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The Journal of Neuroscience, June 1, 2002, 22(11):4675-4685
Priming in Macaque Frontal Cortex during Popout Visual Search:
Feature-Based Facilitation and Location-Based Inhibition of Return
Narcisse P.
Bichot1 and
Jeffrey D.
Schall2
1 Laboratory of Neuropsychology, National Institute of
Mental Health, National Institutes of Health, Bethesda, Maryland 20892, and 2 Vanderbilt Vision Research Center, Department of
Psychology, Vanderbilt University, Nashville, Tennessee 37240
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ABSTRACT |
In popout search, humans and monkeys are affected by trial-to-trial
changes in stimulus features and target location. The neuronal
mechanisms underlying such sequential effects have not been examined.
Single neurons were recorded in the frontal eye field (FEF) of monkeys
performing a popout search during which stimulus features and target
position changed unpredictably across trials.
Like previous studies, repetition of stimulus features improved
performance. This feature-based facilitation of return was manifested
in the target discrimination process in FEF: neurons discriminated the
target from distractors earlier and better with repetition of stimulus
features, corresponding to improvements in saccade latency and
accuracy, respectively. The neuronal target selection was mediated by
both target enhancement and distractor suppression. In contrast to the
repetition of features, repetition of target position increased saccade
latency. This location-based inhibition of return was reflected in the
neuronal discrimination process but not in the baseline activity in FEF.
These results show adjustments of the target selection process in FEF
corresponding to and therefore possibly contributing to changes in
performance across trials caused by sequential regularities in display properties.
Key words:
visual cortex; vision; attention; selection; eye
movements; oculomotor
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INTRODUCTION |
The selective nature of gaze
behavior has been shown elegantly by Yarbus (1967) , among other
researchers (for review, see Viviani, 1990 ; Liversedge and Findlay,
2000 ), by recording the eye movements of subjects viewing natural
images. The same type of selective visual behavior is also observed in
nonhuman primates such as macaque monkeys (Keating and Keating, 1993 ;
Burman and Segraves, 1994 ; Sheinberg and Logothetis, 2001 ). To a large
extent, the properties of the stimuli in the image guide behavior, and gaze, like attention, focus on parts of a visual scene that are conspicuous or that are informative with respect to the viewer's goals. For example, items that differ from their neighbors attract gaze. In addition to such bottom-up influences, top-down influences such as knowledge of what to look for affects gaze. Neuronal mechanisms of visual selection based on both bottom-up and top-down factors have
been investigated (for review, see Maunsell, 1995 ; Braun et al.,
2001 ).
The gaze performance of both humans and monkeys is affected by visual
experience (Bichot et al., 1996 ; Bichot and Schall, 1999a ; Dorris et
al., 1999 ; McPeek et al., 1999 ; McPeek and Keller, 2001 ). An example of
such rapid changes in behavior caused by previous experience is the
well known priming of popout (Bravo and Nakayama, 1992 ; Maljkovic and
Nakayama, 1994 , 1996 ). This robust effect manifests itself as an
improvement of behavioral performance (e.g., shorter reaction time and
higher accuracy) with the repetition of target and/or distractor
features or of target position over consecutive trials. Furthermore,
this effect has been shown consistently to have a short time course of
5-10 trials, or ~30 sec. Neuronal mechanisms of such rapid
behavioral adjustments during visual search over the course of a few
trials have not been investigated.
We have presented behavioral evidence that monkeys exhibit
feature-based priming of popout (Bichot and Schall, 1999a ). Here, we
report results from single-neuron recordings in the frontal eye field
(FEF) of monkeys trained to perform popout visual search tasks during
which short-term priming is typically observed. We have previously
shown that FEF exhibits the characteristics of a visual salience map in
which the behavioral relevance of stimuli is represented (for review,
see Bichot, 2001a ; Thompson et al., 2001 ). This conclusion was reached
based on neuronal modulation in FEF during both bottom-up (Thompson,
2001 ) and top-down (Bichot, 2001b ) visual search tasks, and is
consistent with the findings of brain imaging and lesion studies of
covert attention and overt saccade production in humans (Nobre et al.,
1997 ; Corbetta, 1998 ; Mesulam, 1999 ; Donner et al., 2000 ). Here, we
investigated the neuronal mechanisms underlying changes of performance
during popout visual search caused by the repetition of stimulus
features and target position. Also, based on measures of neuronal
modulation, we evaluated the relative contribution of target
representation enhancement and distractor representation suppression to
the priming of popout.
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MATERIALS AND METHODS |
Subjects and physiological procedures. Data were
collected from one Macaca mulatta and one Macaca
radiata, weighing 9 and 7 kg, respectively. The animals were cared
for in accordance with the National Institutes of Health Guide for the
Care and Use of Laboratory Animals and the guidelines of the Vanderbilt
Animal Care Committee. The surgical procedures for the subconjunctival implantation of a scleral search coil, for the attachment of a stainless steel post to the skull to restrain the head during testing,
and for the craniotomy and the placement of a recording chamber over
FEF, have been described previously (Schall et al., 1995b ;
Thompson et al., 1996 ). All surgical procedures were performed with the
use of sterile techniques.
Behavioral procedure. The experiments were under the control
of two personal computers using software developed by Reflective Computing (St. Louis, MO), which presented the stimuli, recorded action
potentials and eye movements sampled at 1 kHz and 250 Hz, respectively,
and delivered the juice reward. Monkeys were seated in an enclosed
chair within a magnetic field to monitor eye position with a scleral
search coil. Stimuli were presented on a video monitor (70 Hz
non-interlace, 800 × 600 resolution) viewed binocularly at a
distance of 57 cm in a dark room. The background was uniform dark gray
[Commission Internationale de l'Eclairage (CIE)
x = 205, y = 234; luminance, 0.1 cd/m2], and the fixation spot was a white
(30 cd/m2) square. For monkey F, the
stimuli were either red (CIE, x = 623, y = 339) or green (CIE, x = 277, y = 611) filled squares matched for luminance (5.8 cd/m2). For monkey C, the stimuli were
either red (CIE, x = 621, y = 345) or
green (CIE, x = 279, y = 615) matched
for luminance (2.3 cd/m2), and could be
either crosses or outline circles.
