The Journal of Neuroscience, July 23, 2003, 23(16):6480-6489
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Controlled Movement Processing: Superior Colliculus Activity Associated with Countermanded Saccades
Martin Paré1 and
Doug P. Hanes2
1Department of Physiology, Queen's University,
Kingston, Ontario, Canada K7L 3N6, and 2Laboratory of
Sensorimotor Research, National Eye Institute, National Institutes of Health,
Bethesda, Maryland 20892
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Abstract
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We investigated whether the monkey superior colliculus (SC), an important
midbrain structure for the regulation of saccadic eye movements, contains
neurons with activity patterns sufficient to control both the cancellation and
the production of saccades. We used a countermanding task to manipulate the
probability that, after the presentation of a stop signal, the monkeys
canceled a saccade that was planned in response to an eccentric visual
stimulus. By modeling each animal's behavioral responses, with a race between
GO and STOP processes leading up to either saccade initiation or cancellation,
we estimated that saccade cancellation took on average 110 msec. Neurons
recorded in the superior colliculus intermediate layers during this task
exhibited the discharge properties expected from neurons closely involved in
behavioral control. Both saccade- and fixation-related discharged differently
when saccades were counter-manded instead of executed, and the time at which
they changed their activity preceded the behavioral estimate of saccade
cancellation obtained from the same trials by 10 and 13 msec, respectively.
Furthermore, these intervals exceed the minimal amount of time needed for SC
activity to influence eye movements. The additional observation that
saccade-related neurons discharged significantly less when saccades were
countermanded instead of executed suggests that saccades are triggered when
these neurons reach a critical activation level. Altogether, these findings
provide solid evidence that the superior colliculus contains the necessary
neural signals to be directly involved in the decision process that regulates
whether a saccade is to be produced.
Key words: superior colliculus; saccade; fixation; motor control; countermanding; monkey
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Introduction
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The cognitive control of actions entails a decision process, the outcome of
which is either the execution of a voluntary act or its withholding. The
ability to withhold a voluntary act is therefore a fundamental demonstration
of motor control, and studying the process underlying the inhibition of action
can provide valuable insights about executive interventions.
Stopping behavior has been successfully examined with the countermanding
paradigm (for review, see Logan,
1994
). This paradigm consists of a task that manipulates a
subject's ability to withhold responses to a go stimulus when a stop signal is
presented occasionally; stopping is easy when a short delay separates the stop
signal from the go stimulus and increasingly difficult as the delay increases.
The duration required to stop the movements can be estimated reliably by
modeling the stopping behavior with a race between a GO process initiated by
the go stimulus and a STOP process initiated by the stop signal. The
behavioral outcome is determined by whichever process first crosses a finish
line (Logan and Cowan, 1984
).
However, this model provides only limited insights into the underlying neural
mechanisms by suggesting that movement processing is interruptible only during
an initial controlled phase before it reaches a trigger threshold, and a
ballistic phase inexorably leads to its completion
(Osman et al., 1986
;
DeJong et al., 1990
).
One of our best models of movement regulation has been developed from the
study of saccades, the rapid eye movements we make to realign our visual axis.
Recently, the countermanding paradigm was adapted to the behavioral and
neurophysiological study of the saccadic system
(Hanes and Schall, 1995
;
Hanes et al., 1998
;
Hanes and Carpenter, 1999
;
Stuphorn et al., 2000
). These
neurophysiological studies have concentrated their investigations on
prefrontal executive areas and revealed that at least the frontal eye field
(FEF) contains neurons with activity patterns sufficient to control saccade
cancellation. We wished to continue this fruitful approach in the brainstem to
evaluate the contribution of the superior colliculus (SC), perhaps the most
important brain structure regulating saccade production.
Several pieces of evidence already suggest that the SC plays an important
role in determining whether and when a saccade will be produced. First, the
production and latency of saccades are greatly affected after either
reversible or irreversible lesions of the SC (Schiller et al.,
1980
,
1987
; Hikosaka and Wurtz,
1985
,
1986
;
Sparks et al., 1990
;
Aizawa and Wurtz, 1998
;
Quaia et al., 1998
;
Hanes and Wurtz, 2001
).
Second, the latency of saccades evoked by SC stimulation varies with the
intensity of the stimulation (Robinson,
1972
; Paré et al.,
1994
; Stanford et al.,
1996
). Third, the level of low-frequency activity displayed in
advance of saccades by some SC neurons predicts the reaction times of saccades
(Dorris et al., 1997
). Last,
other SC neurons discharge high-frequency bursts of activity that are coupled
with both the occurrence and onset of saccades
(Sparks, 1978
). Thus, some
aspects of the SC activity appear necessary for a saccade to be produced, but
it remains unclear whether SC neurons change their activity appropriately when
a saccade is countermanded instead of executed. This study used the
countermanding paradigm to determine whether the changes in SC neuronal
activity patterns are physiologically sufficient (in magnitude and timing) to
regulate whether a saccade is to be made. These data have been reported in
preliminary form previously (Hanes and
Paré, 1998
).
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Materials and Methods
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Subjects and physiological procedure. Data were collected from two
male rhesus monkeys (Macaca mulatta; 7-10 kg) that were cared for in
accordance with the Institute of Animal Care and Use Committee and the Public
Health Service Policy on the human care and use of laboratory animals. All
surgical procedures and electrophysiological techniques have been described
previously (Paré and Wurtz,
2001
).
