|
|
||||||||
J Neurophysiol (November 1, 2002). 10.1152/jn.00739.2001
Submitted on 4 September 2001
Accepted on 1 July 2002
Visual Sciences, Research School of Biological Sciences, Australian National University, Canberra, ACT 2601, Australia
| |
ABSTRACT |
|---|
|
|
|---|
Price, Nicholas S. C. and Michael R. Ibbotson. Direction-Selective Neurons in the Optokinetic System With Long-Lasting After-Responses. J. Neurophysiol. 88: 2224-2231, 2002. We describe the responses during and after motion of slow cells, which are a class of direction-selective neurons in the pretectal nucleus of the optic tract (NOT) of the wallaby. Neurons in the NOT respond to optic flow generated by head movements and drive compensatory optokinetic eye movements. Motion in the preferred direction produces increased firing rates in the cells, whereas motion in the opposite direction inhibits their high spontaneous activities. Neurons were stimulated with moving spatial sinusoidal gratings through a range of temporal and spatial frequencies. The slow cells were maximally stimulated at temporal frequencies <1 Hz and spatial frequencies of 0.13-1 cpd. During motion, the responses oscillate at the fundamental temporal frequency of the grating but not at higher-order harmonics. There is prolonged excitation after preferred direction motion and prolonged inhibition after anti-preferred direction motion, which are referred to as same-sign after-responses (SSARs). This is the first time that the response properties of neurons with SSARs have been reported and modeled in detail for neurons in the NOT. Slow cell responses during and after motion are modeled using an array of Reichardt-type motion detectors that include band-pass temporal prefilters. The oscillatory behavior during motion and the SSARs can be simulated accurately with the model by manipulating time constants associated with temporal filtering in the prefilters and motion detectors. The SSARs of slow cells are compared with those of previously described direction-selective neurons, which usually show transient inhibition or excitation after preferred or anti-preferred direction motion, respectively. Possible functional roles for slow cells are discussed in the context of eye movement control.
| |
INTRODUCTION |
|---|
|
|
|---|
Direction-selective
visual neurons have been identified in every normally functioning
visual system studied (e.g., frog retina: Lettvin et al.
1959
; rabbit retina: Barlow et al. 1964
; cat
cortex: Hubel and Wiesel 1962
; insect visual system:
Hausen 1976
). Direction-selective neurons typically
increase their firing rates during motion in one preferred direction
and either do not respond or have their spontaneous activities
inhibited by motion in the opposite anti-preferred direction. In most
cases, experimenters have concentrated on the responses during the
period of motion stimulation. Barlow and Hill (1963)
were the first to comment on cell firing in direction-selective cells
after motion cessation, referred to here as after-responses. They
revealed that in rabbit retinal ganglion cells, firing rates were
transiently driven below the spontaneous activity immediately after
motion in the preferred direction and increased slightly above the
spontaneous activity following motion in the anti-preferred direction.
Such responses are referred to here as opposite-sign after-responses
(OSAR). OSARs have been linked to the psychophysical phenomena of the
motion aftereffect (e.g., Barlow and Hill 1963
; Hammond et al. 1988
) and have been reported in the
direction-selective neurons of many mammals (e.g., cat: Hammond
et al. 1988
; monkey: Petersen et al. 1985
;
wallaby: Ibbotson et al. 1998
).
Here, we report on the response properties and after-responses of a
class of direction-selective neurons (slow cells) in the pretectal nucleus of the optic tract (NOT) of the wallaby
(Ibbotson et al. 1994
). Neurons in the NOT are tuned to
detect wide-field horizontal temporal-to-nasal motion over the
contralateral eye (Collewijn 1975a
; Ibbotson et
al. 1994
) and drive horizontal optokinetic responses that
stabilize retinal images during head movements (Collewijn
1975b
). Slow cells are maximally stimulated by low image
velocities of less than 4°/s (Ibbotson and Price 2001
)
and the majority have a same-sign after-response (SSAR). The SSAR takes
the form of a prolonged excitation after preferred direction motion and
a prolonged inhibition after anti-preferred direction motion. This
paper provides the first comprehensive description of directional
neurons in the NOT that have SSARs. Work in the rabbit inferior olive
has demonstrated a similar response after motion cessation termed a
"carryover effect" (Arts et al. 2000
). These
directional cells prefer speeds of ~0.5°/s (Simpson and Alley 1974
), similar to slow cells in the NOT. Given that the inferior olive receives direct efferents from the NOT (Takeda and Maekawa 1976
), the similarity in motion after-responses and preferred speeds in the two nuclei is of interest in establishing the
origin of the effect. We compare the responses of slow cells with other
neurons in the NOT that have OSARs and simulate the response properties
of the slow cells using an array of Reichardt-type motion detectors
(Ibbotson and Clifford 2001a
,b
). Possible roles for
neurons with SSARs are discussed in the context of controlling stabilizing eye movements.
