Table 2.
Real data | |||||||
---|---|---|---|---|---|---|---|
First author | Sample size | Relatedness correction | Phenotype | Genotype | Simulated data | Analytic approach | Results |
Ainsworth [27] | R 638 | GWAS: FaST-LMM | Covariate adjusted mean SBP, DBP | 427,952 GWAS SNPs | Analyzed but not presented | Pairwise association, WGCNA to identify variables for causal modeling in SEM and BUF | Weak significance, high concordance between SEM and BUF |
WGCNA SEM, BUF: none | |||||||
Pitsillides [24] | R 267 | Linear mixed effects models | DBP, SBP | 12,296,048 SNVs from WGS | Not used | Test of enrichment of cis-eQTL in known BP loci and regulatory regions; pairwise association of expression and BP | Many highly significant eQTL. Enrichment of eQTL in known BP loci and regulatory regions |
Tong [26] | U 142 | None needed | SBP, DBP, HTN, adjusted for covariates | 6,956,910 SNVs from WGS in 17,558 genes | Not used | Similarity-based test for joint effects of genotype, gene expression, phenotype | Weak significance, but some benefit from using genotypes and gene expression |
Radkowski [25] | R 340 | None made | HTN at several time points; change in BP | Not used | Not used | Change in BP (in individuals with no HTN) modeled as a function of gene expression and covariates | 7 potentially predictive HTN gene expression probes identified in 6 genes |
BP blood pressure; BUF Bayesian unified framework; DBP diastolic blood pressure; eQTL expression quantitative trait locus; GWAS genome-wide association study; HTN hypertension; R related individuals; SBP systolic blood pressure; SEM structural equation modeling; SNP single nucleotide polymorphism; SNV single nucleotide variant; U unrelated individuals; WGCNA weighted gene correlation network analysis; WGS whole-genome sequencing