| Literature DB >> 29375465 |
Jordan Maximillian Wilkins1, Eugenia Trushina1,2.
Abstract
Progress toward the development of efficacious therapies for Alzheimer's disease (AD) is halted by a lack of understanding early underlying pathological mechanisms. Systems biology encompasses several techniques including genomics, epigenomics, transcriptomics, proteomics, and metabolomics. Metabolomics is the newest omics platform that offers great potential for the diagnosis and prognosis of neurodegenerative diseases as an individual's metabolome reflects alterations in genetic, transcript, and protein profiles and influences from the environment. Advancements in the field of metabolomics have demonstrated the complexity of dynamic changes associated with AD progression underscoring challenges with the development of efficacious therapeutic interventions. Defining systems-level alterations in AD could provide insights into disease mechanisms, reveal sex-specific changes, advance the development of biomarker panels, and aid in monitoring therapeutic efficacy, which should advance individualized medicine. Since metabolic pathways are largely conserved between species, metabolomics could improve the translation of preclinical research conducted in animal models of AD into humans. A summary of recent developments in the application of metabolomics to advance the AD field is provided below.Entities:
Keywords: Alzheimer’s disease; animal models of Alzheimer’s disease; biomarkers; lipidomics; metabolomics
Year: 2018 PMID: 29375465 PMCID: PMC5770363 DOI: 10.3389/fneur.2017.00719
Source DB: PubMed Journal: Front Neurol ISSN: 1664-2295 Impact factor: 4.003
Figure 1Pathways involved in glucose, ketone body, and lipid metabolism. Glucose can be catabolized via glycolysis or the pentose phosphate pathway to produce intermediate metabolites that promote cell growth and function. Oxidation of glucose generates pyruvate, which is shuttled into mitochondria where it is converted to acetyl-CoA. Utilization of acetyl-CoA in the TCA cycle generates several intermediates that can be used for nucleotide, lipid, and amino acid synthesis. Electrons from the reducing equivalents NADH and FADH2 are used for oxidative phosphorylation (OXPHOS) to generate ATP. Healthy neurons are highly glycolytic catabolizing glucose via glycolysis and the TCA cycle in order to produce ATP through OXPHOS. Metabolic instability and decreased glucose utilization in AD patients can be detected by metabolomics approaches and fluorodeoxyglucose positron emission tomography. Impaired glycolytic processes in the brain can cause a shift toward the use of alternative fuel sources including ketone bodies and fatty acids. Processing of ketone bodies and fatty acids can produce acetyl-CoA for use in the TCA cycle and OXPHOS. αKG, alpha-ketoglutaric acid; βOHB, β-hydroxybutyric acid; CACT, carnitine acylcarnitine translocase; CPT1/CPT2, carnitine palmitoyltransferase 1/2; FACS, fatty acyl-CoA synthetase; FADH2, flavin adenine dinucleotide + hydrogen (H); FATP, fatty acid transport protein; GLUT, glucose transporter; IMM, inner mitochondrial membrane; MCT1/MCT2, monocarboxylate transporter 1/2; NADH, nicotinamide adenine dinucleotide (NAD) + hydrogen (H); OMM, outer mitochondrial membrane; TCA, tricarboxylic acid.
Analytical platforms utilized for metabolomics research.
| Nuclear magnetic resonance | Mass spectrometry | |
|---|---|---|
| Platform cost | High | Moderate |
| Analysis | Untargeted analysis Reproducibility is high | Targeted analysis Untargeted analysis Reproducibility is moderate |
| Sample preparation | Minimal preparation Can be directly applied to biofluids and intact tissues Sample recovery is possible | Moderate preparation Metabolite extraction is usually required GC-MS is volatile and typically requires derivatization LC-MS can form adducts |
| Sensitivity | Low detection range (micromolar) Requires protonated compounds Detects most organic molecules | High detection range (femtomolar) Detects most organic molecules Detects some inorganic molecules |
| Measurements | Detects all metabolites in a single measurement within detectable range Spectral analysis is demanding | Requires multiple techniques for a comprehensive analysis Has broader range of metabolite detection |
Application of metabolomics in samples from MCI and AD patients.
