Tharusha Jayasena1, Anne Poljak2, Nady Braidy3, George Smythe4, Mark Raftery5, Mark Hill6, Henry Brodaty7, Julian Trollor8, Nicole Kochan8, Perminder Sachdev8. 1. Bioanalytical Mass Spectrometry Facility, MW Analytical Centre, University of New South Wales, Sydney, Australia; Centre for Healthy Brain Ageing, School of Psychiatry, University of New South Wales, Sydney, Australia. 2. Bioanalytical Mass Spectrometry Facility, MW Analytical Centre, University of New South Wales, Sydney, Australia; Centre for Healthy Brain Ageing, School of Psychiatry, University of New South Wales, Sydney, Australia; School of Medical Sciences, University of New South Wales, Sydney, Australia. 3. Centre for Healthy Brain Ageing, School of Psychiatry, University of New South Wales, Sydney, Australia. 4. Bioanalytical Mass Spectrometry Facility, MW Analytical Centre, University of New South Wales, Sydney, Australia; School of Medical Sciences, University of New South Wales, Sydney, Australia. 5. Bioanalytical Mass Spectrometry Facility, MW Analytical Centre, University of New South Wales, Sydney, Australia. 6. School of Medical Sciences, University of New South Wales, Sydney, Australia. 7. Centre for Healthy Brain Ageing, School of Psychiatry, University of New South Wales, Sydney, Australia; Dementia Collaborative Research Centre, University of New South Wales, Sydney, Australia. 8. Centre for Healthy Brain Ageing, School of Psychiatry, University of New South Wales, Sydney, Australia; Neuropsychiatric Institute, the Prince of Wales Hospital, Sydney, Australia.
Abstract
Alzheimer's disease (AD) is a neurodegenerative disorder associated with increased oxidative stress and neuroinflammation. Markers of increased protein, lipid and nucleic acid oxidation and reduced activities of antioxidant enzymes have been reported in AD plasma. Amyloid plaques in the AD brain elicit a range of reactive inflammatory responses including complement activation and acute phase reactions, which may also be reflected in plasma. Previous studies have shown that human AD plasma may be cytotoxic to cultured cells. We investigated the effect of pooled plasma (n = 20 each) from healthy controls, individuals with amnestic mild cognitive impairment (aMCI) and Alzheimer's disease (AD) on cultured microglial cells. AD plasma and was found to significantly decrease cell viability and increase glycolytic flux in microglia compared to plasma from healthy controls. This effect was prevented by the heat inactivation of complement. Proteomic methods and isobaric tags (iTRAQ) found the expression level of complement and other acute phase proteins to be altered in MCI and AD plasma and an upregulation of key enzymes involved in the glycolysis pathway in cells exposed to AD plasma. Altered expression levels of acute phase reactants in AD plasma may alter the energy metabolism of glia.
Alzheimer's disease (AD) is a neurodegenerative disorder associated with increased oxidative stress and neuroinflammation. Markers of increased protein, lipid and nucleic acid oxidation and reduced activities of antioxidant enzymes have been reported in AD plasma. Amyloid plaques in theAD brain elicit a range of reactive inflammatory responses including complement activation and acute phase reactions, which may also be reflected in plasma. Previous studies have shown that humanAD plasma may be cytotoxic to cultured cells. We investigated the effect of pooled plasma (n = 20 each) from healthy controls, individuals with amnestic mild cognitive impairment (aMCI) and Alzheimer's disease (AD) on cultured microglial cells. AD plasma and was found to significantly decrease cell viability and increase glycolytic flux in microglia compared to plasma from healthy controls. This effect was prevented by the heat inactivation of complement. Proteomic methods and isobaric tags (iTRAQ) found the expression level of complement and other acute phase proteins to be altered in MCI and AD plasma and an upregulation of key enzymes involved in the glycolysis pathway in cells exposed toAD plasma. Altered expression levels of acute phase reactants in AD plasma may alter theenergy metabolismof glia.
Alzheimer’s disease (AD) is a neurodegenerative disorder that results in the progressive and irreversible loss of cholinergic neurons in specific areas ofthe brain [1]. Amnestic Mild Cognitive Impairment (aMCI) is considered to be a pre-dementia stage ofAD [2], with a proportion of aMCI cases progressing toAD with time. AD is characterised by an abnormal accumulation of amyloid β (Aβ) and tau proteins, increased oxidative stress and redox metals in the brain all of which are associated with an immunological response [3]. Aβ primarily accumulates extracellularly and eventually leads tothe formation of amyloid plaques, the main pathological hallmark ofAD. The accumulation of Aβappears also appears to occur in synaptic mitochondria leading to impaired respiration and increased oxidative stress [4].Damage tothe blood-brain barrier is thought to occur in AD, and this may increase movement of proteins between the brain and the vasculature [5]. It is therefore possible that AD and its precursor, MCI, may be associated with the presence of specific biomarkers detectable in plasma and recent work has successfully used a panel of plasma biomarkers to predict disease severity and progression from MCItodementia [6]. There are a number of proposed plasma biomarkers for AD, some of which reflect increased protein, lipid and nucleic acid oxidation and reduced activities of antioxidant enzymes in theAD brain [7-13]. AD has been reported to be associated with reduced plasma levels ofvitamin A, C and E [9]. Isoprostanes, which arise from free-radical-mediated peroxidation ofpolyunsaturated fatty acids, are elevated in theAD brain, CSF and plasma [11]. 4-hydroxynonenal, another product oflipid peroxidation, is also increased in AD plasma [8].A variety of inflammatory markers are increased with the onset ofAD pathology, including cytokines and chemokines, coagulation factors and acute-phase reactive proteins as well as reactive astrocytes and activated microglial cells, the main cells involved in the neuroinflammation process [3,14]. Previous studies have shown that upregulation ofthe acute phase protein clusterin in plasma, is associated with prevalence, rate of progression, brain atrophy and disease severity in ADpatients [15,16]. Other studies however have found no difference and suggest against the idea that acute phase protein changes in the CNS can be detected in plasma [17,18]. Alternatively, AD may be associated with a more widespread immune dysregulation, detectable in plasma.Previous studies investigating the effects ofhumanAD plasma on cells in culture have found differential effects on protein expression and cell biology. One study aimed to determine if exposure to serum from ADpatients would affect markers for AD brain lesions [19], and found that 24 hour exposure toAD serum increased four molecular markers characteristic ofAD senile plaques and neurofibrillary tangles (NFTs) in rat hippocampal neurons [19]. These markers were Alz-50, beta-amyloid, MAP2 and ubiquitin [19]. This stimulation ofAD markers by human serum suggests that the genesis of both neuronal plaques and tangles may arise from exposure of susceptible neurons to toxic serum factors and/or failure to detoxify these factors. Another study found that antibodies in serum ofpatients with AD caused immunolysis of cholinergic nerve terminals from therat cerebral cortex, supporting the hypothesis that autoimmune mechanisms may operate in the pathogenesis ofAD [20].Other studies have shown that serum ofmultiple sclerosispatients causes demyelination in rat CNS explant cultures and also induces cytotoxicity in rat oligodendrocytes in culture [21,22]. Demyelination was present not only in multiple sclerosis sera but was also found in sera from patients with other neurological diseases and complement was shown to be a factor involved in the effect [23,24]. In yet another study, human serum from patients with septic shock was shown to induce apoptosis in human cardiac myocytes [25]. This work demonstrated the utility of examining effects of disease plasma on cell culture systems, to facilitate the study of both disease markers and disease mechanisms.Since previous studies indicate that AD plasma may contain oxidative stress markers as well as cytotoxic factors, we investigated the effect ofthe addition of pooled control, MCI and AD plasma from 20 individuals each on a microglial cell line. Cell viability, proliferation and mitochondrial function were investigated following 48 hour treatment with non heat-inactivated plasma and plasma in which complement proteins had been deactivated. We also tested the effect of commercially purchased complement factors alone and in combination on cultured glia. We then undertook proteomic analysis ofthe plasma from each group and iTRAQ quantitative proteomic analysis of cell extracts exposed to plasma from each group to investigate possible plasma protein alterations unique toMCI or AD, to detect any protein aberrations within the cells treated with the plasma and to correlate these finding to cell viability and mitochondrial function assays measured in vitro.
