Abstract
Ampakines are cognitive enhancers that potentiate α-amino-3-hydroxy-5-methyl-4-isoxazolepropionic acid (AMPA) receptor currents and synaptic responses by slowing receptor deactivation. Their efficacy varies greatly between classes of neurons and brain regions, but the factor responsible for this effect remains unclear. Ampakines also increase agonist affinity in binding tests in ways that are related to their physiological action. We therefore examined 1) whether ampakine effects on agonist binding vary across brain regions and 2) whether they differ across receptor subunits expressed alone and together with transmembrane AMPA receptor regulatory proteins (TARPs), which associate with AMPA receptors in the brain. We found that the maximal increase in agonist binding (Emax) caused by the prototypical ampakine 1-(1,4-benzodioxan-6-ylcarbonyl)piperidine (CX546) differs significantly between brain regions, with effects in hippocampus and cerebellum being nearly three times larger than that in thalamus, brainstem, and striatum, and cortex being intermediate. These differences can be explained at least in part by regional variations in receptor subunit and TARP expression because combinations prevalent in hippocampus (GluA2 with TARPs γ3 and γ8) exhibited Emax values nearly twice those of combinations abundant in thalamus (GluA4 with γ2 or γ4). TARPs seem to be critical because GluA2 and GluA4 alone had comparable Emax and also because hippocampal and thalamic receptors had similar Emax after solubilization with Triton X-100, which probably removes associated proteins. Taken together, our data suggest that variations in physiological drug efficacy, such as the 3-fold difference previously seen in recordings from hippocampus versus thalamus, may be explained by region-specific expression of GluA1–4 as well as TARPs.
Ampakines are benzamide compounds that allosterically potentiate α-amino-3-hydroxy-5-methyl-4-isoxazolepropionic acid (AMPA) receptor currents, prolong synaptic responses (Arai et al., 1996, 2002; Arai and Kessler, 2007), facilitate long-term potentiation (Arai et al., 2004), and enhance memory encoding in animals and humans (Staubli et al., 1994; Lynch et al., 1997; Hampson et al., 1998). They also have shown therapeutic potential for various pathological conditions such as Alzheimer's disease, schizophrenia, and depression (Lynch, 2006).
In two earlier studies, we found that ampakine effects vary greatly between neurons. In hippocampus, 1-(1,4-benzodioxan-6-ylcarbonyl)piperidine (CX546) was nearly 10-fold more effective in prolonging excitatory postsynaptic currents in pyramidal cells than in interneurons or in stratum radiatum giant cells, an ectopic version of pyramidal cells (Xia and Arai, 2005). Major differences were likewise seen between hippocampal and thalamic neurons, i.e., prolongation of excitatory postsynaptic current duration by CX546 was approximately 3-fold larger in hippocampal CA1 pyramidal cells than in two subdivisions of the thalamus (Xia et al., 2005). Understanding the causes for these differences is important for any attempt to interpret the effect of these drugs on behavior and to assess their potential for clinical applications, but the factors responsible for the differential effects are not yet clear, and it is therefore difficult to predict how effective ampakines will be in other neuronal systems.
Several factors can potentially contribute to the observed variations in ampakine efficacy. The AMPA receptor subunits GluA1–4, in both of their two splice variants called flip and flop, are differentially expressed in the brain (Keinanen et al., 1990; Sommer et al., 1990). Moreover, AMPA receptors are tightly associated with and modulated by proteins called transmembrane AMPA receptor regulatory proteins (TARPs). These proteins again exhibit distinct distributions in the brain (Tomita et al., 2003; Moss et al., 2003), and they differ from each other in the way they alter receptor kinetics (Tomita et al., 2005; Kott et al., 2007; Suzuki et al., 2008). It should be noted that AMPA receptor currents have recently been found to be controlled by yet another family of transmembrane proteins (Schwenk et al., 2009), and additional modulatory proteins cannot be ruled out.
