Background: Aβ peptide, implicated in Alzheimer disease, occurs in various lengths.
Results: Non-abundant Aβ1–38 and Aβ1–43 affect oligomerization, cytotoxicity, and aggregation of Aβ1–40 and Aβ1–42.
Conclusion: Small amounts of Aβ lengths other than Aβ1–40 or Aβ1–42 significantly alter the behavior of the total Aβ pool.
Significance: Drug strategies targeting APP processing to affect Aβ1–38 levels need careful consideration.
Keywords: Aggregation, Alzheimer Disease, Amyloid, Biophysics, Neurodegeneration, C-terminal Heterogeneity, Cytotoxicity, Amyloid-β Peptide, γ-Secretase Modulating Therapy, Molecular Plasticity
Abstract
Current therapeutic approaches under development for Alzheimer disease, including γ-secretase modulating therapy, aim at increasing the production of Aβ1–38 and Aβ1–40 at the cost of longer Aβ peptides. Here, we consider the aggregation of Aβ1–38 and Aβ1–43 in addition to Aβ1–40 and Aβ1–42, in particular their behavior in mixtures representing the complex in vivo Aβ pool. We demonstrate that Aβ1–38 and Aβ1–43 aggregate similar to Aβ1–40 and Aβ1–42, respectively, but display a variation in the kinetics of assembly and toxicity due to differences in short timescale conformational plasticity. In biologically relevant mixtures of Aβ, Aβ1–38 and Aβ1–43 significantly affect the behaviors of Aβ1–40 and Aβ1–42. The short timescale conformational flexibility of Aβ1–38 is suggested to be responsible for enhancing toxicity of Aβ1–40 while exerting a cyto-protective effect on Aβ1–42. Our results indicate that the complex in vivo Aβ peptide array and variations thereof is critical in Alzheimer disease, which can influence the selection of current and new therapeutic strategies.
Introduction
Extracellular deposits containing the amyloid-β peptide (Aβ)3 represent one of the hallmarks of Alzheimer disease (AD) (1). Aβ is generated from the transmembrane amyloid precursor protein (APP) by β- and γ-secretase-mediated cleavage (2–4). This action primarily results in the production of the 40-amino acid Aβ1–40 peptide and smaller amounts of the 42-amino acid Aβ1–42 peptide in addition to minute quantities of other Aβ peptides ranging in length from 27 to 43 amino acids (5, 6). The observed variation at the Aβ C terminus is a consequence of the heterogeneous γ-secretase processing pattern (7) that first generates Aβ1–48 and Aβ1–49 peptides through cleavage of APP at the ϵ-site followed by successive trimming of every three to four residues (8, 9). Hence, the preferential Aβ1–40 production pathway involves the intermediate formation of Aβ1–43, Aβ1–46, and Aβ1–49 (10). The array of Aβ peptides that is produced in this way can be affected by clinical mutations in APP (8, 11) or in the presenilin-1 active site subunit of the γ-secretase complex (8, 11, 12). Mutations of presenilin-1 potently shift the ϵ-cleavage site on APP toward the Aβ1–38 production pathway with intermediate formation of Aβ1–42, Aβ1–45, and Aβ1–48 (10).
Generally, longer Aβ peptides are more hydrophobic as the C termini progressively form part of the transmembrane domain of APP and are, therefore, considered more aggregation-prone (13–15). Consistent with this finding, senile plaques have been found to be primarily composed of Aβ1–42 and Aβ1–43, whereas shorter Aβ peptides remain largely undetected (16–18). Based on these observations, γ-secretase inhibitors were developed that aimed at lowering the activity of γ-secretase and reducing Aβ production. However, the multifunctionality of the γ-secretase enzyme, including a critical role in the Notch signaling process, led to the recognition that total inhibition of this enzyme is an undesired approach. This observation served as a starting point for the generation of γ-secretase modulators (GSMs) that fine-tune the action of γ-secretase to shift the production of Aβ peptides toward shorter variants while leaving the total Aβ peptide production and activity of γ-secretase unchanged (19, 20). Given the finding that specifically aggregated Aβ peptide can lead to a neurotoxic response, GSMs offered in this way a promising perspective as a potential agent to slow down the progress of senile plaque deposition in AD by decreasing the production of Aβ1–42 while increasing that of Aβ1–38. The first generation of GSMs was classified as non-steroidal anti-inflammatory drugs and derivatives thereof. Administration of these drugs to healthy individuals showed positive effects on cognitive function that could be entirely attributed to the cyclo-oxygenase (COX) inhibitory action of the compound without displaying GSM action (21, 22). Clinical trials with non-COX inhibitory non-steroidal anti-inflammatory drugs did not display protective effects on AD disease progress, possibly as a result of the low potency and poor brain penetrance of the compounds, inhibition of Notch processing, or accumulation of APP C-terminal fragments (23). A next generation of Notch-sparing GSMs and non-steroidal anti-inflammatory drug-derived compounds with improved potency and brain penetration are currently being developed but yet await clinical trials (22).
