|
|
||||||||
The Journal of Neurophysiology Vol. 86 No. 6 December 2001, pp. 2703-2714
Copyright ©2001 by the American Physiological Society
Department of Electrical Engineering and Computer Science, Vanderbilt University, Nashville, Tennessee 37235
| |
ABSTRACT |
|---|
|
|
|---|
Kabara, Joseph F. and A. B. Bonds. Modification of Response Functions of Cat Visual Cortical Cells by Spatially Congruent Perturbing Stimuli. J. Neurophysiol. 86: 2703-2714, 2001. Responses of cat striate cortical cells to a drifting sinusoidal grating were modified by the superimposition of a second, perturbing grating (PG) that did not excite the cell when presented alone. One consequence of the presence of a PG was a shift in the tuning curves. The orientation tuning of all 41 cells exposed to a PG and the spatial frequency tuning of 83% of the 23 cells exposed to a PG showed statistically significant dislocations of both the response function peak and center of mass from their single grating values. As found in earlier reports, the presence of PGs suppressed responsiveness. However, reductions measured at the single grating optimum orientation or spatial frequency were on average 1.3 times greater than the suppression found at the peak of the response function modified by the presence of the PG. Much of the loss in response seen at the single grating optimum is thus a result of a shift in the tuning function rather than outright suppression. On average orientation shifts were repulsive and proportional (~0.10 deg/deg) to the angle between the perturbing stimulus and the optimum single grating orientation. Shifts in the spatial frequency response function were both attractive and repulsive, resulting in an overall average of zero. For both simple and complex cells, PGs generally broadened orientation response function bandwidths. Similarly, complex cell spatial frequency response function bandwidths broadened. Simple cell spatial frequency response functions usually did not change, and those that did broadened only 4% on average. These data support the hypothesis that additional sinusoidal components in compound stimuli retune cells' response functions for orientation and spatial frequency.
| |
INTRODUCTION |
|---|
|
|
|---|
The response
properties of striate cortical neurons have often been analyzed on the
basis of their responses to one-dimensional sinusoidal gratings or
simple bar or spot stimuli, under the presumption that their spatial
integration and response functions to these stimuli are at least
piecewise-linear. By this assumption, responses to a number of
spectrally pure stimuli can be combined to produce a kernel (e.g.,
Movshon et al. 1978
) that potentially predicts a cell's
approximate response to spectrally complex, real world stimuli.
Measurements made with more complicated stimuli, such as multiple light
bars (Bishop et al. 1973
) and compound sinusoidal gratings (e.g., Bonds 1989
; De Valois and Tootell
1983
) use an overtly excitatory stimulus to drive the cell. The
addition of a second (perturbing) stimulus that by itself
does not excite the neuron reveals, by modulating the excitation from
the first stimulus, both excitatory and inhibitory subliminal
(nonlinear) influences that are not apparent from the use of a
spectrally pure stimulus. Additionally, drifting bars presented outside
the cortical receptive field have been found to change the optimum orientation for bar stimuli inside the receptive field (Gilbert and Wiesel 1990
). These results all challenge the assumption of approximate spatial linearity of the cortical receptive field.
Most experiments involving compound stimuli have involved systematic
analyses of response suppression. Suppression of a cell's response
depends on, among other factors, the orientation of the perturbing
stimulus (e.g., Bishop et al. 1973
; Bonds
1989
; Creutzfeldt et al. 1974
; Morrone et
al. 1982
; Nelson and Frost 1978
; Sillito 1975
). Additionally, experiments using compound gratings show that the suppression of a cell's response to a base
sinusoidal grating (which drives the cell) can depend on the spatial
frequency of the perturbing stimulus (Bauman and Bonds
1991
; De Valois and Tootell 1983
). These results
imply that suppression is not merely a result of the integration of
contrast energy (e.g., Heeger 1992
), but also involves
more sophisticated spatial interactions.
Here we develop this concept further by considering a hypothesis in which a cell's response is a nonlinear function that is not merely suppressed, but rather completely transformed by the presence of an overlaid sinusoidal perturbing grating (PG) to which the cell does not respond when it is presented alone. We further hypothesize that the reorganization of the receptive field is not a static change, but is dependent on the relationship between the stimulus that drives the cell and the PG. To test these hypotheses we measured a cell's response as a function of orientation or spatial frequency with a single sinusoidal grating. We then superimposed on the receptive field a second (perturbing) grating at an orientation or spatial frequency that does not by itself excite the cell and measured the response curves again. In nearly all tests the location of the peak as well as the entire response function shifted significantly in the presence of the PG. Because of these shifts, the usual measure of response suppression (measured by stimulation with a base grating that is spatially optimal when presented alone) overestimates the actual amount of response suppression. We suggest that the modification of the response function resulting from the use of PGs can enhance the discrimination of orientation differences.
| |
METHODS |
|---|
|
|
|---|
Preparation
We prepared 11 adult cats (2.0-4.0 kg) for single-unit electrophysiological recording following guidelines from the American Physiological Society, The Society for Neuroscience, The National Institutes of Health, and Vanderbilt University's Animal Care and Use Committee. Each cat received an intramuscular injection of 0.2 mg atropine sulfate (Elkins-Sinn, Cherry Hill, NJ), to reduce secretions, and 5 mg acepromazine maleate (TechAmerica, Elwood, KS) to reduce anxiety. Approximately 30 min after these injections, the cat was anesthetized with a 5% mixture of halothane (Fluothane, Ayerst, Philadelphia, PA) in O2. After venous cannulation, the halothane was discontinued, and surgical anesthesia was maintained by injections of 2.5% sodium thiamylal (Surital, Parke-Davis, Morris Plains, NJ). A tracheal cannula was inserted, the head was mounted in a stereotaxic apparatus, and a 2 × 4 mm hole was drilled over the area centralis representation in area 17, Horsley-Clarke coordinates P4-L2. The exposed dura was reflected, and an electrode was positioned over a cortical area free of blood vessels. The cortex was covered with Agar, and a hydraulic seal was formed using melted Tackiwax (Cenco, Chicago, IL). Electrocardiogram (EKG) electrodes were inserted to monitor the heartbeat, and electrodes were inserted over the lateral suprasylvian gyri to monitor generalized brain activity.
