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The Journal of Neuroscience, November 15, 2002, 22(22):9997-10008
Synchronization of Motor Neurons during Locomotion in the
Neonatal Rat: Predictors and Mechanisms
Matthew C.
Tresch and
Ole
Kiehn
Department of Neuroscience, Karolinska Institutet, 17177 Stockholm,
Sweden
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ABSTRACT |
We describe here the robust synchronization of motor neurons at a
millisecond time scale during locomotor activity in the neonatal rat.
Action potential activity of motor neuron pairs was recorded
extracellularly using tetrodes during locomotor activity in the
in vitro neonatal rat spinal cord. Approximately 40% of motor neuron pairs recorded in the same spinal segment showed significant synchronization, with the duration of the central peak in
cross-correlograms between motor neurons typically ranging between
~30 and 100 msec. The percentage of synchronized motor neuron pairs
was considerably higher for pairs with similar locomotor-related activity and strong rhythmic modulation. We also found synchronization between the activities of different motor pools, even if located several segments apart. Such distant synchronization was abolished in
the absence of chemical synapses, although local coupling between motor
neurons persisted. On the other hand, both local and distant coupling
between motor neurons were preserved after antagonism of gap junction
coupling between motor neurons. These results demonstrate that motor
neuron activity is strongly synchronized at a millisecond time scale
during the production of locomotor activity in the neonatal rat. These
results also demonstrate that chemical synaptic inputs, in addition to
electrical synapses, contribute to this synchronization, suggesting the
existence of multiple mechanisms underlying motor neuron
synchronization in the neonatal rat. The fast synchronization described
here might be involved in activity-dependent processes during
development or in the coordination of individual motor neurons into a
functional population underlying behavior.
Key words:
motor neuron; synchronization; gap junction; locomotion; development; pattern generation
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INTRODUCTION |
Action potential synchronization has
been described between neurons in many systems. This prevalence has led
several investigators to assign to synchronization an important role in
basic neural function. At a network level, synchronization has been
suggested to link the activity of disparate neurons into a coordinated, functional population, binding together the features represented by
individual neurons into a unified whole (Engel et al., 1992 ; Welsh and
Llinas, 1997 ; Farmer, 1998 ; Baker et al., 1999 ). At a synaptic level,
synchronization has been suggested to amplify the effects of single
spikes on a postsynaptic neuron, with the close temporal association of
presynaptic spikes allowing for complex synaptic integration (Softky
and Koch, 1993 ; Stevens and Zador, 1998 ) or efficient synaptic
plasticity during learning and development (Katz and Shatz, 1996 ;
Markram et al., 1997 ; O'Donovan et al., 1998 ; Feller, 1999 ; Bi and
Poo, 2001 ).
In the developing mammalian spinal cord, electrical gap junction
coupling (GJC) between motor neurons (MNs) (Fulton et al., 1980 ; Walton
and Navarrete, 1991 ; Chang et al., 1999 ; Tresch and Kiehn, 2000a ) has
been commonly suggested to mediate synchronization of MN firing during
the production of movement. Moreover, because the electrical GJC
between MNs seems to disappear over the course of development (Walton
and Navarrete, 1991 ; Chang et al., 1999 ), the synchronization between
MNs is expected to also disappear, and a recent set of experiments has
provided evidence in support of this hypothesis (Personius and
Balice-Gordon, 2001 ). Such synchronization has been suggested to be
involved in the activity-dependent process of synapse elimination at
the developing neuromuscular junction (Busetto et al., 2000 ; Chang and
Balice-Gordon, 2000 ).
The potential contribution of other mechanisms, however, both synaptic
and extrasynaptic, to any synchronization between MNs in this
preparation has often not been considered. Many experiments have shown
synchronization between MNs in normal adults (Nordstrom et al., 1992 ;
Farmer, 1998 ; Baker et al., 1999 ; Hansen et al., 2001 ), at ages well
beyond the time when electrical GJC between MNs is demonstrable in the
mammalian spinal cord. This synchronization is generally considered to
reflect the presence of a common presynaptic input to each neuron,
mediated by classic chemical synapses. The relative contributions of
gap junctional coupling and of presynaptic chemical synaptic inputs to
the synchronization of MNs in the neonatal rat, in which both
mechanisms may shape the activity patterns of MNs, is therefore not obvious.
The experiments described here demonstrate that MNs are robustly
synchronized at a millisecond time scale during the production of
locomotor activity, as had been predicted. These experiments also show
that although gap junction coupling between MNs can make a substantial
contribution to the local synchronization of motor pools, it is not the
only mechanism mediating such synchronization. In particular, synaptic
drive to MNs from spinal interneurons clearly plays a large role in the
synchronization of motor pools during the production of locomotor
activity in the neonatal rat.
These results have been presented previously in abstract form (Tresch
and Kiehn, 2000b ).
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MATERIALS AND METHODS |
Preparation. The dissection procedures and
experimental preparation were as described elsewhere (Kiehn and
Kjaerulff, 1996 ; Tresch and Kiehn, 1999 ; Raastad and Kiehn, 2000 ).
Briefly, rats (postnatal day 0-2; n = 29) were
anesthetized under ether and decapitated. The spinal cord was exposed
by ventral laminectomy and then removed and placed ventral side up in a
chamber with continuously circulating oxygenated Ringer's solution
containing (in mM): 128 NaCl, 4.7 KCl, 1.2 KH2PO2, 1.25 MgSO4, 2.5 CaCl2, and 20 glucose, pH 7.4, at room temperature. In experiments in which calcium
was removed from the Ringer's, CaCl2 was
replaced with equal molarity MgSO4. Motor
activity was monitored by suction electrodes placed on ventral roots
(L5, usually with L2 or L3, sampled at 1000 Hz). In some rats we
dissected the peripheral nerves innervating iliopsoas (IP) and
quadriceps (Q) muscles intact with L2 and L3 ventral roots. Locomotor
activity was induced by bath application of a combination of serotonin
(5-HT; 2-8 µM) and NMDA (2-7
µM), by application of 5-HT alone (6-30
µM), or by application of dopamine (DA; 1-3
mM). These agents evoke motor patterns that are
similar to the rhythmic, alternating muscle activations observed during
normal locomotion in intact animals (Kiehn and Kjaerulff, 1996 ). For
simplicity of presentation, we refer to these motor patterns throughout
the present study as "locomotor activity," although no actual
behavior was produced. The quality of such locomotor activity was
assessed using the modulation depth measure described previously
(Kjaerulff and Kiehn, 1996 ), and locomotor frequency, period, and
period variability were calculated.
