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The Journal of Neuroscience, August 1, 2002, 22(15):6819-6829
The Influence of Somatosensory Cortex on Climbing Fiber Responses
in the Lateral Hemispheres of the Rat Cerebellum after Peripheral
Tactile Stimulation
Ian E.
Brown and
James M.
Bower
Division of Biology, California Institute of Technology, Pasadena,
California 91125
 |
ABSTRACT |
This report describes the temporal relationship between the latency
of responses to peripheral stimulation in primary somatosensory (SI)
cerebral cortex and the timing of climbing fiber inputs to the lateral
hemispheres of the rat cerebellum. Examined in the tactilely responsive
regions of crus IIa in the rat, the results show that SI influences the
timing of both evoked and spontaneous climbing fiber activity in these
cerebellar regions without affecting the rate or probability of complex
spike discharge. By reversibly blocking SI activity, we demonstrate
that the absence of cortical input results in a lengthening of climbing
fiber response latency to peripheral stimuli. Similarly, enhancing the
cortical input by subthreshold electrical stimulation of SI results in
a shortening of climbing fiber response latency. These results provide
a new explanation for the tendency of the inferior olive to
oscillate at 7-12 Hz and is consistent with the hypothesis that the
inferior olive provides the cerebellum information about the timing of cortical computational cycles. Results are discussed in the context of
previous and current hypotheses concerning the physiology and function
of the inferior olive/climbing fiber system and are interpreted to
provide additional evidence of a role for the cerebellum in the tactile
somatosensory system.
Key words:
Purkinje cell; somatosensory; complex spike; cerebellar
cortex; timing; inferior olive
 |
INTRODUCTION |
The climbing fiber system, with its
sole origin in the inferior olive (IO) and its mono-axonal
"climbing fiber" connection to Purkinje cells (Palay and
Chan-Palay, 1974
), plays a major role in many hypotheses of cerebellar
function (Marr, 1969
; Thach et al., 1992
; Llinas and Welsh, 1993
; Houk
et al., 1996
). Given the predominance of the view that the cerebellum
is primarily a motor control device (Bower, 1997a
), most hypotheses for
the function of the inferior olive and the climbing fiber system have focused on some link to motor performance. One prominent hypothesis, for example, proposes that climbing fiber discharges specifically signal motor performance errors to cerebellar Purkinje cells, which
then change their output to improve motor performance (Kawato and Gomi,
1992
). Although this hypothesis does not clearly state how motor error
is detected, it is assumed that the inferior olive is the relay for
this information. Another proposal links the inferior olive directly to
motor learning, suggesting that climbing fiber discharge triggers
either the enhancement (Marr, 1969
) or depression (Albus, 1971
) of
coincidently active parallel fibers. In this way it has been proposed
that the climbing fiber system "instructs" Purkinje cells as to
which of their 150,000 parallel fibers should influence output. A third
more recent proposal suggests that climbing fiber firing is responsible
for coordinating the timing of movement (Llinas and Welsh, 1993
).
Whereas each of these hypotheses is somewhat different, they share in
common the idea that the precise timing of climbing fiber discharge is
critical to function and related directly to some aspect of movement.
In the case of both the motor error and motor learning hypotheses,
climbing fiber discharge is assumed to be generated by the detection of
some specific motor-related event. In the case of the movement timing
hypothesis, the intrinsic properties of the inferior olive itself are
assumed to control the timing of climbing fiber activity. In each case,
the timing of climbing fiber discharge is linked directly to some
particular aspect of movement.
Over the last several years, our laboratory has been investigating the
possibility that cerebellar function may be more related to the
internal needs of the nervous system than to the types of overt motor
behavior proposed in classical hypotheses (Bower, 1997a
,b
). In
particular, we have proposed that the cerebellum may be responsible for
coordinating the acquisition of sensory data on which the rest of the
nervous system depends. Although this hypothesis has derived primarily
from our studies of mossy fiber tactile projections to cerebellar
cortex (Bower and Woolston, 1983
; Morissette and Bower, 1996
), we have
recently begun to extend our investigations to include the climbing
fiber system (Brown and Bower, 2001
). These studies have already
demonstrated a strong similarity between the spatial pattern of mossy
fiber and climbing fiber tactile projections to tactile regions of the
lateral hemispheres in the rat (Brown and Bower, 2001
).
In this paper we extend these initial studies to examine the all
important question of the control of timing of climbing fiber activity.
We have previously hypothesized (Bower, 1997a
,b
) that the 7-12 Hz
oscillatory behavior of the inferior olive might be related directly to
the fact that cerebral cortex oscillates at these particular
frequencies. In this view, the inferior olive is proposed to be
responsible for relaying information about the timing of cerebral
cortical computational cycles rather than itself orchestrating anything
having to do with movement performance.
As a first experimental test of this idea, we report here the results
of a series of experiments in which timing relations between activity
in the somatosensory cortex (SI) and the cerebellum were assessed and
manipulated using simultaneous recording techniques. In previous
studies of the mossy fiber system we have demonstrated that the pattern
of SI projections to the lateral tactile regions of the cerebellum are
spatially similar to the pattern of direct trigeminal projections
(Bower et al., 1981
). Our recent demonstration that climbing fiber
projection patterns overlap those of the mossy fiber system (Brown and
Bower, 2001
) set the stage for the current examination of the
relationship between evoked SI cortical and cerebellar complex spike
activity. The results presented here provide evidence that SI does, in
fact, influence the timing of both evoked and spontaneous climbing
fiber activity in these regions of the cerebellum and that it does so
without affecting the rate or probability of complex spike firing. This
result is consistent with the hypothesis that the inferior olive
provides the cerebellum information about the timing of cortical
computational cycles.
