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The Journal of Neuroscience, January 1, 1999, 19(1):431-441
Effects of Attention on Orientation-Tuning Functions of Single
Neurons in Macaque Cortical Area V4
Carrie J.
McAdams1 and
John
H. R.
Maunsell1, 2
1 Division of Neuroscience and 2 Howard
Hughes Medical Institute, Baylor College of Medicine, Houston, Texas
77030
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ABSTRACT |
We examined how attention affected the orientation tuning of 262 isolated neurons in extrastriate area V4 and 135 neurons in area V1 of
two rhesus monkeys. The animals were trained to perform a delayed
match-to-sample task in which oriented stimuli were presented in the
receptive field of the neuron being recorded. On some trials the
animals were instructed to pay attention to those stimuli, and on other
trials they were instructed to pay attention to other stimuli outside
the receptive field. In this way, orientation-tuning curves could be
constructed from neuronal responses collected in two behavioral states:
one in which those stimuli were attended by the animal and one in which
those stimuli were ignored by the animal. We fit Gaussians to the
neuronal responses to twelve different orientations for each behavioral
state. Although attention enhanced the responses of V4 neurons (median
26% increase) and V1 neurons (median 8% increase), selectivity, as
measured by the width of its orientation-tuning curve, was not
systematically altered by attention. The effects of attention were
consistent with a multiplicative scaling of the driven response to all
orientations. We also found that attention did not cause systematic
changes in the undriven activity of the neurons.
Key words:
attention; visual; orientation; tuning; monkey; area V4; extrastriate; cortex
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INTRODUCTION |
The responses of neurons in
extrastriate visual cortex are often enhanced when an animal must
attend to or remember a stimulus in the receptive field (Desimone and
Duncan, 1995 ; Maunsell, 1995 ). Attentional enhancement has been found
in many different visual areas, including areas relatively early in
visual processing and in later stages of both the parietal and temporal
pathways. Although these modulations are sometimes modest, their
strength has been shown to depend on the demands of the tasks (Spitzer
et al., 1988 ; Luck et al., 1997 ), and in some conditions robust effects
are seen (Moran and Desimone, 1985 ; Motter, 1994a ; Treue and Maunsell, 1996 ).
These enhanced neural responses could account for the improved
behavioral performance associated with attention. Attending to a
particular object, location, or feature can improve detection thresholds and speed behavioral responses (Posner et al., 1980 ; Humphreys and Bruce, 1989 ; Rossi and Paradiso, 1995 ). Stronger neuronal
responses typically have a better signal-to-noise ratio (Schiller et
al., 1976 ; Heggelund and Albus, 1978 ; Geisler and Albrecht, 1997 ),
which might provide the basis for superior behavioral responses. It is
possible, however, that changes in behavior performance depend on other
neurophysiological effects of attention. If attention altered the
stimulus selectivities of individual neurons, those cells could signal
attributes of the attended stimulus more precisely. A sharpening of
tuning curves for an attended stimulus dimension, such as orientation
or color, could provide a finer-grained representation that would
improve the animal's performance in reporting information about the stimulus.
The question of whether attention can alter tuning curves has been
considered in earlier studies (Haenny and Schiller, 1988 ; Spitzer et
al., 1988 ), which suggested that attention to oriented stimuli causes a
systematic narrowing of orientation-tuning curves in area V4. On the
other hand, some studies of extraretinal inputs to cortex have either
failed to find evidence of narrowing of spatial or feature-directed
tuning profiles (Andersen et al., 1985 ; Vogels and Orban, 1990 ) or were
inconclusive (Maunsell and Hochstein, 1991 ). We were motivated to
reexamine this issue because of evidence suggesting that the narrowing
of tuning curves is uncommon in stimulus-stimulus interactions. For
example, increasing the contrast of a visual stimulus typically
increases responses without altering the selectivity of a cell for
orientation or spatial frequency (Tolhurst, 1973 ; Dean, 1981 ; Albrecht
and Hamilton, 1982 ; Sclar and Freeman, 1982 ). Thus, if attention does
alter the tuning of neurons, it would support the notion that
attentional inputs to cortex operate through mechanisms or pathways
that are distinct from those primarily involved with sensory signals.
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MATERIALS AND METHODS |
Behavioral paradigms. We examined the effects of
attention on the orientation tuning and undriven activity of single
neurons in cortical area V4 by recording from neurons in monkeys while they performed a task that required them to shift their attention between two stimulus locations. Data were collected from two male rhesus monkeys (Macaca mulatta). Each sat in a primate chair
during training and recording sessions, which lasted 2-6 hr, and was unrestrained in its home cage at other times. Water intake was controlled, and each animal was trained to perform a behavioral task
using operant conditioning with a juice reward. In all cases the animal
was required to maintain fixation on a small spot so that visual
stimuli could be placed at known retinal locations. Partway through
training, an aseptic surgery was performed to implant a head post and
scleral search coil (Judge et al., 1980 ), which were then used to
monitor eye positions (Robinson, 1963 ). A computer controlled all the
stimulus presentations, monitored the eye position and behavioral
responses of the animal, and recorded the behavioral and neuronal data.
Stimuli were presented on a color video monitor, positioned 70 cm from
the animal.
The animals performed a delayed match-to-sample task (Fig.
1). The trial began when the animal
looked at the fixation point and depressed a lever. Both animals were
required to keep their gaze within 0.7° of the center of the fixation
point throughout the trial. After 500 msec, sample stimuli appeared at
two different locations. Only one location was behaviorally relevant on
a given trial. After a sample presentation of 500 msec, the stimuli
were removed for a 500 msec delay period. Then two test stimuli
appeared, at which point the animal had to indicate whether the test
stimulus at the relevant location matched the sample stimulus
previously presented at that location. If the test stimulus matched,
the animal had to release a lever within 500 msec of its onset to receive a reward. If the test stimulus did not match the previously presented sample, the animal had to keep the lever depressed for 750-1000 msec, after which time he received a reward.

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Figure 1.
