Efficient and Accurate Multiple-Phenotype Regression Method for High Dimensional Data Considering Population Structure

Author:

Joo Jong Wha J1,Kang Eun Yong2,Org Elin3,Furlotte Nick2,Parks Brian3,Hormozdiari Farhad2,Lusis Aldons J345,Eskin Eleazar125

Affiliation:

1. Bioinformatics Interdepartmental Ph.D. Program, University of California, Los Angeles, California

2. Computer Science Department, University of California, Los Angeles, California

3. Department of Medicine, University of California, Los Angeles, California

4. Department of Microbiology, Immunology and Molecular Genetics, University of California, Los Angeles, California

5. Department of Human Genetics, University of California, Los Angeles, California 90095

Abstract

Abstract A typical genome-wide association study tests correlation between a single phenotype and each genotype one at a time. However, single-phenotype analysis might miss unmeasured aspects of complex biological networks. Analyzing many phenotypes simultaneously may increase the power to capture these unmeasured aspects and detect more variants. Several multivariate approaches aim to detect variants related to more than one phenotype, but these current approaches do not consider the effects of population structure. As a result, these approaches may result in a significant amount of false positive identifications. Here, we introduce a new methodology, referred to as GAMMA for generalized analysis of molecular variance for mixed-model analysis, which is capable of simultaneously analyzing many phenotypes and correcting for population structure. In a simulated study using data implanted with true genetic effects, GAMMA accurately identifies these true effects without producing false positives induced by population structure. In simulations with this data, GAMMA is an improvement over other methods which either fail to detect true effects or produce many false positive identifications. We further apply our method to genetic studies of yeast and gut microbiome from mice and show that GAMMA identifies several variants that are likely to have true biological mechanisms.

Publisher

Oxford University Press (OUP)

Subject

Genetics

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