 |
Previous Article | Next Article 
The Journal of Neuroscience, April 1, 2000, 20(7):2691-2700
What and When: Parallel and Convergent Processing in Motor
Control
Katsuyuki
Sakai1, 2,
Okihide
Hikosaka1,
Ryousuke
Takino3,
Satoru
Miyauchi4,
Matthew
Nielsen4, and
Tomoe
Tamada5
1 Department of Physiology, Juntendo University School
of Medicine, Tokyo 113, Japan, 2 Department of Neurology,
Division of Neuroscience, Graduate School of Medicine, University of
Tokyo, Tokyo 113, Japan, 3 Shiraume Gakuen College, Tokyo
187, Japan, 4 Communications Research Laboratory, Kobe
651-24, Japan, and 5 Exploratory Research for Advanced
Technology, Japan Science and Technology Corporation, Kyoto 619-02,
Japan
 |
ABSTRACT |
Successful motor behavior requires making appropriate response
(response selection) at the right time (timing adjustment). Earlier
psychological studies have suggested that the response selection and
timing adjustment processes are performed serially in separate stages.
We tested this hypothesis using functional magnetic resonance imaging.
The subjects performed a choice reaction time task in four conditions:
two (on-line response selection required or not) by two (on-line timing
adjustment required or not). We found that the neural correlates for
the two processes were indeed separate: the anterior medial premotor
cortex (presupplementary motor area) was selectively active in response
selection, whereas the cerebellar posterior lobe was selectively active
in timing adjustment. However, the functional separation was only
partial in that the lateral premotor cortex and the intraparietal
sulcus were active equally for response selection and timing
adjustment. The lateral premotor cortex was most active when both
processes were required, suggesting that it integrates the information
on response selection and the information on timing adjustment;
alternatively, it might contribute to the allocation of attentional
resources during dual information processing. The intraparietal sulcus
was equally active when either response selection or timing adjustment was required, suggesting that it modifies, rather than integrates, these processes. Furthermore, our results suggest that these
activations related to response selection and timing adjustment were
distinct from sensory or motor processes.
Key words:
response selection; timing adjustment; motor execution; parallel processing; medial premotor cortex; cerebellum; lateral
premotor cortex
 |
INTRODUCTION |
Reaction process in response to an
external stimulus has been thought to take several steps, starting from
the stimulus encoding process to the final motor execution process
(Fig. 1a; Frowein et al.,
1981 ). This serial processing stage model is based on the additive
factor theory (Sternberg, 1969 ), which assumes that the reaction time
(RT) reflects a series of independent processing stages. Posner et al.
(1973) , Sanders (1977) , and Frowein et al. (1981) , using a choice
reaction time task (CRT), have shown that uncertainty about which
response to make (response uncertainty) and uncertainty about when to
make the response (time uncertainty) both brought about an increase in
the RT and that the effects were additive. The finding suggested that
the two kinds of uncertainty affected two distinct processing stages,
which have been referred to as the response selection and timing
adjustment stages, respectively (Fig. 1a).

View larger version (44K):
[in this window]
[in a new window]
|
Figure 1.
a, Scheme for reaction processes
proposed in the earlier psychological studies (Frowein et al., 1981 ).
The overall processes were thought to take several discrete stages
arranged in a serial manner, where response uncertainty and time
uncertainty independently affect the response selection and timing
adjustment stages, respectively. In the original scheme, the timing
adjustment was termed as motor adjustment. We used the present term to
stress on the timing aspect. b, Task procedures.
Subjects were asked to press buttons in response to the two types of
stimuli using the index and middle finger of the right hand. The order
of the presentation of the two types of stimuli and ISI were set either
regular or random, creating four conditions named control, response
uncertainty, time uncertainty, and dual uncertainty. c,
Procedures for fMRI experiments. Six runs of experiments were
conducted, three using the auditory paradigm, and the other three using
the visual paradigm. For each run, one of the uncertainty, control, and
rest conditions were repeated for six times in a counterbalanced
order.
|
|
However, it is unknown whether the response selection and timing
adjustment processes are performed in separate brain regions. Although
a number of studies have suggested that some brain regions are related
to response selection (Tanji and Kurata, 1985 ; Kurata, 1993 ; Chen et
al., 1995 ; Deiber et al., 1996 ; Humberstone et al., 1997 ) or timing
adjustment processes (Ivry et al., 1988 ; Ivry and Keele, 1989 ; Perrett
et al., 1993 ; Jueptner et al., 1995 ; Rao et al., 1997 ; Penhune et al.,
1998 ), they were not intended to test the anatomical separation for the
two processes. Crucial to prove the anatomical separation is to
incorporate the two processes in a single experimental paradigm. In the
present study, we have devised a CRT in which response uncertainty and
time uncertainty were manipulated independently to change the amount of
processing for response selection and timing adjustment. Functional
magnetic resonance imaging (fMRI) was used to measure the brain
activations while the normal human subjects performed the CRT. This
factorially designed task procedure allowed us to test the anatomical
separation and/or interaction of the response selection and timing
adjustment processes. In addition, to identify the neural structures
that are independent of the sensory modality of the stimuli, we tested auditory and visual paradigms and searched areas that were commonly active for the two paradigms.
 |
MATERIALS AND METHODS |
Subjects
Six normal human subjects (five men, one woman, ages 28-45
years, right-handed) participated in the study. Informed consents were
obtained from all the subjects prior to the study. The experimental protocol was approved by the ethics committee of the Communications Research Laboratory.
Behavioral paradigm
The subjects lay supine inside the bore of the magnet and held a
plate equipped with two buttons. The subjects were asked to press one
of the two buttons with the right index or middle finger in response to
an auditory or visual stimulus while they were looking at a fixation
spot at the center of the screen through a mirror. We conducted two
sets of experiments, one using auditory stimuli, and the other using
visual stimuli. For auditory stimuli, we used two types of tones with
different pitches (1 and 2 kHz; rise-fall time, 5 msec; plateau, 20 msec; intensity, 95 dB), which were presented through a headphone. For
visual stimuli, we used two disk-shaped patterns with different colors
(yellow or blue; diameter, 4° in visual angle; duration of
presentation, 60 msec), which were presented 2° above the eye
fixation spot on the screen.
