Patients with severe COVID-19 have overwhelmed healthcare systems worldwide. We hypothesized that machine learning (ML) models could be used to predict risks at different stages of management and thereby provide insights into drivers and prognostic markers of disease progression and death. From a cohort of approx. 2.6 million citizens in Denmark, SARS-CoV-2 PCR tests were performed on subjects suspected for COVID-19 disease; 3944 cases had at least one positive test and were subjected to further analysis. SARS-CoV-2 positive cases from the United Kingdom Biobank was used for external validation. The ML models predicted the risk of death (Receiver Operation Characteristics-Area Under the Curve, ROC-AUC) of 0.906 at diagnosis, 0.818, at hospital admission and 0.721 at Intensive Care Unit (ICU) admission. Similar metrics were achieved for predicted risks of hospital and ICU admission and use of mechanical ventilation. Common risk factors, included age, body mass index and hypertension, although the top risk features shifted towards markers of shock and organ dysfunction in ICU patients. The external validation indicated fair predictive performance for mortality prediction, but suboptimal performance for predicting ICU admission. ML may be used to identify drivers of progression to more severe disease and for prognostication patients in patients with COVID-19. We provide access to an online risk calculator based on these findings.
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http://dx.doi.org/10.1038/s41598-021-81844-x | DOI Listing |
J Health Econ
January 2025
Frontier Nursing University, United States of America.
Over 2005-2019, the number of neonatal intensive care units (NICUs) grew by 10%, and the number of NICU beds increased by 30%. This expansion in intensive care has raised concerns over unwarranted intensive care admissions. In this study, we examine whether the greater supply of NICUs causally raises admission rates.
View Article and Find Full Text PDFMed Educ
January 2025
Heisenberg Chair for Medical Risk Literacy and Evidence-Based Decisions, Charité Universitätsmedizin Berlin, Berlin, Germany.
Background: In 1962, the idea emerged that medical students' tolerance of uncertainty could determine their specialty choice. While some studies supported this claim, others refuted it, often using independently developed instruments. We explored whether the reported link between specialty choice and uncertainty tolerance is more myth than evidence by employing established instruments to investigate whether specialty choice could be explained by variance in uncertainty tolerance.
View Article and Find Full Text PDFBackground: Intensive care unit (ICU) admissions can be traumatic for critically ill, ventilated acute respiratory distress syndrome (ARDS) patients due to fear of death, an inability to verbally communicate, reliance on health care professionals, and invasive medical interventions. Adult ARDS patients hospitalized during the COVID-19 pandemic were strictly isolated and had limited to no visitation from loved ones, impacting their access to support systems.
Objective: To explore the memories and sensory triggers for them (if applicable) of adult ARDS survivors hospitalized during the COVID-19 pandemic.
J Peripher Nerv Syst
March 2025
Intermediate Care Unit, Hospital of Palamos, Palamos, Spain.
Background And Aims: A recent study reported that Oropouche virus (OROV) infection may play a role in the etiology of Guillain-Barré syndrome. We aimed to identify the neurological performance, disease-modifying therapies, and clinical outcomes related to patients with Oropouche-associated Guillain-Barré syndrome admitted to the critical care unit.
Methods: This was an analysis of 210 patients diagnosed with Guillain-Barré syndrome and suspicion of Oropouche viral infection admitted to the critical care units from June 2024 to September 2024 using the national administrative healthcare data.
Intern Emerg Med
January 2025
The Critical Care Resuscitation Unit, University of Maryland Medical Center, 22 South Greene Street, Suite T3N45, Baltimore, MD, 21201, USA.
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