Schematic representation of the delayed
match-to-sample task. Each frame represents the display
at a different point in a trial, with the fixation spot in the
center and the receptive field of the neuron indicated
by a dashed oval. The fixation, sample, and delay
periods were each 500 msec. The test period could last 1000 msec, but
ended when the animal released the lever. The monkey was required to
bring his gaze to the fixation spot and depress a lever to begin the
trial. A Gabor and a colored Gaussian were presented in the sample
period. The monkey attended to only one of these stimuli in each trial,
based on previous instruction trials in which only one stimulus
appeared. In the attended mode, the monkey was required to pay
attention to the orientation of the stimulus in the receptive field. In
the other mode, the monkey was required to pay attention to the color
of the stimulus outside the receptive field. Both stimuli were removed
during the delay period. In the test period, the animal had to report
whether the test stimulus at the attended location matched the sample
stimulus previously presented there. In the case illustrated, if the
animal had been instructed to pay attention to the oriented stimuli,
the animal would be required to keep the lever depressed to receive a
juice reward because the orientations do not match. Conversely, if the
animal had been instructed to pay attention to the colored stimuli, the
animal would be required to release the lever within 500 msec of the
test stimulus onset to receive juice because the colors match.
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The animal was trained to attend only to stimuli in one location on a
trial. The relevant location was cued using instruction trials in which
stimuli were only presented in one location. After the animal performed
two instruction trials correctly the stimuli at the second location
were reintroduced. The stimuli at one location were Gabors. The Gabors
were constructed by multiplying a sinusoidal grating and a
two-dimensional Gaussian. The contrast of these stimuli was modulated
sinusoidally in time at 4 Hz, although the mean luminance of the
stimulus averaged over space and time was the same as the background.
The animal had to report whether the sample and test Gabor orientations
matched when instructed to attend to that location. The stimuli at the
other location were isoluminant colored patches whose saturation varied
with a two-dimensional Gaussian profile. The animal had to report
whether the sample and test colors matched when instructed to attend to
that location. Matches and nonmatches at the two locations were
uncorrelated so that the animal could get no advantage from attending
to the wrong location. Animals were instructed to shift their attention from one location to the other after correctly completing 24 trials using one location. The first animal, A, had no problems remembering which location he was supposed to attend to, and he only received two
instruction trials for each shift in location. The second animal, B,
was more easily distracted and occasionally extra instruction trials
were required within a block. A single instruction trial was given to
him whenever he missed or ignored three trials in a row.
By presenting the same visual stimuli to the animal when he was
performing the color matching task and when he was performing the
orientation matching task, differences in neuronal responses occurring
between the two types of trials could be attributed to differences in
behavioral state between the tasks. The Gabors were always placed
inside the receptive field of the neuron being recorded. The Gaussian
patches were placed outside the receptive field of the neuron,
diametrically opposed at the same eccentricity. Although the animal was
attending to something in both task modes, we define an attention
difference with respect to whether the neuronal signals we recorded
were relevant or irrelevant to the current task. Thus, when the animal
performed the orientation matching task, the neuron from which we
recorded was responding to the relevant stimulus, so we refer to this
mode as the "attended" mode. When the animal performed the color
matching task, the neuron was still responding to the Gabor, but
because this stimulus was now irrelevant to the animal's task, we
refer to this mode as the "unattended" mode.
Attention effects in area V4 have been attributed to both spatial
attention (Moran and Desimone, 1985 ; Motter, 1993 ; Connor et al., 1996 ,
1997 ) and to feature-directed attention (Maunsell et al., 1991 ; Motter,
1994a ,b ). The attentional modulation that we measured with this task
design could have been caused by either of these forms of attention
because the attended and unattended stimuli differed in both location
and relevant dimension (orientation or color). We chose this design to
increase the chances of encountering attentional modulations in area V4.
Neuronal recording and data collection. In both animals data
were collected from V4, with additional recordings made in V1 for
comparison. After the animals were trained, a recording chamber (20 mm
diameter) was implanted on intact skull overlying the operculum of V1.
When recordings were completed, this chamber was removed, and a new
chamber was positioned over V4. Animal A received a second V4 chamber,
so that data were collected from three hemispheres in two animals.
Recordings were usually made daily during a 3-5 week session. At the
start of each session, a 5-8 mm craniotomy was made inside the chamber
leaving the dura mater intact. Two or three craniotomies were made in
each chamber. Each day a hydraulic microdrive was mounted on the
recording chamber, which was then filled with sterile mineral oil and
sealed. Transdural recordings were made using Pt/Ir recording
electrodes of 1-2 M at 1 kHz (Wolbarsht et al., 1960 ). A small
fraction of the data (30 of 262 cells) was recorded from the parts of
V4 in the superior temporal sulcus using guide tube recordings with
similar electrodes. Signals from the microelectrode were amplified,
filtered, and monitored on an oscilloscope and audio monitor using
conventional equipment. Recordings were made only from cortex within 3 mm of the surface using the transdural electrodes and up to ~6 mm
from the surface using guide tubes in one chamber.
The animal performed the match-to-sample task while we searched for
responses. Units were isolated on the basis of waveform, with the
requirement that the peak of the action potential be at least three
times the background noise. When a unit was isolated, its receptive
field was mapped with a bar moved by hand while the animal fixated a
small spot of light. The receptive fields of the neurons were between 1 and 5° eccentric. The Gabor stimuli were then adjusted in spatial
frequency, color, and size to yield the best response using the
match-to-sample task, as judged by listening to the audio monitor. The
spatial frequencies used ranged from 1 to 5 cycles/°. The size of the
stimuli were taken as the SD of the Gabor and ranged from 0.6 to
2.2°. The spatial frequency and SD were varied independently; the
range of the ratios of spatial frequency to SD was 0.8-8.3
cycles/degree2 with a median of 2.2 cycles/degree2. Colors for the Gabors were selected
from five options (black/white, blue/yellow, red/green, cyan/red, and
magenta/green). Perhaps one in five neurons did not have any obvious
orientation tuning or could not be driven well and was not examined
further. For ~15% of the neurons recorded, the animal would not work
using the best stimulus we could find for that neuron. These stimuli were typically high spatial frequencies or small for their
eccentricity. For those neurons, a suboptimal stimulus was used,
provided that the neuron remained selective for orientation. Once
stimulus parameters were set, those parameters were used for all data
collected from the neuron.
