A comprehensive review of federated learning for COVID-19 detection.
Sadaf NazKhoa T PhanYi-Ping Phoebe ChenPublished in: International journal of intelligent systems (2021)
The coronavirus of 2019 (COVID-19) was declared a global pandemic by World Health Organization in March 2020. Effective testing is crucial to slow the spread of the pandemic. Artificial intelligence and machine learning techniques can help COVID-19 detection using various clinical symptom data. While deep learning (DL) approach requiring centralized data is susceptible to a high risk of data privacy breaches, federated learning (FL) approach resting on decentralized data can preserve data privacy, a critical factor in the health domain. This paper reviews recent advances in applying DL and FL techniques for COVID-19 detection with a focus on the latter. A model FL implementation use case in health systems with a COVID-19 detection using chest X-ray image data sets is studied. We have also reviewed applications of previously published FL experiments for COVID-19 research to demonstrate the applicability of FL in tackling health research issues. Last, several challenges in FL implementation in the healthcare domain are discussed in terms of potential future work.
Keyphrases
- coronavirus disease
- sars cov
- big data
- artificial intelligence
- healthcare
- machine learning
- deep learning
- electronic health record
- respiratory syndrome coronavirus
- public health
- health information
- loop mediated isothermal amplification
- magnetic resonance imaging
- high resolution
- magnetic resonance
- human health
- convolutional neural network
- climate change
- current status