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The Journal of Neuroscience, January 1, 1999, 19(1):274-287
Oscillatory Coupling of Hippocampal Pyramidal Cells and
Interneurons in the Behaving Rat
Jozsef
Csicsvari,
Hajime
Hirase,
András
Czurkó,
Akira
Mamiya, and
György
Buzsáki
Center for Molecular and Behavioral Neuroscience, Rutgers, The
State University of New Jersey, Newark, New Jersey 07102
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ABSTRACT |
We examined whether excitation and inhibition are balanced in
hippocampal cortical networks. Extracellular field and single-unit activity were recorded by multiple tetrodes and multisite silicon probes to reveal the timing of the activity of hippocampal CA1 pyramidal cells and classes of interneurons during theta waves and
sharp wave burst (SPW)-associated field ripples. The somatic and
dendritic inhibition of pyramidal cells was deduced from the activity
of interneurons in the pyramidal layer [int(p)] and in the alveus and
st. oriens [int(a/o)], respectively. Int(p) and int(a/o) discharged an average of 60 and 20° before the population discharge of pyramidal cells during the theta cycle, respectively. SPW
ripples were associated with a 2.5-fold net increase of excitation. The
discharge frequency of int(a/o) increased, decreased ("anti-SPW" cells), or did not change ("SPW-independent" cells) during SPW, suggesting that not all interneurons are innervated by pyramidal cells.
Int(p) either fired together with (unimodal cells) or both before
and after (bimodal cells) the pyramidal cell burst. During fast-ripple
oscillation, the activity of interneurons in both the int(p) and
int(a/o) groups lagged the maximum discharge probability of pyramidal
neurons by 1-2 msec. Network state changes, as reflected by field
activity, covaried with changes in the spike train dynamics of single
cells and their interactions. Summed activity of parallel-recorded interneurons, but not of pyramidal cells, reliably predicted theta cycles, whereas the reverse was true for the ripple cycles of SPWs. We
suggest that network-driven excitability changes provide temporal
windows of opportunity for single pyramidal cells to suppress, enable,
or facilitate selective synaptic inputs.
Key words:
theta; sharp waves; oscillation; inhibition; EEG; temporal coding
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INTRODUCTION |
Information in the brain is believed
to be encoded within a representation that is distributed across large
networks of neurons. Although the nature of such coding is not known,
two opposing views have been advanced. According to the "frequency
code" hypothesis, information is embedded in the rate of neuronal
discharges. Synaptic inputs are integrated in the dendrites; the ratio
of inhibition and excitation affects the overall probability of
neuronal discharge, but precise spike timing of action potentials is
left to chance (Barlow, 1972 ; Shadlen and Newsome, 1998 ). In
contrast, the "temporal code" hypothesis suggests that spike times
and patterns, relative to other neurons, encode the information
(Abeles, 1982 ; Buzsaki, 1989 ; Gray and Singer, 1989 ; Hopfield, 1995 ). A
key feature of the frequency code hypothesis is that the net excitatory
and inhibitory inputs are balanced to maintain a proper dynamic range
of spike discharge (Shadlen and Newsome, 1998 ). On the other hand, a
transient gain of net excitation would facilitate the effect of an
appropriately timed input, as predicted by the temporal code hypothesis
(cf. Buzsaki and Chrobak, 1995 ). If we assume that population discharge of pyramidal cells and inhibitory interneurons reflects the net membrane polarization of an average neuron, parallel recording of
neuronal activity from identified single neurons may be used to test
these theoretical predictions.
Neurons of the hippocampal cortex are involved in a variety of
different oscillations and intermittent population bursts, including
rhythms at theta (5-10 Hz) and gamma (40-100 Hz) frequencies in the
awake, exploring rat and during rapid eye movement (REM) sleep. During
immobility, consummatory behaviors, and slow-wave sleep, intermittent
population bursts in the CA3-CA1-subiculum-entorhinal cortex axis
are associated with sharp waves (SPW) in the dendritic layers and with
ultrafast (140-200 Hz) oscillations in the somatic layers,
respectively (Vanderwolf, 1969 ; Buzsaki et al., 1983 ; Bland, 1986 ;
Stewart and Fox, 1990 ; Chrobak and Buzsaki, 1996 ). The oscillatory
context is imposed on the principal cells by networks of inhibitory
interneurons (cf. Freund and Buzsaki, 1996 ), and the oscillatory waves
can be conceived of as quantal packages of neuronal representations
(Buzsaki and Chrobak, 1995 ; Hopfield, 1995 ; Lisman and Idiart, 1995 ;
Skaggs et al., 1996 ).
The present experiments explored the involvement of pyramidal cells and
interneurons in the various population patterns of the hippocampus in
the behaving rat. Large discrepancies between excitation and inhibition
were revealed within the oscillatory cycles of the various rhythms, as
reflected by the activity differences of parallel-recorded pyramidal
cells and interneurons. Interneurons could be classified into various
functional groups on the basis of their involvement in population
activity. We suggest that oscillating inhibitory networks may provide
temporal windows for single cells to suppress or facilitate their
synaptic inputs in a coordinated manner.
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MATERIALS AND METHODS |
Surgery and recording. The surgical procedures,
electrode preparation, and implantation methods have been described
(Csicsvari et al., 1998 ). In short, 16 male rats were implanted with
either wire tetrodes or silicon electrode arrays that were used for the recording of neuronal activity. Wire tetrodes (Recce and O'Keefe, 1989 ) were constructed from four 13 µm polyimide-coated
nichrome wires (H. P. Reid Co., Palm Coast, FL) bound together by
twisting and then melting their insulation (Gray et al., 1995 ).
Silicon electrode arrays were fabricated using the technology of
integrated circuits. The shanks of the silicon probes were separated by
either 150 or 300 µm. Each shank contained four or six recording
sites (9 × 12 µm platinum pads) with 25 µm vertical spacings
(Ylinen et al., 1995a ). The electrodes were attached to a
multidrive array, and the electrodes were slowly advanced until they
reached the CA1 pyramidal layer. Two 50 µm single tungsten wires
(with 2 mm of the insulation removed) were inserted into the cerebellum
and served as ground and reference electrodes.
Data processing. Electrical activity was recorded during
sleep while the rat was in its home cage followed by exploration in the
home cage or during a wheel-running task for water reward (Buzsaki et
al., 1983 ; Czurko et al., 1999 ). After amplification (5000-10,000×)
and band-pass filtering (1 Hz-5 kHz; model 12-64 channels; Grass
Instruments, Quincy, MA), field potentials and extracellular action
potentials were recorded continuously using parallel-connected PC486
computers with ISC-16 analog-to-digital converter boards (12 bit
resolution; RC Electronics, Santa Barbara, CA) or a 64 channel DataMAX
system (16 bit resolution; RC Electronics). The recorded data were
digitized continuously at 10 or 20 kHz. Recording sessions lasted from
15 to 50 min. After each recording session, the data were transferred
to an 300 MHz pentium II personal computer running under the LINUX
operating system and were stored on 4 mm digital audio tapes. The data
were analyzed off-line.
Spike sorting. The continuously recorded wide-band signals
were high-pass filtered (0.8-5 kHz) digitally. The power (root mean
square) of the filtered signal was computed in a sliding window (0.2 msec) for spike detection (Bankman et al., 1993 ). The SD
was calculated to estimate the variance of the baseline noise and to
establish a detection threshold. Spikes with power of more than five
times the SD from the baseline mean were extracted. The extracted spike
waveforms were separated on the basis of their spike amplitude and
waveshape. The spike waveforms were reconstructed to 40 kHz by using
the principles of the sampling theorem (Press et al., 1992 ), and
the peaks of the original and reconstructed waveforms were realigned.