Preliminary results have been presented previously (Brown and Bower,
2000
).
 |
MATERIALS AND METHODS |
Surgery. Results in this study are reported from 14 experiments on 3- to 6-month-old female Sprague Dawley rats. All
methods were approved by the California Institute of Technology's
Animal Care Committee and conform to National Institutes of Health
guidelines. Animals were anesthetized initially with an intraperitoneal
injection of a ketamine-xylazine drug cocktail (ketamine, 100 mg/kg;
xylazine, 5 mg/kg; acepromozine, 1 mg/kg). Supplemental doses (20% of
initial dose) were given through an intraperitoneal catheter as needed throughout the experiment to maintain deep anesthesia, as evidenced by
the lack of a pinch withdrawal reflex and/or lack of whisking. Body
temperature was maintained at 36 ± 1°C with the use of a rectal
temperature probe and heating blanket. Heart rate was monitored throughout each experiment. To maintain proper hydration, 0.9 ml of
lactated Ringer's solution and 0.1 ml of 50% dextrose was injected
intraperitoneally every 1-2 hr. To avoid lung congestion, 0.5 mg/kg of
glycopyrrolate was injected intraperitoneally every 6 hr. Animals were
killed at the end of the experiment with a 1.0 ml intracardiac
injection of Nembutal.
After anesthesia, the head of the animal was immobilized in a
custom-made head-holder. The muscles covering the occipital region of
the skull were removed, as were the muscles covering the temporal
region on the right side lateral to bregma. Two screws were drilled
into the skull several millimeters caudal to bregma and 2-3 mm lateral
to midline. A surgical staple was placed on cervical vertebrae C2, and
a dental acrylic dam was built encompassing both the screws and the
staple. Skin flaps were glued to the side of the dam using
cyanoacrylate to prevent leakage. A craniotomy was performed to expose
both cerebellar hemispheres as well as the facial region of right
primary SI (see Hall and Lindholm (1974)
, their Fig. 6 for stereotaxic
coordinates of this region). The exposed brain was covered with mineral
oil, the dam was then bonded to the head holder with more dental
acrylic, and the ear and bite bars were removed to allow access to the
perioral surfaces. In some experiments, a 3 inch cotton-tipped
applicator was glued to the nonglabrous upper and outer parts of the
left upper lip and pulled back gently to make the furry buccal pad more
accessible (see Fig. 1 for location of
furry buccal pad). The dura was cut and pulled back before initiating
recording.

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Figure 1.
Recording and stimulus locations.
A, The perioral regions of the rat are shown here. Only
the perioral regions were stimulated in these experiments to elicit
complex spikes in crus IIa (Brown and Bower, 2001 ). B,
Approximate cerebellar recording locations. All experiments except one
were from an upper lip (UL) or furry buccal pad
(Fbp) patch. The one recording from a lower lip
(LL) patch was found ~200 µm medial to the regions
shown here. See Hall and Lindholm (1974) , their Figure 6, for location
of SI recordings.
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Stimulus techniques. Two types of stimuli were used in these
experiments to elicit neural responses: electrical stimuli applied to
SI and tactile stimuli applied to the perioral regions (Brown and
Bower, 2001
). Electrical stimuli were constant current, rectangular, monophasic and 0.2 msec in duration and applied through a 0.1 M
tungsten electrode. Preliminary experiments revealed that complex spikes in crus IIa were elicited with the greatest probability when the
SI stimulating electrode depth was 2000 µm, so this depth was used
throughout. Tactile stimuli were applied with a computer-controlled probe. Drawings of the rat's face in Figure 1 indicate the perioral regions stimulated during these experiments. The size of the probe tip
was <1 mm2, and the total excursion of
the tactile stimuli was ~300 µm. The stimulus was brief, completed
in <10 msec (sample stimulus shown in Fig.
2). In all experiments, stimuli of either
sort were applied at 2 sec intervals, and peristimulus histograms
(PSTHs) were constructed from the resulting spike trains.

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Figure 2.
Correlations between SI multiunit burst latencies
and CS latencies: sample data. The data shown were collected from one
paired recording. A, Sample data from one trial. The
three traces show the tactile stimulus probe excursion, the
SI-rectified, multiunit activity, and cerebellar activity,
respectively. The time at which the SI multiunit activity crossed the
50 µV threshold and the time of a CS in the cerebellar trace are each
indicated with an asterisk. The voltage scale is the
same for both the SI and cerebellar traces. B, Data
trials were sorted by SI response latency into six data sets (2 msec
bins). Trials were considered to have an SI burst if the SI rectified,
multiunit activity crossed a threshold of 50 µV. These data are
indicated with a filled bar. A seventh data set was
constructed from those trials in which no SI response was detected,
indicated with open bars in this figure. PSTHs were
constructed from the CS spike trains for each data set. The mean,
rectified multiunit SI activity was also calculated for each data set.
PSTHs were calculated using 1 msec bins followed by filtering with a 5 msec rectangular moving average. PSTHs were normalized to indicate the
instantaneous firing frequency. For clarity, data from only four of the
seven data sets are shown. Calibration is the same for all data sets.
