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AI-assisted Solutions for COVID-19 and Biomedical Applications in Smart Cities. Third EAI International Conference, AISCOVID-19 2022, Braga, Portugal, November 16-18, 2022, Proceedings

Research Article

First Clustering Analysis of COVID in Portugal

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BibTeX Plain Text
  • @INPROCEEDINGS{10.1007/978-3-031-38204-8_5,
        author={Ana Teresa Ferreira and Jos\^{e} Vieira and Manuel Filipe Santos and Filipe Portela},
        title={First Clustering Analysis of COVID in Portugal},
        proceedings={AI-assisted Solutions for COVID-19 and Biomedical Applications in Smart Cities. Third EAI International Conference, AISCOVID-19 2022, Braga, Portugal, November 16-18, 2022, Proceedings},
        proceedings_a={AISCOVID-19},
        year={2023},
        month={7},
        keywords={COVID-19 Clustering Information Systems Statistics Public Health},
        doi={10.1007/978-3-031-38204-8_5}
    }
    
  • Ana Teresa Ferreira
    José Vieira
    Manuel Filipe Santos
    Filipe Portela
    Year: 2023
    First Clustering Analysis of COVID in Portugal
    AISCOVID-19
    Springer
    DOI: 10.1007/978-3-031-38204-8_5
Ana Teresa Ferreira1, José Vieira, Manuel Filipe Santos1, Filipe Portela1,*
  • 1: Algoritmi Research Centre
*Contact email: cfp@dsi.uminho.pt

Abstract

There is an increasing need to understand the behavior of COVID-19, in this case, what type of medical preconditions can influence the recovery of the infected patient and what age groups are more affected. After the Directorate-General of Health of Portugal (DGS) made available the first records gathered from the infected, it became possible gather some conclusions. In this context, ioCOVID19 project arises, which wants to identify patterns and develop intelligent models able to support the clinical decision.

This article explores which typologies are associated with different outcomes to provide some insights regarding the consequences after the coronavirus infection. To understand which profiles, stand out, a clustering algorithm was used, 65 experiments were carried out, from which 192 clusters were obtained. From this study, the most relevant profiles are the following: the profile associated with death are patients with Diabetes – aged between 44 and 98 years old (19.74%); regrading hospitalized patients who died, the profile achieved was patients with Chronic Kidney Disease – aged between 52 and 102 years old (17.63%); for patients hospitalized in ICU who died the profile obtained was Cardiovascular Diseases – aged between 61 and 88 years old (26.23%); in regards to patients who died after being submitted to ventilatory support the correlated profile are patients with Cardiovascular Diseases – aged between 62 and 99 years old (32.17%). With the completion of this study it was possible to detect a set of profiles that are associated with different clinical conditions.

Keywords
COVID-19 Clustering Information Systems Statistics Public Health
Published
2023-07-30
Appears in
SpringerLink
http://dx.doi.org/10.1007/978-3-031-38204-8_5
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