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The Journal of Neuroscience, December 1, 2000, 20(23):8838-8845
Human Cortical Muscle Coherence Is Directly Related to Specific
Motor Parameters
James M.
Kilner1,
Stuart N.
Baker1,
Stephan
Salenius2,
Riitta
Hari2, and
Roger N.
Lemon2
1 Sobell Department of Neurophysiology, Institute of
Neurology, Queen Square, London WC1N 3BG, United Kingdom, and
2 Brain Research Unit, Low Temperature Laboratory, Helsinki
University of Technology, 02015 HUT Espoo, Finland
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ABSTRACT |
Cortical oscillations have been the target of many recent
investigations, because it has been proposed that they could function to solve the "binding" problem. In the motor cortex, oscillatory activity has been reported at a variety of frequencies between ~4 and
~60 Hz. Previous research has shown that 15-30 Hz oscillatory activity in the primary motor cortex is coherent or phase locked to
activity in contralateral hand and forearm muscles during isometric contractions. However, the function of this oscillatory activity remains unclear. Is it simply an epiphenomenon or is it related to
specific motor parameters? In this study, we investigated
task-dependent modulation in coherence between motor cortex and hand
muscles during precision grip tasks. Twelve right-handed subjects used index finger and thumb to grip two levers that were under robotic control. Each lever was fitted with a sensitive force gauge. Subjects received visual feedback of lever force levels and were instructed to
keep them within target boxes throughout each trial. Surface EMGs were
recorded from four hand and forearm muscles, and magnetoencephalography (MEG) was recorded using a 306 channel neuromagnetometer. All subjects showed significant levels of coherence (0.086-0.599) between
MEG and muscle in the 15-30 Hz range. Coherence was significantly smaller when the task was performed under an isometric condition (levers fixed) compared with a compliant condition in which subjects moved the levers against a spring-like load. Furthermore, there was a
positive, significant relationship between the level of coherence and
the degree of lever compliance. These results argue in favor of
coherence between cortex and muscle being related to specific
parameters of hand motor function.
Key words:
coherence; oscillations; motor performance; MEG; EMG; synchrony
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INTRODUCTION |
Oscillatory activity is a widespread
feature of normal brain behavior. However, the functions of such
activity remain unclear. In the visual system, oscillatory activity has
been suggested to solve the "binding" problem, acting as a
mechanism to link information related to the same function but
processed in different neuronal populations (Singer and Gray, 1995 ).
Such a mechanism could be important in any distributed network, and
subsequent investigations of cortical oscillatory activity have
interpreted synchrony between neuronal populations in an analogous
manner (Kahana et al., 1999 ; Miltner et al., 1999 ; Rodriguez et al., 1999 ).
In monkey motor cortex, oscillatory 15-30 Hz activity has been
observed in single cells and local field potentials (Murthy and Fetz,
1992 , 1996 ; Baker et al., 1997 ; Donoghue et al., 1998 ; Lebedev and
Wise, 2000 ). Similar oscillations have been observed in the human motor
cortex by electroencephalography (EEG) (Stancak and Pfurtscheller,
1996 ; Halliday et al., 1998 ; Mima et al., 1999 ) (for review, see Hari
and Salenius, 1999 ) and magnetoencephalography (MEG) (Conway et al.,
1995 ; Salenius et al., 1997 ; Brown et al., 1998 ). The presence of
oscillations in local field potential, EEG, and MEG recordings
requires synchronous activity among large assemblies of neurons
(Pfurtscheller and Lopes da Silva, 1999 ). Indeed, single-cell
recordings from monkeys have demonstrated synchrony in the sensorimotor
cortex over distances of up to 14 mm (Murthy and Fetz, 1996 ). The
oscillatory neuronal network also includes the descending output
neurons of the motor cortex (pyramidal tract neurons), and cortical
oscillations have been shown to be coherent with oscillatory EMG
activity in arm and hand muscles (Conway et al., 1995 ; Baker et al.,
1997 ; Salenius et al., 1997 ; Hari and Salenius 1999 ; Kilner et al.,
1999a ).
The function of this oscillatory activity in the sensorimotor cortex
remains controversial. Previous studies have demonstrated changes in
the amplitude of the cortical oscillatory activity associated with a
variety of tasks, with power in the 15-30 Hz range decreasing during
movements of the contralateral hand and forearm and increasing during
periods of maintained contractions (Salmelin and Hari, 1994 ;
Pfurtscheller et al., 1996 ; Pfurtscheller and Lopes da Silva,
1999 ). These modulations were termed event-related synchronization and
desynchronization, and these investigators interpreted the
15-30 Hz rhythm as an "idling rhythm;" the largest oscillations
are seen at rest. However, in addition to these changes in the power of
the cortical oscillations during movement, it has been shown that there
are corresponding modulations in the extent of coherence between cortex
and muscle and between muscles (Baker et al., 1997 ; Kilner et al.,
1999a ). Such modulations have lead to the interpretation that the
oscillatory activity could link together motor commands in a manner
analogous to that proposed for the binding of related visual
information (Marsden et al., 2000 ).