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Recording techniques. Extracellular recordings were made
using tungsten microelectrodes from both SI (0.1 M
) and from the exposed crown of crus IIa (2 M
). Care was taken to ensure that the
electrodes were placed perpendicular to the relevant brain surfaces
before recording. Signals were amplified 1000× and filtered between 10 Hz and 5 kHz before being digitally sampled at 10 kHz and stored on a
computer. Secondary filtering was accomplished digitally using fourth
order double-pass Butterworth filters. Granule cell layer (GCL)
field potentials were collected at a depth of 500-600 µm
(Bower and Kassel, 1990
) and were digitally filtered between 10 and 500 Hz. Complex spikes (CSs) were recorded from the cerebellar
molecular layer (100-200 µm depth) and were extracted from the
signal using a window discriminator built in Labview 5.1 (National
Instruments, Austin, TX) after first digitally filtering the
signal between 300 Hz and 3 kHz. CSs were identified as such by their
location, their firing rate (typically <1 Hz), and by the complete
absence of interspike intervals <50 msec (Brown and Bower, 2001
).
Multiunit activity in SI was recorded at the depth at which the
strongest response to a tactile stimulus could be evoked (usually at
depths of 1000-1200 µm). SI multiunit data were filtered between 300 Hz and 3 kHz and then rectified.
To choose recording locations, we identified first an appropriate
cerebellar location. The crus IIa electrode was lowered into the
location of the usual upper lip/furry buccal pad patch (Fig. 1) down to
the GCL and the center of receptive field for that particular
cerebellar location was determined using standard manual stimulation
and audio classification (Bower and Kassel, 1990
). We then mapped SI
using the same technique until the location of the corresponding
receptive field was found. Because of the relatively high background
activity of SI under ketamine-xylazine anesthesia as opposed to under
barbiturate anesthesia, SI was difficult to map precisely. For this
reason once a tentative SI location was determined, we refined our SI
search by stimulating SI with a single electrical pulse at a depth of
2000 µm and determined the threshold to elicit a field potential in
the GCL of crus IIa (Bower et al., 1981
). The SI electrode was moved in
a 200 µm grid pattern until we found the location with the lowest
threshold for eliciting a GCL field potential. GCL field potentials
were used for SI mapping instead of CSs because they are quicker to map
and because Allen et al. (1974)
have shown that stimulation of cerebral
cortex elicits mossy fiber and climbing fiber responses in the same
Purkinje cells. Once the SI location was chosen, the crus IIa electrode
was raised out of the cortex, moved 50-100 µm in a mediolateral
direction, and lowered to the molecular layer to isolate a CS. Although
some patches in crus IIa have been shown to be only 50-100 µm in
diameter, the upper lip/furry buccal pad patch is usually much larger,
often 500-1000 µm in diameter (Bower and Kassel, 1990
). Confirmation
of a connection between SI and the new adjacent crus IIa location was
then made by stimulating in SI with a 3 pulse train at 500 Hz with 150 µA (Allen et al., 1974
) and observing the CS response.
Lidocaine injection in SI. In one series of experiments we
injected 300 nl of 2% lidocaine into SI to determine the effect on
complex spikes elicited by a tactile stimulus. The apparatus used for
injection is described by Malpeli (1999)
.
Preliminary experiments revealed that field potentials in the granule
cell layer were blocked most effectively when the lidocaine injection
depth was 2000 µm. This finding, coupled with the above finding that
2000 µm was the optimal depth for eliciting a complex spike in
response to electrical stimulation, led us to use an injection depth of
2000 µm. Lidocaine injections in SI have been shown previously to
last ~10 min when used to block GCL responses in SI (Morissette and
Bower, 1996
), as expected considering the known actions of lidocaine
(Malpeli, 1999
). The duration of the injection itself was typically
15-30 sec.
 |
RESULTS |
Correlations between responses in somatosensory cortex and climbing
fiber discharges
Our first series of experiments were designed to look for a
relationship between the latency of SI multiunit responses and the
latency of CS responses recorded in the cerebellum. To do so,
simultaneous recordings were made from SI cortex and the cerebellum while applying a 0.5 Hz tactile stimulus to the center of the previously determined appropriate receptive field (see Materials and
Methods). A sample trial from one experiment is shown in Figure 2A showing the relationship between the tactile
stimulus, the SI multiunit burst response, and a CS response. The
topmost trace shows the onset and shape of the tactile stimulus used in
all experiments. The SI recording is shown in the second trace, with the asterisk indicating the time at which the rectified SI multiunit activity crossed a threshold of 50 µV (see Materials and Methods). This criterion was used in all experiments to define the onset of an SI
multiunit burst. The last trace in Figure 2A is a
simultaneously obtained recording from the cerebellum with the asterisk
indicating a climbing fiber discharge.
The results shown in Figure 2B examine the
specific relationship between the evoked SI bursts and complex spike
discharges in the cerebellum for a single paired recording. Trials were
sorted into six groups based on S1 burst latency if the latencies were between 7 and 19 msec. All other trials were grouped together and
classified as having no SI burst response to separate out spontaneous
SI activity. Climbing fiber PSTHs for three of the six SI response
groups are shown in Figure 2B with filled bars, along
the one data group for which there was no detectable SI response
(open bars). Each PSTH was normalized to indicate the instantaneous firing frequency. Also plotted on these graphs is the
mean, rectified multiunit SI activity (continuous line).
These data, from a single paired recording, show that the response
latency of the CS is correlated positively with the SI response latency.
Because the range and distribution of SI burst latencies was identical
for all experiments, trials from all experiments were pooled for the
subsequent analyses (the composite SI latency histogram is shown in
Fig. 3A). Trials were sorted
as described for the single experiment above into six groups based on
S1 burst latency if the latencies were between 7 and 19 msec
(filled bars in Fig. 3A). All other trials
were grouped together and classified as having no SI burst response to
separate out spontaneous SI activity (open bars in Fig.
