Abstract:
Echocardiography is the most commonly used first-line imaging modality in the assessment
of cardiac chamber and valvular abnormalities. The valvular abnormalities can be classified
as regurgitation and stenosis. Aortic regurgitation (AR) is a valvular disorder due to the
retrograde flow of blood from the aortic valve into the left ventricle during the diastole. The
aetiologies and the consequences of AR are diagnosed using transthoracic
echocardiographic (TTE) images acquired in parastrenal long axis (PLAX), parasternal short
axis (PSAX), apical four chamber (A4C), apical two chamber (A2C) and apical five chamber
(A5C) views. The Doppler imaging modalities such as continuous wave Doppler (CWD) and
color Doppler echocardiography along with conventional B-Mode (brightness mode) and MMode
(motion mode) images are used hand-in-hand to detect the prevalence of
regurgitation, better understanding of the mechanism of regurgitation and quantification of
severity along with its repercussions. But the technical research is more concentrated on
despeckling, and segmentation of good quality B-Mode images acquired in a particular view
from healthy adults. Hence, it is necessary to study the applications of despeckling and
segmentation techniques for TTE images acquired in multiple views from patients diagnosed
with AR. Current research work attempts to overcome the existing caveats by integrated
processing of B-Mode, CWD, and color Doppler echocardiography images. The work looks
for the best denoising and segmentation techniques suitable for different modalities of
echocardiographic imaging in multiple views.
Based on the exhaustive technical and clinical literature review, the following research
objectives have been framed: 1) To propose despeckling methods for the B-Mode TTE
images of aortic valve and cardiac chambers acquired in multiple views using different
windows. 2) Comparative analysis of state-of-the-art despeckling techniques and texture
features for the B-Mode and CWD images. 3) To propose delineation techniques for tracing
the outer spectrum of CWD images. 4) Comparative analysis of segmentation techniques
using the TTE images acquired in multiple views and windows. These research objectives
are accomplished in the following manner.
Speckle noise present in cross sectional TTE images makes it difficult to consistently
perform delineation of the cardiac structure. It is necessary to suppress noise and enhance
contrast without altering the fine details present in the images. To address the issue of
speckle noise, six despeckling techniques are proposed in this thesis. The first proposed
technique is based on multiscale techniques. The multiscale techniques are employed for
speckle noise in the logarithmic domain, considering the approximated additive noise model
of despeckling. The transformation of images into the logarithmic domain, application of
shrinkage techniques and bringing the image back into the original space are the three
common steps for all multiscale techniques. Eight shrinkage techniques are analyzed for
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despeckling of TTE images in multiple views. The performances of logarithmic multiscale
techniques are compared with adaptive and diffusion based filtering techniques. The
denoised images are enhanced using Butterworth filter. The integrated effects of denoising
and enhancement are tested on active contour, region, watershed and edge based
segmentation techniques. Further, to make use of the advantages of M-band wavelets, it is
proposed to combine M-band ridgelet with neighborhood coefficient thresholding for the
despeckling of TTE images. The thresholds of coefficients are computed using neighborhood
coefficient thresholding technique and reconstructed to obtain the denoised images.
The second proposed despeckling technique is known as the hybrid triangulation moving
average (TMAV) fuzzy filter. The performance of TMAV filter is fine tuned for despeckling of
TTE images by combining it with adaptive Wiener filter. Four fuzzy filters have been analyzed
in the logarithmic domain for speckle noise reduction. The despeckling performances of all
the four fuzzy filters are fine tuned by combining them individually with adaptive Wiener filter.
The integrated fuzzy filter is the third proposed despeckling technique which is the improved
version of hybrid TMAV fuzzy filter. It is based on the integration of geometric, Wiener and
fuzzy filters. The hybrid homomorphic fuzzy (HHF) is the fourth proposed technique which is
the combination of logarithmic fuzzy filter and anisotropic diffusion filter. The diffusion based
methods are known for speckle noise suppression, and edge preservation capability but they
do not perform well when the noise contamination in the images is high. The fuzzy filters
have superior figure of merit in comparison to anisotropic diffusion filters. The advantages of
anisotropic diffusion and fuzzy filters are integrated in the proposed HHF filter.
The hybrid posterior sampling based Bayesian estimation (PSBE) is the fifth proposed
technique for despeckling of TTE images. The performance of logarithmic PSBE technique
degrades considerably for images contaminated with high amount of noise. To address this
issue, an additional adaptive filter is embedded into logarithmic PSBE and is known as the
hybrid PSBE technique. The contrast of output images are enhanced using Butterworth filter.
