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J Neurophysiol (February 1, 2003). 10.1152/jn.00757.2002
Submitted on Submitted 4 September 2002; accepted in final form 3 October 2002
Department of Pharmacology and Toxicology, Michigan State University, East Lansing, Michigan 48824
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ABSTRACT |
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Das, Mahasweta, Gerard L. Gebber, Susan M. Barman, and Craig D. Lewis. Fractal Properties of Sympathetic Nerve Discharge. J. Neurophysiol. 89: 833-840, 2003. Fano factor analysis and dispersional analysis were used to characterize time series of single and multifiber spikes recorded from the preganglionic cervical sympathetic nerve and cardiac-related slow-wave activity of the whole postganglionic sympathetic vertebral nerve (VN) in anesthetized cats. Fluctuations in spike counts and interspike intervals for single preganglionic fibers proved to be fractal (i.e., time-scale invariant), as reflected by a power law relationship between indices of the variance of these properties and the window size used to make the measurements. Importantly, random shuffling of the data eliminated the power law relationships. Fluctuations in spike counts in preganglionic multifiber activity also were fractal, as were fluctuations in the height and of the area of cardiac-related slow waves recorded from the whole postganglionic VN. These fractal fluctuations were persistent (i.e., positively correlated), as reflected by a Hurst exponent significantly >0.5. Although fluctuations in the interval between cardiac-related VN slow waves were random, those in the interval between heart beats were fractal and persistent. These results demonstrate for the first time that apparently random fluctuations in sympathetic nerve discharge are, in fact, dictated by a complex deterministic process that imparts "long-term" memory to the system. Whether such time-scale invariant behavior plays a role in generating the fractal component of heart rate variability remains to be determined.
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INTRODUCTION |
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Whereas the naturally occurring
action potentials of single neurons in the cat rostral ventrolateral
medulla (RVLM) are correlated to the cardiac-related and 10-Hz rhythmic
components of postganglionic sympathetic nerve discharge (SND), these
neurons miss firing in a variable number of rhythmic cycles and exhibit
periods of quiescence lasting several seconds or longer (Lewis
et al. 2001
). As such, the interspike intervals (ISIs) of these
RVLM-spinal presympathetic neurons are distributed exponentially or in
a gamma-like fashion. Traditionally, these distributions have been
modeled as random Poisson processes in which the ISIs are uncorrelated
(Cox and Lewis 1966
; Tuckwell 1988
).
Nevertheless, exponential and gamma-like distributions are also
characteristic of time series in which long-range correlations exist
(Teich 1989
, 1992
). Such time series are best described
as fractal point processes. Fractal point processes are characterized
by long-range correlations among events extending over multiple time
scales (Bassingthwaighte et al. 1994
; Liebovitch 1998
; West 1990
). Such statistical
self-similarity or time-scale invariant behavior is revealed by methods
that test for a power law relationship between the variance of some
property and the resolution (e.g., window length) used to make the
measurements. In a study from our laboratory (Lewis et al.
2001
) on brain stem presympathetic neurons, we used Fano factor
analysis to demonstrate such a relationship, as reflected by the
proportionality to a power of fluctuations in spike counts measured
over short periods (approximately 1 s) to those measured on longer
time scales (
100 s). The long-range correlations so revealed reflect
a form of memory in that the current value of the measured property is
dependent on events in the "distant" past (i.e., largest window size).
Long-range correlations are also characteristic of time series of the
intervals between heart beats in healthy humans (Goldberger 1992
; Goldberger et al. 1996
; Ivanov et
al. 1999
). This has attracted the interest of cardiologists,
since the fractal component of heart rate variability (HRV) is
diminished with aging and in patients with congestive heart failure
(Goldberger et al. 1996
; Goldberger and Rigney
1991
). Whereas it has been suggested that autonomic outflows to
the sinoatrial node in some way contribute to fractal HRV
(Goldberger et al. 1996
; Yamamoto and Hughson
1994
; Yamamoto et al. 1995
), it is not known
whether SND and/or cardiac vagal nerve activity themselves contain
fractal components. The current study was designed to test this
possibility for SND in view of our past findings on brain stem unit
activity. Specifically, we have addressed the following questions.