Evidence that ampakine effects may differ between subunits and splice variants has been provided in several earlier studies, but overall the differences seemed modest. One of the most frequent findings has been a slight preference for flop over flip variants (Arai et al., 2000; Xia et al., 2005). However, cyclothiazide, which has a particularly strong flip preference (Partin et al., 1994), was much less discriminating than ampakines in the comparative physiological studies mentioned above (Xia and Arai, 2005; Xia et al., 2005), suggesting that differences in splice variants were of minor importance. Subunit composition also does not seem to explain the observed variations in drug effect, in part because most neurons express multiple subunits that are usually assembled into heteromeric receptors (Petralia and Wenthold, 1992; Lu et al., 2009). One of the most important factors in this regard is the presence of GluA2 because receptors containing this subunit do not pass calcium and because it often distinguishes interneurons from pyramidal cells (Geiger et al., 1995). However, in Xia and Arai (2005), receptors in both pyramidal neurons and radiatum giant cells were found to contain GluA2, yet ampakine effects differed drastically between these cells. Therefore, it seems likely that factors other than subunit and flip-flop type contribute to ampakine efficacy. Of particular interest are the TARPs of which six variants (γ2-γ5, γ7, γ8) have now been shown to associate with AMPA receptors (Nicoll et al., 2006; Kato et al., 2008) and for which regional expression appears to be more distinctive than for receptor subunits. In the adult brain, for example, the TARPs γ3 and γ8 are strongly dominant in hippocampal neurons, whereas γ4 is largely absent, and an inverse pattern is found in the thalamus (Moss et al., 2003; Tomita et al., 2003). For the present study, we have used binding assays to examine the impact of some of these factors on drug efficacy. The design of the experiments is based on earlier observations that ampakines increase the affinity for agonists in binding tests and that the increase in agonist binding correlates positively with the efficacy to slow response deactivation in physiological recordings (Kessler et al., 1996; Arai et al., 2002; Kessler and Arai, 2006). In one set of experiments, we have expressed GluA1–4 alone and in combination with the four type I TARPs that are most widely distributed in the forebrain (γ2, γ3, γ4, γ8) and examined whether there are differences in ampakine potency and efficacy. In parallel, we have examined whether there are variations in drug effects between brain regions, whether they mirror those seen in physiology, and whether they can be explained by those seen with recombinant receptors.
Materials and Methods
Plasmids.
Dr. K. Partin (Colorado State University, Fort Collins, CO) generously provided the cDNA for GluA1i and GluA2i in the mammalian expression vector pRK5 and GluA4i in mammalian expression vector pRK7. The cDNAs for TARP subunits γ2, γ3, γ4, and γ8 in mammalian expression vector pcDNA3 were generously supplied by Dr. D. S. Bredt (University of California, San Francisco, CA).
Transient Transfection of HEK293 Cells.
HEK293 cells were grown in a 10-cm culture dish until they were 70 to 90% confluent. Cells were then transfected with 10 μg of total plasmid DNA by using Lipofectamine 2000 (DNA:Lipofectamine = 1:2) in Opti-MEM serum-free medium (Invitrogen, Carlsbad, CA). Cotransfections contained 5 μg of a plasmid with AMPA receptor cDNA and 5 μg of a plasmid with TARP cDNA. When AMPA receptors were expressed alone, 5 μg of a noncoding vector was used in place of the TARP plasmid. The transfection mixture was replaced with normal culture medium containing 100 μM 6,7-dinitroquinoxaline-2,3-dione (DNQX) after 16 to 18 h. Cells were harvested for binding tests 40 to 50 h after starting the transfection.
Brain Dissections.
Sprague-Dawley rats were anesthetized with halothane and decapitated according to an institutionally approved protocol and in observation of the guidelines of the National Institutes of Health. Adults were 3 to 5 months old, and pups were of postnatal day 14 to 16. The brain was extracted from the skull, immediately placed in ice-cold Hepes-buffered saline (150 mM NaCl, 20 mM HEPES, pH 7.4), and dissected into eight general regions: frontal cortex, parietal cortex, striatum, hippocampus, thalamus, hypothalamus, cerebellum, and brain stem. The sections were frozen in 320 mM sucrose plus 0.2 mM EGTA (pH 7.0).
Membrane Preparation and Binding Assays.