Stimuli and apparatus. Experiments were controlled by a 486
personal computer running the UNIX-based real-time experimentation software
(Hays et al., 1982
), which
recorded, at a sample rate of 1 kHz, both the isolated action potentials and
the monkeys' gaze position that was monitored by the magnetic search coil
technique (Fuchs and Robinson,
1966
). Head-restrained monkeys were seated in an adjustable
primate chair and faced a tangent screen located 57 cm away, onto which the
fixation spot and the saccade targets were rear projected by a laser and a
video projector (60 Hz; noninterlaced), respectively. The projector was
synchronized to the computer by the vertical retrace, and the location of
visual stimuli on the tangent screen within a vertical retrace cycle was taken
into account. The background was uniform gray with a luminance <0.1
cd/m2. The fixation spot and the saccade targets subtended
0.25° of visual angle, and their luminance was 2 cd/m2.
Behavioral tasks. Neurons were first characterized while the
monkeys performed several behavioral tasks, including the memory-guided
saccade task and the gap saccade task. All behavioral trials were initiated by
the appearance of a central fixation spot, which the monkey was required to
fixate within 1000 msec and for a variable (500-800 msec) interval. In the
memory-guided saccade task, a peripheral target was briefly presented (100
msec flash), and the fixation spot remained illuminated for an additional
500-1000 msec before disappearing to signal the monkey to make a saccade to
the remembered location of the saccade target within 500 msec and then
maintain fixation on it for 200-400 msec to correctly perform the task and be
rewarded. In the gap saccade task, the fixation spot was extinguished after
the initial fixation interval, and the monkey had to maintain steady fixation
during a 200 msec gap interval before the saccade target appeared. In all
tasks, the saccade target was presented with equal probability either in the
center of the response field of the neuron or at the same eccentricity but in
the diametrically opposite direction. We also used a fixation-blink task, in
which the monkeys had to maintain fixation while the central fixation spot was
blinked for a 400-600 msec interval.
The main data of this study were collected while the monkeys performed the
saccade-countermanding task (Fig.
1), which has been described previously
(Hanes and Schall, 1995
;
Hanes et al., 1998
). After the
initial fixation interval, the central fixation spot disappeared
simultaneously with the appearance of a saccade target. For 33% of the trials,
the fixation spot reappeared after a delay, referred to as the stop-signal
delay (SSD), and instructed the monkey to inhibit movement production. In
those trials in which the stop signal was not presented (CONTROL trials),
monkeys were given a liquid reward for generating a single saccade to the
peripheral target within 500 msec and by maintaining fixation on the target
for 200-400 msec. In those trials in which the stop signal was presented (STOP
trials), monkeys were rewarded for successfully maintaining fixation for 600
msec after the stop-signal appearance (canceled trials), but not if they
generated a saccade to the peripheral target (non-canceled trials).

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Figure 1. Trial displays for the countermanding saccade task. Each trial began with
the fixation of a central fixation point (FP) for a variable interval after
which it disappeared and a target (T) simultaneously appeared, either in the
response field of the neuron or in the opposite hemifield. In the CONTROL
trials, monkeys were rewarded for responding with a single targeting saccade
(left). On a fraction of interleaved trials (right), the fixation point
reappeared after a variable delay (SSD) and acted as a stop signal instructing
the monkeys to withhold saccade initiation. In these STOP trials, they were
rewarded for countermanding the planned movement and maintaining fixation on
the fixation point (canceled STOP trials). No reward was delivered if they
responded with a targeting saccade (noncanceled STOP trials). The dotted
circle and arrow indicate current gaze position and saccade vector during each
interval, respectively.
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Stop-signal delays ranged from a minimum of 25 to a maximum of 230 msec,
and we selected for each experimental sessions four different stop-signal
delays spaced at a fixed interval (either 40, 50, or 60 msec). Stop-signal
delays were varied according to the monkeys' performance so that at the
shortest stop-signal delay, monkeys generally inhibited the movement in
>85% of the stop-signal trials and at the longest delay, monkeys inhibited
the movement in fewer than 15% of the stop signal trials. The four stop-signal
delays were kept constant while recording from an individual neuron. By having
a small proportion of STOP trials and limiting the maximum saccade reaction
time to 500 msec in CONTROL trials, we ensured that the monkeys produced a
speeded response to the target presentation and did not adopt a strategy of
postponing their response until they could determine whether a stop signal was
to be presented.
Neuronal classification. We collected sufficient data in the
necessary countermanding trial conditions from a total of 48 SC neurons that
exhibited task-related activity in the countermanding saccade task. Neurons
with saccade-related activity were defined as neurons that exhibited an
increased discharge rate before memory-guided saccades. These neurons could
additionally exhibit a phasic response to the target presentation, a
delay-period activity, or both. Using previously established criteria
(Munoz and Wurtz, 1995
), we
subdivided this sample of neurons into two classes: buildup and burst neurons.
The analysis results for the two classes of neurons did not differ, and we
therefore will refer to these neurons simply as saccade-related neurons. A
total of 32 saccade-related neurons were included in this study.
We also recorded from neurons within the rostro-lateral portion of the SC
that displayed fixation-related activity, which we defined as providing an
extraretinal fixation signal. The rationale for this has been exposed
previously (Munoz and Wurtz,
1993
; Dorris and Munoz,
1995
). In the gap saccade task, these fixation-related neurons
increased their discharge rate after fixation of the central fixation spot and
a pause in activity before and during saccades. Their rate of discharge was
maintained, albeit at a lower rate, when the fixation spot was momentarily
removed and the monkey maintained the same gaze angle during both the gap
period of the gap saccade task and the blink period of the fixation-blink
task. A total of 10 fixation-related neurons were recorded in this study. Six
neurons with neither significant saccade activity during the memory-guided
saccade task nor fixation activity were excluded from the analysis.