The task was factorially designed such that the two factors, the order
of the presentation of the two types of stimuli (order) and the
interstimulus interval (ISI), were varied independently at two levels
(regular/random), creating four conditions named "control",
"response uncertainty", "time uncertainty", and "dual uncertainty" (Fig. 1b). In control, the
presentation of the two types of stimuli were alternated regularly and
separated by a constant ISI of 1 sec. In response uncertainty, the two
types of stimuli were presented in random orders but with a constant ISI of 1 sec. In time uncertainty, the two types of stimuli were presented in regular alternation with random ISIs ranging from 0.7 to
1.3 sec. In dual uncertainty, the two types of stimuli were presented
in random orders with random ISIs (0.7-1.3 sec). Two types of stimuli
presented in regular alternation provide advance information about the
next response, whereas stimuli presented at a constant interval provide
advance information about the timing of button presses. In contrast to
these predictable situations, the randomness in the order of stimulus
presentation and/or ISIs creates unpredictable situations that require
the increased amount of processing for response selection and/or timing
adjustment. Thus, the comparison between the response uncertainty and
control would reflect the response selection process, whereas the
comparison between the time uncertainty and control would reflect the
timing adjustment process. The comparison between dual uncertainty and control would reflect the combination of the two processes. This task
design allowed us to determine how each brain area contributes to the
response selection and the timing adjustment: nonselectively for both
functions, selectively for one function, or selectively for the
conjoint function.
During the task, the state of the ongoing task condition was indicated
on the screen below the fixation spot, so that the subjects could make
use of the advance information about the type of response and/or the
timing of response. Subjects were instructed to suppress anticipatory
responding and also to minimize choice errors and were trained for 20 min before the fMRI experiments. Trials with RTs <100 msec
(anticipatory responding) and those with choice errors accounted for
2.2 and 3.4% of all the trials, which were excluded from the RT data analysis.
Procedure of fMRI experiment
First, structure images were obtained for each subject [fast
low angle snap shot; repetition time (TR), 2.8 sec; echo time (TE), 4 msec; inversion time (TI), 300 msec; flip angle (FA), 15°; thickness,
1 mm; resolution, 1 × 1 mm; matrix, 256 × 256). Subsequently, the subjects underwent six runs of fMRI experiments, three using auditory paradigm and the other three using visual paradigm
(Fig. 1c). For each run, the subjects performed six blocks of the following three conditions: one of the three uncertainty conditions, control condition, and rest condition (Fig. 1c).
In the rest condition, the subjects were asked only to focus their gaze
on the fixation spot, and no stimuli were presented. Each condition
block lasted for 35 sec. Within each run, the orders of the three
conditions were counterbalanced across the six repetitions, and, also,
the orders of the three runs for each of the auditory and visual
paradigms were counterbalanced across the six subjects. For each run,
the task condition was started after two dummy scans, whereas a time
series of 126 scans (seven scans × three conditions × six
repetitions) was performed at an interscan interval of 5 sec using a
1.5 T scanner (Siemens Vision, Erlangen, Germany) equipped with
a circular-polarized head coil. In each single scan, 14 slices of
T2*-weighted gradient-echo echoplanar images (TR, 5 sec; TE, 66 msec;
FA, 90°; thickness, 7 mm; resolution, 1.8 × 1.8 mm; matrix,
128 × 128) were collected parallel to the anterior and posterior
commissure (AC-PC) line, which was determined based on the structure
images obtained beforehand.
Data analysis
For data analysis, we used two methods. First, we performed
statistical parametric analysis on the population data from the six
subjects to identify the candidate brain regions related to response
selection and/or timing adjustment processes. This analysis provides
global estimates for the candidate brain regions and also shows the
difference in the activation patterns between the two processes.
However, the analysis depends on the population data and cannot take
into account the anatomical variations across subjects. In addition, we
needed another approach for statistical testing of the difference in
the activations for each brain region between the two processes.
Therefore, as the next step, we investigated whether the candidate
regions are selectively related to response selection or timing
adjustment process based on the individual data for each subject. In
this second analysis, we delineated each candidate region based solely
on the anatomical landmarks for each subject. This procedure could take
the anatomical variations across subjects into account.
Identification of neural correlates. Using SPM96
(http//:www.fil.ion.ucl.ac.uk/spm; Welcome Department of Cognitive
Neurology, London, UK), the series of functional images for the six
runs was realigned, normalized, and smoothed with a Gaussian filter of
4.5 mm full-width half-maximum. The time series of magnetic resonance
signals for the two conditions of interest was cross-correlated with a
boxcar reference function shifted for one data point (5 sec), whereas
the confounding effect of variation in global signal intensity across
subjects was removed by analysis of covariance. Statistical parametric
map of the t statistics was constituted from the resulting
voxel values and was transformed to the unit normal distribution
(SPM{Z}; thresholded at Z = 3.09).
Taking spatial extent of activation into consideration, a corrected
p value of 0.05 was used as the final threshold for
significance. To find the areas commonly active for the auditory and
visual paradigms, we performed a conjunction analysis for the two
paradigms (Price and Friston, 1997 ). The analysis first created a
statistical parametric map that reflected the sum of the contrasts for
the two paradigms and then eliminated regions where there were
significant differences (p < 0.05) between the
two. Thus, the procedure identifies areas that show significant
difference in the activation between the two conditions of interest and
that are independent of the sensory modality of the stimuli.
First, we identified the candidate brain regions related to response
selection and/or timing adjustment processes. The conjunction analysis
between the auditory and visual paradigms was performed respectively
for the following three comparisons: response uncertainty versus
control, time uncertainty versus control, and dual uncertainty versus
control. Subsequently, the three statistical parametric maps were
rendered onto the same standard brain template (Talairach and Tournoux,
1988 ) to show the areas active in any of the three comparisons. Thus,
the map shows areas that were independent of the sensory modality of
the stimuli and reflect (response uncertainty-control) (time
uncertainty-control) (dual uncertainty-control). The identified
areas would be related to response selection and/or timing adjustment processes.
Second, we identified the neural correlates for motor execution
process. This process should be independent of the sensory modality of
the stimuli, and, in addition, should be similarly involved in all of
the three uncertainty conditions as well as control condition. Based on
the idea, the conjunction analysis was initially performed between the
auditory and visual paradigms, respectively for control versus rest,
response uncertainty versus rest, time uncertainty versus rest, and
dual uncertainty versus rest. Subsequently, we searched areas that were
common to all of these four pairs of contrasts. Thus, the results
should show areas that were independent of the sensory modality and
reflect (control-rest) (response uncertainty-rest) (time
uncertainty-rest) dual uncertainty-rest). The identified areas
would be related to the motor execution process.
