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The Journal of Neuroscience, October 15, 2000, 20(20):7822-7829
Sensory Modification of Leech Swimming: Rhythmic Activity of
Ventral Stretch Receptors Can Change Intersegmental Phase
Relationships
Jianhua
Cang and
W. Otto
Friesen
Department of Biology, National Science Foundation Center for
Biological Timing, University of Virginia, Charlottesville, Virginia
22903-2477
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ABSTRACT |
For segmented animals to generate optimal locomotory movements,
appropriate phase relationships between segmental oscillators are
crucial. Using swimming leeches, we have investigated the role of
sensory input in establishing such relationships. We found that the
stretch receptors associated with ventral longitudinal muscles encode
the information of muscle contraction during swimming via membrane
potential oscillations, with amplitudes of up to 10 mV at our recording
site. We subsequently modified the activity of ventral stretch
receptors (VSRs) by injecting rhythmic current at different phases of
the swim cycle and determined intersegmental phase lags by comparing
the delay between the discharges of serially homologous motoneurons in
three adjacent segments of isolated nerve cords. When no current was
injected, the phase lag between neighboring segments was 8.6 ± 0.8° (mean ± SEM; n = 20), with large phase
variations from cycle to cycle, between different episodes, and between
different preparations. When the phase of stretch receptor activity was
set to 90-150° by current injection, the phase of the motoneuron
activity in the ganglion was consistently retarded by ~5°. It was
advanced by ~5° when the VSR phase was set to 240-300°.
Therefore, the rhythmic activity of the ventral stretch receptor
generated during swimming can change intersegmental phase lags of leech
ganglia in a phase-dependent manner. These stretch receptors may set
the optimal intersegmental phases during swimming movement in intact leeches.
Key words:
Hirudo; locomotion; CPG; intersegmental
coordination; motor control, sensory feedback
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INTRODUCTION |
Rhythmic movements of animals are
controlled by neural oscillators that provide the correct timing of
motoneuron discharges. In nearly all systems studied thus far, the
rhythmic patterns can be observed in the absence of sensory feedback
(Delcomyn, 1980 ; Marder and Calabrese, 1996 ); that is, the neuronal
network producing the rhythmic pattern, the central pattern generator (CPG), is located within the CNS. To achieve optimal mechanics during
locomotion, however, the prototypical pattern generated by the CPG must
be modified by sensory inputs that vary with individual body
characteristics, development, and changes in the environment (Pearson,
1993 ; Pearson and Ramirez, 1997 ).
In the segmented animals, such as the leech, crayfish, and lamprey,
central oscillators are found in most or all body segments (Cohen and
Wallen, 1980 ; Weeks, 1981 ; Murchison et al., 1993 ; C. G. Hocker,
X. Yu, and W. O. Friesen, unpublished observations). Leeches and
other elongated animals, like lampreys and tadpoles, when swimming
maintain a single-wavelength body form to achieve optimal swimming
efficiency and stability (Gray, 1958 ; Kristan et al., 1974 ). To express
the single wave requires appropriately phase-delayed muscle
contractions in consecutive body segments. These contractions arise
sequentially, because of phase lags between the activities of the
segmental oscillators.
Experimental observations suggest that sensory input from the body wall
increases the intersegmental phase lags generated by the CNS. When
fictive motor patterns are generated in leech nerve cords isolated from
sensory feedback, they display smaller intersegmental phase lags than
those in intact animals (Kristan and Calabrese, 1976 ; Pearce and
Friesen, 1984 ). Alternatively, in leeches with severed nerve cords,
where sensory feedback alone generates intersegmental coordination, the
intersegmental phase lags of the neuronal activity are larger than
those of intact animals (Yu et al., 1999 ). The mechanism for interplay
between sensory input and central oscillation is unknown.
Stretch receptors innervating the longitudinal muscle in each body
segment [as described by Blackshaw (1993) ] may modify the activity of
the central swim oscillator. Three pairs of ventral stretch receptors
(VSRs) are known to innervate ventral longitudinal muscles. These
receptors hyperpolarize in response to stretch of the leech body wall
(Blackshaw and Thompson, 1988 ). Hyperpolarization of the VSRs, in turn,
changes the activity of swim-related motoneurons (Blackshaw and
Kristan, 1990 ). Furthermore, recent studies have demonstrated that the
VSRs interact with oscillatory interneurons (Cang et al., 1999 ). Thus,
the VSRs are good candidates for providing phasic sensory input to
modify intersegmental phase relationships.
To investigate the role of VSRs in influencing the intersegmental phase
relationships of swimming activity, we first controlled the membrane
potential of VSRs in isolated nerve cords by injecting rhythmic
currents at different phases of the swim cycle; then we determined the
phase relationships between segmental oscillators by comparing the
delays between the discharges of serially homologous motoneurons.
Statistical analyses of our electrical recordings demonstrate that the
VSR activity does indeed change the local intersegmental phase lag. The
results reveal a new function for sensory feedback in the modification
of central pattern generation.