The reported neurotoxicity of Aβ1–43 (12) as well as the observed increasing (24) and decreasing Aβ1–38 (25) levels in cerebrospinal fluid upon AD progress, indicate that the contributions of Aβ1–38 and Aβ1–43 to AD progression require further elucidation. By comparing their pathogenicity, aggregation profiles, and biophysical properties with that of well studied Aβ1–40 and Aβ1–42, we show that Aβ1–38 and Aβ1–43 both form aggregates that differ in cytotoxic potential. We further show that inclusion of Aβ1–38 and Aβ1–43 into complex mixtures containing Aβ1–40 and Aβ1–42 substantially affects the behavior of total Aβ and that Aβ1–38 and Aβ1–40, previously considered non-amyloidogenic, can unexpectedly become toxic in these mixtures. These findings have been related to conformational plasticity of the respective peptides and highlight the relevance of understanding the role of C-terminal variation of Aβ peptides and their potential as therapeutic targets.
EXPERIMENTAL PROCEDURES
Preparation of Aβ Peptides and Peptide Ratios
Aβ peptides (rPeptide) were dissolved and mixed as described before (26, 27). Briefly, Aβ was dissolved into 1,1,1,3,3,3-hexafluor-2-propanol, evaporated with an N2 stream, and redissolved in dimethyl sulfoxide. Solvents were removed by elution over a 5-ml HiTrap desalting column (GE Healthcare) into a 50 mm Tris buffer, pH 7.4, containing 1 mm EDTA. Peptide concentrations were measured using the Coomassie (Bradford) Protein Assay kit (Thermo Scientific) against a bovine serum albumin standard (Thermo Scientific). Aβ peptide concentrations were diluted to a concentration of 50 μm in 50 mm Tris buffer, pH 7.4, containing 1 mm EDTA and incubated at 25 °C under quiescent conditions for further experiments.
Thioflavin T Fluorescence
Fibrillation kinetics of Aβ in the presence of 12 μm thioflavin T (ThT) were followed in situ at 25 °C using a Fluostar OPTIMA fluorescence plate reader (BMG LABTECH GmbH) at an excitation wavelength of 440 nm and an emission wavelength of 480 nm. Readings were recorded in triplicate every 5 min for a period of 10 h and corrected by subtracting the intensity obtained for buffer containing 12 μm ThT. The end of the lag phase was determined manually. Elongation rate was fitted to the central region of the exponential phase. Final fluorescence was determined at 10 h of incubation.
Dot Blot
At various time points a volume of 5-μl sample was spotted onto Protran BA85 nitrocellulose blotting membrane (Whatman). The membranes were blocked at 25 °C in phosphate-buffered saline containing 0.2% Tween 20 (PBST XL) for 1 h and incubated for 1 h at 25 °C with primary rabbit polyclonal anti-oligomer antibody (A11) (Invitrogen), diluted 1:4000 in 100 mm Hepes, pH 7.0 (28). After incubation with secondary anti-rabbit-HRP-tagged antibody (Promega) diluted 1:5000 in phosphate-buffered saline containing 0.05% Tween 20 (PBST) for 0.5 h at 25 °C, the membranes were visualized using the ImmobilonTM Western chemiluminescent HRP substrate system (Millipore).
Transmission Electron Microscopy
A volume of 5 μl of Aβ was adsorbed to carbon-coated Formvar film on 400-mesh copper grids (Agar Scientific Ltd) for 1 min. The grids were washed in ultrapure water (Merck) and stained with 1% (w/v) uranyl acetate (VWR). Samples were studied using a JEOL JEM-2100 microscope at an accelerating voltage of 200 kV or a JEOL JEM-1400 microscope at an accelerating voltage of 80 kV (JEOL Ltd.).
Atomic Force Microscopy (AFM)
AFM imaging was performed on a custom-built instrument using Si3N4 tips (Veeco Instruments, Woodbury NY; type MSCT-AUHW) with a spring constant of 0.5 newtons/m and a nominal tip radius of 10 nm. The measurements were made in tapping mode in air, with a tapping amplitude of less than 4 nm. The AFM scan settings were optimized to minimum force interaction with the sample. AFM samples were prepared by placing 5 μl of sample on freshly cleaved mica. After 4 min adsorption time, unbound Aβ was washed off twice with 100 μl of ultrapure water (Merck) and dried using a gentle N2 stream. The images are represented in three-dimensions after removal of height discontinuities between subsequent scan lines and compensation for piezo drift using SPIP software (Image Metrology A/S, Lyngby, Denmark).
