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The Journal of Neuroscience, January 15, 2001, 21(2):713-725
Reliability of Macaque Frontal Eye Field Neurons Signaling
Saccade Targets during Visual Search
Narcisse P.
Bichot1,
Kirk G.
Thompson2,
S.
Chenchal
Rao3, and
Jeffrey D.
Schall3
1 Laboratory of Neuropsychology, National Institute of
Mental Health, National Institutes of Health, Bethesda, Maryland 20892, 2 Laboratory of Sensorimotor Research, National Eye
Institute, National Institutes of Health, Bethesda, Maryland 20892, and
3 Vanderbilt Vision Research Center, Department of
Psychology, Vanderbilt University, Nashville, Tennessee 37240
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ABSTRACT |
Although many studies have explored the neural correlates of visual
attention and selection, few have examined the reliability with which
neurons represent relevant information. We monitored activity in the
frontal eye field (FEF) of monkeys trained to make a saccade to a
target defined by the conjunction of color and shape or to a target
defined by color differences. The difficulty of conjunction search was
manipulated by varying the number of distractors, and the difficulty
of feature search was manipulated by varying the similarity in
color between target and distractors. The reliability of individual
neurons in signaling the target location in correct trials was
determined using a neuron anti-neuron approach within a
winner-take-all architecture. On average, approximately seven trials of
the activity of single neurons were sufficient to match near-perfect
behavioral performance in the easiest search, and ~14 trials were
sufficient in the most difficult search. We also determined how
many neurons recorded separately need to be evaluated within a trial to
match behavioral performance. Results were quantitatively similar to
those of the single neuron analysis. We also found that signal
reliability in the FEF did not change with task demands, and overall,
behavioral accuracy across the search tasks was approximated when only
six trials or neurons were combined. Furthermore, whether combining
trials or neurons, the increase in time of target discrimination
corresponded to the increase in mean saccade latency across visual
search difficulty levels. Finally, the variance of spike counts in the
FEF increased as a function of the mean spike count, and the parameters
of this relationship did not change with attentional selection.
Key words:
oculomotor; visual cortex; vision; attention; eye
movements; selection; model
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INTRODUCTION |
Neural correlates of visual
selection and attention have been observed in nearly all visual and
visual-association brain areas that have been examined (Bushnell et
al., 1981 ; Moran and Desimone, 1985 ; Mountcastle et al., 1987 ; Motter,
1993 ; Zipser et al., 1996 ; Luck et al., 1997 ; Treue and Maunsell, 1999 )
(for review, see Desimone and Duncan, 1995 ; Maunsell, 1995 ). In a
majority of these studies, the average activity of a neuron during one
behavioral state was compared with the average activity of the same
neuron during another behavioral state. However, it is not clear from these results how reliably neurons signal changes in behavioral state.
This is because analyses have usually been confined to average
discharge rate in specific time intervals of interest and have not
examined the variability in discharges of cortical neurons under
identical conditions.
Most analyses of neural reliability have compared the variance of
responses with their magnitude (Henry et al., 1973 ; Tolhurst et al.,
1983 ; Britten et al., 1993 ; McAdams and Maunsell, 1999 ), commonly
finding that the variance of spike counts is proportional to the mean
number of spikes produced by the neuron. Only a few studies have looked
at neural reliability from the perspective of how many trials or
neurons it takes to reliably convey the pertinent information. One such
early study by Tolhurst et al. (1983) found that psychophysical
detection of sinusoidal gratings of varying contrast could be
approximated by combining the signals of two to eight V1 neurons. More
recently, Shadlen et al. (1996) found that a pool of at least 100 weakly correlated neurons in the middle temporal (MT) visual
area simulated behavioral responses to visual motion.
In previous studies, we have shown that the frontal eye field (FEF)
exhibits the characteristics of a salience map in which stimuli are
represented as a function of their behavioral significance (for review,
see Bichot, 2001 ; Thompson et al., 2001 ). We have shown that
activity in this map reflects visual selection based on conspicuousness
(Schall et al., 1995 ; Thompson et al., 1997 ), as well as
selection based on knowledge and experience (Bichot et al., 1996 ;
Bichot and Schall, 1999b ; Thompson and Schall, 1999 ). In this study, we
examine the reliability with which the target location is signaled in
the FEF in two conceptually different visual search tasks (Treisman and
Gelade, 1980 ): a conjunction visual search in which locating the target
required a memory of the target features, and a feature search in which
the target was the singleton stimulus. Furthermore, the difficulty
(i.e., speed and accuracy) of conjunction search was manipulated by
varying the number of distractors, whereas the difficulty of feature
search was manipulated by varying the chromatic similarity between
target and distractors. We compared neural activity when the target
appeared in the response field with neural activity when distractors
appeared in the response field within a winner-take-all architecture
(i.e., the simulation selected the stimulus that elicited the highest activation). The comparison was performed as a function of time beginning at stimulus presentation; this allowed us to relate the
performance of the simulations to saccadic latencies across search
difficulty levels, in addition to determining the number of trials from
a single neuron and the number of neurons within a single trial that
needed to be combined to achieve a rate of target selection similar to
the behavioral performance of the monkeys. We also examined neural
reliability in the FEF by examining the relationship between spike
variance and spike count and evaluated whether this relationship
changes with target selection.
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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 NIH 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
the FEF have been described previously (Schall et al., 1995 ; Thompson
et al., 1996 ). All surgical procedures were performed with the use of
sterile techniques.
Conjunction search: stimuli, apparatus, and behavioral
procedure. The experiments were under the control of
two PC 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, and the fixation
spot was a white square. The stimuli were either red [Commission
Internationale d'Éclairage (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 circles.
Each experimental session started with a block of ~150 detection
trials that instructed monkeys what the target would be in conjunction
search trials for that session. The target stimulus was a combination
of one of two colors (red or green) with one of two shapes (cross or
circle). Each detection trial began with the presentation of a central
fixation point. After an interval of fixation (~500 msec), the target
stimulus for the session was presented, and monkeys were rewarded for
making a single saccade to it.
The procedure for conjunction search trials was essentially the same as
for the detection trials except that the target was presented among
three or five distractors. In the four-stimulus configuration (Fig.
1A), the target was
presented along with a distractor that had the target color but not the
target shape, another distractor that had the target shape but not the
target color, and a distractor that had neither the target color nor the target shape. In the six-stimulus display (Fig.
1B), there was an additional distractor that shared
the target color and an additional distractor that shared the target
shape. With these choices, both displays were balanced for the number
of stimuli containing any given color or shape. The stimuli, spaced
evenly on the circumference of an imaginary circle around fixation,
were placed such that one stimulus always fell in the center of the receptive field of the neuron. On average, monkeys ran ~600
conjunction search trials while recordings were made from each
neuron.

