Discovery of shared genomic loci using the conditional false discovery rate approach

被引:0
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作者
Olav B. Smeland
Oleksandr Frei
Alexey Shadrin
Kevin O’Connell
Chun-Chieh Fan
Shahram Bahrami
Dominic Holland
Srdjan Djurovic
Wesley K. Thompson
Anders M. Dale
Ole A. Andreassen
机构
[1] University of Oslo,NORMENT Centre, Division of Mental Health and Addiction, Oslo University Hospital and Institute of Clinical Medicine
[2] University of California San Diego,Department of Cognitive Science
[3] University of California of San Diego,Department of Radiology
[4] University of California San Diego,Department of Family Medicine and Public Health
[5] University of California San Diego,Department of Neuroscience
[6] University of California San Diego,Center for Multimodal Imaging and Genetics
[7] Oslo University Hospital,Department of Medical Genetics
[8] University of Bergen,NORMENT Centre, Department of Clinical Science
来源
Human Genetics | 2020年 / 139卷
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摘要
In recent years, genome-wide association study (GWAS) sample sizes have become larger, the statistical power has improved and thousands of trait-associated variants have been uncovered, offering new insights into the genetic etiology of complex human traits and disorders. However, a large fraction of the polygenic architecture underlying most complex phenotypes still remains undetected. We here review the conditional false discovery rate (condFDR) method, a model-free strategy for analysis of GWAS summary data, which has improved yield of existing GWAS and provided novel findings of genetic overlap between a wide range of complex human phenotypes, including psychiatric, cardiovascular, and neurological disorders, as well as psychological and cognitive traits. The condFDR method was inspired by Empirical Bayes approaches and leverages auxiliary genetic information to improve statistical power for discovery of single-nucleotide polymorphisms (SNPs). The cross-trait condFDR strategy analyses separate GWAS data, and leverages overlapping SNP associations, i.e., cross-trait enrichment, to increase discovery of trait-associated SNPs. The extension of the condFDR approach to conjunctional FDR (conjFDR) identifies shared genomic loci between two phenotypes. The conjFDR approach allows for detection of shared genomic associations irrespective of the genetic correlation between the phenotypes, often revealing a mixture of antagonistic and agonistic directional effects among the shared loci. This review provides a methodological comparison between condFDR and other relevant cross-trait analytical tools and demonstrates how condFDR analysis may provide novel insights into the genetic relationship between complex phenotypes.
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页码:85 / 94
页数:9
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