P2 fractions were prepared from frozen brain sections by using a conventional protocol involving homogenization in isotonic sucrose, differential centrifugation, osmotic lysis, and repeated washing (Kessler and Arai, 2006). On the day of the experiment, membranes were thawed, tip-sonicated, washed again, and suspended in Hepes/Tris buffer (HT; 100 mM HEPES, 100 μM EGTA, pH 7.4). Protein was measured according to the method of Bradford (1976), using bovine serum albumin as standard. Binding was measured at 25°C so that the basic kinetic properties of the receptors would be similar to those of receptors in excised-patch recordings. For binding tests, membrane aliquots (5–50 μg of protein) were mixed with 20 nM [3H]fluorowillardiine (FW) and appropriate additions in HT to a final volume of 50 μl. CX546 was added from 166.7-fold concentrated stock solutions in dimethyl sulfoxide; control samples contained dimethyl sulfoxide at the equivalent final concentration of 0.6%. Samples were incubated at room temperature for 30 min and then centrifuged at 22,000g for 10 min. The supernatant was removed, and pellets were washed with 1.5 ml of ice-cold wash buffer (100 mM NaCl, 50 mM KSCN, 5 mM Tris/HCl, pH 7.4). Pellets were dissolved with Beckman Tissue Solubilizer (BTS-450; Beckman Coulter, Fullerton, CA), and scintillation fluid (containing 13 mM acetic acid) was added to determine radioactivity.
Transiently transfected HEK293 cells were rinsed in their culture dish with ice-cold harvest buffer (150 mM NaCl, 10 mM Tris/HCl, 100 μM EGTA, pH 7.4) followed by incubation in this buffer for 2 min at 0°C. In all steps preceding binding, cells and buffers were kept at 0 to 4°C. Cells were harvested with a transfer pipette and homogenized with a PowerGen 125 tissue homogenizer (Thermo Fisher Scientific, Waltham, MA). Homogenates were washed twice by centrifugation at 37,000g for 15 min and resuspension in ice-cold harvest buffer. Homogenates were then subjected to at least one freeze/thaw cycle. To measure binding, cell membranes were thawed, washed, and resuspended in HT. Aliquots (10–30 μg of protein) were mixed with [3H]FW and appropriate additions in HT to a final volume of 50 μl and incubated for 15 min at room temperature. Incubations were terminated by addition of ice-cold wash buffer (5 ml) and immediate filtration through Whatman GF/C glass fiber filters (Thermo Fisher Scientific). Filters were quickly rinsed with an additional 15 ml of ice-cold wash buffer and placed in scintillation fluid to determine the radioactivity content. For recombinant receptors without and with coexpression of TARPs, CX546 dose-response relations were measured with [3H]FW at a concentration equal to one-fifth of the KD determined for individual subunits by Kessler and Arai (2006). For all assays, nonspecific binding was determined by inclusion of 10 mM glutamate and subtracted from total binding. The binding data were normalized to binding without drug and fitted with a sigmoidal function (bottom asymptote = 100, nHill = 1) to determine the EC50 for the drug (apparent drug affinity) and the maximal change in binding, called Emax. The latter is calculated as the percentage of increase over baseline binding in the absence of drug. Prism (GraphPad Software Inc., La Jolla, CA) was used for data analyses.
SDS-PAGE and Western Blots.
P2 brain membrane fractions (40–100 μg of protein) were combined with SDS-PAGE sample buffer and boiled for 2 to 5 min. Proteins were separated in 4 to 12%, Bis-Tris, precast gels (Criterion XT gels; Bio-Rad, Hercules, CA) for 1 h at 190 V and transferred to polyvinylidene difluoride (PVDF) membrane at 50 V for 1 h. The membranes were blocked for 1 h with 5% dry milk and then incubated with primary antibody in 10 mM phosphate-buffered saline, 0.05% Tween (TPBS) for 12 to 18 h at 4°C. After three washes in TPBS, blots were incubated in IRDye680 or IRDye800 (LI-COR Biosciences, Lincoln, NE) goat anti-rabbit antibody (1:10,000) for 1 h at room temperature and rinsed three times in TPBS and then twice in phosphate-buffered saline. Blots were visualized and quantified by using the Odyssey infrared imaging system (LI-COR). The quality of this system was tested against NIH-imaging software (Image J; Bethesda, MD) with Western blots of serial dilutions of recombinant GluA4. Infrared signals were also compared to detection with chemiluminescence (LAS-3000; Fujifilm, Tokyo, Japan). The Odyssey software gave similar results as Image J and superior linearity compared to chemiluminescence, consistent with findings reported by Wang et al. (2007). Primary antibodies were as follows: anti-GluA1 (AB1504; 1 μg/ml), anti-GluA2 (AB1768; 0.5 μg/ml), anti-GluA3 (MAB5416; 5 μg/ml), and anti-GluA4 (AB1508; 1.5 μg/ml) from Millipore (Billerica, MA). Anti-Actin (A2066; 1:200) was obtained from Sigma-Aldrich (St. Louis, MO).