Testing the effect of uncertainty. For the next step, we
tested the effect of the uncertainty about response and uncertainty about timing on the activations of the brain areas identified by the
preceding analysis. As will be described in Results, we found the four
candidate areas related to the response selection and/or timing
adjustment processes [the presupplementary motor area/rostral
cingulate motor area (PreSMA/rCMA), cerebellar posterior lobe
(Cbll-post), lateral premotor cortex (PM), and an area around the
intraparietal sulcus (IPS)] and the three candidate areas related to
the motor execution process [the supplementary motor area proper
(SMA-proper), primary motor cortex (M1), and cerebellar anterior lobe
(Cbll-ant)].
The volumes of interest (VOIs) for these seven areas were
determined for each subject based on the anatomical landmarks before the creation of activation maps according to the following criteria (see also Fig. 4a), and we calculated the sizes of active
volumes within the VOIs as measures for the degree of activations.
PreSMA/rCMA: the rectangular portion over the medial premotor region,
extending anteriorly for 25 mm from the plane passing the anterior
commissure (VCA), and laterally for 10 mm from the midline to both
sides (Picard and Strick, 1996 ). Additionally, the VOIs were separately
determined for PreSMA and rCMA by assuming their border to be at the
superior cingulate sulcus.
SMA-proper: the rectangular portion over the medial premotor region
between the VCA and the coronal plane passing the posterior commissure
(VCP) and above the superior cingulate sulcus (Picard and Strick,
1996 ).
Cbll-post: the portion of the cerebellum between the primary fissure
and the horizontal fissure that corresponded to the H VI-VIIa (Larsell
and Jansen, 1972 ).
Cbll-ant: the portion of the cerebellum anterior to the primary fissure.
PM: the area around the precentral sulcus above the junction of the
precentral and inferior frontal sulci, extending anteriorly for 10 mm
from the precentral sulcus and posteriorly to the midline between the
precentral and central sulci (Fink et al., 1997 ).
M1: the area posterior to the midline between the precentral and
central sulci, anterior to the central sulcus and above the junction of
the precentral and inferior frontal sulci.
IPS: areas around the horizontal segment of the intraparietal sulcus,
10 mm medial or lateral to the sulcus.
Activation maps were created for each subject by comparing each of the
control, response uncertainty, time uncertainty, and dual uncertainty
conditions with the rest condition using the same statistical threshold
as used in the population data analysis. Then, for each VOI, the active
volume sizes were computed and expressed in cubic millimeters for the
four conditions, on which two-factor ANOVA was performed to test
the effect of uncertainty about response and uncertainty about timing.
Additionally, these measures of active volume sizes were used for
statistical testing of the laterality of activations. For each area,
the active volume sizes between the two hemispheres were compared using
paired t test, respectively for the four conditions.
Dependence on sensory modality. In addition to the areas
commonly active for both auditory and visual paradigms, we identified areas that were dependent on the sensory modality of the stimuli. For
this purpose, the statistical parametric maps were created respectively
for the auditory and visual paradigms. The results were rendered onto
the same standard brain template (Talairach and Tournoux, 1988 ) to see
the difference and overlap of activations between the two paradigms.
The comparisons were respectively made for response uncertainty versus
control, time uncertainty versus control, and dual uncertainty versus
control to identify the response selection and/or timing adjustment
processes that were dependent on the sensory modality. In addition, the
comparisons were respectively made for control versus rest, response
uncertainty versus rest, time uncertainty versus rest, and dual
uncertainty versus rest to identify the early perceptual processes that
were unmodulated by any of the uncertainty conditions.
 |
RESULTS |
Behavioral data
Figure 2a shows the RTs
for button pressing under the four conditions: control, response
uncertainty, time uncertainty, and dual uncertainty. For both auditory
and visual paradigms, the RTs were longer in the three uncertainty
conditions compared with the control. Two-factor ANOVA showed that both
the response uncertainty and the time uncertainty increased the RT
significantly (for auditory paradigm, the main effect of response
uncertainty was F(1,5) = 15.1, p < 0.05; the main effect of time uncertainty was
F(1,5) = 10.1, p < 0.05; for visual paradigm, they were
F(1,5) = 19.7, p < 0.05 and F(1,5) = 6.68, p < 0.05, respectively). On the other hand, the
interaction of the two kinds of uncertainty was not significant
(auditory paradigm, F(1,5) = 0.095, p > 0.1; visual paradigm,
F(1,5) = 0.012, p > 0.1). Relative to control, the increase of RT for dual uncertainty
(mean increase of RT: 85.4 and 140.4 msec, respectively for auditory
and visual paradigms) was close to the sum of the increase of RT for
response uncertainty and RT for time uncertainty (50.9 + 33.3 and 70.8 + 50.3 msec, respectively, for auditory and visual paradigms).

View larger version (77K):
[in this window]
[in a new window]
|
Figure 2.
Reaction times (a) and
variance of reaction times (b) for the four
conditions: control (cont), response uncertainty
(resp), time uncertainty (time), and dual
uncertainty (dual). Means and the SEs for the six
subjects were separately shown for the auditory (left)
and visual (right) paradigms.
|
|
To the contrary, for the variance of RT, the interaction of the two
kinds of uncertainty was significant (auditory paradigm, F(1,5) = 24.1, p < 0.05; visual paradigm, F(1,5) = 7.73, p < 0.05; Fig. 2b). Relative to control,
the increase of the RT variance for dual uncertainty condition (mean
increase of RT variance, 2813 and 2743 msec2) was significantly shorter than the
sum of the increase of RT variances for response uncertainty and time
uncertainty (2824 + 2380 and 2717 + 2142 msec2). Thus, there was no additive
effect on the variance of RT.
fMRI data
Using fMRI, we investigated whether different brain regions
subserve the response selection and timing adjustment processes. We
present the fMRI data in two parts: (1) show the candidate regions
involved in response selection and/or timing adjustment; (2) examine
whether the candidate regions are selectively related to response
selection and/or timing adjustment. The results are shown separately
for the areas that were independent of the sensory modality of the
stimuli and for the areas that were dependent on the sensory modality
of the stimuli.
