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The Journal of Neuroscience, November 15, 2000, 20(22):8607-8613
Avoidance Task Training Potentiates Phasic Pontine-Wave Density
in the Rat: A Mechanism for Sleep-Dependent Plasticity
Subimal
Datta
Sleep Research Laboratory, Program in Behavioral Neuroscience, and
Department of Psychiatry, Boston University School of Medicine,
Boston, Massachusetts 02118
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ABSTRACT |
Behavioral studies of learning and memory in both humans and
animals support a role for sleep in the consolidation and integration of memories. The present study explored possible physiological mechanisms of sleep-dependent behavioral plasticity by examining the
relationship between learning and state-dependent phasic signs of rapid
eye movement (REM) sleep. Cortical electroencephalogram, electromyogram, eye movement, hippocampal -wave, and pontine-wave (P-wave) measures were recorded simultaneously in freely moving rats
after a session of conditioned avoidance learning or a control session.
After learning trials, rats spent 25.5% more time in REM sleep and
180.6% more time in a transitional state between slow-wave sleep and
REM sleep (tS-R) compared with that in control trials. Both REM sleep
and tS-R behavioral states are characterized by the presence of
P-waves. P-wave density was significantly greater in the first four
episodes of REM sleep after the learning session compared with the
control session. Furthermore, the P-wave density change between the
first and third REM sleep episodes was proportional to the improvement
of task performance between the initial training session and the
postsleep retest session. These findings show that the increase in
P-wave density during the post-training REM sleep episodes is
correlated with the effective consolidation and retention of avoidance
task learning.
Key words:
avoidance task training; brainstem; learning; plasticity; pontine-wave; pontogeniculooccipital wave; sleep
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INTRODUCTION |
There is now considerable evidence
of the involvement of sleep stages with memory processing and
improvement of learning (for review, see Fishbein and
Gutwein, 1977 ; McGrath and Cohen, 1978 ; Pearlman, 1979 ; Smith,
1985 ; Dujardin et al., 1990 ; Karni et al., 1994 ; Stickgold, 1998 ). To
account for this sleep-dependent memory processing and learning, the
following hypothesis has been suggested. During wakefulness, acquired
information is stored temporarily in the hippocampus, amygdala, and
some cortical and subcortical areas; during subsequent sleep, these
areas are reactivated to "consolidate" acquired information into
more permanent storage in the neocortex (Hennevin and Hars, 1985 ;
Buzsaki, 1989 , 1996 ; Pavlides and Winson, 1989 ; Wilson and McNaughton,
1994 ; Datta, 1999 ). These temporary storage areas would require a
reactivating cue and/or triggering input during sleep (Bloch and
Laroche, 1985 ; Bliss and Collingridge, 1993 ; Datta, 1999 ). The exact
anatomical and physiological source of this cue and/or triggering input
during natural sleep remains to be identified.
During rapid eye movement (REM) sleep and in part of slow-wave sleep
(SWS), phasic field potentials called pontogeniculooccipital (PGO)
waves are generated in the pons (Brooks and Bizzi, 1963 ; Laurent and
Ayalaguerrero, 1975 ; Sakai et al., 1976 ; Datta and Hobson, 1995 ). These
phasic field potentials are a reflection of a phasic activation of a
specific group of cells in the pons (Nelson et al., 1983 ; Datta et al.,
1992 , 1998 ; Datta and Hobson, 1994 ). PGO wave-generating cells fire as
a high-frequency burst (>500 Hz) 25-30 msec before each PGO wave
(Datta and Hobson, 1994 ). PGO waves have been recorded in discrete yet
widespread regions along the neuraxis of rats, cats, and primates [for
review, see Datta, 1997 (references)]. When these PGO waves are
recorded from the pons of rats (Marks et al., 1980 ; Sanford et al.,
1995 ) they are called pontine waves (P-waves) (Datta et al., 1999 ). One
recent anatomical study has demonstrated that functionally identified P-wave generator cells project to the hippocampus, amygdala, entorhinal cortex, visual cortex, and many other regions of the brain known to be
involved in cognitive processing (Datta et al., 1998 ). Thus, the
P-wave-generating cells may serve as a trigger or cue for sleep-dependent cognitive processes such as learning and memory (Datta,
1999 ). The present study demonstrates that the sleep-dependent improvement of learning is correlated with the activation of a brainstem P-wave generation site.
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MATERIALS AND METHODS |
Subjects. Experiments were performed on 22 male
Sprague Dawley rats (Charles River Laboratories, Wilmington, MA)
weighing between 200 and 300 gm. The rats were housed individually at
24°C and given access to food and water ad libitum.
Lights were on from 7:00 A.M. to 7:00 P.M. (light cycle) and off from
7:00 P.M. to 7:00 A.M. (dark cycle). Principles for the care and use of laboratory animals in research, as outlined by the National Institutes of Health (1985), were strictly followed.