Materials and Methods
Subjects
Age matched healthy control (n = 20), amnestic mild cognitive impairment (aMCI, n = 20), and probable AD (n = 20) plasmas were pooled and used in both the cell culture and plasma proteomics experiments. ADpatients were recruited from the Memory Clinic ofthe Department of Old Age Psychiatry ofthe Prince of Wales Hospital and participants in a clinical drug trial ofdonepezil (Aricept). All met the NINCDS-ADRDA criteria [26] for probable AD. The aMCI subjects were recruited from the Memory and Ageing Study, a longitudinal study of community dwelling individuals aged 70–90 [27]. The diagnosis of aMCI was determined using the Petersen Criteria as follows [28]: (i) subjective complaint ofmemory impairment, (ii) objective impairment in memory (performance >1.5 SD below normal for age on a standardised memory test) (iii) essentially preserved general cognitive function (MMSE ≥ 24) (iv) intact functional activities as indicated by instrumental activities of daily living; and (v) not meeting DSM-IV criteria for dementia. Healthy control subjects had a normal performance for age on a range of neuropsychological tests and intact functional activities. Ethics committee approval was obtained from the University of New South Wales (UNSW) and the South Eastern Sydney Illawarra Area Health Service (SESIAHS) ethics committees and written informed consent was obtained from all participants.
Cell Culture
CHME-5 cells are a human microglial cell line obtained from embryonic fetal human microglia through transformation with SV-40 virus [29,30] and were a generous gift from Prof Gilles Guillemin (Macquarie University, Sydney, Australia). These cells express antigens present on adult human microglia, secrete pro-inflammatory cytokines upon activation, exhibit properties of primary human microglia and have been successfully used as a model of microglial activation by others [29,31]. Cells were maintained in RPMI1640 cell culture medium, supplemented with 10% heat inactivated foetal bovine serum, 2 mM l-glutamine, and 1% penicillin/streptomycin, at 37°C in a humidified atmosphere containing 95% air/5% CO2. Before experimentation, cells were seeded into 24 or 96 well culture plates to a density of approximately 1x104 or 2x103 cells respectively. Cells were left overnight and then supplemented with up to 20% (by volume) heat-inactivated and non heat-inactivated control, MCI or AD plasma for 48 hours. For the cell viability and iTRAQ proteomic analyses cells were washed to remove all plasma, and lysed in RIPA buffer (Thermo Fisher Scientific, IL, USA) followed by sonication. For the complement factor experiments cells were seeded into plates and treated with 1, 5 or 10 μg of each complement factor or the complement standard (in a total volume of 200μL cell culture media) and then incubated for 48 hours. These concentrations are within the physiological range of these proteins in plasma [32].
MTT Cell Proliferation Assay
In actively proliferating cells, an increase in 3-[4,5-dimethylthiazol-2-yl]-2,5-diphenyl tetrazolium bromide (MTT) conversion in cells relative to controls represents an increase in cellular proliferative activity. Conversely, in cells that are undergoing apoptosis, MTT conversion, and thus biological activity, decreases. Cell proliferation was analysed using established protocols [33,34].
NAD(H) Assay
Damaged cells show mitochondrial dysfunction, which results in decreased cellular nicotinamide adenine dinucleotide (NAD) levels. Intracellular NAD(H) concentration was quantified using thethiazolyl blue microcycling assay established by Bernofsky and Swan and adapted here for the 24 well plate format [35].
Lactate Dehydrogenase (LDH) Leakage
Cytoplasmic enzyme leakage has been shown to be a useful tool for measuring early cellular damage or impairment [12], and has also been used as a sign ofcytotoxicity [36,37]. LDH is released from cells due to loss of membrane integrity. Therefore LDH was measured in the cell culture medium as well as in cell homogenates as another measure of cell viability.
XF24 Microplate-Based Respirometry as a measure of mitochondrial function
To determine the effect ofhuman control, MCI and AD plasma on oxygen consumption rates (OCRs; an indicator of mitochondrial respiration) and extracellular acidification rates (ECARs; a measure of glycolytic flux) in the microglial cell line, the Seahorse XF24, extracellular flux analyzer (Seahorse Bioscience, North Billerica, MA, USA) was employed and assays performed as previously described [38-40]. The basal control ratio (BCR) and the uncoupling ratio (UCR) were determined as previously described [41]. Essentially, the BCR is a measure of how close the basal level of respiration is tothe maximum level of respiration. The closer this ratio is to 1, the greater the mitochondrial malfunction. The UCR is a measurement of mitochondrial functional integrity and measures the ratio of uncoupled to physiologically normal respiration levels. The greater the maximum level of respiration, the greater the mitochondrial functional integrity.
Fractionation of Plasma
Control, MCI and AD plasma from 20 subjects was pooled and fractionated by two methods. To fractionate it into its protein and metabolite fractions, a PD10 column separation method was used. The PD10 column was washed with MilliQ water before the addition of 500 μL of plasma. The flow-through was collected as 750 μL fractions topping the column with MilliQ water. In total 20 fractions were collected and the absorbances read at 280nm. For the proteomics analysis, fractionation into low and high abundant protein fractions was undertaken using an MARS-Hu6 column (Agilent Technologies, CA, USA) according tothe manufacturer’s instructions. The MARS-Hu6 column depletes the top 6 contaminating proteins (albumin, IgG, IgA, transferrin, haptoglobin and antitrypsin) from plasma. This eliminates the masking effect of highly abundant proteins so lower-abundant proteins can be more easily detected. The low abundance fraction produced was used for the proteomic analysis experiments.
Proteomics of MCI and AD plasma
A one dimensional SDS 4–12% NuPAGE (Thermo Fisher Scientific Inc, MA, USA) gel was run using the low abundance fraction from each ofthe three groups. The gel was colloidal coomassie stained [42], and the lanes uniformly cut into 7–8 bits using a gridcutter and mount from The Gel Company, CA, USA. The gel bits were trypsin digested and then analysed using mass spectrometry as outlined in detail in S1 Methods.Peak lists were generated by MassLynx (version 4.0 SP1, Micromass) using the Mass Measure program and submitted tothe database search program Mascot (version 2.2, Matrix Science, London, England). Search parameters were: Precursor and product ion tolerances ± 0.25 and 0.2 Da respectively; Met(O) and Cys-carboxyamidomethyl were specified as variable modification, enzyme specificity was trypsin, one missed cleavage was possible on the NCBInr database.Scaffold Q+ (version 4.3.4), Proteome Software, Portland, OR, USA) was used to identify any altered proteins between the groups. The Scaffold programme uses mass spectrometric data to identify protein changes in biological samples by collating Mascot data and using the ProteinProphet algorithm [43]. We compared the normalised total spectral count values from Scaffold [44] with the emPAI values from Mascot [45], which uses a different algorithm for spectral counting.
iTRAQ Proteomics of Cell Lysates Treated with Human Control, MCI and AD Plasma
Two biological replicates of cells treated with 10% (by volume) non-heat inactivated fetal bovine serum, human control, MCI or AD plasma were washed to remove all plasma/serum and then lysed using RIPA buffer and probe sonicated. Total protein concentrations were determined using theBicinchoninic acid (BCA) protein assay kit (Pierce, IL, USA). The total protein (120 μg) from each sample was reduced with 2 μl of 5mM tris-(2-carboxyethyl) phosphine (TCEP) for 60 min at 60°C followed by alkylation with 200 mM iodoacetamide (1 μL) for 10 min at room temperature. To remove any buffer components incompatible with mass spectrometry a buffer exchange was performed with 50 mM NaHCO3 using Microcon centrifugal filter devices with a 3,000 Da nominal molecular weight limit membrane (Millipore, MA, USA) to give a final protein concentration of 1 μg/μl.For tryptic digestion 100 μg total protein from each sample was incubated overnight at 37°C with 4 ug of trypsin. Samples were labelled using the 8-plex iTRAQ kit (Applied Biosystems, CA, USA). Each iTRAQ reporter label was mixed with a biological replicate of cell lysate sample, pH adjusted to basic (ca pH = 9) with 2 μl of 50 mM ofNa2CO3 and incubated for 2 hours. The reporter masses for the samples were labelled as follows: fetal bovine serum; 113 and 117, human control plasma; 114 and 118, humanMCI plasma; 115 and 119, humanAD plasma; 116 and 121.Sample clean-up was performed using a strong cation exchange cartridge (Applied Biosystems, CA, USA) and a syringe pump at a flow rate of 9.5 ml/hr, and using the manufacturer’s protocol. Sample was then passed through a C18 Peptide Macrotrap (Michrom Bioresources, CA, USA). The flow-through from the C18 step was passed through an Oasis cartridge (Waters, MA, USA) to maximise peptide recovery and the two eluants pooled and dried under vacuum, resuspended in 0.2% heptafluorobutyric acid and then analysed using mass spectrometry as outlined in detail in S1 Methods.Protein identification and quantification was performed using the MS/MS data (WIFF files) and the Paragon algorithm as implemented in Protein Pilot v4.0 software (Applied Biosystems, CA, USA) using the NCBInr database. Only proteins identified with a ProteinPilot unused score of ≥ 1.3 (greater than 95% confidence in sequence identity) were accepted as previously described [46,47]. The unused score is a ProteinPilot generated value for the level of confidence in protein sequence identification. As an approximate guide, ProteinPilot unused scores give the following percentage levels of confidence; score ≥1.3(≥95% confidence), score ≥2(≥99% confidence), score ≥3 (≥99.9% confidence) [46]. The only fixed modification used was iodoacetamide alkylation ofcysteine residues. Mass tolerances were set to 50ppm for the precursor and 0.2 Da for the fragment ions. Autobias correction was applied to correct for any systematic bias in total protein concentration during sample pooling. Both biological replicates for the three human plasma types (control, MCI and AD) were compared tothe fetal bovine serum control (iTRAQ reporter 117) and data exported to Microsoft Excel software (Microscoft, WA, USA).Protein interactions between dysregulated proteins were determined using the web-based bioinformatics tool STRING v9.1 (http://string-db.org). STRING has a database that collates information on protein-protein interactions and associations. It scores and weights connections and provides predicted interaction network maps from literature mining searches. The 27 proteins which were significantly deregulated in glia treated with AD plasma, but not deregulated in either control or MCI plasma treated glia were analysed in STRING v9.1. MCL clustering was used with the 2 clusters option picked and with the confidence view selected to display the strength of evidence for protein associations and analysis of enrichment was also performed.
