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Volume 16, Number 23,
Issue of December 1, 1996
pp. 7791-7802
Copyright ©1996 Society for Neuroscience
Behavioral Analysis of Signals that Guide Learned Changes in the
Amplitude and Dynamics of the Vestibulo-Ocular Reflex
Jennifer L. Raymond and
Stephen G. Lisberger
Department of Physiology, W. M. Keck Foundation Center for
Integrative Neuroscience, and Neuroscience Graduate Program, University
of California, San Francisco, California 94143
ABSTRACT
INTRODUCTION
MATERIALS AND METHODS
RESULTS
DISCUSSION
FOOTNOTES
REFERENCES
ABSTRACT
We characterized the dependence of motor learning in the monkey
vestibulo-ocular reflex (VOR) on the duration, frequency, and relative
timing of the visual and vestibular stimuli used to induce learning.
The amplitude of the VOR was decreased or increased through training
with paired head and visual stimulus motion in the same or opposite
directions, respectively. For training stimuli that consisted of
simultaneous pulses of head and target velocity 80-1000 msec in
duration, brief stimuli caused small changes in the amplitude of the
VOR, whereas long stimuli caused larger changes in amplitude as well as
changes in the dynamics of the reflex. When the relative timing of the
visual and vestibular stimuli was varied, brief image motion paired
with the beginning of a longer vestibular stimulus caused changes in
the amplitude of the reflex alone, but the same image motion paired
with a later time in the vestibular stimulus caused changes in the
dynamics as well as the amplitude of the VOR. For training stimuli that consisted of sinusoidal head and visual stimulus motion, low-frequency training stimuli induced frequency-selective changes in the VOR, as
reported previously, whereas high-frequency training stimuli induced
changes in the amplitude of the VOR that were more similar across test
frequency. The results suggest that there are at least two
distinguishable components of motor learning in the VOR. One component
is induced by short-duration or high-frequency stimuli and involves
changes in only the amplitude of the reflex. A second component is
induced by long-duration or low-frequency stimuli and involves changes
in the amplitude and dynamics of the VOR.
Key words:
motor learning;
vestibulo-ocular reflex;
dynamics;
timing;
eye movements;
monkeys;
oculomotor
INTRODUCTION
The vestibulo-ocular reflex (VOR) stabilizes
images on the retina during head turns by using vestibular signals to
generate compensatory smooth eye movements in the opposite direction
from head motion. Motor learning maintains the accuracy of the VOR by
modifying the reflex whenever retinal image motion is associated persistently with head turns (Gonshor and Melvill Jones, 1973 ; Ito et
al., 1974 ; Miles and Fuller, 1974 ; Gauthier and Robinson, 1975 ).
Previous research has provided evidence for two sites of plasticity
associated with motor learning in the VOR. One site is in the
vestibular inputs to the cerebellar cortex of the floccular complex,
and the other is in the vestibular inputs to neurons in the vestibular
nucleus that receive direct monosynaptic inhibition from the floccular
complex (Dufosse et al., 1978 ; Miles et al., 1980b ; Watanabe, 1984 ;
Lisberger and Pavelko, 1988 ; Lisberger, 1994 ; Lisberger et al.,
1994b ,c; Luebke and Robinson, 1994 ; Pastor et al., 1994 ; Partsalis et
al., 1995 ).
With putative sites of plasticity established, a logical next step is
to identify anatomical pathways, neural signals, and ultimately the
cellular mechanisms that guide plasticity at these sites. The
behavioral learning rule is well known. The conjunction of head turns
and image motion causes motor learning in the VOR. If image motion is
consistently in the same direction as head motion, then the amplitude
of the VOR is too large, and learning causes it to decrease; if image
motion is in the opposite direction from head motion, then the
amplitude of the VOR is too small, and learning causes it to increase.
Neural instantiation of the learning rule presumably involves the
convergence of signals from vestibular and visual sensory pathways on
sites of plasticity. Both putative sites of plasticity for the VOR
receive the requisite convergence of visual and vestibular signals. The
cerebellar cortex of the floccular complex receives vestibular inputs
from second-order vestibular neurons in the vestibular nucleus and
visual inputs over both the climbing fiber and mossy fiber pathways
(Precht and Llinas, 1969 ; Simpson and Alley, 1974 ; Langer et al., 1985 ; Graf et al., 1988 ; Stone and Lisberger, 1990a ,b). The vestibular nucleus receives inputs signaling head velocity from primary afferent and second-order vestibular neurons and highly processed or transformed vestibular inputs from the floccular complex and nucleus prepositus hypoglossi (Shimazu and Precht, 1966 ; Baker et al., 1972 ; Precht and
Baker, 1972 ; Highstein, 1973 ; Baker and Berthoz, 1975 ; Ito et al.,
1976 , 1977 ; Lisberger and Pavelko, 1988 ; Lisberger et al., 1994a ). It
may receive visual inputs from the nucleus prepositus, the Purkinje
cells, and the collaterals of climbing fibers that project to the
floccular complex.
Three questions must be answered to advance our understanding of how
visual and vestibular stimuli regulate cellular mechanisms of
plasticity in the circuit for the VOR. First, which of the multiple
visual and vestibular inputs to the sites of plasticity are involved in
learning? Second, how are the sensory stimuli that drive learning
represented in the firing patterns of those inputs? The neural signals
that guide learning will not be exact replicas of the external visual
and vestibular stimuli. For example, there is a 100 msec latency
difference for vestibular and visual signals to arrive at the sites of
plasticity (Baker et al., 1969 ; Precht and Baker, 1972 ; Highstein,
1973 ; Miles et al., 1980a ; Lisberger and Pavelko, 1988 ; Stone and
Lisberger, 1990a ,b; Lisberger et al., 1994b ,c), and the signals also
may be filtered or transformed in other ways. Third, how are the
cellular mechanisms of plasticity regulated by electrical signals in
their neural input pathways, and what transformations are performed in
subcellular signaling pathways involved in plasticity?
In the present paper, we take a behavioral approach to these questions.
We contend that we should be able to constrain the dynamic properties
of the neural signals and cellular mechanisms that guide motor learning
in the VOR through an examination of how learning is affected by
systematic variation of the temporal properties of the sensory stimuli
used to induce learning. Our analysis provides evidence for two
components of learning in the VOR that are regulated by neural signals
with different dynamics.
MATERIALS AND METHODS
Experiments were conducted on three male rhesus monkeys that had
been trained to perform a visual fixation task to obtain liquid
reinforcement, following the methods in Wurtz (1969) . Using methods
that have been described previously (Lisberger et al., 1994a ), monkeys
were anesthetized with isofluorane, and sterile procedure was used to
implant bolts in the skull for restraining the head and to implant a
coil of wire on one eye for measuring horizontal and vertical eye
position. During experiments, each monkey sat in a specially designed
primate chair to which his implanted head holder was secured.
Vestibular stimuli were provided by a servo-controlled turntable
(Contraves-Goertz, model 813) that rotated the monkey, the chair, and a
set of 18 inch magnetic field coils together around a vertical
axis.
