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      A Powerful Approach to Sub-Phenotype Analysis in Population-Based Genetic Association Studies

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          Abstract

          The ultimate goal of genome-wide association (GWA) studies is to identify genetic variants contributing effects to complex phenotypes in order to improve our understanding of the biological architecture underlying the trait. One approach to allow us to meet this challenge is to consider more refined sub-phenotypes of disease, defined by pattern of symptoms, for example, which may be physiologically distinct, and thus may have different underlying genetic causes. The disadvantage of sub-phenotype analysis is that large disease cohorts are sub-divided into smaller case categories, thus reducing power to detect association. To address this issue, we have developed a novel test of association within a multinomial regression modeling framework, allowing for heterogeneity of genetic effects between sub-phenotypes. The modeling framework is extremely flexible, and can be generalized to any number of distinct sub-phenotypes. Simulations demonstrate the power of the multinomial regression-based analysis over existing methods when genetic effects differ between sub-phenotypes, with minimal loss of power when these effects are homogenous for the unified phenotype. Application of the multinomial regression analysis to a genome-wide association study of type 2 diabetes, with cases categorized according to body mass index, highlights previously recognized differential mechanisms underlying obese and non-obese forms of the disease, and provides evidence of a potential novel association that warrants follow-up in independent replication cohorts.

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          R: A Language and Environment for Statistical Computing.

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            Six new loci associated with body mass index highlight a neuronal influence on body weight regulation.

            Common variants at only two loci, FTO and MC4R, have been reproducibly associated with body mass index (BMI) in humans. To identify additional loci, we conducted meta-analysis of 15 genome-wide association studies for BMI (n > 32,000) and followed up top signals in 14 additional cohorts (n > 59,000). We strongly confirm FTO and MC4R and identify six additional loci (P < 5 x 10(-8)): TMEM18, KCTD15, GNPDA2, SH2B1, MTCH2 and NEGR1 (where a 45-kb deletion polymorphism is a candidate causal variant). Several of the likely causal genes are highly expressed or known to act in the central nervous system (CNS), emphasizing, as in rare monogenic forms of obesity, the role of the CNS in predisposition to obesity.
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              Common variation in the FTO gene alters diabetes-related metabolic traits to the extent expected given its effect on BMI.

              Common variation in the FTO gene is associated with BMI and type 2 diabetes. Increased BMI is associated with diabetes risk factors, including raised insulin, glucose, and triglycerides. We aimed to test whether FTO genotype is associated with variation in these metabolic traits. We tested the association between FTO genotype and 10 metabolic traits using data from 17,037 white European individuals. We compared the observed effect of FTO genotype on each trait to that expected given the FTO-BMI and BMI-trait associations. Each copy of the FTO rs9939609 A allele was associated with higher fasting insulin (0.039 SD [95% CI 0.013-0.064]; P = 0.003), glucose (0.024 [0.001-0.048]; P = 0.044), and triglycerides (0.028 [0.003-0.052]; P = 0.025) and lower HDL cholesterol (0.032 [0.008-0.057]; P = 0.009). There was no evidence of these associations when adjusting for BMI. Associations with fasting alanine aminotransferase, gamma-glutamyl-transferase, LDL cholesterol, A1C, and systolic and diastolic blood pressure were in the expected direction but did not reach P 12,000 individuals were needed to detect associations at P < 0.05. Our findings highlight the importance of using appropriately powered studies to assess the effects of a known diabetes or obesity variant on secondary traits correlated with these conditions.
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                Author and article information

                Journal
                Genet Epidemiol
                gepi
                Genetic Epidemiology
                Wiley Subscription Services, Inc., A Wiley Company
                0741-0395
                1098-2272
                May 2010
                28 December 2009
                : 34
                : 4
                : 335-343
                Affiliations
                [1 ]simpleThe Wellcome Trust Centre for Human Genetics, University of Oxford Oxford, United Kingdom
                [2 ]simpleThe Wellcome Trust Sanger Institute Hinxton, Cambridge, United Kingdom
                [3 ]simpleMedical Research Council Centre for Causal Analyses in Transitional Epidemiology, University of Bristol United Kingdom
                [4 ]simpleGenetics of Complex Traits, Institute of Biomedical and Clinical Science, Peninsula Medical School Exeter, United Kingdom
                [5 ]simpleDiabetes Genetics, Institute of Biomedical and Clinical Science, Peninsula Medical School Exeter, United Kingdom
                [6 ]simpleOxford Centre for Diabetes, Endocrinology and Metabolism, University of Oxford Oxford, United Kingdom
                Author notes
                * Correspondence to: Andrew P. Morris, Genetic and Genomic Epidemiology Unit, The Wellcome Trust Centre for Human Genetics, The Henry Wellcome Building, Roosevelt Drive, Oxford OX3 7BN, United Kingdom. E-mail: amorris@ 123456well.ox.ac.uk
                Article
                10.1002/gepi.20486
                2964510
                20039379
                45475e3d-ed05-44ff-b585-ad571acd80c8
                Copyright © 2010 Wiley-Liss, Inc., A Wiley Company

                Re-use of this article is permitted in accordance with the Creative Commons Deed, Attribution 2.5, which does not permit commercial exploitation.

                History
                : 27 July 2009
                : 08 October 2009
                : 10 November 2009
                Categories
                Original Article

                Public health
                sub-phenotype analysis,genome-wide association study,obesity,multinomial regression,type 2 diabetes

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