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Improved Machine Learning Method for Intracranial Tumor Detection with Accelerated Particle Swarm Optimization

The field of image processing is distinguished by the variety of functions it offers and the wide range of applications it has in biomedical imaging. It becomes a difficult and time-consuming process for radiologists to do the manual identification and categorization of the tumour. It is a complex a...

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Autores principales: Pradeep, K. R., Gangadharan, Syam Machinathu Parambil, Hatamleh, Wesam Atef, Tarazi, Hussam, Shukla, Piyush Kumar, Tiwari, Basant
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Hindawi 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8913064/
https://www.ncbi.nlm.nih.gov/pubmed/35281546
http://dx.doi.org/10.1155/2022/1128217
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author Pradeep, K. R.
Gangadharan, Syam Machinathu Parambil
Hatamleh, Wesam Atef
Tarazi, Hussam
Shukla, Piyush Kumar
Tiwari, Basant
author_facet Pradeep, K. R.
Gangadharan, Syam Machinathu Parambil
Hatamleh, Wesam Atef
Tarazi, Hussam
Shukla, Piyush Kumar
Tiwari, Basant
author_sort Pradeep, K. R.
collection PubMed
description The field of image processing is distinguished by the variety of functions it offers and the wide range of applications it has in biomedical imaging. It becomes a difficult and time-consuming process for radiologists to do the manual identification and categorization of the tumour. It is a complex and time-consuming procedure conducted by radiologists or clinical professionals to remove the contaminated tumour region from magnetic resonance (MR) pictures. It is the goal of this study to improve the performance and reduce the complexity of the image segmentation process by investigating FCM predicted image segmentation procedures in order to reduce the intricacy of the process. Furthermore, relevant characteristics are collected from each segmented tissue and aligned as input to the classifiers for autonomous identification and relegation of encephalon cancers in order to increase the accuracy and quality rate of the neural network classifier. An evaluation, validation, and presentation of the experimental performance of the suggested approach have been completed. A unique APSO (accelerated particle swarm optimization) based artificial neural network model (ANNM) for the relegation of benign and malignant tumours is presented in this study effort, which allows for the automated identification and categorization of brain tumours. Using APSO training to improve the suggested ANNM model parameters would give a unique method to alleviate the stressful work of radiologists performing manual identification of encephalon cancers from MR images. The use of an APSO-based ANNM (artificial neural network model) model for automated brain tumour classification has been presented in order to demonstrate the resilience of the classification model. It has been suggested to utilise the improved enhanced fuzzy c means (IEnFCM) method for image segmentation, while the GLCM (gray level co-occurrence matrix) feature extraction approach has been employed for feature extraction from magnetic resonance imaging (MR pictures).
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spelling pubmed-89130642022-03-11 Improved Machine Learning Method for Intracranial Tumor Detection with Accelerated Particle Swarm Optimization Pradeep, K. R. Gangadharan, Syam Machinathu Parambil Hatamleh, Wesam Atef Tarazi, Hussam Shukla, Piyush Kumar Tiwari, Basant J Healthc Eng Research Article The field of image processing is distinguished by the variety of functions it offers and the wide range of applications it has in biomedical imaging. It becomes a difficult and time-consuming process for radiologists to do the manual identification and categorization of the tumour. It is a complex and time-consuming procedure conducted by radiologists or clinical professionals to remove the contaminated tumour region from magnetic resonance (MR) pictures. It is the goal of this study to improve the performance and reduce the complexity of the image segmentation process by investigating FCM predicted image segmentation procedures in order to reduce the intricacy of the process. Furthermore, relevant characteristics are collected from each segmented tissue and aligned as input to the classifiers for autonomous identification and relegation of encephalon cancers in order to increase the accuracy and quality rate of the neural network classifier. An evaluation, validation, and presentation of the experimental performance of the suggested approach have been completed. A unique APSO (accelerated particle swarm optimization) based artificial neural network model (ANNM) for the relegation of benign and malignant tumours is presented in this study effort, which allows for the automated identification and categorization of brain tumours. Using APSO training to improve the suggested ANNM model parameters would give a unique method to alleviate the stressful work of radiologists performing manual identification of encephalon cancers from MR images. The use of an APSO-based ANNM (artificial neural network model) model for automated brain tumour classification has been presented in order to demonstrate the resilience of the classification model. It has been suggested to utilise the improved enhanced fuzzy c means (IEnFCM) method for image segmentation, while the GLCM (gray level co-occurrence matrix) feature extraction approach has been employed for feature extraction from magnetic resonance imaging (MR pictures). Hindawi 2022-03-03 /pmc/articles/PMC8913064/ /pubmed/35281546 http://dx.doi.org/10.1155/2022/1128217 Text en Copyright © 2022 K. R. Pradeep et al. https://creativecommons.org/licenses/by/4.0/This is an open access article distributed under the Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited.
spellingShingle Research Article
Pradeep, K. R.
Gangadharan, Syam Machinathu Parambil
Hatamleh, Wesam Atef
Tarazi, Hussam
Shukla, Piyush Kumar
Tiwari, Basant
Improved Machine Learning Method for Intracranial Tumor Detection with Accelerated Particle Swarm Optimization
title Improved Machine Learning Method for Intracranial Tumor Detection with Accelerated Particle Swarm Optimization
title_full Improved Machine Learning Method for Intracranial Tumor Detection with Accelerated Particle Swarm Optimization
title_fullStr Improved Machine Learning Method for Intracranial Tumor Detection with Accelerated Particle Swarm Optimization
title_full_unstemmed Improved Machine Learning Method for Intracranial Tumor Detection with Accelerated Particle Swarm Optimization
title_short Improved Machine Learning Method for Intracranial Tumor Detection with Accelerated Particle Swarm Optimization
title_sort improved machine learning method for intracranial tumor detection with accelerated particle swarm optimization
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8913064/
https://www.ncbi.nlm.nih.gov/pubmed/35281546
http://dx.doi.org/10.1155/2022/1128217
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