Far-UV Circular Dichroism (CD)
After 1.5 h of incubation, Aβ was diluted to 15 μm and placed in a quartz cuvette with an optical path of 3 mm, and far-UV circular dichroism spectra were recorded in a Jasco J-715 spectrometer. The wavelength range was set from 260 to 190 nm with 0.2-nm resolution, 2.0-s response time, 2.0-nm bandwidth at a scanning speed of 50 nm/min. Data were collected as averages of eight scans. The spectra obtained were corrected by subtracting the spectrum obtained for buffer only.
Attenuated Total Reflection Fourier Transform Infrared Spectroscopy (ATR FTIR)
Using a Bruker Tensor 27 infrared spectrophotometer equipped with a Bio-ATR II accessory, infrared spectra of aggregating Aβ (220 μm, 25 °C, in 50 mm Tris buffer, pH 7.4, containing 1 mm EDTA) were recorded. The samples were applied to the FTIR sample holder and incubated for 1.5 h. Spectra were recorded in the range of 900–3500 cm−1 at a spectral resolution of 4 cm−1 at the beginning (time 0) and the end (time 1.5 h) of the experiment. Each measurement consisted of 120 accumulations. The spectrophotometer was continuously purged with dried air. The obtained spectra were corrected for atmospheric interference, baseline-subtracted, and rescaled in the amide I area (1700 to 1600 cm−1). Changes of secondary structure over 1.5 h of incubation were analyzed by subtraction of the spectrum recorded at time 0.
In Silico Predictions
The statistical mechanics algorithm TANGO (29) was used to predict aggregation-prone regions in the Aβ peptide sequence (30). TANGO provides an aggregation propensity (0–100%) per residue as output. An aggregating region is defined as a continuous stretch of residues with an individual TANGO score higher than 5% and a total score for the region higher than 50%. Total TANGO scores are calculated as the sum of the individual residual TANGO scores for a given sequence. TANGO calculations were performed using the online TANGO calculator with the following parameters: pH of 7.0, a temperature of 298.15 K, and 0.02 m ionic strength without N- or C- terminal protection.
Molecular Dynamics (MD) Simulations
The NMR structure (Protein Data Bank entry 1IYT) was used as starting structure of Aβ1–42 and as a template to generate the other Aβ species studied here. All MD simulations were performed with GROMACS 4.5.3 using the OPLS/AA force field (31). Experimental details are described in the supplemental materials. The LINCS algorithm (32) was used for bond-length constraining. The non-bonded pair list was updated every 10 fs. The simulation of each system was repeated at least 10 times and then individually analyzed, and their averaged properties are reported here. Programs included in the GROMACS package as well as some in-house scripts were used to perform the analysis of the trajectories. Molecular graphics images were produced using the UCSF Chimera package from the Resource for Biocomputing, Visualization, and Informatics at the University of California, San Francisco (supported by National Institutes of Health Grant P41 RR001081) (33).
Neuroblastoma Cells and Cytotoxicity
All tissue culture reagents were obtained from Invitrogen. The human neuroblastoma cell line SH-SY5Y (ATCC number CRL-2266) was cultured in DMEM/F-12 supplemented with 10% fetal bovine serum (HyClone, ThermoScientific). The cells were incubated at 37 °C in a humidified 5% CO2 atmosphere. Cytotoxicity assays were performed in 96-well plates after plating 25,000 cells per well in serum-deprived DMEM/F-12. After pre-aggregation for 1.5 h, Aβ was diluted in DMEM/F-12 and added to the cells. After 24 h of treatment, cell viability was analyzed using the Cell Titer Blue Cell Viability assay (Promega). After 4 h, color conversion was analyzed by measuring the fluorescence intensity of the samples at an excitation wavelength of 544 nm and an emission wavelength of 590 nm using a Fluostar OPTIMA fluorescence plate reader. Values are percent of cell viability ± S.D., and buffer signal was normalized to 100%.