Statistics
All cell viability values are presented as means ± SEM. Statistical comparisons were performed using two-tailed student t-tests assuming equal variance. Differences between treatment groups were considered statistically significant at the p < 0.05 level. Scaffold values are represented as normalised total spectral counts and p-values for significantly altered proteins were obtained using the ProteinProphet algorithm ofthe Scaffold Q+ software (Proteome Software, OR, USA). All iTRAQ values are presented as ratios of cells treated with human plasma to cells treated with fetal bovine serum control. Ratios and p-values for significantly altered proteins were obtained through the Paragon algorithm ofthe Protein Pilot v4.0 software (Applied Biosystems, CA, USA).
Results
Cell Proliferation
Cells treated with non heat-inactivated pooled control and AD plasma for 48 hours showed a significant decrease in cell proliferation in cells treated with AD plasma compared to controls (Table 1). The addition ofMCI plasma tothe cells also caused a similar drop in cell proliferation, though not reaching statistical significance (Table 1). Mild heat treatment at 56°C for 30 minutes is an established approach for inactivating complement proteins [48,49]. Such heat treatment prevented the effects ofMCI and AD plasma on cell proliferation (Table 1).
Table 1
Cell viability as measured by MTT absorbance (abs) at 570nm, LDH release and intracellular NAD levels of microglial cells after 48 hour incubation in pooled, non heat inactivated and heat inactivated MCI and AD plasma.
Non Heat Inactivated Plasma
Heat Inactivated Plasma
Control
Control
Control
MCI
MCI
MCI
AD
AD
AD
Control
Control
MCI
MCI
AD
AD
MTT abs
NAD (ng)
LDH Activity (U/L)
MTT abs
NAD (ng)
LDH Activity (U/L)
MTT abs
NAD (ng)
LDH Activity (U/L)
MTT abs
NAD (ng)
MTT abs
NAD (ng)
MTT abs
NAD (ng)
5% plasma
Mean
0.21
10.71
0.23
10.84
0.14
10.3
SEM
0.05
3.84
0.05
1.26
0.03*
1.82
10% plasma
Mean
0.13
3.61
Media 3.35 Lysate 11.4
0.09
2.35
Media 2.7 Lysate 13.06
0.04
0.89
Media 6.09 Lysate 7.76
0.13
0.11
0.11
SEM
0.03
1.25
Media 0.36 Lysate 1.19
0.02
0.85
Media 0.3 Lysate 1.22
0.01**
1.3*
Media 1.05*Lysate 1.0
0.03
0.04
0.02
20% plasma
Mean
0.06
0.79
0.06
0.56
0.03
0
14.02
12.3
12.1
SEM
0.01
0.14
0.004
0.07
0.004**
0**
1.15
0.60
0.65
* p ≤ 0.05 vs Control,
** p ≤ 0.01 vs Control
Cell viability was determined by measurement of cell proliferation, intracellular NAD levels and LDH activity in cell culture media and cell lysate homogenates. n = 9 (nine replicates) for cell proliferation measurements, n = 6 (six replicates) for NAD concentration and LDH activity. Plasma used for the measurements were obtained from the pooled plasma of 20 patients from each of the three groups (Control, MCI and AD) investigated. Three concentration levels of plasma were tested: 5%, 10% and 20% plasma as a percentage of total media volume.
* p ≤ 0.05 vs Control,** p ≤ 0.01 vs ControlCell viability was determined by measurement of cell proliferation, intracellular NAD levels and LDH activity in cell culture media and cell lysate homogenates. n = 9 (nine replicates) for cell proliferation measurements, n = 6 (six replicates) for NAD concentration and LDH activity. Plasma used for the measurements were obtained from the pooled plasma of 20 patients from each ofthe three groups (Control, MCI and AD) investigated. Three concentration levels of plasma were tested: 5%, 10% and 20% plasma as a percentage of total media volume.To determine whether the effect on cell proliferation was exclusively due tothe protein component or to both the protein and low molecular weight components of plasma we separated proteins and metabolites. Plasma was fractionated using a PD10 column into its protein and metabolite portions to determine which portion ofthe plasma was causing the cytotoxic effect (Fig. 1). Addition of these two fractions tothe cells showed that it was exclusively the protein portion which was initiating the reduction in cell proliferation (Fig. 1). Protein fractions of both MCI and AD plasma were found to significantly reduce cell proliferation (Fig. 1). The metabolite fraction ofthe plasma had no significant effect on microglial proliferation (Fig. 1).
Fig 1
Fractionation of non heat inactivated control plasma into protein and metabolite fractions and the effects of plasma treatment on cell proliferation.
Panel A: Fractionation of non heat inactivated control plasma into protein and metabolite fractions using PD10 column Panel B: Effect of these fractions on cell proliferation. Three replicates were performed. Plasma used for the measurements were obtained from the pooled plasma of 20 patients from each of the three groups (Control, MCI and AD). * p ≤ 0.01 vs Control, ** p ≤ 0.001 vs Control. Panel C: Images of microglia after 48 hour incubation with non heat inactivated 20% control plasma (left) and 20% AD plasma (right), showing increased toxicity and reduced cell proliferation in the AD plasma treated cells.
Fractionation of non heat inactivated control plasma into protein and metabolite fractions and the effects of plasma treatment on cell proliferation.
Panel A: Fractionation of non heat inactivated control plasma into protein and metabolite fractions using PD10 column Panel B: Effect of these fractions on cell proliferation. Three replicates were performed. Plasma used for the measurements were obtained from the pooled plasma of 20 patients from each ofthe three groups (Control, MCI and AD). * p ≤ 0.01 vs Control, ** p ≤ 0.001 vs Control. Panel C: Images of microglia after 48 hour incubation with non heat inactivated 20% control plasma (left) and 20% AD plasma (right), showing increased toxicity and reduced cell proliferation in theAD plasma treated cells.Treatment ofthe cells with complement factors C1q, C1 inhibitor, C4, C5 and C9 effected a downward trend in cell proliferation with increasing concentration, but did not reach significance (Table 2). In combination, the factors were found to reduce cell proliferation at the highest concentration tested. Thehuman complement standard which contains the factors C1q, C2, C3, C4, C5, C6, C7, C8, C9 and factor B was found to be the most potent at preventing cell proliferation (Table 2).
Table 2
Cell viability of microglial cells after 48 hour incubation with human complement components (C1q, C1 inhibitor, C4, C5 and C9), both individually and in combination with each other; and a human complement standard containing complement components C1q, C2, C3, C4, C5, C6, C7, C8, C9 and factor B.
