학술논문

Transethnic Genetic-Correlation Estimates from Summary Statistics
Document Type
article
Source
American Journal of Human Genetics. 99(1)
Subject
Epidemiology
Biological Sciences
Health Sciences
Genetics
Autoimmune Disease
Human Genome
Bioengineering
Arthritis
Diabetes
Generic health relevance
Arthritis
Rheumatoid
Body Height
Body Mass Index
Diabetes Mellitus
Type 2
Ethnicity
Genome-Wide Association Study
Genotype
Humans
Likelihood Functions
Models
Genetic
Phenotype
Polymorphism
Single Nucleotide
Sample Size
Software
Asian Genetic Epidemiology Network Type 2 Diabetes Consortium
Medical and Health Sciences
Genetics & Heredity
Biological sciences
Biomedical and clinical sciences
Health sciences
Language
Abstract
The increasing number of genetic association studies conducted in multiple populations provides an unprecedented opportunity to study how the genetic architecture of complex phenotypes varies between populations, a problem important for both medical and population genetics. Here, we have developed a method for estimating the transethnic genetic correlation: the correlation of causal-variant effect sizes at SNPs common in populations. This methods takes advantage of the entire spectrum of SNP associations and uses only summary-level data from genome-wide association studies. This avoids the computational costs and privacy concerns associated with genotype-level information while remaining scalable to hundreds of thousands of individuals and millions of SNPs. We applied our method to data on gene expression, rheumatoid arthritis, and type 2 diabetes and overwhelmingly found that the genetic correlation was significantly less than 1. Our method is implemented in a Python package called Popcorn.