| Analytical platform | Samples | Findings | Reference |
|---|---|---|---|
| UPLC-HILIC-MS and ionKey/MS | Frontal cortex from 21 AD and 19 CN | Glycerophospholipid predominately altered in AD cortex ↑ NAA in AD cortex Mitochondrial dysfunction and aspartate metabolism correlated with dementia and AD pathology | ( |
| HILIC LC-MS and GC-MS | Cerebellum (little AD pathology), middle frontal gyrus (increased AD pathology), inferior temporal gyrus (increased tau pathology) from 14 AD, 14 CN, and 15 asymptomatic (display AD pathology without dementia) | Global brain UFA perturbations as well as region-specific alterations in AD patients Within middle frontal gyrus ↓ Linoleic acid, linolenic acid, and arachidonic acid (CN > ASYMAD > AD) and ↑ docosahexanoic acid (AD > ASYMAD > CN) may serve as regional threshold markers associated with Aβ plaques, tau tangles, and cognitive decline | ( |
| Biocrates Absolute IDQ p180 Kit measured using FIA-MS/MS and HPLC-MS/MS | CSF from 50 AD-like (↓ Aβ42, ↑ t-tau and p-tau) and 50 CN | Two SM, five glycerophospholipids, and one AC were significantly altered in CSF with pathological Aβ and tau levels ↑ SM (d18:1/18:0) was 76% specific and 66% sensitive as a biomarker | ( |
| UPLC-MS/MS | CSF from 6 AD and 6 CN | ↑ Gly, SAH, and ↓ SAM in AD CSF Established method for quantifying 17 metabolites of homocysteine-methionine metabolism | ( |
| Biocrates Absolute IDQ p180 Kit measured by UPLC-MS/MS | 732 fasting plasma samples from ADNI cohort | Bonferroni analysis correlated 13 metabolites with AD pathogenesis CSF Aβ42 metabolites: PC ae C36:2, PC ae 40:3, PC ae C42:4, PC ae C44:4, SM (OH) C14:1, SM C16:0 CSF t-tau/Aβ42 metabolites: C18, PC ae C36:2, SM C16:0, SM C20:2 Cognitive decline metabolites: C14:1, C16:1, SM C20:2, α-AAA, and Val Brain atrophy metabolites: C12, C16:1, PC ae C42:4, PC ae C44:4, α-AAA, and Val | ( |
| HRMS | Plasma from 37 CN, 16 MCI, and 19 individuals who converted from MCI to AD (MCI_AD) | Polyamine and saturated fatty acid biosynthesis was most altered with MCI vs CN MCI_AD vs CN showed differences in cholesterol and sphingolipid transport and saturated fatty acid biosynthesis MCI_AD vs MCI was most perturbed in cholesterol and sphingolipid transport and polyamine metabolism Polyamine metabolism and | ( |
| HPLC Lipidomics | Plasma from CN, MCI, and AD along with brain atrophy | 10 molecules significantly altered that predicted AD patients with 79% accuracy including six ChEs following the trend CN > MCI > AD PC36:5 decreased in AD plasma associated with hippocampal atrophy Ceramides were associated with hippocampal atrophy in younger (age < 75 years) group while PCs correlated at age > 75 years | ( |
| Biocrates Absolute IDQ p180 Kit by UPLC-MS | Plasma from 73 CN and 28 phenoconverters | Identified 24 plasma metabolites for the detection of preclinical AD with 95% accuracy 13 ↓ PCs (PC ae C34:0, PC ae C36:4, PC ae C40:6, PC ae C42:1, PC aa C32:0, PC aa C34:4, PC aa C36:6, PC aa C38:0, PC aa C38:3, PC aa C38:6, PC aa C40:1, PC aa C40:5, lysoPC a C18:2) 6 ↓ ACs (C3, C5, C5-OH (C3-DC-M), C9 C10:2, C18:1-OH) and 3 ↑ ACs (C10:1, C12:1, C16:2) Asn ADMA | ( |
| Biocrates Absolute IDQ p180 Kit measured by FIA-MS/MS and UPLC-MS | Plasma from 41 participants with superior memory, 109 CN, and 74 aMCI/AD | Developed a 12-metabolite panel for detection of superior memory valerylcarnitine, hydroxyhexadecadienylcarnitine, 3-hydroxypalmitoleylcarnitine, lysoPC a C28:1, lysoPC a C17:0, PC aa C38:5, Asp, Asn, Arg, histamine, citrulline, and nitrotyrosine | ( |
| 1H NMR | Saliva from 9 AD, 8 MCI, and 12 CN | Group separation achieved using logistic regression models Strongest predictive markers between MCI and CN were galactose, imidazole, and acetone with sensitivity and specificity of 90 and 94%, respectively | ( |
| Faster UPLC-MS | Saliva from 256 AD and 218 CN | PCA identified sphinganine-1-phosphate, ornithine, phenyllactic acid, inosine, 3-dehydrocarnitine, and hypoxanthine as significantly altered in AD saliva ↑ sphinganine-1-phosphate in AD patients was a major biomarker with sensitivity of 99.4% and specificity of 98.2% | ( |
1H NMR, proton nuclear magnetic resonance; AC, acylcarnitines where C denotes species; AD, Alzheimer’s disease; ADMA, asymmetric dimethylarginine; ADNI, Alzheimer’s Disease Neuroimaging Initiative; aMCI, amnestic MCI; Arg, arginine; ASYMAD, asymptomatic patients; Asn, asparagine; Asp, aspartate; ChE, cholesteryl ester; CN, control; CSF, cerebrospinal fluid; FIA-MS/MS, flow injection analysis-MS/MS; GC-MS, gas chromatography-MS; Gly, glycine; HILIC, hydrophilic interaction liquid chromatography; HPLC-MS/MS, high-performance liquid chromatography-MS/MS; HRMS, high-resolution MS; lysoPC, lysophosphatidylcholine; MCI, mild cognitive impairment; MS, mass spectrometry; MS/MS, tandem mass spectrometry; NAA, N-acetylaspartate; PC a, phosphatidylcholine acyl; PC aa, phosphatidylcholine diacyl; PC ae, phosphatidylcholine acyl-alkyl; PCA, principle component analysis; p-tau, phospho-tau; SAH, S-adenosylhomocysteine; SAM, S-adenosylmethionine; SM, sphingomyelin; t-tau, total-tau; UFA, unsaturated fatty acid; UPLC-MS/MS, ultra performance liquid chromatography-MS/MS; Val, valine; α-AAA, α-aminoadipic acid.
