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      Artificial Intelligence in Anesthesiology: Current Techniques, Clinical Applications, and Limitations

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      Anesthesiology

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          Abstract

          Artificial intelligence has been advancing in fields including anesthesiology. This scoping review of the intersection of artificial intelligence and anesthesia research identified and summarized six themes of applications of artificial intelligence in anesthesiology: (1) depth of anesthesia monitoring, (2) control of anesthesia, (3) event and risk prediction, (4) ultrasound guidance, (5) pain management, and (6) operating room logistics. Based on papers identified in the review, several topics within artificial intelligence were described and summarized: (1) machine learning (including supervised, unsupervised, and reinforcement learning), (2) techniques in artificial intelligence ( e.g., classical machine learning, neural networks and deep learning, Bayesian methods), and (3) major applied fields in artificial intelligence.

          The implications of artificial intelligence for the practicing anesthesiologist are discussed as are its limitations and the role of clinicians in further developing artificial intelligence for use in clinical care. Artificial intelligence has the potential to impact the practice of anesthesiology in aspects ranging from perioperative support to critical care delivery to outpatient pain management.

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          Most cited references104

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                Author and article information

                Contributors
                Journal
                1300217
                533
                Anesthesiology
                Anesthesiology
                Anesthesiology
                0003-3022
                1528-1175
                23 October 2020
                February 2020
                05 November 2020
                : 132
                : 2
                : 379-394
                Affiliations
                Surgical Artificial Intelligence and Innovation Laboratory
                Surgical Artificial Intelligence and Innovation Laboratory
                Department of Anesthesia, Critical Care, and Pain Medicine
                Surgical Artificial Intelligence and Innovation Laboratory
                Surgical Artificial Intelligence and Innovation Laboratory
                Massachusetts General Hospital, Boston, Massachusetts Computer Science and Artificial Intelligence Laboratory, Massachusetts Institute of Technology, Cambridge, Massachusetts.
                Author notes
                Correspondence Address correspondence to Dr. Hashimoto: Surgical Artificial Intelligence and Innovation Laboratory, Massachusetts General Hospital, 15 Parkman Street, WAC 339, Boston, Massachusetts 02139. dahashimoto@ 123456mgh.harvard.edu . Information on purchasing reprints may be found at www.anesthesiology.org or on the masthead page at the beginning of this issue. A nesthesiology’s articles are made freely accessible to all readers, for personal use only, 6 months from the cover date of the issue.
                Article
                PMC7643051 PMC7643051 7643051 nihpa1587711
                10.1097/ALN.0000000000002960
                7643051
                31939856
                c16cc588-3bdb-4346-b7c6-fba83af89c57
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