Data analysis. We measured neuronal responses during the
presentation of the sample stimulus. We collected at least eight repetitions of twelve orientations in each of the two task modes, in
which task mode is defined by whether the animal attended to the
stimulus inside (attended mode) or outside (unattended mode) the
receptive field. Only correctly completed trials, excluding instruction
trials, were counted and used in data analysis. Task mode alternated
after obtaining two repetitions of each of the twelve orientations; so
for most units four cycles of the attended and unattended task modes
were collected. Undriven activity was estimated from the activity of
the neuron during the period while the animal was fixating a central
spot and before a stimulus was presented in the receptive field.
Orientation-tuning curves from cortical neurons are generally well
represented by a Gaussian function (Henry et al., 1973 ; Geisler and
Albrecht, 1997 ). We constructed orientation-tuning functions for each
task mode by fitting the averaged responses for each orientation with a
Gaussian using a nonlinear least squares optimization procedure that
incorporated both the variance and the magnitude of the responses
(Levenberg-Marquardt method, Press et al., 1989 ). The Gaussians had
four free parameters: amplitude, SD, asymptote, and mean. We used the
Gaussian SD as a measure of tuning width and the mean as a measure of
the preferred orientation of the cell. The quality of fits was
dependent on both the averaged responses and the variability of the
responses to each orientation. The acceptability of each Gaussian fit
was determined by performing an F test that compared the
goodness of fit from the Gaussian with the goodness of fit obtained
from a line of any slope. Only the neurons meeting a minimal criterion
for a good fit (F test; p < 0.05) were used
in comparisons across the two task modes; the median
r2 for these fits was 0.40. To determine
statistical significance of the changes in the fitted parameters across
the two task modes for individual neurons, a set of parameters for each
mode was produced by fitting a Gaussian tuning curve for each of the
stimulus repetitions. A Mann-Whitney U test was then
performed on each parameter to determine which units had individually
significant changes in amplitude, width, preferred orientation, and asymptote.
Additionally, a two-factor ANOVA was performed on each neuron to
confirm the presence of both orientation tuning and attention modulations independent of fitting procedures. The ANOVA was performed by sorting the responses of each neuron by the orientation of the
sample Gabor and the behavioral mode of the animal and then determining
the amount of the total variance that could be attributed to the sample
orientation and the behavioral (attentional) state. Neurons were
considered to have individually statistically significant changes if
the ANOVA resulted in a p < 0.05.
Eye position analysis. Our task required that the monkey
maintain fixation within 0.7° of a central spot throughout the data collection period. Although identical visual stimuli were presented in
the two behavioral tasks, differences in the responses might have
resulted from small systematic differences in the animals' eye
positions within the fixation window between the two tasks. This
possibility is a concern because the two tasks differed in location of
the attended stimuli. Several factors suggest that eye movements were
not a problem. First, we measured the difference in fixation position
for each task mode for each neuron recorded. The median fixation
position difference across the two tasks was <0.1° in both animals.
Second, the stimuli were selected to reduce the effects of small
differences in eye position between the tasks. We chose Gabors and
Gaussians because they have relatively little high spatial frequency
content and this should help reduce the potential of microscopic eye
movements to affect the neuronal response (Parker and Hawken, 1985 ;
Shapley and Victor, 1986 ). Also, the stimuli were isoluminant with the
background of the monitor over space and time, which should also reduce
the chances of small stimulus offsets causing a systematic change in response.
Histology. When the experiments were completed, each animal
was deeply anesthetized, and fiducial pins were inserted into V4 using
the same equipment that had been used to position the microelectrodes.
The animal was then anesthetized with an overdose of barbiturates and
perfused with PBS followed by 4% paraformaldehyde.
Reconstruction of the recording regions based on the pins showed that
all recordings were in V4 in the anterior part of the prelunate gyrus,
dorsal to the end of the inferior occipital sulcus. Deeper recording
made with guide tubes were located on the posterior bank of the
superior temporal sulcus. No reconstruction was made of the V1
recording sites, which were from the opercular region well away from
the vertical meridian representation that defines the V1/V2 border.
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RESULTS |
Effects of attention on orientation-tuning curves
We examined the effects of attention on the orientation tuning of
262 isolated neurons in area V4 in two monkeys. We selected orientation-tuned neurons and excluded an estimated 20% of the neurons
we isolated because we could not drive them differentially with
different orientations of a Gabor. The average rate of firing during
the presentation of the sample stimulus was significantly modulated by
orientation for 85% (223 of 262) of the recorded neurons and by
attention for 55% (145 of 262) of the recorded neurons (two-factor
ANOVA; p < 0.05). Neurons with significant effects for
both orientation and attention made up 47% (122 of 262) of the
neurons, consistent with these properties occurring independently. Most
neurons with significant effects of attention had increased firing
rates in the attended condition (86%; 125 of 145). The
orientation-tuning data were well fit by a Gaussian in both behavioral
conditions for 75% of the neurons (197 of 262; F test;
p < 0.05). We will consider these cells here and take up the remaining cells later.
Data from a neuron showing a clear effect of attention are shown in
Figure 2. The histograms (Fig.
2A) plot the responses around the time the sample
stimulus was presented (shaded). The top row shows the
responses obtained during the attended trials; the bottom row contains
the corresponding data from the unattended trials. Responses to each of
the orientations were stronger when the animal was attending to the
stimulus, with greater response increments for stronger responses.

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Figure 2.
Data from one V4 cell showing enhanced responses
in the attended mode (black) relative to the unattended
mode (gray). A, Histograms showing
the responses elicited by sample stimuli of four different
orientations. The histograms in the top row were taken
from trials when the animal was attending to the receptive field
stimulus, and the histograms in the bottom row were
taken from trials when the animal was attending to the stimulus outside
the receptive field. The average response during the sample period
(shaded) was used to construct tuning curves.
B, Tuning curves were constructed for this neuron for
each task mode by fitting the responses for each condition to a
Gaussian. This cell had a significant increase in amplitude in the
attended mode (solid symbols) relative to the unattended
mode (open symbols), but no significant changes in the
preferred orientation, width, or asymptote. The undriven activity of
the cell during the attended trials is shown in the black dashed
line, and the undriven activity of the cell during the
unattended trials is represented by the gray dashed
line.