To suppress eye movement the animal was paralyzed with a 1.0-ml
intravenous injection of gallamine triethiodide (Flaxedil, American
Cyanamid, Pearl River, NY). Paralysis was maintained with an
intravenous delivery of 10 mg · kg
1
· h
1 of Flaxedil, and anesthesia was
supplemented with 1 mg · kg
1 · h
1 of Surital. Artificial respiration was
maintained at 30 strokes per minute with a mixture of 75%
N2O, 23.5% O2, and 1.5%
CO2. End-tidal pCO2 was
maintained at 3.9% by adjusting the stroke volume. Rectal temperature
was maintained at 37.5°C with a hot water blanket. The nictitating
membranes were retracted with 10% phenylephrine hydrochloride and the
pupils dilated with 1% atropine sulfate eye drops. Contact lenses with
artificial 4-mm pupils were then fitted to the eyes (Robson and
Enroth-Cugell 1978
). Spectacle lenses were then fitted by
refraction to focus on a tangent screen 57 cm from the cat. The retinal
area centralis and the optic disk locations were plotted for each eye.
Stimulation and data acquisition
We mapped the receptive field location and size using a
hand-driven light source backprojected onto the tangent screen. A cathode ray tube (CRT) display 57 cm from the cat was then centered on
the receptive field. Stimulus patterns were displayed on a Tektronix
608 (P31 phosphor; mean luminance 110 cd/m2;
10° visual field) at 256 frames per second. Spatially congruent dual
stimuli were formed by interleaving two separate images, each displayed
at 128 frames/s. This system allowed linear modulation up to 75% total
contrast. All stimulation was monocular. Each cell was characterized
with respect to orientation, spatial frequency, temporal frequency, and
contrast using 4-s displays of one-dimensional (1-D) drifting
sinusoidal gratings presented 10 times and randomly interleaved
(Henry et al. 1973
), with 1 s between stimuli.
Action potentials were recorded using a tungsten wire in glass
electrode (Levick 1972
), amplified (×5,000), filtered
(300-30,000 Hz), and detected using a window discriminator. A clock
started at the beginning of each presentation and the time of
occurrence for each spike was recorded to the nearest 0.122 ms (1/8,192
s). Responses from simple cells were calculated on the basis of the
fundamental response component (power at the 1st harmonic of the
stimulation frequency), and complex cell responses were calculated on
the basis of average firing rate (DC component).
If cells in the visual cortex are linear, adding a stimulus to which
the cell does not respond to a stimulus to which the cell does respond
should not alter the response from the excitatory stimulus. To test the
validity of this premise, stimuli were built from a base grating, to
which the cell responded, and a superimposed PG to which the cell did
not respond when presented alone. We selected the preferred temporal
frequency measured with a single stimulus, typically 2 or 4 Hz, for the
base stimulus and an asynchronous frequency yielding the second highest
spike rate, typically 3 Hz, for the PG to minimize spatial interference
effects between the two gratings (Bonds 1989
). The total
contrast of both gratings was set to a moderate, nonsaturating level,
usually 28 or 40%. Testing began by setting the PG to an orientation
or spatial frequency that yielded no noticeable response. The
difference between the orientation or spatial frequency of the PG and
the optimum orientation or spatial frequency (measured with a single
grating) is referred to as the distance dOR or dSF, respectively. With
the PG fixed, we then measured the neuron's response to variation of
either orientation or spatial frequency of the base grating. The
process was repeated for other PGs positioned at orientations and
spatial frequencies more distant and on both sides of the
single-grating peak response. We repeatedly measured the response
function to a single grating between trials and used these measures as
control references for the perturbed response functions.
Data analysis
We calculated the mean response and the 95% confidence interval of the mean from the data collected for each stimulus. The 95% confidence interval is defined as the range within which the mean of an equal number of samples from the same distribution will lie 95% of the time. We claim that a PG affects significantly a response function if the mean of each datum from the PG presentation lies outside the 95% confidence interval of control stimuli measurements both preceding and succeeding the test. This conservative measure accounts for any drift in the cell's response function not due to the PG.
The resolution of our measurement of shifts in the tuning curves depends on the sampling interval in the orientation or spatial frequency domains. To improve the estimate of the location of a response function's actual peak, we linearly interpolated the response's derivative around the measured peak. This method relied on three data points to estimate the peak location, providing better stability. This technique requires a smooth function with no inflections between the three points other than the peak, but this assumption is implicit when we sample the tuning curves at discrete intervals. We repeated the interpolation for each sample and calculated a 95% confidence interval on the measure.
