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Metabolomics and Machine Learning Approaches Combined in Pursuit for More Accurate Paracoccidioidomycosis Diagnoses

Brazil and many other Latin American countries are areas of endemicity for different neglected diseases, and the fungal infection paracoccidioidomycosis (PCM) is one of them. Among the clinical manifestations, pneumopathy associated with skin and mucosal lesions is the most frequent. PCM definitive...

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Autores principales: Lima, Estela de Oliveira, Navarro, Luiz Claudio, Morishita, Karen Noda, Kamikawa, Camila Mika, Rodrigues, Rafael Gustavo Martins, Dabaja, Mohamed Ziad, de Oliveira, Diogo Noin, Delafiori, Jeany, Dias-Audibert, Flávia Luísa, Ribeiro, Marta da Silva, Vicentini, Adriana Pardini, Rocha, Anderson, Catharino, Rodrigo Ramos
Formato: Online Artículo Texto
Lenguaje:English
Publicado: American Society for Microbiology 2020
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7329323/
https://www.ncbi.nlm.nih.gov/pubmed/32606026
http://dx.doi.org/10.1128/mSystems.00258-20
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author Lima, Estela de Oliveira
Navarro, Luiz Claudio
Morishita, Karen Noda
Kamikawa, Camila Mika
Rodrigues, Rafael Gustavo Martins
Dabaja, Mohamed Ziad
de Oliveira, Diogo Noin
Delafiori, Jeany
Dias-Audibert, Flávia Luísa
Ribeiro, Marta da Silva
Vicentini, Adriana Pardini
Rocha, Anderson
Catharino, Rodrigo Ramos
author_facet Lima, Estela de Oliveira
Navarro, Luiz Claudio
Morishita, Karen Noda
Kamikawa, Camila Mika
Rodrigues, Rafael Gustavo Martins
Dabaja, Mohamed Ziad
de Oliveira, Diogo Noin
Delafiori, Jeany
Dias-Audibert, Flávia Luísa
Ribeiro, Marta da Silva
Vicentini, Adriana Pardini
Rocha, Anderson
Catharino, Rodrigo Ramos
author_sort Lima, Estela de Oliveira
collection PubMed
description Brazil and many other Latin American countries are areas of endemicity for different neglected diseases, and the fungal infection paracoccidioidomycosis (PCM) is one of them. Among the clinical manifestations, pneumopathy associated with skin and mucosal lesions is the most frequent. PCM definitive diagnosis depends on yeast microscopic visualization and immunological tests, but both present ambiguous results and difficulty in differentiating PCM from other fungal infections. This research has employed metabolomics analysis through high-resolution mass spectrometry to identify PCM biomarkers in serum samples in order to improve diagnosis for this debilitating disease. To upgrade the biomarker selection, machine learning approaches, using Random Forest classifiers, were combined with metabolomics data analysis. The proposed combination of these two analytical methods resulted in the identification of a set of 19 PCM biomarkers that show accuracy of 97.1%, specificity of 100%, and sensitivity of 94.1%. The obtained results are promising and present great potential to improve PCM definitive diagnosis and adequate pharmacological treatment, reducing the incidence of PCM sequelae and resulting in a better quality of life. IMPORTANCE Paracoccidioidomycosis (PCM) is a fungal infection typically found in Latin American countries, especially in Brazil. The identification of this disease is based on techniques that may fail sometimes. Intending to improve PCM detection in patient samples, this study used the combination of two of the newest technologies, artificial intelligence and metabolomics. This combination allowed PCM detection, independently of disease form, through identification of a set of molecules present in patients’ blood. The great difference in this research was the ability to detect disease with better confidence than the routine methods employed today. Another important point is that among the molecules, it was possible to identify some indicators of contamination and other infection that might worsen patients’ condition. Thus, the present work shows a great potential to improve PCM diagnosis and even disease management, considering the possibility to identify concomitant harmful factors.
