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The Journal of Neuroscience, March 1, 1998, 18(5):1869-1878
Contributions of the Dopaminergic System to Voluntary and
Automatic Orienting of Visuospatial Attention
Shuhei
Yamaguchi and
Shotai
Kobayashi
Department of Internal Medicine III, Shimane Medical University,
Izumo 693, Japan
 |
ABSTRACT |
Visuospatial attention can be directed by voluntary or involuntary
control independent of eye movement. The involvement of cortical and
subcortical neural structures in this covert orienting mechanism has
been studied using neuroimaging and electrophysiological techniques.
This study was designed to investigate the role of the dopaminergic
system in both voluntary and automatic orienting mechanisms of
visuospatial attention. We recorded event-related evoked potentials
(ERPs) and reaction time (RT) during a cued priming task in both
patients with idiopathic Parkinson's disease (PD) and control
subjects. Voluntary and automatic shifts in attention were studied by
using central and peripheral cues, respectively. In the experiment
using a central cue, the RT data showed that when the cue-target
interval was long, PD patients' responses were delayed, and cue
validity effects were reduced, whereas in the peripheral cue experiment
the validity effects persisted across all trials. The ERPs demonstrated
reduced sustained negativities preceding the imperative targets in both
the central and peripheral cue experiments in PD patients. Furthermore,
during the long cue-target interval in the central cue experiment, PD
patients showed reduced attention shift-related negativities (ARNs) at
the anterior scalp sites, whereas ARNs were generated widely in the
peripheral cue experiment. The ERP findings were consistent with the RT
data. These findings suggest that the dopaminergic system may
contribute to voluntary and sustained control of visuospatial attention
as well as to the neural system for response preparation, whereas automatic control of visuospatial attention is relatively independent of the dopamine system.
Key words:
visuospatial attention; voluntary shift; automatic shift; dopamine system; Parkinson's disease; event-related evoked potential; cue; response preparation
 |
INTRODUCTION |
Current progress in neuroimaging,
electrical recording, and lesion study has facilitated study of the
anatomical basis of visual attention (Posner et al., 1984
; Corbetta et
al., 1993
; Robinson et al., 1995
). The neurochemical basis of visual
attention has been elucidated both by clinical and experimental studies (Clark et al., 1987
). In rats, unilateral dopamine-depleting lesions of
the striatum increase the response time required to shift visuospatial attention contralateral to the side of the lesion, but the response time does not vary with the need to maintain, disengage, or shift attention (Ward and Brown, 1996
). The findings support the hypothesis that the deficit reflects a motor impairment rather than damage to the
neural system underlying mechanisms for directing attention.
Most human studies have examined patients with Parkinson's disease
(PD), which is characterized by biochemical depletion of dopamine in
the substantia nigra and striatum (Hornykiewicz, 1982
). Studies of
covert orienting of visual attention use a paradigm, in which a warning
cue indicates the probable location of a subsequent target stimulus
(Posner, 1980
). Accelerated responses to correctly cued targets and
slowed responses to falsely cued targets can be measured and reflect
the action of the spatial-orienting mechanism (Posner and Cohen, 1984
).
The results with PD patients, however, are inconsistent (Rafal et al.,
1984
; Sharp, 1990
; Wright et al., 1990
; Yamada et al., 1990
; Bennett et
al., 1995
).
There are several factors that might be responsible for these
inconsistent results (Yamada et al., 1990
). Most studies use a single
cue-target interval, but it is well known that response time to
targets varies with the cue-target interval. Variation in response
time can help diagnose the underlying cause affecting performance, so
data from experiments using different cue-target intervals may produce
different conclusions. The type of cue used in studies also varies, and
most studies use only a single type of cue, either an informative
central cue or a noninformative peripheral cue. Evidence suggests that
two distinct mechanisms cause attention shift, one reflexive, the other
voluntary (Jonides, 1981
; Rafal and Henik, 1994
). Behavioral studies
have demonstrated that attentional function in PD is normal when
triggered by external cues but abnormal when triggered by internal cues
(Brown and Marsden, 1988
). We therefore investigated the role of the
dopaminergic system in both voluntary and automatic orienting
mechanisms by manipulating the cue-target interval.