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MATERIALS AND METHODS |
Animals. Experiments were performed on adult
medicinal leeches, Hirudo medicinalis, obtained from
Biopharm (Charleston, NC). The leeches were maintained in artificial
pond water in a controlled room on a 12 hr light/dark cycle at
18-20°C. During dissections, animals were anesthetized with cold
leech saline (4°C) containing (in mM): 115 NaCl, 4 KCl, 1.8 CaCl2, 2 MgCl2, 10 HEPES buffer.
The CNS of leech consists of the ventral nerve cord, which includes
supraesophageal and subesophageal ganglia (the head ganglia), a chain
of 21 metameric midbody ganglia, labeled M1 through M21, and a large
posterior tail ganglion (denoted by "T"). Each midbody ganglion of
the leech nerve cord contains cell bodies of bilaterally symmetrical
neurons; we use "L" and "R" to indicate the left and right side
of the ganglion, respectively. For example, DP(L,9) denotes the dorsal
posterior nerve from the left side of midbody ganglion 9 (M9).
Similarly, VSR(R,10) denotes the ventral stretch receptor on the right
side of M10 (see Fig. 1A).
Physiology. Two types of preparations, isolated nerve cords
and nerve cord-body wall preparations, were used (see Fig. 2). Both
preparations consisted of the nerve cord from midbody ganglion 2 through the tail ganglion (M2-T). For nerve cord-body wall
preparations, we removed a flap of the ventral body wall extending
three segments, where only the middle segment was innervated by the
nerve roots of one midbody ganglion; the two end segments were
denervated. The body-wall flap was cut along the lateral midline and
ventral midline so that only the VSRs on one side of the body were
included (see diagram in Figs. 1A,
2A). Dissected preparations were pinned out in a
glass-bottom dish and perfused with leech saline, and the VSR axons,
motoneurons, and interneurons were visualized with dark-field
illumination. Both ends of the muscle flap were pinned down to the
dish. The elastic property of the denervated muscle allows the muscle
in the middle to contract even with the ends of the flaps immobilized.
In these preparations, swim episodes were evoked by extracellular
stimulation of dorsal-posterior nerves from a posterior ganglion,
usually DP(16). During fictive swim episodes, the swim-related
motoneurons in M2 through M18 undergo large oscillations in membrane
potential. Impulse bursts of motoneurons were detected with
extracellular suction electrodes placed on peripheral nerves. The most
useful recording site, the DP nerve, exhibits bursts from the dorsal
excitatory motoneuron, cell DE-3 (see Fig. 2). The median impulse of DP
nerve bursts provides a convenient phase reference point for swim
oscillations in each segment and is a reliable indicator of oscillator
period and phase relationships (Kristan and Calabrese, 1976 ; Friesen,
1989 ).
Although there are three pairs of VSRs in each segment, we studied only
one pair, those whose giant axons run near the anterior margin of the
anterior root (Blackshaw and Thompson, 1988 ). We obtained intracellular
recordings from this nonspiking axon with sharp electrodes (filled with
2 M potassium acetate; resistance 40-50 M ) while
simultaneously recording DP nerve activity. An Axoclamp2A amplifier
(Axon Instruments) was used to amplify the signals and inject currents.
In experiments to study whether the rhythmicity of a VSR can change
intersegmental relationships, we obtained intracellular recordings from
the VSR axon of a midbody ganglion, denoted as n (between M8
and M12), and recorded DP nerve activity from that ganglion, the
adjacent anterior ganglion (n-1), and the adjacent posterior
ganglion (n+1) (see Fig. 3A). With this set of
electrodes in place, we manipulated the amplitude and phase of the VSR
membrane potential in ganglion n while recording swim bursts
in the three ganglia. In addition, we obtained intracellular membrane
potential recordings of motoneurons for use as a phase reference signal to control the timing of currents injected into the VSR. The
oscillatory potential from motoneurons was led into a wave generator
(Wavetek, San Diego, CA) to trigger the output of a single-cycle
sinusoidal wave on a cycle-by-cycle basis. The generator was set to
produce a wave with a 2 nA peak-to-trough amplitude. This sine wave was then injected into the VSR (see Fig. 3B). The period of the
injected sinusoidal current was adjusted to approximate the intrinsic
period of the fictive swimming in the nerve cord. By changing the
trigger level of the wave generator, we were able to set the phase of the VSR activity over the full range of 360° with respect to the swim
cycle. As in our previous studies (Pearce and Friesen, 1984 ; Yu et al.,
1999 ), the reference phase point (0°) for each swim cycle was
assigned to the median impulse of each burst of DP nerves (indicated by
x in Fig. 3C). The cycle period was determined
from the average time interval between the median impulses of
consecutive swim bursts. Intersegmental phase lags (in degrees) between
any two ganglia were calculated by dividing the time delay between bursts by the cycle period and then multiplying by 360°. To establish the phase of the VSR activity, we set the peaks of the VSR membrane potential as phase reference points (top trace of Fig. 3C)
and compared these with the midpoints of DP bursts.
