Comparative Genomics Approaches Accurately Predict Deleterious Variants in Plants

Recent advances in genome resequencing have led to increased interest in prediction of the functional consequences of genetic variants. Variants at phylogenetically conserved sites are of particular interest, because they are more likely than variants at phylogenetically variable sites to have delet...

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Main Authors: Thomas J.Y. Kono, Li Lei, Ching-Hua Shih, Paul J. Hoffman, Peter L. Morrell, Justin C. Fay
Format: Article
Language:English
Published: Oxford University Press 2018-10-01
Series:G3: Genes, Genomes, Genetics
Subjects:
Online Access:http://g3journal.org/lookup/doi/10.1534/g3.118.200563
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spelling doaj-0cc98bdee0174bd1a6fe2825a2efdeb72021-07-02T05:03:04ZengOxford University PressG3: Genes, Genomes, Genetics2160-18362018-10-018103321332910.1534/g3.118.20056317Comparative Genomics Approaches Accurately Predict Deleterious Variants in PlantsThomas J.Y. KonoLi LeiChing-Hua ShihPaul J. HoffmanPeter L. MorrellJustin C. FayRecent advances in genome resequencing have led to increased interest in prediction of the functional consequences of genetic variants. Variants at phylogenetically conserved sites are of particular interest, because they are more likely than variants at phylogenetically variable sites to have deleterious effects on fitness and contribute to phenotypic variation. Numerous comparative genomic approaches have been developed to predict deleterious variants, but the approaches are nearly always assessed based on their ability to identify known disease-causing mutations in humans. Determining the accuracy of deleterious variant predictions in nonhuman species is important to understanding evolution, domestication, and potentially to improving crop quality and yield. To examine our ability to predict deleterious variants in plants we generated a curated database of 2,910 Arabidopsis thaliana mutants with known phenotypes. We evaluated seven approaches and found that while all performed well, their relative ranking differed from prior benchmarks in humans. We conclude that deleterious mutations can be reliably predicted in A. thaliana and likely other plant species, but that the relative performance of various approaches does not necessarily translate from one species to another.http://g3journal.org/lookup/doi/10.1534/g3.118.200563deleterious mutationsphenotypesgenometraining set
collection DOAJ
language English
format Article
sources DOAJ
author Thomas J.Y. Kono
Li Lei
Ching-Hua Shih
Paul J. Hoffman
Peter L. Morrell
Justin C. Fay
spellingShingle Thomas J.Y. Kono
Li Lei
Ching-Hua Shih
Paul J. Hoffman
Peter L. Morrell
Justin C. Fay
Comparative Genomics Approaches Accurately Predict Deleterious Variants in Plants
G3: Genes, Genomes, Genetics
deleterious mutations
phenotypes
genome
training set
author_facet Thomas J.Y. Kono
Li Lei
Ching-Hua Shih
Paul J. Hoffman
Peter L. Morrell
Justin C. Fay
author_sort Thomas J.Y. Kono
title Comparative Genomics Approaches Accurately Predict Deleterious Variants in Plants
title_short Comparative Genomics Approaches Accurately Predict Deleterious Variants in Plants
title_full Comparative Genomics Approaches Accurately Predict Deleterious Variants in Plants
title_fullStr Comparative Genomics Approaches Accurately Predict Deleterious Variants in Plants
title_full_unstemmed Comparative Genomics Approaches Accurately Predict Deleterious Variants in Plants
title_sort comparative genomics approaches accurately predict deleterious variants in plants
publisher Oxford University Press
series G3: Genes, Genomes, Genetics
issn 2160-1836
publishDate 2018-10-01
description Recent advances in genome resequencing have led to increased interest in prediction of the functional consequences of genetic variants. Variants at phylogenetically conserved sites are of particular interest, because they are more likely than variants at phylogenetically variable sites to have deleterious effects on fitness and contribute to phenotypic variation. Numerous comparative genomic approaches have been developed to predict deleterious variants, but the approaches are nearly always assessed based on their ability to identify known disease-causing mutations in humans. Determining the accuracy of deleterious variant predictions in nonhuman species is important to understanding evolution, domestication, and potentially to improving crop quality and yield. To examine our ability to predict deleterious variants in plants we generated a curated database of 2,910 Arabidopsis thaliana mutants with known phenotypes. We evaluated seven approaches and found that while all performed well, their relative ranking differed from prior benchmarks in humans. We conclude that deleterious mutations can be reliably predicted in A. thaliana and likely other plant species, but that the relative performance of various approaches does not necessarily translate from one species to another.
topic deleterious mutations
phenotypes
genome
training set
url http://g3journal.org/lookup/doi/10.1534/g3.118.200563
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