Title: Signal Averaged ECG
1Signal Averaged ECG
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8High Resolution Electrocardiography
- A high-resolution electrocardiogram detects very
low amplitude signals in the ventricles called
'Late Potentials' in patients with abnormal heart
conditions. - A standard electrocardiogram cannot detect these
signals. - The presence of late potentials is widely
accepted to have prognostic significance in
patients after AMI
9SAECG
- The ECG is a graphical representation of the
electrical potentials generated by the heart - Based on the resolution of the digital recording
of analog ECG signals, the instruments
techniques may be categorized into 2 types ? 1)
Low-resolution (or standard) ECG, and ? 2)
High-Resolution ECG (HRECG) - A standard 12-Lead ECG is a typical example of a
widely used low-resolution instrument that
records 9 sec of cardiac data - A SAECG is a typical example of a High-Resolution
ECG - SAECG records ventricular ECG signals of very low
magnitudes called 'Ventricular Late Potentials'
(VLP) by averaging a number of signals (QRS) - The presence of VLPs is indicative of ?risk for
subsequent occurrence of arrhythmic events,
mainly SuVT
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12An HRECG instrument consists of 4 key components
1) Amplifiers, 2) Bandpass filters, 3)
Analog/Digital converter, and 4) SAECG Processor.
The SAECG Processor may in turn be functionally
divided into the following components a)
Signal Averager, b) Bidirectional Bandpass
Filter, c) Filtered Vector Magnitude, d) SAECG
Quantifier. In addition, the instrument
includes 7 ECG leads. These leads are bipolar,
orthogonal electrodes comprising X, X-, Y, Y-,
Z, Z-, ground placed in a particular fashion
on the body surface. These electrodes are
usually referred to as XYZ leads.
13SAECG
- Signal-averaged electrocardiography (SAECG) is a
technique involving computerized analysis of
segments of a standard surface electrocardiogram.
- It is used for detecting small electrical
impulses, termed ventricular late potentials,
that follow the QRS segment. - These signals are embedded in the
electrocardiogram but ordinarily obscured by
skeletal muscle activity and other extraneous
sources of "noise" encountered in recording a
standard electrocardiogram.
14Late Potentials
- Ventricular late potentials in patients with
cardiac abnormalities, especially coronary artery
disease or following an acute myocardial
infarction, are associated with an increased risk
of ventricular tachyarrhythmias and sudden
cardiac death. - Proponents of SAECG claim that it can obviate the
need for invasive techniques commonly used to
identify high-risk patients for interventions
that treat or prevent ventricular tachyarrhythmia
and sudden death.
15SAECG
- The current data on SAECG show relatively
consistent high negative predictive values, poor
positive predictive values, and variable
sensitivity and specificity when the technique is
used on pts with CM or following a MI - The available evidence also indicates that
combining SAECG with other tests of cardiac
function is superior to using any single test for
risk. - The utility of SAECG alone as an indicator of
risk remains to be proven. - SAECG combined with other standard tests of risk
has been demonstrated to have clinical utility in
patients following an acute myocardial
infarction. - Other patient populations have not been
conclusively shown to benefit from its use.
16SAECG Normal (left) and abnormal (right)
results are shown from a patient with prior MI
and VT. Bottom panels Shaded blue areas at the
end of each tracing represent voltage content of
last 40 ms of the filtered QRS integral. The
small shaded area in the abnormal study denotes
prolonged, slow conduction and suggests the
potential for reentrant ventricular arrhythmias.