Cell Proliferation (abs at 570nm)
Complement C1q
Complement C1 inhibitor
Complement C4
Complement C5
Complement C9
C1q + C4
C5 + C9
C1q, C1inhib, C4, C5 + C9
Complement Standard
Complement Standard NAD concentration (ng)
Control (0μg/μl)
Average
0.317
0.609
0.454
0.375
0.324
0.384
0.356
0.378
0.511
0.114
SEM
0.019
0.07
0.025
0.031
0.014
0.025
0.018
0.013
0.004
0.003
0.005μg/μl
Average
0.3
0.593
0.458
0.382
0.333
0.377
0.371
0.377
0.426
0.104
SEM
0.042
0.02
0.019
0.028
0.0098
0.019
0.025
0.019
0.031
0.010
0.025μg/μl
Average
0.31
0.571
0.461
0.364
0.336
0.366
0.359
0.331*
0.210**
0.094
SEM
0.018
0.03
0.02
0.025
0.0096
0.025
0.021
0.015
0.036
0.063
0.05μg/μl
Average
0.267
0.49
0.435
0.355
0.344
0.289*
0.265*
0.292*
0.129**
0.063*
SEM
0.0075
0.05
0.019
0.03
0.021
0.027
0.013
0.024
0.018
0.0024
Cell viability was determined by MTT assay of cell proliferation and intracellular NAD levels (for complement standard samples). Replicates included n = 6 for cell proliferation measurements and, n = 3 for NAD concentrations.
* p ≤ 0.05 vs Control,
** p ≤ 0.01 vs Control
Cell viability was determined by MTT assay of cell proliferation and intracellular NAD levels (for complement standard samples). Replicates included n = 6 for cell proliferation measurements and, n = 3 for NAD concentrations.* p ≤ 0.05 vs Control,** p ≤ 0.01 vs Control
NAD levels and LDH Leakage
Incubation with non heat inactivated plasma caused a significant drop in cell viability as reflected in lower NAD levels, for cells treated with both MCI and AD plasma, compared to controls (Table 1). This result was again prevented by plasma heat inactivation (Table 1). The addition ofhuman complement standard containing C1q, C2, C3, C4, C5, C6, C7, C8, C9 and factor B was found to significantly reduce NAD levels in the microglia (Table 2).A significant increase in LDH leakage into the cell culture medium was seen in cells incubated with non heat inactivated AD plasma (Table 1). A concurrent decrease was seen in the amount of intracellular LDH in these same cells (Table 1).
Mitochondrial Function and Cellular Bioenergetics
To determine whether mitochondrial bioenergetic mechanisms are associated with AD pathogenesis, we assessed mitochondrial function in glial cells treated with human plasma using the Seahorse XF24 (Seahorse Bioscience, MA, USA). We observed a significant decrease in OCRs and an increase in ECAR for cells treated with AD plasma and MCI plasma effected similar trends though did not achieve statistical significance (Fig. 2). We also observed a significant increase in the BCR and a decline in the UCR in microglial cells after 48 hour incubation with AD plasma (Fig. 2), consistent with impaired mitochondrial function and increased shift towards glycolysis.
Fig 2
Effects of human plasma on cellular bioenergetics in a microglial cell line.
(A) Effect of human plasma on oxygen consumption rates (OCR) in a microglial cell line for 48 hours. *p<0.05 compared to non-treated cells (control); (n = 4 for each treatment group). (B) Effect of human plasma on extracellular acidification rates (ECAR) in a microglial cell line for 48 hours. *p<0.05 compared to non-treated cells (control); (n = 4 for each treatment group). (C) Effect of human plasma on the basal control ratio (BCR) in a microglial cell line for 48 hours. *p<0.05 compared to non-treated cells (control); (n = 4 for each treatment group). (D) Effect of human plasma on the uncoupling ratio (UCR) in a microglial cell line for 48 hours. *p<0.05 compared to non-treated cells (control); (n = 4 for each treatment group).
Effects of human plasma on cellular bioenergetics in a microglial cell line.
(A) Effect ofhuman plasma on oxygen consumption rates (OCR) in a microglial cell line for 48 hours. *p<0.05 compared to non-treated cells (control); (n = 4 for each treatment group). (B) Effect ofhuman plasma on extracellular acidification rates (ECAR) in a microglial cell line for 48 hours. *p<0.05 compared to non-treated cells (control); (n = 4 for each treatment group). (C) Effect ofhuman plasma on the basal control ratio (BCR) in a microglial cell line for 48 hours. *p<0.05 compared to non-treated cells (control); (n = 4 for each treatment group). (D) Effect ofhuman plasma on the uncoupling ratio (UCR) in a microglial cell line for 48 hours. *p<0.05 compared to non-treated cells (control); (n = 4 for each treatment group).
Plasma fractionation and 1D gel electrophoresis
Fractionation using the MARS-Hu6 column provided a baseline separation of low and high abundant proteins (Fig. 3). These fractions were run on a 1D SDS NuPage gel and proteins were shown to be effectively separated with a substantial depletion of high abundant proteins, revealing many lower abundant protein bands in the low abundant fraction (Fig. 3).
Fig 3
Chromatogram of fractionation using Hu6 column and 1D SDS/PAGE of these fractions.
Low abundant proteins are eluted first (first peak on chromatogram) and high abundant proteins are eluted after (second peak). Gel shows significant depletion of high abundant proteins in the low abundant fractions. Loading was 50 μg/lane. First and last lanes contained molecular weight markers. Each fraction was run in duplicate.
Chromatogram of fractionation using Hu6 column and 1D SDS/PAGE of these fractions.
Low abundant proteins are eluted first (first peak on chromatogram) and high abundant proteins are eluted after (second peak). Gel shows significant depletion of high abundant proteins in the low abundant fractions. Loading was 50 μg/lane. First and last lanes contained molecular weight markers. Each fraction was run in duplicate.Following proteomic analysis of pooled control, MCI and AD plasma, normalised total spectral counts using Scaffold software and emPAI values from Mascot showed complement component 2, fibronectin and fibrinogento be significantly increased in theAD groups compared tothe control group (Table 3). Thrombin was decreased in theMCI and ADpatients compared to controls (Table 3). A full list of proteins identified and normalised spectral counts in human control, MCI and AD plasma can be found in S1 Table and the peptide false discovery rate analysis can be found in S1 Fig.
Table 3
Average normalised spectral counts (obtained from Scaffold) and emPAI values (obtained from Mascot) of significantly deregulated proteins identified in pooled plasma samples between the Control, MCI and AD groups.
Complement component 2 (gi|14550407)
Complement component 1 inhibitor (gi|114642584)
Complement component 4 binding protein (gi|4502503)
Fibronectin (gi|109658664)
Thrombin (gi|119588383)
Fibrinogen (gi|70906435)
Alpha-1B-glycoprotein (gi|46577680)
C
MCI
AD
C
MCI
AD
C
MCI
AD
C
MCI
AD
C
MCI
AD
C
MCI
AD
C
MCI
AD
Normalised Spectral Count
Average
0
0.82
2.77
9.98
7.45
11.30
4.18
3.38
4.51
18.9
15.1
32.2
10.34
5.57
6.29
39.78
35.93
43.19
6.08
8.32
7.64
S.E.M
0
0.50
0.29
1.0
0.46
2.10
0.51
0.46
0.83
0.18
2.55
2.29
1.18
0.50
0.88
5.58
2.42
7.25
0.49
0.70
1.01
p-value
0.015#
0.000074**
p = 0.06 vs AD
0.0025##
0.0012**
0.098*
0.033*
0.040*
emPAI value
Average
0.08
0.06
0.145
0.74
0.62
0.95
0.35
0.18
0.26
0.39
0.30
0.64
0.83
0.46
0.48
5.40
4.74
7.87
0.78
0.86
0.75
S.E.M
0.010
0.020
0.014
0.090
0.06
0.13
0.027
0.037
0.029
0.068
0.065
0.033
0.068
0.055
0.033
0.48
0.62
0.71
0.10
0.032
0.029
p-value
0.014#
0.025*
p = 0.06 vs AD
0.013*
0.0071##
0.0018**
0.0057*
0.0034*
0.016#
0.036*
0.050#
Values are averages from 4 replicates. Plasma used was obtained from the pooled plasma of 20 patients from each of the three groups (Control, MCI and AD) with depletion of high abundance proteins.
