Wavelet-based Denoising of Cardiac PET Data - PowerPoint PPT Presentation

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Wavelet-based Denoising of Cardiac PET Data

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Dr. Aysegul Cuhadar (Carleton SCE) Dr. Rob deKemp ... PET and its use in cardiology. Wavelets and wavelet-based denoising ... Background PET in cardiology ... – PowerPoint PPT presentation

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Title: Wavelet-based Denoising of Cardiac PET Data


1
Wavelet-based Denoising of Cardiac PET Data
  • M.A.Sc. Thesis
  • Geoffrey Green, B. Eng.(Electrical)
  • Supervisors
  • Dr. Aysegul Cuhadar (Carleton SCE)
  • Dr. Rob deKemp (Cardiac PET Center, Ottawa Heart
    Institute)

January 11, 2005
2
Outline of Presentation
  • Problem Statement / Thesis Motivation
  • Thesis Objective
  • Thesis Contributions / Publications
  • Background Information
  • Cardiac anatomy
  • PET and its use in cardiology
  • Wavelets and wavelet-based denoising
  • Spatially Adaptive Thresholding
  • Cross Scale Regularization
  • Denoising Experiments
  • Representative Results
  • Future Work

3
Problem Statement / Thesis Motivation (1)
  • PET images of the heart using 82Rb radiotracer
    are performed to observe and quantify uptake of
    blood flow to the heart muscle.
  • Such myocardial perfusion measures can be used
    to diagnose coronary arterial disease and
    prescribe an appropriate treatment.
  • 82Rb is used for several practical reasons
  • no on-site cyclotron required
  • short half life (76s) allows quick, repeated
    studies
  • like potassium, selectively taken up in cardiac
    muscle tissue
  • HOWEVER, the PET data that results from 82Rb is
    highly contaminated by noise, leading to
    erroneous uptake images and extracted
    physiological parameters that are biased.

4
Problem Statement / Thesis Motivation (2)
  • Clinical noise reduction protocol used at OHI
    involves filtering with a fixed-width Gaussian
    kernel, regardless of noise level.
  • This method is not adaptive to images of
    differing quality, and tends to oversmooth
    smaller-scale image features.
  • More effective noise suppression techniques
    would lead to more accurate images, and a
    subsequent decrease in the risk of misdiagnosis
    and inappropriate treatment.

RAW DATA
GAUSSIAN FILTERED
myocardium
5
Published Results
G. Green, A. Cuhadar, and R.A. deKemp. Spatially
adaptive wavelet thresholding of rubidium-82
cardiac PET images. In EMBC 2004 Proceedings of
the 26th International Conference, IEEE
Engineering in Medicine and Biology Society, San
Francisco, CA, USA, pages 1605-1608, 2004.
6
Thesis Objective
  • The goal of this thesis is to develop denoising
    methods that improve the quality of cardiac 82Rb
    PET scans, and illustrate their effectiveness and
    robustness when used to measure myocardial
    perfusion.
  • The methods we investigate are based on the
    current state of the art denoising methods using
    a wavelet representation. It is well-established
    in the literature that wavelet-based denoising
    can outperform Gaussian LPF methods, separating
    signal from noise at multiple image scales.

7
Thesis Contributions
  • We apply the following recently-developed
    wavelet denoising techniques to cardiac 82Rb PET
    data
  • spatially adaptive (SA) thresholding
  • cross-scale regularization (CSR)
  • We investigate the relative effect that these
    methods have on the denoised result when they are
    applied
  • individually (across multiple scales),
  • in combination (across multiple scales), and
  • to various image domains (2D and 3D)
  • We propose a novel denoising protocol that
    comprises a hybrid of the above methods, and
    illustrate the improvement it offers when
    compared to the current clinical protocol.

8
Background - Cardiac Anatomy
blood pool (cavity)
myocardium
slices
apex
  • The left ventricle is modelled as a
    semi-ellipsoid, containing a muscular wall
    (myocardium) which surrounds a blood pool.
  • When viewed from the apex along the axis of the
    ellipsoid, the myocardium appears as a ring.
  • Forceful contraction of LV is vital for blood
    supply to body.


9
Background - PET
  • Used to observe and measure physiological
    processes in vivo.
  • Patient is injected with a radioactive tracer,
    which is selectively taken up (in myocardium).
  • As tracer nucleus decays, a positron is emitted
    and travels a short distance (mm) before
    colliding with an electron from a nearby atom,
    causing an annihilation
  • This creates two 511keV gamma rays that are
    emitted at 180o, picked up by external detectors
  • Image reconstruction algorithms form a spatial
    representation of tracer distribution, using
    either - filtered backprojection (FBP), or
  • - ordered subset expectation maximization (OSEM)

10
Background PET in cardiology
  • Used for both qualitative (location of defect)
    and quantitative analysis

Quantitative
Qualitative
polar map
TAC
Input Function
reduced uptake in damaged area
Myocardial cells M(t)
K1
K2
compartmental model
  • Performed under rest and stress conditions
  • Quantitative analysis uses a time series of
    images (frames), extracted TACs as input into a
    compartmental model
  • Nonlinear regression used to determine model
    parameters (e.g. K1) from measured PET data

