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Early detection of sepsis using artificial intelligence : a scoping review protocol

Authors :
Pepic, I.
Feldt, R.
Ljungström, L.
Torkar, R.
Dalevi, D.
Maurin Söderholm, Hanna
Andersson, L. -M
Axelson-Fisk, M.
Bohm, K.
Sjöqvist, B. A.
Candefjord, S.
Pepic, I.
Feldt, R.
Ljungström, L.
Torkar, R.
Dalevi, D.
Maurin Söderholm, Hanna
Andersson, L. -M
Axelson-Fisk, M.
Bohm, K.
Sjöqvist, B. A.
Candefjord, S.
Publication Year :
2021

Abstract

Background: Sepsis is a life-threatening organ dysfunction caused by a dysregulated host response to infection. To decrease the high case fatality rates and morbidity for sepsis and septic shock, there is a need to increase the accuracy of early detection of suspected sepsis in prehospital and emergency department settings. This may be achieved by developing risk prediction decision support systems based on artificial intelligence. Methods: The overall aim of this scoping review is to summarize the literature on existing methods for early detection of sepsis using artificial intelligence. The review will be performed using the framework formulated by Arksey and O’Malley and further developed by Levac and colleagues. To identify primary studies and reviews that are suitable to answer our research questions, a comprehensive literature collection will be compiled by searching several sources. Constrictions regarding time and language will have to be implemented. Therefore, only studies published between 1 January 1990 and 31 December 2020 will be taken into consideration, and foreign language publications will not be considered, i.e., only papers with full text in English will be included. Databases/web search engines that will be used are PubMed, Web of Science Platform, Scopus, IEEE Xplore, Google Scholar, Cochrane Library, and ACM Digital Library. Furthermore, clinical studies that have completed patient recruitment and reported results found in the database ClinicalTrials.gov will be considered. The term artificial intelligence is viewed broadly, and a wide range of machine learning and mathematical models suitable as base for decision support will be evaluated. Two members of the team will test the framework on a sample of included studies to ensure that the coding framework is suitable and can be consistently applied. Analysis of collected data will provide a descriptive summary and thematic analysis. The reported results will convey knowledge about the state of

Details

Database :
OAIster
Notes :
application/pdf, English
Publication Type :
Electronic Resource
Accession number :
edsoai.on1280635924
Document Type :
Electronic Resource
Full Text :
https://doi.org/10.1186.s13643-020-01561-w