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Figure 1.
Behavioral tasks. The monkey's task was to shift
gaze to a target stimulus during conjunction search with four
(A) or six (B) stimuli, or
a feature search with the target easy (C) or
difficult (D) to discriminate from distractors.
The discrimination in the difficult feature search was more
difficult than depicted schematically in D.
Dotted circles represent the monkey's current point of
fixation; the arrow represents the saccade to the
target. Stimuli are not drawn to scale.
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Easy and difficult feature search: stimuli, apparatus, and
behavioral procedure. Procedures for the feature search
experiments were similar to those for the conjunction search
experiments. The experiments were under the control of a PDP/11
computer. In the easy feature search condition (Fig. 1C), a
green target (CIE, x = 283, y = 612)
was presented among seven red distractors (CIE, x = 655, y = 327). In the difficult feature search
condition (Fig. 1D), the distractors were
green/yellow (CIE, x = 363, y = 552). In both conditions, the target and distractors were filled
squares spaced evenly on the circumference of an imaginary circle
around fixation and were matched for luminance (11.1 cd/m2). Easy and difficult feature search
trials were randomly interleaved. On average, monkeys ran ~700
feature search trials while recordings were made from each neuron.
Neuron-by-neuron reliability analysis. First, the
spike density function for each correct trial was generated by
convolving action potentials with a function that resembled a
postsynaptic potential: A(t) = [1 exp( t/ g)][exp( t/ d)].
Physiological data from excitatory synapses estimate the growth
constant g at ~1 msec and the decay constant
d at ~20 msec (Sayer et al., 1990 ).
For each neuron, we determined the number of trials that needed to be
combined to match near-perfect performance as follows. Every 10 msec
starting at the time of stimulus presentation, we calculated the
activity of the neuron averaged over a 10 msec period (from 5 msec
before to 5 msec after). Nonoverlapping intervals of 10 msec were used
because they allowed for a sensitive estimate of the time course of
neural modulation while reducing the noise in the data and the number
of data points over which reliability calculations were performed. At
each time point, we compared trials in which the target was in the
response field of the neuron (i.e., target-activity trial) with trials
in which a distractor was in its response field (distractor-activity
trial). For every iteration, we randomly selected a target-activity
trial and one distractor-activity trial for each of the different types
of distractors. Thus, during conjunction search with four stimuli, we
selected and compared one trial in response to the target, one in
response to the distractor that shared the target color, one in
response to the distractor that shared the target shape, and one in
response to the distractor that shared no target feature. During
conjunction search with six stimuli, we applied the same procedure
except that two additional trials were selected, one for each of the
additional distractors in the search array that shared a target
feature. In other words, for each iteration we selected one trial for
each stimulus location in the array. During feature search, because all
distractors were the same within a difficulty level, we randomly
selected and compared one target-activity trial and seven
distractor-activity trials. We then identified the trial with the
maximum activity. If it was a target-activity trial, we added one to a
"target behavioral choice" count; otherwise, we added one to a
"distractor behavioral choice" count. This procedure was repeated
for 1000 iterations with trials selected with replacement and
independently on each iteration. We then calculated, adjusting for
ties, the percentage of iterations in which a target behavioral choice
was made. This measure represented the percentage of target choices
derived from the activity of the neuron during one trial.
We repeated the same procedure combining the activity of 2-50 trials
at each stimulus location. In other words, for each stimulus type and
each iteration, we randomly selected with replacement a fixed number of
trials in response to that particular stimulus, summed their activity,
and found the stimulus that elicited the highest combined activation.
The rest of the calculations were identical to the one-trial case
described above. We then plotted the probability of target choice as a
function of the number of combined trials for each stimulus, and fit
the points using Matlab software (The MathWorks, Natick, MA) with an
exponential function of the form P(Target) = + exp[ (N )], where
P(Target) is the percentage of target choice by
the simulation (a number between 0 and 100%, inclusive), N
is the number of combined trials, and , , , and are the
fitting parameters. This function was applied with no theoretical basis
but only to quantify the relationship. From the equation of the
best-fit curve, we determined the number of trials needed to match
behavioral performance as the number required to reach a target choice
of 95%. Although we only considered correctly performed trials in the
simulations, a fixed criterion of 95% was chosen to approximate the
actual rate of target choice for several reasons. First, the parameter for the exponential fits was bound at 0 and 100% because the
actual target choice percentage is bound by these values. Second, this
allowed selection reliability to be measured as a function of the
number of combined trials at enough time points to reliably
characterize the time course of target selection as described below.
Finally, as mentioned in Discussion, from the measurements performed
one can extrapolate the number of trials that would be required to
match perfect performance. We refer to the 95% criterion level as
"near-perfect" performance.
Finally, we plotted the number of trials that needed to be combined to
reach the criterion level as a function of time from stimulus
presentation, and fit the points at which behavior could be matched by
a finite number of trials with an exponential function of the form
Tcrit = + exp[ (t )], where
Tcrit is the number of combined trials
needed to reach criterion, t is time from stimulus presentation, and , , , and are the fitting parameters.
This equation was used for quantification purposes only and does not make any claims about the nature and properties of the dynamics of the
selection process. We used the parameter to describe the number of
trials that needed to be combined when the activity of the neuron
reached a steady state and the parameter to represent the time of
beginning of target discrimination. This time is obviously related to
but is technically different from the time of target discrimination of
Thompson et al. (1996) .
Population reliability analysis. This analysis
was similar to that of the neuron-by-neuron reliability analysis
described above except that instead of combining the activity from an
increasing number of trials drawn from the activity of a single neuron,
we combined the activity of an increasing number of neurons. For example, in the two-neuron case, for each iteration we randomly selected two neurons that each contributed one randomly selected trial
to a pooled response for each of the stimulus types. We then compared
the pooled responses to determine the stimulus that elicited the
highest pooled response. Again, we repeated this procedure for 1000 iterations for each number of pooled neurons, and neurons were selected
independently across iterations. This analysis was performed with or
without redundant sampling. With redundant sampling, we selected
neurons entirely randomly, and a neuron could be selected more than
once. Thus, when the simulation combined the activity of N
neurons on a given iteration, the N neurons were not
necessarily all different from one another. Without redundant sampling,
the simulation selected neurons pseudorandomly such that a single
neuron could be sampled only once.
Relationship between spike variance and spike count.
