![]() | ![]() |
Formats:
|
||||||||||||||
Plasticity in the Olfactory System: Lessons for the Neurobiology of Memory Department of Zoology, University of Oklahoma Address correspondence to: Donald A. Wilson, Department of Zoology, University of Oklahoma, Norman, OK 73019 (e-mail: dwilson/at/ou.edu). The publisher's final edited version of this article is available at Neuroscientist. See other articles in PMC that cite the published article.Abstract We are rapidly advancing toward an understanding of the molecular events underlying odor transduction, mechanisms of spatiotemporal central odor processing, and neural correlates of olfactory perception and cognition. A thread running through each of these broad components that define olfaction appears to be their dynamic nature. How odors are processed, at both the behavioral and neural level, is heavily dependent on past experience, current environmental context, and internal state. The neural plasticity that allows this dynamic processing is expressed nearly ubiquitously in the olfactory pathway, from olfactory receptor neurons to the higher-order cortex, and includes mechanisms ranging from changes in membrane excitability to changes in synaptic efficacy to neurogenesis and apoptosis. This review will describe recent findings regarding plasticity in the mammalian olfactory system that are believed to have general relevance for understanding the neurobiology of memory. Keywords: Olfaction, Plasticity, Memory, Learning, Perception
The field of olfaction has experienced explosive growth over the past decade toward understanding the molecular events underlying transduction, mechanisms of spatiotemporal central processing, and neural correlates of olfactory perception and cognition. A thread running through each of these broad components that define olfaction appears to be their dynamic nature. How odors are processed, at both the behavioral and neural level, is heavily dependent on past experience, current environmental context, and internal state. The neural plasticity that allows this dynamic processing is expressed nearly ubiquitously in the olfactory pathway, from olfactory receptor neurons to the higher-order cortex, and includes mechanisms ranging from changes in membrane excitability to changes in synaptic efficacy to neurogenesis and apoptosis. The olfactory system has proven to be an excellent model system for the study of the neurobiology of memory for several reasons. First, the olfactory system is phylogenetically highly conserved, and memory plays a critical role in many ecologically significant odor-guided behaviors. Thus, many different animal models, ranging from Drosophila to primates, can be taken advantage of to address specific experimental questions. Second, the olfactory pathway is relatively short and perhaps simplified compared to mammalian thalamocortical systems, with second-order neurons projecting directly to a well-described trilaminar sensory cortex. Third, the olfactory system has very strong anatomical ties to the limbic system; for example, both the lateral nucleus of the amygdala and the hippocampal dentate gyrus are three synapses from olfactory receptor neurons in the nose. Finally, the olfactory system is heavily innervated by well-defined neuromodulatory systems known to be important for memory and neural plasticity. This review will describe recent findings regarding plasticity in the mammalian olfactory system that we believe have general relevance for understanding the neurobiology of memory. Following a brief overview of olfactory system functional anatomy, we will review types of neural plasticity expressed in the olfactory system and then how these mechanisms relate to the diverse components of behavioral olfactory memory. Finally, we will attempt to identify some emergent principles of the neurobiology of olfactory memory and outline some potential future directions. Olfactory System Organization Very simply put, the primary olfactory pathway includes the olfactory receptor neurons in the nose (or antenna in many invertebrates), second-order neurons and affiliated circuitry within the olfactory bulb (or antennal lobe), and cortical neurons within the olfactory cortex (or mushroom bodies). However, in addition to this direct pathway, the mammalian olfactory system is strongly interconnected both with the higher-order cortex (e.g., orbitofrontal cortex) and with the limbic system including the amygdala, hippocampus, and perirhinal cortex. A number of recent, thorough reviews of olfactory system functional anatomy exist (Shipley and Ennis 1996; Haberly 2001; Mombaerts 2001; Savic 2002); thus, we will focus here on a few main points. First, although peripheral olfactory functional anatomy appears to emphasize analytical processing of odorants,1 central olfactory circuits very rapidly appear to shift toward architecture emphasizing synthetic processing of odorants. Second, there is extensive multimodal and/or modulatory input throughout the olfactory pathway that appears to allow multisensory and state-dependent convergence with olfactory neurons. This convergent input further enhances synthetic processing of odorants with their context and their biological or learned significance (Fig. 1
The olfactory receptor sheet of both vertebrates and invertebrates includes a population of receptor neurons that express scores (invertebrates) to hundreds (mammals) of different genes that encode olfactory receptor G-coupled proteins (Buck 1996). It appears that single olfactory neurons express a single receptor gene (Serizawa and others 2000) and that the ligands for these G-coupled receptors are generally submolecular components (or features) of an odorant, rather than the entire odorant molecule (Araneda and others 2000). Thus, transduction of a complex odor such as coffee will involve activation of many different olfactory receptor neurons expressing different olfactory receptor proteins, each binding submolecular components of the many different odorants in the headspace of the liquid in your cup. The process of putting the coffee back together begins with the remarkably precise projection of olfactory receptor neuron axons to the olfactory bulb. Despite the scattered mosaic of expression patterns for individual olfactory receptor genes in the olfactory receptor sheet, all receptor neurons expressing the same receptor gene converge onto about two small targets within the olfactory bulb called glomeruli. In the mammal, single mitral cells receive input from a single glomerulus. In addition to glutamatergic input from the receptor neurons, activity of mitral cells is also under the influence of juxta-glomerular interneurons, a large population of GABAergic interneurons called granule cells, as well as numerous centrifugal modulatory inputs such as norepinephrine and acetylcholine (ACh; Shipley and Ennis 1996). Granule