17Late Potentials
- One of the constituents of reentrant ventricular
arrhythmias in patients with prior myocardial
damage is slow conduction. - Direct cardiac mapping techniques can record
myocardial activation from damaged areas that
occurs after the end of the surface ECG QRS
complex during sinus rhythm. - These delayed signals have very low amplitude
that cannot be discerned on routine ECG and
correspond to the delayed and fragmented
conduction in the ventricles recorded with direct
mapping techniques
18SAECG
- Signal averaging has been applied clinically most
often to detect such late ventricular potentials
of 1 to 25 µV - Criteria for late potentials are
- (1) filtered QRS complex duration (QRSD) gt114
120 ms, - (2) lt 20 µV of root-mean-square (RMS) signal
amplitude in the last 40 ms of the filtered QRS
complex, and - (3) the terminal filtered QRS complex remains
below 40 µV (low amplitude signal-LAS) for longer
than 38 ms
19Time-Domain Analysis Results of most studies
have been based on analysis of a vector magnitude
of the filtered leads, vx2y2 z2, called the
filtered QRS complex. The end of the filtered
QRS complex is defined as the midpoint of a 5
msec segment in which mean voltage exceeds the
mean noise level plus 3 times the standard
deviation of the noise sample. The end point and
onset of the filtered QRS complex should be
verified visually, and the system should allow
manual adjustment of the automatically
determined end points.
20SAECG Criteria
- Analysis should include determination of
- 1) the filtered QRS duration
- 2) root mean square voltage of the terminal 40
msec of the filtered QRS and - 3) amount of time that the filtered QRS complex
remains below 40 µV - For the definition of a late potential and the
scoring of a high-resolution ECG as normal or
abnormal - Representative criteria include that a late
potential exists (using 40 Hz high-pass
bidirectional filtering) when - 1) the filtered QRS complex is greater than 114
msec, - 2) there is less than 20 µV of signal in the last
40 msec of the vector magnitude complex, and - 3) the terminal vector magnitude complex remains
below 40 µV for more than 38 msec
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23Late Potentials
- These late potentials have been recorded in 70
90 of patients with spontaneous sustained and
inducible VT after myocardial infarction, - in only 0 to 6 of normal volunteers, and
- in 7 to 15 of patients after myocardial
infarction who do not have VT
24Late Potentials
- Late potentials can be detected as early as 3 h
after the onset of chest pain, increase in
prevalence in the first week after MI, and
disappear in some patients after 1 year. - If not present initially, late potentials usually
do not appear later. - Early use of thrombolytic agents may reduce the
prevalence of late potentials after coronary
occlusion - Patients with BBB or paced ventricular rhythms
have wide QRS complexes already, rendering the
technique less useful in these cases.
25Late Potentials
- Late potentials also have been recorded in
patients with VT not related to ischemia, such as
dilated cardiomyopathies. - Successful surgical resection of the VT can
eliminate late potentials but is not necessary to
cause tachycardia suppression. - The presence of a late potential is a sensitive,
but not specific, marker of arrhythmic risk and
thus its prognostic use is limited
26Late Potentials
- In specific situations, LPs can be helpful
- for instance, a patient with a prior inferior
wall myocardial infarction (normally the last
portion of the heart to be activated) who has no
late potential has a very low likelihood of
having VT episodes.
27SAECG/ Time Domain Analysis
- The high-pass filtering used to record late
potentials meeting the criteria just noted is
called time domain analysis because the filter
output corresponds in time to the input signal. - Because late potentials are high-frequency
signals, Fourier transform can be applied to
extract high-frequency content from the
signal-averaged ECG, called frequency domain
analysis.
28SAECG/ Frequency Analysis
- A sequence generated by sampling a time-domain
signal like the ECG can be represented in the
frequency domain by taking the fast Fourier
transform. - Even though the informational content in time-
and frequency-domain representations of a
periodic waveform is equivalent, the extent to
which each can depict components of interest
depends on the signal being analyzed. - The Fourier transform is a complete description
of the ECG and contains information that may not
be seen in the output of a particular fixed-band
filter. - Frequency analysis offers potential advantages
for identification and characterization of
signals that differentiate patients with from
those without sustained ventricular tachycardia. - Most studies have calculated the fast Fourier
transform to estimate scalar-lead spectra of the
terminal QRS and ST segment of signal-averaged
Frank X, Y, Z or uncorrected orthogonal
leads.11-16,47,59 - The results have often been expressed as indexes
of the relative contributions of specific
frequencies that comprise these ECG segments. - A window function such as the four-term
Blackman-Harris window has been used to diminish
spectral leakage caused by edge discontinuities.