MN recordings. Along with ventral root activity, the
extracellular activity of neurons was recorded using tetrodes (sampled at 20 kHz), as described previously (Tresch and Kiehn, 1999 ). Tetrodes
were inserted through a small slit made in the ventral surface of the
cord overlying motor pools. For recordings made within a single spinal
segment, multiple tetrodes were placed in the same slit, generally
within <500 µm of one another. Most of the recordings were made in
L5, occasionally with simultaneous recordings in L2 or L3. The action
potentials of multiple neurons were recorded during locomotor activity
and saved for off-line analysis. The action potentials of different
neurons were separated by clustering analyses performed on features of
the recorded waveforms, usually the peak voltages on each channel of
the tetrode (Tresch and Kiehn, 1999 , their Fig. 1). Once separated, the
arrival times of each recorded neuron in 1 msec bins were used for
spike-triggered averaging with the raw recorded ventral root activity
to determine whether the recorded neuron was an MN. Only those neurons
for which the spike-triggered averaging showed an orthodromic action potential in the ventral root were included in subsequent analyses. On
average, 297 ± 207 (mean ± SD) action potentials were
recorded for each neuron.
The locomotor-related activity of each MN was quantified in terms of
its mean phase and mean resultant length, or R value (Mardia, 1972 ; Tresch and Kiehn, 1999 ). The mean phase characterizes the portion of the locomotor cycle in which a neuron is active, whereas
the R value of a neuron characterizes the modulation
strength of the neuron by the locomotor cycle. The significance of the R value was assessed using the Rayleigh test (Mardia,
1972 ).
In a small number of recordings to examine the effects of carbenoxolone
on MN properties, whole-cell tight-seal intracellular recordings of MNs
were made in current clamp (5000 Hz; Axopatch-1D, Axon Instruments,
Foster City, CA) with glass pipettes [3-6 M , filling solution (in
mM): 138 K-gluconate, 10 HEPES, 0.0001 CaCl2, 5 ATP-Mg, 0.3 GTP-Li) (Kiehn et al., 1996 ;
Raastad et al., 1996 ; Tresch and Kiehn, 2000a ). Electrical coupling
between MNs was monitored using a collision protocol described
previously (Walton and Navarrete, 1991 ; Chang et al., 1999 ).
Evaluation of MN synchronization. To quantify the
synchronization of MN action potential activity, we performed a
cross-correlation analysis. This analysis was complicated by the fact
that we were recording the activity of MNs during locomotor activity.
The activity of MNs is clearly expected to be modulated during
locomotion, and this nonstationarity of neuronal activity makes it
difficult to assess the significance of cross-correlations. We
therefore used a randomization procedure, similar to a shuffle
predictor (Perkel et al., 1967 ), to determine whether two MNs were
correlated with one another more than would be expected simply because
of their slow modulation during locomotor activity.
We first described the modulation of each neuron with respect to the
ventral root activity. The rectified and filtered ventral root
recording was used to define a locomotor phase, expressed in angular
coordinates from 0 to 360° (Tresch and Kiehn, 1999 ). This range was
divided into 50 bins of equal phase, and the number of action
potentials produced by the neuron in each bin was counted. We then used
this observed modulation of spike count to generate a random spike
train. For each spike from the original spike train we randomly chose a
new time of arrival, with the condition that the locomotor phase in
which the new spike occurred was the same as that of the original
spike. We further ensured that for each locomotor cycle, the random
spike train contained the same number of spikes in that cycle as the
original spike train. This latter condition ensured that any
cycle-to-cycle variation or slow drift in neuronal excitability through
the locomotor run was reproduced in the random spike train, thereby
taking into account any features of cross-correlations that might be
caused by such changes in excitation (Brody, 1998 , 1999 ). We did not
directly attempt to account for latency covariations, which in the
present case would be reflected in a covariation between the onsets of
a pair of neurons from cycle to cycle (Brody, 1998 , 1999 ). This
randomization produced a spike train that preserved the slow modulation
of neuronal activity related to the locomotor cycle but abolished the
precise temporal details of the original spike train. The same
procedure was performed for the other neuron in the pair, and a
cross-correlogram was performed between the two random spike trains. We
generated 100 such random cross-correlograms for each pair of neurons
using a bin size of 10 msec. The mean cross-correlogram between these random spike trains represents the null hypothesis that the
cross-correlogram observed between two neurons resulted only from their
common slow modulation during locomotor activity. This null hypothesis
was rejected, and the pair of neurons was considered significantly synchronized at a short time scale if the actual observed
cross-correlation had a peak that was >3 SDs, calculated from the
distribution of random cross-correlations, from the mean of the random
cross-correlograms within the central ± 100 msec. This procedure
generally agreed with a qualitative examination of the activity in the
pairs but provided an objective means of assessing this issue.
Synchronization between groups of MNs, if present, should also be
evident in the relationship between the activity in an MN and the gross
ventral root recording. Such a synchronization should be seen as a
correlation between a spike in a recorded MN and a cluster of action
potentials recorded in the ventral root, corresponding to the action
potential of the MN along with action potentials of synchronized MNs
firing in close temporal proximity (usually approximately ± 100 msec; see Results and Figs. 2A, 3, and 7). We
therefore also performed a cross-correlation analysis between the
action potentials in each MN and the rectified activity of each ventral
root. We performed an analysis analogous to that described above to
determine the significance of the cross-correlation. We generated
random spike trains that preserved the activity relationship of the MN
to the locomotor-related modulation of the ventral root and the
cycle-to-cycle variations in spike count but that abolished the fine
temporal aspects of this relationship. The rectified ventral root
recordings were smoothed by convolution with a Gaussian kernel (10 msec
SD). Cross-correlations >3 SDs greater than the mean of the random
cross-correlation were considered to be significant. Although the
action potential of the recorded MN was also present in the recorded
ventral root, this orthodromic spike only contributed a narrow
correlation near zero lag. Any cross-correlations with such a narrow
peak were not considered to be significant. All cross-correlations
between a neuron and a ventral root are shown as correlation coefficients.
We also performed cross-correlations between ventral root recordings to
examine coupling between the motor outputs of different spinal
segments. The randomization procedures described above for neuronal
spike trains are not applicable to such cross-correlations, and we were
therefore unable to develop a clear statistical evaluation of these
ventral root cross-correlations. The presence of coupling between
ventral roots was therefore assessed by qualitative inspection of the
cross-correlations.
Evaluation of synchronization strength. We estimated
synchronization strength using several previously described measures: k'-1, the index S, the synchronization index (SI), the common input
strength (CIS) (Nord-strom et al., 1992 ), and the correlation coefficient (CC) (Eggermont, 1992 ). The beginning and end of the central peak in the cross-correlograms with significant synchronization were identified visually. For cross-correlograms that were not significant, the correlation strength measures were calculated over the
mean period of the significantly correlated correlograms. Table
1 shows the relationships between these
measures of correlation strength calculated from the MN
cross-correlograms. As can be seen in Table 1, there is a range of
relationships between these measures [see also Molotchnikoff et al.
