2023
DOI: 10.1186/s12884-022-05310-w
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Mechanical ventilation and death in pregnant patients admitted for COVID-19: a prognostic analysis from the Brazilian COVID-19 registry score

Abstract: Background The assessment of clinical prognosis of pregnant COVID-19 patients at hospital presentation is challenging, due to physiological adaptations during pregnancy. Our aim was to assess the performance of the ABC2-SPH score to predict in-hospital mortality and mechanical ventilation support in pregnant patients with COVID-19, to assess the frequency of adverse pregnancy outcomes, and characteristics of pregnant women who died. Methods This mu… Show more

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Cited by 3 publications
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“…Previously developed prediction models quantifying the probability of severe COVID-19 in pregnant individuals included the following factors: maternal age, body mass index, abnormal vital signs or symptoms (e.g., cough, dyspnea, shortness of breath, heart rate, respiratory rate, and temperature), abnormal laboratory values (e.g., C-reactive protein, neutrophil to lymphocyte ratio, blood urea nitrogen, platelets count), and abnormal chest X-ray. [6][7][8][9] Though these models provide valuable insight into factors associated with COVID-19 severity, most of these studies are limited in their ability to detect factors and for generalizability for a population of individuals in the United States due to small sample sizes and majority occurring in non-U.S. populations, respectively.…”
mentioning
confidence: 99%
“…Previously developed prediction models quantifying the probability of severe COVID-19 in pregnant individuals included the following factors: maternal age, body mass index, abnormal vital signs or symptoms (e.g., cough, dyspnea, shortness of breath, heart rate, respiratory rate, and temperature), abnormal laboratory values (e.g., C-reactive protein, neutrophil to lymphocyte ratio, blood urea nitrogen, platelets count), and abnormal chest X-ray. [6][7][8][9] Though these models provide valuable insight into factors associated with COVID-19 severity, most of these studies are limited in their ability to detect factors and for generalizability for a population of individuals in the United States due to small sample sizes and majority occurring in non-U.S. populations, respectively.…”
mentioning
confidence: 99%