Comparison of classification methods for detecting associations between SNPs and chick mortality

<p>Abstract</p> <p>Multi-category classification methods were used to detect SNP-mortality associations in broilers. The objective was to select a subset of whole genome SNPs associated with chick mortality. This was done by categorizing mortality rates and using a filter-wrapper f...

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Main Authors: Rosa Guilherme JM, Gianola Daniel, Long Nanye, Weigel Kent A, Avendaño Santiago
Format: Article
Language:deu
Published: BMC 2009-01-01
Series:Genetics Selection Evolution
Online Access:http://www.gsejournal.org/content/41/1/18
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spelling doaj-a73549dec987402ca85ea98ec37783b12020-11-24T20:51:44ZdeuBMCGenetics Selection Evolution0999-193X1297-96862009-01-014111810.1186/1297-9686-41-18Comparison of classification methods for detecting associations between SNPs and chick mortalityRosa Guilherme JMGianola DanielLong NanyeWeigel Kent AAvendaño Santiago<p>Abstract</p> <p>Multi-category classification methods were used to detect SNP-mortality associations in broilers. The objective was to select a subset of whole genome SNPs associated with chick mortality. This was done by categorizing mortality rates and using a filter-wrapper feature selection procedure in each of the classification methods evaluated. Different numbers of categories (2, 3, 4, 5 and 10) and three classification algorithms (naïve Bayes classifiers, Bayesian networks and neural networks) were compared, using early and late chick mortality rates in low and high hygiene environments. Evaluation of SNPs selected by each classification method was done by predicted residual sum of squares and a significance test-related metric. A naïve Bayes classifier, coupled with discretization into two or three categories generated the SNP subset with greatest predictive ability. Further, an alternative categorization scheme, which used only two extreme portions of the empirical distribution of mortality rates, was considered. This scheme selected SNPs with greater predictive ability than those chosen by the methods described previously. Use of extreme samples seems to enhance the ability of feature selection procedures to select influential SNPs in genetic association studies.</p> http://www.gsejournal.org/content/41/1/18
collection DOAJ
language deu
format Article
sources DOAJ
author Rosa Guilherme JM
Gianola Daniel
Long Nanye
Weigel Kent A
Avendaño Santiago
spellingShingle Rosa Guilherme JM
Gianola Daniel
Long Nanye
Weigel Kent A
Avendaño Santiago
Comparison of classification methods for detecting associations between SNPs and chick mortality
Genetics Selection Evolution
author_facet Rosa Guilherme JM
Gianola Daniel
Long Nanye
Weigel Kent A
Avendaño Santiago
author_sort Rosa Guilherme JM
title Comparison of classification methods for detecting associations between SNPs and chick mortality
title_short Comparison of classification methods for detecting associations between SNPs and chick mortality
title_full Comparison of classification methods for detecting associations between SNPs and chick mortality
title_fullStr Comparison of classification methods for detecting associations between SNPs and chick mortality
title_full_unstemmed Comparison of classification methods for detecting associations between SNPs and chick mortality
title_sort comparison of classification methods for detecting associations between snps and chick mortality
publisher BMC
series Genetics Selection Evolution
issn 0999-193X
1297-9686
publishDate 2009-01-01
description <p>Abstract</p> <p>Multi-category classification methods were used to detect SNP-mortality associations in broilers. The objective was to select a subset of whole genome SNPs associated with chick mortality. This was done by categorizing mortality rates and using a filter-wrapper feature selection procedure in each of the classification methods evaluated. Different numbers of categories (2, 3, 4, 5 and 10) and three classification algorithms (naïve Bayes classifiers, Bayesian networks and neural networks) were compared, using early and late chick mortality rates in low and high hygiene environments. Evaluation of SNPs selected by each classification method was done by predicted residual sum of squares and a significance test-related metric. A naïve Bayes classifier, coupled with discretization into two or three categories generated the SNP subset with greatest predictive ability. Further, an alternative categorization scheme, which used only two extreme portions of the empirical distribution of mortality rates, was considered. This scheme selected SNPs with greater predictive ability than those chosen by the methods described previously. Use of extreme samples seems to enhance the ability of feature selection procedures to select influential SNPs in genetic association studies.</p>
url http://www.gsejournal.org/content/41/1/18
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AT avendanosantiago comparisonofclassificationmethodsfordetectingassociationsbetweensnpsandchickmortality
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