Biomedical Signal Processing Forum , August 30th 2005
description
Transcript of Biomedical Signal Processing Forum , August 30th 2005
Biomedical Signal Processing Forum, August 30th 2005
BioSens (2/2):
wavelet based morphological ECG analysis
Joel Karel, Ralf Peeters, Ronald L. WestraMaastricht University
Department of Mathematics
Biomedical Signal Processing Forum, August 30th 2005
Biosens: prehistory from 1994 onwards
TU Delft micro electronics UM mathematics
Richard Houben
Medtronic Bakken Research Maastricht
UM Fysiology Prof. M. Allessie
Other companies
STW project Biosens 2004-2008Organization & research consortium
BIOSENS
TU Delft micro electronics
TU Delft DIMES
UM mathematics
Medtronic Bakken Research Maastricht
UM Fysiology
Research topics studied so far
1. Efficient analog implementation of wavelets
• Analog implementation of wavelets allows low-power consuming wavelet transforms for e.g. implantable devices
• Wavelets cannot be implemented in analog circuits directly but need to be approximated: A good approximation approach will allow reliable wavelet transforms
2. Epoch detection and segmentation
• Application of the Wavelet Transform Modulus Maxima method to T-wave detection in cardiac signals.
3. Optimal discrete wavelet design for cardiac signal processing
• What is the best wavelet relative to the data and pupose?
Focus on: morphological analysis
1. Efficient implementation of
analog wavelets
Biosens team:J.M.H. Karel (PhD-student), dr. R.L.M. Peeters, dr. R.L. Westra
Accepted papers: BMSC 2005 (Houffalize, Belgium), IFAC 2005 (Prague, Czech Republic), and CDC/EDC 2005 (Sevilla, Spain)
Implementation of wavelets
• Analog implementation of wavelets allows low-power consuming wavelet transforms for e.g. implantable devices
• Wavelets cannot be implemented in analog circuits directly but need to be approximated
Wavelet approximation considerations
• A good approximation approach will allow reliable wavelet transforms
• will allow low-order implementation (low-power consuming) of wavelet transforms
• allows approximation of various types of wavelets
• is relatively easy applicable
Wavelet approximation methodology
High orderdiscrete-time
MA-model
Intermediateorder
Continuous-time model
Low ordercontinuous-time model
L2approx-imation
Initialization
Approximatedwaveletfunction
Sampledwaveletfunction
Intermediateorder
discrete-timeMA-model
Balance and
Truncate
ZOH discrete to
continuous time
Balance andTruncate
Model class
Wavelet admissabilityconditions
Restrictions
Optimization
Function
1
2 3 4
56
Initial high-order discrete time MA-system
• Sampled wavelet function• Required i.r.• State-space realization in
controllable companion form
)(~ tkgk
110 ][,,]2[,]1[,0]0[ ngnhghghh
0][]1[
0
0
1
0
0
000
DnhhC
BI
A
Model reduction with balance and truncate
• Balance Lyapunov-equations• Note that P is identity matrix• Reduce system based on Hankel
singular values
},,{ 1 n
TT
TT
diagQP
CCQAAQ
BBAPAP
L2-approach
• Wavelet is approximated by impulse response of system
• The model class is determined by the system who’s i.r. is used as a starting point
0
22
10tp
510tp
4
8tp
38tp
2tp
1
h(t))-(t)(||h-||
t)cos(pept)sin(pep
t)cos(pept)sin(pepeph(t)99
776
dt
Morlet approximation
0 1 2 3 4 5 6 7-1
-0.8
-0.6
-0.4
-0.2
0
0.2
0.4
0.6
0.8
1Morlet wavelet
5th order approximation
7th order approximation
9th order approximation
Daubechies 3 wavelet
Wavelet approximation methodology
• Allows approximation of wavelet function that previously could not be approximated
• Allows approximation of more generic functions
• Publications accepted for: IFAC 2005 (Prague, Czech Republic), CDC/ECC 2005 (Sevilla, Spain), and BMSC 2005 (Houffalize, Belgium),
2. ECG morphological analysis using designer wavelets
Biosens team:J.M.H. Karel (PhD-student), dr. R.L.M. Peeters, dr. R.L. Westra
Graduation students: Pieter Jouck, Kurt Moermans, Maarten Vaessen
Wavelet based signal analysis
Purpose of application
Analyzing wavelet
Signal Data
Signal morphology and optimal wavelet design (1)
• Design wavelet such that they detect morphology in signal
• Wavelet transform can be seen as convolution
• Maximum values if wavelet resembles signal in an L2 sense
