A Reinforcement Learning Model for Optimal Treatment Strategies in Intensive Care: Assessment of the Role of Cardiorespiratory Features
Cristian Drudi,
Maximiliano Mollura,
Li-wei H. Lehman
et al.
Abstract:The purpose of this study is to evaluate the importance of cardiorespiratory variables within a Reinforcement Learning (RL) recommendation system aimed at establishing optimal strategies for drug treatment of septic patients in the intensive care unit (ICU).Methods: We developed a RL framework in order to establish drug administration strategies for septic patients by exclusively using a set of cardiorespiratory variables. We then compared this model with other equivalent models trained with a wider set of cli… Show more
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