Each experimental session started with a block of ~150 detection
trials that were used to map the response field of neurons. Each
detection trial began with the presentation of a central fixation
point. After an interval of fixation (~500 msec), the target stimulus
was presented, and monkeys were rewarded for making a single saccade to it.
For monkey F, the procedure for popout search trials (Fig.
1A) was essentially the
same as for the detection trials except that the target was presented
among three distractors that differed from it in color (i.e., red
target among green distractors or green target among red distractors).
The stimuli, spaced evenly on the circumference of an imaginary circle
around the central fixation point, were placed such that one stimulus
always fell in the center of the receptive field of the neuron. The
color of the target and distractors switched across trials with a
probability of 50 or 33%, or in blocks of 10 trials; the three
different switch probabilities were pseudorandomly intermixed within
each recording session. The monkey was rewarded for making a single
saccade to the target and maintaining gaze at its position for 500 msec. If the monkey broke fixation before stimulus presentation, made a
saccade to a location other than the target, made a saccade to the
target but failed to fixate it for the prescribed period, or did not
initiate a saccade within 2 sec of target presentation, the trial was
immediately aborted, and the monkeys failed to receive the liquid
reward. All stimuli were removed from the screen ~40 msec after a
trial was aborted. This undermined an analysis of subsequent saccades
but encouraged monkeys to find the target on the first saccade.

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Figure 1.
Popout search task. Example sequences of four
trials are shown for monkey F (A) and monkey C
(B). The monkeys' task was to shift gaze to the
target stimulus defined as the color singleton. The
arrow represents the saccade to the target. Stimuli are
not drawn to scale.
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For monkey C, the procedure for popout search trials (Fig.
1B) was different than for monkey F in that the
properties of the target remained the same within a daily session. This
was necessary because data from conjunction search was also being
collected from this monkey, which required the target to remain
constant within a session (Bichot and Schall, 1999a ,b ). For this
monkey, the priming effect was generated by changing the dimension of the popout search in blocks of 10 trials from a color search (i.e., distractors were of the same shape as the target but their color was
different) to a shape search (i.e., distractors were of the same color
as the target but their shape was different). The target was presented
among three or five distractors. The stimuli were again spaced evenly
on the circumference of an imaginary circle around fixation and were
placed such that one stimulus always fell in the center of the
receptive field of a neuron.
On average, monkeys ran ~800 popout search trials while recordings
were made from each neuron. Example sequences of popout search trials
for monkeys F and C are shown in Figure 1, A and B, respectively. In both these sequences, the second trial
represents the first trial after a feature switch, and the next trial
represents the second trial after the feature switch; the last trial of
the sequence in Figure 1A represents another first
trial after a feature switch, and the last trial of the sequence in
Figure 1B represents the third trial after the
feature switch. Also, in both these sequences the second and third
trials represent first trials after a target position change, and the
last trial represents the second trial after a target position change
(i.e., the target remained in the same position for one trial).
Analysis of the time course and magnitude of neuronal
discrimination. We used a method adapted from signal detection
theory (Green and Swets, 1966 ) to determine when and to what degree the activity of neurons discriminated the target from distractors. This
method was previously described in Thompson et al. (1996) . Briefly, we
first generated the spike density function for each correct trial by
convolving action potentials with a function that resembled a
postsynaptic potential. Spikes occurring after saccade initiation were
not included in the calculation of the spike density functions. We then
compared, for each neuron separately, the distribution of discharge
rates during trials when the target fell in its response field to the
distribution of discharge rates during trials when a distractor fell in
its response field. The comparison was conducted in nonoverlapping 5 msec bins starting at the time of search array presentation. The
separation of the two distributions of activity at each time interval
was quantified by calculating receiver operating characteristic (ROC)
curves (Green and Swets, 1966 ; Macmillan and Creelman, 1991 ) (see also Bradley et al., 1987 ; Britten et al., 1992 ). Points on the ROC curve
were generated by plotting the fraction of trials when the target was
in the response field with activity greater than a criterion as a
function of the fraction of trials when a distractor was in the
response field with activity greater than that criterion. The entire
ROC curve was generated by incrementing the criterion from zero to the
maximum discharge rate observed on a single trial in steps of 2 spikes/sec. The area under the ROC curve represents a quantitative
measure of the separation of the two distributions of activity. An area
under the ROC curve value of 0.5 signifies that the two distributions
being compared are completely overlapping (i.e., indistinguishable),
whereas a minimum value of 0.0 or a maximum value of 1.0 signify that
the two distributions do not overlap at all (i.e., perfectly
distinguishable). Thus, the neuronal discrimination process was
quantified by plotting the area under the ROC curve as a function of
time. Finally, to describe the growth in the area under the ROC curve
over time, the data were fit with a cumulative Weibull function:
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where t is time from stimulus presentation,
and are the maximum and minimum
asymptotic levels of discrimination, respectively, is
the time at which the curve reaches 64% of its full growth, and
is the slope.
To compare the time course and magnitude of neuronal discrimination to
the behavioral effect of changing stimulus features or changing the
target position, we conducted the above analysis as a function of the
trial number after a feature or target position change. The magnitude
of the neuronal discrimination for each condition was represented by
the maximum asymptotic level reached by the area under the ROC curve
(i.e., the parameter of the cumulative Weibull fit).
Potential changes in baseline neuronal discrimination were investigated
using the minimum asymptotic level of the area under the ROC curve
after stimulus presentation and before the discrimination process took
place (i.e., the parameter of the cumulative Weibull
fit). The time of target discrimination was determined as the time when
the fitted area under ROC curve values reached a threshold level.
