A fast algorithm for detecting gene-gene interactions in genome-wide association studies
Jiahan Li, Wei Zhong, Runze Li, Rongling Wu

TL;DR
This paper introduces a fast, two-stage statistical framework combining sure independence screening and regularization methods to efficiently detect gene-gene interactions in high-dimensional GWAS data, improving identification of genetic effects.
Contribution
It develops a novel two-stage screening and estimation approach that effectively handles the large scale of GWAS data for gene-gene interaction detection.
Findings
TS-SIS is computationally efficient and performs well in simulations.
The framework identified 23 SNPs and 24 interactions related to BMI.
Application to real data demonstrated the method's ability to resolve genetic complexity.
Abstract
With the recent advent of high-throughput genotyping techniques, genetic data for genome-wide association studies (GWAS) have become increasingly available, which entails the development of efficient and effective statistical approaches. Although many such approaches have been developed and used to identify single-nucleotide polymorphisms (SNPs) that are associated with complex traits or diseases, few are able to detect gene-gene interactions among different SNPs. Genetic interactions, also known as epistasis, have been recognized to play a pivotal role in contributing to the genetic variation of phenotypic traits. However, because of an extremely large number of SNP-SNP combinations in GWAS, the model dimensionality can quickly become so overwhelming that no prevailing variable selection methods are capable of handling this problem. In this paper, we present a statistical framework for…
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