2024
DOI: 10.1109/access.2024.3374650
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Federated Learning Approach for Breast Cancer Detection Based on DCNN

Hussain AlSalman,
Mabrook S. Al-Rakhami,
Taha Alfakih
et al.

Abstract: Breast cancer stands as one of the predominant health challenges globally, affecting millions of women every year and necessitating early and accurate detection to optimize patient outcomes. Currently, while deep convolutional neural networks (DCNNs) have shown promise in breast cancer detection, their application is often hampered by privacy concerns associated with sharing patient data and the limitation of training on small, localized datasets. Addressing these challenges, this manuscript introduces an effe… Show more

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Cited by 3 publications
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“…Patient consent in federated learning healthcare presents significant challenges, particularly in healthcare settings involving sensitive medical data. To overcome these obstacles, a multidisciplinary group comprising medical professionals, legal experts, ethicists, and technologists must create consent management frameworks that balance patient autonomy, privacy protection, and the federated learning-based advancement of medical research and healthcare innovation [151,152]. In addition, utilizing technologies such as differential privacy and safe multiparty computation can provide a cooperative study of sensitive healthcare data while improving patient privacy.…”
Section: Patient Consentmentioning
confidence: 99%
“…Patient consent in federated learning healthcare presents significant challenges, particularly in healthcare settings involving sensitive medical data. To overcome these obstacles, a multidisciplinary group comprising medical professionals, legal experts, ethicists, and technologists must create consent management frameworks that balance patient autonomy, privacy protection, and the federated learning-based advancement of medical research and healthcare innovation [151,152]. In addition, utilizing technologies such as differential privacy and safe multiparty computation can provide a cooperative study of sensitive healthcare data while improving patient privacy.…”
Section: Patient Consentmentioning
confidence: 99%