Because the maximum, and to some extent the minimum, asymptotic level
varied across conditions, we determined the threshold level separately
for each neuron. The threshold level for each neuron was computed as
the midpoint between the largest of the minimum asymptotic levels
(i.e., the parameter of the cumulative Weibull fit)
across conditions and the smallest of the maximum asymptotic levels
(i.e., the parameter of the cumulative Weibull fit)
across conditions. This allowed us to compute the time of target
discrimination while neuronal selection was in its transition state
during all conditions.
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RESULTS |
We recorded from 78 neurons in 73 sessions while monkeys performed
a popout search. Of these neurons, 59 had activity that modulated
during the task and provided enough data for both the analysis of the
effect of target and/or distractor feature change and the analysis of
the effect of target position change. Forty-one of the neurons included
in the analyses came from monkey F, and 18 came from monkey C. Behavioral observations were limited to trials during which these
neurons were recorded to allow for a direct comparison between behavior
and neuronal modulation.
Feature-based facilitation of return
The effect of changing the target and/or distractor features on
behavioral performance is shown in Figure
2 for the two monkeys combined. As the
number of trials with the same stimulus features increased, performance
improved in that saccade latency during correct trials decreased (Fig.
2A) (Page test for ordered alternatives, zL = 13.8, p < 0.0001) and accuracy increased (Fig. 2B)
(zL = 13.2; p < 0.0001) significantly. Clearly, the largest combined effect was
observed on the first trial after the feature change, with an average
difference of 32.8 msec in saccade latency and 13.4% in accuracy
compared to the second trial after the change. Furthermore, the benefit
obtained from the repetition of the target and distractor features
appeared to asymptote after approximately five trials. Thus, the data
for trials starting from the fifth after the feature change were
combined with a resulting average trial separation from the feature
change of 7.4 across the data set. For these trials, the average median
saccade latency across all the sessions was 211.9 msec, and the average
accuracy was 91.0%, an improvement of ~55 msec in saccade latency
and 25% in accuracy compared with the first trial after the change.
However, note that accuracy on the first trial after the change was
still considerably better than chance (in fact, it was never below
chance during any session) (see Fig. 5A).

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Figure 2.
Effect of feature change during popout search on
performance. The average of median saccade latency
(A) and of accuracy (B)
across recording sessions is plotted as a function of trial number
relative to the change of stimulus features. Data from five or more
trials after the change were combined and are represented by the last
point in each plot. The average relative separation of these trials
with respect to the feature change was 7.4. Note that accuracy always
exceeded chance probability of choosing correctly the target, which was
25% for a display with four items.
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The observations above held true for both monkeys, and the effect of
feature changes during popout search was significant for each monkey
considered separately (monkey F, saccade latency: zL = 11.9, p < 0.0001; accuracy:
zL = 11.5, p < 0.0001; monkey C,
saccade latency, zL = 7.1, p < 0.0001; accuracy: zL = 6.7, p < 0.0001). Although the overall effect of feature change on saccade
latency and accuracy was somewhat smaller for monkey C, the data
from the two monkeys were combined for most of the analyses because
there were no qualitative differences in the conclusions reached from
each data set separately.
The activity of one FEF visuomovement neuron during this task is shown
in Figure 3. On the first trial after the
feature change, this neuron responded with a latency of ~55 msec
after the appearance of the search array (Fig. 3A). This
neuron initially did not discriminate the target from distractors in
its response field, but its activity evolved to signal the location of
the oddball target before saccades were generated. We quantified the
time course and magnitude of the discrimination process using a method
adapted from signal detection theory (see Materials and Methods). The
result of this analysis is shown in the rightmost column of Figure 3.
Initially after the search array presentation, values of the area under the ROC curve remained around 0.5, which reflects the inability of the
neuron to distinguish target from distractors. However, at ~200 msec
after search array presentation, the values increased sharply and then
asymptoted reflecting the transition of the neuron to a state in which
the target location has been identified. From the cumulative Weibull
function fit, the time of target discrimination was determined to be
217 msec, and the asymptotic maximum level of discrimination was
determined to be 0.72. During recordings from this neuron, the median
saccade latency on the first trial after the feature change was 301 msec, and the accuracy was 61.5%.

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Figure 3.
Effect of feature change during popout search on
the activity of one FEF visuomovement neuron. Activity is shown as a
function of trial number after the feature change laid out in rows
(A-E). Thus, each row represents an
increasing relative trial position with respect to the feature change,
with the first row (A) representing
activity during the first trial after the change, and the last
row (E) representing activity during the
fifth trial after the change. Trials after the fifth following the
change were not included for illustration purposes. The
first and second columns show raster plots of the
activity of the neuron when the target or a distractor of the search
array was in its response field (RF),
respectively. In these plots, each dot represents the
time at which an action potential was recorded, each
line of rasters represents the activity
on one trial, and the horizontal line in each
raster indicates the time of saccade initiation.
Rasters are aligned on the time of search array presentation
at time 0 (vertical dashed lines) and are sorted by
increasing saccade latency. Superimposed on each raster plot is the
average spike density function plotted up to the mean saccade latency;
the ordinate scale represents the discharge rate. Only
correct trials and spikes that occurred before saccade initiation were
used in the computation of the spike density functions and all
subsequent analyses. The spike density function of the neuron when the
target (black) and distractors
(gray) of the search array fell in its receptive
field are superimposed in the third column. The
rightmost column shows the result of the ROC analysis
comparing the distribution of discharge rates during trials when the
target fell in the response field of the neuron to the distribution of
discharge rates when distractors fell in its response field. In each
plot, the vertical dotted line with an
arrow pointing toward the abscissa marks the
time of target discrimination, which was calculated based on a common
threshold used across all trial repetition conditions (see Materials
and Methods). The top right corner of each plot shows
the percentage of trials the monkey performed correctly for that
condition while the neuron was recorded; the arrowhead
above the abscissa marks the median saccade latency for that
condition.
