Mechanical ventilation and outcomes in COVID-19 patients admitted to intensive care unit in a low-resources setting: A retrospective study

Sarakawabalo Assenouwe, Tabana Essohanam Mouzou, Ernest Ahounou, Lidaw Deassoua Bawe, Awereou Kotosso, Koffi Atsu Aziagbe, Eyram Makafui Yoan Amekoudi, Mamoudou Omourou, Chimene Etonga Anoudem, Komi Seraphin Adjoh

Journal of Acute Disease(2023)

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摘要
Objective: To describe the strategies and outcomes of mechanical ventilation in a poorly equipped facility. Methods: This retrospective descriptive study included patients with COVID-19 who were admitted to the intensive care unit (ICU) and mechanically ventilated between September 1, 2020, and May 31, 2021. Data were collected from medical records and databases.Results: 54 Patients aged (62.9 +/- 13.3) years were included. Among these cases, 79.6% had at least one comorbidity. On admission, all patients had hypoxia. The median peripheral oxygen saturation in room air was 76% (61%, 83%). Non-invasive ventilation (NIV) was performed in 75.9% of the patients, and invasive mechanical ventilation (IMV) in 68.5%. IMV was performed on patients due to severe coma (8.1%), failure of standard oxygen therapy (27.0%), and failure of NIV (64.9%). An arterial blood gas test was performed in 14.8% of the patients. NIV failed in 90.2% of cases and succeeded in 9.8%. IMV was successful in 5.4% of cases, vs. 94.6% of mortality. The overall mortality rate of patients on ventilation in the ICU was 88.9%. The causes of death included severe respiratory distress syndrome (85.2%), multiple organ failure (14.8%), and pulmonary embolism (13.0%).Conclusions: The ventilation management of COVID-19 patients in the ICU with NIV and IMV in a scarce resource setting is associated with a high mortality rate. Shortcomings are identified in ventilation strategies, protocols, and monitoring. Required improvements were also proposed.
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关键词
coronavirus disease 2019,intensive care unit,hy-poxia,invasive ventilation,non-invasive ventilation,arterial blood gas
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