Using only the sampling rate, the peak can be resolved to within one sample width. However, with repeated measures and interpolation, we can increase the resolution of the peak for the average response function. We can calculate the resolution of a single sample from the interpolated estimate as follows:
Let n = number of stimuli
Let SW = the spacing between sample
Let |pk| = the peak spike count measured (an integer)
Let |pk
1| and
|pk+1| be the spike counts at the
two neighboring measures
Let pkest = the stimulus orientation generating the maximum number of spikes
The tuning function is the result of sampling, so the location of the
actual peak of the response function (pk) may be up to ± SW/2 distant from pkest.
We calculate a likely estimate of the true peak by using the two
neighboring data points pk
1 and
pk+1
|
(1) |
Let SR = sample_resolution = the allowable
range of pk given constant spike counts. Then
|
(2) |
|
(3) |
|
(4) |
Figure 1 is a theoretical example of how an orientation response function peak is shifted dpk degrees by a PG located dOR degrees distant from the single grating optimum orientation. Additionally Fig. 1 shows the variety of relationships that we encountered between the response function peak, response function suppression, and shifts in the center of mass (CoM). The squares indicate a lateral shift where both the peak and the CoM shift the same amount. The diamonds show a change in CoM without a change in the function peak location, and the triangles show a shift of peak in one direction and a shift of CoM in the other direction.
|
The CoM is the indicator of an entire curve's location (Stewart
1991
), as opposed to relying on some particular feature
location, such as the peak. The CoM also seems relevant because in the
natural environment a neuron is more likely to be presented with
suboptimal stimuli within its tuning envelope. The location of a
response function's CoM corresponds to the center of the neighborhood
of orientations or spatial frequencies that cause the cell to fire most
often. Therefore we may wish to detect changes in the entire response
function location since it impacts on the estimate of a cell's
response to all stimuli. The sample resolution of the CoM depends on
the absolute number of spikes collected during an experimental trial
|
(5) |
Suppression, as usually reported in the literature (e.g., Bishop
et al. 1973
; Bonds 1989
; DeAngelis et al.
1992
; Morrone et al. 1982
; Nelson and
Frost 1978
), is measured as the difference (defined here as
|dsg_pk|) between the response rate found with a
spatially optimal (single-grating) stimulus and the response rate
generated by that same stimulus with the addition of a PG. However, if
the response function peak shifts, then suppression measured between
the peak of the control measurement and the peak of the test
measurement (|dpk|) yields a different value of suppression.
We defined response function bandwidth measurements by calculating the half-height (HH) of the peak and on both sides of the peak interpolated around the measured points closest to the HH value, to give us the full-width (FW) response bandwidth at HH. Orientation bandwidth is measured in degrees and spatial frequency bandwidth in log units. The sample resolution on each side of the bandwidth estimate is SW/D, where D is the difference in the total number of spikes between the first interpolation point and the second. FWHH resolution for the data presented here is typically ±1°. Bandwidth measures implicitly depend on the measured firing rate and shifts in both the response function peak and CoM. Figure 1 shows an example in which the response function peak is stationary and the CoM shifts, effectively increasing the response function bandwidth. Changes in a response function's measured bandwidth can result from peak and CoM shifts in opposite directions, CoM shifts with no peak shift and even peak and CoM shifts by varying amounts in the same direction.
| |
RESULTS |
|---|
|
|
|---|
Reshaping response functions
In previous studies involving interaction between two stimuli
(e.g., Bishop et al. 1973
; Bonds 1989
;
DeAngelis et al. 1992
; Morrone et al.
1982
) influences on excitation were usually measured with a
base (excitation) stimulus positioned at the cell's optimum orientation. If a PG changes the orientation or SF yielding the peak
response, the suppression measured at the location of the single
stimulus optimum must be greater than the suppression measured between
the peaks of the perturbed and unperturbed response functions. Figure
2 shows the orientation response function
for a single grating from simple (A) and complex
(B) cells. Each datum indicates the average response from 10 trials with the corresponding limits showing the 95% confidence
interval of the mean. The dashed and dotted response functions in each
figure shows the cell's response in the presence of two different PGs.
In each case, the average values of the perturbed response functions
lie outside the 95% confidence intervals of the single stimulus curve.
In the remainder of the paper (unless otherwise specified), described
changes exceeded the 95% confidence interval of the control
measurements.
|
In Fig. 2A, a PG oriented at 105° changes the optimum value of the base grating orientation from 55 to 45°, while a PG at 5° moves the location of the base grating response peak to 65°. The location of the response function peak for the complex cell shifts from 65 to 45° with the addition of a grating oriented at 95° and shifts to 75° with a PG oriented at 45° (Fig. 2B). Usually the response function CoM is implicitly assumed to be the same as the peak location. However, shifts in location of the response function peak reshape the filter function, resulting in a shift of the CoM. The PG oriented at 105° causes the simple cell response function CoM to shift from 55.7 to 52.3°, while a PG oriented at 5° moves the CoM to 58.3°. The CoM of the complex cell response function shifts from 69.3° either to 62.9 or 71.2° with PGs oriented at 95 and 45°, respectively. Here the shift of the CoM is repulsive, moving away from the orientation of the PG.
Changes in the optimum orientation for the simple cell shown in Fig. 2A might be explained by selective response suppression near the orientation of the PG. However, the complex cell shift in Fig. 2B also demonstrates response facilitation at orientations away from that of the PG. Displacements of the response function peak and CoM locations can thus result from suppression and facilitation that is asymmetric about the base grating response function peak or CoM location. Due to these complexities, no single analytic model (e.g., a Gaussian function) could be applied and capture the salience of the broad variety of the changes seen. However, response function peak and CoM shifts are convenient descriptions that reduce this complicated operation into simple metrics.
