A stochastic inference of de novo CNV detection and association test in multiplex schizophrenia families

The copy number variation (CNV) is a type of genetic variation in the genome. It is measured based on signal intensity measures and can be assessed repeatedly to reduce the uncertainty in PCR-based typing. Studies have shown that CNVs may lead to phenotypic variation and modification of disease expr...

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Main Authors: Shi-Heng eWang, Wei J. Chen, Yu-Chin eTsai, Yung-Hsiang eHuang, Hai-Gwo eHwu, Chuhsing Kate eHsiao
Format: Article
Language:English
Published: Frontiers Media S.A. 2013-09-01
Series:Frontiers in Genetics
Subjects:
Online Access:http://journal.frontiersin.org/Journal/10.3389/fgene.2013.00185/full
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spelling doaj-da8d7921963a48d6885d8f7ec5f983292020-11-24T21:30:08ZengFrontiers Media S.A.Frontiers in Genetics1664-80212013-09-01410.3389/fgene.2013.0018551888A stochastic inference of de novo CNV detection and association test in multiplex schizophrenia familiesShi-Heng eWang0Wei J. Chen1Wei J. Chen2Wei J. Chen3Wei J. Chen4Yu-Chin eTsai5Yung-Hsiang eHuang6Hai-Gwo eHwu7Chuhsing Kate eHsiao8Chuhsing Kate eHsiao9Chuhsing Kate eHsiao10National Taiwan UniversityNational Taiwan UniversityNational Taiwan UniversityNational Taiwan UniversityNational Taiwan UniversityNational Taiwan UniversityNational Center for High-Performance Computing, National Applied Research Laboratories, Hsinchu, TaiwanNational Taiwan UniversityNational Taiwan UniversityNational Taiwan UniversityNational Taiwan UniversityThe copy number variation (CNV) is a type of genetic variation in the genome. It is measured based on signal intensity measures and can be assessed repeatedly to reduce the uncertainty in PCR-based typing. Studies have shown that CNVs may lead to phenotypic variation and modification of disease expression. Various challenges exist, however, in the exploration of CNV-disease association. Here we construct latent variables to infer the discrete CNV values and to estimate the probability of mutations. In addition, we propose to pool rare variants to increase the statistical power and we conduct family studies to mitigate the computational burden in determining the composition of CNVs on each chromosome. The aim is to explore in a stochastic sense the association between the collapsing CNV variants and disease status with a Bayesian hierarchical model. This model assigns integers in a probabilistic sense to the quantitatively measured copy numbers, and is able to test simultaneously the association for all variants of interest in a regression framework. This integrative model can account for the uncertainty in copy number assignment and differentiate if the variation was de novo or inherited on the basis of posterior probabilities. For family studies, this model can accommodate the dependence within family members and among repeated CNV data. Moreover, the Mendelian rule can be assumed under this model and yet the genetic variation, including de novo and inherited variation, can still be included and quantified directly for each individual. Finally, simulation studies show that this model has high true positive and low false positive rates in the detection of de novo mutation.http://journal.frontiersin.org/Journal/10.3389/fgene.2013.00185/fullBayesian modelMendelian inconsistencyCNV association testde novo CNV detectionschizophrenia multiplex familyrandom mutation parameter
collection DOAJ
language English
format Article
sources DOAJ
author Shi-Heng eWang
Wei J. Chen
Wei J. Chen
Wei J. Chen
Wei J. Chen
Yu-Chin eTsai
Yung-Hsiang eHuang
Hai-Gwo eHwu
Chuhsing Kate eHsiao
Chuhsing Kate eHsiao
Chuhsing Kate eHsiao
spellingShingle Shi-Heng eWang
Wei J. Chen
Wei J. Chen
Wei J. Chen
Wei J. Chen
Yu-Chin eTsai
Yung-Hsiang eHuang
Hai-Gwo eHwu
Chuhsing Kate eHsiao
Chuhsing Kate eHsiao
Chuhsing Kate eHsiao
A stochastic inference of de novo CNV detection and association test in multiplex schizophrenia families
Frontiers in Genetics
Bayesian model
Mendelian inconsistency
CNV association test
de novo CNV detection
schizophrenia multiplex family
random mutation parameter
author_facet Shi-Heng eWang
Wei J. Chen
Wei J. Chen
Wei J. Chen
Wei J. Chen
Yu-Chin eTsai
Yung-Hsiang eHuang
Hai-Gwo eHwu
Chuhsing Kate eHsiao
Chuhsing Kate eHsiao
Chuhsing Kate eHsiao
author_sort Shi-Heng eWang
title A stochastic inference of de novo CNV detection and association test in multiplex schizophrenia families
title_short A stochastic inference of de novo CNV detection and association test in multiplex schizophrenia families
title_full A stochastic inference of de novo CNV detection and association test in multiplex schizophrenia families
title_fullStr A stochastic inference of de novo CNV detection and association test in multiplex schizophrenia families
title_full_unstemmed A stochastic inference of de novo CNV detection and association test in multiplex schizophrenia families
title_sort stochastic inference of de novo cnv detection and association test in multiplex schizophrenia families
publisher Frontiers Media S.A.
series Frontiers in Genetics
issn 1664-8021
publishDate 2013-09-01
description The copy number variation (CNV) is a type of genetic variation in the genome. It is measured based on signal intensity measures and can be assessed repeatedly to reduce the uncertainty in PCR-based typing. Studies have shown that CNVs may lead to phenotypic variation and modification of disease expression. Various challenges exist, however, in the exploration of CNV-disease association. Here we construct latent variables to infer the discrete CNV values and to estimate the probability of mutations. In addition, we propose to pool rare variants to increase the statistical power and we conduct family studies to mitigate the computational burden in determining the composition of CNVs on each chromosome. The aim is to explore in a stochastic sense the association between the collapsing CNV variants and disease status with a Bayesian hierarchical model. This model assigns integers in a probabilistic sense to the quantitatively measured copy numbers, and is able to test simultaneously the association for all variants of interest in a regression framework. This integrative model can account for the uncertainty in copy number assignment and differentiate if the variation was de novo or inherited on the basis of posterior probabilities. For family studies, this model can accommodate the dependence within family members and among repeated CNV data. Moreover, the Mendelian rule can be assumed under this model and yet the genetic variation, including de novo and inherited variation, can still be included and quantified directly for each individual. Finally, simulation studies show that this model has high true positive and low false positive rates in the detection of de novo mutation.
topic Bayesian model
Mendelian inconsistency
CNV association test
de novo CNV detection
schizophrenia multiplex family
random mutation parameter
url http://journal.frontiersin.org/Journal/10.3389/fgene.2013.00185/full
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