Analyses were conducted in two predetermined time intervals,
the first intended to capture activity before neurons discriminated the target from distractors (0-100 msec after stimulus presentation), and
the second intended to capture activity while the neurons discriminated
the target from distractors (100-0 msec before saccade initiation). These intervals were chosen based on our measurements of
the time course of target selection in the FEF in this study, as well
as previous findings (Schall et al., 1995 ; Thompson et al.,
1996 ). During each 100 msec interval, we determined for each neuron and
for each visual search condition the mean number of spikes generated
across trials and the variance associated with this mean spike count.
Analyses were conducted separately for the target in the response field
of a neuron and distractors in the response field of a neuron to
determine whether target selection affected the relationship between
spike variance and spike count. Response variance functions were
obtained by fitting the logarithm of the spike variance against the
logarithm of the mean spike count with a simple linear regression. When
plotted on logarithmic axes, the best-fit straight line is represented
by a power function of the form Variance = c(Count)p,
where p is the power (or slope)
and c is the coefficient (or intercept). In each interval,
the simple linear regressions when the target was in the response field
and when the distractors were in the response field were compared using
a procedure outlined in Zar (1999) . When the fit parameters did not
differ significantly, we derived an overall response variance function
by computing a common slope and a common intercept.
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RESULTS |
Conjunction search
Overall, monkeys performed conjunction search more efficiently
when the target was presented among three distractors than when the
target was presented among five distractors. The difference in search
difficulty was reflected in both the monkeys' error rates
(four-stimulus: 7.5 ± 1.1% mean ± SEM; six-stimulus:
12.8 ± 1.5%; t44 = 8.2;
p < 0.001) and saccade latencies during correct trials
(four-stimulus: 216.7 ± 2.7 msec; six-stimulus: 230.2 ± 2.9 msec; t44 = 8.4, p < 0.001) [also see Bichot and Schall (1999a) ].
Reliability across trials
We recorded from a total of 62 neurons during conjunction search,
of which 45 showed significant task-related modulation and provided
sufficient data for the analyses presented in this paper. All of these
neurons were recorded during separate sessions.
Most single-neuron studies of visual selection and attention have
compared the average activity of a neuron across trials during one
behavioral state with the average activity of the same neuron across
trials during another behavioral state. Thus, we first examined neural
reliability in the FEF from this perspective, with the underlying
assumption that there are many neurons that would respond on any
particular trial in a way that is represented by the ensemble of
responses recorded for a given neuron over many trials. The
computations of the reliability of signaling the target location for
one FEF neuron during conjunction search with both four and six stimuli
are shown in Figure 2. This neuron responded to the presentation of the search array with a visual response latency of ~75 msec, and the initial response did not discriminate target from distractors in the response field during search with either set size (Fig. 2A). However, over
time, the activity evolved to discriminate the target from distractors
as evidenced by an attenuation of the activity evoked by distractors relative to the activity evoked by the target in the response field.
Note also that the discrimination during search with four stimuli
started earlier and reached a larger difference between target and
distractor activation.

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Figure 2.
Reliability of target selection by an FEF neuron
during conjunction search. A, Spike density function of
the neuron when the target (thick lines) or distractors
(thin lines) of the search array fell in its receptive
field during conjunction search with four (solid lines)
or six (dashed lines) stimuli. Spike density functions
were aligned on stimulus presentation at time 0 and are plotted up to
the mean saccade latency during each search condition. Only spikes that
occurred before saccade initiation were used in the calculations.
B-E, Probability of target choice as a function of
number of trials combined by the simulation at the four different time
points shown between A and B.
Filled circles represent simulations for search with
four stimuli, and open circles represent simulations for
search with six stimuli. The number of trials needed to reach a fixed
criterion level (i.e., 95% indicated by dotted line)
was determined by fitting exponential functions to the data points.
F, The number of trials required to reach the criterion
level is shown as a function of time from stimulus presentation for
search with four ( ) and six ( ) stimuli. The best-fit exponential
curves are shown overlaid on the data points. The absence of data
points signifies that the number of combined trials needed to result in
a target choice probability that matched the criterion level was
indeterminate (e.g., both curves in B and the curve for
search with six stimuli in C).
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In Figure 2, we plot the average activation related to the three
different distractor types (i.e., same color, same shape, or opposite
the target) for illustration purposes. However, the reliability
calculations considered activity related to each of the three
distractor types separately. This is critical during conjunction search
because activity related to each distractor type was not the same but
depended on the similarity of a particular distractor to the target and
whether the distractor was the target during the previous recording
session (Bichot and Schall, 1999b ). Thus, comparisons of activations
for the target and each distractor separately are not equivalent to a
comparison between activation for the target and the average activation
for all distractors combined. For example, consider a case in which the
target is presented among two distractors, one nearly identical to the
target and the other very different from the target. Suppose that the activation related to the similar distractor is nearly identical to the
activation related to the target, whereas the activation related to the
other distractor is much less than for either the target or the similar
distractor. While a three-way comparison between the activation for
each stimulus by our simulations would lead to selection of the target
and the similar distractor on almost every iteration and with nearly
equal probability (i.e., target selection rate would be near chance as
expected behaviorally), comparing target activation with average
distractor activation would erroneously lead to much higher rates of
target selection. Moreover, evaluating each display stimulus separately
is clearly more plausible because information about which stimulus
locations contain distractors is not available to the brain until the
selection process is completed.
The reliability calculations at four different time points are shown in
Figure 2B-E. At 90 msec after search
array presentation, the neuron has started responding to the stimuli
but its activity is about the same for either the target or distractors
in its response field during search with either set size. Accordingly, the simulation shows that the probability of selecting the target does
not increase dramatically as a function of the number of summed and
compared trials related to each display stimulus, and never reaches the
near-perfect criterion level of 95% (Fig. 2B). This
lack of ability to discriminate at the criterion level is reflected in
Figure 2F by the absence of data points for either set size (i.e., no number of combined trials was sufficient to reach
criterion). Later in the trial, 120 msec after stimulus presentation,
the activity of the neuron is greater for the target than for
distractors in its response field for the four-element display but not
the six-element display. The neural selectivity at this time during
presentation of the four-element display results in a considerable
increase of the probability of target choice as more trials are
combined by the simulation (Fig. 2C). The criterion level of
target choice probability was reached when ~14 trials were combined
for each element in the four-element search array as shown in Figure
2F. In contrast, at this time after presentation of
the six-element array, the increase of target choice probability with
increasing number of combined trials remained small and never reached
the criterion level. After another 10 msec, the activity of the neuron
discriminated the target even better in the four-element display, and
it also started discriminating the target from distractors in the
six-element display. The increase in selectivity during presentation of
the four-element display is reflected in the sharper increase of the
target choice probability function (Fig. 2D), which
reached criterion with approximately five combined trials per display
stimulus (Fig. 2F). The emergence of selectivity
during presentation of the six-element display is reflected in the more substantial increase of the target choice probability function, which
reached criterion with ~35 combined trials per display stimulus. Finally, 160 msec after stimulus presentation, the neuron signaled very
reliably the target of both size arrays, as shown by the rapidly
increasing target choice probability functions in Figure 2E. The criterion level was reached with slightly
more than one trial for the four-element display and slightly more than
three trials for the six-element display (Fig.
