Gene prioritization for imaging genetics studies using Gene Ontology and a stratified False Discovery Rate approach

Imaging genetics is an emerging field in which the association between genes and neuroimaging-based quantitative phenotypes are used to explore the functional role of genes in neuroanatomy and neurophysiology in the context of healthy function and neuropsychiatric disorders. The main obstacle for re...

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Main Authors: Sejal ePatel, Min Tae Matt Park, Mallar eChakravarty, Jo eKnight
Format: Article
Language:English
Published: Frontiers Media S.A. 2016-04-01
Series:Frontiers in Neuroinformatics
Subjects:
Online Access:http://journal.frontiersin.org/Journal/10.3389/fninf.2016.00014/full
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spelling doaj-60d4a8efb25d4f3d9bee120ed583f9392020-11-24T23:57:33ZengFrontiers Media S.A.Frontiers in Neuroinformatics1662-51962016-04-011010.3389/fninf.2016.00014137043Gene prioritization for imaging genetics studies using Gene Ontology and a stratified False Discovery Rate approachSejal ePatel0Sejal ePatel1Min Tae Matt Park2Min Tae Matt Park3Mallar eChakravarty4Mallar eChakravarty5Jo eKnight6Jo eKnight7Jo eKnight8Jo eKnight9Centre for Addiction and Mental HealthUniversity of TorontoDouglas Mental Health University Institute, McGill UniversityWestern UniversityDouglas Mental Health University Institute, McGill UniversityMcGill UniversityCentre for Addiction and Mental HealthUniversity of TorontoUniversity of TorontoUniversity of TorontoImaging genetics is an emerging field in which the association between genes and neuroimaging-based quantitative phenotypes are used to explore the functional role of genes in neuroanatomy and neurophysiology in the context of healthy function and neuropsychiatric disorders. The main obstacle for researchers in the field is the high dimensionality of the data in both the imaging phenotypes and the genetic variants commonly typed. In this article, we develop a novel method that utilizes Gene Ontology, an online database, to select and prioritize certain genes, employing a stratified false discovery rate (sFDR) approach to investigate their associations with imaging phenotypes. sFDR has the potential to increase power in genome wide association studies (GWAS), and is quickly gaining traction as a method for multiple testing correction. Our novel approach addresses both the pressing need in genetic research to move beyond candidate gene studies, while not being overburdened with a loss of power due to multiple testing. As an example of our methodology, we perform a GWAS of hippocampal volume using both the Enhancing NeuroImaging Genetics through Meta-Analysis (ENIGMA2) and the Alzheimer’s Disease Neuroimaging Initiative datasets. The analysis of ENIGMA2 data yielded a set of SNPs with sFDR values between 10 to 20%. Our approach demonstrates a potential method to prioritize genes based on biological systems impaired in a disease.http://journal.frontiersin.org/Journal/10.3389/fninf.2016.00014/fullimaging geneticsgenome wide association studyAlzheimer’s disease (AD)magnetic resonance imaging (MRI)stratified false discovery rateGene Ontology network
collection DOAJ
language English
format Article
sources DOAJ
author Sejal ePatel
Sejal ePatel
Min Tae Matt Park
Min Tae Matt Park
Mallar eChakravarty
Mallar eChakravarty
Jo eKnight
Jo eKnight
Jo eKnight
Jo eKnight
spellingShingle Sejal ePatel
Sejal ePatel
Min Tae Matt Park
Min Tae Matt Park
Mallar eChakravarty
Mallar eChakravarty
Jo eKnight
Jo eKnight
Jo eKnight
Jo eKnight
Gene prioritization for imaging genetics studies using Gene Ontology and a stratified False Discovery Rate approach
Frontiers in Neuroinformatics
imaging genetics
genome wide association study
Alzheimer’s disease (AD)
magnetic resonance imaging (MRI)
stratified false discovery rate
Gene Ontology network
author_facet Sejal ePatel
Sejal ePatel
Min Tae Matt Park
Min Tae Matt Park
Mallar eChakravarty
Mallar eChakravarty
Jo eKnight
Jo eKnight
Jo eKnight
Jo eKnight
author_sort Sejal ePatel
title Gene prioritization for imaging genetics studies using Gene Ontology and a stratified False Discovery Rate approach
title_short Gene prioritization for imaging genetics studies using Gene Ontology and a stratified False Discovery Rate approach
title_full Gene prioritization for imaging genetics studies using Gene Ontology and a stratified False Discovery Rate approach
title_fullStr Gene prioritization for imaging genetics studies using Gene Ontology and a stratified False Discovery Rate approach
title_full_unstemmed Gene prioritization for imaging genetics studies using Gene Ontology and a stratified False Discovery Rate approach
title_sort gene prioritization for imaging genetics studies using gene ontology and a stratified false discovery rate approach
publisher Frontiers Media S.A.
series Frontiers in Neuroinformatics
issn 1662-5196
publishDate 2016-04-01
description Imaging genetics is an emerging field in which the association between genes and neuroimaging-based quantitative phenotypes are used to explore the functional role of genes in neuroanatomy and neurophysiology in the context of healthy function and neuropsychiatric disorders. The main obstacle for researchers in the field is the high dimensionality of the data in both the imaging phenotypes and the genetic variants commonly typed. In this article, we develop a novel method that utilizes Gene Ontology, an online database, to select and prioritize certain genes, employing a stratified false discovery rate (sFDR) approach to investigate their associations with imaging phenotypes. sFDR has the potential to increase power in genome wide association studies (GWAS), and is quickly gaining traction as a method for multiple testing correction. Our novel approach addresses both the pressing need in genetic research to move beyond candidate gene studies, while not being overburdened with a loss of power due to multiple testing. As an example of our methodology, we perform a GWAS of hippocampal volume using both the Enhancing NeuroImaging Genetics through Meta-Analysis (ENIGMA2) and the Alzheimer’s Disease Neuroimaging Initiative datasets. The analysis of ENIGMA2 data yielded a set of SNPs with sFDR values between 10 to 20%. Our approach demonstrates a potential method to prioritize genes based on biological systems impaired in a disease.
topic imaging genetics
genome wide association study
Alzheimer’s disease (AD)
magnetic resonance imaging (MRI)
stratified false discovery rate
Gene Ontology network
url http://journal.frontiersin.org/Journal/10.3389/fninf.2016.00014/full
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