Presentation of a PG also resulted in significant changes in the orientation tuning bandwidth. The simple cell's full-width half-height (FWHH) response bandwidth to a PG oriented at 105° expands from 33.0° (single grating) to 49.4°, and to 37.7° with a PG oriented at 5°. The complex cell's FWHH bandwidth of 34.3° (single grating) contracted slightly to 33.5° and expanded to 42.4° with PGs oriented at 95 and 45°, respectively.
Because PGs can shift the location of the response function peak, the degree of response suppression differed when assessed at the orientation that generated a peak response with a single grating (|dsg_pk|) and between the response function peaks found with single and double gratings (|dpk|). In the case of the simple cell and PG oriented at 105° (Fig. 2A), the suppression measured between response function peaks is 66% as opposed to 71% measured between the two functions at the location of the single grating optimum orientation. Similarly, for the complex cell and the PG oriented at 45°, the suppression between peaks is 35% as opposed to 38% measured at the location of single grating optimum orientation (Fig. 2B).
Because response suppression can also depend on a second grating's
spatial frequency (Bauman and Bonds 1991
;
DeValois and Tootell 1983
), we measured the cell's
response function when exposed to PGs that were of the same orientation
as the base grating but had spatial frequencies outside the cell's
response range. Figure 3 shows spatial
frequency response functions for a simple cell (A) and a
complex cell (B). The addition of a PG with a spatial frequency of 0.4 c/deg shifted the simple cell's optimum spatial frequency from 1.00 c/deg (single grating) to 0.80 c/deg (Fig. 3A). A PG with a spatial frequency 0.8 c/deg added to the
base grating shifted the location of the complex cell's response peak from 0.38 to 0.29 c/deg (Fig. 3B). The 0.4 c/deg PG shifts
the simple cell's CoM from 0.97 to 0.95 c/deg. The 0.8 c/deg PG caused the complex cell's CoM to shift from 0.38 to 0.35 c/deg. Neither the
simple cell's 1.54-octave bandwidth nor the complex cell's 2.25-octave bandwidth changed significantly.
|
The shift in the peak response as a function of base grating spatial frequency from PGs of differing spatial frequency also results in greater apparent response suppression at the location of the single grating optimum spatial frequency. The simple cell in Fig. 3A shows a response drop of 38% at the location of the single grating stimulus optimum spatial frequency but only 29% between the two peaks. Similarly, the complex cell's suppression is measured as 49.3% at the location of the single grating peak response, but only 31.8% between the two peaks (Fig. 3B), again demonstrating that the usual measure of response suppression overestimates the actual response suppression.
Orientation response function suppression across a population of neurons
Across a population with PGs of different orientations, we
generally found that a cell shows response suppression that is proportional to the angle between the PG orientation and the single grating optimum orientation (dOR), at least within the range of dOR
that we explored (30-90°). In some cases, usually those in which the
PG was oriented nearer to the preferred orientation, facilitation was
found. This presumably indicates encroachment of the PG into a range of
excitatory orientations that was subthreshold with a single stimulus.
Figure 4 displays a typical pattern in one cell of response suppression as a function of dOR. The difference in responsiveness is shown measured at the optimal orientation (|dsg_pk|, diamonds) and that
between the peaks of the unperturbed and perturbed perturbed response
functions (|dpk|, circles; see e.g., Fig. 2). We assumed
that because of the symmetry of orientation tuning functions the
suppression magnitude was a function of the magnitude (but not
necessarily the sign) of dOR (e.g., Bishop et al. 1973
),
and separated the data along the dOR = 0° axis. Linear
regressions on each half of the divided data represent an approximation
of the dependence of the cell's response on dOR, irrespective of
whether the neuron's response was generally suppressed or, in some
cases, facilitated. In Fig. 4, the linear regression on data generated
using negative dOR values has a slope of
4.75 and intercept
260,
and a slope of 2.05 and intercept
94 for positive dOR values. The
signs of the slopes show that suppression on both sides of dOR = 0° increases with the angle between the PG and the orientation
generating the single grating peak response, at least as far as an
orientation difference of about 70°. Although dOR intercept values
are the traditional representation of a linear regression, they may be
interpreted accurately only over the range of measured values; thus
they indicate the dOR value at which a trend reverses. In this case the
negative values for intercepts indicate facilitation occurring at
smaller measured dOR values, changing to suppression for larger values.
|
All 21 complex and 20 simple cells tested with PGs of various
orientations (across a total of 177 trials) had at least one case in
which the perturbed response function differed significantly from
responses to at least one control preceding and one control succeeding
the test. To find whether the suppression patterns found in simple and
complex cells represent either a common or two different distributions
(Morrone et al. 1982
), we calculated the mean of the
response suppression for simple and complex cells independently. Here
and except where noted, the means for simple cells (26.15%,
conf95% = ±8.9%) and complex cells (19.25% conf95% = ±7.7%) were not significantly
different, so the results from the two sets of cells were combined.
Across all cells tested using PGs with negative
(counterclockwise) dOR values, the maximum suppression found was
90.57%, and the maximum negative suppression (i.e., facilitation) was
81.54%. The overall average was 20.26%
(conf95% = ±1.38%). Measurements made using
PGs with positive (clockwise) dOR values show suppression extremes of
89.8 and
105.8%, with a 22.8% (conf95% = ±1.33%) average, indicating an approximate symmetry of the effect
across the direction of the orientation difference.