Ten to 36 swimming episodes were obtained from each preparation in
which there either was no current injected into the VSR (control) or
the currents were injected at various phases. Intersegmental phase lags
were calculated for all swimming episodes.
Data analysis. Electrical signals recorded from the nerve
cord were amplified and stored on magnetic tape for later analysis. Records on the tapes were digitized using a 12-bit analog-to-digital converter and analyzed by our customized software, Rhythm Analyses System (RAS, programmed by Dr. Craig Hocker, University of Virginia, Charlottesville, VA) in the environment of Matlab (MathWorks, Inc.,
Natick, MA) using circular statistics (Fisher, 1995 ).
For DP nerve records, individual swim bursts were identified by an RAS
routine. Because each swim episode had 8-11 cycles, the value of
calculated phase lag for each episode is associated with a SE
( i ±  i; see Table
1).
To combine the data from different episodes and different animals, we
used the variance-weighting method (Bevington, 1969 ). According to this
method, the variance-weighted mean value, <z>, of a
collection of n observables,
zi, each with corresponding uncertainty
estimate (i.e., SD) i, is
given by the average of all zi weighted by
the inverse of associated variance:
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(1)
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To obtain the corresponding variance-weighted SE of the
variance-weighted mean, the deviation of individual
zi from <z>, (zi <z>)2, is also weighted by
the inverse of associated variance:
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(2)
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Because the phase lag of each episode is associated with a SE
( i ±  i; see Table 1), it
is appropriate to use the variance-weighting method. The control value
of the intersegmental phase lag of each animal, <c> ± <c>, is the variance-weighted mean of the phase lags of the control episodes (see Table 1). To
combine the results from different leeches, the data were normalized by
subtracting the control values of individual animals
( ni = i <c>). The SE of each normalized data point is given as
ni = ( i2 + <c>2)1/2.
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RESULTS |
Identification of the ventral stretch receptors
As the first step in a series of investigations of how sensory
input from the body wall modifies swimming rhythm, we identified and
recorded intracellularly from a pair of VSRs with giant axons lying
near the anterior margin of the anterior root (Fig.
1). The axons, previously characterized
by Blackshaw and Thompson (1988) , cannot sustain action potentials,
although their cell bodies can. Hyperpolarization of the receptor soma
induced by stretching the body wall transmits electrotonically to nerve
terminals within the ganglion.

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Figure 1.
Intracellular recordings from VSRs.
A, Intracellular recordings obtained from VSR axons in
the nearly isolated nerve cord. The experimental setup is diagramed at
the top: nerve cord from midbody ganglion 2 through the
tail ganglion (M2-T). Dual
penetrations were made from the pair of identified VSRs of
M10. On the right side only, a flap of
ventral body wall was included in the preparation to keep the soma and
dendrites of VSR(R,10) intact. With or without the
intact muscle, the characteristic small spikes of the VSR can be seen,
with similar amplitudes (2 mV) and frequencies (~10 Hz) in both
records, indicating that the small spikes originate from VSR terminals
within the ganglion and that it is not necessary to include innervated
muscle to identify the VSR. B, Spike frequency of the
VSR is sensitive to the current injection. Continuous intracellular
records from a VSR of ganglion 12 [VSR(L,12)] from
another preparation with no attached muscle show that small injected
currents changed the spike frequency dramatically.
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Dual penetrations were made of the identified pair of VSRs in M10 (Fig.
1A). On the right side, a flap of ventral body wall was included in the preparation to keep the soma and dendrites of
VSR(R,10) intact. The small spikes characteristic of the VSRs (Blackshaw and Thompson, 1988 ) can be seen in both left- and right-side records, with similar amplitudes and frequencies. We verified that the
VSRs hyperpolarize in response to stretch of ventral body wall (X. Yu,
personal communication). Furthermore, intracellular dye
injection (data not shown) revealed the terminal arborizations of the
VSR within the segmental ganglion, consistent with those described by
Blackshaw and Thompson (1988) . We conclude that the giant axons at the
anterior margin of the anterior nerve root can be identified as VSR
axons by their position and impulse characteristics even when the soma
and dendrites are removed.
We observe that the small spikes recorded from the VSRs in the isolated
nerve cord (Figs. 1B,
2B) must originate from
its terminals within the ganglion, based on the absence of soma in this
preparation and the characteristic inability of the axon to sustain an
action potential. The frequency of these small spikes varied between
preparations, depending on the membrane potential, and was highly
sensitive to current injection. The response to current injection is
shown in the example in Figure 1B, where hyperpolarizing current (0.1 nA) injected into the VSR abolished the
small spikes, and small depolarizing currents increased their frequency, indicating that these spontaneous potentials are most likely
attenuated action potentials initiated near the central terminals of
the VSRs (see Discussion).

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Figure 2.