Instead of simple peak-to-peak measurement of the spike amplitude, all
sampled amplitude values ± 0.5 msec from the peak were used to
reduce noise-induced variance. The information encoded in the amplitude
values was compressed using principal component analysis (PCA).
Previously, the PCA method has been used successfully to discriminate
units in single-electrode recordings (Abeles and Goldstein,
1977 ), and these principles were used here for multisite
recordings. Typically, the first three principal components were
calculated for each channel recorded by the electrode. Therefore, a
single spike was represented by 12 waveform parameters as a
12-dimensional feature vector. Units were identified and isolated by a
graphical-clustering method referred to as "cluster cutting"
(Wilson and McNaughton, 1993 ; Skaggs et al., 1996 ). This
technique exploits the observation that single units tend to form dense
patches of points (clusters) when waveform parameters derived from
different recording sites are displayed. A custom-made XWindow software
(gclust) was used to plot selected pairs of waveform parameters and to
select clusters by drawing a polygon around cluster borders. The
program calculated the autocorrelograms of clusters to verify whether a
chosen cluster represented the activity of a single cell. If no clear
refractory period (<3 msec) was detected in the autocorrelogram,
additional feature combinations were examined to subdivide the cluster
further until a clear refractory period was present in the
autocorrelogram. Only units with clear refractory periods are included
in the present analysis. In addition, cross-correlation histograms of
all possible pairs recorded from a given tetrode or silicon probe were
calculated and examined for a symmetrical gap in the center bins. The
presence of a gap (common refractoriness) indicated that the initial
clusters represented activity of the same unit (Fee et al.,
1996 ), and therefore those clusters were merged. These combined
methods produced four to six (occasionally up to nine) well-isolated
neuron clusters per electrode shank. Neurons with very low firing rates
["silent" cells (Thompson and Best, 1989 )] could not be
tested reliably with these methods and were excluded from the database.
After spike clustering, the spikes were extracted from the original
wide-band (1 Hz-5 kHz) record, using a 9 msec window. The extracted
wide-band spikes were averaged and reconstructed at an 80 kHz sampling rate.
Behavioral training. Methods of training in the wheel
apparatus have been described previously (Czurko et al., 1999 ).
Briefly, the rats were water deprived for 24 hr and trained to run
continuously in a running wheel before surgery. The apparatus was a 30 cm × 40 cm × 35 cm box with an open top. The running wheel
(10 cm wide; 29.5 cm in diameter) was attached to the side of the box.
A drinking tube, 10 cm from the wheel and 5 cm above the floor,
protruded from the back wall. A miniature loudspeaker was placed 10 cm
above the drinking tube. A sound signal (2000 Hz) indicated the
availability of water reward after a predetermined number of
revolutions (5-20).
Detection of SPWs, ripples, and theta patterns. For the
extraction of ripple waves, the wide-band recorded data were digitally band-pass filtered (150-250 Hz; Fig. 1).
The power (root mean square) of the filtered signal was calculated for
each electrode and summed across electrodes to reduce variability.
During SPW-ripple episodes, the power substantially increased which
enabled us to determine the beginning, peak, and end of individual
ripple episodes. The threshold for ripple detection was set to 7 SDs
above the background mean power. Epochs with <4 SD above the
background mean power were designated no-SPW periods. Epochs with
intermediate power were not included in the analysis (e.g., epoch
marked by asterisk in Fig. 1). Theta epochs in the
wheel-running task, exploration, and REM sleep were detected by
calculating the ratio of the theta (5-10 Hz) and delta (2-4 Hz)
frequency band in 2.0 sec windows. A Hamming window was used during the
power spectra calculations. The theta-delta power ratio automatically
marked periods of theta activity. The exact beginning and end of theta
epochs during slow-wave sleep-REM sleep transitions sometimes were
adjusted manually. Next, the individual theta waves were identified.
The wide-band signal was digitally filtered in the 5-28 Hz range. This
band was chosen empirically to avoid phase delays in peak detection. The negative peaks of the theta waves were detected because the positive peaks of the theta waves, recorded in strata oriens and pyramidale, were less prominent. The intervals between successive negative peaks served as reference time points for normalizing theta
cycle durations.

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Figure 1.
Parallel recorded of interneurons and pyramidal
cells in the CA1 pyramidal layer. A, Two epochs during
slow-wave sleep. B, REM sleep. A, B,
Traces, Filtered (upper) and wide-band
(lower) traces recorded from one of the
tetrodes. Vertical ticks, Action potentials of isolated
neurons. Note the clustering of action potentials during sharp wave
(SPW)-associated field ripples and the relative
paucity of cell discharge between sharp waves
(no-SPW). A, Right,
A rare case without concomitant pyramidal cell discharge during SPW
ripple. Asterisk, Small size ripple. Epochs like this
were excluded from the analysis (see Materials and Methods). Positivity
is up in this and all subsequent figures. int(p), Three
interneurons in the CA1 pyramidal layer; pyr, 15 pyramidal cells recorded by four tetrodes.
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Correlation analysis. Autocorrelation and cross-correlation
functions were calculated separately during theta waves and SPWs and
between SPWs. Because the number of action potentials used for the
construction of autocorrelograms and cross-correlograms varied from
cell to cell, the histograms were normalized by dividing each bin by
the number of reference events. Thus, the histograms reflect discharge
probabilities. For the calculation of the cross-correlation between SPW
and unit discharges, the peak of the squared sum of the ripple was
regarded as the reference point (time 0). Baseline activity was
determined from the mean (± SD) firing rate in the 250 to 100 msec
and 100 to 250 msec epochs. Modulation of unit activity during the SPW
ripple was regarded significant if the mean discharge rate of the unit
in the 100 to 100 msec time window was >3 SD from the baseline.
Double-peak cells (see Results) had two significant peaks. The valley
between the two peaks was regarded significant if the minimum bin value
between the peaks was >3 SD from the peaks.
Phase correlations. The phase relationship between unit
activity and field events was calculated in the following manner. Each
spike was assigned to a given phase (bin size of 20°) of the
normalized field cycle (ripple/theta). To reduce bin-border variability, we substituted the action potential times with a Gaussian
kernel function. This procedure also low-pass filtered (smoothed) the
histograms. Initially, half bin-width SDs were used for the kernel
function. Thus, spikes with midbin phase increased the corresponding
bin by 0.68. The phase calculation procedure was repeated with 2 and 4 SD kernel functions if the average histogram bin value was <20 and 10, respectively. Histograms with mean bin values of <five spikes were
excluded from the analysis. Next, a sine wave was fit to the phase
histogram to calculate the preferential phase of unit discharge. For
the determination of preferred phase, only histograms with significant
sine wave fit (p < 0.001) were considered.
Extracellular field estimation based on unit activity.
Randomly selected epochs (60-100 sec for theta and 2-3 sec for
ripple) were used to estimate the relationship between field and
population discharges. The prefiltered extracellular fields were
resampled (theta, 600 Hz; ripple, 5 kHz). Unit-spike trains were
convolved with a Gaussian function; i.e., the Gaussian shape waves,
centered at spike occurrence times, were summed to create an
"analog" waveform. Gaussian waves with different SDs were used for
theta and ripple estimation (theta, 16 msec; ripple, 0.6 msec). A
multiple regression method was applied to estimate the filtered
extracel- lular field pattern from the convolved spike trains.
