scholarly journals ASPECT - Insufficient Care Environment Regarding Privacy, Views, Comfort and Facilities for Critically Ill Patients at One Emergency Department in Vietnam - An Observation Study

Author(s):  
Charmi Sara ◽  
Landell Amanda Johansson ◽  
Rosengren Kristina
2020 ◽  
Author(s):  
Rachel J Williams ◽  
Samantha L. Wood

Abnormalities of serum glucose in pediatric patients are commonly encountered in the emergency department and represent an acute threat to life and neurologic function. Rapidly identifying and aggressively treating hyperglycemia with diabetic ketoacidosis and hypoglycemia are critical to ensure the best possible outcome. This review will guide the emergency provider in the identification, resuscitation, workup, and disposition of these critically ill patients. This review contains 6 figures, 13 tables, and 50 reviews. Key Words: Cerebral edema, diabetic ketoacidosis, hyperglycemia, hypoglycemia


1990 ◽  
Vol 5 (2) ◽  
pp. 119-129 ◽  
Author(s):  
Michael S. Jastremski ◽  
Ronald J. Lagoe

AbstractThis study describes a series of mechanisms to alleviate overcrowding of hospital emergency departments by distributing critically ill patients among facilities with available resources. The initial mechanism, which was based on the availability of critical care beds, was used successfully between 1982 and 1986, but had to be abandoned when several new factors caused the availability of emergency department resources to become the limiting factor. A second approach, based on the availability of critical care and emergency department resources, produced limited success over a one-year period. The system currently in use, implemented in 1989, includes a distribution system based on the availability of emergency department resources and critical care beds, as well as a mechanism for diversion of ambulances to hospitals in neighboring counties at times of extremely high utilization. This experience demonstrates that mechanisms for planning the distribution of emergency and critically ill patients have universal applicability.


Author(s):  
Martin Beed ◽  
Richard Sherman ◽  
Ravi Mahajan

Assessment and immediate management of an emergencyEarly further managementThe assessment and immediate management of critically ill patients follows the established ABC approach (Approach/Airway, Breathing, Circulation). What follows is a brief summary of the ABC approach adapted for patients within a critical care environment, further details on each system are considered in individual chapters. Any deterioration during assessment and resuscitation should prompt a return to ‘A’....


2020 ◽  
Vol 10 (1) ◽  
Author(s):  
Qiangrong Zhai ◽  
Zi Lin ◽  
Hongxia Ge ◽  
Yang Liang ◽  
Nan Li ◽  
...  

AbstractThe number of critically ill patients has increased globally along with the rise in emergency visits. Mortality prediction for critical patients is vital for emergency care, which affects the distribution of emergency resources. Traditional scoring systems are designed for all emergency patients using a classic mathematical method, but risk factors in critically ill patients have complex interactions, so traditional scoring cannot as readily apply to them. As an accurate model for predicting the mortality of emergency department critically ill patients is lacking, this study’s objective was to develop a scoring system using machine learning optimized for the unique case of critical patients in emergency departments. We conducted a retrospective cohort study in a tertiary medical center in Beijing, China. Patients over 16 years old were included if they were alive when they entered the emergency department intensive care unit system from February 2015 and December 2015. Mortality up to 7 days after admission into the emergency department was considered as the primary outcome, and 1624 cases were included to derive the models. Prospective factors included previous diseases, physiologic parameters, and laboratory results. Several machine learning tools were built for 7-day mortality using these factors, for which their predictive accuracy (sensitivity and specificity) was evaluated by area under the curve (AUC). The AUCs were 0.794, 0.840, 0.849 and 0.822 respectively, for the SVM, GBDT, XGBoost and logistic regression model. In comparison with the SAPS 3 model (AUC = 0.826), the discriminatory capability of the newer machine learning methods, XGBoost in particular, is demonstrated to be more reliable for predicting outcomes for emergency department intensive care unit patients.


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