3A). The composite climbing fiber PSTHs for three of the six
SI response groups are shown in Figure 3B
(filled bars), along the one data group for which
there was no detectable SI response (open bars). Also
plotted on these graphs is the mean, rectified multiunit SI activity
(continuous line).

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Figure 3.
Correlations between SI multiunit burst latencies
and CS latencies: summary data. The data shown were collected from five
paired recordings in four rats. Trials were considered to have an SI
burst if the SI-rectified, multiunit activity crossed a threshold of 50 µV, as shown in Figure 2. These data are indicated with filled
circles and filled bars in A-D,
whereas data in which no SI response was detected are indicated with
open circles and open bars.
A, Histogram of SI burst latencies from all cells
combined (1 msec bins). Based on this histogram, data trials were
classified as having an SI response if the latency of threshold
crossing was between 7 and 19 msec (filled bars);
a total of 1849 of 2700 trials were thus classified as having an SI
response. B, Data trials were sorted by SI response
latency into six data sets (2 msec bins). A seventh data set was
constructed from those trials in which no SI response was detected.
PSTHs were constructed from the CS spike trains for each data set. The
mean, rectified multiunit SI activity was also calculated for each data
set. PSTHs were calculated using 1 msec bins followed by filtering with
a 5 msec rectangular moving average. PSTHs were normalized to indicate
the instantaneous firing frequency. For clarity, data from only four of
the seven data sets are shown. Calibration is the same for all data
sets. C, CS latency (mean ± SD) for each of the
seven data sets is plotted as a function of mean SI response latency
(filled circles) or "no SI burst"
(open circle). CS latencies were determined by
least-squares fitting of a Gaussian to each PSTH with the peak of the
Gaussian used as a measure of the CS latency. A linear least-squares
best-fit to the SI response data is shown on the plot
(y = 1.02x + 19.8;
r = 0.95; p < 0.01).
D, CS response probability (±SE) at 15-60 msec latency
is plotted as a function of SI response latency. A linear least-squares
best fit to the data with an SI response is shown on the plot
(y = 0.003x + 0.20;
r = 0.42; p > 0.2). All CS
response probabilities associated with an SI response were
significantly greater than the CS response probability in the absence
of an SI response (t test, p < 0.005). E, Cross-correlogram of evoked CS spike trains
with rectified SI multiunit activity. Peak SI activity leads CSs by 13 msec. The full-width-half-maximum is 22 msec. (Note: the reason that
the latency differences in parts C and E
are different, at 20 and 13 msec, respectively, is because in the
former the latency difference was determined using the start of an SI
burst, whereas in the latter the difference was determined using the
peak of the SI burst.)
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Examination of the combined data in Figure 3B again
shows clearly that when the data from multiple experiments are pooled together, CS response latency is correlated positively with the SI
response latency. For example, when the SI response occurred from 7-9
msec after a tactile stimulus, the latency of the histogram peak for
the corresponding CS in the cerebellum was 27 ± 6 msec (mean ± SD). In contrast, when the latency of the SI tactile response was
from 15-17 msec, the latency of CS histogram peak occurred at 37 ± 4 msec. Figure 3B shows that intermediate values of SI response latency correlate with intermediate CS latency values. This
relationship is quantified in Figure 3C, which shows a
near-unity slope relationship between the latency of the SI and
climbing fiber responses. Interestingly, in those trials in which SI
does not respond according to the above criteria (bottom
traces in Fig. 3B), the latency histogram for the CS
closely resembles the histogram corresponding to the longest SI latency
delays (both PSTH peaks are at 38 ± 5 msec). In Figure
3E the temporal relationship between these events is plotted
on a trial by trial basis in the form of a cross-correlogram. The
results show clearly a significant temporal relationship between SI and
CS activity, with a peak timed at 13 msec, SI leading.
In Figure 3D we plot the relationship between SI response
latency and CS response probability. In contrast to what was observed for CS latency, CS response probability was not statistically correlated with the latency of an SI response. There was, however, a
statistically significant relationship between the probability of a CS
response and the occurrence of an SI response (see figure legend). This
latter relationship was examined through other experimental means
described subsequently and found to be merely correlative, not causal.
The effects of injecting lidocaine into somatosensory cortex on
climbing fiber responses
In the data just described we showed statistical correlations
between the latency of SI and CS responses and also between the
probability of SI and CS responses. To further examine the effect of SI
on CS activity, we conducted a second series of experiments in which
300 nl of 2% lidocaine injected at a depth of 2000 µm to locally
anesthetize SI. Previous experiments in our laboratory have shown that
such injections reversibly block SI influences on cerebellar mossy
fiber activity (Morissette and Bower, 1996
).
Sample data from one lidocaine injection experiment are shown in the
dot raster of Figure
4A. As summarized in
the PSTHs on the right, the timing of CS responses in the cerebellum
were significantly different during a 10 min period after lidocaine
injection when compared with controls. The duration of this effect was
similar to the duration observed in our previous studies using
lidocaine (Morissette and Bower, 1996
). The interesting point here,
however, was that locally anesthetizing SI resulted in a prolongation
of the CS response latencies. In fact, the induced delays in CS
responses were essentially identical to the delays seen when stimuli
failed to elicit an SI response as shown in the first series of
experiments (40 ± 5 vs 38 ± 5 msec, respectively; mean ± SD). On average, injection of lidocaine into SI delayed the peak of
the CS latency distribution by 8 ± 3 msec (mean ± SD).
These data are summarized for four experiments in Figure
4B. As shown in Figure 4, C and D, this change in latency took place without affecting
either the level of spontaneous CS activity or the CS response
probability (Fig. 4C,D; see figure legends for statistical
summaries). Thus the relationship between SI and CS response
probabilities observed under control conditions appears to have been
correlative, not causal.