Interneurons and pyramidal cell discharges were used separately for
these estimations. A correlation coefficient (r) was
calculated to quantify the accuracy of the estimation. The mean of the
Gaussian function was shifted for each cell during ripple calculations
to obtain the highest correlation. This was done because interneurons
could fire between the positive and negative peaks of the field,
providing a poor correlation. The shifting procedure was not applied
during theta estimation because the frequency of the theta waves varied
(5-12 Hz) and therefore the procedure would not improve the estimation during theta rhythm. The calculations were performed with increasing numbers of pyramidal cells and interneurons, using all possible combinations or 50 randomly selected subsets of cells (whichever was smaller).
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RESULTS |
Extracellular identification of pyramidal cells
and interneurons
Pyramidal layer interneurons [int(p)] and alveus and st. oriens
interneurons [int(a/o)] were distinguished by their location. An
interneuron was classified as being in the pyramidal layer when
pyramidal neurons were also present in the recording. In addition to
the unit activity, the presence of large amplitude fast-field
oscillations (ripples), which are localized to the pyramidal layer,
also assisted with the depth calibration of the electrodes (Buzsaki et
al., 1992 ; Ylinen et al., 1995 ). Interneurons with cell bodies
in the CA1 pyramidal layer [int(p)] include basket cells, chandelier
cells, and a portion of bistratified neurons (Sik et al., 1995 ; Buhl et
al., 1996 ; Ali et al., 1997 ). Interneurons in the alveus and
stratum oriens [int(a/o)] were typically recorded in isolation from
other cells. Besides depth, the main criterion for assigning a neuron
to the int(a/o) group was the absence of simultaneously recorded
pyramidal cells. Subsequent lowering of the microelectrode indicated
the approximate distance of the cell body of the int(a/o) neuron from
the pyramidal layer.
Three independent criteria were used to separate pyramidal cells from
interneurons. These included discharge frequency (Ranck, 1973 ;
Fox and Ranck, 1981 ; Buzsaki et al., 1983 ), spike duration (Wilson and McNaughton, 1993 ; Skaggs et al., 1996 ), and the
autocorrelation function (Fig. 2). In
general, pyramidal cells discharged at a low rate [1.4 ± 0.01 Hz
(mean ± SE); n = 246] when long epochs were
considered, in contrast to the faster-firing int(p) (14.1 ± 1.43 Hz; n = 55) and int(a/o) (13.0 ± 1.62;
n = 68) interneurons (F = 117.7;
p < 0.001; ANOVA). Nevertheless, some interneurons in
both groups had overlapping firing rates with those of the pyramidal
cells. The average duration of wide band-filtered (1 Hz-5 kHz)
pyramidal cell spikes (0.44 ± 0.005 msec), measured at 25% of
maximum spike amplitude, was significantly different from that of the
int(p) (0.22 ± 0.007 msec) and int(a/o) (0.24 ± 0.01 msec;
F = 274.1; p < 0.001) interneurons,
but, again, there was some overlap between the pyramidal cells and
putative interneurons. The discharge dynamics of pyramidal cells and
putative interneurons were also characteristically different. Pyramidal
cells occasionally fire complex-spike bursts of two to seven spikes at
3-5 msec interspike intervals (Ranck, 1973 ). This feature was
reflected by a peak at 3-5 msec in the autocorrelograms, followed by a
fast exponential decay. In contrast, the autocorrelograms of putative
interneurons showed a slow decay. The average first moment of the
autocorrelogram (i.e., the mean value) for pyramidal cells was 7.1 ± 0.12 msec, compared with the significantly longer values in int(p)
(12.7 ± 0.05 msec) and int(a/o) (12.0 ± 0.17 msec;
F = 545.2; p < 0.001).

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Figure 2.
Physiological identification of pyramidal cells
and interneurons by extracellular recording. Three independent
parameters of extracellular spikes are plotted in the three-dimensional
space. x-axis, Duration of the extracellular spike
(filtered at 1 Hz and 5 kHz) measured at 25% of spike amplitude.
y-axis, The first moment (mean) of the spike
autocorrelogram (ac). z-axis, Firing
rate. Two views are shown. Note the clear separation of the
pyr from the interneuron clusters. Note also the tight
cluster formed by int(p). int(a/o),
Interneurons recorded in the alveus and stratum oriens.
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The combination of firing frequency, spike duration, and the mean value
of the autocorrelation yielded two distinct clusters of units, which we
then assigned pyramidal cell and interneuron designates (Fig. 2). There
were still four ambiguous neurons that were recorded in the st. oriens
and alveus. One of these four cells was designated a displaced
pyramidal cell (Freund and Buzsaki, 1996 ) because its physiological
criteria, including its spike shape, met those of the pyramidal
neurons. The remaining three neurons were slow-firing, bursty cells
(see below). However, their waveform was distinctly different from
pyramidal cells, and therefore they were classified putatively as
int(a/o) interneurons.
In addition to spike duration, the waveforms of pyramidal cells and
interneurons were characteristically distinct. Figure 3 illustrates the amplitude-normalized
trace of each recorded neuron in the different groups. The waveform of
interneurons in the int(p) group had the smallest variability. The
initial negative phase of the extracellular spike arose from a
relatively flat baseline. The ascending phase had a sharp deflection
followed by a positive hump at a latency (1.1 msec from the
beginning of the spike) that corresponds in time to the spike
afterhyperpolarization of the intracellular action potentials observed
previously in vivo (Sik et al., 1995 ). The slope change on
the ascending phase was less conspicuous than in pyramidal cells,
indicating that the kinetics of Na+ and
K+ is different in these interneurons from that of
the pyramidal cells. In accordance with their similar waveforms,
neurons in the int(p) group formed a relatively tight cluster (Fig. 2).
In contrast, the int(a/o) group contained a more heterogeneous set of
cells. Fourteen percent of the int(a/o) interneurons had a relatively
slow overall firing rate (<5 Hz) but had fast bursts of spikes (see
below). The waveforms of most of these neurons were different from all
other recorded cells (Fig. 3, bursty). The waveform began
with a positive deflection with an amplitude that was 30-80% of the
following negative component. We interpret this observation as an
indication that the extracellular recording electrode was monitoring
from the close vicinity of a large dendritic segment or the soma
("juxtacellular" recording). In summary, the combined criteria
reliably separated interneurons with short-duration spikes and/or high
frequency from pyramidal cells. Nevertheless, units with waveform and
firing pattern similar to that of pyramidal cells should be considered
putative interneurons.

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Figure 3.
Waveform differences of pyramidal cells and
interneurons. Superimposed average traces of all
pyramidal cells and putative interneurons. The waveforms (averages of
n > 200 individual spikes) were amplitude
normalized for this display. Filters settings were 1 Hz and 5 kHz.
A, Note the wider negative spike component of
pyr and a change in slope of the ascending phase
(open arrow). B, Note also the uniform
waveforms of the putative int(p). The sharp positive
spike (filled arrow) usually is followed by
another positive component at 0.8 msec (triangle).
C, D, Putative int(a/o)
displayed more variability. Waveforms of cells with fast (>250 Hz)
bursts (see Fig. 10C) are shown separately
(bursty). Note that in most bursty cells
the waveform is characterized by an early positive component.