• Fit a wavelet to signal or create optimal wavelet in wavelet domain
Signal morphology and optimal wavelet design (2)
• Can be used to detect epochs• Detecting morphologies related to
pathologies• Computational efficient
0 0.005 0.01 0.015 0.02 0.025 0.03 0.035 0.04 0.045 0.05-1.4
-1.2
-1
-0.8
-0.6
-0.4
-0.2
0
0.2
0.4
0.6Impulse Response
Time (sec)
Am
plitu
de
Example of optimized wavelet for R-peak detection
Resulting transform
0 50 100 150 200 250 300 350 400-600
-400
-200
0
200
400
600
800
2.1 Application of the waveletTransform Modulus Maximamethod to T-wave detectionin cardiac signals
J.M.H. Karel, P. Jouck, R.L. Westra
T-wave detection in electrocardiograms
• Pilot study based on state-of-the-art approach (e.g. Li 1995, Butelli 2002)
• WTMM-based algorithm• Approximation of singular value
(Lipschitz coefficient) did not show to be particularly discriminating
• Approach successful on a variety of R&T-wave morphologies
• Classification strategy rather ad hoc
Epoch detection and segmentation
Example: Application of the Wavelet Transform Modulus Maxima method to T-wave detection in cardiac signals
Objectives
• ECG segmentation: epoch detection• Characterization of epoch
Testcase: T-wave detection
• Complications with T-wave detection:– low amplitude– Wide variety of T-waves types – fuzzy positioning
Conventional Methodes
• 1st step : Filter → filtering of fluctuations and artifacts
• Different types of filters– Differential filters
– Digital filters
• 2d step : Signal comparsion using threshold
Conventional Methods
• Advantages:– Simple and straightforward methodology– Ease of implementation
• Disadvantages:– Sensitive for stochastic fluctuations– Bad detection of complexes with low amplitudes
Wavelet Transform
• Wavelet transform of signal f using wavelet :
– Frequency and time domain
– Spectral analysis by scaling with a (dilation)
– Temporal analysis by translation with b
Example WTMM
WTMM-based QRS detection (1)
• Dyadic transform scales : 21 22
23 24
WTMM-based QRS detection (2)
• Identification of Modulus Maxima– QRS-complex → 2 modulus maxima (MM)– Find all MM on all scales
• Delete redundant MMs– 2 positive or 2 negative recurring MMs– Proximate MM multiples (too close for comfort)
WTMM-based QRS detection (3)
• Positioning of R-peak– Zero-crossing between positive and negative
MMs
Adjustments for T-wave detection
• Transform to scale 10
Adjustments for T-wave detection
• Search for Modulus Maxima– Only MMs above a given threshold
• Position of T-wave peak– Normal T-wave → MM pare → zero-crossing– T-wave with single increase/decrease → one
MM near peak
Results
• Sensitivity of WTMM-based methode to:– Low T-wave amplitudes– Noise and stochastic variation– Baseline-drift– complex T-wave morphology
Results
Results
• Testcases: Signals from: i) MIT-BIH database, and ii) Cardiology department of Maastricht University.
• Performance:• Number of True Positive detections (TruePos)• Number of False Positive detections (FalsePos)• Number of True Negative detections (TrueNeg)• Number of False Negative detections (FalseNeg)• Total number of peaks (TotalPeak)• Percentage of detected T-waves (Sensitivity)• Percentage of correct detections (PercCorr)
Testcase 1
WTMM Conventional
Sensitivity 93% 73%
PercCorrect 93% 73%
Testcase 2
WTMM Conv.
Sensitivity 99% 73%
PercCorrect 99% 73%
WTMM Conv.
Sensitivity 93.75% 0%
PercCorrect 95% 0%
Testcase 3
WTMM Conventional
Sensitivity 99% 91%
PercCorrect 99% 91%
Testcase 4
WTMM Conventional
Sensitivity 85.5% 64.6%
PercCorrect 85% 67%
Discussion
• Problems– Low amplitude + high noise levels– Extremely short ST-intervals– Not all types of T-wave are detected
• Improvements– Automatic scale adjuster– More decision rules– Learning algorithm
Conclusion
• Reliable method• Robust and noise-resistent• Good performance in sense of
sensitivity and percentage correct (typically > 85%)
2.2 Optimal discrete waveletdesign for cardiac signalprocessing
J.M.H. Karel, R.L.M. Peeters and R.L. Westra
EMBC 2005 (= 27th Annual International Conference of the IEEE Engineering in Medicine and Biology Society),
1-4 September 2005, Shanghai, People’s Republic of China
Optimal Wavelet Design
What is a good wavelet for a given signal and a given purpose?
