Cargando…

BC(2)NetRF: Breast Cancer Classification from Mammogram Images Using Enhanced Deep Learning Features and Equilibrium-Jaya Controlled Regula Falsi-Based Features Selection

One of the most frequent cancers in women is breast cancer, and in the year 2022, approximately 287,850 new cases have been diagnosed. From them, 43,250 women died from this cancer. An early diagnosis of this cancer can help to overcome the mortality rate. However, the manual diagnosis of this cance...

Descripción completa

Detalles Bibliográficos
Autores principales: Jabeen, Kiran, Khan, Muhammad Attique, Balili, Jamel, Alhaisoni, Majed, Almujally, Nouf Abdullah, Alrashidi, Huda, Tariq, Usman, Cha, Jae-Hyuk
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10093018/
https://www.ncbi.nlm.nih.gov/pubmed/37046456
http://dx.doi.org/10.3390/diagnostics13071238
_version_ 1785023484373499904
author Jabeen, Kiran
Khan, Muhammad Attique
Balili, Jamel
Alhaisoni, Majed
Almujally, Nouf Abdullah
Alrashidi, Huda
Tariq, Usman
Cha, Jae-Hyuk
author_facet Jabeen, Kiran
Khan, Muhammad Attique
Balili, Jamel
Alhaisoni, Majed
Almujally, Nouf Abdullah
Alrashidi, Huda
Tariq, Usman
Cha, Jae-Hyuk
author_sort Jabeen, Kiran
collection PubMed
description One of the most frequent cancers in women is breast cancer, and in the year 2022, approximately 287,850 new cases have been diagnosed. From them, 43,250 women died from this cancer. An early diagnosis of this cancer can help to overcome the mortality rate. However, the manual diagnosis of this cancer using mammogram images is not an easy process and always requires an expert person. Several AI-based techniques have been suggested in the literature. However, still, they are facing several challenges, such as similarities between cancer and non-cancer regions, irrelevant feature extraction, and weak training models. In this work, we proposed a new automated computerized framework for breast cancer classification. The proposed framework improves the contrast using a novel enhancement technique called haze-reduced local-global. The enhanced images are later employed for the dataset augmentation. This step aimed at increasing the diversity of the dataset and improving the training capability of the selected deep learning model. After that, a pre-trained model named EfficientNet-b0 was employed and fine-tuned to add a few new layers. The fine-tuned model was trained separately on original and enhanced images using deep transfer learning concepts with static hyperparameters’ initialization. Deep features were extracted from the average pooling layer in the next step and fused using a new serial-based approach. The fused features were later optimized using a feature selection algorithm known as Equilibrium-Jaya controlled Regula Falsi. The Regula Falsi was employed as a termination function in this algorithm. The selected features were finally classified using several machine learning classifiers. The experimental process was conducted on two publicly available datasets—CBIS-DDSM and INbreast. For these datasets, the achieved average accuracy is 95.4% and 99.7%. A comparison with state-of-the-art (SOTA) technology shows that the obtained proposed framework improved the accuracy. Moreover, the confidence interval-based analysis shows consistent results of the proposed framework.
format Online
Article
Text
id pubmed-10093018
institution National Center for Biotechnology Information
language English
publishDate 2023
publisher MDPI
record_format MEDLINE/PubMed
spelling pubmed-100930182023-04-13 BC(2)NetRF: Breast Cancer Classification from Mammogram Images Using Enhanced Deep Learning Features and Equilibrium-Jaya Controlled Regula Falsi-Based Features Selection Jabeen, Kiran Khan, Muhammad Attique Balili, Jamel Alhaisoni, Majed Almujally, Nouf Abdullah Alrashidi, Huda Tariq, Usman Cha, Jae-Hyuk Diagnostics (Basel) Article One of the most frequent cancers in women is breast cancer, and in the year 2022, approximately 287,850 new cases have been diagnosed. From them, 43,250 women died from this cancer. An early diagnosis of this cancer can help to overcome the mortality rate. However, the manual diagnosis of this cancer using mammogram images is not an easy process and always requires an expert person. Several AI-based techniques have been suggested in the literature. However, still, they are facing several challenges, such as similarities between cancer and non-cancer regions, irrelevant feature extraction, and weak training models. In this work, we proposed a new automated computerized