Statistical Analysis
Results from ThT fluorescence and cytotoxicity experiments were analyzed using two-tailed unpaired t tests for significance. Significance is indicated by *** (p < 0.0001), ** (p < 0.0005), and * (p < 0.005). MD results were analyzed using two-way analysis of variance with repeated measures to determine whether each group differs significantly from each other and multivariate analysis to determine at which specific point the groups significantly differed. Bonferroni post hoc analysis was applied. Significance is indicated by ## (p < 0.005). All properties determined by MD techniques are reported as the average property of 10 simulations ± S.E.
RESULTS
Aβ Peptide Length Determines Aggregation, Oligomerization, and Toxicity
It has been reported before that Aβ1–40 and Aβ1–42 display different aggregation kinetics (13, 34). Consistent with these data, we also observed substantial differences in aggregation kinetics as a function of peptide length (Fig. 1A) when comparing Aβ1–38, Aβ1–40, Aβ1–42, and Aβ1–43 using ThT fluorescence. Although Aβ1–38 and Aβ1–40 showed a delayed onset of aggregation, Aβ1–42 and Aβ1–43 rapidly aggregated, as suggested by the immediate rise in ThT fluorescence signal. Even though the aggregation regimes of Aβ1–38 and Aβ1–40 are generally alike, with a distinct lag phase and significant and sigmoidal development of ThT signal after 10 h of incubation, Aβ1–38 showed a more rapid onset of aggregation compared with Aβ1–40. The final (10 h) ThT fluorescence intensity of both Aβ1–42 and Aβ1–43 aggregates was very low compared with Aβ1–38 and Aβ1–40 (Fig. 1B) and has been reported to correlate with the weight concentration and the morphology of the formed fibrils (35). Transmission electron microscopy showed that 0.5 h of incubation of Aβ1–42 and Aβ1–43 resulted in networks of intertwined fibrils, whereas for Aβ1–38 and Aβ1–40 aggregates were absent (Fig. 1C). Upon incubation for 4 h, the fibrillar network observed for Aβ1–43 had progressed into polymorphous clusters interconnected by mature fibrils. Aβ1–42 showed a similar organization, yet short and aligned fibrils seemed more prevalent compared with Aβ1–43. In contrast, Aβ1–38 and Aβ1–40 both formed long, negatively stained and regularly twisted fibrils with a diameter of 8–12 nm that is typically observed for amyloid-like fibrils (36). All Aβ peptides formed extensive fibrillar networks upon incubation for 24 h. To establish by which mechanism C-terminal variation affected the observed aggregation characteristics of Aβ, the statistical thermodynamics algorithm TANGO was used to predict aggregating stretches in the various Aβ peptides tested. TANGO scores further showed that, in general, increasing aggregation propensity could be observed with increasing peptide length with the exception of Aβ varying in length from 37 to 40 amino acids (Fig. 1D). A per-residue analysis of the aggregation propensity showed that all Aβ sequences contain a common aggregating stretch ranging from residue 16 to residue 22 (37) (Fig. 1E). A second aggregating region starts at residue 28 and spans the remaining C-terminal part of the sequence and showed strong variation with Aβ length due predominantly to the presence of two subsequent glycine residues, which disfavor aggregation but which are compensated by additional aggregation promoting residues in the longer forms. Our analysis shows that differences in aggregation propensity directly stem from C-terminal variation. In line with our observation that Aβ1–38 aggregates faster than Aβ1–40 (Fig. 1A), TANGO predicted a slightly higher aggregation propensity for Aβ1–38 than for Aβ1–40 (Fig. 1, D and E).
ThT does not interact strongly with oligomeric Aβ (38), whereas soluble oligomeric Aβ is generally considered to represent the toxic species (39–41). We used complementary oligomer-sensitive techniques such as the A11 oligomer-specific antibody (28) and AFM to obtain information on the lifetime of oligomeric Aβ as a function of C-terminal variation. Aβ peptides were allowed to aggregate and were tested for A11 reactivity at various time points of incubation (Fig. 2A). Aβ1–42 and Aβ1–43 formed A11-positive oligomers already after 0.5 h of incubation, whereas Aβ1–38 and Aβ1–40 only interacted with the A11-antibody after an incubation time of 5 and 6 h, respectively, with Aβ1–38 exhibiting substantially stronger staining with the antibody than Aβ1–40. Complementary to A11 reactivity, AFM imaging of samples upon 1.5 h of incubation showed the presence of small oligomeric species for all Aβ peptides tested, including Aβ1–38 and Aβ1–40 (Fig. 2B). Even though oligomers were present for all Aβ peptides tested, Aβ1–38 and Aβ1–40 oligomers only developed into A11-positive oligomers at a later stage compared with Aβ1–42 and Aβ1–43. Cytotoxicity of oligomeric Aβ upon C-terminal variation was assessed using neuroblastoma cell line SH-SY5Y (Fig. 2C). A11-positive oligomers derived from Aβ1–42 and Aβ1–43 induced loss of cell viability at a concentration of 5 μm, whereas those derived of Aβ1–38 and Aβ1–40 affected cell viability only at a significantly higher concentration of 20 μm.