| |
METHODS |
|---|
|
|
|---|
Preparation and stimulation
Results are derived from 18 adult wallabies,
Macropus eugenii. Experimental procedures were approved by
the animal experimentation committee of the Australian National
University and follow the guidelines of the National Health and Medical
Research Council (Australia). Anesthesiology and surgery have been
described in detail previously (Ibbotson et al. 1998
).
In brief, animals were fully anesthetized and paralyzed during
recording with a continuous intravenous infusion of 5.6 ml/h of
Hartmann's lactate solution (with 1 mg · kg
1 · h
1 of
pentobarbitone, 4.2 mg · kg
1 · h
1 of suxamethonium chloride) and were respired
with a mixture of 75% N2O-25%
O2. Tungsten-in-glass microelectrodes were
advanced through the brain to the nucleus of the optic tract (NOT)
(Ibbotson et al. 1994
). The action potential waveforms
from all recorded cells were analyzed to confirm that they had
characteristics typical of the soma rather than the axon (Bishop
1964
). Extracellular responses were amplified, passed through a
window discriminator and fed into an A/D converter (sample rate 1 kHz:
Metrabyte Das-20). The spike arrival times were stored for off-line analysis.
Achromatic sine-wave gratings were generated by a computer controlled
video display driver (AT Vista: True Vision, Indianapolis, IN) and
presented on a display monitor (refresh rate: 97.7 Hz; 512 × 480 pixels; 45 cd/m2; CCID7551: Barco Industries,
Kortrijk, Belgium). The gratings subtended 67° vertically by 90°
horizontally and could be positioned anywhere within the animal's
visual field and could be presented in any orientation or moving in any
direction. To create spatial sinusoidal gratings, a sawtooth function
with period matching the grating's desired spatial wavelength was
drawn into video memory. Each ramp in the sawtooth ranged in value from
0 to 255 or 0 to 1,023, depending on the program used. We then placed a gamma corrected sinusoid with a resolution of 256 or 1,024 brightness levels into an output look-up table (LUT). The ramps subsampled the
values of the sine wave grating in the LUT, so the video output was a
series of repeated sinusoids. To move the gratings, the LUT was
permuted at the monitors frame rate (for the program with 256 values)
or at half the frame rate (for the program with 1,024 values). The
minimum displacement was either 1/256 of a cycle per frame or 1/1024 of
a cycle every other frame. These programs allowed stimuli to be moved
at temporal frequencies between 0.048 and 24.4 Hz. Previous experiments
have revealed that the minimum integration time for the cells in the
NOT is between approximately 20 and 40 ms (Ibbotson and Mark
1996
). For the slowest moving pattern described in the
preceding text, each frame was refreshed every 20.47 ms (2 frames),
which is lower than the integration times for most cells.
Modeling
An array of 15 or 16 Reichardt-type elementary motion detectors
(EMDs) was used to simulate the responses of the neurons
(Reichardt 1961
). The separation between the inputs of
the detectors was 4 pixels and the array was 50 pixels in width (Fig.
1). Each detector had two subunits with
opposite preferred directions, which consisted of four sequential
stages: prefiltering, delay filtering, multiplication and summation.