(2001) ], suggesting that they are not interchangeable. A lack of
dependence on overall levels of neuronal activity, as indicated by
interspike interval or firing rate, has been taken as a criterion of a
good measure of correlation strength (Nordstrom et al., 1992 ). Table
2 shows the relationship between these
measures and the activity level of the neuron pairs, as reflected in
the geometric mean of the interspike interval and the firing rate of
each neuron (Nordstrom et al., 1992 ). As can be seen in Table 2, only
the index S and the CC were unrelated to the mean firing rate.
All measures were significantly related to the mean interspike
interval, although the relationship for the index S and CC was weak
(r2 = 0.05 for both). These two
measures were also highly correlated to one another as shown in Table
1, resulting from the strong correlation in the present data set
between their normalization terms (r = 0.96). Because
the CC is a standard measure of correlation strength and because of its
relative lack of dependence on activity levels for this data set, we
use this measure to characterize the strength of interactions between
neurons in the present study. Note, however, that our assessment of the
significance of the cross-correlations using the randomization
procedures described above was not directly dependent on any measure of
correlation strength.
To examine whether correlation strength depended on the difference
between mean phases of each neuron in the pair, we performed a
linear-circular correlation analysis using a rank correlation test
(Mardia, 1976 ). The test statistic,
Dn, ranges between 0 and 1, with a
value of 1 indicating a strong relationship, and its significance was
determined as described in Mardia (1976) . Note that because the
ordering of neurons within a pair is arbitrary, the sign of the
difference in mean phases (positive or negative) is also arbitrary.
However, for the data sets examined here,
Dn did not vary considerably when the
sign of the difference was randomized, and none of the significance
values changed.
All values in the text are reported as mean ± SD unless noted otherwise.
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RESULTS |
MN action potentials are synchronized during locomotor activity in
the neonatal rat
We recorded the activity of 142 MNs during locomotor activity. In
these recordings, the activity of 176 MN pairs within the same segment
was recorded simultaneously. An example of the spike trains of two L5
MNs after application of 5-HT/NMDA (6/6 µM) is illustrated in Figure
1A. As can be seen in
the two illustrated cycles, action potentials in the two MNs were often
temporally very close to one another. Figure 1B shows
the cross-correlogram between the two spike trains illustrated in
Figure 1A. The two neurons show a common slow
modulation in their firing rate, related to the locomotor activity in
the ventral root. In addition to this slow modulation, however, there
is a sharp peak in the cross-correlation centered near zero lag. This
peak was >3 SDs from the correlation level expected from a simple slow
comodulation of the neurons by the locomotor cycle. The correlation
attributable to slow, locomotor-related modulation was estimated from
the mean of the randomized cross-correlograms (see Materials and
Methods), indicated in Figure 1 by the middle superimposed line, shown
along with lines indicating 3 SDs above and below this mean level.
Figure 1C shows the cross-covariogram of these two cells,
which was obtained from subtracting the mean of the randomized
cross-correlograms from the observed cross-correlogram; the temporal
coupling between these neurons is shown clearly. Of the 176 MN
pairs recorded within the same segment, 75 (43%) showed a significant
cross-correlation peak (L2, 1 of 3; L3, 4 of 9; L5, 70 of 164). For the
population of correlated pairs, the correlation lag ranged from 0.2 to
54.4 msec (mean 10.1 ± 11.3 msec). The mean duration of the
central peak of the cross-correlation was 59.2 ± 32.7 msec.

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Figure 1.
Action potential synchronization in MNs during
locomotor activity. A, Spike trains of two L5 MNs
(bottom and middle traces) and
simultaneous activity in the L5 ventral root (top trace)
during the production of locomotor activity evoked by NMDA and 5-HT.
Both neurons were activated in phase with the burst in the L5 ventral
root (VR). Within each burst, the arrival times of
individual action potentials from each neuron were often close to one
another. B, The cross-correlogram between the spike
trains of the MNs shown in A. The middle thin
line shows the mean of the random cross-correlograms
representing the null hypothesis of comodulation of the neurons
attributable to the locomotor cycle. The other two thin
lines show ±3 SDs from this expected level of comodulation.
C, The covariogram of the two neurons shown in
A, obtained by subtracting the expected level of
correlation from the observed cross-correlogram. The thin
lines show ±3 SDs of the distribution of expected
cross-correlograms.
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Synchronization of MNs could also be observed by cross-correlating MN
action potentials with rectified ventral root recordings, as
illustrated in Figure 2. Figure
2A shows an example of a locomotor burst in the L2
ventral root in which clusters of MN activity were especially
clear (Cazalets et al., 1990 ; Westerga and Gramsbergen, 1993 , 1994 ;
Cowley and Schmidt, 1995 ; MacLean et al., 1997 ; Hochman and
Schmidt, 1998 ). A simultaneously recorded L2 MN fired action potentials
associated with each of the clusters. Figure 2B shows the cross-correlation between the MN and the rectified ventral root,
along with the mean ± 3 SDs of the distribution of randomized cross-correlations. These plots show the clear tendency of this MN to
be associated with a cluster of ventral root activity. Such cross-correlations regularly revealed a significant peak: of 142 MNs
recorded, 116 (82%) showed a significant cross-correlation with the
ventral root in which it projected its axon. This correlation further
demonstrates the prevalent synchronization of MNs during the production
of locomotor activity in this preparation.

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Figure 2.
Synchronization of MNs to ventral root clusters.
A, Ventral root activity in L2 (top
trace) showing the presence of clusters of motor output. The
spike train in a simultaneously recorded L2 MN (bottom
trace) was closely related to these clusters. B,
The cross-correlation between the spike activity in the neuron
illustrated in A and the rectified ventral root is shown
in the thick line. The thin lines
represent the mean ±3 SDs of the distribution of random
cross-correlations expected if the relationship of the neuron to the
ventral root activity were caused only by modulation of its activity by
the locomotor cycle.
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The clusters of MN activity in the ventral root indicative of MN
synchronization were not unique to the locomotor activity evoked by
combination of NMDA and 5-HT. Ventral root clusters were observed
during the locomotor activity evoked by 5-HT alone (eight of eight runs
in four animals) (Fig. 3A) or
by dopamine (10 of 10 runs in six animals) (Fig. 3B). We
also observed ventral root clusters in the rhythmic but
non-locomotor-like activity (with ipsilateral L2-L5 synchrony and
alternating segmental motor discharge) (Cowley and Schmidt, 1994b )
evoked by muscarine (one of one run in one animal). These results
suggest that MN synchronization is found during many rhythmic motor
acts in the neonatal rat spinal cord.

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Figure 3.