Aβ Lengths Display Conformational Differences
CD and FTIR spectroscopy were used to evaluate Aβ structure after 1.5 h of incubation. The spectra recorded for Aβ1–38 and Aβ1–40 using CD were very similar and displayed typical characteristics of a largely unstructured protein, whereas the spectra of Aβ1–42 and Aβ1–43 showed pronounced β-sheet formation with a minimum intensity at a wavelength of 218 nm (Fig. 3A). As FTIR is more sensitive to β-sheet formation than CD and can distinguish between parallel and anti-parallel β-sheet arrangements, FTIR measurements were performed complementary to CD. Fig. 3B shows difference spectra obtained by subtraction of the spectrum of non-aggregated Aβ (time 0) from the spectrum recorded after 1.5 h of incubation. The strong increase of absorbance at a wavelength of 1627 cm−1, concurrent with a loss of signal between 1650–1655 cm−1 and 1680 cm−1 for all four peptides tested, indicated that β-sheet formation took place during the 1.5 h incubation time at the cost of random coil and β-turn structure. The more narrow peak for Aβ1–38 suggests the formation of a more stable β-sheet as a result of more extensive H-bonding compared with the other peptide lengths investigated, although Aβ1–40 was found to form most β-sheet judging from a higher signal intensity at a wavelength of 1627 cm−1. The small increase at 1695 cm−1 seen here for Aβ1–38 and Aβ1–43 in addition to the increase at a wavelength of 1627 cm−1 reveals the formation of an antiparallel oriented β-sheet that has been typically used as a fingerprint for oligomer formation (42). Variation in evolution of these regions is observed between the Aβ isoforms. This observation suggests that the various Aβ isoforms display small structural differences during aggregation. Even though CD and FTIR provide useful structural information in terms of an average of the entire protein sequence, they do not provide insight into the behavior of individual residues in the sequence and, hence, are not able to address the question of why the addition of two valines in Aβ1–40 rendered this peptide less aggregation-prone than Aβ1–38. Also, CD and FTIR spectroscopy were unable to report on short-time scale conformational flexibility of peptides potentially required to trigger the onset of aggregation. We used MD simulations to establish whether individual residues contributed to changes in peptide conformation that could explain the observed results. We focused our observations on definition of secondary structure of proteins (DSSP) analysis (43). Here, we report the DSSP results as: coil (unstructured conformation), extended conformation (β-bridge plus β-sheet structures), loop (bend plus turns), and helical conformation (α-helix plus 310-helix plus π-helix). All peptides presented a general trend to possess a mixture of a collapsed coil structure and helical conformation for residues 1–20. N-terminal helical structure was partially retained over time, whereas C-terminal helicity, if any, was rapidly lost (supplemental Fig. 1). Also as a general observation, all extended conformations occurred between residues 21–28 and residues 32 to the C-terminal amino acid. A loop section comprising residues 29–31 formed flexible links between these extended portions. Contrary to what was expected, Aβ1–38 conformation behavior most closely resembled that of Aβ1–42 rather than Aβ1–40 (Fig. 4, A and B, supplemental Fig. 1). Over the 100-ns time scale of the simulations, Aβ1–38 showed a marked tendency to form extended conformations (Fig. 4, A and B), comparable with Aβ1–42 and Aβ1–43 (Fig. 4, B and B1). Aβ1–40, on the other hand, exhibited low tendency to form extended conformations (Fig. 4A). Interestingly, during the first 10s of nanoseconds the behavior of Aβ1–38 was erratic and fluctuated between resembling Aβ1–40 and Aβ1–42/Aβ1–43. Only after 50 ns of simulation did the content of extended conformation invariably increase (Fig. 4, A and D). Aβ1–42 and Aβ1–43 seemed to accumulate and stabilize better than their extended conformations, from earlier simulation times onwards (Fig. 4, B and B1, supplemental Fig. 2). The same behavior was reflected in the overall helicity of the peptides (Fig. 4C) revealing a slight, yet statistically significant, higher tendency to retain its helical conformation for Aβ1–38 in comparison to Aβ1–42 and Aβ1–43. A marked increase in the helicity of residues 20–23 and 28 was uniquely observed for Aβ1–40 (Fig. 4, C and D). Collectively, these data showed that the behaviors of Aβ1–42 and Aβ1–43 were remarkably similar in terms of their high tendency to form an extended β-sheet conformation, whereas Aβ1–40 retained helicity longer. The Aβ1–38 peptide showed very interesting behavior in terms of its highly fluctuating tendency to form extended β-sheet conformation. Over time Aβ1–38 conformation alternated rapidly between Aβ1–42/Aβ1–43-like conformation and Aβ1–40-like conformation before forming a stable, extended β-sheet.