Furthermore, we tried to elucidate the electrophysiological basis of
attentional orienting by the concurrent measurement of event-related
evoked potentials (ERPs). Several studies have reported ERP modulations
produced by attention shifts and response preparation in a cued priming
task (Harter et al., 1989
; Mangun, 1994
; Yamaguchi et al., 1994
). Only
Wright et al. (1993)
recorded ERPs in PD patients during a cued priming
task, but the distribution of electrodes and the cue types used were
limited. In this study ERPs were collected from sites distributed over
the entire scalp, because each hemisphere plays a specific role in
triggering orienting behavior to extrapersonal space.
 |
MATERIALS AND METHODS |
Subjects. We studied 13 patients diagnosed with
idiopathic PD, aged 58-79 years (mean ± SD, 66.0 ± 6.8 years) and 13 age-matched control subjects, aged 56-74 years
(65.4 ± 6.0 years). All subjects had normal or
corrected-to-normal visual acuity and gave their informed consent to
participate in this study. The clinical details of each patient with PD
are shown in Table 1. All patients were right-handed and had at least two of the cardinal features of PD
(akinesia, tremor, rigidity, and postual instability). Patients with
Parkinsonism caused by ischemic brain lesions were excluded from the
study. The duration of illness varied between patients (1-15 years;
mean, 5.7 years), and the disabilities they suffered in their daily
living ranged from mild to moderate (stages I-III on the scale of
Hoehn and Yahr, 1967
). The general cognitive state of all subjects was
assessed using the Hasegawa dementia scale (the maximum score is 30, and the cut-off value for cognitive impairments is 20) (Katoh et al.,
1991
). The scores for the PD patients ranged from 23 to 30 (mean,
27.7 ± 2.3), and those of controls ranged from 26 to 30 (mean,
28.7 ± 1.1). There was no significant difference in the mean
scores of the two groups. Two patients were medication-free. The rest
of the patients were all taking dopaminergic medication (levodopa,
100-600 mg/d). In addition, five patients took anticholinergic agents
(trihexyphenidyl, 4-6 mg/d), and six were taking bromocriptine
(7.5-15 mg/d). Patients were tested when the signs and symptoms of
their disease were minimal. Control subjects were chosen from
volunteers, who were carefully screened to eliminate individuals with
medical or neuropsychiatric disorders.
Stimuli and procedures. Subjects were seated in a
comfortable chair with a neck support in an electrically shielded and
sound-attenuated room with dim lighting. All stimuli were presented on
a 20-inch cathode ray tube (CRT) placed 60 cm in front of the
subject's eyes. Subjects were asked to look at a small white dot
(0.3 × 0.3° in diameter) in the center of the CRT and to try
not to blink. Eye fixation was verified in a training session, and eye
position was monitored continuously by electro-oculogram and a
closed-circuit camera.
The central cue experiment consisted of 350 trials, with an interval of
1250 msec between each trial. Each trial comprised an arrow cue
followed by an asterisk target. Both stimuli were white and covered
~2° of the visual angle. The arrow cue was presented in the center
of the CRT, just above the point of fixation. The arrow pointed to the
left or the right randomly, with equal probability. The arrow then
remained on the CRT until the asterisk appeared. The asterisk target
flashed (100 msec duration) at a position 10° lateral to the center
of the CRT. It was presented at random stimulus onset asynchronies
(SOAs) of 200, 500, or 800 msec after the appearance of the cue. Sixty
percent of trials had 800 msec SOAs to obtain a high signal-to-noise
ratio in ERPs. Twenty percent of the remaining trials had SOAs of 200 msec, and 20% had SOAs of 500 msec. In 80% of the trials, the target
was presented in the visual field indicated by the arrow (valid cue).
In the remaining 20%, it appeared in the opposite field (invalid cue).
Thus, the cue was four times as likely to predict the target position
correctly as not. The arrow direction was random in both valid and
invalid trials. Within each block of trials, both types of cue validity and the latency of the SOA occurred randomly.
In the peripheral cue experiment, a small box (an open square covering
2° of the visual angle) was presented randomly on either side, 10°
lateral to the central point of fixation, with equal probability. The
cue remained in the same position until the asterisk target appeared.
The target also appeared 10° lateral to the point of fixation. In
80% of the trials it appeared in the same location as the cue (valid
cue), and in the other 20% it appeared in the opposite visual field
(invalid cue). The number of trials, the SOAs, and the interval between
trials were the same as in the central cue experiment.
In both experiments, subjects were required to signal detection of an
asterisk by pressing a button as quickly as possible with the right
index finger. Before the experiment, subjects were briefed on the types
of target presentation. All subjects participated in both experiments.
Half of the subjects took part in the peripheral cue experiment first;
the other half started with the central cue experiment. There was a 2 min rest between each experiment. There were three short rest periods
of 30 sec each during each experiment. Twenty trials were run before
beginning each experiment to familiarize subjects with the experimental
procedure.
