Machine learning analysis to predict health outcomes among emergency department users in Southern Brazil: a protocol study

ABSTRACT: Objective: Emergency services are essential to the organization of the health care system. Nevertheless, they face different operational difficulties, including overcrowded services, largely explained by their inappropriate use and the repeated visits from users. Although a known situation, information on the theme is scarce in Brazil, particularly regarding longitudinal user monitoring. Thus, this project aims to evaluate the predictive performance of different machine learning algorithms to estimate the inappropriate and repeated use of emergency services and mortality. Methods: To that end, a study will be conducted in the municipality of Pelotas, Rio Grande do Sul, with around five thousand users of the municipal emergency department. Results: If the study is successful, we will provide an algorithm that could be used in clinical practice to assist health professionals in decision-making within hospitals. Different knowledge dissemination strategies will be used to increase the capacity of the study to produce innovations for the organization of the health system and services. Conclusion: A high performance predictive model may be able to help decisionmaking in the emergency services, improving quality of care.

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Bibliographic Details
Main Authors: Nunes,Bruno Pereira, Vissoci,João, Delpino,Felipe Mendes, Stolz,Pablo, Farias,Sabrina Ribeiro, Coelho,Bruna Borges, Viegas,Indiara da Silva, Carvalho Junior,Denis Carlos, Dias,Camila Sebaje da Silva, Almeida,Ana Paula Santana Coelho, Facchini,Luiz Augusto, Chiavegatto Filho,Alexandre Dias Porto
Format: Digital revista
Language:English
Published: Associação Brasileira de Saúde Coletiva 2021
Online Access:http://old.scielo.br/scielo.php?script=sci_arttext&pid=S1415-790X2021000100434
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