1 FSTL4 and SEMA5A are associated with alcohol dependence: meta- analysis of two genome-wide association studies Kesheng Wang, PhD Department of Biostatistics.

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Presentation transcript:

1 FSTL4 and SEMA5A are associated with alcohol dependence: meta- analysis of two genome-wide association studies Kesheng Wang, PhD Department of Biostatistics and Epidemiology College of Public Health East Tennessee State University

2 Outline Introduction  Alcohol dependence (AD)  Genetic study Subjects and Methods  Design, genotyping and statistics Results Conclusions

What is Alcohol Dependence (AD)? Alcoholism, also known as alcohol dependence (AD), is a disease that includes the following four symptoms: Craving--A strong need, or urge, to drink. Loss of control--Not being able to stop drinking once drinking has begun. Physical dependence--Withdrawal symptoms, such as nausea, sweating, shakiness, and anxiety after stopping drinking. Tolerance--The need to drink greater amounts of alcohol to get "high." 3

Is There a Genetic Influence of AD? Family, twin, and adoption studies have demonstrated that genes play a major role in the development of alcohol dependence (Heath, 1995). Heritability estimates range from 50% to 60% for both men and women (Prescott et al., 1999 ). 4 In genetics, Heritability is the proportion of phenotypic variation in a population that is attributable to genetic variation among individuals.genetics phenotypic variationgenetic variation

Genome-wide Association Studies (GWAS) and International HapMap Project The prospect of GWAS was firstly proposed in 1996 (Risch & Merikangas, Science 1996) GWAS will involve screening a subset of common genetic variation in human genome on large samples (300K-500K genetic markers) The advances of human genome project (sequence project completed in 2000) and especially International HapMap Project (in 2005, 2007 and 2009) made these studies possible. 5

6 PHASE I – more than 1M common SNPs were typed (inter-marker spacing 5kb) (2005) PHASE II – more than 3M common SNPs were typed (2007) PHASE III – data released (2009) Totally, about 6,000,000 common SNPs (Minor Allele Frequency >5%) in human genome

What is a SNP? 7 A single-nucleotide polymorphism (SNP) is a DNA sequence variation occurring when a single nucleotide — A, T, C, or G — in the genome differs between members of a species.DNA sequencenucleotideA TCGgenome e.g., Two DNA fragments from 2 individuals, AAGCCTA to AAGCTTA, contain a difference in a single nucleotide. We say there are two alleles : C & T.alleles One SNP has two alleles (e.g., A and a or 1 and 2) and 3 genotypes (AA, Aa and aa or 11, 12 and 22)

Genome-Wide Association Studies in AD Recently, several GWAS in AD have been conducted to identify common genetic variants which affect risk of AD 1. German male sample (Treutlein et al., 2009). 2. SAGE sample (Bierut et al. 2010) 3. COGA sample (Edenberg et al. 2010) 8

Motivation of This Study The GWAS is a powerful tool for unlocking the genetic basis of complex diseases such as AD. Hypothesis – free (search the entire genome for associations rather than candidate areas). A powerful tool to identify disease-related genes for many complex human disorders However, few genetic loci were replicated in different studies. No meta-analysis of GWAS. Objective: To conduct meta-analysis of two genome-wide association datasets to search for novel genetic variants associated with risk of AD 9

Subjects and Methods COGA data includes 734 AD patients and 440 controls. 1M SNPs For AD, we define 2 as affected, 1 as unaffected. SAGE data includes 637 AD patients and 1033 controls. 1M SNPs Australian Twin-Family Study of Alcohol Use Disorder dataset with 778 families. 370K SNPs Each SNP has two alleles (1 and 2). Genotypes for each SNP were coded as 1/1, 1/2 and 2/2 10

11 The Principle of Association for Binary Trait (AD) In a population, for one SNP: 3 type genotypes, AA, Aa and aa. Chi-square test based on 2 x 3 table Simple logistic model Multiple logistic model

PLINK software – GWAS analysis Logistic model in PLINK - Odds ratio (OR) and SE (Standard error of OR) and P-values. Meta-analysis: Fixed-effects meta-regression model in PLINK P - Fixed-effects meta-analysis p-value OR - Fixed-effects odds ratio (OR) Q - p-value for Cochrane's Q statistic  Q statistics is a method widely utilized to test the assumption that all studies share a common population effect size is the homogeneity test. 12

Results of AD We identified 81 SNPs associated with AD (p < ) Top 3 genes associated wit AD  rs (p=3.86x10 -6, Q=0.72) at 5p15.2 within SEMA5A gene  rs (p=7.63x10 -6, Q=0.97) at 5q31.1 within FSTL4  PKNOX2 at 11q24.3 with alcohol dependence (the top SNP is rs with p = 8.36x10 -6, Q=0.61). 13

Replication Study Top SNPs for three genes in Twin family study rs with p= 0.014, SEMA5A rs with p=0.0066, FSTL4 rs with p=0.0023, PKNOX2 14

Conclusions and Discussion Identified 3 loci using meta-analysis Replicated associations in additional family-based association study SEMA5A is previously associated with Parkinson disease and autism FSTL4 is previously associated with stroke and linked to schizophrenia. PNOKX2 is previously associated with AD. 15

Importance of Genetic Effects for Clinical Practice Increasingly medical interventions target specific genes –Differential treatment effects –More effective medications, less severe side effect profile Prevention and early detection –Early screening and population screening Gene and environment interplay - gender difference - race difference 16

17 Take Home Messages AD is genetically controlled Genetic findings open valuable possibilities for the future of medicine –Greater understanding of biologic pathways –Prediction of the risk –Prevention of the diseases –Development of new treatment

18 Acknowledgement Dr. Xuefeng Liu (Department of Biostatistics and Epidemiology) Dr. Qunyuan Zhang (Washington University School of Medicine, St. Louis) Yue Pan (Ms Student) Nagesh Aragam (DrPH student) Min Zeng (Visiting scholar) Kesheng Wang