However, if this oscillatory activity has a functional role in motor
behavior, then it should show systematic variation with specific
parameters of the motor task. The presence of coherent cortical and
muscular oscillatory activity during the precision grip task opens up
the possibility of exploring this important question. Our previous
investigations showed that coherence was particularly marked during
steady grip of a compliant, spring-like load (Baker et al., 1997 ,
1999 ). Here we report changes in oscillatory synchronization in the
15-30 Hz bandwidth between human motor cortex and hand muscles that
varies according to the time course of the task and the level of
compliance of the gripped object. Interacting with such springy
objects, which are a common feature of everyday life (spring clips,
bottles of shampoo, etc.), requires precise coordination of both digit
position and grip force. We suggest that synchronous oscillations could
be important in recalibrating the sensorimotor network during changes
in motor state that occur in the transition from movement to steady grip.
Parts of this work have been published previously in abstract form
(Kilner et al., 1999b ).
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MATERIALS AND METHODS |
Subjects
Experiments were performed on 12 healthy volunteers, aged 19-53
years old (eight males). The recordings had ethical committee approval,
and all subjects gave informed consent and were right-handed by self report.
Behavioral task
Subjects gripped two short aluminum levers (20 × 40 × 1.5 mm) between the tips of the thumb and index finger of their
right hand; the forearm was supported in the fully pronated position, and the other digits were flexed out of the way. Subjects were instructed to relax their left arm during task performance. The levers
were mounted on a table in front of the subject and were attached to
the shafts of two direct current motors by 2 m long brass
shafts; the latter allowed the motors to be positioned outside the
magnetically shielded room, which housed the neuromagnetometer, to
avoid contamination of the MEG signal. Lever position was measured using optical encoders (resolution of ~40 counts per millimeter movement of the lever tip). The force generated by the motors could be
controlled continually as a function of position by a computer fitted
with a robotic interface (Phantom Haptic Interface; SensAble Devices,
Woburn, MA); this allowed simulation of a spring-like load in
which force was proportional to displacement. Force on the levers was
measured using pairs of sensitive foil strain gauges. Visual feedback
of the forces exerted on the levers was given by square cursors
displayed on a screen mounted at the subjects' eye level. Subjects
were instructed to keep these cursors within two target boxes, also
shown on the screen; the width of the targets required an accuracy of
force control of 0.05 N. The screen was positioned 110 cm from the
subject, and the maximum distance between target boxes displayed on it
was 28 cm. Subjects performed the precision grip task under a number of
different conditions so that task-related modulations of MEG-EMG
coherence could be modulated.
First series of experiments. In the first series of
experiments, the effect of lever compliance was investigated in nine
subjects (five males). At the onset of each trial, the target boxes
appeared on the screen, and the subject had to produce a rapid
contraction to increase the force on each lever to 1.3 N in <300 msec.
This force was maintained for 3 sec (Fig.
1A, Hold 1).
The subjects then tracked a linear increase of the force to 1.6 N over
a 2 sec period (Ramp), followed by an additional hold at
this force level for 3 sec (Hold 2). The target boxes then
disappeared, and the subjects released the levers.

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Figure 1.
Averaged data for performance during the precision
grip task. A, Schematic of the task showing the forces
required to be exerted on the finger and the thumb levers by the
subjects. The different phases of the task (Hold 1, Ramp, Hold 2) are
indicated, and the ramp phase is highlighted by the pale gray
box. B, The force profiles actually recorded
from the strain gauge signals for the three conditions in which the
levers carried a compliant load (COMP1, COMP2, COMP3) and for the
condition in which they were fixed and forces exerted isometrically
(ISO). C, The lever position traces calculated from the
optical encoder signals for the COMP1, COMP2, COMP3, and ISO tasks.
Data for each of these traces were averaged across trials, across
subjects, and across levers.
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We tested four different task conditions. In three of them, the motors
opposed the subjects' movements with a compliant, or spring-like, load
with different spring constants. To track the displayed target forces,
subjects had to move the levers to different extents. When the levers
were most compliant (COMP1 condition), a displacement of ~12 mm was
required to reach the 1.3 N target force in the Hold 1 phase;
stiffer spring conditions (COMP2 and COMP3) required smaller
displacements of ~6 and ~3 mm, respectively. In the Hold 2 phase,
displacements of ~24, ~12, and ~6 mm displacements were required
to reach the 1.6 N force target. In these compliant conditions, an
initial force of 1 N was required to move the levers from their rest
position. In the fourth condition, the levers were rigidly locked in
place. Subjects thus gripped the levers isometrically (ISO). The four
task conditions therefore required the same force profiles to be
produced (Fig. 1B) but with very different
displacements (Fig. 1C). Each task condition was repeated >75 times. The order of presentation of the different task conditions was randomized for each subject.
For two of the four conditions, COMP1 and ISO, six of the nine subjects
performed a variant of the standard task for the last trial in the
series of 75. During this last trial, the target boxes did not
disappear at the end of the trial but remained at the Hold 2 force
level for a period of over 180 sec. Subjects were thus required to
produce a long, steady contraction. We refer to these trials as Neverending.
