Privacy-Preserving Medical Image Classification through Deep Learning and Matrix Decomposition
Andreea Bianca Popescu, Cosmin Ioan Nita, Ioana Antonia Taca, Anamaria, Vizitiu, Lucian Mihai Itu

TL;DR
This paper presents a method combining SVD and PCA to obfuscate medical images, enabling privacy-preserving deep learning classification with maintained accuracy and resistance to reconstruction attacks.
Contribution
It introduces a novel image obfuscation technique that preserves classification performance while enhancing privacy without additional computational costs.
Findings
Effective obfuscation of medical images against human perception
Maintained classification accuracy on secured data
Resilience against AI-based reconstruction attacks
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…
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