Stage 1 (prefiltering): the image is operated on at all
points by causal temporal filters with transient responses to changes
in image intensity. The transient responses are achieved by subtracting
the responses of a pair of first-order low-pass filters with different
time constants (Eq. 1:
Pre0 and
Pre1, where
Pre0 <
Pre1). The gains of the two filters were
adjusted using the prefilter gain, K, which has a value of
0-1
|
(1) |
|
|
The prefilter output from a given location was delayed by a temporal
low-pass filter (stage 2: delay filtering) and multiplied (stage 3: multiplication) with the undelayed signal from the
detector's other input channel. The temporal displacement between the
signals is determined by the time constant
(
del) of the delay filter. The two subunits
that make up an EMD are tuned for motion in opposite directions. In
stage 4 (summation), the output from one subunit is
subtracted from the output of the other to give the final response of
the EMD (Fig. 1). If the opponent combination is unbalanced, some
motion-independent signals are transmitted. We quantify the balance,
, of a motion detector according to the equation:
R(t) = P(t)
· A(t), where
P(t) and A(t) are the
outputs of the subunits responsive to preferred and anti-preferred
motion, respectively, R(t) is the motion detector
response and 0
1. Like the prefilter gain K,
the balance term has a significant influence on the oscillatory responses of the detectors (Table 1). Finally, in stage 5, the responses of the array of motion detectors are spatially pooled to
represent the input to a wide-field neuron (Fig. 1). If the response of
the motion-detector array is positive, the model will respond above its
baseline level. If the array response is negative, the response level
will be below the resting level. The filter time constants, balance,
and prefilter gain were adjusted to provide the best match by eye
between the model outputs and cell responses over a range of temporal
frequencies. It was not practical to provide a measure of this match
because of the range of stimulus conditions and preferred temporal frequencies.
The normalized, steady-state response of a single EMD to a moving
sinusoid can be expressed as:
Xi(t) = A + B · cos (
t +
i), where
is the angular velocity,
t is time, A is the mean intensity of the
sinusoid, B is the sinusoid amplitude and
i is the relative spatial position of the
ith EMD in an array. Thus the spatially summated response of
an array of j equally spaced EMDs is given by:
Y(t) = 
iXi(t), where i = [1,j]. Assuming closely and
regularly spaced EMDs (as in Fig. 1), this response can be approximated
by
|
|
|
(2) |
a) = k2
. This gives Y(t) = A(b
a), which is a constant
(Eq. 2), implying that no steady-state oscillations are present. This scenario is described as perfect spatial summation because individual motion detectors sample all phases of the stimulus equally. If (b
a)
k2
, there is an oscillatory component in Y(t). This is described as imperfect spatial
summation because the EMD array does not sample all points of the
stimulus equally. This was achieved in the model by using
j = 15 rather than 16 EMDs in the sampling array. If
the stimulus covers only a portion of the motion detector array's
"receptive field," imperfect spatial summation may occur because
individual motion detectors cannot sample all phases of the sinusoidal grating.
| |
RESULTS |
|---|
|
|
|---|
Neuron classification
Recordings were made from direction-selective neurons in the
pretectal NOT. Recording sites matched those used in previous studies
of wallaby NOT (Ibbotson et al. 1994
).
Direction-selective responses were characterized by elevated firing
rates relative to the spontaneous level during tempero-nasal motion
over the contralateral eye (preferred motion) and reduced firing rates during naso-temporal motion (anti-preferred motion). All cells in the
NOT had large receptive fields (
40° in horizontal extent but
usually much larger (>80°) and preferred wide-field stimuli. Previous investigations have shown that NOT neurons tested with sine-wave gratings moving in the preferred direction generate maximum
responses at a particular combination of spatial and temporal frequencies (Ibbotson and Price 2001
; Ibbotson et
al. 1994
). The spatiotemporal tuning shows that most cells are
maximally responsive for a particular temporal frequency of motion
across a range of spatial frequencies: temporal frequency selective
neurons. A small percentage of cells (3%) respond with a similar
firing rate for a given image velocity across a range of spatial
frequencies: velocity-tuned cells. The neurons can be divided into two
categories based on the location of the peak response in a
spatiotemporal map (Ibbotson and Price 2001
). Slow cells
prefer low temporal frequencies (<1 Hz) and spatial frequencies of
0.13-1 cpd with a median preferred velocity of 0.79°/s
(Ibbotson and Price 2001
). Fast cells
preferred higher temporal frequencies (0.4-20 Hz) and lower spatial
frequencies (0.06-0.6cpd) with a median velocity of 50°/s. Another
cell type, referred to as "jerk" (Schweigart and Hoffmann
1992
) or SD cells (Price and Ibbotson 2001
) is
also known to exist in the NOT. The SD cells are nondirectional and are
maximally stimulated by very rapidly moving images (>100°/s). We
will not consider the SD cells in the present comparisons as they do
not appear to be involved in the control of stabilizing eye movements.
