Volume : 09, Issue : 05, May – 2022

Title:

66.AN OVERVIEW, ROLES OF NURSES IN THE USE OF TECHNOLOGICAL PLATFORMS TO IMPROVE PATIENT FLOW

Authors :

Hossam Ali Atiq Alharbi, Lamya Mohammed Emam Bakhsh, Tagreed Saud Alharbi, Norah Mohammed Salh Khateeb, Manal Selmi Alsaedi, Ayesha Wadeeallah Alsulami,Salman Matuqe Atteq Alsomeeri,Nada Othman Kutbi, Ghaida Hashem Alsabri,Enas Abdulqader Dbagh

Abstract :

Growing demand for healthcare services, combined with funding and resource constraints, opens the door for novel technological solutions such as artificial intelligence (AI). The goal of this research is to identify problems with patient flow on healthcare units and match them with potential technological solutions, ultimately developing a model for their integration at the service level. A narrative review was conducted by searching the literature in several electronic databases, including PubMed and Embase, for all relevant studies published in English up to beginning of 2022 that included only human subjects. The review of the literature on nurses using technological platforms to improve patient flow looked at predicting avoidable readmissions, improving care efficiency, optimizing resource allocation, reducing length of stay, and validating existing algorithms for more generalized applications.

Cite This Article:

Please cite this article in Hossam Ali Atiq Alharbi et al, An Overview, Roles Of Nurses In The Use Of Technological Platforms To Improve Patient Flow, Indo Am. J. P. Sci, 2022; 09 (05).

Number of Downloads : 10

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