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The Journal of Neuroscience, June 15, 2001, 21(12):4478-4489
Dynamic and Multimodal Responses of Gustatory Cortical Neurons in
Awake Rats
Donald B.
Katz1,
S.
A.
Simon1, 2, 3, and
Miguel A. L.
Nicolelis1, 3
Departments of 1 Neurobiology,
2 Anesthesiology, and 3 Biomedical Engineering,
Duke University, Durham, North Carolina 27710
 |
ABSTRACT |
To investigate the dynamic aspects of gustatory activity, we
recorded the responses of small ensembles of cortical neurons to
tastants administered to awake rats. Multiple trials of each tastant
were delivered during recordings made in oral somatosensory (SI) and
gustatory cortex (GC). When integrated tastant responses (firing rates
averaged across 2.5 sec) were compared with water responses, 14.4%
(13/90) of the GC neurons responded in a taste-specific manner. When
time was considered as a source of information, however, the incidence
of taste-specific firing increased: as many as 41% (37/90) of the
recorded GC neurons exhibited taste-specific patterns of response. For
17% of the neurons identified as responding with taste-specific
patterns, the stimulus that caused the most significant response was a
function of the time since stimulus delivery. That is, a single neuron
might respond most strongly to one tastant in the first 500 msec of a
response and then respond most strongly to another tastant later in the
response. Further analysis of the time courses of GC and SI
cortical neural responses revealed that modulations of GC firing rate
arose from three separable processes: early somatosensory input (less
than ~0.2 sec post-stimulus), later chemosensory input (~0.2-1
sec), and delayed somatosensory input related to orofacial responses
(more than ~1.0 sec). These data demonstrate that sensory information
is available in the time course of GC responses and suggest the
viability of views of gustatory processing that treat the temporal
structure of cortical responses as an integral part of the neural code.
Key words:
insular; taste; palatability; hedonics; multiple
electrode; coding
 |
INTRODUCTION |
As a rat feeds, multimodal sources
of information concerning the food on its tongue are synthesized into a
gustatory percept. How this is accomplished is unclear. It is known
that subsets of neurons in gustatory insular cortex (GC) respond to the
presence of tastants on the tongue with sustained changes in firing
probability (Yamamoto et al., 1985
, 1989
; Kosar et al., 1986
; Cechetto
and Saper, 1987
; Ogawa et al., 1990
; Hanamori et al., 1998
). Taste specificity of these neurons is typically deduced on the basis of
averaged firing over the seconds after tastant delivery. The responses
of a neuron to tastants are thus described as a single number. Current
theories of gustatory coding treat this single number as the
appropriate measure of the response of a single gustatory neuron.
There are at least two reasons to develop more dynamic descriptions of
gustation. First, neurons from many other sensory systems produce
spatiotemporally structured responses (McClurkin et al., 1991
; Laurent,
1999
; Covey, 2000
; Ghazanfar and Nicolelis, 2001
) and receptive fields
(Ringach et al., 1997
; deCharms et al., 1998
; Ghazanfar and Nicolelis,
1999
). Temporal aspects of sensory responses have proven rich in
information, permitting researchers to determine stimulus identity and
detect multiplexing of information within a spike train (Sugase et al.,
1999
; Christensen et al., 2000
).
Second, temporal analyses may allow researchers to identify the origins
of different contributions to GC activity. Many GC neurons are
multimodal, responding to both gustatory and somatosensory stimulation of the intraoral region (Yamamoto et al., 1989
; Ogawa et
al., 1990
; Hanamori et al., 1998
). This multimodality complicates the
interpretation of GC responses, making it difficult to discriminate chemosensitivity from somatosensitivity. This is a particularly acute
problem in awake animals, which produce tastant-specific orofacial
behaviors [that in turn lead to tastant-specific patterns of
somatosensory stimulation in the oral cavity (Grill and Norgren, 1978
;
Spector et al., 1988
)]. Such patterns may "masquerade" as chemosensory activity in an averaged post-stimulus response, but may be
distinguished from "true" chemosensitivity through analysis of
temporal response properties.
In this study, we have quantified the temporal aspects of GC
single-unit responses to several tastants. Bundles of microwires were
implanted into rat oral somatosensory cortex and GC, and the responses
of single neuron ensembles were measured and analyzed while the rats
received multiple intraoral administrations of NaCl, sucrose, citric
acid, quinine, and nicotine. Fourteen percent of the GC neurons
responded in a taste-specific manner according to analysis of the
overall firing rate, but when temporal aspects of the responses were
taken into account, that number rose to 41%. Often, the stimulus
causing the strongest response changed with post-stimulus time.
Moreover, the combination of response timing, taste specificity, and
the presence or absence of spectral power in the range of the licking
rhythm (5-10 Hz) allowed chemosensory and somatosensory influences to
be identified. The temporal aspects of GC responses offer new insights
into how the rats may identify tastants on the tongue.
 |
MATERIALS AND METHODS |
Subjects. All procedures were in accordance with the
National Institutes of Health guidelines for the treatment of animal subjects and were conducted in compliance with Duke University Medical
Center animal use policies and were approved by the Duke University
Institutional Animal Care and Use Committee. Male (n = 3) and female (n = 8) Long-Evans rats (weight 250-300
gm) were used as subjects for this study. Because the phenomena
reported here were observed in both male and female rats, data will be discussed without further reference to gender. The colony was maintained on a 12 hr light/dark cycle, with sessions run at
approximately the same time each day, during the light portion of the
cycle. Rats were given ad libitum access to food at all
times, but water access was restricted during training and recording
sessions (see below).
Surgery. Animals were anesthetized using a 5% halothane/air
mix, followed by either an intraperitoneal injection of pentobarbital (50 mg/kg; female rats) or intramuscular injections of ketamine and
xylazine (100 and 10 mg/kg, respectively; male rats). Anesthesia was
maintained with small additional injections. Anesthetized animals were
secured in a stereotaxic frame using atraumatic ear bars. After the
scalp was excised, holes were bored in the skull for four to six ground
screws and for one or two microelectrode bundles.
Each electrode bundle included 16 microwires, either 50 µm
Teflon-coated stainless steel wire (NBLabs, Denison, TX) or 25 µm
Formvar-coated nichrome wire. These latter wires were glued to a small
microdrive, such that they could be advanced through the brain in the
weeks after surgery (Katz et al., 2001
). After resection of the dura,
bundles were lowered slowly into layer 5 of GC
or in the case of
moveable bundles, into somatosensory cortex 2 mm dorsal to GC
guided
by stereotaxic measurements and constant electrophysiological
monitoring of the signals from the electrodes. Once in position, the
assemblies were cemented to the skull with dental acrylic, as was a
restraining head bolt. The scalp was then sutured or stapled around the
implant, and antibiotic ointment was applied liberally to the wound.
