Machine learning algorithms (random forest and logistic classifier) demonstrated improved performance over previously proposed criteria for detecting intensive care patients ready for discharge.
Observational (n=9,462)
Yes
Do machine learning algorithms improve the detection of intensive care patients ready for discharge compared to previously proposed criteria?
Machine learning classifiers using electronic healthcare data can improve the identification of intensive care patients ready for discharge compared to existing criteria.
OBJECTIVE: The primary objective is to develop an automated method for detecting patients that are ready for discharge from intensive care. DESIGN: We used two datasets of routinely collected patient data to test and improve on a set of previously proposed discharge criteria. SETTING: Bristol Royal Infirmary general intensive care unit (GICU). PATIENTS: Two cohorts derived from historical datasets: 1870 intensive care patients from GICU in Bristol, and 7592 from Medical Information Mart for Intensive Care (MIMIC)-III. RESULTS: In both cohorts few successfully discharged patients met all of the discharge criteria. Both a random forest and a logistic classifier, trained using multiple-source cross-validation, demonstrated improved performance over the original criteria and generalised well between the cohorts. The classifiers showed good agreement on which features were most predictive of readiness-for-discharge, and these were generally consistent with clinical experience. By weighting the discharge criteria according to feature importance from the logistic model we showed improved performance over the original criteria, while retaining good interpretability. CONCLUSIONS: Our findings indicate the feasibility of the proposed approach to ready-for-discharge classification, which could complement other risk models of specific adverse outcomes in a future decision support system. Avenues for improvement to produce a clinically useful tool are identified.
McWilliams et al. (Fri,) conducted a observational in Intensive care patients (n=9,462). Machine learning algorithms (random forest and logistic classifier) vs. Previously proposed discharge criteria was evaluated on Readiness for discharge from intensive care. Machine learning algorithms (random forest and logistic classifier) demonstrated improved performance over previously proposed criteria for detecting intensive care patients ready for discharge.