VOR testing procedures and data analysis. We tested VOR
performance by delivering passive head turns around a vertical axis in
total darkness. At the beginning and end of each experiment, tests were
run over a range of sinusoidal frequencies (0.5, 1, 2, 3, 4, 5, 6, 8, and 10 Hz), with amplitude 20°/sec peak-to-peak, and additional tests
were run with pulse stimuli at a constant velocity of 15°/sec for
500-1000 msec. Each pulse stimulus consisted of a rapid acceleration
from 0 to 15°/sec, a period of constant velocity at 15°/sec, and a
deceleration back to 0°/sec. The commanded acceleration was constant
at 600°/sec2 for 25 msec, but the dynamics of the
turntable resulted in accelerations that took ~40 msec to achieve
peak velocity and had overshoots of ~3°/sec (see Figs. 1, 2). In
addition to the tests at the beginning and end of the experiment, the
time course of learning was monitored at regular intervals during
training by briefly placing the monkey in the dark and testing VOR
performance using a small subset of the vestibular test stimuli. When
the vestibular stimulus for testing the VOR was a pulse of head
velocity, stimuli were delivered at an interval of 1.396 sec. During
the intervals when the head was stationary between pulse stimuli, the
monkey was rewarded for fixating a red light-emitting diode target
projected 114 cm in front of him in the otherwise dark room. The target
was extinguished 100 msec before each vestibular pulse stimulus and was
turned back on 100 msec after each stimulus. When the vestibular
stimulus for testing the VOR was a sine wave, the monkey was placed in darkness but was rewarded for keeping his eyes positioned within ±10° of straight-ahead gaze. Both of these procedures kept the eyes
near straight-ahead gaze yet allowed measurement of the VOR in the
dark. We did not record eye movements for attempted eccentric fixation
with the head stationary, and therefore we cannot report whether our
training conditions caused changes in the neural integrator, like those
reported by Tiliket and colleagues (1994).
Fig. 1.
Example of a ×2 training stimulus used to
induce motor learning in the VOR. Eye velocity is plotted relative to
the head. Head velocity, head position, visual stimulus position, and
gaze position are plotted relative to the stationary world. Gaze
position was computed as the sum of head position in the world plus eye position in the head. In all traces, up represents rightward position or motion (R); down represents leftward position or
motion (L). The amplitude of saccadic eye velocities has
been cropped. Arrows indicate the duration of the pulses
of head and visual stimulus movement, which varied in different
experiments.
[View Larger Version of this Image (22K GIF file)]
Fig. 2.
Examples of learned changes in the VOR induced by
training with pulses of head and visual stimulus velocity that were 150 msec (A) or 1000 msec (B) in duration.
Dashed eye velocity trace: VOR before learning;
heavy solid trace: VOR after learning. Each trace is the
average of at least ten responses, and fine traces indicate
the standard deviation of the averaged eye velocity after learning. The
learned component of the VOR was computed by subtracting the eye
movement response elicited before learning from the eye movement
response elicited after learning.
[View Larger Version of this Image (15K GIF file)]
Voltages related to eye and head position were differentiated with an
analog circuit to obtain signals related to eye and head velocity. Data
were recorded on-line by a computer at 500 Hz per channel. The data
were analyzed after the experiment by aligning the records and
averaging eye and head velocity. Nearly all averages included 10 or
more records, but in a few cases fewer than 10 records were averaged.
For pulse stimuli, the records were aligned on the onset of head
acceleration. Only saccade-free responses were included in the
averages, and eye velocity records were edited before averaging to
remove the rapid deflections caused by any saccades during the period
of fixation before or after the vestibular stimulus (Lisberger et al.,
1994a ). The gain of the VOR was measured at various times during the
pulse of head velocity as the averaged eye velocity divided by the
imposed head velocity. For sinusoidal stimuli, the records were aligned
on the zero crossings of head velocity. For frequencies 1 Hz, eye velocity records were edited before averaging to remove the rapid deflections caused by saccades. For frequencies >1 Hz, analysis was
limited to saccade-free cycles for which gaze position was within 10°
of straight-ahead gaze. Averaged eye and head velocity traces were
subjected to Fourier analysis, and the gain of the VOR was estimated as
the ratio of the fundamental components of eye and head velocity. The
harmonic distortion of eye velocity was generally <5%.
Procedures for inducing learning. During a training period
that lasted 3 hr (unless noted otherwise), learning was induced as the
monkey viewed moving visual stimuli during passive whole-body rotation
around a vertical axis. In some experiments the vestibular stimulus
used to induce learning was a sine wave at a single frequency of 0.5, 2, 5, 8, or 10 Hz and with a peak-to-peak velocity of 20°/s. In other
experiments, the vestibular stimuli used to induce learning were pulses
of head velocity. Each pulse consisted of a rapid acceleration from 0 to 15°/sec, a period of constant velocity at 15°/sec, and a
deceleration back to 0°/sec. The commanded acceleration was constant
at 600°/sec2 for 25 msec, but in different experiments
the duration of the constant velocity part of the pulse stimulus ranged
from 30 to 950 msec, for total commanded pulse stimulus durations
ranging from 80 to 1000 msec. Pulse stimuli were delivered at regular intervals of 1.096 sec, and the direction of the initial head acceleration was alternated so that one rightward and one leftward pulse of head velocity was delivered every 2.192 sec. This resulted in
a trapezoidal head position profile (Fig. 1), with total excursions ranging from 0.8° for pulses of head velocity with durations of 80 msec to 14.6° for pulses with durations of 1000 msec.
The visual motion stimulus for inducing learning in the VOR was
provided by a high-contrast, black and white random-dot pattern that
was reflected off a mirror galvanometer onto the back of a tangent
screen 114 cm in front of the eyes. The visual stimulus subtended 16°
along the horizontal meridian and 11° along the vertical meridian.
Decreases in the amplitude of the VOR were produced by a combination of
vestibular and visual stimuli called the "times zero" (×0)
stimulus condition. In the ×0 condition, the visual stimulus moved in
the same direction and at the same speed as the head, so that images
would be stable on the retina if the eyes did not rotate within the
head during vestibular stimuli. Thus, the ideal gain of the
VOR (defined as the ratio of eye speed to head speed) would be
zero. Increases in the gain of the VOR were produced with the "times
two" (×2) stimulus condition. In this case, the visual stimulus
moved at the same speed but in the opposite direction from the head.
Hence, the eye movements driven by the VOR needed to be twice the
amplitude of the head movement to keep images stable on the retina, and
the ideal gain of the VOR would be 2.0. Equivalently, for sinusoidal
stimuli, the motion of the head and visual stimulus were in phase for
the ×0 stimulus condition and 180° out of phase for the ×2 stimulus condition. For 500 msec and 1000 msec pulse stimuli, the visual stimulus began at an eccentric position (3° or 7°, respectively), so that its movement would not take it beyond the edge of the tangent
screen. To maintain a constant level of alertness and to keep the
stimulus roughly centered in the visual field during vestibular
stimulation, monkeys were rewarded at intervals of 1.5-4.0 sec for
keeping their gaze within ±10° of the center of the visual stimulus.
In some experiments, stroboscopic illumination (50 Hz) was used to
project the visual stimulus onto the mirror galvanometer. This allowed
for rapid transition from visual stimulation to total darkness.
Experiments with ×0 and ×2 training stimuli were alternated, and
experiments were separated by at least 48 hr to allow the gain to
readapt to its normal value before each experiment. To test for
residual learning from previous training sessions, we performed
statistical analysis of the pretraining gain values of monkeys A and D,
for which there were complete data sets. For the data of Figure 3, a
three-factor ANOVA of the pretraining gain of the VOR measured at two
time points (40-50 and 425-475 msec after onset of head motion)
revealed no consistent variation among experiments with different
training stimulus durations (F(4,20) = 1.50; p < 0.24) or between experiments with ×0
versus ×2 visual conditions (F(1,20) = 0.31;
p < 0.58). Furthermore, there was no significant
difference in the prelearning gain at the early and late time points
(F(1,20) = 0.13; p < 0.72), and
there were no significant interaction effects among any of the factors.
Similarly, for the data of Figure 6, a three-factor ANOVA revealed no
consistent variation in the pretraining gain of the VOR among
experiments with differently timed visual stimuli
(F(2,12) = 2.84; p < 0.10), between experiments with ×0 versus ×2 visual conditions
(F(1,12) = 0.23; p < 0.64), or
between measurements taken 40-50 versus 450-575 msec after the onset
of head motion (F(1,12) = 0.66;
p < 0.43), and there were no significant interaction
effects. For the data of Figure 7, a three-factor ANOVA revealed no
consistent variation in the pretraining gain of the VOR among
experiments with different training frequencies
(F(4,90) = 0.37; p < 0.83) or
between experiments with ×0 versus ×2 visual conditions
(F(1,90) = 0.93; p < 0.34).