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Discharge frequency and variability in pyramidal cells
and interneurons
The discharge rate changes in different behavioral states are
shown in Figure 4 for all neurons. The
long-term firing rates of both pyramidal cells (theta, 1.4 ± 0.10 Hz; nontheta, 1.4 ± 0.09 Hz) and int(p) interneurons (theta,
16.3 ± 1.52 Hz; nontheta, 14.3 ± 1.32 Hz) were similar
during theta and nontheta behaviors. The int(a/o) group, on the other
hand, was significantly more active during theta than during the
nontheta state (theta, 11.9 ± 1.50 Hz; nontheta, 8.3 ± 1.02 Hz; t = 7.0; p < 0.001; paired t test). When the nontheta state was further divided into
SPW and no-SPW epochs, the mean SPW/no-SPW ratios of discharge rate were 8.6 ± 0.44, 3.8 ± 0.20, and 2.8 ± 0.25 for
pyramidal cells and int(p) and int(a/o) interneurons, respectively.

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Figure 4.
Comparison of the discharge frequency of
individual neurons during different behavioral states. SPWs were
associated with a large increase in firing rate in all groups.
Interneurons were subdivided further according to their histograms
during SPW as "SPW-unrelated" (unr), anti-SWP
(anti), and single peak neurons (see Figs. 7, 8). There
was no obvious difference in firing rate between single-peak
(single) and double-peak (double) int(p)
interneurons (see Fig. 8).
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The coefficient of variation (CV) of spike discharges indicated that
the interspike intervals did not follow a Poisson rule. CV values were
similar in the two states for pyramidal cells (theta, 2.07 ± 0.06; nontheta, 2.03 ± 0.1; p > 0.05) but
significantly different for both int(p) (theta, 1.53 ± 0.11;
nontheta, 1.99 ± 0.02; p < 0.001) and int(a/o)
(theta, 1.61 ± 0.10; nontheta, 2.44 ± 0.29;
p < 0.002) interneurons. Note that for a Poisson process, CV is 1 (Softky and Koch, 1993 ). These large CV values could
be explained by the relatively long pauses between active discharges,
because CV values were much smaller during both theta [pyr, 1.05;
int(p), 0.65; int(a/o), 0.74] and nontheta [pyr, 1.14; int(p), 0.72;
int(a/o), 0.79] states when only interspike intervals < 100 msec
were included in the analysis.
Phase relationship of interneurons and pyramidal cells to
theta activity
Theta waves recorded from the alveus and strata oriens and
pyramidale are highly coherent, and the waves have zero phase lags relative to one another. A large phase shift of the theta phase appears
only in the apical dendritic layers (Winson, 1974 ; Buzsaki et al.,
1983 ). Therefore, the local field, recorded simultaneously with unit
activity, can serve as a reliable reference for comparing the theta
phase-unit relationship. Because the frequency of theta activity varied
during both awake locomotor activity and REM sleep, successive theta
waves were normalized, and the spike discharges were referenced to the
phase of the theta cycle (see Materials and Methods).
The relationship between theta activity and unit firing was studied
quantitatively in two different ways. First, theta cycle-unit phase
histograms were calculated and averaged across neurons. With this
method, all recorded cells contributed to the overall average
histogram, independent of whether the cell was phase-modulated by the
theta waves or not (Fig. 5C).
Second, the preferred phase of the theta cycle for a given neuron was
determined quantitatively, and the preferred phase values were
displayed in a histogram. For this histogram, only units with
significant phase modulation (see Materials and Methods) were included
(Fig. 5B). The discharge frequency, preferred theta phase,
and magnitude of theta cycle modulation of firing frequency showed some
variability in all cell groups. The great majority of pyramidal cells
and interneurons that had significant theta phase preference fired on
the negative phase of the local theta waves (Fig. 5B). This
conclusion is further supported by the discharge probability of all
neurons (Fig. 5C). The positive phase of the local theta
waves was associated with the least probability of discharge of both
pyramidal cells and interneurons. Less than 5% of neurons in any cell
group discharged preferentially on the positive portion of theta waves.
The int(p) and int(a/o) groups discharged earlier (60 and 20°,
respectively) than the population peak activity of the pyramidal
neurons. The relative magnitude of discharge frequency modulation of
pyramidal cells and interneurons within the theta cycle is illustrated
in Figure 5D. Neurons in the int(a/o) group, as a whole, had
a relatively shallow theta depth modulation, similar to pyramidal
cells. On the other hand, int(p) cells showed a much stronger phase
modulation. Two int(a/o) neurons were "antitheta" cells (Buzsaki et
al., 1983 ; Bland and Colom, 1989 ; Mizumori et al., 1990 ). These neurons
were virtually silent during theta (<0.05 Hz). During no-SPW epochs, they fired at 1.3 and 4.6 Hz, respectively. One of them doubled its
discharge rate during SPW, whereas the other antitheta neuron decreased
its firing frequency during SPW (anti-SPW, antitheta cell). It should
be emphasized that the above group comparisons are somewhat arbitrary.
Whereas the individual int(p) cells were relatively homogeneous in
terms of theta modulation and theta phase, neurons in the int(a/o)
group showed a large individual variability.

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Figure 5.
Theta phase modulation of pyr,
int(p), and int(a/o). A,
Averaged field theta wave. Two theta cycles are shown to facilitate
phase comparison with unit discharges. The arrow
indicates a "notch" in the waveform, typical in the theta wave of
strata oriens and pyramidale. B, Phase distribution of
single cells relative to the negative peak of the locally recorded
theta waves (dashed vertical lines). The peak of the
theta phase histogram was used to determine the preferred phase of a
single cell. Only neurons with significant phase modulation are shown
(see Materials and Methods). C, Average discharge
probability of the neuronal subgroups (mean ± SE). All neurons
are included, independent of whether their cross-correlograms showed a
significant modulation with theta waves or not. Note that
int(p) preceded pyramidal neurons by ~60°.
D, Normalized probabilities of the different cell groups
(depth of theta modulation). The lowest probability value during the
theta cycle was regarded as the baseline for each neuronal type, and
the probabilities were divided by this value. Note that the strongest
inhibition occurs before the highest probability of pyramidal cell
discharge.
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Discharge patterns of pyramidal cells and interneurons during
SPW-associated ripples
For the quantification of the temporal relationship between
neuronal discharge and SPWs, the largest peak of the field ripple served as a reference point. All three cell groups increased their discharge probability during SPWs (Fig.
6), but the magnitude of increase was
quite different. Interneurons in both groups increased approximately
threefold relative to the no-SPW baseline period. In contrast,
pyramidal cells increased 6.6-fold at the peak of the SPW compared with
that of no-SPW epochs (Fig. 6, left inset). Interneurons in
both groups began to discharge earlier than did pyramidal cells, and
their discharge frequency decayed more slowly than did that of the
pyramidal cells, as indicated by the amplitude-normalized histograms
(Fig. 6, right inset). On average, int(p) neurons discharged earlier than pyramidal cells and int(a/o) cells, and the histogram had
an additional peak after the maximum discharge probability of pyramidal
cells. Subsequent analysis of int(p) neurons revealed that they could
be classified into two well-defined groups. Sixteen of the 64 cells had
two peaks. In this group, the early and late peaks preceded and
followed the peak discharge of pyramidal cells by 15-25 and 10-30
msec, respectively (Figs. 7A,
8A). Between the early
and late peaks, the discharge probability often returned to baseline
level. Visual analysis of the original traces indicated that these
interneurons fired spikes at both latencies during a single SPW event.
The second group of int(p) neurons (n = 48) had a
single peak that coincided with the peak of the ripple. The width of
the histogram peak of these neurons was narrower than that of the
double-peak group.

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Figure 6.
Discharge probability of pyr,
int(p), and int(a/o) during hippocampal
SPW-associated ripples. A, Averaged field ripple wave
(thin line) and integrated, squared sum of the ripple
(thick line). Neuronal discharges were aligned to the
peak of the integrated ripple (time 0).