Electroencephalograph recording and averaging. EEGs were
recorded using Ag/AgCl electrodes at 14 scalp sites (Fpz, F3, Fz, F4,
C3, Cz, C4, T5, P3, Pz, P4, T6, O1, and O2). Vertical and horizontal
eye movements were monitored by electrodes placed below and lateral to
the left eye. All electrodes were referred to linked ear lobes.
Electrode impedance was kept at <2 k
.
The EEG was amplified (bandpass, 0.05-100 Hz), digitized (250 Hz/channel), and stored on an 8 mm tape for off-line analyses. EEGs
were averaged separately for each SOA over 1024 msec and time-locked to
the cue stimuli, including 100 msec of prestimulus baseline. Individual
trials with excessive muscle activity (>75 µV peak-to-peak
amplitude) or eye movement (>75 µV peak-to-peak amplitude) were
excluded from the averages. Only the ERP data from correctly performed
trials were included (i.e., RTs between 150 and 900 msec after target
appearance).
Statistical analysis. In both the central and peripheral cue
experiments, three distinct ERP waveforms were generated as a function
of SOA in both the PD and control groups. The analyses reported here
are of the ERPs for the 800 msec SOA in both groups, because the ERP
waveforms recorded between cue and target for the 200 and 500 msec SOAs
were essentially identical to those recorded during the corresponding
time frame for the 800 msec SOA. For the analysis of the ERPs recorded
between the appearance of the cue and the appearance of the target,
mean amplitudes were obtained at 10 msec intervals, referenced to the
100 msec prestimulus baseline. To quantify the ERP changes associated
with the visuospatial attention shift that occurred during the
cue-target interval, we analyzed the interaction between cue direction
and recording hemisphere at 10 msec intervals. As seen in actual ERPs,
significant interaction indicates that the ERPs become more negative
over the hemisphere contralateral to the cue direction and more
positive over the ipsilateral hemisphere. We tentatively defined the
contralateral potential shift with a significant interaction as an
attention shift-related negativity (ARN), although we could not rule
out the possibility that the interactions were attributable to
ipsilateral positivity.
In addition, we analyzed the ERPs to target stimuli. Because the
analyses of ERPs between cue and target were performed for the 800 msec
SOA trials and the number of trials with 200 and 500 msec SOAs were
relatively small, only the ERPs to targets with an 800 msec SOA were
analyzed. Three different components [first positive component (P1),
first negative component (N1), and late sustained positivity (LSP)]
were observed in the ERPs for target stimuli. The peak amplitude of P1
was obtained in the latency window of 70-150 msec, and that of N1 was
obtained during the 150-230 msec time frame. The mean amplitude of LSP
was measured at 50 msec intervals from 250 to 600 msec.
We also compared the data from patients having anticholinergics with
those from patients without anticholinergics, because cholinergic
neurons have been reported to affect cortical activities in animals
(Pirch et al., 1992
).
ANOVA was used to evaluate the ERP results for within-subject variation
in electrode site (frontal, central, parietal, posterior-temporal, and
occipital), cue direction (right vs left), and recording hemisphere (right vs left) and between-subject variation in the experimental groups (PD vs control). Post hoc comparisons were made with
the Newman-Keuls procedure. Reaction time (RT) data were also
subjected to repeated ANOVA measurement. In these analyses, cue
validity (correctly vs incorrectly cued target) and SOA (200, 500, and 800 msec) were the within-subject variables, and group membership (PD
vs control) was the between-subject variable. The effect of repeated
measurements was evaluated using a multivariate ANOVA (Rao's
R) to counteract any bias introduced by violation of the assumption of sphericity (Vasey and Thayer, 1987
). Statistical significance was defined as p < 0.05.
 |
RESULTS |
Behavior
The RT data for the central and peripheral cues as a function of
SOA in the control and PD groups are shown in Figure
1. The mean RT was significantly slower
in the PD group for the central cue experiment (main group effect,
F(1,24) = 7.74; p < 0.02). Cue
validity effects were observed in both the PD and control groups
(F(1,12) = 11.2; p < 0.01 for
the PD group; F(1,12) = 62.0, p < 0.0001 for the control group). Targets with a longer SOA were detected more quickly than those with a shorter SOA (SOA effects, R(2,23) = 40.5; p < 0.0001).
There was no group difference either in SOA effect or cue validity
effect, but the three-way interaction of group × cue
validity × SOA was significant (R(2,23) = 3.86; p < 0.05). This effect suggests that the cue
validity effect was smaller for the 200 msec SOA than for the longer
SOA trials for the control group, whereas the smallest validity effect
for the PD group was for the 800 msec SOA.

