An improved method for liver diseases detection by ultrasound image analysis

Ultrasound imaging is a popular and noninvasive tool frequently used in the diagnoses of liver diseases. A system to characterize normal, fatty and heterogeneous liver, using textural analysis of liver Ultrasound images, images, is proposed in this paper. The proposed approach is able to select the...

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Main Authors: Mehri Owjimehr, Habibollah Danyali, Mohammad Sadegh Helfroush
Format: Article
Language:English
Published: Wolters Kluwer Medknow Publications 2015-01-01
Series:Journal of Medical Signals and Sensors
Subjects:
Online Access:http://www.jmss.mui.ac.ir/article.asp?issn=2228-7477;year=2015;volume=5;issue=1;spage=21;epage=29;aulast=Owjimehr
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spelling doaj-9f5118a112344d33804d4a86535554442020-11-24T23:08:16ZengWolters Kluwer Medknow PublicationsJournal of Medical Signals and Sensors2228-74772015-01-01512129An improved method for liver diseases detection by ultrasound image analysisMehri OwjimehrHabibollah DanyaliMohammad Sadegh HelfroushUltrasound imaging is a popular and noninvasive tool frequently used in the diagnoses of liver diseases. A system to characterize normal, fatty and heterogeneous liver, using textural analysis of liver Ultrasound images, images, is proposed in this paper. The proposed approach is able to select the optimum regions of interest of the liver images. These optimum regions of interests are analyzed by two level wavelet packet transform to extract some statistical features, namely, median, standard deviation, and interquartile range. Discrimination between heterogeneous, fatty and normal livers is performed in a hierarchical approach in the classification stage. This stage, first, classifies focal and diffused livers and then distinguishes between fatty and normal ones. Support vector machine Support vector machine and k-nearest neighbor classifiers have been used to classify the images into three groups, and their performance is compared. The Support vector machine classifier outperformed the compared classifier, attaining an overall accuracy of 97.9%, with a sensitivity of 100%, 100% and 95.1% for the heterogeneous, fatty and normal class, respectively. The Acc obtained by the proposed computer-aided diagnostic system is quite promising and suggests that the proposed system can be used in a clinical environment to support radiologists and experts in liver diseases interpretation.http://www.jmss.mui.ac.ir/article.asp?issn=2228-7477;year=2015;volume=5;issue=1;spage=21;epage=29;aulast=OwjimehrAutomatic segmentationfatty liver diseasehierarchical classificationwavelet packet transform
collection DOAJ
language English
format Article
sources DOAJ
author Mehri Owjimehr
Habibollah Danyali
Mohammad Sadegh Helfroush
spellingShingle Mehri Owjimehr
Habibollah Danyali
Mohammad Sadegh Helfroush
An improved method for liver diseases detection by ultrasound image analysis
Journal of Medical Signals and Sensors
Automatic segmentation
fatty liver disease
hierarchical classification
wavelet packet transform
author_facet Mehri Owjimehr
Habibollah Danyali
Mohammad Sadegh Helfroush
author_sort Mehri Owjimehr
title An improved method for liver diseases detection by ultrasound image analysis
title_short An improved method for liver diseases detection by ultrasound image analysis
title_full An improved method for liver diseases detection by ultrasound image analysis
title_fullStr An improved method for liver diseases detection by ultrasound image analysis
title_full_unstemmed An improved method for liver diseases detection by ultrasound image analysis
title_sort improved method for liver diseases detection by ultrasound image analysis
publisher Wolters Kluwer Medknow Publications
series Journal of Medical Signals and Sensors
issn 2228-7477
publishDate 2015-01-01
description Ultrasound imaging is a popular and noninvasive tool frequently used in the diagnoses of liver diseases. A system to characterize normal, fatty and heterogeneous liver, using textural analysis of liver Ultrasound images, images, is proposed in this paper. The proposed approach is able to select the optimum regions of interest of the liver images. These optimum regions of interests are analyzed by two level wavelet packet transform to extract some statistical features, namely, median, standard deviation, and interquartile range. Discrimination between heterogeneous, fatty and normal livers is performed in a hierarchical approach in the classification stage. This stage, first, classifies focal and diffused livers and then distinguishes between fatty and normal ones. Support vector machine Support vector machine and k-nearest neighbor classifiers have been used to classify the images into three groups, and their performance is compared. The Support vector machine classifier outperformed the compared classifier, attaining an overall accuracy of 97.9%, with a sensitivity of 100%, 100% and 95.1% for the heterogeneous, fatty and normal class, respectively. The Acc obtained by the proposed computer-aided diagnostic system is quite promising and suggests that the proposed system can be used in a clinical environment to support radiologists and experts in liver diseases interpretation.
topic Automatic segmentation
fatty liver disease
hierarchical classification
wavelet packet transform
url http://www.jmss.mui.ac.ir/article.asp?issn=2228-7477;year=2015;volume=5;issue=1;spage=21;epage=29;aulast=Owjimehr
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