Park Eunbin, Lee Youngjoo
IEEE J Biomed Health Inform. 2025 Jan;29(1):177-187. doi: 10.1109/JBHI.2024.3481505. Epub 2025 Jan 7.
This paper addresses the critical need for elctrocardiogram (ECG) classifier architectures that balance high classification performance with robust privacy protection against membership inference attacks (MIA). We introduce a comprehensive approach that innovates in both machine learning efficacy and privacy preservation. Key contributions include the development of a privacy estimator to quantify and mitigate privacy leakage in neural network architectures used for ECG classification. Utilizing this privacy estimator, we propose mDARTS (searching ML-based ECG classifier against MIA), integrating MIA's attack loss into the architecture search process to identify architectures that are both accurate and resilient to MIA threats. Our method achieves significant improvements, with an ECG classification accuracy of 92.1% and a lower privacy score of 54.3%, indicating reduced potential for sensitive information leakage. Heuristic experiments refine architecture search parameters specifically for ECG classification, enhancing classifier performance and privacy scores by up to 3.0% and 1.0%, respectively. The framework's adaptability supports user customization, enabling the extraction of architectures that meet specific criteria such as optimal classification performance with minimal privacy risk. By focusing on the intersection of high-performance ECG classification and the mitigation of privacy risks associated with MIA, our study offers a pioneering solution addressing the limitations of previous approaches.
本文探讨了对心电图(ECG)分类器架构的迫切需求,这种架构要在实现高分类性能的同时,具备强大的隐私保护能力,以抵御成员推理攻击(MIA)。我们引入了一种全面的方法,在机器学习效率和隐私保护方面均有创新。主要贡献包括开发了一种隐私估计器,用于量化和减轻用于心电图分类的神经网络架构中的隐私泄露。利用这种隐私估计器,我们提出了mDARTS(针对MIA搜索基于机器学习的ECG分类器),将MIA的攻击损失整合到架构搜索过程中,以识别既准确又能抵御MIA威胁的架构。我们的方法取得了显著改进,心电图分类准确率达到92.1%,隐私得分降低至54.3%,表明敏感信息泄露的可能性降低。启发式实验专门针对心电图分类优化了架构搜索参数,分别将分类器性能和隐私得分提高了3.0%和1.0%。该框架的适应性支持用户定制,能够提取满足特定标准的架构,例如具有最小隐私风险的最优分类性能。通过关注高性能心电图分类与减轻与MIA相关的隐私风险的交叉点,我们的研究提供了一种开创性的解决方案,解决了先前方法的局限性。