Genetic analysis of low BMI phenotype in the Utah Population Database.

The low body mass index (BMI) phenotype of less than 18.5 has been linked to medical and psychological morbidity as well as increased mortality risk. Although genetic factors have been shown to influence BMI across the entire BMI, the contribution of genetic factors to the low BMI phenotype is uncle...

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Main Authors: William R Yates, Craig Johnson, Patrick McKee, Lisa A Cannon-Albright
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2013-01-01
Series:PLoS ONE
Online Access:http://europepmc.org/articles/PMC3859471?pdf=render
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spelling doaj-d0d349e73cbb4aa6a67bb3a1bc11c7e62020-11-25T02:32:13ZengPublic Library of Science (PLoS)PLoS ONE1932-62032013-01-01812e8028710.1371/journal.pone.0080287Genetic analysis of low BMI phenotype in the Utah Population Database.William R YatesCraig JohnsonPatrick McKeeLisa A Cannon-AlbrightThe low body mass index (BMI) phenotype of less than 18.5 has been linked to medical and psychological morbidity as well as increased mortality risk. Although genetic factors have been shown to influence BMI across the entire BMI, the contribution of genetic factors to the low BMI phenotype is unclear. We hypothesized genetic factors would contribute to risk of a low BMI phenotype. To test this hypothesis, we conducted a genealogy data analysis using height and weight measurements from driver's license data from the Utah Population Data Base. The Genealogical Index of Familiality (GIF) test and relative risk in relatives were used to examine evidence for excess relatedness among individuals with the low BMI phenotype. The overall GIF test for excess relatedness in the low BMI phenotype showed a significant excess over expected (GIF 4.47 for all cases versus 4.10 for controls, overall empirical p-value<0.001). The significant excess relatedness was still observed when close relationships were ignored, supporting a specific genetic contribution rather than only a family environmental effect. This study supports a specific genetic contribution in the risk for the low BMI phenotype. Better understanding of the genetic contribution to low BMI holds promise for weight regulation and potentially for novel strategies in the treatment of leanness and obesity.http://europepmc.org/articles/PMC3859471?pdf=render
collection DOAJ
language English
format Article
sources DOAJ
author William R Yates
Craig Johnson
Patrick McKee
Lisa A Cannon-Albright
spellingShingle William R Yates
Craig Johnson
Patrick McKee
Lisa A Cannon-Albright
Genetic analysis of low BMI phenotype in the Utah Population Database.
PLoS ONE
author_facet William R Yates
Craig Johnson
Patrick McKee
Lisa A Cannon-Albright
author_sort William R Yates
title Genetic analysis of low BMI phenotype in the Utah Population Database.
title_short Genetic analysis of low BMI phenotype in the Utah Population Database.
title_full Genetic analysis of low BMI phenotype in the Utah Population Database.
title_fullStr Genetic analysis of low BMI phenotype in the Utah Population Database.
title_full_unstemmed Genetic analysis of low BMI phenotype in the Utah Population Database.
title_sort genetic analysis of low bmi phenotype in the utah population database.
publisher Public Library of Science (PLoS)
series PLoS ONE
issn 1932-6203
publishDate 2013-01-01
description The low body mass index (BMI) phenotype of less than 18.5 has been linked to medical and psychological morbidity as well as increased mortality risk. Although genetic factors have been shown to influence BMI across the entire BMI, the contribution of genetic factors to the low BMI phenotype is unclear. We hypothesized genetic factors would contribute to risk of a low BMI phenotype. To test this hypothesis, we conducted a genealogy data analysis using height and weight measurements from driver's license data from the Utah Population Data Base. The Genealogical Index of Familiality (GIF) test and relative risk in relatives were used to examine evidence for excess relatedness among individuals with the low BMI phenotype. The overall GIF test for excess relatedness in the low BMI phenotype showed a significant excess over expected (GIF 4.47 for all cases versus 4.10 for controls, overall empirical p-value<0.001). The significant excess relatedness was still observed when close relationships were ignored, supporting a specific genetic contribution rather than only a family environmental effect. This study supports a specific genetic contribution in the risk for the low BMI phenotype. Better understanding of the genetic contribution to low BMI holds promise for weight regulation and potentially for novel strategies in the treatment of leanness and obesity.
url http://europepmc.org/articles/PMC3859471?pdf=render
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AT lisaacannonalbright geneticanalysisoflowbmiphenotypeintheutahpopulationdatabase
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