A computational framework for predicting obesity risk based on optimizing and integrating genetic risk score and gene expression profiles.

Recent large-scale genome-wide association studies have identified tens of genetic loci robustly associated with Body Mass Index (BMI). Gene expression profiles were also found to be associated with BMI. However, accurate prediction of obesity risk utilizing genetic data remains challenging. In a co...

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Main Authors: Paule V Joseph, Yupeng Wang, Nicolaas H Fourie, Wendy A Henderson
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2018-01-01
Series:PLoS ONE
Online Access:http://europepmc.org/articles/PMC5993110?pdf=render
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spelling doaj-24bd8acbdc2a4b3590ef9146174158772020-11-24T22:12:28ZengPublic Library of Science (PLoS)PLoS ONE1932-62032018-01-01135e019784310.1371/journal.pone.0197843A computational framework for predicting obesity risk based on optimizing and integrating genetic risk score and gene expression profiles.Paule V JosephYupeng WangNicolaas H FourieWendy A HendersonRecent large-scale genome-wide association studies have identified tens of genetic loci robustly associated with Body Mass Index (BMI). Gene expression profiles were also found to be associated with BMI. However, accurate prediction of obesity risk utilizing genetic data remains challenging. In a cohort of 75 individuals, we integrated 27 BMI-associated SNPs and obesity-associated gene expression profiles. Genetic risk score was computed by adding BMI-increasing alleles. The genetic risk score was significantly correlated with BMI when an optimization algorithm was used that excluded some SNPs. Linear regression and support vector machine models were built to predict obesity risk using gene expression profiles and the genetic risk score. An adjusted R2 of 0.556 and accuracy of 76% was achieved for the linear regression and support vector machine models, respectively. In this paper, we report a new mathematical method to predict obesity genetic risk. We constructed obesity prediction models based on genetic information for a small cohort. Our computational framework serves as an example for using genetic information to predict obesity risk for specific cohorts.http://europepmc.org/articles/PMC5993110?pdf=render
collection DOAJ
language English
format Article
sources DOAJ
author Paule V Joseph
Yupeng Wang
Nicolaas H Fourie
Wendy A Henderson
spellingShingle Paule V Joseph
Yupeng Wang
Nicolaas H Fourie
Wendy A Henderson
A computational framework for predicting obesity risk based on optimizing and integrating genetic risk score and gene expression profiles.
PLoS ONE
author_facet Paule V Joseph
Yupeng Wang
Nicolaas H Fourie
Wendy A Henderson
author_sort Paule V Joseph
title A computational framework for predicting obesity risk based on optimizing and integrating genetic risk score and gene expression profiles.
title_short A computational framework for predicting obesity risk based on optimizing and integrating genetic risk score and gene expression profiles.
title_full A computational framework for predicting obesity risk based on optimizing and integrating genetic risk score and gene expression profiles.
title_fullStr A computational framework for predicting obesity risk based on optimizing and integrating genetic risk score and gene expression profiles.
title_full_unstemmed A computational framework for predicting obesity risk based on optimizing and integrating genetic risk score and gene expression profiles.
title_sort computational framework for predicting obesity risk based on optimizing and integrating genetic risk score and gene expression profiles.
publisher Public Library of Science (PLoS)
series PLoS ONE
issn 1932-6203
publishDate 2018-01-01
description Recent large-scale genome-wide association studies have identified tens of genetic loci robustly associated with Body Mass Index (BMI). Gene expression profiles were also found to be associated with BMI. However, accurate prediction of obesity risk utilizing genetic data remains challenging. In a cohort of 75 individuals, we integrated 27 BMI-associated SNPs and obesity-associated gene expression profiles. Genetic risk score was computed by adding BMI-increasing alleles. The genetic risk score was significantly correlated with BMI when an optimization algorithm was used that excluded some SNPs. Linear regression and support vector machine models were built to predict obesity risk using gene expression profiles and the genetic risk score. An adjusted R2 of 0.556 and accuracy of 76% was achieved for the linear regression and support vector machine models, respectively. In this paper, we report a new mathematical method to predict obesity genetic risk. We constructed obesity prediction models based on genetic information for a small cohort. Our computational framework serves as an example for using genetic information to predict obesity risk for specific cohorts.
url http://europepmc.org/articles/PMC5993110?pdf=render
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