Cargando…

Defining genetic determinants of the Metabolic Syndrome in the Framingham Heart Study using association and structural equation modeling methods

The Metabolic Syndrome (MetSyn), which is a clustering of traits including insulin resistance, obesity, hypertension and dyslipidemia, is estimated to have a substantial genetic component, yet few specific genetic targets have been identified. Factor analysis, a sub-type of structural equation model...

Descripción completa

Detalles Bibliográficos
Autores principales: Nock, Nora L, Wang, Xuefeng, Thompson, Cheryl L, Song, Yeunjoo, Baechle, Dan, Raska, Paola, Stein, Catherine M, Gray-McGuire, Courtney
Formato: Texto
Lenguaje:English
Publicado: BioMed Central 2009
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC2795950/
https://www.ncbi.nlm.nih.gov/pubmed/20018043
_version_ 1782175477645967360
author Nock, Nora L
Wang, Xuefeng
Thompson, Cheryl L
Song, Yeunjoo
Baechle, Dan
Raska, Paola
Stein, Catherine M
Gray-McGuire, Courtney
author_facet Nock, Nora L
Wang, Xuefeng
Thompson, Cheryl L
Song, Yeunjoo
Baechle, Dan
Raska, Paola
Stein, Catherine M
Gray-McGuire, Courtney
author_sort Nock, Nora L
collection PubMed
description The Metabolic Syndrome (MetSyn), which is a clustering of traits including insulin resistance, obesity, hypertension and dyslipidemia, is estimated to have a substantial genetic component, yet few specific genetic targets have been identified. Factor analysis, a sub-type of structural equation modeling (SEM), has been used to model the complex relationships in MetSyn. Therefore, we aimed to define the genetic determinants of MetSyn in the Framingham Heart Study (Offspring Cohort, Exam 7) using the Affymetrix 50 k Human Gene Panel and three different approaches: 1) an association-based "one-SNP-at-a-time" analysis with MetSyn as a binary trait using the World Health Organization criteria; 2) an association-based "one-SNP-at-a-time" analysis with MetSyn as a continuous trait using second-order factor scores derived from four first-order factors; and, 3) a multivariate SEM analysis with MetSyn as a continuous, second-order factor modeled with multiple putative genes, which were represented by latent constructs defined using multiple SNPs in each gene. Results were similar between approaches in that CSMD1 SNPs were associated with MetSyn in Approaches 1 and 2; however, the effects of CSMD1 diminished in Approach 3 when modeled simultaneously with six other genes, most notably CETP and STARD13, which were strongly associated with the Lipids and MetSyn factors, respectively. We conclude that modeling multiple genes as latent constructs on first-order trait factors, most proximal to the gene's function with limited paths directly from genes to the second-order MetSyn factor, using SEM is the most viable approach toward understanding overall gene variation effects in the presence of multiple putative SNPs.
format Text
id pubmed-2795950
institution National Center for Biotechnology Information
language English
publishDate 2009
publisher BioMed Central
record_format MEDLINE/PubMed
spelling pubmed-27959502009-12-18 Defining genetic determinants of the Metabolic Syndrome in the Framingham Heart Study using association and structural equation modeling methods Nock, Nora L Wang, Xuefeng Thompson, Cheryl L Song, Yeunjoo Baechle, Dan Raska, Paola Stein, Catherine M Gray-McGuire, Courtney BMC Proc Proceedings The Metabolic Syndrome (MetSyn), which is a clustering of traits including insulin resistance, obesity, hypertension and dyslipidemia, is estimated to have a substantial genetic component, yet few specific genetic targets have been identified. Factor analysis, a sub-type of structural equation modeling (SEM), has been used to model the complex relationships in MetSyn. Therefore, we aimed to define the genetic determinants of MetSyn in the Framingham Heart Study (Offspring Cohort, Exam 7) using the Affymetrix 50 k Human Gene Panel and three different approaches: 1) an association-based "one-SNP-at-a-time" analysis with MetSyn as a binary trait using the World Health Organization criteria; 2) an association-based "one-SNP-at-a-time" analysis with MetSyn as a continuous trait using second-order factor scores derived from four first-order factors; and, 3) a multivariate SEM analysis with MetSyn as a continuous, second-order factor modeled with multiple putative genes, which were represented by latent constructs defined using multiple SNPs in each gene. Results were similar between approaches in that CSMD1 SNPs were associated with MetSyn in Approaches 1 and 2; however, the effects of CSMD1 diminished in Approach 3 when modeled simultaneously with six other genes, most notably CETP and STARD13, which were strongly associated with the Lipids and MetSyn factors, respectively. We conclude that modeling multiple genes as latent constructs on first-order trait factors, most proximal to the gene's function with limited paths directly from genes to the second-order MetSyn factor, using SEM is the most viable approach toward understanding overall gene variation effects in the presence of multiple putative SNPs. BioMed Central 2009-12-15 /pmc/articles/PMC2795950/ /pubmed/20018043 Text en Copyright ©2009 Nock et al; licensee BioMed Central Ltd. http://creativecommons.org/licenses/by/2.0 This is an open access article distributed under the terms of the Creative Commons Attribution License (http://creativecommons.org/licenses/by/2.0), which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited.
spellingShingle Proceedings
Nock, Nora L
Wang, Xuefeng
Thompson, Cheryl L
Song, Yeunjoo
Baechle, Dan
Raska, Paola
Stein, Catherine M
Gray-McGuire, Courtney
Defining genetic determinants of the Metabolic Syndrome in the Framingham Heart Study using association and structural equation modeling methods
title Defining genetic determinants of the Metabolic Syndrome in the Framingham Heart Study using association and structural equation modeling methods
title_full Defining genetic determinants of the Metabolic Syndrome in the Framingham Heart Study using association and structural equation modeling methods
title_fullStr Defining genetic determinants of the Metabolic Syndrome in the Framingham Heart Study using association and structural equation modeling methods
title_full_unstemmed Defining genetic determinants of the Metabolic Syndrome in the Framingham Heart Study using association and structural equation modeling methods
title_short Defining genetic determinants of the Metabolic Syndrome in the Framingham Heart Study using association and structural equation modeling methods
title_sort defining genetic determinants of the metabolic syndrome in the framingham heart study using association and structural equation modeling methods
topic Proceedings
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC2795950/
https://www.ncbi.nlm.nih.gov/pubmed/20018043
work_keys_str_mv AT nocknoral defininggeneticdeterminantsofthemetabolicsyndromeintheframinghamheartstudyusingassociationandstructuralequationmodelingmethods
AT wangxuefeng defininggeneticdeterminantsofthemetabolicsyndromeintheframinghamheartstudyusingassociationandstructuralequationmodelingmethods
AT thompsoncheryll defininggeneticdeterminantsofthemetabolicsyndromeintheframinghamheartstudyusingassociationandstructuralequationmodelingmethods
AT songyeunjoo defininggeneticdeterminantsofthemetabolicsyndromeintheframinghamheartstudyusingassociationandstructuralequationmodelingmethods
AT baechledan defininggeneticdeterminantsofthemetabolicsyndromeintheframinghamheartstudyusingassociationandstructuralequationmodelingmethods
AT raskapaola defininggeneticdeterminantsofthemetabolicsyndromeintheframinghamheartstudyusingassociationandstructuralequationmodelingmethods
AT steincatherinem defininggeneticdeterminantsofthemetabolicsyndromeintheframinghamheartstudyusingassociationandstructuralequationmodelingmethods
AT graymcguirecourtney defininggeneticdeterminantsofthemetabolicsyndromeintheframinghamheartstudyusingassociationandstructuralequationmodelingmethods