Privacy-aware Early Detection of COVID-19 through Adversarial Training
Omid Rohanian, Samaneh Kouchaki, Andrew Soltan, Jenny Yang, Morteza, Rohanian, Yang Yang, David Clifton

TL;DR
This paper develops privacy-preserving deep learning models for early COVID-19 detection using clinical data, employing adversarial training to protect sensitive demographic information against attacks.
Contribution
It introduces adversarial training techniques to create COVID-19 detection models that inherently safeguard patient demographic data from leakage.
Findings
Models effectively predict COVID-19 status from clinical data.
Proposed architectures demonstrate robustness against adversarial attacks.
Enhanced privacy protection without significant loss of accuracy.
Abstract
Early detection of COVID-19 is an ongoing area of research that can help with triage, monitoring and general health assessment of potential patients and may reduce operational strain on hospitals that cope with the coronavirus pandemic. Different machine learning techniques have been used in the literature to detect coronavirus using routine clinical data (blood tests, and vital signs). Data breaches and information leakage when using these models can bring reputational damage and cause legal issues for hospitals. In spite of this, protecting healthcare models against leakage of potentially sensitive information is an understudied research area. In this work, we examine two machine learning approaches, intended to predict a patient's COVID-19 status using routinely collected and readily available clinical data. We employ adversarial training to explore robust deep learning architectures…
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Taxonomy
TopicsCOVID-19 diagnosis using AI · Machine Learning in Healthcare · Autopsy Techniques and Outcomes