Figure 2A shows typical peristimulus time histograms (PSTHs) from a fast cell stimulated with motion in preferred (top) and anti-preferred (bottom) directions. During motion, the response oscillates in phase with the moving grating. After the cessation of motion, the firing rate transiently decreases below the spontaneous level for preferred direction motion and increases above the spontaneous rate following anti-preferred direction motion (an OSAR). Neurons with these typical OSARs have been described frequently in the literature in a variety of species (see DISCUSSION). Figure 2B shows responses from a slow cell stimulated with motion in preferred and anti-preferred directions. After the cessation of motion, the responses slowly return to the spontaneous level over a period of several seconds, which we refer to as SSARs (Fig. 2B). The rest of the paper will focus on the response properties of 37 slow cells with SSARs.
|
Modeling the PSTHs of the slow cells
The responses of a slow cell to preferred-direction motion with a
range of temporal frequencies are shown (Fig.
3A). For clarity, the
responses were filtered with a Chebyshev-type I filter with a cutoff
frequency 3.1 times the stimulus temporal frequency. This highlights
the response oscillations at the stimulus frequency and does not
attenuate any second harmonic response components. The responses shown
are typical of the slow cells but some variations in the shapes of the
PSTHs did occur between neurons. For example, some neurons had larger
onset transients than others and the peak-to-peak amplitudes of the
oscillations were noticeably different between cells, possibly because
different cells had different spatial summation properties
(Zanker and Quenze 1993
). All slow cells have four
characteristic physiological properties. First, they have high
spontaneous activities ranging from 40 to 105 spikes/s across the cell
population (mean = 56 spikes/s). Second, they show a transient
response to motion onset, which is typically larger in magnitude than
the response to continued motion. The transient response can be seen as
the elevated firing rate during the passage of the first cycle of the
stimulus grating in Fig. 3A except at 1.58 Hz, where no
onset transient occurred. The size of the transient response relative
to the sustained response increases with increasing temporal frequency
(Fig. 3A). Third, after motion ceases, there is a clear SSAR
(Figs. 2B and 3A). The size and duration of the
SSARs varied between slow cells. Cells with optimum speed tuning at the
high end of the slow cell speed tuning range (close to 4°/s) had
small SSARs, and the size of the SSARs increased as the optimum speed
tuning decreased. The cell in Fig. 3 has a relatively small SSAR, but
it is still clearly different to the OSARs observed in fast cells
recorded in the same preparation. Finally, responses to motion always
oscillate at the stimulus temporal frequency (Fig. 3A) with
Fourier analysis showing that no higher frequency oscillations of any
significant amplitude were observed in slow cells (Fig.
4).
|
|
The simulations in Figs. 3B were produced using the array of
16 Reichardt-type EMDs. They show the outputs of a single model that
best match the cell responses across all temporal frequencies. Better
fits to individual temporal frequencies were possible, but this was not
the aim of the model. The preferred temporal frequency (TF) of the
model was set at 0.4 Hz, corresponding to the temporal frequency
producing the largest sustained responses in the cell. This frequency
determined the delay filter time constant
del
in the EMDs:
del = 1/(2
. TF) (Borst
and Bahde 1986
). The response properties shown in Fig.
3A are reproduced by the model for temporal frequencies of
0.4-12.6 Hz (Fig. 3B). Oscillations at the fundamental
frequency of the stimulus only occur in Reichardt detectors if several
model parameters are set in specific ways (Table 1, Fig.