Data analysis. During off-line analyses, saccades were detected
and marked using a computer program that identified the beginning and end of
each saccade using velocity and acceleration threshold criteria and template
correlation as described by Waitzman et al.
(1991
). An experimenter
verified these events to ensure accuracy. Reaction time was measured as the
interval from target appearance to the beginning of the saccade.
To visualize the neural data, rasters of neuronal discharge and
continuously varying spike density functions were aligned on the time of the
saccade target presentation. Spike density functions were constructed by
convolving spike trains with a combination of growth and decay exponential
functions that resembled a postsynaptic potential: R(t) = [1
- exp(-t/
g)] ·
[exp(-t/
d)], where rate as a function of
time [R(t)] varies according to
g
(the time constant for the growth phase) and
d (the
time constant for the decay phase). We used values for
g and
d (1 and 20 msec)
(Hanes and Schall, 1996
) that
had been estimated from physiological studies of excitatory synapses
(Sayer et al., 1990
;
Mason et al., 1991
). Note that
only spikes that occurred before saccade initiation were used in the
computation of the spike density functions
(Hanes et al., 1998
).
Inhibition functions were constructed that plotted the probability of
noncanceled trials as a function of stop-signal delay. To derive reliable
parameter estimates, the inhibition data points were fit with a cumulative
Weibull function of the form: W(t) =
- (
-
) · exp[-(t/
)
], where
t is the time after target presentation,
is the time at which
the inhibition function reaches 64% of its full growth,
is the slope,
is the maximum value of the inhibition function, and
is the
minimum value of the inhibition function. The value of
generally
approached 1 (mean, 0.93), whereas
was usually close to 0 (mean,
0.04). All of the Weibull function fits had correlation coefficients >0.83
(mean, 0.98).
To quantify the time course of the neuronal activation during STOP and
CONTROL trials, we calculated a differential spike density function by
subtracting the average spike density function associated with each type of
trial. The time at which significant differential activation began was defined
as the instant when the differential spike density function exceeded by two SD
the mean difference in baseline activity, provided the difference remained
above this threshold for 50 msec. We sampled the baseline activity during
either a 600 msec interval before target onset (if the neuron displayed
background activity) or a variable interval from the activation onset of the
neuron until the earliest possible change in activation, which we estimated
from our sample to be 40 msec before the behavioral estimate of saccade
cancellation.
 |
Results
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Behavioral estimate of saccade cancellation
The first goal of this study consisted of obtaining a behavioral estimate
of the length of time needed to cancel a saccade. This duration, also known as
the stop signal reaction time (SSRT), is a quantity that is not directly
observable. However, it can be indirectly estimated from the behavioral
performance in the counter-manding task, which is captured by two
quantifications. From the CONTROL trials, the distribution of reaction times
can be constructed to inform us about the overt process of movement production
(Fig. 2C). From the
STOP trials, the covert process of movement cancellation is reflected in the
inhibition function (i.e., the probability of not canceling a saccade plotted
as a function of the stop-signal delays)
(Fig. 2A). In these
experiments, as in previous reports, monkeys successfully withheld their
saccades with very short stop-signal delays, but they increasingly failed to
do so as the stop-signal delay was lengthened.

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Figure 2. Estimation of the SSRT with the integration method. A, Data from
the STOP trials yield an inhibition function, the probability that the monkey
failed to countermand the targeting saccade (noncanceled STOP trials) as a
function of stop-signal delay. B, The race model consists of a GO
process (dotted line) and a STOP process (solid line) racing independently
toward their respective threshold (broken horizontal line). The GO and STOP
processes are initiated by the presentation of the saccade target and the stop
signal, respectively. In STOP trials, the STOP process begins after the GO
process has begun. If the GO process finishes first, then the saccade will not
be canceled. In contrast, if the STOP process finishes before the GO process,
then the saccade is canceled. The duration of this stop process is the SSRT.
C, The SSRT at each SSD can be determined by integrating the
distribution of the reaction times of the saccades made in the CONTROL trials,
beginning at zero, until the integral equals the probability of noncanceled
trials observed at each SSD. The time value at that point indicates the time
that the STOP process ended. Thus, the interval from the presentation of the
stop signal to this time value represents the SSRT.
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This STOP trial behavior can be explained and the duration of the covert
inhibitory process can be estimated by a race model
(Fig. 2B) between two
independent processes: (1) a GO process that prepares and initiates the
movement in response to the presentation of the target, and (2) a STOP process
initiated by the STOP signal that can inhibit the planned movement. The two
processes race with variable rise time toward a finish line, and which ever
wins the race dictates the ensuing behavior. If the GO process ends first, the
saccade will proceed without hindrance (noncanceled trial). If the STOP
process ends first, the saccade will not be produced (canceled trial). When
the stop signal is not presented, as in the CONTROL trials, the GO process is
exclusively active, and the distribution of finish times of this process is
represented in the distribution of the saccade reaction times. Although it is
rather easy to estimate the GO process, the STOP process can, however, only be
approximated with the help of the race model. To estimate the SSRT from each
experimental session (n = 48) that was performed by the two monkeys
and while each neuron was recorded, we used two estimation methods derived
from this race model. This approach has been described in detail previously
(Logan and Cowan, 1984
;
Hanes et al., 1998
), and it is
closely related to analyses performed previously on data from double-step
saccade tasks (Lisberger et al.,
1975
; Becker and Jürgens,
1979
).