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spelling pubmed-73293232020-07-10 Metabolomics and Machine Learning Approaches Combined in Pursuit for More Accurate Paracoccidioidomycosis Diagnoses Lima, Estela de Oliveira Navarro, Luiz Claudio Morishita, Karen Noda Kamikawa, Camila Mika Rodrigues, Rafael Gustavo Martins Dabaja, Mohamed Ziad de Oliveira, Diogo Noin Delafiori, Jeany Dias-Audibert, Flávia Luísa Ribeiro, Marta da Silva Vicentini, Adriana Pardini Rocha, Anderson Catharino, Rodrigo Ramos mSystems Research Article Brazil and many other Latin American countries are areas of endemicity for different neglected diseases, and the fungal infection paracoccidioidomycosis (PCM) is one of them. Among the clinical manifestations, pneumopathy associated with skin and mucosal lesions is the most frequent. PCM definitive diagnosis depends on yeast microscopic visualization and immunological tests, but both present ambiguous results and difficulty in differentiating PCM from other fungal infections. This research has employed metabolomics analysis through high-resolution mass spectrometry to identify PCM biomarkers in serum samples in order to improve diagnosis for this debilitating disease. To upgrade the biomarker selection, machine learning approaches, using Random Forest classifiers, were combined with metabolomics data analysis. The proposed combination of these two analytical methods resulted in the identification of a set of 19 PCM biomarkers that show accuracy of 97.1%, specificity of 100%, and sensitivity of 94.1%. The obtained results are promising and present great potential to improve PCM definitive diagnosis and adequate pharmacological treatment, reducing the incidence of PCM sequelae and resulting in a better quality of life. IMPORTANCE Paracoccidioidomycosis (PCM) is a fungal infection typically found in Latin American countries, especially in Brazil. The identification of this disease is based on techniques that may fail sometimes. Intending to improve PCM detection in patient samples, this study used the combination of two of the newest technologies, artificial intelligence and metabolomics. This combination allowed PCM detection, independently of disease form, through identification of a set of molecules present in patients’ blood. The great difference in this research was the ability to detect disease with better confidence than the routine methods employed today. Another important point is that among the molecules, it was possible to identify some indicators of contamination and other infection that might worsen patients’ condition. Thus, the present work shows a great potential to improve PCM diagnosis and even disease management, considering the possibility to identify concomitant harmful factors. American Society for Microbiology 2020-06-30 /pmc/articles/PMC7329323/ /pubmed/32606026 http://dx.doi.org/10.1128/mSystems.00258-20 Text en Copyright © 2020 Lima et al. https://creativecommons.org/licenses/by/4.0/ This is an open-access article distributed under the terms of the Creative Commons Attribution 4.0 International license (https://creativecommons.org/licenses/by/4.0/) .
spellingShingle Research Article
Lima, Estela de Oliveira
Navarro, Luiz Claudio
Morishita, Karen Noda
Kamikawa, Camila Mika
Rodrigues, Rafael Gustavo Martins
Dabaja, Mohamed Ziad
de Oliveira, Diogo Noin
Delafiori, Jeany
Dias-Audibert, Flávia Luísa
Ribeiro, Marta da Silva
Vicentini, Adriana Pardini
Rocha, Anderson
Catharino, Rodrigo Ramos
Metabolomics and Machine Learning Approaches Combined in Pursuit for More Accurate Paracoccidioidomycosis Diagnoses
title Metabolomics and Machine Learning Approaches Combined in Pursuit for More Accurate Paracoccidioidomycosis Diagnoses
title_full Metabolomics and Machine Learning Approaches Combined in Pursuit for More Accurate Paracoccidioidomycosis Diagnoses
title_fullStr Metabolomics and Machine Learning Approaches Combined in Pursuit for More Accurate Paracoccidioidomycosis Diagnoses
title_full_unstemmed Metabolomics and Machine Learning Approaches Combined in Pursuit for More Accurate Paracoccidioidomycosis Diagnoses
title_short Metabolomics and Machine Learning Approaches Combined in Pursuit for More Accurate Paracoccidioidomycosis Diagnoses
title_sort metabolomics and machine learning approaches combined in pursuit for more accurate paracoccidioidomycosis diagnoses
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7329323/
https://www.ncbi.nlm.nih.gov/pubmed/32606026
http://dx.doi.org/10.1128/mSystems.00258-20
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