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Figure 2B plots the average firing rate of this
neuron as a function of orientation. Gaussians were fitted separately
to the attended and unattended responses by varying four parameters: amplitude, SD, asymptote, and preferred orientation. The amplitude of
the fitted function for the attended condition was 43% greater (57 spikes/sec vs 40 spikes/sec; p < 0.001, Mann-Whitney U test, see Materials and Methods), but there
were no significant changes in the fitted width, asymptote, or
preferred orientation (p > 0.05). This result
was typical of the cells we sampled.
The distributions of change in the tuning parameters for V4 neurons are
displayed in Figure 3. The change in the
amplitude of the orientation-tuning curves associated with attention is shown in Figure 3A. The median ratio in our population is
1.26, indicating that attention systematically strengthened responses to the attended stimuli. This increase was significant (Wilcoxon signed
rank test; p < 0.001). Attention produced individually statistically significant changes in amplitude in 20% of the cells (39 of 197; Mann-Whitney U test; p < 0.05).
These are marked in black in the histogram. All but two of the cells
with significant changes had increases in response strength by
attention. These results are consistent with previous studies
demonstrating that attention increases neuronal firing rate.

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Figure 3.
The changes in the parameters of orientation
tuning by attention are characterized using index values for the
amplitude (A), width (B),
asymptote (C), and the difference in preferred
orientation (D). The index value is the
difference in the fitted Gaussian parameters, (attended unattended) divided by their sum (attended + unattended). The index
value was selected for binning because it is bounded for both positive
and negative changes, but the axis is labeled in the corresponding
ratios. All of the plots display the changes in the fitted parameters
for the 197 V4 neurons whose orientation-tuning curves were well fit by
a Gaussian. Cells showing individually significant changes in a given
parameter are drawn in black.
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One question we sought to answer was whether attention systematically
makes tuning curves narrower, thereby providing a more precise
representation of orientation. Figure 3B shows the change in
orientation-tuning width (SD of the fitted Gaussian) for the population. If attention narrowed tuning curves, the distribution would
be shifted to the left. However, our population is evenly distributed
around a ratio of 1.0, which corresponds to no change in width
(Wilcoxon signed rank test; p > 0.5). Only 9% of the neurons showed individually significant changes in width (Mann-Whitney U test; p < 0.05), and those cells included
about as many width increases as width decreases.
The asymptote of the orientation-tuning curve reflects the responses of
the neurons to the least preferred orientations. Figure 3C
shows the change in the orientation-tuning asymptote with attention. Although the median ratio is 1.0, the population is skewed to the right
and shows a statistically significant increase in asymptote with
attention (Wilcoxon signed rank test; p < 0.005).
Individually significant changes in asymptote were found in 13% (25 of
197; Mann-Whitney U test; p < 0.05) of the
cells, and most of those cells (21 of 25) show increases in asymptote.
The final parameter of the tuning curve is the preferred orientation of
the cell. Figure 3D plots the difference between the preferred orientations for the two conditions. The axes of this plot
are different than those in the other panels. There was no reason to
expect a change in the preferred orientations by attention, and the
median difference in fitted orientation for the two modes was well
under 1° and not significantly different than no change (Wilcoxon
signed rank test; p > 0.29). Only 8% of the cells
showed individually significant changes in preferred orientations
(Mann-Whitney U test; p < 0.05).
Another way to visualize the overall changes in orientation tuning
associated with attention is to construct population-tuning curves for
the two task modes. The responses in Figure
4 were determined by aligning the
responses of each cell on its preferred orientation, normalizing
responses to the response in the attended mode at the preferred
orientation, and then averaging the responses to different stimuli and
task modes across cells. These curves provide a picture of the average
change in orientation tuning produced by attention among
orientation-tuned cells in area V4. They show a 22% increase in
amplitude with attention and a 13% increase in asymptote with
attention, with no appreciable change in the width or preferred
orientation.

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Figure 4.
The population-tuning curves for the V4 neurons
that were tuned in both the attended (solid squares) and
unattended (open circles) task modes. The preferred
orientation for each cell was estimated for the purpose of aligning the
population-tuning curves by smoothing the data sets of each neuron,
fitting Gaussians to the smoothed data for each task mode, and then
averaging the fitted attended and unattended preferred orientations.
Gaussians were then fit to the averaged data for each behavioral mode.
The dashed lines represent the average undriven
activity, measured as the firing rate during the fixation period for
all trials for each task mode, with the darker line
corresponding to the undriven activity during the attended mode and the
lighter line corresponding to the undriven activity
during the unattended mode.
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In summary, attention appears to scale the entire orientation-tuning
function. Table 1 contains the median
fitted values for amplitude, width, and asymptote for the 197 V4 cells
showing orientation tuning in both task modes. The possibility that
differences in fixation or eye movements of the animals across the
behavioral states might contribute to this effect is addressed in a
later section.
Cells that lacked orientation tuning
The preceding analysis treated the 75% of the population that had
statistically significant Gaussian orientation tuning for both the
attended and unattended task modes. Another subset of the V4 neurons
only had acceptable Gaussian tuning fits in the attended mode but not
in the unattended mode. These cells comprised 16% (42 of 262) of the population.
Responses from one such neuron are shown in Figure
5. The fit of the tuning curve is
acceptable in the attended mode (F value of 10.4;
p < 0.001) but not in the unattended mode
(F value of 1.4; p > 0.50). Parameters from
an unacceptable fit usually do not provide meaningful information. For
this neuron, the fitted widths are 53° in the attended condition and
94° in the unattended condition. Taken at face value, these values
suggest a dramatic narrowing of orientation tuning by attention, and
the average width ratio for this subset of cells corresponds to a 51%
narrowing of orientation tuning by attention. This apparent narrowing
is misleading because the data for the unattended condition are
comparably well fit by a straight line, and therefore could be
described as tuning curves that have approached zero amplitude with no
change in width.

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Figure 5.
Tuning curves for a single V4 unit that had
acceptable orientation tuning in the attended mode
(black) but not in the unattended mode
(gray). Same format as in Figure
2B.
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One way to assess whether attention leads to a genuine narrowing of the
low amplitude tuning curves is to improve their signal-to-noise ratio
by averaging their responses before fitting functions to the data.