To determine whether suppression in all cells followed a common
underlying pattern, we calculated linear regressions (similar to Fig.
4) on data from each cell individually and then combined the results.
The distribution of slope values produced by these regressions is
summarized in Fig. 5. The top
half of the figure shows data resulting from trials using PGs with
negative dOR values; the bottom half of the figure shows
results for positive dOR trials. In both cases, the majority (62%) of
the cells show response suppression increasing with increasing dOR
magnitude. PGs with negative dOR values result in an average slope of
0.93%/deg with an average intercept at
23.86%, and PGs with
positive dOR values result in regressions with an average slope of
1.14%/deg and intercept at
23.22%. An average neuron thus shows
increased response suppression with increasing dOR magnitude regardless
of its sign. Additionally, the negative values for the intercepts
indicate that an average neuron shows facilitation for smaller dOR
values, and only larger dOR values actually suppress the response. In
11/19 cases, the last point of the curve at dOR values of 50-80°
does not appear to fall on the fit curve, suggesting a breakdown of
this trend for the largest dORs tested.
|
The response suppression measured at the orientation that yielded the peak response from a single grating (|dsg_pk|) also follows the same general dependence on dOR as the |dpk| values. The difference between |dsg_pk| and their respective |dpk| measures is 6.4% suppression (or 1.32 times) for negative dOR values and 5.4% suppression (or 1.24 times) for positive dOR values. On average, the |dsg_pk| measure overestimates the amount of actual suppression by a factor of 1.28.
Dependence of suppression on spatial frequency across a population of cells
Individual cells showed some dependence of the amount of suppression as a function of dSF, but unlike dOR, no general trend across cells was observed. In the presence of a PG with optimal orientation but a spatial frequency outside the excitatory range, all 23 cells tested showed significant response suppression. Analysis is based on a combined set of 9 simple and 14 complex cells across a total of 78 trials.
We separated data obtained with PGs of lower and higher SF than the
optimum. PGs with negative dSF values result in suppression ranging
from 59.2 to
51.3%, with an average of 14.79%
(conf95% = ±1.71). Those with positive dSF
values produced suppression ranging from 82.0 to
52.88%, averaging
18.34% (conf95% = ±1.50). To test for a common
trend in |dpk| versus dSF over all cells, we formed
linear regressions on data from individual cells, resulting in slopes
ranging from
2,000%/c-deg
1 to
+2,000%/c-deg
1 and intercepts ranging from
150% to +210% suppression. This indicates a very broad range of
dSF-dependent suppression and facilitation. Across the population the
intercepts and slopes were uniformly distributed with an average value
of zero. Although in individual cells suppression measured between
response function peaks can strongly depend on the SF of a PG, there is
no common trend over the population. We also measured response
perturbation at the SF that produced the peak response for a single
grating (|dsg_pk|) as a function of dSF. Again,
individual cells could show large changes, but linear regressions
result in slopes and intercepts with an average of zero for both
positive and negative dSF values. This measure of response suppression
overestimates the actual suppression by a factor of about 1.6.
Shifts in orientation response function location
To determine the dependence of peak response dislocations on the
PG orientation across a population, we measured shifts in the location
of both the response function peak and the CoM. The location of the
perturbed peak was compared with the average value for the control
response function measured both preceding and after the test. All 41 cells tested with PGs of varied orientation showed significant peak
shifts. The displacements tended to be repulsive for PGs with
orientations close to (
50°) the orientation generating the single
grating peak response, and attractive for greater orientation differences.
Our analysis is based on a total of 177 trials on a combined set of 20 simple and 21 complex cells. We divided the data depending on whether
they were generated by PGs with positive or negative dOR values. PGs
with positive dOR values result in dislocations of the response
function peak ranging from 8.3 to
26.9°, averaging
3.81°
(conf95% = ±0.53). PGs with negative dOR values produced maximum shifts of 33.1 and
6.5°, averaging 3.9°
(conf95% = ±0.53).
Figure 6 shows a typical pattern of
changes in the peak location as a function of the angle between the PG
orientation and the single grating optimal orientation (dOR). The
regression calculated on the data with negative dOR values in Fig. 6
has a slope of 0.14 deg/deg (i.e., degrees displacement per degree dOR)
and an intercept of 6.19°. The regression on positive dOR values
produced a slope of 0.11 deg/deg and an intercept of
8.37°. The
negative intercept for positive dOR values and the positive intercept
for negative dOR values shows that the PG causes the orientation for peak response to shift away from the orientation of the PG, as also
reported by Gilbert and Wiesel (1990)
for perturbing
line patterns. The positive slope for both negative and positive dOR values shows that the repulsion is strongest for nearby PGs, and that
it decreases as dOR increases.
|
To test for a common trend across the population, we calculated linear regressions on peak shift versus dOR values from each cell. Figure 7 shows the distributions of slopes from these regressions, with separation of positive and negative dOR values. Tests using PGs with negative dOR values yielded an average slope of 0.14 deg/deg (conf95% = ±0.096), and the average slope for PGs with positive dOR values is 0.17 deg/deg (conf95% = ±0.064). As dOR increases, the peak shift is reduced then changes to attraction as dOR approaches about 50° distance from the optimum orientation for a single grating.
|
The population distribution of the peak shift is shown in Fig.