Common transgenic mouse models of AD utilized in metabolomics studies.
| Model | Transgene/mutation | Phenotype | Reference |
|---|---|---|---|
| APP (Tg2576) | APP: KM670/671NL (Swedish) | 5- and 14-fold increase of Aβ40 and Aβ42/43, respectively Aβ plaques by 11 months Gliosis identified near Aβ plaques by 10 months Cognitive impairment detected by 3–6 months | ( |
| PS1 (line 5.1) | PSEN1: M146L | 2- to 3-fold increase of mutant PSEN1 Elevated Aβ42/43 in the brain | ( |
| APP/PS1 | APP: KM670/671NL (Swedish) | Enhanced pathology compared to single transgene Aβ deposits by 6 months Gliosis by 6 months Cognitive impairment detected by 3 months | ( |
| 3xTg | APP: KM670/671NL (Swedish) | Age-associated pathology Aβ deposits by 6 months Tau pathology by 12 months Gliosis by 7 months Cognitive impairment detected by 4 months | ( |
| 5xFAD | APP: KM670/671NL (Swedish); I716V (Florida); V717I (London) | Early and aggressive presentation Aβ deposits by 1.5 months Gliosis by 2 months Cognitive impairment detected by 4 months | ( |
| APOE4 | APOE4 targeted replacement | APOE levels and plasma lipids in ε4 mice do not differ significantly to ε3 mice APOE4 mice have reduced VLDL clearance rate compared to APOE3 mice | ( |
| EFAD | 5xFAD with APOE (2, 3, or 4) knock-in | APOE4 mice (E4FAD) have increased plaques compared to E3FAD and E2FAD models Plaque formation between 4 and 6 months Gliosis at 6 months of age in all models Cognitive decline in E4FAD > E3/E2FAD | ( |
APOE, apolipoprotein E; APP, amyloid precursor protein; FAD, familial Alzheimer’s disease; MAPT, microtubule-associated protein tau; PS1/PSEN1, presenilin-1; VLDL, very low density lipoprotein.
Application of metabolomics in samples from AD mouse models.