There was a significant difference in the prelearning gain measured
with different test frequencies (F(8,90) = 2.77; p < 0.01), as expected from previous reports (Keller,
1978 ). There were no significant interaction effects.
Fig. 3.
Quantitative analysis of learned changes in the
gain of the VOR induced by training stimuli of different durations.
Changes in gain are plotted as the ratio of the gain after learning to the gain before learning. A, Early VOR: the gain ratio
was measured 40-50 msec after the onset of head movement.
B, Late VOR: the gain ratio was measured 425-475 msec
after the onset of head movement. Each data point represents the
results from one training session. Open symbols, ×0
stimulus conditions; filled symbols, ×2 stimulus conditions. Circles, Monkey A; squares,
monkey D; triangles, monkey E.
[View Larger Version of this Image (13K GIF file)]
Fig. 6.
Summary of learned changes in the VOR induced by
150 msec of visual stimulus motion paired with the beginning, middle,
or end of a 600 msec vestibular stimulus. Changes in the gain of the
VOR are plotted as the ratio of the gain after learning to the gain
before learning. A, Early VOR, measured 40-50 msec
after the onset of head motion. B, Late VOR, measured
450-575 msec after the onset of head motion. Open
symbols, ×0 stimulus conditions; filled
symbols, ×2 stimulus conditions. Circles,
Monkey A; squares, monkey D.
[View Larger Version of this Image (12K GIF file)]
Fig. 7.
Learned changes in the gain of the VOR induced by
sinusoidal training stimuli. Each plot shows the results for a single
training frequency (0.5, 2, 5, 8, or 10 Hz, indicated at the top of the plot). Changes in gain (post-training/pretraining gain ratio) are
plotted as a function of the frequency of the sinusoidal vestibular test stimuli used to measure the VOR. Open symbols, ×0
stimulus conditions; filled symbols, ×2 stimulus
conditions. Circles, Monkey A; squares,
monkey D; triangles, monkey E.
[View Larger Version of this Image (22K GIF file)]
RESULTS
The duration of individual training stimuli affects learning
In the first set of experiments, we used pulses of head and visual
stimulus velocity as the training stimulus and examined the effect of
varying the duration of the pulse on learned changes in the VOR. Pulse
durations ranged from 80 to 1000 msec, and learning was induced by
either ×0 or ×2 stimulus conditions. Figure 1
illustrates training with a 500 msec, ×2 stimulus. The head and visual
stimulus were initially stationary and then simultaneously began moving at the same speed but in opposite directions (head left, visual stimulus right). After they moved for 500 msec at a speed of 15°/sec, both the head and visual stimulus stopped. Then, 1.096 sec after the
onset of the previous stimulus, the head and visual stimulus moved with
the same pulse trajectory in directions opposite from the previous
movement (head right, visual stimulus left). The eye velocity during
training resulted from a combination of eye movements driven by the
VOR, predicted by the dashed trace, and visually guided tracking eye
movements that attempted to match gaze position and velocity to target
position and velocity.
Figure 2A illustrates the VOR response
elicited by a 500 msec pulse of head velocity in darkness and its
modification by 3 hr of training with 150 msec pulses of head and
visual stimulus velocity in the ×2 training condition. Before training
(dashed trace), the VOR response consisted of a 500 msec
pulse of eye velocity that was opposite in direction from and nearly
equal in amplitude to the vestibular stimulus. During the 450 msec
period of constant head velocity, the evoked eye velocity remained
nearly constant. After training (heavy solid trace), the eye
velocity response was larger than control throughout the 450 msec
interval of constant head velocity. Thus, when tested with long
vestibular stimuli, the learned changes in the VOR induced by training
with brief pulses of visual-vestibular stimulation were expressed at times in the test stimulus that were well beyond the duration of the
training stimulus. Furthermore, the changes were approximately equal in
amplitude at all times during the vestibular stimulus.
Figure 2B illustrates the learned changes in the VOR
induced by 1000 msec pulses of head and visual stimulus velocity in the ×2 training condition. During the 3 hr training period, the same number of visual-vestibular stimuli were delivered as in the
experiment of Figure 2A. Again, the VOR was tested
with 500 msec pulses of head velocity in the dark, so the responses in
Figure 2, A and B, are directly
comparable. Comparison of the VOR evoked after training (heavy
solid trace) with the control response (dashed trace)
reveals that the 1000 msec training stimulus induced a large change in
the amplitude of the VOR. Furthermore, the evoked eye velocity
increased throughout the test stimulus, in contrast to the eye
movements elicited before training or after training with the 150 msec
stimulus.
A comparison of the learned components of the VOR (Fig. 2, bottom
traces) highlights the different effects of training with brief
and long stimuli. These traces were obtained by subtracting the eye
velocity evoked by the vestibular test stimulus before training from
that evoked after training. When the training stimulus had a duration
of 150 msec, the learned component of the VOR had a roughly constant
amplitude throughout the test stimulus. When the training stimulus had
a duration of 1000 msec, the learned component increased in amplitude
throughout the test stimulus, reflecting changes in both the amplitude
and time course or dynamics of the eye movement evoked by the test
stimulus.
We performed a quantitative analysis of the changes in the gain
of the VOR two times during the test stimulus: (1) during the interval
from 40 to 50 msec after the onset of the vestibular stimulus and (2)
during the interval from 425 to 475 msec after the onset of the
vestibular stimulus. The pretraining values of the gain of the VOR were
1.01 ± 0.02 and 0.98 ± 0.01 (mean ± SEM) for the
early and late intervals, respectively. Learned changes in the
amplitude of the VOR are expressed as the ratio of the gain of the VOR
after training divided by the gain of the VOR before training. Values
<1.0 represent a learned decrease in the gain of the VOR, and values
>1.0 represent a learned increase in the gain.
Each graph in Figure 3 plots learned changes in
the gain of the VOR as a function of the duration of the training
stimulus for both ×0 (open symbols) and ×2 (closed
symbols) training conditions. Each point represents the results
from 3 hr of exposure to the training stimulus during one experimental
session, and different symbols (circles, squares, triangles)
represent the results from different monkeys. In each case, the test
stimulus used to measure the VOR was a 500 msec pulse of head velocity
at 15°/sec. In Figure 3A, the gain of the VOR was
estimated by averaging eye and head velocity over the interval from 40 to 50 msec after the onset of the vestibular test stimulus. For all
durations of training stimulus tested, changes in the gain of the VOR
in this early interval were adaptive: training with ×0 stimuli
produced a decrease in the gain of the VOR, and training with ×2
stimuli produced an increase in the gain. The changes were small,
however, and increased only slightly as a function of the duration of
the training stimulus. In the interval from 425 to 475 msec after the
onset of head motion (Fig. 3B), the learned changes in the
gain of the VOR were larger and showed a strong relationship to the
duration of the training stimulus. Furthermore, comparison of Figure 3, A and B, reveals that training with a
long-duration training stimulus (e.g., 500 or 1000 msec) induced bigger
changes late rather than early in the VOR.
In Figure 4A, we have replotted the
data from Figure 3 in a way that directly compares the ratio of the
post- and pretraining gains of the VOR in the 425-475 msec interval
with that in the early (40-50 msec) interval. Each symbol represents
the results of a single 3 hr training session, and the size of the
symbol indicates the duration of the training stimulus. The smallest symbols represent the changes produced by 80 msec training stimuli, and
progressively larger symbols represent the results of training with
150, 250, 500, and 1000 msec stimuli. The smaller symbols are clustered
near the dashed diagonal line, indicating equal changes in the gain of
the early and late components of the VOR. In contrast, the larger
symbols tend to plot closer to the dashed vertical line, indicating
larger changes in the late VOR rather than the early VOR. These
differential changes in the gain of the VOR measured early and late
during the 500 msec test stimulus represent a change in the dynamics of
the VOR after training with long-duration stimuli.
