Moteeb Al Moteri
Enhancing accessibility for improved diagnosis with modified EfficientNetV2-S and cyclic learning rate strategy in women with disabilities and breast cancer
Al Moteri, Moteeb; Mahesh, T. R.; Thakur, Arastu; Vinoth Kumar, V.; Khan, Surbhi Bhatia; Alojail, Mohammed
Authors
T. R. Mahesh
Arastu Thakur
V. Vinoth Kumar
Dr Surbhi Khan S.Khan138@salford.ac.uk
Lecturer in Data Science
Mohammed Alojail
Abstract
Breast cancer, a prevalent cancer among women worldwide, necessitates precise and prompt detection for successful treatment. While conventional histopathological examination is the benchmark, it is a lengthy process and prone to variations among different observers. Employing machine learning to automate the diagnosis of breast cancer presents a viable option, striving to improve both precision and speed. Previous studies have primarily focused on applying various machine learning and deep learning models for the classification of breast cancer images. These methodologies leverage convolutional neural networks (CNNs) and other advanced algorithms to differentiate between benign and malignant tumors from histopathological images. Current models, despite their potential, encounter obstacles related to generalizability, computational performance, and managing datasets with imbalances. Additionally, a significant number of these models do not possess the requisite transparency and interpretability, which are vital for medical diagnostic purposes. To address these limitations, our study introduces an advanced machine learning model based on EfficientNetV2. This model incorporates state-of-the-art techniques in image processing and neural network architecture, aiming to improve accuracy, efficiency, and robustness in classification. We employed the EfficientNetV2 model, fine-tuned for the specific task of breast cancer image classification. Our model underwent rigorous training and validation using the BreakHis dataset, which includes diverse histopathological images. Advanced data preprocessing, augmentation techniques, and a cyclical learning rate strategy were implemented to enhance model performance. The introduced model exhibited remarkable efficacy, attaining an accuracy rate of 99.68%, balanced precision and recall as indicated by a significant F1 score, and a considerable Cohen’s Kappa value. These indicators highlight the model’s proficiency in correctly categorizing histopathological images, surpassing current techniques in reliability and effectiveness. The research emphasizes improved accessibility, catering to individuals with disabilities and the elderly. By enhancing visual representation and interpretability, the proposed approach aims to make strides in inclusive medical image interpretation, ensuring equitable access to diagnostic information.
Citation
Al Moteri, M., Mahesh, T. R., Thakur, A., Vinoth Kumar, V., Khan, S. B., & Alojail, M. (in press). Enhancing accessibility for improved diagnosis with modified EfficientNetV2-S and cyclic learning rate strategy in women with disabilities and breast cancer. Frontiers in Medicine, 11, 1373244. https://doi.org/10.3389/fmed.2024.1373244
Journal Article Type | Article |
---|---|
Acceptance Date | Feb 27, 2024 |
Online Publication Date | Mar 7, 2024 |
Deposit Date | Apr 8, 2024 |
Publicly Available Date | Apr 8, 2024 |
Journal | Frontiers in Medicine |
Publisher | Frontiers Media |
Peer Reviewed | Peer Reviewed |
Volume | 11 |
Pages | 1373244 |
DOI | https://doi.org/10.3389/fmed.2024.1373244 |
Keywords | image processing, deep learning, individuals with disabilities, histopathological image classification, EfficientNetV2, medical image interpretation, machine learning, BreakHis dataset |
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Publisher Licence URL
http://creativecommons.org/licenses/by/4.0/
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