Most rats were implanted with two intraoral cannulas (Phillips
and Norgren, 1970
), one on each side of the face. Thin polyethylene tubes extended from the space between the first maxillary molar and the
lip, through the masseter muscle and inside the zygomatic arch, and out
through the opening in the scalp. The intraoral cannulas permitted the
delivery of controlled doses of tastant directly onto the dorsal
surface of the rats' tongues.
Behavioral procedures. After surgery the rats were adapted
to handling and were started on a regimen of mild water restriction (45 min access per day in the home cage). Adapted animals were trained to
press a lever once every 30 sec to receive 40 µl of water, ejected
either from an intraoral cannula or from a nozzle in front of the
mouth, while they were immobilized in a specially made Plexiglas
restraint box (Welsh et al., 1995
; Bermejo et al., 1996
; Nishijo et
al., 1998
). The backs of the rats' head caps were bolted to an eyelet
in the front panel of the box, the height of which could then be
adjusted to minimize the animals' discomfort. The rats' front paws
were unrestrained.
Once the animal was trained to lever press on the fixed interval
schedule, the tastant protocol was substituted for the water protocol.
In the case of delivery from a nozzle (which necessitated that the
rat's mouth be open), a lever press was rewarded alternatively with
either a randomly selected tastant or a water rinse. With the use of
the intraoral cannulas, stimuli were delivered under experimenter
control. With either technique, the interval between trials varied
randomly between 45 and 75 sec. Every second trial was an 80 µl water
rinse (delivered, in the case of intraoral cannulation, through the
second cannula).
Under such circumstances the rats remained calm and responsive for at
least 2 hr and still drank between 10 and 15 ml of water in their home
cages during the 30 min after the session. The differences between
delivery techniques presumably affect many aspects of the animals'
behavior and responses, but no differences with regard to the data
presented here were noted. Previous research (Nishijo and Norgren,
1991
) corroborates our observation that to at least a first
approximation, different delivery methods produce similar responses.
Tastants included citric acid (0.02 M), NaCl (0.1 M), sucrose (0.1 M), quinine HCl (0.001 M), nicotine (0.01 M), and water (separate from
its use as a rinse between tastants) delivered through a
nitrogen-pressurized system of polyethylene tubes; flow was controlled
by solenoid valves opened by a computer-produced transistor-transistor
logic (TTL) pulse. These tastants were chosen to be representative of
salty, sour, sweet, and bitter. The concentrations approximate or
somewhat exceed half-maximal stimulus intensities (Frank et al., 1983
,
1988
; our unpublished observations). At least 10 trials (and as
many as 30) were delivered per tastant.
Electrophysiology. Neural recordings began only after
the animal was adapted to restraint and pressing for water reward.
Differentiated neural signals were fed into a parallel processor
capable of digitizing up to 48 such signals simultaneously at 40 kHz
per channel (Plexon, Dallas, TX). Action potentials of no less than 3:1
signal-to-noise ratio were isolated on-line from each signal.
Our criterion for isolation combined an amplitude criterion with a
waveform template algorithm (Nicolelis et al., 1999
). Using
these criteria, we routinely held neurons throughout each 2-3 hr
session. Time-stamped records of stimulus onset and neuronal
spikes were saved digitally, as were all sampled spike waveforms.
Off-line reanalysis incorporating cluster cutting techniques (before
substantive analysis of taste-related activity; see below) confirmed or
corrected on-line discriminations. In the off-line analysis, a group of
waveforms was classified as a single neuron only if it produced
discrete clusters of exemplars in a space made up of principle
components 1 and 2, and if its interspike interval plot showed a
recognizable refractory period followed by a sloping increase to a
maximum at >3 msec (see Fig. 2).
Data reported here were collected from electrodes buried deep in GC
(dysgranular insular cortex: anteroposterior 1.2-1.5, mediolateral
5.2, dorsoventral, approximately
4.5 from dura) (Kosar et al., 1986
).
Rats with moveable electrodes were sometimes run in two recording
sessions: once when the electrode tips were in oral SI, at least 1 mm
above GC, and once again when the electrode tips were in GC. Each
neuron was recorded for one session only.
Single-neuron analysis. Comparison of 2.5 sec of
post-stimulus activity (a length that allowed substantial response
analysis) to various taste stimuli was done in a series of steps, all
of which began with "correction" of the responses: the subtraction of prestimulus firing rates from post-stimulus rates on a
trial-by-trial basis. First, the corrected average firing rates across
the 2.5 sec of post-stimulus activity across trials (this amount of
post-stimulus time was chosen to limit data set size, although not
excluding interesting periods of the responses) were compared with
water responses via t tests and one-way ANOVAs. Stringent
criterion
-values (p < 0.002) were used to
compensate for the large number of comparisons; these conservative
confidence intervals limited the occurrence of false positives. Next,
the corrected responses were divided into 500 msec bins of activity,
and the distribution of firing frequency between time bins that were
averaged across trials was compared with that of water using the
2 independence of distribution test. In
cases in which frequency counts in particular bins were <5, Fisher's
Exact Difference test was used. Repeated-measures ANOVAs for tastant
and time further quantified the difference in tastant-specific response
patterns. Again, required significance values were adjusted to reflect
the number of comparisons.
Third, and finally, an even more precise estimate of the time course of
responses was gained using a moving-average analysis of the
peristimulus time histograms (PSTHs). For this analysis, the firing
rate across a short window of time was calculated, then the window was
moved one spike forward, and another firing rate was calculated, and so
on. The size of the window was scaled to the firing rate of the neuron
being analyzed (the window actually spanned a certain percentage of the
spikes in the spike train, rather than spanning a certain number of
time bins), such that fast changes during periods of relatively high
firing rates were not ignored. The result of this procedure amounted to
a smoothed PSTH, a pseudo-continuous record of the firing rate of a
neuron from 1.5 sec before to 2.5 sec after stimulus onset. This
analysis allowed identification of the occurrence of a firing rate
modulation as well as of the onset time of this modulation (see below).
Significance testing involved computing the mean and SD for all points
before the stimulus; post-stimulus firing was then compared with
prestimulus firing. If post-stimulus firing was continuously above or
below the 99% confidence interval for the t distribution on
the basis of the mean and SD for the prestimulus period, it was
identified as a candidate significant firing rate modulation [for
examples of this type of analysis, see Ellaway (1978)
, Churchward et
al. (1997)
, Tracy and Steinmetz (1998)
, and Blejec (2000)
]. To
ensure that random variations in firing rate were not falsely
identified as modulations, periods of post-stimulus firing were
accepted as significant only if they were more than three times the
length of any peaks in the prestimulus record; that is, they were
required to be much larger than the random fluctuations observed before stimulus onset.
