been performed and would be of great interest to understand the mechanisms of functional brain decline during aging.
Returning to MAS, mdh1 and mdh2 were upregulated during astrocyte aging (as opposed to downregulation in the aged neuron), supporting the oxidative metabolism switch in the astrocyte [34]. Of note, while there were controversial reports of Aralar, the glutamate/aspartate antiporter in the MAS not being expressed in astrocytes [38], later evidence showed the opposite [39]. In fact, both transcriptomic databases used here detected slc25a12 transcript expression (which encodes for Aralar) in astrocytes, albeit not differentially expressed [12, 25].
Taken together, these results show that while the neuron displays an intrinsic energetic deficit as demonstrated by its expression changes, the astrocyte further contributes to this deficit by undergoing a metabolic switch into a selfish phenotype during brain aging.
Role of mdh2 and ldhb in the metabolic switch of other cell types
In cancer cells, the “Warburg effect”, which is also known as aerobic glycolysis, was first described. In the transition from normal-to-tumoral cells, they undergo an oxidative-to-aerobic glycolysis switch, favoring proliferation [40]. However, exposure of cancer cells to radiation induces a switch to oxidative metabolism arresting proliferation [41]. Notably, treatment of cancer cells with an Mdh2 inhibitor induces downregulation of oxidative phosphorylation [42], which is in line with the role in the metabolic switch of Mdh2.
Furthermore, it was recently reported that ldhb plays a role in tumor-associated macrophages in breast carcinoma [43]. These macrophages express low levels of ldhb, perform aerobic glycolysis and secrete high lactate levels. Yet, when the authors upregulate ldhb this significantly decreases lactate production in these macrophages, further supporting the role of ldhb upregulation in inducing an oxidative phenotype.
Impaired branched-chain amino acid degradation
Valine, leucine, and isoleucine are the three branched-chain amino acids (BCAA). Impairment in their degradation is detrimental to overall metabolic health [44–46], and that a high consumption of BCAA coupled with a high-fat diet increases tau neuropathology in the 3xTg-AD Alzheimer’s disease mouse model [47]. We observed the downregulation of genes involved in BCAA degradation during neurotransmission and aging in the neuron. During neurotransmission, aldh6a1, involved in valine degradation (Figure 5E and Table 1), and mccc2 involved in leucine degradation, while during aging, mccc1 (also leucine degradation), hibadh (valine degradation), and dld, which catalyzes an early step in the degradation of all three BCAA (Figure 5E’). Importantly, a recent report showed that detrimental effects of BCAA are mediated mainly through isoleucine, and to a lesser extent, by valine [46].
Significantly, dld was also downregulated in the astrocyte. In fact, slc7a5 which transports leucine into the lysosome for degradation was upregulated during neurotransmission in the astrocyte, while dld, aldh6a1, and hibadh were downregulated in the aging astrocyte. Taken together with the fact that dld encodes for a subunit in three central dehydrogenases, its downregulation in both the aged neuron and the astrocyte, plus its role in BCAA degradation, we propose dld as one of the strongest candidates to target in the aging brain.
Altered ketone body metabolism
Ketone bodies are produced during caloric restriction, which is the only intervention known to extend lifespan across various organisms [17], and several metabolic challenges are being developed to emulate the effects of caloric restriction, including the ketogenic diet [18, 19] and intermittent fasting [20]. Our results suggest that DHGs are regulated in the neuron such that during neurotransmission, they suggest downregulation of ketogenesis by upregulation of hmgcs1, the cytosolic isoform of hmgcs2. While Hmgcs2 (the mitochondrial isoform) catalyzes the first rate-limiting step in ketogenesis [48], Hmgcs1 catalyzes cholesterol biosynthesis in the cytosol instead of ketone body synthesis. However, during neuronal aging, hmgcs2 was upregulated while hmgcs1 downregulated, thus suggesting upregulation of ketone body synthesis [48]. Bdh1 (EC:1.1.1.30) and oxct1 (EC:2.8.3.5), which participate in the utilization of ketone bodies were downregulated, suggesting downregulation of ketone body degradation during neuronal aging.
