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Get Free AccessArtificial Intelligence (AI) is rapidly transforming the landscape of critical care, offering opportunities for enhanced diagnostic precision and personalized patient management. However, its integration into ICU clinical practice presents significant challenges related to equity, transparency, and the patient-clinician relationship. To address these concerns, a multidisciplinary team of experts was established to assess the current state and future trajectory of AI in critical care. This consensus identified key challenges and proposed actionable recommendations to guide AI implementation in this high-stakes field. Here we present a call to action for the critical care community, to bridge the gap between AI advancements and the need for humanized, patient-centred care. Our goal is to ensure a smooth transition to personalized medicine while, (1) maintaining equitable and unbiased decision-making, (2) fostering the development of a collaborative research network across ICUs, emergency departments, and operating rooms to promote data sharing and harmonization, and (3) addressing the necessary educational and regulatory shifts required for responsible AI deployment. AI integration into critical care demands coordinated efforts among clinicians, patients, industry leaders, and regulators to ensure patient safety and maximize societal benefit. The recommendations outlined here provide a foundation for the ethical and effective implementation of AI in critical care medicine.
Maurizio Cecconi, Massimiliano Greco, Benjamin Shickel, Derek C. Angus, Heatherlee Bailey, Elena Bignami, Thierry Calandra, Leo Anthony Celi, Sharon Einav, Paul Elbers, Ari Ercole, Hernando Gómez, Michelle N. Gong, Matthieu Komorowski, Vincent X. Liu, Soojin Park, Aarti Sarwal, Christopher W. Seymour, Fernando G. Zampieri, Fabio Silvio Taccone, Jean Louis Vincent, Azra Bihorac (2025). Implementing Artificial Intelligence in Critical Care Medicine: a consensus of 22. , 29(1), DOI: https://doi.org/10.1186/s13054-025-05532-2.
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Type
Article
Year
2025
Authors
22
Datasets
0
Total Files
0
Language
en
DOI
https://doi.org/10.1186/s13054-025-05532-2
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