Figure 6 shows the result of creating
population-tuning curves by averaging the 65 neurons that failed to
meet the criterion for a Gaussian fit in either or both task modes,
using the same methods as in Figure 4. These neurons include 42 cells
with acceptable tuning in the attended mode only, 17 cells that were
not acceptably tuned in either mode, and 6 cells that had acceptable
tuning only in the unattended mode. The combined responses show a large
attention effect, with the amplitude more than doubling. However, the
width of the two curves is not appreciably different.

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Figure 6.
Population-tuning curves for the V4 neurons that
were not well fit by a Gaussian tuning curve in one or both task modes.
Same format as in Figure 4. Both the attended (black)
and unattended (gray) population-tuning curves
reach our criterion for orientation tuning. Although there is a large
difference in amplitude, there is little difference in the width of the
curves.
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Normalized population-tuning curves constructed from all 262 neurons
recorded from area V4, tuned and untuned, are shown in Figure
7A. This figure differs from
Figure 4 in that it includes data from every V4 neuron examined rather
than only those showing significant tuning in both conditions. The
resulting curves show the overall changes in orientation tuning that
attention produces across all cells in V4. Attention leads to a 31%
increase in the amplitude, a 13% increase in the asymptote, and no
appreciable change in width in the population tuning curve.

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Figure 7.
A, The normalized population-tuning
curves for all V4 neurons. Same format as in Figure 4. Although there
is a large difference in amplitude, there is little difference in the
widths of the curves. B, The attended response is
plotted against the unattended response for each of the 12 orientations. The line shown is the linear regression of the attended
responses on the unattended responses. It has a slope of 1.32, corresponding to a 32% increase in response with attention. The pairs
of dashed lines mark ± 1 SEM undriven activity.
The excellent fit (r2 = 1.00) and the
intersection with the undriven activity are consistent with a
multiplicative scaling of the evoked responses.
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Multiplicative scaling
A multiplicative scaling of orientation-tuning curves by
attention, without a change in tuning width, would be reminiscent of
the response changes that have been described in V1 and elsewhere when
a stimulus parameter such as luminance or contrast is varied (see
Discussion). For example, increasing the contrast of a sinusoidal grating typically increases the response of a neuron to all
orientations proportionately, so that a tuning curve constructed from
responses to high-contrast stimuli is a multiplicatively scaled version of one made using lower contrast stimuli (Dean, 1981 ; Sclar and Freeman, 1982 ; Skottun et al., 1987 ).
An amplitude change with no width change is consistent with
multiplicative scaling, but can occur when scaling is not
multiplicative. Whether scaling is multiplicative can be tested by
examining whether the neuronal responses at each orientation change
proportionately. Figure 7B replots the data from Figure
7A, such that the normalized population response in the
attended mode is plotted against the normalized population response in
the unattended mode. If attention causes a proportional change in the
evoked response, these data should be well fit by a straight line. The
slope of a linear regression of the attended responses on the
unattended responses is 1.32, reflecting a 32% enhancement of the
neural responses by attention. The correlation coefficient for these
points is 1.00, strongly supporting the notion that attention produces
proportional changes in the stimulus response. Additionally, the fitted
line intersects the undriven activity of the neurons (dashed
lines), which is also expected if attention produced a
multiplicative scaling of the evoked responses without scaling the
undriven activity of the neurons.
Time course
Several earlier experiments have examined effects of attention on
time course in area V4 using different experimental paradigms. Motter
(1994a) reported a 150-200 msec delay after stimulus onset for the
emergence of an attention effect, using an experiment in which
attention was directed to a particular feature before the onset of a
stimulus array. Other studies separated the effects of attention from
stimulus responses more completely by providing an attention cue that
selects some stimuli from an array after the array is present. In these
studies, attentional effects appeared between 50 and 300 msec after the
attention cue was provided (Motter, 1994b ; Preddie et al., 1995 ;
Bricolo et al., 1997 ; Makous et al., 1997 ). In our experiments, the
animal was cued to attend to a spatial location well before stimulus
onset, so that an attention effect might be present during the earliest
portion of the response.
In Figure 8A, population histograms of the responses
to the preferred orientation of each cell in the attended and
unattended modes are shown. These histograms were constructed by
averaging the responses to the preferred orientation for every neuron
for each task mode. The periodicities in the response correspond to half-cycles of the counterphasing of the Gabor stimulus (4 Hz) that
were visible in the responses of some cells. Figure
8B shows the ratio of the responses in Figure
8A as a function of time. This ratio is a measure of
attentional modulation and slowly rises from the stimulus onset to
reach a value of ~1.5 of the unattended response. The 31% increase
reported above is effectively the time average of this curve. This
time-plot of the attention effect shows that although the relevant
location was known before stimulus onset, the effects began after the
stimulus was presented and increased during the 500 msec stimulus
presentation period.
The results presented in Figure 7B show that attention
systematically and multiplicatively scales responses across
orientations regardless of the magnitude of the response. Another issue
is whether there is a multiplicative scaling for responses to different orientations across time. This can be examined by comparing population histograms of the attended and unattended responses as a function of
orientation. The time course of the ratio of the attended response to
the unattended response for three other orientation differences relative to the preferred orientation are also shown in Figure 8C. The attention input has a
similar time course and reaches approximately the same level of
enhancement for each stimulus condition.

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Figure 8.
The time course of the attentional effect.
A, Population histograms of the activity in response to
the preferred orientation are shown for the attended
(black) and unattended (gray)
modes. The dashed lines indicate stimulus start and
stop. B, The ratio of the attended activity relative to
the unattended activity from the population histograms in
A is shown. C, The ratios for three other
stimulus orientations. The darkest line corresponds to a
stimulus orientations 15° away from the preferred orientation of each
cell, the next darkest line is a stimulus orientation
45° from the preferred orientation, and the lightest
line corresponds to a stimulus orientation 75° from the preferred
orientation. Although these stimuli resulted in responses of different
magnitudes, the attentional modulation has the same time course and
same proportional enhancement.
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Because our task used a block mode in which the animal attended to one
spatial location for at least 26 trials before attention was directed
to the other location, the activity of the cells could have been
modulated by attention during periods when no stimulus was present.