In the astrocyte, bdh1 (EC:1.1.1.30) was upregulated. This gene encodes for the enzyme that catalyzes the interconversion between β-hydroxybutyrate and acetoacetate, the two main ketone bodies, a reaction required for acetoacetate conversion into acetyl-CoA for eventual ATP synthesis [31]. Therefore, this suggests an upregulation of ketone body degradation and utilization in the astrocyte during aging. Taken together, our results suggest that ketone body utilization increased during astrocyte aging while the aging neuron upregulated ketogenesis. These results agree with those mentioned above regarding astrocyte energy expenditure being favored over the neuronal demand during brain aging.
Downregulation of genes associated with synaptic transmission in the aging neuron
During synaptic transmission, we observed that the neuron upregulated genes encoding for four sodium/potassium-ATPase (Na/K-ATPase) pumps (Figure 5B orange), while four out of five Na/K-ATPase pumps were downregulated during neuronal aging (Figure 5B’, orange). These pumps are required to re-establish neuronal ion gradients after neurotransmission (Baeza-Lehnert et al., 2019; Erecinska and Silver, 1994). A downregulation of their expression during aging could contribute to neuronal dysfunction. Furthermore, got1 (EC:2.6.1.1), which synthesizes glutamate from TCA intermediate α-ketoglutarate, is upregulated during neurotransmission, while got1 and got2 (EC:2.6.1.1) were downregulated during brain aging. Since glutamate is the main excitatory neurotransmitter [49] and α-ketoglutarate a key metabolic intermediate in the TCA cycle, these two enzymes, in particular, got1 (the cytoplasmic isozyme), with opposite regulation during neurotransmission and aging, provide a link between central energy metabolism and synaptic activity. Remarkably, activity for the enzyme encoded by got is increased in the brain of Alzheimer’s disease individuals compared with healthy controls [50]. However, further characterization of the enzyme during pathological or healthy brain aging is still lacking, making it an exciting target for future studies.
Regarding glutamate levels, the enzyme abat (EC:2.6.1.19), which also catalyzes the conversion of α-ketoglutarate into glutamate, is downregulated during astrocyte aging. The reaction catalyzed by this enzyme involves the degradation of ɣ-aminobutyric acid, or GABA, the main inhibitory neurotransmitter.
As a whole, glutamate synthesized by got1, got2, and abat decreases during both neuron and astrocyte aging. This has a possible detrimental effect on neurotransmission and coupled with the downregulation of the expression of Na/K-ATPase pumps in the aging neuron, provides valuable future horizons for elucidating the molecular mechanisms of brain aging.
Altered one-carbon pool for tetrahydrofolate (THF) synthesis
The final group we observed was defined by KEGG pathways “One carbon pool by folate” (KEGG map00670) and “Glycine, serine and threonine metabolism” (KEGG map00260). These pathways are of interest during brain aging because THF is the precursor for S-adenosylmethionine (SAM), the substrate required for methylation, including DNA and histone methylation [51–53] linking central energy metabolism with epigenetic modifications. Overall methylation levels decrease during aging [54–56] and is one of the epigenetic clocks, which can be modified by metabolic challenges such as caloric restriction [57]. Furthermore, glycine and serine degradation also feed the one-carbon pool [58].
In the neuron, we observed the following changes in one carbon pool associated enzymes (Figure 5F and 5F’). During neurotransmission, shmt2 (EC:2.1.2.1), an enzyme that synthesizes 5,10-Methylene-THF (KEGG map00260), mthfd1l (EC: 6.3.4.3) and mthfd2 (EC: 3.5.4.9) were all upregulated. The enzymes encoded by mthd1l and mthfd2 feed the THF pool (KEGG map00670). However, in the aged neuron, alas1 was downregulated and this change is associated with decreased THF levels [58]. These changes suggest that during neurotransmission, availability of THF increases, while during aging it decreases, in line with the overall decrease in DNA methylation reported during aging [54–56, 59]. Furthermore, THF is required for glutathione synthesis (GSH), required to quench the high reactive oxygen species levels produced from oxidative phosphorylation. Therefore, high THF levels can be associated with the oxidative metabolism during neurotransmission.