Identification of neural correlates
Response selection and/or timing adjustment. We first
determined the candidate brain regions related to response selection and/or timing adjustment. Initially, six statistical parametric maps
for the group of six subjects were created by comparing each of the
three uncertainty conditions with control, respectively for the
auditory and visual paradigms. The coordinates of the active areas are
indicated in Tables 1 and
2. To determine the areas that
were independent of the sensory modality of the stimuli, the
conjunction analysis was performed between the auditory and visual
paradigms, respectively, for the three comparisons (coordinates shown
in Table 3). The areas commonly active
for the two paradigms were coded yellow on the surface of the standard
brain (Fig. 3a, left) and on
the axial sections (Fig. 3a, right). The figures indicate
areas that were active in any of the three uncertainty conditions
relative to control. The areas included the anterior part of the medial
premotor cortex above and below the superior cingulate sulcus. They
were located anterior to the VCA and thus were considered to be the
PreSMA (Picard and Strick, 1996 ; Tanji, 1996 ) and the rCMA (Dum and
Strick, 1993 ; Picard and Strick, 1996 ). Because the activation was
continuous over the superior cingulate sulcus, the two areas were,
hereafter, jointly referred to as PreSMA/rCMA. The yellow areas were
also found in the lateral part of the cerebellar posterior lobe on both
sides, which were mainly localized in H VI-VIIa (Larsell and Jansen,
1972 ) (Cbll-post) (better seen in Fig. 3a, right). Other
areas coded in yellow were the PM (Passingham, 1993 ; Fink et al., 1997 ;
Wise et al., 1997 ) and the area around the IPS. PreSMA/rCMA,
Cbll-post, and PM were active on both sides, whereas IPS was active
only on the left side. These areas were considered to be related to
response selection and/or timing adjustment processes, irrespective of
the sensory modality of the stimuli.

View larger version (29K):
[in this window]
[in a new window]
|
Figure 3.
Statistical parametric analysis:
sensory-modality-independent areas. Areas related to response selection
and/or timing adjustment processes (a) and areas
related to motor execution process (b) are shown
in yellow on the surface of the standard brain
(left three figures) and on the three axial slices of a
single subject fitted into the Talairach space (Talairach and
Tournoux, 1988 ) (right three figures). The
left side of the figure indicates the left hemisphere.
a, (response uncertainty-control) (time
uncertainty-control) (dual uncertainty-control);
b, (control-rest) (response uncertainty-rest) (time uncertainty-rest) (dual uncertainty-rest).
|
|
Motor execution. Note that the above activations were
revealed with respect to the control condition. The comparison with the
rest condition revealed a different set of brain areas, which were
commonly active in the control and the three uncertainty conditions
(Fig. 3b). The areas commonly active in the auditory and
visual paradigms (shown in yellow) were the left medial premotor cortex
posterior to VCA, which was considered to be the SMA-proper (Picard and
Strick, 1996 ; Tanji, 1996 ), the left M1, the right Cbll-ant, and the
left IPS. These areas were considered to be related to the motor
execution process because they were active independently of the sensory
modality of the stimuli and were active irrespective of the presence or
absence of the response/time uncertainty.
Testing the effect of uncertainty
The determination of active brain areas so far was still tentative
because the analysis was based on the population data. To further
characterize the candidate brain areas, we performed the second part of
analysis: we delineated the candidate areas for each subject and
statistically examined the contribution of these areas to the response
selection and the timing adjustment.
After determining the VOIs on both hemispheres for each subject (Fig.
4a), the active volume sizes
within the VOIs relative to the rest condition were computed
respectively for the four task conditions (control and the
three uncertainty conditions) (Fig. 4b). Two-factor ANOVA
performed on the active volume sizes showed that, for both the auditory
and visual paradigms, the uncertainty about response produced
significantly increased activation in PreSMA/rCMA, PM, and IPS
(p < 0.05), whereas the uncertainty about timing produced significantly increased activation in Cbll-post, PM,
and IPS (p < 0.05) (Fig. 4b, Table
4). The interaction of the two factors
was found to be significant only for PM, which showed highest activity
under the dual uncertainty condition (p < 0.05;
corrected for multiple comparisons) (Fig. 4b, Table 4). In
contrast, the activations of SMA-proper, M1, and Cbll-ant were not
affected either by the response or time uncertainty
(p > 0.1).

View larger version (48K):
[in this window]
[in a new window]
|
Figure 4.
Region-based analysis. a, Seven
volumes of interest placed on both hemispheres are shown on four slice
images of one subject, which were determined based on the anatomical
landmarks. Light pink, PreSMA/rCMA; dark
pink, SMA-proper; light blue, PM; dark
blue, M1; light green, Cbll-ant; dark
green, Cbll-post; yellow, IPS. b,
The active volume sizes under the four conditions, control
(cont), response uncertainty (resp), time
uncertainty (time), and dual uncertainty
(dual), relative to rest are shown in cubic
millimeters for the seven volumes of interest. The values were combined
for both hemispheres and the means and SEs for the six subjects are
indicated.
|
|
The comparisons of the active volume sizes between the two hemispheres
showed that, for all the conditions, PreSMA/rCMA and Cbll-post were
bilaterally active (paired t test; p > 0.1), whereas PM and IPS was significantly more active on the left side
(p < 0.01). Activations of the SMA-proper, M1,
and Cbll-ant were unilateral: the former two confined on the left
hemisphere, and the latter confined on the right side.
Dependence on sensory modality
We also found brain activations that were selective for the
sensory modality. Figure 5a
shows the areas that were active in each of the three uncertainty
conditions, separately for the sensory modalities: selectively active
for the auditory paradigm (shown in green), selectively active for the
visual paradigm (shown in red), and commonly active in both paradigms
(shown in yellow). The posterior portion of the superior temporal gyrus
(STG-post; Rivier and Clarke, 1997 ) was selectively active for the
auditory paradigm, whereas the ventral part of the occipital areas
probably corresponding to V2 and V4 (Zeki et al., 1991 ; Sereno et al., 1995 ) was selectively active for the visual paradigm. As shown in
Figure 5a, these sensory-modality-dependent areas were
similarly active for the three uncertainty conditions.

View larger version (61K):
[in this window]
[in a new window]
|
Figure 5.