cells not only appear to serve as feedback and lateral inhibitory interneurons but also are the target of the majority of centrifugal inputs to the bulb, including from the olfactory cortex and modulatory nuclei. With this circuitry, mitral cells appear to function largely as feature detectors, although the extensive interactions within and between glomeruli and via granule cells both enhances contrast between similar features (Yokoi and others 1995) and begins the process of feature interaction important for eventual synthesis. Mitral cells are glutamatergic neurons that project to the olfactory cortex, cortical nucleus of the amygdala, and entorhinal cortex. The olfactory cortex is subdivided into several regions including the anterior olfactory nucleus, olfactory tubercle, and piriform cortex. Mitral cells terminate in the piriform cortex in patches of terminal arbors, synapsing on the distal apical dendrites of layer II and III pyramidal cells. Termination of mitral cells conveying information from olfactory receptors expressing one type of receptor gene overlaps with input from other receptor types, allowing for convergence of multiple receptors/odorant features onto single cortical neurons (Zou and others 2001). This convergence is dramatically enhanced by a dense network of intracortical association fibers, which terminate on the proximal apical dendrite and basal dendrites of layer II/III pyramidal cells. The cortical afferent and association fiber systems, in addition to being anatomically segregated on the cortical neuron dendrite, appear also to have significant differences in physiology, including plasticity and modulatory control, as described below. This highly associative network is hypothesized to be critical for the final synthesis of the multiple odorant features extracted and refined peripherally into unique odor perceptual objects (Haberly 2001). hi addition, given the variety of nonolfactory and modulatory inputs to the piriform cortex, the cortical associative network is hypothesized to play a role beyond odor processing per se and includes contextual, hedonic, and memorial components of the synthetic odor perception (Haberly 2001). The multimodal, contextual nature of cortical odor processing is also expressed in the orbitofrontal cortex (Schoenbaum and Eichenbaum 1995; Rolls 2000). The orbitofrontal cortex receives some direct input from piriform layer II/III cortical neurons, as well as thalamic input from the medial dorsal thalamic nucleus. Neurons in the orbitofrontal cortex have been shown to respond to specific odors (Critchley and Rolls 1996), specific odor-taste compounds (de Araujo and others 2003), and odor-context cues (Ramus and Eichenbaum 2000). It should be noted that the synthetic output of both piriform and orbitofrontal cortical circuits is fed back to the olfactory bulb, perhaps with a role similar to corticothalamic feedback in other sensory systems (Fig. 2
Neurons in both the olfactory bulb and piriform cortex also project directly to the amygdala and entorhinal cortex, the latter of which serves as a sensory gateway into the hippocampal formation. The role of the hippocampal formation and the amygdala in memory for olfactory cues has been well described (Staubli and others 1995; Eichenbaum 1998; Rosenkranz and Grace 2002) and will not be a focus of this review. As noted above, the olfactory pathway is heavily innervated by modulatory systems known to regulate plasticity and memory in the olfactory system as elsewhere. Both the olfactory bulb and cortex receive a strong cholinergic input from the horizontal limb of the diagonal band of Broca (HLDB), which itself is responsive to olfactory input (Linster and Hasselmo 2000). This creates a potentially interesting feedback loop in which cholinergic modulation of olfactory processing is itself partially under olfactory control. Norepinephrine from the nucleus locus coeruleus also heavily innervates the olfactory bulb and cortex (Shipley and Ennis 1996) and, as described below, plays a critical function in several forms of olfactory system plasticity and memory. Olfactory System Plasticity The olfactory system has at its disposal an extremely wide range of tools for storing information. In response to learning and odor experience, olfactory circuits display short- and long-term synaptic plasticity, nonsynaptic plasticity of membrane biophysics, morphological changes in dendritic complexity, and experience-dependent neurogenesis and apoptosis. This section reviews the forms of plasticity that have been described in the olfactory system and the conditions involved in inducing that plasticity. The next section then describes different forms of behavioral olfactory memory and what is known about their relationship to the neural plasticity toolkit described here. Synaptic plasticity has been hypothesized to be a mechanism of storing information in the nervous system as long as synapses have been known to exist. Chemical synaptic transmission is dynamic, reflecting both recent and, at some synapses, more historical activity patterns. Electrical synapses can also be modulated by experience. In the olfactory system, short-term synaptic plasticity occurs in both the olfactory bulb and piriform cortex to shape current activity in light of recent patterns of input. This short-term synaptic plasticity may be important in adaptation to repeated or prolonged stimulation and in fine-tuning sensory processing to deal with patchy, unpredictable odor plumes. Anterior piriform cortical neurons rapidly adapt to novel odors, despite relatively maintained input from their excitatory afferent, glutamatergic mitral cells (Wilson 1998a). A similar, rapid decrease in odor-evoked spiking occurs in the insect mushroom body neurons (Stopfer and Laurent 1999). Recent work has demonstrated that in the rat, this cortical adaptation may be primarily due to activation of presynaptic metabotropic glutamate receptors (mGluR) on mitral cell axons (Best and Wilson 2004). This synaptic depression has a duration of less than 2 min following a 50-sec odor exposure, as does the reduction of cortical responses to subsequent stimulation with that odor (Wilson 1998b). Blockade of mGluR II/III receptors prevents afferent synaptic depression and cortical adaptation to odors. This mechanism of cortical adaptation allows maintained input to other, nonexperienced afferent inputs (the depression is homosynaptic). In addition, it appears to allow a mechanism of dishabituation in cases in which contingencies or context change and it becomes adaptive to begin responding to the stimulus again. The molecular cascade regulated by mGluR II/III receptors interacts with that activated by noradrenergic β receptors (Cai and others 2001), such that β-receptor activation can reverse the effects of mGluR activation. In accordance, the synaptic depression believed important for cortical adaptation can be prevented by activation of noradrenergic β receptors (Best and Wilson 2004; Fig. 3
