Ischemic Stroke Detection System with a Computer-Aided Diagnostic Ability Using an Unsupervised Feature Perception Enhancement Method

We propose an ischemic stroke detection system with a computer-aided diagnostic ability using a four-step unsupervised feature perception enhancement method. In the first step, known as preprocessing, we use a cubic curve contrast enhancement method to enhance image contrast. In the second step, we...

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Main Authors: Yeu-Sheng Tyan, Ming-Chi Wu, Chiun-Li Chin, Yu-Liang Kuo, Ming-Sian Lee, Hao-Yan Chang
Format: Article
Language:English
Published: Hindawi Limited 2014-01-01
Series:International Journal of Biomedical Imaging
Online Access:http://dx.doi.org/10.1155/2014/947539
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spelling doaj-33d49cbb9d6c4d91bfdec77b7d56cf662020-11-24T22:27:53ZengHindawi LimitedInternational Journal of Biomedical Imaging1687-41881687-41962014-01-01201410.1155/2014/947539947539Ischemic Stroke Detection System with a Computer-Aided Diagnostic Ability Using an Unsupervised Feature Perception Enhancement MethodYeu-Sheng Tyan0Ming-Chi Wu1Chiun-Li Chin2Yu-Liang Kuo3Ming-Sian Lee4Hao-Yan Chang5School of Medicine, Chung Shan Medical University, No. 110, Section 1, Jianguo North Road, Taichung 40201, TaiwanSchool of Medicine, Chung Shan Medical University, No. 110, Section 1, Jianguo North Road, Taichung 40201, TaiwanSchool of Medical Informatics, Chung Shan Medical University, No. 110, Section 1, Jianguo North Road, Taichung 40201, TaiwanDepartment of Medical Imaging, Chung Shan Medical University Hospital, No. 110, Section 1, Jianguo North Road, Taichung 40201, TaiwanSchool of Medical Informatics, Chung Shan Medical University, No. 110, Section 1, Jianguo North Road, Taichung 40201, TaiwanSchool of Medical Informatics, Chung Shan Medical University, No. 110, Section 1, Jianguo North Road, Taichung 40201, TaiwanWe propose an ischemic stroke detection system with a computer-aided diagnostic ability using a four-step unsupervised feature perception enhancement method. In the first step, known as preprocessing, we use a cubic curve contrast enhancement method to enhance image contrast. In the second step, we use a series of methods to extract the brain tissue image area identified during preprocessing. To detect abnormal regions in the brain images, we propose using an unsupervised region growing algorithm to segment the brain tissue area. The brain is centered on a horizontal line and the white matter of the brain’s inner ring is split into eight regions. In the third step, we use a coinciding regional location method to find the hybrid area of locations where a stroke may have occurred in each cerebral hemisphere. Finally, we make corrections and mark the stroke area with red color. In the experiment, we tested the system on 90 computed tomography (CT) images from 26 patients, and, with the assistance of two radiologists, we proved that our proposed system has computer-aided diagnostic capabilities. Our results show an increased stroke diagnosis sensitivity of 83% in comparison to 31% when radiologists use conventional diagnostic images.http://dx.doi.org/10.1155/2014/947539
collection DOAJ
language English
format Article
sources DOAJ
author Yeu-Sheng Tyan
Ming-Chi Wu
Chiun-Li Chin
Yu-Liang Kuo
Ming-Sian Lee
Hao-Yan Chang
spellingShingle Yeu-Sheng Tyan
Ming-Chi Wu
Chiun-Li Chin
Yu-Liang Kuo
Ming-Sian Lee
Hao-Yan Chang
Ischemic Stroke Detection System with a Computer-Aided Diagnostic Ability Using an Unsupervised Feature Perception Enhancement Method
International Journal of Biomedical Imaging
author_facet Yeu-Sheng Tyan
Ming-Chi Wu
Chiun-Li Chin
Yu-Liang Kuo
Ming-Sian Lee
Hao-Yan Chang
author_sort Yeu-Sheng Tyan
title Ischemic Stroke Detection System with a Computer-Aided Diagnostic Ability Using an Unsupervised Feature Perception Enhancement Method
title_short Ischemic Stroke Detection System with a Computer-Aided Diagnostic Ability Using an Unsupervised Feature Perception Enhancement Method
title_full Ischemic Stroke Detection System with a Computer-Aided Diagnostic Ability Using an Unsupervised Feature Perception Enhancement Method
title_fullStr Ischemic Stroke Detection System with a Computer-Aided Diagnostic Ability Using an Unsupervised Feature Perception Enhancement Method
title_full_unstemmed Ischemic Stroke Detection System with a Computer-Aided Diagnostic Ability Using an Unsupervised Feature Perception Enhancement Method
title_sort ischemic stroke detection system with a computer-aided diagnostic ability using an unsupervised feature perception enhancement method
publisher Hindawi Limited
series International Journal of Biomedical Imaging
issn 1687-4188
1687-4196
publishDate 2014-01-01
description We propose an ischemic stroke detection system with a computer-aided diagnostic ability using a four-step unsupervised feature perception enhancement method. In the first step, known as preprocessing, we use a cubic curve contrast enhancement method to enhance image contrast. In the second step, we use a series of methods to extract the brain tissue image area identified during preprocessing. To detect abnormal regions in the brain images, we propose using an unsupervised region growing algorithm to segment the brain tissue area. The brain is centered on a horizontal line and the white matter of the brain’s inner ring is split into eight regions. In the third step, we use a coinciding regional location method to find the hybrid area of locations where a stroke may have occurred in each cerebral hemisphere. Finally, we make corrections and mark the stroke area with red color. In the experiment, we tested the system on 90 computed tomography (CT) images from 26 patients, and, with the assistance of two radiologists, we proved that our proposed system has computer-aided diagnostic capabilities. Our results show an increased stroke diagnosis sensitivity of 83% in comparison to 31% when radiologists use conventional diagnostic images.
url http://dx.doi.org/10.1155/2014/947539
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AT mingchiwu ischemicstrokedetectionsystemwithacomputeraideddiagnosticabilityusinganunsupervisedfeatureperceptionenhancementmethod
AT chiunlichin ischemicstrokedetectionsystemwithacomputeraideddiagnosticabilityusinganunsupervisedfeatureperceptionenhancementmethod
AT yuliangkuo ischemicstrokedetectionsystemwithacomputeraideddiagnosticabilityusinganunsupervisedfeatureperceptionenhancementmethod
AT mingsianlee ischemicstrokedetectionsystemwithacomputeraideddiagnosticabilityusinganunsupervisedfeatureperceptionenhancementmethod
AT haoyanchang ischemicstrokedetectionsystemwithacomputeraideddiagnosticabilityusinganunsupervisedfeatureperceptionenhancementmethod
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