Surgical procedures and implantation of electrodes. All
surgical procedures were performed stereotaxically under aseptic
conditions and were in accordance with the guidelines approved by the
institutional animal care and use committee (IACUC protocol #96-062).
Animals were anesthetized (pentobarbital; 40 mg/kg, i.p.), placed in a stereotaxic apparatus, and secured with blunt rodent ear bars. A
surgical plane of anesthesia was maintained with supplemental injections of chloral hydrate (60 mg/kg, i.p.) every 1-2 hr, as necessary. The appropriate depth of anesthesia was judged by the absence of palpebral reflexes and by the absence of response to a tail
pinch. Core body temperature was maintained at 37 ± 1°C with a
thermostatic heating pad and a rectal feedback thermister probe. The
scalp was cleaned and painted with providone iodine (Betadine). A scalp
incision was made, and the skin was retracted. The skull surface was
cleaned in preparation for the implantation of electrodes. Potential
postoperative pain was controlled with torbugesic (butorphanol
tartrate; 0.5 mg/kg, s.c.).
To record the behavioral states of vigilance, electroencephalogram
(EEG), electromyogram (EMG), and electrooculogram (EOG) electrodes were
implanted. To record cortical EEG, stainless steel screw (jeweler's
screw) electrodes connected to Teflon-coated stainless steel wires were
screwed bilaterally into the skull (2.0 mm anterior and 3.5 mm lateral
to the bregma). An additional electrode was screwed into the skull (4 mm anterior to the bregma in the midline) to act as a reference
electrode. To record hippocampal EEG (for hippocampal waves),
Teflon-coated bipolar stainless steel macroelectrodes were placed
stereotaxically (Paxinos and Watson, 1986 ) in the hippocampus
(anterior, 4.8; lateral, 2.5; H, 4.0 and 3.0). To record
pontine EEG (for P-waves), ipsilateral to the hippocampal EEG-recording
electrodes, Teflon-coated multipolar stainless steel macroelectrodes
were placed stereotaxically in the pons (posterior, 0.80; lateral,
1.5; H, 3.0, 2.5, 2.0, and 1.5). A pair of Teflon-coated
stainless steel wire electrodes was implanted bilaterally in neck
muscles for recording nuchal EMG. To record eye movements (EOG), two
Teflon-coated silver wire electrodes were implanted in the external
canthus muscle of one eye. All electrodes were secured to the skull
with dental acrylic. Electrodes were crimped to miniconnector pins and
brought together in a plastic connector. Immediately after surgery,
animals were placed in recovery cages and monitored for successful
recovery from anesthesia and surgery. Successful recovery was gauged by the return of normal postures, voluntary movement, and grooming. At
this point animals were transferred to their normal housing.
After a postsurgical recovery period of 3-7 d, rats were habituated to
a sound-attenuated recording cage (size, 76.2 × 45.7 × 45.7 cm), shuttle box (size, 45.7 × 20.3 × 30.5 cm; Shuttle Scan; model SCII; AccuScan Instruments, Columbus, OH), and free-moving polygraphic recording conditions for 7 d.
Avoidance learning. The apparatus is an automated two-way
shuttle scan shock-avoidance box (size, 45.7 × 20.3 × 30.5 cm) with sides made of high-grade acrylic. The floor is made of
stainless steel bars suitable for application of shock. The box is
bisected by a vertical partition with an opening in the middle (near
the bottom). This opening permits the animal to travel freely from one
side of the shuttle box to the other. The box contains a front and a
rear sensor containing eight infrared light beams. These light beams
determine positively which side the animal is on. Located on the lid of
the shuttle box are three light bulbs (one in each compartment and one
in the center) that provide light stimuli (adjustable intensity, 6 W at
115 V AC) and three beepers (3600 Hz; adjustable 0.00-85 dB at 30 cm)
that produce sound stimuli. The interface unit permits interconnections
between the computer and the shuttle box. A personal computer using
remote monitoring system software controls experimental
protocols and data collections. By the use of the Omnitech Shuttle Box
Monitoring System, the computer controls the shuttle box for both
conditioned and unconditioned stimulus parameters. The same software
and computer also collect and analyze avoidance data on-line.
The procedure involved placing the rat in one compartment of the
apparatus. After 15 min of acclimatization, training trials were begun.
During acclimatization and the training trials, the rats could move
freely from one compartment to the other within the shuttle box. Rats
were trained on a massed 30-trial shuttle box two-way active avoidance
task. The procedures for the conditioned stimulus (CS) and
unconditioned stimulus (UCS) paired group (CS-UCS paired learning
group) were as follows. A tone (3600 Hz; 45 dB) and a pulsatile light
(2.5 Hz) were presented as a CS in the compartment with the animal,
paired 5 sec later with a 0.3 mA scrambled foot shock (UCS) delivered
through the floor grid (steel rods 0.5 cm in diameter, spaced 1.5 cm
between centers). To avoid receiving a foot shock the rat had 5 sec to
move to the opposite compartment. If the animal did not move to the
other compartment, UCS was delivered for a maximum of 5 sec, and CS
ended with UCS. While receiving UCS, if the animal moved to the other
compartment, both CS and UCS ended immediately. The intertrial interval
was variable with a mean of 60 sec. A group of CS-UCS random control
rats received 30 trials of CS (10 sec in duration) and 10 trials of
randomly delivered UCS (5 sec in duration) that they could not avoid
even by moving to the other compartment of the shuttle box.