Short-term changes in synaptic strength may also be involved in dynamic coding of odors by olfactory bulb circuits. Both temporal (Meredith 1992; Kauer 1988; Perez-Orive and others 2002) and spatial (Spors and Grinvald 2002) patterns of olfactory bulb circuit responses to odors change over the course of even very brief stimulus presentations, suggesting a dynamic remodeling of local circuits, potentially involving changes in synaptic efficacy. For example, in mammals, olfactory receptor axon terminals express dopamine D2 receptors, and a local population of juxtaglomerular neurons express dopamine (Shipley and Ennis 1996). Activation of D2 receptors in the olfactory bulb reduces transmitter release from olfactory receptor axons, effectively reducing the gain of afferent input (Wachowiak and Cohen 1999; Ennis and others 2001). Conversely, a reduction in olfactory stimulation (odor deprivation) causes an N-methyl-D-aspartate (NMDA) receptor-dependent (Puche and Shipley 1999) decrease in dopamine expression in these neurons (Cho and others 1996), which effectively enhances the responsiveness of mitral cells to subsequent stimulation (Wilson and Sullivan 1995). Thus, as with piriform cortical afferents, recent levels of odor stimulation can be remembered and adjusted for through a presynaptic regulation of transmitter release. This mechanism may function over a wide time scale, monitoring activity levels ranging from seconds (Ennis and others 2001) to weeks (Cho and others 1996). Long-term synaptic plasticity is also evident in the olfactory system. In vertebrates, olfactory receptor neurons, mitral cells, and piriform cortical pyramidal neurons are all glutamatergic, and most postsynaptic targets of these neurons express both NMDA and non-NMDA receptors (Shipley and Ennis 1996). Recent in vitro work suggests that olfactory receptor neuron-to-mitral cell synapses can express long-term potentiation (LTP) following high-frequency activation (Ennis and others 1998). The precise role of LTP at this synapse in odor coding or memory is unclear; however, it could shift the balance of excitation and inhibition within a glomerulus to enhance mitral cell output from previously activated glomeruli. Past experience can shift mitral cell odor feature tuning toward the familiar odorants (Fletcher and Wilson 2003), which could contribute to perceptual learning and enhanced odor acuity. The mitral cell–granule cell synapse has also been strongly implicated as supporting long-term plasticity. Granule cells express both NMDA and non-NMDA receptors and express high levels of CAMKII (Zou and others 2002) characteristics that are common in neurons capable of experience-dependent plasticity like LTP. Following associative conditioning, there is a change in the ratio of glutamate release (presumably from mitral cells) to GABA release (presumably from granule cells) in favor of heightened GABA release (Brennan and others 1998). This has been interpreted as an increase in mitral cell to granule cell synaptic efficacy induced by associative conditioning. In young rats, associative odor conditioning enhances mitral cell-suppressive responses to the learned odor (Wilson and others 1985), which has also been hypothesized to result from enhanced mitral to granule cell synaptic transmission. Experience-induced changes in the balance of synaptic excitation and inhibition within the olfactory bulb circuit not only can influence the probability or rate of mitral cell action potential output but also can influence spike timing and firing synchrony between ensembles of mitral cells. This is evident from pharmacological manipulations in invertebrates (MacLeod and Laurent 1996) as well as in work from trans genie mice (Nusser and others 2001). Thus, an enhancement in granule cell GABAergic feedback to mitral cells in transgenic mice (which lack GABAergic inhibition of granule cells) enhances circuit synchrony as evidenced by increased oscillatory power in the olfactory bulb local field potential (LFP; Nusser and others 2001). Increased synchrony of olfactory bulb output neurons could further enhance the probability of LTP-like changes in synaptic strength within the olfactory bulb and/or within olfactory bulb efferent structures such as the piriform cortex. In accord with this interpretation, changes in olfactory bulb LFP oscillatory power in the β (15–35 Hz) and γ (35–90 Hz) frequency ranges are strongly correlated with odor learning and response to familiar odors (Grajski and Freeman 1989; Ravel and others 2003; Martin and others 2004; see below). During odorant sniffing, mitral cells often fire in bursts of activity, with instantaneous firing frequencies of more than 100 Hz, and in individual bursts in phase with the respiratory cycle, which occurs at a rate of 2 to 12 Hz. These firing parameters are nearly identical to the ideal parameters for inducing LTP in limbic circuits (Jung and others 1990). LTP of mitral cell afferent synapses in piriform cortex, however, appears less robust than LTP of intracortical association fiber synapses (Kanter and Haberly 1990; Saar and others 1999), although when afferent input is activated in association with intracortical fibers and GABA blockade (Kanter and Haberly 1993) or in the context of an olfactory learning paradigm (Roman and others 1993), LTP of afferent synapses can be induced. LTP of both afferent and association fiber synapses is NMDA receptor dependent (Kanter and Haberly 1990). The cortical feedback pathway to the olfactory bulb also displays experience-dependent plasticity (Patneau and Stripling 1992), which may play a very important role in shaping subsequent response patterns to familiar odors. Both resting strength and LTP-like plasticity of association synapses (but less so of afferent synapses) can be modulated by nonolfactory inputs such as ACh from the HLDB (Linster and Hasselmo 2001) and norepinephrine from the locus coeruleus (Linster and Hasselmo 2001). For example, ACh muscarinic receptor agonists enhance association synapse LTP. This modulation of plasticity could play an important role in attentional or learning-induced changes in cortical processing and information storage, as discussed below. As discussed above, changes in synaptic strength, particularly in association synapse strength, may affect not only cortical neuron firing probability or rate but also temporal patterning and synchrony of cortical ensembles. Conditioning or experience-dependent changes in LFP oscillatory power in the β and γ frequency bands in piriform cortical circuits have been demonstrated (Bressler 1988). In addition to changes in synaptic strength, several forms of nonsynaptic plasticity have been described in the olfactory system. These include changes in neural membrane