Enhancing Medical Data Privacy: Neural Network Inference with Fully Homomorphic Encryption
Authors (s)
(1) * Maulyanda Maulyanda 


        Indonesia
(2)  Rini Deviani 

        Indonesia
(3)  Afdhaluzzikri Afdhaluzzikri   ()  
        Indonesia
(*) Corresponding Author
AbstractProtecting the privacy of medical data while enabling sophisticated data analysis is a critical challenge in modern healthcare. Fully Homomorphic Encryption (FHE) emerges as a powerful solution, enabling computations to be performed directly on encrypted data without exposing sensitive information. This study delves into the use of FHE for neural network inference in medical applications, investigating its role in safeguarding patient confidentiality while ensuring computational accuracy and efficiency. Experimental findings confirm the practicality of using FHE for medical data classification, demonstrating that data security can be preserved without significant loss of performance. Furthermore, the research explores the balance between computational overhead and model precision, shedding light on the complexities of deploying FHE in real-world healthcare AI systems. By emphasizing the significance of privacy-preserving machine learning, this work contributes to the development of secure, ethical, and effective AI-driven medical solutions.
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Keywords
Fully homomorphic; Encryption; Data privacy; Neural network inference
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Copyright (c) 2025 Maulyanda Maulyanda, Rini Deviani, Afdhaluzzikri Afdhaluzzikri

This work is licensed under a Creative Commons Attribution License (CC BY-SA 4.0)
Journal of Electrical Engineering and Computer (JEECOM)
Published by LP3M Nurul Jadid University, Indonesia, Probolinggo, East Java, Indonesia.