Second series of experiments. In a second series of
experiments (seven subjects) two variants of the precision grip task
were investigated. These are illustrated schematically in Figure 5, I and J. One variant, termed RAMP (see Fig.
5I), was identical to the COMP1 condition in the
first series, with a low force (1.3 N) in Hold 1 and a higher force
(1.6 N) in Hold 2. The other was a BALLISTIC task (see Fig.
5J) in which the transition from low to high force
was achieved by a rapid movement, produced as the subjects attempted to
track a step jump in target position. Each task was repeated ~75
times. The order was varied across subjects.
Recordings
Bipolar surface EMGs were recorded from first dorsal
interosseous (1DI), abductor pollicis brevis (AbPB), flexor digitorum superficialis (FDS), and extensor digitorum communis (EDC) of the right
hand and forearm with a pass band of 1-330 Hz. Cortical signals were
recorded with a 306-channel whole-scalp neuromagnetometer (bandpass,
0.1-330 Hz; Vectorview; Neuromag Ltd., Helsinki, Finland). These
recordings, together with finger and thumb lever position and force and
markers indicating task events were digitized at 1 kHz and stored on
magneto-optical disks for off-line analysis. The exact position of the
head with respect to the sensor array was determined at the start of
each recording by measuring magnetic signals from four indicator coils
placed on the scalp.
Analysis
Off-line, finger, and thumb lever position and force records
were examined by eye; trials in which subjects did not perform the task
correctly (<6%; 220 of 3078) were rejected before further analysis.
The EMG signals were high-pass filtered at 10 Hz and rectified. All the
EMG, MEG, and strain gauge signals were then low-pass filtered at 100 Hz and down-sampled to an effective sampling rate of 200 Hz. Subsequent
spectral analysis used these processed signals, permitting a maximum
detectable frequency of 100 Hz (Nyquist theorem; Newland, 1993 ). In a
first analysis, coherence spectra were calculated between all MEG
sensors and 1DI EMG over the entire data set using an Fast Fourier
Transform window of 256 points, permitting a frequency resolution of
0.77 Hz. Coherence is an estimate of the amplitude and phase
correlation within a particular frequency band between two sources and
is bounded between 0 and 1. The calculations for coherence are
described by Rosenberg et al. (1989) and Baker et al. (1997) . The MEG
sensor over the left sensorimotor cortex with the greatest coherence
was selected and subsequently used for the further analyses. This
choice was well justified because the planar gradiometers of the
neuromagnetometer pick up the largest signals just above a local
cortical source.
Time-frequency analysis was then performed to determine the modulation
of coherence with task performance. Any trends in the data associated
with the ramp phases of the task were first removed using linear
regression techniques (Kilner et al., 1999a ). Power spectra and
estimates of the coherence between all of the EMG signals and the
selected MEG sensor were calculated over a sliding 1.28 sec time window
with a 256 point Fast Fourier Transform (Rosenberg et al., 1989 );
estimates from windows with the same alignment to the task onset were
averaged across trials. The time window was moved through the task in
0.1 sec steps to generate a time-frequency map.
Our study required estimates of coherence between MEG and different
muscle EMGs, and from different subjects, to be combined into a single,
more reliable estimate. This is a difficult statistical problem, with
potential pitfalls (Baker, 2000 ). We therefore chose to use two
distinct methods: one parametric, the other nonparametric. Their
qualitative agreement provides confidence that the results are genuine
and are not influenced by statistical artifacts (Halliday et
al., 1999 ).
For the nonparametric analysis, all MEG-EMG coherence spectra were
thresholded at the 95% confidence level (Rosenberg et al., 1989 ); any
points above the level were given the value 1 and those below or equal
were given 0. These binary spectra were summed across subjects and
muscles in which coherence with MEG was estimated to allow a combined display.
In the parametric analysis, coherence values were transformed as
follows:
where C is the coherence value, and L is
the number of disjoint sections; the dependence of C and
Z on frequency, and time relative to task onset, are suppressed
for simplicity of notation. Such a value can be considered as an
estimate of the "true" Z-transformed coherence between the two
signals, with a mean equal to this underlying value; it will be
normally distributed with an SD of approximately one (Rosenberg
et al., 1989 ). Such values were combined across all subjects and
MEG-EMG pairs to produce a composite value according to
where N is the number of different MEG-EMG pairs
that were combined.
Statistical differences between coherence spectra
Differences between conditions were tested using separate
methods depending on the nature of the data tested.
Difference tested using the arctanh transform. Significant
differences between the MEG-EMG coherence spectra obtained during the
different compliant and isometric task conditions in the first experimental series were tested using the arctanh transform, which compares spectra calculated over the same number of disjoint sections (Rosenberg et al., 1989 ). Comparisons were made between COMP1 and one
other condition. For each MEG-EMG pair, such a transform produced a
time-frequency Z-score map; elements of this map should have a mean of
zero and an SD of one on the null hypothesis that the two task
conditions compared have equal coherence.