Since the discovery of REM sleep, animal studies of sleep and learning
have used various hippocampally and/or nonhippocampally mediated
learning paradigms (for review, see Smith, 1985 ; Stickgold, 1998 ). In
this study, we have used a two-way active avoidance learning task that
involves both hippocampal and nonhippocampal structures for learning
and memory processing (Smith and Young, 1980 ; Ambrosini et al., 1988 ;
Ramirez and Carrer, 1989 ; Bramham et al., 1994 ). The involvement of the
hippocampus and some nonhippocampal structures in learning and memory
processing is supported by many other studies (Squire et al., 1990 ;
LeDoux, 1992 ; Silva et al., 1992 ; Izquierdo et al., 1995 ; Hatfield et
al., 1996 ; Rempel-Clower et al., 1996 ; Poremba and Gabriel, 1997 ; Young
et al., 1997 ; Gallagher et al., 1999 ; Vazdarjanova and McGaugh, 1999 ).
One recent anatomical study provided evidence that P-wave-generating
cells project monosynaptically to both the hippocampus and
nonhippocampal structures involved in the learning process (Datta et
al., 1998 ). Because P-wave-generating cells project to both hippocampal
and nonhippocampal structures, the activation of P-wave-generating
cells may modulate both hippocampally and nonhippocampally mediated
learning processes. Therefore, the selection of a two-way active
avoidance learning task, which involves both hippocampal and
nonhippocampal structures, was appropriate to study the relationship
between P-waves and learning. In the past, many other sleep and
learning studies used both one-way and two-way active avoidance
learning tasks (Joy and Prinz, 1969 ; Albert et al., 1970 ; Wolfowitz and
Holdstock, 1971 ; Smith and Butler, 1982 ; Ambrosini et al., 1988 ; Smith
and Kelly, 1988 ; Ramirez and Carrer, 1989 ; Bramham et al., 1994 ). All
of these active avoidance studies demonstrated a crucial increase in
REM sleep when learning occurred. This increase in REM sleep is
critical for the improvement of learning in the retest session. In the
present experimental protocol the control and learning groups of
animals were exposed to identical training sessions except that the CS
and UCS were unpaired for the control group, making avoidance learning impossible.
Determination of behavioral states. For the purpose of
determining possible effects on sleep and wakefulness, four behavioral states were distinguished on the basis of polygraphic data. These four
states were as follows: (1) Wakefulness (W): low-voltage (50-80
µV) fast (30-50 Hz) cortical EEG, high-amplitude tonic and phasic
EMG bursts, presence of eye movements in the EOG, gross bodily
movements, and an absence of P-waves. (2) SWS: spindling and
high-voltage (200-400 µV) slow waves (0.3-15 Hz) in the cortical EEG, EMG tonus lower than during W, absence of eye movements, and
absence of P-waves. (3) Transition state between SWS and REM sleep
(tS-R): stage of sleep appearing between SWS and REM sleep. The tS-R
sleep stage always precedes REM sleep onset but itself is not always
followed by REM sleep. During this stage, cortical EEG is a mixture of
partly low-amplitude (50-80 µV), high-frequency (15-25 Hz) and
high-amplitude (200-300 µV), low-frequency (5-10 Hz) waves. The EMG
tone is absent or progressively diminished. Eye movements are absent in
the EOG record. Frequency waves start to appear in the hippocampal
EEG. Spiky P-waves (10-20 per min) start to appear in the pontine EEG.
These P-waves are mostly the single-spike type. (4) REM sleep:
low-voltage (50-100 µV) and fast (20-40 Hz) cortical EEG, presence
of muscle atonia, rapid eye movements, and waves (4-7 Hz) only in
the hippocampal EEG, and increased occurrence of P-waves, most of them
occurring in clusters of two to three. States were scored in 10 sec epochs.
Simultaneous recordings of cortical EEG, hippocampal wave, EMG,
EOG, and P-waves ensured accurate identification of behavioral states
in this study. Because the activation of specific brainstem nuclei
generates discrete tonic and phasic signs of REM sleep (Vertes, 1984 ;
Datta, 1995 ), simultaneous recording of these signs enabled the
identification of changes in the level of activation of specific
brainstem structures in relation to the learning trials.