| Analytical platform | Samples | Findings | Reference |
|---|---|---|---|
| DIMS | Brains and plasma from APP/PS1 and WT mice | APP/PS1 cortex and hippocampus had altered phospholipids and ACs APP/PS1 blood serum had significant alterations in eicosanoids (LB4, HEPE, and prostaglandins) Studies suggest altered lipid metabolism and energy utilization in APP/PS1 mice | ( |
| Absolute IDQ p180 Kit measured by UPLC-MS | Longitudinal collection (6–18 months) of APP/PS1 and WT mouse brains and plasma | 6 months: ↑ Arg in brain, ↓ Gln and Pro in plasma At 6–10 months: ↑ polyamines putrescine, spermidine, and spermine in brain and plasma 10–12 months: ↓ Thr 12 months: ↓ Gln and citrulline in plasma Potential temporal disturbance in amino acids and lipid metabolism | ( |
| Bile acid kit measured by LC-MS/MS | Plasma and whole brain tissue from 5 APP/PS1 at 6 and 12 months of age | Bile acids are perturbed in AD samples Human plasma had ↓ CA in AD patients APP/PS1 mouse plasma had ↑ CA at 6 months and ↓ hyodeoxycholic acid at 12 months Human neocortex had ↓ taurocholic acid APP/PS1 brain tissue: 6 months had ↑ lithocholic acid and ↓ TMCA; 12 months had ↓ TMCA, CA, β-muricholic acid, Ω-muricholic acid, taurocholic acid, and tauroursodeoxycholic acid | ( |
| UHPLC-MS | Urine from 30 APP/PS1 and CN mice at 2 months of age | Identification of potential early biomarkers in urine ↑ Spermic acid, 2,4-guanidinobutanoic acid, nicotinuric acid, Dimethylarginine, 1-methyladenosine, citric acid, 5′-deoxyadenosine, 1-(beta- Had greatest impact on glyoxylate and dicarboxylate metabolism | ( |
| Head-space GC-MS | Urine of 15 APP mice, 15 Tg2576 mice, 9 TgCRND8 mice, and 10 APPLd2 mice and NTG littermates | ↑ Phenylacetone across all three APP mice Linear discriminant analysis predicted groups with <16% error Predictive metabolites include 6-hydroxy-6-methyl-3-heptanone, 3-methylcyclopentanone, 4-methyl-6-hepten-3-one, 1-octen-3-ol, 2-sec-butyl-4,5-dihydrothiazole, acetophenone, phenylacetone, o-toluidine | ( |
| LC-MS and GC-MS | Cortex and plasma from symptomatic APP/PS1 mice | CAD-31 was found to be neuroprotective CAD-31 in plasma of APP/PS1 mice ↑ sphingolipids (glycosyl- CAD-31 in cortex of APP/PS1 mice ↑ monoacylglycerols (1-palmitoylglycerol, 2-palmitoylglycerol, 2-oleoylglycerol) CAD-31 in plasma of control mice ↓ long-chain fatty acids (margarate, pentadecanoate, 10-nonadoconoate), ↑ acylcarnitines (C0, C16, C18:1), ↑ ketone body 3-hydroxybutyrate, ↑ sphingolipids (glycosyl- CAD-31 in cortex of control mice was similar to plasma | ( |
| HPLC-QTOF-MS | Plasma from AD-induced mice ( | Breviscapine treatment was neuroprotective in Aβ injected mice Multivariate analysis of breviscapine treated Aβ mice identified indoleacrylic acid, C16 sphinganine, LPE (22:6), sulfolithocholic acid, LPC (16:0), PA (22:1/0:0), taurodeoxycholic acid, and PC (0:0/18:0) Phospholipid and cholesterol modulation may be neuroprotective | ( |
| IC-MS/MS | Primary astrocytes of 5xFAD mice from neocorticies of 1- to 3-day-old mice | Pantethine has anti-inflammatory properties AD astrocytes treated with pantethine had improved glycolytic and TCA cycle flux Pantethine treatment in AD astrocytes augmented glucose-6-phosphate, glycerol-3-phosphate, αKG, fumarate, and succinate levels | ( |
| EIS-MS/MS | BMDMs derived from Trem2−/− and WT mice | ↓ UDP-glucose, CDP-ethanolamine, glucose-6-phosphate, fructose bisphosphate, citrate, and succinate ↑ Indolacetate, glycerol-3-phosphate, malate, and fumarate TREM2 deficiency perturbs mTOR signaling and nucleotide, glycolytic, and TCA cycle metabolites Cyclone creatine supplement alleviates TREM2 deficiency in BMDMs | ( |
αKG, αketoglutarate; AD, Alzheimer’s disease; Arg, arginine; APP, amyloid precursor protein; BMDMs, bone marrow-derived macrophages; CA, cholic acid; CDP, cytidine diphosphate; CN, control; DIMS, direct infusion mass spectrometry; EIS-MS/MS, electrospray ionization; FAD, familial Alzheimer’s disease; Gln, glutamine; GC-MS, gas chromatography-MS; HEPE, hydroxy-eicosapentaenoic acid; HPLC-QTOF-MS, high-performance liquid chromatography quadropole-time-of-flight MS; IC-MS/MS, ion chromatography-MS/MS; LB4, leukotriene B4; LC-MS, liquid chromatography-MS; LPC, lysophosphatidylcholine; LPE, lysophosphatidylethanolamine; MS/MS, tandem mass spectrometry; mTOR, mammalian target of rapamycin; NTG, non-transgenic; PA, phosphatidic acid; PC, phosphatidylcholine; Pro, proline; PS1/PSEN1, presenilin-1; TCA, tricarboxylic acid; Thr, threonine; TMCA, tauromuricholic acid; TREM2, triggering receptor expressed on myeloid cells 2; UDP, uridine diphosphate; UHPLC, Ultra high-performance liquid chromatography; UPLC-MS/MS, ultra performance liquid chromatography-MS/MS; WT, wild type.