In the astrocyte, we observed differential expression of gcat and gldc. The Gcat enzyme (EC:2.3.1.29) increases glycine levels from threonine degradation, and therefore feeds the one carbon and THF pool was upregulated during aging. In contrast, Gldc (EC:1.4.4.2) catalyzes glycine degradation and therefore consumes THF, was downregulated. These results suggest an overall increase in the one carbon pool during astrocyte aging, which also suggest an increase in THF and a subsequent increase in availability for GSH synthesis. This agrees with an oxidative metabolic state that is also in line with the aerobic glycolysis to oxidative phosphorylation switch we propose for the aged astrocyte.
Pathways and genes previously associated with brain aging
The set of differential hub genes highlighted in Figures 5 and 6 had been previously associated with metabolic pathways that are related to neurotransmission, e.g., glutamate metabolism and Na/K-ATPase pumps, or are related to brain aging. Among these, we found: (1) Glycolysis and oxidative phosphorylation [1], which, given their differential expression during aging, are associated with metabolic dysregulation; (2) Ketone body metabolism, associated with caloric restriction and other dietary interventions [17–19]; (3) Branched-chain amino acid degradation, described to play a role in metabolic health and aging [44–46]; and (4) The one carbon pool, which participates in glutathione synthesis (required during neurotransmission and aging) as well as in SAM synthesis (the sole DNA and histone methylation substrate), related with epigenetic changes that occur during aging [54–56]. However, out of a total of 115 DHG, only 6 had been annotated in a functional annotation database as associated with aging-related terms. These included: (1) Superoxide dismutases sod1/2/3, which play a role in oxidative stress control; (2) The glial glutamate transporter slc1a2; (3) abat, which catalyzes the conversion of GABA and α-ketoglutarate into L-glutamate and succinate semialdehyde; and (4) dld, which, as mentioned previously, encodes for a subunit of the branched-chain amino acid, pyruvate, and α-ketoglutarate dehydrogenase complexes, and was identified as a neuron optimal gene, and a central gene for both the neuron and the astrocyte.
A lower Dld enzymatic activity has been observed in Alzheimer’s disease, mainly associated with the α-ketoglutarate complex, which converts α-ketoglutarate into succinyl-CoA and NADH in the TCA cycle [60, 61]. In physiological brain aging, Yan and collaborators reported that mitochondrial Dld expression and activity (in mitochondria isolated from whole rat brains) increases in the progression into adulthood, with no further changes from 5 to 30 months old [62]. However, during caloric restriction, Dld levels are higher in the hippocampus of rats subjected to caloric restriction [63]. Given that our results show that dld expression is lower in aged astrocytes and neurons, and the beneficial anti-aging effects of caloric restriction, we propose that restoring dld expression is an interesting target to further address its role in brain aging. Intriguingly, Dld has been reported to have a moonlighting proteolytic activity [64], which was more recently demonstrated to degrade the NF-κB inhibitor IκBε in a context associated with Parkinson’s disease [65]. Taken together, the lower dld expression in aged astrocytes and neurons, the decrease in Dld enzymatic activity in Alzheimer’s disease, its proteolytic function in Parkinson’s disease, and that its levels are partially restored during caloric restriction, suggest a critical role for Dld in the neuron-astrocyte metabolic network. From a geroscience standpoint, these results also propose Dld as an aging-associated change that could increase the risk for neurodegenerative disease. This supports that the method presented here allows the identification of strong candidate genes for future preclinical studies on brain aging and neurodegenerative disease. Furthermore, differential hub genes involved in aging-associated metabolic processes that have not been studied in brain aging represent a set of robust candidates for future studies.
Labor division between the neuron and astrocyte
Differential hub gene expression in the aged astrocyte further reinforces the notion of division of labor between the neuron and astrocyte in the metabolic network shown by both flux balance analysis and centrality analysis. The regulation of biological processes associated with DHG suggests that the aged astrocyte fails to perform its part in this division of labor, which is mainly providing lactate to the neuron and recycling glutamate and glutamine. Instead, the astrocyte switches into a selfish phenotype, where energy expenditure reallocates to this cell during brain aging. Taken together, differential hub gene regulation in both cell types strongly supports neuronal metabolic deficit, which could contribute to the cognitive deficit observed in the brain during aging.