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Figure 4.
Effects of 300 nl of 2% lidocaine injected into
SI at a depth of 2000 µm. Data were collected continuously from
before the injection of lidocaine ("pre-block", indicated by
open bars), immediately after the injection
("block", indicated by filled bars), and for an
extended period after the injection ("post-block", indicated by
hatched bars). Data were collected from four
experiments. In one experiment the block lasted significantly longer
than usual, and so the data from 23-33 min after injection were used
for post-block analysis instead of the usual 13-23 min.
A, Sample 1000-trial raster of CSs and corresponding
PSTHs from one experiment. The onset of the tactile stimulus is
indicated with dashed lines (see Fig. 2 for a sample
stimulus trace). PSTHs were calculated using 1 msec bins followed by
filtering with a 5 msec rectangular moving average. B,
CS latencies (mean ± SD). CS latencies were calculated for each
experiment by taking the peak value of a Gaussian least-squares fit to
each PSTH. Mean CS latency during the lidocaine block was significantly
greater than the mean latency before block (40 ± 5 and 32 ± 3 msec, respectively; paired t test,
p < 0.02). The post-block latency of 31 ± 5 msec was not significantly different from the pre-block latency
(p > 0.3). Note that the mean latency
during block was not significantly different from the mean latency
observed in the absence of an SI response in Figure 3 (40 ± 5 vs
38 ± 5). C, CS spontaneous activity for the 50 msec before stimuli onset (mean ± SD). The mean rates of
spontaneous activity for the block trials and post-block trials were
not significantly different compared to the pre-block trials (paired
t tests; p > 0.2).
D, CS response probability at 15-60 msec latency
(mean ± SD). Mean probabilities during the block and post-block
were not significantly different from pre-block (response probabilities
were 0.14 ± 0.04, 0.12 ± 0.06, and 0.17 ± 0.11 for
pre-block, block, and post-block, respectively; paired t
tests, p > 0.15).
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Simultaneous tactile stimulation and electrical stimulation of
somatosensory cortex
From the results just presented it would appear as though removal
of the influence of somatosensory cortex has the effect of prolonging
the latency of tactilely evoked CS responses in cerebellar cortex, but
without affecting their probability. In a third series of experiments
we sought to determine whether enhanced activity in SI cortex would
have the effect of reducing CS latencies, again, without affecting CS
response probability. To examine this question, we delivered an
electrical shock stimulus to SI cortex and a peripheral tactile
stimulus at the same time. It is important to note that the intensity
of the electrical stimulus presented in SI was intentionally set to be
subthreshold for evoking a CS response by itself (middle
histogram on the right of Fig.
5B).

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Figure 5.
Interaction between tactile stimulus and
subthreshold SI electrical stimulus. Data are shown from five
experiments. A, Sample 900 trial raster of CSs and
corresponding PSTHs from one experiment. PSTHs were calculated using 1 msec bins followed by filtering with a 5 msec rectangular moving
average. Data were collected continuously; stimuli were changed quickly
between trials as necessary. All stimuli were applied at
t = 0, as indicated by the dashed
lines. B, CS latencies (mean ± SD). CS
latencies were calculated for each experiment by taking the peak value
of a Gaussian least-squares fit to each PSTH. Tactile plus SI
stimulus-evoked responses were significantly earlier than tactile
stimulus alone-evoked responses as indicated by the
asterisk (28 ± 5 and 36 ± 2 msec,
respectively; paired t test, p < 0.01). C, CS spontaneous activity for the 50 msec before
stimuli onset (mean ± SD). The mean rate of spontaneous activity
for the tactile + SI stimulus trials was not significantly different
compared with the tactile stimulus alone trials (paired
t test; p > 0.2). D,
CS response probability at 15-60 msec latency (mean ± SD).
Tactile plus SI stimulus-evoked response probability was not
significantly different from tactile alone-evoked response probability
(0.14 ± 0.07 and 0.16 ± 0.05, respectively; paired
t test, p > 0.1). SI stimulus alone
response probability was not significantly different from what would be
expected in the absence of a stimulus based on spontaneous activity
rates (0.04 ± 0.05 and 0.03 ± 0.01, respectively; paired
t test, p > 0.2). However, both the
SI stimulus alone response probability and the no-stimulus response
probability were significantly less than the tactile stimulus alone
response probability, as indicated by the asterisk
(paired t tests, p < 0.01).
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Figure 6.
Effects of spontaneous activities.
A, Spontaneous CS activity (mean ± SD) is plotted
as a function of mean spontaneous SI multiunit activity. Trials were
sorted based on spontaneous SI activity into eight groups of
approximately equal numbers of trials. B,
Cross-correlogram of CS spike trains with rectified SI multiunit
activity for spontaneous activity. Dashed lines indicate
the temporal location of the cross-correlogram peak for tactile-induced
responses as plotted previously in Figure 3E (not to
scale vertically). The data plotted here are derived from the same five
paired SI-cerebellar recordings first described for Figure 3.
Spontaneous data were collected during the 200 msec before a tactile
stimulus. Peak SI activity leads CSs by 7 msec for the spontaneous
activity cross-correlogram versus 13 msec for tactile stimulus-induced
case. The full-width half-maxima of the peaks is 42 msec.
