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An Optimized Federated Learning Approach with the Data-Sharing Function to the Analysis of Cardiothoracic Time-Series Signals
1
Zitationen
4
Autoren
2023
Jahr
Abstract
Machine/deep learning has been widely used for big data analysis in the field of healthcare, but it is still a question to ensure both computation efficiency and data security/confidentiality for the protection of private information. Referring to the data-sharing function of the federated learning (FedL) model, we propose an optimized data-sharing FedL (DSFedL) framework via a data-sharing hub by evaluating an accuracy-privacy loss function. When applied to the derived non-identically and independently distributed (nonIID) datasets simulated from three open-source cardiothoracic databases (i.e., ICBHI, Coswara COVID-19, MIT-BIH Arrhythmia), our optimized DSFedL works efficiently and the results show an optimal outcome of both the accuracy/efficiency and data security/confidentiality management.Clinical Relevance-This provides a proof of concept for using DSFedL in clinical applications, particularly in those settings that require data confidentiality control.
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Autoren
Institutionen
- Sorbonne Université(FR)
- Institut National de Physique Nucléaire et de Physique des Particules(FR)
- Laboratoire de Physique Nucléaire et de Hautes Énergies(FR)
- Centre National de la Recherche Scientifique(FR)
- CE Technologies (United Kingdom)(GB)
- Intelligent Health (United Kingdom)(GB)
- University of California, Irvine(US)