Reinforcement Learning in Neurocritical and Neurosurgical Care: Principles and Possible Applications
Author(s) -
Ying Liu,
Nidan Qiao,
Yüksel Altınel
Publication year - 2021
Publication title -
computational and mathematical methods in medicine
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.462
H-Index - 48
eISSN - 1748-6718
pISSN - 1748-670X
DOI - 10.1155/2021/6657119
Subject(s) - reinforcement learning , neurointensive care , computer science , observational study , reinforcement , motion (physics) , artificial intelligence , action (physics) , traumatic brain injury , machine learning , intensive care medicine , medicine , psychology , social psychology , physics , pathology , quantum mechanics , psychiatry
Dynamic decision-making was essential in the clinical care of surgical patients. Reinforcement learning (RL) algorithm is a computational method to find sequential optimal decisions among multiple suboptimal options. This review is aimed at introducing RL's basic concepts, including three basic components: the state, the action, and the reward. Most medical studies using reinforcement learning methods were trained on a fixed observational dataset. This paper also reviews the literature of existing practical applications using reinforcement learning methods, which can be further categorized as a statistical RL study and a computational RL study. The review proposes several potential aspects where reinforcement learning can be applied in neurocritical and neurosurgical care. These include sequential treatment strategies of intracranial tumors and traumatic brain injury and intraoperative endoscope motion control. Several limitations of reinforcement learning are representations of basic components, the positivity violation, and validation methods.
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