These Z-score spectra were combined using both parametric and
nonparametric methods. In a nonparametric summation of these differences, each MEG-EMG spectrum comparison was thresholded at a
significance level of p < 0.05; points with Z > 1.96 were given the value 1, points with Z < 1.96 were given
the value 1, and all other points were set to 0. The thresholded
scores were then summed across all subjects and MEG-EMG pairs within the 15-30 Hz frequency band for all positive and negative differences independently to produce two separate spectra. Bins above significance were analyzed for significant main effects of task type and MEG-muscle pair using ANOVA designs in SPSS 8.1 (SPSS, Chicago, IL). In a parametric summation of these differences, each Z-score spectrum was
combined across subjects and MEG-muscle pairs, and the number of
points in the 15-30 Hz range greater than the Bonferroni corrected significance level of p < 0.05 was calculated.
Difference tested using paired t tests. The
arctanh method of comparison was used only when the tasks compared had
exactly the same temporal profile (i.e., COMP1-ISO tasks). Differences within a task or between different parts of the same task were tested
using Student's paired t tests on the Z-score-transformed coherence estimates in the 15-30 Hz range in discrete sections of the
task. All significance levels were corrected in the event of any
multiple comparisons.
Cortical source localization
Sources of oscillatory MEG signals were modeled in the time
domain as equivalent current dipoles (ECDs)
(Hämäläinen et al., 1993 ), found by a least-squares
search based on the MEG signal distribution. The EMG was first
converted to a series of events by detecting the times when it crossed
a given voltage in the positive-going direction; the threshold level
was set to obtain 10-15 triggers per second. The MEG signals were then
averaged relative to these triggers. Source localization was restricted to the EMG-triggered averages from the 60 detectors centered over the
rolandic area in each hemisphere, because signals from other detectors
showed no consistent signals. The value of the mean field at a lag
chosen to coincide with the peak deflection was used to produce a field
map over the scalp, to which an ECD model was fitted. Only sources that
accounted for >75% of the field variance were accepted. Sources were
identified using the 1DI muscle for all task conditions. In the COMP1
condition, source locations were found for all four EMGs recorded to
allow their comparison.
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RESULTS |
Effect of compliance on coherence between cortex and muscle
Figure 2 shows representative
results for a single subject performing the hold-ramp-hold precision
grip task under COMP1 (most compliant) conditions. Figure 2,
A and B, shows, respectively, the power spectra
of the MEG from the contralateral sensorimotor cortex and from the 1DI
muscle EMG averaged over the entire task. Both spectra showed distinct
peaks between 10-12 and 18-25 Hz. In the MEG power spectrum, the
~10 Hz peak was much larger in amplitude than the ~19 Hz peak,
whereas for the EMG, the ~12 and ~24 Hz peaks were of approximately
equal magnitude. The MEG power spectrum also showed a smaller but
distinguishable peak at ~31 Hz; no corresponding peak was observed in
the EMG power spectrum. Figure 2C shows the coherence
spectrum between MEG and 1DI muscle EMG, averaged across the entire
task. There was a single, clear peak in the 15-30 Hz range centered
around ~22 Hz; this peak was statistically significant
(p < 0.05).

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Figure 2.
Single subject data for the COMP1 condition.
A, B, Power spectra for MEG signal
(A) recorded from a sensor overlying the
sensorimotor cortex and the EMG recorded from the 1DI muscle
(B), averaged over the whole task and for all
trials (n = 75). C, The coherence
spectra calculated between the two power spectra shown in
A and B. The red line
indicates the 95% significance level. D,
E, Frequency versus time power spectra maps for MEG and
1DI EMG activity calculated with respect to the task;
below each trace is a schematic of the task.
F, Maps of MEG-EMG coherence frequency calculated for
the different periods of the precision grip task. The color bar
indicates the level of coherence estimated; only values above the 95%
significance level are shown. The frequency scale on the ordinate in
D applies also to plots E and
F.
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Such averaged spectra tell us little about any functional modulations
in the coherence during the task. For this purpose, time-frequency
maps were calculated (Fig. 2D-F). Both MEG
and EMG power changed in amplitude during the task (Fig.
2D,E, respectively). Both MEG and
EMG power in the 15-30 Hz range was greatest during the two hold
periods of the task and for the EMG was reduced, but was not absent,
during the ramp. The ~10 Hz frequency signal in the MEG trace showed
no obvious modulation during the task. The EMG signal showed power at
~10 Hz throughout the task, with a slight increase in its peak
frequency during the ramp and second hold period. Figure
2F shows the time-frequency coherence map between
the sensorimotor MEG recording and 1DI EMG. The color scale of this
figure has been adjusted so that all points that failed to reach
significance (p < 0.05) are black. Coherence
was tightly confined to the 15-30 Hz range, despite the presence of power at neighboring higher and lower frequencies. Coherence was also
seen at low (<4 Hz) frequencies; this is the frequency domain analog
of a movement-related field.