C, The effect of SI spontaneous activity on CS response
probability. SI spontaneous activity for the 50 msec before a tactile
stimulus is plotted versus the probability of a CS response with 15-60
msec latency. Data were sorted by SI spontaneous activity into eight
groups, as described in A. A linear least-squares
best-fit to the data are shown on the plot (r = 0.00; p > 0.5). D, The effect of
spontaneous SI activity on CS latency is plotted for those trials in
which there was no SI response to avoid the influence of SI latency on
this analysis. Data were sorted into four groups of approximately equal
numbers of trials based on the spontaneous SI activity for the 50 msec
before a stimulus. No statistically significant relationship was
observed (r = 0.03; p > 0.5).
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The results shown in Figure 5 demonstrate that coincident activation of
the periphery and SI cortex do, in fact, reduce the latency of the CS
responses without affecting CS response probability. The statistically
significant shortening of the response in the presence of SI electrical
stimulation is quantified in Figure 5B. Sample data from one
experiment are shown in Figure 5A. As shown in the
histograms on the right of Figure 5A, coincident electrical
SI and peripheral tactile stimulation (top histogram) resulted in a peak CS latency that was earlier by 8 ± 5 msec
(mean ± SD) when compared with tactile stimulation alone
(bottom histogram). This result is summarized for data
pooled over five experiments in Figure 5B.
Once again, in this paradigm of coincident tactile and electrical
stimuli, the changes in CS latency were effected without any change in
either the CS spontaneous activity or the CS response probability (Fig.
5C,D; see figure legends for statistical summaries). This
latter observation confirms that the relationship between SI and CS
response probabilities observed under control conditions in Figure
3D appears to have been merely correlative, not causal.
As a side note, although we decreased the effective SI latency in this
paradigm from a tactile-evoked 7-19 msec to an electrically induced 0 msec, it is important to note that we should not have expected
necessarily a similar 7-19 msec decrease in CS latency. If only the
onset latency of the SI response was important for CS modulation, then
we would expect a 7-19 msec decrease in CS latency. However, it is
likely that at least some portion of the 10-30 msec duration SI
response beyond the initial onset is responsible for CS modulation. As
a simplistic example, consider the possibility in which the mean
latency of the SI response is the critical factor modulating CS
latency. For a tactile-evoked 10 msec duration SI response with an
onset of 7 msec, the mean SI response latency would be 12 msec. If a 2 msec SI burst of equivalent amplitude was artificially added via
electrical stimulation at t = 0 msec to this same
response, then the mean SI latency would become ~10 msec, a decrease
of only 2 msec. This decrease in the mean SI latency of 2 msec is much
less than the decrease of 7 msec of SI onset latency. Clearly the real
relationship between SI responses and CS modulation is somewhere
between these two extreme possibilities. Thus, when we stimulate SI
electrically, although the onset of cortical input to the IO is reduced
by 7-19 msec, because the rest of the tactile-evoked SI response is
not reduced in latency we should not expect necessarily the CS latency
to shorten by 7-19 msec as well.
The influence of spontaneous activities on SI and CS responses
The data presented up to this point indicate clearly that there is
some relationship between the timing of SI and CS responses induced by
tactile stimuli. When SI response latencies are short, so are CS
latencies; when SI responses are longer, so are those of the CS. At the
same time, however, it is clear that the probability of a CS response
is not dependent directly on either the latency or the occurrence of a
response in SI. CS tactile responses are still generated when SI cortex
either does not respond to the stimulus or is locally anesthetized,
although in both cases the CS response latencies are unusually long.
When these data are combined with the evidence that enhanced SI
activity results in a decrease in CS response latency, it would seem
reasonable to propose that SI has a facilitatory effect on IO responsiveness.
To better understand the nature of this influence, we performed several
additional analyses of our data. First, we were interested in
determining what, if any, relationship might exist between spontaneous
SI bursts and spontaneous CS activity. With light anesthesia, both SI
and the cerebellum become quite spontaneously active. An examination of
spontaneous activity removes possible confounding effects of stimulus presentation.
The data from our analysis of the relationships between spontaneous SI
and CS behavior is shown in Figure 6. First we examined general
facilitatory influences of SI on the IO by comparing the level of
spontaneous multiunit activity in SI to the rate of spontaneous CS
activity in cerebellum. Data for this analysis were collected from the
same five paired recordings reported in Figure 3. As expected, the
higher the rate of spontaneous neural activity in SI, the greater the
rate of spontaneously occurring CSs (Fig. 6A). To
determine whether this effect might be caused by the general arousal of
both regions by some other system, for example, rather than some
specific influence of SI activity on the IO, we performed a
cross-correlation between spontaneous SI activity and CS responses. The
results shown in Figure 6B show that there is a
correlation between both types of spontaneous activity with SI activity
leading that of the CS, albeit with less of a lead than was observed
previously for the tactile-evoked responses. From this data we conclude
that even in the case of activity occurring in the absence of any overt peripheral stimulus, SI can have a facilitatory effect on the IO.
Spontaneous SI activity
In this analysis it is important to note once again that
SI cannot be said to be responsible for driving IO activity. In fact, as shown in Figure 6C, the probability of occurrence of a CS
tactile response is statistically independent of the level of
SI spontaneous activity immediately before the stimulus, in addition to
being independent of SI response latency (Fig. 3D) or SI
response probability (Figs. 4D, 5D). In
this sense overall activity and the probability of response in SI and
the IO appear to be independently regulated, but SI activity
nevertheless influences the timing of IO-CS responses when they occur.
A final examination of the possible influence on CS latency by both
spontaneous CS and SI activities is warranted because of the data
presented in Figure 3B that suggest possible correlations between these phenomena. When the data were sorted by spontaneous CS
activity for the 50 msec before a stimulus, the mean CS latency was
similar for those trials with and without a spontaneous CS (36 ± 3 and 34 ± 6 msec respectively; mean ± SD,
t = 1.22, p > 0.2; data not plotted).
