Anderson Andrew J
Department of Optometry and Vision Sciences The University of Melbourne, Australia.
Transl Vis Sci Technol. 2015 Jul 31;4(4):2. doi: 10.1167/tvst.4.4.2. eCollection 2015 Jul.
To compare parametric models for fitting published distributions of visual field progression rates (in dB/yr) for glaucoma.
We fitted a modified Gaussian model, a modified Cauchy model and a modified hyperbolic secant model to previously published distributions of visual field progression rates from Canada, Sweden, and the United States. The modification allowed the shape of the model's distribution either side of the mode to be independently varied to allow for the asymmetric tails seen in visual field progression rate distributions.
Summing likelihoods across datasets, the modified hyperbolic secant was strongly favored (by 26.7 log units) compared with the next best-fitting model, the modified Cauchy. The modified hyperbolic secant was not the best fit for the Canadian dataset, however. Best-fitting modified hyperbolic secant parameters were broadly similarly between datasets, with parameter variances being less than those expected to negate the benefits of a previously described Bayesian method for improving individual visual field progression rate estimates in glaucoma.
Although the optimum model differed depending upon the particular dataset, a modified hyperbolic secant performed well for all distributions investigated and was strongly favored when evidence was summed across datasets.
Despite differences in the progression rate distributions between studies, the use of an "average" distribution may still be of benefit for improving individual visual field progression rate estimates in glaucoma using Bayesian methods.
比较用于拟合已发表的青光眼视野进展率(单位:dB/年)分布的参数模型。
我们将修正高斯模型、修正柯西模型和修正双曲正割模型拟合到先前发表的来自加拿大、瑞典和美国的视野进展率分布。这种修正允许模型分布在众数两侧的形状独立变化,以适应视野进展率分布中出现的不对称尾部。
在各数据集上累加似然值,与次优拟合模型修正柯西模型相比,修正双曲正割模型得到强烈支持(优势为26.7对数单位)。然而,修正双曲正割模型并非最适合加拿大数据集。各数据集之间,最佳拟合的修正双曲正割模型参数大致相似,其参数方差小于预期会抵消先前所述贝叶斯方法在改善青光眼个体视野进展率估计方面益处的方差。
尽管最优模型因特定数据集而异,但修正双曲正割模型对所有研究的分布都表现良好,且在跨数据集汇总证据时得到强烈支持。
尽管不同研究之间进展率分布存在差异,但使用“平均”分布可能仍有助于采用贝叶斯方法改善青光眼个体视野进展率估计。