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On the purpose of artificial intelligence in critical care medicine
0
Zitationen
12
Autoren
2026
Jahr
Abstract
The modern intensive care unit (ICU) inundates clinicians with large volumes of data, leading to cognitive overload and a gap between data availability and actionable insight. While artificial intelligence (AI) promises a solution, its clinical adoption is limited by systemic barriers, including algorithmic bias, a lack of trust, and validation failures. This paper argues that a design philosophy that envisions AI as an autonomous decision-maker, rather than an integrated collaborative tool, has hindered its clinical adoption. We propose an alternative: a collaborative framework designed to augment the intensivist’s expertise by offloading specific cognitive burdens. This framework redefines AI’s purpose as managing data-intensive tasks, illustrated through four collaborative example roles: a synthesizer to create coherent clinical narratives, a sentinel for proactive deterioration surveillance, a simulator to forecast patient responses to interventions, and a stratifier to identify meaningful subphenotypes within complex syndromes. By delegating these computational tasks, this collaborative model frees clinicians to focus on complex synthesis, nuanced judgment, and compassionate communication. Realizing this vision requires a deliberate translational pathway focused on robust data infrastructure, human-centered design, and rigorous validation through prospective clinical trials. Ultimately, the successful integration of AI in critical care depends not on replacing clinicians but on empowering them, creating a more functional ICU in which technology supports the delivery of safer, more precise, and more humane care.
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Autoren
Institutionen
- Politecnico di Milano(IT)
- Inserm(FR)
- Université de Bretagne Occidentale(FR)
- Seoul National University(KR)
- Seoul National University Hospital(KR)
- Northeastern University(US)
- Georgetown University(US)
- American University of Beirut(LB)
- Colombian Association of Surgery(CO)
- Fundación Universitaria Sanitas(CO)
- Makerere University(UG)
- Beth Israel Deaconess Medical Center(US)
- Mbarara University of Science and Technology(UG)
- Harvard University(US)
- Cancer Research And Biostatistics(US)
- Massachusetts Institute of Technology(US)