Ciência-IUL
Publications
Publication Detailed Description
Challenges in Federated Learning Trained Anomaly Detection applied to Hospital Data without a Baseline
Proceedings 22nd IEEE Mediterranean Electrotechnical Conference
Year (definitive publication)
2024
Language
English
Country
Portugal
More Information
--
Web of Science®
This publication is not indexed in Web of Science®
Scopus
This publication is not indexed in Scopus
Google Scholar
Abstract
During the COVID-19 pandemic, data collected via personal wearable devices was used to create models for the detection of a possible alteration of health status by defining an individual’s healthy baseline data. This work explores the usage of one of those models to enable a Federated Learning (FL) approach aiming to achieve a process applicable to sensing data from hospital-admitted patients. The fact that hospital data does not contain any samples that can confidently be considered ”healthy” and thus serve as a baseline makes hospital COVID-19 detection a relevant challenge for anomaly detection techniques. After an adequate data preparation process, we were able to use the individually trained models to build an aggregated model for application to hospital data. Although the FL models obtain worse mean precision and recall scores when compared to the individual models, this experiment brings forth relevant knowledge on the compromises that might be necessary to develop a clinical anomaly detection model to be used in an Intensive Care Unit or monitored patients’ data lacking baseline samples.
Acknowledgements
Work partially supported by FCT (UIDB/04466/2020; UIDP/04466/2020) DSAIPA/AI/0122/2020 Aim Health. The authors would like to thank Hospital de Santa Maria and, in particular, José Miguel Dias and Luís Rosário.
Keywords
Anomaly Detection,Federated Learning,Health data model,Machine Learning
Associated Records
This publication is associated with the following record:
Contributions to the Sustainable Development Goals of the United Nations
With the objective to increase the research activity directed towards the achievement of the United Nations 2030 Sustainable Development Goals, the possibility of associating scientific publications with the Sustainable Development Goals is now available in Ciência-IUL. These are the Sustainable Development Goals identified by the author(s) for this publication. For more detailed information on the Sustainable Development Goals, click here.