1) Do long-range correlations exist among the ISIs of
individual preganglionic sympathetic neurons (PSNs)? 2) Are
fluctuations in activity recorded from populations of PSNs and whole
postganglionic sympathetic nerves fractal in nature? 3) What
is the nature of the long-range correlations in SND? In particular, is
fractal activity characterized by positive (persistent) or negative
(antipersistent) correlations? 4) Does fractal SND coexist
with fractal HRV in the same cats?
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METHODS |
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General procedures
The experimental protocols described below were approved by the
All-University Committee on Animal Use and Care of Michigan State
University. The experiments were performed on 11 spontaneously breathing, baroreceptor-intact cats anesthetized by intraperitoneal injection of a mixture of diallylbarbiturate (60 mg/kg), urethan (240 mg/kg), and monoethylurea (240 mg/kg). A surgical state of anesthesia
was indicated by the failure of noxious stimuli (pinch, muscle
cauterization) to desynchronize spindles and delta-slow wave activity
in the frontal-parietal electroencephalogram (Gebber et al.
1999
; Steriade and Llinas 1988
). Blood pressure
was measured from a femoral artery, and 6% dextran in normal saline
was infused into a femoral vein at a rate of 6 ml/h. Body temperature
was maintained near 37°C with a heat lamp, and end-tidal
CO2 was in the range of 3.5 to 5% (Transverse
Medical Monitors Capnometer, model 2200).
Nerve recordings
Multiunit activity was recorded from thin strands teased from
the left preganglionic cervical sympathetic nerve using the method
described by Koley et al. (1989)
. The recordings were
made from the central end of the strand with bipolar platinum
electrodes and a preamplifier band-pass of 300-3,000 Hz. On-line
analog window discrimination was used to isolate multiunit spikes from
background noise. Spike-sorting software (RUN Technologies, Mission
Viejo, CA) was used off-line to separate the spikes of different
preganglionic fibers making up the multiunit recording field. Spikes
were grouped into separate files based on similarities in spike height,
width, shape, depolarization velocity, and other characteristics. A
minimum ISI of
60 ms was taken as an indication that the spikes in a file arose from a single fiber (Mannard and Polosa
1973
).
Bipolar platinum electrodes were used to record monophasically from the
central end of the cut whole postganglionic vertebral sympathetic nerve
(VN) near its exit from the left stellate ganglion. VN recordings were
made with a preamplifier band-pass of 1-1,000 Hz. Bursts of multiunit
activity (envelopes of spikes) appear as slow waves when this
preamplifier band-pass is used (Cohen and Gootman 1970
;
Gebber et al. 1994
).
Spike train analysis
The action potentials of single PSNs (spike-sorted files) or
groups of preganglionic cervical sympathetic fibers were represented by
standardized 5-V square-wave pulses (2 ms in duration). From time
series of these pulses, we counted the number of spikes in bins of
designated length (single and multiunit activity) and measured ISIs
using software written in our laboratory by C. D. Lewis
(Gebber et al. 1999
). Tests were performed to determine whether fluctuations in these parameters were fractal or random in nature.
The first test involved calculation of the Fano factor for window sizes
of different lengths. The Fano factor, F(T) as
used by Teich (1992)
and Lewis et al.
(2001)
, is defined as the variance of the number of spikes
divided by the mean number of spikes in a time window of length
T
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10
nonoverlapping windows are used for each measure of F(T). For a random process in which fluctuations
in spike counts are uncorrelated, F(T) is 1 for
all window sizes (Teich 1989
. Alpha, the
scaling exponent, is the power to which fluctuations in spike counts on
one time scale are proportional to those on larger time scales. The
correlation coefficient (r value) is used as a test for
linearity on the log-log scale, and linear regression is used to
calculate
.
Whether a power law relationship in the Fano factor curve truly
reflects a fractal process, and thus long-range correlations of events,
is tested by constructing surrogate data sets in which ISIs have been
randomly shuffled. Specifically, we assigned random numbers to the ISIs
in the original time series and then sorted the random numbers by size.
This creates a randomized data set whose mean ISI, ISI variance, and
ISI histogram are identical to those of the original spike train, but
with no correlations among events (Teich and Lowen
1994
). If shuffling of ISIs eliminates the power law
relationship, then it can be concluded that the ISIs in the original
time series were ordered and interdependent. We routinely compared the
Fano factor curve for the original spike train with those for 10 or 20 surrogates, thereby approximating 90 or 95% confidence limits.