Experimental protocol. After the adaptation sessions, rats
underwent sessions of baseline sleep-wakefulness recordings on 3 consecutive days. During baseline recordings, rats were placed in the
shuttle box for 45 min (9:10-9:55 A.M.) and then transferred to a
recording cage for 6 hr of polygraphic recordings (between 10:00 A.M.
and 4:00 P.M.). On the day after the final of the three baseline
recording sessions, rats were randomly assigned to either the CS-UCS
paired paradigm (learning test; n = 12 rats) or the CS-UCS unpaired paradigm (control for the learning test;
n = 10 rats). Rats were placed in the shuttle box at
9:10 A.M., and after 15 min of an acclimatization period, CS trials
began. After 30 trials, rats were transferred to the polygraphic
recording cage and recorded for 6 hr (between 10:00 A.M. and 4:00 P.M.)
sessions of undisturbed sleep-wakefulness. At the end of the 6 hr
recordings, the learning group was retested for 30 CS-UCS learning
trials (between 4:05 and 4:50 P.M.).
Data analysis. The polygraphic measures provided the
following dependent variables that are quantified for each trial: (1) percentage of recording time spent in W, SWS, tS-R, and REM sleep, (2)
latencies to onset of the first episodes of tS-R and REM sleep after
the onset of recordings, (3) total number of tS-R and REM sleep
episodes, (4) mean duration of tS-R and REM sleep episodes, (5) P-wave
density (waves/minute) in REM sleep, (6) -wave frequency (waves/second) in REM sleep, and (7) REM density (waves/minute) in REM
sleep. For latency analysis, the data collection began immediately
after the rats were transferred to the recording cage and connected to
the recording cable. All of these variables during baseline recording
days (before shuttle box trials) were analyzed by the use of two-way
ANOVAs (group × day), with day as a repeated measure, using
StatView statistical software (Abacus Concepts, Berkeley, CA). These
analyses were performed to be sure that the learning and control groups
were not different before the learning trials and that there were no
variations between days. After shuttle box trials, all of the above
variables were analyzed for the 6 hr recording sessions by the use of
one-factor ANOVAs (learning vs control group) to determine the effect
of avoidance learning.
For the analysis of performance on the two-way active avoidance
learning task, the 30 learning trials were divided into six blocks of
five trials, and the percentage of successful avoidances was calculated
for each block. These data were then analyzed by the use of two-way
ANOVA (session × block), with block as a repeated measure, and
followed by a Scheffe post hoc F test. The level of significance was set at p < 0.05. These analyses
were performed to determine the differences in learning curves between
the first session (morning trials, before the 6 hr undisturbed
polygraphic recordings) and the second session (after 6 hr polygraphic
recordings). This difference represents a quantitative measure of the
amount of information retained from the first learning session. The
improvement of performance between training trials (first session) and
retest trials (second session) was calculated by subtracting the
percentage of avoidance in the first two blocks of training from the
percentage of avoidance in the first two blocks of retest.
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RESULTS |
Effect of avoidance learning on wake-sleep states
In the group of learning animals, statistical comparisons (two-way
ANOVAs) between the 3 baseline recording days revealed no significant
differences in the total percentage of time spent in W, SWS, tS-R, and
REM sleep between the 6 hr periods. Similarly, the percentage of time
the control group spent in W, SWS, tS-R, and REM sleep during the
3 d of baseline recording did not significantly change. Because
there was no day effect, the last baseline day was used for the
comparison between control and learning groups. Post hoc
tests (one-factor ANOVAs) found no significant difference between
control and learning groups before learning trials for the total
percentage of W (35.1 ± 3.3 vs 34.8 ± 2.9%), SWS
(50.8 ± 3.9 vs 51.5 ± 2.6%), tS-R (1.8 ± 0.4 vs
1.8 ± 0.5%), or REM sleep (12.3 ± 1.2 vs 11.9 ± 1.1%). In addition, P-wave density (38.7 ± 4.1 vs 40.5 ± 3.8), REM density (44.6 ± 9.8 vs 47.3 ± 10.6), and -wave
frequency (6.26 ± 0.7 vs 6.29 ± 0.8) during REM sleep
were not significantly different (one-factor ANOVA) between
groups. Thus, the groups were initially equal in terms of time spent in
W, SWS, tS-R, and REM sleep, P-wave density, -wave frequency, and
REM density for the final 6 hr baseline recording period.
The rats did not show any overt abnormal waking behavior after
the shuttle box trials. The percentages of wakefulness after shuttle
box trials (control, 35.0 ± 4.4%; learning, 33.9 ± 4.7%) were similar and comparable with the percentages before the trials. After the trials, the total percentage of wakefulness in the learning group was not significantly different when compared with that of the
control group [F(1,20) = 0.275;
p = 0.6059; Table 1]. After the shuttle box trials the mean percentage of time spent in SWS
in the learning group (47.3 ± 5.5%) was slightly less than that
of the control group (52.2 ± 5.8%), but these differences were
not statistically significant
[F(1,20) = 4.147; p = 0.0552; Table 1; Fig. 1].
