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Covid-19 Automated Diagnosis and Risk Assessment through Metabolomics and Machine Learning
[Image: see text] COVID-19 is still placing a heavy health and financial burden worldwide. Impairment in patient screening and risk management plays a fundamental role on how governments and authorities are directing resources, planning reopening, as well as sanitary countermeasures, especially in r...
Autores principales: | , , , , , , , , , , , , , , , , , , , , , , , , , , , , , |
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Formato: | Online Artículo Texto |
Lenguaje: | English |
Publicado: |
American Chemical Society
2021
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Acceso en línea: | https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8023531/ https://www.ncbi.nlm.nih.gov/pubmed/33471512 http://dx.doi.org/10.1021/acs.analchem.0c04497 |
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author | Delafiori, Jeany Navarro, Luiz Cláudio Siciliano, Rinaldo Focaccia de Melo, Gisely Cardoso Busanello, Estela Natacha Brandt Nicolau, José Carlos Sales, Geovana Manzan de Oliveira, Arthur Noin Val, Fernando Fonseca Almeida de Oliveira, Diogo Noin Eguti, Adriana dos Santos, Luiz Augusto Dalçóquio, Talia Falcão Bertolin, Adriadne Justi Abreu-Netto, Rebeca Linhares Salsoso, Rocio Baía-da-Silva, Djane Marcondes-Braga, Fabiana G Sampaio, Vanderson Souza Judice, Carla Cristina Costa, Fabio Trindade Maranhão Durán, Nelson Perroud, Mauricio Wesley Sabino, Ester Cerdeira Lacerda, Marcus Vinicius Guimarães Reis, Leonardo Oliveira Fávaro, Wagner José Monteiro, Wuelton Marcelo Rocha, Anderson Rezende Catharino, Rodrigo Ramos |
author_facet | Delafiori, Jeany Navarro, Luiz Cláudio Siciliano, Rinaldo Focaccia de Melo, Gisely Cardoso Busanello, Estela Natacha Brandt Nicolau, José Carlos Sales, Geovana Manzan de Oliveira, Arthur Noin Val, Fernando Fonseca Almeida de Oliveira, Diogo Noin Eguti, Adriana dos Santos, Luiz Augusto Dalçóquio, Talia Falcão Bertolin, Adriadne Justi Abreu-Netto, Rebeca Linhares Salsoso, Rocio Baía-da-Silva, Djane Marcondes-Braga, Fabiana G Sampaio, Vanderson Souza Judice, Carla Cristina Costa, Fabio Trindade Maranhão Durán, Nelson Perroud, Mauricio Wesley Sabino, Ester Cerdeira Lacerda, Marcus Vinicius Guimarães Reis, Leonardo Oliveira Fávaro, Wagner José Monteiro, Wuelton Marcelo Rocha, Anderson Rezende Catharino, Rodrigo Ramos |
author_sort | Delafiori, Jeany |
collection | PubMed |
description | [Image: see text] COVID-19 is still placing a heavy health and financial burden worldwide. Impairment in patient screening and risk management plays a fundamental role on how governments and authorities are directing resources, planning reopening, as well as sanitary countermeasures, especially in regions where poverty is a major component in the equation. An efficient diagnostic method must be highly accurate, while having a cost-effective profile. We combined a machine learning-based algorithm with mass spectrometry to create an expeditious platform that discriminate COVID-19 in plasma samples within minutes, while also providing tools for risk assessment, to assist healthcare professionals in patient management and decision-making. A cross-sectional study enrolled 815 patients (442 COVID-19, 350 controls and 23 COVID-19 suspicious) from three Brazilian epicenters from April to July 2020. We were able to elect and identify 19 molecules related to the disease’s pathophysiology and several discriminating features to patient’s health-related outcomes. The method applied for COVID-19 diagnosis showed specificity >96% and sensitivity >83%, and specificity >80% and sensitivity >85% during risk assessment, both from blinded data. Our method introduced a new approach for COVID-19 screening, providing the indirect detection of infection through metabolites and contextualizing the findings with the disease’s pathophysiology. The pairwise analysis of biomarkers brought robustness to the model developed using machine learning algorithms, transforming this screening approach in a tool with great potential for real-world application. |
format | Online Article Text |
id | pubmed-8023531 |
institution | National Center for Biotechnology Information |
language | English |
publishDate | 2021 |
publisher | American Chemical Society |
record_format | MEDLINE/PubMed |