Conclusions
The work reported here integrated two network-based approaches combined with bioinformatics analyses of transcriptomics data, through which we identified differential hub genes. These constitute a selection of genes that play an important role in the neuron-astrocyte metabolic network in terms of metabolite flux, intrinsic network structure, and are also regulated during neurotransmission and/or brain aging. Our findings suggest that the astrocyte undergoes a metabolic switch from aerobic glycolysis to oxidative metabolism, with a concomitant upregulation of THF precursor synthesis required for glutathione synthesis, to control the increased oxidative stress caused by this metabolic switch. Additionally, differential hub genes in the neuron suggest substantial metabolic impairment and downregulation of genes required for synaptic transmission.
The proposed integrative computational analysis is a versatile approach that can be applied to other biological questions, ranging from brain function in neurodevelopmental disorders to neurodegenerative diseases. In fact, available metabolic network models for other cell-types and tissues are available [66], for which the applicability is not limited to the brain. However, it is important to note that the method does have limitations. First, enzyme gene expression changes may not correlate with metabolite abundance, given the different levels of regulation of metabolic enzyme expression, such as negative feedback from metabolite levels and/or post-translational modifications. Second, high-throughput databases like the transcriptomics data used here will have an intrinsic heterogeneity, as they were generated by different research groups under different conditions. For example, the transcriptomics neurotransmission database used here [12] was obtained from a mixed culture of primary rat postnatal astrocytes with primary mouse embryonic neurons. This allowed obtaining cell-type specific data using bioinformatics analyses to separate reads corresponding to each species. Instead, the transcriptomics aging database [25] used brain samples from adult young and aged mice and obtained cell-type specific gene expression data by performing single-cell RNA-sequencing. Each approach was appropriate for the question the study was addressing. On the one hand, obtaining primary neurons from adult brains is a technically difficult procedure making the single-cell RNA-seq approach more appropriate for the aging study. On the other hand, for the neurotransmission study, in order to dissect transcriptomic changes specific to neurotransmission in neurons and astrocytes, that result from their interaction, a primary cell culture approach is required.
In spite of these limitations, our analysis identified a small group of genes that had been previously reported to play a role in brain aging, and a larger set of genes that participate in metabolic pathways associated in brain aging, but their specific role has not been addressed yet. We propose that this second group includes genes that have a high probability of mediating functional changes in the neuron-astrocyte metabolic network during brain aging and are candidate targets for future studies to prevent age-associated cognitive changes. We also highlight the value of using of integrative computational approaches, from the integration of network analyses to the integration of multi-omics databases as powerful tools to make an unbiased selection of pathways and genes of interest, saving valuable resources and time before starting experimental studies.
Methods
Modeling rationale
Our modeling approach tackled three aspects of the metabolic network conformed by neurons and astrocytes: (i) fast response to glutamatergic-neurotransmission workload [67], (ii) constant energy availability, i.e., invariant neuronal concentrations of cytosolic ATP and ADP [6], and (iii) long-term impairment upon aging [1]. We addressed the former aspect (i) by employing a genome-scale constraint-based model of the neuron-astrocyte metabolic network [24]; henceforth, the neuron-astrocyte model. To simulate the response to neurotransmission workload (i), we coupled and maximized three critical fluxes. These fluxes were those that are activated under glutamatergic neurotransmission and comprised neuronal ATP consumption derived from sodium removal, the ANLS, and the GGC. These three events were combined into a single flux denoted as the metabolic objective. The second aspect (ii), constant energy availability, was managed by subjecting the maximization of the metabolic objective to a steady-state constraint. This optimization-based procedure is known as FBA [68] and simulates an optimal metabolic response to neurotransmission. The essentials of FBA can be found in the Supplementary Theoretical Framework Section 1. The FBA allowed us to identify the optimal metabolic reactions, which were the reactions responsible for achieving a proper response to neurotransmission. Up to this point, our model encoded the stationary and optimal nature of the response to neurotransmission workload. Notably, metabolic states computed via FBA simulate events that are required to be reproducible for the cell [69]. Consistently, the brain must maintain a reproducible outcome, namely a proper response to energy workload, particularly in the face of aging. Even though part of aging-derived damage to brain metabolism may reside in fast stationary events, much of aging deterioration may relate to non-stationary long-term events. Network topology can encode wide-spectrum phenomena beyond steady-state and short timescales since it can encode the row space of the stoichiometric matrix (see Supplementary Theoretical Framework Section 4). Therefore, we identified a group of reactions that modulate the optimal metabolic response via topological effects to analyze aging-derived phenomena (theoretical details on the topology-based analysis are exposed in the Supplementary Theoretical Framework section 2). Since we employed centrality analysis [70], these modulators were called central metabolic reactions and, along with the optimal metabolic reactions, were used to identify aging-affected genes.
