Predicting hospital admissions at emergency department triage using routine administrative data.

OBJECTIVES To be able to predict, at the time of triage, whether a need for hospital admission exists for emergency department (ED) patients may constitute useful information that could contribute to systemwide hospital changes designed to improve ED throughput. The objective of this study was to develop and validate a predictive model to assess whether a patient is likely to require inpatient admission at the time of ED triage, using routine hospital administrative data. METHODS Data collected at the time of triage by nurses from patients who visited the ED in 2007 and 2008 were extracted from hospital administrative databases. Variables included were demographics (age, sex, and ethnic group), ED visit or hospital admission in the preceding 3 months, arrival mode, patient acuity category (PAC) of the ED visit, and coexisting chronic diseases (diabetes, hypertension, and dyslipidemia). Chi-square tests were used to study the association between the selected possible risk factors and the need for hospital admission. Logistic regression was applied to develop the prediction model. Data were split for derivation (60%) and validation (40%). Receiver operating characteristic curves and goodness-of-fit tests were applied to the validation data set to evaluate the model. RESULTS Of 317,581 ED patient visits, 30.2% resulted in immediate hospital admission. In the developed predictive model, age, PAC status, and arrival mode were most predictive of the need for immediate hospital inpatient admission. The c-statistic of the receiver operating characteristic (ROC) curve was 0.849 (95% confidence interval [CI] = 0.847 to 0.851). The goodness-of-fit test showed that the predicted patients' admission risks fit the patients' actual admission status well. CONCLUSIONS A model for predicting the risk of immediate hospital admission at triage for all-cause ED patients was developed and validated using routinely collected hospital data. Early prediction of the need for hospital admission at the time of triage may help identify patients deserving of early admission planning and resource allocation and thus potentially reduce ED overcrowding.

[1]  A. Da Costa,et al.  Appropriateness of emergency department visits in a Portuguese university hospital. , 2001, Annals of emergency medicine.

[2]  Colin A. Graham,et al.  Analysis of trends in emergency department attendances, hospital admissions and medical staffing in a Hong Kong university hospital: 5-year study , 2009, International journal of emergency medicine.

[3]  John Concato,et al.  Care in the emergency department: how crowded is overcrowded? , 2004, Academic emergency medicine : official journal of the Society for Academic Emergency Medicine.

[4]  Allan Donner,et al.  Design and Analysis of Cluster Randomization Trials in Health Research , 2001 .

[5]  Karin V Rhodes,et al.  A conceptual model of emergency department crowding. , 2003, Annals of emergency medicine.

[6]  S. Peiró,et al.  Inappropriate use of an accident and emergency department: magnitude, associated factors, and reasons--an approach with explicit criteria. , 2001, Annals of emergency medicine.

[7]  J. Richards,et al.  Overcrowding in the nation's emergency departments: complex causes and disturbing effects. , 2000, Annals of emergency medicine.

[8]  J V Tu,et al.  Development and validation of the Ontario acute myocardial infarction mortality prediction rules. , 2001, Journal of the American College of Cardiology.

[9]  Zachary F. Meisel,et al.  Derivation andInternal Validation of a Rule to Predict Hospital Admission in Prehospital Patients , 2008, Prehospital emergency care : official journal of the National Association of EMS Physicians and the National Association of State EMS Directors.

[10]  Lawrence M Lewis,et al.  Identifying high-risk patients for triage and resource allocation in the ED. , 2007, The American journal of emergency medicine.

[11]  Robert S. Stawski,et al.  Multilevel Analysis: An Introduction to Basic and Advanced Multilevel Modeling (2nd Edition) , 2013 .

[12]  A multivariate model for predicting hospital admissions for patients with decompensated chronic obstructive pulmonary disease. , 1992, Archives of internal medicine.

[13]  S. Eldridge,et al.  'Inappropriate' attendance at an accident and emergency department by adults registered in local general practices: how is it related to their use of primary care? , 2002, Journal of health services research & policy.

[14]  C. Newgard,et al.  Soft tissue infections and emergency department disposition: predicting the need for inpatient admission. , 2009, Academic emergency medicine : official journal of the Society for Academic Emergency Medicine.

[15]  Cherri Hobgood,et al.  Impact of critical bed status on emergency department patient flow and overcrowding. , 2003, Academic emergency medicine : official journal of the Society for Academic Emergency Medicine.

[16]  Jan Busby-Whitehead,et al.  Predicting hospital admission and returns to the emergency department for elderly patients. , 2010, Academic emergency medicine : official journal of the Society for Academic Emergency Medicine.

[17]  S Capewell,et al.  The continuing rise in emergency admissions , 1996, BMJ.

[18]  Kevin E McVaney,et al.  How well do paramedics predict admission to the hospital? A prospective study. , 2006, The Journal of emergency medicine.

[19]  David P Sklar,et al.  Emergency department crowding, part 1--concept, causes, and moral consequences. , 2009, Annals of emergency medicine.

[20]  R. Kirk,et al.  The epidemiology of emergency department attendances in Christchurch. , 2001, The New Zealand medical journal.

[21]  D. Aronsky,et al.  Predicting hospital admission at triage in an emergency department. , 2007, AMIA ... Annual Symposium proceedings. AMIA Symposium.

[22]  C. Fernandes Emergency department overcrowding: what is our response to the "new normal"? , 2003, Academic emergency medicine : official journal of the Society for Academic Emergency Medicine.

[23]  Dominik Aronsky,et al.  Predicting Hospital Admission in a Pediatric Emergency Department using an Artificial Neural Network , 2006, AMIA.