Surface roughness detection of arteries via texture analysis of ultrasound images for early diagnosis of atherosclerosis.

There is a strong research interest in identifying the surface roughness of the carotid arterial inner wall via texture analysis for early diagnosis of atherosclerosis. The purpose of this study is to assess the efficacy of texture analysis methods for identifying arterial roughness in the early sta...

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Main Authors: Lili Niu, Ming Qian, Wei Yang, Long Meng, Yang Xiao, Kelvin K L Wong, Derek Abbott, Xin Liu, Hairong Zheng
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2013-01-01
Series:PLoS ONE
Online Access:http://europepmc.org/articles/PMC3798305?pdf=render
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spelling doaj-d4526d582d624549ae2642bfe488d45e2020-11-25T02:16:52ZengPublic Library of Science (PLoS)PLoS ONE1932-62032013-01-01810e7688010.1371/journal.pone.0076880Surface roughness detection of arteries via texture analysis of ultrasound images for early diagnosis of atherosclerosis.Lili NiuMing QianWei YangLong MengYang XiaoKelvin K L WongDerek AbbottXin LiuHairong ZhengThere is a strong research interest in identifying the surface roughness of the carotid arterial inner wall via texture analysis for early diagnosis of atherosclerosis. The purpose of this study is to assess the efficacy of texture analysis methods for identifying arterial roughness in the early stage of atherosclerosis. Ultrasound images of common carotid arteries of 15 normal mice fed a normal diet and 28 apoE(-/-) mice fed a high-fat diet were recorded by a high-frequency ultrasound system (Vevo 2100, frequency: 40 MHz). Six different texture feature sets were extracted based on the following methods: first-order statistics, fractal dimension texture analysis, spatial gray level dependence matrix, gray level difference statistics, the neighborhood gray tone difference matrix, and the statistical feature matrix. Statistical analysis indicates that 11 of 19 texture features can be used to distinguish between normal and abnormal groups (p<0.05). When the 11 optimal features were used as inputs to a support vector machine classifier, we achieved over 89% accuracy, 87% sensitivity and 93% specificity. The accuracy, sensitivity and specificity for the k-nearest neighbor classifier were 73%, 75% and 70%, respectively. The results show that it is feasible to identify arterial surface roughness based on texture features extracted from ultrasound images of the carotid arterial wall. This method is shown to be useful for early detection and diagnosis of atherosclerosis.http://europepmc.org/articles/PMC3798305?pdf=render
collection DOAJ
language English
format Article
sources DOAJ
author Lili Niu
Ming Qian
Wei Yang
Long Meng
Yang Xiao
Kelvin K L Wong
Derek Abbott
Xin Liu
Hairong Zheng
spellingShingle Lili Niu
Ming Qian
Wei Yang
Long Meng
Yang Xiao
Kelvin K L Wong
Derek Abbott
Xin Liu
Hairong Zheng
Surface roughness detection of arteries via texture analysis of ultrasound images for early diagnosis of atherosclerosis.
PLoS ONE
author_facet Lili Niu
Ming Qian
Wei Yang
Long Meng
Yang Xiao
Kelvin K L Wong
Derek Abbott
Xin Liu
Hairong Zheng
author_sort Lili Niu
title Surface roughness detection of arteries via texture analysis of ultrasound images for early diagnosis of atherosclerosis.
title_short Surface roughness detection of arteries via texture analysis of ultrasound images for early diagnosis of atherosclerosis.
title_full Surface roughness detection of arteries via texture analysis of ultrasound images for early diagnosis of atherosclerosis.
title_fullStr Surface roughness detection of arteries via texture analysis of ultrasound images for early diagnosis of atherosclerosis.
title_full_unstemmed Surface roughness detection of arteries via texture analysis of ultrasound images for early diagnosis of atherosclerosis.
title_sort surface roughness detection of arteries via texture analysis of ultrasound images for early diagnosis of atherosclerosis.
publisher Public Library of Science (PLoS)
series PLoS ONE
issn 1932-6203
publishDate 2013-01-01
description There is a strong research interest in identifying the surface roughness of the carotid arterial inner wall via texture analysis for early diagnosis of atherosclerosis. The purpose of this study is to assess the efficacy of texture analysis methods for identifying arterial roughness in the early stage of atherosclerosis. Ultrasound images of common carotid arteries of 15 normal mice fed a normal diet and 28 apoE(-/-) mice fed a high-fat diet were recorded by a high-frequency ultrasound system (Vevo 2100, frequency: 40 MHz). Six different texture feature sets were extracted based on the following methods: first-order statistics, fractal dimension texture analysis, spatial gray level dependence matrix, gray level difference statistics, the neighborhood gray tone difference matrix, and the statistical feature matrix. Statistical analysis indicates that 11 of 19 texture features can be used to distinguish between normal and abnormal groups (p<0.05). When the 11 optimal features were used as inputs to a support vector machine classifier, we achieved over 89% accuracy, 87% sensitivity and 93% specificity. The accuracy, sensitivity and specificity for the k-nearest neighbor classifier were 73%, 75% and 70%, respectively. The results show that it is feasible to identify arterial surface roughness based on texture features extracted from ultrasound images of the carotid arterial wall. This method is shown to be useful for early detection and diagnosis of atherosclerosis.
url http://europepmc.org/articles/PMC3798305?pdf=render
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