29SAECG/ Frequency Analysis
- Key issues that affect the spectra of ECG signals
are being investigated. For example, the
frequency content of ECG signals is spatially
variable and thus lead dependent. - Indexes derived from spectra of uncorrected leads
may not be comparable to end points or approaches
developed using corrected leads. - Analysis of multiple segments (spectrotemporal
mapping) may allow better separation between
noise and late potentials - The value of autoregressive models of spectral
estimation and analysis of the entire cardiac
cycle with methods that obviate window functions
are currently being determined.6263 - Accordingly, the committee believes it is
premature to standardize this approach at present
30SAECG
- Some data suggest that frequency domain analysis
provides useful information not available in the
time domain analysis. - Signal averaging has been applied to the P wave
to determine risk for developing atrial
fibrillation as well as maintenance of sinus
rhythm after cardioversion. The overall use of
the technique remains limited at present.
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32A 90 year old lady with syncope
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45SAECG/Noise
- noise be measured in the averaged signal over an
interval of at least 40 msec in the ST or TP
segment with a four-pole Butterworth filter. - With this approach, noise should be lt 1 µV with a
25 Hz high-pass cutoff or - lt 0.7 µV with a 40 Hz high-pass cutoff as
measured by the root mean square method from a
vector magnitude of the X, Y, and Z leads. - The segment for noise level analysis should be
determined automatically - The inherent noise level of the recording should
be low so that adequate noise reduction can be
achieved by averaging 50-300 beats. - Averaging a greater number of beats to obtain
adequate noise reduction indicates that baseline
noise is excessive for optimum recording.
46SAECG / Indications
- Vulnerability to SuVT ? risk stratification
post-MI - Unexplained syncope
- Post-operative patients
47Heart Rate Variability-HRV
- Heart rate variability has become the
conventionally accepted term to describe
variations of both instantaneous heart rate RR
intervals - oscillation in the interval between consecutive
heartbeats as well as the oscillations between
consecutive instantaneous heart rates - the interval between consecutive beats is being
analyzed rather than the heart rate per se
Measurement of HRV
- Time Domain Methods
- Continuous ECG record each QRS complex is
detected, so-called normal-to-normal (NN)
intervals or the instantaneous HR is determined - Simple time domain variables mean NN interval,
mean heart rate, difference between the longest
shortest NN interval, difference between night
day heart rate, etc
48HRV
- Simplest variable to calculate the SD of the NN
intervals (SDNN), that is, the square root of
variance. Since variance is mathematically equal
to total power of spectral analysis, SDNN
reflects all the cyclic components responsible
for variability in the period of recording - short-term 5-min recordings nominal 24-h
long-term recordings appear to be appropriate
options - Other commonly used statistical variables
SDANN?SD of the average NN intervals calculated
over 5 min (an estimate of changes in HR due to
cycles gt5 min), the SDNN index ? mean of the
5-min SDs of NN intervals calculated over 24 h
(variability due to cycles lt 5 min) - Most commonly used measures derived fm interval
differences include RMSSD ?square root of the
mean squared differences of successive NN
intervals, NN50 ?the number of interval
differences of successive NN intervals gt50 ms,
pNN50 ? the proportion derived by dividing NN50
by the total number of NN intervals. All of these
measurements of short-term variation estimate
high-frequency variations in heart rate thus
are highly correlated
49Relationship between the RMSSD and pNN50 (a)
and pNN50 and NN50 (b) measures of HRV
assessed from 857 nominal 24-hour Holter tapes
recorded in survivors of acute MI before hospital
discharge. The NN50 measure used in b was
normalized in respect to the length of the
recording
50To perform geometric measures on the NN interval
histogram, the sample density distribution D is
constructed, which assigns the number of equally
long NN intervals to each value of their lengths.
The most frequent NN interval length X is
established, that is, YD(X) is the maximum of
the sample density distribution D. The HRV
triangular index is the value obtained by
dividing the area integral of D by the maximum Y.
