Computer Aided Diagnosis System-A Decision Support System for Clinical Diagnosis of Brain Tumours

The iso, hypo or hyper intensity, similarity of shape, size and location complicates the identification of brain tumors. Therefore, an adequate Computer Aided Diagnosis (CAD) system is designed for classification of brain tumor for assisting inexperience radiologists in diagnosis process. A multifar...

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Main Authors: Puneet Tiwari, Jainy Sachdeva, Chirag Kamal Ahuja, Niranjan Khandelwal
Format: Article
Language:English
Published: Atlantis Press 2017-01-01
Series:International Journal of Computational Intelligence Systems
Subjects:
Online Access:https://www.atlantis-press.com/article/25865495/view
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spelling doaj-2354b921515e42e7870dd9ecf28891522020-11-25T01:38:06ZengAtlantis PressInternational Journal of Computational Intelligence Systems 1875-68832017-01-0110110.2991/ijcis.2017.10.1.8Computer Aided Diagnosis System-A Decision Support System for Clinical Diagnosis of Brain TumoursPuneet TiwariJainy SachdevaChirag Kamal AhujaNiranjan KhandelwalThe iso, hypo or hyper intensity, similarity of shape, size and location complicates the identification of brain tumors. Therefore, an adequate Computer Aided Diagnosis (CAD) system is designed for classification of brain tumor for assisting inexperience radiologists in diagnosis process. A multifarious database of real post contrast T1-weighted MR images from 10 patients has been taken. This database consists of primary brain tumors namely Meningioma (MENI- class 1), Astrocytoma (AST- class 2), and Normal brain regions (NORM- class 3). The region of interest(s) (ROIs) of size 20 x 20 is extracted by the radiologists from each image in the database. A total of 371 texture and intensity features are extracted from these ROI(s). An Artificial Neural Network (ANN) is used to classify these three classes as it shows better classification results on multivariate non-linear, complicated, rule based domains, and decision making domains. It is being observed that ANN provides much accurate results in terms of individual classification accuracy and overall classification accuracy. The four discrete experiments have been performed. Initially, the experiment was performed by extracting 263 features and an overall classification accuracy 78.10% is achieved, however, it was noticed that MENI (class-1) was highly misclassified with AST (class-2). Further, to improve the overall classification accuracy and individual classification accuracy specifically for MENI (class-1), LAWs textural energy measures (LTEM) are added in the feature bank (263+108=371). An individual class accuracy of 91.40% is obtained for MENI (class-1), 91.43% for AST (class-2), 94.29% for NORM (class-3) and an overall classification accuracy of 92.43% is achieved. The results are calculated with and without addition of LTEM feature with Principle component analysis (PCA)-ANN. LTEM-PCA-ANN approach improved results with an overall accuracy of 93.34%. The texture patterns obtained were clear enough to differentiate between MENI (class-1) and AST (class-2) despite of necrotic and cystic component and location and size of tumor. LTEM detected fundamental texture properties such as level, edge, spot, wave and ripple in both horizontal and vertical directions which boosted the texture energy.https://www.atlantis-press.com/article/25865495/viewComputer aided diagnosis (CAD)Region of interest(s) (ROIs)Magnetic resonance (MR)Artificial neural network (ANN)Graphical user interface (GUI)
collection DOAJ
language English
format Article
sources DOAJ
author Puneet Tiwari
Jainy Sachdeva
Chirag Kamal Ahuja
Niranjan Khandelwal
spellingShingle Puneet Tiwari
Jainy Sachdeva
Chirag Kamal Ahuja
Niranjan Khandelwal
Computer Aided Diagnosis System-A Decision Support System for Clinical Diagnosis of Brain Tumours
International Journal of Computational Intelligence Systems
Computer aided diagnosis (CAD)
Region of interest(s) (ROIs)
Magnetic resonance (MR)
Artificial neural network (ANN)
Graphical user interface (GUI)
author_facet Puneet Tiwari
Jainy Sachdeva
Chirag Kamal Ahuja
Niranjan Khandelwal
author_sort Puneet Tiwari
title Computer Aided Diagnosis System-A Decision Support System for Clinical Diagnosis of Brain Tumours
title_short Computer Aided Diagnosis System-A Decision Support System for Clinical Diagnosis of Brain Tumours
title_full Computer Aided Diagnosis System-A Decision Support System for Clinical Diagnosis of Brain Tumours
title_fullStr Computer Aided Diagnosis System-A Decision Support System for Clinical Diagnosis of Brain Tumours
title_full_unstemmed Computer Aided Diagnosis System-A Decision Support System for Clinical Diagnosis of Brain Tumours
title_sort computer aided diagnosis system-a decision support system for clinical diagnosis of brain tumours
publisher Atlantis Press
series International Journal of Computational Intelligence Systems
issn 1875-6883
publishDate 2017-01-01
description The iso, hypo or hyper intensity, similarity of shape, size and location complicates the identification of brain tumors. Therefore, an adequate Computer Aided Diagnosis (CAD) system is designed for classification of brain tumor for assisting inexperience radiologists in diagnosis process. A multifarious database of real post contrast T1-weighted MR images from 10 patients has been taken. This database consists of primary brain tumors namely Meningioma (MENI- class 1), Astrocytoma (AST- class 2), and Normal brain regions (NORM- class 3). The region of interest(s) (ROIs) of size 20 x 20 is extracted by the radiologists from each image in the database. A total of 371 texture and intensity features are extracted from these ROI(s). An Artificial Neural Network (ANN) is used to classify these three classes as it shows better classification results on multivariate non-linear, complicated, rule based domains, and decision making domains. It is being observed that ANN provides much accurate results in terms of individual classification accuracy and overall classification accuracy. The four discrete experiments have been performed. Initially, the experiment was performed by extracting 263 features and an overall classification accuracy 78.10% is achieved, however, it was noticed that MENI (class-1) was highly misclassified with AST (class-2). Further, to improve the overall classification accuracy and individual classification accuracy specifically for MENI (class-1), LAWs textural energy measures (LTEM) are added in the feature bank (263+108=371). An individual class accuracy of 91.40% is obtained for MENI (class-1), 91.43% for AST (class-2), 94.29% for NORM (class-3) and an overall classification accuracy of 92.43% is achieved. The results are calculated with and without addition of LTEM feature with Principle component analysis (PCA)-ANN. LTEM-PCA-ANN approach improved results with an overall accuracy of 93.34%. The texture patterns obtained were clear enough to differentiate between MENI (class-1) and AST (class-2) despite of necrotic and cystic component and location and size of tumor. LTEM detected fundamental texture properties such as level, edge, spot, wave and ripple in both horizontal and vertical directions which boosted the texture energy.
topic Computer aided diagnosis (CAD)
Region of interest(s) (ROIs)
Magnetic resonance (MR)
Artificial neural network (ANN)
Graphical user interface (GUI)
url https://www.atlantis-press.com/article/25865495/view
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