Measurement of Carotid Artery Wall Thickness and Diameters from Magnetic Resonance and Ultrasound Images
Date
2018
Authors
Kumar P, Krishna
Journal Title
Journal ISSN
Volume Title
Publisher
National Institute of Technology Karnataka, Surathkal
Abstract
One of the most common causes of cardiovascular diseases (CVD) is atherosclerosis
which is the continuous build-up of fatty deposits (plaques) on the inner walls of the
blood vessels (arteries). The incidence of ischemic strokes is highly associated with
the rupture of atherosclerotic plaques in the common carotid artery (CCA). To assess
carotid atherosclerosis, non-invasive imaging modalities such as magnetic resonance
(MR) and ultrasound (US) imaging are preferred over other invasive methods due to
their safer profile and ability to explore atherosclerosis in its early stages. It has been
increasingly accepted that the wall thickness and diameter measurements of the CCA
can serve as early indicators of CVD development. However, manual measurement of
these quantities is tedious, error-prone and subjected to observer variability. Hence,
there is a growing interest for the development of automated software systems for the
measurement of wall thickness and diameters of the CCA from MR and US images. The
development of such automated systems was the primary objective of this research.
MR and US images are generally corrupted with noise which makes their interpretation and further processing difficult. This necessitates the task of denoising as a
pre-processing stage which can improve the performance of image segmentation techniques. For this reason, a robust denoising filter (NLMLDCT ) has been proposed in this
thesis to reduce the Rician noise in MR images by integrating discrete cosine transform
into the conventional non-local maximum likelihood (NLML) method. Whereas, one
of the widely accepted method named OBNLM is adopted in our work to reduce the
speckle noise in US images.
We have proposed novel algorithms for delineation of the carotid artery borders
from MR and US images. The wall thickness of the CCA has been measured from T1-
iiiweighted MR images using an active contour method combined with localized particle
swarm optimization. This combination of global and localized segmentation strategy
helped us to reduce the edge leaking problem to some extent. Due to better reliability, the diameters of the CCA have been measured from B-mode US images via a
region-based approach. For this measurement, we have delineated the lumen-intima
and media-adventitia borders of the CCA using a scale-space based strategy. This automated segmentation system has been further improved using an iterative spatial transformation based technique for handling curved vessels. Comprehensive statistical data
analysis was performed to ensure the superior performance of the proposed techniques
against the manual expert tracings.
Description
Keywords
Department of Computer Science & Engineering, Carotid Artery, MRI, Ultrasound, Denoising, Segmentation