Although the population histograms in Figure 8 suggest that attentional
modulation did not begin until the stimulus appeared, this question can
also be examined in the single cell data. In Figure
9, the undriven activity of each neuron
in the attended mode is plotted against its undriven activity in the
unattended mode. Although 24% of the neurons (63 of 262) showed individually significant changes in undriven activity (t
test; p < 0.05), those changes included a similar
number of increases and decreases (filled
circles). The population also shows no statistically significant difference between the undriven activity in the attended mode and the unattended mode in our task (Wilcoxon signed rank test;
p > 0.5; median 3.6 spikes/sec attended mode, 3.6 spikes/sec unattended mode), and the best fit line has a slope
close to one (slope 0.92; r = 0.98). Thus, the
attention effect was evident in area V4 only in the presence of a
visual stimulus. Luck et al. (1997) reported that spatial attention
increased the undriven activity of V4 neurons by an average of three
spikes per second. Those investigators used a different behavioral task
and found an overall higher level of undriven activity (15 spikes/sec).

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Figure 9.
Undriven activity. The undriven activity for each
neuron, measured as the average firing rate during the fixation period
for the attended mode is plotted against the undriven activity
generated in the unattended mode of the task. The solid
circles are those cells with individually significant changes
in activity (t test; p < 0.05)
across conditions. One V4 cell was excluded because it had zero
undriven activity in one condition.
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Behavioral performance
We found differences in performance of the animals across our two
task modes, with both animals performing worse on orientation (attended
mode) than on color (unattended mode). Collapsed over all
data-collection trials from each animal (but excluding those trials in
which the animal broke fixation or ignored outright), animal A's
performance was 83% on the orientation-matching task and 92% on the
color-matching task, and animal B's performance was 82% on the
orientation-matching task and 88% on the color-matching task. The
difficulty of each task depends on how different the nonmatching
stimulus is from the matching stimulus. For the orientation task, this
is primarily determined by the rotation between the sample and test
orientations. This rotation was 45° for animal A and 90° for animal
B. We fixed the orientation difference and then tried to adjust the
animal's performance in the color task to a similar level. The color
stimuli were selected to be isoluminant with the gray background
screen. Five sample colors were available: pink, red, yellow, green,
and cyan. The test colors were created by slightly changing the sample
hue. We were unable to adjust the color difference finely enough to
balance the performance on the color task with that on the orientation task.
Because differences in task difficulty alone can produce attention
effects (Spitzer et al., 1988 ; Spitzer and Richmond, 1991 ), we were
interested in whether the attention effect that we measured could be
caused by the difference in difficulty across task modes. One approach
to this question is to determine whether cells showing the largest
attentional modulations were those recorded while the animal had large
differences in performance between the task modes. Because the Gabor
stimulus was repositioned and reconfigured for each cell, behavioral
performance varied from cell to cell. An attentional modulation index
(attended amplitude unattended amplitude)/(attended amplitude + unattended amplitude) and a performance index (attended
performance unattended performance)/(attended performance + unattended performance) were calculated for each cell. Although the
correlation was low, it was significant (r = 0.13;
p = 0.04), but it was opposite to the direction
expected if the attention effect depended on difficulty. This suggests that the attentional modulation described here stemmed mainly from
selective attention for either spatial location, stimulus feature
(color or orientation), or both.
Effects in area V1
We obtained orientation-tuning data from 135 V1 neurons. These
data provide information about whether attentional modulations exist in
the earliest level of cortical processing. Another reason for acquiring
the V1 data were to provide an estimate of the magnitude of task
effects that might be attributable to small differences in eye
position. In principle, eye movements within a 1° fixation window can
change neuronal responses. Because the small V1 receptive fields can be
extremely sensitive to stimulus offsets (De Valois et al., 1982 ), V1
neurons should be more susceptible to artifacts from small eye
movements than neurons in areas like V4. Data from V1 can therefore
serve as an upper estimate of possible eye movement contributions to
the V4 data.
The V1 data were collected before recording the V4 data from each
animal. This is relevant because both animals' fixation improved as
recording progressed. The first animal had an average eye position
difference across the two tasks of 0.09° during the V1 data
collection period but only a 0.04° eye position difference during the
V4 data collection period. For our stimuli, a 0.09° offset
corresponds to 4.1 pixels on the stimulus monitor; the fixation target
was 8 × 8 pixels. The eye position offset across the tasks
usually brought the animal's fovea closer to the target it was
attending. The second animal had an average eye position difference of
0.10° during the V1 data collection period and a 0.05° eye position
difference during the V4 data collection period. This animal's eye
position offset across the tasks was not as dependent on the location
of the attended stimulus, but appeared to be a stereotyped systematic
fixation offset at two different locations for the two task modes.
Thus, the V1 data are probably more likely to contain eye position
artifacts that the V4 data, not only because V1 cells are more prone to
artifacts but also because the animals offset their fixation more when
the V1 data were collected.
The V1 data set shows small differences in the responses obtained
during the two tasks. Attended and unattended orientation-tuning curves
were recorded from 135 V1 neurons. As in V4, we selected for
orientation-tuned cells and did not collect data from ~20% of the
cells we isolated. The average rate of firing during the presentation
of the sample stimulus was significantly modulated by orientation for
99% (134 of 135) of the neurons and by attention for 31% (42 of 135)
of the neurons (two-factor ANOVA; p < 0.05). Of the
units showing significant task modulation, 83% (35 of 42) exhibited
increased responses in the attended condition. The orientation-tuning data were well fit by a Gaussian in both behavioral conditions (F test; p < 0.05) for 125 neurons. For these cells, we found that attention led to an 8%
increase in tuning curve amplitude (Wilcoxon signed rank test;
p < 0.001), a 1% increase in width (Wilcoxon signed
rank test; p > 0.15), no change in asymptote (Wilcoxon
signed rank test; p > 0.3), and no change in preferred orientation (Wilcoxon signed rank test; p > 0.5). A
summary of the single cell data are provided in Table
2. The V1 population tuning curves in
Figure 10 show a 6% increase in
amplitude, an 8% increase in asymptote, and a 1% increase in width
with attention. Other studies have reported attentional effects of
comparable magnitude in area V1 (Motter, 1993 ; Press and Van Essen,
1997 ).

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Figure 10.