Statistical parametric analysis:
sensory-modality-dependent areas. Areas of significant activation for
the group of six subjects are indicated on the surface of the standard
brain. a, Top row, (response
uncertainty-control); second row, (time
uncertainty-control); third row, (dual
uncertainty-control); b, (control-rest) (response
uncertainty-rest) (time uncertainty-rest) (dual
uncertainty-rest).
|
|
Figure 5a also confirmed the differential involvement of
PreSMA/rCMA, Cbll-post, and PM in response selection, timing
adjustment, and dual processes. PreSMA/rCMA was active for the response
uncertainty, but not for the time uncertainty, whereas Cbll-post was
active for the time uncertainty, but not for the response uncertainty. The two areas were active for the dual uncertainty. In contrast, PM was
bilaterally active only for the dual uncertainty. Whereas PM was active
on the left side for the response uncertainty and time uncertainty, its
activation was significantly higher for the dual uncertainty compared
to the single uncertainty, as seen from Figure 4b. The left
IPS was active to a similar degree for the three uncertainty conditions.
Figure 5b shows the areas that were active even without any
uncertainty: the conjunction of the four comparison; (response uncertainty-rest), (time uncertainty-rest), (dual uncertainty-rest), (control-rest). Areas active for the auditory and visual paradigms were respectively coded in green and red. As shown, the anterior portion of the superior temporal gyrus (A1) and STG-post were active
only in the auditory paradigm (coded green), whereas the medial
and ventral occipital areas including V1 and V2/V4 were active only in
the visual paradigm (coded red).
 |
DISCUSSION |
By changing response uncertainty and time uncertainty
independently, we found that a set of brain areas were active
selectively or conjointly for the response selection and timing
adjustment processes. The activations were largely distinct from those
related to the motor execution processes that were present without any uncertainty and were also distinct from those related to the sensory processes that were selective for the sensory modality used for the
response cue. Based on these results, we propose a parallel and
convergent processing model as shown in Figure
6. In the following will be discussed the
evidence for it and other possible interpretations of our findings.

View larger version (33K):
[in this window]
[in a new window]
|
Figure 6.
Hypothetical neural mechanisms for the processing
of response selection and timing adjustment; the processing
(top) and the neural correlates (bottom).
The scheme depicts the parallel processing of response selection and
timing adjustment, which are subserved by PreSMA/rCMA and Cbll-post. PM
may either integrate these kinds of information or allocate attentional
resources during dual information processing.
|
|
Separate processing
The clear double dissociation between the PreSMA/rCMA and
Cbll-post activations suggests independent neural computations for response selection and timing adjustment. This structural segregation makes it unlikely that the observed activations were merely the reflection of nonspecific attention. Instead, we consider that the
activations reflect the on-line processing for selecting the appropriate response and that for determining the right timing of the
response. Behaviorally, either process would lead to an increase in RT,
as we found. However, it is unclear whether PreSMA/rCMA and Cbll-post
actually compute the response and timing or they are related to the
selective attention to stimulus features (Pardo et al., 1990 ) and timing.
PreSMA is anatomically and functionally distinct from the posteriorly
situated SMA-proper (for review, see Picard and Strick, 1996 ; Tanji,
1996 ), and is particularly active when the subjects had to select the
appropriate response on-line (Deiber et al., 1996 ; Humberstone et al.,
1997 ; Petit et al., 1998 ; Ikeda et al., 1999 ; Sakai et al., 1999a ),
change or update motor plans (Matsuzaka and Tanji, 1996 ; Shima et al.,
1996 ), or respond to an unpredictable visual stimulus (Dassonville et
al., 1998 ). In our behavioral paradigms, the response was selected
based on the auditory-motor or visuomotor mapping rule. This could be
done by the direct connections from the auditory and visual association
cortices (Luppino et al., 1993 ; Rizzolatti et al., 1998 ), as
schematized in Figure 6. Alternatively, the information on the sensory
cue may be relayed by way of other areas, such as the lateral
prefrontal cortex (Bates and Goldman-Rakic, 1993 ; Luppino et al.,
1993 ). rCMA behaved similarly to PreSMA (Table 4). This area has been
shown to be connected with PreSMA (Luppino et al., 1993 ) and to play
roles in higher-order motor control, especially in movement selection
based on reward (Shima and Tanji, 1998 ).
Our data suggested that the posterior part of the cerebellum is related
to the timing adjustment. Indeed, cerebellar patients show deficits in
monitoring and reproducing timing (Ivry et al., 1988 ; Ivry and Keele,
1989 ; Nichelli et al., 1996 ). We now show, more specifically, that the
timing-related area was localized bilaterally in the lateral part of
the cerebellar posterior lobe, consistent with our preceding study
(Sakai et al., 1998 , 1999b ). The finding is also consistent with the
study of eyeblink conditioning showing that a part of Cbll-post
(Larsell's H VI) plays a critical role in precise timing adjustment
(Yeo and Hardiman, 1992 ; Gruart and Yeo, 1995 ). In our task the
subjects might predict the time of the next cue stimulus and, if the
actual time of the stimulus was different, adjust the timing of the
response. Indeed, the RTs were shortest when the preceding ISI was
around the mean value (1 sec) and increased when the preceding ISI was
deviated from 1 sec [mean RTs were 320, 271, and 310 msec, when the
preceding ISI fell within the range of 700-900, 900-1100, and
1100-1300 msec, respectively (ANOVA,
F(5,10) = 14.36, p < 0.01)]. This suggests that the activation of Cbll-post is related to
the correction of timing error, consistent with the general view of the
cerebellar function (Ito 1984 ; Thach et al., 1992 ; Kitazawa et al.,
1998 ). Our data also suggest that both the auditory and visual
information converge on the cerebellum (for review, see Schmahmann,
1996 ) (Fig. 6).
To summarize, PreSMA/rCMA and Cbll-post may contribute independently to
the response selection and timing adjustment processes, or, in other
words, to determine "what action to take" and "when to take
it". However, these data alone cannot indicate whether the two
processes were performed in a serial or parallel manner. The
interaction of these processes must be examined to answer this question.
Interaction
PM was significantly more active in the dual uncertainty condition
than in the single uncertainty conditions. The result suggests two
possibilities. First, PM may play a role in integrating the information
for response and timing. "What" information and "when" information may be processed in parallel by PreSMA/rCMA and Cbll-post, which, then, converge on PM to generate a final motor program (Fig. 6).
Consistent with this view, PM receives connections from both the
pre-SMA (Barbas and Pandya, 1987 ; Kurata, 1991 ) and the cerebellum
(Middleton and Strick, 1997 ), although it is unknown whether Cbll-post
projects to PM. Also consistent is a physiological finding that
neuronal activity in the dorsal PM was strongly influenced by the
predictability of response and timing (Mauritz and Wise, 1986 ). As the
second possibility, PM might contribute to the allocation of
attentional resources during dual information processing (Iacoboni et
al., 1998 ). In this case, PM would modify, rather than integrate, the
response and timing processes (Fig. 6).
