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Clinical Implications of Human Population Differences in Genome-Wide Rates of Functional Genotypes

There have been a number of recent successes in the use of whole genome sequencing and sophisticated bioinformatics techniques to identify pathogenic DNA sequence variants responsible for individual idiopathic congenital conditions. However, the success of this identification process is heavily infl...

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Autores principales: Torkamani, Ali, Pham, Phillip, Libiger, Ondrej, Bansal, Vikas, Zhang, Guangfa, Scott-Van Zeeland, Ashley A., Tewhey, Ryan, Topol, Eric J., Schork, Nicholas J.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Frontiers Media S.A. 2012
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3485509/
https://www.ncbi.nlm.nih.gov/pubmed/23125845
http://dx.doi.org/10.3389/fgene.2012.00211
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author Torkamani, Ali
Pham, Phillip
Libiger, Ondrej
Bansal, Vikas
Zhang, Guangfa
Scott-Van Zeeland, Ashley A.
Tewhey, Ryan
Topol, Eric J.
Schork, Nicholas J.
author_facet Torkamani, Ali
Pham, Phillip
Libiger, Ondrej
Bansal, Vikas
Zhang, Guangfa
Scott-Van Zeeland, Ashley A.
Tewhey, Ryan
Topol, Eric J.
Schork, Nicholas J.
author_sort Torkamani, Ali
collection PubMed
description There have been a number of recent successes in the use of whole genome sequencing and sophisticated bioinformatics techniques to identify pathogenic DNA sequence variants responsible for individual idiopathic congenital conditions. However, the success of this identification process is heavily influenced by the ancestry or genetic background of a patient with an idiopathic condition. This is so because potential pathogenic variants in a patient’s genome must be contrasted with variants in a reference set of genomes made up of other individuals’ genomes of the same ancestry as the patient. We explored the effect of ignoring the ancestries of both an individual patient and the individuals used to construct reference genomes. We pursued this exploration in two major steps. We first considered variation in the per-genome number and rates of likely functional derived (i.e., non-ancestral, based on the chimp genome) single nucleotide variants and small indels in 52 individual whole human genomes sampled from 10 different global populations. We took advantage of a suite of computational and bioinformatics techniques to predict the functional effect of over 24 million genomic variants, both coding and non-coding, across these genomes. We found that the typical human genome harbors ∼5.5–6.1 million total derived variants, of which ∼12,000 are likely to have a functional effect (∼5000 coding and ∼7000 non-coding). We also found that the rates of functional genotypes per the total number of genotypes in individual whole genomes differ dramatically between human populations. We then created tables showing how the use of comparator or reference genome panels comprised of genomes from individuals that do not have the same ancestral background as a patient can negatively impact pathogenic variant identification. Our results have important implications for clinical sequencing initiatives.
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spelling pubmed-34855092012-11-02 Clinical Implications of Human Population Differences in Genome-Wide Rates of Functional Genotypes Torkamani, Ali Pham, Phillip Libiger, Ondrej Bansal, Vikas Zhang, Guangfa Scott-Van Zeeland, Ashley A. Tewhey, Ryan Topol, Eric J. Schork, Nicholas J. Front Genet Genetics There have been a number of recent successes in the use of whole genome sequencing and sophisticated bioinformatics techniques to identify pathogenic DNA sequence variants responsible for individual idiopathic congenital conditions. However, the success of this identification process is heavily influenced by the ancestry or genetic background of a patient with an idiopathic condition. This is so because potential pathogenic variants in a patient’s genome must be contrasted with variants in a reference set of genomes made up of other individuals’ genomes of the same ancestry as the patient. We explored the effect of ignoring the ancestries of both an individual patient and the individuals used to construct reference genomes. We pursued this exploration in two major steps. We first considered variation in the per-genome number and rates of likely functional derived (i.e., non-ancestral, based on the chimp genome) single nucleotide variants and small indels in 52 individual whole human genomes sampled from 10 different global populations. We took advantage of a suite of computational and bioinformatics techniques to predict the functional effect of over 24 million genomic variants, both coding and non-coding, across these genomes. We found that the typical human genome harbors ∼5.5–6.1 million total derived variants, of which ∼12,000 are likely to have a functional effect (∼5000 coding and ∼7000 non-coding). We also found that the rates of functional genotypes per the total number of genotypes in individual whole genomes differ dramatically between human populations. We then created tables showing how the use of comparator or reference genome panels comprised of genomes from individuals that do not have the same ancestral background as a patient can negatively impact pathogenic variant identification. Our results have important implications for clinical sequencing initiatives. Frontiers Media S.A. 2012-11-01 /pmc/articles/PMC3485509/ /pubmed/23125845 http://dx.doi.org/10.3389/fgene.2012.00211 Text en Copyright © 2012 Torkamani, Pham, Libiger, Bansal, Zhang, Scott-Van Zeeland, Tewhey, Topol and Schork. http://www.frontiersin.org/licenseagreement This is an open-access article distributed under the terms of the Creative Commons Attribution License, which permits use, distribution and reproduction in other forums, provided the original authors and source are credited and subject to any copyright notices concerning any third-party graphics etc.
spellingShingle Genetics
Torkamani, Ali
Pham, Phillip
Libiger, Ondrej
Bansal, Vikas
Zhang, Guangfa
Scott-Van Zeeland, Ashley A.
Tewhey, Ryan
Topol, Eric J.
Schork, Nicholas J.
Clinical Implications of Human Population Differences in Genome-Wide Rates of Functional Genotypes
title Clinical Implications of Human Population Differences in Genome-Wide Rates of Functional Genotypes
title_full Clinical Implications of Human Population Differences in Genome-Wide Rates of Functional Genotypes
title_fullStr Clinical Implications of Human Population Differences in Genome-Wide Rates of Functional Genotypes
title_full_unstemmed Clinical Implications of Human Population Differences in Genome-Wide Rates of Functional Genotypes
title_short Clinical Implications of Human Population Differences in Genome-Wide Rates of Functional Genotypes
title_sort clinical implications of human population differences in genome-wide rates of functional genotypes
topic Genetics
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3485509/
https://www.ncbi.nlm.nih.gov/pubmed/23125845
http://dx.doi.org/10.3389/fgene.2012.00211
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