5). For a single EMD, oscillations at the
fundamental frequency only occur if the prefilter gain, K,
is <1. For second harmonic components to be present in addition to the
fundamental, both K and the balance term,
, must be <1
(Fig. 5). As the slow cells only have oscillations at the fundamental
frequency and the inhibition during anti-preferred motion is strong, we
have modeled the results in Fig. 3 with K = 0.85 and
= 1. Importantly, an array of EMDs will not produce
oscillations if all points of a sinusoidal grating are sampled equally
(perfect spatial summation: Eq. 2). Oscillations will occur
if the EMD array only samples part of the grating (imperfect spatial
summation). Two potential sources of imperfect spatial summation in the
physiological experiments were the size of the stimulus screen, which
may have only covered part of each cell's receptive field, and a
nonuniform distribution of EMDs, so that gaps or "hot spots"
occurred in the coverage of the stimulus. A nonuniform distribution of
EMDs could explain why oscillations at the fundamental frequency of the
stimulus were observed in slow cell responses even when the stimuli
subtended 90° horizontally.
|
Decay rate of SSARs
The decay time constant of the SSAR was determined for cells
responding to motion in preferred and anti-preferred directions and for
a range of stimulus durations. Figure
6A shows the PSTHs produced by
1-6 s of motion in preferred and anti-preferred directions for one
slow cell. Responses to stimuli of the same duration have their
spontaneous activities aligned, highlighting the symmetry of responses
and after-responses to preferred and anti-preferred motion. Exponential
fits to the SSARs are superimposed on each PSTH (thick lines). The time
constants were calculated using a least-squares exponential fitting
routine that used the cell's spontaneous firing level as an asymptote.
The time constants of the exponential fits did not vary significantly
with stimulus direction or duration. Plotted to the right of
the neuron's responses are the outputs of the model (Fig.
6B). The model parameters in this case were:
Pre0 = 8 ms,
Pre1 = 2,500 ms,
del = 2,500 ms, K
=1, and
= 1. Calculating the preferred temporal frequency from
del gives a value of 0.064 Hz. The peak
tuning for the neuron was 0.095 Hz, which is close to that of the
model. It was not necessary to adjust K in these simulations
because the stimulus duration was short relative to the temporal
frequency, and thus oscillations were not clearly evident in the
physiological data. It is clear from Fig. 6B that the decay
rate of the SSAR in the model does not vary as the stimulus duration
changes. As the balance,
, was unity, the responses to preferred and
anti-preferred motion were identical in size but opposite in sign,
which matches the neural responses.
|
Contrast dependence of after-responses
The shape of the after-responses of slow cells depends on the
grating contrast after motion. Figure 7
shows the responses of a single slow cell to periods of grating motion
preceded and followed by presentation of a stationary grating. In all
cases, the contrast of the moving grating was held at 90% but the
contrast of the stationary gratings were varied from 0 to 90%. With
0% contrast, the stationary stimulus is simply a blank gray screen. With no contrast change between the moving and stationary gratings, the
response increases quite rapidly at motion onset but decays slowly
after the period of motion, i.e., there is a clear SSAR (Fig.
7A). During the SSAR, the firing rate takes >1 s to return to the spontaneous level. With the maximum contrast change (i.e., 0-90%), the cell's firing rate increases more slowly after motion onset but the response drops off very quickly after the cessation of
motion (Fig. 7D). Intermediate contrast changes show
response properties between those described (Fig. 7, B and
C). The output of the model shows similar properties (Fig.
7, E-H). The model parameters in this case were similar to
those used previously:
Pre0 = 8 ms,
Pre1 = 2,500 ms,
del = 500 ms, K =1, and
= 1. Again, it was not
necessary to adjust K because the stimulus duration was
short relative to the stimulus temporal frequency and thus oscillations
are not evident. Most importantly, when there isn't a contrast change
at motion onset and offset there is a rapid increase in response after
motion starts and a slowly decaying SSAR following motion cessation
(Fig. 7E). Conversely, with a large contrast change, the
response increases slowly at motion onset but decays very rapidly at
motion offset (Fig. 7H). This response pattern reflects that
observed in the neuronal responses.
|
| |
DISCUSSION |
|---|
|
|
|---|
Slow cells have three physiological properties that will be discussed: they have high spontaneous firing rates; during stimulation with moving sinusoids the responses contain sustained oscillations at the fundamental frequency of the grating but not at higher frequencies; and the cells produce SSARs.
