The article describes the main aspects of machine learning and artificial intelligence technologies, and the possibilities of their application within anaesthesiology departments and intensive care units. The modern experience of using digital systems for the analysis, forecasting and management of patient data from the point of view of clinical and economic efficiency is presented. The authors present the main functionality of the information system for the support of IntelliSpace Critical Care and Anaesthesia (ICCA), and for clinical decision making for the departments of anaesthesiology and intensive care based on patient data management (Philips).
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For citation
Ramaniuk T.I., Pozdnyakov D.YU., Mushenok F.B. Use of the opportunities of machine learning and artificial intelligence in the intensive care unit. Medical doctor and information technology. 2021; 2: 60-71. (In Russ.). doi : 1025881/18110193_2021_2_60.
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