Statistical Analysis.
Binding data of recombinant receptors (Emax and EC50) were analyzed by one-way analysis of variance (ANOVA) (SPSS 12.0; SPSS Inc., Chicago, IL). Some curve fittings were directly compared by F-test (Prism; GraphPad Software Inc.). Data from Western blots were analyzed by t test.
Results
Determination of Ampakine EC50 and Efficacy (Emax).
Interactions between CX546 and the AMPA receptor were assessed from changes in the binding of the agonist [3H]FW. We used [3H]FW because it exhibits high-affinity binding without inclusion of the chaotropic ion thiocyanate that drastically diminishes the ampakine effect but is necessary to achieve reliable binding of the more conventional agonist [3H]AMPA (Kessler and Arai, 2006). In most assays, membranes were incubated with a fixed concentration of [3H]FW and varying concentrations of CX546 up to the solubility limit of 6 mM. As illustrated in Fig. 1A, [3H]FW binding became progressively larger as drug concentration increased. A sigmoidal curve with a Hill coefficient of 1 has previously been shown to provide an adequate fit for all ampakines (Kessler and Arai, 2006). The fitted curve provides an upper asymptote that defines the maximal drug effect and an EC50 value that represents the potency of the drug under the test conditions. The maximal percentage increase in [3H]FW binding over baseline will be called Emax or “efficacy,” and it is obtained by subtracting 100% from the upper asymptote value (see Fig. 1A). As shown earlier (Kessler and Arai, 2006) and illustrated in Fig. 1B, the increase in [3H]FW binding results from a decrease in the dissociation constant KD for this agonist while Bmax remains unchanged. The experimentally determined Emax value evidently depends on the agonist concentration. If b(a) represents binding without drug at the agonist concentration [a] and b′(a) represents binding in the presence of drug, then the ratio R(a) = b′(a)/b(a) = (Emax/100 + 1) is given by the equation R(a) = (a + KD) × (a + KD′)−1, where KD and KD′ represent the agonist dissociation constants without and with ampakine. With a ≫KD this ratio approaches 1. On the other hand, at infinitesimally small agonist concentrations, R is equal to KD/KD′ and thus equal to the factor by which agonist affinity is increased by the drug. For practical purposes, the [3H]FW concentration in our tests was chosen to be as small as possible while still giving reliable binding data. For recombinant receptors, this amount was selected to be approximately one-tenth or less of the KD constant. It will be shown below that under these conditions, Emax is minimally altered by small perturbations in agonist KD.
CX546 Exhibits Specificity for Different Combinations of Receptor Subunits and TARP Variants.
Figure 2A shows the effect of CX546 on the homomeric receptors GluA1, GluA2, and GluA4. For the latter two subunits, the drug effect was nearly identical with an Emax of 99 ± 7% for GluA2 (n = 6) and 101 ± 13% for GluA4 (n = 4). The EC50 was likewise similar with values of 652 ± 105 and 501 ± 106 μM, respectively. For GluA1 receptors, on the other hand, the drug effect was much smaller with an Emax of approximately 15%; the EC50 estimate of 2.4 mM accordingly has a high error margin. Tests with GluA3 are not shown because they were hampered by low receptor expression and inconsistencies in drug effects not seen with any other subunit.
