Pathways-driven Sparse Regression Identifies Pathways and Genes Associated with High-density Lipoprotein Cholesterol in Two Asian Cohorts
M. Silver, P. Chen, L. Ruoying, C.Y. Cheng, T.Y. Wong, E. Tai, Y.Y., Teo, G. Montana

TL;DR
This paper introduces a dual-level sparse regression model that jointly identifies pathways, genes, and SNPs linked to HDL cholesterol levels, improving upon traditional GWAS methods by leveraging functional relationships and multi-SNP modeling.
Contribution
The paper presents a novel joint modeling approach for pathway and SNP analysis in GWAS, accounting for correlations and overlaps, with robust ranking via resampling.
Findings
Identified pathways related to cardiomyopathy, T cell receptor, and PPAR signalling.
Highlighted genes linked to calcium channels, adenylate cyclase, and immune function.
Validated method through simulation and applied it to Asian cohorts.
Abstract
Standard approaches to analysing data in genome-wide association studies (GWAS) ignore any potential functional relationships between genetic markers. In contrast gene pathways analysis uses prior information on functional structure within the genome to identify pathways associated with a trait of interest. In a second step, important single nucleotide polymorphisms (SNPs) or genes may be identified within associated pathways. Most pathways methods begin by testing SNPs one at a time, and so fail to capitalise on the potential advantages inherent in a multi-SNP, joint modelling approach. Here we describe a dual-level, sparse regression model for the simultaneous identification of pathways, genes and SNPs associated with a quantitative trait. Our method takes account of various factors specific to the joint modelling of pathways with genome-wide data, including widespread correlation…
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Taxonomy
TopicsGenetic Associations and Epidemiology · Bioinformatics and Genomic Networks · Peroxisome Proliferator-Activated Receptors
