Intersections between artificial intelligence (AI) and sepsis: an integrative review
DOI:
https://doi.org/10.59681/2175-4411.v16.iEspecial.2024.1268Keywords:
Algorithms, Machine Learning, SepsisAbstract
Objectives: To conduct an integrative literature review to investigate the impact of artificial intelligence (AI) on the clinical management of sepsis. Methods: Databases such as PubMed/MEDLINE and LILACS were utilized, and the search for articles was guided by the question: what is the contribution of AI to the detection and/or treatment of sepsis? Results: Of the 11 selected articles, the fundamental role of Machine Learning in developing predictive models for early sepsis detection was highlighted, resulting in improvements in interventions and prognoses. Additionally, AI was applied in patient monitoring systems, such as the Robô Laura™, optimizing clinical processes. Conclusions: AI plays a significant role in advancing the clinical management of sepsis, offering innovative perspectives for diagnosis, treatment, and prognosis.
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