Background: COVID-19 has strained healthcare systems globally. In this and future pandemics, providers with limited critical care experience must distinguish between moderately ill patients and those who will require aggressive care, particularly endotracheal intubation. We sought to develop a machine learning-informed Early COVID-19 Respiratory Risk Stratification (ECoRRS) score to assist in triage, by providing a prediction of intubation within the next 48 hours based on objective clinical parameters.
Methods: Electronic health record data from 3447 COVID-19 hospitalizations, 20.7% including intubation, were extracted. 80% of these records were used as the derivation cohort. The validation cohort consisted of 20% of the total 3447 records. Multiple randomizations of the training and testing split were used to calculate confidence intervals. Data were binned into 4-hour blocks and labeled as cases of intubation or no intubation within the specified time frame. A LASSO (least absolute shrinkage and selection operator) regression model was tuned for sensitivity and sparsity.
Results: Six highly predictive parameters were identified, the most significant being fraction of inspired oxygen. The model achieved an area under the receiver operating characteristic curve of 0.789 (95% CI 0.785 to 0.812). At 90% sensitivity, the negative predictive value was 0.997.
Discussion: The ECoRRS score enables non-specialists to identify patients with COVID-19 at risk of intubation within 48 hours with minimal undertriage and enables health systems to forecast new COVID-19 ventilator needs up to 48 hours in advance.
Level Of Evidence: IV.
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http://dx.doi.org/10.1136/tsaco-2022-000892 | DOI Listing |
Alzheimers Dement
December 2024
Davos Alzheimer's Collaborative, Wayne, PA, USA.
Background: Cognitive impairment is frequently undetected or undiagnosed in the early stages. To increase the rates of detecting cognitive impairment, the Early Detection program of the Davos Alzheimer's Collaborative System Preparedness (DAC-SP) implemented digital cognitive assessments (DCA) in primary care and other non-specialty settings.
Methods: The DAC-SP Early Detection program was initiated in 2021 in seven healthcare systems across six countries.
Alzheimers Dement
December 2024
Miami University's Scripps Gerontology Center, Oxford, OH, USA.
Background: Knowledge of nursing home (NH) residents' everyday care preferences is foundational in that it allows for the delivery of person-centered care and individualized care planning. However, little is known about how integrating preferences into care delivery impact outcomes of care. The Preference Match Tracker is an objective metric that tracks the number of recreation activities NH residents attend that match or is "congruent" with resident important preferences.
View Article and Find Full Text PDFAlzheimers Dement
December 2024
University of North Carolina at Chapel Hill, Chapel Hill, NC, USA.
Background: Cardiometabolic diseases and mental health disorders, which are high-risk factors for dementia and cognitive decline, are associated with higher mortality and morbidity with age. Interventions before age 60 may lessen the burden of cognitive and physical function in later life. Telehealth offers early intervention and solutions for their complex demands in continuous behavior monitoring and medication refilling.
View Article and Find Full Text PDFBMC Oral Health
January 2025
Department of Stomatology, Taizhou Central Hospital (Taizhou University Hospital), Taizhou, Zhejiang, China.
Purpose: To perform risk assessment and analysis of potential infection during stomatology workflow in a hospital in the context of a major infectious disease outbreak, and to determine the key failure modes and measures to prevent and control infection.
Method: Following the Failure Modes and Effects Analysis (FMEA) method based on the stomatology workflow, the opinions of 30 domain-experts in related fields were collected through questionnaires to determine all potential failure modes in the severity (S), occurrence (O), and detectability (D) dimensions. The group score was then integrated through the median method and the risk priority number (RPN) was obtained.
BMC Public Health
January 2025
Department of Occupational Health Practice and Management, Institute of Industrial Ecological Sciences, University of Occupational and Environmental Health, Fukuoka, Japan.
Background: During the COVID-19 pandemic, information and circumstances changed from moment to moment, including the accumulation of scientific knowledge, the emergence of variants, social tolerance, and government policy. Therefore, it was important to adapt workplace countermeasures punctually and flexibly based on scientific evidence and according to circumstances. However, there has been no assessment of changes in workplace countermeasures.
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