2F).
The number of combined trials necessary to reach the criterion level is
plotted in Figure 2F as a function of time from the presentation of the search array; the data points were fit with an
exponential function (see Materials and Methods). These plots show that
the time at which target discrimination first occurs at criterion level
is earlier for search with four stimuli than for search with six
stimuli (120 and 130 msec, respectively). This time, henceforth
referred to as the time of target discrimination, was estimated at 111 msec for search with four stimuli and 127 msec for search with six
stimuli from the equations of the exponential functions. The mean
saccade latencies in these two conditions during recordings from this
neuron were of 177 and 190 msec, respectively. Furthermore, during
search with either set size, the reliability of the neuron improved as
time progressed until it reached an asymptote. This level was estimated
at 1.4 trials to reach criterion during search with four stimuli and
3.0 trials during search with six stimuli.
The measurements of reliability and time of target discrimination for
the 45 neurons analyzed during conjunction search are summarized in
Figure 3. The average number of trials
that needed to be combined to reach the criterion level when the
reliability of selection reached an asymptote was significantly less
during the four-item search than during the six-item search (8.1 ± 0.8 vs 10.2 ± 0.9 trials; t44 = 2.7; p < 0.01) (Fig. 3A). However, the
correlation between the difference in trials to criterion and the
difference in error rates across these two conditions was not
significant (correlation coefficient r = 0.08;
p > 0.05).

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Figure 3.
Summary of neuron-by neuron analysis during
conjunction search. A, Distribution of the number of
trials needed to reach the near-perfect performance criterion (95%
target choice) when the quality of neural selection reached an
asymptote. B, Distribution of the time at which neurons
began to discriminate the target from distractors at the near-perfect
criterion level. In both plots, gray bars represent data
from conjunction search with four stimuli, and black
bars represent data from conjunction search with six stimuli.
The arrowheads under the abscissa mark the average of
each distribution.
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The average time of target discrimination determined from the
exponential fit function was significantly earlier during search with
four stimuli than during search with six stimuli (140.7 ± 3.6 vs
153.2 ± 3.2 msec; t44 = 5.5;
p < 0.001) (Fig. 3B). The difference in the
time of target discrimination (12.5 msec) accounted for the difference
in mean saccade latencies in these two conditions (13.5 msec)
(t44 = 0.4; p > 0.1),
and the correlation between the difference in discrimination time and
the difference in mean saccade latency across neurons was marginally
significant (correlation coefficient r = 0.30;
p < 0.05). We also compared the time of target
discrimination estimated from the exponential fits with the time of
target discrimination measured as the first time point at which
discrimination occurred at criterion level (e.g., 120 and 130 msec for
the neuron in Fig. 2 during search with four and six stimuli,
respectively). The mean time of target discrimination was not
significantly different when measured with either method during search
with four stimuli (140.7 vs 142.7 msec; Wilcoxon signed ranks test:
z = 1.6; p > 0.05) and search with six
stimuli (153.2 vs 154.0 msec; z = 1.3;
p > 0.05). However, the estimates of the time of
target discrimination based on the exponential fits have the advantage
of being continuous and more precise than the discrete (10 msec
precision) estimates obtained with the alternative method. For this
reason, we opted to use estimates of target discrimination time based
on the exponential fit.
Reliability across neurons
The neuron-by-neuron analysis described above has clearly been
useful in describing the relationship between behavior and neural
activity. However, it is only a convenient approximation of the actual
processing by the brain whereby the activity of multiple neurons over a
single trial must be combined to make decisions. We evaluated whether
the single-neuron multiple-trial approach and the
multiple-neuron single-trial approach are computationally equivalent.
Thus, we also measured neural reliability in the FEF during conjunction
search by combining and comparing the activity of different neurons
(Fig. 4). The results of the analysis in which a particular neuron could be selected more than once in a given
iteration (i.e., with redundancy) are shown in Figure 4A. The superimposed curves of target choice
probability as a function of the number of combined neurons derived at
each 10 msec interval after stimulus presentation are shown for
conjunction search with four stimuli in Figure 4A1
and for conjunction search with six stimuli in Figure
4A2. Early in the trials when neural activity across
the population was approximately the same whether the target or a
distractor fell in the response field of the neurons, the target choice
probability functions were nearly flat and ~25% for search with four
stimuli and ~17% for search with six stimuli. These values
correspond to the chance probability of choosing randomly one stimulus
of four and one stimulus of six, respectively. As time progressed and
target selection took place, the curves reached an asymptote sooner and
at a higher level. Note that when the target was fully selected, the
curves easily reached 100% target choice percentage.

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Figure 4.
Population analysis of selection reliability in
the FEF during conjunction search. A3, The number of
neurons required to reach the near-perfect performance criterion (95%
target choice) is plotted as a function of time from stimulus
presentation during search with four stimuli ( ) and search with six
stimuli ( ). These values were derived from the curves of target
choice probability as a function of the number of neurons the activity
of which was combined by the simulation shown in the top
inset for search with four stimuli (A1) and in
the bottom inset for search with six stimuli
(A2). These insets plot target choice
probability as a function of the number of neurons contributing
activity. The plots for successive times are superimposed, and these
families of curves show the progression of selection reliability as in
Figure 2B-E. In these simulations, neurons were
selected with redundancy, entirely randomly on each iteration,
resulting in the possibility that a given neuron was selected more than
once (see Materials and Methods). B, Same as
A except that neurons were chosen without redundancy and
pseudorandomly on each iteration so that each neuron was not selected
more than once.
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The evolution of the reliability of the neural selection signals in the
FEF during conjunction search is shown in Figure 4A3. At each time point, we determined the number of neurons that were needed to contribute activity for target choice probability to reach
the criterion level of 95%. Early in the trials, the criterion level
could not be reached during either search condition with any number of
combined neurons. The beginning of target discrimination at criterion
level was estimated at 132.4 msec for search with four stimuli and
143.9 msec for search with six stimuli. After a transition period that
lasted ~30-40 msec in both conditions, neural reliability reached an
asymptote at a level that was estimated at 7.8 neurons for search with
four stimuli and 10.3 neurons for search with six stimuli.
