AI Article Synopsis

  • Current genome-wide association studies (GWAS) generally focus on single diseases, but many individuals experience multiple comorbid conditions, prompting the need for more complex study designs.
  • The researchers created a new statistical framework called CombGWAS to analyze genetic susceptibility for comorbid disorders using existing GWAS data, allowing for the investigation of multiple traits simultaneously.
  • Their findings revealed numerous genetic risk loci associated with both comorbidities and disease subtypes, indicating that some conditions may have distinct biological characteristics and differing causal relationships to health complications.

Article Abstract

Motivation: Currently, most genome-wide association studies (GWAS) are studies of a single disease against controls. However, an individual is often affected by more than one condition. For example, coronary artery disease (CAD) is often comorbid with type 2 diabetes mellitus (T2DM). Similarly, it is clinically meaningful to study patients with one disease but without a related comorbidity. For example, obese T2DM may have different pathophysiology from nonobese T2DM.

Results: We developed a statistical framework (CombGWAS) to uncover susceptibility variants for comorbid disorders (or a disorder without comorbidity), using GWAS summary statistics only. In essence, we mimicked a case-control GWAS in which the cases are affected with comorbidities or a disease without comorbidity. We extended our methodology to analyze continuous traits with clinically meaningful categories (e.g. lipids), and combination of more than two traits. We verified the feasibility and validity of our method by applying it to simulated scenarios and four cardiometabolic (CM) traits. In total, we identified 384 and 587 genomic risk loci respectively for 6 comorbidities and 12 CM disease 'subtypes' without a relevant comorbidity. Genetic correlation analysis revealed that some subtypes may be biologically distinct from others. Further Mendelian randomization analysis showed differential causal effects of different subtypes to relevant complications. For example, we found that obese T2DM is causally related to increased risk of CAD (P = 2.62E-11).

Availability And Implementation: R code is available at: https://github.com/LiangyingYin/CombGWAS.

Supplementary Information: Supplementary data are available at Bioinformatics online.

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Source
http://dx.doi.org/10.1093/bioinformatics/btab417DOI Listing

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