spelling | pubmed-80235312021-04-07 Covid-19 Automated Diagnosis and Risk Assessment through Metabolomics and Machine Learning Delafiori, Jeany Navarro, Luiz Cláudio Siciliano, Rinaldo Focaccia de Melo, Gisely Cardoso Busanello, Estela Natacha Brandt Nicolau, José Carlos Sales, Geovana Manzan de Oliveira, Arthur Noin Val, Fernando Fonseca Almeida de Oliveira, Diogo Noin Eguti, Adriana dos Santos, Luiz Augusto Dalçóquio, Talia Falcão Bertolin, Adriadne Justi Abreu-Netto, Rebeca Linhares Salsoso, Rocio Baía-da-Silva, Djane Marcondes-Braga, Fabiana G Sampaio, Vanderson Souza Judice, Carla Cristina Costa, Fabio Trindade Maranhão Durán, Nelson Perroud, Mauricio Wesley Sabino, Ester Cerdeira Lacerda, Marcus Vinicius Guimarães Reis, Leonardo Oliveira Fávaro, Wagner José Monteiro, Wuelton Marcelo Rocha, Anderson Rezende Catharino, Rodrigo Ramos Anal Chem [Image: see text] COVID-19 is still placing a heavy health and financial burden worldwide. Impairment in patient screening and risk management plays a fundamental role on how governments and authorities are directing resources, planning reopening, as well as sanitary countermeasures, especially in regions where poverty is a major component in the equation. An efficient diagnostic method must be highly accurate, while having a cost-effective profile. We combined a machine learning-based algorithm with mass spectrometry to create an expeditious platform that discriminate COVID-19 in plasma samples within minutes, while also providing tools for risk assessment, to assist healthcare professionals in patient management and decision-making. A cross-sectional study enrolled 815 patients (442 COVID-19, 350 controls and 23 COVID-19 suspicious) from three Brazilian epicenters from April to July 2020. We were able to elect and identify 19 molecules related to the disease’s pathophysiology and several discriminating features to patient’s health-related outcomes. The method applied for COVID-19 diagnosis showed specificity >96% and sensitivity >83%, and specificity >80% and sensitivity >85% during risk assessment, both from blinded data. Our method introduced a new approach for COVID-19 screening, providing the indirect detection of infection through metabolites and contextualizing the findings with the disease’s pathophysiology. The pairwise analysis of biomarkers brought robustness to the model developed using machine learning algorithms, transforming this screening approach in a tool with great potential for real-world application. American Chemical Society 2021-01-20 2021-02-02 /pmc/articles/PMC8023531/ /pubmed/33471512 http://dx.doi.org/10.1021/acs.analchem.0c04497 Text en © 2021 American Chemical Society Permits non-commercial access and re-use, provided that author attribution and integrity are maintained; but does not permit creation of adaptations or other derivative works (https://creativecommons.org/licenses/by-nc-nd/4.0/). |
spellingShingle | Delafiori, Jeany Navarro, Luiz Cláudio Siciliano, Rinaldo Focaccia de Melo, Gisely Cardoso Busanello, Estela Natacha Brandt Nicolau, José Carlos Sales, Geovana Manzan de Oliveira, Arthur Noin Val, Fernando Fonseca Almeida de Oliveira, Diogo Noin Eguti, Adriana dos Santos, Luiz Augusto Dalçóquio, Talia Falcão Bertolin, Adriadne Justi Abreu-Netto, Rebeca Linhares Salsoso, Rocio Baía-da-Silva, Djane Marcondes-Braga, Fabiana G Sampaio, Vanderson Souza Judice, Carla Cristina Costa, Fabio Trindade Maranhão Durán, Nelson Perroud, Mauricio Wesley Sabino, Ester Cerdeira Lacerda, Marcus Vinicius Guimarães Reis, Leonardo Oliveira Fávaro, Wagner José Monteiro, Wuelton Marcelo Rocha, Anderson Rezende Catharino, Rodrigo Ramos Covid-19 Automated Diagnosis and Risk Assessment through Metabolomics and Machine Learning |
title | Covid-19 Automated Diagnosis and Risk Assessment through
Metabolomics and Machine Learning |
title_full | Covid-19 Automated Diagnosis and Risk Assessment through
Metabolomics and Machine Learning |
title_fullStr | Covid-19 Automated Diagnosis and Risk Assessment through
Metabolomics and Machine Learning |
title_full_unstemmed | Covid-19 Automated Diagnosis and Risk Assessment through
Metabolomics and Machine Learning |
title_short | Covid-19 Automated Diagnosis and Risk Assessment through
Metabolomics and Machine Learning |
title_sort | covid-19 automated diagnosis and risk assessment through
metabolomics and machine learning |
url | https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8023531/ https://www.ncbi.nlm.nih.gov/pubmed/33471512 http://dx.doi.org/10.1021/acs.analchem.0c04497 |
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