Neuron-astrocyte metabolic network
We used a genome-scale metabolic network reconstruction [71, 72] of the glutamatergic synapse comprising neurons and astrocytes [24]. This model is available at https://systemsbiology.ucsd.edu/InSilicoOrganisms/Brain.
Flux constraints
The theory behind constraint-based modeling and flux constraints is briefly presented in the Supplementary Theoretical Framework Sections 1.1 to 1.4. Neuronal flux constraints were derived from measurements taken in primary cultures reported by [6]. In this study, they used genetically encoded fluorescence resonance energy transfer (FRET) reporters [73, 74] along with ion-sensitive dyes to make real-time measurements of intracellular fluxes in neurons co-cultured with astrocytes. Baeza-Lehnert et al. [6] investigated how the neuronal ATP pool is maintained upon acute energy demands derived from the activity of the Na+/K+ ATPase pump induced by neuronal stimulation. They were able to estimate that sodium ions are extruded at a rate of 350 μM/s after neuronal stimulation. This sodium efflux rate corresponds to 116.6 μM/s of ATP consumption since 1 molecule of ATP is spent to export 3 ions of sodium. Also, Baeza-Lehnert et al. [5] estimated a housekeeping ATP demand of 38 μM/s. Adding the ATP spent during stimuli-associated sodium removal and the housekeeping demand, the same authors estimated a total ATP demand of 155 μM/s to re-establish ions gradient after neurotransmision. Additionally, they reported that at resting conditions neuronal glucose consumption was near 0.9 μM/s (in the presence of lactate) and that neuronal glycolytic rate increases 2.353 times after stimulation. This yields a glycolytic rate of 2.1177 μM/s in stimulated neurons. Overall, a stimulated neuron must cope with an ATP demand of 155 μM/s having a glycolytic rate of 2.1177 μM/s. Considering this glycolytic rate of 2.1177 μM/s and an energy yield of 31 molecules of ATP per glucose [6], the neuronal metabolism roughly produces 66 μM/s of ATP. The rest of the required ATP is achieved via lactate uptake, where lactate is supplied by astrocytes [75]. Such lactate production in astrocytes is associated with an astrocytic glycolic flux that is triggered under neuronal stimulation [26]. We used Flux Balance Analysis (FBA) to fit the astrocytic glycolytic flux to meet the neuronal ATP demand of 155 μM/s, and hence the sodium efflux of 350 μM/s. Astrocytic oxygen uptake was fixed at 0.01666 μM/s as reported in experiments where astrocytes are co-cultured with neurons that undergo stimulation [22]. Hence, we computed the optimal metabolic state using the latter astrocytic oxygen uptake rate along with the fitted astrocytic glycolytic rate, the neuronal glycolytic rate, and the housekeeping ATP demand as flux constraints.