Because this technique smoothes PSTHs, firing rate modulations began
slightly earlier (and ended slightly later) in the pseudo-instantaneous record than in the raw data. This slight broadening was taken into
account in the estimation of modulation onset times: first, the time at
which the pseudo-instantaneous firing rate exceeded the confidence
interval was noted, then one-half of the length of the window used to
construct the moving average was added to this time, and this new time
was designated to be the onset time of the modulation. This calculation
of modulation onset time approximately corrected for the effect of smoothing.
In all cases, latencies were adjusted for the physical delays between
the TTL triggering of the delivery solenoid and the time at which fluid
hit the tongue. The stimulus delivery apparatus was placed an
appropriate distance from an "artificial rat tongue" (two bare wire
tips, separated by 1 mm of air, that were the ends of an open circuit
including a battery and oscilloscope); the second input to the
oscilloscope monitored the TTL pulse to the fluid-delivery solenoid.
NaCl was delivered, connecting and completing the battery circuit, and
the resultant delay between solenoid opening and stimulus hitting the
tongue could be viewed on the oscilloscope. In the case of delivery via
an intraoral cannula, this delay was reliably 45 msec (±4 msec); in
the case of nozzle delivery (which had to be placed further from the
tongue), the delay was 90 msec (±7 msec). Under these circumstances,
the zero time point on the PSTH abscissas properly reflected the
approximate time at which tastants hit the tongue.
Frequency analysis of spike trains was performed using a standard fast
Fourier transform of the point process data. Session-long spike trains
were entered into this analysis. Most of these data, therefore,
represent "spontaneous" activity of the neurons or, more exactly,
neural activity that was related to the rats' general behavioral
traits, which included licking and grooming. For comparisons between
spectra, power was normalized.
Histology. After the last recording session, rats were
deeply anesthetized with sodium pentobarbital (150 mg/kg) and perfused through the heart with 0.9% saline (PBS) followed by 5% Formalin in
PBS. In preparation for histology, 7 sec of DC current (7 µA) was
passed through selected microwires, marking the area below the
electrode tips. After fixation in a 10% sucrose and 10% Formalin solution, 80 µm sections were cut through the implanted areas. Cell
bodies were labeled using cresyl violet. This technique, in conjunction
with careful notation of electrode movement, allowed for localization
of all recording sites.
 |
RESULTS |
Histology
Figure 1 shows a both a schematic
diagram and a coronal section through the rat cortex containing two
representative recording sites. The arrow points to the hole
created by the lesion of the electrode tips, immediately ventral to a
spot at which taste-related neural activity was recorded. The
asterisk labels the location at which somatosensory
responses had been recorded 1-3 weeks previously.

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Figure 1.
Localization of electrode bundles in rat SI and
GC. The arrow points to the hole just above the rhinal
sulcus, where the microwire tips rested at the time of perfusion. The
asterisks above this site mark the approximate position
of the electrode tips when GC and oral SI recordings were made.
Inset, The shaded areas in this
schematic, adapted from Paxinos and Watson (1997) , demarcate the limits
of the regions from which recordings were made. GI,
Granular insular cortex; DI, dysgranular insular cortex;
AI, agranular insular cortex; SI, oral
somatosensory cortex; rs, rhinal sulcus.
|
|
Summary of the neural dataset
Eleven rats (3 male, 8 female) provided 15 data sessions, of which
13 provided data from GC and 2 from oral SI. The total sample consisted
of 107 neurons, of which 90 were in GC (mean/rat = 6.9; range
4-11) and 17 were in SI (mean = 8.5; range 7-10). Spontaneous
firing rates were generally low, with the median below 1 spikes/sec;
outliers (presumably interneurons) with firing rates as high as 40 spikes/sec raised the mean spontaneous firing rate to 4.8 spikes/sec.
Nine of the sessions, including both of the somatosensory cortical
sessions, involved bilateral recordings. The average number of neurons
isolated per bundle was 4.5, with a range of two to eight. Except as
noted, all of the below results pertain to the gustatory cortical sample.
Basic characterization of gustatory activity:
integrated responses
Figure 2A presents
raster plots and associated PSTHs for three simultaneously recorded GC
neurons. Several tastant-specific responses can be seen in the sample
(and are validated by the moving window analysis of firing rate
described in Materials and Methods). Neuron 1 responded to NaCl and
acid (albeit with slightly different latencies), whereas neuron 2 responded to quinine at 1 sec and to acid at 1.25 sec. Neuron 3 produced different inhibitory responses to various tastants. That is,
its firing was tonically inhibited by NaCl, acid, and water, but at
different post-stimulus times for each. These inhibitory responses are
made plain by the aggregation of several trials per stimulus. In
general, however, the low spontaneous firing rates observed in GC makes
it more difficult to detect statistically significant inhibition than excitation. This is evidenced by the fact that the slightly less consistent inhibition after sucrose administration (note the
trial-to-trial raster differences) failed to reach statistical
significance.

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Figure 2.
A simultaneously recorded set of gustatory
cortical neurons. A, Responses to different tastants are
arrayed horizontally, and different neurons are arrayed vertically
(Neurons 1-3). Raster plots for
individual trials are stacked above the summary PSTHs, in which the
ordinates are spikes per second. Note that the number of trials
delivered differed for different tastants, such that the height of
individual rasters differs between panels. The vertical
lines at the 0 sec time point on the abscissas
represent the time at which the tastant hit the tongue.
B, The waveforms and interspike interval plots
(abscissa is time after spike in milliseconds;
ordinate is number of spikes) for the neurons
(Neurons 1-3) in A,
demonstrating that each isolation was a single neuron.
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|
The most basic analysis confirmed that GC neurons responded to
somatosensory or gustatory stimulation, or both. For this
analysis, the average firing rates for the 2.5 sec periods after
stimulus presentations were standardized by firing rates calculated
from equivalent prestimulus periods on a trial-by-trial basis (see Materials and Methods). Neurons were determined to be taste-specific if
the overall firing rate in the 2.5 sec after stimulus delivery was
significantly different for at least one tastant than for water (by
t test; see Materials and Methods). According to this metric, 14.4% of the sample (13/90) responded to gustatory stimulation in a taste-specific manner (p < 0.002; all
t > 3.6). The spontaneous firing of these neurons
(mean 8.3 spikes/sec; range 0.01-26 spikes/sec) was not significantly
different from that for non-taste-specific neurons.
