A novel infrasound and audible machine-learning approach to the diagnosis of COVID-19

Guy Dori, Noa Bachner-Hinenzon, Nour Kasim, Haitem Zaidani, Sivan Haia Perl, Shlomo Maayan, Amin Shneifi, Yousef Kian, Tuvia Tiosano, Doron Adler, Yochai Adir

Source: ERJ Open Res, 8 (4) 00152-2022; 10.1183/23120541.00152-2022
Journal Issue: October

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Citations should be made in the following way:
Guy Dori, Noa Bachner-Hinenzon, Nour Kasim, Haitem Zaidani, Sivan Haia Perl, Shlomo Maayan, Amin Shneifi, Yousef Kian, Tuvia Tiosano, Doron Adler, Yochai Adir. A novel infrasound and audible machine-learning approach to the diagnosis of COVID-19. ERJ Open Res, 8 (4) 00152-2022; 10.1183/23120541.00152-2022

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