Phenotypic phase plane analysis
In this analysis, a non-zero slope of the planes means that the optimal state depends on the given substrates [76]. We computed the phenotypic phase planes as follows:
here, ratesoxygen and ratesglucose are ranges of uptake rates which may be of any length. For details, the theoretical basics of the Flux Balance Analysis (FBA) are presented in the Supplementary Theoretical Framework Sections 1.2–1.4. The term z = cTv correspond to the metabolic objective of the FBA, which correspond to a linear combination of the fluxes v weighted by cT Specifically, the vector c has ones for the reactions shown in Figure 2A–2C, and zero for the rest. The stoichiometric matrix is denoted as S, and the equality constraint Sv = 0 corresponds to the mass-balance at steady state. The vectors Lb, Ub, boxygen, bglucose are bounds for the inequality constraints, respectively, these correspond to the full-length lower bounds, full-length upper bounds, lower bound for oxygen uptake rate, and lower bound for glucose uptake rate. The flux variables voxygen and vglucose correspond to oxygen uptake rate, and glucose uptake rate. The term Phpp is a tensor where the first two dimensions are of the corresponding lengths of the uptake ranges. The third dimension of the tensor Phpp is the number of fluxes in the model. From this tensor, we extracted the phenotypic phase planes shown in Figure 3D–3G.
Sensitivity analysis of the FBA
The sensitivity analysis was carried out over the solution of the FBA. This was done via calculation of what is known as the reduced cost vector [77, 78]. Each value of this vector indicates the amount by which the objective function changes upon an increase in a given flux. Thus, a reduced cost (δi) is the sensitivity of the objective function z with respect to a change in the ith flux value (vi).
Hence, a group of reactions able to perturb the optimal response may be identified. This group comprised of reactions having non-zero δi, being named as the sensitivity set. This group acts as an “interface” able to send fast perturbations to the optimal state.
Absolute optimality
We constructed an index of reaction importance in the context of the optimal metabolic response. This index was called Absolute Optimality (AO) and corresponds to the L2 norm of a vector composed by normalized flux and normalized sensitivity. We normalized flux and sensitivity in order to get standardized positive values. Such a normalization consisted in applying the Signed Pseudo Logarithm and rescaling the values to a zero-one range (scaler):
where z corresponds to any given flux or sensitivity. Then, the AO for the i reaction is:
where vi and δi corresponds to the flux and sensitivity of the i reaction, respectively.
Absolute centrality contribution
We carried out centrality analysis over the reaction projection of the stoichiometric matrix. The projection of the stoichiometric matrix is explained in detail in the Supplementary Theoretical Framework Section 2.2. It is worth noting that we did not only assess the centrality of the reactions involved in the sensitivity set. Rather, we determined how other nodes contribute to the centrality of the reactions involved in the sensitivity set. In this sense, we build from the concept of induced centrality, which views a node’s centrality as a measure of its contribution to another node’s centrality [79]. Formally, induced centrality accounts for the contribution of any node to the network's cohesiveness, where cohesiveness is defined as the aggregation of all nodes’ centrality scores. Induced centrality is computed by taking any centrality metric and aggregating all node scores (averaging them, for instance) to get a baseline measure of network cohesiveness, and then recalculating the aggregation without the node of interest. The difference between the baseline and the recalculation yields the induced centrality of the node of interest. We adapted this procedure to our ends. Instead of taking the centrality scores of all nodes, we only took sensitivity nodes and aggregated them via arithmetic mean. Also, instead of using the difference, we used the fold change between the baseline and the recalculation. Formally, our implementation of the node induced centrality defines the basal centrality of the sensitivity set as the mean of its node centralities:
Where C is any given centrality metric (eigenvector, closeness or information), and k is the numbers of members of the sensitivity set (s), while Ci is the centrality of a member of the sensitivity set. Next, we defined the perturbed centrality of the sensitivity set as the same mean but recalculated without node x,
here, ci – {x} refers to the recalculated centrality (centrality without x) of a member of sensitivity set, and C−x is the perturbed centrality. Then, we computed the induced centrality of node x as,
where centrality C can be eigenvector, closeness or information centrality. Ic(x) is the contribution of node x to the centrality of sensitivity set. Next, we normalized these data in order to get standardized positive values. To such an end, we employed Eq. 3. Induced centrality may be calculated by using centrality metrics that inform on the probability of getting an interaction (eigenvector) or calculated via centralities associated with the cost of such interaction (closeness or information centrality). Details on the concept of probability and cost-associated centralities can be found in the Supplementary Theoretical Section 3. Finally, we added the normalized cost-associated induced centralities into one quantity (CS (x)), and for consistency, normalized eigenvector induced-centrality was renamed as Ps(x).
