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A Machine Learning Application Based in Random Forest for Integrating Mass Spectrometry-Based Metabolomic Data: A Simple Screening Method for Patients With Zika Virus

Authors :
Carlos Fernando Odir Rodrigues Melo
Luiz Claudio Navarro
Diogo Noin de Oliveira
Tatiane Melina Guerreiro
Estela de Oliveira Lima
Jeany Delafiori
Mohamed Ziad Dabaja
Marta da Silva Ribeiro
Maico de Menezes
Rafael Gustavo Martins Rodrigues
Karen Noda Morishita
Cibele Zanardi Esteves
Aline Lopes Lucas de Amorim
Caroline Tiemi Aoyagui
Pierina Lorencini Parise
Guilherme Paier Milanez
Gabriela Mansano do Nascimento
André Ricardo Ribas Freitas
Rodrigo Angerami
Fábio Trindade Maranhão Costa
Clarice Weis Arns
Mariangela Ribeiro Resende
Eliana Amaral
Renato Passini Junior
Carolina C. Ribeiro-do-Valle
Helaine Milanez
Maria Luiza Moretti
Jose Luiz Proenca-Modena
Sandra Avila
Anderson Rocha
Rodrigo Ramos Catharino
Source :
Frontiers in Bioengineering and Biotechnology, Vol 6 (2018)
Publication Year :
2018
Publisher :
Frontiers Media S.A., 2018.

Abstract

Recent Zika outbreaks in South America, accompanied by unexpectedly severe clinical complications have brought much interest in fast and reliable screening methods for ZIKV (Zika virus) identification. Reverse-transcriptase polymerase chain reaction (RT-PCR) is currently the method of choice to detect ZIKV in biological samples. This approach, nonetheless, demands a considerable amount of time and resources such as kits and reagents that, in endemic areas, may result in a substantial financial burden over affected individuals and health services veering away from RT-PCR analysis. This study presents a powerful combination of high-resolution mass spectrometry and a machine-learning prediction model for data analysis to assess the existence of ZIKV infection across a series of patients that bear similar symptomatic conditions, but not necessarily are infected with the disease. By using mass spectrometric data that are inputted with the developed decision-making algorithm, we were able to provide a set of features that work as a “fingerprint” for this specific pathophysiological condition, even after the acute phase of infection. Since both mass spectrometry and machine learning approaches are well-established and have largely utilized tools within their respective fields, this combination of methods emerges as a distinct alternative for clinical applications, providing a diagnostic screening—faster and more accurate—with improved cost-effectiveness when compared to existing technologies.

Details

Language :
English
ISSN :
22964185
Volume :
6
Database :
Directory of Open Access Journals
Journal :
Frontiers in Bioengineering and Biotechnology
Publication Type :
Academic Journal
Accession number :
edsdoj.1d5d7d981d6e4638bdb504d92d381f36
Document Type :
article
Full Text :
https://doi.org/10.3389/fbioe.2018.00031