8A, which indicates the
maximum significant displacement of the orientation tuning peak found
for each cell (n = 41) in degrees, with negative
displacements (n = 26) indicating repulsion by the PG
and positive values (n = 15) attraction. Maximum shift
values ranged from 1° to over 20° across the population. The mean
maximum displacement for repulsion in a given cell was
7.61°, and
the median was
6.29°. Of the fewer cells that showed attraction, the mean and median maximum values were 3.87 and 5.91°, respectively.
|
Because the shape of the tuning curve changed, often irregularly, in
the presence of a PG, the CoM was considered a more characteristic indicator of the overall behavior of the function. We found significant CoM displacement in 19/20 simple and 20/21 complex (95% total) cells.
The diamonds in Fig. 6 show typical changes in CoM location (dCoM) as a
function of dOR for a single cell. Across the population (Fig.
8B), PGs resulted in 32 repulsive (negative) maximum CoM displacements and 9 attractive maximum displacements. The mean repulsive CoM displacement was
3.61°, with a median of
2.99°. For attraction, the mean dCoM was 3.42°, and the median was 2.32°. Like the peak dislocations, the CoM of a response function is, on
average, repulsed by the PGs. Likewise, increasing dOR decreases the
magnitude of the CoM shift, which changes from repulsion to attraction
with dOR values around ±60°. Similar overall results are reported by
Dragoi et al. (2000)
, who found using optical imaging
that adaptation to gratings on the flank of a tuning curve caused
shifts away from the adapting orientation, whereas adaptation to
orthogonal gratings resulted in no shift.
Shifts in spatial frequency response functions
To determine whether the location of the spatial frequency peak response depends on dSF, we measured dislocations on the same set of data used for SF-dependent response suppression. Nineteen of the 23 cells (83%) had significantly shifted peaks. However, unlike the orientation response function shifts, these displacements did not predictably depend on the the difference between the PG spatial frequency and the optimal spatial frequency.
This analysis is based on a combined set of 9 simple and 14 complex
cells over a total of 78 trials. PGs with negative dSF values produced
maximal shifts of
0.123 and 0.292 c/deg. Positive dSF valued trials
produced shifts ranging from
0.122 to 0.172 c/deg. Figure
9A shows the population
distribution of the maximum shifts encountered in the 19 cells with
significant shifts, plotted as positive (toward the spatial frequency
of the PG) and negative values. The mean for eight positive maximum
values (attraction toward the PG spatial frequency) was 0.088 c/deg
with a median of 0.101 c/deg. The mean for 11 repulsive values was
0.079 c/deg with a median of
0.055 c/deg. While it would appear
from Fig. 9A that for maximum shifts there was a greater
tendency for repulsion, the average shift over all data are zero, and
regressions applied to data from individual cells result in average
slopes and intercepts that are also zero. Although a PG can usually
change a cell's optimum spatial frequency, the new location of the
response function peak has no apparent relationship to the spatial
frequency of the PG.
|
We also measured changes in a response function's CoM as a function of
dSF. All 23 cells showed at least one significant CoM shift. PGs with
negative dSF values (Fig. 9B) dislocated the CoM up to 0.10 and
0.048 c/deg away from the optimum measured with a single grating.
Positive dSF-valued trials result in shifts ranging from
0.05 to 0.11 c/deg. As with peak shifts, the size and direction of the CoM shifts
were evenly distributed over all spatial frequencies, and the average
CoM shift was zero.
Orientation response function bandwidth
To measure changes in the bandwidth of a response function, we calculated the FWHH bandwidth. The full-width measure was required because PGs often disrupted the symmetry of the response function. With PGs, all 41 cells yielded at least 1 bandwidth measure that showed significant change. Collectively, orientation response function bandwidths tended to broaden with low dOR values.
Analysis is based on 20 simple and 21 complex cells over a total of 177 trials. Change in bandwidth from PGs with negative dOR values ranged
from 128.0 to
40.3%, averaging 25.9%
(conf95% = ±7.98%), with a positive change
indicating a broadening of the response function. Change from trials
with positive dOR values ranged from 98.0 to
52.7%, averaging 23.7%
(conf95% = ±6.45%). Linear regressions formed
on the data from individual cells yielded on average positive
intercepts and slopes. The positive intercept values show that, on
average, PGs with orientations near the optimum orientation for a
single grating broaden the response function, and the slope values show
that this broadening decreases in magnitude with increasing dOR and
changes to compression at approximately dOR = ±55°.
Spatial frequency response function bandwidth
In the spatial frequency domain, PGs resulted in significant bandwidth changes in all 14 complex cells, but in only 4/9 (44%) simple cells. Here we separate the data from simple and complex cells.
Complex cells perturbed using gratings with negative dSF values
displayed bandwidth compression ranging from 100 to
25%, averaging
41.8% (conf95% = ±4.65%). Bandwidth
compression for complex cells exposed to PGs with positive dSF values
ranges from 60 to
53.8%, averaging 11.6%
(conf95% = ±3.01%). Linear regressions on data
from individual cells perturbed with negative dSF-valued stimuli have
an average slope of 107.1%/c-deg
1 and
intercept of 78%. The average slope for linear regressions on data
from complex cells perturbed with positive dSF gratings is
66.86%/c-deg
1 with an average intercept of
41.44%.