The population-tuning curves for V1 neurons for
the attended (black solid squares) and unattended
(gray open circles) task modes. Only 124 of the
total 135 V1 neurons recorded could be used to construct these
population-tuning curves because we used a 10° sample spacing for 11 finely tuned V1 neurons, rather than the 15° sample spacing used for
all V4 and most of the V1 neurons. The dashed line
indicates the relative magnitude of the undriven activity, which did
not differ across the conditions. The overall increase in response
amplitude in V1 was ~6%.
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We cannot be sure whether our V1 effects are caused by eye position
differences or whether they represent an attention effect. However, we
can take the size of these V1 effects to be an upper limit on the size
of effects that might be attributable to eye position artifacts for
this particular data set. Because the measured median task effect in
area V4 was approximately threefold greater than the task effect in
area V1, we believe that the task effect in area V4 is caused by an
extraretinal signal.
The systematic increase in responses in the attended mode hints that
the V1 change arises from attention, because eye movements should not
generally have a systematic effect. It would be unsafe to draw that
conclusion, however. Although the receptive field was mapped while the
animal was only fixating, many V4 neurons do not respond well during
passive fixation (Maunsell et al., 1991 ). The Gabor was moved if it did
not appear to be driving the cell well while the animal performed the
task. Because instruction trials for the unattended mode do not present
a stimulus in the receptive field, adjustments to the position of the
Gabor stimuli were usually performed while the animal attended to the
Gabor. Therefore, the stimulus may have been more optimally positioned for the fixation position occurring in the attended mode, leading to
increased responses for the attended mode relative to the unattended mode.
 |
DISCUSSION |
Orientation selectivity
A primary goal of these experiments was to determine whether
attention altered the orientation selectivity of neurons in macaque area V4. Our task revealed attentional modulation of the amplitude and
the asymptote of orientation-tuning curves in area V4, but there was
little evidence for change in the width of tuning. The principal action
of attention appeared to be a multiplicative scaling of responses.
Previous studies of V4 suggested that attention narrows
orientation-tuning and color-tuning curves (Haenny and Schiller,
1988 ; Spitzer et al., 1988 ). Although there are several sources that may contribute to this discrepancy, the main factor is likely to be the
definition of width. Both earlier studies measured tuning curve width
at some fraction of the peak of the curve, without compensating for the
asymptote of the fitted curves, which will be nonzero if there is
undriven activity or a response to the least preferred orientation. In
the presence of a nonzero asymptote, this measure will yield narrower
widths when responses above undriven activity increase proportionately.
This behavior is illustrated in Figure
11A. The tuning
curves in the top panels are multiplicatively scaled versions of the
tuning curves in the bottom panel. The peak of each curve is measured
as the height above either the undriven activity or a spike rate of
zero (either represented by the x-axis). The half-width
measured at half-height is larger in the bottom panel than in the top
panel. This change in measured width will occur whenever there is a
response to the least preferred orientation (tuning curve asymptote is
above undriven activity). The measure we have used is the SD of a
fitted Gaussian, that is, the curve width at a fraction between the
maximal height and the base of the curve. This measure preserves width
when responses increase proportionately. In Figure
11B, the height is measured as the amplitude of the
Gaussians and is the difference between the peak response and the
asymptote responses (dotted line). The half-width, measured at half-height, is the same in the top and bottom
panels.

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Figure 11.
Effects of changes in response strength on
different measures of width. The top panels are
multiplicatively scaled versions of the tuning function in the lower
panels. A, Height measured relative to undriven activity
or zero activity. The vertical double-headed
arrow is the assigned height of each curve, at which the
x-axis represents either undriven activity or no
activity. The horizontal double-headed
arrow is the half-width at half-height. The width differs for
the two curves (vertical dashed line). B,
Height measured relative to the asymptote of the tuning function. The
vertical double-headed arrow is the
assigned height of each curve, at which the dotted line
represents the asymptote of the tuning function. The horizontal
double-headed arrow is the half-width at
half-height. The width is the same for the two curves (vertical
dashed line).
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Multiplicative scaling
A multiplicative scaling of neuronal responses by attention is
significant because this effect is also seen when stimulus parameters
are manipulated. For example, changing the stimulus contrast can cause
large changes in neuronal responses, but typically does not change the
preferred orientation or sharpness of tuning. Instead, the
orientation-tuning curve is scaled as contrast changes. Pairwise
studies of many stimulus dimensions have shown this type of behavior.
These include contrast and orientation or direction of motion (Dean,
1981 ; Sclar and Freeman, 1982 ; Skottun et al., 1987 ); contrast and
spatial frequency (Dean, 1981 ; Holub and Morton-Gibson, 1981 ; Albrecht
and Hamilton, 1982 ; Skottun et al., 1987 ; Geisler and Albrecht, 1997 );
contrast and spatial position (Geisler and Albrecht, 1997 ); orientation
and direction of motion (Geisler and Albrecht, 1997 ); and spatial
frequency and temporal frequency (Ikeda and Wright, 1972 ; Tolhurst and
Movshon, 1975 ; Holub and Morton-Gibson, 1981 ; Bisti et al., 1985 ;
Foster et al., 1985 ; Galli et al., 1988 ; Hamilton et al., 1989 ; Friend
and Baker, 1993 ; McLean and Palmer, 1994a ,b ). One exception is
direction selectivity, in which the responses to space and time that
generate direction selectivity are not separable (Adelson and Bergen,
1985 ). Other neurons have sensitivities to spatial and temporal
frequencies that interact, as in the case of preferring a particular
speed (Ikeda and Wright, 1972 ; Foster et al., 1985 ; Friend and Baker, 1993 ). But even for those neurons, the interactions are often separable
within individual quadrants of the frequency domain (Hamilton et al.,
1989 ; McLean and Palmer, 1994a ,b ). Despite these exceptions,
multiplicative scaling seems to be the most common type of interaction
among stimulus attributes.