Synchronization of MNs during 5-HT- and DA-evoked
locomotor activity. A, The activity of a L5 ventral root
in one burst of locomotor activity evoked by serotonin
(5-HT), showing clusters of MN output. The
autocorrelation to the right shows the robustness of
these clusters, with clear off-center peaks as well. B,
The activity of a L5 ventral root during one burst of locomotor
activity evoked by dopamine (DA) and its autocorrelation
to the right, similarly showing clusters in the motor
output.
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Examination of the cross-correlations in Figures 1-3 also suggests
that there was a substantial oscillatory component to the cross-correlations between MNs, as illustrated in the peaks to the
right and left of the central peak. Such oscillatory behavior was
commonly observed in these experiments and will be discussed in more
detail in a later section (see Oscillatory features of MN
synchronization). In the subsequent analyses, however, we examine the
characteristics of MN synchronization as reflected in the central peak
of the cross-correlograms centered near zero lag.
Predictors of MN synchronization
We next considered whether the synchronization described above
could be predicted by the component of motor neuronal activity that was
modulated in relation to the ongoing locomotor pattern. A relationship
between features of such locomotor-related activity of MNs and MN
synchronization would suggest that the synchronization observed here is
not distributed randomly between neurons but is functionally related to
the motor production in this preparation.
Similarity between the locomotor-related activity of neurons
predicts synchronization
We first examined the relationship between the synchronization of
a MN pair and the similarity between the locomotor-related activity of
each neuron in the pair. We found that the percentage of synchronized
MN pairs was considerably higher between neurons with similar
locomotor-related activity. Figure
4A shows the percentage of synchronized MN pairs as a function of the difference between the
mean phases of each cell in the pair: a small difference of mean phases
indicates that the two neurons were activated in a similar portion of
the locomotor cycle. Because the mean phase is only well defined when
the locomotor-related activity of a neuron has a significant unimodal
component, only neuron pairs in which both neurons had a significant
R value (Rayleigh test; p < 0.05) were
included in this analysis. The large majority of pairs met this
condition (155 of 176, 88%). MN pairs that were activated in different
portions of the locomotor cycle were rarely synchronized (Fig.
4A), whereas MN pairs with similar locomotor-related activations were correlated very often, with nearly 70% of such pairs
having a significant correlation. This percentage of synchronized MN
pairs with similar locomotor-related activity was close to the
percentage found by correlation of MN spikes with rectified ventral
root recordings. The lower figure of ~40% for MN synchronization reported in the previous section therefore likely reflected the difficulty in randomly sampling two MNs with similar locomotor-related activity.

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Figure 4.
Synchronization is more common between MNs with
similar locomotor-related activity. A, The percentage of
synchronized pairs is illustrated as a function of the difference
between the mean phases of the neurons in the pair (bin size, 8°). A
small difference indicates that the neurons were activated similarly
during locomotor activity. The ratio on top of each
bar indicates the fraction of MN pairs that was
synchronized in a particular bin. More MN pairs were synchronized when
the neurons had similar mean phases. B, The correlation
strength, measured as the correlation coefficient, between neurons as a
function of difference in their mean phases. C, D, The
same analyses as A and B but with only
those MN pairs that produced at least 100 action potentials within 100 msec of one another.
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Similarly, the strength of synchronization also depended on the
similarity between the locomotor-related activity of the neurons. Figure 4B shows the scatter plot of the correlation
strength, measured as the correlation coefficient between the two spike trains (see Materials and Methods), as a function of the difference between mean phases of the neurons. Neuron pairs with a small difference in mean locomotor phase tended to have high correlation strengths, whereas pairs with larger differences tended to have low
correlation strengths (linear-circular correlation; see Materials and
Methods; Dn = 0.33; p < 0.001).
Part of this weaker synchronization between out-of-phase neurons might
simply reflect the fact that the neurons did not produce any action
potentials close to one another, making it impossible to observe any
synchronization even if it were present between the neurons. We
therefore performed the same analyses but limited the set of neurons to
only those pairs for which at least 100 individual action potentials in
one neuron were accompanied within 100 msec by an action potential in
the other neuron. As would be expected, this condition excluded a large
number of those MN pairs that were activated in different portions of
the cycle. However, even in the remaining pairs that produced a number
of action potentials close to one another, only a small fraction of the
pairs with different locomotor-related activity was synchronized (Fig.
4C). Similarly, strong correlations were still observed primarily between MN pairs with a similar locomotor-related activity (Fig. 4D). This relationship between correlation
strength and difference in mean phase was again significant
(Dn = 0.43; p < 0.001).
Neurons recorded on different tetrodes are synchronized
less frequently
Synchronization between MNs within the same segment was observed
for pairs recorded on the same tetrode as well as for pairs recorded on
different tetrodes. However, synchronization between MN pairs on
different electrodes was less common than that between pairs recorded
on the same tetrode. Of MN pairs recorded on the same tetrode, 35 of 65 (54%) were synchronized, whereas 40 of 111 (36%) of pairs recorded on
different tetrodes were synchronized ( 2(1,
n = 176) = 5.3; p < 0.05). However, this decrease was not
observed for correlation strength: the correlation strength between
neurons recorded on the same electrode was 0.09 ± 0.09, and it
was 0.08 ± 0.10 for neurons recorded on different electrodes, an
insignificant difference (p > 0.05). We also
found that MNs recorded on the same tetrode tended to have more similar mean phases than pairs recorded on different tetrodes. The mean absolute phase difference between MN pairs recorded on the same tetrode
was 21.4 ± 37.2° (mean ± angular dispersion) (Mardia
1972 ), whereas the mean phase difference between pairs recorded on
different tetrodes was 35.4 ± 18.1°, a significant difference
(p < 0.05; bootstrap test).
Relationships of synchronization to mean phase difference and to
same/different tetrode are independent
This last observation, that neurons recorded on the same tetrode
have similar locomotor-related activity, has potential implications for
the results described previously. On the one hand, it might imply that
the lower percentage of synchronization between neurons recorded on
different tetrodes reflected the weaker correlation between neurons
with larger differences in mean phase. Conversely, it might imply that
the decrease in correlation strength with increasing difference in mean
phase reflected the fact that neuron pairs with large differences in
mean phase tended to be recorded on different tetrodes. The results
shown in Figure 5, however, suggest that
neither of these potential implications applied to the present data.
First, it can be seen in Figure 5 that for pairs recorded either on the
same or on different tetrodes, there was decreasing synchronization
with increasing difference in mean phase, as assessed in the percentage
of synchronized pairs (Fig. 5A,C)
and in correlation strength (Fig.