biophysics, changes in dendritic morphology, and experience-dependent cell survival. For example, Barkai and colleagues have found an increase in excitability of piriform cortex pyramidal cells after odor discrimination learning (Saar and Barkai 2003). This increase in excitability appears to be due to a decrease in both neuronal adaptation and in a Ca2+-dependent after-hyperpolarization (Saar and others 2001). Interestingly, these learning-induced changes in intrinsic properties of piriform cortical pyramidal cells mimic and interact with the effects of the LTP enhancer ACh (Saar and Barkai 2003), suggesting that once the circuit has begun to learn odor discriminations, subsequent discrimination learning may be facilitated. This “learning to learn” is referred to as set or rule learning and is very robust in rat olfaction (Slotnick and others 2000). Odor experience can also modify the morphology and survival of central olfactory neurons. As has been described in many other sensory systems, dendritic morphology of principal neurons in both the olfactory bulb (Brunjes 1994) and piriform cortex (Wilson and others 2000) can be regulated by the level of odor exposure. The precise role of dendritic morphological changes in odor memory has not been directly examined, although it could allow changes in connectivity of neurons within an ensemble. Neurogenesis of olfactory bulb granule cells occurs throughout life (Rosselli-Austin and Altman 1979), and survival has recently been shown to be dependent on odor experience, with odor deprivation reducing survival (Frazier-Cierpial and Brunjes 1989; Najbauer and Leon 1995) and odor learning or exposure enhancing survival (Rochefort and others 2002). Given the importance of granule cells in odor coding and plasticity described above, it has been hypothesized that odor experience could selectively promote survival of newly generated granule cells into odorant-selective circuits, enhancing memory and discriminability for those odorants (Lledo and Gheusi 2003). Odor exposure during early development may also regulate survival of juxtaglomerular neurons near odor-specific glomeruli (Woo and Leon 1991), although this appears to occur only during early development. Finally, odor exposure is also necessary for survival of a select class of piriform cortical neurons (Leung and Wilson 2003), although the precise function of these neurons is unknown. Neurobiology of Olfactory Memory Olfactory memory, as with memory in general, can be divided into several subclasses (Clark and others 2002). These include 1) implicit memory such as habituation, sensitization, classical conditioning, and perceptual learning; 2) explicit memory such as delayed-match-to-sample paradigms, spatial memory, and paired-associate memory; and 3) set learning or learning to learn. Although specific behavioral paradigms are used to test each of these forms of memory and evidence exists for specific neural mechanisms underlying them, it must be emphasized that in a given context or situation, several of these forms of memory may be evoked at the same time. It should also be noted that although this section will focus on mechanisms of memory within the olfactory system, the types of experiences involved may produce changes in a diverse collection of brain circuits (cortical and subcortical) that may ultimately be required for expression of the acquired memory. Implicit Memory Implicit memory includes habituation, sensitization, classical conditioning, and perceptual learning (Clark and others 2002). Habituation is a decrease in responsiveness to repeated or prolonged stimulation, relatively specific to the repeated stimulus, and subject to dishabituation. Habituation and adaptation allow sensory systems to filter background or currently nonsignificant stimuli while maintaining responsiveness to novel stimuli. Habituation to odors could involve olfactory receptor adaptation and/or central mechanisms. In many thalamocortical sensory systems, cortical neurons adapt more rapidly and completely than more peripheral neurons. This could allow for rapid dishabituation if the contingencies change and the stimulus becomes potentially important. Similarly, although in the olfactory system both receptor neurons (Chaput 2000; Zufall and Leinders-Zufall 2000) and mitral cells adapt to odors (Potter and Chorover 1976; Scott 1977; Wilson 2000), piriform cortical neurons adapt much more rapidly and completely following either prolonged or repeated odor stimulation (Wilson 2000). Cortical adaptation is also more selective (displaying less cross-adaptation) to familiar odors than is mitral cell adaptation (Wilson 2000). The mechanism of short-term depression of cortical afferent synapses described above may contribute to behavioral habituation. Thus, during prolonged odor exposure (e.g., a background room odor), olfactory receptor neurons begin to slowly adapt through a defined Ca2+-dependent mechanism (Zufall and others 1991), mitral cells begin to slowly adapt through an unknown mechanism, and, at the same time, piriform cortical neurons rapidly adapt, in part through a mGluRII/III-mediated decrease in glutamate release from mitral cell axons (Best and Wilson 2004). However, if the odor becomes significant or arousal level increases (dishabituation), central olfactory system responding may return (Scott 1977). One mediator of this dishabituation could be norepinephrine from the locus coeruleus. Norepinephrine has at least two actions related to adaptation in the olfactory system. First, norepinephrine can increase mitral cell responsiveness to olfactory nerve input (Jiang and others 1996). Thus, in rats, a tail pinch can reinstate mitral cell responses to an adapted stimulus (Scott 1977), perhaps in part via a noradrenergic enhancement of mitral cell responsiveness to olfactory nerve input. In concert with this change in the olfactory bulb, norepinephrine can modify/enhance piriform cortical neuron responses to odors (Bouret and Sara 2002; Best and Wilson 2004). In fact, norepinephrine can block afferent synaptic depression to cortical neurons, perhaps via a direct interaction between noradrenergic β receptor activation and mGluRII/III receptors (Cai and others 2001). ACh has also been implicated as modulating odor habituation (Hunter and Murray 1989), although precise mechanisms have not been determined. As mentioned above, the extent of cross-adaptation between similar odors is dependent on whether those odors are familiar. In fact, as in other sensory systems, prior experience can enhance olfactory acuity, enabling greater discrimination of similar stimuli (Fletcher and Wilson 2002; Linster and others 2002), a process called perceptual learning (Wilson and Stevenson 2003). Several of the mechanisms discussed above may contribute to olfactory perceptual learning. For example, simple odor exposure modifies olfactory bulb