A central goal of this study has been to examine whether TARPs influence the effect of CX546. To test this, HEK293 cells were transfected in parallel with AMPA receptor subunits alone and in combination with each of the TARPs γ2, γ3, γ4, and γ8, and binding assays were done side by side for the various combinations. The main observation has been that Emax values can be greatly influenced by TARPs, as illustrated by two examples in Fig. 2, B and C. Coexpression of GluA2 with the TARP γ3 significantly increased the Emax from 99 ± 7 to 128 ± 7% (n = 6), or by approximately 30% (p < 0.001; Fig. 2B). However, a very different effect was observed when GluA4 was expressed without and with γ4 (Fig. 2C). In this case, the Emax was significantly lower in the presence of the TARP (74 ± 4%) than with GluA4 alone (101 ± 13%, n = 4). Additional tests were conducted to verify that Emax changes are not secondary to changes in FW affinity. We have previously shown that γ2 may change agonist affinity up to 1.5-fold (Kessler et al., 2008), and a similar size shift has been observed for the GluA-TARP combinations tested here (see Fig. 2B inset). The effect of CX546 was therefore measured again for GluA2 + γ3 at a 1.5-fold increased [3H]FW concentration of 6 nM to maintain equal distance to the agonist KD. As shown in Fig. 2B, the Emax was essentially the same as when measured at 4 nM. This result confirms that minor changes in agonist KD do not significantly alter Emax at the low [3H]FW concentration selected for our tests. It should also be noted that a reduction in Emax as seen with GluA4 + γ4 would be contrary to expectation if FW affinity is reduced. An additional influence on Emax could be that TARP coexpression changes the ratio of incompletely versus fully assembled receptors, and that this effect in turn altered the apparent efficacy of CX546 (see Discussion in Supplemental Material). Therefore, we used Blue Native PAGE to evaluate the oligomeric state of recombinant receptors without and with TARPs. Most recombinant receptors were found to be present as fully assembled tetramers. No receptor monomers were detected in either preparation, and the low level of receptor dimer did not change with coexpression of TARPs (see Supplementary Figure S1, A and B). This finding indicates that the changes in Emax caused by TARPs result from changes in receptor pharmacology rather than from different levels in receptor processing.
A more systematic comparison across different GluA-TARP combinations is shown in Fig. 3 and summarized in Table 1. In combination with GluA2 receptors, γ8 increased Emax to 136 ± 8% and thus was even more effective than γ3. On the other hand, γ2 and γ4 produced at best a marginal increase that was not statistically significant (103 and 112%, respectively). In contrast, all four TARPs decreased Emax when coexpressed with GluA4. This reduction was significant for all TARPs, but it was most prominent with γ2 (71 ± 8%) and γ4 (74 ± 4%) and least prominent with γ3 (84 ± 4%) and γ8 (81 ± 10%). Thus, in overall comparisons, TARPs introduced a nearly 2-fold disparity among some receptor-TARP combinations (136% for GluA2 + γ8, versus 71% for GluA4 + γ2). Seen from a different angle, however, both receptor subunits exhibited the largest Emax values when coexpressed with γ3 or γ8 and the smallest values when expressed with γ2 or γ4 (Fig. 3D), suggesting that the nature of the TARP is an important determinant for drug efficacy. On the other hand, the potency of CX546 was not significantly changed by the TARPs with either receptor subunit. Likewise, no clear changes were seen when GluA1 was coexpressed with TARPs, but this result may be largely due to the smallness of the drug effect and the resultant difficulty in detecting differences between dose-response curves.
CX546 Binding Varies in Different Regions of Rat Brain.
The effect of CX546 was also examined in membranes prepared from eight brain regions. Concentration-response curves are shown in Fig. 4, and values for Emax and EC50 are summarized in Table 2. It is apparent that Emax varied considerably between brain regions. The most striking difference is seen between hippocampus and thalamus from adult animals in which Emax values were 189 ± 5 and 68 ± 6%, respectively (n = 3, p < 0.001). Adult cerebellum exhibited a high Emax like hippocampus, but striatum, brainstem, and hypothalamus had an Emax closer to that of the thalamus (80–91%), and cortical membranes were intermediate with an Emax of approximately 110%. In PND14 pups, Emax values for most brain regions were smaller than in adults (Fig. 4B) and regional differences were less pronounced, but hippocampus and thalamus still exhibited the largest disparity. One notable case is the cerebellum in which Emax increased more than 2-fold from pups to adults and thus to a much larger degree than in other brain regions. The EC50 for CX546 also varied between brain regions, being highest in the hippocampus (4.2 mM) and lowest in thalamus and striatum (1.4 mM). However, adult cerebellum despite its high Emax exhibited an EC50 in the lower range (2 mM), and thus there is no clear correlation between EC50 and Emax values.