5B,D)
(Dn = 0.48 and 0.26 for same and
different tetrodes; p < 0.001 for each). Second, comparison of Figure 5, A and C, shows that the
percentage of synchronized pairs was generally larger for pairs
recorded on the same tetrode across the range of differences in mean
phase (Fig. 5A, percentages in each bin on the same tetrode:
78, 54, 40, 40, 25; Fig. 5C, percentages on different
tetrodes: 60, 42, 57, 29, 16), although there was no clear difference
in the relationship between correlation strength and mean phase for
pairs recorded on the same or different tetrodes (Figs.
5B,D). Thus, it appears that
synchronization strength between neurons is related to the similarity
of their locomotor-related activity, independent of whether the neurons
are recorded on the same tetrode, and that neurons recorded on
different tetrodes are synchronized less commonly than neurons on the
same tetrode, independent of the similarity of their locomotor-related
activity.

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Figure 5.
Synchronization is more common with more similar
locomotor-related activity for MNs recorded on the same or on different
tetrodes. A, B, Conventions same as
Figure 4, A and B, except that only
neuron pairs recorded on the same tetrode are included.
C, D, Conventions same as Figure 4,
A and B, except that only neuron pairs
recorded on different tetrodes are included.
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Strong modulation predicts synchronization
In addition to the mean phase of a neuron, another parameter
characterizing the locomotor-related activity of a neuron is its
modulation strength, reflecting how well a given neuron is related to
the ongoing rhythm. The modulation strength of a neuron is commonly
characterized by its R value (see Materials and Methods) (Mardia, 1972 ). We found that MN synchronization was more common and
stronger for neurons that were strongly modulated by the locomotor cycle. Figure 6A shows
that increasing percentages of MN pairs were significantly correlated
with increasing mean R values of the pairs. Similarly,
Figure 6B shows that correlation strength increased
with the mean R value of the pair
(r2 = 0.13; p < 0.001). This relationship between synchronization strength and mean
R value also held when only neuron pairs for which at least
100 individual action potentials in one neuron were accompanied within
100 msec by an action potential in the other neuron were included in
the analysis (r2 = 0.11;
p < 0.01; data not shown).

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Figure 6.
Synchronization is increased between neuron pairs
with strong locomotor modulation. A, The percentage of
MN pairs with significant correlation as a function of the mean
R value, measuring neuronal modulation strength, of
neurons in the pair. B, The correlation strength between
MNs as a function of the mean R value. Only neuron pairs
for which both neurons had a significant R value were
included.
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Synchronization is not related to characteristics of the ongoing
locomotor activity
Finally, we examined the relationship between MN synchronization
and various features of the locomotor pattern itself. We found no
relationship between MN correlation strength and locomotor frequency
(r2 = 0.0001; p > 0.05), locomotor period (r2 = 0.0004; p > 0.05), the variability in the locomotor
period (r2 = 0.002;
p > 0.05), or the ventral root depth of modulation
(r2 = 0.01;
p > 0.05). Similarly, there was no clear relationship of any these quantities to the percentages of synchronized MN pairs observed.
Consideration of possible artifacts in
cross-correlational analyses
One possible source of artifacts in the cross-correlograms could
result from covariation in the excitability of neuron pairs (Brody,
1998 , 1999 ). We addressed this concern by guaranteeing in the
randomized spike trains that the number of spikes in each locomotor
cycle was the same as in the original spike train. We also observed
that synchronization peaks were faster than the locomotor-related
modulation of neurons, that synchronization peaks in cross-correlations
between neurons were dissimilar to the autocorrelations of neurons, and
that integrals of cross-covariograms were generally small, conditions
all arguing against effects from either covariation of excitation or of
latency (Brody, 1998 , 1999 ). Another source of artifact might result
from the "shadowing" of the spike of one neuron by the spike of a
second neuron, which can introduce features of the firing statistics of
the second neuron to the firing statistics of the first neuron, thereby
obscuring correlational analyses (Bar-Gad et al., 2001 ). However, we
believe that this effect is minimal here because (1) synchronization
was robustly observed between neurons on different tetrodes, (2) in cases not included here in which the overlapping effect was pronounced, no significant correlation peaks were observed outside of the central
region, and (3) this effect is expected to be minimal for neurons with
low firing rates such as those examined here. Another possible
contaminant to the cross-correlations could result from a
misattribution of low-amplitude action potentials, which tend to occur
at the end of a burst, from one neuron to another neuron. This effect
can introduce temporal correlations between neurons when none exist in
reality (Quirk et al., 2001 ). Although we cannot entirely exclude such
an effect here, we do not believe that it contributed substantially.
For instance, the effect would be expected to be equally influential
when tetrodes were placed in different segments as when different
tetrodes were placed in the same segment. However, we observed that
neuron pairs recorded in different segments were synchronized much less
commonly than pairs recorded in the same segment (see below). More
generally, and this applies to all concerns about artifactual
contributions to cross-correlograms, the synchronization described here
could be observed in individual spike trains and also could be observed directly in the clusters of activity in the raw ventral root recordings.
Synchronization between distant motor pools
Although many different mechanisms might be responsible for MN
synchronization, one obvious mechanism for the local synchronization of
MNs is the GJC between MNs (Kiehn and Tresch, 2002 ), which is
anatomically restricted (Chang et al., 1999 ; Tresch and Kiehn, 2000a )
and mainly between homonymous MNs (Walton and Navarrete, 1991 ).
Synchronization mediated by gap junctions in the neonatal rat therefore
would be expected to be restricted to MNs within the same motor pool.
Contrary to this expectation, however, in the present experiments we
also observed clear synchronization between the activity of distinct
motor pools.
First, we found that the activity of motor pools innervating different
muscles was synchronized. Recordings from peripheral nerves innervating
the anatomical hip flexor IP and the anatomical knee extensor Q were
synchronized regularly. During transmitter-induced locomotor activity,
these muscles can fire in phase (Kiehn and Kjaerulff, 1996 ; Iizuka et
al., 1997 ). Synchronization was observed in 7 of 12 locomotor runs in
four animals in which these two muscles were activated in phase with
one another. These results show that synchronization was not restricted
to MNs innervating the same muscle.
Although these motor pools are not homonymous, the existence of GJC
between these motor pools cannot be excluded entirely because the two
MN pools are localized closely anatomically (both innervated by the
intact L2 and L3 ventral roots) (Nicolopoulos-Stournaras and Iles,
1983 ). However, we also observed synchronization between these motor
pools and the activity of motor pools located in distant segments.
Synchronization between activity in the quadriceps muscle and the
in-phase, extensor-related activity in the ipsilateral L5 ventral root
was observed in 21 of 23 locomotor runs in five animals.
