Hybridization Techniques To Detect Brain Tumor
Diagnosing brain tumor in present era through digital techniques need serious attention as the number of patients are increasing in an awkward manner. Magnetic Resonance Imaging is the tool that is used for detection of brain tumors. This paper is classified in two phases i.e. normal and abnormal b...
Main Authors: | , , , |
---|---|
Format: | Article |
Language: | English |
Published: |
Sukkur IBA University
2021-01-01
|
Series: | Sukkur IBA Journal of Computing and Mathematical Sciences |
Online Access: | http://localhost:8089/SIBAJournals/index.php/sjcms/article/view/655 |
id |
doaj-6c30af7181fb4b03934f23d200c1e959 |
---|---|
record_format |
Article |
spelling |
doaj-6c30af7181fb4b03934f23d200c1e9592021-09-29T09:09:56ZengSukkur IBA UniversitySukkur IBA Journal of Computing and Mathematical Sciences2520-07552522-30032021-01-0142Hybridization Techniques To Detect Brain TumorMuhammad Abrar0Asif Hussain1Roha Masroor2Ifra Masroor3BZU MultanNCBA&ENCBA&ENCBA&E Diagnosing brain tumor in present era through digital techniques need serious attention as the number of patients are increasing in an awkward manner. Magnetic Resonance Imaging is the tool that is used for detection of brain tumors. This paper is classified in two phases i.e. normal and abnormal brain images. Then, Feature selection and classification are applied on the given data set. Classification on given data set is done through K- Nearest Neighbor. In the given study, we have taken normal and abnormal samples from Nishtar Medical hospital, Multan. In order to classify brain images, first it needs to pre-process through skull stripping technique then the proposed algorithm is followed. Algorithm involves feature extraction through GLCM and feature selection through ACO. Results have proved its efficiency level up-to 88%. http://localhost:8089/SIBAJournals/index.php/sjcms/article/view/655 |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Muhammad Abrar Asif Hussain Roha Masroor Ifra Masroor |
spellingShingle |
Muhammad Abrar Asif Hussain Roha Masroor Ifra Masroor Hybridization Techniques To Detect Brain Tumor Sukkur IBA Journal of Computing and Mathematical Sciences |
author_facet |
Muhammad Abrar Asif Hussain Roha Masroor Ifra Masroor |
author_sort |
Muhammad Abrar |
title |
Hybridization Techniques To Detect Brain Tumor |
title_short |
Hybridization Techniques To Detect Brain Tumor |
title_full |
Hybridization Techniques To Detect Brain Tumor |
title_fullStr |
Hybridization Techniques To Detect Brain Tumor |
title_full_unstemmed |
Hybridization Techniques To Detect Brain Tumor |
title_sort |
hybridization techniques to detect brain tumor |
publisher |
Sukkur IBA University |
series |
Sukkur IBA Journal of Computing and Mathematical Sciences |
issn |
2520-0755 2522-3003 |
publishDate |
2021-01-01 |
description |
Diagnosing brain tumor in present era through digital techniques need serious attention as the number of patients are increasing in an awkward manner. Magnetic Resonance Imaging is the tool that is used for detection of brain tumors. This paper is classified in two phases i.e. normal and abnormal brain images. Then, Feature selection and classification are applied on the given data set. Classification on given data set is done through K- Nearest Neighbor. In the given study, we have taken normal and abnormal samples from Nishtar Medical hospital, Multan. In order to classify brain images, first it needs to pre-process through skull stripping technique then the proposed algorithm is followed. Algorithm involves feature extraction through GLCM and feature selection through ACO. Results have proved its efficiency level up-to 88%.
|
url |
http://localhost:8089/SIBAJournals/index.php/sjcms/article/view/655 |
work_keys_str_mv |
AT muhammadabrar hybridizationtechniquestodetectbraintumor AT asifhussain hybridizationtechniquestodetectbraintumor AT rohamasroor hybridizationtechniquestodetectbraintumor AT iframasroor hybridizationtechniquestodetectbraintumor |
_version_ |
1716864469895741440 |