As we have demonstrated previously for EMG-EMG coherence (Kilner et
al., 1999a ), the MEG-EMG 15-30 Hz coherence has a marked task
relationship. It was significant during both hold periods but abolished
during the ramp movement, and in the second hold period, the coherence
reached higher levels than it did in the first. Across subjects, the
level of 15-30 Hz MEG-EMG coherence during the COMP1 condition ranged
from 0.086 to 0.599 and was significant at some point during the task
in all subjects (p < 0.05) and for all MEG-EMG
pairs in at least one condition. Across subjects, the frequency of peak
coherence at 15-30 Hz ranged from 16.2 to 25.8 Hz (mean of 20.3 Hz).
Time-frequency coherence maps for each subject and each MEG-EMG pair
were combined using the two different techniques described in Materials
and Methods. They are shown in Figure 3,
in the left column for the nonparametric analysis and in the
right column for the parametric analysis. Both methods show
that, as in the single subject data (Fig. 2), coherence was seen only
at low frequencies (1-4 Hz) and in the 15-30 Hz frequency band during
the hold phases. The coherence at the low frequencies (1-4 Hz)
reflected the spectral components of the rapid movement of the levers
and was only present during the fast ballistic movements at the
beginning and end of each trial. Because such coherence could be
artifacts of the movement, no further analysis was performed on
coherence in this frequency range. The level of hold period coherence
was clearly related to the conditions under which the task was
performed. Both analysis methods showed that coherence was greatest for
the most compliant condition (COMP1) (Fig.
3A,F), in which subjects
made the largest digit movements. Coherence declined with progressively
smaller movements (Fig.
3B,C,G,H)
and was least for the isometric condition (Fig.
3D,J), in which no digit
movement occurred. For COMP1 (most compliant), COMP2, COMP3 (least
compliant), and ISO, the mean maximum coherence levels were 0.140, 0.133, 0.125, and 0.061, respectively. A second feature was that, for
the three compliant task conditions (Fig. 3A-C,
F-H) but not for the isometric task (Fig.
3D,J), the level of
coherence was significantly greater during the second compared with the
first hold period (comparing Z-score-transformed coherence estimates in
the 15-30 Hz range during 1.0-2.5 sec in Hold 1 to the coherence from
5.5-7.0 sec in Hold 2 (Student's paired t test;
p < 0.01). Figure 3, E and K,
shows data combined across frequencies in the 15-30 Hz range for each
of the four task conditions. There was a clear increase in the
magnitude of coherence with the degree of lever compliance.

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Figure 3.
Effect of task condition on MEG-EMG coherence.
A-D, Coherence frequency versus time maps. The
colors indicate the percentage of points above
significance pooled using the nonparametric method (see Materials and
Methods) for data from all nine subjects and four muscles (see color
scale bar to the right of D). At any
point, 100% would be equal to 36 of 36 points. The levers were most
compliant in A (greatest digit displacement required to
exert the target force level), and compliance was reduced in the
following direction: A, COMP1; B, COMP2;
C, COMP3; and D, ISO (no lever movement).
E shows the mean percentage of significant points in the
15-30 Hz range for each of the four task conditions with respect to
the task (dark blue, COMP1; green, COMP2;
red, COMP3; and light blue, ISO). Data
for each of these traces were averaged across trials, across muscles,
and across subjects. F-K show the same data combined
using the parametric method. Below each
column is a schematic of the task.
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Figure 4 presents a detailed comparison
of the relationship between task condition and MEG-EMG coherence.
Coherence at 15-30 Hz was compared for task conditions COMP2, COMP3,
and ISO relative to COMP1 by calculating arctanh-transformed coherence
differences and thresholding them for significance as described in
Materials and Methods. The comparison was performed for three discrete
1.5 sec sections of the task: Hold 1 (1-2.5 sec after task onset), Ramp (3.2-4.7 sec), and Hold 2 (5.5-7 sec); these sections are marked
in Figure 1A. The bar charts of Figure
4A-C show summed nonparametric coherence
comparisons; the parametric comparisons are shown in Figure
4D-F. In all cases, a positive difference indicates
that coherence was higher during COMP1. During the ramp phase, when
coherence was all but abolished, very few bins showed any difference
across task condition (Fig. 4B,E).
For both hold periods, the greatest difference in coherence was seen
between the condition involving the largest movement (COMP1) and that with none (ISO) (Fig.
4A,C,D,F,
white bars). The difference in coherence
was smaller for the COMP1-COMP3 comparison (gray
bars) and smallest of all for COMP1-COMP2 (black
bars), for which the difference in digit displacement was
smallest. These effects only reached significance for the Hold 2 period
(ANOVA; Hold 1 period (Fig. 4D),
F(2,16) = 3.458; p > 0.05; Hold 2 period (Fig. 4F), F(2,16) = 7.704; p < 0.005).

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Figure 4.
Quantitative estimate of the change in MEG-EMG
coherence with task condition. Histograms showing differences in
coherence in the 15-30 Hz range between task conditions, all expressed
relative to the COMP1 condition and plotted for data recorded during
the different phases of the task (see Fig. 1A).
A, D, and G show the
results for Hold 1; B, E, and
H show results for Ramp; and C,
F, and I show results for Hold 2. A-C show the positive changes summed across all
subjects and muscles using the nonparametric method. For each of these
plots, the maximum possible number of points greater than significance
was 6480. D-F show the same data
averaged using the parametric method. G-I show the data
for each muscle summed across subjects using the nonparametric method.