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Figure 1.
Reaction times to targets as a function of cue
validity, SOA between cue and target, and subject group in the central
(left) and peripheral (right) cue
experiments. Values are mean ± SE.
|
|
The PD group showed a lower rate of correct hits on targets for the 500 and 800 msec SOAs than the control group (94.7 vs 98.8%;
F(1,12) = 4.33; p < 0.05 for
the 500 msec SOA trials; 94.0 versus 99.0%;
F(1,12) = 5.48; p < 0.05 for
the 800 msec SOA trials), whereas there was no difference in correct
hit rates to targets with a 200 msec SOA.
In the peripheral cue experiment (Fig. 1, right), the RT for
the PD group was also longer than that of the control group
(F(1,24) = 9.14; p < 0.01). The
main effect of cue validity was significant for both groups
(F(1,12) = 18.3; p < 0.005 for
the PD group; F(1,12) = 11.0; p < 0.01 for the control group), but the interaction between group and
cue validity was not significant. The SOA effect was also significant
for both groups (R(2,11) = 6.64;
p < 0.02 for the PD group;
R(2,11) = 7.88; p < 0.01 for
the control group). There was a three-way interaction of group × cue validity × SOA (R(2,23) = 11.1;
p < 0.001). This interaction occurred because the
smallest difference in RT between valid and invalid targets was found
to be for the 800 msec SOA for the control group, whereas the RT
differences between valid and invalid targets were almost equal across
all three SOAs for the PD group. The correct response rate of the PD
group was similar to that of the control group (97.0 vs 98.8%).
There were no significant differences in RTs and validity effects
between patients with and without anticholinergic agents in both the
central and peripheral cue experiments.
ERP for the central cue
Figure 2 shows the ERPs of the
control group for central arrow cues directed to the right and left
visual fields with an 800 msec SOA. The ERPs for the first 280 msec
after the appearance of the cue showed no significant interaction
between cue direction and hemisphere. The interaction started at 280 msec in the parietal and posterior temporal sites. This attention
shift-related negativity (cARN; c refers to the central cue) continued
until 340 msec after the cue at the posterior temporal site
(interaction between cue direction and hemisphere,
F(1,12) = 6.18-8.35; p < 0.05 for 280-340 msec time window) and until 360 msec after the cue at the
parietal site (F(1,12) = 5.58-7.26;
p < 0.05 for 280-360 msec). After the appearance of
the cARN over the posterior scalp sites, another interaction showed up
420 msec after the cue at the central site and 440 msec after the cue
at the frontal site. The anterior cARNs continued until 560 msec after
the cue at the central site (F(1,12) = 7.03-9.80; p < 0.05) and until 580 msec at the
frontal site (F(1,12) = 5.23-8.61;
p < 0.05). No cARN was observed at the occipital site.

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Figure 2.
Grand average ERPs of the control group to the
appearance of central arrow cues directed to the right (solid
line) and left (dashed line) visual fields for
the 800 msec SOA. Event-related evoked potentials were recorded at
frontal (F3, F4), central (C3, C4), parietal (P3, P4),
posterior-temporal (T5, T6), and occipital (O1, O2) scalp sites in both hemispheres. Recordings
from the electrodes placed below (BE) and lateral
(LE) to the left eye are also shown. Shaded
areas represent potentials in which significant interaction
between cue direction and hemisphere was observed.
|
|
The PD group generated a different pattern of cARNs in ERPs in the
central cue experiment (Fig. 3). The
cARNs were observed only at the posterior scalp sites
(F(1,12) = 8.47-9.68; p < 0.05, 280-440 msec for the parietal site;
F(1,12) = 8.09-9.95; p < 0.05, 300-420 msec for the posterior temporal site). Although the onset latencies of the parietal cARNs were comparable for the control and the
PD groups, the offset latency was delayed by ~80 msec in the PD
group. The posterior temporal cARN in the PD group showed delays in
onset and offset compared with the control group of ~20 and 80 msec,
respectively. The mean amplitudes of the posterior cARNs were
comparable in the two groups. However, the anterior scalp regions
(frontal and central sites) failed to show cARNs in the PD group.