framework for breast cancer classification. The proposed framework improves the contrast using a novel enhancement technique called haze-reduced local-global. The enhanced images are later employed for the dataset augmentation. This step aimed at increasing the diversity of the dataset and improving the training capability of the selected deep learning model. After that, a pre-trained model named EfficientNet-b0 was employed and fine-tuned to add a few new layers. The fine-tuned model was trained separately on original and enhanced images using deep transfer learning concepts with static hyperparameters’ initialization. Deep features were extracted from the average pooling layer in the next step and fused using a new serial-based approach. The fused features were later optimized using a feature selection algorithm known as Equilibrium-Jaya controlled Regula Falsi. The Regula Falsi was employed as a termination function in this algorithm. The selected features were finally classified using several machine learning classifiers. The experimental process was conducted on two publicly available datasets—CBIS-DDSM and INbreast. For these datasets, the achieved average accuracy is 95.4% and 99.7%. A comparison with state-of-the-art (SOTA) technology shows that the obtained proposed framework improved the accuracy. Moreover, the confidence interval-based analysis shows consistent results of the proposed framework. MDPI 2023-03-25 /pmc/articles/PMC10093018/ /pubmed/37046456 http://dx.doi.org/10.3390/diagnostics13071238 Text en © 2023 by the authors. https://creativecommons.org/licenses/by/4.0/Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Jabeen, Kiran
Khan, Muhammad Attique
Balili, Jamel
Alhaisoni, Majed
Almujally, Nouf Abdullah
Alrashidi, Huda
Tariq, Usman
Cha, Jae-Hyuk
BC(2)NetRF: Breast Cancer Classification from Mammogram Images Using Enhanced Deep Learning Features and Equilibrium-Jaya Controlled Regula Falsi-Based Features Selection
title BC(2)NetRF: Breast Cancer Classification from Mammogram Images Using Enhanced Deep Learning Features and Equilibrium-Jaya Controlled Regula Falsi-Based Features Selection
title_full BC(2)NetRF: Breast Cancer Classification from Mammogram Images Using Enhanced Deep Learning Features and Equilibrium-Jaya Controlled Regula Falsi-Based Features Selection
title_fullStr BC(2)NetRF: Breast Cancer Classification from Mammogram Images Using Enhanced Deep Learning Features and Equilibrium-Jaya Controlled Regula Falsi-Based Features Selection
title_full_unstemmed BC(2)NetRF: Breast Cancer Classification from Mammogram Images Using Enhanced Deep Learning Features and Equilibrium-Jaya Controlled Regula Falsi-Based Features Selection
title_short BC(2)NetRF: Breast Cancer Classification from Mammogram Images Using Enhanced Deep Learning Features and Equilibrium-Jaya Controlled Regula Falsi-Based Features Selection
title_sort bc(2)netrf: breast cancer classification from mammogram images using enhanced deep learning features and equilibrium-jaya controlled regula falsi-based features selection
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10093018/
https://www.ncbi.nlm.nih.gov/pubmed/37046456
http://dx.doi.org/10.3390/diagnostics13071238
work_keys_str_mv AT jabeenkiran bc2netrfbreastcancerclassificationfrommammogramimagesusingenhanceddeeplearningfeaturesandequilibriumjayacontrolledregulafalsibasedfeaturesselection
AT khanmuhammadattique bc2netrfbreastcancerclassificationfrommammogramimagesusingenhanceddeeplearningfeaturesandequilibriumjayacontrolledregulafalsibasedfeaturesselection
AT balilijamel bc2netrfbreastcancerclassificationfrommammogramimagesusingenhanceddeeplearningfeaturesandequilibriumjayacontrolledregulafalsibasedfeaturesselection
AT alhaisonimajed bc2netrfbreastcancerclassificationfrommammogramimagesusingenhanceddeeplearningfeaturesandequilibriumjayacontrolledregulafalsibasedfeaturesselection
AT almujallynoufabdullah bc2netrfbreastcancerclassificationfrommammogramimagesusingenhanceddeeplearningfeaturesandequilibriumjayacontrolledregulafalsibasedfeaturesselection
AT alrashidihuda bc2netrfbreastcancerclassificationfrommammogramimagesusingenhanceddeeplearningfeaturesandequilibriumjayacontrolledregulafalsibasedfeaturesselection
AT tariqusman bc2netrfbreastcancerclassificationfrommammogramimagesusingenhanceddeeplearningfeaturesandequilibriumjayacontrolledregulafalsibasedfeaturesselection
AT chajaehyuk bc2netrfbreastcancerclassificationfrommammogramimagesusingenhanceddeeplearningfeaturesandequilibriumjayacontrolledregulafalsibasedfeaturesselection