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In trials increasingly removed from the feature change (Fig.
3B-E), both the time course and magnitude of the target
selection exhibited by this neuron changed in parallel with the changes in the monkey's performance. Although the latency of the initial response of the neuron did not change, and the initial response was
still not selective, target discrimination occurred increasingly earlier, and the asymptotic level of discrimination was higher. From
the second to the fifth trial after the feature change, the time of
target discrimination was 131, 125, 117, and 120 msec, respectively.
The median saccade latency for these conditions was 244, 221, 220, and
218 msec, respectively. Thus, changes in the time of target
discrimination for this neuron predicted changes in the median saccade
latency caused by the feature change. Similarly, the asymptotic
discrimination level was 0.76, 0.80, 0.88, and 0.89, respectively,
corresponding to the increasing accuracy.
To determine how well the dynamics of the selection process in FEF
predicted changes in saccade latencies caused by the feature change,
for each neuron we computed the total least-squares regression between
the measured time of target discrimination and the median saccade
latency across the five trial repetition conditions with respect to the
feature change described in Figure 2. We then converted the slope of
the regression to an angular value. Thus, an angle of 45° (slope of
1) signifies a one-to-one relationship between the change in the time
of neuronal target discrimination and the change in median saccade
latency. On the other hand, a slope of 90° (infinite slope) signifies
that the change in the time of neuronal target discrimination cannot
predict the change in median saccade latency. For the neuron in Figure
3, the angle of the total least-squares regression between these two
measures was 40.0°.
We applied this regression analysis to all 59 neurons; the resulting
total least-squares regression lines are shown in Figure 4A. The distribution of
the angles of these lines is shown in Figure 4B. For
the majority of neurons, the change in time of target discrimination
predicted well the change in median saccade latency (i.e., slopes of
~45°). Also, there was no evidence of bimodality in the
distribution of the slopes. Using circular statistics (Batschelet,
1981 ), the average slope was determined to be 44.2°. A
V-test was performed on the angular data to determine
whether the observed angular slopes clustered around the criterion
slopes of 45° (i.e., perfect predictability) and 90° (i.e., no
predictability). The angles of the lines were significantly clustered
around 45° (V(45°)58;
u = 8.7; p < 0.0001), but not around
90° (V(90°)58; u = 0.3). Thus, the observed angles deviate significantly from randomness
and reveal a strong relationship between the time of neuronal target
discrimination and median saccade latency across stimulus feature
repetition. On average across all trial conditions, the time of
neuronal target discrimination preceded the median saccade latency by
~82 msec.

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Figure 4.
Summary of the relationship between the effect of
changing stimulus features on the time course of neuronal
discrimination and on saccade latency. For each neuron, we plotted the
median saccade latency for each of the five groups of trials described
in Figure 2 as a function of the time of neuronal target discrimination
for that group of trials (see Materials and Methods). We then
determined the total least-squares best-fit line across those five data
points. The resulting line for each neuron is plotted in the
left panel (A). The right
panel (B) shows the distribution
of the angular slope of the best-fit lines. The mean and 95%
confidence interval are shown. The strong tendency was a one-to-one
relationship.
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We also calculated the total least-squares regression analysis
comparing the maximum neuronal discrimination level achieved with the
accuracy performed (Fig. 5) across the
same five feature repetition conditions. However, before computing the
regression, the maximum asymptotic discrimination indices (i.e., area
under ROC curve values) were adjusted for the number of stimuli in the displays. An ROC analysis is typically conducted for two-alternative forced-choice experiments, and the area under the unbiased ROC curve
equals accuracy (e.g., an area under the ROC curve value of 0.5 signifies a 50% correct choice percentage). However, our displays
typically presented four choices, so the values of area under the ROC
curve we obtained in the neuron-antineuron analysis assuming a
two-alternative forced-choice design no longer relate directly to the
observed accuracy with more than two choices. Thus, we converted the
area under the ROC curve values to their equivalent for the actual
number of choices in the display using the conversion table provided by
Hacker and Ratcliff (1979) and the algebraic approximations to the
tabled values by Smith (1982) (see also Macmillan and Creelman,
1991 ).

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Figure 5.
Summary of the relationship between the
effect of changing stimulus features on the maximal level of neuronal
discrimination and on accuracy. For each neuron, we plotted the
percentage of correct trials for each of the five groups of trials
described in Figure 2 as a function of the maximal asymptotic level of
neuronal target discrimination reached for that group of trials (see
Materials and Methods). We then determined the total least-squares
best-fit line across those five data points. The resulting line for
each neuron is plotted in the left panel
(A). The right panel
(B) shows the distribution of the angular slope
of the best-fit lines. The mean and 95% confidence interval are shown.
The clear tendency was a one-to-one relationship.
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For the neuron in Figure 3, the angle of the total least-squares
regression between the adjusted asymptotic area under the ROC curve and
behavioral accuracy was 40.2°. Across the population, the mean
angular slope of the regression lines was 46.8°, and there was no
evidence of bimodality in the distribution of the slopes. The angles of
the lines were significantly clustered around 45° (V-test,
V(45°)58; u = 9.3;
p < 0.0001), but not around 90° (V(90°)58; u = 0.6).
Thus, changes in levels of neuronal discrimination predicted changes in
accuracy caused by feature repetition. However, absolute neuronal
performance at the single-neuron level was not sufficient to account
for behavioral accuracy. The average adjusted maximum neuronal
discrimination index across the five trial conditions was 0.59, significantly underestimating the observed probability of correct
responses of 0.82 (Wilcoxon signed ranks test;
z294 = 14.7; p < 0.0001). Bichot et al. (2001) showed that combining the activity of
<10 neurons can account for accuracy during visual search tasks.