Fig. 4.
Comparison of changes in the dynamics of the
VOR induced by training stimuli of different durations. The change in
gain of the late VOR (gain ratio measured 425-475 msec after the onset of head motion) is plotted relative to the change in gain of the early
VOR (gain ratio measured 40-50 msec after the onset of head motion).
The size of the symbol indicates the duration of the training stimulus.
Smallest symbols represent the results of training with 80 msec
stimuli. Progressively larger symbols represent the results of training
with 150, 250, 500, and 1000 msec stimuli. A, The
training period for each experiment was 3 hr, so that the total
duration of visual-vestibular stimulation during training varied
from ~800 sec for 80 msec stimuli to 10,000 sec for 1000 msec
stimuli. B, The duration of the training period was
adjusted to compensate for the durations of the individual stimuli, so that total duration of visual-vestibular stimulation was 2500 sec.
Note the difference in scale in A and B.
Open symbols, ×0 stimulus conditions; filled
symbols, ×2 stimulus conditions. Circles, Monkey A; squares, monkey D; triangles,
monkey E.
[View Larger Version of this Image (11K GIF file)]
The results in Figures 3 and 4A suggest that
there is a relationship between the induction of learned changes in the
dynamics of the VOR and the temporal properties of the individual
stimuli used to induce learning. Because the same number of stimuli
were delivered in each experiment, however, the total duration of
visual-vestibular stimulation varied with the duration of the
individual stimuli. In a 3 hr training session, the total duration of
stimulation was ~800 sec with 80 msec stimuli, 1500 sec with 150 msec
stimuli, 2500 sec with 250 msec stimuli, 5000 sec with 500 msec
stimuli, and 10,000 sec with 1000 msec stimuli. Hence, we needed to
address the possibility that the apparent effects of the duration of
the individual training stimuli were related more directly to the total
duration of visual-vestibular stimulation during training. We
therefore conducted a series of experiments that induced learning with
training stimulus pulses of different durations, as in Figures 3 and
4A, but with the duration of each training session
adjusted so that all experiments provided a total of ~2500 sec of
visual-vestibular stimulation. Figure 4B uses the
same graphical form as Figure 4A to compare the
changes in the early and late VOR produced by 45 min of training with
stimuli that were 1000 msec in duration (~2500 training stimuli), 90 min of training with 500 msec stimuli (~5000 stimuli), 180 min of
training with 250 msec stimuli (~10,000 stimuli), and 300 min of
training with 150 msec stimuli (~16,500 stimuli). Pulse durations of
80 msec were excluded from this control experiment, because they would
have required almost 10 hr of training.
In general, even with the total duration of visual-vestibular
stimulation during training held constant, 150 and 250 msec stimuli
(Fig. 4B, small symbols) produced changes
in the late and early components of the VOR that were similar in
amplitude and therefore plotted near the dashed diagonal line of slope
1. In contrast, 500 and 1000 msec stimuli (Fig. 4B,
large symbols) produced bigger changes in the late than in
the early VOR and therefore plotted closer to the vertical rather than
the horizontal dashed line. A single exception to this general finding
was the experiment in which monkey A received 45 min of training with a
1000 msec ×0 stimulus (large open circle), and the change
in the late VOR was smaller than the change in the early VOR. In this
case, however, changes in both the late and early VOR were quite small,
indicating little overall learning. This one data point indicates that
learned changes in the gain and dynamics of the VOR can be small or
fail to occur if the total number of stimuli is low or the total length
of the training session is very short. Indeed, the smaller size of the
learned changes made it practical to use different scales in Figure 4,
A and B. Nevertheless, to the extent that
learning occurs, the duration of the individual stimuli used
in training seems to be a key factor in determining the extent to which
the dynamics of the VOR are modified by learning. Neither the length of
the training session and number of training stimuli (held constant in
Fig. 4A) nor the total duration of visual-vestibular stimulation (held constant in Fig. 4B) can account
for the induction of changes in the dynamics of the VOR.
The timing of image motion during head turns affects learning
Because training stimuli of different durations induce different
learned changes in the VOR, the neural representations of the training
stimuli at the sites of plasticity must have dynamics that can affect
the plasticity mechanism. Because the duration of the visual and
vestibular stimuli were varied together in the above experiments, the
dynamics of the signals important for learning could have resulted from
the dynamics of signals related to either of these components of the
training stimulus. To distinguish between these possibilities, we
conducted an additional experiment that varied the relative timing of
the two stimuli during training. The logic behind the experiment was
that if the neural representation of the vestibular stimulus at the
site of plasticity changes with time, then different changes might be
induced in the VOR depending on when the visual stimulus was presented
relative to the vestibular stimulus.
The training stimuli used in this experiment are represented
schematically in the top traces of Figure 5. The
vestibular stimulus used during training was always a 600 msec pulse of
head velocity (15°/sec). Learning was induced by a short period of
×0 (as shown in Fig. 5) or ×2 visual stimulation that was provided
only during the first, middle, or last 150 msec of the vestibular
stimulus. This provided visual stimulation during intervals that were
0-150, 225-375, or 450-600 msec after the onset of the vestibular
stimulus. We accomplished a rapid switch between visual stimulation in
one part of the vestibular stimulus and total darkness during the rest
of the vestibular stimulus by using 50 Hz stroboscopic illumination to
project the visual stimulus. In several control experiments, 50 Hz
stroboscopic illumination produced changes in the VOR similar to those
induced by continuous illumination when otherwise identical stimulus
paradigms were used to induce learning (data not shown).
Fig. 5.
Examples of changes in the VOR induced by a 150 msec period of ×0 visual stimulus motion that was paired with the
beginning (A), middle (B), or end
(C) of a 600 msec pulse of head motion. Top
traces indicate schematically the training stimuli used to induce learning. Dashed portions of the visual stimulus
velocity traces indicate periods of darkness; solid
portions indicate periods during which the visual stimulus was
illuminated with stroboscopic light. Middle traces show
the VOR responses to a 600 msec pulse of head velocity before
(dashed traces) and after (solid traces) 3 hr of exposure to the training stimulus. Bottom traces
show the learned component of the VOR, obtained by subtracting the eye
velocity elicited by the vestibular test stimulus before learning from
the eye velocity elicited after learning.
[View Larger Version of this Image (18K GIF file)]
The eye velocity traces in Figure 5 illustrate the changes in the VOR
that occurred when ×0 visual stimuli were presented at different times
during the vestibular stimulus used for training. When learning was
induced by pairing the visual stimulus with the beginning of the
vestibular stimulus (Fig. 5A), there was a decrease in the
gain of the VOR that was similar in amplitude in the early and late
phases of the VOR response. When learning was induced by pairing the
visual stimulus with the middle (Fig. 5B) or last (Fig.
5C) 150 msec of the vestibular stimulus, there were changes
in the dynamics as well as the gain of the VOR. The dependence of the
learned changes in the dynamics of the VOR on the timing of the visual
stimulus relative to the vestibular stimulus is most apparent in a
comparison of the learned components of the VOR for the three different
training stimuli (Fig. 5, bottom traces).