IPS was also related to both the response selection and timing
adjustment processes. However, its activity was not enhanced in the
dual uncertainty condition, suggesting that IPS does not play an
integrative role. It has been shown that IPS is crucial for the
selection of action (Snyder et al., 1997 ) and might encode the timing
of events (Mackay and Crammond, 1987 ). Such selection signals and
timing signals in IPS may be sent to the nonprimary sensory areas as
top-down signals to improve their performance (Fig. 6). This can be
regarded as an attentional mechanism in which IPS is considered to play
an important role (Kalaska et al., 1983 ; Rushworth et al., 1997 ).
Anatomically, IPS is densely connected with PM (Passingham, 1993 ; Wise
et al., 1997 ; Rizzolatti et al., 1998 ), and may also be connected with
PreSMA (Luppino et al., 1993 ) and the cerebellum (May and Andersen,
1986 ). IPS is also mutually connected with the nonprimary sensory areas
(Blatt et al., 1990 ), consistent with our scheme (Fig. 6).
Motor execution
The present study has shown that the motor execution process is
anatomically segregated from the response selection and timing adjustment processes, consistent with the suggestion in the earlier psychological study (Frowein and Sanders, 1978 ). The finding indicates the functional separation between PreSMA and SMA-proper and between Cbll-post and Cbll-ant, which was consistent with the preceding studies
(Ivry et al., 1988 ; Picard and Strick, 1996 ; Tanji, 1996 ; Allen et al.,
1997 ; Sakai et al., 1998 , 1999b ). The only exception is IPS, which was
active both in motor execution and in response selection/timing
adjustment processes. It remains open to future studies whether
different subareas within IPS are selectively involved in these processes.
Perceptual processes
Some of the nonprimary sensory areas were related to the response
selection and the timing adjustment, but selectively for the sensory
modality: STG-post for the auditory paradigm and V4 for the visual
paradigm. The activation of these areas may reflect the increased level
of attention to the auditory (especially, pitch) (Woodruff et al.,
1996 ; Tzourio et al., 1997 ; Benedict et al., 1998 ) or visual
(especially, color) stimuli (Moran and Desimone, 1985 ; McAdams and
Maunsell, 1999 ). We speculate that the attentional effects were exerted
by the IPS (Fig. 6). On the other hand, the primary sensory areas (A1
and V1) seemed to be unaffected by the uncertainty conditions (Woodruff
et al., 1996 ; Zeki and Marini, 1998 ; McAdams and Maunsell, 1999 ),
suggesting that these areas are related to the initial processing of
stimulus encoding.
Interpretation of the behavioral data
The increase of RT for dual uncertainty was close to the sum of
the increase of RT for response uncertainty and RT for time uncertainty. This additive effect seems to support the serial model
(Fig. 1a). However, the result on the variance of RT is inconsistent with the serial model. The serial model would require a
similar additive effect for the variance of RT: the variance of RT for
dual uncertainty should be the sum of the RT variances for the two
single uncertainty conditions (Sternberg, 1969 ). Our result indicated,
on the contrary, that the variance of RT for dual uncertainty was close
to the variance of RT for response uncertainty (Fig. 2b).
According to the model shown in Figure 6, the response selection and
timing adjustment processes are performed in parallel, but their
integration starts only after both of the two processes are finished.
The variance of RT for dual processing would then be determined by the
variance of RT for the slower process between the two (response
selection in the present study). The additive effect of RT would be
attributable to the time required for the integration of the two kinds
of information.
 |
FOOTNOTES |
Received Sept. 2, 1999; revised Jan. 20, 2000; accepted Jan. 26, 2000.
This study was supported by Japan Society for Promotion of Science
Research for the Future Program and Basic Research System Core. K.S.
was supported by Japan Society for Promotion of Science Research
Fellowship for Young Scientists. We are grateful to Hiroshi Imamizu and
Mitsuo Kawato at Japan Science and Technology Corporation for their
cooperation with SPM analysis.
Correspondence should be addressed to Katsuyuki Sakai, Department of
Physiology, Juntendo University, School of Medicine, 2-1-1 Hongo,
Bunkyo-ku, Tokyo 113, Japan. E-mail: katz{at}med.juntendo.ac.jp.
 |
REFERENCES |
-
Allen G,
Buxton RB,
Wong EC,
Courchesne E
(1997)
Attentional activation of the cerebellum independent of motor involvement.
Science
275:1940-1943[Abstract/Free Full Text].
-
Barbas H,
Pandya DN
(1987)
Architecture and frontal cortical connections of the premotor cortex (area 6) in the rhesus monkey.
J Comp Neurol
256:211-228[ISI][Medline].
-
Bates JF,
Goldman-Rakic PS
(1993)
Prefrontal connections of medial motor areas in the rhesus monkey.
J Comp Neurol
336:211-228[ISI][Medline].
-
Benedict RHB,
Lockwood AH,
Shucard JL,
Shucard DW,
Wack D,
Murphy BW
(1998)
Functional neuroimaging of attention in the auditory modality.
NeuroReport
9:121-126[ISI][Medline].
-
Blatt GJ,
Andersen RA,
Stoner GR
(1990)
Visual receptive field organization and cortico-cortical connections of the lateral intraparietal area (area LIP) in the macaque.
J Comp Neurol
299:421-445[ISI][Medline].
-
Chen Y-C,
Thaler D,
Nixon PD,
Stern CE,
Passingham RE
(1995)
The functions of the medial premotor cortex II. The timing and selection of learned movements.
Exp Brain Res
102:461-473[ISI][Medline].
-
Dassonville P,
Lewis SM,
Zhu XH,
Ugurbil K,
Kim SG,
Ashe J
(1998)
Effects of movement predictability on cortical motor activation.
Neurosci Res
32:65-74[ISI][Medline].
-
Deiber M-P,
Ibanez V,
Sadato N,
Hallett M
(1996)
Cerebral structures participating in motor preparation in humans: a positron emission tomography study.
J Neurophysiol
75:233-247[Abstract/Free Full Text].
-
Dum RP,
Strick PL
(1993)
Cingulate motor areas.
In: Neurobiology of cingulate cortex and limbic thalamus (Vogt BA,
Gabriel M,
eds), pp 415-441. Boston: Birkhauser.
-
Fink GR,
Frackowiak RSJ,
Pietrzyk U,
Passingham RE
(1997)
Multiple nonprimary motor areas in the human cortex.
