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Review
. 2024 May 7;16(5):e59797.
doi: 10.7759/cureus.59797. eCollection 2024 May.

Artificial Intelligence in the Intensive Care Unit: Current Evidence on an Inevitable Future Tool

Affiliations
Review

Artificial Intelligence in the Intensive Care Unit: Current Evidence on an Inevitable Future Tool

Vinay Suresh et al. Cureus. .

Abstract

Artificial intelligence (AI) is a technique that attempts to replicate human intelligence, analytical behavior, and decision-making ability. This includes machine learning, which involves the use of algorithms and statistical techniques to enhance the computer's ability to make decisions more accurately. Due to AI's ability to analyze, comprehend, and interpret considerable volumes of data, it has been increasingly used in the field of healthcare. In critical care medicine, where most of the patient load requires timely interventions due to the perilous nature of the condition, AI's ability to monitor, analyze, and predict unfavorable outcomes is an invaluable asset. It can significantly improve timely interventions and prevent unfavorable outcomes, which, otherwise, is not always achievable owing to the constrained human ability to multitask with optimum efficiency. AI has been implicated in intensive care units over the past many years. In addition to its advantageous applications, this article discusses its disadvantages, prospects, and the changes needed to train future critical care professionals. A comprehensive search of electronic databases was performed using relevant keywords. Data from articles pertinent to the topic was assimilated into this review article.

Keywords: ards; artificial intelligence; critical care medicine; delirium; intensive care unit; mechanical ventilation; nutritional support; sepsis; treatment outcome.

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Conflict of interest statement

The authors have declared that no competing interests exist.

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