Of these 13 taste-specific neurons, 9 (10% of the entire GC sample)
responded predominantly with an excitatory firing rate change, and 4 (4.4% of the total) responded predominantly with an inhibitory firing
rate change. Because both excitatory and inhibitory changes were
observed, absolute response was used to derive the "best stimulus"
for each neuron. Five neurons were NaCl-best (three excitatory, two
inhibitory), three were acid-best (two excitatory, one inhibitory), two
were sucrose-best (one excitatory, one inhibitory), two were
quinine-best (both excitatory), and one was nicotine-best (excitatory).
The percentage of GC neurons that responded to a subset of tastants
according to this metric is similar to percentages (i.e., ~10%)
reported for other cortical data sets (Yamamoto et al., 1985
; Kosar et
al., 1986
; Cechetto and Saper, 1987
; Yamamoto et al., 1989
; Ogawa et
al., 1990
; Hanamori et al., 1998
).
In Figure 3, which summarizes this
analysis, the 13 taste-specific neurons are arranged 1 per column, with
responses to a particular tastant in each row, and the strongest
tastant response for each neuron is marked with a filled
bar. "Sucrose-best" neurons are listed first, in descending
order of absolute response. "Quinine-best" neurons are listed next,
followed by "NaCl-best," "citric acid-best," and
"nicotine-best" neurons. The significance of these inhibitory responses becomes evident only through the application of multiple trials per tastant.

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Figure 3.
Taste-related GC responses by 2.5 sec averages.
Bars represent spikes per second, averaged from 2.5 sec
of post-stimulus response, and corrected for prestimulus firing rates.
The responses of each neuron to the five tastants are arrayed
vertically. The filled bars denote the strongest
absolute response of that neuron, that is, the best tastant. The first
two neurons (Neurons 1-2) are
sucrose-best, the next two (Neurons
3-4) are quinine-best, the next five
(Neurons 5-9) are NaCl-best, the next
three (Neurons 10-12) are acid-best, and
the last (Neuron 13) is nicotine-best.
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|
We considered the possibility that because water evokes a response in
some GC neurons (Yamamoto et al., 1989
), some neurons with
taste-specific responses might have been missed by the t test analysis. We repeated the basic analysis of the responses of each
neuron using one-way ANOVAs for all possible tastants, including water.
This analysis revealed, for each neuron, whether the response to any
particular stimulus differed from that to other stimuli (whereas the
t test analysis revealed whether any tastant response
differed from that to water). The sample of taste neurons revealed by
this analysis was similar to that revealed by t test: 17.7%
of our sample (16 neurons) responded to some subset of the stimuli
(including the 13 shown in Fig. 3). For the three other neurons
revealed as tastant-specific by ANOVA, the responses to water were
intermediate in size to the responses to different tastants, and only
the strongest and weakest tastant responses differed significantly from
each other.
Reevaluation of gustatory responses using 500 msec bins
Complexities of the GC response are not revealed in the overall
average firing rates, because the spike rate averages deemphasize and
even mask reliable but phasic modulations of firing rate (Fig. 2A). Moreover, if only the overall rate is used to
deduce gustatory responses, periods of relative excitation and
inhibition in a response may cancel out one another (note that in Fig.
5, neither unit 7a nor 17b qualified as tastant
specific by analysis of the overall firing rate).
The delivery of multiple trials made it possible to examine the neural
responses more closely and to discern within them distinct epochs of
firing rate modulation. We reexamined GC responses with post-stimulus
time divided into 500 msec bins. Figure 4
displays examples of this reanalysis, showing the gustatory responses
of two GC neurons for each 0.5 sec bin. The responses of the neurons changed from bin to bin. These changes, in fact, were the rule rather
than the exception. Indeed, 27.8% (25/90) of the GC sample showed
reliable taste-specific responses when analyzed using
2 and Fisher's Exact tests
[p < 0.005, all
2 (4)
>21.95]. This group included 8 of the 13 neurons labeled as taste
neurons on the basis of their overall firing rates, but 22% (17/77) of
the neurons that were not classified as taste specific according to
their overall firing rate exhibited response patterns that differed
from their water responses. Five of the neurons that were identified as
tastant specific by overall firing rate were not identified by
2 and Fisher's tests as having a
tastant-specific pattern of firing; the tastant-specific responses of
these neurons were stable across bins. Overall, 33.3% (30/90) of the
GC neurons were taste specific according to either their overall firing
rate or the time course of their firing rate modulations (Table
1).

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Figure 4.
The time courses of gustatory responses in two GC
neurons. The bin size is 500 msec, and error bars represent trial-wise
SEMs. The horizontal line in each panel shows the
average prestimulus firing rates. Filled bars represent
the strongest response in that particular time bin. Neuron
1 responded to all tastants but not to water. The pattern of
response (an initial excitation followed by a decline of activity over
time) was similar for each tastant, but the amount of excitation varied
between tastants (being greatest for nicotine and least for quinine),
such that the tastant producing the most significant firing rate
modulation differed at different time points. Neuron 2
produced a small, time-varying response to water but produced large
responses to all tastants (except acid). The responses to different
tastants had different time courses, peaking earlier for sucrose than
for other tastants, and peaking higher in the 0.5-1 sec bin for
quinine and nicotine than for NaCl. Again, the strongest responses
varied with time.
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Tastant-specific GC responses could be thought of as spanning the range
between the two extremes epitomized by the responses seen in Figure 4.
At one extreme were responses to tastants that differed in shape from
that to water, but differed from each other only in magnitude. For
example, neuron 1 was unresponsive to water but responded to all
tastants with an initial increase and subsequent decline of firing
rate. At the other extreme were taste-specific neurons (e.g., neuron 2)
that had multiple response shapes, such that responses differed not
only between tastants and water, but also between the tastants
themselves. For neuron 2 the response to sucrose starts high and
declines, whereas the response to nicotine starts low, builds, and then
declines. The citric acid response is stable across the first second
and then declines (but not as quickly as does the water response).
To test whether GC neurons responded to different tastants with
differently timed patterns of action potentials, we analyzed data from
the 25 taste-specific neurons (normalized to prestimulus firing) in
two-way ANOVAs (one per neuron) with time bins and tastants as the
factors. The appearance of significant time × tastant
interactions was taken as evidence for temporal differences between
tastant responses. This analysis revealed that 40% (10/25) of the
neurons with taste-specific firing patterns produced different across-bin response "shapes" (that is, different patterns of firing rate change from bin to bin) to different tastants
(p < 0.05; all F > 5.19).