It was further examined whether solubilization of brain AMPA receptors influences the effects of CX546. Solubilized AMPA receptors have higher affinity for agonists (Hall et al., 1992), but we have previously shown that ampakines are still effective in increasing agonist binding in the solubilized state (Kessler and Arai, 2006). For the present study, we used stringent solubilization with 5% Triton X-100 to effectively remove TARPs from the receptor (see Supplementary Figure S1, C and D). As shown in Fig. 4C, this treatment greatly reduced the disparity in the CX546 effect between hippocampus and thalamus. The Emax values that had differed almost 3-fold in native membranes were 85 and 75% upon solubilization and were intermediate between those for native receptors. Likewise, after solubilization the EC50 values differed less than 2-fold (302 and 596 μM). It is interesting to note that they were in a similar range as those measured with homomeric receptor, but lower than those obtained before solubilization. These results suggest that the AMPA receptors per se exhibit very similar ampakine profiles in these two brain regions, and they support the notion that factors external to the receptors contribute in important ways to drug efficacy and potency.
AMPA-R Subunit Expression in Hippocampus and Thalamus.
Because drug effects differed most prominently between hippocampus and thalamus, we further examined on Western blots the relative content of GluA1–4 in the membrane fractions used for the binding studies. As shown in Fig. 5, the relative abundance of the four subunits differed significantly between the two brain regions. In particular, GluA1 expression was negligible in thalamus, and GluA4 was much more abundant relative to the other three subunits. If we tentatively assume that signal strength on blots is not very different for the various antibodies, then we can estimate that GluA4 accounts for approximately half of the AMPA receptor subunits in thalamus membranes but only approximately 7% in hippocampal membranes. Similar proportions have been reported for AMPA receptor transcript expression (Keinanen et al., 1990; Beneyto and Meador-Woodruff, 2004).
Relationship between Binding and Physiological Properties According to AMPA Receptor Models.
The present study was prompted in part by our earlier observations that drugs that are most effective in prolonging deactivation also cause very large increases in agonist binding. Receptor simulations were therefore used to examine whether these basic relationships can be explained on theoretical grounds. Changes in the binding constant KD and deactivation time constant taudeact were calculated for several receptor models after systematically changing specific sets of rate constants. The findings are shown in Fig. 6 for a conventional single-ligand model (Kessler et al., 2008) and for the 2-ligand model used by Sekiguchi et al. (2002). The latter was used because it may reproduce in good approximation the mode of operation of the presumed functional unit of the receptor, i.e., the subunit dimer (Sun et al., 2002), in particular because it takes into account the steep cooperativity in desensitization, which structural information suggests to be a basic aspect of dimer operation (Sun et al., 2002). As shown, a consistent and large increase in binding affinity was seen with both receptor models if a reduction in the rate of agonist dissociation was combined with a reduction in the rate of desensitization. Slowing channel closing produced much smaller changes, especially in more complex models (Fig. 6B), and changes in desensitization rate constants alone caused a reduction in binding affinity (data not shown, but see Hall et al., 1993). Condition “c” in Fig. 6C is reminiscent of the effects seen with CX546 in that a 10-fold slowing in response deactivation is accompanied by a significant increase in binding affinity and responses to prolonged agonist application become nondesensitizing. Similar results were obtained in simulations with other receptor models (data not shown), including those proposed by Zhang et al. (2006) and Robert and Howe (2003). The latter was examined because it models the binding of four ligands, but its validity remains to be studied further because its predictions for basic binding properties seem to be at variance with actual binding data (see Kessler et al., 2008, for details). In any case, it must be emphasized that all simulation results are qualitative because actual receptor operation is probably more complex than described by any of these models. No attempts were made to simulate the interactions between ampakines and TARPs because the impact of the latter on kinetic rate constants is not yet understood in sufficient detail.
Discussion
Ampakine Effects on Recombinant Receptors.
A major conclusion from these studies has been that ampakine effects differ across receptor subunits and that they depend further on the TARP associated with the receptor. In comparisons between subunits, Emax was almost the same for GluA2 and GluA4 (∼100%) but much lower for GluA1. For unknown reasons, data for transiently expressed GluA3 varied, but experiments with stably expressed GluA3 exhibited Emax values at approximately 70% or higher (data not shown). This result suggests that low Emax is probably specific for GluA1. The second and perhaps more important observation has been that these efficacies are modulated by TARPs. It is interesting to note that the shifts in Emax were in opposite directions for GluA2 and GluA4 and resulted in overall differences as large as 2-fold. Moreover, there was a consistent pattern in comparisons between TARPs in that combinations with γ3 and γ8 always exhibited higher Emax than combinations with γ2 and γ4. TARPs have recently been shown to differ also in modulating various physiological response parameters (Cho et al., 2007; Milstein et al., 2007; Suzuki et al., 2008), but these effects tended to be similar for γ2 and γ3 on the one hand versus γ4 and γ8 on the other. Thus, the pairwise grouping was different from the one seen here where Emax was largest for γ3 and γ8. This result suggests that the influence on Emax is not secondary to a change in a previously characterized physiological parameter and that it represents a novel aspect of GluA-TARP interactions.