The first estimation method provides an estimate of the SSRT at each
stop-signal delay by assuming that the SSRT is a constant
(Fig. 2C). Although
this assumption seems implausible, it is not crucial because its violation has
been demonstrated to not change the estimation substantially
(Logan and Cowan, 1984
;
DeJong et al., 1990
;
Band et al., 2003
). This method
estimates, for a given stop-signal delay, the point in time at which the STOP
process finishes by integrating the observed distribution of saccade reaction
times in the CONTROL trials, beginning at the time of target presentation
until the integral equals the observed proportion of noncanceled trials when
given a stop signal after that stop-signal delay. This point limit of the
integral corresponds to the saccades with the longest reaction time possible
before they all become inhibited by the STOP process. Thus, the interval from
the appearance of the stop signal and this finish line represents the SSRT at
this stop-signal delay. Like others, we observed that the SSRTs calculated
with this method varied somewhat with the stop-signal delays, and we therefore
averaged their values across the four different delays. With this estimation
method, the SSRT averaged 108 msec across both monkeys and all recording
sessions (Table 1).
The second estimation method assumes that the SSRT is a random variable and
provides an estimate of its mean. Logan and Cowan
(1984
) showed mathematically
that the mean SSRT is equal to the difference between the mean reaction time
during CONTROL trials and the mean value of the inhibition function obtained
from the STOP trials. We determined the mean of each inhibition function by
treating it as a cumulative distribution and converting it into a probability
density function. We first fitted each set of inhibition data points with a
Weibull function, W(t) (see Materials and Methods). The mean
of the function was then calculated as the difference between the probability
of not canceling a saccade at a given stop-signal delay (t) and the
probability at the preceding stop-signal delay (t - 1) multiplied by
the given stop-signal delay summed over all stop-signal delays
(Logan and Cowan, 1984
). To
account for the fact that most inhibition functions had a minimum of >0 and
a maximum of <1, or both, we rescaled the mean of the inhibition function
by dividing the mean of the inhibition function by the difference between the
maximum and minimum probabilities of noncanceled saccades
(Hanes et al., 1998
). Thus,
the estimate of the mean of the best-fit inhibition function is:
[W(t) - W(t - 1)] ·
t/[W(tmax) -
W(tmin)], where t ranges from
the minimum to the maximum stop-signal delay in 1 msec intervals. With this
estimation method, the SSRT averaged 113 msec
(Table 1), a value not
significantly different from that obtained with the integration method (paired
t test; t = 1.54; df = 47; p = 0.13).
In theory, the two estimation methods are equally valid
(Logan and Cowan, 1984
). We
therefore obtained an overall behavioral estimate of saccade cancellation for
each recording session by averaging the SSRT derived from both estimation
methods. This estimated SSRT averaged 110 msec and its distribution was
unimodal, spanning <50 msec (range, 90 to 134). In summary, our behavioral
analysis indicates that once the stop signal appeared, it took 110 msec for
the monkeys to cancel the saccadic program triggered by the visual target
presentation.
Neural estimate of saccade cancellation
The second goal of this study was to obtain a neural estimate of saccade
cancellation from the SC neurons recorded while the monkeys performed the
countermanding task. To do so, we compared the neuronal activity associated
with the STOP trials, during which the saccades were canceled, with the
neuronal activity exhibited during CONTROL trials. However, not all CONTROL
trials were included in this analysis. In the canceled STOP trials, the
saccade production was inhibited, because the STOP process finished before the
GO process. Thus, the only valid CONTROL trials that can be compared with the
canceled STOP trials are those in which the saccade initiation would have been
canceled if the stop signal had been presented
(Hanes et al., 1998
). These
are the trials in which the GO process was slow enough that the STOP process
would have finished before the GO process. This subset of corresponding
CONTROL trials, identified by the dark region of the example distribution of
saccade reaction times in Figure
2C, corresponds to the saccades that had reaction times
exceeding the stop-signal delay plus the SSRT calculated from the same data.
With this valid comparison, the neural estimate of saccade cancellation can be
defined as the time when the activity in these two sets of trials becomes
significantly different.
To influence behavior, a saccade-related neuron must discharge differently
(i.e., more) during corresponding CONTROL trials than canceled STOP trials.
Furthermore, for the neuron to be directly involved in canceling the saccade,
the differential activity must occur early enough before the behavioral
estimate of saccade cancellation. Figure
3 shows the activity of one representative saccade-related neuron
recorded during the countermanding task.
Figure 3, A and
B, shows the stimulus-aligned activity during canceled
STOP trials and corresponding CONTROL trials, respectively. In the CONTROL
trials, the activation of the neuron began after some delay relative to the
stimulus onset and gradually grew toward a saccade-related burst of action
potentials. In the STOP trials, when the saccades were successfully canceled,
a similar initial activation was abruptly truncated some time after the STOP
signal. In Figure 3C,
the spike density functions computed for the activity associated with these
two types of trials are superimposed along with the differential spike density
function and the time at which it reaches a significance level (see Materials
and Methods). This time marks the neural estimate of saccade cancellation and
can be contrasted with the SSRT obtained from these trials (94 msec). In the
example neuron, the former preceded the latter by 9 msec. Furthermore, the
discharge rate of the neuron, as measured in a 40 msec interval centered on
the behavioral estimate of saccade cancellation, was significantly greater in
CONTROL trials (214 Hz) than in canceled STOP trials (88 Hz; t =
5.95; df = 87; p < 0.0001). Thus, the activity of this neuron
changed significantly when saccades were canceled as well as in advance of the
behavioral estimate of cancellation, thereby suggesting that it has activity
sufficient to be directly involved in canceling the planned saccade.