The temporal aspects of the GC responses are also reflected in the
dynamic quality of their chemosensory profiles (that is, the order of
effectiveness of the tastants). We calculated the "best tastant"
(the stimulus that induced the strongest response) for each neuron at
each bin of time. To take the trial-to-trial variability in firing into
account, t values were used to measure strength of response
instead of raw firing rates. For both of the neurons displayed in
Figure 4, the best tastant appeared to change between bins. For
instance, neuron 1 could be described as a nicotine-best neuron for the
first two bins, but by bin 3 the response to quinine was inhibited to a
degree that was larger in t value than the excitation caused
by nicotine, and in bin 5 the response to acid was inhibited even
further. Neuron 2, meanwhile, started as a sucrose-best cell and became
a quinine-best cell soon thereafter. Each of the 10 neurons with
multiple response shapes had time-varying best stimuli, as did 5 of the
neurons that did not demonstrate significantly different response
shapes between tastants. This finding suggests that, at best, the
overall firing rate provides a characterization of GC neurons that
throws away potentially useful information about tastant
responses (see Discussion).
The continuous time course of GC responses
Although partitioning GC responses into 500 msec bins allowed us
to observe temporal aspects of tastant responses and dynamic neural
response profiles, it nonetheless represents a coarse look at the time
course of gustatory activity and obscures precise onset times of firing
rate changes. To examine more closely the temporal responses of our GC
neurons (and to minimize the effect of arbitrary bin sizes), firing
probabilities were again reanalyzed, this time using a moving-average
analysis. This analysis provided a pseudo-continuous quantification of
firing rate and permitted us to identify the occurrence of each
significant firing rate change. Significant shifts in firing rate were
considered stimulus specific only if the responses to other tastants
were not strongly tending in the same direction at the same time.
This analysis slightly increased the proportion of the neural sample
that could be identified as taste specific to 35.6% (32/90). This
means that 35.6% of the neurons responded significantly to at least
one tastant in at least one time period after stimulus onset during
which the neuron did not respond to other tastants or to water. Again,
these neurons could not be distinguished from the rest of the GC
neurons on the basis of spontaneous firing rates. When neurons were
included that were tastant specific by overall firing rate but not by
pattern, an overall 41% (37/90) of the sample consisted of neurons
with taste-specific response properties. Table 1 summarizes the
findings across analysis method.
Figure 5 presents the responses of three
simultaneously recorded GC neurons, each of which responded in a
temporally complex and tastant-specific way. Solid lines
appear above the PSTHs during periods of statistically significant
excitation, and dashed lines indicate significant
inhibition. Neuron 7a, which did not respond in a tastant-specific
manner according to an analysis of overall firing rates, produced an
initial inhibition in response to all tastants, but produced late
excitation only in response to citric acid, sucrose, quinine, and
nicotine. The early inhibition caused by NaCl lasted more than twice as
long as that caused by water. Neuron 17b, meanwhile, responded to
sucrose with an early, brief excitation, and to quinine and nicotine
with similar early inhibition. NaCl caused brief inhibition as well,
albeit slightly later. The initial response to water was deeply
inhibitory and grew less so with post-stimulus time. Inhibition also
emerged late in the NaCl, citric acid, and quinine responses. The taste
specificity of neuron 17b cannot be observed when the post-stimulus
period is considered as a single number reflecting the average firing rate across a 2.5 sec post-stimulus interval.

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Figure 5.
Temporal coding in an ensemble of three
simultaneously recorded GC neurons. Time before and after stimulus
delivery is displayed along the abscissas. The
ordinate is number of spikes per second. The firing
rates during periods marked with solid lines were
significantly above baseline, as calculated using a moving window (see
Materials and Methods). The dashed lines indicates
below-baseline firing rates. The vertical dashed lines
mark stimulus onsets.
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Another variant of tastant-specific time course of firing can be seen
in neuron 24a. The general response pattern of this neuron is similar
to all stimuli: a sharp excitatory response followed by moderate
steady-state excitation. The magnitudes and time courses of the
responses, however, differ between tastants. In particular, the
response to water in the first 500 msec is smaller than that of citric
acid and sucrose (by t test; p < 0.002), but at later times all responses are similar. This temporal effect is
not reflected in 2.5 sec firing rate averages. In summary, we found
that even neurons that responded with similar modulations to more than
one stimulus often showed tastant-specific time courses of response.
Such temporal specifics were identified in 36% of these GC neurons
(Table 1).
Sources of gustatory activity reflected in
response dynamics
One value of the moving-average representation of firing rate is
that it permits investigation into the onset times of firing rate
changes and therefore into whether GC firing rates tend to be modulated
during particular time periods. Using this analysis, the chemosensory
dynamics could be distinguished from somatosensory components of the
responses. Within 540 responses analyzed (the PSTHs of 90 neurons to
six tastants each), 412 modulations of firing rate were observed.
Responses containing more than one modulation (Fig. 5) contributed more
than one onset to the total (30.9% of the responses contributed two
separate modulations, 7.3% contributed three, and 2.2% contributed
four). Figure 6A presents a frequency histogram of the modulation onsets: the number of
firing rate modulations that occurred at different times after stimulus
onset, totaling 412 onsets. The distribution of onset times appears
bimodal, with one peak appearing between 0 and ~400 msec and another
between 1 and 2.5 sec after stimulus delivery. It follows that at least
two separate processes underlie the production of firing rate
modulations.

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Figure 6.
Distribution of modulation onset times
across the entire neural sample. A, This frequency
histogram displays all of the separate modulation of firing rate onset
times. Latency is the abscissa, and the number of times
that neurons in the sample produced firing rate modulations at that
latency is the ordinate. One peak can be seen at 0-400
msec; a second peak begins at ~1 sec and peaks before 1.5 sec.
B, A replotting of the individual onsets that occurred
<800 msec after stimulus delivery, with onset number on the
abscissa and latency (post-stimulus presentation) on the
ordinate. The graph has an inflection point; two
regression lines, one calculated from only the first 50 points, and the other from only the last 50 points, indicate that the
onsets from 0-800 msec post-stimulus delivery are actually composed of
two separate populations of latencies, one early (<~200 msec)
and one later. The horizontal dashed line denotes the
point of crossing of the two regression lines. C, A
similar replotting of the response onsets that appeared between 400 and
1600 msec after stimulus delivery. The regression line
here is essentially the same one calculated on the middle onsets in
Figure 6B; it aligns well with the onsets between
400 and ~1000 msec after stimulus. The deviation from this
regression line marks the start of the late population
of modulations and matches the late peak in Figure
6A. The dashed line denotes the
approximate time of this deviation.
|
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Closer examination of the onset times, however, reveals that the
distribution contains three "populations" of onsets. To more closely analyze the modulations, the first 1600 msec of the data in
Figure 6A were extracted, sorted, and replotted, such
that each modulation could be visualized as an individual circle. This reanalysis appears in Figures 6, B and C. Figure
6B includes the ~150 modulations that occurred
between 0 and 800 msec after stimulus administration and plots each
modulation as an individual circle (the earliest first, the second
earliest next, etc.) against onset time in the ordinate. A piece-wise
linear correlation calculated from the first and last 50 data points
gives a good fit to the distribution. This result suggests that the
early onsets may have arisen from two distinct (but overlapping)
populations of responses: an "early" set that supplied latencies
between 0 and ~200 msec after stimulus onset and a "middle" set
that supplied latencies >200 msec after stimulus onset.
