Validation of a natural language processing algorithm using national reporting data to improve identification of anesthesia-related ADVerse evENTs: The "ADVENTURE" study

被引:2
作者
Mertes, Paul M. [1 ,4 ]
Morgand, Claire [2 ]
Barach, Paul [3 ]
Jurkolow, Geoffrey [5 ]
Assmann, Karen E. [1 ]
Dufetelle, Edouard [6 ]
Susplugas, Vincent [6 ]
Alauddin, Bilal [6 ]
Yavordios, Patrick Georges [4 ]
Tourres, Jean [5 ]
Dumeix, Jean -Marc [5 ]
Capdevila, Xavier [7 ,8 ]
机构
[1] Hop Univ Strasbourg, Dept Anesthesia & Intens Care, Nouvel Hop Civil, FMTS Strasbourg,EA3072, Strasbourg, France
[2] French Natl Author Hlth Haute Autor Sante EvOQSS, Evaluat Dept & Tools Qual & Safety Care, St Denis, France
[3] Thomas Jefferson Sch Med, Philadelphia, PA USA
[4] Sigmund Freud Univ, Vienna, Austria
[5] CFAR Coll Francais Anesthesistes Reanimateurs, F-75016 Paris, France
[6] Collect Thinking, 23 Rue Yves Toud, F-75010 Paris, France
[7] Lapeyronie Univ Hosp, Dept Anesthesiol & Crit Care Med, F-34295 Montpellier 5, France
[8] Montpellier Univ, Inserm, Unit 1298, Montpellier NeuroSci Inst, F-34295 Montpellier 5, France
关键词
Adverse events; Patient safety; Natural language processing; Artificial intelligence; Quality improvement; ELECTRONIC HEALTH RECORD; PATIENT SAFETY; COMMUNICATION FAILURES; OPERATING-ROOM; MEDICINE; FRANCE; GUIDELINES; SYSTEMS; ERROR; CLASSIFICATION;
D O I
10.1016/j.accpm.2024.101390
中图分类号
R614 [麻醉学];
学科分类号
100217 ;
摘要
Background: Reporting and analysis of adverse events (AE) is associated with improved health system learning, quality outcomes, and patient safety. Manual text analysis is time-consuming, costly, and prone to human errors. We aimed to demonstrate the feasibility of novel machine learning and natural language processing (NLP) approaches for early predictions of adverse events and provide input to direct quality improvement and patient safety initiatives. Methods: We used machine learning to analyze 9559 continuously reported AE by clinicians and healthcare systems to the French National Health accreditor (HAS) between January 1, 2009, and December 31, 2020. We validated the labeling of 135,000 unique de-identified AE reports and determined the associations between different system's root causes and patient consequences. The model was validated by independent expert anesthesiologists. Results: The machine learning (ML) and Artificial Intelligence (AI) model trained on 9559 AE datasets accurately categorized 8800 (88%) of reported AE. The three most frequent AE types were ''difficult orotracheal intubation'' (16.9% of AE reports), ''medication error'' (10.5%), and ''post-induction hypotension'' (6.9%). The accuracy of the AI model reached 70.9% sensitivity, 96.6% specificity for ''difficult intubation'', 43.2% sensitivity, and 98.9% specificity for ''medication error.'' Conclusions: This unsupervised ML method provides an accurate, automated, AI-supported search algorithm that ranks and helps to understand complex risk patterns and has greater speed, precision, and clarity when compared to manual human data extraction. Machine learning and Natural language processing (NLP) models can effectively be used to process natural language AE reports and augment expert clinician input. This model can support clinical applications and methodological standards and used to better inform and enhance decision-making for improved risk management and patient safety. (C) 2024 The Author(s). Published by Elsevier Masson SAS on behalf of Societe francaise d'anesthesie et de reanimation (Sfar).
引用
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页数:10
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