The results of the analysis without redundancy in which a particular
neuron could only be selected once in a given iteration are shown in
Figure 4B. Results were similar to those of the
previous analysis, with an estimated time of target discrimination of
131.3 msec for search with four stimuli and 143.0 msec for search with six stimuli. The asymptotic neural reliability was estimated at 8.2 neurons for search with four stimuli and 10.4 neurons for search with
six stimuli.
Feature search
Overall, monkeys performed feature search more efficiently when
the target and distractors were of very different colors (i.e., green
vs red) than when the target and distractors were of similar colors
(i.e., green vs green/yellow). The difference in search difficulty was
reflected in both the monkeys' error rates (easy: 6.1 ± 0.8%;
difficult: 29.8 ± 0.9%; t49 = 25.5; p < 0.001) and saccade latencies during correct
trials (easy: 200.1 ± 2.9 msec; difficult: 246.4 ± 4.8 msec; t49 = 17.7; p < 0.001).
Reliability across trials
We recorded from a total of 80 neurons during feature search, of
which 50 showed significant task-related modulation and provided sufficient data for the analyses presented in this paper. Twelve neurons were recorded in separate sessions, two neurons were recorded simultaneously in 10 sessions, three neurons were recorded
simultaneously in 2 sessions, and four neurons were recorded
simultaneously in 3 sessions. None of these neurons was also recorded
during conjunction search.
The computations of target location signaling reliability for one FEF
neuron during feature search in both the easy and difficult conditions
are shown in Figure 5. This neuron
responded to the presentation of the search array with a latency of
~50 msec, and the initial response did not discriminate target from
distractors in the response field during search of either difficulty
level (Fig. 5A). However, over time, the activity evolved to
discriminate the target from distractors as evidenced by an attenuation
of the activity related to distractors relative to the activity related to the target in the response field. Note also that the discrimination during easy search appears to start earlier and reach a greater magnitude than it does during difficult search.

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Figure 5.
Reliability of target selection by an FEF
neuron during feature search. A, Spike density function
of the neuron when the target (thick lines) or
distractors (thin lines) of the search array fell in its
receptive field during easy (solid lines) or difficult
(dashed lines) feature search.
B-F, Reliability calculations during
easy search are represented by , and calculations during difficult
search are represented by . All other conventions are as in Figure
3.
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The reliability calculations at four different time points (i.e., 60, 100, 120, and 180 msec) are shown in Figure
5B-E. The results of these computations are
similar to those described for the neuron in Figure 2. During easy
search, target choice probability did not reach the criterion level
during the initial response (Fig. 5B) but did so as time
progressed (Fig. 5C-E). During difficult search,
the neural discrimination process took longer with the target choice
probability function not reaching the criterion level for the first two
time points (Fig. 5B,C), and when
it did for later time points, it reached the criterion level with more combined trials than during easy search (Fig.
5D,E). The plot of the number of
trials needed to reach the criterion level as a function of time after
the presentation of the search array (Fig. 5F) shows
that the time of target discrimination occurred earlier for easy search
(estimated at 105 msec) than for difficult search (estimated at 124 msec). The mean saccade latencies in these two conditions during
recordings from this neuron were 182 and 214 msec, respectively.
Furthermore, during both easy and difficult search, the reliability of
the neuron improved as time progressed until it reached an asymptote.
This level was estimated at 1.8 trials to reach criterion during easy
search and at 3.8 trials to reach criterion during difficult search.
The measurements of reliability and time of target discrimination
for the 50 neurons analyzed during feature search are summarized in
Figure 6. The average number of trials
that needed to be combined to reach criterion level when neurons
reached a steady state was significantly less during easy search than
during difficult search (7.3 ± 0.8 vs 14.1 ± 1.4 trials;
t49 = 6.7; p < 0.001)
(Fig. 6A). However, the correlation between the
difference in the number of trials to criterion and the difference in
error rates across these two conditions was not significant
(correlation coefficient r = 0.18; p > 0.05).

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Figure 6.
Summary of neuron-by neuron analysis during
feature search. Gray bars represent data from the easy
feature search, and black bars represent data from the
difficult feature search. All other conventions are as in Figure
4.
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The average time of target discrimination determined from the
exponential fit function was significantly earlier during easy search
than during difficult search (132.2 ± 2.3 vs 173.7 ± 3.8 msec; t49 = 15.1;
p < 0.001) (Fig. 6B). The difference
in the time of target discrimination (41.5 msec) accounted for the
difference in saccade latencies in these two conditions (46.3 msec;
t49 = 1.6; p > 0.1),
and the correlation between the difference in discrimination time and
the difference in mean saccade latency across neurons was significant
(correlation coefficient r = 0.39; p < 0.01). We also compared the time of target discrimination estimated
from the exponential fits with the time of target discrimination
measured as the first time point at which discrimination occurred at
criterion level (e.g., 100 and 120 msec for the neuron in Fig. 5 during easy and difficult search, respectively). The mean time of target discrimination was not significantly different when measured with either method during difficult search (173.7 vs 169.6 msec; Wilcoxon signed ranks test: z = 1.8; p > 0.05)
but was slightly different during easy search (132.2 vs 135.8 msec;
z = 2.7; p < 0.01).
Reliability across neurons
We also measured neural reliability in the FEF during feature
search by combining and comparing the activity of different neurons
(Fig. 7). The results of the analysis in
which a particular neuron could be selected more than once in a given
iteration (with redundancy) are shown in Figure 7A. The
superimposed curves of target choice probability as a function of the
number of neurons contributing to the selection at each 10 msec time
point after stimulus presentation are shown for easy search in Figure
7A1, and for difficult search they are shown in Figure
7A2. Early in the trials when neural activity across the
population was approximately the same whether the target or a
distractor fell in the response field of the neurons, the target choice
probability functions were nearly flat and ~12.5% for either search
condition. This value corresponds to the chance probability of choosing
randomly one stimulus of eight. As time progressed and target selection took place, the curves reached an asymptote sooner and at a higher level. Note that when the target was fully selected, the curves easily
reached 100% target choice.

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Figure 7.
