RELATIONSHIP BETWEEN QUANTITATIVE T-WAVE
ALTERNANS ESTIMATES AND PARAMETERS DESCRIBING
CLINICAL STATUS OF PATIENT IN ACCUTE PHASE OF
MYOCARDIAL INFARCTION AND OUTCOME RESULTS
Algimantas Krisciukaitis, Renata Simoliuniene, Andrius Macas, Robertas Petrolis,
Eimante Kamile Puodziunaite, Zita Bertasiene and Viktoras Saferis
Lithuanian University of Health Sciences, Eiveniu Str.4, Kaunas, Lithuania
Keywords: T-wave alternans, Principal component analysis, Myocardial infarction.
Abstract: Relationship between parameters describing clinical status of the patient in acute phase of myocardial
infarction, outcome results and quantitative estimates of T-wave alternans, known prognostic factor of
severe cardiac arrhythmias or sudden cardiac death, was investigated in aim to reveal their usefulness and
incremental diagnostic utility. Integrated estimate, reflecting differences between S-T,T complexes of odd
and even cardiocycles, obtained by means of Principal Component Analysis showed significant correlation
with Left Ventricular Ejection Fraction and rehospitalization of patient within 6 months.
1 INTRODUCTION
ECG T-wave alternans (TWA), a beat-to-beat
alternation in the morphology and amplitude of the
ECG ST segment or T wave, reflects temporal-
spatial heterogeneity of repolarization (Nearing et al.
2003). The evidence linking TWA with arrhythmias
spans more than a century, dating from the
pioneering observations reported in (Hering in
1909). Macroscopic levels of TWA have been
detected under diverse clinical conditions in
association with life-threatening arrhythmias,
including acute myocardial ischemia and infarction,
Prinzmetal’s angina, heart failure, and
channelopathies such as the Brugada and long QT
syndromes (Nieminen et al. 2010). Numerous
studies have demonstrated that screening with
microvolt T-wave alternans (MTWA) testing in
patients with ischemic cardiomyopathy is effective
in identifying patients at high and low risk for
sudden cardiac death (Chow et al. 2006);
(Bloomfeld et al. 2004). Gehi with co-authors
reporting results of meta-analysis about TWA as
predictor of ventricular tachyarrhythmic events
(Gehi et al. 2005) acknowledge that incremental
prognostic value of MTWA when used with other
known risk factors for cardiac arrhythmia, such as
Left Ventricular Ejection Fraction (LVEF) in
patients with ischemic cardiomyopathy, remains
unclear. Replying to this publication Chan with
colleagues (Chan et al. 2006) rises the question
whether TWA is simply a surrogate marker of
patients with greater disease burden and severity, or
it is an independent predictor of cardiac arrhythmias.
To answer this question multivariable modelling that
adjusts for demographics, LVEF, clinical
comorbidities, medication treatment, as well as
electrophysiologic variables (e.g., Holter
monitoring, ECG QRS duration, electrophysiologic
study) should be done.
On the other hand evaluation of TWA over the
last two decades has evolved from visual inspection
of the ECG to the use of computerized analytical
methods for detection of non-visible TWA in the
microvolt range. However clinical performance of
the methods differs and there is no “Golden
Standard” method for detection and evaluation of
TWA so far. Results of “Physionet Challenge 2008”
(Moody 2008) revealed big variety in results
between the methods for detection and evaluation of
TWA even on simulated data. Analysis of clinical
recordings in critical situations is another challenge
for the methods.
Known methods of detection of TWA are giving
more or less comparable results, however estimate
indicating simply presence or absence of the
448
Krisciukaitis A., Simoliuniene R., Macas A., Petrolis R., Puodziunaite E., Bertasiene Z. and Saferis V..
RELATIONSHIP BETWEEN QUANTITATIVE T-WAVE ALTERNANS ESTIMATES AND PARAMETERS DESCRIBING CLINICAL STATUS OF PATIENT
IN ACCUTE PHASE OF MYOCARDIAL INFARCTION AND OUTCOME RESULTS.