The behavioral data showed decreased cue validity effects for the 800 msec SOA trials in the PD group. It is of interest whether disappearance of the anterior cARN contributes to alterations in the RT
data. To investigate the relationship between cue validity effects in
the RT data and anterior cARNs in ERPs for the PD group, their
correlation was measured from individual data. The mean amplitude of
the anterior cARN was averaged across both hemispheres. The latency
windows for the measurements were 500-640 msec for the central site
and 520-660 msec for the frontal site. These values were determined
based on the latency range of anterior cARNs in the control group and
the delay of onset latency of posterior cARNs in the PD group. The mean
amplitude of the cARN at the central site was significantly correlated
with the validity effects for the 800 msec SOA trials
(r =
0.68; p < 0.01). The frontal
site also showed a significant correlation between the cARN and
validity effects (r =
0.61, p < 0.05).
There was another difference between the ERPs of the PD group and the
control group. Late negative deflection (LND), which developed
gradually before the target appeared, was observed over both
hemispheres in the control group (Fig. 2), but in the PD group the LNDs
observed over the left hemisphere were small, and those over the right
hemisphere were negligible (Fig. 3). The mean amplitude of the LND was
measured over the left hemisphere 700-800 msec after the cue, at which
LND latency showed negative values in both groups. LND was
significantly smaller in the PD group than in the control group for all
scalp sites (F(1,24) = 5.24-17.1;
p < 0.05) except the occipital scalp site. The onset latency of the LND (i.e., the time at which the mean LND amplitude changed from a positive value) of the two groups was compared for the
left hemisphere. The combined values for the two types of cue (right
and left arrows) were averaged, because there was no significant
difference between them. Comparing the PD group with the control group,
the latency was delayed by 89 msec at the frontal site
(F(1,24) = 10.8; p < 0.005), 92 msec at the central site (F(1,24) = 12.0;
p < 0.005), 180 msec at the parietal site (F(1,24) = 47.6; p < 0.001), 71 msec at the posterior temporal site (F(1,24) = 8.88; p < 0.01), and 135 msec at the occipital site
(F(1,24) = 31.1; p < 0.001).
The next analysis was of the ERPs to target stimuli for trials with an
800 msec SOA (Figs. 4,
5). The peak amplitude of P1 was
comparable for the two groups. Validity effects (enhanced P1 amplitude
in response to valid targets) were not observed in either group. The
peak amplitude of the N1 component also showed no group differences for
all scalp sites. There was a significant interaction between recorded
hemisphere and the validity effect at the parietal, posterior-temporal,
and occipital sites (F(1,24) = 11.7-19.7;
p < 0.005) in both groups. This interaction indicates that valid targets elicited a larger N1 component over the hemisphere contralateral to the stimuli, whereas the N1 component for invalid targets was larger over the ipsilateral hemisphere. There were no group
differences in either the validity effect on the N1 or in the peak
latency of the P1 and N1 components.

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Figure 4.
Grand average ERPs of the control group to targets
presented at the cued location (Valid target) and the
uncued location (Invalid target) for the central cue
experiment. ERPs to right and left targets have been combined, with
electrodes transposed so that the ERPs on the left were
contralateral to the visual field of target presentation. Thus, the
data are presented as a function of scalp sites contralateral
(Fc, Cc, Pc, Tc, Oc) or ipsilateral (Fi, Ci, Pi,
Ti, Oi) to the side of target presentation.
|
|
Because no hemispheric difference was apparent in the amplitude of LSP,
the data for both hemispheres was pooled for the following analyses.
The PD group showed a significantly greater amplitude for LSP at the
occipital site in the 200-350 msec latency period than the control
group (F(1,24) = 5.71; p < 0.05). Both groups showed reversed validity effects on LSP in the
latency range of 300-500 msec at the frontal site
(F(1,24) = 4.77-5.12; p < 0.05) and 400-500 msec at the central (F(1,24) = 4.27; p < 0.05), parietal (F(1,24) = 6.20; p < 0.05), and
occipital (F(1,24) = 4.81; p < 0.05) sites. There was no interaction between group and validity effect, indicating that both groups showed comparable reversed validity
effects on LSP for these latency ranges. There was no difference in the
peak latency of LSP between the control and PD groups at Pz. There were
no significant differences in cARNs and LND between patients with and
without anticholinergic medication. The ERPs to target stimuli were not
affected by the medication, either.