On average, the pretraining values of the gain of the VOR were
0.98 ± 0.01 and 0.99 ± 0.01 (mean ± SEM) for early
(40-50 msec) and late (425-575 msec) measurement intervals,
respectively; however, we observed some monkey-to-monkey and day-to-day
variability in the prelearning dynamics of the VOR as tested with 500 msec pulses of head velocity. For example, the prelearning eye velocity
traces in Figure 5, A and C, show increasing eye
velocity during the constant velocity vestibular test stimuli. In other
training sessions, the prelearning VOR response was constant in
velocity or exhibited a slight deceleration during the constant
velocity test stimulus. As detailed in Materials and Methods,
statistical analysis revealed no consistent variation in the
prelearning VOR dynamics that could account for the changes in dynamics
induced by different training conditions. Furthermore, different
training stimuli could induce different changes in dynamics even when
the prelearning VOR responses were similar. For example, the
prelearning VOR responses in Figure 5A,C both increase in
velocity during the test stimulus, but exposure to one training
stimulus resulted in a postlearning response that decreased in velocity
during the stimulus (Fig. 5C), whereas exposure to the other
training stimulus resulted in a postlearning response that increased in
velocity like the prelearning response (Fig. 5A).
Figure 6 summarizes the results from two monkeys
(circles and squares) for both ×0 (open
symbols) and ×2 (closed symbols) stimulus conditions.
Results are shown for training with the visual stimulus present during
the beginning (0-150 msec), middle (225-375 msec), or end (450-600
msec) of the vestibular stimulus. Changes in gain are plotted as the
ratio of the gain of the VOR after training to that before training
Learned changes in the early part of the VOR, measured 40-50 msec
after the onset of head motion in the dark (Fig. 6A)
were generally small and did not depend strongly on when the visual stimulus was delivered relative to the vestibular stimulus during training. In contrast, learned changes in the later phase of the VOR,
measured 450-575 msec after the onset of head motion in the dark (Fig.
6B), were biggest if learning was induced by
presenting the visual stimulus at the end of the 600 msec vestibular
stimulus. This pattern of changes in the early and late VOR reflects
changes in dynamics when the visual stimulus was paired with the end of the vestibular stimulus, smaller changes in dynamics when the visual
stimulus was paired with the middle of the vestibular stimulus, and
changes in gain alone when the visual stimulus was paired with the
beginning of the vestibular stimulus.
Additional experiments were performed on one monkey to control for the
possibility that the effect of changing the timing of the visual
stimulus during training was related to the presence of an acceleration
or deceleration during the period of visual stimulation for some of the
training stimuli in Figures 5 and 6. In these control experiments, the
visual stimulus was presented during different times in the constant
velocity part of the vestibular stimulus, either from 50 to 200 msec or
from 400 to 550 msec after the onset of the vestibular stimulus. Visual
stimuli presented at 50-200 msec produced relatively similar changes
in the early and late VOR; gain ratios for the early versus late VOR
were 0.85 versus 0.79 for ×0 training, and were 1.08 versus 1.10 for
×2 training. In contrast, visual stimuli presented at 400-550 msec produced a bigger change in the late than in the early VOR; gain ratios
for the early versus late VOR were 0.94 versus 0.81 for ×0 training
and 1.03 versus 1.36 for ×2 training. Thus, visual image motion that
occurred during later times in the constant velocity part of the
vestibular stimulus induced changes in the dynamics as well as the gain
of the VOR, whereas image motion that occurred during early times in
the constant velocity part of the vestibular stimulus induced primarily
changes in gain.
The frequency of sinusoidal training stimuli affects learning
In a companion series of experiments, learning was induced in the
VOR with continuous, sinusoidal head and visual stimulus motion. For
each experiment, the training stimulus consisted of sinusoidal
oscillation at a single frequency, and head and visual stimulus motion
were either in phase (×0) or out of phase (×2). Before and after
training, the VOR was tested with continuous sinusoidal head rotations
in darkness over a range of frequencies from 0.5 to 10 Hz and with
peak-to-peak amplitude of 20°/sec. The effects of training were
assessed by computing the ratio of the gain of the VOR after training
to that before training and plotting this gain ratio as a function of
the frequency of the test stimulus.
Each panel in Figure 7 plots the results for training at
a single frequency, indicated at the top of each plot. After training with ×0 or ×2 stimuli at 0.5 Hz, learned changes in the gain of the
VOR were frequency-selective. The changes were biggest at test
frequencies near 0.5 Hz and were progressively smaller when tested at
higher frequencies, with little change at test frequencies of 8 and 10 Hz. Similarly, training with 2 Hz stimuli produced changes in the gain
of the VOR that were biggest at frequencies close to 2 Hz. These
results for training with sinusoidal stimuli at low frequencies
confirmed previous findings of frequency-selective changes in the gain
of the VOR (Collewijn and Grootendorst, 1979 ; Godaux et al., 1983 ;
Lisberger et al., 1983 ; Powell et al., 1991 ); however, the
frequency-selectivity of learned changes in the VOR was less evident at
higher training frequencies. Training at 5 Hz still induced adaptive
changes in the gain of the VOR, but the changes were similar across
test frequency. Training with the highest-frequency stimuli (8 and 10 Hz) produced smaller and less consistent changes in the gain of the
VOR, although the changes generally were in the adaptive direction.
Figure 8 plots the effect of ×0 and ×2 training on the
phase of the VOR for the experiments in Figure 7. Change in phase is plotted as the phase of eye velocity relative to head velocity after
learning minus the phase of eye velocity relative to head velocity
before learning. Small changes in phase were observed after training,
and these changes were consistent across monkeys, although they never
exceeded 10°. After training with ×2 stimuli, there was an increase
in phase lead at the lower test frequencies and an increase in phase
lag at the higher test frequencies. After training with ×0 stimuli,
there was a increase in phase lag at the lower test frequencies and an
increase in phase lead at the higher test frequencies. For 0.5, 2, and
5 Hz training stimuli, the crossover from increased phase lead to
increased phase lag occurred close to the training frequency. This is
consistent with previous reports for training frequencies 2 Hz
(Godaux et al., 1983 ; Lisberger et al., 1983 ; Powell et al., 1991 ). For
8 and 10 Hz training stimuli, however, the phase crossover occurred at
a test frequency below the training frequency.
Fig. 8.
Changes in the phase of the VOR induced by
sinusoidal training stimuli. Changes in the phase of eye velocity
relative to head velocity are plotted as a function of the frequency of
the sinusoidal vestibular test stimuli used to measure the VOR.
Open symbols, ×0 stimulus conditions; filled
symbols, ×2 stimulus conditions. Circles,
Monkey A; squares, monkey D; triangles,
monkey E.
[View Larger Version of this Image (25K GIF file)]
The differential effects on the gain and dynamics of the VOR induced by
training with sinusoidal visual-vestibular stimuli of different
frequencies paralleled the effects induced by stimuli of different
durations. Like the long-duration visual-vestibular stimulus pulses,
low-frequency sinusoidal stimuli induced a change in the dynamics as
well as the amplitude of the VOR, as evidenced by the differential
changes in gain across test frequency. Like the brief
visual-vestibular stimulus pulses, high-frequency sinusoidal stimuli
induced a change in the amplitude of the VOR with little differential
effect across frequency. Converted to the time domain, the absence of a
differential effect across frequency corresponded to little effect on
the dynamics of the reflex.
For a more direct comparison of the effects observed in the time and
frequency domains, we tested the VOR with sinusoidal vestibular stimuli
before and after training with short- and long-duration pulses of
visual-vestibular stimulation. After training with 1000 msec stimuli
(Fig. 9A), changes in the gain of the VOR
were biggest when tested at low frequencies, but after training with
250 msec stimuli (Fig. 9B), changes were similar across test
frequency. The estimated power spectra of the short and long vestibular
pulse stimuli are shown in Figure 9, A2 and B2.
Power is normalized to the power contained in a single sinusoidal
stimulus with an amplitude of 20°/sec peak-to-peak, i.e., power is
normalized to the power contained in each of the sinusoidal training
stimuli used to induce learning in the experiments of Figures 7 and
8.
Fig. 9.
Learned changes in the VOR induced by training
with pulse stimuli and tested with sinusoidal vestibular stimuli.