VSR activity during swimming. A,
Membrane potential oscillation of a VSR in a CNS-muscle preparation
(M2-T, the right ventral body wall of segment 12 was
innervated by the segmental nerves, diagrammed at the
top). The first trace
[VSR(R,12)] is an intracellular record of a ventral
stretch receptor. The second is an extracellular trace
[DP(L,12)] obtained from the same ganglion to monitor
swimming rhythm. The membrane potential of the VSR oscillated during
swimming (10 mV amplitude, phase of ~140°). Note that the frequency
of small spikes varies with the membrane potential oscillation (but
less than expected from the response of the specific example in Fig.
1B). B, Activity of a VSR during
fictive swimming in the isolated nerve cord (diagrammed at the
top). The membrane potential of the VSR (top
trace) oscillates, but with smaller amplitude (1-2 mV) and
different phase [~0° with respect to the DP(L,8)
record] than when the soma and dendrites are intact.
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Activity of ventral stretch receptors during fictive swimming
To participate in modifying the swimming rhythm, the VSRs would
have to convey sensory information from the body wall. We examined the
activity during fictive swimming to ascertain whether VSRs do transmit
phasic information. In muscle-attached preparations, the membrane
potential of VSRs oscillated during swimming, with amplitudes up to 10 mV at our recording site, the axon near the ganglion. In the example
shown in Figure 2A, the phase of the VSR membrane
potential oscillation is ~140° compared with the DP nerve bursts
from the same ganglion (using the most depolarized point as the phase
reference marker). The phase of the VSR varied with respect to the DP
nerve bursts from 100 to 150° for 12 different episodes in three preparations.
To determine whether the oscillations in VSR membrane potential
observed during fictive swimming were indeed generated in the
periphery, we recorded from VSRs in nerve cord preparations isolated
from the muscle for comparison. Although most of the recordings from
the isolated nerve cords did show VSR membrane potential oscillation,
as in Figure 2B, the amplitude was smaller than that
observed when the muscle was attached and the phase differed with
respect to DP nerve bursts (~0°) (Fig. 2, compare A and
B). Because the VSR oscillations displayed a greater
amplitude and different phase when the VSR soma was in contact with
muscle during swimming, we concluded that the oscillations shown in
Figure 2A were indeed caused by peripheral input,
specifically by rhythmic muscle contraction. In addition, the fact that
there were any VSR membrane potential oscillations observed, however
small, in the completely isolated nerve cord during fictive swimming
(Fig. 2B) is consistent with earlier observations
that the VSRs receive synaptic inputs from swim-related oscillatory
interneurons (Cang et al., 1999 ). These central inputs may be able to
control the gain of sensory information inflow.
Modification of intersegmental phase lag by the ventral
stretch receptor
To investigate whether, during swimming, VSR activity influences
the intersegmental phase relationship, we mimicked oscillatory VSR
activity by injecting sinusoidal current into the VSR, as described in
Materials and Methods and in Figure 3,
and examined intersegmental phase lags.

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Figure 3.
Modification of intersegmental phase relationships
by VSR activity. A, Diagram of the experimental setup.
DP, Dorsal posterior nerve; M2, midbody
ganglion 2; T, tail ganglion; MN,
motoneuron; VSR, ventral stretch receptor;
n designates the stimulated ganglion, which was M8 in
the example shown below. B, Sample records. Top
trace shows the membrane potential of the motoneuron
(Cell-4 in this example) used to trigger the wave
generator during each swim cycle to inject a single cycle of sinusoidal
current into the VSR. Second trace shows the
intracellular recording from the VSR axon. Third trace
shows current injected into the VSR. The period of the sine wave was
set to approximate the intrinsic period of fictive swimming (current
amplitude was ~2 nA peak-to-trough, without DC offset). Because the
swim cycle periods were slightly longer than that of the injected
current, short notches are present in the second and third traces.
Bottom three traces, Extracellular recordings from
DP(R,8), DP(R,9), and
DP(R,10), respectively. C, Calculation of
phase relationship. Expanded section of the traces in B,
including VSR(L,9) and three traces of DP
nerve records. Phase reference points (x's) were
assigned to the median impulse of each burst of the DP nerve, and the
peak of VSR membrane potential-impulses are not visible. The cycle
period was determined from the average time interval between the median
impulses of consecutive swim bursts. The phase lag (in degrees) was
calculated by dividing the time delay between phase reference points by
the cycle period and then multiplying it by 360°.
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In a control experiment, data from a fictive swimming episode were
acquired in the manner shown in Figure 3A but without any current injection. Figure
4A shows that the
instantaneous phase lag between the two ganglia n and
n+1 [abbreviated as phase lag (n,
n+1)] varies considerably throughout the episode. To reduce the complexity of data, we used the mean phase lag of each episode as
one single datum point. Each swim episode had 8-11 cycles, so the
calculated phase lag for each episode is associated with a SE ( ±  ) (Table
1). Figure 4B shows the
complete set of phase lag (n, n+1) measurements
from the same experiment, including several control episodes and the
experimental episodes, in which the VSR phase with respect to the DP
nerve bursts was manipulated. Phase lags (in degrees) of (n,
n+1) are plotted against the phase of VSR activity with
respect to the DP nerve bursts. The phase lags for control episodes in
this preparation were between 0.3 and 7.4°, with a mean of 4.4°.
