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ISSN:
1798-2340 (Online)
Editor-in-Chief:
Prof. Kin C. Yow
DOI:
10.12720/jait
Abstracting/Indexing:
ESCI(Web of Science)
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2.4
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44th percentile
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Editor-in-Chief
Prof. Kin C. Yow
University of Regina, Saskatchewan, Canada
I'm delighted to serve as the Editor-in-Chief of the
JAIT
Editorial Board.
JAIT
is intended to reflect new directions of research and report latest advances in information technology. I will do my best to increase the prestige of the journal.
What's New
2023-02-08
JAIT will adopt Article-by-Article Work Flow. Once a paper steps into production, it will be published online soon. For the Bimonthly journal, each issue will be released at the end of the issue month.
2022-11-30
Vol. 11(1)-Vol. 13(5) has been included in the Web of Science.
2022-11-18
Vol. 13, No. 6 has been published online!
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Volume 13, No. 3, June 2022
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JAIT 2022 Vol.13(3): 265-270
doi: 10.12720/jait.13.3.265-270
Is It Possible to Distinguish COVID-19 Cases and Influenza with Wearable Devices? Analysis with Machine Learning
Justyna Skibinska
1,2
and Radim Burget
1
1. Brno University of Technology, Brno, Czech Republic
2. Tampere University, Tampere, Finland
Abstract
—The COVID-19 situation is enforcing the creation of the diagnosis and supporting methods for early detection, which could serve as screening tools. In this paper, we introduced the methodologies based on wearable devices and machine learning, which distinguishes between COVID-19 disease and two types of Influenza. We checked the results of binary classification for various scenarios and multiclass classification. The results were evaluated separately for the cases before the pandemic and in the middle of the pandemic. In the middle of the pandemic, the best classification accuracy was achieved when distinguishing between COVID-19 and Influenza cases with k-NN (the balanced accuracy was equal to 73%). The highest sensitivity was achieved for Logistic Regression - 61%. The successful distinction between Influenza types was achieved in 80 % for XGBoost and Decision Tree. Additionally, the balanced accuracy for multiclass classification was equal to 69 % for k-NN.
Index Terms
—COVID-19, artificial intelligence, signal processing, machine learning, wearables
Cite: Justyna Skibinska and Radim Burget, "Is It Possible to Distinguish COVID-19 Cases and Influenza with Wearable Devices? Analysis with Machine Learning," Journal of Advances in Information Technology, Vol. 13, No. 3, pp. 265-270, June 2022.
Copyright © 2022 by the authors. This is an open access article distributed under the Creative Commons Attribution License (
CC BY-NC-ND 4.0
), which permits use, distribution and reproduction in any medium, provided that the article is properly cited, the use is non-commercial and no modifications or adaptations are made.
8-TD02-Czech
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