B, Averaged discharge probability of the neuronal
subgroups (mean ± SE). Left inset, Normalized
probabilities. Each point of the probability curve was divided by the
baseline discharge probability (averages of points between 250 and
200 msec). Note the 2.5-fold increase of discharge probability of
pyramidal cells relative to that of interneurons during the peak of the
ripple. Right inset, The probability distributions of
the three groups shown at the same relative scale (0-100%). Note the
earlier and longer-lasting discharge of interneurons relative to
pyramidal cells.
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Figure 7.
Subsets of interneurons show different
ripple-associated firing patterns. Single-cell examples are shown.
A, Discharge probabilities of single
int(p). B, Discharge probabilities of
int(a/o). Time 0 (reference) corresponds
to the peak of the ripple (see Fig. 6). Continuous
lines, Averaged discharge probability of simultaneously
recorded pyramidal neurons (n = 11-26).
Insets, Autocorrelograms of spike times;
x-axis, 100 msec. A,
Single, Interneuron with single peak.
Double, Interneuron with double peaks before and after
the maximum activity of pyramidal cells. B,
Single, Int(a/o) interneuron with single
peak. Note several peaks (arrows) in the
autocorrelogram, corresponding to ripple frequency.
Biphasic, Interneuron with a small peak and suppression
of neuronal discharge after the maximum activity of pyramidal cells.
Anti-SPW, Anti-SPW interneuron. Note the
suppression of discharge after the maximum activity of pyramidal
cells.
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Figure 8.
Group data for the interneuron types shown in
Figure 5. A, Int(p) had either a single
peak (left) or double peaks (right)
before and after the maximum discharge probability of pyramidal cells.
B, Most int(a/o) had a single peak
(upper left), whereas others were either suppressed
after the population discharge of pyramidal cells (lower
left; anti-SPW cells) or were not affected by the SPW burst
(lower right; SPW-independent cells). A few cells had a
significant suppression after an initial excitation (upper
right).
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Int(a/o) neurons showed four different types of activity during SPW
(Figs. 7B, 8B). The majority
(n = 54) had a well-defined single peak, similar to the
single-peak int(p) group. In the second group (n = 13),
only a decrease in discharge probability was observable without a
preceding increase. We termed these neurons "anti-SPW" cells. The
third group of int(a/o) neurons (n = 10) were not
affected by the large population synchrony of pyramidal cells
("SPW-independent" group). Most neurons in the anti-SPW and
SPW-independent groups were slow-firing bursty cells (see below). In
the remaining four cells, the initial small peak was followed by a
significant decrease in discharge probability at 25-30 msec after the
peak. None of the interneurons in the int(a/o) group had double peaks.
During the SPW event, the neuronal population oscillates at 140-200
Hz, as reflected by the fast-field ripple. Phase locking and depth
modulation of neurons during the ripples were determined the same way
as in the analysis of theta activity. The maximum probability of
pyramidal cell discharge occurred during the negative peaks of the
field ripple (Fig. 9). The preferred
phase of discharge for both interneuron groups was ~90° after the
negative peak. This phase difference corresponded to 1.2-2.0 msec
delays between the peak activity of pyramidal cells and interneurons.
The strongest modulation of neuronal discharges within the ripple cycle
occurred in the int(a/o) group. Several int(a/o) neurons discharged at virtually every cycle of the ripple waves. This high level of ripple
modulation was reflected by their periodic autocorrelograms (e.g., Fig.
7B, inset). Anti-SPW and SPW-independent neurons
did not emit a sufficient number of action potentials during the
observation period to assess their phase locking to ripple frequency
reliably.

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Figure 9.
Ripple phase modulation of pyr,
int(p), and int(a/o). A,
Averaged field ripple wave (two cycles shown). B, Phase
distribution of single cells relative to the negative peak of the
ripple waves (dashed vertical lines). The peak of the
phase-corrected cross-correlogram between cell discharge and ripple was
used to determine the preferred phase of a single cell. Only neurons
with significant ripple phase modulation are shown. C,
Averaged discharge probability of the neuronal subgroups (mean ± SE). All neurons are included, independent of whether their
cross-correlograms showed a significant modulation with the ripple
waves or not. D, Normalized probabilities of the
different cell groups (depth of ripple modulation). The lowest
probability value during the ripple cycle was regarded as the baseline
for each neuronal type, and the probabilities were divided by this
figure. Note that interneurons follow pyramidal neurons by 90°
(~1.2 msec for a 200 Hz ripple).
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Estimation of field patterns from neuronal interactions
A major part of the extracellular current flow derives from
synaptic activity and intrinsic oscillatory properties of the cell
membrane, both of which may correlate with the discharge probability of
neurons. The spike discharge pattern of single cells was dependent on
the state of the network as reflected by changes in the autocorrelation
function of the neurons (Fig. 10). Autocorrelation functions were calculated separately for spikes that
occurred during theta state and SPWs and between SPW bursts (no-SPW; see Fig. 1). The autocorrelograms of pyramidal
cells had prominent peaks between 3 and 4 msec during theta and between SPW bursts, corresponding to the complex-spike bursts these neurons emit. The peak shifted partially to the 5 msec bin during SPW bursts,
suggesting that spike timing was under the control of population
cooperativity at ripple frequency. The fast decay of the histogram
indicated that, on average, pyramidal cells discharged at a low
frequency, except when the neuron fired a complex-spike pattern. When
autocorrelograms were calculated for a longer epoch (0.5 sec), some
neurons had a small peak at 130-160 msec (i.e., at theta frequency;
data not shown). The autocorrelograms of int(p) neurons, constructed
from spikes collected during theta epochs and between SPW bursts, had
broad peaks between 10 and 25 msec, corresponding to their
preferred-firing frequency in the gamma band (40-100 Hz) (Bragin et
al., 1995 ). During SPW, the peak shifted to 4-10 msec, indicating that
int(p) neurons were phase-locked to the fast ripple waves. The majority
of int(a/o) neurons showed similar autocorrelograms and state
dependence to those of the int(p) neurons (Fig. 9).

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Figure 10.
State-dependent discharge patterns in
pyr (A), int(p)
(B), and int(a/o)
(C, D). Autocorrelograms were calculated
for each network state (theta, SPW, and
no-SPW). A, Note the large, sharp
peaks at <5 msec, indicating complex-spike bursts of pyramidal cells.
B, D, Note also peaks during SPW at 6 msec in int(p) (B) and most
int(a/o) (D) interneurons.
C, A subgroup of int(a/o) displayed high
frequency (>300 Hz) burst discharges.
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A portion of int(a/o) neurons (n = 17) had a slow
discharge rate (<5 Hz) and bursts of fast spikes (Fig. 10C,
bursty). The interspike interval during the spike burst was
2-3 msec, consistent with our visual observation that these cells
fired bursts of three to eight action potentials at 300-500 Hz. The
bursts occurred during SPWs or between SPWs but rarely during theta
activity. This bursting pattern was faster and longer than that of the
pyramidal neurons. In addition, the waveform of this minority int(a/o)
subgroup was different from that of the pyramidal cells (Fig. 3).
Finally, neurons in this subgroup increased their firing rate during
theta state, a further distinction from pyramidal cells. Most cells in
this group belonged to the anti-SPW and SPW-independent classes of
int(a/o) neurons.
The next analysis examined the summed pairwise cross-correlograms
within the same groups and across groups. Theta modulation was present
in all comparisons (Fig. 11). It was
least expressed in int(a/o)-int(a/o) pairs, although there were large
individual differences within this group. There was a sharp
15-msec-wide peak on top of the wider theta peak in the
cross-correlogram of int(p)-int(p) pairs, indicating that interneurons
in the pyramidal layer are entrained in both gamma and theta
oscillations (Bragin et al., 1995 ). During SPW epochs, the
cross-correlograms revealed ripple-related rhythmicity (Fig.
