Artificial Intelligence and Machine Learning in Prediction of Surgical Complications: Current State, Applications, and Implications
Publication date
2023-01
Authors
Hassan, Abbas M.
Rajesh, Aashish
Asaad, Malke
Nelson, Jonas A.
Coert, J Henk
Mehrara, Babak J.
Butler, Charles E.
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Advisors
Supervisors
Document Type
Article
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taverne
Abstract
Surgical complications pose significant challenges for surgeons, patients, and health care systems as they may result in patient distress, suboptimal outcomes, and higher health care costs. Artificial intelligence (AI)-driven models have revolutionized the field of surgery by accurately identifying patients at high risk of developing surgical complications and by overcoming several limitations associated with traditional statistics-based risk calculators. This article aims to provide an overview of AI in predicting surgical complications using common machine learning and deep learning algorithms and illustrates how this can be utilized to risk stratify patients preoperatively. This can form the basis for discussions on informed consent based on individualized patient factors in the future.
Keywords
artificial intelligence, calculator, deep learning, machine learning, risk assessment, surgical complications, Taverne, Surgery
Citation
Hassan, A M, Rajesh, A, Asaad, M, Nelson, J A, Coert, J H, Mehrara, B J & Butler, C E 2023, 'Artificial Intelligence and Machine Learning in Prediction of Surgical Complications : Current State, Applications, and Implications', American Surgeon, vol. 89, no. 1, pp. 25-30. https://doi.org/10.1177/00031348221101488