For each of these plots, the maximum possible number of points greater
than significance was 1620.
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The differences between the task conditions varied in strength
according to the muscle whose EMG was used in the coherence analysis.
Figure 4G-I shows greater differences for the intrinsic (1DI and AbPB) compared with the extrinsic (FDS and EDC) hand muscles.
For the Hold 2 period, there was also a main effect of muscle (ANOVA;
F(3,24) = 3.228; p < 0.05) (Fig. 4G-J). There was no significant
interaction between MEG coherence with different muscles and the task
(p > 0.05).
We can conclude from this first series of experiments (Figs. 3, 4) that
there is no simple relationship between the level of cortex-muscle
coherence and grip force. Rather, coherence during the second hold
period showed significant changes with task condition, although the
grip force in the second hold period was identical for all four task
conditions (Fig. 1B). The results show that coherence
does covary with force/displacement relationship, i.e., with lever compliance.
Is the level of coherence affected by the pattern of grip
force increase?
It is clear from Figure 3 that, after subjects increased the force
exerted on the compliant levers that they were already gripping, there
was an enhanced level of cortex-muscle coherence. In the second series
of experiments, we tested whether the level of this coherence is
affected by the pattern of grip force increase that subjects use to
track the target between the first and hold periods. We compared
coherence when subjects performed a slow ramp increase in grip force
(compare Figs. 1, 5I)
with that obtained when subjects made a ballistic force increase to
track the target when it jumped from one position to another (Fig.
5J).

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Figure 5.
Effect of type of movement on MEG-EMG coherence.
A, B, Coherence frequency versus time
maps. The colors indicate the percentage of points above 95%
significance pooled using the nonparametric method across all seven
subjects and four muscles (color scale bar to right of
B applies to both maps; at any point, 100% would be
equal to 28 of 28 points). A shows the data for the Ramp
task, and B shows the data for the Ballistic task.
E and F show the mean percentage of
significant points in the 15-30 Hz range for Ramp
(E) and Ballistic (F;
Bal) tasks. Data for each of these traces were
averaged across trials, across muscles, and across subjects.
C, D, G, and
H show the same data for the parametric pooling method.
I and J show the schematic of the two
tasks; the horizontal bars indicate the periods of the
task from which data were used for statistical testing (see K;
H1, Hold 1; H2, Hold 2). K
shows the number of points above 95% significance summed over the
15-30 Hz range and the periods marked in I and
J. Maximum number of points was 5040. NS,
Not significant (p > 0.05, corrected); *
indicates significance (p < 0.05, corrected).
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Figure 5, A and B, shows the MEG-EMG coherence
for both the tasks combined across subjects and different MEG-muscle
pairs using the nonparametric method; data combined across frequencies in the 15-30 Hz range are shown in Figure 5, E and
F. Results obtained with the parametric method are shown in
Figure 5, C, D, G, and H.
The RAMP task was identical to that performed in the first series and
produced identical findings, with coherence significantly greater
during the second compared with the first hold period. This is shown in
Figure 5K, which compares coherence estimates in the 15-30
Hz range during 1.0-2.5 sec in Hold 1 with the coherence from 5.5-7.0
sec in Hold 2 (Student's paired t test; p < 0.05, corrected for multiple comparisons). The same pattern of
modulation was obtained in the BALLISTIC task (Fig.
5B,D). Figure 5K shows that the
Hold 1-Hold 2 difference was significant. The modulation was
consistent across all four muscles (Fig. 4G-J). Coherence during either the first or second hold period of the two
tasks was not significantly different (p > 0.05, corrected for multiple comparisons) (Fig. 5K,
red bars).
We can conclude from this second series that the change in coherence is
not significantly dependent on the type or speed of force increase used
between the two holds.
Does MEG-EMG coherence persist for longer hold periods?
We investigated whether the enhanced level of coherence observed
in the second hold period persisted throughout a maintained steady
contraction. Figure 6 compares two
coherence spectra. The first (Fig.
6A,B, solid lines) shows
coherence calculated using 1.28 sec windows beginning 5.5 sec after the
task onset and averaged across 75 trials (calculation shown
schematically in Fig. 6C). The second spectrum (Fig.
6A,B, dotted lines) was
calculated over 75 consecutive 1.28 sec windows during the Neverending
task, when the subject continued to hold for ~180 sec (Fig.
6D). Figure 6A shows the comparison
in a single subject for the MEG-1DI EMG coherence with the COMP1
conditions. Although there was a significant 15-30 Hz coherence peak
in both cases, the peak was larger and broader when calculated across
the second hold period than during the Neverending task. Interestingly,
this difference was not seen when the task was performed under
isometric (ISO) conditions (Fig. 6B).

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Figure 6.
