Detecting Data Poisoning Attacks in Federated Learning for Healthcare Applications Using Deep Learning

A. Omran, Sahar Yousif Mohammed, Mohammed Aljanabi, Mohammad Aljanabi
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引用次数: 0

Abstract

This work presents a novel method for securing federated learning in healthcare applications, focusing on skin cancer classification. The suggested solution detects and mitigates data poisoning attacks using deep learning and CNN architecture, specifically VGG16. In a federated learning architecture with ten healthcare institutions, the approach ensures collaborative model training while protecting sensitive medical data. Data is meticulously prepared and preprocessed using the Skin Cancer MNIST: HAM10000 dataset. The federated learning approach uses VGG16's powerful feature extraction to classify skin cancer. A robust strategy for spotting data poisoning threats in federated learning is presented in the study. Outlier detection techniques and strict criteria flag andevaluate problematic model modifications. Performance evaluation proves the model's accuracy, privacy, and datapoisoning resilience. This research presents federated learning-based skin cancer categorization for healthcareapplications that is secure and accurate. The suggested approach improves healthcare diagnostics and emphasizesdata security and privacy in federated learning settings by tackling data poisoning attacks.
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利用深度学习检测医疗保健应用联盟学习中的数据中毒攻击
本研究提出了一种新型方法,用于确保医疗保健应用中联合学习的安全,重点关注皮肤癌分类。建议的解决方案利用深度学习和 CNN 架构(特别是 VGG16)检测和缓解数据中毒攻击。在由十家医疗机构组成的联盟学习架构中,该方法可确保协作模型训练,同时保护敏感医疗数据。数据是通过皮肤癌 MNIST.HAM10000 数据集精心准备和预处理的:HAM10000 数据集进行精心准备和预处理。联合学习方法使用 VGG16 强大的特征提取功能对皮肤癌进行分类。研究中提出了在联合学习中发现数据中毒威胁的稳健策略。离群点检测技术和严格的标准标记并评估了有问题的模型修改。性能评估证明了模型的准确性、私密性和数据中毒复原力。这项研究为医疗保健应用提供了基于联合学习的皮肤癌分类,既安全又准确。建议的方法通过应对数据中毒攻击,改善了医疗诊断,并强调了联合学习环境中的数据安全性和隐私性。
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