Population analysis of selection reliability in
the FEF during feature search. A3, The number of neurons
required to reach the near-perfect performance criterion (95% target
choice) is plotted as a function of time from stimulus presentation
during easy search ( ) and difficult search ( ). These values were
derived from the curves of target choice probability as a function of
the number of neurons the activity of which was combined by the
simulation shown in the top inset for easy search
(A1) and in the bottom inset for
difficult search (A2). In these simulations, neurons
were selected entirely randomly on each iteration, resulting in the
possibility that a given neuron was selected more than once (see
Materials and Methods). B, Same as A
except that neurons were chosen pseudorandomly on each iteration so
that each neuron was not selected more than once.
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The evolution of the reliability of the neural selection signals in the
FEF during feature search is shown in Figure 7A3. At each
time point, we determined the number of neurons that needed to be
combined for target choice probability to reach the criterion level of
95%. The beginning of target discrimination at criterion level was
estimated at 121.3 msec for easy search and 165.9 msec for difficult
search. After a transition period that lasted ~30 msec during easy
search and ~40 msec during difficult search, neural reliability
reached an asymptote at 7.1 neurons for easy search and 13.1 neurons
for difficult search.
The results of the analysis in which a particular neuron could only be
selected once in a given iteration (i.e., without redundancy) are shown
in Figure 7B. The results were similar to those of the previous analysis, with an estimated time of target discrimination of
119.5 msec for easy search and 167.1 msec for difficult search. The
asymptotic neural reliability was estimated at 7.7 neurons for easy
search and 14.1 neurons for difficult search.
Summary of results across search difficulty levels
On the basis of both speed and accuracy, monkeys performed best
during easy feature search, followed by conjunction search with four
stimuli and conjunction search with six stimuli, and performed worst
during difficult feature search. Figure 8
shows the relation between quantities derived from our simulations
(plotted on the ordinates) and behavioral measurements (plotted
on the abscissas) across all four search conditions and analysis
procedures.

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Figure 8.
Summary of neural reliability and time course of
target discrimination across visual search difficulty levels.
A, The number of trials ( ) and the number of neurons
( ) that needed to be combined to reach the near-perfect performance
criterion (95% target choice) when neural selection reached a steady
state is plotted against response error rates during each visual search
task (i.e., conjunction search and feature search) and each level of
difficulty within that task. B, The times of target
discrimination derived from the neuron-by-neuron analysis ( ) and
from the population analysis ( ) are plotted against mean saccade
latencies during each visual search task and level of difficulty within
that task. The equation of the principal axis of the regression ellipse
is shown in each plot. The results of the population analysis with and
without redundancy were combined.
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Average measures of neural reliability determined from the
neuron-by-neuron analysis (i.e., trials to criterion) and the
population analysis (i.e., neurons to criterion) for each search
condition are plotted as a function of the frequency of errors in that
search condition in Figure 8A. Clearly, more trials
or neurons needed to be evaluated to reach the criterion level of 95%
target choice probability as search difficulty increased. Our measures
of reliability correlated well with the behavioral performance across
search difficulty levels (r = 0.98; p < 0.001). On the basis of the slope of the principal axis of the
regression ellipse, approximately one more trial or neuron had to be
evaluated to compensate for a 4% increase in error rates across the
range of search difficulty levels. Furthermore, across the four search
tasks, the average number of trials of an individual neuron that needed
to be pooled to reach the criterion (neuron-by-neuron analysis) was not
significantly different from the average number of neurons that needed
to be pooled within a trial to reach the criterion (population
analysis) (t3 = 0.6; p > 0.05).
The time of target discrimination estimated by our calculations
correlated well with the changes in mean saccade latency across search
difficulty levels explored in this study (r = 0.94;
p < 0.001) (Fig. 8B). The slope of
the principal axis of the correlation showed that the time of target
discrimination across search conditions increased by nearly the same
amount of time as did saccade latencies (the slope of 0.99 was not
significantly different from unity based on the 95% confidence
interval). On average, the target was discriminated according to the
measure used 78 msec before the mean saccade latency. Across the four
search tasks, the time of target discrimination estimated on a
neuron-by-neuron basis was ~9.5 msec later than the time estimated
from the population analysis (t3 = 9.7; p < 0.01). This difference may be attributable to
increased variability in measurements conducted at the level of
individual neurons and is not inconsistent with the precision of our
analysis of neural reliability, which was conducted every 10 msec.
The summary of reliability calculations as a function of search
accuracy in Figure 8A may be taken to suggest that
target selection reliability in the FEF improves as search becomes
easier. However, as can be seen from Figures 2 and 5, the difference
between the neural representation of the target and that of a
distractor increases as search difficulty decreases. In other words,
the activity related to the target and the activity related to
distractors became more distinct with less overlap as the search became
easier. To determine whether this observation held true across the
population, we measured average neural activity in a 50 msec time
interval that extended until the average time of saccade initiation for each search condition and covered the time during which neural selection across the population was in an approximately steady state
(Figs. 4, 7). As expected, the average difference between target and
distractor neural activity was 45.1 and 41.9 spikes/sec during
conjunction search with four and six elements, respectively, and was
33.1 and 25.3 spikes/sec during easy and difficult search, respectively. Thus, the increase in the number of combined trials or
neurons is likely the result of the decreased discrimination ability of
the neurons as search becomes more difficult. Similar decreases in
neural sensitivity with increased discrimination difficulty have also
been observed in area MT (Shadlen and Newsome, 1996 ) and the lateral
intraparietal (LIP) area (Kim and Shadlen, 1999 ) using tasks
requiring discrimination of motion in random-dot displays containing
varying percentages of coherently moving dots. In other words, more
trials or neurons would need to be evaluated to reach a fixed criterion
with less discrimination ability.
To test this hypothesis, we repeated the reliability computations, but
this time we calculated the number of trials or neurons required to
reach the overall behavioral accuracy actually achieved in a particular
search condition instead of the fixed 95% level. The result of this
analysis is shown in Figure 9. As
predicted, the number of trials or neurons required to match the
overall behavioral accuracy did not increase as a function of search
difficulty (F(1,6) = 5.1;
p > 0.05). Instead, an average of six combined trials
or neurons accounted for performance changes across the range of search
difficulty levels that we investigated. In other words, with a neural
network of fixed size, changes in neural modulation afforded by the
visual stimulus and not neural reliability per se account for changes
in performance.

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Figure 9.
This plot shows the number of trials ( ) and
neurons ( ) that needed to be combined to match the actual percentage
of correctly performed trials in each task across levels of difficulty.
The dotted line indicates the average across these
points.
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Relationship between spike variance and spike count
Another perspective on the reliability of FEF neurons is provided
by the relationship between the variance of spike counts and mean spike
count. The foregoing analysis was aimed at evaluating the hypothesis
that the variability of discharges in the FEF is uniform across time
through the selection process. For this analysis we combined the data
from the 95 neurons recorded across both conjunction search and feature
search and the two levels of difficulty within each task. However, two
neurons were excluded because they did not fire any spikes during one
of the intervals of analysis.