Spontaneous activity
The mean spontaneous activity for the slow cells was 56 spikes/s
with several neurons having spontaneous rates close to 100 spikes/s. A
high spontaneous rate allows a cell to effectively code two opposite
directions of motion, thus halving the number of cells required to
distinguish leftward from rightward motion. Direction-selective retinal
ganglion cells and cortical units usually have low spontaneous
activities (Barlow et al. 1964
; Hubel and Wiesel
1962
), so different cells are necessary to code different directions of motion.
The range of slow cell behavior is shown in Figs. 2B and 6.
The inhibition during anti-preferred direction motion shown in Fig.
2B is approximately half the size of the excitation for
preferred direction motion while the cell generating the responses in
Fig. 6 produced equal sized inhibition and excitation for opposite motion directions. In the model, it is necessary to have
<1 to
simulate smaller inhibition for anti-preferred direction motion than
excitation for preferred direction motion. However, if
<1, the
motion detectors produce response oscillations at the second harmonic
of the input frequency (Fig. 5G), whereas slow cells
produced no significant second harmonic components. We conclude that
1 in the motion detectors presynaptic to slow cells, so any
differences in response sizes for opposite directions may result from
response saturation, i.e., the membrane potential being driven below
the spiking threshold during anti-preferred direction motion. Fast
cells generate second harmonic components in their responses to moving
sinusoidal gratings suggesting that in those neurons
<1 (see Fig.
10A in Ibbotson et al. 1994
). The inhibition
produced during anti-preferred direction motion in fast cells is also
typically smaller than the excitation produced by preferred direction
motion, as expected if
< 1. Similarly, directional visual
cells in insects produce second harmonic response components to moving
sinusoids and the excitation during preferred direction motion is
typically larger than the inhibition during anti-preferred motion
(e.g., Egelhaaf et al. 1989
; Ibbotson et al.
1991
).
Response oscillations
To produce response oscillations from the model, it was necessary
to have imperfect spatial summation of the EMD outputs. No oscillations
occur in the output if the array contains uniformly distributed
elementary motion detectors that sample all points of the stimulus
equally (Eq. 2). For wide-field directional neurons in fly
optic lobes, a moving sinusoid presented behind a narrow aperture
oriented perpendicular to the cell's preferred direction of motion
produces sustained oscillations (Egelhaaf et al. 1989
; Zanker and Quenzer 1993
). The aperture prevents spatial
averaging of the inputs from the EMDs spread across the cell's
receptive field. In contrast, wide-field stimulation of the same
neurons doesn't produce oscillations in the responses, suggesting that perfect spatial summation occurs in the fly cells. In contrast, wide-field motion-sensitive cells in pigeon's display sustained oscillatory responses to stimuli with diameters of 120°
(Wolf-Oberhollenzer and Kirschfeld 1994
). Similarly,
during prolonged stimulation, the slow cells in the wallaby oscillate
at the fundamental frequency of the stimulus. These oscillations could
arise if motion detectors were nonuniformly distributed, allowing
imperfect spatial summation. Such a distribution may relate to a hot
spot or region of dense EMDs or a patchy coverage of the visual scene
by the EMDs.
When stimulated by moving sinusoidal gratings, slow cell responses
oscillate at the fundamental frequency of the stimulus. These
oscillations typically comprise two components: an initial component,
which decays away in 1-3 s, and a steady-state oscillation of constant
amplitude. Given imperfect spatial summation, oscillations at the
fundamental frequency of the stimulus only arise if a DC-signal representing the mean stimulus intensity is passed by the prefilters (Ibbotson and Clifford 2001a
,b
; Ibbotson et al.
1991
). When the prefilter gain is unity (K = 1), this cannot occur because the prefilter has band-pass frequency
responses (Eq. 1). However, when K < 1, small mean luminance signals are passed by the prefilters, allowing the
production of constant amplitude oscillations at the stimulus'
fundamental frequency. The rate of decay of the transient oscillations
is related to the decay time constants of the prefilters and delay
filters in the motion detectors (Egelhaaf and Borst
1989
). Thus these transient oscillations are present even when
K =1 and
= 1. It is unlikely that the oscillations observed in slow cell responses arise purely from a transient component
because this would require excessively large filter time constants
making motion detection unworkable. That is, the motion detectors would
be optimally stimulated by very slow moving images that would not be
behaviorally relevant.
