Advances in pediatric perioperative care using artificial intelligence

Author:

Dundaru-Bandi Dominique1,Antel Ryan2,Ingelmo Pablo23456

Affiliation:

1. Faculty of Medicine and Health Sciences

2. Department of Anesthesia, McGill University

3. Division of Pediatric Anesthesia

4. Edwards Family Interdisciplinary Center for Complex Pain. Montreal Children's Hospital

5. Research Institute, McGill University Health Center

6. Alan Edwards for Research on Pain. McGill University, Montreal, Quebec, Canada

Abstract

Purpose of this review This article explores how artificial intelligence (AI) can be used to evaluate risks in pediatric perioperative care. It will also describe potential future applications of AI, such as models for airway device selection, controlling anesthetic depth and nociception during surgery, and contributing to the training of pediatric anesthesia providers. Recent findings The use of AI in healthcare has increased in recent years, largely due to the accessibility of large datasets, such as those gathered from electronic health records. Although there has been less focus on pediatric anesthesia compared to adult anesthesia, research is on- going, especially for applications focused on risk factor identification for adverse perioperative events. Despite these advances, the lack of formal external validation or feasibility testing results in uncertainty surrounding the clinical applicability of these tools. Summary The goal of using AI in pediatric anesthesia is to assist clinicians in providing safe and efficient care. Given that children are a vulnerable population, it is crucial to ensure that both clinicians and families have confidence in the clinical tools used to inform medical decision- making. While not yet a reality, the eventual incorporation of AI-based tools holds great potential to contribute to the safe and efficient care of our patients.

Publisher

Ovid Technologies (Wolters Kluwer Health)

Reference45 articles.

1. Pediatric airway management;Hsu;Curr Opin Anaesthesiol,2021

2. Use of artificial intelligence in paediatric anaesthesia: a systematic review;Antel;BJA Open,2023

3. Decision-making in anesthesiology: will artificial intelligence make intraoperative care safer?;Duran;Curr Opin Anaesthesiol,2023

4. Artificial intelligence in anesthesiology: current techniques, clinical applications, and limitations;Hashimoto;Anesthesiology,2020

5. Artificial intelligence and its clinical application in anesthesiology: a systematic review;Lopes;J Clin Monit Comput,2023

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