Synchronization between activity in iliopsoas and in-phase, flexor-related activity in the ipsilateral L5 root was observed in 11 of 23 runs in five animals. Note that the activity of the L5 ventral
root is predominantly extensor related, often making evaluation of the
coupling between IP and L5 difficult. This long distance (2-3 mm or
several segments) synchronization could be observed whether the
locomotor activity was evoked by 5-HT and NMDA (Q-L5, 10 of 12; IP-L5,
5 of 12), by 5-HT alone (Q-L5, 3 of 3; IP-L5, 0 of 3), or by dopamine
(Q-L5, 8 of 8; IP-L5, 6 of 8). An example of strong synchronization
between Q and ipsilateral L5 is illustrated in Figure
7, A and B. Figure
7C shows that the in-phase activity recorded during
locomotor activity (Kiehn et al., 1999 , their Fig. 1) in L3 and
contralateral L5 ventral roots could also be synchronized (see also
Fig. 9B). Such distant contralateral synchronization
(between L2 or L3 and contralateral L5) was observed in 27 of 40 locomotor runs in nine animals. On the basis of existing knowledge of
the anatomical and physiological extent of gap junctional coupling in
the spinal cord, it seems unlikely that such coupling could be
responsible for this distant synchronization of motor output.

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Figure 7.
Distant MN pools are synchronized during locomotor
activity. A, Recordings of activity in quadriceps
peripheral nerve and the ipsilateral L5 ventral root (L5
VR) during one burst of locomotor activity. In this experiment,
the L2 and L3 ventral roots were kept intact with their peripheral
nerves to allow muscle nerve recordings. The clusters of discharge in
the quadriceps nerve are aligned with clusters in the L5 ventral root.
B, Cross-correlation between quadriceps
(Q) and L5 ventral roots (L5 VR)
shows clearly the coupling illustrated in A.
C, The cross-correlation between L3 and contralateral L5
during locomotion, similarly showing a synchronization above that
caused by common locomotor modulation (also see Figs.
8A, 9B).
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Although prevalent during locomotor activity, the distant
synchronization described above did not appear to be as robust as the
synchronization within the same spinal segment. First, of the 79 MNs
recorded at the same time as a distant contralateral ventral root, only
5 showed a significant cross-correlation with the distant ventral root
discharge, and of 62 MN pairs recorded between neurons in different
spinal segments (L5 and either contralateral L2 or L3), only 2 showed a
significant cross-correlation. The tendency for synchronization between
MNs to be more readily observable for nearby MNs is also consistent
with the finding described previously that neuron pairs recorded on the
same tetrode were more likely to be synchronized than pairs recorded on
different tetrodes. The ability to observe synchronization in
correlations between ventral roots likely results from the fact that
such root recordings sample the activity of hundreds of neurons,
allowing weak correlations across the population to be observed.
Mechanisms of MN synchronization
In a previous study, we showed that in the absence of chemical
synapses, GJC between MNs is capable of coordinating the activity of
local MN populations (Tresch and Kiehn, 2000a ). The distant synchronization described in the previous section, however, suggests that mechanisms other than GJC contribute to the synchronization of
MNs. One obvious mechanism is MN coordination by presynaptic spinal
pattern-generating interneurons, mediated by chemical synapses. We
therefore examined the differential roles of chemical and electrical synapses in the MN synchronization described above.
Distant MN coupling requires chemical synaptic transmission
We blocked chemical synaptic transmission by removing calcium from
the perfusing bath (Johnson et al., 1994 ; Tresch and Kiehn, 2000a ). As
demonstrated previously, after such chemical synaptic transmission
blockade, the local coupling between action potential activity in MNs
within the same segment can persist after application of 5-HT/NMDA
(Tresch and Kiehn, 2000a ). However, after removal of calcium the fast
rhythmic activity evoked on distant ventral roots was uncoupled (26 of
26 runs in eight animals). Figure 8 shows
an example of distant coupling between L2 and contralateral L5 (Fig.
8A) that was abolished after removal of calcium (Fig. 8B). On occasion (3 of 26 runs in eight animals) we
observed very slow modulations (period >10 sec) in ventral root
activity that appeared to be coupled on different ventral roots, but
correlations on the shorter time scales typical of the locomotor
activity and synchronization described here were never observed. Thus,
these observations suggest that, although not critical for the local synchronization of MNs, chemical synaptic transmission made a strong
contribution to the distant coupling between motor outputs observed
during locomotor activity.

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Figure 8.
Distant synchronization between motor outputs
requires chemical synaptic transmission. A, The
cross-correlation between the L2 and contralateral L5 ventral roots
during intact locomotor activity, showing a clear synchronization.
B, The same cross-correlation after removal of calcium
from the Ringer's solution for 45 min, blocking chemical synaptic
transmission and also the synchronization in A.
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MN synchronization persists after antagonism of GJC
We next examined whether chemical synapses were sufficient to
mediate the synchronization between MNs after application of the gap
junction antagonist carbenoxolone. Carbenoxelone is one among several
gap-junction antagonists that in other experiments we have shown can
uncouple NMDA-induced MN population oscillations observed after
blocking action potentials by TTX (Tresch and Kiehn, 2000a ). After
application of carbenoxolone (100 µM) for at least 45 min
and up to 2 hr, the quality of locomotor activity was consistently worse than that in baseline conditions (modulation depth 0.40 ± 0.13 baseline vs 0.25 ± 0.07 carbenoxolone; p < 0.05) [see also Tresch and Kiehn (2000a) ]. This reduction in quality
often made it difficult to obtain the long-lasting, stable activity
required for the cross-correlation analyses performed here. In 8 of the 14 MN pairs in the same segment that we recorded after carbenoxolone application, significant synchronization was still observed. An example
of a cross-correlation between MNs after application of carbenoxolone
is shown in Figure 9A. The
strength of the cross-correlations between MNs after carbenoxolone
application was not significantly different from that without
carbenoxolone (0.10 ± 0.07 with vs 0.09 ± 0.10 without
carbenoxolone; p > 0.05). Figure 9B shows the cross-correlation between the L3 and contralateral L5 ventral root
shown in Figure 7C after 1 hr of carbenoxolone application, demonstrating that distant coupling between ventral roots was also
preserved in the presence of carbenoxlone (four of nine runs in eight
rats). Thus, it appeared that after antagonism of GJC by carbenoxolone,
both local and distant synchronization of MNs could still be
observed.

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Figure 9.
MN synchronization can be maintained after
antagonism of gap junctions by carbenoxolone. A, An
example of a covariogram between MNs during locomotor activity after 60 min of carbenoxolone showing significant synchronization. Conventions
are the same as Figure 1. B, Cross-correlation between
L3 and contralateral L5 ventral roots after 60 min of carbenoxolone,
showing the persistent synchronization between these ventral roots. The
data in B were taken from the same experiment as that
shown in Figure 7C.