here, subscripts s highlight the fact that induced centralities are defined regarding the sensitivity set. Finally, we computed the Absolute Centrality Contribution (ACC) as the L2 norm of a vector compose by the probability and the cost,
here, ACCs(x) encodes the contribution of node x to the availability of the sensitivity set (s) to have interactions with the rest of the network.
Pairwise correlations between nodal contributions
Correlations were calculated using Pearson’s coefficient via its implementation in the R language. Non-parametric coefficients were not necessary as each node was related only to four data points, each one corresponding a different Ic(x).
Hierarchical clustering
We used unsupervised hierarchical clustering to verify the opposite regulation found between neurons and astrocytes regarding their induced centralities. In this sense, we determined if the clusterization of nodal contributions resembles the two-cell structure (neuron-astrocyte) of the network. To this end, each reaction was regarded as a variable while its four induced centralities were regarded as samples. Hence, we computed the correlation matrix between reactions. If there is opposite regulation, the neuron-astrocyte structure should emerge from unsupervised clusterization of the correlation matrix. Hierarchical clustering was done by using euclidean norm to compute distances, and complete-linkage as agglomeration method. The PCA was applied according to standard implementation.
Genes associated with reactions
Each reaction (enzyme or transporter) is associated with some gene or group of genes. We manually annotated those genes by using the Virtual Metabolic Human website (https://www.vmh.life), which is a database based on information provided by constraint-based stoichiometric models of human metabolism [80].
Software, programming languages and libraries
Pathway visualizations shown in Figure 2A–2C were done using Escher (https://escher.github.io/). Phenotypic phase planes (PhPPs) were computed in the Python language using CobraPy (https://opencobra.github.io/cobrapy/). All statistical tests (wilcoxon) were carried out employing the ggplot2 built-in function stat_compare_means. All plots shown in Figures 3 and 4 were composed and rendered using the R language (https://www.r-project.org/) employing the library ggplot2 (https://ggplot2.tidyverse.org/), except for the network visualizations shown in Figure 3H, 3I (left-side), and 3J (left-side) which were made in Python using graph-tool (https://graph-tool.skewed.de/). Hierarchical clustering and heatmap were done using the R library ComplexHeatmap (https://jokergoo.github.io/ComplexHeatmap-reference/). In the same manner, PCA was carried out in R by using the library PCAtools (https://github.com/kevinblighe/PCAtools).
Code availability
The code to replicate the results presented in Figures 3 and 4 is available under prior solicitation to the corresponding author.
High-performance computing software and infrastructure
This research was partially supported by the supercomputing infrastructure of the National Laboratory for High Performance Computing (NLHPC) of Chile (ECM-02). Distributed computing was implemented by using Python package Ray (https://docs.ray.io/).
Extracting differential gene expression values from databases
Genes displaying differential abundance in response to glutamatergic neurotransmission were extracted from Supplementary Material reported in [12], using the following threshold reported for the astrocyte: fold-change (stimulated/basal) ≥1.3 or ≤0.77 and p-adjusted-SSS-value <0.05. Differentially abundant genes reported with or without TBOA treatment were merged into a single gene set. For the neuron, the same parameters were used for comparable results. The same procedure was used to extract genes showing differential abundance in response to brain aging in the astrocyte and neuron [25]. We used the threshold reported by the authors at: age coefficient threshold at 0.005 reported by authors as equivalent to a 10%-fold change and an FDR cutoff of 0.01. Given that the abovementioned studies used different RNA-seq approaches (Hasel and et al. [12] performed RNA-Seq of whole cell samples, while the Tabula Muris Consortium [25] used single-cell RNA-Seq), we used the fold-change reported by the authors as significant differential expression and separated each group into up or downregulated after glutamatergic neurotransmission or brain aging, in each cell type.