circuit and mitral cell single-unit responses to subsequent odor presentation at both a very rapid (msec) time scale (Kay and Laurent 1999; Spors and Grinvald 2002) and a long (hours to days) time scale (Buonviso and others 1998; Fletcher and Wilson 2003). The rapid modification can occur within a single brief odor presentation and may reflect a dynamic fine-tuning of odor-responsive ensembles (Kay and Laurent 1999; Spors and Grinvald 2002). However, a long-term cascade is also generated that ultimately produces more permanent changes in subsequent mitral cell odor responses. Of most relevance to perceptual learning, mitral cell odor-receptive fields can shift toward the familiar odor, at least over short distances and along odorant feature dimensions such as carbon chain length (Fletcher and Wilson 2003). These experience-induced changes in mitral cell odorant-receptive fields have been hypothesized to be due to mechanisms related to either changes in olfactory receptor synaptic efficacy (i.e., LTP), changes in mitral cell-inhibitory interneuron synaptic efficacy, and/or changes in efficacy in cortical feedback. In support of changes in inhibitory connectivity, simple odor exposure in invertebrates results in a progressive increase in LFP oscillatory power (Stopfer and Laurent 1999), a measure noted above as being sensitive to local interneuron synaptic inhibition. Regardless of the mechanism of receptive field change, the results suggest that familiar odorant features are encoded differently than are novel features, with perhaps an enhanced representation of familiar features. Simple odor exposure (odor enrichment) also enhances survival of newborn granule cells in the adult mouse olfactory bulb (Rochefort and others 2002). Animals with enrichment-induced increases in granule cell number also have enhanced odor memory (Rochefort and others 2002). This again points to the potentially critical role of these inhibitory interneurons in odor memory, as discussed below. In addition to changes in the olfactory bulb, perceptual learning is also associated with changes within the piriform cortex. For example, piriform cortical neurons show similar levels of cross-adaptation to novel odors as mitral cells. However, after at least 50 sec of familiarization to a previously novel odor, the ability of cortical neurons to discriminate between molecularly similar odorants is greatly enhanced (Wilson 2003). Both behavioral perceptual learning and this change in cortical discrimination can be blocked by the cholinergic muscarinic receptor antagonist scopolamine (Fletcher and Wilson 2002; Wilson 2001). Muscarinic receptor activation enhances LTP of association fiber synapses (Hasselmo and Barkai 1995); thus, scopolamine should reduce cortical synaptic plasticity. Based on theoretical and computational modeling work, it has been hypothesized that activity-dependent enhancement of intracortical association fiber synapses allows patterns of odorant features to be synthesized by cortical ensembles, creating perceptual odor objects from the collection of odorant features extracted by the periphery (Haberly 2001). Once these odor objects have been synthesized, discriminating objects from each other (rather than collections of overlapping features) is enhanced, accounting for enhanced acuity for familiar odors. It should be noted that ACh has also been implicated in the effects of experience on odor coding in the olfactory bulb (Linster and Cleland 2002) to enhance distinctiveness of evoked feature patterns. Similar changes in both the olfactory bulb and piriform cortex have been observed in association with olfactory classical conditioning, although in this model, norepinephrine has been most thoroughly examined as playing a permissive or modulatory role in circuit plasticity. Classical associative conditioning, in which an odorant signals the occurrence of, or is temporally paired with, an unconditioned or biologically significant stimulus, has been examined in several paradigms. These include the associative conditioning underlying neonate recognition of maternal odors in rats, maternal recognition of neonate odors in sheep, learned recognition of mates in mice, and simple aversive conditioning. The results of all of these paradigms implicate similar associated neural mechanisms. First, the olfactory bulb (or accessory olfactory bulb) is modified by the conditioning, generally with an enhancement of synaptic inhibition relative to excitation. Thus, for example, there is an enhancement of the ratio of GABA release to glutamate release in the accessory olfactory bulbs of recently mated mice in response to the learned odor (Brennan and others 1995; Kaba and Nakanishi 1995). Furthermore, there is an increase in suppressive responses to the learned odor in mitral cells near the odor-specific activated glomeruli and a relative decrease in excitatory responses (Wilson and Leon 1988). Finally, there is enhancement (or at least modification) of LFP oscillations that are known to be influenced by synaptic inhibition (Grajski and Freeman 1989; Ravel and others 2003). Importantly, all three of these circuit changes, as well as the learned behaviors, are dependent on norepinephrine release in the olfactory bulb paired with the conditioned odor during learning (Sullivan and others 1989; Sullivan and Wilson 1994). For example, infusion of norepinephrine or receptor agonists directly into the olfactory bulb is sufficient to induce changes in olfactory bulb odor-evoked responses and behaviorally expressed memories of those odors (Gray and others 1986; Sullivan and others 2000). These results suggest that norepinephrine may convey information about the unconditioned stimulus to the olfactory bulb for convergence with odor-specific input. Both granule cells and mitral cells express noradrenergic receptors, and norepinephrine modulates the mitral-granule cell reciprocal synapse (Trombley and Shepherd 1992); however, recent work suggests a critical site of convergence between norepinephrine and odor input may be mitral cells. As shown in Figure 4