SSARs
The fast cell responses exhibit the classical OSAR (Fig.
2A), which has been observed in directional neurons in many
species (e.g., rabbit retina: Barlow and Hill 1963
; cat
cortex: Hammond et al. 1988
; Maddess et al.
1988
; insect optic lobes: Dürr and Egelhaaf
1999
; Srinivasan and Dvorak 1979
). Slow cells
have after-responses where firing rates are sustained after motion
stops at the same polarity as the response during motion (SSARs).
Models incorporating arrays of EMDs of the Reichardt-type have been
used to model motion detection in a range of species (beetle:
Reichardt 1961
; fly: Egelhaaf et al.
1989
; butterfly: Ibbotson et al. 1991
; pigeon: Wolf-Oberhollenzer and Kirschfeld 1994
; wallaby:
Clifford et al. 1997
; Ibbotson et al. 1994
,
1999
). Computer models of biological motion detectors have not
been able to account for the OSARs that follow motion cessation but
instead show a SSAR in which the simulated firing rate decays
exponentially from the response during motion to the spontaneous level
(Egelhaaf et al. 1989
). The slow cells show similar
responses to those of correlation-type motion detectors. When modeling
slow cell responses,
Pre1 and
del control the decay rate of the SSAR. The
other prefilter time constant,
Pre2, has
little effect on the SSAR as it is very much smaller than the other
time constants. The values of K and
have no effect on
the SSAR.
What mechanisms could account for the different after-responses
observed in fast and slow cells? One issue that could influence after-responses is the level of anesthesia. However, given that slow
and fast cells are interspersed in the NOT and display same-sign and
OSARs in the same preparation, different physiological mechanisms appear to provide a more likely explanation than the anesthetic state.
Also, the duration and size of the SSAR could be manipulated by varying
stimulus contrast, suggesting that the effect is related to visual
stimulation. In other anesthetized preparations, SSARs have been
observed but not discussed. For example Fig. 6 in Pereira et al.
(1994)
shows a slow increase in firing rate to the baseline level after a period of anti-preferred motion. In awake preparations, it is common to use adjacent periods of preferred and anti-preferred motion for NOT studies; something that conceals any motion
after-responses, thus making comparisons with the present study
difficult (e.g., Mustari and Fuchs 1990
). However, in
direction-selective neurons in area MT of the awake behaving monkey,
approximately half of the neurons display excitatory after-responses
(Droll et al. 2001
). This after-response probably has a
different origin to the after-responses observed in the NOT; however,
it does demonstrate that after-responses have been observed in the
absence of anesthesia.
Motion-sensitive neurons in the fly optic lobes accumulate calcium
during motion stimulation (Borst and Egelhaaf 1992
;
Dürr and Egelhaaf 1999
). The intracellular calcium
concentration is velocity dependent and correlates with the
after-hyperpolarization (OSAR) observed after motion in the preferred
direction (Kurtz et al. 2000
). Because calcium
accumulation alone would depolarize the cells, Kurtz et al.
(2000)
proposed that the accumulated calcium opened
calcium-sensitive potassium channels
(KCa channels). This would facilitate
rapid hyperpolarization when motion ceases because sodium influx
associated with the motion response no longer depolarizes the cell. As
calcium is sequestered or removed from the cell, the hyperpolarization
facilitated by KCa channels would
decrease, returning the membrane potential to its resting level. It is
tempting to suggest that a similar mechanism is responsible for the
OSAR in fast cells. Without KCa
channels, it is expected that SSARs would occur as a consequence of the
motion detector filters, as shown by our modeling.
