Classification of antimicrobial resistance using artificial neural networks and the relationship of 38 genes associated with the virulence of Escherichia coli isolates from broilers
Avian pathogenic Escherichia coli (APEC) is responsible for various pathological processes in birds and is considered as one of the principal causes of morbidity and mortality, associated with economic losses to the poultry industry. The objective of this study was to demonstrate that it is possible...
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Colégio Brasileiro de Patologia Animal (CBPA)
2015-02-01
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doaj-cde670e577934e0b8b1bd99c2562e5fe2020-11-24T22:55:14ZengColégio Brasileiro de Patologia Animal (CBPA)Pesquisa Veterinária Brasileira1678-51502015-02-0135213714010.1590/S0100-736X2015000200007S0100-736X2015000200137Classification of antimicrobial resistance using artificial neural networks and the relationship of 38 genes associated with the virulence of Escherichia coli isolates from broilersDaniela T. RochaFelipe O. SalleGustavo PerdonciniSilvio L.S. RochaFlávia B.B. FortesHamilton L.S. MoraesVladimir P. NascimentoCarlos T.P. SalleAvian pathogenic Escherichia coli (APEC) is responsible for various pathological processes in birds and is considered as one of the principal causes of morbidity and mortality, associated with economic losses to the poultry industry. The objective of this study was to demonstrate that it is possible to predict antimicrobial resistance of 256 samples (APEC) using 38 different genes responsible for virulence factors, through a computer program of artificial neural networks (ANNs). A second target was to find the relationship between (PI) pathogenicity index and resistance to 14 antibiotics by statistical analysis. The results showed that the RNAs were able to make the correct classification of the behavior of APEC samples with a range from 74.22 to 98.44%, and make it possible to predict antimicrobial resistance. The statistical analysis to assess the relationship between the pathogenic index (PI) and resistance against 14 antibiotics showed that these variables are independent, i.e. peaks in PI can happen without changing the antimicrobial resistance, or the opposite, changing the antimicrobial resistance without a change in PI.http://www.scielo.br/scielo.php?script=sci_arttext&pid=S0100-736X2015000200137&lng=en&tlng=enEscherichia coliredes neurais artificiaisagentes antimicrobianosfrangos. |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Daniela T. Rocha Felipe O. Salle Gustavo Perdoncini Silvio L.S. Rocha Flávia B.B. Fortes Hamilton L.S. Moraes Vladimir P. Nascimento Carlos T.P. Salle |
spellingShingle |
Daniela T. Rocha Felipe O. Salle Gustavo Perdoncini Silvio L.S. Rocha Flávia B.B. Fortes Hamilton L.S. Moraes Vladimir P. Nascimento Carlos T.P. Salle Classification of antimicrobial resistance using artificial neural networks and the relationship of 38 genes associated with the virulence of Escherichia coli isolates from broilers Pesquisa Veterinária Brasileira Escherichia coli redes neurais artificiais agentes antimicrobianos frangos. |
author_facet |
Daniela T. Rocha Felipe O. Salle Gustavo Perdoncini Silvio L.S. Rocha Flávia B.B. Fortes Hamilton L.S. Moraes Vladimir P. Nascimento Carlos T.P. Salle |
author_sort |
Daniela T. Rocha |
title |
Classification of antimicrobial resistance using artificial neural networks and the relationship of 38 genes associated with the virulence of Escherichia coli isolates from broilers |
title_short |
Classification of antimicrobial resistance using artificial neural networks and the relationship of 38 genes associated with the virulence of Escherichia coli isolates from broilers |
title_full |
Classification of antimicrobial resistance using artificial neural networks and the relationship of 38 genes associated with the virulence of Escherichia coli isolates from broilers |
title_fullStr |
Classification of antimicrobial resistance using artificial neural networks and the relationship of 38 genes associated with the virulence of Escherichia coli isolates from broilers |
title_full_unstemmed |
Classification of antimicrobial resistance using artificial neural networks and the relationship of 38 genes associated with the virulence of Escherichia coli isolates from broilers |
title_sort |
classification of antimicrobial resistance using artificial neural networks and the relationship of 38 genes associated with the virulence of escherichia coli isolates from broilers |
publisher |
Colégio Brasileiro de Patologia Animal (CBPA) |
series |
Pesquisa Veterinária Brasileira |
issn |
1678-5150 |
publishDate |
2015-02-01 |
description |
Avian pathogenic Escherichia coli (APEC) is responsible for various pathological processes in birds and is considered as one of the principal causes of morbidity and mortality, associated with economic losses to the poultry industry. The objective of this study was to demonstrate that it is possible to predict antimicrobial resistance of 256 samples (APEC) using 38 different genes responsible for virulence factors, through a computer program of artificial neural networks (ANNs). A second target was to find the relationship between (PI) pathogenicity index and resistance to 14 antibiotics by statistical analysis. The results showed that the RNAs were able to make the correct classification of the behavior of APEC samples with a range from 74.22 to 98.44%, and make it possible to predict antimicrobial resistance. The statistical analysis to assess the relationship between the pathogenic index (PI) and resistance against 14 antibiotics showed that these variables are independent, i.e. peaks in PI can happen without changing the antimicrobial resistance, or the opposite, changing the antimicrobial resistance without a change in PI. |
topic |
Escherichia coli redes neurais artificiais agentes antimicrobianos frangos. |
url |
http://www.scielo.br/scielo.php?script=sci_arttext&pid=S0100-736X2015000200137&lng=en&tlng=en |
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