Efficient estimation of disease odds ratios for follow-up genetic association studies

2017 ◽  
Vol 28 (7) ◽  
pp. 1927-1941
Author(s):  
Jiyuan Hu ◽  
Wei Zhang ◽  
Xinmin Li ◽  
Dongdong Pan ◽  
Qizhai Li

In the past decade, genome-wide association studies have identified thousands of susceptible variants associated with complex human diseases and traits. Conducting follow-up genetic association studies has become a standard approach to validate the findings of genome-wide association studies. One problem of high interest in genetic association studies is to accurately estimate the strength of the association, which is often quantified by odds ratios in case-control studies. However, estimating the association directly by follow-up studies is inefficient since this approach ignores information from the genome-wide association studies. In this article, an estimator called GFcom, which integrates information from genome-wide association studies and follow-up studies, is proposed. The estimator includes both the point estimate and corresponding confidence interval. GFcom is more efficient than competing estimators regarding MSE and the length of confidence intervals. The superiority of GFcom is particularly evident when the genome-wide association study suffers from severe selection bias. Comprehensive simulation studies and applications to three real follow-up studies demonstrate the performance of the proposed estimator. An R package, “GFcom”, implementing our method is publicly available at https://github.com/JiyuanHu/GFcom .

Cells ◽  
2020 ◽  
Vol 9 (10) ◽  
pp. 2267
Author(s):  
Tobias Strunz ◽  
Christina Kiel ◽  
Bastian L. Sauerbeck ◽  
Bernhard H. F. Weber

Over the last 15 years, genome-wide association studies (GWAS) have greatly advanced our understanding of the genetic landscape of complex phenotypes. Nevertheless, causal interpretations of GWAS data are challenging but crucial to understand underlying mechanisms and pathologies. In this review, we explore to what extend the research community follows up on GWAS data. We have traced the scientific activities responding to the two largest GWAS conducted on age-related macular degeneration (AMD) so far. Altogether 703 articles were manually categorized according to their study type. This demonstrates that follow-up studies mainly involve “Review articles” (33%) or “Genetic association studies” (33%), while 19% of publications report on findings from experimental work. It is striking to note that only three of 16 AMD-associated loci described de novo in 2016 were examined in the four-year follow-up period after publication. A comparative analysis of five studies on gene expression regulation in AMD-associated loci revealed consistent gene candidates for 15 of these loci. Our random survey highlights the fact that functional follow-up studies on GWAS results are still in its early stages hampering a significant refinement of the vast association data and thus a more accurate insight into mechanisms and pathways.


Circulation ◽  
2015 ◽  
Vol 131 (suppl_2) ◽  
Author(s):  
Todd A Johnson ◽  
Jer-Yuarn Wu ◽  
Dankyu Yoon ◽  
Akira Hata ◽  
Michiaki Kubo ◽  
...  

Background: Although genome-wide association studies (GWAS) have conclusively identified several susceptibility genes / loci for Kawasaki disease (KD), a large part of the genetic etiology of this disease have not been unraveled and, above all, its marked predilection for East Asian populations have not been explained. Objective: To identify genetic variants commonly associated with KD in the East Asian populations, we conducted a meta-analysis of three GWASes from Japan, Korea and Taiwan. Methods: In the GWAS analyses, we genotyped 6322 subjects (1236 cases and 5086 controls) using either Illumina 550K or Affymetrix SNP 6.0 platforms and then imputed untyped genotypes using Impute2 or minimac software with 1000 Genomes Project’s East Asian population (JPT, CHB and CHS) reference haplotype data. We then performed a meta-analysis using a weighted-average method with inverse-variance weights and selected representative SNPs in 49 top associated loci, which were then genotyped in 4798 independent subjects (2151 cases and 2747 controls). Finally, we combined the data for the three GWASes and follow up studies in a meta-analysis. Results: SNPs within previously identified susceptibility loci showed significant association in the meta-analysis of the GWASes (ITPKC: rs28493229, P = 3.07 x 10-9; CASP3: rs2720377, P = 2.66 x 10-9; BLK: rs2736340, P = 1.23 x 10-16; CD40: rs1883832, P = 1.76 x 10-8; HLA class2: rs189914842, P = 4.57 x 10-11). In a meta-analysis of the three GWASes and follow-up studies, we observed a genome-wide significant level of association at a SNP in a chromosomal region different from the six known loci (P = 6.49 x 10-9). Conclusion: The meta-analysis of three GWAses and follow-up studies successfully identified a new SNP significantly associated with KD. Further investigation of the region where the SNP is located toward specification of the susceptibility gene, the responsible variant, as well as its effect on gene function is warranted. Acknowledgement: T.A.J., J.Y.W. and D.Y. equally contributed to this work and J.K.L., Y.T.C., and Y.O. are co-directing this project.