Ampakine Effects on Brain Regions.
Another finding of this study has been that there are major differences in the CX546 dose-response relations between brain regions. Most notably, the Emax was almost three times larger in the hippocampus than in most subcortical regions, whereas cortex exhibited low to intermediate Emax. It should be noted that broad comparisons of this kind serve to characterize the dominant receptor populations and that it does not imply that all neurons in a region have identical properties. In fact, in physiological recordings the largest contrast in drug effects was seen between neurons within hippocampal area CA1. However, the interneurons and radiatum giant cells that exhibited minimal drug effects constitute only a minute percentage of the neurons in this area, and our binding data reflect mainly the properties of receptors on pyramidal cells and dentate gyrus granule cells. It is interesting to note that the nearly 3-fold difference in Emax between hippocampus and thalamus is reminiscent of our earlier observation that CX546 is approximately three times more effective in prolonging synaptic responses in hippocampal pyramidal cells compared to thalamic neurons (Xia et al., 2005). Although the numerical likeness may be coincidental, the finding that hippocampal pyramidal cell receptors consistently exhibited the highest drug efficacy in physiology and binding seems to point to a fundamental property of these receptors.
The differences between brain regions may be at least partially explained by our observations with recombinant GluA-TARP combinations. AMPA receptors on pyramidal neurons are usually calcium impermeable and hence contain GluA2, whereas receptors on interneurons and in subcortical regions are often enriched in GluA1 and GluA4 (Geiger et al., 1995; Beneyto and Meador-Woodruff, 2004). In agreement with this, hippocampal membranes contained a large proportion of GluA2 whereas GluA4 was dominant in thalamus membranes. With regard to TARPs, mRNA analysis and immunostaining have shown that γ3 and γ8 are preferentially expressed in hippocampus, whereas γ2 and γ4 are abundant in the thalamus (Klugbauer et al., 2000; Moss et al., 2003; Tomita et al., 2003; Fukaya et al., 2006). Thus, receptors in hippocampal pyramidal cells can be assumed to contain GluA2 in association with γ3 and γ8, whereas receptors combining GluA4 with γ2 or γ4 are more representative of the thalamus. The fact that the Emax of the former combinations was almost twice that of the “thalamic” combinations—and that GluA1 is too low in thalamus to make a significant contribution—is therefore likely to be at least partially responsible for the difference seen between hippocampal and thalamic membranes. Of course, a more comprehensive analysis would have to take into account contributions from GluA3 and from the flop counterparts of GluA1–4, as well as changes that may occur in heterotetrameric combinations of receptors that are more typical in brain (Lu et al., 2009). Nonetheless, our data suggest that the prevalence of the TARP subtype is an important factor for ampakine efficacy.
The expression patterns of receptor subunits and TARPs may also explain binding results in other regions. Many subcortical areas have a high density of GluA1 or GluA4 in combination with γ4 and should therefore exhibit low drug efficacy. This is the case for instance for striatum (high in GluA1 and γ4; Klugbauer et al., 2000; Lilliu et al., 2001; Tomita et al., 2003; Beneyto and Meador-Woodruff, 2004) and many brainstem areas (GluA4 plus γ2 and γ4; Petralia and Wenthold, 1992; Condorelli et al., 1993; Moss et al., 2003). In addition, the general increase in Emax between PND14 and adulthood may reflect the decrease in γ4 occurring in most regions (Tomita et al., 2003; Fukaya et al., 2006). Lastly, the low ampakine efficacy seen in recordings from interneurons (Xia et al., 2005) could again be due to an abundant expression of GluA1 and GluA4 (Catania et al., 1995; Geiger et al., 1995; Leranth et al., 1996) and perhaps a higher expression of γ2 than in pyramidal cells (Fukaya et al., 2006).
Physiological Significance of Binding Emax.