The effects of simple associative conditioning on the piriform cortex have been less well studied (Roman and others 1987; Litaudon and others 1997; Datiche and others 2001; Zinyuk and others 2001; Saar and others 2002). Depending on the specific behavioral paradigm used, learning a simple odor discrimination can enhance both afferent synaptic strength (Roman and others 1987) and association fiber synaptic strength (Saar and others 2002), although the association fiber changes may be longer lasting and may be most robust in the posterior piriform cortex compared to the anterior piriform cortex (Litaudon and others 1997). In addition to changes in synaptic strength, membrane properties are modified in layer II piriform cortical neurons, resulting in enhanced excitability as described above (Saar and others 2002). However, these changes in membrane excitability may be more important in priming the cortex for learning subsequent odors than in storing information about specific stimuli (see below; Saar and Barkai 2003). Both the neural plasticity and the behavioral expression induced by training can be modulated with ACh (De Rosa and Hasselmo 2000; Saar and others 2001). In an associative conditioning context, the observed changes in association fiber synaptic strength have been hypothesized to involve not only odor-specific information but also contextual and perhaps multimodal information (Haberly 2001; Linster and Hasselmo 2001). Thus, the “object” representation of odors built up through cortical associative plasticity may include factors well beyond the simple physicochemical features of the odorant itself (Schoenbaum and Eichenbaum 1995; Fig. 5
Explicit Memory Explicit memory includes memory for facts that can be cognitively manipulated and is evidenced in behavioral paradigms such as delayed-match-to-(non)sample and paired-associated memory. Much less is known about specific neural mechanisms of these types of olfactory memory, although brain regions involved have been identified. Neurons in the piriform cortex, orbitofrontal cortex, perirhinal cortex, ventral striatum, and hippocampus may contribute to memory and performance in explicit memory tasks (Slotnick 2001). Work with these paradigms emphasizes that 1) explicit memory is distributed across both primary sensory and higher-order regions (e.g., Schoenbaum and Eichenbaum 1995); 2) even neurons in traditionally primary sensory areas, such as piriform cortex, may respond to multiple, nonolfactory aspects of the conditioning paradigm such as stimulus hedonics and nonodor task-related stimuli (although see the caveat in Fig. 2 Rule Learning Finally, rule learning or set learning is an increase in learning performance with each new stimulus discrimination to be made. Thus, for example, if a rat takes 50 trials to learn to discriminate odor A from odor B, subsequently the same rat may take only 30 trials to learn odor C versus odor D and eventually attain one trial learning on later odor pairs (Slotnick and others 2000). Recent work in the piriform cortex has provided a potential mechanism for rule learning. Barkai and colleagues have found that for several days after learning an odor discrimination task, piriform cortical neurons demonstrate increased excitability, decreased afterhyperpolarizations, and a potential electrotonic shortening of apical dendrites (Saar and Barkai 2003). This combination of biophysical changes results in cortical cells that may fire longer and more intensely to sensory input, making associative synaptic plasticity more likely and thus facilitating learning of subsequent odor discriminations. A similar combination of effects can be induced in naive cortical cells with ACh muscarinic receptor activation (Saar and others 2001), and in fact, once these changes are induced through learning, ACh becomes less effective (Saar and others 2001). Similarly, ACh modulation of odor discrimination learning weakens as rule learning progresses (Saar and others 2001). These data suggest that initial learning primes the cortex into a “sensitive state” for heightened learning of new discriminations. Emergent Principles and Future Directions The work described here suggests that both associative and nonassociative implicit memory are correlated with changes in both olfactory bulb and piriform cortical circuits. Thus, the neural substrates or consequences of even very simple memory are distributed in multiple brain circuits. Just as there are multiple circuits involved in odor memory, so are there multiple synaptic and non-synaptic mechanisms for neural change. These changes result not only in modified behavioral responses to the learned odor but also in modified discriminability and perception of the learned odor. Learned changes occur as early as second-order neurons of the sensory pathway, and inhibitory interneurons play a critical role in expression of learned changes in circuit function. Finally, modulatory inputs, such as norepinephrine and ACh, are critical for modulating neural plasticity and behavioral change. Explicit and set learning are also associated with changes in the piriform cortex and, again, are under the direct influence of neuromodulators. In all three types of memory (implicit, explicit, and set learning), the specific synaptic and neural changes involved not only modify probability or rate of single-unit firing but also affect circuit function as a whole by changing the dynamic between ensembles of neurons—to date, most thoroughly examined in the olfactory system through LFP oscillations. The results described here (and many others we were unable to include) suggest several avenues for future work, three of which will be briefly highlighted. First, as in other sensory systems, the olfactory system has extensive feedback pathways and is the recipient of multiple modulatory and descending inputs. Understanding how these pathways contribute to sensory coding and memory will be critical to understanding this system. Second, as shown so well in the olfactory bulb where there is an output neuron-to-interneuron ratio of approximately 1:50, interneurons are critical in experience-induced change and memory, well beyond notions of lateral inhibition. Future work on how these neurons shape olfactory circuit function could be an excellent way to understand memory functions of interneurons in other systems. Finally, although important work remains in understanding how individual neurons are shaped by experience, more focus must be placed on understating how individual neurons function within ensembles and how those ensembles are affected by learning. The relative simplicity of the olfactory system, the important role of plasticity and experience-induced change in olfactory function, and the power of multiple, highly conserved model systems have made olfaction an ideal system for the study of the neurobiology of memory. Footnotes 1The term odorant is used here to refer to an actual physico-chemical stimulus, whereas the term odor is used to refer to a perceptual object, in accordance with Hudson (2000). 2Importantly, a similar molecular cascade has been identified in mushroom body neurons of Drosophila during odor conditioning (Connolly and others 1996). DAW and ARB were supported by grants from the National Institute on Deafness and Other Communicative Disorders and the Oklahoma Center for the Advancement of Science and Technology. RMS was supported by grants from the National Science Foundation and National Institute of Child Health and Human Development. References
|
PubMed related articles
Your browsing activity is empty. Activity recording is turned off. |
|||||||||||||
J Neurobiol. 1996 May; 30(1):123-76.