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Although many studies have reported no side effects of carbenoxelone on
cellular properties (Kamermans et al., 2001 ; Kohling et al., 2001 ;
Hughes et al., 2002 ), there have been reports of substantial effects
(Rekling et al., 2000 ). In three motor neurons recorded for 2 hr in
carbenoxolone (100 µM), we did not observe such
substantial side effects on basic neuronal function. In particular, all
neurons were capable of producing action potential responses to
intracellular current injection. Recordings from commissural interneurons in the in vitro neonatal rat spinal cord have
similarly not shown significant side effects from carbenoxolone (S. Butt and O. Kiehn, unpublished observations). Although we cannot
exclude the possibility that carbenoxolone had other effects that would have been revealed with a larger sample of MNs, these data, along with
the persistent MN synchronization described above and intrinsic MN
oscillations described previously (Tresch and Kiehn, 2000a ), suggest
that carbenoxolone did not disrupt basic neuronal function in the
neonatal rat spinal cord (see also Discussion). Because gap junction
antagonists such as carbenoxelone might cause an incomplete block of
GJC (Brivanlou et al., 1998 ), we monitored GJC after carbenoxolone
application, using a collision protocol described elsewhere (Walton and
Navarrete, 1991 ; Chang et al., 1999 ; Kiehn and Tresch, 2002 ). In all
cases, carbenoxolone strongly antagonized the short-latency potential
evoked by antidromic ventral root stimulation when it was observed,
beginning at latencies of ~10-15 min (n = 5) and
being maximal (reducing the potential by 50 and 80%) by 1 hr
(n = 2; a third MN showed no clear coupling potential
from ventral root stimulation). After application of carbenoxolone for
2 hr, in one neuron additional application of halothane (10 mM for 20 min), which has been shown to block gap junctional coupling in this preparation (Chang et al., 1999 ), did not
further reduce any residual potential. Corresponding observations were
obtained from experiments in commissural interneurons (Butt and
Kiehn, unpublished observations). Together these results show that carbenoxolone strongly reduced the gap junctional coupling between
MNs without affecting basic properties of individual MNs (see Discussion).
Oscillatory features of MN synchronization
As mentioned previously, the synchronization between MNs was often
oscillatory. For instance, in Figure 2A, the clusters
of MN action potentials were regularly spaced at ~100 msec intervals. Also, the smaller peaks to the left and right of the central
correlation peak in Figure 1C indicate an ~100 msec
interval oscillation in the synchronization between MNs. Such
off-center peaks in cross-correlations were observed qualitatively in
32 of 75 (43%) of the synchronized MN pairs. The frequency of this
oscillation was typically faster for rostral segments than for caudal
segments, as observed in cross-correlations between MNs (L3, 11.51 ± 2.38 Hz; L5, 8.01 ± 1.91 Hz; p < 0.001) and
in ventral root autocorrelations (L2, 10.22 ± 2.03 Hz; L3,
9.01 ± 0.60; L5, 7.65 ± 1.19 Hz; p < 0.05). A difference in the frequency of oscillations on different
ventral roots has been described previously after blockade of action
potential activity by TTX (Tresch and Kiehn, 2000a ). Oscillations were
also observed after carbenoxolone application, as can be seen from examination of Figure 9. The higher frequency of rostral spinal segments was also preserved after carbenoxolone application (L2, 6.80 ± 1.74 Hz; L3, 6.88 ± 0.89 Hz; L5, 5.33 ± 0.92 Hz; p < 0.05). Thus, similar to the short-term
synchronization described in previous sections, the presence and
features of oscillatory activity in MNs appear not to be uniquely
dependent on the coupling of MNs by gap junctions.
 |
DISCUSSION |
The results presented here demonstrate the robust synchronization
of spinal MNs during locomotor activity in the neonatal rat. This
synchronization was stronger and more common between neurons with
similar locomotor-related activity and between MNs with strong rhythmic
modulation. Synchronization was observed between distinct motor pools,
located either in the same segment or in distant spinal segments. This
distant coupling was abolished after chemical synaptic blockade,
whereas both distant and local MN coupling were maintained after
application of the GJC antagonist carbenoxolone. These results suggest
that chemical synaptic transmission, in addition to GJC, plays an
important role in MN synchronization in the neonatal rat.
Short time-scale synchronization of MNs during
locomotor activity
Synchronization of MNs at a millisecond temporal resolution during
locomotor activity was observed in fewer than half the MN pairs. This
figure, however, approached 80% for pairs with strong locomotor
modulation and similar locomotor-related activity. The robustness of
this MN synchronization was also evident because it was observed during
rhythmic motor outputs evoked by many neuroactive substances and could
often be observed in raw MN spike trains (Fig.
1A).
There have been several indirect observations suggesting MN
synchronization in the neonatal rat, mainly on the basis of
observations of clusters of root activity (see Results). We confirmed
that such clusters correspond to synchronization of individual MNs. A
recent study in neonatal mice also demonstrated MN synchronization (Personius and Balice-Gordon, 2001 ), although that synchronization was
much slower than that described here: the duration of central correlation peaks in mice was 1-3 sec, more similar to slow locomotor comodulation than to the faster ~30-100 msec peaks described here (Fig. 1). Although reasons for these differences are unclear, the
results of both studies demonstrate the robust synchronization of MNs
in the developing spinal cord.
Predictors of MN synchronization
We found that MN synchronization was not randomly distributed but
could be predicted by features of locomotor-related neuronal activity.
First, synchronization was likelier and stronger between neurons with
similar locomotor-related activity. This observation suggests that
synchronization was related to behavioral roles of MNs in locomotion.
This result is also consistent with proposals that synchronization
plays a role in coordinating functionally related motor pools during
behavior or in the developmental specification of motor systems (see below).
Synchronization was stronger between neurons strongly modulated during
locomotor activity. One interpretation of this finding is that
synchronization is a signature of neurons closely tied to locomotor
networks, with reduced synchronization between weakly recruited or
modulated MNs. Alternatively, this reduced modulation might reflect a
general insensitivity of a neuron to external synaptic inputs, whether
they be inputs responsible for locomotor-related slow modulation or for
faster synchronization. For instance, a general insensitivity could
result from a sustained depolarization, causing the action potential
activity of a neuron to be dominated by intrinsic membrane potential
dynamics rather than extrinsic synaptic inputs (Mainen and Sejnowski,
1995 ; Beierholm et al., 2001 ).
Neurons recorded on the same tetrode and presumably located nearby were
more likely to be synchronized than neurons recorded on different
tetrodes and therefore presumably anatomically distant. This result is
consistent with other findings reported here of weaker synchronization
between distant motor pools. The preferential synchronization of nearby
MNs could reflect properties of either chemical or electrical synapses
to MNs, both of which are focused predominantly on nearby MNs (Puskar
and Antal, 1997 ; Chang et al., 1999 ). Coupling between MNs, whether
mediated by chemical or electrical synapses, would therefore be
expected to be weaker for distant MNs.
