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International Journal of Digital Health Volume 2 (2022), Article ID 2:IJDH-109, 5 pages
https://doi.org/10.15344/ijdh/2022/109
Research Article
Detecting Covid-19 Respiratory Markers with Ordinary Mobile Phones

John Heironimus1,*, Arnold Stromberg2 and Robert William Prasaad Steiner3

1Principal at Fleming Scientific and inventor of Tele-stethoscopeA, Louisville, Kentucky, United States
2Professor of Statistics, University of Kentucky, Lexington, KY 40506, United States
3University of Louisville Public Health (ret), Louisville, KY 40202, United States
John Heironimus, Fleming Scientific, LLC, Louisville, Kentucky, United States; Tel: 502-403-0058; E-mail: jh@flemingscientific.com
07 December 2021; 11 January 2022; 13 January 2022
Heironimus J, Stromberg A, Steiner RWP (2022) Detecting Covid-19 Respiratory Markers with Ordinary Mobile Phones. Int J Digt Hlthc 2: 109. doi: https://doi.org/10.15344/ijdh/2022/109

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