[J Neurobiol. 1996]Chem Senses. 2001 Jun; 26(5):551-76.
[Chem Senses. 2001]Nat Neurosci. 2001 Nov; 4 Suppl():1192-8.
[Nat Neurosci. 2001]Neuroscientist. 2002 Jun; 8(3):204-11.
[Neuroscientist. 2002]Annu Rev Neurosci. 1996; 19():517-44.
[Annu Rev Neurosci. 1996]Nat Neurosci. 2000 Jul; 3(7):687-93.
[Nat Neurosci. 2000]Nat Neurosci. 2000 Dec; 3(12):1248-55.
[Nat Neurosci. 2000]J Neurobiol. 1996 May; 30(1):123-76.
[J Neurobiol. 1996]Proc Natl Acad Sci U S A. 1995 Apr 11; 92(8):3371-5.
[Proc Natl Acad Sci U S A. 1995]Nature. 2001 Nov 8; 414(6860):173-9.
[Nature. 2001]Chem Senses. 2001 Jun; 26(5):551-76.
[Chem Senses. 2001]J Neurophysiol. 1995 Aug; 74(2):733-50.
[J Neurophysiol. 1995]Cereb Cortex. 2000 Mar; 10(3):284-94.
[Cereb Cortex. 2000]J Neurophysiol. 1996 Apr; 75(4):1659-72.
[J Neurophysiol. 1996]Eur J Neurosci. 2003 Oct; 18(7):2059-68.
[Eur J Neurosci. 2003]J Neurosci. 2000 Nov 1; 20(21):8199-208.
[J Neurosci. 2000]J Neurosci. 1995 Feb; 15(2):1162-71.
[J Neurosci. 1995]Ann N Y Acad Sci. 1998 Nov 30; 855():657-69.
[Ann N Y Acad Sci. 1998]Nature. 2002 May 16; 417(6886):282-7.
[Nature. 2002]Neurosci Lett. 2000 Mar 24; 282(3):157-60.
[Neurosci Lett. 2000]J Neurobiol. 1996 May; 30(1):123-76.
[J Neurobiol. 1996]J Neurophysiol. 1998 Mar; 79(3):1425-40.
[J Neurophysiol. 1998]Nature. 1999 Dec 9; 402(6762):664-8.
[Nature. 1999]J Neurosci. 2004 Jan 21; 24(3):652-60.
[J Neurosci. 2004]J Neurophysiol. 1998 Aug; 80(2):998-1001.
[J Neurophysiol. 1998]J Neurochem. 2001 Aug; 78(4):756-66.
[J Neurochem. 2001]Brain Res Bull. 1992 Jul; 29(1):111-7.
[Brain Res Bull. 1992]Nature. 1988 Jan 14; 331(6152):166-8.
[Nature. 1988]Science. 2002 Jul 19; 297(5580):359-65.
[Science. 2002]Neuron. 2002 Apr 11; 34(2):301-15.
[Neuron. 2002]J Neurobiol. 1996 May; 30(1):123-76.
[J Neurobiol. 1996]J Neurobiol. 1996 May; 30(1):123-76.
[J Neurobiol. 1996]Ann N Y Acad Sci. 1998 Nov 30; 855():457-66.
[Ann N Y Acad Sci. 1998]J Neurosci. 2003 Jul 30; 23(17):6946-55.
[J Neurosci. 2003]J Comp Neurol. 2002 Feb 11; 443(3):226-36.
[J Comp Neurol. 2002]Neuroscience. 1998 Dec; 87(3):583-90.
[Neuroscience. 1998]Brain Res. 1985 Oct; 354(2):314-7.
[Brain Res. 1985]Science. 1996 Nov 8; 274(5289):976-9.
[Science. 1996]J Neurophysiol. 2001 Dec; 86(6):2823-33.
[J Neurophysiol. 2001]Behav Neurosci. 1989 Aug; 103(4):790-804.
[Behav Neurosci. 1989]Eur J Neurosci. 2003 Jan; 17(2):350-8.
[Eur J Neurosci. 2003]J Neurosci. 2004 Jan 14; 24(2):389-97.
[J Neurosci. 2004]Synapse. 1990; 6(3):279-83.
[Synapse. 1990]Brain Res. 1990 Aug 13; 525(1):175-9.
[Brain Res. 1990]J Neurosci. 1999 Oct 1; 19(19):8616-22.
[J Neurosci. 1999]J Neurosci. 1993 Jun; 13(6):2477-82.
[J Neurosci. 1993]Brain Res. 1993 Jan 22; 601(1-2):265-72.
[Brain Res. 1993]Chem Senses. 2001 Jun; 26(5):585-94.
[Chem Senses. 2001]Behav Neurosci. 1988 Oct; 102(5):740-7.
[Behav Neurosci. 1988]Eur J Neurosci. 2003 Jun; 17(12):2727-34.
[Eur J Neurosci. 2003]J Neurosci. 2001 Feb 15; 21(4):1385-92.
[J Neurosci. 2001]J Exp Psychol Anim Behav Process. 2000 Oct; 26(4):399-415.
[J Exp Psychol Anim Behav Process. 2000]Brain Res Brain Res Rev. 1994 Jan; 19(1):146-60.
