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A novel infrasound and audible machine-learning approach to the diagnosis of COVID-19.
Dori, Guy; Bachner-Hinenzon, Noa; Kasim, Nour; Zaidani, Haitem; Perl, Sivan Haia; Maayan, Shlomo; Shneifi, Amin; Kian, Yousef; Tiosano, Tuvia; Adler, Doron; Adir, Yochai.
Afiliação
  • Dori G; HaEmek Medical Center, Afula, Israel.
  • Bachner-Hinenzon N; Sanolla, Nesher, Israel.
  • Kasim N; HaEmek Medical Center, Afula, Israel.
  • Zaidani H; Rambam Medical Center, Haifa, Israel.
  • Perl SH; Shamir Medical Center, Zerifin, Israel.
  • Maayan S; Barzilai Medical Center, Ashkelon, Israel.
  • Shneifi A; Clalit Health Services, Tel Aviv, Israel.
  • Kian Y; Barzilai Medical Center, Ashkelon, Israel.
  • Tiosano T; HaEmek Medical Center, Afula, Israel.
  • Adler D; Sanolla, Nesher, Israel.
  • Adir Y; Carmel Medical Center, Haifa, Israel.
ERJ Open Res ; 8(4)2022 Oct.
Article em En | MEDLINE | ID: mdl-36284830
Background: The coronavirus disease 2019 (COVID-19) outbreak has rapidly spread around the world, causing a global public health and economic crisis. A critical limitation in detecting COVID-19-related pneumonia is that it is often manifested as a "silent pneumonia", i.e. pulmonary auscultation that sounds "normal" using a standard stethoscope. Chest computed tomography is the gold standard for detecting COVID-19 pneumonia; however, radiation exposure, availability and cost preclude its utilisation as a screening tool for COVID-19 pneumonia. In this study we hypothesised that COVID-19 pneumonia, "silent" to the human ear using a standard stethoscope, is detectable using a full-spectrum auscultation device that contains a machine-learning analysis. Methods: Lung sound signals were acquired, using a novel full-spectrum (3-2000 Hz) stethoscope, from 164 COVID-19 pneumonia patients, 61 non-COVID-19 pneumonia patients and 141 healthy subjects. A machine-learning classifier was constructed and the data were classified into three groups: 1) normal lung sounds, 2) COVID-19 pneumonia and 3) non-COVID-19 pneumonia. Results: Standard auscultation found that 72% of the non-COVID-19 pneumonia patients had abnormal lung sounds compared with only 25% of the COVID-19 pneumonia patients. The classifier's sensitivity and specificity for the detection of COVID-19 pneumonia were 97% and 93%, respectively, when analysing the sound and infrasound data, and they were reduced to 93% and 80%, respectively, without the infrasound data (p<0.01 difference in receiver operating characteristic curves with and without infrasound). Conclusions: This study reveals that useful clinical information exists in the infrasound spectrum of COVID-19-related pneumonia and machine-learning analysis applied to the full spectrum of lung sounds is useful in its detection.

Texto completo: 1 Coleções: 01-internacional Base de dados: MEDLINE Tipo de estudo: Diagnostic_studies Idioma: En Revista: ERJ Open Res Ano de publicação: 2022 Tipo de documento: Article

Texto completo: 1 Coleções: 01-internacional Base de dados: MEDLINE Tipo de estudo: Diagnostic_studies Idioma: En Revista: ERJ Open Res Ano de publicação: 2022 Tipo de documento: Article