Optic Disc Size and Circumpapillary Retinal Nerve Fiber Layer Thinning in Glaucoma.
Takashi Nishida, Vincent Q Pham, Sasan Moghimi, Christopher A Girkin, Massimo A Fazio, Jeffrey M Liebmann, Linda M Zangwill, Robert N Weinreb
Summary
Larger optic disc size is associated with faster cpRNFL thinning in glaucoma, independent of race.
Abstract
PURPOSE
To investigate the association between optic disc size and circumpapillary retinal nerve fiber layer (cpRNFL) thinning in eyes with preperimetric glaucoma and glaucoma.
DESIGN
Observational cohort.
PARTICIPANTS
A total of 841 eyes (554 primary open angle glaucoma and 287 preperimetric glaucoma) from 553 patients who had at least 4 visits and 2 years of follow-up using OCT.
METHODS
Multivariable linear mixed-effects modeling was used to estimate the effect of optic disc size on cpRNFL thinning while controlling for covariates. To eliminate the floor effect, eyes with baseline visual field mean deviation less than -14 dB were excluded.
MAIN OUTCOME MEASURES
The effect of optic disc size on cpRNFL thinning.
RESULTS
Of the participants, 189 (34.2%) were Black, 338 (61.1%) were White, 20 (3.6%) were Asian, and 6 (1.1%) were another race or ethnicity. Mean follow-up period was 5.3 (95% confidence interval [CI], 5.2-5.5) years, and the mean rate of cpRNFL change was -0.54 (95% CI, -0.61 to 0.47) μm/year. After adjusting for covariates with the Littmann's formula correction, larger optic disc size was associated with faster cpRNFL thinning (-0.03; 95% CI, -0.05 to 0.00) μm/year faster per 0.1 mmlarger; P = 0.034), while no significant differences were found for race and its interaction with optic disc size.
CONCLUSIONS
Larger optic disc size is associated with faster cpRNFL thinning in glaucoma, independent of race. Although previous studies have indicated that Black individuals may be at higher risk for glaucoma development, the present study suggests that race may not be a significant predictor of faster cpRNFL thinning when controlling for optic disc size and other clinical and demographic factors in glaucoma. FINANCIAL DISCLOSURE(S): Proprietary or commercial disclosure may be found in the Footnotes and Disclosures at the end of this article.
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