Simple cell bandwidth expansion caused by PGs with negative dSF values
ranged from 25 to
50%, averaging
3.79%
(conf95% = ±2.81). Changes in the bandwidth of
the base grating response function ranged from 140 to
63.6%,
averaging 5.51% (conf95% = ±2.11) for gratings
with positive dSF values. Linear regressions on the data from simple
cells result in an average slope and intercept equal to zero. While
complex cell spatial frequency response function bandwidths are
systematically changed by PGs, simple cell bandwidths are only affected minimally.
| |
DISCUSSION |
|---|
|
|
|---|
PGs modify a cell's response to a base grating by 1)
suppressing or facilitating response rates, 2) displacing
response function peak and center of mass locations, and 3)
compressing or expanding the bandwidth of the response function. The
change in amplitude seen between the response function peaks
demonstrates facilitation by PGs when measured with orientations close
to (
50°) the orientation that generated the single grating peak
response, with suppression occurring and increasing for PGs farther
away from that orientation. The method of measuring suppression is
important because the usual measure applied to response functions (at
the single-stimulus peak) overestimates the amount of actual
suppression due to the tuning peak shifts. In the orientation domain,
the base grating peak and CoM shifts are usually repulsive in nature,
decreasing in magnitude with increasing angles between the perturbing
orientation and the optimum single grating orientation and changing to
attraction at about 50°. The peak and CoM shifts were greatest with
PGs nearest to the orientation generating the single grating peak
response. Since the shifts were repulsive, when the shift was greater,
the measured suppression at points between the original response
function peak and the PG orientation was greater. Overall, PGs slightly broaden the orientation tuning function of all neurons and the spatial
frequency response function of complex cells, but simple cell spatial
frequency functions usually show little or no bandwidth change.
Considering the complex nature of the interactions explored so far, we
do not claim to have uncovered all possible influences from PGs.
However, the responses that we have found would appear to be
sufficiently well-organized to support the improvement of discrimination between the orientations of two simultaneously presented
stimuli by an ensemble of neurons.
Response function suppression
Trends in the data presented here predict decreasing suppression
for decreasing dOR values, with a maximum facilitation at dOR = 0°. The prediction of maximum suppression of the base grating by PGs
with orientations orthogonal to the single stimulus optimum orientation
is consistent with suggestions from previous studies (e.g.,
Bishop et al. 1973
; Morrone et al. 1982
).
However, since we generally did not make measurements with PGs at the
orthogonal orientation, we cannot confirm this projection. In some
cases we saw reduction of suppression when the PG approached the
orthogonal orientation, which is consistent with the observation in
some cases of the greatest response suppression being found near the excitatory bandwidth limits of the single grating orientation response
function (Bonds 1989
).
These results are collectively consonant with the model of lateral
inhibition in the orientation domain, first described psychophysically by Andrews (1967)
and elaborated by Blakemore et
al. (1970)
, Benevento et al. (1972)
,
Bishop et al. (1973)
, and Carpenter and Blakemore (1973)
. In this model, orientation detectors consist of an
excitatory orientation tuning function in combination with a more
broadly tuned inhibitory orientation tuning function contributed by
nearby detectors. Both tuning functions peak at about the same angle, but the relatively stronger contribution from the inhibitory mechanism as one moves away from the peak results in narrowing of the observed tuning function. The greatest impact of suppression can occur near the
flanks of the excitatory tuning function or at the orthogonal, depending on the breadth of the overall inhibitory contribution. This
result is likewise suggested by the dynamic tuning curves measured by
Ringach et al. (1997)
. One pathway for this inhibitory input arises from the more broadly tuned inhibitory cells of lower layer 5 and upper 6 (Kisvarday et al. 1987
) impinging on
cells in layers 2/3 (Allison and Bonds 1994
).
Suppression and/or shift of a cell's spatial frequency response
function is another example of spatial nonlinearity. The most significant difference between PG influences on orientation and SF
response functions is that on average the latter show only a small
amount of suppression and no shift, even though individual cells can
show large changes. The lack of organized dependence on the perturbing
SF may reflect the lack of an orderly physiological substrate for SF,
unlike the clear pattern of orientation columns. Use of 2-deoxyglucose
(Tootell et al. 1981
) shows a columnar organization for
SF in the cat visual cortex but does not reveal how the columns are
related to one another. Similarly, analysis of electrode penetrations indicates a tendency for cells preferring similar spatial frequencies to be grouped, but there is no smooth transition between groupings, and
adjacent cells can often have quite dissimilar spatial frequency preferences (Tolhurst and Thompson 1982
). Optical
imaging of neural activity reveals the presence of two more or less
distinct groups of clusters, one selective to low spatial frequencies
and high speeds and the other to high spatial frequencies and low
speeds (Shoham et al. 1997
). This can result in abrupt
transitions at cluster borders and is thus consistent with the findings
of Tolhurst and Thompson (1982)
. If local interactions
were based on lateral inhibition in the spatial frequency domain, one
might therefore expect at least some cells to have clearly demonstrable
inhibitory flanks (Bauman and Bonds 1991
; Ringach
et al. 2000
), with concomitant shifts of spatial frequency
preference in the presence of PGs, while other cells might show little
effect. This is also consistent with the apparently random organization
of repulsion and attraction of spatial frequency peaks that we observed.