Figure 6C shows a similar plot of all modulations that
occurred after 400 msec and before 1600 msec after the stimulus (note that the ordinates of Fig. 6, B and C, overlap).
The linear region denoting the middle responses fits well to the shown
regression line, calculated on the basis of the first 30 data points;
this regression line is the same one calculated on the last 50 points of Figure 6B. At ~1 sec after the onset of the
stimulus, however, the distribution deviates from this regression line,
reflecting the appearance of the first members of a third population of
modulations, the "late" modulations.
It therefore appears that three "sets" of modulations
one early
(from 0 to ~200 msec), one middle (from ~200 msec to ~1 sec), and
one relatively late (starting at ~1 sec after stimulus onset)
make up the significant neural responses to stimulus administration (see
Fig. 8). Several supplementary tests validate and explain this division
of the data. First, we were able to identify the early set of
modulations as related to the somatosensory experience of the tastant
hitting the tongue. Such a characterization was to be expected, given
the nature of GC connectivity and the known facts about transduction
and the transmission of information in the gustatory system (Di Lorenzo
and Schwartzbaum, 1982
; Herness and Gilbertson, 1999
). It was
hypothesized that if these modulations primarily represented
"prechemosensory" somatosensory responses, they essentially would
be lacking in taste specificity. This proved to be the case: only 1 of
the 14 neurons that responded with an initial latency of <175 msec did
so in a taste-specific manner. That is, if a neuron responded to one
stimulus with a latency of <175 msec, it almost certainly responded to
all stimuli, including water, with a similar latency. The later
modulations drove the taste specificity of our neural sample, although
18.9% of the neurons that produced taste-specific responses (7/37
neurons) also produced extremely early, somatosensory responses.
We further hypothesized that the late onsets might be
related to tastant-specific orofacial movements, which typically appear as early as 1 sec after tastant administration (Travers and Norgren, 1986
) and were present in the rats (our unpublished
observations). Investigation of this hypothesis rested on the
assumption that orofacial behaviors generally reflect the tastant's
palatability (Breslin et al., 1992
). If the late responses reflect such
orofacial behaviors, then they should "code" similarly palatable
tastants similarly. To test this hypothesis, we designated quinine and nicotine as hedonically "negative" tastants and sucrose and NaCl as
hedonically "positive" tastants. We then compared the correlation coefficients between the responses of pairs that were consonant in
hedonic quality with those of pairs dissonant in hedonic quality. During the period between 0.5 and 1.5 sec after stimulus delivery, the
correlation between quinine and nicotine (and between sucrose and NaCl)
was equal to that between sucrose and quinine (and between NaCl and
nicotine). The ratio of variances accounted for at this point was 0.92, which means that grouping the tastant responses by hedonic quality of
the tastant did not improve the variance accounted for (Fisher's
Z < 1). In the period from 1.5 to 2.5 sec, however,
the correlation between similarly palatable tastants became
significantly higher than the correlation between more and less
palatable tastants (t of Fisher's Z = 1.89;
p < 0.028). The ratio of the
R2 for hedonically similar
tastants to the R2 for
hedonically dissimilar tastants in the late response is 1.76, indicating that palatability almost doubled the ability to predict the
response. The pattern was similar for neurons with taste-specific responses and those cells distinguished by late responses. During the
response period dominated by the middle set of modulations, GC activity
seems primarily related to chemosensory processing, whereas late in
post-stimulus time it appears that GC activity becomes strongly
influenced by hedonic quality.
Although the correlational analysis makes it clear that GC responses
come to reflect the palatability of the tastants over the course of
1-2 sec, this finding still leaves at least two possibilities as to
the specific source(s) of the late modulations. They could represent
actual processing of palatability, or they could be the result of
palatability-specific somatosensory stimulation related to the
emergence of palatability-specific orofacial behaviors (themselves the
result of palatability processing). We found evidence that both
the early and late modulations in fact represent somatosensory contributions to GC activity.
We hypothesized that if the source of the earliest and latest GC
response modulations is to some degree somatosensory, then it should be
possible to demonstrate more directly the presence of somatosensory
input to these neurons. Specifically, it should be possible to observe,
within the whole-session spike trains of these neurons, a frequency
domain "signature" in the somatosensory responses ~5-10 Hz, the
rate at which rats lick. Rhythmic licking should cause rhythmic
stimulation of somatosensory receptors in the oral cavity, which in
turn should modulate the spike trains of oral somatosensory neurons
according to the same rhythm. Thus it is possible to predict the
presence of a frequency-specific excess of power in spectral analyses
of those spike trains. Such a signature should be less prominent or
lacking in neurons that only take chemosensory input.
To demonstrate the viability of this analysis, we present
in Figure 7A the averaged
spectra (calculated via fast Fourier transforms) of all entire
session-long spike trains collected from oral somatosensory cortex
(dashed line) and gustatory cortex (solid line).
We found that somatosensory responses from the oral region tended to be modulated at 5-10 Hz. The averaged spectral responses of neurons in
GC, meanwhile, lacked this hump in the power spectrum. This suggests
that, as expected, the spike trains of neurons with oral somatosensory
input show a signature of lick rate.

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Figure 7.
Spectral analysis of somatosensory and
chemosensory responses, computed using the fast Fourier transform. For
each plot, the abscissa is frequency, and the
ordinate is normalized power, rescaled to have a mean of
0 and SD of 1. A, The averaged spectra of all the
neurons recorded during the somatosensory cortex sessions
(dashed line) and of all the neurons recorded during the
gustatory cortex sessions (solid line). Note the excess
of power in the 5-10 Hz range, present in the somatosensory cortical
recordings and absent in the gustatory cortical recordings.