J Neurophysiol
77:2164-2174[Abstract/Free Full Text].
-
Frowein HW,
Sanders AF
(1978)
Effects of stimulus degradation, S-R compatibility and foreperiod duration on choice reaction time and movement times.
Bull Psychon Soc
12:106-108.
-
Frowein HW,
Reitsma D,
Aquarius C
(1981)
Effects of two counteracting stresses on the reaction process.
In: Attention and performance IX (Long J,
Baddely A,
eds), pp 575-589. Hillsdale, NJ: Erlbaum.
-
Gruart A,
Yeo CH
(1995)
Cerebellar cortex and eyeblink conditioning: bilateral regulation of conditioned responses.
Exp Brain Res
104:431-448[ISI][Medline].
-
Humberstone M,
Sawle GV,
Clare S,
Hykin J,
Coxon R,
Bowtell R,
Macdonald IA,
Morris PG
(1997)
Functional magnetic resonance imaging of single motor events reveals human presupplementary motor area.
Ann Neurol
42:632-637[ISI][Medline].
-
Iacoboni M,
Woods RP,
Mazziotta JC
(1998)
Bimodal (auditory and visual) left frontoparietal circuitry for sensorimotor integration and sensorimotor learning.
Brain
121:2135-2143[Abstract/Free Full Text].
-
Ikeda A,
Yazawa S,
Kunieda T,
Ohara S,
Terada K,
Mikuni N,
Nagamine T,
Taki W,
Kimura J,
Shibasaki H
(1999)
Cognitive motor control in human pre-supplementary motor area studied by subdural recording of discrimination/selection-related potentials.
Brain
122:915-931[Abstract/Free Full Text].
-
Ito M
(1984)
In: The cerebellum and neural control. New York: Raven.
-
Ivry RI,
Keele SW
(1989)
Timing functions of the cerebellum.
J Cogn Neurosci
1:134-150.
-
Ivry RI,
Keele SW,
Diener HC
(1988)
Dissociation of the lateral and medial cerebellum in movement timing and movement execution.
Exp Brain Res
73:167-180[ISI][Medline].
-
Jueptner M,
Rijntjes M,
Weiller C,
Faiss JH,
Timmann D,
Mueller SP,
Diener HC
(1995)
Localization of a cerebellar timing process using PET.
Neurology
45:1540-1545[Abstract/Free Full Text].
-
Kalaska JF,
Caminiti R,
Georgopoulos AP
(1983)
Cortical mechanisms related to the direction of two-dimensional arm movements: relations in parietal area 5 and comparison with motor cortex.
Exp Brain Res
51:247-260[ISI][Medline].
-
Kitazawa S,
Kimura T,
Yin P-B
(1998)
Cerebellar complex spikes encode both destinations and errors in arm movements.
Nature
392:494-497[Medline].
-
Kurata K
(1991)
Corticocortical inputs to the dorsal and ventral aspects of the premotor cortex of macaque monkeys.
Neurosci Res
12:263-280[ISI][Medline].
-
Kurata K
(1993)
Premotor cortex of monkeys: set- and movement-related activity reflecting amplitude and direction of wrist movements.
J Neurophysiol
69:187-200[Abstract/Free Full Text].
-
Larsell O,
Jansen J
(1972)
In: The comparative anatomy and histology of the cerebellum: the human cerebellum, cerebellar connections, and cerebellar cortex. Minneapolis: University of Minnesota.
-
Luppino G,
Matelli M,
Camarda R,
Rizzolatti G
(1993)
Corticocortical connections of area F3 (SMA-proper) and area F6 (pre-SMA) in the macaque monkey.
J Comp Neurol
338:114-140[ISI][Medline].
-
Mackay WA,
Crammond DJ
(1987)
Neuronal correlates in posterior parietal lobe of the expectation of events.
Behav Brain Res
24:167-179[ISI][Medline].
-
Matsuzaka Y,
Tanji J
(1996)
Changing directions of forthcoming arm movements: neuronal activity in the presupplementary and supplementary motor area of monkey cerebral cortex.
J Neurophysiol
76:2327-2342[Abstract/Free Full Text].
-
Mauritz K-H,
Wise SP
(1986)
Premotor cortex of the monkey: neuronal activity in anticipation of predictive environmental events.
Exp Brain Res
61:229-244[ISI][Medline].
-
May JG,
Andersen RA
(1986)
Different patterns of corticopontine projections from separate cortical fields within the inferior parietal lobule and dorsal prelunate gyrus of the macaques.
Exp Brain Res
63:265-278[ISI][Medline].
-
McAdams CJ,
Maunsell JHR
(1999)
Effects of attention on orientation-tuning functions of single neurons in macaque cortical area V4.
J Neurosci
19:431-441[Abstract/Free Full Text].
-
Middleton FA,
Strick PL
(1997)
Cerebellar output channels.
Int Rev Neurobiol
41:61-82[ISI][Medline].
-
Moran J,
Desimone R
(1985)
Selective attention gates visual processing in the extrastriate cortex.
Science
229:782-784[Abstract/Free Full Text].
-
Nichelli P,
Alway D,
Grafman J
(1996)
Perceptual timing in cerebellar degeneration.
Neuropsychologia
34:863-871[ISI][Medline].
-
Pardo JV,
Pardo PJ,
Janer KW,
Raichle ME
(1990)
The anterior cingulate cortex mediates processing selection in the Stroop attentional conflict paradigm.
Proc Natl Acad Sci USA
87:256-259[Abstract/Free Full Text].
-
Passingham RE
(1993)
In: The frontal lobes and voluntary action. Oxford: Oxford UP.
-
Penhune VB,
Zattore RJ,
Evans AC
(1998)
Cerebellar contributions to motor timing.
J Cogn Neurosci
10:752-765[Abstract].
-
Perrett SP,
Ruiz BP,
Mauk MD
(1993)
Cerebellar cortex lesions disrupt learning-dependent timing of conditioned eyelid responses.
J Neurosci
13:1708-1718[Abstract].
-
Petit L,
Courtney SM,
Ungerleider LG,
Haxby JV
(1998)
Sustained activity in the medial wall during working memory delays.
J Neurosci
18:9429-9437[Abstract/Free Full Text].
-
Picard N,
Strick PL
(1996)
Motor areas of the medial wall: a review of their location and functional activation.
Cereb Cortex
6:342-353[Abstract/Free Full Text].