ERP to the peripheral cue
Peripheral cues elicited different patterns of ERPs to the central
cues, as shown in Figures 6 and
7. In the control group, significant
interaction between cue side and hemisphere started 140 msec after cue
onset at the parietal, posterior-temporal, and occipital sites and 150 msec after the cue at the central site (Fig. 6). It continued until 200 msec after the cue at the central, parietal, and occipital sites and
210 msec after the cue at the posterior temporal site (interaction
between cue side and hemisphere, F(1,12) = 8.11-24.5; p < 0.02). The frontal site failed to show
such an interaction. This contralateral negativity (i.e., N1 component)
was also observed in the PD group (Fig. 7). The interactions began 130 msec after the cue at the posterior-temporal and occipital sites and
140 msec after the cue at the central and parietal sites and lasted
until 210 msec (F(1,12) = 10.3-27.9; p < 0.01). There was no significant difference between
the two groups in peak amplitude or duration of the N1 for all scalp
sites.

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Figure 6.
Grand average ERPs of the control group to
peripheral cues presented in the right (solid line) and
left (dashed line) visual fields at 800 msec SOA.
Shaded areas represent potentials in which significant
interaction between cue side and hemisphere was observed. The recording
sites are the same as in Figure 2.
|
|
There was another interaction between cue side and hemisphere,
the attention shift-related negativity for the peripheral cue (pARN; p
refers to the peripheral cue), which occurred over the hemisphere
contralateral to the cue side, relatively long after cue presentation.
In the control group pARN was observed at the parietal
(F(1,12) = 4.65-26.5; p < 0.05 for 540-800 msec) and posterior-temporal sites
(F(1,12) = 6.59-15.8; p < 0.05 for 620-800 msec), whereas it appeared at all scalp sites for the PD
group (F(1,12) = 4.95-11.7; p < 0.05 for 580-800 msec at the frontal site;
F(1,12) = 5.35-14.5; p < 0.05 for 560-800 msec at the central site; F(1,12) = 4.80-16.2; p < 0.05 for 600-800 msec at the parietal site; F(1,12) = 4.66-23.4; p < 0.05 for 540-800 msec at the posterior temporal site;
F(1,12) = 6.62-22.5; p < 0.05 for 540-800 msec at the occipital site). At those scalp sites where
both groups did show pARNs, there was no significant difference in the
pARN amplitude between the two groups.
As was observed in the central cue experiment, the mean amplitudes of
LND in the PD group were significantly smaller for all scalp sites than
for the control group, except at the occipital site
(F(1,24) = 4.72-11.6; p < 0.05 for the time window of 700-800 msec). The onset latencies of LND were
also delayed significantly in the PD group (50 msec at the frontal
site, F(1,24) = 5.62; p < 0.05;
130 msec at the central site, F(1,24) = 25.4;
p < 0.001; 180 msec at the parietal site,
F(1,24) = 47.6; p < 0.001; 130 msec at the posterior temporal site, F(1,24) = 26.6; p < 0.001; 140 msec at the occipital site,
F(1,24) = 22.4; p < 0.001).
As in the central experiment, we then analyzed the ERPs to the target
stimuli for the 800 msec SOA trials (Figs.
8, 9). The P1 amplitude was comparable for both groups. Cue validity did not
affect P1 amplitude over both hemispheres in either group. The peak
amplitude of the N1 component for all scalp sites also showed no group
differences. As seen in the central cue experiment, there was a
significant interaction between hemisphere and the validity effect at
the posterior temporal site in both groups (F(1,24) = 5.13-6.24; p < 0.05), indicating that valid targets elicited a larger N1 component
over the hemisphere contralateral to the stimuli, whereas the N1
response to invalid targets was larger over the ipsilateral hemisphere.
There were no group differences in either the validity effect on N1 or
the peak latency of the P1 and N1 components.

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Figure 8.
Grand average ERPs of the control group to targets
presented at the cued location (Valid target) and the
uncued location (Invalid target) for the peripheral cue
experiment. The recording sites are the same as in Figure 4.
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There was no difference in LSP amplitude between the two groups in the
latency range of 250-400 msec after target presentation. Although the
mean amplitude of LSP in the 400-600 msec range was also comparable
for both groups, significant interactions between group and validity
effect were observed at all scalp sites except at the occipital site;
i.e., invalid targets elicited a larger LSP only for the PD group
(F(1,24) = 5.52-6.33; p < 0.05 at the frontal site; F(1,24) = 5.86-9.30;
p < 0.05 at the central site; F(1,24) = 4.66-9.11; p < 0.05 at the parietal site; F(1,24) = 5.33-8.13;
p < 0.05 at the posterior-temporal site). The peak latency of LSP was not different for the two groups (355 msec for the
control group and 337 msec for the PD group at Pz). Anticholinergic medication in PD patients did not affect the changes in ERPs either to
cue stimuli or target stimuli.