• Freedom in choice for analyzing wavelet (t)
• Best output (= wavelet coefficients ck) are well positioned
in frequency-temporal space, i.e. sparse representation
• Essentials: perfect reconstruction, orthogonal wavelet-multi resolution structure, vanishing moments of wavelets, flatness of filter, smooth wavelets
• Measure the performance of a given signal x(t) and a trial wavelet (t) with a criterion function V[]
Optimal Wavelet Design
Orthogonal wavelets and filter banks
Wavelet analysis and synthesis
• Low pass filter with transfer function C(z)
• High pass filter with transfer function D(z)
• Combination with down-sampling
has compact support C, D are FIR
Wavelets: analysis and synthesis
Filter bank
Filter bank
Polyphase decomposition
Polyphase decomposition
the alternating flip construction relates coefficients c and d:
the remaining orthogal freedom in the 2n ck can be expressed by a reparametrization in n new parameters i: the polyphase matrices R and
Polyphase decomposition
The polyphase matrices R and Λ in terms of parameters θi are defined as:
Then define the 2x2 matrix H as:
Polyphase decompositionMatrix H can be partitioned as:
with:
Polyphase decompositionNow the matrices C and D can be written as:
Design criteria on the wavelet put constraints on C and D
• The polyphase decomposition handles the orthogonality of the filterbank
• Another desirable property are the vanishing moments
• This puts constraints on C and D, e.g. C(z) has zeros at: z + 1 = 0, ditto corresponding flatness of C and D at high/low frequencies
• The condition of vanishing moments translates to a linear set of constraints on the filter coefficients c and d
Design criteria on the wavelet put constraints on C and D
• For instance one vanishing moment states:
• this translates to a constraint on c and d:
• And so also to a constraint on the s:
Computing the wavelet and scaling function
• The scaling function relates to the wavelet via the dilation equation.
• Using the alternating flip construction this states:
Computing the wavelet and scaling function
• The resulting functions and may be discontinuous and fractal
• The dilation relation allows an iteration scheme for the coefficients:
Tree structure for dyadic scales
Criteria to measure the quality of a wavelet for given data
• The energy of the original signal x(t) is:
• Because of the orthogonality this energy is preserved in the wavelet representation:
• Therefore, the L2-norm is not a suitable criterion
Wavelet design criteria
Philosophy and algorithmGuiding principle proposed here is to aim for maximization of
the variance.
This is achieved by either :
• maximization of the variance of the absolute values of the wavelet coefficients minimization of L1-norm
• maximization of the variance of the squared wavelet coefficients maximization of L4-norm
Algorithm
Wavelet Design Criteria
Remarks
• The criteria min L1 and max L4 have been investigated to design wavelets for various given signals.
• When all wavelet coefficients are taken into account and no weighting is applied, both criteria tend to produce similar results.
• However, when only a few scales are taken into account (e.g. by weighting) the results may become different: in case of minimization of the L1-norm energy tends to be placed in scales not taken into account, whereas in case of maximization of the L4-norm this does not happen.
Experimentation
I. Reconstruction of artificially generated noisy signals
• Make an artificial sparse signal x(t) by setting only a few wavelet-coefficients ck to non-zero values
• Note that this signal probably has a small L1-norm (sparse) and a large L4-norm (large variance)
• Add some white noise v(t) and apply the wavelet-design algorithm to this signal x(t) + v(t)
• The reconstructed signal x*(t) fits perfectly with x(t) up to a signal-to-noise ratio (snr) 1
Experimentation
II. Reconstruction of a reference signal
• Reference signal x(t) is obtained by averaging comparable episodes from ECG signals from the MIT Physionet normal sinus rhythm database
• Resulting smooth signal is upsampled:
Input signal: averaged ECG
Experimentation
Local optima in the -parameter space
• Consider the situation with n=3, i.e. three s
• Because: 1+ 2+ 3= /4 this situation has two
degrees of freedom
• Now we can plot the L1-criterion in the
(2, 3)-plane and study local optima:
Local Optima
Experimentation
Local optima in the -parameter space
• The coefficients of the local optima closely resemble the Daubechies 2 filter coefficients
• This observation gives a rationale for the use of the Daubechies 2 wavelet for cardiac signals
• When the sum of 2 and 3 already is close to /4 only one degree of freedom is effectively used
• some of the minor local optima resemble the Daubechies 3 wavelet, however to lesser extent
Experimentation
The optimal number -parameters • The filter size of the wavelet filter is determined
by the number n of s used
• A large number of s gives freedom to fit the wavelet to the signal but also increases the complexity
• For n = 1 to 25 the L1-criterion averaged over 1000 random starting points is computed
• The graph is rather flat between n = 5 and n = 20, and n = 8 is a reasonable choice
Criterion versus number of θs
n = 8
Experimentation
Practical evaluation • Next we design the best fitting wavelet for the
test set episode #103 of the MIT-BIH arrythmia database. This is a 360 Hz annotated ECG signal.