* p ≤ 0.05 vs Control
** p ≤ 0.01 vs Control
# p ≤ 0.05 vs AD
## p ≤ 0.01 vs AD
Values are averages from 4 replicates. Plasma used was obtained from the pooled plasma of 20 patients from each ofthe three groups (Control, MCI and AD) with depletion of high abundance proteins.* p ≤ 0.05 vs Control** p ≤ 0.01 vs Control# p ≤ 0.05 vs AD## p ≤ 0.01 vs AD
iTRAQ proteomic analysis of cell lysates treated with Control, MCI and AD plasma
Differential protein expression in glial cells treated with fetal bovine serum (control) or human plasma from control, MCI and AD subjects were analysed with two biological replicates performed using an 8-plex iTRAQ experimental design. In total, 791 proteins were identified with 95% or greater confidence in correct protein sequence identification and 750 proteins with a false discovery rate of 5% (see S2 Table for full summary of identified proteins and S3 Table for full false discovery rate analysis). Fourty-one proteins were found altered between theMCI and AD groups of cellular lysates (Table 4). The highest numbers of dysregulated proteins were found in the cells treated with AD plasma (Table 4, 27 proteins highlighted in bold). Interestingly a significant number of proteins involved in the glycolysis cycle were shown to be upregulated in this group, namely glyceraldehyde-3-phosphate dehydrogenase, phosphoglycerate kinase, enolase, aldolase and pyruvate kinase. These enzymes catalyse five ofthe ten enzyme reactions ofthe pathway and their functions are shown in Fig. 4. Transketolase was also shown to be significantly elevated in both theAD plasma treated cell sample replicates. This enzyme is part ofthepentose phosphate pathway and connects this pathway to glycolysis. Analysis of protein interactions ofthe 27 dysregulated glial proteins treated with AD plasma using the online STRING v9.1 tool confirmed a significant enrichment of proteins involved in glucose metabolism (Fig. 5 and Table 5).
Table 4
Dysregulated proteins in glial cells treated with human control, MCI and AD plasma compared to FBS (non human serum control) following iTRAQ analysis.
Replicate 1
Replicate 2
Replicate 1
Replicate 2
Replicate 1
Replicate 2
Protein Function
Accession #
Name
Ctrl:FBS
PVal
Ctrl:FBS
PVal
MCI:FBS
PVal
MCI:FBS
PVal
AD:FBS
PVal
AD:FBS
PVal
Glycolysis
gi|7669492
glyceraldehyde-3-phosphate dehydrogenase
0.97
0.524
1.02
0.603
0.98
0.676
0.98
0.655
1.27
3.4E-5*
1.32
1.0E-4*
gi|4505763
phosphoglycerate kinase 1
1.07
0.175
1.05
0.322
1.05
0.279
1.06
0.207
1.2
7.0E-5*
1.31
1.1E-4*
gi|4503571
alpha-enolase isoform 1
0.93
0.12
0.98
0.753
0.99
0.719
0.98
0.553
1.19
2.7E-4*
1.22
1.0E-4*
gi|342187211
fructose-bisphosphate aldolase A
0.99
0.829
1
0.989
1.02
0.836
1
0.991
1.2
0.004*
1.22
0.001*
gi|33286418
pyruvate kinase isozymes M1/M2
0.98
0.746
1.02
0.726
1.01
0.869
1.03
0.6
1.22
0.008*
1.22
0.002*
gi|4507521
transketolase isoform 1
0.98
0.686
1.01
0.881
1.04
0.323
0.99
0.749
1.13
0.022*
1.16
0.002*
Chaperone
gi|20070125
protein disulfide-isomerase precursor
0.98
0.566
0.96
0.352
0.93
0.057
1.01
0.821
0.93
0.026*
0.98
0.478
gi|153792590
heat shock protein HSP 90-alpha
1.03
0.679
1.05
0.601
1.06
0.512
1.06
0.473
1.3
0.036*
1.2
0.059
gi|66933005
calnexin precursor
1
0.942
0.98
0.7
0.94
0.315
0.93
0.149
0.92
0.266
0.88
0.010*
gi|5031973
protein disulfide-isomerase A6 precursor
0.97
0.429
0.98
0.662
0.94
0.134
1
0.952
0.96
0.546
0.91
0.019*
gi|21361657
protein disulfide-isomerase A3 precursor
0.96
0.427
0.98
0.653
0.9
0.013*
1
0.871
0.92
0.117
0.89
0.06
gi|16507237
78 kDa glucose-regulated protein precursor
0.99
0.806
0.97
0.729
0.92
0.038*
0.98
0.643
0.91
0.101
0.91
0.108
Cytoskeletal
gi|4505257
moesin
1.08
0.265
1.14
0.243
1.12
0.106
1.03
0.721
1.22
0.021*
1.2
0.028*
gi|21614499
ezrin
1.06
0.498
0.95
0.718
1.05
0.555
1.13
0.446
1.31
0.033*
0.9
0.712
gi|38176300
nestin
0.99
0.773
1
0.984
0.97
0.518
1.04
0.354
0.94
0.173
0.85
0.004*
gi|44680105
caldesmon isoform 1
0.91
0.154
0.97
0.773
0.9
0.174
0.94
0.478
0.87
0.085
0.86
0.027*
gi|19920317
cytoskeleton-associated protein 4
0.85
0.049*
0.77
0.012*
0.92
0.229
0.79
0.032*
0.74
1.0E-4*
0.77
0.019*
gi|62414289
vimentin
0.97
0.23
1
0.965
0.9
2.4E-4*
0.99
0.778
0.97
0.261
0.96
0.277
Proteolysis
gi|4506713
ubiquitin-40S ribosomal protein S27a
0.98
0.738
0.82
0.159
1.06
0.286
1.04
0.594
0.84
0.066
0.77
0.022*
gi|66346681
plasminogen activator inhibitor 1
1.04
0.587
0.99
0.922
1
0.999
0.93
0.476
0.97
0.612
0.79
0.023*
gi|54792069
small ubiquitin-related modifier 2
1.15
0.291
1.02
0.948
1.46
0.083
1.41
0.052
1.23
0.26
1.29
0.043*
gi|109637759
calpastatin isoform f
0.86
0.228
0.75
0.138
0.81
0.24
0.88
0.46
0.82
0.206
0.74
0.045*
Translation
gi|4503471
elongation factor 1-alpha 1
0.97
0.493
1.02
0.76
0.93
0.225
0.97
0.563
1.13
0.024*
1.24
0.014*
gi|17158044
40S ribosomal protein S6
0.95
0.62
0.54
0.063
0.83
0.091
0.7
0.172
0.74
0.041*
0.72
0.178
gi|15431288
60S ribosomal protein L10a
1.14
0.206
1.31
0.037*
1.19
0.098
1.27
0.048*
1.41
0.079
1.06
0.732
gi|214010226
40S ribosomal protein S24 isoform d
0.68
0.062
0.66
0.015*
0.75
0.011*
0.66
0.085
0.6
0.063
0.64
0.022*
gi|124494254
proliferation-associated protein 2G4
0.97
0.897
0.99
0.974
1.36
0.040*
1.22
0.194
1.24
0.276
1.15
0.146
Transcription
gi|4885379
histone H1.4
0.86
0.158
0.78
0.053
0.79
0.063
0.96
0.61
0.58
0.006*
0.79
0.349
gi|4885377
histone H1.3
1.04
0.538
1.21
0.386
0.94
0.438
1.18
0.369
0.75
0.012*
0.96
0.613
gi|4885381
histone H1.5
0.83
0.011*
0.77
0.057
0.79
0.006*
0.9
0.164
0.65
3.4E-4*
0.85
0.205
gi|4885375
histone H1.2
0.87
0.059
0.73
0.002*
0.74
0.002*
0.95
0.468
0.54
0.001*
0.76
0.102
Immune response
gi|4502101
annexin A1
1
0.999
0.99
0.848
0.93
0.161
1.02
0.794
0.87
0.023*
0.83
0.042*
gi|50845388
annexin A2 isoform 1
1.04
0.339
1.1
0.021*
0.89
8.0E-4*
0.99
0.647
0.95
0.192
0.93
0.1
gi|48255891
glucosidase 2 subunit beta
1.04
0.679
1.13
0.292
1.14
0.081
1.16
0.012*
1.01
0.914
1.05
0.584
Antioxidant
gi|32189392
peroxiredoxin-2 isoform a
1.34
0.096
1.2
0.268
1.28
0.15
1.16
0.454
1.19
0.026*
1.28
0.146
gi|4505591
peroxiredoxin-1
1.01
0.871
0.95
0.379
1.01
0.871
0.96
0.479
1.07
0.223
1.17
0.021*
Cell Growth Regulation
gi|4503057
alpha-crystallin B chain
1.04
0.429
1.02
0.718
1.04
0.45
0.99
0.931
1.24
0.002*
1.26
0.043*
gi|19743823
integrin beta-1 isoform 1A precursor
1.32
0.102
1.05
0.81
1.14
0.259
1.52
0.038*
1.35
0.069
1.08
0.829
Fatty Acid Metabolism
gi|4557585
fatty acid-binding protein, brain
0.85
0.22
0.84
0.176
0.8
0.228
0.87
0.353
0.9
0.247
0.83
0.049*
gi|4758504
3-hydroxyacyl-CoA dehydrogenase
1.17
0.445
1.09
0.795
1.33
0.097
1.57
0.015*
1.18
0.49
1.14
0.381
Energy Metabolism
gi|19923437
GTP:AMP phosphotransferase
1.4
0.083
1.27
0.371
1.46
0.047*
1.14
0.44
1.43
0.052
1.43
0.149
Cells were incubated with plasma in two 24 well plates, 3 wells for each of the plasma types were pooled from each plate to obtain two biological replicates for the 8-plex iTRAQ experiment. iTRAQ reporter ratios and p-values for altered proteins are shown for both replicates. Proteins found to be dysregulated in MCI and AD treated cells are shown in table. Proteins dysregulated only in cells treated with AD plasma are highlighted in bold. Full list of identified proteins can be found in S2 Table.