Dispersional analysis (DA) was also used to test for fractal properties
of single-unit spike trains. The algorithm developed by
Bassingthwaighte and Raymond (1995)
involves calculation
of the SD of the mean values of the ISI for groups of data points of a
specified number (m). Specifically, the mean ISI for each group of m data points is obtained and the SD of these
values is calculated for the total number of groups. The process is
repeated each time m is increased progressively from a
minimum of one data point to a maximum of one-quarter of the total
number of data points. SD is then plotted against m on a
log-log scale yielding a straight line with a negative slope. The slope
is used to calculate the Hurst (H) exponent using the
formula
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0.5 implies that the time series is fractal. When H > 0.5, the long-range correlations
among events are positive [persistence; values larger (smaller) than
the mean tend to be followed by values also larger (smaller) than the
mean]. When H < 0.5, the correlations are negative
(antipersistence; values larger than the mean tend to be followed by
values smaller than mean and vice versa). As with Fano factor analysis,
the DA curve for the original time series is compared with those for surrogate data blocks (H ~ 0.5).
Slow trends in the data may lead to erroneous conclusions when using
DA. For example, a progressive increase or decrease in ISI would be
interpreted as persistence (H > 0.5) even when the spike train lacks true fractal properties. For this reason, we also
performed DA on first differences derived from the original time
series. In the case of ISIs, a new time series of the absolute differences between successive intervals is constructed. The first difference, D(I) takes the form
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HRV and VN activity
Ordinary and detrended DA were used as tests for fractal
fluctuations of the intervals between heartbeats and for fractal fluctuations of the following properties of cardiac-related bursts (slow waves) of postganglionic VN activity: 1) interval
between slow waves; 2) trough-to-peak slow-wave height
(normalized on scale of 0 to 1.0); and 3) normalized
slow-wave area. The cardiac interval was the interval (ms) between the
peak systolic phases of successive femoral arterial pulse waves. Time
series of properties 1-3 were constructed after digital band-pass
filtering of the original recordings of VN activity with software
obtained from RC Electronics (Santa Barbara, CA). A symmetric,
nonrecursive filter with a Lanczos smoothing function was used. The
width of the band-pass was between 4 and 6 Hz, with the center
frequency matched to that of the sharp peak at the frequency of the
heartbeat in the autospectrum of SND (Gebber et al.
1999
). The digital filter had a roll-off slope of 39%/Hz
outside of the band-pass. As shown in Fig. 5, the digitally filtered
records of VN activity are smoother than the originals, thus aiding in
the accurate detection of peaks and troughs for time series analysis.
Note that digital filtering produced minimal or no amplitude and phase distortion.
Histograms
Single unit ISI histograms and arterial pulse (AP)-triggered
histograms of single and multiunit preganglionic cervical sympathetic nerve activity were constructed as described in previous reports from
our laboratory (Barman et al. 2002
; Lewis et al.
2001
). Distributions of the intervals between heartbeats or
cardiac-related VN slow waves as well as slow-wave heights and areas
were also constructed.
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RESULTS |
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Preganglionic single fiber activity
The spike trains of 24 single fibers from the cervical sympathetic
nerve were tested for fractal properties using Fano factor analysis and
DA. These files were obtained from 13 multifiber preparations (6 cats)
using the spike-sorting software. The number of spikes contained in
these files ranged from 540 to 7,010. A time series was considered
fractal irrespective of the number of spikes it contained providing
that 1) a power law relationship was present in the Fano
factor curve for the original data, but not in those for
10 surrogate
data blocks and 2) the H exponent derived by
detrended DA fell outside of the range of values for the surrogate data
blocks. The spike train was considered not to have fractal properties
if conditions 1 and 2 were not met when the number of spikes in the
time series was
2,000. The rationale for using this number is based
on our work with brain stem presympathetic neurons showing that the
percentage of spike trains with fractal properties is dependent on
sample size and reaches 100 when the time series contains
2,000
spikes. As such, we were able to classify 15 of 24 files of
single-fiber activity as fractal. There were 9 files that could not be
classified because the spike train contained <2,000 spikes and the
Fano factor and detrended DA curves for the original spike train did
not differ from those of the surrogates. There were no files containing
2,000 spikes (n = 7) that were nonfractal.