A, 1000 msec training stimuli; B, 250 msec training stimuli. A1, B1, Gain ratio is plotted as a function of test frequency. Open
symbols, ×0 stimulus conditions; filled
symbols, ×2 stimulus conditions. Circles,
Monkey A; squares, monkey D; triangles,
monkey E. A2, B2, Estimated power spectra
of the training stimuli. Power is normalized to the power contained in
a sinusoidal stimulus with a peak-to-peak amplitude of 20°/sec. Note
the different vertical scales in A2 and
B2.
[View Larger Version of this Image (24K GIF file)]
The spectral analysis revealed that for the 1000 msec stimuli, most of
the power was at 0.5 Hz and the power at 0.5 Hz was more than twice
that contained in the 0.5 Hz sinusoidal training stimuli of Figures 7
and 8. This is consistent with the 1000 msec training stimuli having
effects on the VOR measured with sinusoidal vestibular stimuli that are
similar to those of the 0.5 Hz training stimuli. The 250 msec stimuli
contained less power overall than the 1000 msec stimuli (compare scale
in Fig. 9, A2 and B2),
because the 250 msec stimuli were shorter in duration than the 1000 msec stimuli. The largest peak was near 0.5 Hz, because the interval for repeat of the stimulus was 2.192 sec; however, the 250 msec stimuli
contained considerably less power at 0.5 Hz than the 1000 msec stimuli
or the 0.5 Hz sinusoidal training stimuli. Furthermore, the 250 msec
stimuli contained proportionately more power at higher frequencies than
the 1000 msec stimuli. Despite the power they contained at 0.5 Hz, the
effects of the 250 msec training stimuli on the VOR measured with
sinusoidal vestibular stimuli were similar to the effects of
high-frequency sinusoidal training stimuli. This may have been because
the power at 0.5 Hz was below the threshold for induction of the
low-frequency component of learning, or it may have been attributable
to some complex interaction of the low and higher frequencies contained
in the 250 msec training stimulus.
DISCUSSION
Two components of learning in the VOR
Our results reveal two components of learning in the VOR that can
be distinguished based on the stimuli that produce them and on whether
there are changes in just the amplitude or in both the amplitude and
dynamics of the VOR. For pulses of head velocity, changes in the
dynamics of the VOR are expressed as learned changes that have
different amplitudes at different times after the onset of the head
turn. For sinusoidal stimuli, the changes in dynamics we focus on are
those expressed as "frequency-selective" changes in gain. Minor
effects of training on dynamics also can be seen in the small but
consistent changes in phase that were observed after training at all
frequencies. If one compares the effects of short-duration (80-250
msec) pulse stimuli with the effects of high-frequency (5 Hz)
sinusoidal stimuli, and if one compares the effects of long-duration
(500-1000 msec) stimuli with the effects of low-frequency (0.5 Hz)
stimuli, then the analyses in the time and frequency domains lead to
consistent conclusions. One component of learning in the VOR is driven
by short-duration or high-frequency training stimuli. It produces
changes in the amplitude of the VOR but little or no change in its
dynamics. Another component of learning is driven by long-duration or
low-frequency sensory stimuli and produces marked changes in the
dynamics as well as the amplitude of the VOR.
The differential effects of different training stimuli on the dynamics
of the VOR seem to be attributable to the temporal properties of the
individual training stimuli. When the effects of long and short stimuli
were compared after training periods that controlled for total duration
of visual-vestibular stimulation, long stimuli still produced changes
in the dynamics of the reflex, whereas short stimuli did not (Fig.
4B). Furthermore, learning depended on the relative
timing of the vestibular and visual stimuli, even when the duration of
the vestibular stimulus, visual stimulus, and period of overlap were
the same (Figs. 5, 6). Similarly, in the frequency domain, high- and
low-frequency sinusoidal training stimuli induced different changes in
the dynamics of the VOR after identical training periods (Fig. 7).
The learned changes in dynamics corresponded to greater effects of
learning on the low frequency or late components of the VOR than on the
high frequency or early components, suggesting that the low frequency
or late components of the VOR may be capable of a more extensive
repertoire of adaptive processes than the high frequency components.
Several previous studies are consistent with this idea. After
adaptation with free head movements and magnifying spectacles, Paige
and Sargent (1991) reported greater changes in the VOR measured at low
frequencies than at high frequencies. Lisberger and Pavelko (1986)
reported that adaptation with magnifying and miniaturizing spectacles
resulted in changes in the dynamics of the VOR that corresponded to
greater modification of the sustained than of the initial phase of VOR.
Based principally on the time course of readaptation of the VOR to
normal vision after adaptation to dove prisms, Melvill Jones and
Gonshor (1982) suggested that the fully adapted, vision-reversed
condition comprised two separate components, one a simple gain
attenuation that affected all frequencies tested, and a second,
reversed-phase component that was present in the low- but not
high-frequency VOR responses. Finally, Broussard and Bhatia (1995)
found full recovery of the gain of the low-frequency but not the
high-frequency VOR after unilateral peripheral vestibular inactivation.
Possible neural mechanisms for differential regulation of dynamics
and gain
Given what is known about the neural circuitry for the VOR, there
are several mechanisms by which the gain and dynamics of the VOR might
be differentially regulated. Two sites of plasticity contribute to
motor learning in the VOR: there are changes in the vestibular inputs
to the cerebellar cortex of the floccular complex, and there are
changes in the vestibular inputs to neurons in the vestibular nucleus
that are targets of inhibition from the floccular complex (Dufosse et
al., 1978 ; Miles et al., 1980b ; Watanabe, 1984 ; Lisberger and Pavelko,
1988 ; Lisberger et al., 1994b ,c; Luebke and Robinson, 1994 ; Pastor et
al., 1994 ; Partsalis et al., 1995 ). It is possible that the two
components of learning identified in the present paper correspond
directly to the two sites of plasticity that have been proposed, or
that learning of gain and dynamics occurs separately at these two
sites. Both of these ideas are consistent with the finding that acute
cerebellectomy reduced learned changes in the sustained component of
the VOR but had no effect on learning expressed in the first 50 msec of the VOR (Pastor et al., 1994 ). A similar model of separate anatomical sites for storing the learned amplitude and dynamics of a movement has
been proposed for classical conditioning of the eyeblink response, another form of cerebellum-dependent learning (Perrett et al., 1993 ).
The regulation of dynamics could be accomplished at a single anatomical
site through the differential modulation of parallel, frequency-selective "channels" at that site (Lisberger et al., 1983 ). One specific implementation of this model relied on different filtering properties in separate channels of the neural integrator, a
mechanism that is rendered plausible by the finding of changes in
eccentric gaze holding after modification of the VOR (Tiliket et al.,
1994 ). A previous suggestion from our laboratory was that changes in
the dynamics of the VOR after learning might result from separate
modifiable and unmodifiable VOR pathways that receive vestibular inputs
with different dynamics (Lisberger and Pavelko, 1986 ). This hypothesis
is weakened, however, by studies that suggest that the vestibular
afferents contributing to the VOR do not exhibit a wide enough dynamic
range to account for the dynamics of the behavior (Lisberger et al.,
1983 ; Minor and Goldberg, 1991 ; Bronte-Stewart and Lisberger,
1994 ).
Alternatively, changes in the dynamics of the VOR could be an emergent
property of the circuit for the VOR resulting from the feedback loop
between the two sites of plasticity. A computational analysis of the
circuit for the VOR (Lisberger and Sejnowski, 1992 ; Lisberger, 1994 )
suggested that learned changes in gain alone would require parallel
changes in the cerebellar cortex and the vestibular nucleus, whereas
changes in both gain and dynamics would result when the changes at the
two sites were not balanced. If the changes at the two sites are guided
by different plasticity mechanisms, then it seems likely that some
training stimuli would cause plasticity at one site more than at the
other, resulting in unbalanced changes at the two sites and hence a
change in the dynamics of the VOR. Stimuli that produced balanced
changes at the two sites would alter the gain of the VOR without
affecting dynamics.
