Comparison of machine learning techniques to handle imbalanced COVID-19 CBC datasets

Detalhes bibliográficos
Autor(a) principal: Dorn, Márcio
Data de Publicação: 2021
Outros Autores: Grisci, Bruno Iochins, Narloch, Pedro Henrique, Feltes, Bruno César, Ávila, Eduardo Muller, Kahmann, Alessandro, Alho, Clarice Sampaio
Tipo de documento: Artigo
Idioma: eng
Título da fonte: Repositório Institucional da UFRGS
Texto Completo: http://hdl.handle.net/10183/256836
Resumo: The Coronavirus pandemic caused by the novel SARS-CoV-2 has significantly impacted human health and the economy, especially in countries struggling with financial resources for medical testing and treatment, such as Brazil’s case, the third most affected country by the pandemic. In this scenario, machine learning techniques have been heavily employed to analyze different types of medical data, and aid decision making, offering a low-cost alternative. Due to the urgency to fight the pandemic, a massive amount of works are applying machine learning approaches to clinical data, including complete blood count (CBC) tests, which are among the most widely available medical tests. In this work, we review the most employed machine learning classifiers for CBC data, together with popular sampling methods to deal with the class imbalance. Additionally, we describe and critically analyze three publicly available Brazilian COVID-19 CBC datasets and evaluate the performance of eight classifiers and five sampling techniques on the selected datasets. Our work provides a panorama of which classifier and sampling methods provide the best results for different relevant metrics and discuss their impact on future analyses. The metrics and algorithms are introduced in a way to aid newcomers to the field. Finally, the panorama discussed here can significantly benefit the comparison of the results of new ML algorithms.
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spelling Dorn, MárcioGrisci, Bruno IochinsNarloch, Pedro HenriqueFeltes, Bruno CésarÁvila, Eduardo MullerKahmann, AlessandroAlho, Clarice Sampaio2023-04-07T03:26:40Z20212376-5992http://hdl.handle.net/10183/256836001138423The Coronavirus pandemic caused by the novel SARS-CoV-2 has significantly impacted human health and the economy, especially in countries struggling with financial resources for medical testing and treatment, such as Brazil’s case, the third most affected country by the pandemic. In this scenario, machine learning techniques have been heavily employed to analyze different types of medical data, and aid decision making, offering a low-cost alternative. Due to the urgency to fight the pandemic, a massive amount of works are applying machine learning approaches to clinical data, including complete blood count (CBC) tests, which are among the most widely available medical tests. In this work, we review the most employed machine learning classifiers for CBC data, together with popular sampling methods to deal with the class imbalance. Additionally, we describe and critically analyze three publicly available Brazilian COVID-19 CBC datasets and evaluate the performance of eight classifiers and five sampling techniques on the selected datasets. Our work provides a panorama of which classifier and sampling methods provide the best results for different relevant metrics and discuss their impact on future analyses. The metrics and algorithms are introduced in a way to aid newcomers to the field. Finally, the panorama discussed here can significantly benefit the comparison of the results of new ML algorithms.application/pdfengPeerJ Computer Science. New York. Vol. 7 (set. 2021), p. 670-704Aprendizado de máquinaMineração de dadosCOVID-19Machine learningData miningImbalanced datasetsCovid, HemogramComparison of machine learning techniques to handle imbalanced COVID-19 CBC datasetsEstrangeiroinfo:eu-repo/semantics/articleinfo:eu-repo/semantics/publishedVersioninfo:eu-repo/semantics/openAccessreponame:Repositório Institucional da UFRGSinstname:Universidade Federal do Rio Grande do Sul (UFRGS)instacron:UFRGSTEXT001138423.pdf.txt001138423.pdf.txtExtracted Texttext/plain96486http://www.lume.ufrgs.br/bitstream/10183/256836/2/001138423.pdf.txt911c16ed0a6af0852f255629a7bd16e8MD52ORIGINAL001138423.pdfTexto completo (inglês)application/pdf13082802http://www.lume.ufrgs.br/bitstream/10183/256836/1/001138423.pdf5c4cc76135056adcd977bfcd8386e0ecMD5110183/2568362024-05-01 06:51:05.34644oai:www.lume.ufrgs.br:10183/256836Repositório de PublicaçõesPUBhttps://lume.ufrgs.br/oai/requestopendoar:2024-05-01T09:51:05Repositório Institucional da UFRGS - Universidade Federal do Rio Grande do Sul (UFRGS)false
dc.title.pt_BR.fl_str_mv Comparison of machine learning techniques to handle imbalanced COVID-19 CBC datasets
title Comparison of machine learning techniques to handle imbalanced COVID-19 CBC datasets
spellingShingle Comparison of machine learning techniques to handle imbalanced COVID-19 CBC datasets
Dorn, Márcio
Aprendizado de máquina
Mineração de dados
COVID-19
Machine learning
Data mining
Imbalanced datasets
Covid, Hemogram
title_short Comparison of machine learning techniques to handle imbalanced COVID-19 CBC datasets
title_full Comparison of machine learning techniques to handle imbalanced COVID-19 CBC datasets
title_fullStr Comparison of machine learning techniques to handle imbalanced COVID-19 CBC datasets
title_full_unstemmed Comparison of machine learning techniques to handle imbalanced COVID-19 CBC datasets
title_sort Comparison of machine learning techniques to handle imbalanced COVID-19 CBC datasets
author Dorn, Márcio
author_facet Dorn, Márcio
Grisci, Bruno Iochins
Narloch, Pedro Henrique
Feltes, Bruno César
Ávila, Eduardo Muller
Kahmann, Alessandro
Alho, Clarice Sampaio
author_role author
author2 Grisci, Bruno Iochins
Narloch, Pedro Henrique
Feltes, Bruno César
Ávila, Eduardo Muller
Kahmann, Alessandro
Alho, Clarice Sampaio
author2_role author
author
author
author
author
author
dc.contributor.author.fl_str_mv Dorn, Márcio
Grisci, Bruno Iochins
Narloch, Pedro Henrique
Feltes, Bruno César
Ávila, Eduardo Muller
Kahmann, Alessandro
Alho, Clarice Sampaio
dc.subject.por.fl_str_mv Aprendizado de máquina
Mineração de dados
COVID-19
topic Aprendizado de máquina
Mineração de dados
COVID-19
Machine learning
Data mining
Imbalanced datasets
Covid, Hemogram
dc.subject.eng.fl_str_mv Machine learning
Data mining
Imbalanced datasets
Covid, Hemogram
description The Coronavirus pandemic caused by the novel SARS-CoV-2 has significantly impacted human health and the economy, especially in countries struggling with financial resources for medical testing and treatment, such as Brazil’s case, the third most affected country by the pandemic. In this scenario, machine learning techniques have been heavily employed to analyze different types of medical data, and aid decision making, offering a low-cost alternative. Due to the urgency to fight the pandemic, a massive amount of works are applying machine learning approaches to clinical data, including complete blood count (CBC) tests, which are among the most widely available medical tests. In this work, we review the most employed machine learning classifiers for CBC data, together with popular sampling methods to deal with the class imbalance. Additionally, we describe and critically analyze three publicly available Brazilian COVID-19 CBC datasets and evaluate the performance of eight classifiers and five sampling techniques on the selected datasets. Our work provides a panorama of which classifier and sampling methods provide the best results for different relevant metrics and discuss their impact on future analyses. The metrics and algorithms are introduced in a way to aid newcomers to the field. Finally, the panorama discussed here can significantly benefit the comparison of the results of new ML algorithms.
publishDate 2021
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dc.date.accessioned.fl_str_mv 2023-04-07T03:26:40Z
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