Brain ◽  
2019 ◽  
Vol 142 (12) ◽  
pp. 3694-3712 ◽  
Author(s):  
Regina H Reynolds ◽  
John Hardy ◽  
Mina Ryten ◽  
Sarah A Gagliano Taliun

How can we best translate the success of genome-wide association studies for neurological and neuropsychiatric diseases into therapeutic targets? Reynolds et al. critically assess existing brain-relevant functional genomic annotations and the tools available for integrating such annotations with summary-level genetic association data.


2020 ◽  
Vol 116 (9) ◽  
pp. 1620-1634
Author(s):  
Charlotte Glinge ◽  
Najim Lahrouchi ◽  
Reza Jabbari ◽  
Jacob Tfelt-Hansen ◽  
Connie R Bezzina

Abstract The genetic basis of cardiac electrical phenotypes has in the last 25 years been the subject of intense investigation. While in the first years, such efforts were dominated by the study of familial arrhythmia syndromes, in recent years, large consortia of investigators have successfully pursued genome-wide association studies (GWAS) for the identification of single-nucleotide polymorphisms that govern inter-individual variability in electrocardiographic parameters in the general population. We here provide a review of GWAS conducted on cardiac electrical phenotypes in the last 14 years and discuss the implications of these discoveries for our understanding of the genetic basis of disease susceptibility and variability in disease severity. Furthermore, we review functional follow-up studies that have been conducted on GWAS loci associated with cardiac electrical phenotypes and highlight the challenges and opportunities offered by such studies.


2010 ◽  
Vol 25 (5) ◽  
pp. 307-309 ◽  
Author(s):  
J. Lasky-Su ◽  
C. Lange

AbstractThe etiology of suicide is complex in nature with both environmental and genetic causes that are extremely diverse. This extensive heterogeneity weakens the relationship between genotype and phenotype and as a result, we face many challenges when studying the genetic etiology of suicide. We are now in the midst of a genetics revolution, where genotyping costs are decreasing and genotyping speed is increasing at a fast rate, allowing genetic association studies to genotype thousands to millions of SNPs that cover the entire human genome. As such, genome-wide association studies (GWAS) are now the norm. In this article we address several statistical challenges that occur when studying the genetic etiology of suicidality in the age of the genetics revolution. These challenges include: (1) the large number of statistical tests; (2) complex phenotypes that are difficult to quantify; and (3) modest genetic effect sizes. We address these statistical issues in the context of family-based study designs. Specifically, we discuss several statistical extensions of family-based association tests (FBATs) that work to alleviate these challenges. As our intention is to describe how statistical methodology may work to identify disease variants for suicidality, we avoid the mathematical details of the methodologies presented.


2015 ◽  
Vol 47 (9) ◽  
pp. 365-375 ◽  
Author(s):  
Patricia B. Munroe ◽  
Andrew Tinker

The study of family pedigrees with rare monogenic cardiovascular disorders has revealed new molecular players in physiological processes. Genome-wide association studies of complex traits with a heritable component may afford a similar and potentially intellectually richer opportunity. In this review we focus on the interpretation of genetic associations and the issue of causality in relation to known and potentially new physiology. We mainly discuss cardiometabolic traits as it reflects our personal interests, but the issues pertain broadly in many other disciplines. We also describe some of the resources that are now available that may expedite follow up of genetic association signals into observations on causal mechanisms and pathophysiology.


2015 ◽  
Vol 134 (8) ◽  
pp. 823-835 ◽  
Author(s):  
Fan Liu ◽  
Mijke Visser ◽  
David L. Duffy ◽  
Pirro G. Hysi ◽  
Leonie C. Jacobs ◽  
...  

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