| Literature DB >> 35050305 |
Nathan Ingold1,2, Adrian I Campos1,3, Xikun Han1,3, Jue-Sheng Ong1, Puya Gharahkhani1, David A Mackey4, Miguel E Rentería1,2,3, Matthew H Law1,2, Stuart MacGregor1.
Abstract
Purpose: Observational studies have suggested that individuals with pre-existing sleep apnea (SA) have up to double the risk of developing glaucoma than individuals without SA. Understanding risk factors for glaucoma is important to assist with well-structured screening, early intervention, and efficient allocation of specialist consultation. The objective of this study is therefore to use genetic data to determine whether SA is a causal risk factor for glaucoma.Entities:
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Year: 2022 PMID: 35050305 PMCID: PMC8787584 DOI: 10.1167/iovs.63.1.25
Source DB: PubMed Journal: Invest Ophthalmol Vis Sci ISSN: 0146-0404 Impact factor: 4.799
Figure 1.Scatter plot of each SNP's respective effect size for sleep apnea and glaucoma. The X-axis refers to the estimated magnitude of association (log(OR)) of each of the 34 IV single nucleotide polymorphisms (SNPs) on sleep apnea, whereas the Y axis refers to the magnitude of association (log(OR)) of each IV on glaucoma risk. The SEs are plotted for each point. The regression lines represent (1) inverse variance weighted (blue dots; IVW), which is the primary regression with no adjustment for pleiotropic effect; (2) MR Egger (turquoise full line; Mendelian randomization Egger), which accounts for directional pleiotropy; (3) weighted median (green long-dash dot), which provides robust point estimates even when up to 50% of the IVs are invalid instruments; (4) simple mode (yellow short-dash dot), providing the effect estimate based on the mode of the Wald-type estimates; (5) weighted mode (gray short-dash), assigns SE-based weightings to each SNP of the simple mode method; and (6) GSMR (red long-dash), which is similar to IVW after removing the HEIDI outliers. Note: Because of the similar effect estimates between IVW and GSMR, the lines overlap and maybe misconstrued as one “dot-dash” line; they are in fact two separate lines.
Figure 2.Forest Plot of the estimated odds ratios from our Mendelian randomization analysis and from previously reported observational studies. Forest plot presenting OR (representing a doubling of odds of SA on glaucoma) and lower (L) and Upper (U) 95% CI estimates for both the MR results (per doubling of odds) and observational findings (from logistic regression; Shi et al.) and a hazard ratio (HR) estimate for glaucoma from Han et al., based on time-to-event analysis using UKBB data and a population-based matched-cohort study.