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Figure 3. Activity of one SC saccade-related neuron recorded during the
countermanding saccade task. Top, Activity during canceled and noncanceled
STOP trials with a 170 msec stop-signal delay. Middle, Activity during
corresponding CONTROL trials. Bottom, Superimposed spike density functions for
matching CONTROL (gray) and STOP (black) trials. To facilitate the comparison
between conditions, each panel shows the time of the stop signal presentation
(thick vertical line) and the time of the behavioral estimate of saccade
cancellation (broken vertical line). The neural estimate of saccade
cancellation (thin vertical line) is the time at which the differential spike
density function (dotted function) crossed the significance threshold (broken
horizontal line). Circles indicate saccade onsets.
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We calculated the discharge rate of each SC neuron during a 40 msec
interval centered on the behavioral estimate of saccade cancellation for both
the canceled STOP trials and their corresponding CONTROL trials.
Figure 4A shows the
distribution of the ratios between these discharge rates calculated at each
stop-signal delay (with at least five trials) for each saccade-related neuron.
All but one (97%; 31 of 32) of the saccade-related neurons had a significant
activity ratio in at least one stop-signal delay (t test; p
< 0.01), and 95% (88 of 93) of the ratios from all of the stop-signal
delays available from all saccade-related neurons were significantly >1.
Overall, the ratios ranged from 0.89 to 93.06, with a mean (±SE) of
7.86 ± 1.30. Thus, nearly all saccade-related neurons displayed a
discharge rate around the time of saccade cancellation that was significantly
less in canceled STOP trials than in their corresponding CONTROL trials.

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Figure 4. A, Distribution of the ratios of activity in the 40 msec interval
centered on the time of the behavioral estimate of saccade cancellation in
canceled STOP trials and corresponding CONTROL trials for the group of trials
collected in each stop-signal delay in 32 SC saccade-related neurons. Solid
cells indicate the groups with activity ratios that were significantly greater
than unity. B, Distribution of the timing difference between the
neural and behavioral estimates of saccade cancellation for the same
saccade-related neurons. Each stop-signal delay from each neuron contributed
one data point.
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We also determined the relative timing between the estimate of saccade
cancellation and the behavioral estimate of saccade cancellation of each
neuron obtained from the analysis of the behavioral data collected during the
same experimental session (Fig.
4B). It was possible to calculate a neural estimate of
saccade cancellation in at least one stop-signal delay for each of the
saccade-related neurons, and this estimate occurred before the behavioral
estimate in 94% (30 of 32) of the neurons. These neural estimates preceded the
behavioral estimates, on average, by 10 msec (SE = 1; range, -36 to 24;
n = 92). This time difference approximates the SC minimal efferent
delay, which has been estimated to be 8 msec
(Miyashita and Hikosaka,
1996
). Also, 88% (28 of 32) of the neurons significantly changed
their activity at least 8 msec before the time of the behavioral estimate of
saccade cancellation in at least one stop-signal delay. The fact that the
change in activity of nearly all SC neurons preceded the change in behavior
within the SC minimal efferent delay demonstrates that SC neuronal activity is
sufficient to cancel saccade production.
Maximum activation during the controlled phase of movement
processing
The countermanding task allows us to observe the neural signals during the
controlled phase of movement processing. As seen in
Figure 3A, the
activation of saccade-related neurons could be dissociated from saccade
production during STOP trials when the saccades were successfully canceled,
but it often reached a substantial level. We quantified that level of activity
by measuring, for each neuron, the peak of the stimulus-aligned spike density
function associated with canceled STOP trials at each stop-signal delay, and
we contrasted this value with that of the peak of the saccade-aligned spike
density function associated with all CONTROL trials
(Fig. 5). This comparison is
particularly important to test the hypothesis that the SC neuronal activation
must reach a critical threshold to trigger a saccade, in which case the level
of activity observed in canceled STOP trials should at least not exceed the
maximum activation level observed during CONTROL trials. The highest peak
activation during canceled STOP trials averaged 109 Hz (SE = 8; range, 51 to
239), whereas the peak activation observed in CONTROL trials averaged 325 Hz
(SE = 27; range, 68 to 664). A ratio was calculated for each neuron by
dividing the highest peak activation during STOP trials by the peak activation
during CONTROL trials. This ratio was found to be always <1 (range, 0.15 to
0.97) and to average 0.4, which was significantly <1 (t test;
p < 0.0001). Thus, although each neuron discharged substantially
in STOP trials when the monkey withheld a saccade, its maximum activation
level in these trials was always less than in CONTROL trials when the monkey
executed a saccade. This result provides additional evidence for the concept
of trigger threshold in movement initiation models
(Carpenter and Williams, 1995
).
Evidence in support of the corollary of this concept, that neuronal activity
grows toward this threshold, has also been presented
(Hanes and Schall, 1996
;
Paré, 2002).

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Figure 5. Comparison between the greatest maximum peak activation during canceled
STOP trials and the maximum saccade-aligned activation during all CONTROL
trials for each of the 32 SC saccade-related neurons.
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Independence of GO and STOP processes
The race model that we used to estimate the SSRT assumes that the GO and
STOP processes are stochastically independent. If the two processes
interacted, the SSRT would systematically vary with the stop-signal delay, and
the timing difference between the neural estimate and the estimated mean SSRT
would be erroneous. We conducted a series of behavioral and neural analyses to
test whether the independence assumption of the model was respected in our
experiments.
If the growth of the STOP process affected the growth of the GO process,
one might expect saccades made in the presence of the stop signal (noncanceled
STOP trials) to reach reduced eccentricity and peak velocity, as compared with
those made in the absence of a stop signal (CONTROL trials)
(Hanes and Schall, 1995
). We
tested this possibility for each group of saccades made to each target in each
session, provided that each group had at least 10 movements. The eccentricity
of saccades made in non-canceled STOP trials were found to be 1.3% (mean
difference, 0.2°) less than that of CONTROL trial saccades; this
difference was significant in 27% (22 of 82) of comparisons (t test;
p < 0.01). The peak velocity of the saccades made in noncanceled
STOP trials were found to be 0.7% (mean difference, 4 degrees per sec) less
than that of CONTROL trial saccades; this difference was significant in only
4% (3 of 82) of comparisons.