Finally, we found no relationship between synchronization and
characteristics of the locomotor pattern. Although a lack of correlation to locomotor frequency has been reported (Hansen et al.,
2001 ), one might have expected neuronal synchronization to be related
to locomotor quality, as measured by modulation depth or period
variability, if synchronization contributed to locomotor production.
This lack of correlation might suggest that MN synchronization is not
uniquely coupled to locomotor networks but is a more basic feature of
spinal motor systems. However, our characterization of locomotor
quality using ventral root recordings has drawbacks because such
recordings combine activity across several motor pools (Cowley and
Schmidt, 1994a ). Also, variations in these locomotor parameters
resulted from uncontrolled differences between locomotor runs or
between different animals. Experiments monitoring individual motor
pools or systematically inducing variations in locomotor parameters
might reveal relationships missed here.
Mechanisms of MN synchronization
An important finding of this study is the existence of multiple
mechanisms underlying MN synchronization, with both GJC and chemical
synapses contributing. In particular, distant synchronization between
motor pools was abolished after chemical synaptic antagonism, whereas
local MN coupling persisted. On the other hand, both local and distant
MN coupling persisted after GJC antagonism. In previous work we
demonstrated that local MN coupling is abolished after antagonism of
both chemical and electrical synapses (Tresch and Kiehn, 2000a ). These
results suggest that chemical synapses are necessary for distant
coupling of motor pools, whereas both chemical and GJC contribute to
local coupling. The relative contribution of chemical and electrical
synapses to local synchronization is unclear. For instance, we observed
no change in MN correlation strength after gap junction antagonism,
suggesting minimal contributions from GJC. However, after chemical
synapse blockade, rhythmic motor activity could still be evoked (Tresch
and Kiehn, 2000a ), clearly indicating that electrical synapses
contribute to local MN synchronization. Determination of the
quantitative contributions of chemical and electrical synapses to MN
synchronization during normal locomotion will require further research.
The chemical synapses contributing to MN synchronization might come
from synchronized activity in presynaptic interneurons that provide a
common input to multiple MNs via branching axons (Kirkwood 1995 ;
Matsumura et al., 1996 ). Such common input need not be especially
strong because postsynaptic properties of MNs, such as intrinsic
oscillatory properties (MacLean et al., 1997 ; Tresch and Kiehn, 2000a ),
will also help to regularize and synchronize MN spike activity
(Mann-Metzer and Yarom, 1999 ). All of these mechanisms, chemical and
electrical synapses along with intrinsic MN properties, might act
complementarily to produce the synchronization described here.
This result, of multiple mechanisms underlying MN synchronization in
neonatal rats, differs from results in neonatal mice (Personius and
Balice-Gordon, 2001 ), in which systemic carbenoxolone abolished MN
synchronization. As mentioned above, however, the characteristics of
synchronization described in that study differed substantially from the
synchronization observed here, possibly suggesting that the types of
synchronization examined were distinct, with distinct mechanisms.
Methodological differences or differences between behaviors examined
might also have contributed. Although explanations for the differences
between these studies are unclear, previous observations also suggest
that MN synchronization during locomotion is not exclusively dependent
on GJC. In particular, coupling between clusters of activity on distant
roots has been described briefly (Cowley and Schmidt, 1995 ).
Furthermore, such clusters are observed during locomotion in 2-week-old
animals (Westerga and Gramsbergen, 1993 , 1994 ), when electrical GJC
between MNs is undetectable. These results, combined with those
described here, strongly suggest a role for chemical synaptic
transmission in fast MN synchronization.
Some of the evidence for a role of chemical synapses in MN
synchronization relied on carbenoxolone antagonism of GJC. Although carbenoxolone has been reported to affect basic neuronal function (Rekling et al., 2000 ), we did not observe such substantial effects, in
contrast to other gap junction blockers such as heptanol and octanol
(Tresch and Kiehn, 2000a ). Also, although carbenoxolone has been shown
to strongly antagonize GJC (Davidson and Baumgarten, 1988 ; Rekling et
al., 2000 ), this block appeared to be only partial. However, in
previous work such a block was strong enough to abolish MN coupling
after TTX application (Tresch and Kiehn, 2000a ). The maintenance of MN
synchronization after such reduction, even if incomplete, strongly
suggests that fast synchronization was not uniquely dependent on GJC.
Finally, we emphasize that a role for chemical synapses in MN
synchronization is not supported solely by experiments with
carbenoxolone but is also supported by observations of distant coupling
between motor pools and its abolition after chemical synaptic blockade.
Potential roles of MN synchronization
MN synchronization has been proposed to mediate synapse
elimination during neuromuscular junction development (Busetto et al.,
2000 ; Chang and Balice-Gordon, 2000 ). The fast synchronization described here is clearly amenable to this role, because the mechanisms of synaptic plasticity often proposed to mediate elimination occur between action potentials separated by tens of milliseconds (Markram et
al., 1997 ; Bi and Poo, 2001 ). MN synchronization has also been proposed
to contribute to developmental refinement of central synapses
(O'Donovan et al., 1998 ; Chang and Balice-Gordon, 2000 ). The present
finding of coupling between distant motor pools, although difficult to
interpret in the context of neuromuscular junction development, is
consistent with this latter role in the development of spinal networks,
as is the finding that synchronization was most often observed between
MNs with common locomotor-related activity.
This preferential coupling of similarly activated neurons could also
reflect a role for synchronization in the production of behavior.
Synchronization might mediate the coordination, or "binding," of
individual MNs into the global motor patterns underlying behavior
(Welsh and Llinas, 1997 ; Farmer, 1998 ; Baker et al., 1999 ). Evaluating
such a contribution of MN synchronization will require examination of
synchronization patterns between different muscles in this preparation.
The present results further suggest that MN synchronization described
in adults and normally ascribed to descending systems might have strong
contributions from intrinsic spinal mechanisms.
 |
FOOTNOTES |
Received July 1, 2002; revised Aug. 19, 2002; accepted Sept. 6, 2002.
This work was supported by the Danish Medical Research Council, the
Novo Nordisk Foundation, and the Karolinska Institute to O.K.
M.C.T. was supported by a postdoctoral fellowship from the Lundbeck Foundation.
Correspondence should be addressed to Dr. Ole Kiehn, Department of
Neuroscience, Karolinska Institutet, Retzius vag 8, 17177 Stockholm,
Sweden. E-mail: ole.kiehn{at}neuro.ki.se.
M. C. Tresch's present address: Department of Brain and Cognitive
Sciences, Massachusetts Insitute of Technology, E25-526, 45 Carleton
Street, Cambridge, MA 02139.
 |
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