11
Background Wavelets (1)
  • Very active research area during the last 10
    years
  • Wavelets provide an inherent advantage when
    denoising non-stationary signals, such as those
    found in cardiac PET imaging - the inclusion of
    localized fine scale functions in the basis
    allows one to better discern diagnostically
    significant details
  • The DWT is a signal representation whose members
    consist of shifted, dilated versions of a chosen
    basis function
  • The DWT is realized efficiently with an iterated
    filter bank, generating subbands of coefficients

12
Background Wavelets (2)
Filter bank implementation of wavelet transform
13
Approx. coeffs
Detail coefficients d1 d2
Level
1
2
3
14
Approx. coeffs
Detail coefficients d1 d2
Level
1
2
3
15
Background Wavelet based denoising
Overall denoising process
Noisy DWT coefficients
Denoised DWT coefficients
Noisy Image
Denoised Image
Inverse WT
Forward WT
Wavelet Coefficient Thresholding
  • A multidimensional DWT which is meant to exploit
    the correlation within/between image slices
  • Wavelet basis (3D discrete dyadic wavelet
    transform -Koren/Laine,1997) based on splines,
    which are well-suited to this class of images
  • A translation-invariant wavelet representation,
    which reduces ringing effects in the
    reconstructed image
  • The assumption is an additive Gaussian noise
    model

16
Spatially Adaptive Thresholding
  • Technique introduced by Chang,Yu,Vetterli (2000)
  • Attempts to distinguish features from background
    in wavelet domain, and adjusts threshold Tk
    accordingly. This is done by computing the local
    variance of the DWT coefficients, sWk
  • Feature area (e.g. edge) coefficient variance
    large, threshold set low in order to retain
    feature unchanged
  • Background area coefficient variance small,
    threshold set high in order to suppress
    (noticeable) noise in that area

17
Spatially Adaptive Thresholding 1D example
18
Spatially Adaptive Thresholding 1D example
19
Cross Scale Regularization
  • Technique introduced by Jin, Angelini, Esser,
    Laine (2002)
  • In the case of high noise levels (as in 82Rb
    PET), the most detailed subbands (i.e. level 1
    coefficients) are usually dominated by noise
    which cannot be easily removed using traditional
    thresholding schemes
  • To address this issue, a scheme is proposed that
    takes into account cross-scale coherence of
    structured signals.
  • The presence of strong image features produces
    large coefficients across multiple scales, so the
    edges in the higher level subbands (less
    contaminated by noise) are used as a oracle to
    select the location of important level 1 details.
  • Wavelet modulus of coefficients at the next most
    detailed subband (i.e. level 2) is used as a
    scaling factor for the level 1 coefficients.

20
Cross Scale Regularization 1D example
21
Denoising Experiments
  • Phantom Input Data (since a priori tracer info
    is unknown)
  • healthy, short-axis oriented slices
  • simulated PET noise of varying types (merge
    phantom with clinical image that has no features
    present)
  • Clinical Input Data (supplied by OHI)
  • healthy, short-axis oriented slices
  • Static OSEM/FBP reconstruction, stress/rest
    study
  • Dynamic OSEM reconstruction, stress/rest study

22
Denoising Experiments
  • We investigate a set of 17 denoising protocols
    in order to assess the effect of using SA/CSR
    techniques
  • when applied to multiple decomposition levels
    independently,
  • when applied to multiple decomposition levels in
    combination
  • when applied in various domains (2D vs. 3D)
  • The denoising protocols require an estimate of
    noise variance in the image. Robust median
    estimator allows a data-driven estimate from the
    noisy wavelet coefficients

23
Denoising Experiments
  • Figures of Merit
  • Phantom Data
  • MSE
  • Visual Assessment
  • Clinical Data
  • Visual Assessment - STATIC study
  • Coefficient of Determination (R2) - DYNAMIC
    study
  • Normalized K1 std. dev. - DYNAMIC study

24
Selected Results - Phantom
MSE vs. Denoising Protocol for 3D Phantom Image
Gaussian
25
Selected Results Static Clinical Data
Denoised Images 3D denoising, OSEM stress study
SA _at_ level 3, CSR _at_ level 2
SA _at_ level 3, CSR _at_ level 2,1
26
Selected Results Dynamic Clinical Data
Model outputs vs. Denoising Protocol - 3D, OSEM
stress
27
Future Work
  • Development of a more sophisticated noise model
  • Applicability to higher dimensions (including
    time) 4D, dynamic polar map
  • Investigate denoising in sinogram domain
  • Alternate signal basis (e.g. platelets,
    brushlets, curvelets)
  • Application to other PET studies (e.g.
    ECG-gated, NH3 tracer)
  • Statistical significance testing

28
Denoising GUI
  • In order to facilitate the investigation of
    parameter changes on the denoised results, a GUI
    was implemented.

29
Wavelet-based Denoising of Cardiac PET Data
  • M.A.Sc. Thesis
  • Geoffrey Green, B. Eng.(Electrical)
  • Supervisors
  • Dr. Aysegul Cuhadar (Carleton SCE)
  • Dr. Rob deKemp (Cardiac PET Center, Ottawa Heart
    Institute)

January 11, 2005
30
Quantitative Results
31
Quantitative Results
32
Approx. coeffs
Detail coefficients d1 d2
Level
1
2
3
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