Privacy-Preserving AI for Encrypted Medical Imaging: A Framework for Secure Diagnosis and Learning
Abdullah Al Siam, Sadequzzaman Shohan

TL;DR
This paper introduces a privacy-preserving AI framework for encrypted medical imaging that enables secure diagnosis without compromising data privacy, using a modified CNN and encryption techniques, with promising accuracy and efficiency results.
Contribution
It presents a novel framework combining encryption and AI for secure medical image analysis, maintaining diagnostic accuracy while protecting patient privacy.
Findings
Encrypted inference achieves comparable accuracy to unencrypted models.
The system maintains privacy with minimal impact on latency and storage.
The framework is scalable and practical for clinical use.
Abstract
The rapid integration of Artificial Intelligence (AI) into medical diagnostics has raised pressing concerns about patient privacy, especially when sensitive imaging data must be transferred, stored, or processed. In this paper, we propose a novel framework for privacy-preserving diagnostic inference on encrypted medical images using a modified convolutional neural network (Masked-CNN) capable of operating on transformed or ciphered image formats. Our approach leverages AES-CBC encryption coupled with JPEG2000 compression to protect medical images while maintaining their suitability for AI inference. We evaluate the system using public DICOM datasets (NIH ChestX-ray14 and LIDC-IDRI), focusing on diagnostic accuracy, inference latency, storage efficiency, and privacy leakage resistance. Experimental results show that the encrypted inference model achieves performance comparable to its…
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