12). The time-shifted peaks of the
cross-correlograms (<2 msec) between different cell groups provide
support for the presence of a monosynaptic delay between pyramidal
cells and interneurons (Csicsvari et al., 1998 ). In the absence of SPW
and theta (no-SPW), no rhythmicity was apparent in the
cross-correlograms.

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Figure 11.
Averaged cross-correlograms of cell pairs during
theta oscillation. Note the rhythmic peaks in the cross-correlograms of
int(p)-int(p) and
pyr-pyr pairs (left) and
int(p)-int(a/o) pairs
(right) at theta frequency (vertical open
arrows). The narrow peak in the
int(p)-int(p) histogram
(left) reflects a prominent gamma frequency oscillation
of these neurons (black arrow).
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Figure 12.
Averaged cross-correlograms of cell pairs during
SPW bursts and between SPW events (no-SPW). Note
the rhythmic peaks in the histogram of pyramidal neurons
(vertical open arrows). Note also the time-shifted peaks
of pyr-int(a/o) pairs. The discharge
probabilities during no-SPW epochs were low for each
group.
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The state-dependent firing patterns and their interactions suggested
that their summed activity can predict ongoing field activity. When two
or more interneurons were recorded simultaneously, their summed
activity mimicked the cyclic changes of theta activity (Fig.
13). Extrapolation from the slopes of
interneuronal correlations suggested that 25-30 simultaneously
recorded interneurons could describe the field theta with 80%
accuracy. In contrast, the correlation between theta and summed
pyramidal activity was poor. Extrapolation from the slopes indicated
that even as many as 100 pyramidal cells could provide a <0.6
correlation coefficient. The relationship between SPW-associated
ripples and pyramidal activity was better, as indicated by the higher
correlation coefficient values. The converse was true for interneurons,
because their correlation with ripples was poorer than that with theta.
Indeed, some interneuron ensembles exhibited lower correlation with
ripples than did the same number of pyramidal neurons.

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Figure 13.
Correlation between field activity and population
discharge of neurons. A, A short segment of theta
activity (theta) and summed activity of 3 int(p) and 16 pyr. Note the similarity
between theta field and summed interneuron activity. B,
The square of the mean correlation coefficients between unit activity
and theta plotted as a function of the number of simultaneously
recorded neurons. Note that interneurons (int) showed a
more reliable relationship with theta than did pyramidal cells.
Asterisk, Three of the six interneurons recorded from
the alveus and st. oriens. C, The square of the mean
correlation coefficients between unit activity and ripple cycles
plotted as a function of the number of simultaneously recorded neurons
during ripple. Note that pyramidal cell ensembles predict ripples more
reliably than theta, but the reverse is true for interneurons.
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DISCUSSION |
The findings of the present experiments indicate that (1) network
state changes covary with changes in spike dynamics of single cells and
their interactions, (2) the timing of spikes is related to population
rhythms, (3) large discrepancies emerge between net excitation and
inhibition both within and across various rhythms, and (4) the
coefficient of variation of spike intervals of each cell type was
different from unity. During theta oscillations, interneurons
constituted a relatively homogeneous group. In contrast, sets of the
same interneurons demonstrated differential discharge rates during
SPWs. Our findings support the hypothesis that cyclic variation of
excitation and inhibition provides temporal windows of opportunity to
selectively ignore or enhance the effectiveness of presynaptic
activity. Viewing from a broader perspective, the periodically changing
excitability of cortical pyramidal cells may form the basis for
temporal coding of neuronal information (Gray and Singer, 1989 ; Buzsaki
and Chrobak, 1995 ; Hopfield, 1995 ). These observations therefore are in
contrast to the suggestion that inhibition and excitation are balanced
in cortical networks and that spike times of cortical cells can be
described by a simple Poisson process (Softky and Koch, 1993 ; Bair and
Koch, 1996 ; Shadlen and Newsome, 1998 ).
Cyclic changes of hippocampal excitability during theta rhythm
Theta rhythm is the most prominent oscillatory pattern in the
hippocampal formation (Green and Arduini, 1954 ). Although the function
of the theta activity has not been clarified, theta oscillation does
have a large impact on the coordination of neuronal discharges within
and across various hippocampal regions (Rudell et al., 1980 ; Buzsaki et
al., 1981 ; Pavlides et al., 1988 ; Huerta and Lisman, 1995 ). The
discharge probabilities of both pyramidal cells and interneurons varied
as a function of the theta cycle. If pyramidal cells were excited by
random inputs, independent of the afferents driving the interneurons,
one might expect that pyramidal cells should discharge when
interneurons are relatively silent, as is the case in the anesthetized
rat (Buzsaki et al., 1983 ; Ylinen et al., 1995b ; Fox et al.,
1996 ; Kamondi et al., 1998b ). However, this was not the case in
the drug-free animal. On average, int(p) and int(a/o) interneurons
discharged 60 and 20° before the pyramidal cells, respectively (see
also Skaggs et al., 1996 ). The discrepancy may be explained by the
observation that the action potentials of pyramidal cells undergo a
phase precession in the theta cycle while the rat crosses the "place
field" of the recorded unit (O'Keefe and Recce, 1993 ) and by the
assumption that several of our recorded neurons were place cells. Our
observations therefore suggest that a place cell should discharge in
the face of progressively stronger inhibition at earlier phases of the
theta cycle as the rat moves toward the center of the place field. The
behavior-dependent phase shift of pyramidal cell spikes may also
explain why even large numbers of simultaneously active pyramidal cells
predicted the field theta activity so poorly.
SPW and ripples: physiological implications
The hippocampal SPW originates in the recurrent network of CA3
neurons (Buzsaki et al., 1983 ), whose Schaffer collaterals excite the
dendritic fields of CA1 pyramidal cells and interneurons. The
synchronous depolarization of CA1 neurons sets into motion a dynamic
interaction between interneurons and pyramidal cells, reflected by an
oscillatory field potential (ripple) at 140-200 Hz in stratum
pyramidale (Buzsaki et al., 1992 ). The specific synaptic currents
mediating the ripple oscillation are believed to be synchronized
somatic IPSPs of CA1 pyramidal neurons (Ylinen et al., 1995a ).
The mechanism by which highly coherent discharge of pyramidal cells is
brought about over the entire dorsal CA1 region during the ripple is
not understood, however (Chrobak and Buzsaki, 1996 ). Three different
hypotheses have been advanced for the explanation of the spatial
coherence of fast ripples. The first assumes that the CA3 output
produces a voltage-dependent fast discharge in the interneurons and
that synchronization of the interneurons is mediated by gap junctions
(Katsumaru et al., 1988 ). A second explanation is based on the
reciprocal connections between the interneuronal and pyramidal cell
populations. Fast oscillatory discharges in interneurons would, again,
be brought about by the ramp-like depolarizing CA3 output. Chance
discharge of just a few CA1 pyramidal cells within ~1 msec is
hypothesized to reset ongoing oscillatory spiking in the target
interneurons and to generate a short-lived coherent discharge (Ylinen
et al., 1995a ). According to the third hypothesis, zero-time lag
synchronization of pyramidal neurons is brought about by assumed gap
junctions between their axons (Draguhn et al., 1998 ). Our observation
that interneurons in both int(p) and int(a/o) groups followed the
maximum discharge probability of pyramidal neurons by 1-2 msec
supports the latter two models. Furthermore, the finding that the
summed activity of pyramidal cells was often as good a predictor of
ripple waves as interneurons also supports the primary importance of pyramidal cell discharge. Analysis of the spike dynamics of single cells provided further clues to the possible synchronizing mechanism. The gap junction hypothesis predicts that ripple frequency is determined by the interspike intervals of bursting pyramidal neurons. However, in our experiments the ripple frequency was lower (<200 Hz)
than predicted by the interspike intervals of pyramidal cells during
theta and the no-SPW epoch (>250 Hz). Even during SPW there was a
mismatch between the peak of the pyramidal cell autocorrelogram and the
simultaneously recorded ripple frequency. On the other hand, the
interspike intervals of int(p) and most int(a/o) interneurons matched
the frequency of the field ripple. These latter observations are
compatible with the first two hypotheses. Finally, ripples were always
associated with interneuronal with or without local pyramidal cell
discharges. Thus, we suggest that the present findings are in favor of
the pyramidal cell-interneuron interaction hypothesis.