* p ≤ 0.05 vs Fetal Bovine Serum Control
Fig 4
Glycolysis Pathway highlighting enzymes which were shown to be upregulated in cells treated with AD plasma.
Fig 5
The 27 proteins which were significantly deregulated in glia treated with AD plasma, but not deregulated in either control or MCI plasma treated glia (shown in Table 4) were analysed in STRING v9.1.
MCL clustering was used with the 2 clusters option picked and with the confidence view selected to display the strength of evidence for protein associations (panel A). Analysis of enrichment was also performed and the most significantly enriched biological process was glucose metabolic process (FDR p-value = 1.759x10E-8, with the 9 proteins involved in this process shown in panel B). Other distinct biological processes which were also significantly enriched included response to hydrogen peroxide (FDR p-value = 3.559x10E-2 with 4 proteins involved; ANXA1, PRDX1, PRDX2, CRYAB) and membrane to membrane docking (FDR p-value = 4.299x10E-2 with 2 proteins involved; MSN, EZR). Several molecular functions were also enriched, the most significant being RNA binding (FDR p-value = 5.340x10E-9 with 17 proteins involved shown in panel C). Another distinct and significantly enriched molecular function is thioredoxin peroxidase activity (FDR p-value = 9.220x10E-3 with 4 proteins involved; PRDX1, PRDX2). Several cellular components were also enriched, the most significant of these being extracellular vesicle exosome (FDR p-value = 5.019x10E-9 with 17 proteins involved as shown in panel D). Multiple other significantly enriched cellular components were also observed, and all enriched protein groups are shown in Table 5.
Table 5
STRING v9.1 analysis of the 27 proteins deregulated only in glia exposed to AD plasma (shown in Table ).
for enrichment in gene ontology biological processes. Glucose metabolism was found to be the most significant biological process, and is also highlighted in the STRING network map (Fig. 5).
Molecular Function Enrichment GO_ID
Term
Number of Proteins
p-value
p-value FDR
p-value Bonferroni
GO:0003723
RNA Binding
17
1.94E-12
5.34E-09
7.51E-09
GO:0044822
Poly(A) RNA Binding
16
2.75E-12
5.34E-09
1.07E-08
GO:0008379
Thioredoxin peroxidase activity
2
8.88E-06
9.22E-03
3.45E-02
GO:0003676
Nucleic acid binding
16
9.50E-06
9.22E-03
3.69E-02
GO:0051920
Peroxiredoxin activity
2
2.95E-05
2.29E-02
1.15E-01
Biological Process Enrichment GO_ID
Term
Number of Proteins
p-value
p-value FDR
p-value Bonferroni
GO:0006006
Glucose metabolic process
9
1.42E-12
1.76E-08
1.76E-08
GO:0019318
Hexose metabolic process
9
7.28E-12
4.51E-08
9.02E-08
GO:0005996
Monosaccharide metabolic process
9
3.63E-11
1.50E-07
4.49E-07
GO:0046364
Monosaccharide biosynthetic process
6
2.23E-10
6.89E-07
2.75E-06
GO:0016051
Carbohydrate biosynthetic process
7
7.56E-10
1.87E-06
9.35E-06
GO:0006094
Gluconeogenesis
5
5.43E-09
1.12E-05
6.73E-05
GO:0019319
Hexose biosynthetic process
5
9.29E-09
1.64E-05
1.15E-04
GO:0042542
Response to hydrogen peroxide
4
2.30E-05
3.56E-02
2.85E-01
GO:0022614
Membrane to membrane docking
2
3.13E-05
4.30E-02
3.87E-01
GO:0016584
Nucleosome positioning
2
6.56E-05
8.12E-02
8.12E-01
Cellular Component Enrichment GO_ID
Term
Number of Proteins
p-value
p-value FDR
p-value Bonferroni
GO:0070062
Extracellular vesicular exosome
17
1.04E-11
5.02E-09
1.51E-08
GO:0044421
Extracellular region part
18
1.23E-09
4.44E-07
1.77E-06
GO:0005576
Extracellular region
18
1.08E-07
3.06E-05
1.57E-04
GO:0031988
Membrane-bounded vesicle
15
1.27E-07
3.06E-05
1.84E-04
GO:0031982
Vesicle
15
1.83E-07
3.77E-05
2.64E-04
GO:0043233
Organelle lumen
16
2.50E-07
4.32E-05
3.62E-04
GO:0042470
Melanosome
5
2.98E-07
4.32E-05
4.32E-04
GO:0005829
Cytosol
15
1.22E-06
1.47E-04
1.77E-03
GO:0070013
Intracellular organelle lumen
13
5.33E-05
5.93E-03
7.71E-02
GO:0031254
Cell trailing edge
2
7.00E-05
6.76E-03
1.01E-01
GO:0001931
Uropod
2
7.00E-05
6.76E-03
1.01E-01
GO:0030016
Myofibril
4
1.41E-04
1.28E-02
2.05E-01
GO:0016323
Basolateral plasma membrane
4
1.51E-04
1.29E-02
2.19E-01
GO:0043292
Contractile fiber
4
1.66E-04
1.33E-02
2.40E-01
GO:0060205
Cytoplasmic membrane-bound vesicle lumen
3
2.64E-04
1.91E-02
3.82E-01
GO:0031983
Vesicle lumen
3
2.64E-04
1.91E-02
3.82E-01
GO:0031528
Microvillus membrane
2
2.98E-04
2.05E-02
4.31E-01
GO:0016023
Cytoplasmic membrane-bounded vesicle
7
3.68E-04
2.42E-02
5.32E-01
GO:0005719
Nuclear euchromatin
2
5.70E-04
3.43E-02
8.24E-01
GO:0000791
Euchromatin
2
7.98E-04
4.62E-02
1.00E+00
Cells were incubated with plasma in two 24 well plates, 3 wells for each ofthe plasma types were pooled from each plate to obtain two biological replicates for the 8-plex iTRAQ experiment. iTRAQ reporter ratios and p-values for altered proteins are shown for both replicates. Proteins found to be dysregulated in MCI and AD treated cells are shown in table. Proteins dysregulated only in cells treated with AD plasma are highlighted in bold. Full list of identified proteins can be found in S2 Table.* p ≤ 0.05 vs Fetal Bovine Serum Control
The 27 proteins which were significantly deregulated in glia treated with AD plasma, but not deregulated in either control or MCI plasma treated glia (shown in Table 4) were analysed in STRING v9.1.
MCL clustering was used with the 2 clusters option picked and with the confidence view selected to display the strength of evidence for protein associations (panel A). Analysis of enrichment was also performed and the most significantly enriched biological process was glucose metabolic process (FDR p-value = 1.759x10E-8, with the 9 proteins involved in this process shown in panel B). Other distinct biological processes which were also significantly enriched included response tohydrogen peroxide (FDR p-value = 3.559x10E-2 with 4 proteins involved; ANXA1, PRDX1, PRDX2, CRYAB) and membrane to membrane docking (FDR p-value = 4.299x10E-2 with 2 proteins involved; MSN, EZR). Several molecular functions were also enriched, the most significant being RNA binding (FDR p-value = 5.340x10E-9 with 17 proteins involved shown in panel C). Another distinct and significantly enriched molecular function is thioredoxin peroxidase activity (FDR p-value = 9.220x10E-3 with 4 proteins involved; PRDX1, PRDX2). Several cellular components were also enriched, the most significant of these being extracellular vesicle exosome (FDR p-value = 5.019x10E-9 with 17 proteins involved as shown in panel D). Multiple other significantly enriched cellular components were also observed, and all enriched protein groups are shown in Table 5.