Mechanism for response function shifts
A change in the location of the peak of an orientation response
function in the presence of a PG is consistent with lateral inhibition
in the orientation domain. In many cases this shift was manifested not
merely as a dislocation of the maximum but also as a displacement of
the entire curve (e.g., Fig. 2). This result, together with
suppression, can arise from a combination of inhibition for angles that
are closer to the PG and disinhibition for angles that are further away
(on the opposite side of the response function). This can occur by
invoking a restriction of the range of effectiveness of the lateral
inhibition, similar to that seen in the spatial domain (Hartline
and Ratliffe 1957
). Locally, the PG causes inhibition of
adjacent orientations, but by decreasing the activity of these cells,
their inhibitory impact on cells tuned to further orientations is
decreased. The disinhibition that results in supragranular cells from
inactivation of subgranular cells (Allison and Bonds
1994
) is appropriate both in position (relative to the
orientation peak) and magnitude to support this effect.
Psychophysical correlations
A consequence of shifting response functions is that the presence
of one or more PG changes the grating orientation to which a neuron is
most sensitive. Since the population of neurons exhibits a common
trend, if higher cortical areas determine orientation from an ensemble
input, confusion will arise in these areas from striate cortical
neurons responding to a "wrong" orientation. Psychophysical studies
have measured the angle expansion or tilt illusion induced by a
perturbing line (Andrews 1967
; Blakemore et al.
1970
; Oyama 1975
), perturbing dots (Blake
et al. 1985
), and gratings (Wenderoth et al.
1993
; for review see Howard 1982
). Shifts in the
orientation response functions for base gratings shown to area 17 neurons in cat match typical human psychophysical measurements of
orientation shifts, which range from 6 to
6° and change from
repulsion to attraction at dOR = 50° (Howard
1982
).
There are two distinct and contradictory perceptual consequences of the shift in preferred orientation found in single cortical cells, depending on how one interprets the use of the information by higher cortical centers. If orientation is encoded by the differential activity within an ensemble (as opposed to strict excitation), perceived angle expansion will occur. This is because, as proposed above, the preferred orientations near to the base stimulus and slightly closer to the perturbing stimulus will be more densely packed than orientations further away, so that higher centers respond as if the angle between base and perturbing orientations is greater than its actual value. Consider a simplified example in which five cells are tuned to orientations of 85, 88, 90, 92, and 95°. When driven by a stimulus oriented at 90°, the expected response from each might be {15, 18, 20, 18, 15} spikes/s. Adding a PG at 50° results in tuning peak shifts (due to repulsion) to {89, 90, 92, 94, 96} deg, with responses (from the 90° stimulus) now estimated to be {19, 20, 19, 18, 14} spikes/s. The simplified model assumes no change in the tuning bandwidths of the cells, merely a displacement of the tuning curve.
Here we presume that orientation is signaled by relative activity, which is calculated simply as the difference between the response of a given cell and the average response of its two neighbors. With a single grating at 90° the differential coding results in figures of {0.5, 2, 0.5} for the central three orientations of {88, 90, 92} deg, and thus the perceived orientation will be 90°. The PG yields relative responses of {1.0, 0, 1.5} for these same three cells and the perceived orientation will be 92°. Reciprocal activity patterns from cells tuned near to the orientation of the PG results in similar apparent displacement in the other direction, yielding a total angle expansion of 4°. Note that in this example the five cells initially spanning 10° of orientation (2.0° per cell) now span 7° of orientation (1.4° per cell). Such a coding scheme has the benefit that it results in increased discrimination.
If instead one relies on strict interpretation of the concept of labeled lines and detection by absolute, rather than relative, response levels, analysis of the repulsive shift of orientation response functions could also paradoxically predict compression of the perceived angle. Consider a cell A with a normal tuning peak at 90°, being stimulated at that orientation. Now, add a second grating at 60°, which is outside the excitatory passband of cell A. Through lateral inhibition, this second grating will depress the signal from cell A as well as shift the preferred orientation of cell A to, say, 95°. By the same mechanism some other cell B, which has a normal peak for orientation at 85°, will also have its peak moved by the second grating, in this case to 90°. A grating oriented at 90° will thus drive cell B more efficiently than it drives cell A. On the basis of this proposition, the perception of the grating will be one of 85°, which is a contraction, rather than expansion of the relative angle. The observation that perception tends to exaggerate narrow angles would discourage this interpretation, but this kind of influence may have some mitigating effect on the expansion discussed above.
The evidence presented here shows that the spatial organization of neurons in the primary visual cortex can be modified in real time, and that changes are dependent on context of the visual scene. Many cells show modification that is predictably dependent on the orientation and spatial frequency of secondary stimuli that do not excite the cell. Because of this behavior we can no longer consider a cell's response to be a stationary linear or quasi-linear independent combination of the cell's responses to individual orientations and spatial frequencies. We must now consider the response of a striate cortical neuron to be dependent on the relationship between all of the orientations and spatial frequencies present.
| |
ACKNOWLEDGMENTS |
|---|
We thank J. Allison and R. Snider for fruitful discussions and B. Roig for help in data processing.
This work was supported by National Eye Institute Grant RO1EY-03771 and Core Grant R30EY-08126. J. F. Kabara was supported by National Institutes of Health Training Grant T32-07135.
| |
FOOTNOTES |
|---|
Address for reprint requests: A. B. Bonds, Dept. of Electrical and Computer Engineering, PO Box 1824 Sta. B, Vanderbilt University, Nashville, TN 37235 (E-mail: ab{at}vuse.vanderbilt.edu).
Received 2 May 2000; accepted in final form 16 August 2001.
| |
REFERENCES |
|---|
|
|
|---|
| ||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||
| HOME | HELP | FEEDBACK | SUBSCRIPTIONS | ARCHIVE | SEARCH | TABLE OF CONTENTS |
| Visit Other APS Journals Online |