DOI: 10.5220/0003856404480452
In Proceedings of the International Conference on Bio-inspired Systems and Signal Processing (BIOSIGNALS-2012), pages 448-452
ISBN: 978-989-8425-89-8
Copyright
c
2012 SCITEPRESS (Science and Technology Publications, Lda.)
phenomena is never used. There is big variety of
methods of quantitative evaluation of TWA giving
sometimes mutually incomparable results. Review
of methods is given in (Martínez et al., 2005). Some
methods give estimates in mV as for alternans only
in amplitude, others give non linear energy estimates
obtained from spectral analysis. There are also
methods based on multivariate analysis (Principal
Component Analysis (PCA) or Karhunen Loeve
Transform) giving linear estimates, but
incomparable with amplitude evaluation, because
they depend on basis functions used for truncated
expansion of the signals. Most of methods are
elaborated using simulated signals (e.g. Clifford et
al. 2008) and tested with clinical recordings where
TWA was evoked by atrial pacing or comparing
recordings of healthy and ichaemic patients. Such
rough evaluation usually does not reveal any
incremental prognostic usefulness and could be the
main reason for hesitations expressed by Gehi (Gehi
et al., 2005) and Chan (Chan et al., 2006).
The aim of this study was to evaluate usefulness
of several quantitative estimates obtained by means
of method based on Principal Component Analysis
analyzing recordings in patients in acute phase of
myocardial infarction. We expect that comparison of
them to routinely obtained standard estimates of
patient status and outcome results can reveal their
incremental diagnostic utility.
2 METHODS
2.1 Signal Registration and
Pre-processing
Clinical recordings of the signals for investigation
we performed during 24h follow up of the patients
hospitalized in the acute phase of myocardial
infarction in Cardiology Clinics of Lithuanian
University of Health Sciences in Kaunas
(Permission of Kaunas Region Ethics Committee for
Biomedical Research Nr. 169/2004). One lead chest
ECG signal was recorded by means of Heartlab™
system (Dregunas, 1999) (certificate No. LS.
08.02.1957) using 12 bit resolution A/D conversion
at 1000 Hz sampling rate. The age of patients (64
females and 114 males) was ranging from 35 till 84.
Their clinical status according Killip-Kimball
classification was following: 50 patients were of
class I, 109 – of class II, 10 – of class III and 9 – of
class IV.
Signal pre-processing we started with detection
of fiducial point of each cardiocycle – peak of ECG
R-wave. Advanced two steps R-wave peak time
point determination method was necessary to
achieve sufficient accuracy according to our
experience reported in (Simoliuniene et al., 2008).
After preliminary detection using filtered derivative
of the ECG signal we maximized cross-correlation
of the sliding in time R-wave template with the ECG
signal. R-wave template was constructed from first
10 cardiocycles of the recording and updated after
every processed cardiocycle. The values of samples
of just found R-wave of current cardiocycle was
added as 10% of values of updated template shape.
Standardized arrays of 428 time points of R-waves
corresponding to about 6 minutes duration
(depending on actual heart rate) were prepared from
every recording for further analysis.
A mean value of 10 consequent samples in
interval between the end of T-wave of preceding
cardiocycle and beginning of P-wave of current
cardiocycle, was considered as a baseline reference
point of each cardiocycle. Bicubic spline
interpolation using these reference points was used
to calculate baseline wander component, which was
subtracted from the original ECG signal.
Excerpts of ECG signal samples representing S-
T,T complexes of each cardiocycle were taken for
further analysis. Number of samples corresponding
to 2/3 of mean length of RR intervals in the
recording was considered as a length of interval of
samples representing S-T, T complex. This interval
was starting at 100
th
sample after fiducial point of
cardiocycle. The length of QT interval is varying in
regard to heart rate. This variation is tolerable if we
want to analyze only amplitude alternans, however it
hampering detail shape analysis of S-T, T complex.
We applied time stretching of the ordinary S-T,T
interval to align it with the others using bicubic
spline interpolation, maximizing cross-correlation
with the template constructed from the first 10
cardiocycles. Estimated coefficients for QT interval
time stretching were close to the values reported by
(Sagie et al., 1992), proposed as substitution of
classical Bazett formula. Corrected (stretched)
arrays of samples from each cardiocycle formed
matrix of samples X, which was giving a redundant
but comprehensive representation of variety of the
shape of S-T,T complexes from the recording
considered for analysis:
nppp
ji
n
n
xxx
x
xxx
xxx
,2,1,
,
,21,21,2
,12,11,1
...
.........
...
...
X
,
(1)
where x
i,j
is the i
th
sample of the j
th
cardiocycle.
