Privacy-Preserving Medical Image Classification through Deep Learning and Matrix Decomposition

Andreea Bianca Popescu, C. Nita, Ioana Antonia Taca, A. Vizitiu, L. Itu
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Abstract

Deep learning (DL)-based solutions have been extensively researched in the medical domain in recent years, enhancing the efficacy of diagnosis, planning, and treatment. Since the usage of health-related data is strictly regulated, processing medical records outside the hospital environment for developing and using DL models demands robust data protection measures. At the same time, it can be challenging to guarantee that a DL solution delivers a minimum level of performance when being trained on secured data, without being specifically designed for the given task. Our approach uses singular value decomposition (SVD) and principal component analysis (PCA) to obfuscate the medical images before employing them in the DL analysis. The capability of DL algorithms to extract relevant information from secured data is assessed on a task of angiographic view classification based on obfuscated frames. The security level is probed by simulated artificial intelligence (AI)-based reconstruction attacks, considering two threat actors with different prior knowledge of the targeted data. The degree of privacy is quantitatively measured using similarity indices. Although a trade-off between privacy and accuracy should be considered, the proposed technique allows for training the angiographic view classifier exclusively on secured data with satisfactory performance and with no computational overhead, model adaptation, or hyperparameter tuning. While the obfuscated medical image content is well protected against human perception, the hypothetical reconstruction attack proved that it is also difficult to recover the complete information of the original frames.
基于深度学习和矩阵分解的隐私保护医学图像分类
近年来,基于深度学习的解决方案在医学领域得到了广泛的研究,提高了诊断、计划和治疗的效率。由于健康相关数据的使用受到严格监管,因此在医院环境之外处理医疗记录以开发和使用DL模型需要强有力的数据保护措施。与此同时,在不为给定任务专门设计的情况下,在对安全数据进行训练时,保证深度学习解决方案提供最低水平的性能可能具有挑战性。我们的方法使用奇异值分解(SVD)和主成分分析(PCA)来混淆医学图像,然后将其用于深度分析。在基于模糊帧的血管造影视图分类任务上,评估了深度学习算法从安全数据中提取相关信息的能力。安全级别通过模拟基于人工智能(AI)的重建攻击来探测,考虑到两个对目标数据具有不同先验知识的威胁行为者。使用相似度指标定量测量隐私程度。虽然应该考虑隐私和准确性之间的权衡,但所提出的技术允许仅在具有令人满意的性能的安全数据上训练血管造影视图分类器,并且没有计算开销、模型适应或超参数调优。虽然混淆后的医学图像内容对人类感知有很好的保护,但假设重构攻击证明,原始帧的完整信息也难以恢复。
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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