Title of article :
Applying Deep Neural Networks over Homomorphic Encrypted Medical Data
Author/Authors :
Vizitiu, Anamaria Department of Automation and Information Technology - Transilvania University of Brasov - Brasov, Romania , Ioan Niƫa, Cosmin Department of Automation and Information Technology - Transilvania University of Brasov - Brasov, Romania , Puiu, Andrei Department of Automation and Information Technology - Transilvania University of Brasov - Brasov, Romania , Suciu, Constantin Department of Automation and Information Technology - Transilvania University of Brasov - Brasov, Romania , Mihai Itu, Lucian Department of Automation and Information Technology - Transilvania University of Brasov - Brasov, Romania
Abstract :
In recent years, powered by state-of-the-art achievements in a broad range of areas, machine learning has received considerable
attention from the healthcare sector. Despite their ability to provide solutions within personalized medicine, strict regulations on
the confidentiality of patient health information have in many cases hindered the adoption of deep learning-based solutions in
clinical workflows. To allow for the processing of sensitive health information without disclosing the underlying data, we propose
a solution based on fully homomorphic encryption (FHE). *e considered encryption scheme, MORE (Matrix Operation for
Randomization or Encryption), enables the computations within a neural network model to be directly performed on floating
point data with a relatively small computational overhead. We consider the well-known MNIST digit recognition problem to
evaluate the feasibility of the proposed method and show that performance does not decrease when deep learning is applied on
MORE homomorphic data. To further evaluate the suitability of the method for healthcare applications, we first train a model on
encrypted data to estimate the outputs of a whole-body circulation (WBC) hemodynamic model and then provide a solution for
classifying encrypted X-ray coronary angiography medical images. *e findings highlight the potential of the proposed privacypreserving deep learning methods to outperform existing approaches by providing, within a reasonable amount of time, results
equivalent to those achieved by unencrypted models. Lastly, we discuss the security implications of the encryption scheme and
show that while the considered cryptosystem promotes efficiency and utility at a lower security level, it is still applicable in certain
practical use cases.
Keywords :
Deep , Homomorphic , Encrypted , MORE
Journal title :
Computational and Mathematical Methods in Medicine