RELATIONSHIP BETWEEN QUANTITATIVE T-WAVE ALTERNANS ESTIMATES AND PARAMETERS
DESCRIBING CLINICAL STATUS OF PATIENT IN ACCUTE PHASE OF MYOCARDIAL INFARCTION AND
OUTCOME RESULTS
449
2.2 Principal Component Analysis of
the S-T,T Complexes
Principal Component Analysis was already
successfully used in detection and evaluation of
TWA (Simoliuniene et al., 2008) in test recordings
of “Physionet Challenge 2008” dataset (Moody,
2008).
PCA is used to reduce dimensionality of
redundant representation of S-T,T complexes. The
PCA transforms the original data set into a new set
of vectors (the principal components) which are
uncorrelated and each of them involves information
represented by several interrelated variables in the
original set. The calculated principal components are
ordered so that the very first of them retain most of
the variation present in all the original variables.
Thus it is possible to perform a truncated expansion
of S-T,T complexes representing vectors by using
only the first several principal components. Every
vector x
i
representing ordinary S-T,T complex is
then represented by linear combination of the
principal components
k
multiplied by coefficients
w
i,k
:
p
k
kkii
w
1
,
x
.
(2)
Variation of coefficients w
i,k
represents variation in
shape of S-T,T complexes. It was shown in our
previous works that TWA is represented by beat-to-
beat variation of one or mostly few coefficients w
(Simoliuniene et al., 2008).
Minimal yet sufficient number of principal
components to be used for truncated representation
of the signals was determined by means of Wold’s
criteria (Wold, 1978):
)1(
)(
)(
mPRESS
mPRESS
mPR
,
(3)
where PRESS(m) is calculated as following:


n
i
ijij
p
j
m
xxmPRESS
1
2
1
)
ˆ
()(
.
(4)
ijm
x
ˆ
here is the estimate of the original data set
based not on all but the first m principal
components;
ij
x - the original data set. Final
determination of number was done according to our
experience (Krisciukaitis et al. 2006).
2.3 Detection of T-wave Alternans
Detection of TWA was performed step by step in
consequent intervals of the recordings. TWA was
detected by two methods. First method uses
normalized estimate of power spectral density of the
coefficients w at the highest frequency. Episode of
TWA was registered in case when this estimate at
the highest frequency in 128 coefficients interval
was at least two times bigger then mean of 10
neighbouring lower frequency estimates
(Simoliuniene et al., 2008). Second method is based
on the idea used by (Nearing et al., 2002), that shape
of S-T,T complexes in odd and even cardiocycles
should be similar between each other in the groups
and different between these groups. Unlike moving
average complexes used by (Nearing et al., 2002) we
used derivative quantitative estimates of shape of the
S-T,T complexes – coefficients of principal
components. The shape of ordinary S-T,T complex
is optimally represented by several coefficients of
principal components as a point in multidimensional
orthogonal space. Performing a t-test for means
between two 32 coefficient sets of such coefficients
formed from odd and even cardiocycles (64 is a total
number of cardiocycles in the tested interval) we can
reveal even fine differences in their shape. TWA
was detected when means of two sets were
statistically different at significance level p<0.05.
Final detection of TWA was performed
consolidating results of these two methods, taking
into account only episodes where results of methods
coincided.
2.4 Evaluation of T-wave Alternans
Four quantitative estimates of TWA were selected
for testing:
nTWA – Number of TWA episodes over tested
interval;
siTWA – sum of absolute value of integrated
differences between S-T,T complexes restored using
first five principal components and mean
coefficients of odd and even cardiocycles;
smTWA – maximal amplitude of difference between
restored cardiocycles;
scTWA – sum of absolute values of highest
frequency component of coefficient sequences
extracted by means of hi-pass filter.
All estimates are normalized due to the fixed length
of processed recording interval and give
comprehensive representation of phenomena in
terms of presence/absence, frequency and amplitude.
siTWA and smTWA could be comparable with
estimates used in (Nearing et al. 2002), however
giving better representation being more robust to
BIOSIGNALS 2012 - International Conference on Bio-inspired Systems and Signal Processing
450
noise.
2.5 Estimates of Patient Status and
Outcome Results
Following standard estimates of patient status and
clinical outcome were used:
Killip-Kimball class index;
Left Ventricular Ejection Fraction (LVEF);
Localization of injury by infarction;
Rehospitalization within 6 months;
Rehospitalization within 12 months;
In addition mean heart rate and triangular heart rate
variability index (HRVi) were estimated according
(Eur Heart J 1996).