An additional behavioral test of the independence assumption consists of
determining how well the race model predicts the reaction times of the
saccades made in noncanceled STOP trials
(Logan and Cowan, 1984
;
Hanes and Carpenter, 1999
). In
non-canceled STOP trials, saccades were produced because the GO process
finished before the STOP process. Thus, the valid CONTROL trials that can be
used to predict the saccade reaction times in these noncanceled STOP trials
are those in which the saccade initiation would have been initiated, even if
the stop signal had been presented. These are the trials in which the GO
process was fast enough that it would have finished before the STOP process if
a stop signal had been presented. This subset of CONTROL trials, identified by
the light region of the example distribution of saccade reaction times in
Figure 2C, corresponds
to the ensemble of saccades that had reaction times that were less than the
stop-signal delay plus the estimated SSRT. We found that the mean saccade
reaction time in these CONTROL trials exceeded the mean saccade reaction time
in noncanceled STOP trials by 1.4% (mean difference, 3 msec); this difference
was significant in only 9% (10 of 108) of comparisons. In addition, no
significant differences were found in the data sets with >30 trials
(n = 55).
We conclude from these behavioral analyses that there is no large violation
of the independence assumption of the race model for overt variables related
to the outcome of the race between GO and STOP processes. To evaluate the
independence of GO and STOP processes as they raced toward the finish line, we
compared the neuronal activity associated with the noncanceled STOP trials
with that exhibited during CONTROL trials
(DeJong et al., 1990
;
Hanes et al., 1998
). If the
STOP process interfered with the GO process, the growth of neuronal activity
before saccades in non-canceled STOP trials should be slower than that
observed before saccades in CONTROL trials. To be valid, the analysis included
only STOP trials in which both the GO and STOP processes were active [i.e.,
trials with saccade reaction times exceeded the stop-signal delay plus the
time needed for the SC to register the stop signal presentation (its afferent
delay or minimal visual response latency)], which we estimated to be 50 msec
(Edelman and Keller, 1996
). To
provide a valid comparison, this minimum saccade latency restriction was also
applied to the corresponding CONTROL trials. Only a significantly greater rate
in CONTROL trials could be regarded as evidence against the independence of
the GO and STOP processes.
Figure 3, D and
E, shows the activity of a representative saccade-related
neuron during the selected noncanceled STOP trials and corresponding CONTROL
trials, respectively. During both types of trials, the activity of this neuron
similarly grew and peaked around the time of saccade initiation. The
differential spike density function calculated from these noncanceled STOP
trials and corresponding CONTROL trials never became significant
(Fig. 3F). The average
discharge rate of this neuron, as measured in a 40 msec interval ending at the
time of saccade initiation, was 216 Hz during CONTROL trials and 229 Hz during
noncanceled STOP trials, a difference that was not statistically significant
(t = -0.66; df = 66; p = 0.51).
A ratio of the discharge rate during noncanceled STOP trials and
corresponding CONTROL trials was determined for each stop-signal delay in
which sufficient trials were collected with each saccade-related neuron
(Fig. 6). Ninety-four percent
(29 of 31) of the ratios from all stop-signal delays available from all
saccade-related neurons were not significantly different from 1. Overall, the
ratios ranged from 0.83 to 1.21, with a mean (±SE) of 1.01 ±
0.02, which was not significantly different from 1 (t test;
p = 0.40). For all of the neurons, the difference between the average
spike density functions associated with noncanceled STOP trials and
corresponding CONTROL trials never reached significance. These results suggest
that, in our experiments, the STOP process did not influence the growth of the
GO process.

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Figure 6. Distribution of the ratios of activity of SC saccade-related neurons in the
40 msec interval before saccade initiation in noncanceled STOP trials and
corresponding CONTROL trials. Each stop-signal delay from each neuron
contributed one data point. Solid cells indicate ratios of groups with
statistically significant differences.
|
|
Responses of neurons with fixation-related activity
In addition to neurons with saccade-related activity, we also collected
data from a sample of neurons located within the rostro-lateral portion of the
SC (within the representation of very small saccades) and defined as providing
an extraretinal fixation signal. Figure
7 shows the activity of a fixation-related neuron during
countermanding trials. In the CONTROL trials, the activation of the neuron
paused before and during the saccades. In the STOP trials, when the saccades
were successfully canceled, the pause in activity was replaced by an increase
in activity in response to the presentation of the STOP signal. In contrast to
saccade-related neurons, fixation-related neurons must discharge more during
canceled STOP trials than corresponding CONTROL trials to influence behavior.
The discharge rate of this neuron during a 40 msec interval centered on the
SSRT was significantly greater in canceled STOP trials (96 Hz) than
corresponding CONTROL trials (60 Hz; t = -4.18; df = 129; p
< 0.0001). Furthermore, its neural estimate of saccade cancellation
preceded (by 25 msec) the behavioral estimate obtained in these trials (129
msec). The activity of this neuron could therefore have been directly involved
in countermanding the saccade that was being programmed, because the
difference in activity occurred early enough within the SSRT.