• Two wavelets were designed using 8 θs by minimizing a criterion function V, with:
1. for 1 : V = L1-norm of the wavelet transform
2. for 2 : V = L4-norm of the wavelet transform
L1-L4 wavelet
Experimentation
Quality of the wavelet transform of the reference averaged ECG-signal with the L4-criterion maximized wavelet
• The L4-wavelet has a fractal structure. The available degrees of freedom are not used to place poles at z = −1 as with the Daubechies wavelets
• The fractal nature of the L4-wavelet is not relevant in processing, as only the coefficients are used in computations
• Moreover, the L4-wavelet is very effective in the wavelet decomposition of the reference signal. One single strong wavelet coefficient marks the location of largest correlation:
Wavelet transform of reference ECG signal with the designed L4-wavelet
Experimentation
Comparison of the L1- and L4-wavelets with the Daubechies 2 wavelet
• The wavelet transform of the MIT-testset with was compared for the three wavelets (L1, L4, and Daubechies), on only a single level (scale)
• This level was selected for each wavelet individually to maximize performance
• A binary vector was constructed of all the wavelet coefficients of which the absolute value exceeded a certain threshold. These locations were related to the locations of the original signal
• The beat annotations in the testset were used as a reference to locate the QRS-complex.
Experimentation
Comparison of the L1- and L4-wavelets with the Daubechies 2 wavelet
• There are 1688 normal QRScomplexes in the MIT-testset. If the binary vector corresponding to the wavelet transform has detected a peak within 20 samples (56ms) of the marker, it is assumed that the QRS-complex is detected. If a peak is detected but no marker is within 20 samples, a false detection is assumed
• This comparison yielded the following results:
ResultsComparison of the L1- and L4-wavelets with the Daubechies 2 wavelet
Conclusions
Comparison of the L1- and L4-wavelets with the Daubechies 2 wavelet
• The table shows that the performance of the Daubechies 2 wavelet is quite good
• The L4 optimized wavelet however shows superior performance
• Furthermore the L4-wavelet is more robust with respect to the choice of threshold value, which may be a large advantage in practical applications
References[1] Gilbert Strang,Truong Nguyen, Wavelets and Filter Banks, Wellesley-
Cambridge Press, 1996.
[2] N. Neretti, N. Intrator, An adaptive approach to wavelet filter design,
Proc. IEEE int. workshop on neural networks for signal processing, 2002.
[3] A.L. Goldberger et al.. Physiobank, physiotoolkit, and physionet:
Complex physiologic signals. Circulation, 101(23):e215–e220, June 2000.
[4] Cuiwei Li et al., Detection of ECG characteristic points using wavelet
transforms. IEEE Transactions on Biomedical Engineering, 42(1):21–28,
January 1995.
[5] Stephane Mallat. A Wavelet Tour of Signal Processing. Ac. Press, 1999.
[6] Ivo Provaznýk, Ji Kozumplýk. Wavelet transform in electrocardiography
- data compression. International Journal of Medical Informatics, 45(1-
2):111–128, June 1997.
[7] M.P. Wachowiak et al., Waveletbased noise removal for biomechanical
signals: a comparative study. IEEE Transactions on Biomedical Engineering,
47(3):360–368, March 2000.
Focus for further research
• Analysis of mathematical morphology of cardiac signals– Characterization of cardiac signals
(clustering)– Expert input– Design of optimal multiwavelets
• Development of online algorithm based on optimal wavelets and hardware implementation
Discussion
Biomedical Signal Processing Forum, August 30th 2005
Dr. Ronald L. Westra
Department of Mathematics
Maastricht University