Implementation of an Artificial Intelligence Algorithm for sepsis detection

Author:

Gonçalves Luciana Schleder1ORCID,Amaro Maria Luiza de Medeiros1ORCID,Romero Andressa de Lima Miranda2ORCID,Schamne Fernanda Karoline1ORCID,Fressatto Jacson Luiz2ORCID,Bezerra Carolina Wrobel2ORCID

Affiliation:

1. Universidade Federal do Paraná, Brazil

2. Laura Desenvolvimento e Serviços de Inteligência Artificial, Brazil

Abstract

ABSTRACT Objectives: to present the nurses’ experience with technological tools to support the early identification of sepsis. Methods: experience report before and after the implementation of artificial intelligence algorithms in the clinical practice of a philanthropic hospital, in the first half of 2018. Results: describe the motivation for the creation and use of the algorithm; the role of the nurse in the development and implementation of this technology and its effects on the nursing work process. Final Considerations: technological innovations need to contribute to the improvement of professional practices in health. Thus, nurses must recognize their role in all stages of this process, in order to guarantee safe, effective and patient-centered care. In the case presented, the participation of the nurses in the technology incorporation process enables a rapid decision-making in the early identification of sepsis.

Publisher

FapUNIFESP (SciELO)

Subject

General Nursing

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