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Table 1.
Means and SDs for wakefulness and the various parameters of
the different states of sleep in the control (n = 10)
and learning (n = 12) groups of animals after the
first session of two-way active avoidance control or learning trials
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Figure 1.
Effects of learning trials compared with control
trials on wakefulness and different sleep states. Percentage changes in
wakefulness (W), slow-wave sleep
(SWS), transition from slow-wave sleep to REM sleep
(tS-R), REM sleep (REM), and total
P-wave state (PWS; combined tS-R and
REM) from the first session of control trials
(0 line) to the first session of learning trials
(CS-UCS paired). Note that the percentage of change from the control
trials (CS-UCS unpaired) in W and SWS
after the learning trials (CS-UCS paired) is not significant.
However, the learning trials significantly increased the percentage of
tS-R, REM, and PWS from
the control trials. Post hoc t tests:
**p < 0.01; ***p < 0.001.
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The behavioral state of tS-R is a very short stage of sleep that
appears between SWS and REM sleep and lasts for ~5-20 sec. The tS-R
always precedes REM sleep onset but is not always followed by REM
sleep. The total percentage of tS-R in the post-trial controls (1.4 ± 0.5%) was comparable with the total percentage of
pretrial controls (1.8 ± 0.4%). After the shuttle box trials,
the total percentage of time spent in tS-R in the learning group of
rats was significantly higher [180.57% higher;
F(1,20) = 136.123; p < 0.001] compared with the control rats (Table 1; Fig. 1). Having documented the post-trial increase in the total percentage of tS-R in
the learning group, we looked at the latency, frequency, and duration
of tS-R episodes (Table 1). The mean latency of tS-R in the learning
group (23.4 ± 6.5 min) was not significantly different from that
of the control group (28.5 ± 7.3 min). Similarly, the mean
duration of tS-R (10.8 ± 7.9 sec) was not significantly different
between groups. But the mean number of tS-R episodes in the learning
group was significantly higher [124% higher;
F(1,20) = 142.324; p < 0.001] than that in the control group.
Figure 2 illustrates the polygraphic
characteristics of typical post-trial REM sleep episodes of the control
(Fig. 2A) and learning (Fig. 2B)
groups. After the shuttle box trials, the total percentage of time
spent in REM sleep in the learning group was significantly higher
[25.4% higher; F(1,20) = 9.053;
p < 0.01] than that in the control group (Table 1;
Fig. 1). Having documented a significant increase in post-trial REM
sleep in the learning group, we looked at latency, duration, and
frequency of REM sleep episodes (Table 1). The mean latency of REM
sleep in the learning group (37.4 ± 6.5 min) was not
significantly different from that of the controls (41.6 ± 7.3 min). Similarly, the mean duration of REM sleep was not significantly
different. But, again, the mean number of REM sleep episodes in the
learning group of animals was significantly higher [36.7% higher;
F(1,20) = 105.243; p < 0.001] than that in the controls (Table 1; Fig. 1).

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Figure 2.
Sample polygraphic appearance of the third episode
of REM sleep after the first session of control trials
(A) and learning trials
(B). Note the qualitative similarity in both
records showing characteristic electrographic signs of REM sleep:
low-voltage, high-frequency, or desynchronized waves recorded from the
frontal cortex (EEG); muscle atonia
(EMG); rapid eye movements (EOG);
hippocampal waves in the hippocampal EEG
(HPC); and P-waves (spiky waves) in the pontine
EEG (PON). Despite qualitative
similarity, P-waves are more frequent in the learning trials than in
the control trials. Time scale, 5 sec.
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Effect of avoidance learning on the P-wave state and
P-wave density
Because P-waves are normally present only during the behavioral
states of tS-R and REM sleep, we have referred to these as the P-wave
state (PWS) (Datta et al., 1992 ). The combined mean percentage of PWS
after learning trials in the learning group (18.7 ± 2.3%) was
significantly higher [41.7% higher;
F(1,20) = 26.635; p < 0.001] than that in the control (13.2 ± 2.7%) after control
trials (Fig. 1). Having documented a significant increase in the
post-trial PWS percentage in the learning group compared with the
control, we looked at P-wave density during the first six REM sleep
episodes after the shuttle box avoidance learning and control trials
(Fig. 3). Statistical analysis (two-way
ANOVA) showed a significant difference in P-wave density between groups [F(1,20) = 50.16; p < 0.001] and between REM sleep episodes
[F(5,100) = 52.95; p < 0.001]. Post hoc analysis (one-factor ANOVA) identified that the P-wave densities in the learning animals were significantly higher than those of the control group during REM sleep episodes 1 [F(1,20) = 37.801; p < 0.001], 2 [F(1,20) = 80.284;
p < 0.001], 3 [F(1,20) = 70.108; p < 0.001], and 4 [F(1,20) = 43.04;
p < 0.001] but not during episodes 5 and 6 (Table
1).