Comparison of coherence during short versus long
precision grips. A, Coherence spectra for MEG-1DI pair
for a single subject during the second hold period (solid
line) of the standard task, shown schematically in
C and averaged from data recorded in 75 successive
trials compared with coherence in data recorded during a single long
hold period (dashed line) of the Neverending task, which
lasted for up to 180 sec shown schematically in D (note
broken time scale). Both tasks were performed under most
compliant (COMP1) conditions. B, Coherence spectra for
MEG-1DI pair for a single subject during the second hold period
averaged across trials (solid line) and during the long
hold, Neverending task (dashed line), for the task
performed under isometric (ISO) conditions. E, The
percentage of points above 95% significance in the 15-30 Hz range for
the Hold 2 (filled bar) and Neverending task
(open bar) for COMP1 conditions. F
displays the same data as E for the ISO task. For both
E and F, 100% would be equal to 532 of
532 points.
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Across subjects and muscles, the peak coherence value in the 15-30 Hz
band had a mean of 0.14 for the second hold period compared with 0.082 for the Neverending task under COMP1 conditions. The means under ISO
conditions were 0.09 and 0.07, respectively. Figure 6, E and
F, shows the number of bins above significance in the 15-30
Hz range when pooled across subjects and MEG-EMG pairs. There was
significantly more coherence in the second hold period compared with
the Neverending task only for the COMP1 condition (p < 0.05; tested using arctanh comparisons of
the coherence spectra for the Hold 2 and Neverending tasks). For COMP1,
88% of EMG-MEG pairs had significantly higher coherence during Hold 2 than during the Neverending compared with only 8% for the ISO task.
Where is the source of the coherence?
Figure 7 shows for a single subject
the generation sites of MEG signals that displayed the strongest
MEG-EMG coherences. The different symbols refer to each
MEG-muscle pair during the second hold of the COMP1 task in Figure
7B and to MEG-1DI coherence for the second hold of the
COMP1, COMP2, COMP3, and ISO tasks in Figure 7A. For all
tasks and MEG-EMG pairs, the generator site of the EMG signal agreed
with the hand area of the primary motor cortex.

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Figure 7.
Cortical source analysis of coherent MEG activity.
A, B, Single subject data showing the
direction and strength of the current dipole on the subject's
surface-rendered magnetic resonance image for MEG-1DI EMG
coherence during the second hold period for the four task conditions
COMP1, COMP2, COMP3, and ISO (A), and the
MEG-EMG coherence for the four muscles recorded during the second hold
period (B). C shows the distances of the cortical
sources of the MEG-1DI coherence spectra during the first hold period
relative to those during the second hold period of the task performed
under COMP1 conditions. Each point represents a
different subject. D, The distance of the sources of the
MEG signal with the highest level of coherence signals for MEG-AbPB
(×), MEG-FDS ( ), and MEG-EDC ( ) pairs relative to those for
the MEG-1DI pair during the second hold period under COMP1 conditions.
Each point represents a different subject.
E, The distance of cortical sources for the MEG-1DI
coherence spectra during Hold 2 under COMP2 (×), COMP3 ( ), and ISO
( ) conditions relative to those for the COMP1 condition. Each
point represents a different subject.
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To compare MEG source sites across subjects, the source explaining the
coherence between MEG and 1DI EMG during the second hold of the COMP1
task was used as a reference point, and the sources from other
conditions were plotted relative to this point. Figure 7C
shows the source location for MEG-1DI coherence in the first hold of
the COMP1 task plotted in this way. There was no significant difference
(Student's paired t test; p < 0.05)
between the coherence source location in the different hold periods.
Figure 7D plots the relative source localizations for
different muscles; these locations did not differ significantly
(Student's paired t test; p < 0.05) across
muscles, in agreement with the known distributed representation of
muscles within the motor cortex (Porter and Lemon, 1993 ). Figure
7E shows the source locations for MEG-1DI coherence during
the second hold during the COMP2, COMP3, and ISO tasks. Once again, no
significant differences (Student's paired t test;
p < 0.05) in these locations were found.
 |
DISCUSSION |
In this study, we have shown that the coherence between 15-30 Hz
oscillatory activity in the sensorimotor cortex and in contralateral hand and forearm muscles during performance of the precision grip task
is strongly and systematically modulated by the conditions under which
the task is performed. Previous studies have established that both the
magnitude of the cortical oscillations and the cortical-muscular coherence are most pronounced during the steady hold period of this
task, being abolished during movements and greatest during steady hold
periods just after movements (Salmelin et al., 1995 ; Pfurtscheller et
al., 1996 ; Baker et al., 1997 ; Hari and Salenius, 1999 ; Kilner et al.,
1999a ). The results of the current study both support and extend these
previous results, with the novel finding that the level of coherence
covaries with the degree of compliance of the levers operated by the subject.
Modulations of cortex-muscle coherence during grasp of a
compliant object
Figures 3 and 4 show that the degree of coupling between the
sensorimotor cortex and the contralateral hand and forearm muscles is
modulated by the task condition. The changes in coherence during the
second hold period cannot be related to grip force, because this was
constant in each condition (Fig. 1A), a finding that confirms results from previous studies performed using a similar range
of low grip forces (Kilner et al., 1999a , their Fig. 4; Mima et
al., 1999 ). Likewise, these results show that there is no simple
relationship between coherence and digit displacement. For example,
exactly the same displacement was required in Hold 2 of the COMP3
condition as in the Hold 1 of the COMP2 condition (Fig.
