Lin Stephanie, Mihailovic Aleksandra, West Sheila K, Johnson Chris A, Friedman David S, Kong Xiangrong, Ramulu Pradeep Y
Ophthalmology, Johns Hopkins University/Wilmer Eye Institute, Baltimore, MD, USA.
Ophthalmology, University of Iowa, Iowa City, IA, USA.
Transl Vis Sci Technol. 2018 Apr 13;7(2):22. doi: 10.1167/tvst.7.2.22. eCollection 2018 Apr.
We characterized vision in glaucoma using seven visual measures, with the goals of determining the dimensionality of vision, and how many and which visual measures best model activity limitation.
We analyzed cross-sectional data from 150 older adults with glaucoma, collecting seven visual measures: integrated visual field (VF) sensitivity, visual acuity, contrast sensitivity (CS), area under the log CS function, color vision, stereoacuity, and visual acuity with noise. Principal component analysis was used to examine the dimensionality of vision. Multivariable regression models using one, two, or three vision tests (and nonvisual predictors) were compared to determine which was best associated with Rasch-analyzed Glaucoma Quality of Life-15 (GQL-15) person measure scores.
The participants had a mean age of 70.2 and IVF sensitivity of 26.6 dB, suggesting mild-to-moderate glaucoma. All seven vision measures loaded similarly onto the first principal component (eigenvectors, 0.220-0.442), which explained 56.9% of the variance in vision scores. In models for GQL scores, the maximum adjusted- values obtained were 0.263, 0.296, and 0.301 when using one, two, and three vision tests in the models, respectively, though several models in each category had similar adjusted- values. All three of the best-performing models contained CS.
Vision in glaucoma is a multidimensional construct that can be described by several variably-correlated vision measures. Measuring more than two vision tests does not substantially improve models for activity limitation.
A sufficient description of disability in glaucoma can be obtained using one to two vision tests, especially VF and CS.
我们使用七种视觉测量方法对青光眼患者的视力进行了特征分析,目的是确定视力的维度,以及多少种和哪些视觉测量方法能最好地模拟活动受限情况。
我们分析了150名老年青光眼患者的横断面数据,收集了七种视觉测量数据:综合视野(VF)敏感度、视力、对比敏感度(CS)、对数CS函数下的面积、色觉、立体视锐度以及有噪声情况下的视力。主成分分析用于检验视力的维度。比较使用一项、两项或三项视力测试(以及非视觉预测指标)的多变量回归模型,以确定哪种模型与经拉施分析的青光眼生活质量-15(GQL-15)个人测量得分最相关。
参与者的平均年龄为70.2岁,IVF敏感度为26.6 dB,提示为轻度至中度青光眼。所有七种视觉测量方法在第一主成分上的载荷相似(特征向量为0.220 - 0.442),该主成分解释了视力得分中56.9%的方差。在GQL得分模型中,模型中使用一项、两项和三项视力测试时,获得的最大调整后 值分别为0.263、0.296和0.301,尽管每个类别中的几个模型具有相似的调整后 值。所有三个表现最佳的模型都包含CS。
青光眼患者的视力是一个多维结构,可以用几种相关性各异的视觉测量方法来描述。测量超过两项视力测试并不能显著改善活动受限模型。
使用一到两项视力测试,尤其是VF和CS,就可以充分描述青光眼患者的残疾情况。