Mixtures of Aβ Show Complex Aggregation Behavior
To evaluate the influence of the observed differences between Aβ isoforms in a more biologically relevant setting, we mimicked the complex pool of various Aβ peptide lengths as observed in vivo by preparing Aβ peptide mixtures containing Aβ1–40, Aβ1–42 and Aβ1–38, or Aβ1–43. Increased levels of Aβ1–38 in the cerebrospinal fluid of AD patients are reported (24) as well as an increased generation of this peptide due to presinilin-1 mutations (44). Some forms of familial AD display increased generation of Aβ1–43 (44), a peptide length frequently present in amyloid plaques (18). Aβ1–40 and Aβ1–43 were shown to directly interact using electrospray ionization-MS (supplemental Fig. 4C), although these dimeric species only accumulated at a population of ∼1% (supplemental Fig. 3C). Effective but low accumulation of mixed dimers was also observed upon mixing Aβ1–38 and Aβ1–42 (supplemental Figs. 3B and 4B). Mixed dimeric complex formation was further detected for Aβ1–38·Aβ1–40 and Aβ1–42·Aβ1–43 (supplemental Fig. 3 and 4). Along the lines of the earlier-identified processing pathways of APP toward the formation of either Aβ1–40 and Aβ1–38 with Aβ1–43 and Aβ1–42 as intermediates, respectively (10), we mapped dose-response curves of the presence of Aβ1–43 and Aβ1–38 on the aggregation kinetics of Aβ1–40 and Aβ1–42, respectively, using ThT fluorescence (Fig. 5). We reported earlier that Aβ1–42·Aβ1–40 mixtures behave differently according to their proportional presence (26). Titration of Aβ1–40 with increasing concentrations of Aβ1–43 substantially reduced the lag phase of aggregation to become similar to that of Aβ1–43 alone, whereas final fluorescence intensities were not affected (Fig. 5, A, and C). These observations suggest that Aβ1–43 dominantly influences the nucleation process of Aβ1–40, whereas aggregate morphology or mass were presumably determined by Aβ1–40 (Fig. 5C). Titration of Aβ1–38 with Aβ1–42 similarly led to a decreased nucleation rate but, in addition, gradually increased the elongation rate and final ThT fluorescence intensity (Fig. 5, B and D). The complex aggregation characteristics compared with each of these peptides in isolation are highly suggestive of interaction of the Aβ peptides in mixtures.
Aβ1–40 is the most predominant species recovered from cerebrospinal fluid (6, 45). Aβ1–38 has been reported to be present in cerebrospinal fluid at concentrations of 1.26 to 2.78 ng/ml, whereas concentrations of Aβ1–42 were 0.46 to 2.07 ng/ml (6, 45, 46). Quantitative detection of Aβ1–43 has only been performed in brain plaques and, as suitable antibodies are not available, can generally not be distinguished from that of Aβ1–42. Although quantitative information on the released amounts of the four Aβ isoforms of interest from APP is only available for FAD mutations based on in vitro observations (11, 44, 47, 48), we performed titration assays (Fig. 5). Results indicated that 30% of Aβ1–38 or Aβ1–43 already caused a significant alteration of the aggregation profile of Aβ1–42 and of the lag phase of Aβ1–40. Many FAD-related mutations accumulate Aβ1–42, whereas it can be assumed that in sporadic AD Aβ1–40 is predominantly produced (49). We, therefore, decided to evaluate the effect of small concentrations (10%) of Aβ1–38 and Aβ1–43 on predominantly present (90%) Aβ1–40 and Aβ1–42 to monitor more subtle influences of the presence of peptides in mixtures. In summary, we evaluated oligomerization, cytotoxicity, and aggregation of 9:1 mixtures of Aβ1–40·Aβ1–38, Aβ1–40·Aβ1–43, Aβ1–42·Aβ1–38, and Aβ1–42·Aβ1–43. At these low concentrations the effect of the addition of Aβ1–38 and Aβ1–43 to either Aβ1–40 or Aβ1–42 was limited to a significant decrease in final fluorescence intensity while leaving the nucleation phase unchanged (Fig. 6, A and B). Visualization of aggregate morphology by transmission electron microscopy further rationalized the observed change in final fluorescence intensity (Figs. 1C and 6C). Even though aggregate formation could not be established at early time points for Aβ1–38 and Aβ1–40 in isolation, a 9:1 mixture of these peptides showed the formation of extensive ThT-negative but A11-positive aggregates that were present for extended periods of time (Fig. 6, A, C, and D). Also, at early time points of incubation the morphologies of both Aβ1–40 and Aβ1–42 in mixtures (Fig. 6C) appear different from these peptides in isolation (compare with Fig. 1C). Upon extended incubation, all mixtures aggregated into morphologically similar networks of long, interacting fibrils, similar to those observed for peptides in isolation (Fig. 6C). The observed differences in A11 interaction and aggregate morphology further led us to investigate the