Implications for the neural signals that guide learning
We view the behavioral experiments reported here as a step toward
identifying the neural signals that guide the cellular mechanisms of
plasticity for motor learning in the VOR. The neural pathways that
carry visual and vestibular signals to the sites of plasticity for the
VOR have dynamics that must certainly transform these signals. Our
results place numerous constraints on the transformations that occur in
the signals involved in motor learning in the VOR. First, signals
involved in at least one component of learning cannot be
low-pass-filtered; they must be present in response to stimuli at least
as short as 80 msec and must be modulated at 5 Hz. Second, signals
involved in at least one component of learning cannot be
high-pass-filtered; they must be present throughout a constant velocity
stimulus for at least 1 sec, because progressively bigger changes were
produced in the later phase of the VOR by progressively longer stimuli
in the range tested. Third, different times in the constant velocity
vestibular pulse stimulus must have different representations at the
site of plasticity that enable the plasticity mechanism to distinguish
between early and late presentation of visual stimuli, and timing
information present in the vestibular signals must be able to regulate
whether learning involves changes in amplitude alone or changes in the
amplitude and dynamics of the VOR. These last conditions are required
to account for our observation that image motion paired with the beginning of a vestibular stimulus produced a change in the amplitude of the VOR, but the same image motion presented at later times in the
vestibular stimulus produced a change in dynamics as well as
amplitude.
Finally, the learning mechanism seems to compensate for a difference in
the latency for visual and vestibular signals to arrive at the sites of
plasticity. The latencies for vestibular inputs to the vestibular
nucleus and cerebellar cortex are ~10-20 msec, whereas the latency
for visual inputs is close to 100 msec (Baker et al., 1969 ; Precht and
Baker, 1972 ; Highstein, 1973 ; Miles et al., 1980a ; Lisberger and
Pavelko, 1988 ; Stone and Lisberger, 1990a ,b; Lisberger et al.,
1994b ,c). Thus, visual and vestibular stimuli that are present
simultaneously may be represented as nonsimultaneous or time-shifted
signals in visual and vestibular inputs at the sites of plasticity. A
simple prediction from these arguments would be that the time delay
between vestibular and visual signals reaching one or both sites of
plasticity would be manifested as a substantial phase shift during
training at high sinusoidal frequencies. For example, for ×0
sinusoidal stimuli at low frequencies (0.1-0.5 Hz), visual climbing
fiber inputs are out of phase with inputs from the ipsilateral
horizontal canal; conversely, climbing fiber inputs are in phase with
inputs from the ipsilateral horizontal canal for ×2 stimuli at low
frequencies (Ghelarducci et al., 1975 ; Watanabe, 1984 ; Graf et al.,
1988 ; Stone and Lisberger, 1990a ,b). At 5 Hz, however, a 100 msec
difference in latencies should phase-shift the visual stimulus by
180° so that visual inputs to the sites of plasticity would be in
phase with inputs from the ipsilateral horizontal canal for ×0
stimuli.
If the plasticity mechanisms were coincidence detectors, and ×2
training conditions cause an increase in the gain of the VOR at 0.5 Hz,
then a straightforward prediction would be that ×0 stimuli at 5 Hz
also should cause an increase in the gain of the VOR. Alternatively,
the neural pathways might filter out visual and/or vestibular signals
at high frequencies, avoiding this potential timing problem but
resulting in no learning at high frequencies. Our data are not
consistent with either of these expectations. Sinusoidal head and
target motion at 5 Hz did cause learning in the VOR, and the learning
was in the adaptive direction: increases in the gain of the VOR for ×2
training conditions and decreases for ×0 training conditions. We
conclude that at least one component of learning is sensitive to inputs
that are modulated at frequencies of at least 5 Hz, and that the signal
transformations in the inputs to this component must compensate for the
difference in the latencies of the visual and vestibular inputs. One
way to accomplish this would be to incorporate a 100 msec delay in the
vestibular pathway. Evidence suggests that there is no such delay in
the electrical responses in vestibular pathways to the putative sites
of plasticity (Baker et al., 1969 ; Precht and Baker, 1972 ; Highstein,
1973 ; Lisberger and Pavelko, 1988 ; Lisberger et al., 1994b ,c). It may be that temporal transformations in the subcellular signaling pathways
enable one of the relevant cellular mechanisms of plasticity to compare
a visual input with a vestibular input that arrived 100 msec earlier.
FOOTNOTES
Received March 25, 1996; revised Sept. 16, 1996; accepted Sept. 19, 1996.
This work was supported by National Institutes of Health Grant EY10198
and a NASA Research Associate Fellowship to J.L.R. We thank M. Kahlon,
V. Ferrera, G. Cohen, S. duLac, and M. Kvale for helpful comments on an
earlier version of this manuscript.
Correspondence should be addressed to Jennifer L. Raymond, Department
of Physiology, Box 0444, University of California San Francisco, San
Francisco, CA 94143.
REFERENCES
-
Baker R,
Berthoz A
(1975)
Is the prepositus hyposglossi nucleus the source of another vestibulo-ocular pathway?
Brain Res
86:121-127 .
[ISI][Medline]
-
Baker R,
Mano N,
Shimazu H
(1969)
Postsynaptic potentials in abducens motoneurons induced by vestibular stimulation.
Brain Res
15:577-580 .
[ISI][Medline]
-
Baker RG,
Precht W,
Llinas R
(1972)
Cerebellar modulatory action on the vestibulo-trochlear pathway in the cat.
Exp Brain Res
15:364-385.
[ISI][Medline]
-
Bronte-Stewart HM,
Lisberger SG
(1994)
Physiological properties of vestibular afferents that mediate motor learning and normal performance of the vestibulo-ocular reflex in monkeys.
J Neurosci
6:346-354.
[Abstract]
-
Broussard DM,
Bhatia JK
(1995)
A comparison of optically-induced motor learning and compensation for unilateral damage by the VOR.
Soc Neurosci Abstr
21:139.
-
Collewijn H,
Grootendorst AF
(1979)
Adaptation of the optokinetic and vestibulo-ocular reflexes to modified visual input in the rabbit.
Prog Brain Res
50:771-781 .
[Medline]
-
Dufosse M,
Ito M,
Jastreboff PJ,
Miyashita Y
(1978)
A neural correlate in rabbit's cerebellum to adaptive modification of the vestibulo-ocular reflex.
Brain Res
150:611-616 .
[ISI][Medline]
-
Gauthier GM,
Robinson DA
(1975)
Adaptation of the human vestibulo-ocular reflex to magnifying lenses.
Brain Res
92:331-335 .
[ISI][Medline]
-
Ghelarducci B,
Ito M,
Yagi N
(1975)
Impulse discharges from flocculus Purkinje cells of alert rabbits during visual stimulation combined with horizontal head rotation.
Brain Res
87:66-72 .
[ISI][Medline]
-
Godaux E,
Halleux J,
Gobert C
(1983)
Adaptive change of the vestibulo-ocular reflex in the cat: the effects of a long-term frequency-selective procedure.
Exp Brain Res
49:28-34 .
[ISI][Medline]
-
Gonshor A,
Melvill Jones G
(1973)
Changes of human vestibulo-ocular response induced by vision-reversal during head rotation.
J Physiol (Lond)
234:102-103.
-
Graf W,
Simpson JI,
Leonard CS
(1988)
Spatial organization of visual messages of the rabbit's cerebellar flocculus. II. Complex and simple spike responses of Purkinje cells.
J Neurophysiol
60:2091-2121 .
[Abstract/Free Full Text]
-
Highstein SM
(1973)
Synaptic linkage in the vestibulo-ocular and cerebello-vestibular pathways to the VIth nucleus in the rabbit.
Exp Brain Res
17:301-314 .
