Developing a decision support tool to predict delayed discharge from hospitals using machine learning

被引:0
作者
Pahlevani, Mahsa [1 ]
Rajabi, Enayat [2 ]
Taghavi, Majid [1 ,3 ]
Vanberkel, Peter [1 ]
机构
[1] Dalhousie Univ, Dept Ind Engn, POB 15000, Halifax, NS B3H 4R2, Canada
[2] Cape Breton Univ, Management Sci Dept, 1250 Grand Lake Rd, Sydney, NS B1M 1A2, Canada
[3] St Marys Univ, Sobey Sch Business, 923 Robie St, Halifax, NS B3H 3C3, Canada
基金
加拿大自然科学与工程研究理事会;
关键词
Discharge prediction; ALC patients; Machine learning; Discharge planning; Delayed discharge; FEATURE-SELECTION; ALTERNATE LEVEL; CARE; VALIDATION;
D O I
10.1186/s12913-024-12195-2
中图分类号
R19 [保健组织与事业(卫生事业管理)];
学科分类号
摘要
BackgroundThe growing demand for healthcare services challenges patient flow management in health systems. Alternative Level of Care (ALC) patients who no longer need acute care yet face discharge barriers contribute to prolonged stays and hospital overcrowding. Predicting these patients at admission allows for better resource planning, reducing bottlenecks, and improving flow. This study addresses three objectives: identifying likely ALC patients, key predictive features, and preparing guidelines for early ALC identification at admission.MethodsData from Nova Scotia Health (2015-2022) covering patient demographics, diagnoses, and clinical information was extracted. Data preparation involved managing outliers, feature engineering, handling missing values, transforming categorical variables, and standardizing. Data imbalance was addressed using class weights, random oversampling, and the Synthetic Minority Over-Sampling Technique (SMOTE). Three ML classifiers, Random Forest (RF), Artificial Neural Network (ANN), and eXtreme Gradient Boosting (XGB), were tested to classify patients as ALC or not. Also, to ensure accurate ALC prediction at admission, only features available at that time were used in a separate model iteration.ResultsModel performance was assessed using recall, F1-Score, and AUC metrics. The XGB model with SMOTE achieved the highest performance, with a recall of 0.95 and an AUC of 0.97, excelling in identifying ALC patients. The next best models were XGB with random oversampling and ANN with class weights. When limited to admission-only features, the XGB with SMOTE still performed well, achieving a recall of 0.91 and an AUC of 0.94, demonstrating its effectiveness in early ALC prediction. Additionally, the analysis identified diagnosis 1, patient age, and entry code as the top three predictors of ALC status.ConclusionsThe results demonstrate the potential of ML models to predict ALC status at admission. The findings support real-time decision-making to improve patient flow and reduce hospital overcrowding. The ALC guideline groups patients first by diagnosis, then by age, and finally by entry code, categorizing prediction outcomes into three probability ranges: below 30%, 30-70%, and above 70%. This framework assesses whether ALC status can be accurately predicted at admission or during the patient's stay before discharge.
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页数:18
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