We also investigated the possibility that differential activity before
array presentation changed as target and distractor features repeated.
We found that this was not the case: the mean, nonadjusted baseline
discrimination level (see Materials and Methods) of 0.49 did not vary
with trial position relative to the feature change (Friedman test;
Fr = 1.7; df = 4;
p > 0.05).
Finally, we investigated whether the behavioral improvements observed
with repetition of the target and distractor features were mediated by
target enhancement or distractor suppression. For each neuron, we
measured average target-related and distractor-related activation when
the discrimination process was for the most part completed, or in other
words, from the end of the transition period in the discrimination
process to the mean saccade latency. The beginning and end of the
transition period were estimated from the rate of change of the Weibull
function used to fit the area under the ROC curve values as a function
of time from search array presentation (Fig. 3A-E,
rightmost column). Across all neurons, the end of the
transition occurred on average 53 msec before the mean saccade latency
and did not depend on the trial position relative to the feature change
(Friedman test; Fr = 3.9; df = 4; p > 0.05). We concentrated our analysis on two
trial conditions: the first two trials after the feature change when
accuracy was relatively impaired (i.e., early trials), and the fourth
or later trials when the effect of the feature change was greatly
diminished (i.e., late trials).
When neuronal discrimination is in its steady-state, a target
enhancement mechanism predicts that as accuracy increases, the difference between target and distractor activation increases because
of an increase in target activation and no significant change in
distractor activation. On the other hand, a distractor suppression
mechanism predicts that the difference between target, and distractor
activation increases because of a relative decrease in distractor
activation and no significant change in target activation. However,
because the nature of the feature changes for the two monkeys was
different, one may suppose that although both mechanisms contributed to
the search when target and distractor colors were switched (i.e., task
ran by monkey F), only target enhancement played a role when the target
remained constant and only distractor features changed (i.e., task ran
by monkey C) (Maljkovic and Nakayama, 1994 ).
Indeed, we found that both mechanisms contributed to finding the target
in the popout search task we implemented for monkey F. Across all
neurons recorded from this monkey, the mean target activation of 71.2 spikes/sec measured in the late trials was significantly greater than
the mean target activation of 65.9 spikes/sec in the early trials
(Wilcoxon signed ranks test; z40 = 2.7; p < 0.01), and the mean distractor activation of
36.5 spikes/sec in the late trials was significantly less than the mean
distractor activation of 40.1 spikes/sec in the early trials
(z40 = 2.8; p < 0.01). Furthermore, there was no overall difference in the magnitude of
the target enhancement and distractor suppression effects
(z40 = 0.5), reflecting equal
contributions of these two mechanisms to the search process. We found
that both mechanisms also contributed to finding the target in the
popout search task we implemented for monkey C. Across all neurons
recorded from this monkey, the mean target activation of 71.0 spikes/sec over the late trials was significantly greater than the mean
target activation of 63.7 spikes/sec over the early trials (Wilcoxon signed ranks test; z17 = 2.1;
p < 0.05), and the mean distractor activation of 31.4 spikes/sec over the late trials was significantly less than the mean
distractor activation of 37.9 spikes/sec over the early trials
(z17 = 3.2; p = 0.001). Furthermore, again there was no difference in the magnitude of
the target enhancement and distractor suppression effects
(z17 = 0.2).
The target enhancement and distractor suppression we observed across
both monkeys is summarized in Figure 6.
We investigated whether the magnitude of these effects was different
between the two monkeys. To make such a comparison, we normalized the
firing rates for each neuron by the average firing rate obtained for that neuron across both measured target activations and both measured distractor activations. We found that neither target enhancement (Wilcoxon-Mann Whitney U test;
z58 = 0.4; p > 0.05)
nor distractor suppression (z58 = 1.6;
p > 0.05) differed significantly between the two
monkeys.

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Figure 6.
Target enhancement and distractor
suppression during feature priming. Average neuronal activity was
computed when neurons were in a steady state of discrimination. Average
activation in response to the target in the response field
(RF) of a neuron and to distractors in the
response field of a neuron is shown during the first two
trials after the feature change (white bars) and
during the fourth and later trials after the feature change
(black bars).
|
|
Location-based inhibition of return
The effect of target position repetition is shown in Figure
7. Unlike the repetition of features,
repetition of the target position over consecutive trials increased
saccade latencies significantly (Fig. 7A) (Page test for
ordered alternatives, zL = 5.8;
p < 0.0001) and did not affect accuracy (Fig.
7B) (zL = 1.1; p > 0.05). Unfortunately, we could not determine the full time course of
this effect as there were not enough trials to evaluate accurately
behavioral performance for conditions in which the target remained in
the same position for more than two trials. Furthermore, the number of
trials during which the target remained at the same position for two
trials (last point in the plots of Fig. 7) was not sufficient to
conduct a reliable analysis of target discrimination for many neurons.
Thus, we combined trials in which the target remained in the same
position for one or two trials (last two points in the plots of Fig.
7).

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Figure 7.
Effect of popout target position repetition on
performance. The average of median saccade latency
(A) and of accuracy (B)
across sessions is plotted as a function of trial number relative to a
change in target position.
|
|
The average median saccade latency of 218.1 msec on trials in which the
target position changed relative to the previous trial was
significantly less than the average median saccade latency of 235.2 msec on all trials in which the target position remained the same
relative to the previous trial (Wilcoxon signed ranks test; z58 = 6.4; p < 0.0001). However, accuracy was not significantly affected by the
repetition of target position across trials
(z58 = 0.5). These observations were
true for both monkeys (monkey F, saccade latency:
z40 = 5.5, p < 0.0001; accuracy: z40 = 0.2, p > 0.05; monkey C, saccade latency:
z17 = 2.9, p < 0.01;
accuracy: z17 = 1.4, p > 0.05). We combined the data from the two monkeys for the subsequent analyses.