When the distribution D with a discrete scale is
constructed on the horizontal axis, the value is
obtained according to the formula HRV
index(total number of all NN intervals)/Y. For
the computation of the TINN measure, the values N
and M are established on the time axis and a
multilinear function q constructed such that
q(t)0 for tN and tM and q(X)Y, and such that
the integral ?08 (D(t)-q(t))2 dt is the minimum
among all selections of all values N and M. The
TINN measure is expressed in milliseconds and
given by the formula TINNM-N.
51Selected Time Domain Measures of HRV
Since many of the measures correlate closely with
others, the following 4 measures are recommended
(1) SDNN (estimate of overall HRV), (2) HRV
triangular index (estimate of overall HRV), (3)
SDANN (estimate of long-term components of HRV),
and (4) RMSSD (estimate of short-term components
of HRV) 2 estimates of the overall HRV are
recommended because the HRV triangular index
permits only casual preprocessing of the ECG
signal. The RMSSD method is preferred to pNN50
NN50 because it has better statistical properties
52Frequency Domain Analysis
- Power spectral density (PSD) analysis provides
the basic information of how power (variance)
distributes as a function of frequency. - Short-term recordings 3 main spectral components
are distinguished in a spectrum calculated from
short-term recordings of 2 to 5 min VLF, LF,
HF components - Measurement of VLF, LF, HF is made in absolute
values of power (ms squared). LF HF may also be
measured in normalized units, which represent the
relative value of each power component in
proportion to the total power minus the VLF - Long-term recordings. Spectral analysis also may
be used to analyze the sequence of NN intervals
of the entire 24- period. The result then
includes a ULF component, in addition to VLF, LF,
HF components. The slope of the 24-h spectrum
also can be assessed on a log-log scale by linear
fitting the spectral values - Although time domain methods, esp. SDNN RMSSD,
can be used to investigate recordings of short
durations / frequency methods are usually able to
provide results that are more easily
interpretable in terms of physiological
regulations. - In general, time domain methods are ideal for the
analysis of long-term recordings - Substantial part of the long-term HRV value is
contributed by the day-night differences. Thus,
the long-term recording analyzed by the time
domain methods should contain at least 18 hours
of analyzable ECG data that include the whole
night
53Spectral analysis of RR interval variability in a
healthy subject at rest during 90 head-up
tilt.
At rest, 2 major components of similar power are
detectable at low and high frequencies. During
tilt, the LF component becomes dominant, but as
total variance is reduced, the absolute power of
LF appears unchanged compared with rest.
Normalization procedure leads to predominant LF
smaller HF components, which express the
alteration of spectral components due to tilt.
Circulation 1996931043-1065
54Selected Frequency Domain Measures of HRV
55Example of an estimate of power spectral density
obtained from the entire 24-hour interval of a
long-term Holter recording
56Approximate Correspondence of Time Domain and
Frequency Domain Methods Applied to 24-Hour ECG
Recordings
57Physiological Correlates of HRV
- Vagal activity is the major contributor to the HF
component. - Disagreement exists in respect to the LF
component. Some studies suggest that LF, when
expressed in normalized units, is a quantitative
marker of sympathetic modulations other studies
view LF as reflecting both sympathetic activity
and vagal activity. Consequently, the LF/HF ratio
is considered by some investigators to mirror
sympathovagal balance or to reflect the
sympathetic modulations. - Physiological interpretation of lower-frequency
components of HRV (that is, of the VLF and ULF
components) warrants further elucidation. - It is important to note that HRV measures
fluctuations in autonomic inputs to the heart
rather than the mean level of autonomic inputs.