For the episodes in which currents were injected into the VSR, the
phase lag (n, n+1) ranged from 8.1 to 13.7°,
varying in a phase-dependent manner as VSR phase was varied. More
specifically, the phase lag (n, n+1) increased as
much as 10° from control when the phase of the VSR membrane potential
was in the range of 240-330° and decreased 10° when the phase of
VSR was ~90°. It is clear that in this single preparation the VSR
activity is able to modulate the intersegmental phase lag between
ganglion n and n+1. To examine the observations
more precisely, we repeated the experiments on 19 additional
preparations.

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Figure 4.
Example of phase lag between ganglion
n and n+1 in one isolated nerve cord
preparation. We recorded from VSR(R,11), DP(L,11), and DP(R,12) under
the conditions described in Figure 3 and calculated the phase lag
between ganglia n and n+1 [abbreviated
as phase lag (n, n+1),
n = M11 in this case] for 36 swim episodes.
A, Instantaneous phase plot of a control episode (i.e.,
no phase imposed on the VSR). The phase lag (n,
n+1) is plotted against swim-cycle number. The
intersegmental phase lag varies from 0 to 15°, with mean of 4.6°.
B, Phase lag plot of the complete data set from the
experiment. The phase lag (n, n+1) of
each episode is plotted against the phase of VSR activity. The error
bar of each point represents the SE of each swimming episode (8-11
cycles). The phase lags of the nine control episodes ranged from 0.3 to
7.4°, with a mean value of 4.4° (horizontal dotted
line). The phase lag (n, n+1)
first decreased, as VSR phase was increased from 0 to 50°, then
increased until VSR phase was ~250°, and finally decreased to near
control values as VSR phase further increased to 360°/0°.
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The intersegmental phase lag of isolated nerve cords in
control experiments
We first examined the intersegmental phase lag in the middle of
leech nerve cord (M7-M13) when there was no current injected into the
VSRs (control experiments). We had two measurements of the
intersegmental phase lag from most preparations: phase lag (n-1, n) and phase lag (n,
n+1). To study the intersegmental phase lag under the
control condition, it is not necessary to differentiate between the
phase lags (n-1, n) and (n,
n+1), so both are included in our analyses.
From 20 different leeches we obtained values of the intersegmental
phase lag ( i) from 273 control episodes. The
distribution of all control values is plotted in Figure
5A. The phase lags of
individual episodes distribute around 8°, ranging from 4 to 24°.
We reduced these data by first calculating means (<c>) and SEs ( <c>) for each of the 20 preparations
using the variance-weighting method (see Materials and Methods). The
mean phase lag of each preparation ranged from 3.4 to 20.7°, with a
mean for all preparations of 8.6 ± 0.8° (variance-weighting
mean ± SE). We then normalized the control data for each
preparation by subtracting the mean phase lag from observed phase lag
values. The distribution of the normalized control data
( ni = i <c>) is shown in Figure 5B. It can be seen that
the phase lag of each episode is normally distributed around the mean
phase lag (0° for the control values shown in the Figure) and ranges
from 11 to 9°. Next, we used normalized data to analyze whether VSR
activity changed intersegmental phase lags.

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Figure 5.
Distribution of intersegmental phase lags of
control episodes. In experimental setup as described in Figure 3, phase
lags were measured in 6-12 control episodes for each of 20 preparations in which no current was injected into the VSRs. Two
measurements of intersegmental phase lag, phase lag
(n-1, n) and phase lag (n,
n+1), were obtained for each episode from most
preparations. A, Distribution of the phase lags of all
control episodes (273 values from 20 preparations). The ordinate gives
the number of occurrences for each phase lag observed. The phase lags
of all individual episodes distribute around 8°, ranging from 4 to
24°. B, Distribution of the normalized data. The data
of all control episodes for each preparation were normalized by
subtracting the corresponding mean phase lag. The normalized phase lags
of all episodes are normally distributed around the mean phase lag
(0° after normalization), with a range from 11 to 9°.
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Rhythmic activity of the VSR can change intersegmental
phase lag
Phase lag between ganglia n and n+1
We performed the VSR phase experiments as illustrated for a single
preparation in Figure 4B on 20 different leeches and observed similar results from nearly every preparation. Figure
6A shows the normalized
phase lags (n, n+1) of all episodes from these leeches plotted against the phase of VSR activity. In this Figure, the
circles represent the normalized phase lag of control
episodes, which distribute ~0°. The combined data for experimental
episodes (represented by x's) in Figure
6A exhibit the same trend as the single preparation
shown in Figure 4B. The phase lag (n,
n+1) decreased when the phase of the VSR activity was
between 0 and 180° and increased between 180 and 360°. The changes
from the control value were as large as 10° when the VSR phase was
between 120 and 270°. Because a period change could slightly alter
the phase lag (Pearce and Friesen, 1984 ), we also plotted the periods of the corresponding episodes (Fig. 6B). Clearly, all
phases of VSR activity were tested equally over the small range of
periods generated by these isolated nerve cord preparations. Also,
these data demonstrate that cycle period in the isolated nerve cord is
not influenced by rhythmic VSR activity (p > 0.05, using the method described below).

