Privacy-Preserving Breast Cancer Classification: A Federated Transfer Learning Approach.

Selvakanmani S, G Dharani Devi, Rekha V, J Jeyalakshmi
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Abstract

Breast cancer is deadly cancer causing a considerable number of fatalities among women in worldwide. To enhance patient outcomes as well as survival rates, early and accurate detection is crucial. Machine learning techniques, particularly deep learning, have demonstrated impressive success in various image recognition tasks, including breast cancer classification. However, the reliance on large labeled datasets poses challenges in the medical domain due to privacy issues and data silos. This study proposes a novel transfer learning approach integrated into a federated learning framework to solve the limitations of limited labeled data and data privacy in collaborative healthcare settings. For breast cancer classification, the mammography and MRO images were gathered from three different medical centers. Federated learning, an emerging privacy-preserving paradigm, empowers multiple medical institutions to jointly train the global model while maintaining data decentralization. Our proposed methodology capitalizes on the power of pre-trained ResNet, a deep neural network architecture, as a feature extractor. By fine-tuning the higher layers of ResNet using breast cancer datasets from diverse medical centers, we enable the model to learn specialized features relevant to different domains while leveraging the comprehensive image representations acquired from large-scale datasets like ImageNet. To overcome domain shift challenges caused by variations in data distributions across medical centers, we introduce domain adversarial training. The model learns to minimize the domain discrepancy while maximizing classification accuracy, facilitating the acquisition of domain-invariant features. We conducted extensive experiments on diverse breast cancer datasets obtained from multiple medical centers. Comparative analysis was performed to evaluate the proposed approach against traditional standalone training and federated learning without domain adaptation. When compared with traditional models, our proposed model showed a classification accuracy of 98.8% and a computational time of 12.22 s. The results showcase promising enhancements in classification accuracy and model generalization, underscoring the potential of our method in improving breast cancer classification performance while upholding data privacy in a federated healthcare environment.

Abstract Image

保护隐私的乳腺癌分类:联合迁移学习法
乳腺癌是一种致命的癌症,在全世界造成大量妇女死亡。为了提高患者的治疗效果和生存率,早期准确检测至关重要。机器学习技术,尤其是深度学习,在包括乳腺癌分类在内的各种图像识别任务中取得了令人瞩目的成就。然而,由于隐私问题和数据孤岛,对大型标记数据集的依赖给医疗领域带来了挑战。本研究提出了一种集成到联合学习框架中的新型迁移学习方法,以解决协作医疗环境中标签数据有限和数据隐私的限制。在乳腺癌分类中,乳房 X 射线照相术和 MRO 图像来自三个不同的医疗中心。联邦学习是一种新兴的隐私保护范例,它使多个医疗机构能够联合训练全局模型,同时保持数据的分散性。我们提出的方法利用了预先训练好的 ResNet(一种深度神经网络架构)作为特征提取器。通过使用来自不同医疗中心的乳腺癌数据集对 ResNet 的高层进行微调,我们使模型能够学习与不同领域相关的专门特征,同时利用从 ImageNet 等大规模数据集获得的全面图像表征。为了克服各医疗中心数据分布差异造成的领域转移难题,我们引入了领域对抗训练。该模型在最大限度提高分类准确性的同时,学会最小化领域差异,从而促进领域不变特征的获取。我们在从多个医疗中心获得的各种乳腺癌数据集上进行了广泛的实验。我们进行了对比分析,以评估所提出的方法与传统的独立训练和无领域适应性的联合学习的效果。与传统模型相比,我们提出的模型显示出 98.8% 的分类准确率和 12.22 秒的计算时间。结果表明,我们的方法在提高分类准确率和模型泛化方面有很好的前景,突出了我们的方法在提高乳腺癌分类性能方面的潜力,同时维护了联合医疗环境中的数据隐私。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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