[Brain Res Brain Res Rev. 1994]Brain Res. 2000 Jan 24; 853(2):317-22.
[Brain Res. 2000]J Comp Neurol. 1989 Nov 15; 289(3):481-92.
[J Comp Neurol. 1989]Brain Res. 1995 Mar 20; 674(2):245-51.
[Brain Res. 1995]J Neurosci. 2002 Apr 1; 22(7):2679-89.
[J Neurosci. 2002]Neuroreport. 2003 Sep 15; 14(13):1655-63.
[Neuroreport. 2003]Brain Res. 2003 Sep 12; 984(1-2):182-8.
[Brain Res. 2003]Trends Cogn Sci. 2002 Dec 1; 6(12):524-531.
[Trends Cogn Sci. 2002]Trends Cogn Sci. 2002 Dec 1; 6(12):524-531.
[Trends Cogn Sci. 2002]Chem Senses. 2000 Dec; 25(6):695-701.
[Chem Senses. 2000]Chem Senses. 2000 Aug; 25(4):473-81.
[Chem Senses. 2000]Brain Res. 1976 Nov 12; 116(3):417-29.
[Brain Res. 1976]Brain Res. 1977 Aug 26; 132(2):247-58.
[Brain Res. 1977]J Neurosci. 2004 Jan 21; 24(3):652-60.
[J Neurosci. 2004]Brain Res. 1977 Aug 26; 132(2):247-58.
[Brain Res. 1977]J Neurosci. 1996 Oct 1; 16(19):6319-29.
[J Neurosci. 1996]Eur J Neurosci. 2002 Dec; 16(12):2371-82.
[Eur J Neurosci. 2002]J Neurochem. 2001 Aug; 78(4):756-66.
[J Neurochem. 2001]J Neurosci. 2002 Jan 15; 22(2):RC201.
[J Neurosci. 2002]J Neurosci. 2002 Aug 15; 22(16):6842-5.
[J Neurosci. 2002]Trends Neurosci. 2003 May; 26(5):243-7.
[Trends Neurosci. 2003]Nat Neurosci. 1999 Nov; 2(11):1003-9.
[Nat Neurosci. 1999]Neuron. 2002 Apr 11; 34(2):301-15.
[Neuron. 2002]J Neurosci. 2002 Apr 1; 22(7):2679-89.
[J Neurosci. 2002]J Neurophysiol. 2003 Jul; 90(1):65-72.
[J Neurophysiol. 2003]J Neurosci. 2002 Jan 15; 22(2):RC201.
[J Neurosci. 2002]Learn Mem. 2001 Sep-Oct; 8(5):279-85.
[Learn Mem. 2001]J Neurosci. 1995 Oct; 15(10):6592-604.
[J Neurosci. 1995]Chem Senses. 2001 Jun; 26(5):551-76.
[Chem Senses. 2001]Neuroscience. 1995 Dec; 69(4):1075-86.
[Neuroscience. 1995]Rev Neurosci. 1995 Apr-Jun; 6(2):125-41.
[Rev Neurosci. 1995]J Neurophysiol. 1988 Jun; 59(6):1770-82.
[J Neurophysiol. 1988]Behav Neurosci. 1989 Aug; 103(4):790-804.
[Behav Neurosci. 1989]Eur J Neurosci. 2003 Jan; 17(2):350-8.
[Eur J Neurosci. 2003]J Neurosci. 1989 Nov; 9(11):3998-4006.
[J Neurosci. 1989]Brain Res Bull. 1994; 35(5-6):467-72.
[Brain Res Bull. 1994]Behav Neurosci. 1986 Aug; 100(4):585-96.
[Behav Neurosci. 1986]Behav Neurosci. 2000 Oct; 114(5):957-62.
[Behav Neurosci. 2000]J Neurosci. 1992 Oct; 12(10):3985-91.
[J Neurosci. 1992]Brain Res. 1987 Aug 25; 418(2):221-6.
[Brain Res. 1987]Eur J Neurosci. 1997 Aug; 9(8):1593-602.
[Eur J Neurosci. 1997]Brain Res Bull. 2001 May 1; 55(1):95-9.
[Brain Res Bull. 2001]Behav Brain Res. 2001 Sep 28; 124(1):29-32.
[Behav Brain Res. 2001]J Neurophysiol. 2002 May; 87(5):2358-63.
[J Neurophysiol. 2002]Chem Senses. 2001 Jun; 26(5):551-76.
[Chem Senses. 2001]Chem Senses. 2001 Jun; 26(5):585-94.
[Chem Senses. 2001]J Neurophysiol. 1995 Aug; 74(2):733-50.
[J Neurophysiol. 1995]J Neurophysiol. 1995 Aug; 74(2):733-50.
[J Neurophysiol. 1995]Behav Neurosci. 2002 Jun; 116(3):421-33.
[Behav Neurosci. 2002]J Neurophysiol. 1996 Apr; 75(4):1659-72.
[J Neurophysiol. 1996]Neuron. 1999 Feb; 22(2):349-59.
[Neuron. 1999]J Exp Psychol Anim Behav Process. 2000 Oct; 26(4):399-415.
[J Exp Psychol Anim Behav Process. 2000]Eur J Neurosci. 2003 Jun; 17(12):2727-34.
[Eur J Neurosci. 2003]J Neurosci. 2001 Feb 15; 21(4):1385-92.
[J Neurosci. 2001]J Exp Psychol Anim Behav Process. 2000 Oct; 26(4):399-415.
[J Exp Psychol Anim Behav Process. 2000]Chem Senses. 2000 Dec; 25(6):693.
[Chem Senses. 2000]Science. 1996 Dec 20; 274(5295):2104-7.
[Science. 1996]