An advanced data fabric architecture leveraging homomorphic encryption and federated learning
Date
2023-03Publisher
Brac UniversityAuthor
Rieyan, Sakib AnwarNews, Md. Raisul Kabir
Rahman, A.B.M. Muntasir
Khan, Sadia Afrin
Zaarif, Sultan Tasneem Jawad
Metadata
Show full item recordAbstract
In this study, we present a novel approach for securely analyzing medical images
using federated learning and partially homomorphic encryption within a distributed
data fabric architecture. Our approach allows multiple parties to collaboratively
train a machine learning model without exchanging raw data, while still maintaining
compliance with laws and regulations such as HIPAA and GDPR. We demonstrate
the effectiveness of our approach using pituitary tumor classification as a case study,
achieving an overall accuracy of 83.31%. However, the primary focus of our work is
on the development and evaluation of federated learning and partially homomorphic
encryption as tools for secure medical image analysis. Our results show the potential
for these techniques to be applied in other privacy-sensitive domains and contribute
to the growing body of research on secure and privacy-preserving machine learning.