The effect of target position repetition on the activity of an FEF
neuron is shown in Figure 8. This is the
same neuron depicted in Figure 3. The analysis of the time course of
the discrimination process exhibited by this neuron showed that
discrimination occurred 28 msec earlier on trials in which target
position changed relative to the previous trial (Fig.
8A) compared with trials in which target position
remained the same across trials (Fig. 8B). For comparison, during recordings from this neuron, the mean saccade latency increased 52 msec across the same trial conditions.

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Figure 8.
Effect of target position change during popout
search on the activity of the FEF visuomovement neuron depicted in
Figure 3. The first row of plots
(A) illustrates activity during trials in which
the target position changed. The second row of plots
(B) shows activity during trials in which the
target position remained the same with respect to the previous trial.
The spike density function of the neuron when the target
(black) and distractors
(gray) of the search array fell in its
receptive field are superimposed in the left column. The
right column of plots shows the result of the ROC
analysis comparing the distribution of discharge rates during trials
when the target fell in the response field of the neuron to the
distribution of discharge rates when distractors fell in its response
field. Conventions as in Figure 3.
|
|
To investigate whether changes in the dynamics of the selection process
in FEF caused by the repetition of the target position predicted
changes in saccade latencies, we plotted for each neuron the median
saccade latency as a function of the measured time of target
discrimination for the two trial conditions of Figure 8. The line
segments formed by these two points for each neuron are plotted in
Figure 9A. For the neuron in
Figure 8, the angle of this line was of 61.7°. The distribution of
the angles of these lines is shown in Figure 9B. The average
angle was 44.9°, and the angles of the lines were significantly
clustered around 45° (V-test;
V(45°)58; u = 6.9, p < 0.0001), but not around 90°
(V(90°)58; u = 0.1).
Thus, the results show a strong relationship between changes in the
time of neuronal target discrimination and changes in median saccade
latency with target position repetition. On average, the time of
neuronal target discrimination preceded the median saccade latency by
~79 msec.

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Figure 9.
Summary of the relationship between the effect of
repeating the target location on the time course of neuronal
discrimination and on saccade latency. For each neuron, we plotted the
median saccade latency for each of the two groups of trials described
in Figure 8 as a function of the time of neuronal target discrimination
for that group of trials. The line connecting these two
points is plotted for each neuron in the left panel
(A). The right panel
(B) shows the distribution of the angular slope
of these lines. The mean and 95% confidence interval are shown.
|
|
During recordings from a number of the neurons, changes in median
saccade latencies related to the repetition of target position were not
very large (i.e., small line segments in Fig. 9), potentially compromising the reliability of the slope angle measurements for those
neurons. We analyzed the relationship between the time of target
discrimination and median saccade latency separately for neurons that
were recorded when the difference in median saccade latency between the
two conditions was at least 15 msec (26 neurons) and for neurons that
were recorded when the difference in median saccade latency was <15
msec (33 neurons). The angles of the lines for both groups of neurons
were still significantly clustered around 45°
(V(45°)25; u = 5.9;
p < 0.0001;
V(45°)32; u = 4.0; p < 0.0001, respectively), although as expected, the
dispersion of slopes was greater for neurons that were recorded when
the difference in median saccade latency was <15 msec.
Furthermore, consistent with a lack of an effect of target position
repetition across trials on accuracy, the maximum asymptotic level of
discrimination was also not affected by whether the target position
changed or remained the same across consecutive trials (Wilcoxon signed
ranks test; z58 < 0.1). The lack of a
change in the asymptotic level of discrimination prevented the
assessment of the contribution of target enhancement and distractor
suppression to location-based inhibition of return.
We also investigated the possibility that the baseline discrimination
ability of the neurons was changed as target position remained the same
across consecutive trials. As with the feature change effect, we found
that this was not the case: the mean, nonadjusted baseline
discrimination level of 0.50 was not affected by target position
repetition across trials (Wilcoxon signed ranks test;
z58 = 0.7).
 |
DISCUSSION |
In this study, we investigated the neuronal correlates of rapid
changes in behavior caused by short-term priming during a popout search
task. We found that monkeys were affected by both changes in stimulus
features and changes in target position, although the latter effect was
weaker. The repetition of target and distractor features over trials
significantly shortened reaction time and improved accuracy. In
contrast to the facilitation of return effect with feature repetition,
we found that the repetition of target position led to an inhibition of
return, whereby reaction time was elevated when the target position
repeated across consecutive trials.
We found that the properties of the neuronal selection signals in FEF
could explain changes in behavior due to both the feature-based facilitation of return and the location-based inhibition of return. This study is, to our knowledge, the first to describe neuronal correlates of short-term feature-based positive perceptual priming and
location-based negative priming during popout search. We also found
that neuronal discrimination before array presentation was not affected
by either feature or target position changes across trials, unlike the
changes found by Luck et al. (1997) in early visual areas using a
spatial cueing paradigm. Furthermore, we found that even though changes
in neuronal discrimination levels predicted well changes in behavioral
accuracy, their absolute values significantly underestimated accuracy.
Finally, this study also enabled us to test physiologically the
relative contributions of target enhancement and distractor suppression
to the search process, mechanisms that until now have only been probed
indirectly using behavioral measures. We found both mechanisms
contributed to similar extents to finding the target in our popout
search tasks.
Relationship to previous behavioral studies of visual selection
and priming
The beneficial effect of target and distractor feature constancy
during popout search has been documented in humans in tasks that
involve shifts of attention (Bravo and Nakayama, 1992 ; Maljkovic and
Nakayama, 1994 ) and tasks that involve eye movements (McPeek et al.,
1999 ). This short-term feature priming effect has also recently been
demonstrated in macaque monkeys (Bichot and Schall, 1999a ; McPeek and
Keller, 2001 ).