We next sorted the trials by spontaneous SI activity during the 50 msec
before the tactile stimulus. To avoid any possible influences of SI
latency, which is correlated with both spontaneous SI activity and CS
latency (Fig. 3B), we examined only those trials in which
there was no SI response. Summary data are plotted in Figure
6D, showing that there was no correlation between
spontaneous SI activity and CS latency when there was no SI response.
Thus, spontaneous SI activity does not have any direct effect on CS
response latency; the apparent correlations observed in Figures 2 and 3
are instead attributable presumably to spontaneous SI activity
influencing SI responses, which, as shown above, influence CS response latencies.
 |
DISCUSSION |
The primary conclusion of this study is that SI appears to
influence the timing of CS activity recorded in the cerebellum and that
it does so without influencing the probability of CS activity. This SI
influence is seen when responses are evoked by a peripheral stimulus as
well as during spontaneous activity. In the following sections we
consider the role that SI appears to play in modulating CS responses,
by describing first the circuitry likely to underlie these influences
and then the implications of these results for functional relationships
between SI and the cerebellum. We also consider the larger implications
of our results for hypotheses of the inferior olivary climbing fiber
projections in cerebellar function.
Trigeminal-cerebellar pathways
The regions of the rat's face stimulated in these experiments are
innervated by primary trigeminal afferents converging on the trigeminal
nuclear complex (Waite, 1984
). As demonstrated by Huerta et al. (1983)
,
only two trigeminal subnuclei, principalis and the dorsal part of
interpolaris, provide direct mossy fiber projections to the crus II
region of the cerebellum. We have also demonstrated the presence of an
indirect mossy fiber input to these same cerebellar locations that
involves cerebral cortex (Bower et al., 1981
; Morissette and Bower,
1996
). This loop also originates in the trigeminal nucleus, whose
subdivisions all project to the thalamus (Fukushima and Kerr, 1979
;
Bruce et al., 1987
; Williams et al., 1994
). The thalamus, of course,
projects to SI (Koralek et al., 1988
), which in turn influences the
cerebellum through the mossy fiber projections of the pontine
nuclei (Leergaard et al., 2000
).
Unfortunately, less is known about trigeminal-olivary projections. It
has been shown that a trigeminal-olivary-crus II projection arises
from the ventral aspect of nucleus interpolaris (Huerta et al., 1983
),
whereas nucleus principalis does not appear to project to the inferior
olive (Watson and Switzer, 1978
; Swenson and Castro, 1983a
,b
). Thus,
there is apparently no overlap between direct trigeminal-olivary and
direct trigeminal-cerebellar projections. It is also as yet unclear by
what pathway SI influences the inferior olive. It is known that there
are no direct projections from SI to the IO (Sousa-Pinto and Brodal,
1969
) and also, at least in the cat, that SI effects on the olive are
not mediated through an indirect projection through motor
cortex (Rowe, 1977
). It is known, however, that large regions of the
cerebral cortex project to the red nucleus (Leichnetz et al., 1984
;
Saint-Cyr, 1987
) and that the red nucleus influences the inferior olive
(Weiss et al., 1990
; McCurdy et al., 1992
; Horn et al., 1998
).
Additional studies clearly will be necessary to identify the pathway or
pathways mediating the physiological influences reported here.
Previous studies of the influence of somatosensory cortex
on the inferior olive
Very few previous studies of cortical influence on the inferior
olive have focused on SI. Previous observations that are relevant and
consistent with our results include the demonstration that CSs can be
evoked by SI stimulation (Miller et al., 1969
; Miles and Wiesendanger,
1975
) and that there is convergence onto inferior olive neurons from SI
and spinal pathways (Miller et al., 1969
). Given that the SI-IO
connection is indirect, whether this convergence occurs at the level of
the inferior olive or at some intermediate connection between SI/spinal
cord and the inferior olive is, as yet, unknown.
To date, almost no studies have looked specifically at the temporal
interaction between cerebral cortical and IO activities, despite the
fact that many hypotheses of cerebellar function postulate a
substantial role for cerebral cortex in guiding cerebellar processing (Houk and Wise, 1995
). It is interesting to note, however, that in
preparations in which cortex has been suppressed with barbiturate anesthesia the effect is to shorten CS latency (Gellman et al., 1983
,
1985
; Robertson, 1987
; Atkins and Apps, 1997
), an outcome that is the
opposite of that observed here. It is not clear at this juncture
whether or not the differences are caused by global cortical
inactivation versus local SI inactivation and/or long-term suppression
of cortical efferents versus short-term suppression.
Physiological interactions between somatosensory cortex and
the inferior olive
Although it is not clear by what pathway the influence is felt,
our results suggest that SI is providing an important modulating influence on the timing of activation of inferior olivary neurons. We
base the conclusion that the influence is modulatory on the fact that
SI activity appears to change the timing of CS responses without
affecting the actual probability of a CS response. Furthermore, when
the data were sorted by SI latency, the peak of the CS latency histogram ranged continuously from 27 to 38 msec (Fig. 3B).
Thus, it appears unlikely that the inferior olive is responding
differentially to two different sources of input. Instead, it would
seem that the influence of SI is to change the timing of an inferior
olivary response that would have otherwise been generated at a longer latency. The fact that pharmacological interference of the SI to IO
pathway or the absence of an SI response are both correlated with a
lengthening of the CS response latency, is consistent with this idea. A
modulatory role for SI is also consistent with data demonstrating that
CS responses can be readily elicited in decorticate animals (Oscarsson,
1969
; Rushmer et al., 1976
; Bloedel and Ebner, 1984
).
