PLoS ONE (Jan 2024)

Genetic effects and causal association analyses of 14 common conditions/diseases in multimorbidity patterns.

  • Ting Fu,
  • Yi-Qun Yang,
  • Chang-Hua Tang,
  • Pei He,
  • Shu-Feng Lei

DOI
https://doi.org/10.1371/journal.pone.0300740
Journal volume & issue
Vol. 19, no. 5
p. e0300740

Abstract

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BackgroundMultimorbidity has become an important health challenge in the aging population. Accumulated evidence has shown that multimorbidity has complex association patterns, but the further mechanisms underlying the association patterns are largely unknown.MethodsSummary statistics of 14 conditions/diseases were available from the genome-wide association study (GWAS). Linkage disequilibrium score regression analysis (LDSC) was applied to estimate the genetic correlations. Pleiotropic SNPs between two genetically correlated traits were detected using pleiotropic analysis under the composite null hypothesis (PLACO). PLACO-identified SNPs were mapped to genes by Functional Mapping and Annotation of Genome-Wide Association Studies (FUMA), and gene set enrichment analysis and tissue differential expression were performed for the pleiotropic genes. Two-sample Mendelian randomization analyses assessed the bidirectional causality between conditions/diseases.ResultsLDSC analyses revealed the genetic correlations for 20 pairs based on different two-disease combinations of 14 conditions/diseases, and genetic correlations for 10 pairs were significant after Bonferroni adjustment (PConclusionsThis study highlighted the complex mechanisms underlying the association patterns that include the shared genetic components and causal effects among the 14 conditions/diseases. These findings have important implications for guiding the early diagnosis, management, and treatment of comorbidities.