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Incorporating a Novel Dual Transfer Learning Approach for Medical Images

Recently, transfer learning approaches appeared to reduce the need for many classified medical images. However, these approaches still contain some limitations due to the mismatch of the domain between the source domain and the target domain. Therefore, this study aims to propose a novel approach, c...

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Autores principales: Mukhlif, Abdulrahman Abbas, Al-Khateeb, Belal, Mohammed, Mazin Abed
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9866662/
https://www.ncbi.nlm.nih.gov/pubmed/36679370
http://dx.doi.org/10.3390/s23020570
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author Mukhlif, Abdulrahman Abbas
Al-Khateeb, Belal
Mohammed, Mazin Abed
author_facet Mukhlif, Abdulrahman Abbas
Al-Khateeb, Belal
Mohammed, Mazin Abed
author_sort Mukhlif, Abdulrahman Abbas
collection PubMed
description Recently, transfer learning approaches appeared to reduce the need for many classified medical images. However, these approaches still contain some limitations due to the mismatch of the domain between the source domain and the target domain. Therefore, this study aims to propose a novel approach, called Dual Transfer Learning (DTL), based on the convergence of patterns between the source and target domains. The proposed approach is applied to four pre-trained models (VGG16, Xception, ResNet50, MobileNetV2) using two datasets: ISIC2020 skin cancer images and ICIAR2018 breast cancer images, by fine-tuning the last layers on a sufficient number of unclassified images of the same disease and on a small number of classified images of the target task, in addition to using data augmentation techniques to balance classes and to increase the number of samples. According to the obtained results, it has been experimentally proven that the proposed approach has improved the performance of all models, where without data augmentation, the performance of the VGG16 model, Xception model, ResNet50 model, and MobileNetV2 model are improved by 0.28%, 10.96%, 15.73%, and 10.4%, respectively, while, with data augmentation, the VGG16 model, Xception model, ResNet50 model, and MobileNetV2 model are improved by 19.66%, 34.76%, 31.76%, and 33.03%, respectively. The Xception model obtained the highest performance compared to the rest of the models when classifying skin cancer images in the ISIC2020 dataset, as it obtained 96.83%, 96.919%, 96.826%, 96.825%, 99.07%, and 94.58% for accuracy, precision, recall, F1-score, sensitivity, and specificity respectively. To classify the images of the ICIAR 2018 dataset for breast cancer, the Xception model obtained 99%, 99.003%, 98.995%, 99%, 98.55%, and 99.14% for accuracy, precision, recall, F1-score, sensitivity, and specificity, respectively. Through these results, the proposed approach improved the models’ performance when fine-tuning was performed on unclassified images of the same disease.
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spelling pubmed-98666622023-01-22 Incorporating a Novel Dual Transfer Learning Approach for Medical Images Mukhlif, Abdulrahman Abbas Al-Khateeb, Belal Mohammed, Mazin Abed Sensors (Basel) Article Recently, transfer learning approaches appeared to reduce the need for many classified medical images. However, these approaches still contain some limitations due to the mismatch of the domain between the source domain and the target domain. Therefore, this study aims to propose a novel approach, called Dual Transfer Learning (DTL), based on the convergence of patterns between the source and target domains. The proposed approach is applied to four pre-trained models (VGG16, Xception, ResNet50, MobileNetV2) using two datasets: ISIC2020 skin cancer images and ICIAR2018 breast cancer images, by fine-tuning the last layers on a sufficient number of unclassified images of the same disease and on a small number of classified images of the target task, in addition to using data augmentation techniques to balance classes and to increase the number of samples. According to the obtained results, it has been experimentally proven that the proposed approach has improved the performance of all models, where without data augmentation, the performance of the VGG16 model, Xception model, ResNet50 model, and MobileNetV2 model are improved by 0.28%, 10.96%, 15.73%, and 10.4%, respectively, while, with data augmentation, the VGG16 model, Xception model, ResNet50 model, and MobileNetV2 model are improved by 19.66%, 34.76%, 31.76%, and 33.03%, respectively. The Xception model obtained the highest performance compared to the rest of the models when classifying skin cancer images in the ISIC2020 dataset, as it obtained 96.83%, 96.919%, 96.826%, 96.825%, 99.07%, and 94.58% for accuracy, precision, recall, F1-score, sensitivity, and specificity respectively. To classify the images of the ICIAR 2018 dataset for breast cancer, the Xception model obtained 99%, 99.003%, 98.995%, 99%, 98.55%, and 99.14% for accuracy, precision, recall, F1-score, sensitivity, and specificity, respectively. Through these results, the proposed approach improved the models’ performance when fine-tuning was performed on unclassified images of the same disease. MDPI 2023-01-04 /pmc/articles/PMC9866662/ /pubmed/36679370 http://dx.doi.org/10.3390/s23020570 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
Mukhlif, Abdulrahman Abbas
Al-Khateeb, Belal
Mohammed, Mazin Abed
Incorporating a Novel Dual Transfer Learning Approach for Medical Images
title Incorporating a Novel Dual Transfer Learning Approach for Medical Images
title_full Incorporating a Novel Dual Transfer Learning Approach for Medical Images
title_fullStr Incorporating a Novel Dual Transfer Learning Approach for Medical Images
title_full_unstemmed Incorporating a Novel Dual Transfer Learning Approach for Medical Images
title_short Incorporating a Novel Dual Transfer Learning Approach for Medical Images
title_sort incorporating a novel dual transfer learning approach for medical images
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9866662/
https://www.ncbi.nlm.nih.gov/pubmed/36679370
http://dx.doi.org/10.3390/s23020570
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