The effect on performance of target position repetition across trials
appears to be much less consistent from study to study. For example,
unlike in our study, Maljkovic and Nakayama (1996) showed priming for
target position in human subjects performing a popout search task,
similar to the priming for stimulus features (Maljkovic and Nakayama,
1994 ). Facilitation occurred when the target position was repeated
across consecutive trials, and inhibition occurred when the target fell
on a position previously occupied by a distractor. The inhibition when
the target falls on a position previously occupied by a distractor,
sometimes also referred to as "negative priming", has been observed
in many studies (Tipper et al., 1990 ). Avoiding design imbalances in
some previous studies, Christie and Klein (2001) replicated the
negative effect on performance when the target occupies a distractor
position from the previous trial. However, they also found a cost when
the target position was repeated, concluding that a more general
inhibition of return mechanism was operating, whereby inhibition is
applied to any location that contained a stimulus, whether that
stimulus was attended or ignored. However, their findings cannot be
related directly to ours because the comparisons in their study were
with control trials in which the target could appear at a previously unoccupied location.
More relevant to our study are experiments by Tanaka and Shimojo (1996 ,
2000 ) that, using both single stimulus and color popout search
displays, showed different effects of target location repetition, depending on the response required from subjects (see also Dorris et
al., 1999 ). When the task involved spatial orienting (i.e., presence/absence judgment or location judgment), repetition of target
location led to an increase in response time, but when the task
required the discrimination of a target feature (e.g., color or shape),
repetition of target location led instead to a reduction in response
time. These results may explain the apparent discrepancy between the
negative location repetition effect we found here and the positive
effect found by Maljkovic and Nakayama (1996) . In the experiments of
Maljkovic and Nakayama (1996) , subjects were required to respond to a
feature of the color popout target, consistent with the facilitation
effect found by Tanaka and Shimojo (1996 , 2000 ) in feature
discrimination tasks. On the other hand, in our experiment, monkeys
responded by making a saccade to the oddball item, consistent with the
inhibition found by Tanaka and Shimojo (1996 , 2000 ) in
spatial-orienting tasks. Thus, it appears that the behavior of our
monkeys is similar to that of humans in response to both feature
repetition and location repetition during popout search.
An important question in studies of visual search has been whether the
selection of the target stimulus is mediated by an enhancement of the
target representation or a suppression of distractor representations.
Much of the research in visuospatial attention has been driven by the
spotlight metaphor (Posner et al., 1980 ), usually with the implicit or
explicit assumption that attention operates by facilitating processing
in a selected region of the visual field (for review, see Cave and
Bichot, 1999 ). In contrast, using a spatial probe technique, Cepeda et
al. (1998) concluded that selection during a color popout search was
mediated by the suppression of distractor information, consistent with
the attentional modulation observed in the activity of cortical neurons
(for review, see Desimone and Duncan, 1995 ). Maljkovic and Nakayama
(1996) also addressed this question in relation to the feature priming effect they observed. They tested for target enhancement by keeping the
target color constant and changing the distractor color across trials,
and they tested for distractor suppression by keeping the distractor
color constant and changing the target color across trials. They found
that priming occurred in both tasks, but that target color repetition
resulted in larger benefits, suggesting a greater contribution of
target facilitation. Here, we tested directly the contribution of these
two mechanisms to the priming of popout using measures of neuronal
modulation. We found that both target enhancement and distractor
suppression contributed to the effect, but we did not find a
significant difference in the magnitude of their respective
contributions. Moreover, in the task where the target remained constant
and only distractor features changed (i.e., monkey C), we again found
that both mechanisms contributed equally to the priming effect, raising
doubts about the necessity of the assumptions made by Maljkovic and
Nakayama (1996) in their experimental design to probe each mechanism in isolation.
Relationship to previous physiological studies of visual selection
in FEF and other areas
We have shown previously that experience can affect both the
behavior of monkeys and neuronal modulation in FEF during a popout search (Bichot et al., 1996 ). Monkeys trained with both complements of
a color popout search display (i.e., red target among green distractors
and vice versa) generalized to a strategy of looking for the oddball
stimulus, whereas monkeys trained exclusively with one complement
adopted a strategy of ignoring stimuli with the distractor color, even
when the same color defined the target in the complementary search
array presented occasionally. Approximately half of the neurons in the
monkeys trained exclusively with one color combination showed an
unprecedented selectivity in their initial response.
The feature perceptual priming we describe here differs from the
effects in that study in several ways. First, although the control
monkeys in our earlier study were trained with both complements of the
color search array, they performed search with each of the
complementary arrays in long blocks that sometimes spanned an entire
session. Thus, their behavior would have been similar to trials in our
current study during which behavior was stable. Thus, the effect we
observed in the experimental monkeys in our earlier study appears to be
caused by a long-term effect of experiencing a particular color
combination. Second, in our previous study we had used display sizes of
eight stimuli, and the perceptual priming effect reduces with
increasing display size (Maljkovic and Nakayama, 1994 ; McPeek et al.,
1999 ). Consistent with an interpretation that the earlier effect we
observed was not caused by short-term perceptual priming, there was no
significant difference in reaction time between control and
experimental monkeys in contrast to the strong effect we observed here.
Finally, whereas the effect of experience on neuronal modulation in our
earlier study was mediated by an inhibition of distractor information,
in our current study we found that both target enhancement and
distractor inhibition mediated the feature priming effect.
Using a conjunction search task, we had also shown previously that
activity in FEF can predict an aspect of the history of target features
that was reflected in the monkeys' behavior (Bichot and Schall,
1999b ). This effect, which we had termed long-term priming, revealed
itself as a tendency of monkeys to make saccades to a distractor that
was the target during the previous session. However, the time course
and nature of this effect was different than the short-term perceptual
priming we investigated here. In that study, monkeys searched for one
color and shape combination in any given session, and the combination
was only changed across sessions. Thus, this effect revealed itself
across sessions that were at least 1 d apart, and persisted
throughout the session. In contrast, the effect of changing stimulus
features in the popout search display is of much shorter duration,
affecting behavior for typically <10 trials.