The effects of denoising and enhancement on segmentation are studied using three basic
techniques namely the edge, region and multistage watershed. The extreme total variation
bilateral (ETVB) is the sixth proposed technique for denoising of TTE images of the cardiac
structures. The regularizer term of the total variation (TV) filter is replaced with the bilateral
(BL) term in the proposed ETVB filter. The true information is incorporated in the algorithm
using Bayesian inference and probability density function. Applications of gradient projection
based restoration methods have been analyzed for speckle noise reduction of TTE images.
In an effort to define the best despeckling filter for the B-Mode, CWD and color Doppler
images in multiple views, a comparative study is under taken in this thesis. The applications
of 48 filters are analyzed for the B-Mode, CWD, MM, and color Doppler images where the
performance analysis is in terms of sixteen image quality metrics, visual quality assessment
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and clinical validation. Both, traditional and blind assessment parameters are computed for
assessment of noise suppression, edge and structure preservation. The despeckling filters
are grouped into eight type’s namely local statistics, fuzzy, Fourier, multiscale, nonlinear
iterative, total variation, nonlocal mean and hybrid filters.
It has been observed that the median filter and Gaussian low pass filter are more
commonly used for reduction of noise in the CWD images. The applications of state-of-theart
despeckling filters have not been extensively analyzed for the CWD images. Therefore,
applications of despeckling filters analyzed for B-Mode images have also been analyzed for
the CWD, pulse wave Doppler (PWD), M-Mode and color Doppler images. The despeckling
performance of filters have also been compared in terms of 65 texture features computed
from the denoised B-Mode, M-Mode, CWD, and color Doppler echocardiographic images.
The set of features include five first order statistical (FOS), 26 spatial gray level dependence
matrix (SGLDM), four gray level difference statistics (GLDS), four statistical feature matrix
(SFM), six Laws texture energy measures (LTEM), four fractal dimension, two Fourier power
spectrum and five neighborhood gray tone difference matrix features. All the texture features
have been computed before and after the application of despeckling filters.
The segmentation of original and the pre-processed B-Mode, CWD and color Doppler
images is taken up as the next objective. This objective looks for the best delineation
technique for each modality image in multiple views. Initially, synthetic images with different
amount of intensity in-homogeneity have been delineated using segmentation techniques
based on various variants of the edge, region, watershed, fuzzy, active contour and level set
techniques. The applications of these techniques are analyzed for the contouring of
synthetic, color Doppler, B-Mode and CWD images. The objective of segmenting the B-Mode
images is to trace the inner boundaries of left ventricle (LV) and aortic valve (AV) along with
the leaflets of AV and mitral valve (MV). The B-Mode images acquired in two parasternal and
three apical windows are used for analysis of segmentation techniques. The color Doppler
images in PLAX and A5C are segmented to trace the outer boundary of regurgitant jet area.
The outer spectrum of the CWD images is traced using multiple segmentation techniques.
To begin with, the edge, region and multi-stage watershed segmentation techniques are
analysed. The performances of these techniques are improved by combining them with
filters. The existing techniques such as wavelet based scale multiplication edge detection
(SMED) approach, intuitionistic fuzzy divergence (IFD) based edge detection, soft
thresholding, topological derivative based delineation, Magagnin and Kiruthika method have
been employed for tracing the outer boundaries of the images. Further, the techniques based
on active contour and level set have been employed for tracing the boundaries in the
presence of intensity in-homogeneity. This set of techniques includes methods such as
reaction diffusion, region scalable fitting (RSF), global minimization of active contour
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(GMAC), Laplacian fitting energy, statistical and variational multiphase level set (SVMLS)
approach, active contour without edges, selective binary and Gaussian filtering regularized
level set. The manually segmented B-Mode images are compared with results obtained on
application of local region based active contour segmentation technique. The estimated
parameters on manual segmentation are compared with those obtained on application of
semi-automated segmentation.
The analysis of segmentation techniques for CWD images is carried out using filtered
as well original noisy images. The Gaussian and median filters used in Kiruthika method,
Magagnin method and reaction diffusion (RD) based active contour method are replaced by
the despeckling techniques in the proposed modifications for these three delineation
techniques. These basic filters are replaced by ten despeckling filters such as DsFlsmv,
DsFmedian, DsFhmedain, DsFad, DsFsrad, DsFlsminsc, DsFhomog, DsFWiener,
DsFhomog and DsFgf4d. Further, performances of the modified RD method with various
despeckling filters are tested using low contrast images with higher intensity in-homogeneity.
The boundaries traced show that embedding of despeckling filter as replacement for the
Gaussian filter in the RD method can be employed in the delineation of CWD images even in
the presence of intensity in-homogeneity.