The synchrony of both pyramidal cells and interneurons reached a
maximum during SPW-related ripples. However, relative to no-SPW
baseline epochs, the discharge probability of pyramidal cells increased
6.5-fold during the ripple, whereas interneurons in both groups
increased their discharge probability by only 2.5-3. Thus, there is a
substantial excitatory gain during the SPW, reflecting a period of high
excitability (see also Csicsvari et al., 1998 ). The SPW-associated
population burst may exert a strong depolarizing effect at the targets
of CA1 pyramidal cells and may bring about plastic changes at those
downstream synapses (Buzsaki, 1989 ; Chrobak and Buzsaki, 1994 ; Wilson
and McNaughton, 1994 ). It is not immediately clear, however, why the
increased excitation of pyramidal cells during SPWs is associated with
an increased discharge of interneurons. Because the critical variable
for somatic spike induction is the net depolarization, a relatively
modest increase of dendritic excitation could be equally effective,
provided that the level of inhibition remains unchanged. Parallel
increases in input excitation and inhibition lead to a large decrease
of the input resistance and therefore the electrotonic length of the
neuron (Spruston et al., 1993 ). What could be the physiological
implication of decreased input resistance? It has been shown recently
that shunting and/or hyperpolarizing effects of interneurons
effectively limit the somadendritic propagation of action potentials
(Buzsaki et al., 1996 ; Tsubokawa and Ross, 1996 ). Therefore, it
may be expected that action potentials initiated in the dendrites may
also fail to invade the soma and axon of the pyramidal cells (Kamondi
et al., 1998a ; N. L. Golding and N. Spruston, personal
communication) when interneuronal activity is increased. We
hypothesize that the functional "uncoupling" of the soma and the
dendrite by SPW-induced shunting will allow the dendritic spike bursts
to bring about local changes of the active synapses without
transmitting the high-frequency spike trains as an output via the axon.
A further implication of the interneuron-mediated suppression of
forward spike propagation is that functional "removal" of
inhibitory cells from the network, as has been observed during
afterdischarges (Bragin et al., 1997 ), would allow many more dendritic
spikes to invade the soma and provide an excessive drive to the network.
Functional heterogeneity of interneurons: inhibitory coupling
among interneurons
On the basis of somatic location, we distinguished two groups of
interneurons. Those in the pyramidal layer primarily involve chandelier
cells and basket cells and a portion of bistratified cells (Buhl et
al., 1994 ; Sik et al., 1995 ; Ali et al., 1998 ). Most of these
cells, therefore, are expected to innervate the soma and axon initial
segment of the pyramidal cells. Another common feature of these neurons
is that they can be excited by both CA3 and CA1 pyramidal cells. In
contrast, cells with cell bodies in the alveus and st. oriens include
several interneuron types. Most of these neurons receive selective
innervation from CA1 but not from CA3 pyramidal cells (Sik et al.,
1994 , 1995 ; Blasco-Ibanez and Freund, 1995 ).
Interneurons in the int(p) and int(a/o) groups behaved similarly during
theta activity in terms of theta phase modulation. Only a very small
portion of int(a/o) neurons were selectively suppressed during theta
(antitheta cells) (Buzsaki et al., 1983 ; Bland and Colom, 1989 ;
Mizumori et al., 1990 ). The same group of cells, on the other hand, had
remarkably heterogeneous discharge patterns during SPW. These findings
suggest that the same interneuronal population can deliver different
outputs depending on the selective activation of afferents. Whereas
SPW-related histograms of most int(p) interneurons were similar in
shape to those of the pyramidal cells, the histograms of other int(p)
had peaks both before and after the maximum discharge probability of
pyramidal cells. These bimodal cells likely were activated by the CA3
input before the discharge of CA1 pyramidal cells and were inhibited in
the middle of the ripple by other inhibitory cells.
Interneurons in the st. oriens were also heterogeneous. The majority
were strongly activated during SPWs, and several of them fired spikes
with each ripple wave. The presence of SPW-unrelated cells and anti-SPW
cells in the int(a/o) group suggests that some interneuron types in the
alveus and st. oriens are not or are only weakly innervated by
hippocampal pyramidal cells. Because these neurons discharged
rhythmically during theta, this observation suggests that they exert
only a feed-forward effect on the pyramidal cell population. The
morphological identity of unimodal and bimodal interneurons and
interneurons without pyramidal cell innervation remains to be
demonstrated. It is also possible that each of the functional classes
demonstrated here belongs to morphologically overlapping groups of
interneurons (McMahon et al., 1998 ; Parra et al., 1998 ) and that their
differential discharge properties reflect use-dependent change of their
input synapses.
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FOOTNOTES |
Received Aug. 26, 1998; revised Oct. 12, 1998; accepted Oct. 15, 1998.
This work was supported by National Institutes of Health Grants
NS34994, MH54671, and 1P41RR09754 and by the Human Frontier Science
Program. We thank Darrell A. Henze and M. Recce for their comments on
this manuscript and Jamie Hetke and Ken Wise for supplying us with
silicon probes.
Correspondence should be addressed to Dr. György Buzsáki,
Center for Molecular and Behavioral Neuroscience, Rutgers, The State
University of New Jersey, 197 University Avenue, Newark, NJ 07102.
 |
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M J Gillies, R D Traub, F E N LeBeau, C H Davies, T Gloveli, E H Buhl, and M A Whittington
A model of atropine-resistant theta oscillations in rat hippocampal area CA1
J. Physiol.,
September 15, 2002;
543(3):
779 - 793.
[Abstract]
[Full Text]
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M. Frerking and P. Ohliger-Frerking
AMPA Receptors and Kainate Receptors Encode Different Features of Afferent Activity
J. Neurosci.,
September 1, 2002;
22(17):
7434 - 7443.
[Abstract]
[Full Text]
[PDF]
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R. M. Costa and A. J. Silva
Review Article : Molecular and Cellular Mechanisms Underlying the Cognitive Deficits Associated With Neurofibromatosis 1
J Child Neurol,
August 1, 2002;
17(8):
622 - 626.
[Abstract]
[PDF]
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Y. Fischer, L. Wittner, T. F Freund, and B. H Gahwiler
Simultaneous activation of gamma and theta network oscillations in rat hippocampal slice cultures
J. Physiol.,
March 15, 2002;
539(3):
857 - 868.
[Abstract]
[Full Text]
[PDF]
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X.-J. Wang
Pacemaker Neurons for the Theta Rhythm and Their Synchronization in the Septohippocampal Reciprocal Loop
J Neurophysiol,
February 1, 2002;
87(2):
889 - 900.
