Complications following hospital admission for traumatic brain injury: A multicenter cohort study

2017 ◽  
Vol 41 ◽  
pp. 1-8 ◽  
Author(s):  
Madiba Omar ◽  
Lynne Moore ◽  
François Lauzier ◽  
Pier-Alexandre Tardif ◽  
Philippe Dufresne ◽  
...  
Author(s):  
Marc-Aurèle Gagnon ◽  
Mélanie Bérubé ◽  
Éric Mercier ◽  
Natalie Yanchar ◽  
Peter Cameron ◽  
...  

Background: Injury represents 260,000 hospitalisations and $27 billion in healthcare costs each year in Canada. Evidence suggests that there is significant variation in the prevalence of hospital admissions among ED presentations between countries and providers but we lack data specific to injury admissions. We aimed to estimate the prevalence of potentially low-value injury admissions following injury in a Canadian provincial trauma system, identify diagnostic groups contributing most to low-value admissions and assess inter-hospital variation. Methods: We conducted a retrospective multicenter cohort study based on all injury admissions in the Québec trauma system (2013-2018). Using literature and expert consultation, we developed criteria to identify potentially low-value injury admissions. We used a multilevel logistic regression model to evaluate inter-hospital variation in the prevalence of low-value injury admissions with intraclass correlation coefficients (ICC). We stratified our analyses by age (1-15; 16-64; 65-74; 75+ years). Results: The prevalence of low-value injury admissions was 16% (n=19,163) among all patients, 26% (2136) in children, 11% (4695) in young adults and 19% (12,345) in older adults. Diagnostic groups contributing most to low-value admissions were mild traumatic brain injury in children (48% of low-value pediatric injury admissions; n=922), superficial injuries (14%, n=660) or minor spinal injuries (14%, n=634) in adults aged 16-64, and superficial injuries in adults aged 65+ (22%, n=2771). We observed strong inter-hospital variation in the prevalence of low-value injury admissions (ICC=37%). Conclusion: One out of six hospital admissions following injury may be of low-value. Children with mild traumatic brain injury and adults with superficial injuries could be good targets for future research efforts seeking to reduce health care services overuse. Inter-hospital variation indicates there may be an opportunity to reduce low-value injury admissions with appropriate interventions targeting modifications in care processes.


2020 ◽  
Author(s):  
Bumjo Oh ◽  
Suhyun Hwangbo ◽  
Taeyeong Jung ◽  
Kyungha Min ◽  
Chanhee Lee ◽  
...  

BACKGROUND Limited information is available about the present characteristics and dynamic clinical changes that occur in patients with COVID-19 during the early phase of the illness. OBJECTIVE This study aimed to develop and validate machine learning models based on clinical features to assess the risk of severe disease and triage for COVID-19 patients upon hospital admission. METHODS This retrospective multicenter cohort study included patients with COVID-19 who were released from quarantine until April 30, 2020, in Korea. A total of 5628 patients were included in the training and testing cohorts to train and validate the models that predict clinical severity and the duration of hospitalization, and the clinical severity score was defined at four levels: mild, moderate, severe, and critical. RESULTS Out of a total of 5601 patients, 4455 (79.5%), 330 (5.9%), 512 (9.1%), and 301 (5.4%) were included in the mild, moderate, severe, and critical levels, respectively. As risk factors for predicting critical patients, we selected older age, shortness of breath, a high white blood cell count, low hemoglobin levels, a low lymphocyte count, and a low platelet count. We developed 3 prediction models to classify clinical severity levels. For example, the prediction model with 6 variables yielded a predictive power of >0.93 for the area under the receiver operating characteristic curve. We developed a web-based nomogram, using these models. CONCLUSIONS Our prediction models, along with the web-based nomogram, are expected to be useful for the assessment of the onset of severe and critical illness among patients with COVID-19 and triage patients upon hospital admission.


Author(s):  
Ahmed Negida ◽  
Zoe Teton ◽  
Brittany Stedelin ◽  
Caleb Nerison ◽  
Hieder Al-Shami ◽  
...  

Abstract Globally, traumatic brain injury (TBI) affects 69 million individuals every year. However, there are wide variations in the management of TBI across low-, middle- and high-income countries which reflects on the outcomes of TBI worldwide. This study aims to provide a comprehensive global picture of the surgical and nonsurgical management and outcomes of TBI. The Global NeuroSurg 1 study is a prospective international multicentre cohort study conducted in self-selected registered centers. Any hospital receiving and managing TBI patients is eligible to participate (registration through www.globalneurosurg.org). After obtaining institutional ethical approvals, collaborator teams collect consecutive TBI patient data within any 2 weeks from the 1 June 2019 to the 30 September 2021 with 90 days of follow-up for every patient. Data items include (1) patient demographics, (2) TBI timing, severity and mechanism, (3) clinical status of the patient, (4) radiographic findings, (5) surgical and nonsurgical management and (6) patient survival and Glasgow outcome score. All data are submitted to the secure RedCap system of Oregon Health and Science University, OR. Binary logistic regression analysis will be conducted to evaluate the predictors of 30-day mortality. The odds ratios and the corresponding 95% confidence intervals will be calculated for each variable. Then variables that are independently contributing to the mortality will be selected and examined. Study ethical approvals or ethical approval waivers are obtained from all participating centers. All collected data are kept confidential and will be used only for the purpose of this study.


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