Detecting genetic association of common human facial morphological variation using high density 3D image registration.

Human facial morphology is a combination of many complex traits. Little is known about the genetic basis of common facial morphological variation. Existing association studies have largely used simple landmark-distances as surrogates for the complex morphological phenotypes of the face. However, thi...

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Main Authors: Shouneng Peng, Jingze Tan, Sile Hu, Hang Zhou, Jing Guo, Li Jin, Kun Tang
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2013-01-01
Series:PLoS Computational Biology
Online Access:http://europepmc.org/articles/PMC3854494?pdf=render
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spelling doaj-c94791423c6d42a39d7904941cac60722020-11-25T01:53:28ZengPublic Library of Science (PLoS)PLoS Computational Biology1553-734X1553-73582013-01-01912e100337510.1371/journal.pcbi.1003375Detecting genetic association of common human facial morphological variation using high density 3D image registration.Shouneng PengJingze TanSile HuHang ZhouJing GuoLi JinKun TangHuman facial morphology is a combination of many complex traits. Little is known about the genetic basis of common facial morphological variation. Existing association studies have largely used simple landmark-distances as surrogates for the complex morphological phenotypes of the face. However, this can result in decreased statistical power and unclear inference of shape changes. In this study, we applied a new image registration approach that automatically identified the salient landmarks and aligned the sample faces using high density pixel points. Based on this high density registration, three different phenotype data schemes were used to test the association between the common facial morphological variation and 10 candidate SNPs, and their performances were compared. The first scheme used traditional landmark-distances; the second relied on the geometric analysis of 15 landmarks and the third used geometric analysis of a dense registration of ∼30,000 3D points. We found that the two geometric approaches were highly consistent in their detection of morphological changes. The geometric method using dense registration further demonstrated superiority in the fine inference of shape changes and 3D face modeling. Several candidate SNPs showed potential associations with different facial features. In particular, one SNP, a known risk factor of non-syndromic cleft lips/palates, rs642961 in the IRF6 gene, was validated to strongly predict normal lip shape variation in female Han Chinese. This study further demonstrated that dense face registration may substantially improve the detection and characterization of genetic association in common facial variation.http://europepmc.org/articles/PMC3854494?pdf=render
collection DOAJ
language English
format Article
sources DOAJ
author Shouneng Peng
Jingze Tan
Sile Hu
Hang Zhou
Jing Guo
Li Jin
Kun Tang
spellingShingle Shouneng Peng
Jingze Tan
Sile Hu
Hang Zhou
Jing Guo
Li Jin
Kun Tang
Detecting genetic association of common human facial morphological variation using high density 3D image registration.
PLoS Computational Biology
author_facet Shouneng Peng
Jingze Tan
Sile Hu
Hang Zhou
Jing Guo
Li Jin
Kun Tang
author_sort Shouneng Peng
title Detecting genetic association of common human facial morphological variation using high density 3D image registration.
title_short Detecting genetic association of common human facial morphological variation using high density 3D image registration.
title_full Detecting genetic association of common human facial morphological variation using high density 3D image registration.
title_fullStr Detecting genetic association of common human facial morphological variation using high density 3D image registration.
title_full_unstemmed Detecting genetic association of common human facial morphological variation using high density 3D image registration.
title_sort detecting genetic association of common human facial morphological variation using high density 3d image registration.
publisher Public Library of Science (PLoS)
series PLoS Computational Biology
issn 1553-734X
1553-7358
publishDate 2013-01-01
description Human facial morphology is a combination of many complex traits. Little is known about the genetic basis of common facial morphological variation. Existing association studies have largely used simple landmark-distances as surrogates for the complex morphological phenotypes of the face. However, this can result in decreased statistical power and unclear inference of shape changes. In this study, we applied a new image registration approach that automatically identified the salient landmarks and aligned the sample faces using high density pixel points. Based on this high density registration, three different phenotype data schemes were used to test the association between the common facial morphological variation and 10 candidate SNPs, and their performances were compared. The first scheme used traditional landmark-distances; the second relied on the geometric analysis of 15 landmarks and the third used geometric analysis of a dense registration of ∼30,000 3D points. We found that the two geometric approaches were highly consistent in their detection of morphological changes. The geometric method using dense registration further demonstrated superiority in the fine inference of shape changes and 3D face modeling. Several candidate SNPs showed potential associations with different facial features. In particular, one SNP, a known risk factor of non-syndromic cleft lips/palates, rs642961 in the IRF6 gene, was validated to strongly predict normal lip shape variation in female Han Chinese. This study further demonstrated that dense face registration may substantially improve the detection and characterization of genetic association in common facial variation.
url http://europepmc.org/articles/PMC3854494?pdf=render
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