[Abstract]
[Full Text]
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C.-C. Lien, M. Martina, J. H Schultz, H. Ehmke, and P. Jonas
Gating, modulation and subunit composition of voltage-gated K+ channels in dendritic inhibitory interneurones of rat hippocampus
J. Physiol.,
January 15, 2002;
538(2):
405 - 419.
[Abstract]
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L. M. Frank, E. N. Brown, and M. A. Wilson
A Comparison of the Firing Properties of Putative Excitatory and Inhibitory Neurons From CA1 and the Entorhinal Cortex
J Neurophysiol,
October 1, 2001;
86(4):
2029 - 2040.
[Abstract]
[Full Text]
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P. A. Gusev and D. L. Alkon
Intracellular Correlates of Spatial Memory Acquisition in Hippocampal Slices: Long-Term Disinhibition of CA1 Pyramidal Cells
J Neurophysiol,
August 1, 2001;
86(2):
881 - 899.
[Abstract]
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H. Hirase, X. Leinekugel, A. Czurko, J. Csicsvari, and G. Buzsaki
Firing rates of hippocampal neurons are preserved during subsequent sleep episodes and modified by novel awake experience
PNAS,
July 19, 2001;
(2001)
161274398.
[Abstract]
[Full Text]
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J. B. Caplan, J. R. Madsen, S. Raghavachari, and M. J. Kahana
Distinct Patterns of Brain Oscillations Underlie Two Basic Parameters of Human Maze Learning
J Neurophysiol,
July 1, 2001;
86(1):
368 - 380.
[Abstract]
[Full Text]
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S. P. Wiebe and U. V. Staubli
Recognition Memory Correlates of Hippocampal Theta Cells
J. Neurosci.,
June 1, 2001;
21(11):
3955 - 3967.
[Abstract]
[Full Text]
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M. Bartos, I. Vida, M. Frotscher, J. R. P. Geiger, and P. Jonas
Rapid Signaling at Inhibitory Synapses in a Dentate Gyrus Interneuron Network
J. Neurosci.,
April 15, 2001;
21(8):
2687 - 2698.
[Abstract]
[Full Text]
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M.-K. Sun, W.-Q. Zhao, T. J. Nelson, and D. L. Alkon
Theta Rhythm of Hippocampal CA1 Neuron Activity: Gating by GABAergic Synaptic Depolarization
J Neurophysiol,
January 1, 2001;
85(1):
269 - 279.
[Abstract]
[Full Text]
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M. C. Quirk, K. I. Blum, and M. A. Wilson
Experience-Dependent Changes in Extracellular Spike Amplitude May Reflect Regulation of Dendritic Action Potential Back-Propagation in Rat Hippocampal Pyramidal Cells
J. Neurosci.,
January 1, 2001;
21(1):
240 - 248.
[Abstract]
[Full Text]
[PDF]
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U. Kraushaar and P. Jonas
Efficacy and Stability of Quantal GABA Release at a Hippocampal Interneuron-Principal Neuron Synapse
J. Neurosci.,
August 1, 2000;
20(15):
5594 - 5607.
[Abstract]
[Full Text]
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D. A. Henze, Z. Borhegyi, J. Csicsvari, A. Mamiya, K. D. Harris, and G. Buzsaki
Intracellular Features Predicted by Extracellular Recordings in the Hippocampus In Vivo
J Neurophysiol,
July 1, 2000;
84(1):
390 - 400.
[Abstract]
[Full Text]
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K. D. Harris, D. A. Henze, J. Csicsvari, H. Hirase, and G. Buzsaki
Accuracy of Tetrode Spike Separation as Determined by Simultaneous Intracellular and Extracellular Measurements
J Neurophysiol,
July 1, 2000;
84(1):
401 - 414.
[Abstract]
[Full Text]
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T. Shew, S. Yip, and B. R. Sastry
Mechanisms Involved in Tetanus-Induced Potentiation of Fast IPSCs in Rat Hippocampal CA1 Neurons
J Neurophysiol,
June 1, 2000;
83(6):
3388 - 3401.
[Abstract]
[Full Text]
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O. Jensen and J. E. Lisman
Position Reconstruction From an Ensemble of Hippocampal Place Cells: Contribution of Theta Phase Coding
J Neurophysiol,
May 1, 2000;
83(5):
2602 - 2609.
[Abstract]
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G. Maccaferri, J David, B Roberts, P. Szucs, C. A Cottingham, and P. Somogyi
Cell surface domain specific postsynaptic currents evoked by identified GABAergic neurones in rat hippocampus in vitro
J. Physiol.,
April 1, 2000;
524(1):
91 - 116.
[Abstract]
[Full Text]
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R. D. Traub and A. Bibbig
A Model of High-Frequency Ripples in the Hippocampus Based on Synaptic Coupling Plus Axon-Axon Gap Junctions between Pyramidal Neurons
J. Neurosci.,
March 15, 2000;
20(6):
2086 - 2093.
[Abstract]
[Full Text]
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C. King, D. A Henze, X. Leinekugel, and G. Buzsaki
Hebbian modification of a hippocampal population pattern in the rat
J. Physiol.,
November 15, 1999;
521(1):
159 - 167.
[Abstract]
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Z. Nadasdy, H. Hirase, A. Czurko, J. Csicsvari, and G. Buzsaki
Replay and Time Compression of Recurring Spike Sequences in the Hippocampus
J. Neurosci.,
November 1, 1999;
19(21):
9497 - 9507.
[Abstract]
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C. A. Chapman and J.-C. Lacaille
Cholinergic Induction of Theta-Frequency Oscillations in Hippocampal Inhibitory Interneurons and Pacing of Pyramidal Cell Firing
J. Neurosci.,
October 1, 1999;
19(19):
8637 - 8645.
[Abstract]
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G. Dragoi, D. Carpi, M. Recce, J. Csicsvari, and G. Buzsaki
Interactions between Hippocampus and Medial Septum during Sharp Waves and Theta Oscillation in the Behaving Rat
J. Neurosci.,
July 15, 1999;
19(14):
6191 - 6199.
[Abstract]
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B. Kocsis, A. Bragin, and G. Buzsaki
Interdependence of Multiple Theta Generators in the Hippocampus: a Partial Coherence Analysis
J. Neurosci.,
July 15, 1999;
19(14):
6200 - 6212.
[Abstract]
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H. Hirase, X. Leinekugel, A. Czurko, J. Csicsvari, and G. Buzsaki
Firing rates of hippocampal neurons are preserved during subsequent sleep episodes and modified by novel awake experience
PNAS,
July 31, 2001;
98(16):
9386 - 9390.
[Abstract]
[Full Text]
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J. Csicsvari, H. Hirase, A. Czurko, A. Mamiya, and G. Buzsaki
Fast Network Oscillations in the Hippocampal CA1 Region of the Behaving Rat
J. Neurosci.,
August 15, 1999;
19(16):
RC20 - RC20.
[Abstract]
[Full Text]
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H. Hirase, X. Leinekugel, J. Csicsvari, A. Czurko, and G. Buzsaki
Behavior-Dependent States of the Hippocampal Network Affect Functional Clustering of Neurons
J. Neurosci.,
May 15, 2001;
21(10):
RC145 - RC145.
[Abstract]
[Full Text]
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Y. Fischer, L. Wittner, T. F Freund, and B. H Gahwiler
Simultaneous activation of gamma and theta network oscillations in rat hippocampal slice cultures
J. Physiol.,
March 15, 2002;
539(3):
857 - 868.
[Abstract]
[Full Text]
[PDF]
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