[ISI][Medline]
-
Ito M,
Shiida T,
Yagi N,
Yamamoto M
(1974)
The cerebellar modification of rabbit's horizontal vestibulo-ocular reflex induced by sustained head rotation combined with visual stimulation.
Proc Jpn Acad
50:85-89.
-
Ito M,
Nisimaru N,
Yamamoto M
(1976)
Pathways for the vestibulo-ocular reflex excitation arising from semicircular canals of rabbits.
Exp Brain Res
24:257-271 .
[ISI][Medline]
-
Ito M,
Nisimaru N,
Yamamoto M
(1977)
Specific patterns of neuronal connexions involved in the control of the rabbit's vestibulo-ocular reflexes by the cerebellar flocculus.
J Physiol (Lond)
265:833-854 .
[Abstract/Free Full Text]
-
Keller EL
(1978)
Gain of the vestibulo-ocular reflex in monkey at high rotational frequencies.
Vision Res
18:311-315 .
[ISI][Medline]
-
Langer T,
Fuchs AF,
Scudder CA,
Chubb MC
(1985)
Afferents to the flocculus of the cerebellum in the rhesus macaque as revealed by retrograde transport of horseradish peroxidase.
J Comp Neurol
235:1-25 .
[ISI][Medline]
-
Lisberger SG
(1994)
Neural basis for motor learning in the vestibuloocular reflex of primates. III. Computational and behavioral analysis of the sites of learning.
J Neurophysiol
72:974-998 .
[Abstract/Free Full Text]
-
Lisberger SG,
Pavelko TA
(1986)
Vestibular signals carried by pathways subserving plasticity of the vestibulo-ocular reflex in monkey.
J Neurosci
6:346-354 .
-
Lisberger SG,
Pavelko TA
(1988)
Brain stem neurons in modified pathways for motor learning in the primate vestibulo-ocular reflex.
Science
242:771-773 .
[Abstract/Free Full Text]
-
Lisberger SG,
Sejnowski TJ
(1992)
Motor learning in a recurrent network model based on the vestibulo-ocular reflex.
Nature
360:159-161 .
[Medline]
-
Lisberger SG,
Miles FA,
Optican LM
(1983)
Frequency-selective adaptation: evidence for channels in the vestibulo-ocular reflex?
J Neurosci
3:1234-1244 .
[Abstract]
-
Lisberger SG,
Pavelko TA,
Broussard DM
(1994a)
Responses during eye movements of brain stem neurons that receive monosynaptic inhibition from the flocculus and ventral paraflocculus in monkeys.
J Neurophysiol
72:909-927 .
[Abstract/Free Full Text]
-
Lisberger SG,
Pavelko TA,
Broussard DM
(1994b)
Neural basis for motor learning in the vestibuloocular reflex of primates. I. Changes in the responses of brain stem neurons.
J Neurophysiol
72:928-953 .
[Abstract/Free Full Text]
-
Lisberger SG,
Pavelko TA,
Bronte-Stewart HM,
Stone LS
(1994c)
Neural basis for motor learning in the vestibuloocular reflex of primates. II. Changes in the responses of horizontal gaze velocity Purkinje cells in the cerebellar flocculus and ventral paraflocculus.
J Neurophysiol
72:954-973 .
[Abstract/Free Full Text]
-
Luebke AE,
Robinson DA
(1994)
Gain changes of the cat's vestibulo-ocular reflex after flocculus deactivation.
Exp Brain Res
98:379-390 .
[ISI][Medline]
-
Melvill Jones G,
Gonshor A
(1982)
Oculomotor response to rapid head oscillation (0.5-5.0 Hz) after prolonged adaptation to vision-reversal: "simple" and "complex" effects.
Exp Brain Res
45:45-58 .
[ISI][Medline]
-
Miles FA,
Fuller JH
(1974)
Adaptive plasticity in the vestibulo-ocular responses of the rhesus monkey.
Brain Res
80:512-516 .
[ISI][Medline]
-
Miles FA,
Fuller JH,
Braitman DJ,
Dow BM
(1980a)
Long-term adaptive changes in primate vestibuloocular reflex. III. Electrophysiological observations in flocculus of normal monkeys.
J Neurophysiol
43:1437-1476 .
[Free Full Text]
-
Miles FA,
Braitman DJ,
Dow BM
(1980b)
Long-term adaptive changes in primate vestibuloocular reflex. IV. Electrophysiological observations in flocculus of adapted monkeys.
J Neurophysiol
43:1477-1493 .
[Free Full Text]
-
Minor LB,
Goldberg JM
(1991)
Vestibular-nerve inputs to the vestibulo-ocular reflex: a functional ablation study in the squirrel monkey.
J Neurosci
11:1636-1648 .
[Abstract]
-
Paige GD,
Sargent EW
(1991)
Visually-induced adaptive plasticity in the human vestibulo-ocular reflex.
Exp Brain Res
84:25-34 .
[ISI][Medline]
-
Partsalis AM,
Zhang Y,
Highstein SM
(1995)
Dorsal Y group in the squirrel monkey. II. Contribution of the cerebellar flocculus to neuronal responses in normal and adapted animals.
J Neurophysiol
73:632-649 .
[Abstract/Free Full Text]
-
Pastor AM,
de la Cruz RR,
Baker R
(1994)
Cerebellar role in adaptation of goldfish vestibuloocular reflex.
J Neurophysiol
72:1383-1394 .
[Abstract/Free Full Text]
-
Perrett SP,
Ruiz BP,
Mauk MD
(1993)
Cerebellar cortex lesions disrupt learning-dependent timing of conditioned eyelid responses.
J Neurosci
13:1708-1718 .
[Abstract]
-
Powell KD,
Quinn KJ,
Rude SA,
Peterson BW,
Baker JF
(1991)
Frequency dependence of cat vestibulo-ocular reflex direction adaptation: single frequency and multifrequency rotations.
Brain Res
550:137-141 .
[ISI][Medline]
-
Precht W,
Baker R
(1972)
Synaptic organization of the vestibulo-trochlear pathway.
Exp Brain Res
15:158-184.
-
Precht W,
Llinas R
(1969)
Functional organization of the vestibular afferents to the cerebellar cortex of frog and cat.
Exp Brain Res
9:30-52 .
[ISI][Medline]
-
Shimazu H,
Precht W
(1966)
Inhibition of central vestibular neurons from the contralateral labyrinth and its mediating pathway.
J Neurophysiol
29:467-492 .
[Free Full Text]
-
Simpson JI,
Alley KE
(1974)
Visual climbing fiber input to rabbit vestibulo-cerebellum: a source of direction-specific information.
Brain Res
82:302-308 .
[ISI][Medline]
-
Stone LS,
Lisberger SG
(1990a)
Visual responses of Purkinje cells in the cerebellar flocculus during smooth pursuit eye movements in monkeys. I. Simple spikes.
J Neurophysiol
63:1241-1261 .
[Abstract/Free Full Text]
-
Stone LS,
Lisberger SG
(1990b)
Visual responses of Purkinje cells in the cerebellar flocculus during smooth pursuit eye movements in monkeys. II. Complex spikes.
J Neurophysiol
63:1262-1275 .
[Abstract/Free Full Text]
-
Tiliket C,
Shelhamer M,
Roberts D,
Zee DS
(1994)
Short-term vestibulo-ocular reflex adaptation in humans. I. Effect on the ocular motor velocity-to-position neural integrator.
Exp Brain Res
100:316-327 .
[ISI][Medline]
-
Watanabe E
(1984)
Neuronal events correlated with long-term adaptation of the horizontal vestibulo-ocular reflex in the primate flocculus.
Brain Res
297:169-174 .
[ISI][Medline]
-
Wurtz RH
(1969)
Visual receptive fields of striate cortex neurons in awake monkeys.
Neurosci Res
32:727-742.
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