
Comparison of Machine Learning Algorithms for Classifying Adverse-Event Related 30-Day Hospital Readmissions: Potential Implications for Patient Safety.
Author(s) -
Antoine Saab,
Melody Saikali,
Jean-Baptiste Lamy
Publication year - 2020
Publication title -
hal (le centre pour la communication scientifique directe)
Language(s) - English
Resource type - Journals
eISSN - 1879-8365
DOI - 10.3233/shti200491
Subject(s) - machine learning , computer science , artificial intelligence , artificial neural network , multidisciplinary approach , harm , patient safety , health care , quality management , quality (philosophy) , algorithm , management system , operations management , engineering , social science , philosophy , epistemology , sociology , political science , law , economics , economic growth
Studies in the last decade have focused on identifying patients at risk of readmission using predictive models, in an objective to decrease costs to the healthcare system. However, real-time models specifically identifying readmissions related to hospital adverse-events are still to be elaborated. A supervised learning approach was adopted using different machine learning algorithms based on features available directly from the hospital information system and on a validated dataset elaborated by a multidisciplinary expert consensus panel. Accuracy results upon testing were in line with comparable studies, and variable across algorithms, with the highest prediction given by Artificial Neuron Networks. Features importances relative to the prediction were identified, in order to provide better representation and interpretation of results. Such a model can pave the way to predictive models for readmissions related to patient harm, the establishment of a learning platform for clinical quality measurement and improvement, and in some cases for an improved clinical management of readmitted patients.