Analyzing the security of e-Health data based on a hybrid federated learning model
Date
2023-01Publisher
Brac UniversityAuthor
Shafin, Md. Mehtabul IslamAkhter, Sabrin
Hasan, Mohammad Shafkat
Nasimuzzaman, Md.
Prithul, Tamzeedur Rahman
Metadata
Show full item recordAbstract
This research aims to provide an approach for analyzing the security of the e-health
care system through the use of federated learning and the pre-processing of distinct
deep learning models. The infrastructure for e-healthcare services is being gradually
deployed by the health sector. This method increased the safety of patients and
doctors through a protected platform. As a result, it is going to replace the current
health service. Even if this technology is becoming more and more widespread, a
number of data security threats need to be tackled. In this research, a CNN and
MLP architecture with a classification-focused approach using a number of pre trained feature extractors such as ResNet-50, VGG16, and Inception- v3 have been
implemented. Additionally, various machine learning classification algorithms (such
as Random Forest, and Logistic Regression) have been used to classify the images in
order to compare how well they perform to a neural network approach. Federated
learning has also been incorporated to increase healthcare data security as it does
not transmit actual data but models. The objective is to develop a hybrid federated
learning model to analyze the security of e-health data. The core premise is to
utilize a methodology like federated learning, which enables a technique for creating
machine learning models while safeguarding user privacy and can maintain e-health
data security without transferring real-world data.