Brain tumor segmentation of MR images using SVM and fuzzy classifier in machine learning

Medical image processing is a rapidly growing and concentrating topic today. Medical image analysis techniques are used to diagnose and cure illnesses. One such fundamental and potentially fatal illness is brain tumor, which is an abnormal growth of brain cells within the brain. Due to the complexit...

Full description

Bibliographic Details
Main Authors: Ramdas Vankdothu, Mohd Abdul Hameed
Format: Article
Language:English
Published: Elsevier 2022-12-01
Series:Measurement: Sensors
Subjects:
Online Access:http://www.sciencedirect.com/science/article/pii/S2665917422000745
_version_ 1817969184497205248
author Ramdas Vankdothu
Mohd Abdul Hameed
author_facet Ramdas Vankdothu
Mohd Abdul Hameed
author_sort Ramdas Vankdothu
collection DOAJ
description Medical image processing is a rapidly growing and concentrating topic today. Medical image analysis techniques are used to diagnose and cure illnesses. One such fundamental and potentially fatal illness is brain tumor, which is an abnormal growth of brain cells within the brain. Due to the complexity of the brain's anatomy. To improve efficiency and reduce the complexity of the picture segmentation process, this work investigated computer tomography (CT)-based brain tumor segmentation. CT scans are often used to diagnose head traumas, malignancies, and skull fractures. The images from the brain tumor database are evaluated in this study effort, and a preprocessing approach called adaptive median filter is used to increase the image's clarity. The preprocessing stage eliminates noise and high-frequency artifacts from the pictures. The median filter is a type of nonlinear digital filter commonly used to reduce noise in a picture or signal. Regardless of the preprocessing technique used, feature extraction techniques are updated, and then classification procedures such as the Adaptive Neuro-Fuzzy Inference System (ANFIS) and Support Vector Machine (SVM) classifier are applied to the picture to classify it as normal or abnormal. Following classification, aberrant images are tracked and selected for segmentation using the Fuzzy C-Means (FCM) clustering technique and associated optimization techniques. In the suggested technique, centroid optimizations such as Grey Wolf Optimization (GWO) and Social Spider Optimization (SSO) combined with a Genetic Algorithm (GA) are utilized to improve the accuracy of the FCM centroid. The suggested work produces the most extreme execution in tumour picture segmentation evaluation appears differently from other works. The conclusion indicates that the hybrid technique (SSO-GA) obtains the highest accuracy of 99.24% compared to other individual algorithms. MATLAB 2014 is utilized to implement the brain tumor classification and segmentation algorithms in this research effort.
first_indexed 2024-04-13T20:18:08Z
format Article
id doaj.art-552e66eb1b5f4dc78e07d95f49c3805f
institution Directory Open Access Journal
issn 2665-9174
language English
last_indexed 2024-04-13T20:18:08Z
publishDate 2022-12-01
publisher Elsevier
record_format Article
series Measurement: Sensors
spelling doaj.art-552e66eb1b5f4dc78e07d95f49c3805f2022-12-22T02:31:38ZengElsevierMeasurement: Sensors2665-91742022-12-0124100440Brain tumor segmentation of MR images using SVM and fuzzy classifier in machine learningRamdas Vankdothu0Mohd Abdul Hameed1Corresponding author.; Department of Computer Science & Engineering, University College of Engineering(A), Osmania University Hyderabad, IndiaDepartment of Computer Science & Engineering, University College of Engineering(A), Osmania University Hyderabad, IndiaMedical image processing is a rapidly growing and concentrating topic today. Medical image analysis techniques are used to diagnose and cure illnesses. One such fundamental and potentially fatal illness is brain tumor, which is an abnormal growth of brain cells within the brain. Due to the complexity of the brain's anatomy. To improve efficiency and reduce the complexity of the picture segmentation process, this work investigated computer tomography (CT)-based brain tumor segmentation. CT scans are often used to diagnose head traumas, malignancies, and skull fractures. The images from the brain tumor database are evaluated in this study effort, and a preprocessing approach called adaptive median filter is used to increase the image's clarity. The preprocessing stage eliminates noise and high-frequency artifacts from the pictures. The median filter is a type of nonlinear digital filter commonly used to reduce noise in a picture or signal. Regardless of the preprocessing technique used, feature extraction techniques are updated, and then classification procedures such as the Adaptive Neuro-Fuzzy Inference System (ANFIS) and Support Vector Machine (SVM) classifier are applied to the picture to classify it as normal or abnormal. Following classification, aberrant images are tracked and selected for segmentation using the Fuzzy C-Means (FCM) clustering technique and associated optimization techniques. In the suggested technique, centroid optimizations such as Grey Wolf Optimization (GWO) and Social Spider Optimization (SSO) combined with a Genetic Algorithm (GA) are utilized to improve the accuracy of the FCM centroid. The suggested work produces the most extreme execution in tumour picture segmentation evaluation appears differently from other works. The conclusion indicates that the hybrid technique (SSO-GA) obtains the highest accuracy of 99.24% compared to other individual algorithms. MATLAB 2014 is utilized to implement the brain tumor classification and segmentation algorithms in this research effort.http://www.sciencedirect.com/science/article/pii/S2665917422000745Brain tumourSegmentationSVMFuzzy classifierMagnetic resonance imaging(MRI)
spellingShingle Ramdas Vankdothu
Mohd Abdul Hameed
Brain tumor segmentation of MR images using SVM and fuzzy classifier in machine learning
Measurement: Sensors
Brain tumour
Segmentation
SVM
Fuzzy classifier
Magnetic resonance imaging(MRI)
title Brain tumor segmentation of MR images using SVM and fuzzy classifier in machine learning
title_full Brain tumor segmentation of MR images using SVM and fuzzy classifier in machine learning
title_fullStr Brain tumor segmentation of MR images using SVM and fuzzy classifier in machine learning
title_full_unstemmed Brain tumor segmentation of MR images using SVM and fuzzy classifier in machine learning
title_short Brain tumor segmentation of MR images using SVM and fuzzy classifier in machine learning
title_sort brain tumor segmentation of mr images using svm and fuzzy classifier in machine learning
topic Brain tumour
Segmentation
SVM
Fuzzy classifier
Magnetic resonance imaging(MRI)
url http://www.sciencedirect.com/science/article/pii/S2665917422000745
work_keys_str_mv AT ramdasvankdothu braintumorsegmentationofmrimagesusingsvmandfuzzyclassifierinmachinelearning
AT mohdabdulhameed braintumorsegmentationofmrimagesusingsvmandfuzzyclassifierinmachinelearning