-
Posner MI,
Klein R,
Summers J,
Buggie S
(1973)
On the selection of signals.
Mem Cognit
1:2-12.
-
Price CJ,
Friston KJ
(1997)
Cognitive conjunctions: a new approach to brain activation experiments.
NeuroImage
5:261-270[ISI][Medline].
-
Rao SM,
Harrington DL,
Haaland KY,
Bobholz JA,
Cox RW,
Binder JR
(1997)
Distributed neural systems underlying the timing of movements.
J Neurosci
17:5528-5535[Abstract/Free Full Text].
-
Rivier F,
Clarke S
(1997)
Cytochrome oxidase, acetylcholinesterase, and NADPH-diaphorase staining in human supratemporal and insular cortex: evidence for multiple auditory areas.
NeuroImage
6:288-304[ISI][Medline].
-
Rizzolatti G,
Luppino G,
Matelli M
(1998)
The organization of the cortical motor system: new concepts.
Electroencephalogr Clin Neurophysiol
106:283-296[ISI][Medline].
-
Rushworth MFS,
Nixon PD,
Renowden S,
Wade DT,
Passingham RE
(1997)
The left parietal cortex and motor attention.
Neuropsychologia
35:1261-1273[ISI][Medline].
-
Sakai K,
Takino R,
Hikosaka O,
Miyauchi S,
Sasaki Y,
Pütz B,
Fujimaki N
(1998)
Separate cerebellar areas for motor control.
NeuroReport
9:2359-2363[ISI][Medline].
-
Sakai K,
Hikosaka O,
Miyauchi S,
Sasaki Y,
Fujimaki N,
Pütz B
(1999a)
Pre-SMA activation during sequence learning reflects visuo-motor association.
J Neurosci
19:RC1[Abstract/Free Full Text] (1-6).
-
Sakai K,
Hikosaka O,
Miyauchi S,
Takino R,
Tamada T,
Iwata NK,
Nielsen M
(1999b)
Neural representation of a rhythm depends on its interval ratio.
J Neurosci
19:10074-10081[Abstract/Free Full Text].
-
Sanders AF
(1977)
Structural and functional aspects of the reaction process.
In: Attention and performance VI (Dornic S,
ed), pp 3-25. New York: Academic.
-
Schmahmann JD
(1996)
From movement to thought: anatomic substrates of the cerebellar contribution to cognitive processing.
Hum Brain Mapp
4:174-198[ISI].
-
Sereno MI,
Dale AM,
Reppas JB,
Kwong KK,
Belliveau JW,
Brady TJ,
Rosen BR,
Tootell RBH
(1995)
Borders of multiple visual areas in humans revealed by functional magnetic resonance imaging.
Science
268:889-893[Abstract/Free Full Text].
-
Shima K,
Tanji J
(1998)
Role for cingulate motor area cells in voluntary movement selection based on reward.
Science
282:1335-1338[Abstract/Free Full Text].
-
Shima K,
Mushiake H,
Saito N,
Tanji J
(1996)
Role for cells in the presupplementary motor area in updating motor plans.
Proc Natl Acad Sci USA
93:8694-8698[Abstract/Free Full Text].
-
Snyder LH,
Batista AP,
Andersen RA
(1997)
Coding of intention in the posterior parietal cortex.
Nature
386:167-170[Medline].
-
Sternberg S
(1969)
The discovery of processing stages: extensions of Donder's method.
In: Attention and performance II (Koster WG,
ed), pp 276-314. Amsterdam: North Holland.
-
Talairach J,
Tournoux P
(1988)
In: Co-planar stereotaxic atlas of the human brain. New York: Thieme.
-
Tanji J
(1996)
New concepts of the supplementary motor area.
Curr Opin Neurobiol
6:782-787[ISI][Medline].
-
Tanji J,
Kurata K
(1985)
Contrasting neuronal activity in supplementary and precentral motor cortex of monkeys. I. Responses to instructions determining motor responses to forthcoming signals of different modalities.
J Neurophysiol
53:129-141[Abstract/Free Full Text].
-
Thach WT,
Goodkin HP,
Keating JG
(1992)
The cerebellum and the adaptive coordination of movement.
Annu Rev Neurosci
15:403-442[ISI][Medline].
-
Tzourio N,
Massioui FE,
Crivello F,
Joliot M,
Renault B,
Mazoyer B
(1997)
Functional anatomy of human auditory attention studied with PET.
NeuroImage
5:63-77[ISI][Medline].
-
Wise SP,
Boussaoud D,
Johnson PB,
Caminiti R
(1997)
Premotor and parietal cortex: corticocortical connectivity and combinatorial computations.
Annu Rev Neurosci
20:25-42[ISI][Medline].
-
Woodruff PWR,
Benson RR,
Bandettini PA,
Kwong KK,
Howard RJ,
Talavage T,
Belliveau RJ,
Rosen BR
(1996)
Modulation of auditory and visual cortex by selective attention is modality-dependent.
NeuroReport
7:1909-1913[ISI][Medline].
-
Yeo CH,
Hardiman MJ
(1992)
Cerebellar cortex and eyeblink conditioning: a reexamination.
Exp Brain Res
88:623-638[ISI][Medline].
-
Zeki S,
Marini L
(1998)
Three cortical stages of colour processing in the human brain.
Brain
121:1669-1685[Abstract/Free Full Text].
-
Zeki S,
Watson JDG,
Lueck CJ,
Friston KJ,
Kennard C,
Frackowiak RSJ
(1991)
A direct demonstration of functional specialization in human visual cortex.
J Neurosci
11:641-649[Abstract].
Copyright © 2000 Society for Neuroscience 0270-6474/00/2072691-10$05.00/0
This article has been cited by other articles:

|
 |

|
 |
 
A. Biess, D. G. Liebermann, and T. Flash
A Computational Model for Redundant Human Three-Dimensional Pointing Movements: Integration of Independent Spatial and Temporal Motor Plans Simplifies Movement Dynamics
J. Neurosci.,
November 28, 2007;
27(48):
13045 - 13064.
[Abstract]
[Full Text]
[PDF]
|
 |
|

|
 |

|
 |
 
T. W. Picton, D. T. Stuss, M. P. Alexander, T. Shallice, M. A. Binns, and S. Gillingham
Effects of Focal Frontal Lesions on Response Inhibition
Cereb Cortex,
April 1, 2007;
17(4):
826 - 838.
[Abstract]
[Full Text]
[PDF]
|
 |
|
|