Thus, both autonomic withdrawal and saturatingly
high level of sympathetic input lead to
diminished HRV
58Changes of HRV Related to Specific Pathologies
- MI
- ?HRV after MI may reflect a ? in vagal activity
directed to the heart, which leads to prevalence
of sympathetic mechanisms and to cardiac
electrical instability. In the acute phase of MI,
the ? in 24-hour SDNN is significantly related to
LV dysfunction, peak CK, Killip class - an ? LF a ? HF were observed during both
resting controlled conditions 24-hour
recordings analyzed over multiple 5-min periods - These changes may indicate a shift of
sympathovagal balance toward a sympathetic
predominance and a ? vagal tone - Diabetic Neuropathy
- a ? in time domain parameters of HRV seems not
only to carry negative prognostic value but also
to precede the clinical expression of autono-mic
neuropathy / the initial manifestation of this
neuropathy is likely to involve both efferent
limbs of ANS (no change in spectral analysis) - Heart Failure
- A ? HRV has been observed consistently in pts
with HF
59Modifications of HRV by Specific Interventions
- The rationale for trying to modify HRV after MI
stems from the multiple observations indicating
that cardiac mortality is higher among those
post-MI patients who have a more depressed HRV - The inference is that interventions that augment
HRV may be protective against cardiac mortality
and sudden cardiac death. - Although the rationale for changing HRV is sound,
it also contains the inherent danger of leading
to the unwarranted assumption that modification
of HRV translates directly into cardiac
protection, which may not be the case - The target is the improvement of cardiac
electrical stability, and HRV is just a marker of
autonomic activity - ß-Adrenergic Blockade and HRV
- AADs HRV some AADs a/w increased mortality can
reduce HRV - Scopolamine
- Thrombolysis
- Exercise training
60Clinical Use of HRV
- General consensus of practical use of HRV has
been reached only in 2 clinical scenarios ? HRV
can be used as a predictor of risk after AMI as
an early warning sign of DM neuropathy
Cumulative survival of pts after MI a, Survival
of pts stratified according to 24-h SDNN values
into 3 groups with cutoff points of 50 100 ms
b, Similar survival curves of pts stratified
according to 24-h HRV triangular index values
with cutoff points of 15 20 units, respectively
Data suggest that ? HRV is not a simple
reflection of sympathetic overdrive and/or vagal
withdrawal due to poor LV performance but that it
also reflects ? vagal activity, which has a
strong association with the pathogenesis of
ventricular arrhythmias sudden cardiac death
61Predictive value of HRV
The predictive value of HRV alone is modest.
Combination with other techniques substantially
improves the positive predictive accuracy of HRV
over a clinically important range of sensitivity
(25 to 75) for cardiac mortality arrhythmic
events
Comparison of positive predictive characteristics
of HRV (solid lines) of combinations of HRV
with LVEF (dashed lines) of HRV with LVEF
ectopic counts on 24-hour ECGs (dotted lines)
used for identification of pts at risk of 1-year
cardiac mortality (a) 1-year arrhythmic events
(SCD and/or symptomatic suVT, b) after acute MI
62Interpreting HRV
- Depressed HRV After Acute MI
- ?HRV is a predictor of mortality arrhythmic
complications that is independent of other
recognized risk factors / measured 1 wk pMI - HRV assessed from short-term recordings provides
prognostic information (initial screening ), but
HRV measured in 24-h recordings is a stronger
risk predictor - Better prognosis c time domain HRV measures (SDNN
or HRV triangular index). Some other measures,
e.g, ULF of entire 24-h spectral analysis,
perform equally well. A high-risk gp may be
selected by the dichotomy limits of SDNN lt50 ms
or HRV triangular index lt15 - Predictive value of HRV alone is modest, but
higher than that of any other recognized risk
factor. To improve the predictive value, HRV may
be combined with other factors - Assessment of Diabetic Autonomic Neuropathy (DAN)
- Characterized by early widespread neuronal
degeneration of small nerve fibers of both
sympathetic parasympathetic tracts.
Manifestations postural hypotension, pers.t
tachycardia, gustatory sweating, gastroparesis,
bladder atony, nocturnal diarrhea. Once DAN
supervenes, 5-y mortality is 50. Thus, early
subclinical detection is important - There are 3 HRV methods from which to choose (1)
simple bedside RR interval methods, (2) long-term
time domain measures that are more sensitive and
more reproducible than the short-term tests, and
(3) frequency domain analysis performed under
short-term steady state conditions, which is
useful in separating sympathetic from
parasympathetic abnormalities