STRING v9.1 analysis of the 27 proteins deregulated only in glia exposed to AD plasma (shown in Table ).
for enrichment in gene ontology biological processes. Glucose metabolism was found to be the most significant biological process, and is also highlighted in the STRING network map (Fig. 5).
Discussion
A variety of studies have looked at the effects of plasma on cell cultures in different diseases. For example, Brewer et al found 24 hr exposure ofhuman serum from ADpatientstorat hippocampal neurons increased four molecular markers characteristic ofAlzheimer senile plaques and neurofibrillary tangles [19]. Another study has shown that Parkinsonian serum has complement-dependent toxicitytorat dopaminergic neurons [50]. A study using a differentiated neuronal cell line investigated the susceptibility of neuronal cells tohuman complement. It was found that human serum caused lysis ofthe neurons by complement, as tested by cell viability. The effect was lost when cells were treated with complement-depleted serum by heat inactivation [51].Our cell culture results also showed that the loss of cell viability and reduction in cell proliferation caused by AD plasma can be prevented by inhibiting the activity of plasma complement proteins. Alterations in peripheral proteins may reflect changes in the brain, especially since damage tothe blood-brain-barrier (BBB) resulting in increased permeability has been reported in MCI and AD [52,53]. This suggests that complement may have the capacity to play a role in the cell loss seen in AD. Complement factors may work synergistically to cause loss in cell viability. We observed reduced cell viability when cells were exposed tothe complement standard mixture, as compared to addition of single complement factors (Table 2). However in all cases we observed a downward trend in cell viability as complement concentration levels increased regardless ofthe number of complement proteins present. The data achieved statistical significance with exposure to as few as two complement factors (Table 2), indicating that the full spectrum of complement proteins are not necessary for cytotoxicity. Indeed it has been found that treatment of a transgenicmouse model with an agonist to a single complement receptor, C5aR, decreased pathology and improved behavioural performance [54].There is significant evidence for the involvement ofinflammation in the pathogenesis ofAlzheimer’s disease. In theAD brain, damaged neurons and highly insoluble Aβ peptide deposits and NFTs provide stimuli for inflammation [3,14]. Various neuroinflammatory mediators including complement activators and inhibitors, chemokines, cytokines, radical oxygen species and inflammatory enzymes have been shown to be altered in AD [3,14]. Another prominent feature ofAD neuropathology is the association of activated proteins ofthe classical complement pathway with the lesions. The full-range of classical pathway complement proteins from C1qto C5b-9, known as the membrane attack complex, has been found highly localised with Aβ deposits in neuritic plaques [55,56]. It is also present in dystrophic neurites in AD. The fact that complement activation has progressed until the final membrane attack complex stage and the observation that complement regulators have also been found in association with theAD lesions indicates a disturbance in the regulatory mechanisms controlling complement activation in this disease [57-60].Aβ itself can induce complement-mediated toxicity against neurons in culture, suggesting that Aβ-induced complement activation may contribute tothe neuropathogenesis ofAD [56,61]. Hyperphosphorylated tau protein, the main component of NFTs, is also a potent stimulator ofthe complement cascade. Purified NFTs have been shown to activate the complement system in plasma, resulting in a significant increase in levels of membrane attack complexes [62]. Tau and Aβ are both able to increase inflammatory responses and cytokine production. Since the complement system is strongly activated in AD, it could possibly participate either in the exacerbation or amelioration ofthe pathology. Because Aβ deposits and extracellular NFTs are present during early preclinical until terminal stages ofAD, their ability to activate complement provides a mechanism for initiating and sustaining chronic, low-level inflammatory responses that may accumulate over the disease course. This supports the idea that the complement system cascade intervention might be a useful pharmacological approach to treat early stages ofAD.Proteomic analysis ofMCI and AD plasma in this study revealed a number of proteins which were significantly altered between the three groups. The majority of these proteins were acute phase reactants, including proteins which were related tothe complement system (Table 3). This supports the results from other published studies using mainly proteomic techniques which have shown changes in complement protein levels and other acute phase proteins in AD plasma [5,47,63,64]. A summary of proteins found altered in such studies is provided in Table 6 and some ofthe proteins found in our study overlap with those found by other groups using larger cohorts ofpatients. One study has also shown a correlation between brain hippocampal volume changes and plasma levels of acute phase proteins, including complement [63].
Table 6
Summary of previous studies showing changes in acute phase proteins in Alzheimer’s disease.
Name
Site of effect
Function
Modification
Reference
Alpha-2-macroglobulin
plasma
Inhibitor of coagulation; inhibitor of fibrinolysis
Increased in MCI and AD
[5,47]
Complement C3
plasma
Most abundant protein of the complement system, enhances response
Increased in AD
[101–104]
Complement C4
plasma
Protein involved in the complement system and undergoes cleavage
Increased in AD
[5,105]
C4b-binding protein
plasma
Inhibits C4 and binds necrotic cells
Decreased in MCI and AD
[47]
Complement C5
plasma
Fifth component of the complement pathway
Increased in MCI
[47]
Complement C9
mRNA and protein levels, vascular amyloid deposits
Involved in MAC formation
Increased in AD brain areas, increased deposition in vascular plaques
[101,102,106]
Complement factor H
plasma
Regulation of alternative pathway of the complement system, ensuring no damage to host tissue
Increased in AD
[5,107]
Fibrinogen
plasma
Involved in blood clotting
Decreased in AD
[47,104,108,109]
Haptogloblin
Plasma, CSF
Binds free haemoglobin thereby reducing its oxidative activity
Increased in AD plasma, decreased in CSF of MCI and AD patients. Other studies show increase in CSF of AD
Coagulation protein that converts fibrinogen into fibrin, also catalyses other coagulation related reactions
Increased in AD
[114–116]
Transthyretin
Plasma, CSF
Carrier of the thyroid hormone thyroxine
Decreased in AD
[47,112,117,118]
Interestingly one ofthe complement proteins that was reduced in theAD plasma, complement 4 binding protein (C4BP) is a complement inhibitor which is detected in Aβ plaques and on apoptotic cells in theAD brain [65]. In vitro, C4BP binds apoptotic and necrotic but not viable brain cells. It also binds to Aβ(1–42) peptide directly and limits the extent of complement activation by Aβ [65]. C4BP levels in CSFofdementiapatients and controls were low compared to levels in plasma and correlated with CSF levels of other inflammation-related factors [65]. Therefore it possibly protects against excessive complement activation in AD brains.Fibronectin is present in plaques ofAD brains and may modify biosynthesis of APP in microglia [66]. Addition of Aβ to cultured astrocytes has been shown to induce a marked increase in the production offibronectin [67]. This suggests that in vivo fibronectin accumulation in senile plaques may be the result, at least in part, ofthe response of reactive astrocytes tothe presence of Aβ. Fibrinogen is associated with an increased risk ofAD and vascular dementia [68]. Our study found fibronectin and fibrinogento be significantly increased in theAD group compared to controls (Table 3).Furthermore, we have also shown that treatment with AD plasma can affect cellular bioenergetics in a microglial cell line, by increasing glycolysis to compensate for declining oxygen consumption and mitochondrial respiration (Fig. 2). The reduction in cerebral glucose metabolism, as measured by FDG-PET, is a common diagnostic tool for AD. Positron emission tomography (PET) imaging has identified a strong correlation between the spatial distribution of increased glycolysis, and Aβplaques in theAD brain [69]. It is estimated that aerobic glycolysis accounts for up to 90% ofglucose consumed [70]. By contrast, a recent neuroimaging study which correlated multimodal neuronal parameters including glucose metabolism and hippocampal volume with Aβ deposition in cognitively normal older individuals, did not find any association between the multimodal neurodegenerative biomarkers [71]. However, diminished neuronal integrity and cognitive function correlated with an increased Aβ burden in brain regions that are most affected by AD pathology [71]. Increased glycolysis was associated with better verbal episodic memory in individuals with elevated amyloid levels in another study [72]. The increased shift towards glycolysis may occur in regions ofthe brain most vulnerable to insult, or may occur in response to Aβ accumulation during ageing. Loss of this protective mechanism may increase the vulnerability of certain brain regions to Aβ-induced neurotoxicity.Quantitative iTRAQ analysis of glial cells treated with humanAD plasma showed the highest number of dysregulated proteins (Table 4). The most significantly enriched biological process was glucose metabolism (Fig. 5 and Table 5), and a significant number of upregulated glycolytic proteins were found (highlighted in bold in Fig. 