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Figure 7. Activity of one SC fixation-related neuron recorded during the
countermanding saccade task. Top, Activity during canceled STOP trials with a
175 msec stop-signal delay and with the target presented 10° left
(A-C) and 10° right (D-F) of the
fixation point. Middle, Activity during corresponding CONTROL trials. Bottom,
Superimposed spike density functions for matching CONTROL (gray) and STOP
(black) trials. See Figure 3
legend for details.
|
|
For each fixation-related neuron, we calculated a ratio of the discharge
rates during a 40 msec interval centered on the SSRT in canceled STOP trials
and corresponding CONTROL trials. Figure
8A shows the distribution of these ratios calculated for
each stop-signal delay (both target positions) in which sufficient trials were
collected. The ratios ranged from 0.11 to 1.66, with a mean (±SE) of
0.6 ± 0.04, and 73% (46 of 63) of the ratios from all stop-signal
delays available from all fixation-related neurons were significantly <1
(t test; p < 0.01). Thus, a majority of fixation-related
neurons displayed a discharge rate around the time of the SSRT that was
significantly greater when saccades were canceled in STOP trials than when the
saccades in CONTROL trials were produced but could have been canceled.
Figure 8B shows that
similarly to saccade-related neurons, the neural estimates computed from
fixation-related neurons preceded, on average by 13 msec, the behavioral
estimates (SE = 2; range, -38 to 44; n = 46). In fact, the timing
between the neural and behavioral estimates of saccade cancellation for these
two groups of neurons was not significantly different from each other
(t test; p = 0.19), but both were significantly different
from 0 (t test; p < 0.0001).

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Figure 8. A, Distribution of the ratios of activity in the 40 msec interval
centered on the time of the behavioral estimate of saccade cancellation in
canceled STOP trials and corresponding CONTROL trials for the group of trials
collected in each stop-signal delay in 10 SC saccade-related neurons. Solid
cells indicate the groups with activity ratios that were significantly smaller
than unity. B, Distribution of the timing difference between the
neural and behavioral estimates of saccade cancellation for the same
fixation-related neurons.
|
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 |
Discussion
|
|---|
We used a countermanding saccade paradigm to gain new insights on how SC
neurons are involved in saccade programming. We found that the activity of SC
saccade-related neurons significantly dropped before saccades successfully
countermanded in response to a visual stop signal presented at the fovea.
Concomitantly, neurons with fixation-related activity increased their
activity. Because the change in activity of these neurons occurred within the
SSRT, leading the behavioral estimate of saccade cancellation by an interval
exceeding the minimal amount of time needed for SC activity to influence eye
movements, we conclude that the process of saccade cancellation fully involves
the SC. The cancellation of the saccadic command can thus be viewed as the
a priori suppression of a saccadic command that was created centrally
and not as the a posteriori suppression of a command that was already
sent to the periphery. The additional observation that SC saccade-related
neurons discharged significantly less when saccades were countermanded instead
of executed indicates that the SC neuronal activation may have to exceed a
threshold level for a movement to be triggered. Taken as a whole, and together
with the temporal coupling between the saccade-related burst of action
potentials exhibited by these neurons and saccade initiation
(Sparks, 1978
), our results
indicate that the SC exhibits the necessary discharge properties to be
directly involved in regulating whether and when a saccade will be
produced.
Methodological issues
Our conclusion depends critically on the quality of the behavioral estimate
of the saccade cancellation process. We related changes in neuronal activity
to the SSRT estimated in each recording session to account for variation of
the animal's inhibition state between sessions. This approach could yield
somewhat less reliable inhibition functions and regular distributions of
reaction times, because the number of trials collected in each session was
limited. Nonetheless, the estimate that we derived is similar to that reported
in other monkeys (Hanes and Schall,
1995
; Hanes et al.,
1998
), using the same analytical procedure. Furthermore, the mean
difference between SC activity changes and the average behavioral estimates of
saccade cancellation for each monkey was 11 msec (SE = 1; range, -37 to 35;
n = 92), a value not significantly different from the 10 msec
obtained in the session-by-session analysis (paired t test;
t = 1.29; df = 90; p = 0.20). Our estimates were thus not
systematically biased, at least not more than in other reports.
The second limitation of our analysis relates to possible errors in the
neural estimate of saccade cancellation. The spike train filter that we used
to compute spike density functions mimics the time course of postsynaptic
potentials (1 msec rise time constant). The alternative and most common
approach to convert spike train into density functions consists of convolving
the spike trains with Gaussian filters
(Waitzman et al., 1991
).
Analyzing our neural data with such filters (typically,
> 3 msec)
would have simply yielded neural estimates of saccade cancellation earlier
than those we used. Thus, although not perfect, our analysis most likely did
not overestimate the difference between the neural and behavioral estimates of
each session. In addition, the fact that the ensemble of timing differences
between neural and behavioral estimates showed some variability may be
explained by non-covarying fluctuations in these two variables with respect to
their means, which were compared.
Inhibitory control of saccades
The activity patterns that SC neurons exhibited during the countermanding
saccade task had the necessary characteristics of neurons directly involved in
the decision process regulating whether a saccade is to be made. The fact that
the SC neural estimates of saccade cancellation almost consistently preceded
the corresponding behavioral estimates is a remarkable result, given that the
neural estimates from the other saccade executive center that has been
investigated with the countermanding paradigm, the frontal eye field, have
been shown to be coincident with saccade cancellation
(Hanes et al., 1998
). Although
nearly all SC saccade-related neurons (98%) changed their activity within the
SSRT, only 58% FEF saccade-related neurons did so. Moreover, this change in
FEF activity led the behavioral estimate of saccade cancellation by an
interval exceeding the FEF minimal efferent delay in no more than 48% of
neurons, whereas this figure for SC neurons was 88%. [The minimal amount of
time needed for FEF activity to influence eye movements was estimated to be
the sum of the SC minimal efferent delay (8 msec)
(Miyashita and Hikosaka, 1996
)
and the average conduction time of the FEF connection to the SC (2 msec)
(Segraves and Goldberg, 1987
;
Sommer and Wurtz, 2000
).] We
hypothesized that this FEF sample contained more than just FEF output neurons,
and that these should change their activity appropriately to countermand
saccades. Additional investigations are needed to resolve the timing
discrepancy between SC and FEF neuronal modulation.