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Figure 6.
Normalized phase lags between ganglia
n and n+1. A, Normalized
phase lags between ganglia n and n+1. The
original phase lag (n, n+1) data for all
episodes from 20 experiments conducted as described in Figure 3 were
normalized by subtracting from each episode the mean phase lag of
the corresponding preparation, and the results were plotted
against the induced phase of VSR activity. The SE of each point,
ni = ( i2 + <c>2)1/2 was
calculated but is not shown in the figure for clarity. Although there
is considerable scatter in the data, the phase lag (n,
n+1) increased maximally when the VSR phase was near
270° and decreased most when the phase was near 120°. The
horizontal dotted line indicates the normalized mean
phase of control episodes, 0°. B, Cycle period and VSR
phase. The periods of all episodes are plotted against the VSR phase.
The same range of swim-cycle periods occurred at each value of VSR
phase. In both A and B, represents
the data from control episodes, and x represents those
from experimental episodes. The control and experimental data are
separated by vertical dotted lines.
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To examine the above observation statistically, we grouped the data for
phase lag (n, n+1) into bins, each representing
30° intervals of phase for VSR activity, and performed a
Kruskal-Wallis nonparametric ANOVA test and Dunn's multiple
comparison post-test (for those data where the p value of
the ANOVA was <0.05) (Fig. 7). The phase
lags of the bins of 90-120° ( 4.9 ± 1.6°, mean ± SEM)
and 120-150° ( 5.4 ± 0.6°) are significantly smaller than that of control (Kruskal-Wallis nonparametric ANOVA test:
p < 0.0001; Dunn's multiple comparison post test:
*p < 0.05 and ***p < 0.001, respectively, in Fig. 7), and those of the bins of 240-270° (4.6 ± 0.6°) and 270-300° (4.9 ± 0.8°) are
significantly larger (p < 0.001 for both
groups). Therefore, our data demonstrate that the activity of the VSR
in ganglion n can increase or decrease the intersegmental
phase lag between ganglia n and n+1, depending on
the phase of the VSR.

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Figure 7.
Phase lag changes between ganglia n
and n+1 caused by VSR activity. The data in Figure
6A were grouped into 13 bins according to the
phase of VSR. The first bin includes all the data from control
episodes; the bin widths for experimental data are 30°. The mean and
SE of each bin and control group were determined by the
variance-weighting method. The phase lags of the bins of 90-120°
( 4.9° ± 1.6°, mean ± SEM) and 120-150° ( 5.4 ± 0.6°) are significantly smaller than that of control (Kruskal-Wallis
nonparametric ANOVA test: p < 0.0001; Dunn's
multiple comparison post test: *p < 0.05 and
***p < 0.001, respectively), and those of the bins
of 240-270° (4.6 ± 0.6°) and 270-300° (4.9 ± 0.8°) are significantly larger (p < 0.001 for both groups).
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Evaluation of the phase lags (n-1,
n), and (n-1,
n+1)
The change of the phase lag (n, n+1) by the
VSR activity, as described above and in Figure 7, may result from the
phase shift of the oscillator in ganglion n, ganglion
n+1, or both. To determine which one is the case, we
analyzed the phase lag between ganglia n-1 and
n.
The outcomes were the opposite of those for the phase lag
(n, n+1) in Figure 7. As shown in Figure
8A, the phase lag
(n-1, n) was significantly larger than the
control value when the phase of the VSR activity was in the range of
90-120° (2.6 ± 1.3°, p < 0.05) and
120-150° (3.7 ± 0.9°, p < 0.01), and
smaller than control in the range of 240-270° ( 3.7 ± 0.7°,
p < 0.001) and 270-300° ( 4.2 ± 1.0°,
p < 0.05) (Kruskal-Wallis nonparametric ANOVA test:
p < 0.0001).

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Figure 8.
Phase changes between ganglia n-1
and n, and between ganglia n-1 and
n+1. Data were obtained by the same methods used for
Figure 7. A, Bar graph of phase changes between ganglia
n-1 and n. The mean phase lag of each
group was plotted against the phase of VSRs. The phase lags of the bins
of 90-120° (2.6 ± 1.3°, mean ± SEM) and 120-150°
(3.7 ± 0.9°) are significantly larger than that of
control (ANOVA test: p < 0.0001; Dunn's multiple
comparison post test: *p < 0.05 and
**p < 0.01 respectively), and those of the bins of
240-270° ( 3.7 ± 0.7°) and 270-300° ( 4.2 ± 1.0°) are significantly smaller (p < 0.001 and p < 0.05, respectively).
B, Phase lags between ganglia n-1 and
n+1. Although there are small variations, the activity
of VSR did not change the phase lag between ganglia n-1
and n+1 significantly (ANOVA test: p = 0.067).