We analyzed the relationship between the variance and the mean of spike
counts in two intervals. The first interval, which spanned 100 msec
from the presentation of the search array, was designed to capture
activity in the FEF before neurons discriminated target from
distractors (Fig.
10A). The average
activation evoked by the target was only slightly greater than the
average activation evoked by distractors (target: 23.4 spikes/sec;
distractors: 22.2 spikes/sec; t185 = 4.3; p < 0.001). This small but significant difference
happened because a few neurons began discriminating the target from
distractors within 100 msec of the presentation of the search array
(Figs. 3, 6). The relationship between spike variance and spike count
was not significantly different when measured for trials during which
the target was in the response field of the neurons compared with when
measured for trials during which distractors were in the response field
of the neurons (slope comparison: t368 = 0.7; p > 0.05; coefficient/intercept comparison: t369 = 0.2; p > 0.05). The common power function (Fig. 10A) had a
slope of 0.80 and a coefficient of 1.00.

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Figure 10.
Population response variance functions.
A, Relationship between spike variance and spike counts
when the target ( ) or a distractor (x
symbols) was in the receptive field of a neuron during a
time interval before target selection (0-100 msec after stimulus
presentation). B, Same as A during a time
interval in which neurons discriminated target from distractors (100-0
msec before saccade initiation). Data from conjunction search and
feature search, as well as the levels of difficulty within each task,
are shown combined. The equation of the best-fit power function is
shown for each plot.
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The second interval of the analysis was designed to capture activity in
the FEF while neurons discriminated the target from distractors and
extended from 100 to 0 msec before saccade initiation (Fig.
10B). Accordingly, the average activation related to
the target was more than twice the average activation related to
distractors (target: 70.0 spikes/sec; distractors: 32.7 spikes/sec;
t185 = 22.8; p < 0.001). Despite such a strong attentional modulation, the relationship
between spike variance and spike count was still not significantly
affected by whether the stimulus in the response field of the neurons
was the target or distractors (slope comparison: t368 = 0.5; p > 0.05;
coefficient/intercept comparison: t369 = 1.9; p > 0.05). The common power function (Fig.
10B) had a slope of 1.09 and a coefficient of 1.00. Note that the slope measured during this interval appears to be steeper
than the slope measured during the previous interval. However, a
meaningful comparison of these two slopes is precluded by the fact that
variability in saccadic latencies would have unavoidably increased the
measured variance of spike counts during the interval preceding saccade initiation.
Although simple least-squares linear regressions such as those computed
above have been used commonly to assess the relationship between spike
variance and mean spike count, such an analysis is biased because of
the assumption that all the variability in the least-square error is
caused by variation on the ordinate, which in this case plots the
variance of spike counts. Because for data like these there is
undoubtedly also variation in the abscissa (i.e., mean spike counts),
we used an alternative regression analysis aimed at avoiding this bias.
We computed the regression of the ratio of spike variance to mean spike
count against mean spike count. The slopes and intercepts were still
not significantly different during either analysis interval whether the
target or distractors were in the response field of the neurons. The
average ratio of spike variance to mean spike count in the FEF was 1.15 (SEM = 0.02).
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DISCUSSION |
We analyzed the reliability of FEF neurons signaling targets for
saccades during two visual search tasks, a conjunction search that
relies more on top-down selection and a feature search that relies more
on bottom-up selection. The difficulty of the search for the target was
manipulated by varying the number of distractors for conjunction search
and the similarity between the target and distractors for feature
search. This enabled us to examine neural signal reliability in the FEF
over a wide range of search difficulty that was reflected in both the
speed and accuracy of monkeys selecting the target. Several findings
were made. First, using a model that selected the stimulus location
with the highest activation based on a neuron anti-neuron comparison,
we found that as search difficulty increased, activity over more trials
or neurons needed to be combined at each stimulus location to reach a
near-perfect (95%) level of target selection. The number of trials or
neurons that needed to be combined ranged from ~7 (during the easy
feature search) to ~14 (during the difficult feature search). Second,
when the target selection criterion was adjusted to reflect the
accuracy actually achieved during each search condition, combining the activity of only about six trials or neurons at each stimulus location
approximated performance accuracy across the entire range of search
difficulty examined. Third, changes in reaction time across search
conditions were entirely accounted for by changes in the time at which
neurons started to discriminate the target from distractors. Fourth,
the relationship between the variance of spikes and mean spike count in
the FEF is similar to that observed in other visual areas and does not
change with attentional selection, similar to what has recently been
observed in area V4 (McAdams and Maunsell, 1999 ).
Neural reliability: relationship to previous studies, sources of
error, and theoretical considerations
In our computations of neural reliability, we implemented a
simple, winner-take-all architecture that compared the activity of
pooled trials of one neuron or the activity of pooled neurons. The
simulation simply selected the stimulus location that was associated
with the highest activation, an approach consistent with our hypothesis
that the FEF represents a salience map in which stimulus locations are
tagged for behavioral relevance (Bichot, 2001 ; Thompson et al.,
2001 ). Our findings show that pools of 7-14 neurons at each
stimulus location were sufficient to signal the target location with
near-perfect accuracy. An inspection of Figures 5 and 8 shows that even
if the simulations were to match neural performance to perfect accuracy
(i.e., 100% target choice probability), pools of ~25 neurons per
stimulus location in the most difficult search (i.e., difficult feature
search) would be sufficient. Finally, when the simulation matched
neural performance to overall accuracy in each search condition, we
found that comparing the activity of pools of six neurons at each
stimulus location approximated search performance over the entire range of search difficulty that we investigated.
The pool sizes obtained in our study are consistent with the findings
of several studies of neural information coding conducted in various
cortical areas, including area V1, areas of the inferior temporal
cortex, areas of the parietal cortex, and the primary motor
cortex, reporting neural pool sizes ranging from ~5 to ~40 neurons
(Tolhurst et al., 1983 ; Optican and Richmond, 1987 ; Gawne and Richmond,
1993 ; Rolls et al., 1997 ; Lee et al., 1998 ; Prince et al., 2000 ) [also
see Shadlen et al. (1996) , their Appendix 4].
In contrast, the pool sizes that we determined are one or two orders of
magnitude smaller than those determined by Shadlen et al. (1996) in
their analysis of the relationship between neural and behavioral
responses to visual motion. Several factors may contribute to this
difference. First, they used a task that required monkeys to report a
property the direction of motion of one stimulus; our task required
monkeys to locate the target among multiple competing stimuli. Second,
they recorded from neurons in extrastriate visual cortex selective for
the properties of the stimulus; we recorded from neurons in frontal
cortex that encode the relevance rather than the properties of stimuli.