Although the focus of this study was on the relationship between SI and
CS responses, the data in Figures 2 and 3 demonstrate that there is a
correlation between spontaneous SI activity and SI response latency. We
do not have enough data to determine the causality of this correlation,
but we were able to determine that it was apparently responsible for
the correlation between spontaneous SI activity and CS response latency
(Fig. 6D). The correlation between spontaneous SI
activity and SI response latency, as well as the rising spontaneous
activity readily observable for short-latency SI responses imply that
the state of somatosensory cortex, as measured by spontaneous SI
activity, might influence SI response latency. If so, then the state of
somatosensory cortex can be said also to influence CS response latency.
Further studies will be needed to clarify this relationship.
Our findings are also interesting in the context of what is known about
the biophysical properties of the inferior olive. Studies have shown
that the timing of repeated IO discharge in vitro is under
the control of slow depolarization regulated by Ca2+ activated
K+ conductances (Llinas and Yarom,
1981a
,b
). When isolated in a slice, IO neurons discharge when the slow
depolarization resulting from previous activity reaches the threshold
for a subthreshold calcium-spiking mechanism. Our findings can be
explained by assuming two distinct influences on IO neurons: one that,
with a certain probability, sets the IO neuron into its slow
depolarization phase, and a second SI-mediated input that, when
superimposed on this slow depolarization, can cause the IO neuron to
fire earlier than it otherwise would. The phase of slow depolarization
could be induced by input from some other source (including a previous influence from SI), or it could reflect network level activity between
coupled IO neurons (Llinas and Yarom, 1981a
,b
; Sasaki et al., 1989
).
Whatever mechanism is responsible for setting the internal state of the
IO, the proposed influence of SI is consistent with both the
correlation in firing latencies of SI and climbing fibers, as well as
the finding that climbing fiber discharges occur at their longest
latencies when SI is not active. Without the SI influence, IO neurons
simply respond at the end of their natural depolarization cycle as set
by the first input.
Influence of somatosensory cortex on cerebellum and its
relevance to hypotheses of cerebellar function
Like the cerebellum as a whole, our unusually detailed knowledge
of the anatomical and physiological organization of climbing fiber
projections from the inferior olive to the cerebellum has led directly
to numerous speculations concerning the computational function of this
pathway (Marr, 1969
; Albus, 1971
; Ito, 1982
; Llinas and Welsh, 1993
).
In most of these speculations, the timing of climbing fiber discharge
has played a critical role in the presumed function. For example, in
the cerebellar learning hypotheses of Albus (1971)
and Marr (1969)
, the
precise timing of climbing fiber discharge was proposed to determine
which of the 150,000 parallel fiber inputs on a particular Purkinje
cell were modified in support of motor learning (Ito, 1982
). In the
motor timing hypothesis of Llinas, populations of climbing fibers
discharging at the characteristic 7-12 Hz oscillatory frequency of the
IO (Llinas and Yarom, 1986
) are proposed to provide a universal timing signal for the control and coordination of movement (Llinas and Welsh,
1993
).
While differing in the details, each of the previous hypotheses share
in common the idea that the IO itself is responsible for controlling
the critical timing of CS responses. In contrast, the data presented
here suggest that the timing of IO activity is actually under the
direct influence of the cerebral cortex and therefore could be more
related to cerebral cortical events rather than cerebellar events. This
assertion provides a very different context within which to consider
what is known about the climbing fiber afferent system. For example,
theoretical and experimental work in our laboratory on the oscillatory
properties of the olfactory cortex have suggested that 7-12 Hz
constitutes the fundamental frequency underlying computation in
cerebral cortex as a whole (Bower, 1992
; Fontanini et al., 2001
). In
this context, the 7-12 Hz resonate frequency of the IO (Llinas and
Yarom, 1986
) might simply anticipate the most likely temporal pattern
of output from cerebral cortex, rather than provide by itself a
clocking function for movement generation (Llinas and Welsh, 1993
).
Viewed more generally, and based on the current data, we
propose that at least one function of the IO and the climbing fiber system may be to provide the cerebellum specific information about the
timing of cerebral cortical computation cycles. This idea fits quite
well with the hypothesis we have been pursuing over a number of years,
that these tactile regions of the cerebellum are directly involved in
controlling the acquisition of tactile data on which computation in
somatosensory cerebral cortex is dependent (Bower and Kassel, 1990
;
Bower, 1997a
,b
; Hartmann and Bower, 2001
). By controlling the timing of
climbing fiber discharges, the cerebral cortex is provided a mechanism
for influencing directly the way that the cerebellum is controlling the
data on which somatosensory cortex depends. Experimental and modeling
studies currently underway are intended to better understand the nature
of that influence mediated through the climbing fiber on the dendrite
of the Purkinje cell.
 |
FOOTNOTES |
Received Dec. 12, 2001; revised May 21, 2002; accepted May 24, 2002.
This research was funded by National Science Foundation Grant 9986772. I.B. was supported by a postdoctoral fellowship from the Medical
Research Council of Canada.
Correspondence should be addressed to Ian E. Brown,
Center for Neuroscience Studies, Abramsky Hall, Room 109, Queen's
University, Kingston, Ontario, K7L 3N6 Canada. E-mail:
ianbrown{at}biomed.queensu.ca.
J. M. Bower's present address: The Research Imaging Center at The
University of Texas Health Science Center-San Antonio and the Cajal
Neuroscience Research Center at the University of Texas-San Antonio,
San Antonio, TX 78284-6240.
 |
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