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Figure 3.
Increased P-wave density in the first four
episodes of REM sleep after a session of learning trials. This line
graph illustrates P-wave density (mean ± SE) in the first six
episodes of REM sleep after a session of the control trials
(empty circles) and learning trials
(filled circles). Note that the P-wave density in
the first four episodes of REM sleep is significantly higher after the
learning trials compared with the control trials. Also note that the
P-wave density sharply increased from the first episode of REM sleep to
the third episode in which it peaked and then started to decline
toward the baseline density level. Post hoc t tests:
***p < 0.001.
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Effect of avoidance learning on the -wave frequency and
REM density
In the cat, REMs are highly correlated with PGO activity (Nelson
et al., 1983 ; Datta and Hobson, 1994 ). Having documented robust change
in P-wave density after learning trials, we have looked at REM density
during the first six REM sleep episodes after learning and control
trials. The mean REM density in the learning group (52.4 ± 9.5 waves/min) when compared with that of the control group (47.6 ± 10.3 waves/min) was not significantly different. We also compared
-wave frequency in the first post-trial REM sleep episodes. Again
-wave frequency in the learning group (6.30 ± 0.53 Hz) was not
significantly different from that of the control group (6.33 ± 0.63 Hz).
Improvements in learning
Performance on the shuttle box avoidance task is shown in Figure
4. The learning group was subjected to
two sessions of learning trials one before and another after the 6 hr
session of undisturbed polygraphic sleep recordings. For each of the
two sessions, the percentage of conditioned avoidance responses was
calculated for each rat for each of the six blocks of five trials and
than averaged across animals. In the training session, rats performed
poorly in the first two blocks of trials. In the third block of trials, animals avoided approximately one-third (38.33%) of the UCS. By the
fifth and sixth blocks of trials these animals successfully avoided
>80% of the UCS. In contrast, at retest rats avoided >50% of the
UCS during the first two blocks, and by the third block animals avoid
>80% of UCS. Two-way ANOVA (session × block) revealed a rapid
and significant increase in the percentage of avoidance responses over
blocks [F(5,110) = 84.38;
p < 0.001] as they acquired the task. Overall the
percentage of avoidance was significantly greater in session 2 than in
session 1 [F(1,22) = 61.25;
p < 0.001]. Post hoc analysis (one-factor
ANOVA and Scheffe F test) revealed a significantly higher
percentage of avoidance in the second session for each of the first
four blocks (Fig. 4).

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Figure 4.
Learning curves in session 1 (empty
circles) and session 2 (filled circles)
for the two-way active avoidance task. The percentage of avoidance
learning (mean ± SE) is plotted here in blocks of five trials.
Note that in the first session the rats (n = 12)
performed poorly in the first two blocks of trials (10 trials) and then
in the third block the animals started to avoid. By the sixth block the
animals successfully avoided in >80% of the trials. After the first
session the animals were allowed 6 hr of undisturbed sleep. After
sleep, the animals were subjected to the second session of active
avoidance trials. Unlike in the first session, during the first two
blocks of the second session, animals avoided in >50% of the trials.
These data indicate the improvement in the avoidance learning (or
retention) between session 1 and session 2. By the third block of
trials animals avoided in >80% of the trials. Post hoc
t test: **p < 0.01;
***p < 0.001.
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Relationship between P-wave density and improvement in
avoidance learning
Because there was a sharp rise of P-wave density between the first
and third episodes of REM sleep after the training session (Fig. 3), we
expected to see a precise relationship between the increase in P-wave
density between the first and third REM sleep episodes and the
improvement in performance. Indeed, a strong correlation was observed
(Pearson correlation coefficient, r = 0.95; df = 11; p < 0.001; Fig.
5). Similarly, the P-wave density change
between the last baseline recording session and the first post-training
REM sleep period also showed a statistically significant positive slope
(r = 0.70; df = 11; p < 0.01).
These results suggest that the increase in P-wave density in the third
REM sleep episode is correlated with effective task performance.

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Figure 5.
Relationship between the P-wave density change and
the improvement in learning. The percentage of improvement for each
animal (filled circles) is shown as a function of
the percentage of P-wave density change between the first
(R1) and third (R3) episodes of REM sleep
after the first session of active avoidance learning trials
(n = 12 rats). The percentage of improvement was
calculated by subtracting the percentage of avoidance in the first two
blocks of the first session of learning trials from the percentage of
the first two blocks in the second session. The plot of linear
regression best-fit (solid line; Pearson product-moment
correlation) shows a statistically significant positive slope
(r = 0.95; p < 0.001). These
data indicate that the level of improvement of learning in the retrial
session depends positively on the percentage of the P-wave density
increase in between the first and third episodes of REM sleep
immediately after the first session of learning trials.
|
|
 |
DISCUSSION |
The principal findings of this study are that (1) avoidance task
training increased the time spent in the P-wave-related behavioral states of tS-R and REM sleep during the 6 hr after training but did not
alter the time spent in W and SWS, (2) training increased P-wave
density in the first four episodes of REM sleep in the post-training
period but had no effect on hippocampal frequency or rapid eye
movement density during post-training REM sleep, and (3) improved
performance in the retrial session was proportional to the increase in
P-wave density during the first three REM sleep episodes after task
training. These results suggest a strong relationship between P-waves
and state-dependent information processing that may have relevance for
our understanding of the physiological mechanisms underlying learning
and memory during sleep.