1A), but the level of coherence during these two hold
periods was quite different (Fig. 3, compare B,
C). These differences between Hold 2 and Hold 1 periods
cannot be attributable to the different type of movement into
the respective holds, ballistic, or slow ramp, because there was no
difference in the level of coherence during the second hold period
after a slow ramp compared with that after a ballistic jump (Fig. 5).
Instead, Figure 4 suggests that the key parameter is the
force/displacement ratio i.e., the compliance of the levers.
These systematic changes in coherence in the 15-30 Hz frequency range
were present in both parametric and nonparametric analyses of combining
data from different muscle and subjects. Neither one of these methods
is a perfect way of combining coherence spectra across subjects and
across muscles, but the corroboration between the results increases the
certainty that the results are real and not artifactual.
Time course of coherence after movement
We have suggested previously that synchronous motor cortex output
to motoneurons may maintain grip force at lower firing rates of
cortical neurons than would be needed otherwise (Baker et al., 1997 ,
1999 ). In this case, coherence between muscle and cortex should be
present during sustained periods of grasp. The results in Figure 6
confirm that, when subjects had to maintain steady grasp for periods of
up to 3 min, some significant coherence was present in the 15-30 Hz
range. However, this coherence was significantly lower than just after
movement. It is possible that this temporal modulation in coherence
reflects two different functions of coherent oscillatory activity, one
that is related to maintained contractions (for example, during the
Neverending task) and another that is related to the changes in the
motor state and that appears as a rebound. Interestingly, this
difference between brief and protracted hold periods was not present
for cortex-muscle coherence during grasp under isometric conditions,
once again underlining the importance of coherent oscillations during
grasp of compliant objects.
The results reported here are important in two ways. First, in a
general sense, they demonstrate a systematic relationship between
coherence in the 15-30 Hz range and a specific parameter of the motor
task. This relationship was only observed in the degree of coherence
between the cortex and the muscles and was not present in the
corresponding power spectra from either the MEG or EMG recordings. It
is clear that the cortical activity, which is coherent with the hand
and forearm muscles, represents something much more than just an
"idling rhythm" (Adrian and Matthews, 1934 ; Buser, 1987 ; Lopes da
Silva, 1991 ). Second, our results suggest a specific function related
to the grasp of compliant objects; in everyday life, this includes a
large range of tools and many other objects (food, clothing, etc).
Coherence was at a much lower level during isometric grip of the fixed
levers compared with grasp under compliant conditions (Fig. 3).
Function of synchrony during grasp of compliant objects
Why should coherence during grasp be related to the compliance of
the object? When the spring constant simulated by the
manipulandum interface was steadily reduced (from COMP3 to COMP1),
subjects had to produce larger displacements of their digits to achieve the force targets displayed. During such tasks, the length-tension relationships of the different hand muscles show complex changes (Joyce
et al., 1969 ). Additionally, both central and peripheral signals
concerned with force control would be markedly different under
compliant and isometric conditions (Edin and Vallbo, 1990 ; Wilson et
al., 1995 ; Kakuda et al., 1996 ). It is possible that the modulation of
coherent oscillatory activity signals and scales these important
changes in motor state. Control of both force and displacement is
required for effective manipulation of a compliant object; information
related to both parameters is represented in the primary motor cortex
(Wannier et al., 1991 ; Picard and Smith, 1992 ; Hepp-Reymond et al.,
1999 ; Kakei et al., 1999 ), and it is possible that coherent oscillatory
activity reflects the appropriate combination of these two sources of information.
The hold-ramp-hold nature of the task we have studied requires a
sequence of changes in the motor state of the hand and forearm. During
the hold period, the dominant pattern of muscle activity is
co-contraction compared with a more fractionated pattern of activation
during the dynamic changes in force/displacement (Smith, 1981 ; Bennett
and Lemon, 1996 ; Kilner et al., 1999a ). The results also show that
coherence is particularly marked during a steady hold that succeeded a
period in which subjects closed their grip aperture and exerted a
greater force on the object. Thus, the level of coherence may also
reflect the resetting of the control system as it passes through an
important change in state: from increased grip force to maintenance of
a new level of grip force and digit position (Kilner et al., 1999a ).
Having parameterized this new motor state (Johansson, 1996 ), the level
of synchrony may reflect a recalibration of both feedback (Edin and
Vallbo, 1990 ; Wilson et al., 1995 ) and feedforward (Miall and Wolpert, 1996 ) control within the sensorimotor system suitable for effective grip. Such a mechanism would be of particular importance during manipulation of compliant objects, which entails successive periods of
movement and steady grasp.
 |
FOOTNOTES |
Received June 20, 2000; revised Aug. 23, 2000; accepted Aug. 29, 2000.
This work was supported by the Wellcome Trust, the Medical Research
Council (United Kingdom), the Academy of Finland, and the European
Union Large-Scale Facility Neuro-BIRCH II at the Helsinki University of Technology.
Correspondence should be addressed to James M. Kilner at the above
address. E-mail: j.kilner{at}ucl.ac.uk.
 |
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