Within the SC, the saccade cancellation process was reflected to some
extent in the decline of saccade-related activity and the rise of
fixation-related activity. These activity patterns could have resulted from
the direct activation of the fixation-related neurons in the SC by the foveal
stop signal (Munoz and Wurtz,
1993
), which would then have inhibited the saccade-related neurons
via intracollicular connections (Munoz and
Istvan, 1998
). However, such a hypothesis appears inconsistent
with the observed independence between the GO process, partially reflected in
the discharge of saccade-related neurons, and the STOP process, partially
reflected in the discharge of fixation-related neurons. The independence of
these processes is central to the countermanding race model and our study,
along with previous studies (Logan and
Cowan, 1984
; DeJong et al.,
1990
; Hanes and Schall,
1995
; Hanes et al.,
1998
; Hanes and Carpenter,
1999
), provides evidence consistent with this premise. However, it
may be possible that interactions between SC fixation- and saccade-related
signals occur during the very latest part of the race between the STOP and GO
processes (e.g., to prevent the GO process from crossing the finish line and
producing a saccade once the STOP process has won the race)
(Hanes and Carpenter, 1999
).
Until then, the STOP process would act on the two types of SC signals
separately. One candidate structure to provide such a dual influence onto the
SC activity is the substantia nigra pars reticulata (SNpr), which has
monosynaptic inhibitory projections to the SC
(Hikosaka et al., 2000
). SNpr
neurons are known to exhibit either decreasing or increasing changes in
activity associated with saccades made to visual stimuli (Handel and Glimcher,
1999
,
2000
;
Sato and Hikosaka, 2002
). We
therefore surmise that the main component of the STOP process, reflected in SC
activity, stems from a change in the selective inhibitory connections of SNpr
pausers and bursters to the SC saccade- and fixation-related neurons,
respectively.
In our view, the STOP process that countermands saccades involves a
frontostriatal network, which has been associated with the suppression of
reflexive saccades. Human patients with pre-frontal cortex lesions have
difficulty suppressing making saccades to a visual stimulus when instructed to
make saccades away from the stimulus
(Guitton et al., 1985
;
Pierrot-Deseilligny et al.,
1991
), and impairment in this anti-saccade task is associated with
a selective failure in striatum activation
(Raemaekers et al., 2002
).
Human imaging studies also suggest that response inhibition in Go/No-Go and
stop tasks involves prefrontal areas (Casey
et al., 1997
; Bokura et al.,
2001
; Aron et al.,
2003
). The countermanding approach used in the FEF and SC must
therefore be extended to the basal ganglia if we are to further our
understanding of the inhibitory control of saccades.
Central command for saccade production
Before the presentation of a stop signal led to the successful cancellation
of a planned saccade, SC saccade-related neurons discharged substantially,
albeit always less than when saccades were made. This period of neuronal
activation dissociable from saccade production could thus correspond to the
controlled phase of saccade processing. Reduced activation associated with
counter-manded saccades has also been observed in FEF
(Hanes et al., 1998
) as well
as in the lateralized readiness potentials recorded when humans countermand
manual responses (DeJong et al.,
1990
,
1995
;
Osman et al., 1992
). These
results provide additional evidence that the inhibitory control of saccades
involves the suppression of a centrally generated saccadic command.
The difference between the maximum SC activity level associated with
saccade cancellation and production is consistent with the hypothesis that a
saccade is triggered only if neural activation surpasses a critical threshold,
which defines the point of no return that separates the controlled and
ballistic phases of processing. A likely neural substrate of the ballistic
phase in saccade processing is the SC saccade-related burst in activity, which
begins
20 msec before a saccade
(Sparks, 1978
); FEF neurons
have a 28 msec lead (Hanes et al.,
1995
). Altogether, these data suggest that the point of no return
occurs late during the GO process, thereby rendering the interruption of a
planned movement very flexible (Osman et
al., 1990
).
Conclusion
Both saccade- and fixation-related neurons in the SC intermediate layers
discharged differently when saccades were produced versus countermanded, and
these changes in activity occurred within the SSRT. Furthermore, the
difference between the time of occurrence of saccade cancellation estimated
from the differential activity of these neurons and that estimated from the
behavioral data simultaneously collected matched the SC minimal efferent
delay. We consider these results as definitive evidence for the involvement of
the SC in the inhibitory control of saccades.
 |
Footnotes
|
|---|
Received Oct. 16, 2002;
revised May. 6, 2003;
accepted May. 7, 2003.
This work was supported by the National Eye Institute and the Canadian
Institutes of Health Research (M.P.).M. P. holds a New Investigator Award from
the Canadian Institutes of Health Research. We are grateful to Robert H. Wurtz
(National Eye Institute) for his extensive support and advice, without which
this study would not have been possible. We also thank R. Pinkerton and L.
Ekstrom for their contributions to the data analysis as well as N. Bains for
her advice on statistics.
Correspondence should be addressed to Dr. Martin Paré, Queen's
University, Department of Physiology, Botterell Hall, Room 438, Kingston,
Ontario, Canada K7L 3N6. E-mail:
pare{at}biomed.queensu.ca.
Copyright © 2003 Society for Neuroscience
0270-6474/03/236480-10$15.00/0
 |
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