4), which is in agreement with the ECAR effect we found in cellular biogenetics using mitochondrial function assays (Fig. 2). Increased expression ofglyceraldehyde-3-phosphate dehydrogenase, phosphoglycerate kinase, enolase, aldolase and pyruvate kinase may increase glycolytic flux leading tothe accumulation ofpyruvate and thus stimulating anaerobic metabolism tolactic acid. We found an increased level of LDH activity in the cell culture media and an increase in extracellular acidification, as indicated by the increase in ECAR in the microglial cells exposed tohumanAD plasma (Fig. 2). These findings suggest a role for mitochondrial bioenergetic deficits in AD pathogenesis. Our study is consistent with previous PET metabolic analyses in individuals with AD, MCI, or incipient to late AD [73]. Our findings are also consistent with microarray analyses and activity assays of ageing, incipient AD, and ADhuman samples and rodent models which indicate that genes and the catalytic activity of several glycolytic enzymes are altered in AD or MCIpatients [74,75]. Similarly, increased amyloid production and nerve cell atrophy have been shown to induce mitochondrial dysfunction [76]. Overexpression ofpyruvate dehydrogenase kinase and lactate dehydrogenase in neurons has been shown to provide resistance to Aβ toxicity and reduces mitochondrial respiration and oxidative stress [77]. Previous proteomic studies have also revealed that enzymes involved in energy metabolism show altered oxidative modification in theAD brain [78]. A recent study has also shown a number of proteins significantly oxidised in the Down syndrome brain with and without AD pathology [79]. A significant number of proteins involved in energy metabolism were identified including some ofthe glycolysis enzymes which we found altered in our study.We also report an increase in the protein expression ofthe enzyme transketolase in microglial cells in response tohumanAD plasma. Transketolase is a thiamine-dependent enzyme which catalyses the first reaction in thepentose phosphate pathway. Transketolase alterations have been previously identified in (i) several probable ADpatients regardless of age-of-onset and severity of disease; (ii) all early-onset ADpatients and APOE ε4/4 carriers; and (iii) nearly half of asymptomatic AD relatives [80]. Increased transketolase activity has also been correlated with increased levels ofBACE1, the key rate-limiting enzyme for the production ofthe Aβ peptide [80].Increased oxidative stress, mitochondrial dysfunction and alterations toenergy metabolism have all been implicated as early events in the pathogenesis ofAD. Cellular models for AD have been shown to display functional impairment ofthe mitochondrial respiratory chain, and a decrease in oxygen respiration and ATP production [81]. All functional measures highlight biogenetic impairment oftheAD cells with a correlation tothe accumulation of amyloid peptides [81].Factors which induce the upregulation of glycolysis in glial cells treated with AD plasma remain unclear. Apart from the acute phase proteins found altered in our study, small molecules in plasma may also play a role in the upregulation of glycolytic enzymes. A recent study of metabolomic profiling of plasma from an ADmouse model found significant changes to several metabolites involved in energy metabolism, linking neuroinflammation with metabolic disturbance in AD [82]. Since oxidative stress is thought be an important factor in the pathogenesis ofAD, the effects of this may also be detected in the circulation in levels of markers such as isoprostanes. Isoprostanes have been shown to be elevated in theAD brain and CSF [83], however recent evidence suggests this may not be reflected in plasma [84], consequently additional work is warranted. Aerobic glycolysis has also been correlated spatially with amyloid deposition in AD brains [69]. It has also been shown that elevated levels ofthe enzymes pyruvate dehydrogenase kinase and lactate dehydrogenase provide resistance to amyloid and other neurotoxins [77]. The ability ofthe brain to maintain expression of these enzymes involved in mitochondrial energy metabolism may explain why some individuals could show high levels of amyloid deposition without neurodegeneration [77,85-87]. In our study, the indicators of increased glycolysis in microglia may be a compensatory action caused by the loss of cell viability and mitochondrial function following exposure toAD plasma. Altered activities of key glycolytic enzymes have also been found in hippocampal, frontal and temporal cortex ofAD brains and thought to possibly be related totheastrocytosis that occurs in AD [74].Chaperone proteins are thought to be involved in the pathogenesis of several neurodegenerative and amyloidogenic diseases [88,89]. A number of chaperone proteins such as protein disulfide isomerases were found to be downregulated in cells treated with MCI and AD plasma. Protein disulfide isomerases can inhibit the aggregation of misfolded proteins and are also involved in modulating apoptosis and endoplasmic reticulum redox balance [90]. It has been shown that the proinflammatory activation of microglia suppresses mitochondrial function and increases glycolysis and overexpression of mitochondrial chaperone mortalin can attenuate this effect [91]. Heat shock proteins are chaperone proteins which have a important impact on the proteotoxic effects of tau and Aβ accumulation. Immunohistochemical studies and expression analyses in AD brain tissue have shown that expression levels of a number of heat shock proteins are upregulated and it has been hypothesised that this effect may be due to a hybridisation of activated glia and dysregulated/stressed neurons [92,93]. Dysregulated chaperone proteins in the cells in our study may reflect a homeostatic attempt to clear toxic plasma proteins and protect mitochondrial function.Cytoskeletal proteins are another group of altered proteins identified in our iTRAQ proteomics data (Table 4). Nestin expression is seen during pathological situations and is a marker of cell proliferation and is reduced in the cells treated with AD plasma, supporting our MTT data (Table 1 and Fig. 1). Ezrin and moesin are involved in crosslinking actin filaments with plasma membranes and stabilising microtubules respectively [94,95] and both were found to be upregulated in cells treated with AD plasma. The antioxidant proteins peroxiredoxins were also found to be elevated in cells exposed toAD plasma which may also be another indication of a compensatory mechanism to attempt to attenuate the toxic effects ofAD plasma.In conclusion, this study shows that plasma expression levels of acute phase proteins are altered in AD and MCI, supporting a role for increased inflammatory activity in this disease which is detectable in the plasma. Cells exposed toAD plasma show an upregulation of glycolysis possibly as a compensatory mechanism in response to compromised mitochondrial function. Together our observations lend support to an emerging body of evidence that inflammation and metabolism are closely linked processes, which are regulated by transcriptional and protein translation events [96,97]. In the CNS, complement proteins are synthesised by a variety of cells including neurons, microglia, astrocytes, oliogendrocytes and endothelial cells [98]. Since disruptions in the blood-brain-barrier have been reported in AD there is a possible source of increased complement levels in theAD brain from plasma. It is however likely that there may be other thermolabile factors in disease plasma which facilitate the cytotoxic and glycolytic effects in microglia, one example may be micro RNAs as they are emerging as important factors in neurogenesis, synaptic plasticity and AD [99,100]. Other yet to be characterised substances may also make a significant contribution. This study shows that the use of biological assays in combination with proteomic analysis may help uncover possible mechanisms of disease and may be complementary techniques to validate cellular changes and effects in a range of biological samples.
Scaffold peptide false discovery analysis.
Peptide FDR analysis using Scaffold v4 with peptide ROC curve.(PDF)Click here for additional data file.
Detailed mass spectrometry protocols.
Detailed mass spectrometry protocols for proteomics of depleted control, MCI and AD plasma and iTRAQ proteomic analysis of microglial cell lysates treated with control, MCI and AD plasma.(PDF)Click here for additional data file.
Protein summary of human control, MCI and AD plasma.
Name and accession of proteins identified in human control, MCI and AD plasma and normalised spectral counts for replicates from Scaffold v4 software.(PDF)Click here for additional data file.
Proteomic of glial cells treated with human plasma.
Protein summary of identified proteins with unused score ≥ 1.3 in glial cells treated with control, MCI and AD plasma, showing unused score, percentage coverage, accession number, name, number of peptides, iTRAQ ratios and p-values for both biological replicates. Significantly upregulated proteins are highlighted in red and downregulated proteins in blue.(PDF)Click here for additional data file.
False discovery rate analysis summary for iTRAQ.
FDR analysis summary at the protein, peptide and spectral levels for iTRAQ experiment from Protein Pilot v4.(PDF)Click here for additional data file.
Authors: Rulin Zhang; Lisa Barker; Deborah Pinchev; John Marshall; Michèle Rasamoelisolo; Chris Smith; Peter Kupchak; Inga Kireeva; Leslee Ingratta; George Jackowski Journal: Proteomics Date: 2004-01 Impact factor: 3.984
Authors: Sang Min Jung; Kibeom Lee; Joung Wook Lee; Hong Namkoong; Hyun Kee Kim; Sanghee Kim; Hae Ri Na; Seon-Ah Ha; Jae-Ryong Kim; Jesang Ko; Jin Woo Kim Journal: Neurosci Lett Date: 2008-03-18 Impact factor: 3.046