Figure 1 shows the results for the spike
train of a single PSN with cardiac-related activity. The time series of
ISIs was nearly 2,000 s in length (Fig. 1C) and contained
3,130 spikes, which are superposed in Fig. 1A. Note the
clustering of relatively long intervals near the beginning of the time
series. Clusters of long and/or short intervals are characteristic of
fractal point processes (Teich 1989
) and may appear at
any position in the time series (compare Figs. 1C with
2C). Such clusters account for the increase in variance of
spike counts with increasing window size, which, in turn, leads to a
power law relationship in the Fano factor curve. The AP-triggered
histogram of PSN activity is shown in Fig. 1B. Note that the
probability of PSN discharge was highest during the diastolic phase of
the AP. The ISI histogram was gamma-like in shape with a coefficient of
variation (CV) of 0.74 (Fig. 1D). The minimum and modal ISIs
were 136 and 302 ms, respectively. The mean ISI was 630 ms; thus PSN
discharge rate averaged 1.6 Hz. The Fano factor curve for the original
spike train (Fig. 1E, single black line) shows a power law
relationship with a slope of 0.75 (
, scaling exponent) beginning at
a window size near 3 s. The scaling exponent was calculated for
the range of window sizes between 3 and 187 s, thus meeting the 10 nonoverlapping window requirement for determining
F(T) accurately (see METHODS). Within
this range, the curve for the real data clearly deviated from the
superposed curves for 10 surrogate data blocks (Fig. 1E,
gray region). Therefore the power law relationship can be attributed to
long-range correlations among ISIs. For window sizes < 3 s,
the values of F(T) for the real data were the
same as those for the surrogate data blocks. F(T)
was close to 1.0 for window sizes less than the minimum ISI. This
feature of the Fano factor curve is consistent with a Bernoulli process
with a low probability of success (Teich 1992
). This is
explained by the fact that, for very small windows, the spike count can
be either zero or one, with the former more likely to occur. For window
sizes between the minimum ISI and approximately 3 s,
F(T) dipped below 1.0 and reached its lowest
value near the modal ISI. The extent of the dip is related to skewness
of the ISI histogram (Teich 1992
). In general, the more
symmetric the histogram, the greater the dip (compare Figs. 1,
D and E, with 2, D and E).
The skewed distribution of the Fano factors at large window sizes in
the curves for the surrogates is more apparent than real because of the
log-log scaling. Nonetheless, some skewness toward values < 1.0 is expected because the distribution of ISIs did not fit a pure
exponential (Teich and Lowen 1994
).
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The results of detrended DA (Fig. 1F) also point to the fractal nature of the spike train of this PSN. Note that the slope of the curve for the real data (single black line) was relatively flat as compared with those of the superposed curves for 10 surrogates (gray region). The range over which the slopes of the curves for the real data and surrogates differed was for groups (m) of between 10 and 280 data points. In this case, the H exponent calculated from the negative slope of the curve for the real data was 0.88. The H exponent for the surrogates ranged from 0.42 to 0.55.
The results in Fig. 2 are for the spike
train of a PSN that lacked cardiac-related activity (Fig.
2B). For window sizes
1 s, the slope of the
power law relationship in the Fano factor curve for the real data was
0.71 (Fig. 2E, single black line). In contrast, the curves
for 10 surrogate data blocks were flat, with F(T)
hovering near 1.0 (gray region). The H exponent derived by
detrended DA for the real data was 0.89 for m of between 5 and 720 data points (Fig. 2F). The DA curve in this range
clearly fell far from the curves for the surrogate data blocks. The
number of spikes in this time series was 2,888 and the mean discharge rate was 1.7 Hz. The CV of the ISI histogram (Fig. 2D) was
1.2, and the minimum ISI was 72 ms. The highly asymmetric shape of the
ISI histogram is consistent with the virtual absence of a dip in the
Fano factor curve for window sizes < 1 s.
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The properties of the fractal spike trains of 15 single PSNs, 8 with and 7 without cardiac-related activity, are summarized in Table 1. Note that the properties were generally similar for the two groups. However, mean blood pressure was significantly lower (P < 0.05; unpaired t-test) for the group of PSNs lacking cardiac-related activity. Also note that the H exponents derived by detrended DA were not significantly different from those obtained using ordinary DA. The H exponent was persistent in every case, indicating that the long-range correlations among ISIs were positive.