B, Similarly constructed average spectra taken
exclusively from GC recordings. Shown are the spectrum of neurons with
taste-specific responses (solid line), the spectrum
derived solely from cells with early somatosensory responses
(dashed line), and the spectrum derived solely from
cells with late responses (dot-dash line).
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Figure 7B presents similarly prepared, normalized average
power spectra for the session-long spike trains of three (slightly overlapping) subsets of neurons in gustatory cortex. Note that the data
entered into these analyses are session-long spike trains from neurons
that produced particular tastant responses; although the orofacial
responses to tastants (e.g., those involving gapes) may not
involve a large amount of licking, the session-long spike train of a
neurons receiving somatosensory input from the oral cavity should show
5-10 Hz power because of spontaneous, tastant-related, and
grooming-related licking that occurs throughout the ~2-hr-long sessions. Such proved to be the case. The solid line
represents the power spectra of all 37 taste-specific responders, the
dashed line represents the power spectra of the 14 neurons
that produced early onset responses, and the dotted line
represents the power spectra of the 32 neurons that produced late onset
responses. The neurons with taste-specific responses lack the hump of
5-10 Hz power that characterizes both of the other subsets of neurons (the variability in the hump is to be expected, in that lick rate will
vary slightly both between rat and between tastant). Thus it appears
that like neurons in oral SI (Fig. 7A), neurons that produce
either early or late modulations in response to tastant administration
appear to receive somatosensory input. This analysis supports the
hypotheses that the early (<200 msec) modulations are primarily
somatosensory and that the late (>1 sec) modulations are related to
palatability-related mouth movements that are the output of hedonic
processing. Figure 8 summarizes these
results by illustrating, in schematic form, the various suggested
contributions to GC population responses.

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Figure 8.
Schematic depiction of the multimodal influences
on GC responses. Time after stimulus onset is on the
abscissa. Directly above this are marked the approximate
boundaries between early, middle, and
late modulations, and above this, three main influences
on population activity, two somatosensory (SS) and one
chemosensory (CS), are shown in relation to their times
of occurrence. The gradients reflect the gradual nature of the
development of each population and the necessary uncertainty as to
precise time of appearance. Along the top of this
figure, the time course of responding is divided into the "phases"
of taste-specific responses.
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Unadulterated chemosensory dynamics within the
gustatory response
Taken together, the above analyses suggest that taste-specific GC
responses, which are dynamic within the ~0.2 to ~1 sec
post-stimulus time period, are truly chemosensory. The late modulations
do not account for the taste-specific dynamics of these neurons. The firing patterns of 67.6% (25/37) of the neurons with taste-specific responses did not show taste-specific modulations in the 1.5-2.5 sec
post-stimulus period. Of the taste-specific neurons that did show late
responses, only two achieved taste specificity by virtue of activity in
the late post-stimulus period; the others were tastant specific during
the first 1.5 sec of post-stimulus response, which preceded activity
related to orofacial behaviors (Travers and Norgren, 1986
). In
contrast, 37.7% of the non-taste-specific neurons (20/53) produced
late modulations. Even with somatosensory components stripped away,
stimulus-specific responding in GC varies as a function of
post-stimulus time.
Furthermore, the taste-specific latencies of initial
responses to different tastants contribute little to these chemosensory dynamics. Modulations in response to each tastant appeared throughout the 2.5 sec post-stimulus interval. This made the job of ascertaining the latencies of chemosensory responses difficult. Although an examination of the modulations for different tastant responses, with a
lower cutoff set to eliminate most early somatosensory responses,
suggested a trend toward NaCl responses being fastest and toward
sucrose and nicotine responses being slowest, a one-way ANOVA for
tastant shows these trends to be nonsignificant (F < 1).
 |
DISCUSSION |
Time course of gustatory responses
When a tastant hits the tongue of an awake rat, a complex set of
processes is set in motion. At a broad level, these processes can be
summarized in terms of the overall time-averaged response of each
neuron to the tastant. Approximately 14% of our GC neurons produced
taste-specific responses using such an analysis (10% excitatory, 4%
inhibitory); this number is consonant with the extant GC literature on
anesthetized (Yamamoto et al., 1985
; Kosar et al., 1986
; Cechetto and
Saper, 1987
; Yamamoto et al., 1989
; Ogawa et al., 1990
;
Hanamori et al., 1998
) and awake (Yasoshima and Yamamoto, 1998
) rats,
and with estimates taken from monkey cortex (Rolls, 1989
;
Smith-Swintosky et al., 1991
).
We found, however, that this analysis gives an incomplete
picture of GC gustatory responses. When the time course of responses was taken into account, 41% of GC neurons yielded taste-specific responses (Table 1). Many of these neurons produced distinct temporal
patterns in response to different tastants, and many had chemosensory
profiles that changed across time (Figs. 2, 4, 5). These findings
suggest the possibility that gustatory coding in cortex may be
distributed across a larger percentage of neurons, or be more dynamic
than has previously been suggested, or both.
Our analysis of the time course of GC responses also made it possible,
for the first time, to dissociate chemosensory and somatosensory
components of GC responses. The earliest influence on firing (less than
~200 msec after stimulus onset) seemed to be purely somatosensory,
whereas firing rate modulations in the approximate interval between 0.2 and 1 sec after stimulus onset were largely chemosensory. The late
changes in firing rate were also traced to somatosensory influences,
presumably arising from the onset of palatability-specific orofacial
behaviors (Figs. 6, 8). Specifically, chemosensory responses lacked a
5-10 Hz signature of lick rate that was observed in oral somatosensory
responses (Fig. 7). The dissociation of chemosensory from somatosensory influences on the time course of GC responses provides support of the
hypothesis that chemosensory responses themselves are part of a process
that changes through time.
Comparison of our results with the extant literature
Several groups (Mistretta, 1971
; Ogawa et al., 1973
; Di
Lorenzo and Schwartzbaum, 1982
) have discussed differences in the time
courses of brainstem and primary afferent neural responses to different
tastants. These researchers were looking primarily for tastant
responses that might characterize entire populations of neurons, but
the existence of single neuron responses that varied between tastants
was also noted. In rat GC neurons, we observed temporal responses that
reliably differed between tastants but saw little between-neuron
similarity in the response to a particular tastant, even between
simultaneously recorded neurons in a single animal (Figs. 2, 5). It is
likely that response dynamics in awake rats are more pronounced than in
anesthetized rats, because most anesthetics depress activity in the
gustatory neuroaxis.