 |
DISCUSSION |
This study showed altered behavior in PD patients compared with
controls. First, in the central cue experiment, cue validity almost
disappeared for the 800 msec SOA in the PD group. This indicates that
PD patients have some difficulty in the late phase of voluntary
attention shift, when the cue and imperative stimulus occur at
different times, suggesting that PD patients may have an impaired
ability to sustain spatial attention. A recent study using the central
arrows (SOA = 600 msec) showed normal orienting toward an expected
source of stimulation in PD patients (Bennett et al., 1995
), but on the
other hand, Wright et al. (1990)
reported that PD patients showed no
cost for an invalid cue in an 1100 msec SOA trial. This discrepancy may
be the result of subject differences [severity and duration of
illness, age of onset, or patient age (Yamada et al., 1990
)] or the
difference in SOA. Our patients were older, and their illness was more
severe than in those in Bennett's patient group.
In the peripheral cue experiment, a different interaction was observed
between cue validity and SOA. The validity effects observed were
consistent across all SOAs in the PD patients, whereas they were
smallest for the 800 msec SOA in the controls. The attention shift may
not be entirely automatic in the long SOA trials, because there is a
bias in terms of the probability of target location for the peripheral
cue (Müller and Rabbitt, 1989
). This study suggests that the
automatic shift of spatial attention in PD patients is preserved for
the 200 and 500 msec SOA trials. This result is consistent with the
work of Rafal et al. (1984)
, who found no apparent deficits in
automatic orienting. This is also consistent with a recent animal study
using peripheral cues (Ward and Brown, 1996
). The decreased validity
effect for the long SOA in normal subjects may be explained by
"inhibition of return" (Posner and Cohen, 1984
). When attention is
summoned by a peripheral cue, the initial facilitation of detection at
the cued location is then followed by a delay in detection at the same
location. Thus, the presence of a validity effect in the 800 msec SOA
may be interpreted in PD patients as impairment of inhibition of return
(Henik et al., 1990
).
Another difference in the PD patients was the slowing in the RT to
target stimuli. This is consistent with all previous reports. Because
the attention shift of PD patients is as efficient as that of the
controls in all of the trials except those with a long SOA in the
central cue experiment, the delay in RT is ascribed to a delay in
processing response preparation or motor response. However, from
behavioral data alone it is difficult to delineate the critical process
responsible for response impairment in the motor hierarchy.
Electrophysiological data from the central cue experiment showed that
PD patients generated cARNs over the posterior brain regions similar to
those of control subjects, but that anterior cARNs were reduced in PD
patients. This study suggests that the early phase of voluntary shift
is not compromised by dopamine deficiency. In controls, on the other
hand, the anterior cARNs were elicited at ~400-500 msec after the
cue, and the behavioral consequence of attenuated anterior cARNs should
thus be observed in longer SOA trials. Conceivably, the behavioral
effects would be expected to appear as a decreased validity effect for
the 800 msec SOA in PD patients, as is the case in our behavioral data. The close association of ERP effects with behavioral data were also
demonstrated by the significant correlation between reduced anterior
cARN and decreased validity effect in PD patients.
A general model for understanding the visual attention system is that
the frontal lobe is involved in the process of detecting targets and
preparing an appropriate response, and the parietal lobe is responsible
for covert orienting to the visual location (Posner and Petersen,
1990
). A positron emission tomographic (PET) study demonstrated
separate activation of frontal and parietal cortices during attention
shift tasks (Corbetta et al., 1993
). That study suggested that the
posterior cortices are activated first and control the selection of the
target location based on cognitive or sensory cues, whereas the
anterior cortices are activated later and are linked to the response
selection mechanism. Another recent PET study using cuing paradigms
also demonstrated neural activation in the anterior cortices and in the
posterior parietal cortex (Nobre et al., 1997
). Our ERP study supports
the functional segregation of anterior and posterior cortices in
orienting behaviors by demonstrating the differential effects of
dopamine deficiency on anterior and posterior cARNs.
The peripheral cue elicited the N1 component, which is often reported
to be modulated by visuospatial attention (Harter et al., 1982
; Mangun
and Hillyard, 1987
). Peripheral cues occurred in eccentric visual
fields, and the ERPs for those stimuli are expected to be larger over
the hemisphere contralateral to the stimulus. In addition, the N1
component may reflect the neural processes of attentional allocation in
visual space (Hillyard et al., 1985
; Mangun et al., 1993
). The
comparable N1 component in both the PD and the control groups suggests
that the capacity for automatic attention shift is preserved in PD
patients.