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Preganglionic multifiber activity
Fano factor analysis was used to test for fractal fluctuations in
spike counts recorded from 16 multifiber strands teased from the
preganglionic cervical sympathetic nerve (6 cats). Each strand
contained between two and five active units, some of which only
occasionally emitted a spike. Fluctuations in spike counts were fractal
for 13 of 16 multifiber fields. The smallest number of spikes in the 16 fields was 2,043. A case of fractal multifiber activity is illustrated
in Fig. 3. This field had cardiac-related activity with peak counts occurring during diastole (Fig.
3A). The nearly 2,000-s-long time series in Fig.
3B shows the number of spikes counted in 20-s bins. In this
case, there was a tendency toward increased multifiber activity during
the recording period. The total number of spikes in the time series was
5,784. The Fano factor curve for the real data (Fig. 3C,
single black line) shows a power law relationship with a slope (
) of
0.72 beginning at a window size of approximately 2 s. In contrast,
after an initial dip below F(T) = 1.0, the
curves for 10 surrogates data blocks were essentially flat (gray
region). Thus shuffling of the ISIs in multifiber time series
effectively randomized the number of spike counts in successive windows
of specified length.
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Three of 16 multifiber fields did not exhibit fractal fluctuations in spike counts despite the fact that these time series contained no less than 3,071 action potentials. An example is shown in Fig. 4. In this case, there was little or no cardiac-related activity (Fig. 4A). Note that the Fano factor curve for the original time series (Fig. 4C, single black line) fell within the range of the curves for 10 surrogate data blocks (gray region).
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The properties of the 16 multifiber spike trains are summarized in Table 2. Note that the majority of both the fractal and nonfractal time series exhibited cardiac-related activity. Mean firing rates were similar for the two groups. The slope of the power law relationship in the Fano factor curves for the 13 multiunit fractal time series was not significantly different from those in the curves for single fiber activity (see Table 1).
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DA of preganglionic multifiber activity was not performed so as to avoid dealing with "mixed" populations of ISIs. The intervals would include those between the spikes of the same unit (whether fiber 1, 2, or n) and those between the spikes of different sets of unit pairs (fibers 1 and 2, 2 and n, etc.). The sequence of such "mixed" intervals might be random even when fluctuations in spike counts for the total population of active fibers were proven to be fractal by Fano factor analysis.
Postganglionic SND and HRV
Femoral blood pressure and the activity of the whole
postganglionic VN were recorded in five cats. As illustrated in Fig. 5, we made cycle-by-cycle measurements of
the cardiac interval (CI), the interval between successive
cardiac-related slow waves of VN activity (SWI), trough-to-peak
normalized slow-wave height (referred to as SWH), and normalized
slow-wave area (SWA). The measurements of VN activity were made from
digitally filtered records (see METHODS). Time series
containing
2,000 readings of these parameters were constructed, after
which DA was performed.
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The results of one of the five experiments are illustrated in Figs. 6 and 7. The time series in Fig. 6, A-D (left), are 900 s in length and contain 2,120 (CI and SWI) or 2,121 (SWH and SWA) measurements. The corresponding histograms (Fig. 6, A-D, right) show the distribution of these measurements. Values of the four parameters were distributed normally and mean CI and mean SWI were identical (425 ms). Because slow trends (decrease in CI and SWI, increase in SWH) appeared in the time series, the decision on whether momentary fluctuations in a particular parameter were fractal in nature was made on the basis of detrended DA rather than ordinary DA.
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Figure 7 shows the results of detrended DA of the time series illustrated in Fig. 6. The slopes of the curves for CI, SWH, and SWA, but not SWI (real data; single black line) were flatter than those for 10 surrogate data blocks (gray region) over the following ranges of m: 5-540 (CI); 40-540 (SWH); and 30-540 (SWA). H exponents derived from the negative slopes were 0.67 (CI), 0.67 (SWH), and 0.76 (SWA). H exponents for SWI and the surrogates for each of the parameters were close to 0.5. These results were typical of those observed in four of five cats. None of the parameters were fractal in the other cat.
The results of DA in the four cats showing fractal fluctuations are summarized in Table 3. The following points should be noted. 1) Fractal H exponents for CI, SWH, and SWA obtained with detrended DA were persistent, but lower than those obtained with ordinary DA. 2) The fractal range (detrended DA) began at a smaller value of m for CI than for SWH or SWA. 3) Although ordinary DA yielded highly persistent H for SWI, the H exponents derived with detrended DA were indistinguishable from those for the surrogates.
