TY - JOUR AU - Furman, Gregory AU - Furman, Evgeny AU - Charushin, Artem AU - Eirikh, Ekaterina AU - Malinin, Sergey AU - Sheludko, Valery AU - Sokolovsky, Vladimir AU - Shtivelman, David PY - 2022 DA - 2022/7/19 TI - Remote Analysis of Respiratory Sounds in Patients With COVID-19: Development of Fast Fourier Transform–Based Computer-Assisted Diagnostic Methods JO - JMIR Form Res SP - e31200 VL - 6 IS - 7 KW - COVID-19 KW - audio analysis KW - remote computer diagnosis KW - respiratory sounds KW - respiratory analysis KW - modeling KW - computer-assisted methods KW - diagnostics AB - Background: Respiratory sounds have been recognized as a possible indicator of behavior and health. Computer analysis of these sounds can indicate characteristic sound changes caused by COVID-19 and can be used for diagnostics of this illness. Objective: The aim of the study is to develop 2 fast, remote computer-assisted diagnostic methods for specific acoustic phenomena associated with COVID-19 based on analysis of respiratory sounds. Methods: Fast Fourier transform (FFT) was applied for computer analysis of respiratory sound recordings produced by hospital doctors near the mouths of 14 patients with COVID-19 (aged 18-80 years) and 17 healthy volunteers (aged 5-48 years). Recordings for 30 patients and 26 healthy persons (aged 11-67 years, 34, 60%, women), who agreed to be tested at home, were made by the individuals themselves using a mobile telephone; the records were passed for analysis using WhatsApp. For hospitalized patients, the illness was diagnosed using a set of medical methods; for outpatients, polymerase chain reaction (PCR) was used. The sampling rate of the recordings was from 44 to 96 kHz. Unlike usual computer-assisted diagnostic methods for illnesses based on respiratory sound analysis, we proposed to test the high-frequency part of the FFT spectrum (2000-6000 Hz). Results: Comparing the FFT spectra of the respiratory sounds of patients and volunteers, we developed 2 computer-assisted methods of COVID-19 diagnostics and determined numerical healthy-ill criteria. These criteria were independent of gender and age of the tested person. Conclusions: The 2 proposed computer-assisted diagnostic methods, based on the analysis of the respiratory sound FFT spectra of patients and volunteers, allow one to automatically diagnose specific acoustic phenomena associated with COVID-19 with sufficiently high diagnostic values. These methods can be applied to develop noninvasive screening self-testing kits for COVID-19. SN - 2561-326X UR - https://formative.jmir.org/2022/7/e31200 UR - https://doi.org/10.2196/31200 UR - http://www.ncbi.nlm.nih.gov/pubmed/35584091 DO - 10.2196/31200 ID - info:doi/10.2196/31200 ER -