cytotoxic response of Aβ mixtures using cultured SH-SY5Y cells. Interestingly, even though Aβ1–38 or Aβ1–40 in isolation induced no cytotoxic response below a concentration of 20 μm, the addition of Aβ1–38 to Aβ1–40 resulted in a pronounced and significant loss of cell viability at a total peptide concentration of 10 μm, consistent with the A11-positive response for this mixture (Fig. 6, D and E). Strikingly, the addition of Aβ1–38 to Aβ1–42 instead exerted a cytoprotective effect despite showing the formation of A11-positive oligomers, preventing loss of cell viability up to a total Aβ concentration of 10 μm. In addition to this, even though both Aβ1–42 and Aβ1–43 are similarly cytotoxic at a concentration of 10 μm, the mixture of these two peptides alleviates the cytotoxic response, whereas Aβ1–43 induces cytotoxicity in the presence of Aβ1–40.
Collectively, our data suggest that, apart from distinct propensities to form cytotoxic oligomers and aggregates for individual Aβ peptides, mixtures of various Aβ peptides do not behave in a predictable manner according to a simple additive effect but can actively modulate the behavior of other isoforms present in the mixture to either induce or prevent toxicity or modify their aggregation propensities.
DISCUSSION
Aβ aggregation is a complex process during which a monomeric population progressively self-assembles first into oligomers and finally into mature fibrils. We show that biologically relevant mixtures of Aβ peptides containing Aβ1–38, Aβ1–40, Aβ1–42, and Aβ1–43 behave in a more complex manner than can be anticipated from their behaviors in isolation with direct consequences for their oligomerization, aggregation, and cytotoxic behavior. We also report that co-occurring Aβ peptides can affect each other by conformational modulation of the C-terminal region that, in turn, is a function of C-terminal flexibility to adopt various conformations. For example, Aβ1–38 in isolation exhibited little cytotoxic potential, similar to Aβ1–40. At the same time, cytotoxic oligomers accumulated rapidly for Aβ1–42 and Aβ1–43. Nevertheless, mixtures of Aβ1–38 and Aβ1–40 were highly toxic, whereas the addition of Aβ1–38 to Aβ1–42 surprisingly induced a cytoprotective effect. The A11 reactivity of the individual Aβ peptides in isolation correlated with the observed cytotoxicity, although all isoforms were found to form oligomers. This observation suggests a conformational difference between oligomers of different isoforms. The presence of both toxic A11-positive and non-toxic A11-negative oligomers has been reported recently for Aβ as well as for the yeast-sup35 protein (50, 51). The cytotoxicity-A11 reactivity correlation for peptides in isolation could not be extended to mixtures of Aβ isoforms. This lack of correlation can be explained by the polyclonal nature of the antibody to recognize non-toxic oligomers in addition to toxic species. Another possibility is that non-toxic and toxic oligomers are both formed and that the variation in signal intensities and cytotoxicity arises from the variation in the distribution between these oligomers. At high concentrations when the level of toxic oligomers is sufficiently high, the shorter Aβ isoforms become similar cytotoxic to the longer Aβ isoforms. Although not being able to reveal distinct accumulation of specific conformations using CD, FTIR revealed small structural differences during a 1.5-h incubation time. Even though all tested Aβ peptides showed substantial β-sheet formation over time, only for Aβ1–38 and Aβ1–43 anti-parallel β-sheet formation could be identified that has been interpreted previously as typical for oligomer formation (42). As both FTIR and CD are only informative on an ensemble level, we used MD to elucidate the short-time scale dynamic behavior of the peptides. MD simulations revealed that both Aβ1–38 and Aβ1–42 gained extended β-sheet conformation rapidly, whereas helicity in Aβ1–40 was retained for longer, which is in good agreement with earlier reports (52). In line with our findings, it has previously been reported that stabilization of the central α-helical region of Aβ by ligands or mutations results in a significant delay of aggregation (53–55) and that inhibition of unfolding of the central α-helical region increases longevity in a Drosophila model of AD (54). At the same time, rapid induction of extended β-sheet formation has been found to have a strong predictive power in terms of toxic potential rationalizing the development of so-called β-sheet breakers as a therapeutic approach (for review, see Ref. 56). Interestingly, Aβ1–38 showed behavior that could be explained by rapid gain and loss of extended β-sheet conformation, fluctuating in behavior between Aβ1–40 and