AIBH: Accurate Identification of Brain Hemorrhage Using Genetic Algorithm Based Feature Selection and Stacking

Brain hemorrhage is a type of stroke which is caused by a ruptured artery, resulting in localized bleeding in or around the brain tissues. Among a variety of imaging tests, a computerized tomography (CT) scan of the brain enables the accurate detection and diagnosis of a brain hemorrhage. In this wo...

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Main Authors: Duaa Mohammad Alawad, Avdesh Mishra, Md Tamjidul Hoque
Format: Article
Language:English
Published: MDPI AG 2020-04-01
Series:Machine Learning and Knowledge Extraction
Subjects:
Online Access:https://www.mdpi.com/2504-4990/2/2/5
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spelling doaj-f1ef509a9d82422fa003e1293b1a242e2020-11-25T02:23:40ZengMDPI AGMachine Learning and Knowledge Extraction2504-49902020-04-0125567710.3390/make2020005AIBH: Accurate Identification of Brain Hemorrhage Using Genetic Algorithm Based Feature Selection and StackingDuaa Mohammad Alawad0Avdesh Mishra1Md Tamjidul Hoque2Computer Science, 2000 Lakeshore Drive, Math 308, University of New Orleans, New Orleans, LA 70148, USADepartment of Electrical Engineering and Computer Science, Texas A&M University-Kingsville, Kingsville, TX, 78363, USAComputer Science, 2000 Lakeshore Drive, Math 308, University of New Orleans, New Orleans, LA 70148, USABrain hemorrhage is a type of stroke which is caused by a ruptured artery, resulting in localized bleeding in or around the brain tissues. Among a variety of imaging tests, a computerized tomography (CT) scan of the brain enables the accurate detection and diagnosis of a brain hemorrhage. In this work, we developed a practical approach to detect the existence and type of brain hemorrhage in a CT scan image of the brain, called Accurate Identification of Brain Hemorrhage, abbreviated as AIBH. The steps of the proposed method consist of image preprocessing, image segmentation, feature extraction, feature selection, and design of an advanced classification framework. The image preprocessing and segmentation steps involve removing the skull region from the image and finding out the region of interest (ROI) using Otsu’s method, respectively. Subsequently, feature extraction includes the collection of a comprehensive set of features from the ROI, such as the size of the ROI, centroid of the ROI, perimeter of the ROI, the distance between the ROI and the skull, and more. Furthermore, a genetic algorithm (GA)-based feature selection algorithm is utilized to select relevant features for improved performance. These features are then used to train the stacking-based machine learning framework to predict different types of a brain hemorrhage. Finally, the evaluation results indicate that the proposed predictor achieves a 10-fold cross-validation (CV) accuracy (ACC), precision (PR), Recall, F1-score, and Matthews correlation coefficient (MCC) of 99.5%, 99%, 98.9%, 0.989, and 0.986, respectively, on the benchmark CT scan dataset. While comparing AIBH with the existing state-of-the-art classification method of the brain hemorrhage type, AIBH provides an improvement of 7.03%, 7.27%, and 7.38% based on PR, Recall, and F1-score, respectively. Therefore, the proposed approach considerably outperforms the existing brain hemorrhage classification approach and can be useful for the effective prediction of brain hemorrhage types from CT scan images (The code and data can be found here: http://cs.uno.edu/~tamjid/Software/AIBH/code_data.zip).https://www.mdpi.com/2504-4990/2/2/5computer-aided detectionbrain hemorrhagebrain CT scansmachine learningstackingimage processing
collection DOAJ
language English
format Article
sources DOAJ
author Duaa Mohammad Alawad
Avdesh Mishra
Md Tamjidul Hoque
spellingShingle Duaa Mohammad Alawad
Avdesh Mishra
Md Tamjidul Hoque
AIBH: Accurate Identification of Brain Hemorrhage Using Genetic Algorithm Based Feature Selection and Stacking
Machine Learning and Knowledge Extraction
computer-aided detection
brain hemorrhage
brain CT scans
machine learning
stacking
image processing
author_facet Duaa Mohammad Alawad
Avdesh Mishra
Md Tamjidul Hoque
author_sort Duaa Mohammad Alawad
title AIBH: Accurate Identification of Brain Hemorrhage Using Genetic Algorithm Based Feature Selection and Stacking
title_short AIBH: Accurate Identification of Brain Hemorrhage Using Genetic Algorithm Based Feature Selection and Stacking
title_full AIBH: Accurate Identification of Brain Hemorrhage Using Genetic Algorithm Based Feature Selection and Stacking
title_fullStr AIBH: Accurate Identification of Brain Hemorrhage Using Genetic Algorithm Based Feature Selection and Stacking
title_full_unstemmed AIBH: Accurate Identification of Brain Hemorrhage Using Genetic Algorithm Based Feature Selection and Stacking
title_sort aibh: accurate identification of brain hemorrhage using genetic algorithm based feature selection and stacking
publisher MDPI AG
series Machine Learning and Knowledge Extraction
issn 2504-4990
publishDate 2020-04-01
description Brain hemorrhage is a type of stroke which is caused by a ruptured artery, resulting in localized bleeding in or around the brain tissues. Among a variety of imaging tests, a computerized tomography (CT) scan of the brain enables the accurate detection and diagnosis of a brain hemorrhage. In this work, we developed a practical approach to detect the existence and type of brain hemorrhage in a CT scan image of the brain, called Accurate Identification of Brain Hemorrhage, abbreviated as AIBH. The steps of the proposed method consist of image preprocessing, image segmentation, feature extraction, feature selection, and design of an advanced classification framework. The image preprocessing and segmentation steps involve removing the skull region from the image and finding out the region of interest (ROI) using Otsu’s method, respectively. Subsequently, feature extraction includes the collection of a comprehensive set of features from the ROI, such as the size of the ROI, centroid of the ROI, perimeter of the ROI, the distance between the ROI and the skull, and more. Furthermore, a genetic algorithm (GA)-based feature selection algorithm is utilized to select relevant features for improved performance. These features are then used to train the stacking-based machine learning framework to predict different types of a brain hemorrhage. Finally, the evaluation results indicate that the proposed predictor achieves a 10-fold cross-validation (CV) accuracy (ACC), precision (PR), Recall, F1-score, and Matthews correlation coefficient (MCC) of 99.5%, 99%, 98.9%, 0.989, and 0.986, respectively, on the benchmark CT scan dataset. While comparing AIBH with the existing state-of-the-art classification method of the brain hemorrhage type, AIBH provides an improvement of 7.03%, 7.27%, and 7.38% based on PR, Recall, and F1-score, respectively. Therefore, the proposed approach considerably outperforms the existing brain hemorrhage classification approach and can be useful for the effective prediction of brain hemorrhage types from CT scan images (The code and data can be found here: http://cs.uno.edu/~tamjid/Software/AIBH/code_data.zip).
topic computer-aided detection
brain hemorrhage
brain CT scans
machine learning
stacking
image processing
url https://www.mdpi.com/2504-4990/2/2/5
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