Possible roles for slow cells
Slow cells in the wallaby are tuned to detect slow image
velocities, with the median preferred velocity (temporal
frequency/spatial frequency) being 0.79°/s (Ibbotson and Price
2001
). Neurons in the NOT drive the ocular following phases of
horizontal optokinetic nystagmus (OKN) that stabilize retinal images
during head movements (e.g., Collewijn 1975a
,b
;
Hoffmann et al. 1995
). However, retinal slip velocities
during head movements are rarely <1°/s in naturally behaving
animals, even during stabilizing eye movements (Steinman and
Collewijn 1980
; Yakushin et al. 2000
). Because
most of the slow cells are maximally sensitive to wide-field retinal
slip velocities
1°/s, they would not be optimally stimulated by the retinal slip during normal behavior. During fixation in rabbits (Collewijn and Van der Mark 1972
), cats
(Winterson and Robinson 1975
), and primates
(Steinman et al. 1973
), the eyes are not perfectly stabilized and low-velocity (
1°/s) eye movements occur. In fixating cats, "slow control" occurs where eye drift is counteracted by opposing eye movements (Winterson and Robinson 1975
).
Behavioral experiments show that wallabies actively fixate targets
(Hemmi and Mark 1998
), and it is plausible that slow
cells help to stabilize eye position during fixation. Assisting
fixation would complement the known function of the NOT in stabilizing
the retinal image during head movements.
The vestibular apparatus generates a signal when the head is turned
that drives counter-directed eye movements at a similar velocity to the
head, interspersed with saccades that move in the same direction as the
head (for review, see Buttner and Buttner-Ennever 1988
).
The characteristic saw-tooth pattern of eye position is referred to as
vestibuloocular nystagmus (VOR). The VOR may not need to perfectly
stabilize the retinal image during head movements because additional
visual signals could be used to maintain good visual acuity
(Collewijn 1989
). For example, the NOT may play a role
in bringing the gain of the VOR from values below unity to a level that
is fully compensatory. That is, the slow cells, which are activated by
slip speeds of <1°/s, could detect small differences between head
and eye speed and supply signals that would move the eyes against the
head direction more precisely. Interestingly, the optimal slip speeds
for stimulating slow cells and modulating the floccular visual climbing
fibers, which are thought to control the interaction between head
movements and the VOR, are both 0.5-2°/s (Barmack and Hess
1980
; Kusonoki et al. 1990
; Simpson and
Alley 1974
). Further, the SSAR reported here has similar
characteristics to the "carryover effect" reported in climbing
fibers in the rabbit flocculus (Arts et al. 2000
). As
the NOT is known to provide a direct input to the inferior olive, it is
possible that the carryover effect observed in the inferior olive has
its origins in the NOT.
| |
ACKNOWLEDGMENTS |
|---|
We thank Prof. Richard Mark and Dr. Lauren Marotte for help during experiments. Thanks are also due to Drs Clifford and Maddess for many helpful discussions and for reading and improving the manuscript.
N.S.C. Price was supported by a scholarship from the Australian National University.
| |
FOOTNOTES |
|---|
Address for reprint requests: M. R. Ibbotson, Visual Sciences, Research School of Biological Sciences, Australian National University, P.O. Box 475, Canberra, ACT 2601, Australia (E-mail: ibbotson{at}rsbs.anu.edu.au).
| |
REFERENCES |
|---|
|
|
|---|
This article has been cited by other articles:
![]() |
M. R. Ibbotson Contrast and Temporal Frequency-Related Adaptation in the Pretectal Nucleus of the Optic Tract J Neurophysiol, July 1, 2005; 94(1): 136 - 146. [Abstract] [Full Text] [PDF] |
||||
![]() |
N.S.C. Price, M. R. Ibbotson, S. Ono, and M. J. Mustari Rapid Processing of Retinal Slip During Saccades in Macaque Area MT J Neurophysiol, July 1, 2005; 94(1): 235 - 246. [Abstract] [Full Text] [PDF] |
||||
![]() |
I. R. Winship, P. L. Hurd, and D. R. W. Wylie Spatiotemporal Tuning of Optic Flow Inputs to the Vestibulocerebellum in Pigeons: Differences Between Mossy and Climbing Fiber Pathways J Neurophysiol, March 1, 2005; 93(3): 1266 - 1277. [Abstract] [Full Text] [PDF] |
||||
![]() |
N. A. Crowder, M. R.W. Dawson, and D. R.W. Wylie Temporal Frequency and Velocity-Like Tuning in the Pigeon Accessory Optic System J Neurophysiol, September 1, 2003; 90(3): 1829 - 1841. [Abstract] [Full Text] [PDF] |
||||
| ||||||||||||||||||