@article{22587, author = {Ivers R. and Muscatello D. and Dinh M. and Bein K. and Chalkley D. and Paoloni R. and Rogers K. and Russell S. and Hayman J.}, title = {The Sydney Triage to Admission Risk Tool (START) to predict Emergency Department Disposition: A derivation and internal validation study using retrospective state-wide data from New South Wales, Australia}, abstract = {

BACKGROUND: Disposition decisions are critical to the functioning of Emergency Departments. The objectives of the present study were to derive and internally validate a prediction model for inpatient admission from the Emergency Department to assist with triage, patient flow and clinical decision making. METHODS: This was a retrospective analysis of State-wide Emergency Department data in New South Wales, Australia. Adult patients (age >/= 16 years) were included if they presented to a Level five or six (tertiary level) Emergency Department in New South Wales, Australia between 2013 and 2014. The outcome of interest was in-patient admission from the Emergency Department. This included all admissions to short stay and medical assessment units and being transferred out to another hospital. Analyses were performed using logistic regression. Discrimination was assessed using area under curve and derived risk scores were plotted to assess calibration. RESULTS: 1,721,294 presentations from twenty three Level five or six hospitals were analysed. Of these 49.38% were male and the mean (sd) age was 49.85 years (22.13). Level 6 hospitals accounted for 47.70% of cases and 40.74% of cases were classified as an in-patient admission based on their mode of separation. The final multivariable model including age, arrival by ambulance, triage category, previous admission and presenting problem had an AUC of 0.82 (95% CI 0.81, 0.82). CONCLUSION: By deriving and internally validating a risk score model to predict the need for in-patient admission based on basic demographic and triage characteristics, patient flow in ED, clinical decision making and overall quality of care may be improved. Further studies are now required to establish clinical effectiveness of this risk score model.

}, year = {2016}, journal = {BMC Emerg Med}, volume = {16}, edition = {2016/12/04}, number = {1}, pages = {46}, isbn = {1471-227X (Electronic)
1471-227X (Linking)}, note = {Dinh, Michael M
Russell, Saartje Berendsen
Bein, Kendall J
Rogers, Kris
Muscatello, David
Paoloni, Richard
Hayman, Jon
Chalkley, Dane R
Ivers, Rebecca
England
BMC Emerg Med. 2016 Dec 3;16(1):46.}, language = {eng}, }