Exploring the genetic patterns of complex diseases via the integrative genome-wide approach
Ben Teng, Can Yang, Jiming Liu, Zhipeng Cai, Xiang Wan

TL;DR
This paper introduces a robust matrix recovery method to identify shared and disease-specific genetic patterns across multiple GWAS datasets, addressing the missing heritability problem in complex diseases.
Contribution
The authors develop a convex matrix recovery approach that effectively uncovers genetic correlations and patterns from summary statistics of large-scale genomic data.
Findings
Successfully reconstructs shared and individual genetic patterns
Outperforms alternative methods in various scenarios
Demonstrates effectiveness on real and synthetic datasets
Abstract
Motivation: Genome-wide association studies (GWASs), which assay more than a million single nucleotide polymorphisms (SNPs) in thousands of individuals, have been widely used to identify genetic risk variants for complex diseases. However, most of the variants that have been identified contribute relatively small increments of risk and only explain a small portion of the genetic variation in complex diseases. This is the so-called missing heritability problem. Evidence has indicated that many complex diseases are genetically related, meaning these diseases share common genetic risk variants. Therefore, exploring the genetic correlations across multiple related studies could be a promising strategy for removing spurious associations and identifying underlying genetic risk variants, and thereby uncovering the mystery of missing heritability in complex diseases. Results: We present a…
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Taxonomy
TopicsGenetic Associations and Epidemiology · Gene expression and cancer classification · Bioinformatics and Genomic Networks
