Asman P, Heijl A
Department of Ophthalmology, University of Lund, Malmö General Hospital, Sweden.
Acta Ophthalmol (Copenh). 1992 Oct;70(5):671-8. doi: 10.1111/j.1755-3768.1992.tb02151.x.
In recent years several aids for automated interpretation of visual field data have been suggested. We believed that incorporation of thorough knowledge of normal visual field variability would allow improvements in the performance of such aids since more attention would be paid to field results in areas with low physiological variability. Two visual field models for classification of fields in glaucoma based on comparisons of sensitivity values in the upper and lower hemifields and on analysis of test point clusters with diminished sensitivity were compared. Both models were constructed using logistic regression analysis in 101 normal eyes and 101 eyes with glaucoma. The first, more traditional model assumed Gaussian distributions of deviations from age-corrected normal thresholds and constant variability across the field (non-weighted model). The second model took into account empirically determined variability of pointwise threshold results and of cluster volumes in various visual field regions (weighted model). The two models were subsequently tested on an independent material of 163 normal eyes and 76 eyes with glaucoma. The weighted model gave significantly better classification of the fields in both materials. Accounting for physiological threshold variability can offer significant advantages in the construction of perimetric analysis aids for detection of glaucoma.
近年来,有人提出了几种用于自动解读视野数据的辅助工具。我们认为,纳入对正常视野变异性的全面了解将有助于改进此类辅助工具的性能,因为人们会更多地关注生理变异性较低区域的视野结果。比较了两种基于上下半视野敏感度值比较以及对敏感度降低的测试点簇进行分析的青光眼视野分类视野模型。两种模型均使用逻辑回归分析在101只正常眼睛和101只青光眼眼中构建。第一个,也是更传统的模型假设偏离年龄校正正常阈值的偏差呈高斯分布,且整个视野的变异性恒定(非加权模型)。第二个模型考虑了经验确定的逐点阈值结果和不同视野区域中簇体积的变异性(加权模型)。随后,在163只正常眼睛和76只青光眼眼的独立材料上对这两种模型进行了测试。加权模型在两种材料中对视野的分类都明显更好。考虑生理阈值变异性在构建用于检测青光眼的视野分析辅助工具方面可提供显著优势。