OBJECTIVES: To derive and validate a mortality prediction model from information available at ED triage. METHODS: Multivariable logistic regression of variables from administrative datasets to predict inpatient mortality of patients admitted through an ED. Accuracy of the model was assessed using the receiver operating characteristic area under the curve (ROC-AUC) and calibration using the Hosmer-Lemeshow goodness of fit test. The model was derived, internally validated and externally validated. Derivation and internal validation were in a tertiary referral hospital and external validation was in an urban community hospital. RESULTS: The ROC-AUC for the derivation set was 0.859 (95% CI 0.856-0.865), for the internal validation set was 0.848...
Accurate risk prediction models for in-hospital mortality are important for unbiased comparisons of ...
Prediction models for identifying emergency department (ED) patients at high risk of poor outcome ar...
BACKGROUND: Comparing heart failure (HF) outcomes across hospitals requires adequate risk adjustment...
PURPOSE Rapid assessment and intervention is important for the prognosis of acutely ill patients ...
Purpose: Rapid assessment and intervention is important for the prognosis of acutely ill patients ad...
Objectives: To develop a model to benchmark mortality in hospitalized patients using accessible ele...
Objective: To devise a simple clinical storing system, using age of patients and laboratory data ava...
Hospital mortality statistics derived from administrative data may not adjust adequately for patient...
Fig 1 shows Receiver operating characteristic (ROC) curve and precision-recall (PR) curve for predic...
Electronic Health Record (EHR) data can be a key resource for decision-making support in clinical pr...
Objective: To develop a predictive model for real-time predictions of length of stay, mortality, and...
Abstract Background In-hospital mortality and short-term mortality are indicators that are commonly ...
YesWe compare the performance of logistic regression with several alternative machine learning metho...
Background: Clinical decision support systems are used to help predict patient stability and mortali...
Background: Heart failure contributes to millions of emergency department (ED) visits, but hospitali...
Accurate risk prediction models for in-hospital mortality are important for unbiased comparisons of ...
Prediction models for identifying emergency department (ED) patients at high risk of poor outcome ar...
BACKGROUND: Comparing heart failure (HF) outcomes across hospitals requires adequate risk adjustment...
PURPOSE Rapid assessment and intervention is important for the prognosis of acutely ill patients ...
Purpose: Rapid assessment and intervention is important for the prognosis of acutely ill patients ad...
Objectives: To develop a model to benchmark mortality in hospitalized patients using accessible ele...
Objective: To devise a simple clinical storing system, using age of patients and laboratory data ava...
Hospital mortality statistics derived from administrative data may not adjust adequately for patient...
Fig 1 shows Receiver operating characteristic (ROC) curve and precision-recall (PR) curve for predic...
Electronic Health Record (EHR) data can be a key resource for decision-making support in clinical pr...
Objective: To develop a predictive model for real-time predictions of length of stay, mortality, and...
Abstract Background In-hospital mortality and short-term mortality are indicators that are commonly ...
YesWe compare the performance of logistic regression with several alternative machine learning metho...
Background: Clinical decision support systems are used to help predict patient stability and mortali...
Background: Heart failure contributes to millions of emergency department (ED) visits, but hospitali...
Accurate risk prediction models for in-hospital mortality are important for unbiased comparisons of ...
Prediction models for identifying emergency department (ED) patients at high risk of poor outcome ar...
BACKGROUND: Comparing heart failure (HF) outcomes across hospitals requires adequate risk adjustment...