Aβ1–42/Aβ1–43, respectively. Rapid conformational switching between distinct conformations has been observed before for synaptically confined proteins SNAP-25 and synaptobrevin and was proposed to characterize a specific class of intrinsically disordered proteins (57). Conformational flexibility was suggested to allow for fast ligand interaction and conformational selection, which potentially has functional implications for the findings we report on Aβ1–38 but which warrant further investigation. The presence of other peptides with higher preference of one over another conformation may drive Aβ1–38 to rapidly recognize these as a potential ligand and template for conformational selection, which in turn either induces or inhibits aggregation. However, this may be an oversimplification of the actual situation as Aβ1–42 in the presence of Aβ1–38 is in fact less toxic, which does not comply with this suggestion. Further research is required to precisely underpin the molecular mechanism of this observation. It has been previously reported that Glu22, Asp23, and Lys28 play a critical role in the aggregation process (58–61). Presumably, Asp23 (and Lys28), although residing in a helical conformation, may not be able to trigger the formation of extended conformations, at least at early time points, thus retarding the aggregation of Aβ1–40. Therefore, not only the unfolding rate of the C-terminus, as has been previously suggested, can dictate the potential event to trigger aggregation and toxicity of Aβ (60), but also the capability of a given Aβ peptide to retain its helical conformation may be considered to induce such events. Based on the outcome of our MD simulations, we suggest that the plastic behavior of Aβ1–38, inducing toxicity for Aβ1–40 while eliminating response to Aβ1–42, plays a key role to these observations. Hence, the presence of other peptides may direct the self-assembly process toward at least two possible pathways, one leading to toxic oligomers and the second leading to non-toxic intermediates. Aβ1–43 does not display fluctuating secondary structures and rapidly forms extended β-sheets. The self-assembly process in the presence of other peptides is, therefore, probably more dependent on the flexibility of the structure of the second peptide. Indeed, it has been shown for the N-terminal domain of the HypF protein from Escherichia coli that both toxic and non-toxic oligomers can be formed (62).
Overall, our results can be of major importance for the further development of therapeutic strategies. The current approach of modulating γ-secretase activity to decrease Aβ1–42 generation results in increased Aβ1–38 levels at the same time. This approach is based on the observation that longer Aβ isoforms are more aggregation-prone. Hence, establishing an increased Aβ1–38 level is considered a suitable and non-toxic approach to inhibit AD disease progress without compromising the important multi-substrate processing by γ-secretase. However, clinical studies still have to confirm their disease-modulating capacity. Whether this is due to the low brain-barrier penetrating potency of the compounds being tested requires further investigation. Together with previously published data (44), our results possibly indicate that another explanation for the lack of clinical evidence to place GSMs firmly on the map as AD therapy may be the induction of adverse, unexpected events as a result of the increased Aβ1–38 levels in combination with other Aβ peptides. In this view, Golde et al. (63) recently argued that the efficiency of different GSMs to shift Aβ release toward shorter isoforms could determine their therapeutic potential. We propose that peptide conformational flexibility may confer toxic properties to its oligomers and underline the importance of understanding the interplay between various Aβ isoforms.
Acknowledgments
We thank Maja Debulpaep for instructions and technical assistance with transmission electron microscopy and Kim Sweers and Ine Segers-Nolten for support during AFM measurements.
This work was supported by the Agency for Innovation by Science and Technology in Flanders (IWT), a project grant from the “Stichting voor Alzheimer Onderzoek” (SAO), an Odysseus grant from the National Funds for Scientific Research Flanders (FWO), an Alzheimer Research UK (ARUK) grant, and a European Molecular Biology Organization Short-term Fellowship.
This article contains supplemental Experimental Procedures and Figs. 1–4.
- Aβ
- amyloid-β peptide
- AD
- Alzheimer disease
- APP
- amyloid precursor protein
- GSM
- γ-secretase modulator
- ThT
- thioflavin T
- AFM
- atomic force microscopy
- MD
- molecular dynamics
- DSSP
- definition of secondary structure of proteins.
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