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|
Comparison of Figures 7 and 8A illustrates that the
phase-lag changes induced by the VSR stimulation differ between the
pairs of ganglia (n, n+1) and (n-1,
n), falling to similar degrees in the opposite direction and
hence appearing to, in effect, cancel each other out. To test whether
this is true, we plotted the change of phase lag (n-1,
n+1) against the phase of VSR activity (Fig. 8B). In the resulting graph, only small variations in
the phase lag are apparent, and these do not differ significantly from
phase-lag values in control experiments, in which the phasic activity
of the VSR was absent (p value = 0.067 for the ANOVA).
Therefore, these results demonstrate that the changes in intersegmental
phase lags resulting from the VSR response to stimulation are
attributable mainly to the effects within the ganglion containing the
stimulated VSR.
 |
DISCUSSION |
Previous studies of leech swimming focused on identifying swim
oscillator circuits and their intersegmental connections within the CNS
(Friesen, 1989 ; Brodfuehrer et al., 1995 ). However, the prototypical
pattern generated by the leech swimming CPG is insufficient for
producing the correct movement pattern without sensory inputs because
the intersegmental phase lag is too small to account for a
one-wavelength waveform (Pearce and Friesen, 1984 ). In addition, the
leech must adjust the intersegmental activity delay in response to
environmental and developmental changes.
We have now begun to investigate the specific neuronal mechanisms for
sensory control of intersegmental phase lags in the leech by studying
the effects of ventral stretch receptor activity. Our experiments show
that VSRs encode peripheral phase information during swimming via
membrane potential oscillation and that the rhythmic activity of a VSR
caused by current injection can change the local intersegmental phase
lag by delaying or advancing the phase of segmental oscillator in a
phase-dependent manner. During leech swimming, muscle contractions can
be expected to generate similar rhythmic VSR activity and thereby alter
intersegmental phase lags. Our investigation, therefore, has revealed a
new role of sensory feedback in the modification of central pattern generation.
The VSR is a viable candidate to mediate sensory input
during swimming
Most of the identified sensory neurons in the leech are unlikely
candidates for the mediation of phasic sensory inputs to the CPG. These
include the touch, pressure, and nociceptive mechanosensory neurons,
which are usually silent during swimming (Yu et al., 1999 ), and the
sensillar movement receptors, which are anatomically and functionally
not suitable for carrying phase information from the periphery
(Friesen, 1981 ). The likely mediators of phasic sensory input are the
stretch receptors associated with longitudinal muscles for the
following reasons. First, the membrane potential of VSRs oscillates
when the longitudinal muscle contracts rhythmically (Fig.
2A). Second, the VSRs make synaptic connections with
swim oscillator interneurons (Cang et al., 1999 ). Finally, imposed rhythmic activity in the VSR modifies intersegmental phase
relationships in a phase-dependent manner (Figs. 7, 8). The dorsal
stretch receptors (Blackshaw, 1993 ) may also carry the phasic
information of periphery and interact with interneurons, so they would
also contribute to intersegmental coordination during swimming.
The VSRs are closely associated with the ventral longitudinal muscles
and hyperpolarize when these muscles are stretched or placed under
tension (Blackshaw and Thompson, 1988 ). The tension of these muscles is
maximal at ~270° in the swim cycle (Kristan et al., 1974 ). When the
muscle is actively controlled by the motoneurons, the highest tension
should coincide with the shortest length. Hence, if the VSRs were
length receptors, they should respond with depolarization at this
phase, 270°. It was unexpected, therefore, that the phase of VSR
oscillations in muscle-attached preparations was between 100 and
150°. One solution to this conundrum is that the VSRs may in fact be
tension receptors, not length receptors. They thus would hyperpolarize
whenever muscle tension is large (caused by either active contraction
or external stretch); i.e., at a phase of 270°, the phase of maximal
ventral contraction/tension during swimming. Depolarization in the VSRs
could then be expected to be maximal at 180° later in the cycle, at
~90°, near the value we observed.
Roles for the VSR-mediated changes in intersegmental phase lag
The specific functions of the VSR-mediated modification of
intersegmental phase lags remain to be elucidated. Our experiments suggest that the phase of VSRs during swimming in intact leeches is
~120° (Fig. 2A). Our data also show that VSR
activity at this phase delays the phase of ganglion n, with
a concomitant increase in the phase lag between ganglia n-1
and n (Fig. 8A). This increased intersegmental phase lag is just what is needed to achieve the greater
phase lags observed in intact leeches. However, VSR depolarization at
120° also causes the phase lag between segments n and
n+1 to decrease (Fig. 7), leaving overall intersegmental
phase lags unchanged (Fig. 8B). Thus VSR inputs to
the central oscillator may be appropriate for correcting local phase
relationships, perhaps in response to local perturbations.
Because of the large variation of intersegmental phase lags between
adjacent ganglia, the motoneuron activity pattern generated by the
nerve cord alone cannot produce efficient locomotion (Figs. 4, 5). The
instantaneous phase lag during a 10-cycle swimming episode can vary
more than 10° (Fig. 4A). The mean phase lag of each
swimming episode can differ by as much as 30° among different episodes and preparations (Fig. 5A). The swimming leech
expresses a smooth traveling wave, suggesting a low variability in
intersegmental phase lags. The bidirectional modification of
intersegmental phase relationships by the VSRs may aid in the
expression of this smoothly undulating profile by the swimming leech.
