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Emergency department use and Artificial Intelligence in Pelotas: design and baseline results.

Authors :
Delpino FM
Figueiredo LM
Costa ÂK
Carreno I
Silva LND
Flores AD
Pinheiro MA
Silva EPD
Marques GÁ
Saes MO
Duro SMS
Facchini LA
Vissoci JRN
Flores TR
Demarco FF
Blumenberg C
Chiavegatto Filho ADP
Silva ICD
Batista SR
Arcêncio RA
Nunes BP
Source :
Revista brasileira de epidemiologia = Brazilian journal of epidemiology [Rev Bras Epidemiol] 2023 Mar 10; Vol. 26, pp. e230021. Date of Electronic Publication: 2023 Mar 10 (Print Publication: 2023).
Publication Year :
2023

Abstract

Objetivo: To describe the initial baseline results of a population-based study, as well as a protocol in order to evaluate the performance of different machine learning algorithms with the objective of predicting the demand for urgent and emergency services in a representative sample of adults from the urban area of Pelotas, Southern Brazil.<br />Methods: The study is entitled "Emergency department use and Artificial Intelligence in PELOTAS (RS) (EAI PELOTAS)" (https://wp.ufpel.edu.br/eaipelotas/). Between September and December 2021, a baseline was carried out with participants. A follow-up was planned to be conducted after 12 months in order to assess the use of urgent and emergency services in the last year. Afterwards, machine learning algorithms will be tested to predict the use of urgent and emergency services over one year.<br />Results: In total, 5,722 participants answered the survey, mostly females (66.8%), with an average age of 50.3 years. The mean number of household people was 2.6. Most of the sample has white skin color and incomplete elementary school or less. Around 30% of the sample has obesity, 14% diabetes, and 39% hypertension.<br />Conclusion: The present paper presented a protocol describing the steps that were and will be taken to produce a model capable of predicting the demand for urgent and emergency services in one year among residents of Pelotas, in Rio Grande do Sul state.

Details

Language :
English
ISSN :
1980-5497
Volume :
26
Database :
MEDLINE
Journal :
Revista brasileira de epidemiologia = Brazilian journal of epidemiology
Publication Type :
Academic Journal
Accession number :
36921129
Full Text :
https://doi.org/10.1590/1980-549720230021