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DISCUSSION |
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Various methods of fractal analysis have been used to test for
time-scale invariant behavior of biological signals that appear to be
either periodic or aperiodic (Bassingthwaighte et al.
1994
; Goldberger et al. 1996
; Ivanov et
al. 1999
; Teich 1992
: Yamamoto and
Hughson 1994
). In the case of an apparently periodic signal such as the heart beat, the question entertained is whether relatively small fluctuations in CI occur randomly or are correlated over multiple time scales. The question is the same for the fluctuations of
aperiodic signals. In the current study, time series of pre- and
postganglionic sympathetic activity and CI were tested for time-scale
invariant behavior using two established methods of fractal analysis.
Fano factor analysis was applied to time series of single and
multifiber activity from the preganglionic cervical sympathetic nerve
to determine whether fluctuations in spike counts were fractal. DA
provided additional information as to whether the ISIs in time series
of single-fiber activity were positively (persistence) or negatively
(antipersistence) correlated. DA was not applied to preganglionic
multifiber activity to avoid calculations based on mixed populations of
ISIs (intervals between spikes of the same vs. different fibers),
possibly occurring in a random sequence. Nevertheless, DA was used to
test for fractal fluctuations in the height, area, and intervals
between cardiac-related slow waves recorded from the whole
postganglionic VN and the intervals between heartbeats. The Fano factor
curves for these parameters are not presented in this paper. These
curves contained large dips of F(T) to values
well below 1.0 over a wide range of window sizes due to the highly
symmetric (i.e., normal) distribution of these parameters (see Fig. 6).
These profound dips act to obscure power law relationships more readily
revealed in this study by DA.
Our major findings are as follows. 1) Fluctuations in spike
counts and ISIs were fractal over a large range of window sizes for all
single PSN time series that contained
2,000 spikes. Moreover, the
long-range correlations of ISIs were persistent in every case. 2) Fluctuations in preganglionic multifiber spike counts
were fractal in the majority (13 of 16) of cases. 3)
Fluctuations in the height and area but not the interval between
cardiac-related slow waves of postganglionic VN activity were fractal
and persistent in most (4 of 5) cats. Fluctuations in CI were fractal
in the same experiments. These findings and their implications are
discussed in the following text.
The preganglionic cervical sympathetic nerve is functionally
heterogeneous in that it contains fibers controlling blood vessel diameter, pupil size, nictitating membrane contraction, pilomotion, and
sweating (Bishop and Heinbecker 1932
; Eccles
1935
). Whether the spike trains of each of these fiber types
are fractal cannot be decided on the basis of the currently available
data. Although PSNs governing vasoconstriction are reputed to have the
strongest cardiac-related activity (Janig 1988
), the
fact that the spike trains of single PSNs were fractal independent of
whether their discharges were cardiac related turned out not to be
helpful. Regarding this issue, mean blood pressure was significantly
lower in the cases in which the spike train did not contain
cardiac-related activity (see Table 1). Thus these PSNs may not have
been functionally distinct from those with cardiac-related activity.
Rather, baroreceptor input may have been too weak to induce
cardiac-related activity at lower blood pressures.
In a previous study (Lewis et al. 2001
) on brain stem
neurons with activity correlated to the cardiac-related or 10-Hz
rhythmic component of SND, we found that the percentage of fractal
spike trains (n = 19) reached 100 when the time series
contained
2,000 spikes. On this basis, we proposed that all such
neurons have fractal firing patterns. We are reticent to propose the
same for PSNs because only a small sample of time series containing
this number of spikes was obtained in the current study.
Fluctuations in spike counts were fractal for the majority (13 of 16)
of time series of multifiber preganglionic activity. This observation
raises the possibility that groups of PSNs share common fractal inputs
possibly from the brain stem (Lewis et al. 2001
) or that
time-scale invariant behavior generated independently by individual
neurons in the brain stem and/or spinal cord is somehow synchronized.
These possibilities are deserving of future investigation since
synchronization of the fractal discharges of populations of sympathetic
neurons might play a role in explaining the fractal component of HRV.
HRV in awake humans is characterized not only by respiratory-related
and slower third-order fluctuations, but also by a time-scale invariant
component extending over a very low frequency (0.00003 to 0.1 Hz) range
(Goldberger et al. 1996
; Ivanov et al.