It remains to be seen whether the combined actions of all VSRs in a
given segment or those in multiple segments are responsible for the
larger intersegmental phase lags of the intact leech. We are confident
that VSRs are tension transducers that can relay information of body
shape through their mechanical interactions with longitudinal muscles.
The VSR properties described here together with their interactions with
the swim oscillator circuits (Cang et al., 1999 ) may be the means by
which the intact leech adjusts local intersegmental phase relationships
to accommodate environmental and developmental conditions.
Sensory modification in other systems
Three general principles for sensory modification of motor
circuits are described by Pearson and Ramirez (1997) . (1) Sensory feedback contributes to the generation and maintenance of rhythmic activity. (2) Phasic sensory signals initiate major phase transitions in intact motor systems. (3) Sensory signals regulate the amplitude of
ongoing motor activity. In addition, for segmented animals, the sensory
input must be able to modify the intersegmental phase relationships. In
the absence of sensory input in the lamprey, for example, the
intersegmental phase lag of the spinal cord varies greatly from cycle
to cycle (Matsushima and Grillner, 1992 ) and for different individual
preparations (Sigvardt and Williams, 1996 ). Using pharmacological
microstimulation of the brain stem to elicit fictive swimming in longer
spinal cord preparation of larval lamprey, Hagevik and McClellan (1994)
found that the intersegmental phase lag is smaller than that observed
in whole animals. The lamprey edge cells, stretch receptors located
along the lateral margin of the spinal cord, signal the ongoing
movement (Grillner et al., 1982 , 1984 ) and have synaptic connections
with locomotor neurons (Viana di Prisco et al., 1990 ) and thus have the
potential to increase and/or stabilize the phase lags generated by the
spinal cord. In the crayfish swimmeret system, two nonspiking stretch receptors (NSSRs) were found in each swimmeret-bearing segment; these
depolarize in response to retraction of the swimmeret (Heitler, 1982 ).
Sinusoidal current injected into a single NSSR produces a beat
frequency modulation of spontaneously generated rhythm (Heitler, 1986 ).
As another example of sensory modification, the locust flight rhythm
can be entrained by the imposed rhythmic movement of one forewing,
which is most likely mediated by the bursts of stretch receptor
activity (Wendler, 1983 ). All of these studies suggested that the
sensory input can and must contribute to intersegmental coordination.
Our study thus provides explicit information about this aspect of
sensory modification. It remains to be seen whether the proprioceptors
in those other systems can, like the VSR, modulate intersegmental phase relationships.
VSRs function as analog-digital converters
Large and broad spikes can be elicited in the soma of VSRs
(Blackshaw and Thompson, 1988 ), but they cannot propagate to the CNS
because the axon does not sustain action potentials. In our recordings
from the VSR axons, brief spontaneous depolarizations are
characteristically seen. These must originate from the central terminals of the VSR because they are present even when the dendrite and soma of the VSR are removed (Fig. 1A). Blackshaw
and Thompson (1988) suggested that these small depolarizations might be
postsynaptic potentials, because they were abolished by bathing the
preparation in 15 mM
Mg2+ saline, which blocks chemical
synapses in the leech. However, the extreme sensitivity of the event
frequency to small currents (Fig. 1B) makes this
interpretation unlikely. Moreover, a high concentration of
Mg2+ raises the impulse threshold in
leeches (Pearce and Friesen, 1985 ). Therefore, the small spike-like
depolarizations are more likely to be impulses, which disappear with
elevated impulse threshold. If the small spikes are indeed action
potentials initiated at the central terminal, the VSRs function as
analog-digital converters. In other words, the analog signal of muscle
contraction is conveyed by graded potential changes to central
terminals of the VSRs, where it modulates action potential frequency.
Conclusion
We have shown that stretch receptors in the leech body wall are
excellent candidates to convey information concerning the execution of
the swim motor program to the central oscillator circuits. Activity in
these receptors can modify local intersegmental phase lags within the
nerve cord and thereby, in combination with the central oscillator, may
set intersegmental phase relationships. We now view the complete leech
swim oscillator in the intact animal as central oscillatory circuits
intimately linked with peripheral motor-sensory loops.
 |
FOOTNOTES |
Received June 5, 2000; revised Aug. 7, 2000; accepted Aug. 9, 2000.
This research was supported by National Science Foundation Grant
97-23320 (W.O.F.). We thank Drs. Craig Hocker and Martin Straume for
their assistance in data analysis and Karen Dame for expert editorial
assistance. We also thank our colleagues Drs. Xintian Yu and Gisele Oda
for their discussions.
Correspondence should be sent to W. Otto Friesen, Department of
Biology, University of Virginia, Charlottesville, VA 22903-2477. E-mail: wof{at}virginia.edu.
 |
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