Drug-related fall risk in hospitals: a machine learning approach

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Abstract

Objective: To compare the performance of machine-learning models with the Medication Fall Risk Score (MFRS) in predicting fall risk related to prescription medications. Methods: This is a retrospective case-control study of adult and older adult patients in a tertiary hospital in Porto Alegre, RS, Brazil. Prescription drugs and drug classes were investigated. Data were exported to the RStudio software for statistical analysis. The variables were analyzed using Logistic Regression, Naive Bayes, Random Forest, and Gradient Boosting algorithms. Algorithm validation was performed using 10-fold cross validation. The Youden index was the metric selected to evaluate the models. The project was approved by the Research Ethics Committee. Results: The machine-learning model showing the best performance was the one developed by the Naive Bayes algorithm. The model built from a data set of a specific hospital showed better results for the studied population than did MFRS, a generalizable tool. Conclusion: Risk-prediction tools that depend on proper application and registration by professionals require time and attention that could be allocated to patient care. Prediction models built through machine-learning algorithms can help identify risks to improve patient care.

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APA

da Silva, A. P., dos Santos, H. D. P., Rotta, A. L. O., Baiocco, G. G., Vieira, R., & de Souza Urbanetto, J. (2023). Drug-related fall risk in hospitals: a machine learning approach. ACTA Paulista de Enfermagem, 36. https://doi.org/10.37689/acta-ape/2023AO00771

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