Other studies have also investigated the relationship between
behavioral performance and neuronal activity. Among these, studies by
Kim and Shadlen (1999) and Shadlen and Newsome (2001) have been
conceptually the most directly comparable to ours. They have shown that
neurons in the lateral intraparietal area and dorsolateral prefrontal cortex predicted monkeys' judgment on a motion
discrimination task and that the timing and magnitude of neuronal
responses was affected by the strength of the motion signal to be
discriminated. However, like our previous studies of visual selection
in FEF (Bichot and Schall, 1999b ; Bichot et al., 2001 ), these studies were concerned about decisions made on the basis of stimulus properties on a given trial, rather than stimulus properties relative to previous trials.
A few studies have examined changes in neuronal modulation as a
function of the evolution of behavior within an experimental session
(Mitz et al., 1991 ; Chen and Wise, 1995 ; Basso and Wurtz, 1998 ;
Nakamura et al., 1998 ). However, these studies have usually been
concerned with changes after training and acquisition of conditional
associations or target sequences. In contrast, in our study monkeys had
extensive experience with all the displays used during recordings and
the oculomotor association remained constant (i.e., saccade to the
oddball stimulus). Thus, behavioral and neuronal modulation in our
study were not related to learning but rather to visuomotor experience
across trials. A recent study by Dorris et al. (1999) has also
investigated neuronal modulation in relation to behavioral changes
caused by motor experience within the span of several trials. Monkeys
performed a gap saccade paradigm, and the latency of their saccades to
the peripheral stimulus decreased as its position was repeated over
consecutive trials. Dorris et al. (2000) found concomitant
changes in the preparatory activity of superior colliculus neurons in
advance of the presentation of the peripheral stimulus. In contrast, in
our study using a popout visual search task, we found no baseline
changes in neuronal discrimination even after target position
repetition, but rather found changes in the pattern of neuronal
discrimination after stimulus presentation. Potential differences in
the behavioral strategy adopted by monkeys as a consequence of
differences in experimental paradigms may be the cause of the
discrepancy between the findings of these studies.
We also found that the absolute discrimination performance of
individual neurons did not account for the observed accuracy of
monkeys. This finding is consistent with the widely held and commonsense view that selection is accomplished by populations rather
than individual neurons. Numerous studies, spanning many areas of the
brain, have shown that behavior is accounted for by the pooled activity
of populations of neurons (Tolhurst et al., 1983 ; Bradley et al., 1987 ;
Optican and Richmond, 1987 ; Shadlen et al., 1996 ; Lee et al., 1998 ;
Takemura et al., 2001 ). Most directly relevant to our observation here
is our recent investigation of neuronal reliability in FEF during
visual search experiments (Bichot et al., 2001 ). Across a variety of
search tasks leading to a wide range of search efficiency, we found
that the probability of correct responses was approximated when the
activity of at least six neurons was combined.
Neuronal sources of repetition priming
We observed clear correlates of feature repetition priming in FEF,
most likely as a result of its extensive network of inputs from both
dorsal and ventral stream areas (Schall et al., 1995a ; Jouve et al.,
1998 ), as well as prefrontal cortex (Huerta et al., 1987 ; Stanton et
al., 1993 ). However, because FEF neurons are not typically selective
for visual attributes such as color (Mohler et al., 1973 ), the question
remains as to what is the source of the modulation we observed. Several
lines of evidence support the view that the feature priming effect
originates in the neural networks of the ventral stream, consistent
with the fact that neurons in this stream are highly selective for
visual features, from basic features such as color and orientation to
complex ones (for review, see Desimone et al., 1985 ; Tanaka, 1996 ).
The hypothesis that feature priming takes place in areas of the ventral
stream is supported by a recent physiological recording study in
monkeys showing that behavioral relevance of a stimulus established
through training modifies the neuronal representation of that stimulus
in inferotemporal cortex (Jagadeesh et al., 2001 ). More direct evidence
comes from Walsh et al. (2000) , who investigated the effects of lesions
of areas V4 and TEO on feature priming. They found that although
monkeys with lesions are unimpaired on a simple color popout task, the
priming observed in control monkeys was diminished by lesions of TEO
and abolished by lesions of V4. A preliminary report by Rossi et al.
(2001) further suggests that priming is generated within local circuits
of the temporal cortex without top-down feedback influence from the
prefrontal cortex, a region generally considered to play an important
role in working memory and cognitive control (for review, see Desimone,
1996 ; Fuster, 2000 ; Duncan, 2001 ; Miller and Cohen, 2001 ). The apparent lack of cognitive control in behavioral manifestations of priming and
the automatic nature of this phenomenon (Maljkovic and Nakayama, 1994 ;
Goolsby and Suzuki, 2001 ) are consistent with this hypothesis.
 |
FOOTNOTES |
Received Jan. 2, 2002; revised Feb. 19, 2002; accepted March 8, 2002.
This work was supported by National Eye Institute Grants RO1-EY08890
(J.D.S.) and P30-EY08126 and T32-EY07135 to the Vanderbilt Vision
Research Center, and by the National Institute of Mental Health
Intramural Research Program. The data were collected while N.P.B. was
at Vanderbilt University. J.D.S. is a Kennedy Center Investigator. We
thank Drs. Kirk Thompson and Steven Wise for helpful discussion and
comments on this manuscript.
Correspondence should be addressed to Dr. Narcisse P. Bichot,
Laboratory of Neuropsychology, National Institutes of Health, National
Institute of Mental Health, Building 49, Room 1B80, Bethesda, MD
20892-4415. E-mail: bichot{at}ln.nimh.nih.gov.
 |
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