3 RESULTS
PCA of several recordings was performed as a pilot
study to establish minimal yet sufficient number of
principal components to be used for further analysis.
Values of Wold’s criteria PR and percentage of
variation represented by corresponding number of
first principal components is presented in Figure 1.
First five principal components representing more
then 90% of variation in S-T,T complexes were
selected according our experience (Krisciukaitis et
al. 2006) as minimal yet sufficient set of basis
functions for truncated representation of the signals.
0.2
0.4
0.6
0.8
1
12345678
Nr. Principal Components
PR
Var
Figure 1: Wold’s criteria PR and part of represented
variation (Var) in signal for determination of minimal yet
sufficient number of Principal components for truncated
representation of S-T,T complexes. Specific point in
dependency of PR criteria marked by arrow.
We selected 178 recordings for processing,
where signals were of acceptable quality and free of
power network or other noises and movement
artefacts.
Episodes of TWA were found in 41 out of 178
recordings. Visually was possible to observe
episodes of alternans in T-wave amplitude and/or
shape in some of these 41 recordings and no one
such episode was found in the rest of recordings.
Interestingly TWA was found not only in the
recordings showing low HRVi and high heart rate.
Mean values of RR intervals in TWA episodes
containing recordings were ranging from 750 ms till
1100 ms with HRVi spanning from 3.27 till 25.
Moreover we did not find any episodes of TWA in
some recordings with mean RR intervals below 750
ms. We also did not find any significant relationship
between heart rhythm parameters and any of TWA
parameters. No significant relationship was found
also between TWA and Killip-Kimball class
estimates.
We found statistically significant correlation
between siTWA and LVEF, which was r = -0.456
(p=0.017). Correlation was estimated using
Spearman rank correlation because distribution of
data was non Gaussian.
Values of siTWA showed also relationship with
clinical outcome results: 0.22±0.037 (mean ± SE) in
7 patients who were rehospitalized within 6 months
versus 0.19±0.011 for the rest of 32 patients in TWA
positive group. There was no significant difference
when compared in regard to rehospitalization within
12 months.
TWA estimates obtained using separately only
one of the methods, either spectral (Simoliuniene et
al., 2008), either t-test for means between odd and
even PC coefficient sets, did not show any
significant relationship with LVEF, clinical
outcome, or other parameters describing status of the
patient.
4 DISCUSSION
Importance of aspiration to increase reliability of
TWA detection is supported by the fact that only
TWA estimates obtained using combined analysis
methods involving as much as possible
comprehensive information showed significant
relationship to LVEF, parameter describing clinical
status of the patient in acute phase of myocardial
infarction. LVEF was obtained by means of
independent from ECG method. Increase in siTWA
was related with decrease in LVEF, it complies with
data published by other authors (Chan et al., 2008).
Another fact, that TWA detection method
(Simoliuniene et al., 2008) comparatively good
scored up by results on test recordings from
PhysioNet database shows in some cases disputable
results on clinical recordings, demonstrates that
RELATIONSHIP BETWEEN QUANTITATIVE T-WAVE ALTERNANS ESTIMATES AND PARAMETERS
DESCRIBING CLINICAL STATUS OF PATIENT IN ACCUTE PHASE OF MYOCARDIAL INFARCTION AND
OUTCOME RESULTS
451
further studies on clinical recordings are of great
importance.
We found TWA episodes not only in cases of
high mean heart rate and low heart rate variability
unlikely results reported in earlier publications
concerning phenomena. This fact shows need for
further clinical studies.
Prognostic value of siTWA was demonstrated by
statistically significant relationship with
rehospitalization of patients within 6 months. It
complies with the results of survival studies reported
in (Nieminen et al., 2010). However, our results at
the moment do not provide any significant evidence
of incremental prognostic value of estimates of
TWA.
Further investigations need database of clinical
recordings including as big as possible variety of
standardized clinical recordings. A network based
databank of such recordings based on international
cooperation would be a solution for future
investigations.
5 CONCLUSIONS
Elaboration of quantitative estimates of TWA is
playing major role in development of diagnostic
methods and acquiring by them of wider acceptance
as risk stratification tool.
ACKNOWLEDGEMENTS
This research was funded by a grant (No. MIP-
68/2010) from the Research Council of Lithuania.
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