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18 - Image postprocessing

from Morphological plaque imaging

Published online by Cambridge University Press:  03 December 2009

William Kerwin
Affiliation:
University of Washington, Seattle WA, USA
Dongxiang Xu
Affiliation:
University of Washington, Seattle WA, USA
Fei Liu
Affiliation:
University of Washington, Seattle WA, USA
Jonathan Gillard
Affiliation:
University of Cambridge
Martin Graves
Affiliation:
University of Cambridge
Thomas Hatsukami
Affiliation:
University of Washington
Chun Yuan
Affiliation:
University of Washington
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Summary

Introduction

Atherosclerosis, the disease behind heart attacks and strokes, is characterized by build-up of plaque within the intimal layer of arteries. Clinical events occur due to thrombosis, in which a clot occludes the vessel at the lesion site and embolization, in which thrombotic materials from the site of a lesion are released into the blood stream and occlude distal vessels. To date, the primary clinical indicator for risk from atherosclerotic plaque has been stenosis, expressed as a percentage reduction in the lumen diameter of the vessel. Stenosis is typically assessed by angiography or duplex ultrasound.

However, stenosis provides an incomplete picture of risk. Arteries exhibiting only moderate stenosis account for a large percentage of strokes and heart attacks. Histological studies in various vascular beds have established that features of the atherosclerotic plaque itself dictate its clinical course in cases of moderate stenosis (Falk, 1992). Specific plaque features associated with clinical risk include a fibrous cap that is thin, ruptured, or ulcerated and a large lipid-rich necrotic core (Virmani et al., 2000). Together these features define the “vulnerable plaque.”

Given the significance of vulnerable plaque for patient prognosis, considerable interest exists in developing noninvasive means to measure plaque features and provide clinical indicators that augment stenosis. Research in recent years has shown that magnetic resonance imaging (MRI) is a powerful tool for identifying plaque features in the carotid artery.

Type
Chapter
Information
Carotid Disease
The Role of Imaging in Diagnosis and Management
, pp. 235 - 250
Publisher: Cambridge University Press
Print publication year: 2006

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