The Adelaide Score: An artificial intelligence measure of readiness for discharge after general surgery

Author:

Kovoor Joshua G.123ORCID,Bacchi Stephen3456,Gupta Aashray K.347ORCID,Stretton Brandon135ORCID,Malycha James46,Reddi Benjamin A.46,Liew Danny46,O'Callaghan Patrick G.46,Beltrame John F.16,Zannettino Andrew C.4,Jones Karen L.46,Horowitz Michael46,Dobbins Christopher46,Hewett Peter J.1,Trochsler Markus I.1,Maddern Guy J.12ORCID

Affiliation:

1. Queen Elizabeth Hospital University of Adelaide Adelaide South Australia Australia

2. Royal Australasian College of Surgeons Adelaide South Australia Australia

3. Health and Information Adelaide South Australia Australia

4. University of Adelaide Adelaide South Australia Australia

5. Flinders University Adelaide South Australia Australia

6. Royal Adelaide Hospital Adelaide South Australia Australia

7. Gold Coast University Hospital Gold Coast Queensland Australia

Abstract

AbstractBackgroundThis study aimed to examine the performance of machine learning algorithms for the prediction of discharge within 12 and 24 h to produce a measure of readiness for discharge after general surgery.MethodsConsecutive general surgery patients at two tertiary hospitals, over a 2‐year period, were included. Observation and laboratory parameter data were stratified into training, testing and validation datasets. Random forest, XGBoost and logistic regression models were evaluated. Each ward round note time was taken as a different event. Primary outcome was classification accuracy of the algorithmic model able to predict discharge within the next 12 h on the validation data set.Results42 572 ward round note timings were included from 8826 general surgery patients. Discharge occurred within 12 h for 8800 times (20.7%), and within 24 h for 9885 (23.2%). For predicting discharge within 12 h, model classification accuracies for derivation and validation data sets were: 0.84 and 0.85 random forest, 0.84 and 0.83 XGBoost, 0.80 and 0.81 logistic regression. For predicting discharge within 24 h, model classification accuracies for derivation and validation data sets were: 0.83 and 0.84 random forest, 0.82 and 0.81 XGBoost, 0.78 and 0.79 logistic regression. Algorithms generated a continuous number between 0 and 1 (or 0 and 100), representing readiness for discharge after general surgery.ConclusionsA derived artificial intelligence measure (the Adelaide Score) successfully predicts discharge within the next 12 and 24 h in general surgery patients. This may be useful for both treating teams and allied health staff within surgical systems.

Publisher

Wiley

Subject

General Medicine,Surgery

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