The peripheral cue generated another lateralized negativity in the late
stage after cue presentation, the pARN. The pARN was observed more
widely over the scalp in PD patients than in controls. As mentioned
previously, the RT data from the long SOA trial in the peripheral cue
experiment may be confounded by the inhibition of return phenomenon in
normal subjects. If this mechanism suppresses neural activity for
orienting to the cued location in normal subjects and is impaired in PD
patients, then this may explain why pARN is generated more widely over
the scalp in the PD group.
Another prominent ERP change in the PD group was decreased amplitude
and delayed onset of the LND. The sustained negative potential
preceding an imperative stimulus is thought to include a late wave of
the contingent negative variation (CNV), which reflects at least two
different processes: anticipation of an imperative stimulus and
preparation for a movement, although these processes are difficult to
analyze separately in the current paradigm (Brunia and Damen, 1988
;
Brunia, 1993
). There are several reports of PD patients showing
attenuation of CNV or readiness potential (Amabile et al., 1986
; Dick
et al., 1989
; Singh et al., 1990
). Wright et al. (1993)
also reported
diminished CNV amplitude between the cue and the target presentation.
The delayed RT in PD patients may be related to the impairment of
response-related processes.
We looked at the ERPs in response to the target stimuli to see how
target information processing is affected by an antecedent attention
shift in PD and in controls. Although the early components (P1 and N1)
of the visual evoked potential are known to be modulated by previous
attentional allocation (Mangun et al., 1993
), P1 is less sensitive to
attentional effects in a simple detection task (Eimer, 1993
). In
contrast, N1 showed a validity effect that was observed equally in both
groups over the contralateral posterior scalp sites. The discrepancy in
the way of attentional modulations of P1 and N1 between the present
study and the study of Mangun et al. (1993)
may be ascribed to
differences in stimulus parameters (i.e., duration of cue presentation
and visual angle of target stimuli from the fixation point) and the age
of subjects (Mangun and Hillyard, 1991
; Mangun, 1995
). Mangun (1995)
suggested that the posterior N1 component has two generator sources:
the parietal and occipital-temporal visual association areas. Although
the validity effect on N1 indicates that the visual association cortex in PD patients is primed by allocated attention, the behavioral data
show the opposite result, because the validity effect was much smaller
in PD patients for the 800 msec SOA. This suggests that the enhanced
activity of the visual association cortex is not sufficient to produce
validity effects in RT data. The dissociation between post-target ERP
and RT data were also observed in LSP. LSP latency in the PD group was
the same as that in the controls, whereas the RT was delayed in the PD
group. The discrepancy between P3 latency and overt response time has
been reported often (Verleger, 1997
). The behavioral data seem to be
related to ERP changes in the precue interval rather than to changes in
the postcue ERPs.
Another notable finding for LSP is that invalid targets generated a
larger LSP in the late phase (400-600 msec). Hugdahl and Nordby (1994)
have suggested that this reflects neural processes related to the
interruption of information processing and disengagement from the
attended location in the invalid trials. Only the PD group showed LSP
enhancement by invalid targets in the peripheral cue experiment. This
suggests that the PD patients needed to switch their attention from the
cued location to a new location when an invalid target appeared. In
contrast, the controls did not need to reorient, probably because of
their inhibition of return mechanism being intact.
In summary, this study showed that voluntary orienting of spatial
attention is impaired in PD patients when sustained attention is
required, but that the automatic shift of spatial attention is
preserved. Brown and Marsden (1990)
have proposed an extended hypothesis applicable to different forms of cognitive impairment in PD
patients. According to their hypothesis, PD patients are impaired in
internal, active, effort-demanding tasks but normal in passive,
automatic tasks in which external cues are provided or in which the
stimuli are organized at input. Other electrophysiological studies
support this dissociation: PD patients had a normal P3a, which reflects
automatic processes, whereas the controlled processes generating P3b
were impaired (Tachibana et al., 1992
). The deficit of controlled
attention shifts in PD patients seems to be caused by dysfunction in
the dopaminergic neural system, involving the basal ganglia and frontal
lobe. This network is also critical for motor programming and response
execution, both of which were shown by our behavioral and
electrophysiological studies to be impaired substantially in PD
patients.
 |
FOOTNOTES |
Received Aug. 11, 1997; revised Dec. 8, 1997; accepted Dec. 10, 1997.
We thank Avishai Henik for helpful comments on this manuscript.
Correspondence should be addressed to Dr. Shuhei Yamaguchi, Department
of Internal Medicine III, Shimane Medical University, Izumo 693, Japan.
 |
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