The current results suggest that the interactions between sensory
signals and attentional modulations may also be multiplicative. Multiplicative scaling only affects responses to sensory stimuli; the
undriven activity of the neuron was not changed by attention. Other
types of extraretinal inputs to visual cortex also appear to cause a
multiplicative scaling of sensory responses: signals related to the
angle of gaze appear to scale receptive field profiles of neurons in
posterior parietal cortex (Andersen et al., 1985 ); behavioral
differences between reward contingent and nonreward contingent stimuli
scale orientation-tuning curves in inferotemporal cortex (Vogels,
1994 ); and receptive field profiles of V4 neurons appear to scale
multiplicatively when attention is directed to different points around
the receptive field (Connor et al., 1996 , 1997 ). Thus, multiplicative
scaling might be a normal mode of interaction between all inputs to
cortex. Although mechanisms that would produce multiplicative scaling
have been described (Albrecht and Geisler, 1991 ; Carandini and Heeger,
1994 ), it is not known why such separability of response sensitivities
may be important for cortical processing. Nevertheless, the
phenomenological similarity between the effects of attention and the
effects of stimulus manipulations raises the possibility that attention
involves neural mechanisms that are similar to those used in processing ascending signals from the retinas, and that cortical neurons treat
retinal and attentional inputs equivalently.
There is an important counterexample to multiplicative scaling by
attention. The effects of attention on the spatial tuning of V4 neurons
(i.e., the receptive field profile) has been examined in two studies.
Moran and Desimone (1985) positioned two stimuli in the receptive field
of a V4 neuron and directed the animal's attention to one of the
stimuli. The neural responses were consistent with the idea that
attention caused the receptive field to shrink around the attended area
of space. This would alter receptive field profile in a way
inconsistent with multiplicative scaling. Support for this hypothesis
was provided by Connor et al. (1996 , 1997 ), who measured the neuronal
responses to a bar placed at different locations within the receptive
field while directing the animal's attention to different areas
adjacent to the receptive field. Their results suggested that the
receptive field of the neuron shifted toward the attended location.
It remains to be seen whether this shift in the receptive field profile
represents a different mode of action for attentional modulation. It is
important to note that this effect could arise from a multiplicative
scaling of attention of the receptive fields of cortical neurons in
earlier stages of cortex. Receptive fields of cortical neurons increase
in size in later stages of cortical processing, because of the
convergence of inputs from preceding visual areas. Because attention
can be localized to a specific spatial location (Posner, 1980 ; Eriksen
and St. James, 1986 ), attention might only modulate responses of
neurons whose receptive fields overlap that location. The site of
action of attention might be earlier in visual cortex when a small
domain is attended and later in cortex when a large domain is attended.
But what happens if we record from a neuron whose receptive field size is greater than the size of the location to which attention was directed? That neuron will receive inputs from neurons whose responses were enhanced by attention, as well as inputs from neurons whose responses were not altered by attention because their receptive field
did not contain the attended location. The experimenter will measure a
shift in the receptive field profile toward the attended location
because the inputs from the attended location will have been enhanced
by attention relative to the inputs from the unattended location.
Although the immediate effect of attention was a multiplicative
scaling, the consequences at later stages would not be.
This hypothesis assumes that attention can selectively target either
cells at earlier stages of visual processing with smaller receptive
fields or target the inputs to a neuron that arrive from different
spatial locations. Area V4 is relatively early in sensory processing,
but inputs arriving from area V2 or area V1 may show some attentional
modulations. Our experiments found that 31% of the V1 neurons were
modulated by attention, and others have reported similar results
(Motter, 1993 ; Press and Van Essen, 1997 ). A spatial shifting of V4
receptive fields may be caused by the asymmetry that arises in the
inputs to the V4 cells, when some of those inputs cover an enhanced or
attended location, and others arise from neighboring unattended regions.
The current experiments have shown that attention causes a
multiplicative scaling of orientation-tuning functions in area V4.
Because multiplicative scaling is also seen in the interactions of many
stimulus dimensions with each other, it is likely to represent an
important aspect of cortical signaling. It will be important to
determine whether the result is general to other tasks, stimulus dimensions, and areas. If extraretinal and retinal inputs routinely use
similar mechanisms to modulate neuronal responses, characterizing the
integration of behavior and sensory signals might be greatly simplified.
 |
FOOTNOTES |
Received June 17, 1998; revised Oct. 15, 1998; accepted Oct. 20, 1998.
This work was supported by the National Institutes of Health (Grants
RO1 EY05911, T32 EY07001, T32 GM07330, and T32 GM08507 to C.J.M.).
J.H.R.M. is a Howard Hughes Medical Institute Investigator. We thank D. Sparks, E. Cook, C. E. Boudreau, and G. Ghose for helpful comments
on preliminary versions of this manuscript. We also thank C. E. Boudreau, R. Diaz, and B. Noerager for help with training the animals
and other technical assistance.
Correspondence should be addressed to Carrie J. McAdams, Division of
Neuroscience, Baylor College of Medicine, One Baylor Plaza, Houston, TX 77030.
 |
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Y. Shu, A. Hasenstaub, M. Badoual, T. Bal, and D. A. McCormick
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B. K. Murphy and K. D. Miller
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D. A. McCormick, Y. Shu, A. Hasenstaub, M. Sanchez-Vives, M. Badoual, and T. Bal
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N. K. Logothetis
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S. R. Friedman-Hill, L. C. Robertson, R. Desimone, and L. G. Ungerleider
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D. S. Marcus and D. C. Van Essen
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G. M. Ghose, T. Yang, and J. H. R. Maunsell
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S. Corchs and G. Deco
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M. C. Wiener, M. W. Oram, Z. Liu, and B. J. Richmond
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B. T. Backus, D. J. Fleet, A. J. Parker, and D. J. Heeger
Human Cortical Activity Correlates With Stereoscopic Depth Perception
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E. Salinas and T. J. Sejnowski
Book Review: Gain Modulation in the Central Nervous System: Where Behavior, Neurophysiology, and Computation Meet
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October 1, 2001;
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L. Chelazzi, E. K. Miller, J. Duncan, and R. Desimone
Responses of Neurons in Macaque Area V4 During Memory-guided Visual Search
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P. Fries, J. H. Reynolds, A. E. Rorie, and R. Desimone
Modulation of Oscillatory Neuronal Synchronization by Selective Visual Attention
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E. Salinas, A. Hernandez, A. Zainos, and R. Romo
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A. C. Huk and D. J. Heeger
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K. Sakai, O. Hikosaka, R. Takino, S. Miyauchi, M. Nielsen, and T. Tamada
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C. J. McAdams and J. H. R. Maunsell
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G. H. Recanzone and R. H. Wurtz
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W. Li, P. Thier, and C. Wehrhahn
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W. Vanduffel, R. B.H. Tootell, and G. A. Orban
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