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Lung ultrasound in predicting COVID-19 clinical outcomes: A prospective observational study.
Chardoli, Mojtaba; Sabbaghan Kermani, Shaghayegh; Abdollahzade Manqoutaei, Sanaz; Loesche, Michael A; Duggan, Nicole M; Schulwolf, Sara; Tofighi, Rojin; Yadegari, Sina; Shokoohi, Hamid.
  • Chardoli M; Department of Emergency Medicine Firouzgar General Hospital Iran University of Medical Sciences Tehran Iran.
  • Sabbaghan Kermani S; Iran University of Medical Sciences Tehran Iran.
  • Abdollahzade Manqoutaei S; Department of Emergency Medicine Firouzgar General Hospital Iran University of Medical Sciences Tehran Iran.
  • Loesche MA; Harvard Affiliated Emergency Medicine Residency Program-Harvard Medical School Boston Massachusetts USA.
  • Duggan NM; Harvard Affiliated Emergency Medicine Residency Program-Harvard Medical School Boston Massachusetts USA.
  • Schulwolf S; Division of Emergency Ultrasound Department of Emergency Medicine Massachusetts General Hospital Boston Massachusetts USA.
  • Tofighi R; Iran University of Medical Sciences Tehran Iran.
  • Yadegari S; Tehran University of Medical Sciences Tehran Iran.
  • Shokoohi H; Department of Emergency Medicine Harvard Medical School Massachusetts General Hospital Boston Massachusetts USA.
J Am Coll Emerg Physicians Open ; 2(6): e12575, 2021 Dec.
Article in English | MEDLINE | ID: covidwho-1508651
ABSTRACT
STUDY

OBJECTIVE:

We sought to determine the ability of lung point-of-care ultrasound (POCUS) to predict mechanical ventilation and in-hospital mortality in patients with coronavirus disease 2019 (COVID-19).

METHODS:

This was a prospective observational study of a convenience sample of patients with confirmed COVID-19 presenting to 2 tertiary hospital emergency departments (EDs) in Iran between March and April 2020. An emergency physician attending sonographer performed a 12-zone bilateral lung ultrasound in all patients. Research associates followed the patients on their clinical course. We determined the frequency of positive POCUS findings, the geographic distribution of lung involvement, and lung severity scores. We used multivariable logistic regression to associate lung POCUS findings with clinical outcomes.

RESULTS:

A total of 125 patients with COVID-like symptoms were included, including 109 with confirmed COVID-19. Among the included patients, 33 (30.3%) patients were intubated, and in-hospital mortality was reported in 19 (17.4%). Lung POCUS findings included pleural thickening 95.4%, B-lines 90.8%, subpleural consolidation 86.2%, consolidation 46.8%, effusions 19.3%, and atelectasis 18.3%. Multivariable logistic regression incorporating binary and scored POCUS findings were able to identify those at highest risk for need of mechanical ventilation (area under the curve 0.80) and in-hospital mortality (area under the curve 0.87). In the binary model ultrasound (US) findings in the anterior lung fields were significantly associated with a need for intubation and mechanical ventilation (odds ratio [OR] 3.67; 0.62-21.6). There was an inverse relationship between mortality and posterior lung field involvement (OR 0.05; 0.01-0.23; and scored OR of 0.57; 0.40-0.82). Anterior lung field involvement was not associated with mortality.

CONCLUSIONS:

In patients with COVID-19, the anatomic distribution of findings on lung ultrasound is associated with outcomes. Lung POCUS-based models may help clinicians to identify those patients with COVID-19 at risk for clinical deterioration.Key Words COVID-19; Lung Ultrasound; Mechanical ventilation; Prediction; ICU admission; Mortality; Clinical outcome; Risk stratification; Diagnostic accuracy.
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Full text: Available Collection: International databases Database: MEDLINE Type of study: Observational study / Prognostic study Language: English Journal: J Am Coll Emerg Physicians Open Year: 2021 Document Type: Article

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Full text: Available Collection: International databases Database: MEDLINE Type of study: Observational study / Prognostic study Language: English Journal: J Am Coll Emerg Physicians Open Year: 2021 Document Type: Article