The present study demonstrates that during the post-trial
sleep-recording session rats spent 25.47% more time in REM sleep after
learning trials than after control trials. This increase in total REM
sleep time was caused by an increase in the number of REM sleep
episodes during the post-training period. These results agree with
previous animal studies, using a variety of protocols and test
paradigms, that have consistently shown that both appetitive and
aversive training increases REM sleep in the post-training period
(Lucero, 1970 ; Fishbein et al., 1974 ; Smith et al., 1980 ; Portell-Cortes et al., 1989 ; Smith and Wong, 1991 ; Bramham et al.,
1994 ; Smith and Rose, 1997 ). These increases in REM sleep appear not to
be caused simply by the stress of the training protocol but to be
caused by active learning of new material (Hennevin et al., 1995 ).
Because of the absence of a REM sleep change in those animals that
received foot shocks noncontingently (control group), the increase in
REM sleep in the animals that received learning trials cannot simply be
attributed to the stress of foot shocks. Other animal studies have also
demonstrated that post-training REM sleep deprivation can partially or
even totally block improved task performance on subsequent retesting
(Fishbein, 1971 ; Pearlman, 1973 ; Pearlman and Becker, 1973 ; Smith and
Butler, 1982 ; Smith et al., 1998 ). Taken together, these animal studies
suggest that the increased REM sleep after acquisition is critical for
learning. In the current study we also observed that the learning group spent 180.57% more time in tS-R (SWS with P-waves) than did the control group during the post-trial sleep-recording session. Again, this increase in tS-R was caused mainly by an increase in the total number of tS-R events. After spatial exploration, activity patterns of hippocampal place cells have been shown to be reactivated during subsequent SWS, and this replay is believed to contribute to
memory formation and consolidation (Pavlides and Winson, 1989 ; Wilson
and McNaughton, 1994 ; Kudrimoti et al., 1999 ). Because these studies
did not record P-wave activity, it is possible that the hippocampal
reactivation episodes were in fact during tS-R. So, the increase in
tS-R may be caused by a increase in demand for the cellular
reactivation and memory processing.
Our finding that two-way active avoidance learning trials do not change
significantly the total amount of SWS agrees with previous sleep
learning studies using other types of learning paradigms that have
similarly shown that learning trials do not have an effect on the
amount of post-trial SWS (Lucero, 1970 ; Fishbein et al., 1974 ; Smith
and Rose, 1997 ). These findings suggest that there is no demand for
increased SWS for post-trial memory consolidation. Interpretation of
these behavioral studies is also supported by several lines of evidence
from physiological studies (Bloch and Laroche, 1981 , 1984 ; Hars et al.,
1985 ; Hars and Hennevin, 1987 ; Jones-Leonard et al., 1987 ; Bramham and
Srebro, 1989 ; Maho and Bloch, 1992 ).
On the basis of a number of neurophysiological studies, off-line
reactivation of various neuronal structures involved in learning seems
to be critical for the consolidation of memories (Pavlides and Winson,
1989 ; Wilson and McNaughton, 1994 ; Skaggs and McNaughton, 1996 ; Qin et
al., 1997 ; Kudrimoti et al., 1999 ). This reactivation hypothesis of
memory consolidation is also supported by a number of electrical
stimulation studies (Stein and Chorover, 1968 ; Erickson and Patel,
1969 ; Destrade et al., 1973 ; Landfield et al., 1973 ; Destrade and
Cardo, 1974 ). These studies have shown that mice and rats receiving
post-trial hippocampal stimulation showed better retention of learning
than did control animals. These studies also showed that when the
hippocampus was reactivated by electrical stimulation there was no need
for sleep for the improvement of learning. In summary, reactivation of
the hippocampus is critical for sleep-dependent memory processing. In
the present study sleep-dependent memory processing may involve
reactivation of other brain regions in addition to the hippocampus. To
differentiate between the role of reactivation of other forebrain
structures and the hippocampus, future studies will use tasks that
differentially involve the hippocampus and other brain regions,
especially tasks that use the amygdala.