Both peripheral and central factors probably contribute to the
production of time-varying activity in GC neurons. Variations in the
movement of fluid around the oral cavity will modulate the tastant
concentration that interacts with the apical terminals of taste
receptor cells and in turn will produce different kinetic responses in
primary gustatory neurons. However, the trial-to-trial reliability of
response dynamics, along with the cell-specific variety of responses
within and between rats, is difficult to explain in terms of purely
peripheral mechanisms (Fig. 2). That the sorts of time-varying activity
observed here are also seen in various other systems and preparations
(Nicolelis and Chapin, 1994
; Wehr and Laurent, 1996
; Ringach et al.,
1997
; deCharms et al., 1998
; Ghazanfar and Nicolelis, 1999
; Covey,
2000
; Lam et al., 2000
) leads us to believe that the temporal
variability arises from recurrent CNS circuitry, which causes
time-varying patterns of activity that are relatively independent of
processes at the periphery (Laurent, 1999
).
Studies showing neural response dynamics do not provide unequivocal
evidence that the nervous system uses temporal response patterns in
sensory processing or that overall rates of activity are unimportant.
Similarly, our study demonstrates the existence of potentially useful
temporal information in GC responses but does not prove that tastant
responses cannot be usefully characterized solely in terms of overall
firing rate. Still, this evidence is similar in quality to most data
presented in support of more static theories. In summary, we have shown
that temporal changes in GC responses are available for the CNS to
characterize the various qualities associated with placing chemical
stimuli on the tongue.
Sources of gustatory response dynamics
Neurons at all levels of the gustatory neuroaxis receive
convergent input from chemosensory and somatosensory sources (Ogawa et
al., 1982
; Yamamoto, 1984
; Nakamura and Norgren, 1993
). A large subset
of chemoresponsive GC neurons also responds to tactile stimulation of
the intraoral region. This complicates the interpretation of gustatory
responses (Spector, 2000
), particularly in awake rats, which produce
consumatory behaviors related to the palatability of the just-presented
tastant (Grill and Norgren, 1978
; Berridge, 2000
). Such behaviors are
likely to lead to somatosensory stimulation that "masquerades" as
GC chemosensory responses. The analyses described here, however,
enabled us to separate the gustatory responses into their somatosensory
and chemosensory components, to broadly identify when somatosensory
activity most strongly influences gustatory activity, and to recognize
genuinely chemosensory time courses of response.
We argue that the earliest and latest firing rate modulations observed
in GC neurons are primarily somatosensory. The late responses may also
represent hedonic processing. That is they consistently occur with the
emergence of tastant-specific orofacial behaviors (Travers and Norgren,
1986
) and contain the 5-10 Hz signature of licking. Whatever their
cause, the gustatory responses of a subset of GC neurons are related to
stimulus quality for at least the first 1 sec and thereafter are
related to hedonic quality. Similar shifts have been observed in other
sensory systems. Sugase et al. (1999)
, for example, reported that
neurons in the temporal visual area progress over the course of
50 msec from coding facial identity to coding facial expression.
These considerations allow us to confidently suggest that
chemosensory responses themselves exhibit temporal properties. It is
possible that between-neuron interactions are responsible for shaping
GC responses through time. Such a mechanism is predicted by studies
demonstrating that (1) the removal of inhibition from a gustatory
neural structure changes the tastant response profiles of neurons
(Ogawa et al., 1998
; Smith and Li, 1998
); (2) two directly connected
brainstem neurons may have very different chemosensory sensitivities
(Di Lorenzo and Monroe, 1997
); and (3) GC neurons may exhibit
significant levels of cross-correlation (Adachi et al., 1989
; Nakamura
and Ogawa, 1997
; Yokota et al., 1997
).
Implications for theories of gustatory processing
Gustatory neural data are usually explained in terms of either the
"labeled-line" (LL) (Frank, 2000
) or the "across-fiber pattern"
(AFP) (Erickson et al., 1995
) hypothesis. According to the LL,
gustatory coding progresses via comparison of the activity levels of
separate populations of neurons, each tuned to a "best stimulus."
The AFP, meanwhile, suggests that tastants are determined via the
overall pattern of activity across all responsive units, without
reference to what stimulus is the best for any particular neuron.
Our data present complications for a labeled line-type theory, in
that for a substantial percentage of our neural sample, the best
stimulus changed from one 500 msec of the response to the next. To
account for this result, advocates of LL either must disregard the
temporal structure observed in GC responses or suggest an alternative
criterion for deriving the best stimulus of a neuron.
These data suggest that potentially valuable information regarding the
tastant is available in the time course of the neural response.
Researchers bringing "fuzzy set" analysis techniques to bear on
brainstem responses have reached conclusions that bear striking
similarity to those presented in Figure 8 (Erickson et al., 1995
).
These results present a challenge for both LL and AFP hypotheses, in
that neither theory emphasizes response dynamics.
It might be argued that gustatory response dynamics are of little
import, because rats are capable of identifying tastants within 200 msec (Halpern and Tapper, 1971
), before all but the earliest bursts of
tastant-specific response observed in this study. It is possible, in
fact, that GC responses are irrelevant for the most basic processes of
tastant identification and characterization (Spector, 2000
). The fact
that initial tastant identification can happen very rapidly, however,
does not imply that gustatory processing ends at that time; elaboration
of the gustatory percept may continue long after the initial
discriminating response. Furthermore, the speed with which rats
identify tastants increases with training (Halpern and Tapper, 1971
),
and this gradual improvement may reflect learning-related changes in
the neural processing of the tastants themselves. GC neurons are known
to undergo plasticity during simple gustatory learning (Yasoshima and
Yamamoto, 1998
). The time courses of responses may become plastic with
learning, as well, such that different tastants may be identified
earlier. Indeed, we have gathered preliminary evidence suggesting that even simple tastant self-administration can cause plasticity in GC
neural responses across two to six trials (Katz et al., 2000
).
Conclusion
We have shown that a much larger percentage of GC neurons may
participate in chemosensory coding than has been supposed previously. These responses are visible in tastant-specific time courses of responding, by which the neurons may participate in responses to
different tastants at different times. The temporal analysis of GC
responses also permits the separation of the gustatory responses into
their somatosensory and chemosensory components.
 |
FOOTNOTES |
Received Dec. 29, 2000; revised March 26, 2001; accepted March 28, 2001.
This research was supported by National Institutes of Health Grants
DC-01065 (S.A.S.), DC-00403 (D.B.K.), and DE-11121 (M.A.L.N.), and by a
grant from the Philip Morris Research Center. We are grateful to
Professors Robert Erickson and Alan Spector for their advice and
encouragement throughout the development of this project.
Correspondence should be addressed to Donald B. Katz, Room 333, Bryan
Research Building, Duke University Medical Center, Durham, NC 27710. E-mail: dkatz{at}neuro.duke.edu.
 |
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