Monitoring drug effects on agonist binding was initially used as a practical way to assess drug potencies and to test for competitive interactions among subclasses of modulators (Kessler et al., 1996), but it subsequently became apparent that changes in agonist binding are also related to effects on fast responses. This result seemed at first counterintuitive because binding is determined by the equilibrium distribution of receptor states. However, the dissociation constant KD for agonists is a function of all rate constants and hence is modulated in principle by any factor that influences receptor operation (Ambros-Ingerson and Lynch, 1993). In practical terms, the KD is determined mainly by the ratio of the rate constants for ligand unbinding and binding, multiplied by the ratio of resensitization and desensitization rates. In accord with this finding, we have shown that cyclothiazide, the main action of which is to attenuate desensitization, lowers the affinity for agonists (Hall et al., 1993; Kessler and Arai, 2006). However, most other AMPA receptor modulators were found to increase the affinity for agonists (Kessler and Arai, 2006), and they have in common that they are more effective in slowing response deactivation. It has previously been suggested that these drugs stabilize the nondesensitized/agonist-bound receptor states by making them energetically more favorable (Nagarajan et al., 2001; Arai et al., 2002), and findings from recent structural analyses support this notion (Jin et al., 2005). This effect would cause a slowing in agonist dissociation, and hence response decay, and at the same time make transition to desensitized states less attractive. Our receptor simulations have shown that the parallel increase in binding affinity and deactivation time constants can be understood as an immediate consequence of this stabilization of the nondesensitized states. It should also be noted, however, that the change in agonist KD caused by a modulator is expected to be smaller if a receptor has a stronger inherent desensitization, and this may potentially explain the smaller effect of CX546 on GluA1, the resensitization rate of which is the slowest among subunits (Kessler et al., 2008). Whether this reaction also entails a smaller drug effect on deactivation rates of GluA1 remains to be determined experimentally. In any case, however, TARPs are thought to influence mainly nondesensitized receptor states (Tomita et al., 2005), and thus variations in Emax across TARPs are not likely to be secondary to changes in desensitization.
The extent to which modulation of Emax by TARPs reflects differences in efficacy to slow response deactivation remains to be examined in physiological experiments. Stargazin (γ2) alters the influence of cyclothiazide on GluA1 receptors (Tomita et al., 2006), and thus it is likely that TARPs also modify the effects of ampakines, not least because they target similar aspects of receptor kinetics. In addition, the correspondences we observed between hippocampus and thalamus support the notion that binding and physiological efficacies are related. Of course, it will be imperative to examine this proposition further by testing CX546 effects in other brain regions like cerebellum and striatum. One potential complication is that drug effects in some regions, like the cerebellum, may be less homogeneous between classes of neurons and may contain contributions from glia. Nonetheless, confirming our prediction that drug efficacy in striatum and brain stem regions is low would substantiate the notion that drug effects are especially large in hippocampal pyramidal cells, and it would provide an explanatory framework for the observation that ampakines have been particularly successful in many hippocampus-dependent tasks (Hampson et al., 1998; Lynch, 2006).
Acknowledgments
We thank Drs. K. Partin (Colorado State University, Fort Collins, CO) and D. S. Bredt (University of California, San Francisco, CA) for providing the plasmids used in this project.
Footnotes
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This work was supported by the National Institutes of Health National Institute of Neurological Disorders and Stroke [Grant NS60093].
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Article, publication date, and citation information can be found at http://jpet.aspetjournals.org.
doi:10.1124/jpet.109.158014
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↵ The online version of this article (available at http://jpet.aspetjournals.org) contains supplemental material.
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ABBREVIATIONS:
- AMPA
- α-amino-3-hydroxy-5-methyl-4-isoxazolepropionic acid
- CX546
- 1-(1,4-benzodioxan-6-ylcarbonyl)piperidine
- TARP
- transmembrane AMPA receptor regulatory proteins
- FW
- fluorowillardiine
- HEK
- human embryonic kidney
- HT
- Hepes/Tris buffer
- PAGE
- polyacrylamide gel electrophoresis
- TPBS
- 10 mM phosphate-buffered saline, 0.05% Tween
- ANOVA
- analysis of variance.
- Received June 22, 2009.
- Accepted August 27, 2009.
- © 2009 by The American Society for Pharmacology and Experimental Therapeutics