If reactivation of forebrain and cortical memory-processing networks is
critical for the consolidation of memory, then what is the source of
this reactivating stimulus during tS-R and REM sleep? This reactivating
stimulus is probably coming from the brainstem. This possibility is
supported by the finding that the electrical stimulation of the
mesencephalic reticular formation (MRF) after training improves
performance in the rat (Leconte et al., 1974 ; DeWeer, 1976 ; Bloch et
al., 1977 ; Devietti et al., 1977 ; Sara et al., 1980 ; Bloch and Laroche,
1981 ; Hennevin et al., 1989 ). The improvement in learning performance
by post-trial MRF stimulation was as effective as hippocampal
stimulation. A post-trial MRF stimulation was shown to facilitate a
classically conditioned association and also the development of
associative changes in neuronal activity in the hippocampus as the
conditioning proceeded (Bloch and Laroche, 1981 , 1984 ). Moreover, when
stimulation was administered after each long-term potentiation
(LTP)-inducing stimulus, it enhanced the magnitude of LTP at the
synapses of the perforant path on dentate granular cells and prolonged
its duration by several days. The MRF stimulation during the
postacquisition period appeared to substitute the need for REM sleep by
decreasing the post-training REM sleep elevation and by abolishing most
of the learning impairment produced by post-trial REM sleep deprivation (Bloch et al., 1977 ). This leads to the assumption that MRF stimulation during REM sleep has enhanced an ongoing physiological process that
naturally occurs during postlearning REM sleep and that could be
responsible, at least partially, for the beneficial effect of
postlearning REM sleep on memorization. On the basis of the above
evidence, it may be proposed that during REM sleep the MRF is the
source of the reactivating stimulus for the memory-processing network
in the forebrain and cortical areas. However, these MRF electrical
stimulation studies did not systematically localize a most effective or
only effective site in the MRF for the reactivation of the
memory-processing network. Is the whole MRF or specific nuclei the
source of reactivation? It is likely that electrical stimulation of the
MRF in these studies also stimulated other parts of the brainstem
reticular formation.
The MRF is an important part of the brainstem reticular formation, and
it contains a number of specific cell groups involved in the generation
of different signs of REM sleep (for review, see Datta, 1995 ). During
REM sleep, different parts of the brainstem reticular formation are
activated for the generation of different phasic and tonic signs of REM
sleep (for review, see Vertes, 1984 ; Datta, 1995 , 1997 ). Which cell
group(s) or structure(s) in the brainstem is responsible for the
reactivation of the memory-processing network in the forebrain and
cortex? The present study demonstrated that there was an increase in
tS-R and REM sleep after learning trials. Because P-wave-generating
cells are activated only during tS-R and REM sleep and
P-wave-generating cells have anatomical projections to the forebrain
and cortical memory-processing structures (Datta et al., 1998 ), the
activation of P-wave-generating cells could reactivate the
memory-processing network. The present study also demonstrated that
learning trials increase P-wave density in the subsequent four REM
sleep episodes. In addition, this study has shown that the improvement
of learning in a retrial session is proportional to the rate of P-wave
density change between the first and third REM sleep episodes after the
first session of learning trials. These findings suggest that a major
source of this reactivating stimulus is the phasic P-wave-generating cells.
In conclusion, activation of P-wave-generating cells during tS-R and
REM sleep may reactivate the forebrain and cortical memory-processing structures to reprocess recently stored information, aiding in the
maintenance of memory and facilitating its later expression. Depending
on the demand of learning, supplementary activation of
P-wave-generating cells could further enhance the
information-processing efficiency, resulting in improved performance.
 |
FOOTNOTES |
Received May 26, 2000; revised Aug. 24, 2000; accepted Aug. 30, 2000.
This work was supported by National Institutes of Health Grants NS
34004 and MH 59839. I gratefully acknowledge G. Buzsaki, J. Allan
Hobson, E. H. Patterson, and R. Stickgold for their valuable discussions on this manuscript. I also thank Soma M. Datta for statistical analysis and for writing system software.
Correspondence should be addressed to Dr. Subimal Datta, Sleep Research
Laboratory, Department of Psychiatry, Boston University School of
Medicine, M-913, 715 Albany Street, Boston, MA 02118. E-mail:
subimal{at}bu.edu.
 |
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August 30, 2006;
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S. Datta and S. L. Prutzman
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S. Ribeiro and M. A.L. Nicolelis
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C. T. Smith, M. R. Nixon, and R. S. Nader
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J. Ulloor, V. Mavanji, S. Saha, D. F. Siwek, and S. Datta
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S. Datta, V. Mavanji, J. Ulloor, and E. H. Patterson
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H. Miyamoto and T. K. Hensch
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R. Stickgold, R. Fosse, and M. P. Walker
Linking brain and behavior in sleep-dependent learning and memory consolidation
PNAS,
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P. Maquet
The Role of Sleep in Learning and Memory
Science,
November 2, 2001;
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R. Stickgold, J. A. Hobson, R. Fosse, and M. Fosse
Sleep, Learning, and Dreams: Off-line Memory Reprocessing
Science,
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J. M. Siegel
The REM Sleep-Memory Consolidation Hypothesis
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