Mouse ortholog search for hub genes
Hub associated genes; denominated hub genes were originally linked to a human entrez gene ID (see above). We used the g:Profiler tool [81, 82] at https://biit.cs.ut.ee/gprofiler/gost, and used the g:Orth Orthology search tool to transform human entrez gene IDs into mouse orthologs. This tool delivers the official gene symbol and Ensembl mouse IDs. The resulting mouse ortholog set was cross referenced with the hub genes set, and the intersection resulted in the four differential hub gene sets: (1) Differential hub genes after glutamatergic neurotransmission in the: (a) Neuron, (b) Astrocyte; and (2) Differential hub genes regulated during brain aging (aged/young) in the: (a) Neuron, (b) Astrocyte.
KEGG pathway enrichment analysis
The ClueGO [83] plugin in Cytoscape [84] was used. Mus musculus (10090) was selected, and for each subset mentioned above (1a, 1b, 2a, 2b), a separate analysis was performed, using two clusters: one for upregulated genes and the second for downregulated genes. The KEGG database from 13 May 2021 was used, the minimum number of genes per cluster was set as 2, and all other parameters were left as default. Resulting enriched KEGG pathways were manually curated to exclude terms that were unrelated to the nervous systems (see Supplementary Figures 3–6 for uncurated files).
Gene-by-gene functional annotation and identification of aging-associated terms and genes
Functional annotation for all differential hub genes was obtained from the DAVID Bioinformatics Resources database [85]. The annotated differential hub gene list was then searched for the terms “aging”, “senescence” and “longevity”, and only terms including the words “aging” and “longevity” were found.
Supplementary Materials
Supplementary Theoretical Framework
Supplementary Figures
Supplementary Tables 1 and 9
Supplementary Tables 2-7
Supplementary Table 8
Abbreviations
α-KG: alpha-ketoglutarate; ACC: absolute centrality contribution; ANLS: astrocyte-neuron lactate shuttle; AO: absolute optimality; BCAA: branched-chain amino acid; DHG: differential hub genes; ETC: electron transport chain; FBA: flux balance analysis; FC: fold-change; FDR: false discovery rate; FRET: fluorescence resonance energy transfer; GGC: glutamate-glutamine cycle; GSH: glutathione; N-A: neuron-astrocyte; PDC: pyruvate dehydrogenase complex; PhPP: phenotypic phase planes; RNA-seq: RNA sequencing; SAM: S-adenosylmethionine; TCA: tricarboxylic acid; THF: tetrahydrofolate.
Author Contributions
A.A. and D.L.L. conceived, designed the study, performed data analysis and interpretation, prepared figures and wrote the manuscript. A.A. performed flux and centrality analyses. D.L.-L. performed transcriptomic and functional analyses. F.T. and M.K. contributed to the design and computation of centrality analysis. F.B.-L and L.F.B. contributed empirical metabolite measurements and their interpretation. C.G.-B. contributed to study conceptualization and data interpretation. All authors discussed the results and critically revised and edited the manuscript.
Acknowledgments
We thank Manuel I. Muñoz-González for developing and implementing the code for high-performance computing simulations. We thank the National Laboratory for High-Performance Computing (NLHPC) of Chile; Powered@NLHPC: This research was partially supported by the supercomputing infrastructure of the NLHPC (ECM-02). CG-B, MK and FT thank Cafe La Cata for bringing together physicists and biologists, encouraging the exchange of ideas and scientific collaboration.
Conflicts of Interest
The authors declare no conflicts of interest related to this study.
Funding
FONDAP Geroscience Center for Brain Health and Metabolism (15150012 to C.G.-B.); ANID FONDECYT Postdoctoral 3180180 (to D.L.-L.) and 3200726 (to A.A.); ANID FONDECYT Regular 1200029 (to L.F.B.); ANID FONDECYT Regular 1211902 and CEDENNA through Financiamiento Basal para Centros Científicos y Tecnológicos de Excelencia (grant AFB180001) (to F.T. and M.K.); and Beca Santander Movilidad Internacional Profesores (to F.T.).
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