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An online platform for COVID-19 diagnostic screening using a machine learning algorithm
Souza Filho, Erito Marques de; Tavares, Rodrigo de Souza; Dembogurski, Bruno José; Gagliano, Alice Helena Nora Pacheco; Pacheco, Luiz Carlos de Oliveira; Pacheco, Luiz Gabriel de Resende Nora; Carmo, Filipe Braida do; Alvim, Leandro Guimarães Marques; Monteiro, Alexandra.
  • Souza Filho, Erito Marques de; Universidade Federal Rural do Rio de Janeiro. Nova Iguaçu. BR
  • Tavares, Rodrigo de Souza; Universidade Federal Rural do Rio de Janeiro. Nova Iguaçu. BR
  • Dembogurski, Bruno José; Universidade Federal Rural do Rio de Janeiro. Nova Iguaçu. BR
  • Gagliano, Alice Helena Nora Pacheco; Serviços de Exames Ambulatoriais do Coração. Niterói. BR
  • Pacheco, Luiz Carlos de Oliveira; Serviços de Exames Ambulatoriais do Coração. Niterói. BR
  • Pacheco, Luiz Gabriel de Resende Nora; Serviços de Exames Ambulatoriais do Coração. Niterói. BR
  • Carmo, Filipe Braida do; Universidade Federal Rural do Rio de Janeiro. Nova Iguaçu. BR
  • Alvim, Leandro Guimarães Marques; Universidade Federal Rural do Rio de Janeiro. Nova Iguaçu. BR
  • Monteiro, Alexandra; Universidade do Estado do Rio de Janeiro. Rio de Janeiro. BR
Rev. Assoc. Med. Bras. (1992, Impr.) ; 69(4): e20221394, 2023. graf
Artículo en Inglés | LILACS-Express | LILACS | ID: biblio-1431246
ABSTRACT
SUMMARY

OBJECTIVE:

COVID-19 has brought emerging public health emergency and new challenges. It configures a complex panorama that has been requiring a set of coordinated actions and has innovation as one of its pillars. In particular, the use of digital tools plays an important role. In this context, this study presents a screening algorithm that uses a machine learning model to assess the probability of a diagnosis of COVID-19 based on clinical data.

METHODS:

This algorithm was made available for free on an online platform. The project was developed in three phases. First, an machine learning risk model was developed. Second, a system was developed that would allow the user to enter patient data. Finally, this platform was used in teleconsultations carried out during the pandemic period.

RESULTS:

The number of accesses during the period was 4,722. A total of 126 assistances were carried out from March 23, 2020, to June 16, 2020, and 107 satisfaction survey returns were received. The response rate to the questionnaires was 84.92%, and the ratings obtained regarding the satisfaction level were higher than 4.8 (on a 0-5 scale). The Net Promoter Score was 94.4.

CONCLUSION:

To the best of our knowledge, this is the first online application of its kind that presents a probabilistic assessment of COVID-19 using machine learning models exclusively based on the symptoms and clinical characteristics of users. The level of satisfaction was high. The integration of machine learning tools in telemedicine practice has great potential.


Texto completo: Disponible Índice: LILACS (Américas) Tipo de estudio: Estudio diagnóstico / Estudio pronóstico / Estudio de tamizaje Idioma: Inglés Revista: Rev. Assoc. Med. Bras. (1992, Impr.) Asunto de la revista: Educa‡Æo em Sa£de / GestÆo do Conhecimento para a Pesquisa em Sa£de / Medicina Año: 2023 Tipo del documento: Artículo País de afiliación: Brasil Institución/País de afiliación: Serviços de Exames Ambulatoriais do Coração/BR / Universidade Federal Rural do Rio de Janeiro/BR / Universidade do Estado do Rio de Janeiro/BR

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Texto completo: Disponible Índice: LILACS (Américas) Tipo de estudio: Estudio diagnóstico / Estudio pronóstico / Estudio de tamizaje Idioma: Inglés Revista: Rev. Assoc. Med. Bras. (1992, Impr.) Asunto de la revista: Educa‡Æo em Sa£de / GestÆo do Conhecimento para a Pesquisa em Sa£de / Medicina Año: 2023 Tipo del documento: Artículo País de afiliación: Brasil Institución/País de afiliación: Serviços de Exames Ambulatoriais do Coração/BR / Universidade Federal Rural do Rio de Janeiro/BR / Universidade do Estado do Rio de Janeiro/BR