Third, they included neurons with optimal directions of motion
different from the one being discriminated; in contrast, all of the FEF
neurons in our sample contributed information about the location of the
target and distractors. Finally, their model included correlation among
neurons. This was done because of the small but significant relation
between the variance of single neurons and the choices monkeys made
(Britten et al., 1996 ) coupled with the finding that area MT neurons
exhibit a modest correlation in discharge rates across trials (Zohary et al., 1994 ). This lack of statistical independence between neurons prevents averaging out noise completely.
The impact of a degree of statistical dependence between neurons on our
analysis would be to reduce the rate of growth of the proportion of
target choices as a function of number of trials or neurons pooled
(Fig. 2B-E), thereby requiring more
trials or neurons to reach criterion. The magnitude of this effect is
proportional to the correlation coefficient. We have measured the
degree of correlation between pairs of FEF neurons with overlapping
response fields that were recorded simultaneously (predominantly on the same electrode) during feature search and found an average correlation value of 0.09 (SEM = 0.03). The correlation in the FEF appears to
be smaller than that observed in MT (~ 0.19) (Zohary et al., 1994 ) or
in other areas (Lee et al., 1998 ). Thus, although our treatment of
neurons as statistically independent in our simulations must have led
to some underestimation of the neuronal pool size necessary for
locating the target of a search array, the underestimation is only
modest. Further work is needed to determine how much the weak
correlation between FEF neurons affects target selection efficacy.
Finally, a recent series of studies by Hampson, Deadwyler, and
colleagues (for review, see Hampson and Deadwyler, 1996 , 1999 ) suggest
that the content of information encoded by ensembles of neurons
recorded simultaneously is greater than that encoded by ensembles of
neurons reconstructed from single neuron recordings at different times.
They attributed this difference to the "multiplexed" nature of task
information encoded by the neurons. It is not clear from our data that
such improvement of information encoding occurs with simultaneous
recordings. First, we did not find a significant difference in the
reliability of selection signals when we combined trials of a single
neuron compared with when we combined trials from different neurons.
Second, our population analysis results were not affected by whether a
neuron contributed more than once to simulations within an iteration or
whether all neurons selected in a given iteration were different from
one another. Third, although all neurons were recorded in separate
sessions during conjunction search, on average two neurons were
recorded simultaneously during feature search, yet there is no obvious
improvement of neural reliability for the feature search data compared
with the conjunction search data. However, our study was not designed
to address the possibility that spike correlations of simultaneously
recorded neurons encode information beyond that derived from simple
average firing rates. Such an analysis requires larger ensembles of
simultaneously recorded neurons than our sample included, so we can
make no strong claims about the potential advantage of information
encoded in ways other than average firing rate.
Time course of target discrimination
The analyses that we have conducted show that small pools of
neurons predicted not only the accuracy of responses but also the speed
of responses. To our knowledge, our study is the first to examine the
temporal dynamics of the reliability of neural decision signals. As
discussed, the temporal dynamics of the selection process revealed
important characteristics of the selection process (for review, see
Schall and Bichot, 1998 ; Schall and Thompson, 1999 ) and provided us
with an additional independent dimension over which we evaluated the
performance of our model.
We previously investigated the time course of target selection in the
FEF during a pop-out visual search using an analysis adapted from
signal detection theory (Thompson et al., 1996 ). In that study, it was
concluded that the time at which FEF neurons discriminate the target
does not predict the time of saccade initiation. This conclusion was
based on the fact that when trials during a recording session were
divided into groups of short, medium, and long saccade latencies, the
time of target discrimination calculated for each group of trials did
not reflect that group's range of saccade latencies. Thus, a more
accurate description of the results of our earlier study is that the
time of target discrimination in the FEF does not predict the
variability of saccadic reaction times for a given search condition.
These results do not address the issue of whether the time of target
discrimination in the FEF predicts the mean saccade latency of a given
search condition. Thus, the results of our previous study are not at odds with the present finding that the time of target discrimination in
the FEF accounts for changes in overall saccade latency between search
conditions over a wide range of search difficulty levels. Furthermore,
the differences between the findings of these two studies are not
methodological because a signal detection analysis of the feature
search data presented here shows that the time of target discrimination
in the FEF does indeed predict the average saccade latency during
performance of a search task (Thompson et al., 1998 ).
One implication of the exponential improvement over time in neural
reliability is that the accuracy of target detection should improve
with a similar time course. This prediction is supported by experiments
that have measured the time course of feature and conjunction search by
varying stimulus duration (Nakayama and Mackeben, 1989 ), by requiring
subjects to respond prematurely (McElree and Carrasco, 1999 ), or by
making a pop-out search difficult by adding distractors to the displays
after a variable delay (Olds et al., 2000 ). These studies found that
target detection probability improved with time from stimulus
presentation with a time course similar to the one derived from neural
data in our study. A similar time course has been shown to characterize
available perceptual information during a digit-recognition task
(Loftus et al., 1992 ), with exponential performance curves best fit by
an equation of the form that was used in our study.
Concluding remarks
In this study, we presented a simple approach to examine neural
reliability in signaling a decision. We applied this approach to neural
activity in the FEF during visuomotor decisions, which proved to be
extremely robust in predicting both accuracy and speed over a range of
visual search difficulty levels resulting from different types of tasks
and manipulations. Overall, it appears that relatively small pools of
selective neurons in prefrontal cortex are sufficient to form a
decision. Such data are necessary for the design of more accurate
models of visual selection and attention.
 |
FOOTNOTES |
Received June 26, 2000; revised Oct. 27, 2000; accepted Nov. 1, 2000.
This work was supported by National Eye Institute Grant RO1-EY08890 to
J.D.S. and Grants P30-EY08126 and T32-EY07135 to the Vanderbilt Vision
Research Center, by the McKnight Endowment Fund for Neuroscience, and
by the National Institute of Mental Health Intramural Research Program.
J.D.S. is a Kennedy Center Investigator. We thank Drs. Robert Desimone,
Barry Richmond, and Michael Shadlen for helpful discussion and comments
on this manuscript.
Correspondence should be addressed to Dr. Narcisse P. Bichot,
Laboratory of Neuropsychology, National Institute of Mental Health, National Institutes of Health, Building 49, Room 1B80, Bethesda, MD 20892-4415. E-mail:
bichot{at}ln.nimh.nih.gov.
 |
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