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The Use of Artificial Neural Networks in Prediction of Congenital CMV Outcome from Sequence Data

A large number of CMV strains has been reported to circulate in the human population, and the biological significance of these strains is currently an active area of research. The analysis of complex genetic information may be limited using conventional phylogenetic techniques. We constructed artifi...

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Detalles Bibliográficos
Autores principales: Arav-Boger, Ravit, Boger, Yuval S., Foster, Charles B., Boger, Zvi
Formato: Texto
Lenguaje:English
Publicado: Libertas Academica 2008
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC2735958/
https://www.ncbi.nlm.nih.gov/pubmed/19812782
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author Arav-Boger, Ravit
Boger, Yuval S.
Foster, Charles B.
Boger, Zvi
author_facet Arav-Boger, Ravit
Boger, Yuval S.
Foster, Charles B.
Boger, Zvi
author_sort Arav-Boger, Ravit
collection PubMed
description A large number of CMV strains has been reported to circulate in the human population, and the biological significance of these strains is currently an active area of research. The analysis of complex genetic information may be limited using conventional phylogenetic techniques. We constructed artificial neural networks to determine their feasibility in predicting the outcome of congenital CMV disease (defined as presence of CMV symptoms at birth) based on two data sets: 54 sequences of CMV gene UL144 obtained from 54 amniotic fluids of women who contracted acute CMV infection during their pregnancy, and 80 sequences of 4 genes (US28, UL144, UL146 and UL147) obtained from urine, saliva or blood of 20 congenitally infected infants that displayed different outcomes at birth. When data from all four genes was used in the 20-infants’ set, the artificial neural network model accurately identified outcome in 90% of cases. While US28 and UL147 had low yield in predicting outcome, UL144 and UL146 predicted outcome in 80% and 85% respectively when used separately. The model identified specific nucleotide positions that were highly relevant to prediction of outcome. The artificial neural network classified genotypes in agreement with classic phylogenetic analysis. We suggest that artificial neural networks can accurately and efficiently analyze sequences obtained from larger cohorts to determine specific outcomes.\ The ANN training and analysis code is commercially available from Optimal Neural Informatics (Pikesville, MD).
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spelling pubmed-27359582009-09-14 The Use of Artificial Neural Networks in Prediction of Congenital CMV Outcome from Sequence Data Arav-Boger, Ravit Boger, Yuval S. Foster, Charles B. Boger, Zvi Bioinform Biol Insights Original Research A large number of CMV strains has been reported to circulate in the human population, and the biological significance of these strains is currently an active area of research. The analysis of complex genetic information may be limited using conventional phylogenetic techniques. We constructed artificial neural networks to determine their feasibility in predicting the outcome of congenital CMV disease (defined as presence of CMV symptoms at birth) based on two data sets: 54 sequences of CMV gene UL144 obtained from 54 amniotic fluids of women who contracted acute CMV infection during their pregnancy, and 80 sequences of 4 genes (US28, UL144, UL146 and UL147) obtained from urine, saliva or blood of 20 congenitally infected infants that displayed different outcomes at birth. When data from all four genes was used in the 20-infants’ set, the artificial neural network model accurately identified outcome in 90% of cases. While US28 and UL147 had low yield in predicting outcome, UL144 and UL146 predicted outcome in 80% and 85% respectively when used separately. The model identified specific nucleotide positions that were highly relevant to prediction of outcome. The artificial neural network classified genotypes in agreement with classic phylogenetic analysis. We suggest that artificial neural networks can accurately and efficiently analyze sequences obtained from larger cohorts to determine specific outcomes.\ The ANN training and analysis code is commercially available from Optimal Neural Informatics (Pikesville, MD). Libertas Academica 2008-05-29 /pmc/articles/PMC2735958/ /pubmed/19812782 Text en Copyright © 2008 The authors. http://creativecommons.org/licenses/by/3.0 This article is an open-access article distributed under the terms and conditions of the Creative Commons Attribution license (http://creativecommons.org/licenses/by/3.0/).
spellingShingle Original Research
Arav-Boger, Ravit
Boger, Yuval S.
Foster, Charles B.
Boger, Zvi
The Use of Artificial Neural Networks in Prediction of Congenital CMV Outcome from Sequence Data
title The Use of Artificial Neural Networks in Prediction of Congenital CMV Outcome from Sequence Data
title_full The Use of Artificial Neural Networks in Prediction of Congenital CMV Outcome from Sequence Data
title_fullStr The Use of Artificial Neural Networks in Prediction of Congenital CMV Outcome from Sequence Data
title_full_unstemmed The Use of Artificial Neural Networks in Prediction of Congenital CMV Outcome from Sequence Data
title_short The Use of Artificial Neural Networks in Prediction of Congenital CMV Outcome from Sequence Data
title_sort use of artificial neural networks in prediction of congenital cmv outcome from sequence data
topic Original Research
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC2735958/
https://www.ncbi.nlm.nih.gov/pubmed/19812782
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