1999
; Malliani et al. 1991
; Yamamoto and
Hughson 1994
). In the current study, we found fractal
fluctuations in CI recorded from cats anesthetized with dial-urethane.
DA revealed persistent correlations among CIs for groups (m)
of between 7 and 653 data points. Population activity recorded from the
whole postganglionic VN in the same cats also exhibited persistent
fractal properties over a somewhat shorter range of window sizes (see
Table 3). Specifically, fluctuations in the height and area of
cardiac-related VN slow waves were fractal. As was the case for CI,
H exponents derived for these properties were persistent but
lower in value when detrended DA was substituted for ordinary DA.
Although ordinary DA yielded persistent H exponents for
fluctuations in the interval between cardiac-related VN slow waves,
those derived with detrended DA were not significantly different from
0.5. Thus it is likely that slow trends in the time series of SWI
rather than true fractal behavior accounted for the persistent
H derived by using ordinary DA.
The fractal component of HRV in humans is diminished with aging and in
cardiovascular diseases such as heart failure (Goldberger 1992
; Goldberger et al. 1996
; Ivanov et
al. 1999
). As such, methods of fractal analysis have recently
been introduced into the cardiology clinic. Because of the clinical
implications attached to the loss of fractal HRV, it becomes even more
important to identify the mechanisms responsible for time-scale
invariant fluctuations in CI. There are conflicting views concerning
the role played by autonomic outflows to the heart. Whereas
Goldberger et al. (1996)
have postulated that the
fractal component of HRV in healthy humans arises from a nonlinear
interaction of sympathetic and vagal influences on the SA node,
Yamamoto and Hughson (1994)
reported that the power law
relationship in power spectrum of CI in humans is minimally affected by
-adrenoceptor blockade. Whether sympathetic outflow is involved in
generating fractal HRV in the cat remains to be investigated. This
possibility seems more attractive in the light of our finding that both
pre- and postganglionic sympathetic activities contain fractal components.
Fractal fluctuations in the height and area of cardiac-related bursts
of postganglionic VN activity indicate that a time-scale invariant
process is involved in determining the number of active neurons and/or
their firing rate during each cardiac cycle. At first glance, the fact
that fluctuations in the interval between cardiac-related bursts of VN
activity were not fractal seems surprising since fluctuations in CI
were fractal in the same cats. However, it should be remembered that
the phase angle relating SND to the AP in the cat shows considerable
variability on a heart beat-to-beat basis (Larsen et al.
2000
; Lewis et al. 2000
). This arises from the
fact that the cardiac-related rhythm in SND is not the simple consequence of constant latency central inhibition of baroreceptor reflex origin. Rather, cardiac-related bursts are forced nonlinear oscillations whose timing relative to pulse-synchronous baroreceptor input can assume many different values (Larsen et al.
2000
; Lewis et al.2000
). Thus CI might fluctuate
in a time-scale invariant manner while fluctuations in the interval
between cardiac-related bursts of SND occur randomly. At any rate, if
fractal SND plays a role in generating fractal HRV, the properties of
SND so responsible would apparently be SWH and SWA.
In summary, we have demonstrated that apparently random fluctuations in activity recorded from PSNs and the postganglionic VN are, in fact, fractal in nature. Such properties include spike counts, ISIs, and population burst height and area. Time series of these properties should not be modeled as random, stochastic processes comprised of uncorrelated events. Rather, the time-scale invariant fluctuations are dictated by a complex deterministic process that imparts a type of "long-term" memory into the system responsible for SND, as reflected by long-range, positive correlations among events. Thus, for example, the current value of the ISI is determined not only by recent events, but also by those in the "distant" past (range over which a power law relationship appears in the Fano factor and DA curves). It remains to be investigated whether the fractal properties of SND play a role in generating the fractal component of HRV that is typical of the "healthy" cardiovascular state.
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ACKNOWLEDGMENTS |
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The authors thank L. M. Braybrook for typing the manuscript.
This study was supported by National Heart, Lung, and Blood Institute Grants HL-13187 and HL-33266.
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FOOTNOTES |
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Address for reprint requests: G. L. Gebber, Department of Pharmacology and Toxicology, Michigan State University, East Lansing, MI 48824 (E-mail: gebber{at}msu.edu).
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REFERENCES |
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Am J Physiol Regulatory Integrative Comp Physiol
266:
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